ggml.c 734 KB

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  1. #define _CRT_SECURE_NO_DEPRECATE // Disables ridiculous "unsafe" warnings on Windows
  2. #define _USE_MATH_DEFINES // For M_PI on MSVC
  3. #include "ggml-impl.h"
  4. #include "ggml-quants.h"
  5. #include "ggml.h"
  6. #if defined(_MSC_VER) || defined(__MINGW32__)
  7. #include <malloc.h> // using malloc.h with MSC/MINGW
  8. #elif !defined(__FreeBSD__) && !defined(__NetBSD__) && !defined(__OpenBSD__)
  9. #include <alloca.h>
  10. #endif
  11. #include <assert.h>
  12. #include <errno.h>
  13. #include <time.h>
  14. #include <math.h>
  15. #include <stdlib.h>
  16. #include <string.h>
  17. #include <stdint.h>
  18. #include <inttypes.h>
  19. #include <stdio.h>
  20. #include <float.h>
  21. #include <limits.h>
  22. #include <stdarg.h>
  23. #include <signal.h>
  24. #if defined(__gnu_linux__)
  25. #include <syscall.h>
  26. #endif
  27. #ifdef GGML_USE_OPENMP
  28. #include <omp.h>
  29. #endif
  30. #ifdef GGML_USE_METAL
  31. #include <unistd.h>
  32. #endif
  33. #ifdef __ARM_FEATURE_MATMUL_INT8
  34. #undef GGML_USE_LLAMAFILE
  35. #endif
  36. #ifdef GGML_USE_LLAMAFILE
  37. #include "sgemm.h"
  38. #endif
  39. #if defined(_MSC_VER)
  40. // disable "possible loss of data" to avoid hundreds of casts
  41. // we should just be careful :)
  42. #pragma warning(disable: 4244 4267)
  43. // disable POSIX deprecation warnings
  44. // these functions are never going away, anyway
  45. #pragma warning(disable: 4996)
  46. #endif
  47. #if defined(_WIN32)
  48. #define WIN32_LEAN_AND_MEAN
  49. #ifndef NOMINMAX
  50. #define NOMINMAX
  51. #endif
  52. #include <windows.h>
  53. typedef volatile LONG atomic_int;
  54. typedef atomic_int atomic_bool;
  55. typedef atomic_int atomic_flag;
  56. #define ATOMIC_FLAG_INIT 0
  57. static void atomic_store(atomic_int * ptr, LONG val) {
  58. InterlockedExchange(ptr, val);
  59. }
  60. static LONG atomic_load(atomic_int * ptr) {
  61. return InterlockedCompareExchange(ptr, 0, 0);
  62. }
  63. static LONG atomic_fetch_add(atomic_int * ptr, LONG inc) {
  64. return InterlockedExchangeAdd(ptr, inc);
  65. }
  66. static LONG atomic_fetch_sub(atomic_int * ptr, LONG dec) {
  67. return atomic_fetch_add(ptr, -(dec));
  68. }
  69. static atomic_bool atomic_flag_test_and_set(atomic_flag * ptr) {
  70. return InterlockedExchange(ptr, 1);
  71. }
  72. static void atomic_flag_clear(atomic_flag * ptr) {
  73. InterlockedExchange(ptr, 0);
  74. }
  75. typedef HANDLE pthread_t;
  76. typedef DWORD thread_ret_t;
  77. static int pthread_create(pthread_t * out, void * unused, thread_ret_t(*func)(void *), void * arg) {
  78. (void) unused;
  79. HANDLE handle = CreateThread(NULL, 0, (LPTHREAD_START_ROUTINE) func, arg, 0, NULL);
  80. if (handle == NULL)
  81. {
  82. return EAGAIN;
  83. }
  84. *out = handle;
  85. return 0;
  86. }
  87. static int pthread_join(pthread_t thread, void * unused) {
  88. (void) unused;
  89. int ret = (int) WaitForSingleObject(thread, INFINITE);
  90. CloseHandle(thread);
  91. return ret;
  92. }
  93. static int sched_yield (void) {
  94. Sleep (0);
  95. return 0;
  96. }
  97. #else
  98. #include <pthread.h>
  99. #include <stdatomic.h>
  100. typedef void * thread_ret_t;
  101. #include <sys/types.h>
  102. #include <sys/stat.h>
  103. #include <unistd.h>
  104. #endif
  105. typedef pthread_t ggml_thread_t;
  106. #ifdef GGML_USE_CPU_HBM
  107. #include <hbwmalloc.h>
  108. #endif
  109. #if defined(__APPLE__)
  110. #include <TargetConditionals.h>
  111. #endif
  112. #if (defined(__linux__) || defined(__APPLE__) || defined(__FreeBSD__) || defined(__NetBSD__) || defined(__OpenBSD__)) && \
  113. (!defined(TARGET_OS_TV) && !defined(TARGET_OS_WATCH))
  114. #include <sys/wait.h>
  115. void ggml_print_backtrace(void) {
  116. /*
  117. #include <execinfo.h>
  118. #include <dlfcn.h>
  119. void * trace[100];
  120. int nptrs = backtrace(trace, sizeof(trace)/sizeof(trace[0]));
  121. backtrace_symbols_fd(trace, nptrs, STDERR_FILENO);
  122. */
  123. // backtrack_symbols does not show line numbers, use gdb instead
  124. char attach[32];
  125. snprintf(attach, sizeof(attach), "attach %d", getpid());
  126. int pid = fork();
  127. if (pid == 0) {
  128. execlp("gdb", "gdb", "--batch",
  129. "-ex", "set style enabled on",
  130. "-ex", attach,
  131. "-ex", "bt -frame-info source-and-location",
  132. "-ex", "detach",
  133. "-ex", "quit",
  134. (char *) NULL);
  135. } else {
  136. waitpid(pid, NULL, 0);
  137. }
  138. }
  139. #else
  140. void ggml_print_backtrace(void) {
  141. // platform not supported
  142. }
  143. #endif
  144. /*#define GGML_PERF*/
  145. #define GGML_DEBUG 0
  146. #define GGML_GELU_FP16
  147. #define GGML_GELU_QUICK_FP16
  148. #define GGML_SOFT_MAX_UNROLL 4
  149. #define GGML_VEC_DOT_UNROLL 2
  150. #define GGML_VEC_MAD_UNROLL 32
  151. //
  152. // logging
  153. //
  154. #if (GGML_DEBUG >= 1)
  155. #define GGML_PRINT_DEBUG(...) printf(__VA_ARGS__)
  156. #else
  157. #define GGML_PRINT_DEBUG(...)
  158. #endif
  159. #if (GGML_DEBUG >= 5)
  160. #define GGML_PRINT_DEBUG_5(...) printf(__VA_ARGS__)
  161. #else
  162. #define GGML_PRINT_DEBUG_5(...)
  163. #endif
  164. #if (GGML_DEBUG >= 10)
  165. #define GGML_PRINT_DEBUG_10(...) printf(__VA_ARGS__)
  166. #else
  167. #define GGML_PRINT_DEBUG_10(...)
  168. #endif
  169. #define GGML_PRINT(...) printf(__VA_ARGS__)
  170. //
  171. // end of logging block
  172. //
  173. #ifdef GGML_USE_ACCELERATE
  174. // uncomment to use vDSP for soft max computation
  175. // note: not sure if it is actually faster
  176. //#define GGML_SOFT_MAX_ACCELERATE
  177. #endif
  178. #if defined(_MSC_VER) || defined(__MINGW32__)
  179. #define GGML_ALIGNED_MALLOC(size) _aligned_malloc(size, GGML_MEM_ALIGN)
  180. #define GGML_ALIGNED_FREE(ptr) _aligned_free(ptr)
  181. #else
  182. inline static void * ggml_aligned_malloc(size_t size) {
  183. if (size == 0) {
  184. GGML_PRINT("WARNING: Behavior may be unexpected when allocating 0 bytes for ggml_aligned_malloc!\n");
  185. return NULL;
  186. }
  187. void * aligned_memory = NULL;
  188. #ifdef GGML_USE_CPU_HBM
  189. int result = hbw_posix_memalign(&aligned_memory, 16, size);
  190. #elif GGML_USE_METAL
  191. int result = posix_memalign(&aligned_memory, sysconf(_SC_PAGESIZE), size);
  192. #else
  193. int result = posix_memalign(&aligned_memory, GGML_MEM_ALIGN, size);
  194. #endif
  195. if (result != 0) {
  196. // Handle allocation failure
  197. const char *error_desc = "unknown allocation error";
  198. switch (result) {
  199. case EINVAL:
  200. error_desc = "invalid alignment value";
  201. break;
  202. case ENOMEM:
  203. error_desc = "insufficient memory";
  204. break;
  205. }
  206. GGML_PRINT("%s: %s (attempted to allocate %6.2f MB)\n", __func__, error_desc, size/(1024.0*1024.0));
  207. GGML_ASSERT(false);
  208. return NULL;
  209. }
  210. return aligned_memory;
  211. }
  212. #define GGML_ALIGNED_MALLOC(size) ggml_aligned_malloc(size)
  213. #ifdef GGML_USE_CPU_HBM
  214. #define GGML_ALIGNED_FREE(ptr) if(NULL != ptr) hbw_free(ptr)
  215. #else
  216. #define GGML_ALIGNED_FREE(ptr) free(ptr)
  217. #endif
  218. #endif
  219. inline static void * ggml_malloc(size_t size) {
  220. if (size == 0) {
  221. GGML_PRINT("WARNING: Behavior may be unexpected when allocating 0 bytes for ggml_malloc!\n");
  222. return NULL;
  223. }
  224. void * result = malloc(size);
  225. if (result == NULL) {
  226. GGML_PRINT("%s: failed to allocate %6.2f MB\n", __func__, size/(1024.0*1024.0));
  227. GGML_ASSERT(false);
  228. }
  229. return result;
  230. }
  231. // calloc
  232. inline static void * ggml_calloc(size_t num, size_t size) {
  233. if (num == 0 || size == 0) {
  234. GGML_PRINT("WARNING: Behavior may be unexpected when allocating 0 bytes for ggml_calloc!\n");
  235. return NULL;
  236. }
  237. void * result = calloc(num, size);
  238. if (result == NULL) {
  239. GGML_PRINT("%s: failed to allocate %6.2f MB\n", __func__, size/(1024.0*1024.0));
  240. GGML_ASSERT(false);
  241. }
  242. return result;
  243. }
  244. #define GGML_MALLOC(size) ggml_malloc(size)
  245. #define GGML_CALLOC(num, size) ggml_calloc(num, size)
  246. #define GGML_FREE(ptr) free(ptr)
  247. #define UNUSED GGML_UNUSED
  248. #define SWAP(x, y, T) do { T SWAP = x; x = y; y = SWAP; } while (0)
  249. #if defined(GGML_USE_ACCELERATE)
  250. #include <Accelerate/Accelerate.h>
  251. #elif defined(GGML_USE_OPENBLAS)
  252. #if defined(GGML_BLAS_USE_MKL)
  253. #include <mkl.h>
  254. #else
  255. #include <cblas.h>
  256. #endif
  257. #endif
  258. // floating point type used to accumulate sums
  259. typedef double ggml_float;
  260. #undef MIN
  261. #undef MAX
  262. #define MIN(a, b) ((a) < (b) ? (a) : (b))
  263. #define MAX(a, b) ((a) > (b) ? (a) : (b))
  264. //
  265. // global data
  266. //
  267. // precomputed gelu table for f16 (128 KB)
  268. static ggml_fp16_t ggml_table_gelu_f16[1 << 16];
  269. // precomputed quick gelu table for f16 (128 KB)
  270. static ggml_fp16_t ggml_table_gelu_quick_f16[1 << 16];
  271. // precomputed f32 table for f16 (256 KB) (ggml-impl.h)
  272. float ggml_table_f32_f16[1 << 16];
  273. GGML_CALL const char * ggml_status_to_string(enum ggml_status status) {
  274. switch (status) {
  275. case GGML_STATUS_ALLOC_FAILED: return "GGML status: error (failed to allocate memory)";
  276. case GGML_STATUS_FAILED: return "GGML status: error (operation failed)";
  277. case GGML_STATUS_SUCCESS: return "GGML status: success";
  278. case GGML_STATUS_ABORTED: return "GGML status: warning (operation aborted)";
  279. }
  280. return "GGML status: unknown";
  281. }
  282. float ggml_fp16_to_fp32(ggml_fp16_t x) {
  283. #define ggml_fp16_to_fp32 do_not_use__ggml_fp16_to_fp32__in_ggml
  284. return GGML_FP16_TO_FP32(x);
  285. }
  286. ggml_fp16_t ggml_fp32_to_fp16(float x) {
  287. #define ggml_fp32_to_fp16 do_not_use__ggml_fp32_to_fp16__in_ggml
  288. return GGML_FP32_TO_FP16(x);
  289. }
  290. float ggml_bf16_to_fp32(ggml_bf16_t x) {
  291. #define ggml_bf16_to_fp32 do_not_use__ggml_bf16_to_fp32__in_ggml
  292. return GGML_BF16_TO_FP32(x); // it just left shifts
  293. }
  294. ggml_bf16_t ggml_fp32_to_bf16(float x) {
  295. #define ggml_fp32_to_bf16 do_not_use__ggml_fp32_to_bf16__in_ggml
  296. return GGML_FP32_TO_BF16(x);
  297. }
  298. void ggml_fp16_to_fp32_row(const ggml_fp16_t * x, float * y, int64_t n) {
  299. for (int64_t i = 0; i < n; i++) {
  300. y[i] = GGML_FP16_TO_FP32(x[i]);
  301. }
  302. }
  303. void ggml_fp32_to_fp16_row(const float * x, ggml_fp16_t * y, int64_t n) {
  304. int64_t i = 0;
  305. #if defined(__F16C__)
  306. for (; i + 7 < n; i += 8) {
  307. __m256 x_vec = _mm256_loadu_ps(x + i);
  308. __m128i y_vec = _mm256_cvtps_ph(x_vec, _MM_FROUND_TO_NEAREST_INT);
  309. _mm_storeu_si128((__m128i *)(y + i), y_vec);
  310. }
  311. for(; i + 3 < n; i += 4) {
  312. __m128 x_vec = _mm_loadu_ps(x + i);
  313. __m128i y_vec = _mm_cvtps_ph(x_vec, _MM_FROUND_TO_NEAREST_INT);
  314. _mm_storel_epi64((__m128i *)(y + i), y_vec);
  315. }
  316. #endif
  317. for (; i < n; i++) {
  318. y[i] = GGML_FP32_TO_FP16(x[i]);
  319. }
  320. }
  321. void ggml_bf16_to_fp32_row(const ggml_bf16_t * x, float * y, int64_t n) {
  322. int64_t i = 0;
  323. #if defined(__AVX512F__)
  324. for (; i + 16 <= n; i += 16) {
  325. _mm512_storeu_ps(y + i,
  326. _mm512_castsi512_ps(
  327. _mm512_slli_epi32(
  328. _mm512_cvtepu16_epi32(
  329. _mm256_loadu_si256(
  330. (const __m256i *)(x + i))),
  331. 16)));
  332. }
  333. #elif defined(__AVX2__)
  334. for (; i + 8 <= n; i += 8) {
  335. _mm256_storeu_ps(y + i,
  336. _mm256_castsi256_ps(
  337. _mm256_slli_epi32(
  338. _mm256_cvtepu16_epi32(
  339. _mm_loadu_si128(
  340. (const __m128i *)(x + i))),
  341. 16)));
  342. }
  343. #endif
  344. for (; i < n; i++) {
  345. y[i] = GGML_BF16_TO_FP32(x[i]);
  346. }
  347. }
  348. void ggml_fp32_to_bf16_row(const float * x, ggml_bf16_t * y, int64_t n) {
  349. int i = 0;
  350. #if defined(__AVX512BF16__)
  351. for (; i + 32 <= n; i += 32) {
  352. _mm512_storeu_si512(
  353. (__m512i *)(y + i),
  354. m512i(_mm512_cvtne2ps_pbh(_mm512_loadu_ps(x + i + 16),
  355. _mm512_loadu_ps(x + i))));
  356. }
  357. #endif
  358. for (; i < n; i++) {
  359. y[i] = GGML_FP32_TO_BF16(x[i]);
  360. }
  361. }
  362. bool ggml_guid_matches(ggml_guid_t guid_a, ggml_guid_t guid_b) {
  363. return memcmp(guid_a, guid_b, sizeof(ggml_guid)) == 0;
  364. }
  365. //
  366. // timing
  367. //
  368. #if defined(_MSC_VER) || defined(__MINGW32__)
  369. static int64_t timer_freq, timer_start;
  370. void ggml_time_init(void) {
  371. LARGE_INTEGER t;
  372. QueryPerformanceFrequency(&t);
  373. timer_freq = t.QuadPart;
  374. // The multiplication by 1000 or 1000000 below can cause an overflow if timer_freq
  375. // and the uptime is high enough.
  376. // We subtract the program start time to reduce the likelihood of that happening.
  377. QueryPerformanceCounter(&t);
  378. timer_start = t.QuadPart;
  379. }
  380. int64_t ggml_time_ms(void) {
  381. LARGE_INTEGER t;
  382. QueryPerformanceCounter(&t);
  383. return ((t.QuadPart-timer_start) * 1000) / timer_freq;
  384. }
  385. int64_t ggml_time_us(void) {
  386. LARGE_INTEGER t;
  387. QueryPerformanceCounter(&t);
  388. return ((t.QuadPart-timer_start) * 1000000) / timer_freq;
  389. }
  390. #else
  391. void ggml_time_init(void) {}
  392. int64_t ggml_time_ms(void) {
  393. struct timespec ts;
  394. clock_gettime(CLOCK_MONOTONIC, &ts);
  395. return (int64_t)ts.tv_sec*1000 + (int64_t)ts.tv_nsec/1000000;
  396. }
  397. int64_t ggml_time_us(void) {
  398. struct timespec ts;
  399. clock_gettime(CLOCK_MONOTONIC, &ts);
  400. return (int64_t)ts.tv_sec*1000000 + (int64_t)ts.tv_nsec/1000;
  401. }
  402. #endif
  403. int64_t ggml_cycles(void) {
  404. return clock();
  405. }
  406. int64_t ggml_cycles_per_ms(void) {
  407. return CLOCKS_PER_SEC/1000;
  408. }
  409. #ifdef GGML_PERF
  410. #define ggml_perf_time_ms() ggml_time_ms()
  411. #define ggml_perf_time_us() ggml_time_us()
  412. #define ggml_perf_cycles() ggml_cycles()
  413. #define ggml_perf_cycles_per_ms() ggml_cycles_per_ms()
  414. #else
  415. #define ggml_perf_time_ms() 0
  416. #define ggml_perf_time_us() 0
  417. #define ggml_perf_cycles() 0
  418. #define ggml_perf_cycles_per_ms() 0
  419. #endif
  420. //
  421. // cross-platform UTF-8 file paths
  422. //
  423. #ifdef _WIN32
  424. static wchar_t * ggml_mbstowcs(const char * mbs) {
  425. int wlen = MultiByteToWideChar(CP_UTF8, 0, mbs, -1, NULL, 0);
  426. if (!wlen) {
  427. errno = EINVAL;
  428. return NULL;
  429. }
  430. wchar_t * wbuf = GGML_MALLOC(wlen * sizeof(wchar_t));
  431. wlen = MultiByteToWideChar(CP_UTF8, 0, mbs, -1, wbuf, wlen);
  432. if (!wlen) {
  433. GGML_FREE(wbuf);
  434. errno = EINVAL;
  435. return NULL;
  436. }
  437. return wbuf;
  438. }
  439. #endif
  440. FILE * ggml_fopen(const char * fname, const char * mode) {
  441. #ifdef _WIN32
  442. FILE * file = NULL;
  443. // convert fname (UTF-8)
  444. wchar_t * wfname = ggml_mbstowcs(fname);
  445. if (wfname) {
  446. // convert mode (ANSI)
  447. wchar_t * wmode = GGML_MALLOC((strlen(mode) + 1) * sizeof(wchar_t));
  448. wchar_t * wmode_p = wmode;
  449. do {
  450. *wmode_p++ = (wchar_t)*mode;
  451. } while (*mode++);
  452. // open file
  453. file = _wfopen(wfname, wmode);
  454. GGML_FREE(wfname);
  455. GGML_FREE(wmode);
  456. }
  457. return file;
  458. #else
  459. return fopen(fname, mode);
  460. #endif
  461. }
  462. //
  463. // cache line
  464. //
  465. #if defined(__cpp_lib_hardware_interference_size)
  466. #define CACHE_LINE_SIZE hardware_destructive_interference_size
  467. #else
  468. #if defined(__POWER9_VECTOR__)
  469. #define CACHE_LINE_SIZE 128
  470. #else
  471. #define CACHE_LINE_SIZE 64
  472. #endif
  473. #endif
  474. static const size_t CACHE_LINE_SIZE_F32 = CACHE_LINE_SIZE/sizeof(float);
  475. static void ggml_vec_dot_f32(int n, float * restrict s, size_t bs, const float * restrict x, size_t bx, const float * restrict y, size_t by, int nrc);
  476. static void ggml_vec_dot_f16(int n, float * restrict s, size_t bs, ggml_fp16_t * restrict x, size_t bx, ggml_fp16_t * restrict y, size_t by, int nrc);
  477. static void ggml_vec_dot_bf16(int n, float * restrict s, size_t bs, ggml_bf16_t * restrict x, size_t bx, ggml_bf16_t * restrict y, size_t by, int nrc);
  478. static const ggml_type_traits_t type_traits[GGML_TYPE_COUNT] = {
  479. [GGML_TYPE_I8] = {
  480. .type_name = "i8",
  481. .blck_size = 1,
  482. .type_size = sizeof(int8_t),
  483. .is_quantized = false,
  484. },
  485. [GGML_TYPE_I16] = {
  486. .type_name = "i16",
  487. .blck_size = 1,
  488. .type_size = sizeof(int16_t),
  489. .is_quantized = false,
  490. },
  491. [GGML_TYPE_I32] = {
  492. .type_name = "i32",
  493. .blck_size = 1,
  494. .type_size = sizeof(int32_t),
  495. .is_quantized = false,
  496. },
  497. [GGML_TYPE_I64] = {
  498. .type_name = "i64",
  499. .blck_size = 1,
  500. .type_size = sizeof(int64_t),
  501. .is_quantized = false,
  502. },
  503. [GGML_TYPE_F64] = {
  504. .type_name = "f64",
  505. .blck_size = 1,
  506. .type_size = sizeof(double),
  507. .is_quantized = false,
  508. .nrows = 1,
  509. },
  510. [GGML_TYPE_F32] = {
  511. .type_name = "f32",
  512. .blck_size = 1,
  513. .type_size = sizeof(float),
  514. .is_quantized = false,
  515. .vec_dot = (ggml_vec_dot_t) ggml_vec_dot_f32,
  516. .vec_dot_type = GGML_TYPE_F32,
  517. .nrows = 1,
  518. },
  519. [GGML_TYPE_F16] = {
  520. .type_name = "f16",
  521. .blck_size = 1,
  522. .type_size = sizeof(ggml_fp16_t),
  523. .is_quantized = false,
  524. .to_float = (ggml_to_float_t) ggml_fp16_to_fp32_row,
  525. .from_float = (ggml_from_float_t) ggml_fp32_to_fp16_row,
  526. .from_float_reference = (ggml_from_float_t) ggml_fp32_to_fp16_row,
  527. .vec_dot = (ggml_vec_dot_t) ggml_vec_dot_f16,
  528. .vec_dot_type = GGML_TYPE_F16,
  529. .nrows = 1,
  530. },
  531. [GGML_TYPE_Q4_0] = {
  532. .type_name = "q4_0",
  533. .blck_size = QK4_0,
  534. .type_size = sizeof(block_q4_0),
  535. .is_quantized = true,
  536. .to_float = (ggml_to_float_t) dequantize_row_q4_0,
  537. .from_float = quantize_row_q4_0,
  538. .from_float_reference = (ggml_from_float_t) quantize_row_q4_0_reference,
  539. .vec_dot = ggml_vec_dot_q4_0_q8_0,
  540. .vec_dot_type = GGML_TYPE_Q8_0,
  541. #if defined (__ARM_FEATURE_MATMUL_INT8)
  542. .nrows = 2,
  543. #else
  544. .nrows = 1,
  545. #endif
  546. },
  547. [GGML_TYPE_Q4_1] = {
  548. .type_name = "q4_1",
  549. .blck_size = QK4_1,
  550. .type_size = sizeof(block_q4_1),
  551. .is_quantized = true,
  552. .to_float = (ggml_to_float_t) dequantize_row_q4_1,
  553. .from_float = quantize_row_q4_1,
  554. .from_float_reference = (ggml_from_float_t) quantize_row_q4_1_reference,
  555. .vec_dot = ggml_vec_dot_q4_1_q8_1,
  556. .vec_dot_type = GGML_TYPE_Q8_1,
  557. #if defined (__ARM_FEATURE_MATMUL_INT8)
  558. .nrows = 2,
  559. #else
  560. .nrows = 1,
  561. #endif
  562. },
  563. [4] = { // GGML_TYPE_Q4_2
  564. .type_name = "DEPRECATED",
  565. .blck_size = 0,
  566. .type_size = 0,
  567. .is_quantized = false,
  568. .to_float = NULL,
  569. .from_float = NULL,
  570. .from_float_reference = NULL,
  571. .vec_dot = NULL,
  572. .vec_dot_type = GGML_TYPE_COUNT,
  573. .nrows = 1,
  574. },
  575. [5] = { // GGML_TYPE_Q4_3
  576. .type_name = "DEPRECATED",
  577. .blck_size = 0,
  578. .type_size = 0,
  579. .is_quantized = false,
  580. .to_float = NULL,
  581. .from_float = NULL,
  582. .from_float_reference = NULL,
  583. .vec_dot = NULL,
  584. .vec_dot_type = GGML_TYPE_COUNT,
  585. .nrows = 1,
  586. },
  587. [GGML_TYPE_Q5_0] = {
  588. .type_name = "q5_0",
  589. .blck_size = QK5_0,
  590. .type_size = sizeof(block_q5_0),
  591. .is_quantized = true,
  592. .to_float = (ggml_to_float_t) dequantize_row_q5_0,
  593. .from_float = quantize_row_q5_0,
  594. .from_float_reference = (ggml_from_float_t) quantize_row_q5_0_reference,
  595. .vec_dot = ggml_vec_dot_q5_0_q8_0,
  596. .vec_dot_type = GGML_TYPE_Q8_0,
  597. .nrows = 1,
  598. },
  599. [GGML_TYPE_Q5_1] = {
  600. .type_name = "q5_1",
  601. .blck_size = QK5_1,
  602. .type_size = sizeof(block_q5_1),
  603. .is_quantized = true,
  604. .to_float = (ggml_to_float_t) dequantize_row_q5_1,
  605. .from_float = quantize_row_q5_1,
  606. .from_float_reference = (ggml_from_float_t) quantize_row_q5_1_reference,
  607. .vec_dot = ggml_vec_dot_q5_1_q8_1,
  608. .vec_dot_type = GGML_TYPE_Q8_1,
  609. .nrows = 1,
  610. },
  611. [GGML_TYPE_Q8_0] = {
  612. .type_name = "q8_0",
  613. .blck_size = QK8_0,
  614. .type_size = sizeof(block_q8_0),
  615. .is_quantized = true,
  616. .to_float = (ggml_to_float_t) dequantize_row_q8_0,
  617. .from_float = quantize_row_q8_0,
  618. .from_float_reference = (ggml_from_float_t) quantize_row_q8_0_reference,
  619. .vec_dot = ggml_vec_dot_q8_0_q8_0,
  620. .vec_dot_type = GGML_TYPE_Q8_0,
  621. #if defined (__ARM_FEATURE_MATMUL_INT8)
  622. .nrows = 2,
  623. #else
  624. .nrows = 1,
  625. #endif
  626. },
  627. [GGML_TYPE_Q8_1] = {
  628. .type_name = "q8_1",
  629. .blck_size = QK8_1,
  630. .type_size = sizeof(block_q8_1),
  631. .is_quantized = true,
  632. .from_float = quantize_row_q8_1,
  633. .from_float_reference = (ggml_from_float_t) quantize_row_q8_1_reference,
  634. .vec_dot_type = GGML_TYPE_Q8_1,
  635. .nrows = 1,
  636. },
  637. [GGML_TYPE_Q2_K] = {
  638. .type_name = "q2_K",
  639. .blck_size = QK_K,
  640. .type_size = sizeof(block_q2_K),
  641. .is_quantized = true,
  642. .to_float = (ggml_to_float_t) dequantize_row_q2_K,
  643. .from_float = quantize_row_q2_K,
  644. .from_float_reference = (ggml_from_float_t) quantize_row_q2_K_reference,
  645. .vec_dot = ggml_vec_dot_q2_K_q8_K,
  646. .vec_dot_type = GGML_TYPE_Q8_K,
  647. .nrows = 1,
  648. },
  649. [GGML_TYPE_Q3_K] = {
  650. .type_name = "q3_K",
  651. .blck_size = QK_K,
  652. .type_size = sizeof(block_q3_K),
  653. .is_quantized = true,
  654. .to_float = (ggml_to_float_t) dequantize_row_q3_K,
  655. .from_float = quantize_row_q3_K,
  656. .from_float_reference = (ggml_from_float_t) quantize_row_q3_K_reference,
  657. .vec_dot = ggml_vec_dot_q3_K_q8_K,
  658. .vec_dot_type = GGML_TYPE_Q8_K,
  659. .nrows = 1,
  660. },
  661. [GGML_TYPE_Q4_K] = {
  662. .type_name = "q4_K",
  663. .blck_size = QK_K,
  664. .type_size = sizeof(block_q4_K),
  665. .is_quantized = true,
  666. .to_float = (ggml_to_float_t) dequantize_row_q4_K,
  667. .from_float = quantize_row_q4_K,
  668. .from_float_reference = (ggml_from_float_t) quantize_row_q4_K_reference,
  669. .vec_dot = ggml_vec_dot_q4_K_q8_K,
  670. .vec_dot_type = GGML_TYPE_Q8_K,
  671. .nrows = 1,
  672. },
  673. [GGML_TYPE_Q5_K] = {
  674. .type_name = "q5_K",
  675. .blck_size = QK_K,
  676. .type_size = sizeof(block_q5_K),
  677. .is_quantized = true,
  678. .to_float = (ggml_to_float_t) dequantize_row_q5_K,
  679. .from_float = quantize_row_q5_K,
  680. .from_float_reference = (ggml_from_float_t) quantize_row_q5_K_reference,
  681. .vec_dot = ggml_vec_dot_q5_K_q8_K,
  682. .vec_dot_type = GGML_TYPE_Q8_K,
  683. .nrows = 1,
  684. },
  685. [GGML_TYPE_Q6_K] = {
  686. .type_name = "q6_K",
  687. .blck_size = QK_K,
  688. .type_size = sizeof(block_q6_K),
  689. .is_quantized = true,
  690. .to_float = (ggml_to_float_t) dequantize_row_q6_K,
  691. .from_float = quantize_row_q6_K,
  692. .from_float_reference = (ggml_from_float_t) quantize_row_q6_K_reference,
  693. .vec_dot = ggml_vec_dot_q6_K_q8_K,
  694. .vec_dot_type = GGML_TYPE_Q8_K,
  695. .nrows = 1,
  696. },
  697. [GGML_TYPE_IQ2_XXS] = {
  698. .type_name = "iq2_xxs",
  699. .blck_size = QK_K,
  700. .type_size = sizeof(block_iq2_xxs),
  701. .is_quantized = true,
  702. .to_float = (ggml_to_float_t) dequantize_row_iq2_xxs,
  703. .from_float = NULL,
  704. .from_float_reference = NULL,
  705. .vec_dot = ggml_vec_dot_iq2_xxs_q8_K,
  706. .vec_dot_type = GGML_TYPE_Q8_K,
  707. .nrows = 1,
  708. },
  709. [GGML_TYPE_IQ2_XS] = {
  710. .type_name = "iq2_xs",
  711. .blck_size = QK_K,
  712. .type_size = sizeof(block_iq2_xs),
  713. .is_quantized = true,
  714. .to_float = (ggml_to_float_t) dequantize_row_iq2_xs,
  715. .from_float = NULL,
  716. .from_float_reference = NULL,
  717. .vec_dot = ggml_vec_dot_iq2_xs_q8_K,
  718. .vec_dot_type = GGML_TYPE_Q8_K,
  719. .nrows = 1,
  720. },
  721. [GGML_TYPE_IQ3_XXS] = {
  722. .type_name = "iq3_xxs",
  723. .blck_size = QK_K,
  724. .type_size = sizeof(block_iq3_xxs),
  725. .is_quantized = true,
  726. .to_float = (ggml_to_float_t) dequantize_row_iq3_xxs,
  727. .from_float = quantize_row_iq3_xxs,
  728. .from_float_reference = (ggml_from_float_t)quantize_row_iq3_xxs_reference,
  729. .vec_dot = ggml_vec_dot_iq3_xxs_q8_K,
  730. .vec_dot_type = GGML_TYPE_Q8_K,
  731. .nrows = 1,
  732. },
  733. [GGML_TYPE_IQ3_S] = {
  734. .type_name = "iq3_s",
  735. .blck_size = QK_K,
  736. .type_size = sizeof(block_iq3_s),
  737. .is_quantized = true,
  738. .to_float = (ggml_to_float_t) dequantize_row_iq3_s,
  739. .from_float = quantize_row_iq3_s,
  740. .from_float_reference = (ggml_from_float_t)quantize_row_iq3_s_reference,
  741. .vec_dot = ggml_vec_dot_iq3_s_q8_K,
  742. .vec_dot_type = GGML_TYPE_Q8_K,
  743. .nrows = 1,
  744. },
  745. [GGML_TYPE_IQ2_S] = {
  746. .type_name = "iq2_s",
  747. .blck_size = QK_K,
  748. .type_size = sizeof(block_iq2_s),
  749. .is_quantized = true,
  750. .to_float = (ggml_to_float_t) dequantize_row_iq2_s,
  751. .from_float = quantize_row_iq2_s,
  752. .from_float_reference = (ggml_from_float_t)quantize_row_iq2_s_reference,
  753. .vec_dot = ggml_vec_dot_iq2_s_q8_K,
  754. .vec_dot_type = GGML_TYPE_Q8_K,
  755. .nrows = 1,
  756. },
  757. [GGML_TYPE_IQ1_S] = {
  758. .type_name = "iq1_s",
  759. .blck_size = QK_K,
  760. .type_size = sizeof(block_iq1_s),
  761. .is_quantized = true,
  762. .to_float = (ggml_to_float_t) dequantize_row_iq1_s,
  763. .from_float = NULL,
  764. .from_float_reference = NULL,
  765. .vec_dot = ggml_vec_dot_iq1_s_q8_K,
  766. .vec_dot_type = GGML_TYPE_Q8_K,
  767. .nrows = 1,
  768. },
  769. [GGML_TYPE_IQ1_M] = {
  770. .type_name = "iq1_m",
  771. .blck_size = QK_K,
  772. .type_size = sizeof(block_iq1_m),
  773. .is_quantized = true,
  774. .to_float = (ggml_to_float_t) dequantize_row_iq1_m,
  775. .from_float = NULL,
  776. .from_float_reference = NULL,
  777. .vec_dot = ggml_vec_dot_iq1_m_q8_K,
  778. .vec_dot_type = GGML_TYPE_Q8_K,
  779. .nrows = 1,
  780. },
  781. [GGML_TYPE_IQ4_NL] = {
  782. .type_name = "iq4_nl",
  783. .blck_size = QK4_NL,
  784. .type_size = sizeof(block_iq4_nl),
  785. .is_quantized = true,
  786. .to_float = (ggml_to_float_t) dequantize_row_iq4_nl,
  787. .from_float = quantize_row_iq4_nl,
  788. .from_float_reference = (ggml_from_float_t)quantize_row_iq4_nl_reference,
  789. .vec_dot = ggml_vec_dot_iq4_nl_q8_0,
  790. .vec_dot_type = GGML_TYPE_Q8_0,
  791. .nrows = 1,
  792. },
  793. [GGML_TYPE_IQ4_XS] = {
  794. .type_name = "iq4_xs",
  795. .blck_size = QK_K,
  796. .type_size = sizeof(block_iq4_xs),
  797. .is_quantized = true,
  798. .to_float = (ggml_to_float_t) dequantize_row_iq4_xs,
  799. .from_float = quantize_row_iq4_xs,
  800. .from_float_reference = (ggml_from_float_t)quantize_row_iq4_xs_reference,
  801. .vec_dot = ggml_vec_dot_iq4_xs_q8_K,
  802. .vec_dot_type = GGML_TYPE_Q8_K,
  803. .nrows = 1,
  804. },
  805. [GGML_TYPE_Q8_K] = {
  806. .type_name = "q8_K",
  807. .blck_size = QK_K,
  808. .type_size = sizeof(block_q8_K),
  809. .is_quantized = true,
  810. .from_float = quantize_row_q8_K,
  811. },
  812. [GGML_TYPE_BF16] = {
  813. .type_name = "bf16",
  814. .blck_size = 1,
  815. .type_size = sizeof(ggml_bf16_t),
  816. .is_quantized = false,
  817. .to_float = (ggml_to_float_t) ggml_bf16_to_fp32_row,
  818. .from_float = (ggml_from_float_t) ggml_fp32_to_bf16_row,
  819. .from_float_reference = (ggml_from_float_t) ggml_fp32_to_bf16_row,
  820. .vec_dot = (ggml_vec_dot_t) ggml_vec_dot_bf16,
  821. .vec_dot_type = GGML_TYPE_BF16,
  822. .nrows = 1,
  823. }
  824. };
  825. // For internal test use
  826. ggml_type_traits_t ggml_internal_get_type_traits(enum ggml_type type) {
  827. GGML_ASSERT(type < GGML_TYPE_COUNT);
  828. return type_traits[type];
  829. }
  830. //
  831. // simd mappings
  832. //
  833. // we define a common set of C macros which map to specific intrinsics based on the current architecture
  834. // we then implement the fundamental computation operations below using only these macros
  835. // adding support for new architectures requires to define the corresponding SIMD macros
  836. //
  837. // GGML_F32_STEP / GGML_F16_STEP
  838. // number of elements to process in a single step
  839. //
  840. // GGML_F32_EPR / GGML_F16_EPR
  841. // number of elements to fit in a single register
  842. //
  843. #if defined(__ARM_NEON) && defined(__ARM_FEATURE_FMA)
  844. #define GGML_SIMD
  845. // F32 NEON
  846. #define GGML_F32_STEP 16
  847. #define GGML_F32_EPR 4
  848. #define GGML_F32x4 float32x4_t
  849. #define GGML_F32x4_ZERO vdupq_n_f32(0.0f)
  850. #define GGML_F32x4_SET1(x) vdupq_n_f32(x)
  851. #define GGML_F32x4_LOAD vld1q_f32
  852. #define GGML_F32x4_STORE vst1q_f32
  853. #define GGML_F32x4_FMA(a, b, c) vfmaq_f32(a, b, c)
  854. #define GGML_F32x4_ADD vaddq_f32
  855. #define GGML_F32x4_MUL vmulq_f32
  856. #define GGML_F32x4_REDUCE_ONE(x) vaddvq_f32(x)
  857. #define GGML_F32x4_REDUCE(res, x) \
  858. { \
  859. int offset = GGML_F32_ARR >> 1; \
  860. for (int i = 0; i < offset; ++i) { \
  861. x[i] = vaddq_f32(x[i], x[offset+i]); \
  862. } \
  863. offset >>= 1; \
  864. for (int i = 0; i < offset; ++i) { \
  865. x[i] = vaddq_f32(x[i], x[offset+i]); \
  866. } \
  867. offset >>= 1; \
  868. for (int i = 0; i < offset; ++i) { \
  869. x[i] = vaddq_f32(x[i], x[offset+i]); \
  870. } \
  871. res = GGML_F32x4_REDUCE_ONE(x[0]); \
  872. }
  873. #define GGML_F32_VEC GGML_F32x4
  874. #define GGML_F32_VEC_ZERO GGML_F32x4_ZERO
  875. #define GGML_F32_VEC_SET1 GGML_F32x4_SET1
  876. #define GGML_F32_VEC_LOAD GGML_F32x4_LOAD
  877. #define GGML_F32_VEC_STORE GGML_F32x4_STORE
  878. #define GGML_F32_VEC_FMA GGML_F32x4_FMA
  879. #define GGML_F32_VEC_ADD GGML_F32x4_ADD
  880. #define GGML_F32_VEC_MUL GGML_F32x4_MUL
  881. #define GGML_F32_VEC_REDUCE GGML_F32x4_REDUCE
  882. // F16 NEON
  883. #if defined(__ARM_FEATURE_FP16_VECTOR_ARITHMETIC)
  884. #define GGML_F16_STEP 32
  885. #define GGML_F16_EPR 8
  886. #define GGML_F16x8 float16x8_t
  887. #define GGML_F16x8_ZERO vdupq_n_f16(0.0f)
  888. #define GGML_F16x8_SET1(x) vdupq_n_f16(x)
  889. #define GGML_F16x8_LOAD(x) vld1q_f16((const ggml_fp16_internal_t *)(x))
  890. #define GGML_F16x8_STORE vst1q_f16
  891. #define GGML_F16x8_FMA(a, b, c) vfmaq_f16(a, b, c)
  892. #define GGML_F16x8_ADD vaddq_f16
  893. #define GGML_F16x8_MUL vmulq_f16
  894. #define GGML_F16x8_REDUCE(res, x) \
  895. do { \
  896. int offset = GGML_F16_ARR >> 1; \
  897. for (int i = 0; i < offset; ++i) { \
  898. x[i] = vaddq_f16(x[i], x[offset+i]); \
  899. } \
  900. offset >>= 1; \
  901. for (int i = 0; i < offset; ++i) { \
  902. x[i] = vaddq_f16(x[i], x[offset+i]); \
  903. } \
  904. offset >>= 1; \
  905. for (int i = 0; i < offset; ++i) { \
  906. x[i] = vaddq_f16(x[i], x[offset+i]); \
  907. } \
  908. const float32x4_t t0 = vcvt_f32_f16(vget_low_f16 (x[0])); \
  909. const float32x4_t t1 = vcvt_f32_f16(vget_high_f16(x[0])); \
  910. res = (ggml_float) vaddvq_f32(vaddq_f32(t0, t1)); \
  911. } while (0)
  912. #define GGML_F16_VEC GGML_F16x8
  913. #define GGML_F16_VEC_ZERO GGML_F16x8_ZERO
  914. #define GGML_F16_VEC_SET1 GGML_F16x8_SET1
  915. #define GGML_F16_VEC_LOAD(p, i) GGML_F16x8_LOAD(p)
  916. #define GGML_F16_VEC_STORE(p, r, i) GGML_F16x8_STORE((ggml_fp16_internal_t *)(p), r[i])
  917. #define GGML_F16_VEC_FMA GGML_F16x8_FMA
  918. #define GGML_F16_VEC_ADD GGML_F16x8_ADD
  919. #define GGML_F16_VEC_MUL GGML_F16x8_MUL
  920. #define GGML_F16_VEC_REDUCE GGML_F16x8_REDUCE
  921. #else
  922. // if FP16 vector arithmetic is not supported, we use FP32 instead
  923. // and take advantage of the vcvt_ functions to convert to/from FP16
  924. #define GGML_F16_STEP 16
  925. #define GGML_F16_EPR 4
  926. #define GGML_F32Cx4 float32x4_t
  927. #define GGML_F32Cx4_ZERO vdupq_n_f32(0.0f)
  928. #define GGML_F32Cx4_SET1(x) vdupq_n_f32(x)
  929. #define GGML_F32Cx4_LOAD(x) vcvt_f32_f16(vld1_f16((const ggml_fp16_internal_t *)(x)))
  930. #define GGML_F32Cx4_STORE(x, y) vst1_f16(x, vcvt_f16_f32(y))
  931. #define GGML_F32Cx4_FMA(a, b, c) vfmaq_f32(a, b, c)
  932. #define GGML_F32Cx4_ADD vaddq_f32
  933. #define GGML_F32Cx4_MUL vmulq_f32
  934. #define GGML_F32Cx4_REDUCE GGML_F32x4_REDUCE
  935. #define GGML_F16_VEC GGML_F32Cx4
  936. #define GGML_F16_VEC_ZERO GGML_F32Cx4_ZERO
  937. #define GGML_F16_VEC_SET1 GGML_F32Cx4_SET1
  938. #define GGML_F16_VEC_LOAD(p, i) GGML_F32Cx4_LOAD(p)
  939. #define GGML_F16_VEC_STORE(p, r, i) GGML_F32Cx4_STORE((ggml_fp16_internal_t *)(p), r[i])
  940. #define GGML_F16_VEC_FMA GGML_F32Cx4_FMA
  941. #define GGML_F16_VEC_ADD GGML_F32Cx4_ADD
  942. #define GGML_F16_VEC_MUL GGML_F32Cx4_MUL
  943. #define GGML_F16_VEC_REDUCE GGML_F32Cx4_REDUCE
  944. #endif
  945. #elif defined(__AVX512F__)
  946. #define GGML_SIMD
  947. // F32 AVX512
  948. #define GGML_F32_STEP 64
  949. #define GGML_F32_EPR 16
  950. #define GGML_F32x16 __m512
  951. #define GGML_F32x16_ZERO _mm512_setzero_ps()
  952. #define GGML_F32x16_SET1(x) _mm512_set1_ps(x)
  953. #define GGML_F32x16_LOAD _mm512_loadu_ps
  954. #define GGML_F32x16_STORE _mm512_storeu_ps
  955. // _mm512_fmadd_ps is defined in AVX512F so no guard is required
  956. #define GGML_F32x16_FMA(a, b, c) _mm512_fmadd_ps(b, c, a)
  957. #define GGML_F32x16_ADD _mm512_add_ps
  958. #define GGML_F32x16_MUL _mm512_mul_ps
  959. #define GGML_F32x16_REDUCE(res, x) \
  960. do { \
  961. int offset = GGML_F32_ARR >> 1; \
  962. for (int i = 0; i < offset; ++i) { \
  963. x[i] = _mm512_add_ps(x[i], x[offset+i]); \
  964. } \
  965. offset >>= 1; \
  966. for (int i = 0; i < offset; ++i) { \
  967. x[i] = _mm512_add_ps(x[i], x[offset+i]); \
  968. } \
  969. offset >>= 1; \
  970. for (int i = 0; i < offset; ++i) { \
  971. x[i] = _mm512_add_ps(x[i], x[offset+i]); \
  972. } \
  973. res = _mm512_reduce_add_ps(x[0]); \
  974. } while (0)
  975. // TODO: is this optimal ?
  976. #define GGML_F32_VEC GGML_F32x16
  977. #define GGML_F32_VEC_ZERO GGML_F32x16_ZERO
  978. #define GGML_F32_VEC_SET1 GGML_F32x16_SET1
  979. #define GGML_F32_VEC_LOAD GGML_F32x16_LOAD
  980. #define GGML_F32_VEC_STORE GGML_F32x16_STORE
  981. #define GGML_F32_VEC_FMA GGML_F32x16_FMA
  982. #define GGML_F32_VEC_ADD GGML_F32x16_ADD
  983. #define GGML_F32_VEC_MUL GGML_F32x16_MUL
  984. #define GGML_F32_VEC_REDUCE GGML_F32x16_REDUCE
  985. // F16 AVX512
  986. // F16 AVX
  987. #define GGML_F16_STEP 64
  988. #define GGML_F16_EPR 16
  989. // AVX512 has FP16 extension (AVX512_FP16) but I don't have it on my machine so I use FP32 instead
  990. #define GGML_F32Cx16 __m512
  991. #define GGML_F32Cx16_ZERO _mm512_setzero_ps()
  992. #define GGML_F32Cx16_SET1(x) _mm512_set1_ps(x)
  993. // unlike _mm256_cvt intrinsics that require F16C, _mm512_cvt is defined in AVX512F
  994. // so F16C guard isn't required
  995. #define GGML_F32Cx16_LOAD(x) _mm512_cvtph_ps(_mm256_loadu_si256((const __m256i *)(x)))
  996. #define GGML_F32Cx16_STORE(x, y) _mm256_storeu_si256((__m256i *)(x), _mm512_cvtps_ph(y, 0))
  997. #define GGML_F32Cx16_FMA(a, b, c) _mm512_fmadd_ps(b, c, a)
  998. #define GGML_F32Cx16_ADD _mm512_add_ps
  999. #define GGML_F32Cx16_MUL _mm512_mul_ps
  1000. #define GGML_F32Cx16_REDUCE(res, x) \
  1001. do { \
  1002. int offset = GGML_F32_ARR >> 1; \
  1003. for (int i = 0; i < offset; ++i) { \
  1004. x[i] = _mm512_add_ps(x[i], x[offset+i]); \
  1005. } \
  1006. offset >>= 1; \
  1007. for (int i = 0; i < offset; ++i) { \
  1008. x[i] = _mm512_add_ps(x[i], x[offset+i]); \
  1009. } \
  1010. offset >>= 1; \
  1011. for (int i = 0; i < offset; ++i) { \
  1012. x[i] = _mm512_add_ps(x[i], x[offset+i]); \
  1013. } \
  1014. res = _mm512_reduce_add_ps(x[0]); \
  1015. } while (0)
  1016. #define GGML_F16_VEC GGML_F32Cx16
  1017. #define GGML_F16_VEC_ZERO GGML_F32Cx16_ZERO
  1018. #define GGML_F16_VEC_SET1 GGML_F32Cx16_SET1
  1019. #define GGML_F16_VEC_LOAD(p, i) GGML_F32Cx16_LOAD(p)
  1020. #define GGML_F16_VEC_STORE(p, r, i) GGML_F32Cx16_STORE(p, r[i])
  1021. #define GGML_F16_VEC_FMA GGML_F32Cx16_FMA
  1022. #define GGML_F16_VEC_ADD GGML_F32Cx16_ADD
  1023. #define GGML_F16_VEC_MUL GGML_F32Cx16_MUL
  1024. #define GGML_F16_VEC_REDUCE GGML_F32Cx16_REDUCE
  1025. #elif defined(__AVX__)
  1026. #define GGML_SIMD
  1027. // F32 AVX
  1028. #define GGML_F32_STEP 32
  1029. #define GGML_F32_EPR 8
  1030. #define GGML_F32x8 __m256
  1031. #define GGML_F32x8_ZERO _mm256_setzero_ps()
  1032. #define GGML_F32x8_SET1(x) _mm256_set1_ps(x)
  1033. #define GGML_F32x8_LOAD _mm256_loadu_ps
  1034. #define GGML_F32x8_STORE _mm256_storeu_ps
  1035. #if defined(__FMA__)
  1036. #define GGML_F32x8_FMA(a, b, c) _mm256_fmadd_ps(b, c, a)
  1037. #else
  1038. #define GGML_F32x8_FMA(a, b, c) _mm256_add_ps(_mm256_mul_ps(b, c), a)
  1039. #endif
  1040. #define GGML_F32x8_ADD _mm256_add_ps
  1041. #define GGML_F32x8_MUL _mm256_mul_ps
  1042. #define GGML_F32x8_REDUCE(res, x) \
  1043. do { \
  1044. int offset = GGML_F32_ARR >> 1; \
  1045. for (int i = 0; i < offset; ++i) { \
  1046. x[i] = _mm256_add_ps(x[i], x[offset+i]); \
  1047. } \
  1048. offset >>= 1; \
  1049. for (int i = 0; i < offset; ++i) { \
  1050. x[i] = _mm256_add_ps(x[i], x[offset+i]); \
  1051. } \
  1052. offset >>= 1; \
  1053. for (int i = 0; i < offset; ++i) { \
  1054. x[i] = _mm256_add_ps(x[i], x[offset+i]); \
  1055. } \
  1056. const __m128 t0 = _mm_add_ps(_mm256_castps256_ps128(x[0]), \
  1057. _mm256_extractf128_ps(x[0], 1)); \
  1058. const __m128 t1 = _mm_hadd_ps(t0, t0); \
  1059. res = (ggml_float) _mm_cvtss_f32(_mm_hadd_ps(t1, t1)); \
  1060. } while (0)
  1061. // TODO: is this optimal ?
  1062. #define GGML_F32_VEC GGML_F32x8
  1063. #define GGML_F32_VEC_ZERO GGML_F32x8_ZERO
  1064. #define GGML_F32_VEC_SET1 GGML_F32x8_SET1
  1065. #define GGML_F32_VEC_LOAD GGML_F32x8_LOAD
  1066. #define GGML_F32_VEC_STORE GGML_F32x8_STORE
  1067. #define GGML_F32_VEC_FMA GGML_F32x8_FMA
  1068. #define GGML_F32_VEC_ADD GGML_F32x8_ADD
  1069. #define GGML_F32_VEC_MUL GGML_F32x8_MUL
  1070. #define GGML_F32_VEC_REDUCE GGML_F32x8_REDUCE
  1071. // F16 AVX
  1072. #define GGML_F16_STEP 32
  1073. #define GGML_F16_EPR 8
  1074. // F16 arithmetic is not supported by AVX, so we use F32 instead
  1075. #define GGML_F32Cx8 __m256
  1076. #define GGML_F32Cx8_ZERO _mm256_setzero_ps()
  1077. #define GGML_F32Cx8_SET1(x) _mm256_set1_ps(x)
  1078. #if defined(__F16C__)
  1079. // the _mm256_cvt intrinsics require F16C
  1080. #define GGML_F32Cx8_LOAD(x) _mm256_cvtph_ps(_mm_loadu_si128((const __m128i *)(x)))
  1081. #define GGML_F32Cx8_STORE(x, y) _mm_storeu_si128((__m128i *)(x), _mm256_cvtps_ph(y, 0))
  1082. #else
  1083. static inline __m256 __avx_f32cx8_load(ggml_fp16_t *x) {
  1084. float tmp[8];
  1085. for (int i = 0; i < 8; i++) {
  1086. tmp[i] = GGML_FP16_TO_FP32(x[i]);
  1087. }
  1088. return _mm256_loadu_ps(tmp);
  1089. }
  1090. static inline void __avx_f32cx8_store(ggml_fp16_t *x, __m256 y) {
  1091. float arr[8];
  1092. _mm256_storeu_ps(arr, y);
  1093. for (int i = 0; i < 8; i++)
  1094. x[i] = GGML_FP32_TO_FP16(arr[i]);
  1095. }
  1096. #define GGML_F32Cx8_LOAD(x) __avx_f32cx8_load(x)
  1097. #define GGML_F32Cx8_STORE(x, y) __avx_f32cx8_store(x, y)
  1098. #endif
  1099. #define GGML_F32Cx8_FMA GGML_F32x8_FMA
  1100. #define GGML_F32Cx8_ADD _mm256_add_ps
  1101. #define GGML_F32Cx8_MUL _mm256_mul_ps
  1102. #define GGML_F32Cx8_REDUCE GGML_F32x8_REDUCE
  1103. #define GGML_F16_VEC GGML_F32Cx8
  1104. #define GGML_F16_VEC_ZERO GGML_F32Cx8_ZERO
  1105. #define GGML_F16_VEC_SET1 GGML_F32Cx8_SET1
  1106. #define GGML_F16_VEC_LOAD(p, i) GGML_F32Cx8_LOAD(p)
  1107. #define GGML_F16_VEC_STORE(p, r, i) GGML_F32Cx8_STORE(p, r[i])
  1108. #define GGML_F16_VEC_FMA GGML_F32Cx8_FMA
  1109. #define GGML_F16_VEC_ADD GGML_F32Cx8_ADD
  1110. #define GGML_F16_VEC_MUL GGML_F32Cx8_MUL
  1111. #define GGML_F16_VEC_REDUCE GGML_F32Cx8_REDUCE
  1112. #elif defined(__POWER9_VECTOR__)
  1113. #define GGML_SIMD
  1114. // F32 POWER9
  1115. #define GGML_F32_STEP 32
  1116. #define GGML_F32_EPR 4
  1117. #define GGML_F32x4 vector float
  1118. #define GGML_F32x4_ZERO 0.0f
  1119. #define GGML_F32x4_SET1 vec_splats
  1120. #define GGML_F32x4_LOAD(p) vec_xl(0, p)
  1121. #define GGML_F32x4_STORE(p, r) vec_xst(r, 0, p)
  1122. #define GGML_F32x4_FMA(a, b, c) vec_madd(b, c, a)
  1123. #define GGML_F32x4_ADD vec_add
  1124. #define GGML_F32x4_MUL vec_mul
  1125. #define GGML_F32x4_REDUCE(res, x) \
  1126. { \
  1127. int offset = GGML_F32_ARR >> 1; \
  1128. for (int i = 0; i < offset; ++i) { \
  1129. x[i] = vec_add(x[i], x[offset+i]); \
  1130. } \
  1131. offset >>= 1; \
  1132. for (int i = 0; i < offset; ++i) { \
  1133. x[i] = vec_add(x[i], x[offset+i]); \
  1134. } \
  1135. offset >>= 1; \
  1136. for (int i = 0; i < offset; ++i) { \
  1137. x[i] = vec_add(x[i], x[offset+i]); \
  1138. } \
  1139. res = vec_extract(x[0], 0) + \
  1140. vec_extract(x[0], 1) + \
  1141. vec_extract(x[0], 2) + \
  1142. vec_extract(x[0], 3); \
  1143. }
  1144. #define GGML_F32_VEC GGML_F32x4
  1145. #define GGML_F32_VEC_ZERO GGML_F32x4_ZERO
  1146. #define GGML_F32_VEC_SET1 GGML_F32x4_SET1
  1147. #define GGML_F32_VEC_LOAD GGML_F32x4_LOAD
  1148. #define GGML_F32_VEC_STORE GGML_F32x4_STORE
  1149. #define GGML_F32_VEC_FMA GGML_F32x4_FMA
  1150. #define GGML_F32_VEC_ADD GGML_F32x4_ADD
  1151. #define GGML_F32_VEC_MUL GGML_F32x4_MUL
  1152. #define GGML_F32_VEC_REDUCE GGML_F32x4_REDUCE
  1153. // F16 POWER9
  1154. #define GGML_F16_STEP GGML_F32_STEP
  1155. #define GGML_F16_EPR GGML_F32_EPR
  1156. #define GGML_F16_VEC GGML_F32x4
  1157. #define GGML_F16_VEC_ZERO GGML_F32x4_ZERO
  1158. #define GGML_F16_VEC_SET1 GGML_F32x4_SET1
  1159. #define GGML_F16_VEC_FMA GGML_F32x4_FMA
  1160. #define GGML_F16_VEC_ADD GGML_F32x4_ADD
  1161. #define GGML_F16_VEC_MUL GGML_F32x4_MUL
  1162. #define GGML_F16_VEC_REDUCE GGML_F32x4_REDUCE
  1163. // Use vec_xl, not vec_ld, in case the load address is not aligned.
  1164. #define GGML_F16_VEC_LOAD(p, i) (i & 0x1) ? \
  1165. vec_extract_fp32_from_shorth(vec_xl(0, p - GGML_F16_EPR)) : \
  1166. vec_extract_fp32_from_shortl(vec_xl(0, p))
  1167. #define GGML_ENDIAN_BYTE(i) ((unsigned char *)&(uint16_t){1})[i]
  1168. #define GGML_F16_VEC_STORE(p, r, i) \
  1169. if (i & 0x1) \
  1170. vec_xst(vec_pack_to_short_fp32(r[i - GGML_ENDIAN_BYTE(1)], \
  1171. r[i - GGML_ENDIAN_BYTE(0)]), \
  1172. 0, p - GGML_F16_EPR)
  1173. #elif defined(__wasm_simd128__)
  1174. #define GGML_SIMD
  1175. // F32 WASM
  1176. #define GGML_F32_STEP 16
  1177. #define GGML_F32_EPR 4
  1178. #define GGML_F32x4 v128_t
  1179. #define GGML_F32x4_ZERO wasm_f32x4_splat(0.0f)
  1180. #define GGML_F32x4_SET1(x) wasm_f32x4_splat(x)
  1181. #define GGML_F32x4_LOAD wasm_v128_load
  1182. #define GGML_F32x4_STORE wasm_v128_store
  1183. #define GGML_F32x4_FMA(a, b, c) wasm_f32x4_add(wasm_f32x4_mul(b, c), a)
  1184. #define GGML_F32x4_ADD wasm_f32x4_add
  1185. #define GGML_F32x4_MUL wasm_f32x4_mul
  1186. #define GGML_F32x4_REDUCE(res, x) \
  1187. { \
  1188. int offset = GGML_F32_ARR >> 1; \
  1189. for (int i = 0; i < offset; ++i) { \
  1190. x[i] = wasm_f32x4_add(x[i], x[offset+i]); \
  1191. } \
  1192. offset >>= 1; \
  1193. for (int i = 0; i < offset; ++i) { \
  1194. x[i] = wasm_f32x4_add(x[i], x[offset+i]); \
  1195. } \
  1196. offset >>= 1; \
  1197. for (int i = 0; i < offset; ++i) { \
  1198. x[i] = wasm_f32x4_add(x[i], x[offset+i]); \
  1199. } \
  1200. res = wasm_f32x4_extract_lane(x[0], 0) + \
  1201. wasm_f32x4_extract_lane(x[0], 1) + \
  1202. wasm_f32x4_extract_lane(x[0], 2) + \
  1203. wasm_f32x4_extract_lane(x[0], 3); \
  1204. }
  1205. #define GGML_F32_VEC GGML_F32x4
  1206. #define GGML_F32_VEC_ZERO GGML_F32x4_ZERO
  1207. #define GGML_F32_VEC_SET1 GGML_F32x4_SET1
  1208. #define GGML_F32_VEC_LOAD GGML_F32x4_LOAD
  1209. #define GGML_F32_VEC_STORE GGML_F32x4_STORE
  1210. #define GGML_F32_VEC_FMA GGML_F32x4_FMA
  1211. #define GGML_F32_VEC_ADD GGML_F32x4_ADD
  1212. #define GGML_F32_VEC_MUL GGML_F32x4_MUL
  1213. #define GGML_F32_VEC_REDUCE GGML_F32x4_REDUCE
  1214. // F16 WASM
  1215. #define GGML_F16_STEP 16
  1216. #define GGML_F16_EPR 4
  1217. inline static v128_t __wasm_f16x4_load(const ggml_fp16_t * p) {
  1218. float tmp[4];
  1219. tmp[0] = GGML_FP16_TO_FP32(p[0]);
  1220. tmp[1] = GGML_FP16_TO_FP32(p[1]);
  1221. tmp[2] = GGML_FP16_TO_FP32(p[2]);
  1222. tmp[3] = GGML_FP16_TO_FP32(p[3]);
  1223. return wasm_v128_load(tmp);
  1224. }
  1225. inline static void __wasm_f16x4_store(ggml_fp16_t * p, v128_t x) {
  1226. float tmp[4];
  1227. wasm_v128_store(tmp, x);
  1228. p[0] = GGML_FP32_TO_FP16(tmp[0]);
  1229. p[1] = GGML_FP32_TO_FP16(tmp[1]);
  1230. p[2] = GGML_FP32_TO_FP16(tmp[2]);
  1231. p[3] = GGML_FP32_TO_FP16(tmp[3]);
  1232. }
  1233. #define GGML_F16x4 v128_t
  1234. #define GGML_F16x4_ZERO wasm_f32x4_splat(0.0f)
  1235. #define GGML_F16x4_SET1(x) wasm_f32x4_splat(x)
  1236. #define GGML_F16x4_LOAD(x) __wasm_f16x4_load(x)
  1237. #define GGML_F16x4_STORE(x, y) __wasm_f16x4_store(x, y)
  1238. #define GGML_F16x4_FMA GGML_F32x4_FMA
  1239. #define GGML_F16x4_ADD wasm_f32x4_add
  1240. #define GGML_F16x4_MUL wasm_f32x4_mul
  1241. #define GGML_F16x4_REDUCE(res, x) \
  1242. { \
  1243. int offset = GGML_F16_ARR >> 1; \
  1244. for (int i = 0; i < offset; ++i) { \
  1245. x[i] = wasm_f32x4_add(x[i], x[offset+i]); \
  1246. } \
  1247. offset >>= 1; \
  1248. for (int i = 0; i < offset; ++i) { \
  1249. x[i] = wasm_f32x4_add(x[i], x[offset+i]); \
  1250. } \
  1251. offset >>= 1; \
  1252. for (int i = 0; i < offset; ++i) { \
  1253. x[i] = wasm_f32x4_add(x[i], x[offset+i]); \
  1254. } \
  1255. res = wasm_f32x4_extract_lane(x[0], 0) + \
  1256. wasm_f32x4_extract_lane(x[0], 1) + \
  1257. wasm_f32x4_extract_lane(x[0], 2) + \
  1258. wasm_f32x4_extract_lane(x[0], 3); \
  1259. }
  1260. #define GGML_F16_VEC GGML_F16x4
  1261. #define GGML_F16_VEC_ZERO GGML_F16x4_ZERO
  1262. #define GGML_F16_VEC_SET1 GGML_F16x4_SET1
  1263. #define GGML_F16_VEC_LOAD(p, i) GGML_F16x4_LOAD(p)
  1264. #define GGML_F16_VEC_STORE(p, r, i) GGML_F16x4_STORE(p, r[i])
  1265. #define GGML_F16_VEC_FMA GGML_F16x4_FMA
  1266. #define GGML_F16_VEC_ADD GGML_F16x4_ADD
  1267. #define GGML_F16_VEC_MUL GGML_F16x4_MUL
  1268. #define GGML_F16_VEC_REDUCE GGML_F16x4_REDUCE
  1269. #elif defined(__SSE3__)
  1270. #define GGML_SIMD
  1271. // F32 SSE
  1272. #define GGML_F32_STEP 32
  1273. #define GGML_F32_EPR 4
  1274. #define GGML_F32x4 __m128
  1275. #define GGML_F32x4_ZERO _mm_setzero_ps()
  1276. #define GGML_F32x4_SET1(x) _mm_set1_ps(x)
  1277. #define GGML_F32x4_LOAD _mm_loadu_ps
  1278. #define GGML_F32x4_STORE _mm_storeu_ps
  1279. #if defined(__FMA__)
  1280. // TODO: Does this work?
  1281. #define GGML_F32x4_FMA(a, b, c) _mm_fmadd_ps(b, c, a)
  1282. #else
  1283. #define GGML_F32x4_FMA(a, b, c) _mm_add_ps(_mm_mul_ps(b, c), a)
  1284. #endif
  1285. #define GGML_F32x4_ADD _mm_add_ps
  1286. #define GGML_F32x4_MUL _mm_mul_ps
  1287. #define GGML_F32x4_REDUCE(res, x) \
  1288. { \
  1289. int offset = GGML_F32_ARR >> 1; \
  1290. for (int i = 0; i < offset; ++i) { \
  1291. x[i] = _mm_add_ps(x[i], x[offset+i]); \
  1292. } \
  1293. offset >>= 1; \
  1294. for (int i = 0; i < offset; ++i) { \
  1295. x[i] = _mm_add_ps(x[i], x[offset+i]); \
  1296. } \
  1297. offset >>= 1; \
  1298. for (int i = 0; i < offset; ++i) { \
  1299. x[i] = _mm_add_ps(x[i], x[offset+i]); \
  1300. } \
  1301. const __m128 t0 = _mm_hadd_ps(x[0], x[0]); \
  1302. res = (ggml_float) _mm_cvtss_f32(_mm_hadd_ps(t0, t0)); \
  1303. }
  1304. // TODO: is this optimal ?
  1305. #define GGML_F32_VEC GGML_F32x4
  1306. #define GGML_F32_VEC_ZERO GGML_F32x4_ZERO
  1307. #define GGML_F32_VEC_SET1 GGML_F32x4_SET1
  1308. #define GGML_F32_VEC_LOAD GGML_F32x4_LOAD
  1309. #define GGML_F32_VEC_STORE GGML_F32x4_STORE
  1310. #define GGML_F32_VEC_FMA GGML_F32x4_FMA
  1311. #define GGML_F32_VEC_ADD GGML_F32x4_ADD
  1312. #define GGML_F32_VEC_MUL GGML_F32x4_MUL
  1313. #define GGML_F32_VEC_REDUCE GGML_F32x4_REDUCE
  1314. // F16 SSE
  1315. #define GGML_F16_STEP 32
  1316. #define GGML_F16_EPR 4
  1317. static inline __m128 __sse_f16x4_load(ggml_fp16_t *x) {
  1318. float tmp[4];
  1319. tmp[0] = GGML_FP16_TO_FP32(x[0]);
  1320. tmp[1] = GGML_FP16_TO_FP32(x[1]);
  1321. tmp[2] = GGML_FP16_TO_FP32(x[2]);
  1322. tmp[3] = GGML_FP16_TO_FP32(x[3]);
  1323. return _mm_loadu_ps(tmp);
  1324. }
  1325. static inline void __sse_f16x4_store(ggml_fp16_t *x, __m128 y) {
  1326. float arr[4];
  1327. _mm_storeu_ps(arr, y);
  1328. x[0] = GGML_FP32_TO_FP16(arr[0]);
  1329. x[1] = GGML_FP32_TO_FP16(arr[1]);
  1330. x[2] = GGML_FP32_TO_FP16(arr[2]);
  1331. x[3] = GGML_FP32_TO_FP16(arr[3]);
  1332. }
  1333. #define GGML_F32Cx4 __m128
  1334. #define GGML_F32Cx4_ZERO _mm_setzero_ps()
  1335. #define GGML_F32Cx4_SET1(x) _mm_set1_ps(x)
  1336. #define GGML_F32Cx4_LOAD(x) __sse_f16x4_load(x)
  1337. #define GGML_F32Cx4_STORE(x, y) __sse_f16x4_store(x, y)
  1338. #define GGML_F32Cx4_FMA GGML_F32x4_FMA
  1339. #define GGML_F32Cx4_ADD _mm_add_ps
  1340. #define GGML_F32Cx4_MUL _mm_mul_ps
  1341. #define GGML_F32Cx4_REDUCE GGML_F32x4_REDUCE
  1342. #define GGML_F16_VEC GGML_F32Cx4
  1343. #define GGML_F16_VEC_ZERO GGML_F32Cx4_ZERO
  1344. #define GGML_F16_VEC_SET1 GGML_F32Cx4_SET1
  1345. #define GGML_F16_VEC_LOAD(p, i) GGML_F32Cx4_LOAD(p)
  1346. #define GGML_F16_VEC_STORE(p, r, i) GGML_F32Cx4_STORE(p, r[i])
  1347. #define GGML_F16_VEC_FMA GGML_F32Cx4_FMA
  1348. #define GGML_F16_VEC_ADD GGML_F32Cx4_ADD
  1349. #define GGML_F16_VEC_MUL GGML_F32Cx4_MUL
  1350. #define GGML_F16_VEC_REDUCE GGML_F32Cx4_REDUCE
  1351. #elif defined(__loongarch_asx)
  1352. #define GGML_SIMD
  1353. // F32 LASX
  1354. #define GGML_F32_STEP 32
  1355. #define GGML_F32_EPR 8
  1356. #define GGML_F32x8 __m256
  1357. #define GGML_F32x8_ZERO (__m256)__lasx_xvldi(0)
  1358. #define GGML_F32x8_SET1(x) (__m256)__lasx_xvreplfr2vr_s((x))
  1359. #define GGML_F32x8_LOAD(x) (__m256)__lasx_xvld((x), 0)
  1360. #define GGML_F32x8_STORE(x,y) __lasx_xvst((y), (x), 0)
  1361. #define GGML_F32x8_FMA(a, b, c) __lasx_xvfmadd_s(b, c, a)
  1362. #define GGML_F32x8_ADD __lasx_xvfadd_s
  1363. #define GGML_F32x8_MUL __lasx_xvfmul_s
  1364. #define GGML_F32x8_REDUCE(res, x) \
  1365. do { \
  1366. int offset = GGML_F32_ARR >> 1; \
  1367. for (int i = 0; i < offset; ++i) { \
  1368. x[i] = __lasx_xvfadd_s(x[i], x[offset+i]); \
  1369. } \
  1370. offset >>= 1; \
  1371. for (int i = 0; i < offset; ++i) { \
  1372. x[i] = __lasx_xvfadd_s(x[i], x[offset+i]); \
  1373. } \
  1374. offset >>= 1; \
  1375. for (int i = 0; i < offset; ++i) { \
  1376. x[i] = __lasx_xvfadd_s(x[i], x[offset+i]); \
  1377. } \
  1378. float *tmp_p = (float *)&x[0]; \
  1379. res = tmp_p[0] + tmp_p[1] + tmp_p[2] + tmp_p[3] + tmp_p[4] + tmp_p[5] + tmp_p[6] + tmp_p[7]; \
  1380. } while (0)
  1381. // TODO: is this optimal ?
  1382. #define GGML_F32_VEC GGML_F32x8
  1383. #define GGML_F32_VEC_ZERO GGML_F32x8_ZERO
  1384. #define GGML_F32_VEC_SET1 GGML_F32x8_SET1
  1385. #define GGML_F32_VEC_LOAD GGML_F32x8_LOAD
  1386. #define GGML_F32_VEC_STORE GGML_F32x8_STORE
  1387. #define GGML_F32_VEC_FMA GGML_F32x8_FMA
  1388. #define GGML_F32_VEC_ADD GGML_F32x8_ADD
  1389. #define GGML_F32_VEC_MUL GGML_F32x8_MUL
  1390. #define GGML_F32_VEC_REDUCE GGML_F32x8_REDUCE
  1391. // F16 LASX
  1392. #define GGML_F16_STEP 32
  1393. #define GGML_F16_EPR 8
  1394. // F16 arithmetic is not supported by AVX, so we use F32 instead
  1395. #define GGML_F32Cx8 __m256
  1396. #define GGML_F32Cx8_ZERO (__m256)__lasx_xvldi(0)
  1397. #define GGML_F32Cx8_SET1(x) (__m256)__lasx_xvreplgr2vr_w((x))
  1398. static inline __m256 __lasx_f32cx8_load(const ggml_fp16_t * x) {
  1399. float tmp[8];
  1400. for (int i = 0; i < 8; i++) {
  1401. tmp[i] = GGML_FP16_TO_FP32(x[i]);
  1402. }
  1403. return (__m256)__lasx_xvld(tmp, 0);
  1404. }
  1405. static inline void __lasx_f32cx8_store(ggml_fp16_t * x, __m256 y) {
  1406. float arr[8];
  1407. __lasx_xvst(y, arr, 0);
  1408. for (int i = 0; i < 8; i++) {
  1409. x[i] = GGML_FP32_TO_FP16(arr[i]);
  1410. }
  1411. }
  1412. #define GGML_F32Cx8_LOAD(x) __lasx_f32cx8_load(x)
  1413. #define GGML_F32Cx8_STORE(x, y) __lasx_f32cx8_store(x, y)
  1414. #define GGML_F32Cx8_FMA GGML_F32x8_FMA
  1415. #define GGML_F32Cx8_ADD __lasx_xvfadd_s
  1416. #define GGML_F32Cx8_MUL __lasx_xvfmul_s
  1417. #define GGML_F32Cx8_REDUCE GGML_F32x8_REDUCE
  1418. #define GGML_F16_VEC GGML_F32Cx8
  1419. #define GGML_F16_VEC_ZERO GGML_F32Cx8_ZERO
  1420. #define GGML_F16_VEC_SET1 GGML_F32Cx8_SET1
  1421. #define GGML_F16_VEC_LOAD(p, i) GGML_F32Cx8_LOAD(p)
  1422. #define GGML_F16_VEC_STORE(p, r, i) GGML_F32Cx8_STORE(p, r[i])
  1423. #define GGML_F16_VEC_FMA GGML_F32Cx8_FMA
  1424. #define GGML_F16_VEC_ADD GGML_F32Cx8_ADD
  1425. #define GGML_F16_VEC_MUL GGML_F32Cx8_MUL
  1426. #define GGML_F16_VEC_REDUCE GGML_F32Cx8_REDUCE
  1427. #elif defined(__loongarch_sx)
  1428. #define GGML_SIMD
  1429. // F32 LSX
  1430. #define GGML_F32_STEP 32
  1431. #define GGML_F32_EPR 4
  1432. #define GGML_F32x4 __m128
  1433. #define GGML_F32x4_ZERO __lsx_vldi(0)
  1434. #define GGML_F32x4_SET1(x) __lsx_vinsgr2vr_w(__lsx_vldi(0),(x), 0)
  1435. #define GGML_F32x4_LOAD(x) __lsx_vld((x), 0)
  1436. #define GGML_F32x4_STORE((x),(y)) __lsx_vst((y), (x), 0)
  1437. #define GGML_F32x4_FMA(a, b, c) __lsx_vfmadd_s(b, c, a)
  1438. #define GGML_F32x4_ADD __lsx_vfadd_s
  1439. #define GGML_F32x4_MUL __lsx_vfmul_s
  1440. #define GGML_F32x4_REDUCE(res, x) \
  1441. { \
  1442. int offset = GGML_F32_ARR >> 1; \
  1443. for (int i = 0; i < offset; ++i) { \
  1444. x[i] = __lsx_vfadd_s(x[i], x[offset+i]); \
  1445. } \
  1446. offset >>= 1; \
  1447. for (int i = 0; i < offset; ++i) { \
  1448. x[i] = __lsx_vfadd_s(x[i], x[offset+i]); \
  1449. } \
  1450. offset >>= 1; \
  1451. for (int i = 0; i < offset; ++i) { \
  1452. x[i] = __lsx_vfadd_s(x[i], x[offset+i]); \
  1453. } \
  1454. __m128i tmp = __lsx_vsrli_d((__m128i)x[0], 32); \
  1455. tmp = (__m128i)__lsx_vfadd_s((__m128)tmp, x[0]); \
  1456. tmp = __lsx_vpickev_w(__lsx_vldi(0), tmp); \
  1457. const __m128 t0 = __lsx_vshuf4i_w(tmp, 0x88); \
  1458. tmp = __lsx_vsrli_d((__m128i)t0, 32); \
  1459. tmp = (__m128i)__lsx_vfadd_s((__m128)tmp, t0); \
  1460. tmp = __lsx_vpickev_w(__lsx_vldi(0), tmp); \
  1461. res = (ggml_float) __lsx_vpickve2gr_w(__lsx_vshuf4i_w(tmp, 0x88), 0); \
  1462. }
  1463. #define GGML_F32_VEC GGML_F32x4
  1464. #define GGML_F32_VEC_ZERO GGML_F32x4_ZERO
  1465. #define GGML_F32_VEC_SET1 GGML_F32x4_SET1
  1466. #define GGML_F32_VEC_LOAD GGML_F32x4_LOAD
  1467. #define GGML_F32_VEC_STORE GGML_F32x4_STORE
  1468. #define GGML_F32_VEC_FMA GGML_F32x4_FMA
  1469. #define GGML_F32_VEC_ADD GGML_F32x4_ADD
  1470. #define GGML_F32_VEC_MUL GGML_F32x4_MUL
  1471. #define GGML_F32_VEC_REDUCE GGML_F32x4_REDUCE
  1472. // F16 LSX
  1473. #define GGML_F16_STEP 32
  1474. #define GGML_F16_EPR 4
  1475. static inline __m128 __lsx_f16x4_load(const ggml_fp16_t * x) {
  1476. float tmp[4];
  1477. tmp[0] = GGML_FP16_TO_FP32(x[0]);
  1478. tmp[1] = GGML_FP16_TO_FP32(x[1]);
  1479. tmp[2] = GGML_FP16_TO_FP32(x[2]);
  1480. tmp[3] = GGML_FP16_TO_FP32(x[3]);
  1481. return __lsx_vld(tmp, 0);
  1482. }
  1483. static inline void __lsx_f16x4_store(ggml_fp16_t * x, __m128 y) {
  1484. float arr[4];
  1485. __lsx_vst(y, arr, 0);
  1486. x[0] = GGML_FP32_TO_FP16(arr[0]);
  1487. x[1] = GGML_FP32_TO_FP16(arr[1]);
  1488. x[2] = GGML_FP32_TO_FP16(arr[2]);
  1489. x[3] = GGML_FP32_TO_FP16(arr[3]);
  1490. }
  1491. #define GGML_F32Cx4 __m128
  1492. #define GGML_F32Cx4_ZERO __lsx_vldi(0)
  1493. #define GGML_F32Cx4_SET1(x) __lsx_vinsgr2vr_w(__lsx_vldi(0),(x), 0)
  1494. #define GGML_F32Cx4_LOAD(x) __lsx_f16x4_load(x)
  1495. #define GGML_F32Cx4_STORE(x, y) __lsx_f16x4_store(x, y)
  1496. #define GGML_F32Cx4_FMA GGML_F32x4_FMA
  1497. #define GGML_F32Cx4_ADD __lsx_vfadd_s
  1498. #define GGML_F32Cx4_MUL __lsx_vfmul_s
  1499. #define GGML_F32Cx4_REDUCE GGML_F32x4_REDUCE
  1500. #define GGML_F16_VEC GGML_F32Cx4
  1501. #define GGML_F16_VEC_ZERO GGML_F32Cx4_ZERO
  1502. #define GGML_F16_VEC_SET1 GGML_F32Cx4_SET1
  1503. #define GGML_F16_VEC_LOAD(p, i) GGML_F32Cx4_LOAD(p)
  1504. #define GGML_F16_VEC_STORE(p, r, i) GGML_F32Cx4_STORE(p, r[i])
  1505. #define GGML_F16_VEC_FMA GGML_F32Cx4_FMA
  1506. #define GGML_F16_VEC_ADD GGML_F32Cx4_ADD
  1507. #define GGML_F16_VEC_MUL GGML_F32Cx4_MUL
  1508. #define GGML_F16_VEC_REDUCE GGML_F32Cx4_REDUCE
  1509. #endif
  1510. // GGML_F32_ARR / GGML_F16_ARR
  1511. // number of registers to use per step
  1512. #ifdef GGML_SIMD
  1513. #define GGML_F32_ARR (GGML_F32_STEP/GGML_F32_EPR)
  1514. #define GGML_F16_ARR (GGML_F16_STEP/GGML_F16_EPR)
  1515. #endif
  1516. //
  1517. // ggml context
  1518. //
  1519. struct ggml_context {
  1520. size_t mem_size;
  1521. void* mem_buffer;
  1522. bool mem_buffer_owned;
  1523. bool no_alloc;
  1524. bool no_alloc_save; // this is used to save the no_alloc state when using scratch buffers
  1525. int n_objects;
  1526. struct ggml_object* objects_begin;
  1527. struct ggml_object* objects_end;
  1528. struct ggml_scratch scratch;
  1529. struct ggml_scratch scratch_save;
  1530. };
  1531. struct ggml_context_container {
  1532. bool used;
  1533. struct ggml_context context;
  1534. };
  1535. struct ggml_compute_state_shared {
  1536. const struct ggml_cgraph* cgraph;
  1537. const struct ggml_cplan* cplan;
  1538. int64_t perf_node_start_cycles;
  1539. int64_t perf_node_start_time_us;
  1540. int n_threads;
  1541. // synchronization primitives
  1542. atomic_int n_active; // num active threads
  1543. atomic_int node_n; // active graph node
  1544. atomic_int node_task; // active graph node task phase
  1545. ggml_abort_callback abort_callback; // abort ggml_graph_compute when true
  1546. void* abort_callback_data;
  1547. atomic_int current_chunk; // currently processing chunk during Mat_Mul, shared between all the threads.
  1548. };
  1549. struct ggml_compute_state {
  1550. ggml_thread_t thrd;
  1551. int ith;
  1552. struct ggml_compute_state_shared* shared;
  1553. enum ggml_status ec;
  1554. };
  1555. //
  1556. // fundamental operations
  1557. //
  1558. inline static void ggml_vec_set_i8(const int n, int8_t * x, const int8_t v) { for (int i = 0; i < n; ++i) x[i] = v; }
  1559. inline static void ggml_vec_set_i16(const int n, int16_t * x, const int16_t v) { for (int i = 0; i < n; ++i) x[i] = v; }
  1560. inline static void ggml_vec_set_i32(const int n, int32_t * x, const int32_t v) { for (int i = 0; i < n; ++i) x[i] = v; }
  1561. inline static void ggml_vec_set_f16(const int n, ggml_fp16_t * x, const int32_t v) { for (int i = 0; i < n; ++i) x[i] = v; }
  1562. inline static void ggml_vec_set_bf16(const int n, ggml_bf16_t * x, const ggml_bf16_t v) { for (int i = 0; i < n; ++i) x[i] = v; }
  1563. inline static void ggml_vec_add_f32 (const int n, float * z, const float * x, const float * y) { for (int i = 0; i < n; ++i) z[i] = x[i] + y[i]; }
  1564. inline static void ggml_vec_add1_f32(const int n, float * z, const float * x, const float v) { for (int i = 0; i < n; ++i) z[i] = x[i] + v; }
  1565. inline static void ggml_vec_acc_f32 (const int n, float * y, const float * x) { for (int i = 0; i < n; ++i) y[i] += x[i]; }
  1566. inline static void ggml_vec_acc1_f32(const int n, float * y, const float v) { for (int i = 0; i < n; ++i) y[i] += v; }
  1567. inline static void ggml_vec_sub_f32 (const int n, float * z, const float * x, const float * y) { for (int i = 0; i < n; ++i) z[i] = x[i] - y[i]; }
  1568. inline static void ggml_vec_set_f32 (const int n, float * x, const float v) { for (int i = 0; i < n; ++i) x[i] = v; }
  1569. inline static void ggml_vec_cpy_f32 (const int n, float * y, const float * x) { for (int i = 0; i < n; ++i) y[i] = x[i]; }
  1570. inline static void ggml_vec_neg_f32 (const int n, float * y, const float * x) { for (int i = 0; i < n; ++i) y[i] = -x[i]; }
  1571. inline static void ggml_vec_mul_f32 (const int n, float * z, const float * x, const float * y) { for (int i = 0; i < n; ++i) z[i] = x[i]*y[i]; }
  1572. inline static void ggml_vec_div_f32 (const int n, float * z, const float * x, const float * y) { for (int i = 0; i < n; ++i) z[i] = x[i]/y[i]; }
  1573. static void ggml_vec_dot_f32(int n, float * restrict s, size_t bs, const float * restrict x, size_t bx, const float * restrict y, size_t by, int nrc) {
  1574. assert(nrc == 1);
  1575. UNUSED(nrc);
  1576. UNUSED(bx);
  1577. UNUSED(by);
  1578. UNUSED(bs);
  1579. #if defined(GGML_SIMD)
  1580. float sumf = 0.0f;
  1581. const int np = (n & ~(GGML_F32_STEP - 1));
  1582. GGML_F32_VEC sum[GGML_F32_ARR] = { GGML_F32_VEC_ZERO };
  1583. GGML_F32_VEC ax[GGML_F32_ARR];
  1584. GGML_F32_VEC ay[GGML_F32_ARR];
  1585. for (int i = 0; i < np; i += GGML_F32_STEP) {
  1586. for (int j = 0; j < GGML_F32_ARR; j++) {
  1587. ax[j] = GGML_F32_VEC_LOAD(x + i + j*GGML_F32_EPR);
  1588. ay[j] = GGML_F32_VEC_LOAD(y + i + j*GGML_F32_EPR);
  1589. sum[j] = GGML_F32_VEC_FMA(sum[j], ax[j], ay[j]);
  1590. }
  1591. }
  1592. // reduce sum0..sum3 to sum0
  1593. GGML_F32_VEC_REDUCE(sumf, sum);
  1594. // leftovers
  1595. for (int i = np; i < n; ++i) {
  1596. sumf += x[i]*y[i];
  1597. }
  1598. #else
  1599. // scalar
  1600. ggml_float sumf = 0.0;
  1601. for (int i = 0; i < n; ++i) {
  1602. sumf += (ggml_float)(x[i]*y[i]);
  1603. }
  1604. #endif
  1605. *s = sumf;
  1606. }
  1607. static void ggml_vec_dot_bf16(int n, float * restrict s, size_t bs, ggml_bf16_t * restrict x, size_t bx, ggml_bf16_t * restrict y, size_t by, int nrc) {
  1608. assert(nrc == 1);
  1609. UNUSED(nrc);
  1610. UNUSED(bx);
  1611. UNUSED(by);
  1612. UNUSED(bs);
  1613. int i = 0;
  1614. ggml_float sumf = 0;
  1615. #if defined(__AVX512BF16__)
  1616. __m512 c1 = _mm512_setzero_ps();
  1617. __m512 c2 = _mm512_setzero_ps();
  1618. for (; i + 64 <= n; i += 64) {
  1619. c1 = _mm512_dpbf16_ps(c1, m512bh(_mm512_loadu_si512((x + i))),
  1620. m512bh(_mm512_loadu_si512((y + i))));
  1621. c2 = _mm512_dpbf16_ps(c2, m512bh(_mm512_loadu_si512((x + i + 32))),
  1622. m512bh(_mm512_loadu_si512((y + i + 32))));
  1623. }
  1624. sumf += (ggml_float)_mm512_reduce_add_ps(c1);
  1625. sumf += (ggml_float)_mm512_reduce_add_ps(c2);
  1626. #elif defined(__AVX512F__)
  1627. #define LOAD(p) _mm512_castsi512_ps(_mm512_slli_epi32(_mm512_cvtepu16_epi32(_mm256_loadu_si256((const __m256i *)(p))), 16))
  1628. __m512 c1 = _mm512_setzero_ps();
  1629. __m512 c2 = _mm512_setzero_ps();
  1630. for (; i + 32 <= n; i += 32) {
  1631. c1 = _mm512_add_ps(_mm512_mul_ps(LOAD(x + i), LOAD(y + i)), c1);
  1632. c2 = _mm512_add_ps(_mm512_mul_ps(LOAD(x + i + 16), LOAD(y + i + 16)), c2);
  1633. }
  1634. sumf += (ggml_float)_mm512_reduce_add_ps(c1);
  1635. sumf += (ggml_float)_mm512_reduce_add_ps(c2);
  1636. #undef LOAD
  1637. #elif defined(__AVX2__)
  1638. #define LOAD(p) _mm256_castsi256_ps(_mm256_slli_epi32(_mm256_cvtepu16_epi32(_mm_loadu_si128((const __m128i *)(p))), 16))
  1639. __m256 c1 = _mm256_setzero_ps();
  1640. __m256 c2 = _mm256_setzero_ps();
  1641. __m256 c3 = _mm256_setzero_ps();
  1642. __m256 c4 = _mm256_setzero_ps();
  1643. for (; i + 32 <= n; i += 32) {
  1644. c1 = _mm256_add_ps(_mm256_mul_ps(LOAD(x + i), LOAD(y + i)), c1);
  1645. c2 = _mm256_add_ps(_mm256_mul_ps(LOAD(x + i + 8), LOAD(y + i + 8)), c2);
  1646. c3 = _mm256_add_ps(_mm256_mul_ps(LOAD(x + i + 16), LOAD(y + i + 16)), c3);
  1647. c4 = _mm256_add_ps(_mm256_mul_ps(LOAD(x + i + 24), LOAD(y + i + 24)), c4);
  1648. }
  1649. __m128 g;
  1650. c1 = _mm256_add_ps(_mm256_add_ps(c1, c3),
  1651. _mm256_add_ps(c2, c4));
  1652. g = _mm_add_ps(_mm256_extractf128_ps(c1, 1),
  1653. _mm256_castps256_ps128(c1));
  1654. g = _mm_add_ps(g, _mm_movehl_ps(g, g));
  1655. g = _mm_add_ss(g, _mm_movehdup_ps(g));
  1656. sumf += (ggml_float)_mm_cvtss_f32(g);
  1657. #undef LOAD
  1658. #endif
  1659. for (; i < n; ++i) {
  1660. sumf += (ggml_float)(GGML_BF16_TO_FP32(x[i]) *
  1661. GGML_BF16_TO_FP32(y[i]));
  1662. }
  1663. *s = sumf;
  1664. }
  1665. static void ggml_vec_dot_f16(int n, float * restrict s, size_t bs, ggml_fp16_t * restrict x, size_t bx, ggml_fp16_t * restrict y, size_t by, int nrc) {
  1666. assert(nrc == 1);
  1667. UNUSED(nrc);
  1668. UNUSED(bx);
  1669. UNUSED(by);
  1670. UNUSED(bs);
  1671. ggml_float sumf = 0.0;
  1672. #if defined(GGML_SIMD)
  1673. const int np = (n & ~(GGML_F16_STEP - 1));
  1674. GGML_F16_VEC sum[GGML_F16_ARR] = { GGML_F16_VEC_ZERO };
  1675. GGML_F16_VEC ax[GGML_F16_ARR];
  1676. GGML_F16_VEC ay[GGML_F16_ARR];
  1677. for (int i = 0; i < np; i += GGML_F16_STEP) {
  1678. for (int j = 0; j < GGML_F16_ARR; j++) {
  1679. ax[j] = GGML_F16_VEC_LOAD(x + i + j*GGML_F16_EPR, j);
  1680. ay[j] = GGML_F16_VEC_LOAD(y + i + j*GGML_F16_EPR, j);
  1681. sum[j] = GGML_F16_VEC_FMA(sum[j], ax[j], ay[j]);
  1682. }
  1683. }
  1684. // reduce sum0..sum3 to sum0
  1685. GGML_F16_VEC_REDUCE(sumf, sum);
  1686. // leftovers
  1687. for (int i = np; i < n; ++i) {
  1688. sumf += (ggml_float)(GGML_FP16_TO_FP32(x[i])*GGML_FP16_TO_FP32(y[i]));
  1689. }
  1690. #else
  1691. for (int i = 0; i < n; ++i) {
  1692. sumf += (ggml_float)(GGML_FP16_TO_FP32(x[i])*GGML_FP16_TO_FP32(y[i]));
  1693. }
  1694. #endif
  1695. *s = sumf;
  1696. }
  1697. // compute GGML_VEC_DOT_UNROLL dot products at once
  1698. // xs - x row stride in bytes
  1699. inline static void ggml_vec_dot_f16_unroll(const int n, const int xs, float * restrict s, void * restrict xv, ggml_fp16_t * restrict y) {
  1700. ggml_float sumf[GGML_VEC_DOT_UNROLL] = { 0.0 };
  1701. ggml_fp16_t * restrict x[GGML_VEC_DOT_UNROLL];
  1702. for (int i = 0; i < GGML_VEC_DOT_UNROLL; ++i) {
  1703. x[i] = (ggml_fp16_t *) ((char *) xv + i*xs);
  1704. }
  1705. #if defined(GGML_SIMD)
  1706. const int np = (n & ~(GGML_F16_STEP - 1));
  1707. GGML_F16_VEC sum[GGML_VEC_DOT_UNROLL][GGML_F16_ARR] = { { GGML_F16_VEC_ZERO } };
  1708. GGML_F16_VEC ax[GGML_F16_ARR];
  1709. GGML_F16_VEC ay[GGML_F16_ARR];
  1710. for (int i = 0; i < np; i += GGML_F16_STEP) {
  1711. for (int j = 0; j < GGML_F16_ARR; j++) {
  1712. ay[j] = GGML_F16_VEC_LOAD(y + i + j*GGML_F16_EPR, j);
  1713. for (int k = 0; k < GGML_VEC_DOT_UNROLL; ++k) {
  1714. ax[j] = GGML_F16_VEC_LOAD(x[k] + i + j*GGML_F16_EPR, j);
  1715. sum[k][j] = GGML_F16_VEC_FMA(sum[k][j], ax[j], ay[j]);
  1716. }
  1717. }
  1718. }
  1719. // reduce sum0..sum3 to sum0
  1720. for (int k = 0; k < GGML_VEC_DOT_UNROLL; ++k) {
  1721. GGML_F16_VEC_REDUCE(sumf[k], sum[k]);
  1722. }
  1723. // leftovers
  1724. for (int i = np; i < n; ++i) {
  1725. for (int j = 0; j < GGML_VEC_DOT_UNROLL; ++j) {
  1726. sumf[j] += (ggml_float)(GGML_FP16_TO_FP32(x[j][i])*GGML_FP16_TO_FP32(y[i]));
  1727. }
  1728. }
  1729. #else
  1730. for (int i = 0; i < n; ++i) {
  1731. for (int j = 0; j < GGML_VEC_DOT_UNROLL; ++j) {
  1732. sumf[j] += (ggml_float)(GGML_FP16_TO_FP32(x[j][i])*GGML_FP16_TO_FP32(y[i]));
  1733. }
  1734. }
  1735. #endif
  1736. for (int i = 0; i < GGML_VEC_DOT_UNROLL; ++i) {
  1737. s[i] = sumf[i];
  1738. }
  1739. }
  1740. inline static void ggml_vec_mad_f32(const int n, float * restrict y, const float * restrict x, const float v) {
  1741. #if defined(GGML_SIMD)
  1742. const int np = (n & ~(GGML_F32_STEP - 1));
  1743. GGML_F32_VEC vx = GGML_F32_VEC_SET1(v);
  1744. GGML_F32_VEC ax[GGML_F32_ARR];
  1745. GGML_F32_VEC ay[GGML_F32_ARR];
  1746. for (int i = 0; i < np; i += GGML_F32_STEP) {
  1747. for (int j = 0; j < GGML_F32_ARR; j++) {
  1748. ax[j] = GGML_F32_VEC_LOAD(x + i + j*GGML_F32_EPR);
  1749. ay[j] = GGML_F32_VEC_LOAD(y + i + j*GGML_F32_EPR);
  1750. ay[j] = GGML_F32_VEC_FMA(ay[j], ax[j], vx);
  1751. GGML_F32_VEC_STORE(y + i + j*GGML_F32_EPR, ay[j]);
  1752. }
  1753. }
  1754. // leftovers
  1755. for (int i = np; i < n; ++i) {
  1756. y[i] += x[i]*v;
  1757. }
  1758. #else
  1759. // scalar
  1760. for (int i = 0; i < n; ++i) {
  1761. y[i] += x[i]*v;
  1762. }
  1763. #endif
  1764. }
  1765. inline static void ggml_vec_mad_f16(const int n, ggml_fp16_t * restrict y, const ggml_fp16_t * restrict x, const float v) {
  1766. #if defined(GGML_SIMD)
  1767. const int np = (n & ~(GGML_F16_STEP - 1));
  1768. GGML_F16_VEC vx = GGML_F16_VEC_SET1(v);
  1769. GGML_F16_VEC ax[GGML_F16_ARR];
  1770. GGML_F16_VEC ay[GGML_F16_ARR];
  1771. for (int i = 0; i < np; i += GGML_F16_STEP) {
  1772. for (int j = 0; j < GGML_F16_ARR; j++) {
  1773. ax[j] = GGML_F16_VEC_LOAD(x + i + j*GGML_F16_EPR, j);
  1774. ay[j] = GGML_F16_VEC_LOAD(y + i + j*GGML_F16_EPR, j);
  1775. ay[j] = GGML_F16_VEC_FMA(ay[j], ax[j], vx);
  1776. GGML_F16_VEC_STORE(y + i + j*GGML_F16_EPR, ay, j);
  1777. }
  1778. }
  1779. // leftovers
  1780. for (int i = np; i < n; ++i) {
  1781. y[i] = GGML_FP32_TO_FP16(GGML_FP16_TO_FP32(y[i]) + GGML_FP16_TO_FP32(x[i])*v);
  1782. }
  1783. #else
  1784. // scalar
  1785. for (int i = 0; i < n; ++i) {
  1786. y[i] = GGML_FP32_TO_FP16(GGML_FP16_TO_FP32(y[i]) + GGML_FP16_TO_FP32(x[i])*v);
  1787. }
  1788. #endif
  1789. }
  1790. // xs and vs are byte strides of x and v
  1791. inline static void ggml_vec_mad_f32_unroll(const int n, const int xs, const int vs, float * restrict y, const float * restrict xv, const float * restrict vv) {
  1792. const float * restrict x[GGML_VEC_MAD_UNROLL];
  1793. const float * restrict v[GGML_VEC_MAD_UNROLL];
  1794. for (int i = 0; i < GGML_VEC_MAD_UNROLL; ++i) {
  1795. x[i] = (const float *) ((const char *) xv + i*xs);
  1796. v[i] = (const float *) ((const char *) vv + i*vs);
  1797. }
  1798. #if defined(GGML_SIMD)
  1799. const int np = (n & ~(GGML_F32_STEP - 1));
  1800. GGML_F32_VEC vx[GGML_VEC_MAD_UNROLL];
  1801. for (int k = 0; k < GGML_VEC_MAD_UNROLL; ++k) {
  1802. vx[k] = GGML_F32_VEC_SET1(v[k][0]);
  1803. }
  1804. GGML_F32_VEC ax[GGML_VEC_MAD_UNROLL][GGML_F32_ARR];
  1805. GGML_F32_VEC ay[GGML_F32_ARR];
  1806. for (int i = 0; i < np; i += GGML_F32_STEP) {
  1807. for (int j = 0; j < GGML_F32_ARR; j++) {
  1808. ay[j] = GGML_F32_VEC_LOAD(y + i + j*GGML_F32_EPR);
  1809. for (int k = 0; k < GGML_VEC_MAD_UNROLL; ++k) {
  1810. ax[k][j] = GGML_F32_VEC_LOAD(x[k] + i + j*GGML_F32_EPR);
  1811. ay[j] = GGML_F32_VEC_FMA(ay[j], ax[k][j], vx[k]);
  1812. }
  1813. GGML_F32_VEC_STORE(y + i + j*GGML_F32_EPR, ay[j]);
  1814. }
  1815. }
  1816. // leftovers
  1817. for (int k = 0; k < GGML_VEC_MAD_UNROLL; ++k) {
  1818. for (int i = np; i < n; ++i) {
  1819. y[i] += x[k][i]*v[k][0];
  1820. }
  1821. }
  1822. #else
  1823. // scalar
  1824. for (int k = 0; k < GGML_VEC_MAD_UNROLL; ++k) {
  1825. for (int i = 0; i < n; ++i) {
  1826. y[i] += x[k][i]*v[k][0];
  1827. }
  1828. }
  1829. #endif
  1830. }
  1831. //inline static void ggml_vec_scale_f32(const int n, float * y, const float v) { for (int i = 0; i < n; ++i) y[i] *= v; }
  1832. inline static void ggml_vec_scale_f32(const int n, float * y, const float v) {
  1833. #if defined(GGML_USE_ACCELERATE)
  1834. vDSP_vsmul(y, 1, &v, y, 1, n);
  1835. #elif defined(GGML_SIMD)
  1836. const int np = (n & ~(GGML_F32_STEP - 1));
  1837. GGML_F32_VEC vx = GGML_F32_VEC_SET1(v);
  1838. GGML_F32_VEC ay[GGML_F32_ARR];
  1839. for (int i = 0; i < np; i += GGML_F32_STEP) {
  1840. for (int j = 0; j < GGML_F32_ARR; j++) {
  1841. ay[j] = GGML_F32_VEC_LOAD(y + i + j*GGML_F32_EPR);
  1842. ay[j] = GGML_F32_VEC_MUL(ay[j], vx);
  1843. GGML_F32_VEC_STORE(y + i + j*GGML_F32_EPR, ay[j]);
  1844. }
  1845. }
  1846. // leftovers
  1847. for (int i = np; i < n; ++i) {
  1848. y[i] *= v;
  1849. }
  1850. #else
  1851. // scalar
  1852. for (int i = 0; i < n; ++i) {
  1853. y[i] *= v;
  1854. }
  1855. #endif
  1856. }
  1857. inline static void ggml_vec_scale_f16(const int n, ggml_fp16_t * y, const float v) {
  1858. #if defined(GGML_SIMD)
  1859. const int np = (n & ~(GGML_F16_STEP - 1));
  1860. GGML_F16_VEC vx = GGML_F16_VEC_SET1(v);
  1861. GGML_F16_VEC ay[GGML_F16_ARR];
  1862. for (int i = 0; i < np; i += GGML_F16_STEP) {
  1863. for (int j = 0; j < GGML_F16_ARR; j++) {
  1864. ay[j] = GGML_F16_VEC_LOAD(y + i + j*GGML_F16_EPR, j);
  1865. ay[j] = GGML_F16_VEC_MUL(ay[j], vx);
  1866. GGML_F16_VEC_STORE(y + i + j*GGML_F16_EPR, ay, j);
  1867. }
  1868. }
  1869. // leftovers
  1870. for (int i = np; i < n; ++i) {
  1871. y[i] = GGML_FP32_TO_FP16(GGML_FP16_TO_FP32(y[i])*v);
  1872. }
  1873. #else
  1874. // scalar
  1875. for (int i = 0; i < n; ++i) {
  1876. y[i] = GGML_FP32_TO_FP16(GGML_FP16_TO_FP32(y[i])*v);
  1877. }
  1878. #endif
  1879. }
  1880. inline static void ggml_vec_norm_f32 (const int n, float * s, const float * x) { ggml_vec_dot_f32(n, s, 0, x, 0, x, 0, 1); *s = sqrtf(*s); }
  1881. inline static void ggml_vec_sqr_f32 (const int n, float * y, const float * x) { for (int i = 0; i < n; ++i) y[i] = x[i]*x[i]; }
  1882. inline static void ggml_vec_sqrt_f32 (const int n, float * y, const float * x) { for (int i = 0; i < n; ++i) y[i] = sqrtf(x[i]); }
  1883. inline static void ggml_vec_log_f32 (const int n, float * y, const float * x) { for (int i = 0; i < n; ++i) y[i] = logf(x[i]); }
  1884. inline static void ggml_vec_abs_f32 (const int n, float * y, const float * x) { for (int i = 0; i < n; ++i) y[i] = fabsf(x[i]); }
  1885. inline static void ggml_vec_sgn_f32 (const int n, float * y, const float * x) { for (int i = 0; i < n; ++i) y[i] = (x[i] > 0.f) ? 1.f : ((x[i] < 0.f) ? -1.f : 0.f); }
  1886. inline static void ggml_vec_step_f32 (const int n, float * y, const float * x) { for (int i = 0; i < n; ++i) y[i] = (x[i] > 0.f) ? 1.f : 0.f; }
  1887. inline static void ggml_vec_tanh_f32 (const int n, float * y, const float * x) { for (int i = 0; i < n; ++i) y[i] = tanhf(x[i]); }
  1888. inline static void ggml_vec_elu_f32 (const int n, float * y, const float * x) { for (int i = 0; i < n; ++i) y[i] = (x[i] > 0.f) ? x[i] : expf(x[i])-1; }
  1889. inline static void ggml_vec_relu_f32 (const int n, float * y, const float * x) { for (int i = 0; i < n; ++i) y[i] = (x[i] > 0.f) ? x[i] : 0.f; }
  1890. inline static void ggml_vec_leaky_relu_f32 (const int n, float * y, const float * x, const float ns) { for (int i = 0; i < n; ++i) y[i] = ((x[i] > 0.f) ? x[i] : 0.f) + ns * ((x[i] < 0.0f) ? x[i] : 0.f); }
  1891. inline static void ggml_vec_sigmoid_f32 (const int n, float * y, const float * x) { for (int i = 0; i < n; ++i) y[i] = 1.f / (1.f + expf(-x[i])); }
  1892. // TODO: optimize performance
  1893. inline static void ggml_vec_hardswish_f32 (const int n, float * y, const float * x) { for (int i = 0; i < n; ++i) y[i] = x[i] * fminf(1.0f, fmaxf(0.0f, (x[i] + 3.0f) / 6.0f)); }
  1894. inline static void ggml_vec_hardsigmoid_f32 (const int n, float * y, const float * x) { for (int i = 0; i < n; ++i) y[i] = fminf(1.0f, fmaxf(0.0f, (x[i] + 3.0f) / 6.0f)); }
  1895. static const float GELU_COEF_A = 0.044715f;
  1896. static const float GELU_QUICK_COEF = -1.702f;
  1897. static const float SQRT_2_OVER_PI = 0.79788456080286535587989211986876f;
  1898. inline static float ggml_gelu_f32(float x) {
  1899. return 0.5f*x*(1.0f + tanhf(SQRT_2_OVER_PI*x*(1.0f + GELU_COEF_A*x*x)));
  1900. }
  1901. inline static void ggml_vec_gelu_f16(const int n, ggml_fp16_t * y, const ggml_fp16_t * x) {
  1902. const uint16_t * i16 = (const uint16_t *) x;
  1903. for (int i = 0; i < n; ++i) {
  1904. y[i] = ggml_table_gelu_f16[i16[i]];
  1905. }
  1906. }
  1907. #ifdef GGML_GELU_FP16
  1908. inline static void ggml_vec_gelu_f32(const int n, float * y, const float * x) {
  1909. uint16_t t;
  1910. for (int i = 0; i < n; ++i) {
  1911. if (x[i] <= -10.0f) {
  1912. y[i] = 0.0f;
  1913. } else if (x[i] >= 10.0f) {
  1914. y[i] = x[i];
  1915. } else {
  1916. ggml_fp16_t fp16 = GGML_FP32_TO_FP16(x[i]);
  1917. memcpy(&t, &fp16, sizeof(uint16_t));
  1918. y[i] = GGML_FP16_TO_FP32(ggml_table_gelu_f16[t]);
  1919. }
  1920. }
  1921. }
  1922. #else
  1923. inline static void ggml_vec_gelu_f32(const int n, float * y, const float * x) {
  1924. for (int i = 0; i < n; ++i) {
  1925. y[i] = ggml_gelu_f32(x[i]);
  1926. }
  1927. }
  1928. #endif
  1929. inline static float ggml_gelu_quick_f32(float x) {
  1930. return x*(1.0f/(1.0f+expf(GELU_QUICK_COEF*x)));
  1931. }
  1932. //inline static void ggml_vec_gelu_quick_f16(const int n, ggml_fp16_t * y, const ggml_fp16_t * x) {
  1933. // const uint16_t * i16 = (const uint16_t *) x;
  1934. // for (int i = 0; i < n; ++i) {
  1935. // y[i] = ggml_table_gelu_quick_f16[i16[i]];
  1936. // }
  1937. //}
  1938. #ifdef GGML_GELU_QUICK_FP16
  1939. inline static void ggml_vec_gelu_quick_f32(const int n, float * y, const float * x) {
  1940. uint16_t t;
  1941. for (int i = 0; i < n; ++i) {
  1942. ggml_fp16_t fp16 = GGML_FP32_TO_FP16(x[i]);
  1943. memcpy(&t, &fp16, sizeof(uint16_t));
  1944. y[i] = GGML_FP16_TO_FP32(ggml_table_gelu_quick_f16[t]);
  1945. }
  1946. }
  1947. #else
  1948. inline static void ggml_vec_gelu_quick_f32(const int n, float * y, const float * x) {
  1949. for (int i = 0; i < n; ++i) {
  1950. y[i] = ggml_gelu_quick_f32(x[i]);
  1951. }
  1952. }
  1953. #endif
  1954. // Sigmoid Linear Unit (SiLU) function
  1955. inline static float ggml_silu_f32(float x) {
  1956. return x/(1.0f + expf(-x));
  1957. }
  1958. #if __FINITE_MATH_ONLY__
  1959. #error "some routines in ggml.c require non-finite math arithmetics -- pass -fno-finite-math-only to the compiler to fix"
  1960. #error "ref: https://github.com/ggerganov/llama.cpp/pull/7154#issuecomment-2143844461"
  1961. #endif
  1962. #if defined(__ARM_NEON) && defined(__aarch64__)
  1963. // adapted from arm limited optimized routine
  1964. // the maximum error is 1.45358 plus 0.5 ulps
  1965. // numbers above 88.38 will flush to infinity
  1966. // numbers beneath -103.97 will flush to zero
  1967. inline static float32x4_t ggml_v_expf(float32x4_t x) {
  1968. const float32x4_t r = vdupq_n_f32(0x1.8p23f);
  1969. const float32x4_t z = vfmaq_f32(r, x, vdupq_n_f32(0x1.715476p+0f));
  1970. const float32x4_t n = vsubq_f32(z, r);
  1971. const float32x4_t b = vfmsq_f32(vfmsq_f32(x, n, vdupq_n_f32(0x1.62e4p-1f)), n,
  1972. vdupq_n_f32(0x1.7f7d1cp-20f));
  1973. const uint32x4_t e = vshlq_n_u32(vreinterpretq_u32_f32(z), 23);
  1974. const float32x4_t k = vreinterpretq_f32_u32(vaddq_u32(e, vreinterpretq_u32_f32(vdupq_n_f32(1))));
  1975. const uint32x4_t c = vcagtq_f32(n, vdupq_n_f32(126));
  1976. const float32x4_t u = vmulq_f32(b, b);
  1977. const float32x4_t j = vfmaq_f32(
  1978. vmulq_f32(vdupq_n_f32(0x1.ffffecp-1f), b),
  1979. vfmaq_f32(vfmaq_f32(vdupq_n_f32(0x1.fffdb6p-2f), vdupq_n_f32(0x1.555e66p-3f), b),
  1980. vfmaq_f32(vdupq_n_f32(0x1.573e2ep-5f), vdupq_n_f32(0x1.0e4020p-7f), b), u), u);
  1981. if (!vpaddd_u64(vreinterpretq_u64_u32(c)))
  1982. return vfmaq_f32(k, j, k);
  1983. const uint32x4_t d = vandq_u32(vclezq_f32(n), vdupq_n_u32(0x82000000));
  1984. const float32x4_t s1 = vreinterpretq_f32_u32(vaddq_u32(d, vdupq_n_u32(0x7f000000)));
  1985. const float32x4_t s2 = vreinterpretq_f32_u32(vsubq_u32(e, d));
  1986. return vbslq_f32(vcagtq_f32(n, vdupq_n_f32(192)), vmulq_f32(s1, s1),
  1987. vbslq_f32(c, vmulq_f32(vfmaq_f32(s2, s2, j), s1), vfmaq_f32(k, k, j)));
  1988. }
  1989. // computes silu x/(1+exp(-x)) in single precision vector
  1990. inline static float32x4_t ggml_v_silu(float32x4_t x) {
  1991. const float32x4_t one = vdupq_n_f32(1.0f);
  1992. const float32x4_t zero = vdupq_n_f32(0.0f);
  1993. const float32x4_t neg_x = vsubq_f32(zero, x);
  1994. const float32x4_t exp_neg_x = ggml_v_expf(neg_x);
  1995. const float32x4_t one_plus_exp_neg_x = vaddq_f32(one, exp_neg_x);
  1996. return vdivq_f32(x, one_plus_exp_neg_x);
  1997. }
  1998. #elif defined(__AVX512F__) && defined(__AVX512DQ__)
  1999. // adapted from arm limited optimized routine
  2000. // the maximum error is 1.45358 plus 0.5 ulps
  2001. // numbers above 88.38 will flush to infinity
  2002. // numbers beneath -103.97 will flush to zero
  2003. inline static __m512 ggml_v_expf(__m512 x) {
  2004. const __m512 r = _mm512_set1_ps(0x1.8p23f);
  2005. const __m512 z = _mm512_fmadd_ps(x, _mm512_set1_ps(0x1.715476p+0f), r);
  2006. const __m512 n = _mm512_sub_ps(z, r);
  2007. const __m512 b =
  2008. _mm512_fnmadd_ps(n, _mm512_set1_ps(0x1.7f7d1cp-20f),
  2009. _mm512_fnmadd_ps(n, _mm512_set1_ps(0x1.62e4p-1f), x));
  2010. const __mmask16 d =
  2011. _mm512_cmp_ps_mask(_mm512_abs_ps(n), _mm512_set1_ps(192), _CMP_GT_OQ);
  2012. const __m512 u = _mm512_mul_ps(b, b);
  2013. const __m512 j = _mm512_fmadd_ps(
  2014. _mm512_fmadd_ps(_mm512_fmadd_ps(_mm512_set1_ps(0x1.0e4020p-7f), b,
  2015. _mm512_set1_ps(0x1.573e2ep-5f)),
  2016. u,
  2017. _mm512_fmadd_ps(_mm512_set1_ps(0x1.555e66p-3f), b,
  2018. _mm512_set1_ps(0x1.fffdb6p-2f))),
  2019. u,
  2020. _mm512_fmadd_ps(_mm512_set1_ps(0x1.ffffecp-1f), b, _mm512_set1_ps(1.0F)));
  2021. const __m512 res = _mm512_scalef_ps(j, n);
  2022. if (_mm512_kortestz(d, d))
  2023. return res;
  2024. const __m512 zero = _mm512_setzero_ps();
  2025. const __m512 alt = _mm512_mask_blend_ps(
  2026. _mm512_cmp_ps_mask(n, zero, _CMP_LE_OQ), _mm512_set1_ps(INFINITY), zero);
  2027. return _mm512_mask_blend_ps(d, res, alt);
  2028. }
  2029. // computes silu x/(1+exp(-x)) in single precision vector
  2030. inline static __m512 ggml_v_silu(__m512 x) {
  2031. const __m512 one = _mm512_set1_ps(1);
  2032. const __m512 zero = _mm512_setzero_ps();
  2033. const __m512 neg_x = _mm512_sub_ps(zero, x);
  2034. const __m512 exp_neg_x = ggml_v_expf(neg_x);
  2035. const __m512 one_plus_exp_neg_x = _mm512_add_ps(one, exp_neg_x);
  2036. return _mm512_div_ps(x, one_plus_exp_neg_x);
  2037. }
  2038. #elif defined(__AVX2__) && defined(__FMA__)
  2039. // adapted from arm limited optimized routine
  2040. // the maximum error is 1.45358 plus 0.5 ulps
  2041. // numbers above 88.38 will flush to infinity
  2042. // numbers beneath -103.97 will flush to zero
  2043. inline static __m256 ggml_v_expf(__m256 x) {
  2044. const __m256 r = _mm256_set1_ps(0x1.8p23f);
  2045. const __m256 z = _mm256_fmadd_ps(x, _mm256_set1_ps(0x1.715476p+0f), r);
  2046. const __m256 n = _mm256_sub_ps(z, r);
  2047. const __m256 b = _mm256_fnmadd_ps(n, _mm256_set1_ps(0x1.7f7d1cp-20f),
  2048. _mm256_fnmadd_ps(n, _mm256_set1_ps(0x1.62e4p-1f), x));
  2049. const __m256i e = _mm256_slli_epi32(_mm256_castps_si256(z), 23);
  2050. const __m256 k = _mm256_castsi256_ps(
  2051. _mm256_add_epi32(e, _mm256_castps_si256(_mm256_set1_ps(1))));
  2052. const __m256i c = _mm256_castps_si256(
  2053. _mm256_cmp_ps(_mm256_andnot_ps(_mm256_set1_ps(-0.f), n),
  2054. _mm256_set1_ps(126), _CMP_GT_OQ));
  2055. const __m256 u = _mm256_mul_ps(b, b);
  2056. const __m256 j = _mm256_fmadd_ps(_mm256_fmadd_ps(_mm256_fmadd_ps(_mm256_set1_ps(0x1.0e4020p-7f), b,
  2057. _mm256_set1_ps(0x1.573e2ep-5f)), u,
  2058. _mm256_fmadd_ps(_mm256_set1_ps(0x1.555e66p-3f), b,
  2059. _mm256_set1_ps(0x1.fffdb6p-2f))),
  2060. u, _mm256_mul_ps(_mm256_set1_ps(0x1.ffffecp-1f), b));
  2061. if (!_mm256_movemask_ps(_mm256_castsi256_ps(c)))
  2062. return _mm256_fmadd_ps(j, k, k);
  2063. const __m256i g = _mm256_and_si256(
  2064. _mm256_castps_si256(_mm256_cmp_ps(n, _mm256_setzero_ps(), _CMP_LE_OQ)),
  2065. _mm256_set1_epi32(0x82000000u));
  2066. const __m256 s1 =
  2067. _mm256_castsi256_ps(_mm256_add_epi32(g, _mm256_set1_epi32(0x7f000000u)));
  2068. const __m256 s2 = _mm256_castsi256_ps(_mm256_sub_epi32(e, g));
  2069. const __m256i d = _mm256_castps_si256(
  2070. _mm256_cmp_ps(_mm256_andnot_ps(_mm256_set1_ps(-0.f), n),
  2071. _mm256_set1_ps(192), _CMP_GT_OQ));
  2072. return _mm256_or_ps(
  2073. _mm256_and_ps(_mm256_castsi256_ps(d), _mm256_mul_ps(s1, s1)),
  2074. _mm256_andnot_ps(
  2075. _mm256_castsi256_ps(d),
  2076. _mm256_or_ps(
  2077. _mm256_and_ps(_mm256_castsi256_ps(c),
  2078. _mm256_mul_ps(_mm256_fmadd_ps(s2, j, s2), s1)),
  2079. _mm256_andnot_ps(_mm256_castsi256_ps(c), _mm256_fmadd_ps(k, j, k)))));
  2080. }
  2081. // computes silu x/(1+exp(-x)) in single precision vector
  2082. inline static __m256 ggml_v_silu(__m256 x) {
  2083. const __m256 one = _mm256_set1_ps(1);
  2084. const __m256 zero = _mm256_setzero_ps();
  2085. const __m256 neg_x = _mm256_sub_ps(zero, x);
  2086. const __m256 exp_neg_x = ggml_v_expf(neg_x);
  2087. const __m256 one_plus_exp_neg_x = _mm256_add_ps(one, exp_neg_x);
  2088. return _mm256_div_ps(x, one_plus_exp_neg_x);
  2089. }
  2090. #elif defined(__SSE2__) // __AVX2__ / __ARM_NEON
  2091. #if defined(__FMA__)
  2092. #define MADD128(x, y, z) _mm_fmadd_ps(x, y, z)
  2093. #define NMADD128(x, y, z) _mm_fnmadd_ps(x, y, z)
  2094. #else
  2095. #define MADD128(x, y, z) _mm_add_ps(_mm_mul_ps(x, y), z)
  2096. #define NMADD128(x, y, z) _mm_sub_ps(z, _mm_mul_ps(x, y))
  2097. #endif
  2098. // adapted from arm limited optimized routine
  2099. // the maximum error is 1.45358 plus 0.5 ulps
  2100. // numbers above 88.38 will flush to infinity
  2101. // numbers beneath -103.97 will flush to zero
  2102. inline static __m128 ggml_v_expf(__m128 x) {
  2103. const __m128 r = _mm_set1_ps(0x1.8p23f);
  2104. const __m128 z = MADD128(x, _mm_set1_ps(0x1.715476p+0f), r);
  2105. const __m128 n = _mm_sub_ps(z, r);
  2106. const __m128 b =
  2107. NMADD128(n, _mm_set1_ps(0x1.7f7d1cp-20f), NMADD128(n, _mm_set1_ps(0x1.62e4p-1f), x));
  2108. const __m128i e = _mm_slli_epi32(_mm_castps_si128(z), 23);
  2109. const __m128 k = _mm_castsi128_ps(_mm_add_epi32(e, _mm_castps_si128(_mm_set1_ps(1))));
  2110. const __m128i c =
  2111. _mm_castps_si128(_mm_cmpgt_ps(_mm_andnot_ps(_mm_set1_ps(-0.f), n), _mm_set1_ps(126)));
  2112. const __m128 u = _mm_mul_ps(b, b);
  2113. const __m128 j =
  2114. MADD128(MADD128(MADD128(_mm_set1_ps(0x1.0e4020p-7f), b, _mm_set1_ps(0x1.573e2ep-5f)), u,
  2115. MADD128(_mm_set1_ps(0x1.555e66p-3f), b, _mm_set1_ps(0x1.fffdb6p-2f))),
  2116. u, _mm_mul_ps(_mm_set1_ps(0x1.ffffecp-1f), b));
  2117. if (!_mm_movemask_epi8(c))
  2118. return MADD128(j, k, k);
  2119. const __m128i g = _mm_and_si128(_mm_castps_si128(_mm_cmple_ps(n, _mm_setzero_ps())),
  2120. _mm_set1_epi32(0x82000000u));
  2121. const __m128 s1 = _mm_castsi128_ps(_mm_add_epi32(g, _mm_set1_epi32(0x7f000000u)));
  2122. const __m128 s2 = _mm_castsi128_ps(_mm_sub_epi32(e, g));
  2123. const __m128i d =
  2124. _mm_castps_si128(_mm_cmpgt_ps(_mm_andnot_ps(_mm_set1_ps(-0.f), n), _mm_set1_ps(192)));
  2125. return _mm_or_ps(
  2126. _mm_and_ps(_mm_castsi128_ps(d), _mm_mul_ps(s1, s1)),
  2127. _mm_andnot_ps(_mm_castsi128_ps(d),
  2128. _mm_or_ps(_mm_and_ps(_mm_castsi128_ps(c), _mm_mul_ps(MADD128(s2, j, s2), s1)),
  2129. _mm_andnot_ps(_mm_castsi128_ps(c), MADD128(k, j, k)))));
  2130. }
  2131. // computes silu x/(1+exp(-x)) in single precision vector
  2132. inline static __m128 ggml_v_silu(__m128 x) {
  2133. const __m128 one = _mm_set1_ps(1);
  2134. const __m128 zero = _mm_setzero_ps();
  2135. const __m128 neg_x = _mm_sub_ps(zero, x);
  2136. const __m128 exp_neg_x = ggml_v_expf(neg_x);
  2137. const __m128 one_plus_exp_neg_x = _mm_add_ps(one, exp_neg_x);
  2138. return _mm_div_ps(x, one_plus_exp_neg_x);
  2139. }
  2140. #endif // __ARM_NEON / __AVX2__ / __SSE2__
  2141. static void ggml_vec_silu_f32(const int n, float * y, const float * x) {
  2142. int i = 0;
  2143. #if defined(__AVX512F__) && defined(__AVX512DQ__)
  2144. for (; i + 15 < n; i += 16) {
  2145. _mm512_storeu_ps(y + i, ggml_v_silu(_mm512_loadu_ps(x + i)));
  2146. }
  2147. #elif defined(__AVX2__) && defined(__FMA__)
  2148. for (; i + 7 < n; i += 8) {
  2149. _mm256_storeu_ps(y + i, ggml_v_silu(_mm256_loadu_ps(x + i)));
  2150. }
  2151. #elif defined(__SSE2__)
  2152. for (; i + 3 < n; i += 4) {
  2153. _mm_storeu_ps(y + i, ggml_v_silu(_mm_loadu_ps(x + i)));
  2154. }
  2155. #elif defined(__ARM_NEON) && defined(__aarch64__)
  2156. for (; i + 3 < n; i += 4) {
  2157. vst1q_f32(y + i, ggml_v_silu(vld1q_f32(x + i)));
  2158. }
  2159. #endif
  2160. for (; i < n; ++i) {
  2161. y[i] = ggml_silu_f32(x[i]);
  2162. }
  2163. }
  2164. static ggml_float ggml_vec_soft_max_f32(const int n, float * y, const float * x, float max) {
  2165. int i = 0;
  2166. ggml_float sum = 0;
  2167. #if defined(__AVX512F__) && defined(__AVX512DQ__)
  2168. for (; i + 15 < n; i += 16) {
  2169. __m512 val = ggml_v_expf(_mm512_sub_ps(_mm512_loadu_ps(x + i),
  2170. _mm512_set1_ps(max)));
  2171. _mm512_storeu_ps(y + i, val);
  2172. sum += (ggml_float)_mm512_reduce_add_ps(val);
  2173. }
  2174. #elif defined(__AVX2__) && defined(__FMA__)
  2175. for (; i + 7 < n; i += 8) {
  2176. __m256 val = ggml_v_expf(_mm256_sub_ps(_mm256_loadu_ps(x + i),
  2177. _mm256_set1_ps(max)));
  2178. _mm256_storeu_ps(y + i, val);
  2179. __m128 val2 = _mm_add_ps(_mm256_extractf128_ps(val, 1),
  2180. _mm256_castps256_ps128(val));
  2181. val2 = _mm_add_ps(val2, _mm_movehl_ps(val2, val2));
  2182. val2 = _mm_add_ss(val2, _mm_movehdup_ps(val2));
  2183. sum += (ggml_float)_mm_cvtss_f32(val2);
  2184. }
  2185. #elif defined(__SSE2__)
  2186. for (; i + 3 < n; i += 4) {
  2187. __m128 val = ggml_v_expf(_mm_sub_ps(_mm_loadu_ps(x + i),
  2188. _mm_set1_ps(max)));
  2189. _mm_storeu_ps(y + i, val);
  2190. #if defined(__AVX__) || defined(__AVX2__) || defined(__AVX512F__)
  2191. val = _mm_add_ps(val, _mm_movehl_ps(val, val));
  2192. val = _mm_add_ss(val, _mm_movehdup_ps(val));
  2193. #else
  2194. __m128 tmp = _mm_shuffle_ps(val, val, _MM_SHUFFLE(2, 3, 0, 1));
  2195. val = _mm_add_ps(val, tmp);
  2196. tmp = _mm_movehl_ps(tmp, val);
  2197. val = _mm_add_ss(val, tmp);
  2198. #endif
  2199. sum += (ggml_float)_mm_cvtss_f32(val);
  2200. }
  2201. #elif defined(__ARM_NEON) && defined(__aarch64__)
  2202. for (; i + 3 < n; i += 4) {
  2203. float32x4_t val = ggml_v_expf(vsubq_f32(vld1q_f32(x + i),
  2204. vdupq_n_f32(max)));
  2205. vst1q_f32(y + i, val);
  2206. sum += (ggml_float)vaddvq_f32(val);
  2207. }
  2208. #endif
  2209. for (; i < n; ++i) {
  2210. float val = expf(x[i] - max);
  2211. sum += (ggml_float)val;
  2212. y[i] = val;
  2213. }
  2214. return sum;
  2215. }
  2216. inline static float ggml_silu_backward_f32(float x, float dy) {
  2217. const float s = 1.0f/(1.0f + expf(-x));
  2218. return dy*s*(1.0f + x*(1.0f - s));
  2219. }
  2220. inline static void ggml_vec_silu_backward_f32(const int n, float * dx, const float * x, const float * dy) {
  2221. for (int i = 0; i < n; ++i) {
  2222. dx[i] = ggml_silu_backward_f32(x[i], dy[i]);
  2223. }
  2224. }
  2225. inline static void ggml_vec_sum_f32(const int n, float * s, const float * x) {
  2226. #ifndef GGML_USE_ACCELERATE
  2227. ggml_float sum = 0.0;
  2228. for (int i = 0; i < n; ++i) {
  2229. sum += (ggml_float)x[i];
  2230. }
  2231. *s = sum;
  2232. #else
  2233. vDSP_sve(x, 1, s, n);
  2234. #endif
  2235. }
  2236. inline static void ggml_vec_sum_f32_ggf(const int n, ggml_float * s, const float * x) {
  2237. ggml_float sum = 0.0;
  2238. for (int i = 0; i < n; ++i) {
  2239. sum += (ggml_float)x[i];
  2240. }
  2241. *s = sum;
  2242. }
  2243. inline static void ggml_vec_sum_f16_ggf(const int n, float * s, const ggml_fp16_t * x) {
  2244. float sum = 0.0f;
  2245. for (int i = 0; i < n; ++i) {
  2246. sum += GGML_FP16_TO_FP32(x[i]);
  2247. }
  2248. *s = sum;
  2249. }
  2250. inline static void ggml_vec_sum_bf16_ggf(const int n, float * s, const ggml_bf16_t * x) {
  2251. float sum = 0.0f;
  2252. for (int i = 0; i < n; ++i) {
  2253. sum += GGML_BF16_TO_FP32(x[i]);
  2254. }
  2255. *s = sum;
  2256. }
  2257. inline static void ggml_vec_max_f32(const int n, float * s, const float * x) {
  2258. #ifndef GGML_USE_ACCELERATE
  2259. float max = -INFINITY;
  2260. for (int i = 0; i < n; ++i) {
  2261. max = MAX(max, x[i]);
  2262. }
  2263. *s = max;
  2264. #else
  2265. vDSP_maxv(x, 1, s, n);
  2266. #endif
  2267. }
  2268. inline static void ggml_vec_norm_inv_f32(const int n, float * s, const float * x) {
  2269. ggml_vec_norm_f32(n, s, x);
  2270. *s = 1.f/(*s);
  2271. }
  2272. inline static void ggml_vec_argmax_f32(const int n, int * s, const float * x) {
  2273. float max = -INFINITY;
  2274. int idx = 0;
  2275. for (int i = 0; i < n; ++i) {
  2276. max = MAX(max, x[i]);
  2277. if (max == x[i]) { idx = i; }
  2278. }
  2279. *s = idx;
  2280. }
  2281. //
  2282. // data types
  2283. //
  2284. static const char * GGML_OP_NAME[GGML_OP_COUNT] = {
  2285. "NONE",
  2286. "DUP",
  2287. "ADD",
  2288. "ADD1",
  2289. "ACC",
  2290. "SUB",
  2291. "MUL",
  2292. "DIV",
  2293. "SQR",
  2294. "SQRT",
  2295. "LOG",
  2296. "SUM",
  2297. "SUM_ROWS",
  2298. "MEAN",
  2299. "ARGMAX",
  2300. "REPEAT",
  2301. "REPEAT_BACK",
  2302. "CONCAT",
  2303. "SILU_BACK",
  2304. "NORM",
  2305. "RMS_NORM",
  2306. "RMS_NORM_BACK",
  2307. "GROUP_NORM",
  2308. "MUL_MAT",
  2309. "MUL_MAT_ID",
  2310. "OUT_PROD",
  2311. "SCALE",
  2312. "SET",
  2313. "CPY",
  2314. "CONT",
  2315. "RESHAPE",
  2316. "VIEW",
  2317. "PERMUTE",
  2318. "TRANSPOSE",
  2319. "GET_ROWS",
  2320. "GET_ROWS_BACK",
  2321. "DIAG",
  2322. "DIAG_MASK_INF",
  2323. "DIAG_MASK_ZERO",
  2324. "SOFT_MAX",
  2325. "SOFT_MAX_BACK",
  2326. "ROPE",
  2327. "ROPE_BACK",
  2328. "CLAMP",
  2329. "CONV_TRANSPOSE_1D",
  2330. "IM2COL",
  2331. "CONV_TRANSPOSE_2D",
  2332. "POOL_1D",
  2333. "POOL_2D",
  2334. "UPSCALE",
  2335. "PAD",
  2336. "ARANGE",
  2337. "TIMESTEP_EMBEDDING",
  2338. "ARGSORT",
  2339. "LEAKY_RELU",
  2340. "FLASH_ATTN_EXT",
  2341. "FLASH_ATTN_BACK",
  2342. "SSM_CONV",
  2343. "SSM_SCAN",
  2344. "WIN_PART",
  2345. "WIN_UNPART",
  2346. "GET_REL_POS",
  2347. "ADD_REL_POS",
  2348. "UNARY",
  2349. "MAP_UNARY",
  2350. "MAP_BINARY",
  2351. "MAP_CUSTOM1_F32",
  2352. "MAP_CUSTOM2_F32",
  2353. "MAP_CUSTOM3_F32",
  2354. "MAP_CUSTOM1",
  2355. "MAP_CUSTOM2",
  2356. "MAP_CUSTOM3",
  2357. "CROSS_ENTROPY_LOSS",
  2358. "CROSS_ENTROPY_LOSS_BACK",
  2359. };
  2360. static_assert(GGML_OP_COUNT == 74, "GGML_OP_COUNT != 74");
  2361. static const char * GGML_OP_SYMBOL[GGML_OP_COUNT] = {
  2362. "none",
  2363. "x",
  2364. "x+y",
  2365. "x+y",
  2366. "view(x,nb,offset)+=y->x",
  2367. "x-y",
  2368. "x*y",
  2369. "x/y",
  2370. "x^2",
  2371. "√x",
  2372. "log(x)",
  2373. "Σx",
  2374. "Σx_k",
  2375. "Σx/n",
  2376. "argmax(x)",
  2377. "repeat(x)",
  2378. "repeat_back(x)",
  2379. "concat(x, y)",
  2380. "silu_back(x)",
  2381. "norm(x)",
  2382. "rms_norm(x)",
  2383. "rms_norm_back(x)",
  2384. "group_norm(x)",
  2385. "X*Y",
  2386. "X[i]*Y",
  2387. "X*Y",
  2388. "x*v",
  2389. "y-\\>view(x)",
  2390. "x-\\>y",
  2391. "cont(x)",
  2392. "reshape(x)",
  2393. "view(x)",
  2394. "permute(x)",
  2395. "transpose(x)",
  2396. "get_rows(x)",
  2397. "get_rows_back(x)",
  2398. "diag(x)",
  2399. "diag_mask_inf(x)",
  2400. "diag_mask_zero(x)",
  2401. "soft_max(x)",
  2402. "soft_max_back(x)",
  2403. "rope(x)",
  2404. "rope_back(x)",
  2405. "clamp(x)",
  2406. "conv_transpose_1d(x)",
  2407. "im2col(x)",
  2408. "conv_transpose_2d(x)",
  2409. "pool_1d(x)",
  2410. "pool_2d(x)",
  2411. "upscale(x)",
  2412. "pad(x)",
  2413. "arange(start, stop, step)",
  2414. "timestep_embedding(timesteps, dim, max_period)",
  2415. "argsort(x)",
  2416. "leaky_relu(x)",
  2417. "flash_attn_ext(x)",
  2418. "flash_attn_back(x)",
  2419. "ssm_conv(x)",
  2420. "ssm_scan(x)",
  2421. "win_part(x)",
  2422. "win_unpart(x)",
  2423. "get_rel_pos(x)",
  2424. "add_rel_pos(x)",
  2425. "unary(x)",
  2426. "f(x)",
  2427. "f(x,y)",
  2428. "custom_f32(x)",
  2429. "custom_f32(x,y)",
  2430. "custom_f32(x,y,z)",
  2431. "custom(x)",
  2432. "custom(x,y)",
  2433. "custom(x,y,z)",
  2434. "cross_entropy_loss(x,y)",
  2435. "cross_entropy_loss_back(x,y)",
  2436. };
  2437. static_assert(GGML_OP_COUNT == 74, "GGML_OP_COUNT != 74");
  2438. static_assert(GGML_OP_POOL_COUNT == 2, "GGML_OP_POOL_COUNT != 2");
  2439. static const char * GGML_UNARY_OP_NAME[GGML_UNARY_OP_COUNT] = {
  2440. "ABS",
  2441. "SGN",
  2442. "NEG",
  2443. "STEP",
  2444. "TANH",
  2445. "ELU",
  2446. "RELU",
  2447. "SIGMOID",
  2448. "GELU",
  2449. "GELU_QUICK",
  2450. "SILU",
  2451. "HARDSWISH",
  2452. "HARDSIGMOID",
  2453. };
  2454. static_assert(GGML_UNARY_OP_COUNT == 13, "GGML_UNARY_OP_COUNT != 13");
  2455. static_assert(sizeof(struct ggml_object)%GGML_MEM_ALIGN == 0, "ggml_object size must be a multiple of GGML_MEM_ALIGN");
  2456. static_assert(sizeof(struct ggml_tensor)%GGML_MEM_ALIGN == 0, "ggml_tensor size must be a multiple of GGML_MEM_ALIGN");
  2457. // WARN:
  2458. // Mis-configuration can lead to problem that's hard to reason about:
  2459. // * At best it crash or talks nosense.
  2460. // * At worst it talks slightly difference but hard to perceive.
  2461. //
  2462. // An op has to enable INIT or FINALIZE when any of it's branch needs that pass.
  2463. // Take care about compile options (e.g., GGML_USE_xxx).
  2464. static bool GGML_OP_HAS_INIT [GGML_OP_COUNT] = { 0 };
  2465. static bool GGML_OP_HAS_FINALIZE[GGML_OP_COUNT] = { 0 };
  2466. static void ggml_setup_op_has_task_pass(void) {
  2467. { // INIT
  2468. bool * p = GGML_OP_HAS_INIT;
  2469. p[GGML_OP_ACC ] = true;
  2470. p[GGML_OP_MUL_MAT ] = true;
  2471. p[GGML_OP_MUL_MAT_ID ] = true;
  2472. p[GGML_OP_OUT_PROD ] = true;
  2473. p[GGML_OP_SET ] = true;
  2474. p[GGML_OP_GET_ROWS_BACK ] = true;
  2475. p[GGML_OP_DIAG_MASK_INF ] = true;
  2476. p[GGML_OP_DIAG_MASK_ZERO ] = true;
  2477. p[GGML_OP_CONV_TRANSPOSE_1D ] = true;
  2478. p[GGML_OP_CONV_TRANSPOSE_2D ] = true;
  2479. p[GGML_OP_FLASH_ATTN_BACK ] = true;
  2480. p[GGML_OP_CROSS_ENTROPY_LOSS ] = true;
  2481. p[GGML_OP_ADD_REL_POS ] = true;
  2482. }
  2483. { // FINALIZE
  2484. bool * p = GGML_OP_HAS_FINALIZE;
  2485. p[GGML_OP_CROSS_ENTROPY_LOSS ] = true;
  2486. }
  2487. }
  2488. //
  2489. // NUMA support
  2490. //
  2491. #define GGML_NUMA_MAX_NODES 8
  2492. #define GGML_NUMA_MAX_CPUS 512
  2493. struct ggml_numa_node {
  2494. uint32_t cpus[GGML_NUMA_MAX_CPUS]; // hardware threads on this node
  2495. uint32_t n_cpus;
  2496. };
  2497. struct ggml_numa_nodes {
  2498. enum ggml_numa_strategy numa_strategy;
  2499. struct ggml_numa_node nodes[GGML_NUMA_MAX_NODES];
  2500. uint32_t n_nodes;
  2501. uint32_t total_cpus; // hardware threads on system
  2502. uint32_t current_node; // node on which main process is execting
  2503. #if defined(__gnu_linux__)
  2504. cpu_set_t cpuset; // cpuset from numactl
  2505. #else
  2506. uint32_t cpuset; // no NUMA support outside of Linux at this time. Use a portable datatype
  2507. #endif
  2508. };
  2509. //
  2510. // ggml state
  2511. //
  2512. struct ggml_state {
  2513. struct ggml_context_container contexts[GGML_MAX_CONTEXTS];
  2514. struct ggml_numa_nodes numa;
  2515. };
  2516. // global state
  2517. static struct ggml_state g_state;
  2518. static atomic_flag g_state_critical = ATOMIC_FLAG_INIT;
  2519. // barrier via spin lock
  2520. inline static void ggml_critical_section_start(void) {
  2521. while (atomic_flag_test_and_set(&g_state_critical)) {
  2522. // spin
  2523. sched_yield();
  2524. }
  2525. }
  2526. // TODO: make this somehow automatically executed
  2527. // some sort of "sentry" mechanism
  2528. inline static void ggml_critical_section_end(void) {
  2529. atomic_flag_clear(&g_state_critical);
  2530. }
  2531. #if defined(__gnu_linux__)
  2532. static cpu_set_t ggml_get_numa_affinity(void) {
  2533. cpu_set_t cpuset;
  2534. pthread_t thread;
  2535. thread = pthread_self();
  2536. CPU_ZERO(&cpuset);
  2537. pthread_getaffinity_np(thread, sizeof(cpu_set_t), &cpuset);
  2538. return cpuset;
  2539. }
  2540. #else
  2541. static uint32_t ggml_get_numa_affinity(void) {
  2542. return 0; // no NUMA support
  2543. }
  2544. #endif
  2545. void ggml_numa_init(enum ggml_numa_strategy numa_flag) {
  2546. if (g_state.numa.n_nodes > 0) {
  2547. fprintf(stderr, "ggml_numa_init: NUMA already initialized\n");
  2548. return;
  2549. }
  2550. #if defined(__gnu_linux__)
  2551. struct stat st;
  2552. char path[256];
  2553. int rv;
  2554. // set numa scheme
  2555. g_state.numa.numa_strategy = numa_flag;
  2556. GGML_PRINT_DEBUG("numa strategy %u\n",g_state.numa.numa_strategy);
  2557. g_state.numa.cpuset = ggml_get_numa_affinity();
  2558. // enumerate nodes
  2559. while (g_state.numa.n_nodes < GGML_NUMA_MAX_NODES) {
  2560. rv = snprintf(path, sizeof(path), "/sys/devices/system/node/node%u", g_state.numa.n_nodes);
  2561. GGML_ASSERT(rv > 0 && (unsigned)rv < sizeof(path));
  2562. if (stat(path, &st) != 0) { break; }
  2563. ++g_state.numa.n_nodes;
  2564. }
  2565. // enumerate CPUs
  2566. while (g_state.numa.total_cpus < GGML_NUMA_MAX_CPUS) {
  2567. rv = snprintf(path, sizeof(path), "/sys/devices/system/cpu/cpu%u", g_state.numa.total_cpus);
  2568. GGML_ASSERT(rv > 0 && (unsigned)rv < sizeof(path));
  2569. if (stat(path, &st) != 0) { break; }
  2570. ++g_state.numa.total_cpus;
  2571. }
  2572. GGML_PRINT_DEBUG("found %u numa nodes, %u CPUs\n", g_state.numa.n_nodes, g_state.numa.total_cpus);
  2573. // figure out which node we're on
  2574. uint current_cpu;
  2575. int getcpu_ret = 0;
  2576. #if __GLIBC__ > 2 || (__GLIBC__ == 2 && __GLIBC_MINOR__ > 28) || defined(__COSMOPOLITAN__)
  2577. getcpu_ret = getcpu(&current_cpu, &g_state.numa.current_node);
  2578. #else
  2579. // old glibc doesn't have a wrapper for this call. Fall back on direct syscall
  2580. # if !defined(SYS_getcpu) && defined(SYS_get_cpu)
  2581. # define SYS_getcpu SYS_get_cpu // some older glibc versions use this name
  2582. # endif
  2583. getcpu_ret = syscall(SYS_getcpu, &current_cpu, &g_state.numa.current_node);
  2584. #endif
  2585. if (g_state.numa.n_nodes < 1 || g_state.numa.total_cpus < 1 || getcpu_ret != 0) {
  2586. g_state.numa.n_nodes = 0;
  2587. return;
  2588. }
  2589. GGML_PRINT_DEBUG("found our process on numa node %u, CPU %u\n", g_state.numa.current_node, current_cpu);
  2590. for (uint32_t n = 0; n < g_state.numa.n_nodes; ++n) {
  2591. struct ggml_numa_node * node = &g_state.numa.nodes[n];
  2592. GGML_PRINT_DEBUG("CPUs on node %u:", n);
  2593. node->n_cpus = 0;
  2594. for (uint32_t c = 0; c < g_state.numa.total_cpus; ++c) {
  2595. rv = snprintf(path, sizeof(path), "/sys/devices/system/node/node%u/cpu%u", n, c);
  2596. GGML_ASSERT(rv > 0 && (unsigned)rv < sizeof(path));
  2597. if (stat(path, &st) == 0) {
  2598. node->cpus[node->n_cpus++] = c;
  2599. GGML_PRINT_DEBUG(" %u", c);
  2600. }
  2601. }
  2602. GGML_PRINT_DEBUG("\n");
  2603. }
  2604. if (ggml_is_numa()) {
  2605. FILE *fptr = fopen("/proc/sys/kernel/numa_balancing", "r");
  2606. if (fptr != NULL) {
  2607. char buf[42];
  2608. if (fgets(buf, sizeof(buf), fptr) && strncmp(buf, "0\n", sizeof(buf)) != 0) {
  2609. GGML_PRINT("WARNING: /proc/sys/kernel/numa_balancing is enabled, this has been observed to impair performance\n");
  2610. }
  2611. fclose(fptr);
  2612. }
  2613. }
  2614. #else
  2615. GGML_UNUSED(numa_flag);
  2616. // TODO
  2617. #endif
  2618. }
  2619. bool ggml_is_numa(void) {
  2620. return g_state.numa.n_nodes > 1;
  2621. }
  2622. ////////////////////////////////////////////////////////////////////////////////
  2623. void ggml_print_object(const struct ggml_object * obj) {
  2624. GGML_PRINT(" - ggml_object: type = %d, offset = %zu, size = %zu, next = %p\n",
  2625. obj->type, obj->offs, obj->size, (const void *) obj->next);
  2626. }
  2627. void ggml_print_objects(const struct ggml_context * ctx) {
  2628. struct ggml_object * obj = ctx->objects_begin;
  2629. GGML_PRINT("%s: objects in context %p:\n", __func__, (const void *) ctx);
  2630. while (obj != NULL) {
  2631. ggml_print_object(obj);
  2632. obj = obj->next;
  2633. }
  2634. GGML_PRINT("%s: --- end ---\n", __func__);
  2635. }
  2636. GGML_CALL int64_t ggml_nelements(const struct ggml_tensor * tensor) {
  2637. static_assert(GGML_MAX_DIMS == 4, "GGML_MAX_DIMS is not 4 - update this function");
  2638. return tensor->ne[0]*tensor->ne[1]*tensor->ne[2]*tensor->ne[3];
  2639. }
  2640. GGML_CALL int64_t ggml_nrows(const struct ggml_tensor * tensor) {
  2641. static_assert(GGML_MAX_DIMS == 4, "GGML_MAX_DIMS is not 4 - update this function");
  2642. return tensor->ne[1]*tensor->ne[2]*tensor->ne[3];
  2643. }
  2644. GGML_CALL size_t ggml_nbytes(const struct ggml_tensor * tensor) {
  2645. size_t nbytes;
  2646. size_t blck_size = ggml_blck_size(tensor->type);
  2647. if (blck_size == 1) {
  2648. nbytes = ggml_type_size(tensor->type);
  2649. for (int i = 0; i < GGML_MAX_DIMS; ++i) {
  2650. nbytes += (tensor->ne[i] - 1)*tensor->nb[i];
  2651. }
  2652. }
  2653. else {
  2654. nbytes = tensor->ne[0]*tensor->nb[0]/blck_size;
  2655. for (int i = 1; i < GGML_MAX_DIMS; ++i) {
  2656. nbytes += (tensor->ne[i] - 1)*tensor->nb[i];
  2657. }
  2658. }
  2659. return nbytes;
  2660. }
  2661. size_t ggml_nbytes_pad(const struct ggml_tensor * tensor) {
  2662. return GGML_PAD(ggml_nbytes(tensor), GGML_MEM_ALIGN);
  2663. }
  2664. GGML_CALL int ggml_blck_size(enum ggml_type type) {
  2665. return type_traits[type].blck_size;
  2666. }
  2667. GGML_CALL size_t ggml_type_size(enum ggml_type type) {
  2668. return type_traits[type].type_size;
  2669. }
  2670. GGML_CALL size_t ggml_row_size(enum ggml_type type, int64_t ne) {
  2671. assert(ne % ggml_blck_size(type) == 0);
  2672. return ggml_type_size(type)*ne/ggml_blck_size(type);
  2673. }
  2674. double ggml_type_sizef(enum ggml_type type) {
  2675. return ((double)(type_traits[type].type_size))/type_traits[type].blck_size;
  2676. }
  2677. GGML_CALL const char * ggml_type_name(enum ggml_type type) {
  2678. return type_traits[type].type_name;
  2679. }
  2680. GGML_CALL bool ggml_is_quantized(enum ggml_type type) {
  2681. return type_traits[type].is_quantized;
  2682. }
  2683. GGML_CALL const char * ggml_op_name(enum ggml_op op) {
  2684. return GGML_OP_NAME[op];
  2685. }
  2686. const char * ggml_op_symbol(enum ggml_op op) {
  2687. return GGML_OP_SYMBOL[op];
  2688. }
  2689. const char * ggml_unary_op_name(enum ggml_unary_op op) {
  2690. return GGML_UNARY_OP_NAME[op];
  2691. }
  2692. GGML_CALL const char * ggml_op_desc(const struct ggml_tensor * t) {
  2693. if (t->op == GGML_OP_UNARY) {
  2694. enum ggml_unary_op uop = ggml_get_unary_op(t);
  2695. return ggml_unary_op_name(uop);
  2696. }
  2697. else {
  2698. return ggml_op_name(t->op);
  2699. }
  2700. }
  2701. GGML_CALL size_t ggml_element_size(const struct ggml_tensor * tensor) {
  2702. return ggml_type_size(tensor->type);
  2703. }
  2704. bool ggml_is_scalar(const struct ggml_tensor * tensor) {
  2705. static_assert(GGML_MAX_DIMS == 4, "GGML_MAX_DIMS is not 4 - update this function");
  2706. return tensor->ne[0] == 1 && tensor->ne[1] == 1 && tensor->ne[2] == 1 && tensor->ne[3] == 1;
  2707. }
  2708. bool ggml_is_vector(const struct ggml_tensor * tensor) {
  2709. static_assert(GGML_MAX_DIMS == 4, "GGML_MAX_DIMS is not 4 - update this function");
  2710. return tensor->ne[1] == 1 && tensor->ne[2] == 1 && tensor->ne[3] == 1;
  2711. }
  2712. bool ggml_is_matrix(const struct ggml_tensor * tensor) {
  2713. static_assert(GGML_MAX_DIMS == 4, "GGML_MAX_DIMS is not 4 - update this function");
  2714. return tensor->ne[2] == 1 && tensor->ne[3] == 1;
  2715. }
  2716. bool ggml_is_3d(const struct ggml_tensor * tensor) {
  2717. return tensor->ne[3] == 1;
  2718. }
  2719. int ggml_n_dims(const struct ggml_tensor * tensor) {
  2720. for (int i = GGML_MAX_DIMS - 1; i >= 1; --i) {
  2721. if (tensor->ne[i] > 1) {
  2722. return i + 1;
  2723. }
  2724. }
  2725. return 1;
  2726. }
  2727. static inline bool ggml_can_mul_mat(const struct ggml_tensor * t0, const struct ggml_tensor * t1) {
  2728. static_assert(GGML_MAX_DIMS == 4, "GGML_MAX_DIMS is not 4 - update this function");
  2729. return (t0->ne[0] == t1->ne[0]) &&
  2730. (t1->ne[2]%t0->ne[2] == 0) && // verify t0 is broadcastable
  2731. (t1->ne[3]%t0->ne[3] == 0);
  2732. }
  2733. static inline bool ggml_can_out_prod(const struct ggml_tensor * t0, const struct ggml_tensor * t1) {
  2734. static_assert(GGML_MAX_DIMS == 4, "GGML_MAX_DIMS is not 4 - update this function");
  2735. return (t0->ne[1] == t1->ne[1]) &&
  2736. (t1->ne[2]%t0->ne[2] == 0) && // verify t0 is broadcastable
  2737. (t1->ne[3]%t0->ne[3] == 0);
  2738. }
  2739. enum ggml_type ggml_ftype_to_ggml_type(enum ggml_ftype ftype) {
  2740. enum ggml_type wtype = GGML_TYPE_COUNT;
  2741. switch (ftype) {
  2742. case GGML_FTYPE_ALL_F32: wtype = GGML_TYPE_F32; break;
  2743. case GGML_FTYPE_MOSTLY_F16: wtype = GGML_TYPE_F16; break;
  2744. case GGML_FTYPE_MOSTLY_BF16: wtype = GGML_TYPE_BF16; break;
  2745. case GGML_FTYPE_MOSTLY_Q4_0: wtype = GGML_TYPE_Q4_0; break;
  2746. case GGML_FTYPE_MOSTLY_Q4_1: wtype = GGML_TYPE_Q4_1; break;
  2747. case GGML_FTYPE_MOSTLY_Q5_0: wtype = GGML_TYPE_Q5_0; break;
  2748. case GGML_FTYPE_MOSTLY_Q5_1: wtype = GGML_TYPE_Q5_1; break;
  2749. case GGML_FTYPE_MOSTLY_Q8_0: wtype = GGML_TYPE_Q8_0; break;
  2750. case GGML_FTYPE_MOSTLY_Q2_K: wtype = GGML_TYPE_Q2_K; break;
  2751. case GGML_FTYPE_MOSTLY_Q3_K: wtype = GGML_TYPE_Q3_K; break;
  2752. case GGML_FTYPE_MOSTLY_Q4_K: wtype = GGML_TYPE_Q4_K; break;
  2753. case GGML_FTYPE_MOSTLY_Q5_K: wtype = GGML_TYPE_Q5_K; break;
  2754. case GGML_FTYPE_MOSTLY_Q6_K: wtype = GGML_TYPE_Q6_K; break;
  2755. case GGML_FTYPE_MOSTLY_IQ2_XXS: wtype = GGML_TYPE_IQ2_XXS; break;
  2756. case GGML_FTYPE_MOSTLY_IQ2_XS: wtype = GGML_TYPE_IQ2_XS; break;
  2757. case GGML_FTYPE_MOSTLY_IQ3_XXS: wtype = GGML_TYPE_IQ3_XXS; break;
  2758. case GGML_FTYPE_MOSTLY_IQ1_S: wtype = GGML_TYPE_IQ1_S; break;
  2759. case GGML_FTYPE_MOSTLY_IQ1_M: wtype = GGML_TYPE_IQ1_M; break;
  2760. case GGML_FTYPE_MOSTLY_IQ4_NL: wtype = GGML_TYPE_IQ4_NL; break;
  2761. case GGML_FTYPE_MOSTLY_IQ4_XS: wtype = GGML_TYPE_IQ4_XS; break;
  2762. case GGML_FTYPE_MOSTLY_IQ3_S: wtype = GGML_TYPE_IQ3_S; break;
  2763. case GGML_FTYPE_MOSTLY_IQ2_S: wtype = GGML_TYPE_IQ2_S; break;
  2764. case GGML_FTYPE_UNKNOWN: wtype = GGML_TYPE_COUNT; break;
  2765. case GGML_FTYPE_MOSTLY_Q4_1_SOME_F16: wtype = GGML_TYPE_COUNT; break;
  2766. }
  2767. GGML_ASSERT(wtype != GGML_TYPE_COUNT);
  2768. return wtype;
  2769. }
  2770. size_t ggml_tensor_overhead(void) {
  2771. return GGML_OBJECT_SIZE + GGML_TENSOR_SIZE;
  2772. }
  2773. GGML_CALL bool ggml_is_transposed(const struct ggml_tensor * tensor) {
  2774. return tensor->nb[0] > tensor->nb[1];
  2775. }
  2776. static bool ggml_is_contiguous_n(const struct ggml_tensor * tensor, int n) {
  2777. size_t next_nb = ggml_type_size(tensor->type);
  2778. if (tensor->ne[0] != ggml_blck_size(tensor->type) && tensor->nb[0] != next_nb) {
  2779. return false;
  2780. }
  2781. next_nb *= tensor->ne[0]/ggml_blck_size(tensor->type);
  2782. for (int i = 1; i < GGML_MAX_DIMS; i++) {
  2783. if (tensor->ne[i] != 1) {
  2784. if (i > n) {
  2785. if (tensor->nb[i] != next_nb) {
  2786. return false;
  2787. }
  2788. next_nb *= tensor->ne[i];
  2789. } else {
  2790. // this dimension does not need to be contiguous
  2791. next_nb = tensor->ne[i]*tensor->nb[i];
  2792. }
  2793. }
  2794. }
  2795. return true;
  2796. }
  2797. GGML_CALL bool ggml_is_contiguous(const struct ggml_tensor * tensor) {
  2798. return ggml_is_contiguous_0(tensor);
  2799. }
  2800. GGML_CALL bool ggml_is_contiguous_0(const struct ggml_tensor * tensor) {
  2801. return ggml_is_contiguous_n(tensor, 0);
  2802. }
  2803. GGML_CALL bool ggml_is_contiguous_1(const struct ggml_tensor * tensor) {
  2804. return ggml_is_contiguous_n(tensor, 1);
  2805. }
  2806. GGML_CALL bool ggml_is_contiguous_2(const struct ggml_tensor * tensor) {
  2807. return ggml_is_contiguous_n(tensor, 2);
  2808. }
  2809. GGML_CALL bool ggml_is_permuted(const struct ggml_tensor * tensor) {
  2810. static_assert(GGML_MAX_DIMS == 4, "GGML_MAX_DIMS is not 4 - update this function");
  2811. return tensor->nb[0] > tensor->nb[1] || tensor->nb[1] > tensor->nb[2] || tensor->nb[2] > tensor->nb[3];
  2812. }
  2813. static inline bool ggml_is_padded_1d(const struct ggml_tensor * tensor) {
  2814. static_assert(GGML_MAX_DIMS == 4, "GGML_MAX_DIMS is not 4 - update this function");
  2815. return
  2816. tensor->nb[0] == ggml_type_size(tensor->type) &&
  2817. tensor->nb[2] == tensor->nb[1]*tensor->ne[1] &&
  2818. tensor->nb[3] == tensor->nb[2]*tensor->ne[2];
  2819. }
  2820. GGML_CALL bool ggml_is_empty(const struct ggml_tensor * tensor) {
  2821. for (int i = 0; i < GGML_MAX_DIMS; ++i) {
  2822. if (tensor->ne[i] == 0) {
  2823. // empty if any dimension has no elements
  2824. return true;
  2825. }
  2826. }
  2827. return false;
  2828. }
  2829. bool ggml_are_same_shape(const struct ggml_tensor * t0, const struct ggml_tensor * t1) {
  2830. static_assert(GGML_MAX_DIMS == 4, "GGML_MAX_DIMS is not 4 - update this function");
  2831. return
  2832. (t0->ne[0] == t1->ne[0]) &&
  2833. (t0->ne[1] == t1->ne[1]) &&
  2834. (t0->ne[2] == t1->ne[2]) &&
  2835. (t0->ne[3] == t1->ne[3]);
  2836. }
  2837. bool ggml_are_same_stride(const struct ggml_tensor * t0, const struct ggml_tensor * t1) {
  2838. static_assert(GGML_MAX_DIMS == 4, "GGML_MAX_DIMS is not 4 - update this function");
  2839. return
  2840. (t0->nb[0] == t1->nb[0]) &&
  2841. (t0->nb[1] == t1->nb[1]) &&
  2842. (t0->nb[2] == t1->nb[2]) &&
  2843. (t0->nb[3] == t1->nb[3]);
  2844. }
  2845. // check if t1 can be represented as a repeatition of t0
  2846. static inline bool ggml_can_repeat(const struct ggml_tensor * t0, const struct ggml_tensor * t1) {
  2847. static_assert(GGML_MAX_DIMS == 4, "GGML_MAX_DIMS is not 4 - update this function");
  2848. return ggml_is_empty(t0) ? ggml_is_empty(t1) :
  2849. (t1->ne[0]%t0->ne[0] == 0) &&
  2850. (t1->ne[1]%t0->ne[1] == 0) &&
  2851. (t1->ne[2]%t0->ne[2] == 0) &&
  2852. (t1->ne[3]%t0->ne[3] == 0);
  2853. }
  2854. static inline bool ggml_can_repeat_rows(const struct ggml_tensor * t0, const struct ggml_tensor * t1) {
  2855. static_assert(GGML_MAX_DIMS == 4, "GGML_MAX_DIMS is not 4 - update this function");
  2856. return (t0->ne[0] == t1->ne[0]) && ggml_can_repeat(t0, t1);
  2857. }
  2858. static inline int ggml_up32(int n) {
  2859. return (n + 31) & ~31;
  2860. }
  2861. //static inline int ggml_up64(int n) {
  2862. // return (n + 63) & ~63;
  2863. //}
  2864. static inline int ggml_up(int n, int m) {
  2865. // assert m is a power of 2
  2866. GGML_ASSERT((m & (m - 1)) == 0);
  2867. return (n + m - 1) & ~(m - 1);
  2868. }
  2869. // assert that pointer is aligned to GGML_MEM_ALIGN
  2870. #define ggml_assert_aligned(ptr) \
  2871. GGML_ASSERT(((uintptr_t) (ptr))%GGML_MEM_ALIGN == 0)
  2872. ////////////////////////////////////////////////////////////////////////////////
  2873. struct ggml_context * ggml_init(struct ggml_init_params params) {
  2874. // make this function thread safe
  2875. ggml_critical_section_start();
  2876. static bool is_first_call = true;
  2877. if (is_first_call) {
  2878. // initialize time system (required on Windows)
  2879. ggml_time_init();
  2880. // initialize GELU, Quick GELU, SILU and EXP F32 tables
  2881. {
  2882. const uint64_t t_start = ggml_time_us(); UNUSED(t_start);
  2883. for (int i = 0; i < (1 << 16); ++i) {
  2884. union {
  2885. uint16_t u16;
  2886. ggml_fp16_t fp16;
  2887. } u = {i};
  2888. float f = ggml_table_f32_f16[i] = GGML_COMPUTE_FP16_TO_FP32(u.fp16);
  2889. ggml_table_gelu_f16[i] = GGML_FP32_TO_FP16(ggml_gelu_f32(f));
  2890. ggml_table_gelu_quick_f16[i] = GGML_FP32_TO_FP16(ggml_gelu_quick_f32(f));
  2891. }
  2892. const uint64_t t_end = ggml_time_us(); UNUSED(t_end);
  2893. GGML_PRINT_DEBUG("%s: GELU, Quick GELU, SILU and EXP tables initialized in %f ms\n", __func__, (t_end - t_start)/1000.0f);
  2894. }
  2895. // initialize g_state
  2896. {
  2897. const uint64_t t_start = ggml_time_us(); UNUSED(t_start);
  2898. g_state = (struct ggml_state) {
  2899. /*.contexts =*/ { { 0 } },
  2900. /*.numa =*/ {
  2901. .n_nodes = 0,
  2902. .total_cpus = 0,
  2903. },
  2904. };
  2905. for (int i = 0; i < GGML_MAX_CONTEXTS; ++i) {
  2906. g_state.contexts[i].used = false;
  2907. }
  2908. const uint64_t t_end = ggml_time_us(); UNUSED(t_end);
  2909. GGML_PRINT_DEBUG("%s: g_state initialized in %f ms\n", __func__, (t_end - t_start)/1000.0f);
  2910. }
  2911. ggml_setup_op_has_task_pass();
  2912. is_first_call = false;
  2913. }
  2914. // find non-used context in g_state
  2915. struct ggml_context * ctx = NULL;
  2916. for (int i = 0; i < GGML_MAX_CONTEXTS; i++) {
  2917. if (!g_state.contexts[i].used) {
  2918. g_state.contexts[i].used = true;
  2919. ctx = &g_state.contexts[i].context;
  2920. GGML_PRINT_DEBUG("%s: found unused context %d\n", __func__, i);
  2921. break;
  2922. }
  2923. }
  2924. if (ctx == NULL) {
  2925. GGML_PRINT_DEBUG("%s: no unused context found\n", __func__);
  2926. ggml_critical_section_end();
  2927. return NULL;
  2928. }
  2929. // allow to call ggml_init with 0 size
  2930. if (params.mem_size == 0) {
  2931. params.mem_size = GGML_MEM_ALIGN;
  2932. }
  2933. const size_t mem_size = params.mem_buffer ? params.mem_size : GGML_PAD(params.mem_size, GGML_MEM_ALIGN);
  2934. *ctx = (struct ggml_context) {
  2935. /*.mem_size =*/ mem_size,
  2936. /*.mem_buffer =*/ params.mem_buffer ? params.mem_buffer : GGML_ALIGNED_MALLOC(mem_size),
  2937. /*.mem_buffer_owned =*/ params.mem_buffer ? false : true,
  2938. /*.no_alloc =*/ params.no_alloc,
  2939. /*.no_alloc_save =*/ params.no_alloc,
  2940. /*.n_objects =*/ 0,
  2941. /*.objects_begin =*/ NULL,
  2942. /*.objects_end =*/ NULL,
  2943. /*.scratch =*/ { 0, 0, NULL, },
  2944. /*.scratch_save =*/ { 0, 0, NULL, },
  2945. };
  2946. GGML_ASSERT(ctx->mem_buffer != NULL);
  2947. ggml_assert_aligned(ctx->mem_buffer);
  2948. GGML_PRINT_DEBUG("%s: context initialized\n", __func__);
  2949. ggml_critical_section_end();
  2950. return ctx;
  2951. }
  2952. void ggml_free(struct ggml_context * ctx) {
  2953. if (ctx == NULL) {
  2954. return;
  2955. }
  2956. // make this function thread safe
  2957. ggml_critical_section_start();
  2958. bool found = false;
  2959. for (int i = 0; i < GGML_MAX_CONTEXTS; i++) {
  2960. if (&g_state.contexts[i].context == ctx) {
  2961. g_state.contexts[i].used = false;
  2962. GGML_PRINT_DEBUG("%s: context %d has been freed. memory used = %zu\n",
  2963. __func__, i, ggml_used_mem(ctx));
  2964. if (ctx->mem_buffer_owned) {
  2965. GGML_ALIGNED_FREE(ctx->mem_buffer);
  2966. }
  2967. found = true;
  2968. break;
  2969. }
  2970. }
  2971. if (!found) {
  2972. GGML_PRINT_DEBUG("%s: context not found\n", __func__);
  2973. }
  2974. ggml_critical_section_end();
  2975. }
  2976. size_t ggml_used_mem(const struct ggml_context * ctx) {
  2977. return ctx->objects_end == NULL ? 0 : ctx->objects_end->offs + ctx->objects_end->size;
  2978. }
  2979. size_t ggml_set_scratch(struct ggml_context * ctx, struct ggml_scratch scratch) {
  2980. const size_t result = ctx->scratch.data ? ctx->scratch.offs : 0;
  2981. ctx->scratch = scratch;
  2982. return result;
  2983. }
  2984. bool ggml_get_no_alloc(struct ggml_context * ctx) {
  2985. return ctx->no_alloc;
  2986. }
  2987. void ggml_set_no_alloc(struct ggml_context * ctx, bool no_alloc) {
  2988. ctx->no_alloc = no_alloc;
  2989. }
  2990. void * ggml_get_mem_buffer(const struct ggml_context * ctx) {
  2991. return ctx->mem_buffer;
  2992. }
  2993. size_t ggml_get_mem_size(const struct ggml_context * ctx) {
  2994. return ctx->mem_size;
  2995. }
  2996. size_t ggml_get_max_tensor_size(const struct ggml_context * ctx) {
  2997. size_t max_size = 0;
  2998. for (struct ggml_tensor * tensor = ggml_get_first_tensor(ctx); tensor != NULL; tensor = ggml_get_next_tensor(ctx, tensor)) {
  2999. size_t bytes = ggml_nbytes(tensor);
  3000. max_size = MAX(max_size, bytes);
  3001. }
  3002. return max_size;
  3003. }
  3004. // IMPORTANT:
  3005. // when creating "opt" tensors, always save and load the scratch buffer
  3006. // this is an error prone process, but it is necessary to support inplace
  3007. // operators when using scratch buffers
  3008. // TODO: implement a better way
  3009. static void ggml_scratch_save(struct ggml_context * ctx) {
  3010. // this is needed to allow opt tensors to store their data
  3011. // TODO: again, need to find a better way
  3012. ctx->no_alloc_save = ctx->no_alloc;
  3013. ctx->no_alloc = false;
  3014. ctx->scratch_save = ctx->scratch;
  3015. ctx->scratch.data = NULL;
  3016. }
  3017. static void ggml_scratch_load(struct ggml_context * ctx) {
  3018. ctx->no_alloc = ctx->no_alloc_save;
  3019. ctx->scratch = ctx->scratch_save;
  3020. }
  3021. ////////////////////////////////////////////////////////////////////////////////
  3022. static struct ggml_object * ggml_new_object(struct ggml_context * ctx, enum ggml_object_type type, size_t size) {
  3023. // always insert objects at the end of the context's memory pool
  3024. struct ggml_object * obj_cur = ctx->objects_end;
  3025. const size_t cur_offs = obj_cur == NULL ? 0 : obj_cur->offs;
  3026. const size_t cur_size = obj_cur == NULL ? 0 : obj_cur->size;
  3027. const size_t cur_end = cur_offs + cur_size;
  3028. // align to GGML_MEM_ALIGN
  3029. size_t size_needed = GGML_PAD(size, GGML_MEM_ALIGN);
  3030. char * const mem_buffer = ctx->mem_buffer;
  3031. struct ggml_object * const obj_new = (struct ggml_object *)(mem_buffer + cur_end);
  3032. if (cur_end + size_needed + GGML_OBJECT_SIZE > ctx->mem_size) {
  3033. GGML_PRINT("%s: not enough space in the context's memory pool (needed %zu, available %zu)\n",
  3034. __func__, cur_end + size_needed, ctx->mem_size);
  3035. assert(false);
  3036. return NULL;
  3037. }
  3038. *obj_new = (struct ggml_object) {
  3039. .offs = cur_end + GGML_OBJECT_SIZE,
  3040. .size = size_needed,
  3041. .next = NULL,
  3042. .type = type,
  3043. };
  3044. ggml_assert_aligned(mem_buffer + obj_new->offs);
  3045. if (obj_cur != NULL) {
  3046. obj_cur->next = obj_new;
  3047. } else {
  3048. // this is the first object in this context
  3049. ctx->objects_begin = obj_new;
  3050. }
  3051. ctx->objects_end = obj_new;
  3052. //printf("%s: inserted new object at %zu, size = %zu\n", __func__, cur_end, obj_new->size);
  3053. return obj_new;
  3054. }
  3055. static struct ggml_tensor * ggml_new_tensor_impl(
  3056. struct ggml_context * ctx,
  3057. enum ggml_type type,
  3058. int n_dims,
  3059. const int64_t * ne,
  3060. struct ggml_tensor * view_src,
  3061. size_t view_offs) {
  3062. assert(n_dims >= 1 && n_dims <= GGML_MAX_DIMS);
  3063. // find the base tensor and absolute offset
  3064. if (view_src != NULL && view_src->view_src != NULL) {
  3065. view_offs += view_src->view_offs;
  3066. view_src = view_src->view_src;
  3067. }
  3068. size_t data_size = ggml_row_size(type, ne[0]);
  3069. for (int i = 1; i < n_dims; i++) {
  3070. data_size *= ne[i];
  3071. }
  3072. GGML_ASSERT(view_src == NULL || data_size == 0 || data_size + view_offs <= ggml_nbytes(view_src));
  3073. void * data = view_src != NULL ? view_src->data : NULL;
  3074. if (data != NULL) {
  3075. data = (char *) data + view_offs;
  3076. }
  3077. size_t obj_alloc_size = 0;
  3078. if (view_src == NULL && !ctx->no_alloc) {
  3079. if (ctx->scratch.data != NULL) {
  3080. // allocate tensor data in the scratch buffer
  3081. if (ctx->scratch.offs + data_size > ctx->scratch.size) {
  3082. GGML_PRINT("%s: not enough space in the scratch memory pool (needed %zu, available %zu)\n",
  3083. __func__, ctx->scratch.offs + data_size, ctx->scratch.size);
  3084. assert(false);
  3085. return NULL;
  3086. }
  3087. data = (char * const) ctx->scratch.data + ctx->scratch.offs;
  3088. ctx->scratch.offs += data_size;
  3089. } else {
  3090. // allocate tensor data in the context's memory pool
  3091. obj_alloc_size = data_size;
  3092. }
  3093. }
  3094. struct ggml_object * const obj_new = ggml_new_object(ctx, GGML_OBJECT_TYPE_TENSOR, GGML_TENSOR_SIZE + obj_alloc_size);
  3095. // TODO: for recoverable errors, we would need to free the data allocated from the scratch buffer here
  3096. struct ggml_tensor * const result = (struct ggml_tensor *)((char *)ctx->mem_buffer + obj_new->offs);
  3097. #ifdef __clang__
  3098. // temporary until ggml_tensor::backend is removed
  3099. #pragma clang diagnostic push
  3100. #pragma clang diagnostic ignored "-Wdeprecated-declarations"
  3101. #endif
  3102. *result = (struct ggml_tensor) {
  3103. /*.type =*/ type,
  3104. /*.backend =*/ GGML_BACKEND_TYPE_CPU,
  3105. /*.buffer =*/ NULL,
  3106. /*.ne =*/ { 1, 1, 1, 1 },
  3107. /*.nb =*/ { 0, 0, 0, 0 },
  3108. /*.op =*/ GGML_OP_NONE,
  3109. /*.op_params =*/ { 0 },
  3110. /*.flags =*/ 0,
  3111. /*.grad =*/ NULL,
  3112. /*.src =*/ { NULL },
  3113. /*.perf_runs =*/ 0,
  3114. /*.perf_cycles =*/ 0,
  3115. /*.perf_time_us =*/ 0,
  3116. /*.view_src =*/ view_src,
  3117. /*.view_offs =*/ view_offs,
  3118. /*.data =*/ obj_alloc_size > 0 ? (void *)(result + 1) : data,
  3119. /*.name =*/ { 0 },
  3120. /*.extra =*/ NULL,
  3121. /*.padding =*/ { 0 },
  3122. };
  3123. #ifdef __clang__
  3124. #pragma clang diagnostic pop
  3125. #endif
  3126. // TODO: this should not be needed as long as we don't rely on aligned SIMD loads
  3127. //ggml_assert_aligned(result->data);
  3128. for (int i = 0; i < n_dims; i++) {
  3129. result->ne[i] = ne[i];
  3130. }
  3131. result->nb[0] = ggml_type_size(type);
  3132. result->nb[1] = result->nb[0]*(result->ne[0]/ggml_blck_size(type));
  3133. for (int i = 2; i < GGML_MAX_DIMS; i++) {
  3134. result->nb[i] = result->nb[i - 1]*result->ne[i - 1];
  3135. }
  3136. ctx->n_objects++;
  3137. return result;
  3138. }
  3139. struct ggml_tensor * ggml_new_tensor(
  3140. struct ggml_context * ctx,
  3141. enum ggml_type type,
  3142. int n_dims,
  3143. const int64_t * ne) {
  3144. return ggml_new_tensor_impl(ctx, type, n_dims, ne, NULL, 0);
  3145. }
  3146. struct ggml_tensor * ggml_new_tensor_1d(
  3147. struct ggml_context * ctx,
  3148. enum ggml_type type,
  3149. int64_t ne0) {
  3150. return ggml_new_tensor(ctx, type, 1, &ne0);
  3151. }
  3152. struct ggml_tensor * ggml_new_tensor_2d(
  3153. struct ggml_context * ctx,
  3154. enum ggml_type type,
  3155. int64_t ne0,
  3156. int64_t ne1) {
  3157. const int64_t ne[2] = { ne0, ne1 };
  3158. return ggml_new_tensor(ctx, type, 2, ne);
  3159. }
  3160. struct ggml_tensor * ggml_new_tensor_3d(
  3161. struct ggml_context * ctx,
  3162. enum ggml_type type,
  3163. int64_t ne0,
  3164. int64_t ne1,
  3165. int64_t ne2) {
  3166. const int64_t ne[3] = { ne0, ne1, ne2 };
  3167. return ggml_new_tensor(ctx, type, 3, ne);
  3168. }
  3169. struct ggml_tensor * ggml_new_tensor_4d(
  3170. struct ggml_context * ctx,
  3171. enum ggml_type type,
  3172. int64_t ne0,
  3173. int64_t ne1,
  3174. int64_t ne2,
  3175. int64_t ne3) {
  3176. const int64_t ne[4] = { ne0, ne1, ne2, ne3 };
  3177. return ggml_new_tensor(ctx, type, 4, ne);
  3178. }
  3179. struct ggml_tensor * ggml_new_i32(struct ggml_context * ctx, int32_t value) {
  3180. ggml_scratch_save(ctx);
  3181. struct ggml_tensor * result = ggml_new_tensor_1d(ctx, GGML_TYPE_I32, 1);
  3182. ggml_scratch_load(ctx);
  3183. ggml_set_i32(result, value);
  3184. return result;
  3185. }
  3186. struct ggml_tensor * ggml_new_f32(struct ggml_context * ctx, float value) {
  3187. ggml_scratch_save(ctx);
  3188. struct ggml_tensor * result = ggml_new_tensor_1d(ctx, GGML_TYPE_F32, 1);
  3189. ggml_scratch_load(ctx);
  3190. ggml_set_f32(result, value);
  3191. return result;
  3192. }
  3193. struct ggml_tensor * ggml_dup_tensor(struct ggml_context * ctx, const struct ggml_tensor * src) {
  3194. return ggml_new_tensor(ctx, src->type, GGML_MAX_DIMS, src->ne);
  3195. }
  3196. static void ggml_set_op_params(struct ggml_tensor * tensor, const void * params, size_t params_size) {
  3197. GGML_ASSERT(tensor != NULL); // silence -Warray-bounds warnings
  3198. assert(params_size <= GGML_MAX_OP_PARAMS);
  3199. memcpy(tensor->op_params, params, params_size);
  3200. }
  3201. static int32_t ggml_get_op_params_i32(const struct ggml_tensor * tensor, uint32_t i) {
  3202. assert(i < GGML_MAX_OP_PARAMS / sizeof(int32_t));
  3203. return ((const int32_t *)(tensor->op_params))[i];
  3204. }
  3205. static float ggml_get_op_params_f32(const struct ggml_tensor * tensor, uint32_t i) {
  3206. assert(i < GGML_MAX_OP_PARAMS / sizeof(float));
  3207. return ((const float *)(tensor->op_params))[i];
  3208. }
  3209. static void ggml_set_op_params_i32(struct ggml_tensor * tensor, uint32_t i, int32_t value) {
  3210. assert(i < GGML_MAX_OP_PARAMS / sizeof(int32_t));
  3211. ((int32_t *)(tensor->op_params))[i] = value;
  3212. }
  3213. static void ggml_set_op_params_f32(struct ggml_tensor * tensor, uint32_t i, float value) {
  3214. assert(i < GGML_MAX_OP_PARAMS / sizeof(float));
  3215. ((float *)(tensor->op_params))[i] = value;
  3216. }
  3217. struct ggml_tensor * ggml_set_zero(struct ggml_tensor * tensor) {
  3218. memset(tensor->data, 0, ggml_nbytes(tensor));
  3219. return tensor;
  3220. }
  3221. struct ggml_tensor * ggml_set_i32 (struct ggml_tensor * tensor, int32_t value) {
  3222. const int n = ggml_nrows(tensor);
  3223. const int nc = tensor->ne[0];
  3224. const size_t n1 = tensor->nb[1];
  3225. char * const data = tensor->data;
  3226. switch (tensor->type) {
  3227. case GGML_TYPE_I8:
  3228. {
  3229. assert(tensor->nb[0] == sizeof(int8_t));
  3230. for (int i = 0; i < n; i++) {
  3231. ggml_vec_set_i8(nc, (int8_t *)(data + i*n1), value);
  3232. }
  3233. } break;
  3234. case GGML_TYPE_I16:
  3235. {
  3236. assert(tensor->nb[0] == sizeof(int16_t));
  3237. for (int i = 0; i < n; i++) {
  3238. ggml_vec_set_i16(nc, (int16_t *)(data + i*n1), value);
  3239. }
  3240. } break;
  3241. case GGML_TYPE_I32:
  3242. {
  3243. assert(tensor->nb[0] == sizeof(int32_t));
  3244. for (int i = 0; i < n; i++) {
  3245. ggml_vec_set_i32(nc, (int32_t *)(data + i*n1), value);
  3246. }
  3247. } break;
  3248. case GGML_TYPE_F16:
  3249. {
  3250. assert(tensor->nb[0] == sizeof(ggml_fp16_t));
  3251. for (int i = 0; i < n; i++) {
  3252. ggml_vec_set_f16(nc, (ggml_fp16_t *)(data + i*n1), GGML_FP32_TO_FP16(value));
  3253. }
  3254. } break;
  3255. case GGML_TYPE_BF16:
  3256. {
  3257. assert(tensor->nb[0] == sizeof(ggml_fp16_t));
  3258. for (int i = 0; i < n; i++) {
  3259. ggml_vec_set_bf16(nc, (ggml_bf16_t *)(data + i*n1), GGML_FP32_TO_BF16(value));
  3260. }
  3261. } break;
  3262. case GGML_TYPE_F32:
  3263. {
  3264. assert(tensor->nb[0] == sizeof(float));
  3265. for (int i = 0; i < n; i++) {
  3266. ggml_vec_set_f32(nc, (float *)(data + i*n1), value);
  3267. }
  3268. } break;
  3269. default:
  3270. {
  3271. GGML_ASSERT(false);
  3272. } break;
  3273. }
  3274. return tensor;
  3275. }
  3276. struct ggml_tensor * ggml_set_f32(struct ggml_tensor * tensor, float value) {
  3277. const int n = ggml_nrows(tensor);
  3278. const int nc = tensor->ne[0];
  3279. const size_t n1 = tensor->nb[1];
  3280. char * const data = tensor->data;
  3281. switch (tensor->type) {
  3282. case GGML_TYPE_I8:
  3283. {
  3284. assert(tensor->nb[0] == sizeof(int8_t));
  3285. for (int i = 0; i < n; i++) {
  3286. ggml_vec_set_i8(nc, (int8_t *)(data + i*n1), value);
  3287. }
  3288. } break;
  3289. case GGML_TYPE_I16:
  3290. {
  3291. assert(tensor->nb[0] == sizeof(int16_t));
  3292. for (int i = 0; i < n; i++) {
  3293. ggml_vec_set_i16(nc, (int16_t *)(data + i*n1), value);
  3294. }
  3295. } break;
  3296. case GGML_TYPE_I32:
  3297. {
  3298. assert(tensor->nb[0] == sizeof(int32_t));
  3299. for (int i = 0; i < n; i++) {
  3300. ggml_vec_set_i32(nc, (int32_t *)(data + i*n1), value);
  3301. }
  3302. } break;
  3303. case GGML_TYPE_F16:
  3304. {
  3305. assert(tensor->nb[0] == sizeof(ggml_fp16_t));
  3306. for (int i = 0; i < n; i++) {
  3307. ggml_vec_set_f16(nc, (ggml_fp16_t *)(data + i*n1), GGML_FP32_TO_FP16(value));
  3308. }
  3309. } break;
  3310. case GGML_TYPE_BF16:
  3311. {
  3312. assert(tensor->nb[0] == sizeof(ggml_bf16_t));
  3313. for (int i = 0; i < n; i++) {
  3314. ggml_vec_set_bf16(nc, (ggml_bf16_t *)(data + i*n1), GGML_FP32_TO_BF16(value));
  3315. }
  3316. } break;
  3317. case GGML_TYPE_F32:
  3318. {
  3319. assert(tensor->nb[0] == sizeof(float));
  3320. for (int i = 0; i < n; i++) {
  3321. ggml_vec_set_f32(nc, (float *)(data + i*n1), value);
  3322. }
  3323. } break;
  3324. default:
  3325. {
  3326. GGML_ASSERT(false);
  3327. } break;
  3328. }
  3329. return tensor;
  3330. }
  3331. void ggml_unravel_index(const struct ggml_tensor * tensor, int64_t i, int64_t * i0, int64_t * i1, int64_t * i2, int64_t * i3) {
  3332. const int64_t ne2 = tensor->ne[2];
  3333. const int64_t ne1 = tensor->ne[1];
  3334. const int64_t ne0 = tensor->ne[0];
  3335. const int64_t i3_ = (i/(ne2*ne1*ne0));
  3336. const int64_t i2_ = (i - i3_*ne2*ne1*ne0)/(ne1*ne0);
  3337. const int64_t i1_ = (i - i3_*ne2*ne1*ne0 - i2_*ne1*ne0)/ne0;
  3338. const int64_t i0_ = (i - i3_*ne2*ne1*ne0 - i2_*ne1*ne0 - i1_*ne0);
  3339. if (i0) {
  3340. * i0 = i0_;
  3341. }
  3342. if (i1) {
  3343. * i1 = i1_;
  3344. }
  3345. if (i2) {
  3346. * i2 = i2_;
  3347. }
  3348. if (i3) {
  3349. * i3 = i3_;
  3350. }
  3351. }
  3352. int32_t ggml_get_i32_1d(const struct ggml_tensor * tensor, int i) {
  3353. if (!ggml_is_contiguous(tensor)) {
  3354. int64_t id[4] = { 0, 0, 0, 0 };
  3355. ggml_unravel_index(tensor, i, &id[0], &id[1], &id[2], &id[3]);
  3356. return ggml_get_i32_nd(tensor, id[0], id[1], id[2], id[3]);
  3357. }
  3358. switch (tensor->type) {
  3359. case GGML_TYPE_I8:
  3360. {
  3361. GGML_ASSERT(tensor->nb[0] == sizeof(int8_t));
  3362. return ((int8_t *)(tensor->data))[i];
  3363. }
  3364. case GGML_TYPE_I16:
  3365. {
  3366. GGML_ASSERT(tensor->nb[0] == sizeof(int16_t));
  3367. return ((int16_t *)(tensor->data))[i];
  3368. }
  3369. case GGML_TYPE_I32:
  3370. {
  3371. GGML_ASSERT(tensor->nb[0] == sizeof(int32_t));
  3372. return ((int32_t *)(tensor->data))[i];
  3373. }
  3374. case GGML_TYPE_F16:
  3375. {
  3376. GGML_ASSERT(tensor->nb[0] == sizeof(ggml_fp16_t));
  3377. return GGML_FP16_TO_FP32(((ggml_fp16_t *)(tensor->data))[i]);
  3378. }
  3379. case GGML_TYPE_BF16:
  3380. {
  3381. GGML_ASSERT(tensor->nb[0] == sizeof(ggml_bf16_t));
  3382. return GGML_BF16_TO_FP32(((ggml_bf16_t *)(tensor->data))[i]);
  3383. }
  3384. case GGML_TYPE_F32:
  3385. {
  3386. GGML_ASSERT(tensor->nb[0] == sizeof(float));
  3387. return ((float *)(tensor->data))[i];
  3388. }
  3389. default:
  3390. {
  3391. GGML_ASSERT(false);
  3392. }
  3393. }
  3394. return 0.0f;
  3395. }
  3396. void ggml_set_i32_1d(const struct ggml_tensor * tensor, int i, int32_t value) {
  3397. if (!ggml_is_contiguous(tensor)) {
  3398. int64_t id[4] = { 0, 0, 0, 0 };
  3399. ggml_unravel_index(tensor, i, &id[0], &id[1], &id[2], &id[3]);
  3400. ggml_set_i32_nd(tensor, id[0], id[1], id[2], id[3], value);
  3401. return;
  3402. }
  3403. switch (tensor->type) {
  3404. case GGML_TYPE_I8:
  3405. {
  3406. GGML_ASSERT(tensor->nb[0] == sizeof(int8_t));
  3407. ((int8_t *)(tensor->data))[i] = value;
  3408. } break;
  3409. case GGML_TYPE_I16:
  3410. {
  3411. GGML_ASSERT(tensor->nb[0] == sizeof(int16_t));
  3412. ((int16_t *)(tensor->data))[i] = value;
  3413. } break;
  3414. case GGML_TYPE_I32:
  3415. {
  3416. GGML_ASSERT(tensor->nb[0] == sizeof(int32_t));
  3417. ((int32_t *)(tensor->data))[i] = value;
  3418. } break;
  3419. case GGML_TYPE_F16:
  3420. {
  3421. GGML_ASSERT(tensor->nb[0] == sizeof(ggml_fp16_t));
  3422. ((ggml_fp16_t *)(tensor->data))[i] = GGML_FP32_TO_FP16(value);
  3423. } break;
  3424. case GGML_TYPE_BF16:
  3425. {
  3426. GGML_ASSERT(tensor->nb[0] == sizeof(ggml_bf16_t));
  3427. ((ggml_bf16_t *)(tensor->data))[i] = GGML_FP32_TO_BF16(value);
  3428. } break;
  3429. case GGML_TYPE_F32:
  3430. {
  3431. GGML_ASSERT(tensor->nb[0] == sizeof(float));
  3432. ((float *)(tensor->data))[i] = value;
  3433. } break;
  3434. default:
  3435. {
  3436. GGML_ASSERT(false);
  3437. } break;
  3438. }
  3439. }
  3440. int32_t ggml_get_i32_nd(const struct ggml_tensor * tensor, int i0, int i1, int i2, int i3) {
  3441. void * data = (char *) tensor->data + i0*tensor->nb[0] + i1*tensor->nb[1] + i2*tensor->nb[2] + i3*tensor->nb[3];
  3442. switch (tensor->type) {
  3443. case GGML_TYPE_I8:
  3444. return ((int8_t *) data)[0];
  3445. case GGML_TYPE_I16:
  3446. return ((int16_t *) data)[0];
  3447. case GGML_TYPE_I32:
  3448. return ((int32_t *) data)[0];
  3449. case GGML_TYPE_F16:
  3450. return GGML_FP16_TO_FP32(((ggml_fp16_t *) data)[0]);
  3451. case GGML_TYPE_BF16:
  3452. return GGML_BF16_TO_FP32(((ggml_bf16_t *) data)[0]);
  3453. case GGML_TYPE_F32:
  3454. return ((float *) data)[0];
  3455. default:
  3456. GGML_ASSERT(false);
  3457. }
  3458. return 0.0f;
  3459. }
  3460. void ggml_set_i32_nd(const struct ggml_tensor * tensor, int i0, int i1, int i2, int i3, int32_t value) {
  3461. void * data = (char *) tensor->data + i0*tensor->nb[0] + i1*tensor->nb[1] + i2*tensor->nb[2] + i3*tensor->nb[3];
  3462. switch (tensor->type) {
  3463. case GGML_TYPE_I8:
  3464. {
  3465. ((int8_t *)(data))[0] = value;
  3466. } break;
  3467. case GGML_TYPE_I16:
  3468. {
  3469. ((int16_t *)(data))[0] = value;
  3470. } break;
  3471. case GGML_TYPE_I32:
  3472. {
  3473. ((int32_t *)(data))[0] = value;
  3474. } break;
  3475. case GGML_TYPE_F16:
  3476. {
  3477. ((ggml_fp16_t *)(data))[0] = GGML_FP32_TO_FP16(value);
  3478. } break;
  3479. case GGML_TYPE_BF16:
  3480. {
  3481. ((ggml_bf16_t *)(data))[0] = GGML_FP32_TO_BF16(value);
  3482. } break;
  3483. case GGML_TYPE_F32:
  3484. {
  3485. ((float *)(data))[0] = value;
  3486. } break;
  3487. default:
  3488. {
  3489. GGML_ASSERT(false);
  3490. } break;
  3491. }
  3492. }
  3493. float ggml_get_f32_1d(const struct ggml_tensor * tensor, int i) {
  3494. if (!ggml_is_contiguous(tensor)) {
  3495. int64_t id[4] = { 0, 0, 0, 0 };
  3496. ggml_unravel_index(tensor, i, &id[0], &id[1], &id[2], &id[3]);
  3497. return ggml_get_f32_nd(tensor, id[0], id[1], id[2], id[3]);
  3498. }
  3499. switch (tensor->type) {
  3500. case GGML_TYPE_I8:
  3501. {
  3502. return ((int8_t *)(tensor->data))[i];
  3503. }
  3504. case GGML_TYPE_I16:
  3505. {
  3506. return ((int16_t *)(tensor->data))[i];
  3507. }
  3508. case GGML_TYPE_I32:
  3509. {
  3510. return ((int32_t *)(tensor->data))[i];
  3511. }
  3512. case GGML_TYPE_F16:
  3513. {
  3514. return GGML_FP16_TO_FP32(((ggml_fp16_t *)(tensor->data))[i]);
  3515. }
  3516. case GGML_TYPE_BF16:
  3517. {
  3518. return GGML_BF16_TO_FP32(((ggml_bf16_t *)(tensor->data))[i]);
  3519. }
  3520. case GGML_TYPE_F32:
  3521. {
  3522. return ((float *)(tensor->data))[i];
  3523. }
  3524. default:
  3525. {
  3526. GGML_ASSERT(false);
  3527. }
  3528. }
  3529. return 0.0f;
  3530. }
  3531. void ggml_set_f32_1d(const struct ggml_tensor * tensor, int i, float value) {
  3532. if (!ggml_is_contiguous(tensor)) {
  3533. int64_t id[4] = { 0, 0, 0, 0 };
  3534. ggml_unravel_index(tensor, i, &id[0], &id[1], &id[2], &id[3]);
  3535. ggml_set_f32_nd(tensor, id[0], id[1], id[2], id[3], value);
  3536. return;
  3537. }
  3538. switch (tensor->type) {
  3539. case GGML_TYPE_I8:
  3540. {
  3541. ((int8_t *)(tensor->data))[i] = value;
  3542. } break;
  3543. case GGML_TYPE_I16:
  3544. {
  3545. ((int16_t *)(tensor->data))[i] = value;
  3546. } break;
  3547. case GGML_TYPE_I32:
  3548. {
  3549. ((int32_t *)(tensor->data))[i] = value;
  3550. } break;
  3551. case GGML_TYPE_F16:
  3552. {
  3553. ((ggml_fp16_t *)(tensor->data))[i] = GGML_FP32_TO_FP16(value);
  3554. } break;
  3555. case GGML_TYPE_BF16:
  3556. {
  3557. ((ggml_bf16_t *)(tensor->data))[i] = GGML_FP32_TO_BF16(value);
  3558. } break;
  3559. case GGML_TYPE_F32:
  3560. {
  3561. ((float *)(tensor->data))[i] = value;
  3562. } break;
  3563. default:
  3564. {
  3565. GGML_ASSERT(false);
  3566. } break;
  3567. }
  3568. }
  3569. float ggml_get_f32_nd(const struct ggml_tensor * tensor, int i0, int i1, int i2, int i3) {
  3570. void * data = (char *) tensor->data + i0*tensor->nb[0] + i1*tensor->nb[1] + i2*tensor->nb[2] + i3*tensor->nb[3];
  3571. switch (tensor->type) {
  3572. case GGML_TYPE_I8:
  3573. return ((int8_t *) data)[0];
  3574. case GGML_TYPE_I16:
  3575. return ((int16_t *) data)[0];
  3576. case GGML_TYPE_I32:
  3577. return ((int32_t *) data)[0];
  3578. case GGML_TYPE_F16:
  3579. return GGML_FP16_TO_FP32(((ggml_fp16_t *) data)[0]);
  3580. case GGML_TYPE_BF16:
  3581. return GGML_BF16_TO_FP32(((ggml_bf16_t *) data)[0]);
  3582. case GGML_TYPE_F32:
  3583. return ((float *) data)[0];
  3584. default:
  3585. GGML_ASSERT(false);
  3586. }
  3587. return 0.0f;
  3588. }
  3589. void ggml_set_f32_nd(const struct ggml_tensor * tensor, int i0, int i1, int i2, int i3, float value) {
  3590. void * data = (char *) tensor->data + i0*tensor->nb[0] + i1*tensor->nb[1] + i2*tensor->nb[2] + i3*tensor->nb[3];
  3591. switch (tensor->type) {
  3592. case GGML_TYPE_I8:
  3593. {
  3594. ((int8_t *)(data))[0] = value;
  3595. } break;
  3596. case GGML_TYPE_I16:
  3597. {
  3598. ((int16_t *)(data))[0] = value;
  3599. } break;
  3600. case GGML_TYPE_I32:
  3601. {
  3602. ((int32_t *)(data))[0] = value;
  3603. } break;
  3604. case GGML_TYPE_F16:
  3605. {
  3606. ((ggml_fp16_t *)(data))[0] = GGML_FP32_TO_FP16(value);
  3607. } break;
  3608. case GGML_TYPE_BF16:
  3609. {
  3610. ((ggml_bf16_t *)(data))[0] = GGML_FP32_TO_BF16(value);
  3611. } break;
  3612. case GGML_TYPE_F32:
  3613. {
  3614. ((float *)(data))[0] = value;
  3615. } break;
  3616. default:
  3617. {
  3618. GGML_ASSERT(false);
  3619. } break;
  3620. }
  3621. }
  3622. void * ggml_get_data(const struct ggml_tensor * tensor) {
  3623. return tensor->data;
  3624. }
  3625. float * ggml_get_data_f32(const struct ggml_tensor * tensor) {
  3626. assert(tensor->type == GGML_TYPE_F32);
  3627. return (float *)(tensor->data);
  3628. }
  3629. GGML_CALL enum ggml_unary_op ggml_get_unary_op(const struct ggml_tensor * tensor) {
  3630. GGML_ASSERT(tensor->op == GGML_OP_UNARY);
  3631. return (enum ggml_unary_op) ggml_get_op_params_i32(tensor, 0);
  3632. }
  3633. const char * ggml_get_name(const struct ggml_tensor * tensor) {
  3634. return tensor->name;
  3635. }
  3636. struct ggml_tensor * ggml_set_name(struct ggml_tensor * tensor, const char * name) {
  3637. strncpy(tensor->name, name, sizeof(tensor->name) - 1);
  3638. tensor->name[sizeof(tensor->name) - 1] = '\0';
  3639. return tensor;
  3640. }
  3641. struct ggml_tensor * ggml_format_name(struct ggml_tensor * tensor, const char * fmt, ...) {
  3642. va_list args;
  3643. va_start(args, fmt);
  3644. vsnprintf(tensor->name, sizeof(tensor->name), fmt, args);
  3645. va_end(args);
  3646. return tensor;
  3647. }
  3648. struct ggml_tensor * ggml_view_tensor(
  3649. struct ggml_context * ctx,
  3650. struct ggml_tensor * src) {
  3651. struct ggml_tensor * result = ggml_new_tensor_impl(ctx, src->type, GGML_MAX_DIMS, src->ne, src, 0);
  3652. ggml_format_name(result, "%s (view)", src->name);
  3653. for (int i = 0; i < GGML_MAX_DIMS; i++) {
  3654. result->nb[i] = src->nb[i];
  3655. }
  3656. return result;
  3657. }
  3658. struct ggml_tensor * ggml_get_first_tensor(const struct ggml_context * ctx) {
  3659. struct ggml_object * obj = ctx->objects_begin;
  3660. char * const mem_buffer = ctx->mem_buffer;
  3661. while (obj != NULL) {
  3662. if (obj->type == GGML_OBJECT_TYPE_TENSOR) {
  3663. return (struct ggml_tensor *)(mem_buffer + obj->offs);
  3664. }
  3665. obj = obj->next;
  3666. }
  3667. return NULL;
  3668. }
  3669. struct ggml_tensor * ggml_get_next_tensor(const struct ggml_context * ctx, struct ggml_tensor * tensor) {
  3670. struct ggml_object * obj = (struct ggml_object *) ((char *)tensor - GGML_OBJECT_SIZE);
  3671. obj = obj->next;
  3672. char * const mem_buffer = ctx->mem_buffer;
  3673. while (obj != NULL) {
  3674. if (obj->type == GGML_OBJECT_TYPE_TENSOR) {
  3675. return (struct ggml_tensor *)(mem_buffer + obj->offs);
  3676. }
  3677. obj = obj->next;
  3678. }
  3679. return NULL;
  3680. }
  3681. struct ggml_tensor * ggml_get_tensor(struct ggml_context * ctx, const char * name) {
  3682. struct ggml_object * obj = ctx->objects_begin;
  3683. char * const mem_buffer = ctx->mem_buffer;
  3684. while (obj != NULL) {
  3685. if (obj->type == GGML_OBJECT_TYPE_TENSOR) {
  3686. struct ggml_tensor * cur = (struct ggml_tensor *)(mem_buffer + obj->offs);
  3687. if (strcmp(cur->name, name) == 0) {
  3688. return cur;
  3689. }
  3690. }
  3691. obj = obj->next;
  3692. }
  3693. return NULL;
  3694. }
  3695. ////////////////////////////////////////////////////////////////////////////////
  3696. // ggml_dup
  3697. static struct ggml_tensor * ggml_dup_impl(
  3698. struct ggml_context * ctx,
  3699. struct ggml_tensor * a,
  3700. bool inplace) {
  3701. bool is_node = false;
  3702. if (!inplace && (a->grad)) {
  3703. is_node = true;
  3704. }
  3705. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  3706. result->op = GGML_OP_DUP;
  3707. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  3708. result->src[0] = a;
  3709. return result;
  3710. }
  3711. struct ggml_tensor * ggml_dup(
  3712. struct ggml_context * ctx,
  3713. struct ggml_tensor * a) {
  3714. return ggml_dup_impl(ctx, a, false);
  3715. }
  3716. struct ggml_tensor * ggml_dup_inplace(
  3717. struct ggml_context * ctx,
  3718. struct ggml_tensor * a) {
  3719. return ggml_dup_impl(ctx, a, true);
  3720. }
  3721. // ggml_add
  3722. static struct ggml_tensor * ggml_add_impl(
  3723. struct ggml_context * ctx,
  3724. struct ggml_tensor * a,
  3725. struct ggml_tensor * b,
  3726. bool inplace) {
  3727. GGML_ASSERT(ggml_can_repeat(b, a));
  3728. bool is_node = false;
  3729. if (!inplace && (a->grad || b->grad)) {
  3730. // TODO: support backward pass for broadcasting
  3731. GGML_ASSERT(ggml_are_same_shape(a, b));
  3732. is_node = true;
  3733. }
  3734. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  3735. result->op = GGML_OP_ADD;
  3736. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  3737. result->src[0] = a;
  3738. result->src[1] = b;
  3739. return result;
  3740. }
  3741. struct ggml_tensor * ggml_add(
  3742. struct ggml_context * ctx,
  3743. struct ggml_tensor * a,
  3744. struct ggml_tensor * b) {
  3745. return ggml_add_impl(ctx, a, b, false);
  3746. }
  3747. struct ggml_tensor * ggml_add_inplace(
  3748. struct ggml_context * ctx,
  3749. struct ggml_tensor * a,
  3750. struct ggml_tensor * b) {
  3751. return ggml_add_impl(ctx, a, b, true);
  3752. }
  3753. // ggml_add_cast
  3754. static struct ggml_tensor * ggml_add_cast_impl(
  3755. struct ggml_context * ctx,
  3756. struct ggml_tensor * a,
  3757. struct ggml_tensor * b,
  3758. enum ggml_type type) {
  3759. // TODO: support less-strict constraint
  3760. // GGML_ASSERT(ggml_can_repeat(b, a));
  3761. GGML_ASSERT(ggml_can_repeat_rows(b, a));
  3762. // currently only supported for quantized input and f16
  3763. GGML_ASSERT(ggml_is_quantized(a->type) ||
  3764. a->type == GGML_TYPE_F16 ||
  3765. a->type == GGML_TYPE_BF16);
  3766. bool is_node = false;
  3767. if (a->grad || b->grad) {
  3768. // TODO: support backward pass for broadcasting
  3769. GGML_ASSERT(ggml_are_same_shape(a, b));
  3770. is_node = true;
  3771. }
  3772. struct ggml_tensor * result = ggml_new_tensor(ctx, type, GGML_MAX_DIMS, a->ne);
  3773. result->op = GGML_OP_ADD;
  3774. result->grad = is_node ? ggml_new_tensor(ctx, GGML_TYPE_F32, GGML_MAX_DIMS, a->ne) : NULL;
  3775. result->src[0] = a;
  3776. result->src[1] = b;
  3777. return result;
  3778. }
  3779. struct ggml_tensor * ggml_add_cast(
  3780. struct ggml_context * ctx,
  3781. struct ggml_tensor * a,
  3782. struct ggml_tensor * b,
  3783. enum ggml_type type) {
  3784. return ggml_add_cast_impl(ctx, a, b, type);
  3785. }
  3786. // ggml_add1
  3787. static struct ggml_tensor * ggml_add1_impl(
  3788. struct ggml_context * ctx,
  3789. struct ggml_tensor * a,
  3790. struct ggml_tensor * b,
  3791. bool inplace) {
  3792. GGML_ASSERT(ggml_is_scalar(b));
  3793. GGML_ASSERT(ggml_is_padded_1d(a));
  3794. bool is_node = false;
  3795. if (a->grad || b->grad) {
  3796. is_node = true;
  3797. }
  3798. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  3799. result->op = GGML_OP_ADD1;
  3800. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  3801. result->src[0] = a;
  3802. result->src[1] = b;
  3803. return result;
  3804. }
  3805. struct ggml_tensor * ggml_add1(
  3806. struct ggml_context * ctx,
  3807. struct ggml_tensor * a,
  3808. struct ggml_tensor * b) {
  3809. return ggml_add1_impl(ctx, a, b, false);
  3810. }
  3811. struct ggml_tensor * ggml_add1_inplace(
  3812. struct ggml_context * ctx,
  3813. struct ggml_tensor * a,
  3814. struct ggml_tensor * b) {
  3815. return ggml_add1_impl(ctx, a, b, true);
  3816. }
  3817. // ggml_acc
  3818. static struct ggml_tensor * ggml_acc_impl(
  3819. struct ggml_context * ctx,
  3820. struct ggml_tensor * a,
  3821. struct ggml_tensor * b,
  3822. size_t nb1,
  3823. size_t nb2,
  3824. size_t nb3,
  3825. size_t offset,
  3826. bool inplace) {
  3827. GGML_ASSERT(ggml_nelements(b) <= ggml_nelements(a));
  3828. GGML_ASSERT(ggml_is_contiguous(a));
  3829. GGML_ASSERT(a->type == GGML_TYPE_F32);
  3830. GGML_ASSERT(b->type == GGML_TYPE_F32);
  3831. bool is_node = false;
  3832. if (!inplace && (a->grad || b->grad)) {
  3833. is_node = true;
  3834. }
  3835. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  3836. int32_t params[] = { nb1, nb2, nb3, offset, inplace ? 1 : 0 };
  3837. ggml_set_op_params(result, params, sizeof(params));
  3838. result->op = GGML_OP_ACC;
  3839. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  3840. result->src[0] = a;
  3841. result->src[1] = b;
  3842. return result;
  3843. }
  3844. struct ggml_tensor * ggml_acc(
  3845. struct ggml_context * ctx,
  3846. struct ggml_tensor * a,
  3847. struct ggml_tensor * b,
  3848. size_t nb1,
  3849. size_t nb2,
  3850. size_t nb3,
  3851. size_t offset) {
  3852. return ggml_acc_impl(ctx, a, b, nb1, nb2, nb3, offset, false);
  3853. }
  3854. struct ggml_tensor * ggml_acc_inplace(
  3855. struct ggml_context * ctx,
  3856. struct ggml_tensor * a,
  3857. struct ggml_tensor * b,
  3858. size_t nb1,
  3859. size_t nb2,
  3860. size_t nb3,
  3861. size_t offset) {
  3862. return ggml_acc_impl(ctx, a, b, nb1, nb2, nb3, offset, true);
  3863. }
  3864. // ggml_sub
  3865. static struct ggml_tensor * ggml_sub_impl(
  3866. struct ggml_context * ctx,
  3867. struct ggml_tensor * a,
  3868. struct ggml_tensor * b,
  3869. bool inplace) {
  3870. GGML_ASSERT(ggml_are_same_shape(a, b));
  3871. bool is_node = false;
  3872. if (!inplace && (a->grad || b->grad)) {
  3873. is_node = true;
  3874. }
  3875. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  3876. result->op = GGML_OP_SUB;
  3877. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  3878. result->src[0] = a;
  3879. result->src[1] = b;
  3880. return result;
  3881. }
  3882. struct ggml_tensor * ggml_sub(
  3883. struct ggml_context * ctx,
  3884. struct ggml_tensor * a,
  3885. struct ggml_tensor * b) {
  3886. return ggml_sub_impl(ctx, a, b, false);
  3887. }
  3888. struct ggml_tensor * ggml_sub_inplace(
  3889. struct ggml_context * ctx,
  3890. struct ggml_tensor * a,
  3891. struct ggml_tensor * b) {
  3892. return ggml_sub_impl(ctx, a, b, true);
  3893. }
  3894. // ggml_mul
  3895. static struct ggml_tensor * ggml_mul_impl(
  3896. struct ggml_context * ctx,
  3897. struct ggml_tensor * a,
  3898. struct ggml_tensor * b,
  3899. bool inplace) {
  3900. GGML_ASSERT(ggml_can_repeat(b, a));
  3901. bool is_node = false;
  3902. if (!inplace && (a->grad || b->grad)) {
  3903. // TODO: support backward pass for broadcasting
  3904. GGML_ASSERT(ggml_are_same_shape(a, b));
  3905. is_node = true;
  3906. }
  3907. if (inplace) {
  3908. GGML_ASSERT(!is_node);
  3909. }
  3910. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  3911. result->op = GGML_OP_MUL;
  3912. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  3913. result->src[0] = a;
  3914. result->src[1] = b;
  3915. return result;
  3916. }
  3917. struct ggml_tensor * ggml_mul(
  3918. struct ggml_context * ctx,
  3919. struct ggml_tensor * a,
  3920. struct ggml_tensor * b) {
  3921. return ggml_mul_impl(ctx, a, b, false);
  3922. }
  3923. struct ggml_tensor * ggml_mul_inplace(
  3924. struct ggml_context * ctx,
  3925. struct ggml_tensor * a,
  3926. struct ggml_tensor * b) {
  3927. return ggml_mul_impl(ctx, a, b, true);
  3928. }
  3929. // ggml_div
  3930. static struct ggml_tensor * ggml_div_impl(
  3931. struct ggml_context * ctx,
  3932. struct ggml_tensor * a,
  3933. struct ggml_tensor * b,
  3934. bool inplace) {
  3935. GGML_ASSERT(ggml_can_repeat(b, a));
  3936. bool is_node = false;
  3937. if (!inplace && (a->grad || b->grad)) {
  3938. is_node = true;
  3939. }
  3940. if (inplace) {
  3941. GGML_ASSERT(!is_node);
  3942. }
  3943. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  3944. result->op = GGML_OP_DIV;
  3945. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  3946. result->src[0] = a;
  3947. result->src[1] = b;
  3948. return result;
  3949. }
  3950. struct ggml_tensor * ggml_div(
  3951. struct ggml_context * ctx,
  3952. struct ggml_tensor * a,
  3953. struct ggml_tensor * b) {
  3954. return ggml_div_impl(ctx, a, b, false);
  3955. }
  3956. struct ggml_tensor * ggml_div_inplace(
  3957. struct ggml_context * ctx,
  3958. struct ggml_tensor * a,
  3959. struct ggml_tensor * b) {
  3960. return ggml_div_impl(ctx, a, b, true);
  3961. }
  3962. // ggml_sqr
  3963. static struct ggml_tensor * ggml_sqr_impl(
  3964. struct ggml_context * ctx,
  3965. struct ggml_tensor * a,
  3966. bool inplace) {
  3967. bool is_node = false;
  3968. if (!inplace && (a->grad)) {
  3969. is_node = true;
  3970. }
  3971. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  3972. result->op = GGML_OP_SQR;
  3973. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  3974. result->src[0] = a;
  3975. return result;
  3976. }
  3977. struct ggml_tensor * ggml_sqr(
  3978. struct ggml_context * ctx,
  3979. struct ggml_tensor * a) {
  3980. return ggml_sqr_impl(ctx, a, false);
  3981. }
  3982. struct ggml_tensor * ggml_sqr_inplace(
  3983. struct ggml_context * ctx,
  3984. struct ggml_tensor * a) {
  3985. return ggml_sqr_impl(ctx, a, true);
  3986. }
  3987. // ggml_sqrt
  3988. static struct ggml_tensor * ggml_sqrt_impl(
  3989. struct ggml_context * ctx,
  3990. struct ggml_tensor * a,
  3991. bool inplace) {
  3992. bool is_node = false;
  3993. if (!inplace && (a->grad)) {
  3994. is_node = true;
  3995. }
  3996. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  3997. result->op = GGML_OP_SQRT;
  3998. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  3999. result->src[0] = a;
  4000. return result;
  4001. }
  4002. struct ggml_tensor * ggml_sqrt(
  4003. struct ggml_context * ctx,
  4004. struct ggml_tensor * a) {
  4005. return ggml_sqrt_impl(ctx, a, false);
  4006. }
  4007. struct ggml_tensor * ggml_sqrt_inplace(
  4008. struct ggml_context * ctx,
  4009. struct ggml_tensor * a) {
  4010. return ggml_sqrt_impl(ctx, a, true);
  4011. }
  4012. // ggml_log
  4013. static struct ggml_tensor * ggml_log_impl(
  4014. struct ggml_context * ctx,
  4015. struct ggml_tensor * a,
  4016. bool inplace) {
  4017. bool is_node = false;
  4018. if (!inplace && (a->grad)) {
  4019. is_node = true;
  4020. }
  4021. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  4022. result->op = GGML_OP_LOG;
  4023. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4024. result->src[0] = a;
  4025. return result;
  4026. }
  4027. struct ggml_tensor * ggml_log(
  4028. struct ggml_context * ctx,
  4029. struct ggml_tensor * a) {
  4030. return ggml_log_impl(ctx, a, false);
  4031. }
  4032. struct ggml_tensor * ggml_log_inplace(
  4033. struct ggml_context * ctx,
  4034. struct ggml_tensor * a) {
  4035. return ggml_log_impl(ctx, a, true);
  4036. }
  4037. // ggml_sum
  4038. struct ggml_tensor * ggml_sum(
  4039. struct ggml_context * ctx,
  4040. struct ggml_tensor * a) {
  4041. bool is_node = false;
  4042. if (a->grad) {
  4043. is_node = true;
  4044. }
  4045. struct ggml_tensor * result = ggml_new_tensor_1d(ctx, a->type, 1);
  4046. result->op = GGML_OP_SUM;
  4047. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4048. result->src[0] = a;
  4049. return result;
  4050. }
  4051. // ggml_sum_rows
  4052. struct ggml_tensor * ggml_sum_rows(
  4053. struct ggml_context * ctx,
  4054. struct ggml_tensor * a) {
  4055. bool is_node = false;
  4056. if (a->grad) {
  4057. is_node = true;
  4058. }
  4059. int64_t ne[GGML_MAX_DIMS] = { 1 };
  4060. for (int i = 1; i < GGML_MAX_DIMS; ++i) {
  4061. ne[i] = a->ne[i];
  4062. }
  4063. struct ggml_tensor * result = ggml_new_tensor(ctx, a->type, GGML_MAX_DIMS, ne);
  4064. result->op = GGML_OP_SUM_ROWS;
  4065. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4066. result->src[0] = a;
  4067. return result;
  4068. }
  4069. // ggml_mean
  4070. struct ggml_tensor * ggml_mean(
  4071. struct ggml_context * ctx,
  4072. struct ggml_tensor * a) {
  4073. bool is_node = false;
  4074. if (a->grad) {
  4075. GGML_ASSERT(false); // TODO: implement
  4076. is_node = true;
  4077. }
  4078. int64_t ne[4] = { 1, a->ne[1], a->ne[2], a->ne[3] };
  4079. struct ggml_tensor * result = ggml_new_tensor(ctx, GGML_TYPE_F32, 4, ne);
  4080. result->op = GGML_OP_MEAN;
  4081. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4082. result->src[0] = a;
  4083. return result;
  4084. }
  4085. // ggml_argmax
  4086. struct ggml_tensor * ggml_argmax(
  4087. struct ggml_context * ctx,
  4088. struct ggml_tensor * a) {
  4089. GGML_ASSERT(ggml_is_matrix(a));
  4090. bool is_node = false;
  4091. if (a->grad) {
  4092. GGML_ASSERT(false);
  4093. is_node = true;
  4094. }
  4095. struct ggml_tensor * result = ggml_new_tensor_1d(ctx, GGML_TYPE_I32, a->ne[1]);
  4096. result->op = GGML_OP_ARGMAX;
  4097. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4098. result->src[0] = a;
  4099. return result;
  4100. }
  4101. // ggml_repeat
  4102. struct ggml_tensor * ggml_repeat(
  4103. struct ggml_context * ctx,
  4104. struct ggml_tensor * a,
  4105. struct ggml_tensor * b) {
  4106. GGML_ASSERT(ggml_can_repeat(a, b));
  4107. bool is_node = false;
  4108. if (a->grad) {
  4109. is_node = true;
  4110. }
  4111. struct ggml_tensor * result = ggml_new_tensor(ctx, a->type, GGML_MAX_DIMS, b->ne);
  4112. result->op = GGML_OP_REPEAT;
  4113. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4114. result->src[0] = a;
  4115. return result;
  4116. }
  4117. // ggml_repeat_back
  4118. struct ggml_tensor * ggml_repeat_back(
  4119. struct ggml_context * ctx,
  4120. struct ggml_tensor * a,
  4121. struct ggml_tensor * b) {
  4122. GGML_ASSERT(ggml_can_repeat(b, a));
  4123. bool is_node = false;
  4124. if (a->grad) {
  4125. is_node = true;
  4126. }
  4127. if (ggml_are_same_shape(a, b) && !is_node) {
  4128. return a;
  4129. }
  4130. struct ggml_tensor * result = ggml_new_tensor(ctx, a->type, GGML_MAX_DIMS, b->ne);
  4131. result->op = GGML_OP_REPEAT_BACK;
  4132. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4133. result->src[0] = a;
  4134. return result;
  4135. }
  4136. // ggml_concat
  4137. struct ggml_tensor * ggml_concat(
  4138. struct ggml_context * ctx,
  4139. struct ggml_tensor * a,
  4140. struct ggml_tensor * b,
  4141. int dim) {
  4142. GGML_ASSERT(dim >= 0 && dim < GGML_MAX_DIMS);
  4143. int64_t ne[GGML_MAX_DIMS];
  4144. for (int d = 0; d < GGML_MAX_DIMS; ++d) {
  4145. if (d == dim) {
  4146. ne[d] = a->ne[d] + b->ne[d];
  4147. continue;
  4148. }
  4149. GGML_ASSERT(a->ne[d] == b->ne[d]);
  4150. ne[d] = a->ne[d];
  4151. }
  4152. bool is_node = false;
  4153. if (a->grad || b->grad) {
  4154. is_node = true;
  4155. }
  4156. struct ggml_tensor * result = ggml_new_tensor(ctx, a->type, GGML_MAX_DIMS, ne);
  4157. ggml_set_op_params_i32(result, 0, dim);
  4158. result->op = GGML_OP_CONCAT;
  4159. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4160. result->src[0] = a;
  4161. result->src[1] = b;
  4162. return result;
  4163. }
  4164. // ggml_abs
  4165. struct ggml_tensor * ggml_abs(
  4166. struct ggml_context * ctx,
  4167. struct ggml_tensor * a) {
  4168. return ggml_unary(ctx, a, GGML_UNARY_OP_ABS);
  4169. }
  4170. struct ggml_tensor * ggml_abs_inplace(
  4171. struct ggml_context * ctx,
  4172. struct ggml_tensor * a) {
  4173. return ggml_unary_inplace(ctx, a, GGML_UNARY_OP_ABS);
  4174. }
  4175. // ggml_sgn
  4176. struct ggml_tensor * ggml_sgn(
  4177. struct ggml_context * ctx,
  4178. struct ggml_tensor * a) {
  4179. return ggml_unary(ctx, a, GGML_UNARY_OP_SGN);
  4180. }
  4181. struct ggml_tensor * ggml_sgn_inplace(
  4182. struct ggml_context * ctx,
  4183. struct ggml_tensor * a) {
  4184. return ggml_unary_inplace(ctx, a, GGML_UNARY_OP_SGN);
  4185. }
  4186. // ggml_neg
  4187. struct ggml_tensor * ggml_neg(
  4188. struct ggml_context * ctx,
  4189. struct ggml_tensor * a) {
  4190. return ggml_unary(ctx, a, GGML_UNARY_OP_NEG);
  4191. }
  4192. struct ggml_tensor * ggml_neg_inplace(
  4193. struct ggml_context * ctx,
  4194. struct ggml_tensor * a) {
  4195. return ggml_unary_inplace(ctx, a, GGML_UNARY_OP_NEG);
  4196. }
  4197. // ggml_step
  4198. struct ggml_tensor * ggml_step(
  4199. struct ggml_context * ctx,
  4200. struct ggml_tensor * a) {
  4201. return ggml_unary(ctx, a, GGML_UNARY_OP_STEP);
  4202. }
  4203. struct ggml_tensor * ggml_step_inplace(
  4204. struct ggml_context * ctx,
  4205. struct ggml_tensor * a) {
  4206. return ggml_unary_inplace(ctx, a, GGML_UNARY_OP_STEP);
  4207. }
  4208. // ggml_tanh
  4209. struct ggml_tensor * ggml_tanh(
  4210. struct ggml_context * ctx,
  4211. struct ggml_tensor * a) {
  4212. return ggml_unary(ctx, a, GGML_UNARY_OP_TANH);
  4213. }
  4214. struct ggml_tensor * ggml_tanh_inplace(
  4215. struct ggml_context * ctx,
  4216. struct ggml_tensor * a) {
  4217. return ggml_unary_inplace(ctx, a, GGML_UNARY_OP_TANH);
  4218. }
  4219. // ggml_elu
  4220. struct ggml_tensor * ggml_elu(
  4221. struct ggml_context * ctx,
  4222. struct ggml_tensor * a) {
  4223. return ggml_unary(ctx, a, GGML_UNARY_OP_ELU);
  4224. }
  4225. struct ggml_tensor * ggml_elu_inplace(
  4226. struct ggml_context * ctx,
  4227. struct ggml_tensor * a) {
  4228. return ggml_unary_inplace(ctx, a, GGML_UNARY_OP_ELU);
  4229. }
  4230. // ggml_relu
  4231. struct ggml_tensor * ggml_relu(
  4232. struct ggml_context * ctx,
  4233. struct ggml_tensor * a) {
  4234. return ggml_unary(ctx, a, GGML_UNARY_OP_RELU);
  4235. }
  4236. struct ggml_tensor * ggml_relu_inplace(
  4237. struct ggml_context * ctx,
  4238. struct ggml_tensor * a) {
  4239. return ggml_unary_inplace(ctx, a, GGML_UNARY_OP_RELU);
  4240. }
  4241. // ggml_leaky_relu
  4242. struct ggml_tensor * ggml_leaky_relu(
  4243. struct ggml_context * ctx,
  4244. struct ggml_tensor * a, float negative_slope, bool inplace) {
  4245. bool is_node = false;
  4246. if (!inplace && (a->grad)) {
  4247. is_node = true;
  4248. }
  4249. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  4250. ggml_set_op_params(result, &negative_slope, sizeof(negative_slope));
  4251. result->op = GGML_OP_LEAKY_RELU;
  4252. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4253. result->src[0] = a;
  4254. return result;
  4255. }
  4256. // ggml_sigmoid
  4257. struct ggml_tensor * ggml_sigmoid(
  4258. struct ggml_context * ctx,
  4259. struct ggml_tensor * a) {
  4260. return ggml_unary(ctx, a, GGML_UNARY_OP_SIGMOID);
  4261. }
  4262. struct ggml_tensor * ggml_sigmoid_inplace(
  4263. struct ggml_context * ctx,
  4264. struct ggml_tensor * a) {
  4265. return ggml_unary_inplace(ctx, a, GGML_UNARY_OP_SIGMOID);
  4266. }
  4267. // ggml_gelu
  4268. struct ggml_tensor * ggml_gelu(
  4269. struct ggml_context * ctx,
  4270. struct ggml_tensor * a) {
  4271. return ggml_unary(ctx, a, GGML_UNARY_OP_GELU);
  4272. }
  4273. struct ggml_tensor * ggml_gelu_inplace(
  4274. struct ggml_context * ctx,
  4275. struct ggml_tensor * a) {
  4276. return ggml_unary_inplace(ctx, a, GGML_UNARY_OP_GELU);
  4277. }
  4278. // ggml_gelu_quick
  4279. struct ggml_tensor * ggml_gelu_quick(
  4280. struct ggml_context * ctx,
  4281. struct ggml_tensor * a) {
  4282. return ggml_unary(ctx, a, GGML_UNARY_OP_GELU_QUICK);
  4283. }
  4284. struct ggml_tensor * ggml_gelu_quick_inplace(
  4285. struct ggml_context * ctx,
  4286. struct ggml_tensor * a) {
  4287. return ggml_unary_inplace(ctx, a, GGML_UNARY_OP_GELU_QUICK);
  4288. }
  4289. // ggml_silu
  4290. struct ggml_tensor * ggml_silu(
  4291. struct ggml_context * ctx,
  4292. struct ggml_tensor * a) {
  4293. return ggml_unary(ctx, a, GGML_UNARY_OP_SILU);
  4294. }
  4295. struct ggml_tensor * ggml_silu_inplace(
  4296. struct ggml_context * ctx,
  4297. struct ggml_tensor * a) {
  4298. return ggml_unary_inplace(ctx, a, GGML_UNARY_OP_SILU);
  4299. }
  4300. // ggml_silu_back
  4301. struct ggml_tensor * ggml_silu_back(
  4302. struct ggml_context * ctx,
  4303. struct ggml_tensor * a,
  4304. struct ggml_tensor * b) {
  4305. bool is_node = false;
  4306. if (a->grad || b->grad) {
  4307. // TODO: implement backward
  4308. is_node = true;
  4309. }
  4310. struct ggml_tensor * result = ggml_dup_tensor(ctx, a);
  4311. result->op = GGML_OP_SILU_BACK;
  4312. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4313. result->src[0] = a;
  4314. result->src[1] = b;
  4315. return result;
  4316. }
  4317. // ggml hardswish
  4318. struct ggml_tensor * ggml_hardswish(
  4319. struct ggml_context * ctx,
  4320. struct ggml_tensor * a) {
  4321. return ggml_unary(ctx, a, GGML_UNARY_OP_HARDSWISH);
  4322. }
  4323. // ggml hardsigmoid
  4324. struct ggml_tensor * ggml_hardsigmoid(
  4325. struct ggml_context * ctx,
  4326. struct ggml_tensor * a) {
  4327. return ggml_unary(ctx, a, GGML_UNARY_OP_HARDSIGMOID);
  4328. }
  4329. // ggml_norm
  4330. static struct ggml_tensor * ggml_norm_impl(
  4331. struct ggml_context * ctx,
  4332. struct ggml_tensor * a,
  4333. float eps,
  4334. bool inplace) {
  4335. bool is_node = false;
  4336. if (!inplace && (a->grad)) {
  4337. GGML_ASSERT(false); // TODO: implement backward
  4338. is_node = true;
  4339. }
  4340. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  4341. ggml_set_op_params(result, &eps, sizeof(eps));
  4342. result->op = GGML_OP_NORM;
  4343. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4344. result->src[0] = a;
  4345. return result;
  4346. }
  4347. struct ggml_tensor * ggml_norm(
  4348. struct ggml_context * ctx,
  4349. struct ggml_tensor * a,
  4350. float eps) {
  4351. return ggml_norm_impl(ctx, a, eps, false);
  4352. }
  4353. struct ggml_tensor * ggml_norm_inplace(
  4354. struct ggml_context * ctx,
  4355. struct ggml_tensor * a,
  4356. float eps) {
  4357. return ggml_norm_impl(ctx, a, eps, true);
  4358. }
  4359. // ggml_rms_norm
  4360. static struct ggml_tensor * ggml_rms_norm_impl(
  4361. struct ggml_context * ctx,
  4362. struct ggml_tensor * a,
  4363. float eps,
  4364. bool inplace) {
  4365. bool is_node = false;
  4366. if (!inplace && (a->grad)) {
  4367. is_node = true;
  4368. }
  4369. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  4370. ggml_set_op_params(result, &eps, sizeof(eps));
  4371. result->op = GGML_OP_RMS_NORM;
  4372. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4373. result->src[0] = a;
  4374. return result;
  4375. }
  4376. struct ggml_tensor * ggml_rms_norm(
  4377. struct ggml_context * ctx,
  4378. struct ggml_tensor * a,
  4379. float eps) {
  4380. return ggml_rms_norm_impl(ctx, a, eps, false);
  4381. }
  4382. struct ggml_tensor * ggml_rms_norm_inplace(
  4383. struct ggml_context * ctx,
  4384. struct ggml_tensor * a,
  4385. float eps) {
  4386. return ggml_rms_norm_impl(ctx, a, eps, true);
  4387. }
  4388. // ggml_rms_norm_back
  4389. struct ggml_tensor * ggml_rms_norm_back(
  4390. struct ggml_context * ctx,
  4391. struct ggml_tensor * a,
  4392. struct ggml_tensor * b,
  4393. float eps) {
  4394. bool is_node = false;
  4395. if (a->grad) {
  4396. // TODO: implement backward
  4397. is_node = true;
  4398. }
  4399. struct ggml_tensor * result = ggml_dup_tensor(ctx, a);
  4400. ggml_set_op_params(result, &eps, sizeof(eps));
  4401. result->op = GGML_OP_RMS_NORM_BACK;
  4402. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4403. result->src[0] = a;
  4404. result->src[1] = b;
  4405. return result;
  4406. }
  4407. // ggml_group_norm
  4408. static struct ggml_tensor * ggml_group_norm_impl(
  4409. struct ggml_context * ctx,
  4410. struct ggml_tensor * a,
  4411. int n_groups,
  4412. bool inplace) {
  4413. bool is_node = false;
  4414. if (!inplace && (a->grad)) {
  4415. GGML_ASSERT(false); // TODO: implement backward
  4416. is_node = true;
  4417. }
  4418. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  4419. result->op_params[0] = n_groups;
  4420. result->op = GGML_OP_GROUP_NORM;
  4421. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4422. result->src[0] = a;
  4423. return result;
  4424. }
  4425. struct ggml_tensor * ggml_group_norm(
  4426. struct ggml_context * ctx,
  4427. struct ggml_tensor * a,
  4428. int n_groups) {
  4429. return ggml_group_norm_impl(ctx, a, n_groups, false);
  4430. }
  4431. struct ggml_tensor * ggml_group_norm_inplace(
  4432. struct ggml_context * ctx,
  4433. struct ggml_tensor * a,
  4434. int n_groups) {
  4435. return ggml_group_norm_impl(ctx, a, n_groups, true);
  4436. }
  4437. // ggml_mul_mat
  4438. struct ggml_tensor * ggml_mul_mat(
  4439. struct ggml_context * ctx,
  4440. struct ggml_tensor * a,
  4441. struct ggml_tensor * b) {
  4442. GGML_ASSERT(ggml_can_mul_mat(a, b));
  4443. GGML_ASSERT(!ggml_is_transposed(a));
  4444. bool is_node = false;
  4445. if (a->grad || b->grad) {
  4446. is_node = true;
  4447. }
  4448. const int64_t ne[4] = { a->ne[1], b->ne[1], b->ne[2], b->ne[3] };
  4449. struct ggml_tensor * result = ggml_new_tensor(ctx, GGML_TYPE_F32, 4, ne);
  4450. result->op = GGML_OP_MUL_MAT;
  4451. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4452. result->src[0] = a;
  4453. result->src[1] = b;
  4454. return result;
  4455. }
  4456. void ggml_mul_mat_set_prec(
  4457. struct ggml_tensor * a,
  4458. enum ggml_prec prec) {
  4459. GGML_ASSERT(a->op == GGML_OP_MUL_MAT);
  4460. const int32_t prec_i32 = (int32_t) prec;
  4461. ggml_set_op_params_i32(a, 0, prec_i32);
  4462. }
  4463. // ggml_mul_mat_id
  4464. /*
  4465. c = ggml_mul_mat_id(ctx, as, b, ids);
  4466. as -> [cols, rows, n_expert]
  4467. ids -> [n_experts_used, n_tokens] (i32)
  4468. b -> [cols, n_expert_used, n_tokens]
  4469. c -> [cols, n_expert_used, n_tokens]
  4470. in b, n_experts_used can be broadcasted to match the n_expert_used of ids
  4471. c ~= as[:,:,i] @ b[:,i%r,t], i = ids[e,t] for all e,t in ids
  4472. */
  4473. struct ggml_tensor * ggml_mul_mat_id(
  4474. struct ggml_context * ctx,
  4475. struct ggml_tensor * as,
  4476. struct ggml_tensor * b,
  4477. struct ggml_tensor * ids) {
  4478. GGML_ASSERT(!ggml_is_transposed(as));
  4479. GGML_ASSERT(ids->type == GGML_TYPE_I32);
  4480. GGML_ASSERT(as->ne[3] == 1); // as is 3d (one matrix per expert)
  4481. GGML_ASSERT(b->ne[3] == 1); // b is 3d
  4482. GGML_ASSERT(ids->ne[2] == 1 && ids->ne[3] == 1); // ids is 2d
  4483. GGML_ASSERT(ids->ne[1] == b->ne[2]); // must have an expert list per b row
  4484. GGML_ASSERT(as->ne[0] == b->ne[0]); // can_mul_mat
  4485. GGML_ASSERT(ids->ne[0] % b->ne[1] == 0); // can broadcast
  4486. bool is_node = false;
  4487. if (as->grad || b->grad) {
  4488. is_node = true;
  4489. }
  4490. const int64_t ne[4] = { as->ne[1], ids->ne[0], b->ne[2], 1 };
  4491. struct ggml_tensor * result = ggml_new_tensor(ctx, GGML_TYPE_F32, 4, ne);
  4492. result->op = GGML_OP_MUL_MAT_ID;
  4493. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4494. result->src[0] = as;
  4495. result->src[1] = b;
  4496. result->src[2] = ids;
  4497. return result;
  4498. }
  4499. // ggml_out_prod
  4500. struct ggml_tensor * ggml_out_prod(
  4501. struct ggml_context * ctx,
  4502. struct ggml_tensor * a,
  4503. struct ggml_tensor * b) {
  4504. GGML_ASSERT(ggml_can_out_prod(a, b));
  4505. GGML_ASSERT(!ggml_is_transposed(a));
  4506. bool is_node = false;
  4507. if (a->grad || b->grad) {
  4508. is_node = true;
  4509. }
  4510. // a is broadcastable to b for ne[2] and ne[3] -> use b->ne[2] and b->ne[3]
  4511. const int64_t ne[4] = { a->ne[0], b->ne[0], b->ne[2], b->ne[3] };
  4512. struct ggml_tensor * result = ggml_new_tensor(ctx, GGML_TYPE_F32, 4, ne);
  4513. result->op = GGML_OP_OUT_PROD;
  4514. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4515. result->src[0] = a;
  4516. result->src[1] = b;
  4517. return result;
  4518. }
  4519. // ggml_scale
  4520. static struct ggml_tensor * ggml_scale_impl(
  4521. struct ggml_context * ctx,
  4522. struct ggml_tensor * a,
  4523. float s,
  4524. bool inplace) {
  4525. GGML_ASSERT(ggml_is_padded_1d(a));
  4526. bool is_node = false;
  4527. if (a->grad) {
  4528. is_node = true;
  4529. }
  4530. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  4531. ggml_set_op_params(result, &s, sizeof(s));
  4532. result->op = GGML_OP_SCALE;
  4533. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4534. result->src[0] = a;
  4535. return result;
  4536. }
  4537. struct ggml_tensor * ggml_scale(
  4538. struct ggml_context * ctx,
  4539. struct ggml_tensor * a,
  4540. float s) {
  4541. return ggml_scale_impl(ctx, a, s, false);
  4542. }
  4543. struct ggml_tensor * ggml_scale_inplace(
  4544. struct ggml_context * ctx,
  4545. struct ggml_tensor * a,
  4546. float s) {
  4547. return ggml_scale_impl(ctx, a, s, true);
  4548. }
  4549. // ggml_set
  4550. static struct ggml_tensor * ggml_set_impl(
  4551. struct ggml_context * ctx,
  4552. struct ggml_tensor * a,
  4553. struct ggml_tensor * b,
  4554. size_t nb1,
  4555. size_t nb2,
  4556. size_t nb3,
  4557. size_t offset,
  4558. bool inplace) {
  4559. GGML_ASSERT(ggml_nelements(a) >= ggml_nelements(b));
  4560. bool is_node = false;
  4561. if (a->grad || b->grad) {
  4562. is_node = true;
  4563. }
  4564. // make a view of the destination
  4565. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  4566. int32_t params[] = { nb1, nb2, nb3, offset, inplace ? 1 : 0 };
  4567. ggml_set_op_params(result, params, sizeof(params));
  4568. result->op = GGML_OP_SET;
  4569. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4570. result->src[0] = a;
  4571. result->src[1] = b;
  4572. return result;
  4573. }
  4574. struct ggml_tensor * ggml_set(
  4575. struct ggml_context * ctx,
  4576. struct ggml_tensor * a,
  4577. struct ggml_tensor * b,
  4578. size_t nb1,
  4579. size_t nb2,
  4580. size_t nb3,
  4581. size_t offset) {
  4582. return ggml_set_impl(ctx, a, b, nb1, nb2, nb3, offset, false);
  4583. }
  4584. struct ggml_tensor * ggml_set_inplace(
  4585. struct ggml_context * ctx,
  4586. struct ggml_tensor * a,
  4587. struct ggml_tensor * b,
  4588. size_t nb1,
  4589. size_t nb2,
  4590. size_t nb3,
  4591. size_t offset) {
  4592. return ggml_set_impl(ctx, a, b, nb1, nb2, nb3, offset, true);
  4593. }
  4594. struct ggml_tensor * ggml_set_1d(
  4595. struct ggml_context * ctx,
  4596. struct ggml_tensor * a,
  4597. struct ggml_tensor * b,
  4598. size_t offset) {
  4599. return ggml_set_impl(ctx, a, b, a->nb[1], a->nb[2], a->nb[3], offset, false);
  4600. }
  4601. struct ggml_tensor * ggml_set_1d_inplace(
  4602. struct ggml_context * ctx,
  4603. struct ggml_tensor * a,
  4604. struct ggml_tensor * b,
  4605. size_t offset) {
  4606. return ggml_set_impl(ctx, a, b, a->nb[1], a->nb[2], a->nb[3], offset, true);
  4607. }
  4608. struct ggml_tensor * ggml_set_2d(
  4609. struct ggml_context * ctx,
  4610. struct ggml_tensor * a,
  4611. struct ggml_tensor * b,
  4612. size_t nb1,
  4613. size_t offset) {
  4614. return ggml_set_impl(ctx, a, b, nb1, a->nb[2], a->nb[3], offset, false);
  4615. }
  4616. struct ggml_tensor * ggml_set_2d_inplace(
  4617. struct ggml_context * ctx,
  4618. struct ggml_tensor * a,
  4619. struct ggml_tensor * b,
  4620. size_t nb1,
  4621. size_t offset) {
  4622. return ggml_set_impl(ctx, a, b, nb1, a->nb[2], a->nb[3], offset, true);
  4623. }
  4624. // ggml_cpy
  4625. static struct ggml_tensor * ggml_cpy_impl(
  4626. struct ggml_context * ctx,
  4627. struct ggml_tensor * a,
  4628. struct ggml_tensor * b) {
  4629. GGML_ASSERT(ggml_nelements(a) == ggml_nelements(b));
  4630. bool is_node = false;
  4631. if (a->grad || b->grad) {
  4632. // inplace is false and either one have a grad
  4633. is_node = true;
  4634. }
  4635. // make a view of the destination
  4636. struct ggml_tensor * result = ggml_view_tensor(ctx, b);
  4637. if (strlen(b->name) > 0) {
  4638. ggml_format_name(result, "%s (copy of %s)", b->name, a->name);
  4639. } else {
  4640. ggml_format_name(result, "%s (copy)", a->name);
  4641. }
  4642. result->op = GGML_OP_CPY;
  4643. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4644. result->src[0] = a;
  4645. result->src[1] = b;
  4646. return result;
  4647. }
  4648. struct ggml_tensor * ggml_cpy(
  4649. struct ggml_context * ctx,
  4650. struct ggml_tensor * a,
  4651. struct ggml_tensor * b) {
  4652. return ggml_cpy_impl(ctx, a, b);
  4653. }
  4654. struct ggml_tensor * ggml_cast(
  4655. struct ggml_context * ctx,
  4656. struct ggml_tensor * a,
  4657. enum ggml_type type) {
  4658. bool is_node = false;
  4659. struct ggml_tensor * result = ggml_new_tensor(ctx, type, GGML_MAX_DIMS, a->ne);
  4660. ggml_format_name(result, "%s (copy)", a->name);
  4661. result->op = GGML_OP_CPY;
  4662. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4663. result->src[0] = a;
  4664. result->src[1] = result;
  4665. return result;
  4666. }
  4667. // ggml_cont
  4668. static struct ggml_tensor * ggml_cont_impl(
  4669. struct ggml_context * ctx,
  4670. struct ggml_tensor * a) {
  4671. bool is_node = false;
  4672. if (a->grad) {
  4673. is_node = true;
  4674. }
  4675. struct ggml_tensor * result = ggml_dup_tensor(ctx, a);
  4676. ggml_format_name(result, "%s (cont)", a->name);
  4677. result->op = GGML_OP_CONT;
  4678. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4679. result->src[0] = a;
  4680. return result;
  4681. }
  4682. struct ggml_tensor * ggml_cont(
  4683. struct ggml_context * ctx,
  4684. struct ggml_tensor * a) {
  4685. return ggml_cont_impl(ctx, a);
  4686. }
  4687. // make contiguous, with new shape
  4688. GGML_API struct ggml_tensor * ggml_cont_1d(
  4689. struct ggml_context * ctx,
  4690. struct ggml_tensor * a,
  4691. int64_t ne0) {
  4692. return ggml_cont_4d(ctx, a, ne0, 1, 1, 1);
  4693. }
  4694. GGML_API struct ggml_tensor * ggml_cont_2d(
  4695. struct ggml_context * ctx,
  4696. struct ggml_tensor * a,
  4697. int64_t ne0,
  4698. int64_t ne1) {
  4699. return ggml_cont_4d(ctx, a, ne0, ne1, 1, 1);
  4700. }
  4701. GGML_API struct ggml_tensor * ggml_cont_3d(
  4702. struct ggml_context * ctx,
  4703. struct ggml_tensor * a,
  4704. int64_t ne0,
  4705. int64_t ne1,
  4706. int64_t ne2) {
  4707. return ggml_cont_4d(ctx, a, ne0, ne1, ne2, 1);
  4708. }
  4709. struct ggml_tensor * ggml_cont_4d(
  4710. struct ggml_context * ctx,
  4711. struct ggml_tensor * a,
  4712. int64_t ne0,
  4713. int64_t ne1,
  4714. int64_t ne2,
  4715. int64_t ne3) {
  4716. GGML_ASSERT(ggml_nelements(a) == (ne0*ne1*ne2*ne3));
  4717. bool is_node = false;
  4718. struct ggml_tensor * result = ggml_new_tensor_4d(ctx, a->type, ne0, ne1, ne2, ne3);
  4719. ggml_format_name(result, "%s (cont)", a->name);
  4720. result->op = GGML_OP_CONT;
  4721. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4722. result->src[0] = a;
  4723. return result;
  4724. }
  4725. // ggml_reshape
  4726. struct ggml_tensor * ggml_reshape(
  4727. struct ggml_context * ctx,
  4728. struct ggml_tensor * a,
  4729. struct ggml_tensor * b) {
  4730. GGML_ASSERT(ggml_is_contiguous(a));
  4731. // as only the shape of b is relevant, and not its memory layout, b is allowed to be non contiguous.
  4732. GGML_ASSERT(ggml_nelements(a) == ggml_nelements(b));
  4733. bool is_node = false;
  4734. if (a->grad) {
  4735. is_node = true;
  4736. }
  4737. if (b->grad) {
  4738. // gradient propagation is not supported
  4739. //GGML_ASSERT(false);
  4740. }
  4741. struct ggml_tensor * result = ggml_new_tensor_impl(ctx, a->type, GGML_MAX_DIMS, b->ne, a, 0);
  4742. ggml_format_name(result, "%s (reshaped)", a->name);
  4743. result->op = GGML_OP_RESHAPE;
  4744. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4745. result->src[0] = a;
  4746. return result;
  4747. }
  4748. struct ggml_tensor * ggml_reshape_1d(
  4749. struct ggml_context * ctx,
  4750. struct ggml_tensor * a,
  4751. int64_t ne0) {
  4752. GGML_ASSERT(ggml_is_contiguous(a));
  4753. GGML_ASSERT(ggml_nelements(a) == ne0);
  4754. bool is_node = false;
  4755. if (a->grad) {
  4756. is_node = true;
  4757. }
  4758. const int64_t ne[1] = { ne0 };
  4759. struct ggml_tensor * result = ggml_new_tensor_impl(ctx, a->type, 1, ne, a, 0);
  4760. ggml_format_name(result, "%s (reshaped)", a->name);
  4761. result->op = GGML_OP_RESHAPE;
  4762. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4763. result->src[0] = a;
  4764. return result;
  4765. }
  4766. struct ggml_tensor * ggml_reshape_2d(
  4767. struct ggml_context * ctx,
  4768. struct ggml_tensor * a,
  4769. int64_t ne0,
  4770. int64_t ne1) {
  4771. GGML_ASSERT(ggml_is_contiguous(a));
  4772. GGML_ASSERT(ggml_nelements(a) == ne0*ne1);
  4773. bool is_node = false;
  4774. if (a->grad) {
  4775. is_node = true;
  4776. }
  4777. const int64_t ne[2] = { ne0, ne1 };
  4778. struct ggml_tensor * result = ggml_new_tensor_impl(ctx, a->type, 2, ne, a, 0);
  4779. ggml_format_name(result, "%s (reshaped)", a->name);
  4780. result->op = GGML_OP_RESHAPE;
  4781. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4782. result->src[0] = a;
  4783. return result;
  4784. }
  4785. struct ggml_tensor * ggml_reshape_3d(
  4786. struct ggml_context * ctx,
  4787. struct ggml_tensor * a,
  4788. int64_t ne0,
  4789. int64_t ne1,
  4790. int64_t ne2) {
  4791. GGML_ASSERT(ggml_is_contiguous(a));
  4792. GGML_ASSERT(ggml_nelements(a) == ne0*ne1*ne2);
  4793. bool is_node = false;
  4794. if (a->grad) {
  4795. is_node = true;
  4796. }
  4797. const int64_t ne[3] = { ne0, ne1, ne2 };
  4798. struct ggml_tensor * result = ggml_new_tensor_impl(ctx, a->type, 3, ne, a, 0);
  4799. ggml_format_name(result, "%s (reshaped)", a->name);
  4800. result->op = GGML_OP_RESHAPE;
  4801. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4802. result->src[0] = a;
  4803. return result;
  4804. }
  4805. struct ggml_tensor * ggml_reshape_4d(
  4806. struct ggml_context * ctx,
  4807. struct ggml_tensor * a,
  4808. int64_t ne0,
  4809. int64_t ne1,
  4810. int64_t ne2,
  4811. int64_t ne3) {
  4812. GGML_ASSERT(ggml_is_contiguous(a));
  4813. GGML_ASSERT(ggml_nelements(a) == ne0*ne1*ne2*ne3);
  4814. bool is_node = false;
  4815. if (a->grad) {
  4816. is_node = true;
  4817. }
  4818. const int64_t ne[4] = { ne0, ne1, ne2, ne3 };
  4819. struct ggml_tensor * result = ggml_new_tensor_impl(ctx, a->type, 4, ne, a, 0);
  4820. ggml_format_name(result, "%s (reshaped)", a->name);
  4821. result->op = GGML_OP_RESHAPE;
  4822. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4823. result->src[0] = a;
  4824. return result;
  4825. }
  4826. static struct ggml_tensor * ggml_view_impl(
  4827. struct ggml_context * ctx,
  4828. struct ggml_tensor * a,
  4829. int n_dims,
  4830. const int64_t * ne,
  4831. size_t offset) {
  4832. bool is_node = false;
  4833. if (a->grad) {
  4834. is_node = true;
  4835. }
  4836. struct ggml_tensor * result = ggml_new_tensor_impl(ctx, a->type, n_dims, ne, a, offset);
  4837. ggml_format_name(result, "%s (view)", a->name);
  4838. ggml_set_op_params(result, &offset, sizeof(offset));
  4839. result->op = GGML_OP_VIEW;
  4840. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4841. result->src[0] = a;
  4842. return result;
  4843. }
  4844. // ggml_view_1d
  4845. struct ggml_tensor * ggml_view_1d(
  4846. struct ggml_context * ctx,
  4847. struct ggml_tensor * a,
  4848. int64_t ne0,
  4849. size_t offset) {
  4850. struct ggml_tensor * result = ggml_view_impl(ctx, a, 1, &ne0, offset);
  4851. return result;
  4852. }
  4853. // ggml_view_2d
  4854. struct ggml_tensor * ggml_view_2d(
  4855. struct ggml_context * ctx,
  4856. struct ggml_tensor * a,
  4857. int64_t ne0,
  4858. int64_t ne1,
  4859. size_t nb1,
  4860. size_t offset) {
  4861. const int64_t ne[2] = { ne0, ne1 };
  4862. struct ggml_tensor * result = ggml_view_impl(ctx, a, 2, ne, offset);
  4863. result->nb[1] = nb1;
  4864. result->nb[2] = result->nb[1]*ne1;
  4865. result->nb[3] = result->nb[2];
  4866. return result;
  4867. }
  4868. // ggml_view_3d
  4869. struct ggml_tensor * ggml_view_3d(
  4870. struct ggml_context * ctx,
  4871. struct ggml_tensor * a,
  4872. int64_t ne0,
  4873. int64_t ne1,
  4874. int64_t ne2,
  4875. size_t nb1,
  4876. size_t nb2,
  4877. size_t offset) {
  4878. const int64_t ne[3] = { ne0, ne1, ne2 };
  4879. struct ggml_tensor * result = ggml_view_impl(ctx, a, 3, ne, offset);
  4880. result->nb[1] = nb1;
  4881. result->nb[2] = nb2;
  4882. result->nb[3] = result->nb[2]*ne2;
  4883. return result;
  4884. }
  4885. // ggml_view_4d
  4886. struct ggml_tensor * ggml_view_4d(
  4887. struct ggml_context * ctx,
  4888. struct ggml_tensor * a,
  4889. int64_t ne0,
  4890. int64_t ne1,
  4891. int64_t ne2,
  4892. int64_t ne3,
  4893. size_t nb1,
  4894. size_t nb2,
  4895. size_t nb3,
  4896. size_t offset) {
  4897. const int64_t ne[4] = { ne0, ne1, ne2, ne3 };
  4898. struct ggml_tensor * result = ggml_view_impl(ctx, a, 4, ne, offset);
  4899. result->nb[1] = nb1;
  4900. result->nb[2] = nb2;
  4901. result->nb[3] = nb3;
  4902. return result;
  4903. }
  4904. // ggml_permute
  4905. struct ggml_tensor * ggml_permute(
  4906. struct ggml_context * ctx,
  4907. struct ggml_tensor * a,
  4908. int axis0,
  4909. int axis1,
  4910. int axis2,
  4911. int axis3) {
  4912. GGML_ASSERT(axis0 >= 0 && axis0 < GGML_MAX_DIMS);
  4913. GGML_ASSERT(axis1 >= 0 && axis1 < GGML_MAX_DIMS);
  4914. GGML_ASSERT(axis2 >= 0 && axis2 < GGML_MAX_DIMS);
  4915. GGML_ASSERT(axis3 >= 0 && axis3 < GGML_MAX_DIMS);
  4916. GGML_ASSERT(axis0 != axis1);
  4917. GGML_ASSERT(axis0 != axis2);
  4918. GGML_ASSERT(axis0 != axis3);
  4919. GGML_ASSERT(axis1 != axis2);
  4920. GGML_ASSERT(axis1 != axis3);
  4921. GGML_ASSERT(axis2 != axis3);
  4922. bool is_node = false;
  4923. if (a->grad) {
  4924. is_node = true;
  4925. }
  4926. struct ggml_tensor * result = ggml_view_tensor(ctx, a);
  4927. ggml_format_name(result, "%s (permuted)", a->name);
  4928. int ne[GGML_MAX_DIMS];
  4929. int nb[GGML_MAX_DIMS];
  4930. ne[axis0] = a->ne[0];
  4931. ne[axis1] = a->ne[1];
  4932. ne[axis2] = a->ne[2];
  4933. ne[axis3] = a->ne[3];
  4934. nb[axis0] = a->nb[0];
  4935. nb[axis1] = a->nb[1];
  4936. nb[axis2] = a->nb[2];
  4937. nb[axis3] = a->nb[3];
  4938. result->ne[0] = ne[0];
  4939. result->ne[1] = ne[1];
  4940. result->ne[2] = ne[2];
  4941. result->ne[3] = ne[3];
  4942. result->nb[0] = nb[0];
  4943. result->nb[1] = nb[1];
  4944. result->nb[2] = nb[2];
  4945. result->nb[3] = nb[3];
  4946. result->op = GGML_OP_PERMUTE;
  4947. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4948. result->src[0] = a;
  4949. int32_t params[] = { axis0, axis1, axis2, axis3 };
  4950. ggml_set_op_params(result, params, sizeof(params));
  4951. return result;
  4952. }
  4953. // ggml_transpose
  4954. struct ggml_tensor * ggml_transpose(
  4955. struct ggml_context * ctx,
  4956. struct ggml_tensor * a) {
  4957. bool is_node = false;
  4958. if (a->grad) {
  4959. is_node = true;
  4960. }
  4961. struct ggml_tensor * result = ggml_view_tensor(ctx, a);
  4962. ggml_format_name(result, "%s (transposed)", a->name);
  4963. result->ne[0] = a->ne[1];
  4964. result->ne[1] = a->ne[0];
  4965. result->nb[0] = a->nb[1];
  4966. result->nb[1] = a->nb[0];
  4967. result->op = GGML_OP_TRANSPOSE;
  4968. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4969. result->src[0] = a;
  4970. return result;
  4971. }
  4972. // ggml_get_rows
  4973. struct ggml_tensor * ggml_get_rows(
  4974. struct ggml_context * ctx,
  4975. struct ggml_tensor * a,
  4976. struct ggml_tensor * b) {
  4977. GGML_ASSERT(a->ne[2] == b->ne[1]);
  4978. GGML_ASSERT(b->ne[3] == 1);
  4979. GGML_ASSERT(b->type == GGML_TYPE_I32);
  4980. bool is_node = false;
  4981. if (a->grad || b->grad) {
  4982. is_node = true;
  4983. }
  4984. // TODO: implement non F32 return
  4985. enum ggml_type type = GGML_TYPE_F32;
  4986. if (a->type == GGML_TYPE_I32) {
  4987. type = a->type;
  4988. }
  4989. struct ggml_tensor * result = ggml_new_tensor_4d(ctx, type, a->ne[0], b->ne[0], b->ne[1], b->ne[2]);
  4990. result->op = GGML_OP_GET_ROWS;
  4991. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  4992. result->src[0] = a;
  4993. result->src[1] = b;
  4994. return result;
  4995. }
  4996. // ggml_get_rows_back
  4997. struct ggml_tensor * ggml_get_rows_back(
  4998. struct ggml_context * ctx,
  4999. struct ggml_tensor * a,
  5000. struct ggml_tensor * b,
  5001. struct ggml_tensor * c) {
  5002. GGML_ASSERT(ggml_is_matrix(a) && ggml_is_vector(b) && b->type == GGML_TYPE_I32);
  5003. GGML_ASSERT(ggml_is_matrix(c) && (a->ne[0] == c->ne[0]));
  5004. bool is_node = false;
  5005. if (a->grad || b->grad) {
  5006. is_node = true;
  5007. }
  5008. // TODO: implement non F32 return
  5009. //struct ggml_tensor * result = ggml_new_tensor_2d(ctx, a->type, a->ne[0], b->ne[0]);
  5010. struct ggml_tensor * result = ggml_new_tensor_2d(ctx, GGML_TYPE_F32, c->ne[0], c->ne[1]);
  5011. result->op = GGML_OP_GET_ROWS_BACK;
  5012. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5013. result->src[0] = a;
  5014. result->src[1] = b;
  5015. return result;
  5016. }
  5017. // ggml_diag
  5018. struct ggml_tensor * ggml_diag(
  5019. struct ggml_context * ctx,
  5020. struct ggml_tensor * a) {
  5021. GGML_ASSERT(a->ne[1] == 1);
  5022. bool is_node = false;
  5023. if (a->grad) {
  5024. is_node = true;
  5025. }
  5026. const int64_t ne[4] = { a->ne[0], a->ne[0], a->ne[2], a->ne[3] };
  5027. struct ggml_tensor * result = ggml_new_tensor(ctx, a->type, 4, ne);
  5028. result->op = GGML_OP_DIAG;
  5029. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5030. result->src[0] = a;
  5031. return result;
  5032. }
  5033. // ggml_diag_mask_inf
  5034. static struct ggml_tensor * ggml_diag_mask_inf_impl(
  5035. struct ggml_context * ctx,
  5036. struct ggml_tensor * a,
  5037. int n_past,
  5038. bool inplace) {
  5039. bool is_node = false;
  5040. if (a->grad) {
  5041. is_node = true;
  5042. }
  5043. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  5044. int32_t params[] = { n_past };
  5045. ggml_set_op_params(result, params, sizeof(params));
  5046. result->op = GGML_OP_DIAG_MASK_INF;
  5047. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5048. result->src[0] = a;
  5049. return result;
  5050. }
  5051. struct ggml_tensor * ggml_diag_mask_inf(
  5052. struct ggml_context * ctx,
  5053. struct ggml_tensor * a,
  5054. int n_past) {
  5055. return ggml_diag_mask_inf_impl(ctx, a, n_past, false);
  5056. }
  5057. struct ggml_tensor * ggml_diag_mask_inf_inplace(
  5058. struct ggml_context * ctx,
  5059. struct ggml_tensor * a,
  5060. int n_past) {
  5061. return ggml_diag_mask_inf_impl(ctx, a, n_past, true);
  5062. }
  5063. // ggml_diag_mask_zero
  5064. static struct ggml_tensor * ggml_diag_mask_zero_impl(
  5065. struct ggml_context * ctx,
  5066. struct ggml_tensor * a,
  5067. int n_past,
  5068. bool inplace) {
  5069. bool is_node = false;
  5070. if (a->grad) {
  5071. is_node = true;
  5072. }
  5073. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  5074. int32_t params[] = { n_past };
  5075. ggml_set_op_params(result, params, sizeof(params));
  5076. result->op = GGML_OP_DIAG_MASK_ZERO;
  5077. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5078. result->src[0] = a;
  5079. return result;
  5080. }
  5081. struct ggml_tensor * ggml_diag_mask_zero(
  5082. struct ggml_context * ctx,
  5083. struct ggml_tensor * a,
  5084. int n_past) {
  5085. return ggml_diag_mask_zero_impl(ctx, a, n_past, false);
  5086. }
  5087. struct ggml_tensor * ggml_diag_mask_zero_inplace(
  5088. struct ggml_context * ctx,
  5089. struct ggml_tensor * a,
  5090. int n_past) {
  5091. return ggml_diag_mask_zero_impl(ctx, a, n_past, true);
  5092. }
  5093. // ggml_soft_max
  5094. static struct ggml_tensor * ggml_soft_max_impl(
  5095. struct ggml_context * ctx,
  5096. struct ggml_tensor * a,
  5097. struct ggml_tensor * mask,
  5098. float scale,
  5099. float max_bias,
  5100. bool inplace) {
  5101. GGML_ASSERT(ggml_is_contiguous(a));
  5102. if (mask) {
  5103. GGML_ASSERT(mask->type == GGML_TYPE_F16 || mask->type == GGML_TYPE_F32);
  5104. GGML_ASSERT(ggml_is_contiguous(mask));
  5105. GGML_ASSERT(ggml_is_matrix(mask));
  5106. GGML_ASSERT(mask->ne[0] == a->ne[0]);
  5107. GGML_ASSERT(mask->ne[1] >= a->ne[1]);
  5108. }
  5109. if (max_bias > 0.0f) {
  5110. GGML_ASSERT(mask);
  5111. }
  5112. bool is_node = false;
  5113. if (a->grad) {
  5114. is_node = true;
  5115. }
  5116. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  5117. float params[] = { scale, max_bias };
  5118. ggml_set_op_params(result, params, sizeof(params));
  5119. result->op = GGML_OP_SOFT_MAX;
  5120. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5121. result->src[0] = a;
  5122. result->src[1] = mask;
  5123. return result;
  5124. }
  5125. struct ggml_tensor * ggml_soft_max(
  5126. struct ggml_context * ctx,
  5127. struct ggml_tensor * a) {
  5128. return ggml_soft_max_impl(ctx, a, NULL, 1.0f, 0.0f, false);
  5129. }
  5130. struct ggml_tensor * ggml_soft_max_inplace(
  5131. struct ggml_context * ctx,
  5132. struct ggml_tensor * a) {
  5133. return ggml_soft_max_impl(ctx, a, NULL, 1.0f, 0.0f, true);
  5134. }
  5135. struct ggml_tensor * ggml_soft_max_ext(
  5136. struct ggml_context * ctx,
  5137. struct ggml_tensor * a,
  5138. struct ggml_tensor * mask,
  5139. float scale,
  5140. float max_bias) {
  5141. return ggml_soft_max_impl(ctx, a, mask, scale, max_bias, false);
  5142. }
  5143. // ggml_soft_max_back
  5144. static struct ggml_tensor * ggml_soft_max_back_impl(
  5145. struct ggml_context * ctx,
  5146. struct ggml_tensor * a,
  5147. struct ggml_tensor * b,
  5148. bool inplace) {
  5149. bool is_node = false;
  5150. if (a->grad || b->grad) {
  5151. is_node = true; // TODO : implement backward pass
  5152. }
  5153. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  5154. result->op = GGML_OP_SOFT_MAX_BACK;
  5155. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5156. result->src[0] = a;
  5157. result->src[1] = b;
  5158. return result;
  5159. }
  5160. struct ggml_tensor * ggml_soft_max_back(
  5161. struct ggml_context * ctx,
  5162. struct ggml_tensor * a,
  5163. struct ggml_tensor * b) {
  5164. return ggml_soft_max_back_impl(ctx, a, b, false);
  5165. }
  5166. struct ggml_tensor * ggml_soft_max_back_inplace(
  5167. struct ggml_context * ctx,
  5168. struct ggml_tensor * a,
  5169. struct ggml_tensor * b) {
  5170. return ggml_soft_max_back_impl(ctx, a, b, true);
  5171. }
  5172. // ggml_rope
  5173. static struct ggml_tensor * ggml_rope_impl(
  5174. struct ggml_context * ctx,
  5175. struct ggml_tensor * a,
  5176. struct ggml_tensor * b,
  5177. struct ggml_tensor * c,
  5178. int n_dims,
  5179. int mode,
  5180. int n_ctx_orig,
  5181. float freq_base,
  5182. float freq_scale,
  5183. float ext_factor,
  5184. float attn_factor,
  5185. float beta_fast,
  5186. float beta_slow,
  5187. bool inplace) {
  5188. GGML_ASSERT((mode & 1) == 0 && "mode & 1 == 1 is no longer supported");
  5189. GGML_ASSERT(ggml_is_vector(b));
  5190. GGML_ASSERT(b->type == GGML_TYPE_I32);
  5191. GGML_ASSERT(a->ne[2] == b->ne[0]);
  5192. if (c) {
  5193. GGML_ASSERT(c->type == GGML_TYPE_F32);
  5194. GGML_ASSERT(c->ne[0] >= n_dims / 2);
  5195. }
  5196. bool is_node = false;
  5197. if (a->grad) {
  5198. is_node = true;
  5199. }
  5200. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  5201. int32_t params[11] = { /*n_past*/ 0, n_dims, mode, /*n_ctx*/ 0, n_ctx_orig };
  5202. memcpy(params + 5, &freq_base, sizeof(float));
  5203. memcpy(params + 6, &freq_scale, sizeof(float));
  5204. memcpy(params + 7, &ext_factor, sizeof(float));
  5205. memcpy(params + 8, &attn_factor, sizeof(float));
  5206. memcpy(params + 9, &beta_fast, sizeof(float));
  5207. memcpy(params + 10, &beta_slow, sizeof(float));
  5208. ggml_set_op_params(result, params, sizeof(params));
  5209. result->op = GGML_OP_ROPE;
  5210. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5211. result->src[0] = a;
  5212. result->src[1] = b;
  5213. result->src[2] = c;
  5214. return result;
  5215. }
  5216. struct ggml_tensor * ggml_rope(
  5217. struct ggml_context * ctx,
  5218. struct ggml_tensor * a,
  5219. struct ggml_tensor * b,
  5220. int n_dims,
  5221. int mode) {
  5222. return ggml_rope_impl(
  5223. ctx, a, b, NULL, n_dims, mode, 0, 10000.0f, 1.0f, 0.0f, 1.0f, 0.0f, 0.0f, false
  5224. );
  5225. }
  5226. struct ggml_tensor * ggml_rope_inplace(
  5227. struct ggml_context * ctx,
  5228. struct ggml_tensor * a,
  5229. struct ggml_tensor * b,
  5230. int n_dims,
  5231. int mode) {
  5232. return ggml_rope_impl(
  5233. ctx, a, b, NULL, n_dims, mode, 0, 10000.0f, 1.0f, 0.0f, 1.0f, 0.0f, 0.0f, true
  5234. );
  5235. }
  5236. struct ggml_tensor * ggml_rope_ext(
  5237. struct ggml_context * ctx,
  5238. struct ggml_tensor * a,
  5239. struct ggml_tensor * b,
  5240. struct ggml_tensor * c,
  5241. int n_dims,
  5242. int mode,
  5243. int n_ctx_orig,
  5244. float freq_base,
  5245. float freq_scale,
  5246. float ext_factor,
  5247. float attn_factor,
  5248. float beta_fast,
  5249. float beta_slow) {
  5250. return ggml_rope_impl(
  5251. ctx, a, b, c, n_dims, mode, n_ctx_orig, freq_base, freq_scale,
  5252. ext_factor, attn_factor, beta_fast, beta_slow, false
  5253. );
  5254. }
  5255. struct ggml_tensor * ggml_rope_ext_inplace(
  5256. struct ggml_context * ctx,
  5257. struct ggml_tensor * a,
  5258. struct ggml_tensor * b,
  5259. struct ggml_tensor * c,
  5260. int n_dims,
  5261. int mode,
  5262. int n_ctx_orig,
  5263. float freq_base,
  5264. float freq_scale,
  5265. float ext_factor,
  5266. float attn_factor,
  5267. float beta_fast,
  5268. float beta_slow) {
  5269. return ggml_rope_impl(
  5270. ctx, a, b, c, n_dims, mode, n_ctx_orig, freq_base, freq_scale,
  5271. ext_factor, attn_factor, beta_fast, beta_slow, true
  5272. );
  5273. }
  5274. struct ggml_tensor * ggml_rope_custom(
  5275. struct ggml_context * ctx,
  5276. struct ggml_tensor * a,
  5277. struct ggml_tensor * b,
  5278. int n_dims,
  5279. int mode,
  5280. int n_ctx_orig,
  5281. float freq_base,
  5282. float freq_scale,
  5283. float ext_factor,
  5284. float attn_factor,
  5285. float beta_fast,
  5286. float beta_slow) {
  5287. return ggml_rope_impl(
  5288. ctx, a, b, NULL, n_dims, mode, n_ctx_orig, freq_base, freq_scale,
  5289. ext_factor, attn_factor, beta_fast, beta_slow, false
  5290. );
  5291. }
  5292. struct ggml_tensor * ggml_rope_custom_inplace(
  5293. struct ggml_context * ctx,
  5294. struct ggml_tensor * a,
  5295. struct ggml_tensor * b,
  5296. int n_dims,
  5297. int mode,
  5298. int n_ctx_orig,
  5299. float freq_base,
  5300. float freq_scale,
  5301. float ext_factor,
  5302. float attn_factor,
  5303. float beta_fast,
  5304. float beta_slow) {
  5305. return ggml_rope_impl(
  5306. ctx, a, b, NULL, n_dims, mode, n_ctx_orig, freq_base, freq_scale,
  5307. ext_factor, attn_factor, beta_fast, beta_slow, true
  5308. );
  5309. }
  5310. // ggml_rope_back
  5311. struct ggml_tensor * ggml_rope_back(
  5312. struct ggml_context * ctx,
  5313. struct ggml_tensor * a,
  5314. struct ggml_tensor * b,
  5315. struct ggml_tensor * c,
  5316. int n_dims,
  5317. int mode,
  5318. int n_ctx_orig,
  5319. float freq_base,
  5320. float freq_scale,
  5321. float ext_factor,
  5322. float attn_factor,
  5323. float beta_fast,
  5324. float beta_slow) {
  5325. GGML_ASSERT(ggml_is_vector(b));
  5326. GGML_ASSERT(b->type == GGML_TYPE_I32);
  5327. GGML_ASSERT(a->ne[2] == b->ne[0]);
  5328. GGML_ASSERT(c == NULL && "freq factors not implemented yet");
  5329. GGML_ASSERT((mode & 4) == 0 && "ggml_rope_back() for ChatGLM not implemented yet");
  5330. bool is_node = false;
  5331. if (a->grad) {
  5332. is_node = false; // TODO: implement backward
  5333. }
  5334. struct ggml_tensor * result = ggml_dup_tensor(ctx, a);
  5335. int32_t params[11] = { /*n_past*/ 0, n_dims, mode, /*n_ctx*/ 0, n_ctx_orig };
  5336. memcpy(params + 5, &freq_base, sizeof(float));
  5337. memcpy(params + 6, &freq_scale, sizeof(float));
  5338. memcpy(params + 7, &ext_factor, sizeof(float));
  5339. memcpy(params + 8, &attn_factor, sizeof(float));
  5340. memcpy(params + 9, &beta_fast, sizeof(float));
  5341. memcpy(params + 10, &beta_slow, sizeof(float));
  5342. ggml_set_op_params(result, params, sizeof(params));
  5343. result->op = GGML_OP_ROPE_BACK;
  5344. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5345. result->src[0] = a;
  5346. result->src[1] = b;
  5347. return result;
  5348. }
  5349. // ggml_clamp
  5350. struct ggml_tensor * ggml_clamp(
  5351. struct ggml_context * ctx,
  5352. struct ggml_tensor * a,
  5353. float min,
  5354. float max) {
  5355. bool is_node = false;
  5356. if (a->grad) {
  5357. GGML_ASSERT(false); // TODO: implement backward
  5358. is_node = true;
  5359. }
  5360. // TODO: when implement backward, fix this:
  5361. struct ggml_tensor * result = ggml_view_tensor(ctx, a);
  5362. float params[] = { min, max };
  5363. ggml_set_op_params(result, params, sizeof(params));
  5364. result->op = GGML_OP_CLAMP;
  5365. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5366. result->src[0] = a;
  5367. return result;
  5368. }
  5369. // ggml_conv_1d
  5370. static int64_t ggml_calc_conv_output_size(int64_t ins, int64_t ks, int s, int p, int d) {
  5371. return (ins + 2 * p - d * (ks - 1) - 1) / s + 1;
  5372. }
  5373. GGML_API struct ggml_tensor * ggml_conv_1d(
  5374. struct ggml_context * ctx,
  5375. struct ggml_tensor * a,
  5376. struct ggml_tensor * b,
  5377. int s0,
  5378. int p0,
  5379. int d0) {
  5380. struct ggml_tensor * im2col = ggml_im2col(ctx, a, b, s0, 0, p0, 0, d0, 0, false, GGML_TYPE_F16); // [N, OL, IC * K]
  5381. struct ggml_tensor * result =
  5382. ggml_mul_mat(ctx,
  5383. ggml_reshape_2d(ctx, im2col, im2col->ne[0], (im2col->ne[2] * im2col->ne[1])), // [N, OL, IC * K] => [N*OL, IC * K]
  5384. ggml_reshape_2d(ctx, a, (a->ne[0] * a->ne[1]), a->ne[2])); // [OC,IC, K] => [OC, IC * K]
  5385. result = ggml_reshape_3d(ctx, result, im2col->ne[1], a->ne[2], im2col->ne[2]); // [N, OC, OL]
  5386. return result;
  5387. }
  5388. // ggml_conv_1d_ph
  5389. struct ggml_tensor* ggml_conv_1d_ph(
  5390. struct ggml_context * ctx,
  5391. struct ggml_tensor * a,
  5392. struct ggml_tensor * b,
  5393. int s,
  5394. int d) {
  5395. return ggml_conv_1d(ctx, a, b, s, a->ne[0] / 2, d);
  5396. }
  5397. // ggml_conv_transpose_1d
  5398. static int64_t ggml_calc_conv_transpose_1d_output_size(int64_t ins, int64_t ks, int s, int p, int d) {
  5399. return (ins - 1) * s - 2 * p + d * (ks - 1) + 1;
  5400. }
  5401. GGML_API struct ggml_tensor * ggml_conv_transpose_1d(
  5402. struct ggml_context * ctx,
  5403. struct ggml_tensor * a,
  5404. struct ggml_tensor * b,
  5405. int s0,
  5406. int p0,
  5407. int d0) {
  5408. GGML_ASSERT(ggml_is_matrix(b));
  5409. GGML_ASSERT(a->ne[2] == b->ne[1]);
  5410. GGML_ASSERT(a->ne[3] == 1);
  5411. GGML_ASSERT(p0 == 0);
  5412. GGML_ASSERT(d0 == 1);
  5413. bool is_node = false;
  5414. if (a->grad || b->grad) {
  5415. GGML_ASSERT(false); // TODO: implement backward
  5416. is_node = true;
  5417. }
  5418. const int64_t ne[4] = {
  5419. ggml_calc_conv_transpose_1d_output_size(b->ne[0], a->ne[0], s0, 0 /*p0*/, 1 /*d0*/),
  5420. a->ne[1], b->ne[2], 1,
  5421. };
  5422. struct ggml_tensor * result = ggml_new_tensor(ctx, GGML_TYPE_F32, 4, ne);
  5423. int32_t params[] = { s0, p0, d0 };
  5424. ggml_set_op_params(result, params, sizeof(params));
  5425. result->op = GGML_OP_CONV_TRANSPOSE_1D;
  5426. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5427. result->src[0] = a;
  5428. result->src[1] = b;
  5429. return result;
  5430. }
  5431. // ggml_conv_depthwise
  5432. struct ggml_tensor * ggml_conv_depthwise_2d(
  5433. struct ggml_context * ctx,
  5434. struct ggml_tensor * a,
  5435. struct ggml_tensor * b,
  5436. int s0,
  5437. int s1,
  5438. int p0,
  5439. int p1,
  5440. int d0,
  5441. int d1) {
  5442. struct ggml_tensor * new_a = ggml_reshape_4d(ctx, a, a->ne[0], a->ne[1], 1, a->ne[2] * a->ne[3]);
  5443. struct ggml_tensor * im2col = ggml_im2col(ctx, new_a,
  5444. ggml_reshape_4d(ctx, b, b->ne[0], b->ne[1], 1, b->ne[2] * b->ne[3]),
  5445. s0, s1, p0, p1, d0, d1, true, GGML_TYPE_F16); // [N * IC, OH, OW, KH * KW]
  5446. struct ggml_tensor * new_b = ggml_reshape_4d(ctx, im2col, im2col->ne[0], im2col->ne[2] * im2col->ne[1], b->ne[2], b->ne[3]); // [N * IC, OH, OW, KH * KW] => [N, IC, OH * OW, KH * KW]
  5447. new_a = ggml_reshape_4d(ctx, new_a, (new_a->ne[0] * new_a->ne[1]), new_a->ne[2], new_a->ne[3], 1); // [OC,1, KH, KW] => [1, OC, 1, KH * KW]
  5448. struct ggml_tensor * result = ggml_mul_mat(ctx, new_a, new_b);
  5449. result = ggml_reshape_4d(ctx, result, im2col->ne[1], im2col->ne[2], b->ne[2], b->ne[3]); // [N, OC, OH, OW]
  5450. return result;
  5451. }
  5452. // ggml_conv_2d
  5453. // im2col: [N, IC, IH, IW] => [N, OH, OW, IC*KH*KW]
  5454. // a: [OC,IC, KH, KW]
  5455. // b: [N, IC, IH, IW]
  5456. // result: [N, OH, OW, IC*KH*KW]
  5457. struct ggml_tensor * ggml_im2col(
  5458. struct ggml_context * ctx,
  5459. struct ggml_tensor * a,
  5460. struct ggml_tensor * b,
  5461. int s0,
  5462. int s1,
  5463. int p0,
  5464. int p1,
  5465. int d0,
  5466. int d1,
  5467. bool is_2D,
  5468. enum ggml_type dst_type) {
  5469. if(is_2D) {
  5470. GGML_ASSERT(a->ne[2] == b->ne[2]);
  5471. } else {
  5472. GGML_ASSERT(a->ne[1] == b->ne[1]);
  5473. }
  5474. bool is_node = false;
  5475. if (a->grad || b->grad) {
  5476. GGML_ASSERT(false); // TODO: implement backward
  5477. is_node = true;
  5478. }
  5479. const int64_t OH = is_2D ? ggml_calc_conv_output_size(b->ne[1], a->ne[1], s1, p1, d1) : 0;
  5480. const int64_t OW = ggml_calc_conv_output_size(b->ne[0], a->ne[0], s0, p0, d0);
  5481. const int64_t ne[4] = {
  5482. is_2D ? (a->ne[2] * a->ne[1] * a->ne[0]) : a->ne[1] * a->ne[0],
  5483. OW,
  5484. is_2D ? OH : b->ne[2],
  5485. is_2D ? b->ne[3] : 1,
  5486. };
  5487. struct ggml_tensor * result = ggml_new_tensor(ctx, dst_type, 4, ne);
  5488. int32_t params[] = { s0, s1, p0, p1, d0, d1, (is_2D ? 1 : 0) };
  5489. ggml_set_op_params(result, params, sizeof(params));
  5490. result->op = GGML_OP_IM2COL;
  5491. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5492. result->src[0] = a;
  5493. result->src[1] = b;
  5494. return result;
  5495. }
  5496. // a: [OC,IC, KH, KW]
  5497. // b: [N, IC, IH, IW]
  5498. // result: [N, OC, OH, OW]
  5499. struct ggml_tensor * ggml_conv_2d(
  5500. struct ggml_context * ctx,
  5501. struct ggml_tensor * a,
  5502. struct ggml_tensor * b,
  5503. int s0,
  5504. int s1,
  5505. int p0,
  5506. int p1,
  5507. int d0,
  5508. int d1) {
  5509. struct ggml_tensor * im2col = ggml_im2col(ctx, a, b, s0, s1, p0, p1, d0, d1, true, GGML_TYPE_F16); // [N, OH, OW, IC * KH * KW]
  5510. struct ggml_tensor * result =
  5511. ggml_mul_mat(ctx,
  5512. ggml_reshape_2d(ctx, im2col, im2col->ne[0], im2col->ne[3] * im2col->ne[2] * im2col->ne[1]), // [N, OH, OW, IC * KH * KW] => [N*OH*OW, IC * KH * KW]
  5513. ggml_reshape_2d(ctx, a, (a->ne[0] * a->ne[1] * a->ne[2]), a->ne[3])); // [OC,IC, KH, KW] => [OC, IC * KH * KW]
  5514. result = ggml_reshape_4d(ctx, result, im2col->ne[1], im2col->ne[2], im2col->ne[3], a->ne[3]); // [OC, N, OH, OW]
  5515. result = ggml_cont(ctx, ggml_permute(ctx, result, 0, 1, 3, 2)); // [N, OC, OH, OW]
  5516. return result;
  5517. }
  5518. // ggml_conv_2d_sk_p0
  5519. struct ggml_tensor * ggml_conv_2d_sk_p0(
  5520. struct ggml_context * ctx,
  5521. struct ggml_tensor * a,
  5522. struct ggml_tensor * b) {
  5523. return ggml_conv_2d(ctx, a, b, a->ne[0], a->ne[1], 0, 0, 1, 1);
  5524. }
  5525. // ggml_conv_2d_s1_ph
  5526. struct ggml_tensor * ggml_conv_2d_s1_ph(
  5527. struct ggml_context * ctx,
  5528. struct ggml_tensor * a,
  5529. struct ggml_tensor * b) {
  5530. return ggml_conv_2d(ctx, a, b, 1, 1, a->ne[0] / 2, a->ne[1] / 2, 1, 1);
  5531. }
  5532. // ggml_conv_transpose_2d_p0
  5533. static int64_t ggml_calc_conv_transpose_output_size(int64_t ins, int64_t ks, int s, int p) {
  5534. return (ins - 1) * s - 2 * p + ks;
  5535. }
  5536. struct ggml_tensor * ggml_conv_transpose_2d_p0(
  5537. struct ggml_context * ctx,
  5538. struct ggml_tensor * a,
  5539. struct ggml_tensor * b,
  5540. int stride) {
  5541. GGML_ASSERT(a->ne[3] == b->ne[2]);
  5542. bool is_node = false;
  5543. if (a->grad || b->grad) {
  5544. GGML_ASSERT(false); // TODO: implement backward
  5545. is_node = true;
  5546. }
  5547. const int64_t ne[4] = {
  5548. ggml_calc_conv_transpose_output_size(b->ne[0], a->ne[0], stride, 0 /*p0*/),
  5549. ggml_calc_conv_transpose_output_size(b->ne[1], a->ne[1], stride, 0 /*p1*/),
  5550. a->ne[2], b->ne[3],
  5551. };
  5552. struct ggml_tensor* result = ggml_new_tensor(ctx, GGML_TYPE_F32, 4, ne);
  5553. ggml_set_op_params_i32(result, 0, stride);
  5554. result->op = GGML_OP_CONV_TRANSPOSE_2D;
  5555. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5556. result->src[0] = a;
  5557. result->src[1] = b;
  5558. return result;
  5559. }
  5560. // ggml_pool_*
  5561. static int64_t ggml_calc_pool_output_size(int64_t ins, int ks, int s, float p) {
  5562. return (ins + 2 * p - ks) / s + 1;
  5563. }
  5564. // ggml_pool_1d
  5565. struct ggml_tensor * ggml_pool_1d(
  5566. struct ggml_context * ctx,
  5567. struct ggml_tensor * a,
  5568. enum ggml_op_pool op,
  5569. int k0,
  5570. int s0,
  5571. int p0) {
  5572. bool is_node = false;
  5573. if (a->grad) {
  5574. GGML_ASSERT(false); // TODO: implement backward
  5575. is_node = true;
  5576. }
  5577. const int64_t ne[4] = {
  5578. ggml_calc_pool_output_size(a->ne[0], k0, s0, p0),
  5579. a->ne[1],
  5580. a->ne[2],
  5581. a->ne[3],
  5582. };
  5583. struct ggml_tensor * result = ggml_new_tensor(ctx, GGML_TYPE_F32, 4, ne);
  5584. int32_t params[] = { op, k0, s0, p0 };
  5585. ggml_set_op_params(result, params, sizeof(params));
  5586. result->op = GGML_OP_POOL_1D;
  5587. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5588. result->src[0] = a;
  5589. return result;
  5590. }
  5591. // ggml_pool_2d
  5592. struct ggml_tensor * ggml_pool_2d(
  5593. struct ggml_context * ctx,
  5594. struct ggml_tensor * a,
  5595. enum ggml_op_pool op,
  5596. int k0,
  5597. int k1,
  5598. int s0,
  5599. int s1,
  5600. float p0,
  5601. float p1) {
  5602. bool is_node = false;
  5603. if (a->grad) {
  5604. GGML_ASSERT(false); // TODO: implement backward
  5605. is_node = true;
  5606. }
  5607. struct ggml_tensor * result;
  5608. const int64_t ne[3] = {
  5609. ggml_calc_pool_output_size(a->ne[0], k0, s0, p0),
  5610. ggml_calc_pool_output_size(a->ne[1], k1, s1, p1),
  5611. a->ne[2],
  5612. };
  5613. result = ggml_new_tensor(ctx, GGML_TYPE_F32, 3, ne);
  5614. int32_t params[] = { op, k0, k1, s0, s1, p0, p1 };
  5615. ggml_set_op_params(result, params, sizeof(params));
  5616. result->op = GGML_OP_POOL_2D;
  5617. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5618. result->src[0] = a;
  5619. return result;
  5620. }
  5621. // ggml_upscale
  5622. static struct ggml_tensor * ggml_upscale_impl(
  5623. struct ggml_context * ctx,
  5624. struct ggml_tensor * a,
  5625. int ne0,
  5626. int ne1,
  5627. int ne2,
  5628. int ne3) {
  5629. bool is_node = false;
  5630. if (a->grad) {
  5631. GGML_ASSERT(false); // TODO: implement backward
  5632. is_node = true;
  5633. }
  5634. GGML_ASSERT(a->ne[0] <= ne0);
  5635. GGML_ASSERT(a->ne[1] <= ne1);
  5636. GGML_ASSERT(a->ne[2] <= ne2);
  5637. GGML_ASSERT(a->ne[3] <= ne3);
  5638. struct ggml_tensor * result = ggml_new_tensor_4d(ctx, a->type,
  5639. ne0,
  5640. ne1,
  5641. ne2,
  5642. ne3
  5643. );
  5644. result->op = GGML_OP_UPSCALE;
  5645. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5646. result->src[0] = a;
  5647. return result;
  5648. }
  5649. struct ggml_tensor * ggml_upscale(
  5650. struct ggml_context * ctx,
  5651. struct ggml_tensor * a,
  5652. int scale_factor) {
  5653. return ggml_upscale_impl(ctx, a, a->ne[0] * scale_factor, a->ne[1] * scale_factor, a->ne[2], a->ne[3]);
  5654. }
  5655. struct ggml_tensor * ggml_upscale_ext(
  5656. struct ggml_context * ctx,
  5657. struct ggml_tensor * a,
  5658. int ne0,
  5659. int ne1,
  5660. int ne2,
  5661. int ne3) {
  5662. return ggml_upscale_impl(ctx, a, ne0, ne1, ne2, ne3);
  5663. }
  5664. // ggml_pad
  5665. struct ggml_tensor * ggml_pad(
  5666. struct ggml_context * ctx,
  5667. struct ggml_tensor * a,
  5668. int p0, int p1, int p2, int p3) {
  5669. bool is_node = false;
  5670. if (a->grad) {
  5671. GGML_ASSERT(false); // TODO: implement backward
  5672. is_node = true;
  5673. }
  5674. struct ggml_tensor * result = ggml_new_tensor_4d(ctx, a->type,
  5675. a->ne[0] + p0,
  5676. a->ne[1] + p1,
  5677. a->ne[2] + p2,
  5678. a->ne[3] + p3);
  5679. result->op = GGML_OP_PAD;
  5680. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5681. result->src[0] = a;
  5682. return result;
  5683. }
  5684. // ggml_arange
  5685. struct ggml_tensor * ggml_arange(
  5686. struct ggml_context * ctx,
  5687. float start,
  5688. float stop,
  5689. float step) {
  5690. GGML_ASSERT(stop > start);
  5691. const int64_t steps = (int64_t) ceilf((stop - start) / step);
  5692. struct ggml_tensor * result = ggml_new_tensor_1d(ctx, GGML_TYPE_F32, steps);
  5693. result->op = GGML_OP_ARANGE;
  5694. ggml_set_op_params_f32(result, 0, start);
  5695. ggml_set_op_params_f32(result, 1, stop);
  5696. ggml_set_op_params_f32(result, 2, step);
  5697. return result;
  5698. }
  5699. // ggml_timestep_embedding
  5700. struct ggml_tensor * ggml_timestep_embedding(
  5701. struct ggml_context * ctx,
  5702. struct ggml_tensor * timesteps,
  5703. int dim,
  5704. int max_period) {
  5705. bool is_node = false;
  5706. if (timesteps->grad) {
  5707. GGML_ASSERT(false); // TODO: implement backward
  5708. is_node = true;
  5709. }
  5710. int actual_dim = dim;
  5711. if (dim % 2 != 0) {
  5712. actual_dim = dim + 1;
  5713. }
  5714. struct ggml_tensor * result = ggml_new_tensor_2d(ctx, GGML_TYPE_F32, actual_dim, timesteps->ne[0]);
  5715. result->op = GGML_OP_TIMESTEP_EMBEDDING;
  5716. ggml_set_op_params_i32(result, 0, dim);
  5717. ggml_set_op_params_i32(result, 1, max_period);
  5718. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5719. result->src[0] = timesteps;
  5720. return result;
  5721. }
  5722. // ggml_argsort
  5723. struct ggml_tensor * ggml_argsort(
  5724. struct ggml_context * ctx,
  5725. struct ggml_tensor * a,
  5726. enum ggml_sort_order order) {
  5727. bool is_node = false;
  5728. struct ggml_tensor * result = ggml_new_tensor(ctx, GGML_TYPE_I32, GGML_MAX_DIMS, a->ne);
  5729. ggml_set_op_params_i32(result, 0, (int32_t) order);
  5730. result->op = GGML_OP_ARGSORT;
  5731. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5732. result->src[0] = a;
  5733. return result;
  5734. }
  5735. // ggml_top_k
  5736. struct ggml_tensor * ggml_top_k(
  5737. struct ggml_context * ctx,
  5738. struct ggml_tensor * a,
  5739. int k) {
  5740. GGML_ASSERT(a->ne[0] >= k);
  5741. struct ggml_tensor * result = ggml_argsort(ctx, a, GGML_SORT_ORDER_DESC);
  5742. result = ggml_view_4d(ctx, result,
  5743. k, result->ne[1], result->ne[2], result->ne[3],
  5744. result->nb[1], result->nb[2], result->nb[3],
  5745. 0);
  5746. return result;
  5747. }
  5748. // ggml_flash_attn_ext
  5749. struct ggml_tensor * ggml_flash_attn_ext(
  5750. struct ggml_context * ctx,
  5751. struct ggml_tensor * q,
  5752. struct ggml_tensor * k,
  5753. struct ggml_tensor * v,
  5754. struct ggml_tensor * mask,
  5755. float scale,
  5756. float max_bias) {
  5757. GGML_ASSERT(ggml_can_mul_mat(k, q));
  5758. // TODO: check if vT can be multiplied by (k*qT)
  5759. if (mask) {
  5760. GGML_ASSERT(ggml_is_contiguous(mask));
  5761. GGML_ASSERT(mask->ne[2] == 1);
  5762. GGML_ASSERT(mask->ne[3] == 1);
  5763. GGML_ASSERT(mask->ne[1] >= GGML_PAD(q->ne[1], GGML_KQ_MASK_PAD) &&
  5764. "the Flash-Attention kernel requires the mask to be padded to GGML_KQ_MASK_PAD and at least n_queries big");
  5765. //GGML_ASSERT(ggml_can_repeat_rows(mask, qk));
  5766. }
  5767. if (max_bias > 0.0f) {
  5768. GGML_ASSERT(mask);
  5769. }
  5770. bool is_node = false;
  5771. if (q->grad || k->grad || v->grad) {
  5772. is_node = true;
  5773. }
  5774. // permute(0, 2, 1, 3)
  5775. int64_t ne[4] = { q->ne[0], q->ne[2], q->ne[1], q->ne[3] };
  5776. struct ggml_tensor * result = ggml_new_tensor(ctx, GGML_TYPE_F32, 4, ne);
  5777. float params[] = { scale, max_bias };
  5778. ggml_set_op_params(result, params, sizeof(params));
  5779. result->op = GGML_OP_FLASH_ATTN_EXT;
  5780. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5781. result->src[0] = q;
  5782. result->src[1] = k;
  5783. result->src[2] = v;
  5784. result->src[3] = mask;
  5785. return result;
  5786. }
  5787. void ggml_flash_attn_ext_set_prec(
  5788. struct ggml_tensor * a,
  5789. enum ggml_prec prec) {
  5790. GGML_ASSERT(a->op == GGML_OP_FLASH_ATTN_EXT);
  5791. const int32_t prec_i32 = (int32_t) prec;
  5792. ggml_set_op_params_i32(a, 2, prec_i32); // scale is on first pos, max_bias on second
  5793. }
  5794. // ggml_flash_attn_back
  5795. struct ggml_tensor * ggml_flash_attn_back(
  5796. struct ggml_context * ctx,
  5797. struct ggml_tensor * q,
  5798. struct ggml_tensor * k,
  5799. struct ggml_tensor * v,
  5800. struct ggml_tensor * d,
  5801. bool masked) {
  5802. GGML_ASSERT(false && "TODO: adapt to ggml_flash_attn_ext() changes");
  5803. GGML_ASSERT(ggml_can_mul_mat(k, q));
  5804. // TODO: check if vT can be multiplied by (k*qT)
  5805. // d shape [D,N,ne2,ne3]
  5806. // q shape [D,N,ne2,ne3]
  5807. // k shape [D,M,kvne2,ne3]
  5808. // v shape [M,D,kvne2,ne3]
  5809. const int64_t D = q->ne[0];
  5810. const int64_t N = q->ne[1];
  5811. const int64_t M = k->ne[1];
  5812. const int64_t ne2 = q->ne[2];
  5813. const int64_t ne3 = q->ne[3];
  5814. const int64_t kvne2 = k->ne[2];
  5815. GGML_ASSERT(k->ne[0] == D);
  5816. GGML_ASSERT(v->ne[0] == M);
  5817. GGML_ASSERT(v->ne[1] == D);
  5818. GGML_ASSERT(d->ne[0] == D);
  5819. GGML_ASSERT(d->ne[1] == N);
  5820. GGML_ASSERT(k->ne[2] == kvne2);
  5821. GGML_ASSERT(k->ne[3] == ne3);
  5822. GGML_ASSERT(v->ne[2] == kvne2);
  5823. GGML_ASSERT(v->ne[3] == ne3);
  5824. GGML_ASSERT(d->ne[2] == ne2);
  5825. GGML_ASSERT(d->ne[3] == ne3);
  5826. GGML_ASSERT(ne2 % kvne2 == 0);
  5827. bool is_node = false;
  5828. if (q->grad || k->grad || v->grad) {
  5829. // when using this operation (in backwards pass) these grads are set.
  5830. // we don't want to create (big) grad of our result, so is_node is false.
  5831. is_node = false;
  5832. }
  5833. // store gradients of q, k and v as continuous tensors concatenated in result.
  5834. // note: v and gradv are actually transposed, i.e. v->ne[0] != D.
  5835. const int64_t elem_q = ggml_nelements(q);
  5836. const int64_t elem_k = ggml_nelements(k);
  5837. const int64_t elem_v = ggml_nelements(v);
  5838. enum ggml_type result_type = GGML_TYPE_F32;
  5839. GGML_ASSERT(ggml_blck_size(result_type) == 1);
  5840. const size_t tsize = ggml_type_size(result_type);
  5841. const size_t offs_q = 0;
  5842. const size_t offs_k = offs_q + GGML_PAD(elem_q * tsize, GGML_MEM_ALIGN);
  5843. const size_t offs_v = offs_k + GGML_PAD(elem_k * tsize, GGML_MEM_ALIGN);
  5844. const size_t end = offs_v + GGML_PAD(elem_v * tsize, GGML_MEM_ALIGN);
  5845. const size_t nelements = (end + tsize - 1)/tsize;
  5846. struct ggml_tensor * result = ggml_new_tensor_1d(ctx, GGML_TYPE_F32, nelements);
  5847. int32_t masked_i = masked ? 1 : 0;
  5848. ggml_set_op_params(result, &masked_i, sizeof(masked_i));
  5849. result->op = GGML_OP_FLASH_ATTN_BACK;
  5850. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5851. result->src[0] = q;
  5852. result->src[1] = k;
  5853. result->src[2] = v;
  5854. result->src[3] = d;
  5855. return result;
  5856. }
  5857. // ggml_ssm_conv
  5858. struct ggml_tensor * ggml_ssm_conv(
  5859. struct ggml_context * ctx,
  5860. struct ggml_tensor * s,
  5861. struct ggml_tensor * x,
  5862. struct ggml_tensor * c,
  5863. struct ggml_tensor * sq) {
  5864. GGML_ASSERT(ggml_is_3d(s));
  5865. GGML_ASSERT(ggml_is_matrix(x));
  5866. GGML_ASSERT(ggml_is_matrix(c));
  5867. GGML_ASSERT(ggml_is_matrix(sq));
  5868. GGML_ASSERT(sq->type == GGML_TYPE_I32);
  5869. const int64_t d_conv = c->ne[0];
  5870. const int64_t d_inner = c->ne[1];
  5871. const int64_t n_tokens = x->ne[1];
  5872. const int64_t n_kv = s->ne[2];
  5873. GGML_ASSERT( s->ne[0] == d_conv - 1);
  5874. GGML_ASSERT( s->ne[1] == d_inner);
  5875. GGML_ASSERT( x->ne[0] == d_inner);
  5876. GGML_ASSERT(sq->ne[0] == n_kv);
  5877. GGML_ASSERT(sq->ne[1] == n_tokens);
  5878. bool is_node = false;
  5879. if (s->grad || x->grad || c->grad || sq->grad) {
  5880. GGML_ASSERT(false); // TODO: implement
  5881. is_node = true;
  5882. }
  5883. // 2-in-1 concatenated x and conv_states, {d_inner, n_tokens} with {d_conv, d_inner, n_kv}
  5884. struct ggml_tensor * result = ggml_new_tensor_1d(ctx, GGML_TYPE_F32, (d_inner*n_tokens) + (d_conv*d_inner*n_kv));
  5885. result->op = GGML_OP_SSM_CONV;
  5886. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5887. result->src[0] = s;
  5888. result->src[1] = x;
  5889. result->src[2] = c;
  5890. result->src[3] = sq;
  5891. return result;
  5892. }
  5893. // ggml_ssm_scan
  5894. struct ggml_tensor * ggml_ssm_scan(
  5895. struct ggml_context * ctx,
  5896. struct ggml_tensor * s,
  5897. struct ggml_tensor * x,
  5898. struct ggml_tensor * dt,
  5899. struct ggml_tensor * A,
  5900. struct ggml_tensor * B,
  5901. struct ggml_tensor * C,
  5902. struct ggml_tensor * sq) {
  5903. GGML_ASSERT(ggml_is_contiguous(s));
  5904. GGML_ASSERT(ggml_is_contiguous(x));
  5905. GGML_ASSERT(ggml_is_contiguous(dt));
  5906. GGML_ASSERT(ggml_is_contiguous(A));
  5907. GGML_ASSERT(sq->type == GGML_TYPE_I32);
  5908. GGML_ASSERT(B->nb[0] == ggml_type_size(B->type));
  5909. GGML_ASSERT(C->nb[0] == ggml_type_size(C->type));
  5910. GGML_ASSERT(ggml_are_same_shape(x, dt));
  5911. {
  5912. const int64_t d_state = s->ne[0];
  5913. const int64_t d_inner = s->ne[1];
  5914. const int64_t n_tokens = x->ne[1];
  5915. GGML_ASSERT(x->ne[0] == d_inner);
  5916. GGML_ASSERT(A->ne[0] == d_state);
  5917. GGML_ASSERT(A->ne[1] == d_inner);
  5918. GGML_ASSERT(B->ne[0] == d_state);
  5919. GGML_ASSERT(B->ne[1] == n_tokens);
  5920. GGML_ASSERT(C->ne[0] == d_state);
  5921. GGML_ASSERT(C->ne[1] == n_tokens);
  5922. }
  5923. bool is_node = false;
  5924. if (s->grad || x->grad || dt->grad || A->grad || B->grad || C->grad || sq->grad) {
  5925. GGML_ASSERT(false); // TODO: implement
  5926. is_node = true;
  5927. }
  5928. // 2-in-1 concatenated y and ssm_states, {d_inner, n_tokens} with {d_state, d_inner, n_kv}
  5929. struct ggml_tensor * result = ggml_new_tensor_1d(ctx, GGML_TYPE_F32, ggml_nelements(x) + ggml_nelements(s));
  5930. result->op = GGML_OP_SSM_SCAN;
  5931. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5932. result->src[0] = s;
  5933. result->src[1] = x;
  5934. result->src[2] = dt;
  5935. result->src[3] = A;
  5936. result->src[4] = B;
  5937. result->src[5] = C;
  5938. result->src[6] = sq;
  5939. return result;
  5940. }
  5941. // ggml_win_part
  5942. struct ggml_tensor * ggml_win_part(
  5943. struct ggml_context * ctx,
  5944. struct ggml_tensor * a,
  5945. int w) {
  5946. GGML_ASSERT(a->ne[3] == 1);
  5947. GGML_ASSERT(a->type == GGML_TYPE_F32);
  5948. bool is_node = false;
  5949. if (a->grad) {
  5950. GGML_ASSERT(false); // TODO: implement backward
  5951. is_node = true;
  5952. }
  5953. // padding
  5954. const int px = (w - a->ne[1]%w)%w;
  5955. const int py = (w - a->ne[2]%w)%w;
  5956. const int npx = (px + a->ne[1])/w;
  5957. const int npy = (py + a->ne[2])/w;
  5958. const int np = npx*npy;
  5959. const int64_t ne[4] = { a->ne[0], w, w, np, };
  5960. struct ggml_tensor * result = ggml_new_tensor(ctx, GGML_TYPE_F32, 4, ne);
  5961. int32_t params[] = { npx, npy, w };
  5962. ggml_set_op_params(result, params, sizeof(params));
  5963. result->op = GGML_OP_WIN_PART;
  5964. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5965. result->src[0] = a;
  5966. return result;
  5967. }
  5968. // ggml_win_unpart
  5969. struct ggml_tensor * ggml_win_unpart(
  5970. struct ggml_context * ctx,
  5971. struct ggml_tensor * a,
  5972. int w0,
  5973. int h0,
  5974. int w) {
  5975. GGML_ASSERT(a->type == GGML_TYPE_F32);
  5976. bool is_node = false;
  5977. if (a->grad) {
  5978. GGML_ASSERT(false); // TODO: implement backward
  5979. is_node = true;
  5980. }
  5981. const int64_t ne[4] = { a->ne[0], w0, h0, 1, };
  5982. struct ggml_tensor * result = ggml_new_tensor(ctx, GGML_TYPE_F32, 3, ne);
  5983. int32_t params[] = { w };
  5984. ggml_set_op_params(result, params, sizeof(params));
  5985. result->op = GGML_OP_WIN_UNPART;
  5986. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  5987. result->src[0] = a;
  5988. return result;
  5989. }
  5990. // ggml_get_rel_pos
  5991. struct ggml_tensor * ggml_get_rel_pos(
  5992. struct ggml_context * ctx,
  5993. struct ggml_tensor * a,
  5994. int qh,
  5995. int kh) {
  5996. GGML_ASSERT(qh == kh);
  5997. GGML_ASSERT(2*MAX(qh, kh) - 1 == a->ne[1]);
  5998. bool is_node = false;
  5999. if (a->grad) {
  6000. GGML_ASSERT(false); // TODO: implement backward
  6001. is_node = true;
  6002. }
  6003. const int64_t ne[4] = { a->ne[0], kh, qh, 1, };
  6004. struct ggml_tensor * result = ggml_new_tensor(ctx, GGML_TYPE_F16, 3, ne);
  6005. result->op = GGML_OP_GET_REL_POS;
  6006. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  6007. result->src[0] = a;
  6008. return result;
  6009. }
  6010. // ggml_add_rel_pos
  6011. static struct ggml_tensor * ggml_add_rel_pos_impl(
  6012. struct ggml_context * ctx,
  6013. struct ggml_tensor * a,
  6014. struct ggml_tensor * pw,
  6015. struct ggml_tensor * ph,
  6016. bool inplace) {
  6017. GGML_ASSERT(ggml_are_same_shape(pw, ph));
  6018. GGML_ASSERT(ggml_is_contiguous(a));
  6019. GGML_ASSERT(ggml_is_contiguous(pw));
  6020. GGML_ASSERT(ggml_is_contiguous(ph));
  6021. GGML_ASSERT(ph->type == GGML_TYPE_F32);
  6022. GGML_ASSERT(pw->type == GGML_TYPE_F32);
  6023. GGML_ASSERT(pw->ne[3] == a->ne[2]);
  6024. GGML_ASSERT(pw->ne[0]*pw->ne[0] == a->ne[0]);
  6025. GGML_ASSERT(pw->ne[1]*pw->ne[2] == a->ne[1]);
  6026. bool is_node = false;
  6027. if (!inplace && (a->grad || pw->grad || ph->grad)) {
  6028. is_node = true;
  6029. }
  6030. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  6031. ggml_set_op_params_i32(result, 0, inplace ? 1 : 0);
  6032. result->op = GGML_OP_ADD_REL_POS;
  6033. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  6034. result->src[0] = a;
  6035. result->src[1] = pw;
  6036. result->src[2] = ph;
  6037. return result;
  6038. }
  6039. struct ggml_tensor * ggml_add_rel_pos(
  6040. struct ggml_context * ctx,
  6041. struct ggml_tensor * a,
  6042. struct ggml_tensor * pw,
  6043. struct ggml_tensor * ph) {
  6044. return ggml_add_rel_pos_impl(ctx, a, pw, ph, false);
  6045. }
  6046. struct ggml_tensor * ggml_add_rel_pos_inplace(
  6047. struct ggml_context * ctx,
  6048. struct ggml_tensor * a,
  6049. struct ggml_tensor * pw,
  6050. struct ggml_tensor * ph) {
  6051. return ggml_add_rel_pos_impl(ctx, a, pw, ph, true);
  6052. }
  6053. // ggml_unary
  6054. static struct ggml_tensor * ggml_unary_impl(
  6055. struct ggml_context * ctx,
  6056. struct ggml_tensor * a,
  6057. enum ggml_unary_op op,
  6058. bool inplace) {
  6059. GGML_ASSERT(ggml_is_contiguous_1(a));
  6060. bool is_node = false;
  6061. if (!inplace && (a->grad)) {
  6062. is_node = true;
  6063. }
  6064. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  6065. ggml_set_op_params_i32(result, 0, (int32_t) op);
  6066. result->op = GGML_OP_UNARY;
  6067. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  6068. result->src[0] = a;
  6069. return result;
  6070. }
  6071. struct ggml_tensor * ggml_unary(
  6072. struct ggml_context * ctx,
  6073. struct ggml_tensor * a,
  6074. enum ggml_unary_op op) {
  6075. return ggml_unary_impl(ctx, a, op, false);
  6076. }
  6077. struct ggml_tensor * ggml_unary_inplace(
  6078. struct ggml_context * ctx,
  6079. struct ggml_tensor * a,
  6080. enum ggml_unary_op op) {
  6081. return ggml_unary_impl(ctx, a, op, true);
  6082. }
  6083. // ggml_map_unary
  6084. static struct ggml_tensor * ggml_map_unary_impl_f32(
  6085. struct ggml_context * ctx,
  6086. struct ggml_tensor * a,
  6087. const ggml_unary_op_f32_t fun,
  6088. bool inplace) {
  6089. bool is_node = false;
  6090. if (!inplace && a->grad) {
  6091. is_node = true;
  6092. }
  6093. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  6094. ggml_set_op_params(result, (const void *) &fun, sizeof(fun));
  6095. result->op = GGML_OP_MAP_UNARY;
  6096. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  6097. result->src[0] = a;
  6098. return result;
  6099. }
  6100. struct ggml_tensor * ggml_map_unary_f32(
  6101. struct ggml_context * ctx,
  6102. struct ggml_tensor * a,
  6103. const ggml_unary_op_f32_t fun) {
  6104. return ggml_map_unary_impl_f32(ctx, a, fun, false);
  6105. }
  6106. struct ggml_tensor * ggml_map_unary_inplace_f32(
  6107. struct ggml_context * ctx,
  6108. struct ggml_tensor * a,
  6109. const ggml_unary_op_f32_t fun) {
  6110. return ggml_map_unary_impl_f32(ctx, a, fun, true);
  6111. }
  6112. // ggml_map_binary
  6113. static struct ggml_tensor * ggml_map_binary_impl_f32(
  6114. struct ggml_context * ctx,
  6115. struct ggml_tensor * a,
  6116. struct ggml_tensor * b,
  6117. const ggml_binary_op_f32_t fun,
  6118. bool inplace) {
  6119. GGML_ASSERT(ggml_are_same_shape(a, b));
  6120. bool is_node = false;
  6121. if (!inplace && (a->grad || b->grad)) {
  6122. is_node = true;
  6123. }
  6124. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  6125. ggml_set_op_params(result, (const void *) &fun, sizeof(fun));
  6126. result->op = GGML_OP_MAP_BINARY;
  6127. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  6128. result->src[0] = a;
  6129. result->src[1] = b;
  6130. return result;
  6131. }
  6132. struct ggml_tensor * ggml_map_binary_f32(
  6133. struct ggml_context * ctx,
  6134. struct ggml_tensor * a,
  6135. struct ggml_tensor * b,
  6136. const ggml_binary_op_f32_t fun) {
  6137. return ggml_map_binary_impl_f32(ctx, a, b, fun, false);
  6138. }
  6139. struct ggml_tensor * ggml_map_binary_inplace_f32(
  6140. struct ggml_context * ctx,
  6141. struct ggml_tensor * a,
  6142. struct ggml_tensor * b,
  6143. const ggml_binary_op_f32_t fun) {
  6144. return ggml_map_binary_impl_f32(ctx, a, b, fun, true);
  6145. }
  6146. // ggml_map_custom1_f32
  6147. static struct ggml_tensor * ggml_map_custom1_impl_f32(
  6148. struct ggml_context * ctx,
  6149. struct ggml_tensor * a,
  6150. const ggml_custom1_op_f32_t fun,
  6151. bool inplace) {
  6152. bool is_node = false;
  6153. if (!inplace && a->grad) {
  6154. is_node = true;
  6155. }
  6156. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  6157. ggml_set_op_params(result, (const void *) &fun, sizeof(fun));
  6158. result->op = GGML_OP_MAP_CUSTOM1_F32;
  6159. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  6160. result->src[0] = a;
  6161. return result;
  6162. }
  6163. struct ggml_tensor * ggml_map_custom1_f32(
  6164. struct ggml_context * ctx,
  6165. struct ggml_tensor * a,
  6166. const ggml_custom1_op_f32_t fun) {
  6167. return ggml_map_custom1_impl_f32(ctx, a, fun, false);
  6168. }
  6169. struct ggml_tensor * ggml_map_custom1_inplace_f32(
  6170. struct ggml_context * ctx,
  6171. struct ggml_tensor * a,
  6172. const ggml_custom1_op_f32_t fun) {
  6173. return ggml_map_custom1_impl_f32(ctx, a, fun, true);
  6174. }
  6175. // ggml_map_custom2_f32
  6176. static struct ggml_tensor * ggml_map_custom2_impl_f32(
  6177. struct ggml_context * ctx,
  6178. struct ggml_tensor * a,
  6179. struct ggml_tensor * b,
  6180. const ggml_custom2_op_f32_t fun,
  6181. bool inplace) {
  6182. bool is_node = false;
  6183. if (!inplace && (a->grad || b->grad)) {
  6184. is_node = true;
  6185. }
  6186. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  6187. ggml_set_op_params(result, (const void *) &fun, sizeof(fun));
  6188. result->op = GGML_OP_MAP_CUSTOM2_F32;
  6189. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  6190. result->src[0] = a;
  6191. result->src[1] = b;
  6192. return result;
  6193. }
  6194. struct ggml_tensor * ggml_map_custom2_f32(
  6195. struct ggml_context * ctx,
  6196. struct ggml_tensor * a,
  6197. struct ggml_tensor * b,
  6198. const ggml_custom2_op_f32_t fun) {
  6199. return ggml_map_custom2_impl_f32(ctx, a, b, fun, false);
  6200. }
  6201. struct ggml_tensor * ggml_map_custom2_inplace_f32(
  6202. struct ggml_context * ctx,
  6203. struct ggml_tensor * a,
  6204. struct ggml_tensor * b,
  6205. const ggml_custom2_op_f32_t fun) {
  6206. return ggml_map_custom2_impl_f32(ctx, a, b, fun, true);
  6207. }
  6208. // ggml_map_custom3_f32
  6209. static struct ggml_tensor * ggml_map_custom3_impl_f32(
  6210. struct ggml_context * ctx,
  6211. struct ggml_tensor * a,
  6212. struct ggml_tensor * b,
  6213. struct ggml_tensor * c,
  6214. const ggml_custom3_op_f32_t fun,
  6215. bool inplace) {
  6216. bool is_node = false;
  6217. if (!inplace && (a->grad || b->grad || c->grad)) {
  6218. is_node = true;
  6219. }
  6220. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  6221. ggml_set_op_params(result, (const void *) &fun, sizeof(fun));
  6222. result->op = GGML_OP_MAP_CUSTOM3_F32;
  6223. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  6224. result->src[0] = a;
  6225. result->src[1] = b;
  6226. result->src[2] = c;
  6227. return result;
  6228. }
  6229. struct ggml_tensor * ggml_map_custom3_f32(
  6230. struct ggml_context * ctx,
  6231. struct ggml_tensor * a,
  6232. struct ggml_tensor * b,
  6233. struct ggml_tensor * c,
  6234. const ggml_custom3_op_f32_t fun) {
  6235. return ggml_map_custom3_impl_f32(ctx, a, b, c, fun, false);
  6236. }
  6237. struct ggml_tensor * ggml_map_custom3_inplace_f32(
  6238. struct ggml_context * ctx,
  6239. struct ggml_tensor * a,
  6240. struct ggml_tensor * b,
  6241. struct ggml_tensor * c,
  6242. const ggml_custom3_op_f32_t fun) {
  6243. return ggml_map_custom3_impl_f32(ctx, a, b, c, fun, true);
  6244. }
  6245. // ggml_map_custom1
  6246. struct ggml_map_custom1_op_params {
  6247. ggml_custom1_op_t fun;
  6248. int n_tasks;
  6249. void * userdata;
  6250. };
  6251. static struct ggml_tensor * ggml_map_custom1_impl(
  6252. struct ggml_context * ctx,
  6253. struct ggml_tensor * a,
  6254. const ggml_custom1_op_t fun,
  6255. int n_tasks,
  6256. void * userdata,
  6257. bool inplace) {
  6258. GGML_ASSERT(n_tasks == GGML_N_TASKS_MAX || n_tasks > 0);
  6259. bool is_node = false;
  6260. if (!inplace && a->grad) {
  6261. is_node = true;
  6262. }
  6263. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  6264. struct ggml_map_custom1_op_params params = {
  6265. /*.fun =*/ fun,
  6266. /*.n_tasks =*/ n_tasks,
  6267. /*.userdata =*/ userdata
  6268. };
  6269. ggml_set_op_params(result, (const void *) &params, sizeof(params));
  6270. result->op = GGML_OP_MAP_CUSTOM1;
  6271. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  6272. result->src[0] = a;
  6273. return result;
  6274. }
  6275. struct ggml_tensor * ggml_map_custom1(
  6276. struct ggml_context * ctx,
  6277. struct ggml_tensor * a,
  6278. const ggml_custom1_op_t fun,
  6279. int n_tasks,
  6280. void * userdata) {
  6281. return ggml_map_custom1_impl(ctx, a, fun, n_tasks, userdata, false);
  6282. }
  6283. struct ggml_tensor * ggml_map_custom1_inplace(
  6284. struct ggml_context * ctx,
  6285. struct ggml_tensor * a,
  6286. const ggml_custom1_op_t fun,
  6287. int n_tasks,
  6288. void * userdata) {
  6289. return ggml_map_custom1_impl(ctx, a, fun, n_tasks, userdata, true);
  6290. }
  6291. // ggml_map_custom2
  6292. struct ggml_map_custom2_op_params {
  6293. ggml_custom2_op_t fun;
  6294. int n_tasks;
  6295. void * userdata;
  6296. };
  6297. static struct ggml_tensor * ggml_map_custom2_impl(
  6298. struct ggml_context * ctx,
  6299. struct ggml_tensor * a,
  6300. struct ggml_tensor * b,
  6301. const ggml_custom2_op_t fun,
  6302. int n_tasks,
  6303. void * userdata,
  6304. bool inplace) {
  6305. GGML_ASSERT(n_tasks == GGML_N_TASKS_MAX || n_tasks > 0);
  6306. bool is_node = false;
  6307. if (!inplace && (a->grad || b->grad)) {
  6308. is_node = true;
  6309. }
  6310. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  6311. struct ggml_map_custom2_op_params params = {
  6312. /*.fun =*/ fun,
  6313. /*.n_tasks =*/ n_tasks,
  6314. /*.userdata =*/ userdata
  6315. };
  6316. ggml_set_op_params(result, (const void *) &params, sizeof(params));
  6317. result->op = GGML_OP_MAP_CUSTOM2;
  6318. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  6319. result->src[0] = a;
  6320. result->src[1] = b;
  6321. return result;
  6322. }
  6323. struct ggml_tensor * ggml_map_custom2(
  6324. struct ggml_context * ctx,
  6325. struct ggml_tensor * a,
  6326. struct ggml_tensor * b,
  6327. const ggml_custom2_op_t fun,
  6328. int n_tasks,
  6329. void * userdata) {
  6330. return ggml_map_custom2_impl(ctx, a, b, fun, n_tasks, userdata, false);
  6331. }
  6332. struct ggml_tensor * ggml_map_custom2_inplace(
  6333. struct ggml_context * ctx,
  6334. struct ggml_tensor * a,
  6335. struct ggml_tensor * b,
  6336. const ggml_custom2_op_t fun,
  6337. int n_tasks,
  6338. void * userdata) {
  6339. return ggml_map_custom2_impl(ctx, a, b, fun, n_tasks, userdata, true);
  6340. }
  6341. // ggml_map_custom3
  6342. struct ggml_map_custom3_op_params {
  6343. ggml_custom3_op_t fun;
  6344. int n_tasks;
  6345. void * userdata;
  6346. };
  6347. static struct ggml_tensor * ggml_map_custom3_impl(
  6348. struct ggml_context * ctx,
  6349. struct ggml_tensor * a,
  6350. struct ggml_tensor * b,
  6351. struct ggml_tensor * c,
  6352. const ggml_custom3_op_t fun,
  6353. int n_tasks,
  6354. void * userdata,
  6355. bool inplace) {
  6356. GGML_ASSERT(n_tasks == GGML_N_TASKS_MAX || n_tasks > 0);
  6357. bool is_node = false;
  6358. if (!inplace && (a->grad || b->grad || c->grad)) {
  6359. is_node = true;
  6360. }
  6361. struct ggml_tensor * result = inplace ? ggml_view_tensor(ctx, a) : ggml_dup_tensor(ctx, a);
  6362. struct ggml_map_custom3_op_params params = {
  6363. /*.fun =*/ fun,
  6364. /*.n_tasks =*/ n_tasks,
  6365. /*.userdata =*/ userdata
  6366. };
  6367. ggml_set_op_params(result, (const void *) &params, sizeof(params));
  6368. result->op = GGML_OP_MAP_CUSTOM3;
  6369. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  6370. result->src[0] = a;
  6371. result->src[1] = b;
  6372. result->src[2] = c;
  6373. return result;
  6374. }
  6375. struct ggml_tensor * ggml_map_custom3(
  6376. struct ggml_context * ctx,
  6377. struct ggml_tensor * a,
  6378. struct ggml_tensor * b,
  6379. struct ggml_tensor * c,
  6380. const ggml_custom3_op_t fun,
  6381. int n_tasks,
  6382. void * userdata) {
  6383. return ggml_map_custom3_impl(ctx, a, b, c, fun, n_tasks, userdata, false);
  6384. }
  6385. struct ggml_tensor * ggml_map_custom3_inplace(
  6386. struct ggml_context * ctx,
  6387. struct ggml_tensor * a,
  6388. struct ggml_tensor * b,
  6389. struct ggml_tensor * c,
  6390. const ggml_custom3_op_t fun,
  6391. int n_tasks,
  6392. void * userdata) {
  6393. return ggml_map_custom3_impl(ctx, a, b, c, fun, n_tasks, userdata, true);
  6394. }
  6395. // ggml_cross_entropy_loss
  6396. struct ggml_tensor * ggml_cross_entropy_loss(
  6397. struct ggml_context * ctx,
  6398. struct ggml_tensor * a,
  6399. struct ggml_tensor * b) {
  6400. GGML_ASSERT(ggml_are_same_shape(a, b));
  6401. bool is_node = false;
  6402. if (a->grad || b->grad) {
  6403. is_node = true;
  6404. }
  6405. struct ggml_tensor * result = ggml_new_tensor_1d(ctx, a->type, 1);
  6406. result->op = GGML_OP_CROSS_ENTROPY_LOSS;
  6407. result->grad = is_node ? ggml_dup_tensor(ctx, result) : NULL;
  6408. result->src[0] = a;
  6409. result->src[1] = b;
  6410. return result;
  6411. }
  6412. // ggml_cross_entropy_loss_back
  6413. struct ggml_tensor * ggml_cross_entropy_loss_back(
  6414. struct ggml_context * ctx,
  6415. struct ggml_tensor * a,
  6416. struct ggml_tensor * b,
  6417. struct ggml_tensor * c) {
  6418. GGML_ASSERT(ggml_are_same_shape(a, b));
  6419. GGML_ASSERT(ggml_is_scalar(c));
  6420. struct ggml_tensor * result = ggml_dup_tensor(ctx, a);
  6421. result->op = GGML_OP_CROSS_ENTROPY_LOSS_BACK;
  6422. result->grad = NULL;
  6423. result->src[0] = a;
  6424. result->src[1] = b;
  6425. result->src[2] = c;
  6426. return result;
  6427. }
  6428. ////////////////////////////////////////////////////////////////////////////////
  6429. void ggml_set_param(
  6430. struct ggml_context * ctx,
  6431. struct ggml_tensor * tensor) {
  6432. tensor->flags |= GGML_TENSOR_FLAG_PARAM;
  6433. GGML_ASSERT(tensor->grad == NULL);
  6434. tensor->grad = ggml_dup_tensor(ctx, tensor);
  6435. ggml_format_name(tensor->grad, "%s (grad)", tensor->name);
  6436. }
  6437. // ggml_compute_forward_dup
  6438. static void ggml_compute_forward_dup_same_cont(
  6439. const struct ggml_compute_params * params,
  6440. struct ggml_tensor * dst) {
  6441. const struct ggml_tensor * src0 = dst->src[0];
  6442. GGML_ASSERT(ggml_nelements(dst) == ggml_nelements(src0));
  6443. GGML_ASSERT(ggml_is_contiguous(dst) && ggml_is_contiguous(src0));
  6444. GGML_ASSERT(src0->type == dst->type);
  6445. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  6446. return;
  6447. }
  6448. const size_t nb00 = src0->nb[0];
  6449. const size_t nb0 = dst->nb[0];
  6450. const int ith = params->ith; // thread index
  6451. const int nth = params->nth; // number of threads
  6452. // parallelize by elements
  6453. const int ne = ggml_nelements(dst);
  6454. const int dr = (ne + nth - 1) / nth;
  6455. const int ie0 = dr * ith;
  6456. const int ie1 = MIN(ie0 + dr, ne);
  6457. if (ie0 < ie1) {
  6458. memcpy(
  6459. ((char *) dst->data + ie0*nb0),
  6460. ((char *) src0->data + ie0*nb00),
  6461. (ie1 - ie0) * ggml_type_size(src0->type));
  6462. }
  6463. }
  6464. static void ggml_compute_forward_dup_f16(
  6465. const struct ggml_compute_params * params,
  6466. struct ggml_tensor * dst) {
  6467. const struct ggml_tensor * src0 = dst->src[0];
  6468. GGML_ASSERT(ggml_nelements(dst) == ggml_nelements(src0));
  6469. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  6470. return;
  6471. }
  6472. GGML_TENSOR_UNARY_OP_LOCALS
  6473. const int ith = params->ith; // thread index
  6474. const int nth = params->nth; // number of threads
  6475. if (ggml_is_contiguous(src0) && ggml_is_contiguous(dst) && src0->type == dst->type) {
  6476. ggml_compute_forward_dup_same_cont(params, dst);
  6477. return;
  6478. }
  6479. // parallelize by rows
  6480. const int nr = ne01;
  6481. // number of rows per thread
  6482. const int dr = (nr + nth - 1) / nth;
  6483. // row range for this thread
  6484. const int ir0 = dr * ith;
  6485. const int ir1 = MIN(ir0 + dr, nr);
  6486. if (src0->type == dst->type &&
  6487. ne00 == ne0 &&
  6488. nb00 == ggml_type_size(src0->type) && nb0 == ggml_type_size(dst->type)) {
  6489. // copy by rows
  6490. const size_t rs = ne00*nb00;
  6491. for (int64_t i03 = 0; i03 < ne03; i03++) {
  6492. for (int64_t i02 = 0; i02 < ne02; i02++) {
  6493. for (int64_t i01 = ir0; i01 < ir1; i01++) {
  6494. memcpy(
  6495. ((char *) dst->data + i01*nb1 + i02*nb2 + i03*nb3),
  6496. ((char *) src0->data + i01*nb01 + i02*nb02 + i03*nb03),
  6497. rs);
  6498. }
  6499. }
  6500. }
  6501. return;
  6502. }
  6503. // TODO: add more special-case implementations for tensor shapes/strides that can benefit from memcpy
  6504. if (ggml_is_contiguous(dst)) {
  6505. if (nb00 == sizeof(ggml_fp16_t)) {
  6506. if (dst->type == GGML_TYPE_F16) {
  6507. size_t id = 0;
  6508. const size_t rs = ne00 * nb00;
  6509. char * dst_ptr = (char *) dst->data;
  6510. for (int i03 = 0; i03 < ne03; i03++) {
  6511. for (int i02 = 0; i02 < ne02; i02++) {
  6512. id += rs * ir0;
  6513. for (int i01 = ir0; i01 < ir1; i01++) {
  6514. const char * src0_ptr = (char *) src0->data + i01*nb01 + i02*nb02 + i03*nb03;
  6515. memcpy(dst_ptr + id, src0_ptr, rs);
  6516. id += rs;
  6517. }
  6518. id += rs * (ne01 - ir1);
  6519. }
  6520. }
  6521. } else if (dst->type == GGML_TYPE_F32) {
  6522. size_t id = 0;
  6523. float * dst_ptr = (float *) dst->data;
  6524. for (int i03 = 0; i03 < ne03; i03++) {
  6525. for (int i02 = 0; i02 < ne02; i02++) {
  6526. id += ne00 * ir0;
  6527. for (int i01 = ir0; i01 < ir1; i01++) {
  6528. const ggml_fp16_t * src0_ptr = (ggml_fp16_t *) ((char *) src0->data + i01*nb01 + i02*nb02 + i03*nb03);
  6529. for (int i00 = 0; i00 < ne00; i00++) {
  6530. dst_ptr[id] = GGML_FP16_TO_FP32(src0_ptr[i00]);
  6531. id++;
  6532. }
  6533. }
  6534. id += ne00 * (ne01 - ir1);
  6535. }
  6536. }
  6537. } else if (type_traits[dst->type].from_float) {
  6538. ggml_from_float_t const quantize_row_q = type_traits[dst->type].from_float;
  6539. float * src0_f32 = (float *) params->wdata + (ne00 + CACHE_LINE_SIZE_F32) * ith;
  6540. size_t id = 0;
  6541. size_t rs = nb0 * (ne00 / ggml_blck_size(dst->type));
  6542. char * dst_ptr = (char *) dst->data;
  6543. for (int i03 = 0; i03 < ne03; i03++) {
  6544. for (int i02 = 0; i02 < ne02; i02++) {
  6545. id += rs * ir0;
  6546. for (int i01 = ir0; i01 < ir1; i01++) {
  6547. const ggml_fp16_t * src0_ptr = (ggml_fp16_t *) ((char *) src0->data + i01*nb01 + i02*nb02 + i03*nb03);
  6548. for (int i00 = 0; i00 < ne00; i00++) {
  6549. src0_f32[i00] = GGML_FP16_TO_FP32(src0_ptr[i00]);
  6550. }
  6551. quantize_row_q(src0_f32, dst_ptr + id, ne00);
  6552. id += rs;
  6553. }
  6554. id += rs * (ne01 - ir1);
  6555. }
  6556. }
  6557. } else {
  6558. GGML_ASSERT(false); // TODO: implement
  6559. }
  6560. } else {
  6561. //printf("%s: this is not optimal - fix me\n", __func__);
  6562. if (dst->type == GGML_TYPE_F32) {
  6563. size_t id = 0;
  6564. float * dst_ptr = (float *) dst->data;
  6565. for (int i03 = 0; i03 < ne03; i03++) {
  6566. for (int i02 = 0; i02 < ne02; i02++) {
  6567. id += ne00 * ir0;
  6568. for (int i01 = ir0; i01 < ir1; i01++) {
  6569. for (int i00 = 0; i00 < ne00; i00++) {
  6570. const ggml_fp16_t * src0_ptr = (ggml_fp16_t *) ((char *) src0->data + i00*nb00 + i01*nb01 + i02*nb02 + i03*nb03);
  6571. dst_ptr[id] = GGML_FP16_TO_FP32(*src0_ptr);
  6572. id++;
  6573. }
  6574. }
  6575. id += ne00 * (ne01 - ir1);
  6576. }
  6577. }
  6578. } else if (dst->type == GGML_TYPE_F16) {
  6579. size_t id = 0;
  6580. ggml_fp16_t * dst_ptr = (ggml_fp16_t *) dst->data;
  6581. for (int i03 = 0; i03 < ne03; i03++) {
  6582. for (int i02 = 0; i02 < ne02; i02++) {
  6583. id += ne00 * ir0;
  6584. for (int i01 = ir0; i01 < ir1; i01++) {
  6585. for (int i00 = 0; i00 < ne00; i00++) {
  6586. const ggml_fp16_t * src0_ptr = (ggml_fp16_t *) ((char *) src0->data + i00*nb00 + i01*nb01 + i02*nb02 + i03*nb03);
  6587. dst_ptr[id] = *src0_ptr;
  6588. id++;
  6589. }
  6590. }
  6591. id += ne00 * (ne01 - ir1);
  6592. }
  6593. }
  6594. } else {
  6595. GGML_ASSERT(false); // TODO: implement
  6596. }
  6597. }
  6598. return;
  6599. }
  6600. // dst counters
  6601. int64_t i10 = 0;
  6602. int64_t i11 = 0;
  6603. int64_t i12 = 0;
  6604. int64_t i13 = 0;
  6605. if (dst->type == GGML_TYPE_F16) {
  6606. for (int64_t i03 = 0; i03 < ne03; i03++) {
  6607. for (int64_t i02 = 0; i02 < ne02; i02++) {
  6608. i10 += ne00 * ir0;
  6609. while (i10 >= ne0) {
  6610. i10 -= ne0;
  6611. if (++i11 == ne1) {
  6612. i11 = 0;
  6613. if (++i12 == ne2) {
  6614. i12 = 0;
  6615. if (++i13 == ne3) {
  6616. i13 = 0;
  6617. }
  6618. }
  6619. }
  6620. }
  6621. for (int64_t i01 = ir0; i01 < ir1; i01++) {
  6622. for (int64_t i00 = 0; i00 < ne00; i00++) {
  6623. const char * src0_ptr = ((char *) src0->data + i00*nb00 + i01*nb01 + i02*nb02 + i03*nb03);
  6624. char * dst_ptr = ((char *) dst->data + i10*nb0 + i11*nb1 + i12*nb2 + i13*nb3);
  6625. memcpy(dst_ptr, src0_ptr, sizeof(ggml_fp16_t));
  6626. if (++i10 == ne00) {
  6627. i10 = 0;
  6628. if (++i11 == ne01) {
  6629. i11 = 0;
  6630. if (++i12 == ne02) {
  6631. i12 = 0;
  6632. if (++i13 == ne03) {
  6633. i13 = 0;
  6634. }
  6635. }
  6636. }
  6637. }
  6638. }
  6639. }
  6640. i10 += ne00 * (ne01 - ir1);
  6641. while (i10 >= ne0) {
  6642. i10 -= ne0;
  6643. if (++i11 == ne1) {
  6644. i11 = 0;
  6645. if (++i12 == ne2) {
  6646. i12 = 0;
  6647. if (++i13 == ne3) {
  6648. i13 = 0;
  6649. }
  6650. }
  6651. }
  6652. }
  6653. }
  6654. }
  6655. } else if (dst->type == GGML_TYPE_F32) {
  6656. for (int64_t i03 = 0; i03 < ne03; i03++) {
  6657. for (int64_t i02 = 0; i02 < ne02; i02++) {
  6658. i10 += ne00 * ir0;
  6659. while (i10 >= ne0) {
  6660. i10 -= ne0;
  6661. if (++i11 == ne1) {
  6662. i11 = 0;
  6663. if (++i12 == ne2) {
  6664. i12 = 0;
  6665. if (++i13 == ne3) {
  6666. i13 = 0;
  6667. }
  6668. }
  6669. }
  6670. }
  6671. for (int64_t i01 = ir0; i01 < ir1; i01++) {
  6672. for (int64_t i00 = 0; i00 < ne00; i00++) {
  6673. const char * src0_ptr = ((char *) src0->data + i00*nb00 + i01*nb01 + i02*nb02 + i03*nb03);
  6674. char * dst_ptr = ((char *) dst->data + i10*nb0 + i11*nb1 + i12*nb2 + i13*nb3);
  6675. *(float *) dst_ptr = GGML_FP16_TO_FP32(*(const ggml_fp16_t *) src0_ptr);
  6676. if (++i10 == ne0) {
  6677. i10 = 0;
  6678. if (++i11 == ne1) {
  6679. i11 = 0;
  6680. if (++i12 == ne2) {
  6681. i12 = 0;
  6682. if (++i13 == ne3) {
  6683. i13 = 0;
  6684. }
  6685. }
  6686. }
  6687. }
  6688. }
  6689. }
  6690. i10 += ne00 * (ne01 - ir1);
  6691. while (i10 >= ne0) {
  6692. i10 -= ne0;
  6693. if (++i11 == ne1) {
  6694. i11 = 0;
  6695. if (++i12 == ne2) {
  6696. i12 = 0;
  6697. if (++i13 == ne3) {
  6698. i13 = 0;
  6699. }
  6700. }
  6701. }
  6702. }
  6703. }
  6704. }
  6705. } else {
  6706. GGML_ASSERT(false); // TODO: implement
  6707. }
  6708. }
  6709. static void ggml_compute_forward_dup_bf16(
  6710. const struct ggml_compute_params * params,
  6711. struct ggml_tensor * dst) {
  6712. const struct ggml_tensor * src0 = dst->src[0];
  6713. GGML_ASSERT(ggml_nelements(dst) == ggml_nelements(src0));
  6714. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  6715. return;
  6716. }
  6717. GGML_TENSOR_UNARY_OP_LOCALS
  6718. const int ith = params->ith; // thread index
  6719. const int nth = params->nth; // number of threads
  6720. if (ggml_is_contiguous(src0) && ggml_is_contiguous(dst) && src0->type == dst->type) {
  6721. ggml_compute_forward_dup_same_cont(params, dst);
  6722. return;
  6723. }
  6724. // parallelize by rows
  6725. const int nr = ne01;
  6726. // number of rows per thread
  6727. const int dr = (nr + nth - 1) / nth;
  6728. // row range for this thread
  6729. const int ir0 = dr * ith;
  6730. const int ir1 = MIN(ir0 + dr, nr);
  6731. if (src0->type == dst->type &&
  6732. ne00 == ne0 &&
  6733. nb00 == ggml_type_size(src0->type) && nb0 == ggml_type_size(dst->type)) {
  6734. // copy by rows
  6735. const size_t rs = ne00*nb00;
  6736. for (int64_t i03 = 0; i03 < ne03; i03++) {
  6737. for (int64_t i02 = 0; i02 < ne02; i02++) {
  6738. for (int64_t i01 = ir0; i01 < ir1; i01++) {
  6739. memcpy(
  6740. ((char *) dst->data + i01*nb1 + i02*nb2 + i03*nb3),
  6741. ((char *) src0->data + i01*nb01 + i02*nb02 + i03*nb03),
  6742. rs);
  6743. }
  6744. }
  6745. }
  6746. return;
  6747. }
  6748. // TODO: add more special-case implementations for tensor shapes/strides that can benefit from memcpy
  6749. if (ggml_is_contiguous(dst)) {
  6750. if (nb00 == sizeof(ggml_bf16_t)) {
  6751. if (dst->type == GGML_TYPE_BF16) {
  6752. size_t id = 0;
  6753. const size_t rs = ne00 * nb00;
  6754. char * dst_ptr = (char *) dst->data;
  6755. for (int i03 = 0; i03 < ne03; i03++) {
  6756. for (int i02 = 0; i02 < ne02; i02++) {
  6757. id += rs * ir0;
  6758. for (int i01 = ir0; i01 < ir1; i01++) {
  6759. const char * src0_ptr = (char *) src0->data + i01*nb01 + i02*nb02 + i03*nb03;
  6760. memcpy(dst_ptr + id, src0_ptr, rs);
  6761. id += rs;
  6762. }
  6763. id += rs * (ne01 - ir1);
  6764. }
  6765. }
  6766. } else if (dst->type == GGML_TYPE_F16) {
  6767. size_t id = 0;
  6768. ggml_fp16_t * dst_ptr = (ggml_fp16_t *) dst->data;
  6769. for (int i03 = 0; i03 < ne03; i03++) {
  6770. for (int i02 = 0; i02 < ne02; i02++) {
  6771. id += ne00 * ir0;
  6772. for (int i01 = ir0; i01 < ir1; i01++) {
  6773. const ggml_bf16_t * src0_ptr = (ggml_bf16_t *) ((char *) src0->data + i01*nb01 + i02*nb02 + i03*nb03);
  6774. for (int i00 = 0; i00 < ne00; i00++) {
  6775. dst_ptr[id] = GGML_FP32_TO_FP16(GGML_BF16_TO_FP32(src0_ptr[i00]));
  6776. id++;
  6777. }
  6778. }
  6779. id += ne00 * (ne01 - ir1);
  6780. }
  6781. }
  6782. } else if (dst->type == GGML_TYPE_F32) {
  6783. size_t id = 0;
  6784. float * dst_ptr = (float *) dst->data;
  6785. for (int i03 = 0; i03 < ne03; i03++) {
  6786. for (int i02 = 0; i02 < ne02; i02++) {
  6787. id += ne00 * ir0;
  6788. for (int i01 = ir0; i01 < ir1; i01++) {
  6789. const ggml_bf16_t * src0_ptr = (ggml_bf16_t *) ((char *) src0->data + i01*nb01 + i02*nb02 + i03*nb03);
  6790. for (int i00 = 0; i00 < ne00; i00++) {
  6791. dst_ptr[id] = GGML_BF16_TO_FP32(src0_ptr[i00]);
  6792. id++;
  6793. }
  6794. }
  6795. id += ne00 * (ne01 - ir1);
  6796. }
  6797. }
  6798. } else if (type_traits[dst->type].from_float) {
  6799. ggml_from_float_t const quantize_row_q = type_traits[dst->type].from_float;
  6800. float * src0_f32 = (float *) params->wdata + (ne00 + CACHE_LINE_SIZE_F32) * ith;
  6801. size_t id = 0;
  6802. size_t rs = nb0 * (ne00 / ggml_blck_size(dst->type));
  6803. char * dst_ptr = (char *) dst->data;
  6804. for (int i03 = 0; i03 < ne03; i03++) {
  6805. for (int i02 = 0; i02 < ne02; i02++) {
  6806. id += rs * ir0;
  6807. for (int i01 = ir0; i01 < ir1; i01++) {
  6808. const ggml_bf16_t * src0_ptr = (ggml_bf16_t *) ((char *) src0->data + i01*nb01 + i02*nb02 + i03*nb03);
  6809. for (int i00 = 0; i00 < ne00; i00++) {
  6810. src0_f32[i00] = GGML_BF16_TO_FP32(src0_ptr[i00]);
  6811. }
  6812. quantize_row_q(src0_f32, dst_ptr + id, ne00);
  6813. id += rs;
  6814. }
  6815. id += rs * (ne01 - ir1);
  6816. }
  6817. }
  6818. } else {
  6819. GGML_ASSERT(false); // TODO: implement
  6820. }
  6821. } else {
  6822. //printf("%s: this is not optimal - fix me\n", __func__);
  6823. if (dst->type == GGML_TYPE_F32) {
  6824. size_t id = 0;
  6825. float * dst_ptr = (float *) dst->data;
  6826. for (int i03 = 0; i03 < ne03; i03++) {
  6827. for (int i02 = 0; i02 < ne02; i02++) {
  6828. id += ne00 * ir0;
  6829. for (int i01 = ir0; i01 < ir1; i01++) {
  6830. for (int i00 = 0; i00 < ne00; i00++) {
  6831. const ggml_bf16_t * src0_ptr = (ggml_bf16_t *) ((char *) src0->data + i00*nb00 + i01*nb01 + i02*nb02 + i03*nb03);
  6832. dst_ptr[id] = GGML_BF16_TO_FP32(*src0_ptr);
  6833. id++;
  6834. }
  6835. }
  6836. id += ne00 * (ne01 - ir1);
  6837. }
  6838. }
  6839. } else if (dst->type == GGML_TYPE_BF16) {
  6840. size_t id = 0;
  6841. ggml_bf16_t * dst_ptr = (ggml_bf16_t *) dst->data;
  6842. for (int i03 = 0; i03 < ne03; i03++) {
  6843. for (int i02 = 0; i02 < ne02; i02++) {
  6844. id += ne00 * ir0;
  6845. for (int i01 = ir0; i01 < ir1; i01++) {
  6846. for (int i00 = 0; i00 < ne00; i00++) {
  6847. const ggml_bf16_t * src0_ptr = (ggml_bf16_t *) ((char *) src0->data + i00*nb00 + i01*nb01 + i02*nb02 + i03*nb03);
  6848. dst_ptr[id] = *src0_ptr;
  6849. id++;
  6850. }
  6851. }
  6852. id += ne00 * (ne01 - ir1);
  6853. }
  6854. }
  6855. } else if (dst->type == GGML_TYPE_F16) {
  6856. size_t id = 0;
  6857. ggml_fp16_t * dst_ptr = (ggml_fp16_t *) dst->data;
  6858. for (int i03 = 0; i03 < ne03; i03++) {
  6859. for (int i02 = 0; i02 < ne02; i02++) {
  6860. id += ne00 * ir0;
  6861. for (int i01 = ir0; i01 < ir1; i01++) {
  6862. for (int i00 = 0; i00 < ne00; i00++) {
  6863. const ggml_bf16_t * src0_ptr = (ggml_bf16_t *) ((char *) src0->data + i00*nb00 + i01*nb01 + i02*nb02 + i03*nb03);
  6864. dst_ptr[id] = GGML_FP32_TO_FP16(GGML_BF16_TO_FP32(*src0_ptr));
  6865. id++;
  6866. }
  6867. }
  6868. id += ne00 * (ne01 - ir1);
  6869. }
  6870. }
  6871. } else {
  6872. GGML_ASSERT(false); // TODO: implement
  6873. }
  6874. }
  6875. return;
  6876. }
  6877. // dst counters
  6878. int64_t i10 = 0;
  6879. int64_t i11 = 0;
  6880. int64_t i12 = 0;
  6881. int64_t i13 = 0;
  6882. if (dst->type == GGML_TYPE_BF16) {
  6883. for (int64_t i03 = 0; i03 < ne03; i03++) {
  6884. for (int64_t i02 = 0; i02 < ne02; i02++) {
  6885. i10 += ne00 * ir0;
  6886. while (i10 >= ne0) {
  6887. i10 -= ne0;
  6888. if (++i11 == ne1) {
  6889. i11 = 0;
  6890. if (++i12 == ne2) {
  6891. i12 = 0;
  6892. if (++i13 == ne3) {
  6893. i13 = 0;
  6894. }
  6895. }
  6896. }
  6897. }
  6898. for (int64_t i01 = ir0; i01 < ir1; i01++) {
  6899. for (int64_t i00 = 0; i00 < ne00; i00++) {
  6900. const char * src0_ptr = ((char *) src0->data + i00*nb00 + i01*nb01 + i02*nb02 + i03*nb03);
  6901. char * dst_ptr = ((char *) dst->data + i10*nb0 + i11*nb1 + i12*nb2 + i13*nb3);
  6902. memcpy(dst_ptr, src0_ptr, sizeof(ggml_bf16_t));
  6903. if (++i10 == ne00) {
  6904. i10 = 0;
  6905. if (++i11 == ne01) {
  6906. i11 = 0;
  6907. if (++i12 == ne02) {
  6908. i12 = 0;
  6909. if (++i13 == ne03) {
  6910. i13 = 0;
  6911. }
  6912. }
  6913. }
  6914. }
  6915. }
  6916. }
  6917. i10 += ne00 * (ne01 - ir1);
  6918. while (i10 >= ne0) {
  6919. i10 -= ne0;
  6920. if (++i11 == ne1) {
  6921. i11 = 0;
  6922. if (++i12 == ne2) {
  6923. i12 = 0;
  6924. if (++i13 == ne3) {
  6925. i13 = 0;
  6926. }
  6927. }
  6928. }
  6929. }
  6930. }
  6931. }
  6932. } else if (dst->type == GGML_TYPE_F16) {
  6933. for (int64_t i03 = 0; i03 < ne03; i03++) {
  6934. for (int64_t i02 = 0; i02 < ne02; i02++) {
  6935. i10 += ne00 * ir0;
  6936. while (i10 >= ne0) {
  6937. i10 -= ne0;
  6938. if (++i11 == ne1) {
  6939. i11 = 0;
  6940. if (++i12 == ne2) {
  6941. i12 = 0;
  6942. if (++i13 == ne3) {
  6943. i13 = 0;
  6944. }
  6945. }
  6946. }
  6947. }
  6948. for (int64_t i01 = ir0; i01 < ir1; i01++) {
  6949. for (int64_t i00 = 0; i00 < ne00; i00++) {
  6950. const char * src0_ptr = ((char *) src0->data + i00*nb00 + i01*nb01 + i02*nb02 + i03*nb03);
  6951. char * dst_ptr = ((char *) dst->data + i10*nb0 + i11*nb1 + i12*nb2 + i13*nb3);
  6952. *(ggml_fp16_t *) dst_ptr = GGML_FP32_TO_FP16(GGML_BF16_TO_FP32(*(const ggml_bf16_t *) src0_ptr));
  6953. if (++i10 == ne0) {
  6954. i10 = 0;
  6955. if (++i11 == ne1) {
  6956. i11 = 0;
  6957. if (++i12 == ne2) {
  6958. i12 = 0;
  6959. if (++i13 == ne3) {
  6960. i13 = 0;
  6961. }
  6962. }
  6963. }
  6964. }
  6965. }
  6966. }
  6967. i10 += ne00 * (ne01 - ir1);
  6968. while (i10 >= ne0) {
  6969. i10 -= ne0;
  6970. if (++i11 == ne1) {
  6971. i11 = 0;
  6972. if (++i12 == ne2) {
  6973. i12 = 0;
  6974. if (++i13 == ne3) {
  6975. i13 = 0;
  6976. }
  6977. }
  6978. }
  6979. }
  6980. }
  6981. }
  6982. } else if (dst->type == GGML_TYPE_F32) {
  6983. for (int64_t i03 = 0; i03 < ne03; i03++) {
  6984. for (int64_t i02 = 0; i02 < ne02; i02++) {
  6985. i10 += ne00 * ir0;
  6986. while (i10 >= ne0) {
  6987. i10 -= ne0;
  6988. if (++i11 == ne1) {
  6989. i11 = 0;
  6990. if (++i12 == ne2) {
  6991. i12 = 0;
  6992. if (++i13 == ne3) {
  6993. i13 = 0;
  6994. }
  6995. }
  6996. }
  6997. }
  6998. for (int64_t i01 = ir0; i01 < ir1; i01++) {
  6999. for (int64_t i00 = 0; i00 < ne00; i00++) {
  7000. const char * src0_ptr = ((char *) src0->data + i00*nb00 + i01*nb01 + i02*nb02 + i03*nb03);
  7001. char * dst_ptr = ((char *) dst->data + i10*nb0 + i11*nb1 + i12*nb2 + i13*nb3);
  7002. *(float *) dst_ptr = GGML_BF16_TO_FP32(*(const ggml_bf16_t *) src0_ptr);
  7003. if (++i10 == ne0) {
  7004. i10 = 0;
  7005. if (++i11 == ne1) {
  7006. i11 = 0;
  7007. if (++i12 == ne2) {
  7008. i12 = 0;
  7009. if (++i13 == ne3) {
  7010. i13 = 0;
  7011. }
  7012. }
  7013. }
  7014. }
  7015. }
  7016. }
  7017. i10 += ne00 * (ne01 - ir1);
  7018. while (i10 >= ne0) {
  7019. i10 -= ne0;
  7020. if (++i11 == ne1) {
  7021. i11 = 0;
  7022. if (++i12 == ne2) {
  7023. i12 = 0;
  7024. if (++i13 == ne3) {
  7025. i13 = 0;
  7026. }
  7027. }
  7028. }
  7029. }
  7030. }
  7031. }
  7032. } else {
  7033. GGML_ASSERT(false); // TODO: implement
  7034. }
  7035. }
  7036. static void ggml_compute_forward_dup_f32(
  7037. const struct ggml_compute_params * params,
  7038. struct ggml_tensor * dst) {
  7039. const struct ggml_tensor * src0 = dst->src[0];
  7040. GGML_ASSERT(ggml_nelements(dst) == ggml_nelements(src0));
  7041. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  7042. return;
  7043. }
  7044. GGML_TENSOR_UNARY_OP_LOCALS
  7045. const int ith = params->ith; // thread index
  7046. const int nth = params->nth; // number of threads
  7047. if (ggml_is_contiguous(src0) && ggml_is_contiguous(dst) && src0->type == dst->type) {
  7048. ggml_compute_forward_dup_same_cont(params, dst);
  7049. return;
  7050. }
  7051. // parallelize by rows
  7052. const int nr = ne01;
  7053. // number of rows per thread
  7054. const int dr = (nr + nth - 1) / nth;
  7055. // row range for this thread
  7056. const int ir0 = dr * ith;
  7057. const int ir1 = MIN(ir0 + dr, nr);
  7058. if (src0->type == dst->type &&
  7059. ne00 == ne0 &&
  7060. nb00 == ggml_type_size(src0->type) && nb0 == ggml_type_size(dst->type)) {
  7061. // copy by rows
  7062. const size_t rs = ne00*nb00;
  7063. for (int64_t i03 = 0; i03 < ne03; i03++) {
  7064. for (int64_t i02 = 0; i02 < ne02; i02++) {
  7065. for (int64_t i01 = ir0; i01 < ir1; i01++) {
  7066. memcpy(
  7067. ((char *) dst->data + i01*nb1 + i02*nb2 + i03*nb3),
  7068. ((char *) src0->data + i01*nb01 + i02*nb02 + i03*nb03),
  7069. rs);
  7070. }
  7071. }
  7072. }
  7073. return;
  7074. }
  7075. if (ggml_is_contiguous(dst)) {
  7076. // TODO: simplify
  7077. if (nb00 == sizeof(float)) {
  7078. if (dst->type == GGML_TYPE_F32) {
  7079. size_t id = 0;
  7080. const size_t rs = ne00 * nb00;
  7081. char * dst_ptr = (char *) dst->data;
  7082. for (int i03 = 0; i03 < ne03; i03++) {
  7083. for (int i02 = 0; i02 < ne02; i02++) {
  7084. id += rs * ir0;
  7085. for (int i01 = ir0; i01 < ir1; i01++) {
  7086. const char * src0_ptr = (char *) src0->data + i01*nb01 + i02*nb02 + i03*nb03;
  7087. memcpy(dst_ptr + id, src0_ptr, rs);
  7088. id += rs;
  7089. }
  7090. id += rs * (ne01 - ir1);
  7091. }
  7092. }
  7093. } else if (type_traits[dst->type].from_float) {
  7094. ggml_from_float_t const quantize_row_q = type_traits[dst->type].from_float;
  7095. size_t id = 0;
  7096. size_t rs = nb0 * (ne00 / ggml_blck_size(dst->type));
  7097. char * dst_ptr = (char *) dst->data;
  7098. for (int i03 = 0; i03 < ne03; i03++) {
  7099. for (int i02 = 0; i02 < ne02; i02++) {
  7100. id += rs * ir0;
  7101. for (int i01 = ir0; i01 < ir1; i01++) {
  7102. const float * src0_ptr = (float *) ((char *) src0->data + i01*nb01 + i02*nb02 + i03*nb03);
  7103. quantize_row_q(src0_ptr, dst_ptr + id, ne00);
  7104. id += rs;
  7105. }
  7106. id += rs * (ne01 - ir1);
  7107. }
  7108. }
  7109. } else {
  7110. GGML_ASSERT(false); // TODO: implement
  7111. }
  7112. } else {
  7113. //printf("%s: this is not optimal - fix me\n", __func__);
  7114. if (dst->type == GGML_TYPE_F32) {
  7115. size_t id = 0;
  7116. float * dst_ptr = (float *) dst->data;
  7117. for (int i03 = 0; i03 < ne03; i03++) {
  7118. for (int i02 = 0; i02 < ne02; i02++) {
  7119. id += ne00 * ir0;
  7120. for (int i01 = ir0; i01 < ir1; i01++) {
  7121. for (int i00 = 0; i00 < ne00; i00++) {
  7122. const float * src0_ptr = (float *) ((char *) src0->data + i00*nb00 + i01*nb01 + i02*nb02 + i03*nb03);
  7123. dst_ptr[id] = *src0_ptr;
  7124. id++;
  7125. }
  7126. }
  7127. id += ne00 * (ne01 - ir1);
  7128. }
  7129. }
  7130. } else if (dst->type == GGML_TYPE_F16) {
  7131. size_t id = 0;
  7132. ggml_fp16_t * dst_ptr = (ggml_fp16_t *) dst->data;
  7133. for (int i03 = 0; i03 < ne03; i03++) {
  7134. for (int i02 = 0; i02 < ne02; i02++) {
  7135. id += ne00 * ir0;
  7136. for (int i01 = ir0; i01 < ir1; i01++) {
  7137. for (int i00 = 0; i00 < ne00; i00++) {
  7138. const float * src0_ptr = (float *) ((char *) src0->data + i00*nb00 + i01*nb01 + i02*nb02 + i03*nb03);
  7139. dst_ptr[id] = GGML_FP32_TO_FP16(*src0_ptr);
  7140. id++;
  7141. }
  7142. }
  7143. id += ne00 * (ne01 - ir1);
  7144. }
  7145. }
  7146. } else if (dst->type == GGML_TYPE_BF16) {
  7147. size_t id = 0;
  7148. ggml_bf16_t * dst_ptr = (ggml_bf16_t *) dst->data;
  7149. for (int i03 = 0; i03 < ne03; i03++) {
  7150. for (int i02 = 0; i02 < ne02; i02++) {
  7151. id += ne00 * ir0;
  7152. for (int i01 = ir0; i01 < ir1; i01++) {
  7153. for (int i00 = 0; i00 < ne00; i00++) {
  7154. const float * src0_ptr = (float *) ((char *) src0->data + i00*nb00 + i01*nb01 + i02*nb02 + i03*nb03);
  7155. dst_ptr[id] = GGML_FP32_TO_BF16(*src0_ptr);
  7156. id++;
  7157. }
  7158. }
  7159. id += ne00 * (ne01 - ir1);
  7160. }
  7161. }
  7162. } else {
  7163. GGML_ASSERT(false); // TODO: implement
  7164. }
  7165. }
  7166. return;
  7167. }
  7168. // dst counters
  7169. int64_t i10 = 0;
  7170. int64_t i11 = 0;
  7171. int64_t i12 = 0;
  7172. int64_t i13 = 0;
  7173. if (dst->type == GGML_TYPE_F32) {
  7174. for (int64_t i03 = 0; i03 < ne03; i03++) {
  7175. for (int64_t i02 = 0; i02 < ne02; i02++) {
  7176. i10 += ne00 * ir0;
  7177. while (i10 >= ne0) {
  7178. i10 -= ne0;
  7179. if (++i11 == ne1) {
  7180. i11 = 0;
  7181. if (++i12 == ne2) {
  7182. i12 = 0;
  7183. if (++i13 == ne3) {
  7184. i13 = 0;
  7185. }
  7186. }
  7187. }
  7188. }
  7189. for (int64_t i01 = ir0; i01 < ir1; i01++) {
  7190. for (int64_t i00 = 0; i00 < ne00; i00++) {
  7191. const char * src0_ptr = ((char *) src0->data + i00*nb00 + i01*nb01 + i02*nb02 + i03*nb03);
  7192. char * dst_ptr = ((char *) dst->data + i10*nb0 + i11*nb1 + i12*nb2 + i13*nb3);
  7193. memcpy(dst_ptr, src0_ptr, sizeof(float));
  7194. if (++i10 == ne0) {
  7195. i10 = 0;
  7196. if (++i11 == ne1) {
  7197. i11 = 0;
  7198. if (++i12 == ne2) {
  7199. i12 = 0;
  7200. if (++i13 == ne3) {
  7201. i13 = 0;
  7202. }
  7203. }
  7204. }
  7205. }
  7206. }
  7207. }
  7208. i10 += ne00 * (ne01 - ir1);
  7209. while (i10 >= ne0) {
  7210. i10 -= ne0;
  7211. if (++i11 == ne1) {
  7212. i11 = 0;
  7213. if (++i12 == ne2) {
  7214. i12 = 0;
  7215. if (++i13 == ne3) {
  7216. i13 = 0;
  7217. }
  7218. }
  7219. }
  7220. }
  7221. }
  7222. }
  7223. } else if (dst->type == GGML_TYPE_F16) {
  7224. for (int64_t i03 = 0; i03 < ne03; i03++) {
  7225. for (int64_t i02 = 0; i02 < ne02; i02++) {
  7226. i10 += ne00 * ir0;
  7227. while (i10 >= ne0) {
  7228. i10 -= ne0;
  7229. if (++i11 == ne1) {
  7230. i11 = 0;
  7231. if (++i12 == ne2) {
  7232. i12 = 0;
  7233. if (++i13 == ne3) {
  7234. i13 = 0;
  7235. }
  7236. }
  7237. }
  7238. }
  7239. for (int64_t i01 = ir0; i01 < ir1; i01++) {
  7240. for (int64_t i00 = 0; i00 < ne00; i00++) {
  7241. const char * src0_ptr = ((char *) src0->data + i00*nb00 + i01*nb01 + i02*nb02 + i03*nb03);
  7242. char * dst_ptr = ((char *) dst->data + i10*nb0 + i11*nb1 + i12*nb2 + i13*nb3);
  7243. *(ggml_fp16_t *) dst_ptr = GGML_FP32_TO_FP16(*(const float *) src0_ptr);
  7244. if (++i10 == ne0) {
  7245. i10 = 0;
  7246. if (++i11 == ne1) {
  7247. i11 = 0;
  7248. if (++i12 == ne2) {
  7249. i12 = 0;
  7250. if (++i13 == ne3) {
  7251. i13 = 0;
  7252. }
  7253. }
  7254. }
  7255. }
  7256. }
  7257. }
  7258. i10 += ne00 * (ne01 - ir1);
  7259. while (i10 >= ne0) {
  7260. i10 -= ne0;
  7261. if (++i11 == ne1) {
  7262. i11 = 0;
  7263. if (++i12 == ne2) {
  7264. i12 = 0;
  7265. if (++i13 == ne3) {
  7266. i13 = 0;
  7267. }
  7268. }
  7269. }
  7270. }
  7271. }
  7272. }
  7273. } else if (dst->type == GGML_TYPE_BF16) {
  7274. for (int64_t i03 = 0; i03 < ne03; i03++) {
  7275. for (int64_t i02 = 0; i02 < ne02; i02++) {
  7276. i10 += ne00 * ir0;
  7277. while (i10 >= ne0) {
  7278. i10 -= ne0;
  7279. if (++i11 == ne1) {
  7280. i11 = 0;
  7281. if (++i12 == ne2) {
  7282. i12 = 0;
  7283. if (++i13 == ne3) {
  7284. i13 = 0;
  7285. }
  7286. }
  7287. }
  7288. }
  7289. for (int64_t i01 = ir0; i01 < ir1; i01++) {
  7290. for (int64_t i00 = 0; i00 < ne00; i00++) {
  7291. const char * src0_ptr = ((char *) src0->data + i00*nb00 + i01*nb01 + i02*nb02 + i03*nb03);
  7292. char * dst_ptr = ((char *) dst->data + i10*nb0 + i11*nb1 + i12*nb2 + i13*nb3);
  7293. *(ggml_bf16_t *) dst_ptr = GGML_FP32_TO_BF16(*(const float *) src0_ptr);
  7294. if (++i10 == ne0) {
  7295. i10 = 0;
  7296. if (++i11 == ne1) {
  7297. i11 = 0;
  7298. if (++i12 == ne2) {
  7299. i12 = 0;
  7300. if (++i13 == ne3) {
  7301. i13 = 0;
  7302. }
  7303. }
  7304. }
  7305. }
  7306. }
  7307. }
  7308. i10 += ne00 * (ne01 - ir1);
  7309. while (i10 >= ne0) {
  7310. i10 -= ne0;
  7311. if (++i11 == ne1) {
  7312. i11 = 0;
  7313. if (++i12 == ne2) {
  7314. i12 = 0;
  7315. if (++i13 == ne3) {
  7316. i13 = 0;
  7317. }
  7318. }
  7319. }
  7320. }
  7321. }
  7322. }
  7323. } else {
  7324. GGML_ASSERT(false); // TODO: implement
  7325. }
  7326. }
  7327. // A simplified version of ggml_compute_forward_dup that doesn't do float upcasting, and just plain old memcpy.
  7328. static void ggml_compute_forward_dup_bytes(
  7329. const struct ggml_compute_params * params,
  7330. struct ggml_tensor * dst) {
  7331. const struct ggml_tensor * src0 = dst->src[0];
  7332. GGML_ASSERT(ggml_nelements(dst) == ggml_nelements(src0));
  7333. GGML_ASSERT(src0->type == dst->type);
  7334. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  7335. return;
  7336. }
  7337. if (ggml_is_contiguous(src0) && ggml_is_contiguous(dst)) {
  7338. ggml_compute_forward_dup_same_cont(params, dst);
  7339. return;
  7340. }
  7341. GGML_TENSOR_UNARY_OP_LOCALS;
  7342. const size_t type_size = ggml_type_size(src0->type);
  7343. const int ith = params->ith; // thread index
  7344. const int nth = params->nth; // number of threads
  7345. // parallelize by rows
  7346. const int nr = ne01;
  7347. // number of rows per thread
  7348. const int dr = (nr + nth - 1) / nth;
  7349. // row range for this thread
  7350. const int ir0 = dr * ith;
  7351. const int ir1 = MIN(ir0 + dr, nr);
  7352. if (src0->type == dst->type &&
  7353. ne00 == ne0 &&
  7354. nb00 == type_size && nb0 == type_size) {
  7355. // copy by rows
  7356. const size_t rs = ne00 * type_size;
  7357. for (int64_t i03 = 0; i03 < ne03; i03++) {
  7358. for (int64_t i02 = 0; i02 < ne02; i02++) {
  7359. for (int64_t i01 = ir0; i01 < ir1; i01++) {
  7360. memcpy(
  7361. ((char *) dst->data + i01*nb1 + i02*nb2 + i03*nb3),
  7362. ((char *) src0->data + i01*nb01 + i02*nb02 + i03*nb03),
  7363. rs);
  7364. }
  7365. }
  7366. }
  7367. return;
  7368. }
  7369. if (ggml_is_contiguous(dst)) {
  7370. size_t id = 0;
  7371. char * dst_ptr = (char *) dst->data;
  7372. const size_t rs = ne00 * type_size;
  7373. if (nb00 == type_size) {
  7374. // src0 is contigous on first dimension, copy by rows
  7375. for (int64_t i03 = 0; i03 < ne03; i03++) {
  7376. for (int64_t i02 = 0; i02 < ne02; i02++) {
  7377. id += rs * ir0;
  7378. for (int64_t i01 = ir0; i01 < ir1; i01++) {
  7379. const char * src0_ptr = (char *) src0->data + i01*nb01 + i02*nb02 + i03*nb03;
  7380. memcpy(dst_ptr + id, src0_ptr, rs);
  7381. id += rs;
  7382. }
  7383. id += rs * (ne01 - ir1);
  7384. }
  7385. }
  7386. } else {
  7387. //printf("%s: this is not optimal - fix me\n", __func__);
  7388. for (int64_t i03 = 0; i03 < ne03; i03++) {
  7389. for (int64_t i02 = 0; i02 < ne02; i02++) {
  7390. id += rs * ir0;
  7391. for (int64_t i01 = ir0; i01 < ir1; i01++) {
  7392. for (int64_t i00 = 0; i00 < ne00; i00++) {
  7393. const char * src0_ptr = (char *) src0->data + i00*nb00 + i01*nb01 + i02*nb02 + i03*nb03;
  7394. memcpy(dst_ptr + id, src0_ptr, type_size);
  7395. id += type_size;
  7396. }
  7397. }
  7398. id += rs * (ne01 - ir1);
  7399. }
  7400. }
  7401. }
  7402. return;
  7403. }
  7404. // dst counters
  7405. int64_t i10 = 0;
  7406. int64_t i11 = 0;
  7407. int64_t i12 = 0;
  7408. int64_t i13 = 0;
  7409. for (int64_t i03 = 0; i03 < ne03; i03++) {
  7410. for (int64_t i02 = 0; i02 < ne02; i02++) {
  7411. i10 += ne00 * ir0;
  7412. while (i10 >= ne0) {
  7413. i10 -= ne0;
  7414. if (++i11 == ne1) {
  7415. i11 = 0;
  7416. if (++i12 == ne2) {
  7417. i12 = 0;
  7418. if (++i13 == ne3) {
  7419. i13 = 0;
  7420. }
  7421. }
  7422. }
  7423. }
  7424. for (int64_t i01 = ir0; i01 < ir1; i01++) {
  7425. for (int64_t i00 = 0; i00 < ne00; i00++) {
  7426. const char * src0_ptr = ((char *) src0->data + i00*nb00 + i01*nb01 + i02*nb02 + i03*nb03);
  7427. char * dst_ptr = ((char *) dst->data + i10*nb0 + i11*nb1 + i12*nb2 + i13*nb3);
  7428. memcpy(dst_ptr, src0_ptr, type_size);
  7429. if (++i10 == ne0) {
  7430. i10 = 0;
  7431. if (++i11 == ne1) {
  7432. i11 = 0;
  7433. if (++i12 == ne2) {
  7434. i12 = 0;
  7435. if (++i13 == ne3) {
  7436. i13 = 0;
  7437. }
  7438. }
  7439. }
  7440. }
  7441. }
  7442. }
  7443. i10 += ne00 * (ne01 - ir1);
  7444. while (i10 >= ne0) {
  7445. i10 -= ne0;
  7446. if (++i11 == ne1) {
  7447. i11 = 0;
  7448. if (++i12 == ne2) {
  7449. i12 = 0;
  7450. if (++i13 == ne3) {
  7451. i13 = 0;
  7452. }
  7453. }
  7454. }
  7455. }
  7456. }
  7457. }
  7458. }
  7459. static void ggml_compute_forward_dup(
  7460. const struct ggml_compute_params * params,
  7461. struct ggml_tensor * dst) {
  7462. const struct ggml_tensor * src0 = dst->src[0];
  7463. if (src0->type == dst->type) {
  7464. ggml_compute_forward_dup_bytes(params, dst);
  7465. return;
  7466. }
  7467. switch (src0->type) {
  7468. case GGML_TYPE_F16:
  7469. {
  7470. ggml_compute_forward_dup_f16(params, dst);
  7471. } break;
  7472. case GGML_TYPE_BF16:
  7473. {
  7474. ggml_compute_forward_dup_bf16(params, dst);
  7475. } break;
  7476. case GGML_TYPE_F32:
  7477. {
  7478. ggml_compute_forward_dup_f32(params, dst);
  7479. } break;
  7480. default:
  7481. {
  7482. GGML_ASSERT(false);
  7483. } break;
  7484. }
  7485. }
  7486. // ggml_compute_forward_add
  7487. static void ggml_compute_forward_add_f32(
  7488. const struct ggml_compute_params * params,
  7489. struct ggml_tensor * dst) {
  7490. const struct ggml_tensor * src0 = dst->src[0];
  7491. const struct ggml_tensor * src1 = dst->src[1];
  7492. GGML_ASSERT(ggml_can_repeat(src1, src0) && ggml_are_same_shape(src0, dst));
  7493. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  7494. return;
  7495. }
  7496. const int ith = params->ith;
  7497. const int nth = params->nth;
  7498. const int nr = ggml_nrows(src0);
  7499. GGML_TENSOR_BINARY_OP_LOCALS
  7500. GGML_ASSERT( nb0 == sizeof(float));
  7501. GGML_ASSERT(nb00 == sizeof(float));
  7502. // rows per thread
  7503. const int dr = (nr + nth - 1)/nth;
  7504. // row range for this thread
  7505. const int ir0 = dr*ith;
  7506. const int ir1 = MIN(ir0 + dr, nr);
  7507. if (nb10 == sizeof(float)) {
  7508. for (int ir = ir0; ir < ir1; ++ir) {
  7509. // src1 is broadcastable across src0 and dst in i1, i2, i3
  7510. const int64_t i03 = ir/(ne02*ne01);
  7511. const int64_t i02 = (ir - i03*ne02*ne01)/ne01;
  7512. const int64_t i01 = (ir - i03*ne02*ne01 - i02*ne01);
  7513. const int64_t i13 = i03 % ne13;
  7514. const int64_t i12 = i02 % ne12;
  7515. const int64_t i11 = i01 % ne11;
  7516. const int64_t nr0 = ne00 / ne10;
  7517. float * dst_ptr = (float *) ((char *) dst->data + i03*nb3 + i02*nb2 + i01*nb1 );
  7518. float * src0_ptr = (float *) ((char *) src0->data + i03*nb03 + i02*nb02 + i01*nb01);
  7519. float * src1_ptr = (float *) ((char *) src1->data + i13*nb13 + i12*nb12 + i11*nb11);
  7520. for (int64_t r = 0; r < nr0; ++r) {
  7521. #ifdef GGML_USE_ACCELERATE
  7522. vDSP_vadd(src0_ptr + r*ne10, 1, src1_ptr, 1, dst_ptr + r*ne10, 1, ne10);
  7523. #else
  7524. ggml_vec_add_f32(ne10, dst_ptr + r*ne10, src0_ptr + r*ne10, src1_ptr);
  7525. #endif
  7526. }
  7527. }
  7528. } else {
  7529. // src1 is not contiguous
  7530. for (int ir = ir0; ir < ir1; ++ir) {
  7531. // src1 is broadcastable across src0 and dst in i1, i2, i3
  7532. const int64_t i03 = ir/(ne02*ne01);
  7533. const int64_t i02 = (ir - i03*ne02*ne01)/ne01;
  7534. const int64_t i01 = (ir - i03*ne02*ne01 - i02*ne01);
  7535. const int64_t i13 = i03 % ne13;
  7536. const int64_t i12 = i02 % ne12;
  7537. const int64_t i11 = i01 % ne11;
  7538. float * dst_ptr = (float *) ((char *) dst->data + i03*nb3 + i02*nb2 + i01*nb1 );
  7539. float * src0_ptr = (float *) ((char *) src0->data + i03*nb03 + i02*nb02 + i01*nb01);
  7540. for (int64_t i0 = 0; i0 < ne0; ++i0) {
  7541. const int64_t i10 = i0 % ne10;
  7542. float * src1_ptr = (float *) ((char *) src1->data + i13*nb13 + i12*nb12 + i11*nb11 + i10*nb10);
  7543. dst_ptr[i0] = src0_ptr[i0] + *src1_ptr;
  7544. }
  7545. }
  7546. }
  7547. }
  7548. static void ggml_compute_forward_add_f16_f32(
  7549. const struct ggml_compute_params * params,
  7550. struct ggml_tensor * dst) {
  7551. const struct ggml_tensor * src0 = dst->src[0];
  7552. const struct ggml_tensor * src1 = dst->src[1];
  7553. GGML_ASSERT(ggml_are_same_shape(src0, src1) && ggml_are_same_shape(src0, dst));
  7554. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  7555. return;
  7556. }
  7557. const int ith = params->ith;
  7558. const int nth = params->nth;
  7559. const int nr = ggml_nrows(src0);
  7560. GGML_TENSOR_BINARY_OP_LOCALS
  7561. GGML_ASSERT(src0->type == GGML_TYPE_F16);
  7562. GGML_ASSERT(src1->type == GGML_TYPE_F32);
  7563. if (dst->type == GGML_TYPE_F32) {
  7564. GGML_ASSERT( nb0 == sizeof(float));
  7565. }
  7566. else {
  7567. GGML_ASSERT(dst->type == GGML_TYPE_F16);
  7568. GGML_ASSERT( nb0 == sizeof(ggml_fp16_t));
  7569. }
  7570. GGML_ASSERT(nb00 == sizeof(ggml_fp16_t));
  7571. // rows per thread
  7572. const int dr = (nr + nth - 1)/nth;
  7573. // row range for this thread
  7574. const int ir0 = dr*ith;
  7575. const int ir1 = MIN(ir0 + dr, nr);
  7576. if (nb10 == sizeof(float)) {
  7577. if (dst->type == GGML_TYPE_F16) {
  7578. for (int ir = ir0; ir < ir1; ++ir) {
  7579. // src0, src1 and dst are same shape => same indices
  7580. const int i3 = ir/(ne2*ne1);
  7581. const int i2 = (ir - i3*ne2*ne1)/ne1;
  7582. const int i1 = (ir - i3*ne2*ne1 - i2*ne1);
  7583. ggml_fp16_t * dst_ptr = (ggml_fp16_t *) ((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1);
  7584. ggml_fp16_t * src0_ptr = (ggml_fp16_t *) ((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01);
  7585. float * src1_ptr = (float *) ((char *) src1->data + i3*nb13 + i2*nb12 + i1*nb11);
  7586. for (int i = 0; i < ne0; i++) {
  7587. dst_ptr[i] = GGML_FP32_TO_FP16(GGML_FP16_TO_FP32(src0_ptr[i]) + src1_ptr[i]);
  7588. }
  7589. }
  7590. } else {
  7591. for (int ir = ir0; ir < ir1; ++ir) {
  7592. // src0, src1 and dst are same shape => same indices
  7593. const int i3 = ir/(ne2*ne1);
  7594. const int i2 = (ir - i3*ne2*ne1)/ne1;
  7595. const int i1 = (ir - i3*ne2*ne1 - i2*ne1);
  7596. float * dst_ptr = (float *) ((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1);
  7597. ggml_fp16_t * src0_ptr = (ggml_fp16_t *) ((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01);
  7598. float * src1_ptr = (float *) ((char *) src1->data + i3*nb13 + i2*nb12 + i1*nb11);
  7599. for (int i = 0; i < ne0; i++) {
  7600. dst_ptr[i] = GGML_FP16_TO_FP32(src0_ptr[i]) + src1_ptr[i];
  7601. }
  7602. }
  7603. }
  7604. }
  7605. else {
  7606. // src1 is not contiguous
  7607. GGML_ASSERT(false);
  7608. }
  7609. }
  7610. static void ggml_compute_forward_add_bf16_f32(
  7611. const struct ggml_compute_params * params,
  7612. struct ggml_tensor * dst) {
  7613. const struct ggml_tensor * src0 = dst->src[0];
  7614. const struct ggml_tensor * src1 = dst->src[1];
  7615. GGML_ASSERT(ggml_are_same_shape(src0, src1) && ggml_are_same_shape(src0, dst));
  7616. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  7617. return;
  7618. }
  7619. const int ith = params->ith;
  7620. const int nth = params->nth;
  7621. const int nr = ggml_nrows(src0);
  7622. GGML_TENSOR_BINARY_OP_LOCALS
  7623. GGML_ASSERT(src0->type == GGML_TYPE_BF16);
  7624. GGML_ASSERT(src1->type == GGML_TYPE_F32);
  7625. if (dst->type == GGML_TYPE_F32) {
  7626. GGML_ASSERT( nb0 == sizeof(float));
  7627. }
  7628. else {
  7629. GGML_ASSERT(dst->type == GGML_TYPE_BF16);
  7630. GGML_ASSERT( nb0 == sizeof(ggml_bf16_t));
  7631. }
  7632. GGML_ASSERT(nb00 == sizeof(ggml_bf16_t));
  7633. // rows per thread
  7634. const int dr = (nr + nth - 1)/nth;
  7635. // row range for this thread
  7636. const int ir0 = dr*ith;
  7637. const int ir1 = MIN(ir0 + dr, nr);
  7638. if (nb10 == sizeof(float)) {
  7639. if (dst->type == GGML_TYPE_BF16) {
  7640. for (int ir = ir0; ir < ir1; ++ir) {
  7641. // src0, src1 and dst are same shape => same indices
  7642. const int i3 = ir/(ne2*ne1);
  7643. const int i2 = (ir - i3*ne2*ne1)/ne1;
  7644. const int i1 = (ir - i3*ne2*ne1 - i2*ne1);
  7645. ggml_bf16_t * dst_ptr = (ggml_bf16_t *) ((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1);
  7646. ggml_bf16_t * src0_ptr = (ggml_bf16_t *) ((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01);
  7647. float * src1_ptr = (float *) ((char *) src1->data + i3*nb13 + i2*nb12 + i1*nb11);
  7648. for (int i = 0; i < ne0; i++) {
  7649. dst_ptr[i] = GGML_FP32_TO_BF16(GGML_BF16_TO_FP32(src0_ptr[i]) + src1_ptr[i]);
  7650. }
  7651. }
  7652. } else {
  7653. for (int ir = ir0; ir < ir1; ++ir) {
  7654. // src0, src1 and dst are same shape => same indices
  7655. const int i3 = ir/(ne2*ne1);
  7656. const int i2 = (ir - i3*ne2*ne1)/ne1;
  7657. const int i1 = (ir - i3*ne2*ne1 - i2*ne1);
  7658. float * dst_ptr = (float *) ((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1);
  7659. ggml_bf16_t * src0_ptr = (ggml_bf16_t *) ((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01);
  7660. float * src1_ptr = (float *) ((char *) src1->data + i3*nb13 + i2*nb12 + i1*nb11);
  7661. for (int i = 0; i < ne0; i++) {
  7662. dst_ptr[i] = GGML_BF16_TO_FP32(src0_ptr[i]) + src1_ptr[i];
  7663. }
  7664. }
  7665. }
  7666. }
  7667. else {
  7668. // src1 is not contiguous
  7669. GGML_ASSERT(false);
  7670. }
  7671. }
  7672. static void ggml_compute_forward_add_f16_f16(
  7673. const struct ggml_compute_params * params,
  7674. struct ggml_tensor * dst) {
  7675. const struct ggml_tensor * src0 = dst->src[0];
  7676. const struct ggml_tensor * src1 = dst->src[1];
  7677. GGML_ASSERT(ggml_are_same_shape(src0, src1) && ggml_are_same_shape(src0, dst));
  7678. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  7679. return;
  7680. }
  7681. const int ith = params->ith;
  7682. const int nth = params->nth;
  7683. const int nr = ggml_nrows(src0);
  7684. GGML_TENSOR_BINARY_OP_LOCALS
  7685. GGML_ASSERT(src0->type == GGML_TYPE_F16);
  7686. GGML_ASSERT(src1->type == GGML_TYPE_F16);
  7687. GGML_ASSERT(dst->type == GGML_TYPE_F16);
  7688. GGML_ASSERT( nb0 == sizeof(ggml_fp16_t));
  7689. GGML_ASSERT(nb00 == sizeof(ggml_fp16_t));
  7690. // rows per thread
  7691. const int dr = (nr + nth - 1)/nth;
  7692. // row range for this thread
  7693. const int ir0 = dr*ith;
  7694. const int ir1 = MIN(ir0 + dr, nr);
  7695. if (nb10 == sizeof(ggml_fp16_t)) {
  7696. for (int ir = ir0; ir < ir1; ++ir) {
  7697. // src0, src1 and dst are same shape => same indices
  7698. const int i3 = ir/(ne2*ne1);
  7699. const int i2 = (ir - i3*ne2*ne1)/ne1;
  7700. const int i1 = (ir - i3*ne2*ne1 - i2*ne1);
  7701. ggml_fp16_t * dst_ptr = (ggml_fp16_t *) ((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1);
  7702. ggml_fp16_t * src0_ptr = (ggml_fp16_t *) ((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01);
  7703. ggml_fp16_t * src1_ptr = (ggml_fp16_t *) ((char *) src1->data + i3*nb13 + i2*nb12 + i1*nb11);
  7704. for (int i = 0; i < ne0; i++) {
  7705. dst_ptr[i] = GGML_FP32_TO_FP16(GGML_FP16_TO_FP32(src0_ptr[i]) + GGML_FP16_TO_FP32(src1_ptr[i]));
  7706. }
  7707. }
  7708. }
  7709. else {
  7710. // src1 is not contiguous
  7711. GGML_ASSERT(false);
  7712. }
  7713. }
  7714. static void ggml_compute_forward_add_bf16_bf16(
  7715. const struct ggml_compute_params * params,
  7716. struct ggml_tensor * dst) {
  7717. const struct ggml_tensor * src0 = dst->src[0];
  7718. const struct ggml_tensor * src1 = dst->src[1];
  7719. GGML_ASSERT(ggml_are_same_shape(src0, src1) && ggml_are_same_shape(src0, dst));
  7720. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  7721. return;
  7722. }
  7723. const int ith = params->ith;
  7724. const int nth = params->nth;
  7725. const int nr = ggml_nrows(src0);
  7726. GGML_TENSOR_BINARY_OP_LOCALS
  7727. GGML_ASSERT(src0->type == GGML_TYPE_BF16);
  7728. GGML_ASSERT(src1->type == GGML_TYPE_BF16);
  7729. GGML_ASSERT(dst->type == GGML_TYPE_BF16);
  7730. GGML_ASSERT( nb0 == sizeof(ggml_bf16_t));
  7731. GGML_ASSERT(nb00 == sizeof(ggml_bf16_t));
  7732. // rows per thread
  7733. const int dr = (nr + nth - 1)/nth;
  7734. // row range for this thread
  7735. const int ir0 = dr*ith;
  7736. const int ir1 = MIN(ir0 + dr, nr);
  7737. if (nb10 == sizeof(ggml_bf16_t)) {
  7738. for (int ir = ir0; ir < ir1; ++ir) {
  7739. // src0, src1 and dst are same shape => same indices
  7740. const int i3 = ir/(ne2*ne1);
  7741. const int i2 = (ir - i3*ne2*ne1)/ne1;
  7742. const int i1 = (ir - i3*ne2*ne1 - i2*ne1);
  7743. ggml_bf16_t * dst_ptr = (ggml_bf16_t *) ((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1);
  7744. ggml_bf16_t * src0_ptr = (ggml_bf16_t *) ((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01);
  7745. ggml_bf16_t * src1_ptr = (ggml_bf16_t *) ((char *) src1->data + i3*nb13 + i2*nb12 + i1*nb11);
  7746. for (int i = 0; i < ne0; i++) {
  7747. dst_ptr[i] = GGML_FP32_TO_BF16(GGML_BF16_TO_FP32(src0_ptr[i]) + GGML_BF16_TO_FP32(src1_ptr[i]));
  7748. }
  7749. }
  7750. }
  7751. else {
  7752. // src1 is not contiguous
  7753. GGML_ASSERT(false);
  7754. }
  7755. }
  7756. static void ggml_compute_forward_add_q_f32(
  7757. const struct ggml_compute_params * params,
  7758. struct ggml_tensor * dst) {
  7759. const struct ggml_tensor * src0 = dst->src[0];
  7760. const struct ggml_tensor * src1 = dst->src[1];
  7761. GGML_ASSERT(ggml_are_same_shape(src0, src1) && ggml_are_same_shape(src0, dst));
  7762. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  7763. return;
  7764. }
  7765. const int nr = ggml_nrows(src0);
  7766. GGML_TENSOR_BINARY_OP_LOCALS
  7767. const int ith = params->ith;
  7768. const int nth = params->nth;
  7769. const enum ggml_type type = src0->type;
  7770. const enum ggml_type dtype = dst->type;
  7771. ggml_to_float_t const dequantize_row_q = type_traits[type].to_float;
  7772. ggml_from_float_t const quantize_row_q = type_traits[dtype].from_float;
  7773. // we don't support permuted src0 or src1
  7774. GGML_ASSERT(nb00 == ggml_type_size(type));
  7775. GGML_ASSERT(nb10 == sizeof(float));
  7776. // dst cannot be transposed or permuted
  7777. GGML_ASSERT(nb0 <= nb1);
  7778. GGML_ASSERT(nb1 <= nb2);
  7779. GGML_ASSERT(nb2 <= nb3);
  7780. GGML_ASSERT(ggml_is_quantized(src0->type));
  7781. GGML_ASSERT(src1->type == GGML_TYPE_F32);
  7782. // rows per thread
  7783. const int dr = (nr + nth - 1)/nth;
  7784. // row range for this thread
  7785. const int ir0 = dr*ith;
  7786. const int ir1 = MIN(ir0 + dr, nr);
  7787. float * wdata = (float *) params->wdata + (ne00 + CACHE_LINE_SIZE_F32) * ith;
  7788. for (int ir = ir0; ir < ir1; ++ir) {
  7789. // src0 indices
  7790. const int i03 = ir/(ne02*ne01);
  7791. const int i02 = (ir - i03*ne02*ne01)/ne01;
  7792. const int i01 = (ir - i03*ne02*ne01 - i02*ne01);
  7793. // src1 and dst are same shape as src0 => same indices
  7794. const int i13 = i03;
  7795. const int i12 = i02;
  7796. const int i11 = i01;
  7797. const int i3 = i03;
  7798. const int i2 = i02;
  7799. const int i1 = i01;
  7800. void * src0_row = (void *) ((char *) src0->data + (i01*nb01 + i02*nb02 + i03*nb03));
  7801. float * src1_row = (float *)((char *) src1->data + (i11*nb11 + i12*nb12 + i13*nb13));
  7802. void * dst_row = (void *) ((char *) dst->data + ( i1*nb1 + i2*nb2 + i3*nb3));
  7803. assert(ne00 % 32 == 0);
  7804. // unquantize row from src0 to temp buffer
  7805. dequantize_row_q(src0_row, wdata, ne00);
  7806. // add src1
  7807. ggml_vec_acc_f32(ne00, wdata, src1_row);
  7808. // quantize row to dst
  7809. if (quantize_row_q != NULL) {
  7810. quantize_row_q(wdata, dst_row, ne00);
  7811. } else {
  7812. memcpy(dst_row, wdata, ne0*nb0);
  7813. }
  7814. }
  7815. }
  7816. static void ggml_compute_forward_add(
  7817. const struct ggml_compute_params * params,
  7818. struct ggml_tensor * dst) {
  7819. const struct ggml_tensor * src0 = dst->src[0];
  7820. const struct ggml_tensor * src1 = dst->src[1];
  7821. switch (src0->type) {
  7822. case GGML_TYPE_F32:
  7823. {
  7824. if (src1->type == GGML_TYPE_F32) {
  7825. ggml_compute_forward_add_f32(params, dst);
  7826. }
  7827. else {
  7828. GGML_ASSERT(false);
  7829. }
  7830. } break;
  7831. case GGML_TYPE_F16:
  7832. {
  7833. if (src1->type == GGML_TYPE_F16) {
  7834. ggml_compute_forward_add_f16_f16(params, dst);
  7835. }
  7836. else if (src1->type == GGML_TYPE_F32) {
  7837. ggml_compute_forward_add_f16_f32(params, dst);
  7838. }
  7839. else {
  7840. GGML_ASSERT(false);
  7841. }
  7842. } break;
  7843. case GGML_TYPE_BF16:
  7844. {
  7845. if (src1->type == GGML_TYPE_BF16) {
  7846. ggml_compute_forward_add_bf16_bf16(params, dst);
  7847. }
  7848. else if (src1->type == GGML_TYPE_F32) {
  7849. ggml_compute_forward_add_bf16_f32(params, dst);
  7850. }
  7851. else {
  7852. GGML_ASSERT(false);
  7853. }
  7854. } break;
  7855. case GGML_TYPE_Q4_0:
  7856. case GGML_TYPE_Q4_1:
  7857. case GGML_TYPE_Q5_0:
  7858. case GGML_TYPE_Q5_1:
  7859. case GGML_TYPE_Q8_0:
  7860. case GGML_TYPE_Q2_K:
  7861. case GGML_TYPE_Q3_K:
  7862. case GGML_TYPE_Q4_K:
  7863. case GGML_TYPE_Q5_K:
  7864. case GGML_TYPE_Q6_K:
  7865. case GGML_TYPE_IQ2_XXS:
  7866. case GGML_TYPE_IQ2_XS:
  7867. case GGML_TYPE_IQ3_XXS:
  7868. case GGML_TYPE_IQ1_S:
  7869. case GGML_TYPE_IQ1_M:
  7870. case GGML_TYPE_IQ4_NL:
  7871. case GGML_TYPE_IQ4_XS:
  7872. case GGML_TYPE_IQ3_S:
  7873. case GGML_TYPE_IQ2_S:
  7874. {
  7875. ggml_compute_forward_add_q_f32(params, dst);
  7876. } break;
  7877. default:
  7878. {
  7879. GGML_ASSERT(false);
  7880. } break;
  7881. }
  7882. }
  7883. // ggml_compute_forward_add1
  7884. static void ggml_compute_forward_add1_f32(
  7885. const struct ggml_compute_params * params,
  7886. struct ggml_tensor * dst) {
  7887. const struct ggml_tensor * src0 = dst->src[0];
  7888. const struct ggml_tensor * src1 = dst->src[1];
  7889. GGML_ASSERT(ggml_are_same_shape(src0, dst));
  7890. GGML_ASSERT(ggml_is_scalar(src1));
  7891. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  7892. return;
  7893. }
  7894. const int ith = params->ith;
  7895. const int nth = params->nth;
  7896. const int nr = ggml_nrows(src0);
  7897. GGML_TENSOR_UNARY_OP_LOCALS
  7898. GGML_ASSERT( nb0 == sizeof(float));
  7899. GGML_ASSERT(nb00 == sizeof(float));
  7900. // rows per thread
  7901. const int dr = (nr + nth - 1)/nth;
  7902. // row range for this thread
  7903. const int ir0 = dr*ith;
  7904. const int ir1 = MIN(ir0 + dr, nr);
  7905. for (int ir = ir0; ir < ir1; ++ir) {
  7906. // src0 and dst are same shape => same indices
  7907. const int i3 = ir/(ne2*ne1);
  7908. const int i2 = (ir - i3*ne2*ne1)/ne1;
  7909. const int i1 = (ir - i3*ne2*ne1 - i2*ne1);
  7910. #ifdef GGML_USE_ACCELERATE
  7911. UNUSED(ggml_vec_add1_f32);
  7912. vDSP_vadd(
  7913. (float *) ((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01), 1,
  7914. (float *) ((char *) src1->data), 0,
  7915. (float *) ((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1 ), 1,
  7916. ne0);
  7917. #else
  7918. ggml_vec_add1_f32(ne0,
  7919. (float *) ((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1 ),
  7920. (float *) ((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01),
  7921. *(float *) src1->data);
  7922. #endif
  7923. }
  7924. }
  7925. static void ggml_compute_forward_add1_f16_f32(
  7926. const struct ggml_compute_params * params,
  7927. struct ggml_tensor * dst) {
  7928. const struct ggml_tensor * src0 = dst->src[0];
  7929. const struct ggml_tensor * src1 = dst->src[1];
  7930. GGML_ASSERT(ggml_are_same_shape(src0, dst));
  7931. GGML_ASSERT(ggml_is_scalar(src1));
  7932. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  7933. return;
  7934. }
  7935. // scalar to add
  7936. const float v = *(float *) src1->data;
  7937. const int ith = params->ith;
  7938. const int nth = params->nth;
  7939. const int nr = ggml_nrows(src0);
  7940. GGML_TENSOR_UNARY_OP_LOCALS
  7941. GGML_ASSERT(src0->type == GGML_TYPE_F16);
  7942. GGML_ASSERT(src1->type == GGML_TYPE_F32);
  7943. GGML_ASSERT(dst->type == GGML_TYPE_F16);
  7944. GGML_ASSERT( nb0 == sizeof(ggml_fp16_t));
  7945. GGML_ASSERT(nb00 == sizeof(ggml_fp16_t));
  7946. // rows per thread
  7947. const int dr = (nr + nth - 1)/nth;
  7948. // row range for this thread
  7949. const int ir0 = dr*ith;
  7950. const int ir1 = MIN(ir0 + dr, nr);
  7951. for (int ir = ir0; ir < ir1; ++ir) {
  7952. // src0 and dst are same shape => same indices
  7953. const int i3 = ir/(ne2*ne1);
  7954. const int i2 = (ir - i3*ne2*ne1)/ne1;
  7955. const int i1 = (ir - i3*ne2*ne1 - i2*ne1);
  7956. ggml_fp16_t * dst_ptr = (ggml_fp16_t *) ((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1 );
  7957. ggml_fp16_t * src0_ptr = (ggml_fp16_t *) ((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01);
  7958. for (int i = 0; i < ne0; i++) {
  7959. dst_ptr[i] = GGML_FP32_TO_FP16(GGML_FP16_TO_FP32(src0_ptr[i]) + v);
  7960. }
  7961. }
  7962. }
  7963. static void ggml_compute_forward_add1_f16_f16(
  7964. const struct ggml_compute_params * params,
  7965. struct ggml_tensor * dst) {
  7966. const struct ggml_tensor * src0 = dst->src[0];
  7967. const struct ggml_tensor * src1 = dst->src[1];
  7968. GGML_ASSERT(ggml_are_same_shape(src0, dst));
  7969. GGML_ASSERT(ggml_is_scalar(src1));
  7970. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  7971. return;
  7972. }
  7973. // scalar to add
  7974. const float v = GGML_FP16_TO_FP32(*(ggml_fp16_t *) src1->data);
  7975. const int ith = params->ith;
  7976. const int nth = params->nth;
  7977. const int nr = ggml_nrows(src0);
  7978. GGML_TENSOR_UNARY_OP_LOCALS
  7979. GGML_ASSERT(src0->type == GGML_TYPE_F16);
  7980. GGML_ASSERT(src1->type == GGML_TYPE_F16);
  7981. GGML_ASSERT(dst->type == GGML_TYPE_F16);
  7982. GGML_ASSERT( nb0 == sizeof(ggml_fp16_t));
  7983. GGML_ASSERT(nb00 == sizeof(ggml_fp16_t));
  7984. // rows per thread
  7985. const int dr = (nr + nth - 1)/nth;
  7986. // row range for this thread
  7987. const int ir0 = dr*ith;
  7988. const int ir1 = MIN(ir0 + dr, nr);
  7989. for (int ir = ir0; ir < ir1; ++ir) {
  7990. // src0 and dst are same shape => same indices
  7991. const int i3 = ir/(ne2*ne1);
  7992. const int i2 = (ir - i3*ne2*ne1)/ne1;
  7993. const int i1 = (ir - i3*ne2*ne1 - i2*ne1);
  7994. ggml_fp16_t * dst_ptr = (ggml_fp16_t *) ((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1 );
  7995. ggml_fp16_t * src0_ptr = (ggml_fp16_t *) ((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01);
  7996. for (int i = 0; i < ne0; i++) {
  7997. dst_ptr[i] = GGML_FP32_TO_FP16(GGML_FP16_TO_FP32(src0_ptr[i]) + v);
  7998. }
  7999. }
  8000. }
  8001. static void ggml_compute_forward_add1_q_f32(
  8002. const struct ggml_compute_params * params,
  8003. struct ggml_tensor * dst) {
  8004. const struct ggml_tensor * src0 = dst->src[0];
  8005. const struct ggml_tensor * src1 = dst->src[1];
  8006. GGML_ASSERT(ggml_are_same_shape(src0, dst));
  8007. GGML_ASSERT(ggml_is_scalar(src1));
  8008. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  8009. return;
  8010. }
  8011. // scalar to add
  8012. const float v = *(float *) src1->data;
  8013. const int ith = params->ith;
  8014. const int nth = params->nth;
  8015. const int nr = ggml_nrows(src0);
  8016. GGML_TENSOR_UNARY_OP_LOCALS
  8017. const enum ggml_type type = src0->type;
  8018. ggml_to_float_t const dequantize_row_q = type_traits[type].to_float;
  8019. ggml_from_float_t const quantize_row_q = type_traits[type].from_float;
  8020. // we don't support permuted src0
  8021. GGML_ASSERT(nb00 == ggml_type_size(type));
  8022. // dst cannot be transposed or permuted
  8023. GGML_ASSERT(nb0 <= nb1);
  8024. GGML_ASSERT(nb1 <= nb2);
  8025. GGML_ASSERT(nb2 <= nb3);
  8026. GGML_ASSERT(ggml_is_quantized(src0->type));
  8027. GGML_ASSERT(dst->type == src0->type);
  8028. GGML_ASSERT(src1->type == GGML_TYPE_F32);
  8029. // rows per thread
  8030. const int dr = (nr + nth - 1)/nth;
  8031. // row range for this thread
  8032. const int ir0 = dr*ith;
  8033. const int ir1 = MIN(ir0 + dr, nr);
  8034. float * wdata = (float *) params->wdata + (ne0 + CACHE_LINE_SIZE_F32) * ith;
  8035. for (int ir = ir0; ir < ir1; ++ir) {
  8036. // src0 and dst are same shape => same indices
  8037. const int i3 = ir/(ne2*ne1);
  8038. const int i2 = (ir - i3*ne2*ne1)/ne1;
  8039. const int i1 = (ir - i3*ne2*ne1 - i2*ne1);
  8040. void * src0_row = (void *) ((char *) src0->data + (i1*nb01 + i2*nb02 + i3*nb03));
  8041. void * dst_row = (void *) ((char *) dst->data + (i1*nb1 + i2*nb2 + i3*nb0 ));
  8042. assert(ne0 % 32 == 0);
  8043. // unquantize row from src0 to temp buffer
  8044. dequantize_row_q(src0_row, wdata, ne0);
  8045. // add src1
  8046. ggml_vec_acc1_f32(ne0, wdata, v);
  8047. // quantize row to dst
  8048. quantize_row_q(wdata, dst_row, ne0);
  8049. }
  8050. }
  8051. static void ggml_compute_forward_add1_bf16_f32(
  8052. const struct ggml_compute_params * params,
  8053. struct ggml_tensor * dst) {
  8054. const struct ggml_tensor * src0 = dst->src[0];
  8055. const struct ggml_tensor * src1 = dst->src[1];
  8056. GGML_ASSERT(ggml_are_same_shape(src0, dst));
  8057. GGML_ASSERT(ggml_is_scalar(src1));
  8058. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  8059. return;
  8060. }
  8061. // scalar to add
  8062. const float v = *(float *) src1->data;
  8063. const int ith = params->ith;
  8064. const int nth = params->nth;
  8065. const int nr = ggml_nrows(src0);
  8066. GGML_TENSOR_UNARY_OP_LOCALS
  8067. GGML_ASSERT(src0->type == GGML_TYPE_BF16);
  8068. GGML_ASSERT(src1->type == GGML_TYPE_F32);
  8069. GGML_ASSERT(dst->type == GGML_TYPE_BF16);
  8070. GGML_ASSERT( nb0 == sizeof(ggml_bf16_t));
  8071. GGML_ASSERT(nb00 == sizeof(ggml_bf16_t));
  8072. // rows per thread
  8073. const int dr = (nr + nth - 1)/nth;
  8074. // row range for this thread
  8075. const int ir0 = dr*ith;
  8076. const int ir1 = MIN(ir0 + dr, nr);
  8077. for (int ir = ir0; ir < ir1; ++ir) {
  8078. // src0 and dst are same shape => same indices
  8079. const int i3 = ir/(ne2*ne1);
  8080. const int i2 = (ir - i3*ne2*ne1)/ne1;
  8081. const int i1 = (ir - i3*ne2*ne1 - i2*ne1);
  8082. ggml_bf16_t * dst_ptr = (ggml_bf16_t *) ((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1 );
  8083. ggml_bf16_t * src0_ptr = (ggml_bf16_t *) ((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01);
  8084. for (int i = 0; i < ne0; i++) {
  8085. dst_ptr[i] = GGML_FP32_TO_BF16(GGML_BF16_TO_FP32(src0_ptr[i]) + v);
  8086. }
  8087. }
  8088. }
  8089. static void ggml_compute_forward_add1_bf16_bf16(
  8090. const struct ggml_compute_params * params,
  8091. struct ggml_tensor * dst) {
  8092. const struct ggml_tensor * src0 = dst->src[0];
  8093. const struct ggml_tensor * src1 = dst->src[1];
  8094. GGML_ASSERT(ggml_are_same_shape(src0, dst));
  8095. GGML_ASSERT(ggml_is_scalar(src1));
  8096. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  8097. return;
  8098. }
  8099. // scalar to add
  8100. const float v = GGML_BF16_TO_FP32(*(ggml_bf16_t *) src1->data);
  8101. const int ith = params->ith;
  8102. const int nth = params->nth;
  8103. const int nr = ggml_nrows(src0);
  8104. GGML_TENSOR_UNARY_OP_LOCALS
  8105. GGML_ASSERT(src0->type == GGML_TYPE_BF16);
  8106. GGML_ASSERT(src1->type == GGML_TYPE_BF16);
  8107. GGML_ASSERT(dst->type == GGML_TYPE_BF16);
  8108. GGML_ASSERT( nb0 == sizeof(ggml_bf16_t));
  8109. GGML_ASSERT(nb00 == sizeof(ggml_bf16_t));
  8110. // rows per thread
  8111. const int dr = (nr + nth - 1)/nth;
  8112. // row range for this thread
  8113. const int ir0 = dr*ith;
  8114. const int ir1 = MIN(ir0 + dr, nr);
  8115. for (int ir = ir0; ir < ir1; ++ir) {
  8116. // src0 and dst are same shape => same indices
  8117. const int i3 = ir/(ne2*ne1);
  8118. const int i2 = (ir - i3*ne2*ne1)/ne1;
  8119. const int i1 = (ir - i3*ne2*ne1 - i2*ne1);
  8120. ggml_bf16_t * dst_ptr = (ggml_bf16_t *) ((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1 );
  8121. ggml_bf16_t * src0_ptr = (ggml_bf16_t *) ((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01);
  8122. for (int i = 0; i < ne0; i++) {
  8123. dst_ptr[i] = GGML_FP32_TO_BF16(GGML_BF16_TO_FP32(src0_ptr[i]) + v);
  8124. }
  8125. }
  8126. }
  8127. static void ggml_compute_forward_add1(
  8128. const struct ggml_compute_params * params,
  8129. struct ggml_tensor * dst) {
  8130. const struct ggml_tensor * src0 = dst->src[0];
  8131. const struct ggml_tensor * src1 = dst->src[1];
  8132. switch (src0->type) {
  8133. case GGML_TYPE_F32:
  8134. {
  8135. ggml_compute_forward_add1_f32(params, dst);
  8136. } break;
  8137. case GGML_TYPE_F16:
  8138. {
  8139. if (src1->type == GGML_TYPE_F16) {
  8140. ggml_compute_forward_add1_f16_f16(params, dst);
  8141. }
  8142. else if (src1->type == GGML_TYPE_F32) {
  8143. ggml_compute_forward_add1_f16_f32(params, dst);
  8144. }
  8145. else {
  8146. GGML_ASSERT(false);
  8147. }
  8148. } break;
  8149. case GGML_TYPE_BF16:
  8150. {
  8151. if (src1->type == GGML_TYPE_BF16) {
  8152. ggml_compute_forward_add1_bf16_bf16(params, dst);
  8153. }
  8154. else if (src1->type == GGML_TYPE_F32) {
  8155. ggml_compute_forward_add1_bf16_f32(params, dst);
  8156. }
  8157. else {
  8158. GGML_ASSERT(false);
  8159. }
  8160. } break;
  8161. case GGML_TYPE_Q4_0:
  8162. case GGML_TYPE_Q4_1:
  8163. case GGML_TYPE_Q5_0:
  8164. case GGML_TYPE_Q5_1:
  8165. case GGML_TYPE_Q8_0:
  8166. case GGML_TYPE_Q8_1:
  8167. case GGML_TYPE_Q2_K:
  8168. case GGML_TYPE_Q3_K:
  8169. case GGML_TYPE_Q4_K:
  8170. case GGML_TYPE_Q5_K:
  8171. case GGML_TYPE_Q6_K:
  8172. case GGML_TYPE_IQ2_XXS:
  8173. case GGML_TYPE_IQ2_XS:
  8174. case GGML_TYPE_IQ3_XXS:
  8175. case GGML_TYPE_IQ1_S:
  8176. case GGML_TYPE_IQ1_M:
  8177. case GGML_TYPE_IQ4_NL:
  8178. case GGML_TYPE_IQ4_XS:
  8179. case GGML_TYPE_IQ3_S:
  8180. case GGML_TYPE_IQ2_S:
  8181. {
  8182. ggml_compute_forward_add1_q_f32(params, dst);
  8183. } break;
  8184. default:
  8185. {
  8186. GGML_ASSERT(false);
  8187. } break;
  8188. }
  8189. }
  8190. // ggml_compute_forward_acc
  8191. static void ggml_compute_forward_acc_f32(
  8192. const struct ggml_compute_params * params,
  8193. struct ggml_tensor * dst) {
  8194. const struct ggml_tensor * src0 = dst->src[0];
  8195. const struct ggml_tensor * src1 = dst->src[1];
  8196. GGML_ASSERT(ggml_are_same_shape(src0, dst));
  8197. GGML_ASSERT(ggml_is_contiguous(dst) && ggml_is_contiguous(src0));
  8198. // view src0 and dst with these strides and data offset inbytes during acc
  8199. // nb0 is implicitly element_size because src0 and dst are contiguous
  8200. size_t nb1 = ((int32_t *) dst->op_params)[0];
  8201. size_t nb2 = ((int32_t *) dst->op_params)[1];
  8202. size_t nb3 = ((int32_t *) dst->op_params)[2];
  8203. size_t offset = ((int32_t *) dst->op_params)[3];
  8204. bool inplace = (bool) ((int32_t *) dst->op_params)[4];
  8205. if (!inplace && (params->type == GGML_TASK_TYPE_INIT)) {
  8206. if (params->ith != 0) {
  8207. return;
  8208. }
  8209. // memcpy needs to be synchronized across threads to avoid race conditions.
  8210. // => do it in INIT phase
  8211. memcpy(
  8212. ((char *) dst->data),
  8213. ((char *) src0->data),
  8214. ggml_nbytes(dst));
  8215. }
  8216. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  8217. return;
  8218. }
  8219. const int ith = params->ith;
  8220. const int nth = params->nth;
  8221. const int nr = ggml_nrows(src1);
  8222. const int nc = src1->ne[0];
  8223. GGML_TENSOR_LOCALS(int64_t, ne1, src1, ne)
  8224. GGML_TENSOR_LOCALS(size_t, nb1, src1, nb)
  8225. // src0 and dst as viewed during acc
  8226. const size_t nb0 = ggml_element_size(src0);
  8227. const size_t nb00 = nb0;
  8228. const size_t nb01 = nb1;
  8229. const size_t nb02 = nb2;
  8230. const size_t nb03 = nb3;
  8231. GGML_ASSERT(offset + (ne10 == 0 ? 0 : ne10-1)*nb0 + (ne11 == 0 ? 0 : ne11-1)*nb1 + (ne12 == 0 ? 0 : ne12-1)*nb2 + (ne13 == 0 ? 0 : ne13-1)*nb3 < ggml_nbytes(dst));
  8232. GGML_ASSERT(offset + (ne10 == 0 ? 0 : ne10-1)*nb00 + (ne11 == 0 ? 0 : ne11-1)*nb01 + (ne12 == 0 ? 0 : ne12-1)*nb02 + (ne13 == 0 ? 0 : ne13-1)*nb03 < ggml_nbytes(src0));
  8233. GGML_ASSERT(nb10 == sizeof(float));
  8234. // rows per thread
  8235. const int dr = (nr + nth - 1)/nth;
  8236. // row range for this thread
  8237. const int ir0 = dr*ith;
  8238. const int ir1 = MIN(ir0 + dr, nr);
  8239. for (int ir = ir0; ir < ir1; ++ir) {
  8240. // src0 and dst are viewed with shape of src1 and offset
  8241. // => same indices
  8242. const int i3 = ir/(ne12*ne11);
  8243. const int i2 = (ir - i3*ne12*ne11)/ne11;
  8244. const int i1 = (ir - i3*ne12*ne11 - i2*ne11);
  8245. #ifdef GGML_USE_ACCELERATE
  8246. vDSP_vadd(
  8247. (float *) ((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01 + offset), 1,
  8248. (float *) ((char *) src1->data + i3*nb13 + i2*nb12 + i1*nb11), 1,
  8249. (float *) ((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1 + offset), 1, nc);
  8250. #else
  8251. ggml_vec_add_f32(nc,
  8252. (float *) ((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1 + offset),
  8253. (float *) ((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01 + offset),
  8254. (float *) ((char *) src1->data + i3*nb13 + i2*nb12 + i1*nb11));
  8255. #endif
  8256. }
  8257. }
  8258. static void ggml_compute_forward_acc(
  8259. const struct ggml_compute_params * params,
  8260. struct ggml_tensor * dst) {
  8261. const struct ggml_tensor * src0 = dst->src[0];
  8262. switch (src0->type) {
  8263. case GGML_TYPE_F32:
  8264. {
  8265. ggml_compute_forward_acc_f32(params, dst);
  8266. } break;
  8267. case GGML_TYPE_F16:
  8268. case GGML_TYPE_BF16:
  8269. case GGML_TYPE_Q4_0:
  8270. case GGML_TYPE_Q4_1:
  8271. case GGML_TYPE_Q5_0:
  8272. case GGML_TYPE_Q5_1:
  8273. case GGML_TYPE_Q8_0:
  8274. case GGML_TYPE_Q8_1:
  8275. case GGML_TYPE_Q2_K:
  8276. case GGML_TYPE_Q3_K:
  8277. case GGML_TYPE_Q4_K:
  8278. case GGML_TYPE_Q5_K:
  8279. case GGML_TYPE_Q6_K:
  8280. case GGML_TYPE_IQ2_XXS:
  8281. case GGML_TYPE_IQ2_XS:
  8282. case GGML_TYPE_IQ3_XXS:
  8283. case GGML_TYPE_IQ1_S:
  8284. case GGML_TYPE_IQ1_M:
  8285. case GGML_TYPE_IQ4_NL:
  8286. case GGML_TYPE_IQ4_XS:
  8287. case GGML_TYPE_IQ3_S:
  8288. case GGML_TYPE_IQ2_S:
  8289. default:
  8290. {
  8291. GGML_ASSERT(false);
  8292. } break;
  8293. }
  8294. }
  8295. // ggml_compute_forward_sub
  8296. static void ggml_compute_forward_sub_f32(
  8297. const struct ggml_compute_params * params,
  8298. struct ggml_tensor * dst) {
  8299. const struct ggml_tensor * src0 = dst->src[0];
  8300. const struct ggml_tensor * src1 = dst->src[1];
  8301. assert(params->ith == 0);
  8302. assert(ggml_are_same_shape(src0, src1) && ggml_are_same_shape(src0, dst));
  8303. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  8304. return;
  8305. }
  8306. const int nr = ggml_nrows(src0);
  8307. GGML_TENSOR_BINARY_OP_LOCALS
  8308. GGML_ASSERT( nb0 == sizeof(float));
  8309. GGML_ASSERT(nb00 == sizeof(float));
  8310. if (nb10 == sizeof(float)) {
  8311. for (int ir = 0; ir < nr; ++ir) {
  8312. // src0, src1 and dst are same shape => same indices
  8313. const int i3 = ir/(ne2*ne1);
  8314. const int i2 = (ir - i3*ne2*ne1)/ne1;
  8315. const int i1 = (ir - i3*ne2*ne1 - i2*ne1);
  8316. #ifdef GGML_USE_ACCELERATE
  8317. vDSP_vsub(
  8318. (float *) ((char *) src1->data + i3*nb13 + i2*nb12 + i1*nb11), 1,
  8319. (float *) ((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01), 1,
  8320. (float *) ((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1 ), 1,
  8321. ne0);
  8322. #else
  8323. ggml_vec_sub_f32(ne0,
  8324. (float *) ((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1 ),
  8325. (float *) ((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01),
  8326. (float *) ((char *) src1->data + i3*nb13 + i2*nb12 + i1*nb11));
  8327. #endif
  8328. // }
  8329. // }
  8330. }
  8331. } else {
  8332. // src1 is not contiguous
  8333. for (int ir = 0; ir < nr; ++ir) {
  8334. // src0, src1 and dst are same shape => same indices
  8335. const int i3 = ir/(ne2*ne1);
  8336. const int i2 = (ir - i3*ne2*ne1)/ne1;
  8337. const int i1 = (ir - i3*ne2*ne1 - i2*ne1);
  8338. float * dst_ptr = (float *) ((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1 );
  8339. float * src0_ptr = (float *) ((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01);
  8340. for (int i0 = 0; i0 < ne0; i0++) {
  8341. float * src1_ptr = (float *) ((char *) src1->data + i3*nb13 + i2*nb12 + i1*nb11 + i0*nb10);
  8342. dst_ptr[i0] = src0_ptr[i0] - *src1_ptr;
  8343. }
  8344. }
  8345. }
  8346. }
  8347. static void ggml_compute_forward_sub(
  8348. const struct ggml_compute_params * params,
  8349. struct ggml_tensor * dst) {
  8350. const struct ggml_tensor * src0 = dst->src[0];
  8351. switch (src0->type) {
  8352. case GGML_TYPE_F32:
  8353. {
  8354. ggml_compute_forward_sub_f32(params, dst);
  8355. } break;
  8356. default:
  8357. {
  8358. GGML_ASSERT(false);
  8359. } break;
  8360. }
  8361. }
  8362. // ggml_compute_forward_mul
  8363. static void ggml_compute_forward_mul_f32(
  8364. const struct ggml_compute_params * params,
  8365. struct ggml_tensor * dst) {
  8366. const struct ggml_tensor * src0 = dst->src[0];
  8367. const struct ggml_tensor * src1 = dst->src[1];
  8368. GGML_ASSERT(ggml_can_repeat(src1, src0) && ggml_are_same_shape(src0, dst));
  8369. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  8370. return;
  8371. }
  8372. const int ith = params->ith;
  8373. const int nth = params->nth;
  8374. const int64_t nr = ggml_nrows(src0);
  8375. GGML_TENSOR_BINARY_OP_LOCALS
  8376. GGML_ASSERT( nb0 == sizeof(float));
  8377. GGML_ASSERT(nb00 == sizeof(float));
  8378. if (nb10 == sizeof(float)) {
  8379. for (int64_t ir = ith; ir < nr; ir += nth) {
  8380. // src0 and dst are same shape => same indices
  8381. const int64_t i03 = ir/(ne02*ne01);
  8382. const int64_t i02 = (ir - i03*ne02*ne01)/ne01;
  8383. const int64_t i01 = (ir - i03*ne02*ne01 - i02*ne01);
  8384. const int64_t i13 = i03 % ne13;
  8385. const int64_t i12 = i02 % ne12;
  8386. const int64_t i11 = i01 % ne11;
  8387. const int64_t nr0 = ne00 / ne10;
  8388. float * dst_ptr = (float *) ((char *) dst->data + i03*nb3 + i02*nb2 + i01*nb1 );
  8389. float * src0_ptr = (float *) ((char *) src0->data + i03*nb03 + i02*nb02 + i01*nb01);
  8390. float * src1_ptr = (float *) ((char *) src1->data + i13*nb13 + i12*nb12 + i11*nb11);
  8391. for (int64_t r = 0 ; r < nr0; ++r) {
  8392. #ifdef GGML_USE_ACCELERATE
  8393. UNUSED(ggml_vec_mul_f32);
  8394. vDSP_vmul(src0_ptr + r*ne10, 1, src1_ptr, 1, dst_ptr + r*ne10, 1, ne10);
  8395. #else
  8396. ggml_vec_mul_f32(ne10, dst_ptr + r*ne10, src0_ptr + r*ne10, src1_ptr);
  8397. #endif
  8398. }
  8399. }
  8400. } else {
  8401. // src1 is not contiguous
  8402. for (int64_t ir = ith; ir < nr; ir += nth) {
  8403. // src0 and dst are same shape => same indices
  8404. // src1 is broadcastable across src0 and dst in i1, i2, i3
  8405. const int64_t i03 = ir/(ne02*ne01);
  8406. const int64_t i02 = (ir - i03*ne02*ne01)/ne01;
  8407. const int64_t i01 = (ir - i03*ne02*ne01 - i02*ne01);
  8408. const int64_t i13 = i03 % ne13;
  8409. const int64_t i12 = i02 % ne12;
  8410. const int64_t i11 = i01 % ne11;
  8411. float * dst_ptr = (float *) ((char *) dst->data + i03*nb3 + i02*nb2 + i01*nb1 );
  8412. float * src0_ptr = (float *) ((char *) src0->data + i03*nb03 + i02*nb02 + i01*nb01);
  8413. for (int64_t i0 = 0; i0 < ne00; ++i0) {
  8414. const int64_t i10 = i0 % ne10;
  8415. float * src1_ptr = (float *) ((char *) src1->data + i13*nb13 + i12*nb12 + i11*nb11 + i10*nb10);
  8416. dst_ptr[i0] = src0_ptr[i0] * (*src1_ptr);
  8417. }
  8418. }
  8419. }
  8420. }
  8421. static void ggml_compute_forward_mul(
  8422. const struct ggml_compute_params * params,
  8423. struct ggml_tensor * dst) {
  8424. const struct ggml_tensor * src0 = dst->src[0];
  8425. const struct ggml_tensor * src1 = dst->src[1];
  8426. GGML_ASSERT(src1->type == GGML_TYPE_F32 && "only f32 src1 supported for now");
  8427. switch (src0->type) {
  8428. case GGML_TYPE_F32:
  8429. {
  8430. ggml_compute_forward_mul_f32(params, dst);
  8431. } break;
  8432. default:
  8433. {
  8434. GGML_ASSERT(false);
  8435. } break;
  8436. }
  8437. }
  8438. // ggml_compute_forward_div
  8439. static void ggml_compute_forward_div_f32(
  8440. const struct ggml_compute_params * params,
  8441. struct ggml_tensor * dst) {
  8442. const struct ggml_tensor * src0 = dst->src[0];
  8443. const struct ggml_tensor * src1 = dst->src[1];
  8444. GGML_ASSERT(ggml_can_repeat(src1, src0) && ggml_are_same_shape(src0, dst));
  8445. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  8446. return;
  8447. }
  8448. const int ith = params->ith;
  8449. const int nth = params->nth;
  8450. const int64_t nr = ggml_nrows(src0);
  8451. GGML_TENSOR_BINARY_OP_LOCALS
  8452. GGML_ASSERT( nb0 == sizeof(float));
  8453. GGML_ASSERT(nb00 == sizeof(float));
  8454. if (nb10 == sizeof(float)) {
  8455. for (int64_t ir = ith; ir < nr; ir += nth) {
  8456. // src0 and dst are same shape => same indices
  8457. const int64_t i03 = ir/(ne02*ne01);
  8458. const int64_t i02 = (ir - i03*ne02*ne01)/ne01;
  8459. const int64_t i01 = (ir - i03*ne02*ne01 - i02*ne01);
  8460. const int64_t i13 = i03 % ne13;
  8461. const int64_t i12 = i02 % ne12;
  8462. const int64_t i11 = i01 % ne11;
  8463. const int64_t nr0 = ne00 / ne10;
  8464. float * dst_ptr = (float *) ((char *) dst->data + i03*nb3 + i02*nb2 + i01*nb1 );
  8465. float * src0_ptr = (float *) ((char *) src0->data + i03*nb03 + i02*nb02 + i01*nb01);
  8466. float * src1_ptr = (float *) ((char *) src1->data + i13*nb13 + i12*nb12 + i11*nb11);
  8467. for (int64_t r = 0; r < nr0; ++r) {
  8468. #ifdef GGML_USE_ACCELERATE
  8469. UNUSED(ggml_vec_div_f32);
  8470. vDSP_vdiv(src1_ptr, 1, src0_ptr + r*ne10, 1, dst_ptr + r*ne10, 1, ne10);
  8471. #else
  8472. ggml_vec_div_f32(ne10, dst_ptr + r*ne10, src0_ptr + r*ne10, src1_ptr);
  8473. #endif
  8474. }
  8475. }
  8476. } else {
  8477. // src1 is not contiguous
  8478. for (int64_t ir = ith; ir < nr; ir += nth) {
  8479. // src0 and dst are same shape => same indices
  8480. // src1 is broadcastable across src0 and dst in i1, i2, i3
  8481. const int64_t i03 = ir/(ne02*ne01);
  8482. const int64_t i02 = (ir - i03*ne02*ne01)/ne01;
  8483. const int64_t i01 = (ir - i03*ne02*ne01 - i02*ne01);
  8484. const int64_t i13 = i03 % ne13;
  8485. const int64_t i12 = i02 % ne12;
  8486. const int64_t i11 = i01 % ne11;
  8487. float * dst_ptr = (float *) ((char *) dst->data + i03*nb3 + i02*nb2 + i01*nb1 );
  8488. float * src0_ptr = (float *) ((char *) src0->data + i03*nb03 + i02*nb02 + i01*nb01);
  8489. for (int64_t i0 = 0; i0 < ne00; ++i0) {
  8490. const int64_t i10 = i0 % ne10;
  8491. float * src1_ptr = (float *) ((char *) src1->data + i13*nb13 + i12*nb12 + i11*nb11 + i10*nb10);
  8492. dst_ptr[i0] = src0_ptr[i0] / (*src1_ptr);
  8493. }
  8494. }
  8495. }
  8496. }
  8497. static void ggml_compute_forward_div(
  8498. const struct ggml_compute_params * params,
  8499. struct ggml_tensor * dst) {
  8500. const struct ggml_tensor * src0 = dst->src[0];
  8501. switch (src0->type) {
  8502. case GGML_TYPE_F32:
  8503. {
  8504. ggml_compute_forward_div_f32(params, dst);
  8505. } break;
  8506. default:
  8507. {
  8508. GGML_ASSERT(false);
  8509. } break;
  8510. }
  8511. }
  8512. // ggml_compute_forward_sqr
  8513. static void ggml_compute_forward_sqr_f32(
  8514. const struct ggml_compute_params * params,
  8515. struct ggml_tensor * dst) {
  8516. const struct ggml_tensor * src0 = dst->src[0];
  8517. assert(params->ith == 0);
  8518. assert(ggml_are_same_shape(src0, dst));
  8519. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  8520. return;
  8521. }
  8522. const int n = ggml_nrows(src0);
  8523. const int nc = src0->ne[0];
  8524. assert( dst->nb[0] == sizeof(float));
  8525. assert(src0->nb[0] == sizeof(float));
  8526. for (int i = 0; i < n; i++) {
  8527. ggml_vec_sqr_f32(nc,
  8528. (float *) ((char *) dst->data + i*( dst->nb[1])),
  8529. (float *) ((char *) src0->data + i*(src0->nb[1])));
  8530. }
  8531. }
  8532. static void ggml_compute_forward_sqr(
  8533. const struct ggml_compute_params * params,
  8534. struct ggml_tensor * dst) {
  8535. const struct ggml_tensor * src0 = dst->src[0];
  8536. switch (src0->type) {
  8537. case GGML_TYPE_F32:
  8538. {
  8539. ggml_compute_forward_sqr_f32(params, dst);
  8540. } break;
  8541. default:
  8542. {
  8543. GGML_ASSERT(false);
  8544. } break;
  8545. }
  8546. }
  8547. // ggml_compute_forward_sqrt
  8548. static void ggml_compute_forward_sqrt_f32(
  8549. const struct ggml_compute_params * params,
  8550. struct ggml_tensor * dst) {
  8551. const struct ggml_tensor * src0 = dst->src[0];
  8552. assert(params->ith == 0);
  8553. assert(ggml_are_same_shape(src0, dst));
  8554. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  8555. return;
  8556. }
  8557. const int n = ggml_nrows(src0);
  8558. const int nc = src0->ne[0];
  8559. assert( dst->nb[0] == sizeof(float));
  8560. assert(src0->nb[0] == sizeof(float));
  8561. for (int i = 0; i < n; i++) {
  8562. ggml_vec_sqrt_f32(nc,
  8563. (float *) ((char *) dst->data + i*( dst->nb[1])),
  8564. (float *) ((char *) src0->data + i*(src0->nb[1])));
  8565. }
  8566. }
  8567. static void ggml_compute_forward_sqrt(
  8568. const struct ggml_compute_params * params,
  8569. struct ggml_tensor * dst) {
  8570. const struct ggml_tensor * src0 = dst->src[0];
  8571. switch (src0->type) {
  8572. case GGML_TYPE_F32:
  8573. {
  8574. ggml_compute_forward_sqrt_f32(params, dst);
  8575. } break;
  8576. default:
  8577. {
  8578. GGML_ASSERT(false);
  8579. } break;
  8580. }
  8581. }
  8582. // ggml_compute_forward_log
  8583. static void ggml_compute_forward_log_f32(
  8584. const struct ggml_compute_params * params,
  8585. struct ggml_tensor * dst) {
  8586. const struct ggml_tensor * src0 = dst->src[0];
  8587. GGML_ASSERT(params->ith == 0);
  8588. GGML_ASSERT(ggml_are_same_shape(src0, dst));
  8589. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  8590. return;
  8591. }
  8592. const int n = ggml_nrows(src0);
  8593. const int nc = src0->ne[0];
  8594. GGML_ASSERT( dst->nb[0] == sizeof(float));
  8595. GGML_ASSERT(src0->nb[0] == sizeof(float));
  8596. for (int i = 0; i < n; i++) {
  8597. ggml_vec_log_f32(nc,
  8598. (float *) ((char *) dst->data + i*( dst->nb[1])),
  8599. (float *) ((char *) src0->data + i*(src0->nb[1])));
  8600. }
  8601. }
  8602. static void ggml_compute_forward_log(
  8603. const struct ggml_compute_params * params,
  8604. struct ggml_tensor * dst) {
  8605. const struct ggml_tensor * src0 = dst->src[0];
  8606. switch (src0->type) {
  8607. case GGML_TYPE_F32:
  8608. {
  8609. ggml_compute_forward_log_f32(params, dst);
  8610. } break;
  8611. default:
  8612. {
  8613. GGML_ASSERT(false);
  8614. } break;
  8615. }
  8616. }
  8617. // ggml_compute_forward_sum
  8618. static void ggml_compute_forward_sum_f32(
  8619. const struct ggml_compute_params * params,
  8620. struct ggml_tensor * dst) {
  8621. const struct ggml_tensor * src0 = dst->src[0];
  8622. assert(params->ith == 0);
  8623. assert(ggml_is_scalar(dst));
  8624. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  8625. return;
  8626. }
  8627. assert(ggml_is_scalar(dst));
  8628. assert(src0->nb[0] == sizeof(float));
  8629. GGML_TENSOR_LOCALS(int64_t, ne0, src0, ne)
  8630. GGML_TENSOR_LOCALS(size_t, nb0, src0, nb)
  8631. ggml_float sum = 0;
  8632. ggml_float row_sum = 0;
  8633. for (int64_t i03 = 0; i03 < ne03; i03++) {
  8634. for (int64_t i02 = 0; i02 < ne02; i02++) {
  8635. for (int64_t i01 = 0; i01 < ne01; i01++) {
  8636. ggml_vec_sum_f32_ggf(ne00,
  8637. &row_sum,
  8638. (float *) ((char *) src0->data + i01*nb01 + i02*nb02 + i03*nb03));
  8639. sum += row_sum;
  8640. }
  8641. }
  8642. }
  8643. ((float *) dst->data)[0] = sum;
  8644. }
  8645. static void ggml_compute_forward_sum_f16(
  8646. const struct ggml_compute_params * params,
  8647. struct ggml_tensor * dst) {
  8648. const struct ggml_tensor * src0 = dst->src[0];
  8649. assert(params->ith == 0);
  8650. assert(ggml_is_scalar(dst));
  8651. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  8652. return;
  8653. }
  8654. assert(src0->nb[0] == sizeof(ggml_fp16_t));
  8655. GGML_TENSOR_LOCALS(int64_t, ne0, src0, ne)
  8656. GGML_TENSOR_LOCALS(size_t, nb0, src0, nb)
  8657. float sum = 0;
  8658. float row_sum = 0;
  8659. for (int64_t i03 = 0; i03 < ne03; i03++) {
  8660. for (int64_t i02 = 0; i02 < ne02; i02++) {
  8661. for (int64_t i01 = 0; i01 < ne01; i01++) {
  8662. ggml_vec_sum_f16_ggf(ne00,
  8663. &row_sum,
  8664. (ggml_fp16_t *) ((char *) src0->data + i01 * nb01 + i02 * nb02 + i03 * nb03));
  8665. sum += row_sum;
  8666. }
  8667. }
  8668. }
  8669. ((ggml_fp16_t *) dst->data)[0] = GGML_FP32_TO_FP16(sum);
  8670. }
  8671. static void ggml_compute_forward_sum_bf16(
  8672. const struct ggml_compute_params * params,
  8673. struct ggml_tensor * dst) {
  8674. const struct ggml_tensor * src0 = dst->src[0];
  8675. assert(params->ith == 0);
  8676. assert(ggml_is_scalar(dst));
  8677. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  8678. return;
  8679. }
  8680. assert(src0->nb[0] == sizeof(ggml_bf16_t));
  8681. GGML_TENSOR_LOCALS(int64_t, ne0, src0, ne)
  8682. GGML_TENSOR_LOCALS(size_t, nb0, src0, nb)
  8683. float sum = 0;
  8684. float row_sum = 0;
  8685. for (int64_t i03 = 0; i03 < ne03; i03++) {
  8686. for (int64_t i02 = 0; i02 < ne02; i02++) {
  8687. for (int64_t i01 = 0; i01 < ne01; i01++) {
  8688. ggml_vec_sum_bf16_ggf(ne00,
  8689. &row_sum,
  8690. (ggml_bf16_t *) ((char *) src0->data + i01 * nb01 + i02 * nb02 + i03 * nb03));
  8691. sum += row_sum;
  8692. }
  8693. }
  8694. }
  8695. ((ggml_bf16_t *) dst->data)[0] = GGML_FP32_TO_BF16(sum);
  8696. }
  8697. static void ggml_compute_forward_sum(
  8698. const struct ggml_compute_params * params,
  8699. struct ggml_tensor * dst) {
  8700. const struct ggml_tensor * src0 = dst->src[0];
  8701. switch (src0->type) {
  8702. case GGML_TYPE_F32:
  8703. {
  8704. ggml_compute_forward_sum_f32(params, dst);
  8705. } break;
  8706. case GGML_TYPE_F16:
  8707. {
  8708. ggml_compute_forward_sum_f16(params, dst);
  8709. } break;
  8710. case GGML_TYPE_BF16:
  8711. {
  8712. ggml_compute_forward_sum_bf16(params, dst);
  8713. } break;
  8714. default:
  8715. {
  8716. GGML_ASSERT(false);
  8717. } break;
  8718. }
  8719. }
  8720. // ggml_compute_forward_sum_rows
  8721. static void ggml_compute_forward_sum_rows_f32(
  8722. const struct ggml_compute_params * params,
  8723. struct ggml_tensor * dst) {
  8724. const struct ggml_tensor * src0 = dst->src[0];
  8725. GGML_ASSERT(params->ith == 0);
  8726. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  8727. return;
  8728. }
  8729. GGML_ASSERT(src0->nb[0] == sizeof(float));
  8730. GGML_ASSERT(dst->nb[0] == sizeof(float));
  8731. GGML_TENSOR_UNARY_OP_LOCALS
  8732. GGML_ASSERT(ne0 == 1);
  8733. GGML_ASSERT(ne1 == ne01);
  8734. GGML_ASSERT(ne2 == ne02);
  8735. GGML_ASSERT(ne3 == ne03);
  8736. for (int64_t i3 = 0; i3 < ne03; i3++) {
  8737. for (int64_t i2 = 0; i2 < ne02; i2++) {
  8738. for (int64_t i1 = 0; i1 < ne01; i1++) {
  8739. float * src_row = (float *) ((char *) src0->data + i1*nb01 + i2*nb02 + i3*nb03);
  8740. float * dst_row = (float *) ((char *) dst->data + i1*nb1 + i2*nb2 + i3*nb3);
  8741. float row_sum = 0;
  8742. ggml_vec_sum_f32(ne00, &row_sum, src_row);
  8743. dst_row[0] = row_sum;
  8744. }
  8745. }
  8746. }
  8747. }
  8748. static void ggml_compute_forward_sum_rows(
  8749. const struct ggml_compute_params * params,
  8750. struct ggml_tensor * dst) {
  8751. const struct ggml_tensor * src0 = dst->src[0];
  8752. switch (src0->type) {
  8753. case GGML_TYPE_F32:
  8754. {
  8755. ggml_compute_forward_sum_rows_f32(params, dst);
  8756. } break;
  8757. default:
  8758. {
  8759. GGML_ASSERT(false);
  8760. } break;
  8761. }
  8762. }
  8763. // ggml_compute_forward_mean
  8764. static void ggml_compute_forward_mean_f32(
  8765. const struct ggml_compute_params * params,
  8766. struct ggml_tensor * dst) {
  8767. const struct ggml_tensor * src0 = dst->src[0];
  8768. assert(params->ith == 0);
  8769. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  8770. return;
  8771. }
  8772. assert(src0->nb[0] == sizeof(float));
  8773. GGML_TENSOR_UNARY_OP_LOCALS
  8774. assert(ne0 == 1);
  8775. assert(ne1 == ne01);
  8776. assert(ne2 == ne02);
  8777. assert(ne3 == ne03);
  8778. UNUSED(ne0);
  8779. UNUSED(ne1);
  8780. UNUSED(ne2);
  8781. UNUSED(ne3);
  8782. for (int64_t i03 = 0; i03 < ne03; i03++) {
  8783. for (int64_t i02 = 0; i02 < ne02; i02++) {
  8784. for (int64_t i01 = 0; i01 < ne01; i01++) {
  8785. ggml_vec_sum_f32(ne00,
  8786. (float *) ((char *) dst->data + i01*nb1 + i02*nb2 + i03*nb3),
  8787. (float *) ((char *) src0->data + i01*nb01 + i02*nb02 + i03*nb03));
  8788. *(float *) ((char *) dst->data + i01*nb1 + i02*nb2 + i03*nb3) /= (float) ne00;
  8789. }
  8790. }
  8791. }
  8792. }
  8793. static void ggml_compute_forward_mean(
  8794. const struct ggml_compute_params * params,
  8795. struct ggml_tensor * dst) {
  8796. const struct ggml_tensor * src0 = dst->src[0];
  8797. switch (src0->type) {
  8798. case GGML_TYPE_F32:
  8799. {
  8800. ggml_compute_forward_mean_f32(params, dst);
  8801. } break;
  8802. default:
  8803. {
  8804. GGML_ASSERT(false);
  8805. } break;
  8806. }
  8807. }
  8808. // ggml_compute_forward_argmax
  8809. static void ggml_compute_forward_argmax_f32(
  8810. const struct ggml_compute_params * params,
  8811. struct ggml_tensor * dst) {
  8812. const struct ggml_tensor * src0 = dst->src[0];
  8813. assert(params->ith == 0);
  8814. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  8815. return;
  8816. }
  8817. assert(src0->nb[0] == sizeof(float));
  8818. assert(dst->nb[0] == sizeof(float));
  8819. const int64_t ne00 = src0->ne[0];
  8820. const int64_t ne01 = src0->ne[1];
  8821. const size_t nb01 = src0->nb[1];
  8822. const size_t nb0 = dst->nb[0];
  8823. for (int64_t i1 = 0; i1 < ne01; i1++) {
  8824. float * src = (float *) ((char *) src0->data + i1*nb01);
  8825. int32_t * dst_ = (int32_t *) ((char *) dst->data + i1*nb0);
  8826. int v = 0;
  8827. ggml_vec_argmax_f32(ne00, &v, src);
  8828. dst_[0] = v;
  8829. }
  8830. }
  8831. static void ggml_compute_forward_argmax(
  8832. const struct ggml_compute_params * params,
  8833. struct ggml_tensor * dst) {
  8834. const struct ggml_tensor * src0 = dst->src[0];
  8835. switch (src0->type) {
  8836. case GGML_TYPE_F32:
  8837. {
  8838. ggml_compute_forward_argmax_f32(params, dst);
  8839. } break;
  8840. default:
  8841. {
  8842. GGML_ASSERT(false);
  8843. } break;
  8844. }
  8845. }
  8846. // ggml_compute_forward_repeat
  8847. static void ggml_compute_forward_repeat_f32(
  8848. const struct ggml_compute_params * params,
  8849. struct ggml_tensor * dst) {
  8850. const struct ggml_tensor * src0 = dst->src[0];
  8851. GGML_ASSERT(params->ith == 0);
  8852. GGML_ASSERT(ggml_can_repeat(src0, dst));
  8853. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  8854. return;
  8855. }
  8856. GGML_TENSOR_UNARY_OP_LOCALS
  8857. // guaranteed to be an integer due to the check in ggml_can_repeat
  8858. const int nr0 = (int)(ne0/ne00);
  8859. const int nr1 = (int)(ne1/ne01);
  8860. const int nr2 = (int)(ne2/ne02);
  8861. const int nr3 = (int)(ne3/ne03);
  8862. // TODO: support for transposed / permuted tensors
  8863. GGML_ASSERT(nb0 == sizeof(float));
  8864. GGML_ASSERT(nb00 == sizeof(float));
  8865. // TODO: maybe this is not optimal?
  8866. for (int i3 = 0; i3 < nr3; i3++) {
  8867. for (int k3 = 0; k3 < ne03; k3++) {
  8868. for (int i2 = 0; i2 < nr2; i2++) {
  8869. for (int k2 = 0; k2 < ne02; k2++) {
  8870. for (int i1 = 0; i1 < nr1; i1++) {
  8871. for (int k1 = 0; k1 < ne01; k1++) {
  8872. for (int i0 = 0; i0 < nr0; i0++) {
  8873. ggml_vec_cpy_f32(ne00,
  8874. (float *) ((char *) dst->data + (i3*ne03 + k3)*nb3 + (i2*ne02 + k2)*nb2 + (i1*ne01 + k1)*nb1 + (i0*ne00)*nb0),
  8875. (float *) ((char *) src0->data + ( k3)*nb03 + ( k2)*nb02 + ( k1)*nb01));
  8876. }
  8877. }
  8878. }
  8879. }
  8880. }
  8881. }
  8882. }
  8883. }
  8884. static void ggml_compute_forward_repeat_f16(
  8885. const struct ggml_compute_params * params,
  8886. struct ggml_tensor * dst) {
  8887. const struct ggml_tensor * src0 = dst->src[0];
  8888. GGML_ASSERT(params->ith == 0);
  8889. GGML_ASSERT(ggml_can_repeat(src0, dst));
  8890. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  8891. return;
  8892. }
  8893. GGML_TENSOR_UNARY_OP_LOCALS
  8894. // guaranteed to be an integer due to the check in ggml_can_repeat
  8895. const int nr0 = (int)(ne0/ne00);
  8896. const int nr1 = (int)(ne1/ne01);
  8897. const int nr2 = (int)(ne2/ne02);
  8898. const int nr3 = (int)(ne3/ne03);
  8899. // TODO: support for transposed / permuted tensors
  8900. GGML_ASSERT(nb0 == sizeof(ggml_fp16_t));
  8901. GGML_ASSERT(nb00 == sizeof(ggml_fp16_t));
  8902. // TODO: maybe this is not optimal?
  8903. for (int i3 = 0; i3 < nr3; i3++) {
  8904. for (int k3 = 0; k3 < ne03; k3++) {
  8905. for (int i2 = 0; i2 < nr2; i2++) {
  8906. for (int k2 = 0; k2 < ne02; k2++) {
  8907. for (int i1 = 0; i1 < nr1; i1++) {
  8908. for (int k1 = 0; k1 < ne01; k1++) {
  8909. for (int i0 = 0; i0 < nr0; i0++) {
  8910. ggml_fp16_t * y = (ggml_fp16_t *) ((char *) dst->data + (i3*ne03 + k3)*nb3 + (i2*ne02 + k2)*nb2 + (i1*ne01 + k1)*nb1 + (i0*ne00)*nb0);
  8911. ggml_fp16_t * x = (ggml_fp16_t *) ((char *) src0->data + ( k3)*nb03 + ( k2)*nb02 + ( k1)*nb01);
  8912. // ggml_vec_cpy_f16(ne00, y, x)
  8913. for (int i = 0; i < ne00; ++i) {
  8914. y[i] = x[i];
  8915. }
  8916. }
  8917. }
  8918. }
  8919. }
  8920. }
  8921. }
  8922. }
  8923. }
  8924. static void ggml_compute_forward_repeat(
  8925. const struct ggml_compute_params * params,
  8926. struct ggml_tensor * dst) {
  8927. const struct ggml_tensor * src0 = dst->src[0];
  8928. switch (src0->type) {
  8929. case GGML_TYPE_F16:
  8930. case GGML_TYPE_BF16:
  8931. case GGML_TYPE_I16:
  8932. {
  8933. ggml_compute_forward_repeat_f16(params, dst);
  8934. } break;
  8935. case GGML_TYPE_F32:
  8936. case GGML_TYPE_I32:
  8937. {
  8938. ggml_compute_forward_repeat_f32(params, dst);
  8939. } break;
  8940. default:
  8941. {
  8942. GGML_ASSERT(false);
  8943. } break;
  8944. }
  8945. }
  8946. // ggml_compute_forward_repeat_back
  8947. static void ggml_compute_forward_repeat_back_f32(
  8948. const struct ggml_compute_params * params,
  8949. struct ggml_tensor * dst) {
  8950. const struct ggml_tensor * src0 = dst->src[0];
  8951. GGML_ASSERT(params->ith == 0);
  8952. GGML_ASSERT(ggml_can_repeat(dst, src0));
  8953. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  8954. return;
  8955. }
  8956. GGML_TENSOR_UNARY_OP_LOCALS
  8957. // guaranteed to be an integer due to the check in ggml_can_repeat
  8958. const int nr0 = (int)(ne00/ne0);
  8959. const int nr1 = (int)(ne01/ne1);
  8960. const int nr2 = (int)(ne02/ne2);
  8961. const int nr3 = (int)(ne03/ne3);
  8962. // TODO: support for transposed / permuted tensors
  8963. GGML_ASSERT(nb0 == sizeof(float));
  8964. GGML_ASSERT(nb00 == sizeof(float));
  8965. if (ggml_is_contiguous(dst)) {
  8966. ggml_vec_set_f32(ne0*ne1*ne2*ne3, dst->data, 0);
  8967. } else {
  8968. for (int k3 = 0; k3 < ne3; k3++) {
  8969. for (int k2 = 0; k2 < ne2; k2++) {
  8970. for (int k1 = 0; k1 < ne1; k1++) {
  8971. ggml_vec_set_f32(ne0,
  8972. (float *) ((char *) dst->data + k1*nb1 + k2*nb2 + k3*nb3),
  8973. 0);
  8974. }
  8975. }
  8976. }
  8977. }
  8978. // TODO: maybe this is not optimal?
  8979. for (int i3 = 0; i3 < nr3; i3++) {
  8980. for (int k3 = 0; k3 < ne3; k3++) {
  8981. for (int i2 = 0; i2 < nr2; i2++) {
  8982. for (int k2 = 0; k2 < ne2; k2++) {
  8983. for (int i1 = 0; i1 < nr1; i1++) {
  8984. for (int k1 = 0; k1 < ne1; k1++) {
  8985. for (int i0 = 0; i0 < nr0; i0++) {
  8986. ggml_vec_acc_f32(ne0,
  8987. (float *) ((char *) dst->data + ( k3)*nb3 + ( k2)*nb2 + ( k1)*nb1),
  8988. (float *) ((char *) src0->data + (i3*ne3 + k3)*nb03 + (i2*ne2 + k2)*nb02 + (i1*ne1 + k1)*nb01 + (i0*ne0)*nb00));
  8989. }
  8990. }
  8991. }
  8992. }
  8993. }
  8994. }
  8995. }
  8996. }
  8997. static void ggml_compute_forward_repeat_back(
  8998. const struct ggml_compute_params * params,
  8999. struct ggml_tensor * dst) {
  9000. const struct ggml_tensor * src0 = dst->src[0];
  9001. switch (src0->type) {
  9002. case GGML_TYPE_F32:
  9003. {
  9004. ggml_compute_forward_repeat_back_f32(params, dst);
  9005. } break;
  9006. default:
  9007. {
  9008. GGML_ASSERT(false);
  9009. } break;
  9010. }
  9011. }
  9012. // ggml_compute_forward_concat
  9013. static void ggml_compute_forward_concat_f32(
  9014. const struct ggml_compute_params * params,
  9015. struct ggml_tensor * dst) {
  9016. const struct ggml_tensor * src0 = dst->src[0];
  9017. const struct ggml_tensor * src1 = dst->src[1];
  9018. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  9019. return;
  9020. }
  9021. GGML_ASSERT(src0->nb[0] == sizeof(float));
  9022. const int ith = params->ith;
  9023. const int nth = params->nth;
  9024. GGML_TENSOR_BINARY_OP_LOCALS
  9025. // TODO: support for transposed / permuted tensors
  9026. GGML_ASSERT(nb0 == sizeof(float));
  9027. GGML_ASSERT(nb00 == sizeof(float));
  9028. GGML_ASSERT(nb10 == sizeof(float));
  9029. const int32_t dim = ggml_get_op_params_i32(dst, 0);
  9030. GGML_ASSERT(dim >= 0 && dim < 4);
  9031. int64_t o[4] = {0, 0, 0, 0};
  9032. o[dim] = src0->ne[dim];
  9033. const float * x;
  9034. // TODO: smarter multi-theading
  9035. for (int i3 = 0; i3 < ne3; i3++) {
  9036. for (int i2 = ith; i2 < ne2; i2 += nth) {
  9037. for (int i1 = 0; i1 < ne1; i1++) {
  9038. for (int i0 = 0; i0 < ne0; i0++) {
  9039. if (i0 < ne00 && i1 < ne01 && i2 < ne02 && i3 < ne03) {
  9040. x = (const float *) ((const char *)src0->data + (i0 )*nb00 + (i1 )*nb01 + (i2 )*nb02 + (i3 )*nb03);
  9041. } else {
  9042. x = (const float *) ((const char *)src1->data + (i0 - o[0])*nb10 + (i1 - o[1])*nb11 + (i2 - o[2])*nb12 + (i3 - o[3])*nb13);
  9043. }
  9044. float * y = (float *)((char *)dst->data + i0*nb0 + i1*nb1 + i2*nb2 + i3*nb3);
  9045. *y = *x;
  9046. }
  9047. }
  9048. }
  9049. }
  9050. }
  9051. static void ggml_compute_forward_concat(
  9052. const struct ggml_compute_params * params,
  9053. struct ggml_tensor * dst) {
  9054. const struct ggml_tensor * src0 = dst->src[0];
  9055. switch (src0->type) {
  9056. case GGML_TYPE_F32:
  9057. case GGML_TYPE_I32:
  9058. {
  9059. ggml_compute_forward_concat_f32(params, dst);
  9060. } break;
  9061. default:
  9062. {
  9063. GGML_ASSERT(false);
  9064. } break;
  9065. }
  9066. }
  9067. // ggml_compute_forward_abs
  9068. static void ggml_compute_forward_abs_f32(
  9069. const struct ggml_compute_params * params,
  9070. struct ggml_tensor * dst) {
  9071. const struct ggml_tensor * src0 = dst->src[0];
  9072. assert(params->ith == 0);
  9073. assert(ggml_is_contiguous_1(src0));
  9074. assert(ggml_is_contiguous_1(dst));
  9075. assert(ggml_are_same_shape(src0, dst));
  9076. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  9077. return;
  9078. }
  9079. const int n = ggml_nrows(src0);
  9080. const int nc = src0->ne[0];
  9081. for (int i = 0; i < n; i++) {
  9082. ggml_vec_abs_f32(nc,
  9083. (float *) ((char *) dst->data + i*( dst->nb[1])),
  9084. (float *) ((char *) src0->data + i*(src0->nb[1])));
  9085. }
  9086. }
  9087. static void ggml_compute_forward_abs(
  9088. const struct ggml_compute_params * params,
  9089. struct ggml_tensor * dst) {
  9090. const struct ggml_tensor * src0 = dst->src[0];
  9091. switch (src0->type) {
  9092. case GGML_TYPE_F32:
  9093. {
  9094. ggml_compute_forward_abs_f32(params, dst);
  9095. } break;
  9096. default:
  9097. {
  9098. GGML_ASSERT(false);
  9099. } break;
  9100. }
  9101. }
  9102. // ggml_compute_forward_sgn
  9103. static void ggml_compute_forward_sgn_f32(
  9104. const struct ggml_compute_params * params,
  9105. struct ggml_tensor * dst) {
  9106. const struct ggml_tensor * src0 = dst->src[0];
  9107. assert(params->ith == 0);
  9108. assert(ggml_is_contiguous_1(src0));
  9109. assert(ggml_is_contiguous_1(dst));
  9110. assert(ggml_are_same_shape(src0, dst));
  9111. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  9112. return;
  9113. }
  9114. const int n = ggml_nrows(src0);
  9115. const int nc = src0->ne[0];
  9116. for (int i = 0; i < n; i++) {
  9117. ggml_vec_sgn_f32(nc,
  9118. (float *) ((char *) dst->data + i*( dst->nb[1])),
  9119. (float *) ((char *) src0->data + i*(src0->nb[1])));
  9120. }
  9121. }
  9122. static void ggml_compute_forward_sgn(
  9123. const struct ggml_compute_params * params,
  9124. struct ggml_tensor * dst) {
  9125. const struct ggml_tensor * src0 = dst->src[0];
  9126. switch (src0->type) {
  9127. case GGML_TYPE_F32:
  9128. {
  9129. ggml_compute_forward_sgn_f32(params, dst);
  9130. } break;
  9131. default:
  9132. {
  9133. GGML_ASSERT(false);
  9134. } break;
  9135. }
  9136. }
  9137. // ggml_compute_forward_neg
  9138. static void ggml_compute_forward_neg_f32(
  9139. const struct ggml_compute_params * params,
  9140. struct ggml_tensor * dst) {
  9141. const struct ggml_tensor * src0 = dst->src[0];
  9142. assert(params->ith == 0);
  9143. assert(ggml_is_contiguous_1(src0));
  9144. assert(ggml_is_contiguous_1(dst));
  9145. assert(ggml_are_same_shape(src0, dst));
  9146. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  9147. return;
  9148. }
  9149. const int n = ggml_nrows(src0);
  9150. const int nc = src0->ne[0];
  9151. for (int i = 0; i < n; i++) {
  9152. ggml_vec_neg_f32(nc,
  9153. (float *) ((char *) dst->data + i*( dst->nb[1])),
  9154. (float *) ((char *) src0->data + i*(src0->nb[1])));
  9155. }
  9156. }
  9157. static void ggml_compute_forward_neg(
  9158. const struct ggml_compute_params * params,
  9159. struct ggml_tensor * dst) {
  9160. const struct ggml_tensor * src0 = dst->src[0];
  9161. switch (src0->type) {
  9162. case GGML_TYPE_F32:
  9163. {
  9164. ggml_compute_forward_neg_f32(params, dst);
  9165. } break;
  9166. default:
  9167. {
  9168. GGML_ASSERT(false);
  9169. } break;
  9170. }
  9171. }
  9172. // ggml_compute_forward_step
  9173. static void ggml_compute_forward_step_f32(
  9174. const struct ggml_compute_params * params,
  9175. struct ggml_tensor * dst) {
  9176. const struct ggml_tensor * src0 = dst->src[0];
  9177. assert(params->ith == 0);
  9178. assert(ggml_is_contiguous_1(src0));
  9179. assert(ggml_is_contiguous_1(dst));
  9180. assert(ggml_are_same_shape(src0, dst));
  9181. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  9182. return;
  9183. }
  9184. const int n = ggml_nrows(src0);
  9185. const int nc = src0->ne[0];
  9186. for (int i = 0; i < n; i++) {
  9187. ggml_vec_step_f32(nc,
  9188. (float *) ((char *) dst->data + i*( dst->nb[1])),
  9189. (float *) ((char *) src0->data + i*(src0->nb[1])));
  9190. }
  9191. }
  9192. static void ggml_compute_forward_step(
  9193. const struct ggml_compute_params * params,
  9194. struct ggml_tensor * dst) {
  9195. const struct ggml_tensor * src0 = dst->src[0];
  9196. switch (src0->type) {
  9197. case GGML_TYPE_F32:
  9198. {
  9199. ggml_compute_forward_step_f32(params, dst);
  9200. } break;
  9201. default:
  9202. {
  9203. GGML_ASSERT(false);
  9204. } break;
  9205. }
  9206. }
  9207. // ggml_compute_forward_tanh
  9208. static void ggml_compute_forward_tanh_f32(
  9209. const struct ggml_compute_params * params,
  9210. struct ggml_tensor * dst) {
  9211. const struct ggml_tensor * src0 = dst->src[0];
  9212. assert(params->ith == 0);
  9213. assert(ggml_is_contiguous_1(src0));
  9214. assert(ggml_is_contiguous_1(dst));
  9215. assert(ggml_are_same_shape(src0, dst));
  9216. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  9217. return;
  9218. }
  9219. const int n = ggml_nrows(src0);
  9220. const int nc = src0->ne[0];
  9221. for (int i = 0; i < n; i++) {
  9222. ggml_vec_tanh_f32(nc,
  9223. (float *) ((char *) dst->data + i*( dst->nb[1])),
  9224. (float *) ((char *) src0->data + i*(src0->nb[1])));
  9225. }
  9226. }
  9227. static void ggml_compute_forward_tanh(
  9228. const struct ggml_compute_params * params,
  9229. struct ggml_tensor * dst) {
  9230. const struct ggml_tensor * src0 = dst->src[0];
  9231. switch (src0->type) {
  9232. case GGML_TYPE_F32:
  9233. {
  9234. ggml_compute_forward_tanh_f32(params, dst);
  9235. } break;
  9236. default:
  9237. {
  9238. GGML_ASSERT(false);
  9239. } break;
  9240. }
  9241. }
  9242. // ggml_compute_forward_elu
  9243. static void ggml_compute_forward_elu_f32(
  9244. const struct ggml_compute_params * params,
  9245. struct ggml_tensor * dst) {
  9246. const struct ggml_tensor * src0 = dst->src[0];
  9247. assert(params->ith == 0);
  9248. assert(ggml_is_contiguous_1(src0));
  9249. assert(ggml_is_contiguous_1(dst));
  9250. assert(ggml_are_same_shape(src0, dst));
  9251. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  9252. return;
  9253. }
  9254. const int n = ggml_nrows(src0);
  9255. const int nc = src0->ne[0];
  9256. for (int i = 0; i < n; i++) {
  9257. ggml_vec_elu_f32(nc,
  9258. (float *) ((char *) dst->data + i*( dst->nb[1])),
  9259. (float *) ((char *) src0->data + i*(src0->nb[1])));
  9260. }
  9261. }
  9262. static void ggml_compute_forward_elu(
  9263. const struct ggml_compute_params * params,
  9264. struct ggml_tensor * dst) {
  9265. const struct ggml_tensor * src0 = dst->src[0];
  9266. switch (src0->type) {
  9267. case GGML_TYPE_F32:
  9268. {
  9269. ggml_compute_forward_elu_f32(params, dst);
  9270. } break;
  9271. default:
  9272. {
  9273. GGML_ASSERT(false);
  9274. } break;
  9275. }
  9276. }
  9277. // ggml_compute_forward_relu
  9278. static void ggml_compute_forward_relu_f32(
  9279. const struct ggml_compute_params * params,
  9280. struct ggml_tensor * dst) {
  9281. const struct ggml_tensor * src0 = dst->src[0];
  9282. assert(params->ith == 0);
  9283. assert(ggml_is_contiguous_1(src0));
  9284. assert(ggml_is_contiguous_1(dst));
  9285. assert(ggml_are_same_shape(src0, dst));
  9286. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  9287. return;
  9288. }
  9289. const int n = ggml_nrows(src0);
  9290. const int nc = src0->ne[0];
  9291. for (int i = 0; i < n; i++) {
  9292. ggml_vec_relu_f32(nc,
  9293. (float *) ((char *) dst->data + i*( dst->nb[1])),
  9294. (float *) ((char *) src0->data + i*(src0->nb[1])));
  9295. }
  9296. }
  9297. static void ggml_compute_forward_relu(
  9298. const struct ggml_compute_params * params,
  9299. struct ggml_tensor * dst) {
  9300. const struct ggml_tensor * src0 = dst->src[0];
  9301. switch (src0->type) {
  9302. case GGML_TYPE_F32:
  9303. {
  9304. ggml_compute_forward_relu_f32(params, dst);
  9305. } break;
  9306. default:
  9307. {
  9308. GGML_ASSERT(false);
  9309. } break;
  9310. }
  9311. }
  9312. // ggml_compute_forward_sigmoid
  9313. static void ggml_compute_forward_sigmoid_f32(
  9314. const struct ggml_compute_params * params,
  9315. struct ggml_tensor * dst) {
  9316. const struct ggml_tensor * src0 = dst->src[0];
  9317. assert(params->ith == 0);
  9318. assert(ggml_is_contiguous_1(src0));
  9319. assert(ggml_is_contiguous_1(dst));
  9320. assert(ggml_are_same_shape(src0, dst));
  9321. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  9322. return;
  9323. }
  9324. const int n = ggml_nrows(src0);
  9325. const int nc = src0->ne[0];
  9326. for (int i = 0; i < n; i++) {
  9327. ggml_vec_sigmoid_f32(nc,
  9328. (float *) ((char *) dst->data + i*( dst->nb[1])),
  9329. (float *) ((char *) src0->data + i*(src0->nb[1])));
  9330. }
  9331. }
  9332. static void ggml_compute_forward_sigmoid(
  9333. const struct ggml_compute_params * params,
  9334. struct ggml_tensor * dst) {
  9335. const struct ggml_tensor * src0 = dst->src[0];
  9336. switch (src0->type) {
  9337. case GGML_TYPE_F32:
  9338. {
  9339. ggml_compute_forward_sigmoid_f32(params, dst);
  9340. } break;
  9341. default:
  9342. {
  9343. GGML_ASSERT(false);
  9344. } break;
  9345. }
  9346. }
  9347. // ggml_compute_forward_gelu
  9348. static void ggml_compute_forward_gelu_f32(
  9349. const struct ggml_compute_params * params,
  9350. struct ggml_tensor * dst) {
  9351. const struct ggml_tensor * src0 = dst->src[0];
  9352. assert(ggml_is_contiguous_1(src0));
  9353. assert(ggml_is_contiguous_1(dst));
  9354. assert(ggml_are_same_shape(src0, dst));
  9355. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  9356. return;
  9357. }
  9358. const int ith = params->ith;
  9359. const int nth = params->nth;
  9360. const int nc = src0->ne[0];
  9361. const int nr = ggml_nrows(src0);
  9362. // rows per thread
  9363. const int dr = (nr + nth - 1)/nth;
  9364. // row range for this thread
  9365. const int ir0 = dr*ith;
  9366. const int ir1 = MIN(ir0 + dr, nr);
  9367. for (int i1 = ir0; i1 < ir1; i1++) {
  9368. ggml_vec_gelu_f32(nc,
  9369. (float *) ((char *) dst->data + i1*( dst->nb[1])),
  9370. (float *) ((char *) src0->data + i1*(src0->nb[1])));
  9371. #ifndef NDEBUG
  9372. for (int k = 0; k < nc; k++) {
  9373. const float x = ((float *) ((char *) dst->data + i1*( dst->nb[1])))[k];
  9374. UNUSED(x);
  9375. assert(!isnan(x));
  9376. assert(!isinf(x));
  9377. }
  9378. #endif
  9379. }
  9380. }
  9381. static void ggml_compute_forward_gelu(
  9382. const struct ggml_compute_params * params,
  9383. struct ggml_tensor * dst) {
  9384. const struct ggml_tensor * src0 = dst->src[0];
  9385. switch (src0->type) {
  9386. case GGML_TYPE_F32:
  9387. {
  9388. ggml_compute_forward_gelu_f32(params, dst);
  9389. } break;
  9390. default:
  9391. {
  9392. GGML_ASSERT(false);
  9393. } break;
  9394. }
  9395. }
  9396. // ggml_compute_forward_gelu_quick
  9397. static void ggml_compute_forward_gelu_quick_f32(
  9398. const struct ggml_compute_params * params,
  9399. struct ggml_tensor * dst) {
  9400. const struct ggml_tensor * src0 = dst->src[0];
  9401. assert(ggml_is_contiguous_1(src0));
  9402. assert(ggml_is_contiguous_1(dst));
  9403. assert(ggml_are_same_shape(src0, dst));
  9404. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  9405. return;
  9406. }
  9407. const int ith = params->ith;
  9408. const int nth = params->nth;
  9409. const int nc = src0->ne[0];
  9410. const int nr = ggml_nrows(src0);
  9411. // rows per thread
  9412. const int dr = (nr + nth - 1)/nth;
  9413. // row range for this thread
  9414. const int ir0 = dr*ith;
  9415. const int ir1 = MIN(ir0 + dr, nr);
  9416. for (int i1 = ir0; i1 < ir1; i1++) {
  9417. ggml_vec_gelu_quick_f32(nc,
  9418. (float *) ((char *) dst->data + i1*( dst->nb[1])),
  9419. (float *) ((char *) src0->data + i1*(src0->nb[1])));
  9420. #ifndef NDEBUG
  9421. for (int k = 0; k < nc; k++) {
  9422. const float x = ((float *) ((char *) dst->data + i1*( dst->nb[1])))[k];
  9423. UNUSED(x);
  9424. assert(!isnan(x));
  9425. assert(!isinf(x));
  9426. }
  9427. #endif
  9428. }
  9429. }
  9430. static void ggml_compute_forward_gelu_quick(
  9431. const struct ggml_compute_params * params,
  9432. struct ggml_tensor * dst) {
  9433. const struct ggml_tensor * src0 = dst->src[0];
  9434. switch (src0->type) {
  9435. case GGML_TYPE_F32:
  9436. {
  9437. ggml_compute_forward_gelu_quick_f32(params, dst);
  9438. } break;
  9439. default:
  9440. {
  9441. GGML_ASSERT(false);
  9442. } break;
  9443. }
  9444. }
  9445. // ggml_compute_forward_silu
  9446. static void ggml_compute_forward_silu_f32(
  9447. const struct ggml_compute_params * params,
  9448. struct ggml_tensor * dst) {
  9449. const struct ggml_tensor * src0 = dst->src[0];
  9450. assert(ggml_is_contiguous_1(src0));
  9451. assert(ggml_is_contiguous_1(dst));
  9452. assert(ggml_are_same_shape(src0, dst));
  9453. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  9454. return;
  9455. }
  9456. const int ith = params->ith;
  9457. const int nth = params->nth;
  9458. const int nc = src0->ne[0];
  9459. const int nr = ggml_nrows(src0);
  9460. // rows per thread
  9461. const int dr = (nr + nth - 1)/nth;
  9462. // row range for this thread
  9463. const int ir0 = dr*ith;
  9464. const int ir1 = MIN(ir0 + dr, nr);
  9465. for (int i1 = ir0; i1 < ir1; i1++) {
  9466. ggml_vec_silu_f32(nc,
  9467. (float *) ((char *) dst->data + i1*( dst->nb[1])),
  9468. (float *) ((char *) src0->data + i1*(src0->nb[1])));
  9469. #ifndef NDEBUG
  9470. for (int k = 0; k < nc; k++) {
  9471. const float x = ((float *) ((char *) dst->data + i1*(dst->nb[1])))[k];
  9472. UNUSED(x);
  9473. assert(!isnan(x));
  9474. assert(!isinf(x));
  9475. }
  9476. #endif
  9477. }
  9478. }
  9479. static void ggml_compute_forward_silu(
  9480. const struct ggml_compute_params * params,
  9481. struct ggml_tensor * dst) {
  9482. const struct ggml_tensor * src0 = dst->src[0];
  9483. switch (src0->type) {
  9484. case GGML_TYPE_F32:
  9485. {
  9486. ggml_compute_forward_silu_f32(params, dst);
  9487. } break;
  9488. default:
  9489. {
  9490. GGML_ASSERT(false);
  9491. } break;
  9492. }
  9493. }
  9494. // ggml_compute_forward_leaky_relu
  9495. static void ggml_compute_forward_leaky_relu_f32(
  9496. const struct ggml_compute_params * params,
  9497. struct ggml_tensor * dst) {
  9498. const struct ggml_tensor * src0 = dst->src[0];
  9499. assert(params->ith == 0);
  9500. assert(ggml_is_contiguous_1(src0));
  9501. assert(ggml_is_contiguous_1(dst));
  9502. assert(ggml_are_same_shape(src0, dst));
  9503. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  9504. return;
  9505. }
  9506. const int n = ggml_nrows(src0);
  9507. const int nc = src0->ne[0];
  9508. float negative_slope;
  9509. memcpy(&negative_slope, dst->op_params, sizeof(float));
  9510. assert(dst->nb[0] == sizeof(float));
  9511. assert(src0->nb[0] == sizeof(float));
  9512. for (int i = 0; i < n; i++) {
  9513. ggml_vec_leaky_relu_f32(nc,
  9514. (float *) ((char *) dst->data + i*( dst->nb[1])),
  9515. (float *) ((char *) src0->data + i*(src0->nb[1])), negative_slope);
  9516. }
  9517. }
  9518. static void ggml_compute_forward_leaky_relu(
  9519. const struct ggml_compute_params * params,
  9520. struct ggml_tensor * dst) {
  9521. const struct ggml_tensor * src0 = dst->src[0];
  9522. switch (src0->type) {
  9523. case GGML_TYPE_F32:
  9524. {
  9525. ggml_compute_forward_leaky_relu_f32(params, dst);
  9526. } break;
  9527. default:
  9528. {
  9529. GGML_ASSERT(false);
  9530. } break;
  9531. }
  9532. }
  9533. // ggml_compute_forward_silu_back
  9534. static void ggml_compute_forward_silu_back_f32(
  9535. const struct ggml_compute_params * params,
  9536. struct ggml_tensor * dst) {
  9537. const struct ggml_tensor * src0 = dst->src[0];
  9538. const struct ggml_tensor * grad = dst->src[1];
  9539. assert(ggml_is_contiguous_1(grad));
  9540. assert(ggml_is_contiguous_1(src0));
  9541. assert(ggml_is_contiguous_1(dst));
  9542. assert(ggml_are_same_shape(src0, dst));
  9543. assert(ggml_are_same_shape(src0, grad));
  9544. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  9545. return;
  9546. }
  9547. const int ith = params->ith;
  9548. const int nth = params->nth;
  9549. const int nc = src0->ne[0];
  9550. const int nr = ggml_nrows(src0);
  9551. // rows per thread
  9552. const int dr = (nr + nth - 1)/nth;
  9553. // row range for this thread
  9554. const int ir0 = dr*ith;
  9555. const int ir1 = MIN(ir0 + dr, nr);
  9556. for (int i1 = ir0; i1 < ir1; i1++) {
  9557. ggml_vec_silu_backward_f32(nc,
  9558. (float *) ((char *) dst->data + i1*( dst->nb[1])),
  9559. (float *) ((char *) src0->data + i1*(src0->nb[1])),
  9560. (float *) ((char *) grad->data + i1*(grad->nb[1])));
  9561. #ifndef NDEBUG
  9562. for (int k = 0; k < nc; k++) {
  9563. const float x = ((float *) ((char *) dst->data + i1*( dst->nb[1])))[k];
  9564. UNUSED(x);
  9565. assert(!isnan(x));
  9566. assert(!isinf(x));
  9567. }
  9568. #endif
  9569. }
  9570. }
  9571. static void ggml_compute_forward_silu_back(
  9572. const struct ggml_compute_params * params,
  9573. struct ggml_tensor * dst) {
  9574. const struct ggml_tensor * src0 = dst->src[0];
  9575. switch (src0->type) {
  9576. case GGML_TYPE_F32:
  9577. {
  9578. ggml_compute_forward_silu_back_f32(params, dst);
  9579. } break;
  9580. default:
  9581. {
  9582. GGML_ASSERT(false);
  9583. } break;
  9584. }
  9585. }
  9586. static void ggml_compute_forward_hardswish_f32(
  9587. const struct ggml_compute_params * params,
  9588. struct ggml_tensor * dst) {
  9589. const struct ggml_tensor * src0 = dst->src[0];
  9590. assert(params->ith == 0);
  9591. assert(ggml_is_contiguous_1(src0));
  9592. assert(ggml_is_contiguous_1(dst));
  9593. assert(ggml_are_same_shape(src0, dst));
  9594. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  9595. return;
  9596. }
  9597. const int n = ggml_nrows(src0);
  9598. const int nc = src0->ne[0];
  9599. for (int i = 0; i < n; i++) {
  9600. ggml_vec_hardswish_f32(nc,
  9601. (float *) ((char *) dst->data + i*( dst->nb[1])),
  9602. (float *) ((char *) src0->data + i*(src0->nb[1])));
  9603. }
  9604. }
  9605. static void ggml_compute_forward_hardswish(
  9606. const struct ggml_compute_params * params,
  9607. struct ggml_tensor * dst) {
  9608. const struct ggml_tensor * src0 = dst->src[0];
  9609. switch (src0->type) {
  9610. case GGML_TYPE_F32:
  9611. {
  9612. ggml_compute_forward_hardswish_f32(params, dst);
  9613. } break;
  9614. default:
  9615. {
  9616. GGML_ASSERT(false);
  9617. } break;
  9618. }
  9619. }
  9620. static void ggml_compute_forward_hardsigmoid_f32(
  9621. const struct ggml_compute_params * params,
  9622. struct ggml_tensor * dst) {
  9623. const struct ggml_tensor * src0 = dst->src[0];
  9624. assert(params->ith == 0);
  9625. assert(ggml_is_contiguous_1(src0));
  9626. assert(ggml_is_contiguous_1(dst));
  9627. assert(ggml_are_same_shape(src0, dst));
  9628. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  9629. return;
  9630. }
  9631. const int n = ggml_nrows(src0);
  9632. const int nc = src0->ne[0];
  9633. for (int i = 0; i < n; i++) {
  9634. ggml_vec_hardsigmoid_f32(nc,
  9635. (float *) ((char *) dst->data + i*( dst->nb[1])),
  9636. (float *) ((char *) src0->data + i*(src0->nb[1])));
  9637. }
  9638. }
  9639. static void ggml_compute_forward_hardsigmoid(
  9640. const struct ggml_compute_params * params,
  9641. struct ggml_tensor * dst) {
  9642. const struct ggml_tensor * src0 = dst->src[0];
  9643. switch (src0->type) {
  9644. case GGML_TYPE_F32:
  9645. {
  9646. ggml_compute_forward_hardsigmoid_f32(params, dst);
  9647. } break;
  9648. default:
  9649. {
  9650. GGML_ASSERT(false);
  9651. } break;
  9652. }
  9653. }
  9654. // ggml_compute_forward_norm
  9655. static void ggml_compute_forward_norm_f32(
  9656. const struct ggml_compute_params * params,
  9657. struct ggml_tensor * dst) {
  9658. const struct ggml_tensor * src0 = dst->src[0];
  9659. GGML_ASSERT(ggml_are_same_shape(src0, dst));
  9660. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  9661. return;
  9662. }
  9663. GGML_ASSERT(src0->nb[0] == sizeof(float));
  9664. const int ith = params->ith;
  9665. const int nth = params->nth;
  9666. GGML_TENSOR_UNARY_OP_LOCALS
  9667. float eps;
  9668. memcpy(&eps, dst->op_params, sizeof(float));
  9669. GGML_ASSERT(eps > 0.0f);
  9670. // TODO: optimize
  9671. for (int64_t i03 = 0; i03 < ne03; i03++) {
  9672. for (int64_t i02 = 0; i02 < ne02; i02++) {
  9673. for (int64_t i01 = ith; i01 < ne01; i01 += nth) {
  9674. const float * x = (float *) ((char *) src0->data + i01*nb01 + i02*nb02 + i03*nb03);
  9675. ggml_float sum = 0.0;
  9676. for (int64_t i00 = 0; i00 < ne00; i00++) {
  9677. sum += (ggml_float)x[i00];
  9678. }
  9679. float mean = sum/ne00;
  9680. float * y = (float *) ((char *) dst->data + i01*nb1 + i02*nb2 + i03*nb3);
  9681. ggml_float sum2 = 0.0;
  9682. for (int64_t i00 = 0; i00 < ne00; i00++) {
  9683. float v = x[i00] - mean;
  9684. y[i00] = v;
  9685. sum2 += (ggml_float)(v*v);
  9686. }
  9687. float variance = sum2/ne00;
  9688. const float scale = 1.0f/sqrtf(variance + eps);
  9689. ggml_vec_scale_f32(ne00, y, scale);
  9690. }
  9691. }
  9692. }
  9693. }
  9694. static void ggml_compute_forward_norm(
  9695. const struct ggml_compute_params * params,
  9696. struct ggml_tensor * dst) {
  9697. const struct ggml_tensor * src0 = dst->src[0];
  9698. switch (src0->type) {
  9699. case GGML_TYPE_F32:
  9700. {
  9701. ggml_compute_forward_norm_f32(params, dst);
  9702. } break;
  9703. default:
  9704. {
  9705. GGML_ASSERT(false);
  9706. } break;
  9707. }
  9708. }
  9709. // ggml_compute_forward_group_rms_norm
  9710. static void ggml_compute_forward_rms_norm_f32(
  9711. const struct ggml_compute_params * params,
  9712. struct ggml_tensor * dst) {
  9713. const struct ggml_tensor * src0 = dst->src[0];
  9714. GGML_ASSERT(ggml_are_same_shape(src0, dst));
  9715. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  9716. return;
  9717. }
  9718. GGML_ASSERT(src0->nb[0] == sizeof(float));
  9719. const int ith = params->ith;
  9720. const int nth = params->nth;
  9721. GGML_TENSOR_UNARY_OP_LOCALS
  9722. float eps;
  9723. memcpy(&eps, dst->op_params, sizeof(float));
  9724. GGML_ASSERT(eps > 0.0f);
  9725. // TODO: optimize
  9726. for (int64_t i03 = 0; i03 < ne03; i03++) {
  9727. for (int64_t i02 = 0; i02 < ne02; i02++) {
  9728. for (int64_t i01 = ith; i01 < ne01; i01 += nth) {
  9729. const float * x = (float *) ((char *) src0->data + i01*nb01 + i02*nb02 + i03*nb03);
  9730. ggml_float sum = 0.0;
  9731. for (int64_t i00 = 0; i00 < ne00; i00++) {
  9732. sum += (ggml_float)(x[i00] * x[i00]);
  9733. }
  9734. const float mean = sum/ne00;
  9735. float * y = (float *) ((char *) dst->data + i01*nb1 + i02*nb2 + i03*nb3);
  9736. memcpy(y, x, ne00 * sizeof(float));
  9737. // for (int i00 = 0; i00 < ne00; i00++) {
  9738. // y[i00] = x[i00];
  9739. // }
  9740. const float scale = 1.0f/sqrtf(mean + eps);
  9741. ggml_vec_scale_f32(ne00, y, scale);
  9742. }
  9743. }
  9744. }
  9745. }
  9746. static void ggml_compute_forward_rms_norm(
  9747. const struct ggml_compute_params * params,
  9748. struct ggml_tensor * dst) {
  9749. const struct ggml_tensor * src0 = dst->src[0];
  9750. switch (src0->type) {
  9751. case GGML_TYPE_F32:
  9752. {
  9753. ggml_compute_forward_rms_norm_f32(params, dst);
  9754. } break;
  9755. default:
  9756. {
  9757. GGML_ASSERT(false);
  9758. } break;
  9759. }
  9760. }
  9761. static void ggml_compute_forward_rms_norm_back_f32(
  9762. const struct ggml_compute_params * params,
  9763. struct ggml_tensor * dst) {
  9764. const struct ggml_tensor * src0 = dst->src[0];
  9765. const struct ggml_tensor * src1 = dst->src[1];
  9766. GGML_ASSERT(ggml_are_same_shape(src0, dst) && ggml_are_same_shape(src0, src1));
  9767. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  9768. return;
  9769. }
  9770. GGML_ASSERT(src0->nb[0] == sizeof(float));
  9771. const int ith = params->ith;
  9772. const int nth = params->nth;
  9773. GGML_TENSOR_BINARY_OP_LOCALS
  9774. float eps;
  9775. memcpy(&eps, dst->op_params, sizeof(float));
  9776. // TODO: optimize
  9777. for (int64_t i03 = 0; i03 < ne03; i03++) {
  9778. for (int64_t i02 = 0; i02 < ne02; i02++) {
  9779. for (int64_t i01 = ith; i01 < ne01; i01 += nth) {
  9780. // src1 is same shape as src0 => same indices
  9781. const int64_t i11 = i01;
  9782. const int64_t i12 = i02;
  9783. const int64_t i13 = i03;
  9784. const float * x = (float *) ((char *) src0->data + i01*nb01 + i02*nb02 + i03*nb03);
  9785. const float * dz = (float *) ((char *) src1->data + i11*nb11 + i12*nb12 + i13*nb13);
  9786. ggml_float sum_xx = 0.0;
  9787. ggml_float sum_xdz = 0.0;
  9788. for (int64_t i00 = 0; i00 < ne00; i00++) {
  9789. sum_xx += (ggml_float)(x[i00] * x[i00]);
  9790. sum_xdz += (ggml_float)(x[i00] * dz[i00]);
  9791. }
  9792. //const float mean = (float)(sum_xx)/ne00;
  9793. const float mean_eps = (float)(sum_xx)/ne00 + eps;
  9794. const float sum_eps = (float)(sum_xx) + eps*ne00;
  9795. //const float mean_xdz = (float)(sum_xdz)/ne00;
  9796. // we could cache rms from forward pass to improve performance.
  9797. // to do this implement ggml_rms and compose ggml_rms_norm using ggml_rms.
  9798. //const float rms = sqrtf(mean_eps);
  9799. const float rrms = 1.0f / sqrtf(mean_eps);
  9800. //const float scale = -rrms/(ne00 * mean_eps); // -1/(n*rms**3)
  9801. {
  9802. // z = rms_norm(x)
  9803. //
  9804. // rms_norm(src0) =
  9805. // scale(
  9806. // src0,
  9807. // div(
  9808. // 1,
  9809. // sqrt(
  9810. // add(
  9811. // scale(
  9812. // sum(
  9813. // sqr(
  9814. // src0)),
  9815. // (1.0/N)),
  9816. // eps))));
  9817. // postorder:
  9818. // ## op args grad
  9819. // 00 param src0 grad[#00]
  9820. // 01 const 1
  9821. // 02 sqr (#00) grad[#02]
  9822. // 03 sum (#02) grad[#03]
  9823. // 04 const 1/N
  9824. // 05 scale (#03, #04) grad[#05]
  9825. // 06 const eps
  9826. // 07 add (#05, #06) grad[#07]
  9827. // 08 sqrt (#07) grad[#08]
  9828. // 09 div (#01,#08) grad[#09]
  9829. // 10 scale (#00,#09) grad[#10]
  9830. //
  9831. // backward pass, given grad[#10]
  9832. // #10: scale
  9833. // grad[#00] += scale(grad[#10],#09)
  9834. // grad[#09] += sum(mul(grad[#10],#00))
  9835. // #09: div
  9836. // grad[#08] += neg(mul(grad[#09], div(#09,#08)))
  9837. // #08: sqrt
  9838. // grad[#07] += mul(grad[#08], div(0.5, #08))
  9839. // #07: add
  9840. // grad[#05] += grad[#07]
  9841. // #05: scale
  9842. // grad[#03] += scale(grad[#05],#04)
  9843. // #03: sum
  9844. // grad[#02] += repeat(grad[#03], #02)
  9845. // #02:
  9846. // grad[#00] += scale(mul(#00, grad[#02]), 2.0)
  9847. //
  9848. // substitute and simplify:
  9849. // grad[#00] = scale(grad(#10), #09) + scale(mul(#00, grad[#02]), 2.0)
  9850. // grad[#02] = repeat(grad[#03], #02)
  9851. // grad[#02] = repeat(scale(grad[#05],#04), #02)
  9852. // grad[#02] = repeat(scale(grad[#07],#04), #02)
  9853. // grad[#02] = repeat(scale(mul(grad[#08], div(0.5, #08)),#04), #02)
  9854. // grad[#02] = repeat(scale(mul(neg(mul(grad[#09], div(#09,#08))), div(0.5, #08)),#04), #02)
  9855. // grad[#02] = repeat(scale(mul(neg(mul(sum(mul(grad[#10],#00)), div(#09,#08))), div(0.5, #08)),#04), #02)
  9856. // grad[#02] = repeat(-(sum(mul(grad[#10],#00)) * div(#09,#08) * div(0.5, #08) * (1/N)), #02)
  9857. // grad[#02] = repeat(-(sum(mul(grad[#10],#00)) * div(div(#01,#08),#08) * div(0.5, #08) * (1/N)), #02)
  9858. // grad[#02] = repeat(-(sum(mul(grad[#10],#00)) * div(1,#08*#08) * div(0.5, #08) * (1/N)), #02)
  9859. // grad[#02] = repeat(-(sum(mul(grad[#10],#00)) * div(1,#07) * div(0.5, #08) * (1/N)), #02)
  9860. // grad[#00] = scale(grad(#10), #09) + scale(mul(#00, grad[#02]), 2.0)
  9861. // grad[#00] = scale(grad(#10), #09) + scale(mul(#00, repeat(-(sum(mul(grad[#10],#00)) * div(1,#07) * div(0.5, #08) * (1/N)), #02)), 2.0)
  9862. // grad[#00] = scale(grad(#10), #09) + scale(scale(#00, -(sum(mul(grad[#10],#00)) * div(1,#07) * div(0.5, #08) * (1/N))), 2.0)
  9863. // grad[#00] = scale(grad(#10), #09) + scale(#00, -(sum(mul(grad[#10],#00)) * div(1,#07) * div(1,#08) * (1/N)))
  9864. // grad[#00] = scale(grad(#10), #09) + scale(#00, sum(mul(grad[#10],#00)) * div(1,#07*#08) * (-1/N))
  9865. // grad[#00] = scale(grad(#10), #09) + scale(#00, sum(mul(grad[#10],#00)) * div(1,#07*#08) * (-1/N))
  9866. // grad[#00] = scale(grad(#10), #09) + scale(#00, sum(mul(grad[#10],#00)) * div(1,mean_eps*rms) * (-1/N))
  9867. // grad[#00] = scale(grad(#10), #09) + scale(#00, sum(mul(grad[#10],#00)) * div(-1,rms*N*mean_eps))
  9868. // grad[#00] = scale(grad(#10), #09) + scale(#00, sum(mul(grad[#10],#00)) * div(-1,rms*N*(sum_xx/N+eps)))
  9869. // grad[#00] = scale(grad(#10), #09) + scale(#00, sum(mul(grad[#10],#00)) * div(-1,rms*N*sum_xx+rms*N*eps))
  9870. // grad[#00] = scale(dz, rrms) + scale(x, sum(mul(dz,x)) * div(-1,rms*N*mean_eps))
  9871. // grad[#00] = scale(dz, rrms) + scale(x, sum_xdz * div(-1,rms*N*mean_eps))
  9872. // a = b*c + d*e
  9873. // a = b*c*f/f + d*e*f/f
  9874. // a = (b*c*f + d*e*f)*(1/f)
  9875. // a = (b*c*(1/c) + d*e*(1/c))*(1/(1/c))
  9876. // a = (b + d*e/c)*c
  9877. // b = dz, c = rrms, d = x, e = sum_xdz * div(-1,rms*N*mean_eps)
  9878. // a = (dz + x*sum_xdz * div(-1,rms*N*mean_eps)/rrms)*rrms
  9879. // a = (dz + x*sum_xdz * div(-1,rms*N*mean_eps)*rms)*rrms
  9880. // a = (dz + x*sum_xdz * div(-rms,rms*N*mean_eps))*rrms
  9881. // a = (dz + x*sum_xdz * div(-1,N*mean_eps))*rrms
  9882. // a = (dz + x*div(-sum_xdz,N*mean_eps))*rrms
  9883. // a = (dz + x*div(-mean_xdz,mean_eps))*rrms
  9884. // grad[#00] = scale(dz + scale(x, div(-mean_xdz,mean_eps)),rrms)
  9885. // grad[#00] = scale(dz + scale(x, -mean_xdz/mean_eps),rrms)
  9886. // dx = scale(dz + scale(x, -mean_xdz/mean_eps),rrms)
  9887. }
  9888. // dx = scale(dz + scale(x, -mean_xdz/mean_eps),rrms)
  9889. // post-order:
  9890. // dx := x
  9891. // dx := scale(dx,-mean_xdz/mean_eps)
  9892. // dx := add(dx, dz)
  9893. // dx := scale(dx, rrms)
  9894. float * dx = (float *) ((char *) dst->data + i01*nb1 + i02*nb2 + i03*nb3);
  9895. ggml_vec_cpy_f32 (ne00, dx, x);
  9896. // ggml_vec_scale_f32(ne00, dx, -mean_xdz/mean_eps);
  9897. ggml_vec_scale_f32(ne00, dx, (float)(-sum_xdz)/sum_eps);
  9898. ggml_vec_acc_f32 (ne00, dx, dz);
  9899. ggml_vec_scale_f32(ne00, dx, rrms);
  9900. }
  9901. }
  9902. }
  9903. }
  9904. static void ggml_compute_forward_rms_norm_back(
  9905. const struct ggml_compute_params * params,
  9906. struct ggml_tensor * dst) {
  9907. const struct ggml_tensor * src0 = dst->src[0];
  9908. switch (src0->type) {
  9909. case GGML_TYPE_F32:
  9910. {
  9911. ggml_compute_forward_rms_norm_back_f32(params, dst);
  9912. } break;
  9913. default:
  9914. {
  9915. GGML_ASSERT(false);
  9916. } break;
  9917. }
  9918. }
  9919. // ggml_compute_forward_group_norm
  9920. static void ggml_compute_forward_group_norm_f32(
  9921. const struct ggml_compute_params * params,
  9922. struct ggml_tensor * dst) {
  9923. const struct ggml_tensor * src0 = dst->src[0];
  9924. GGML_ASSERT(ggml_are_same_shape(src0, dst));
  9925. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  9926. return;
  9927. }
  9928. GGML_ASSERT(src0->nb[0] == sizeof(float));
  9929. const int ith = params->ith;
  9930. const int nth = params->nth;
  9931. GGML_TENSOR_UNARY_OP_LOCALS
  9932. const float eps = 1e-6f; // TODO: make this a parameter
  9933. // TODO: optimize
  9934. int n_channels = src0->ne[2];
  9935. int n_groups = dst->op_params[0];
  9936. int n_channels_per_group = (n_channels + n_groups - 1) / n_groups;
  9937. for (int i = ith; i < n_groups; i += nth) {
  9938. int start = i * n_channels_per_group;
  9939. int end = start + n_channels_per_group;
  9940. if (end > n_channels) {
  9941. end = n_channels;
  9942. }
  9943. int step = end - start;
  9944. for (int64_t i03 = 0; i03 < ne03; i03++) {
  9945. ggml_float sum = 0.0;
  9946. for (int64_t i02 = start; i02 < end; i02++) {
  9947. for (int64_t i01 = 0; i01 < ne01; i01++) {
  9948. const float * x = (float *)((char *) src0->data + i01 * nb01 + i02 * nb02 + i03 * nb03);
  9949. ggml_float sumr = 0.0;
  9950. for (int64_t i00 = 0; i00 < ne00; i00++) {
  9951. sumr += (ggml_float)x[i00];
  9952. }
  9953. sum += sumr;
  9954. }
  9955. }
  9956. const float mean = sum / (ne00 * ne01 * step);
  9957. ggml_float sum2 = 0.0;
  9958. for (int64_t i02 = start; i02 < end; i02++) {
  9959. for (int64_t i01 = 0; i01 < ne01; i01++) {
  9960. const float * x = (float *)((char *) src0->data + i01 * nb01 + i02 * nb02 + i03 * nb03);
  9961. float * y = (float *)((char *) dst->data + i01 * nb1 + i02 * nb2 + i03 * nb3);
  9962. ggml_float sumr = 0.0;
  9963. for (int64_t i00 = 0; i00 < ne00; i00++) {
  9964. float v = x[i00] - mean;
  9965. y[i00] = v;
  9966. sumr += (ggml_float)(v * v);
  9967. }
  9968. sum2 += sumr;
  9969. }
  9970. }
  9971. const float variance = sum2 / (ne00 * ne01 * step);
  9972. const float scale = 1.0f / sqrtf(variance + eps);
  9973. for (int64_t i02 = start; i02 < end; i02++) {
  9974. for (int64_t i01 = 0; i01 < ne01; i01++) {
  9975. float * y = (float *)((char *) dst->data + i01 * nb1 + i02 * nb2 + i03 * nb3);
  9976. ggml_vec_scale_f32(ne00, y, scale);
  9977. }
  9978. }
  9979. }
  9980. }
  9981. }
  9982. static void ggml_compute_forward_group_norm(
  9983. const struct ggml_compute_params * params,
  9984. struct ggml_tensor * dst) {
  9985. const struct ggml_tensor * src0 = dst->src[0];
  9986. switch (src0->type) {
  9987. case GGML_TYPE_F32:
  9988. {
  9989. ggml_compute_forward_group_norm_f32(params, dst);
  9990. } break;
  9991. default:
  9992. {
  9993. GGML_ASSERT(false);
  9994. } break;
  9995. }
  9996. }
  9997. // ggml_compute_forward_mul_mat
  9998. #if defined(GGML_USE_ACCELERATE) || defined(GGML_USE_OPENBLAS)
  9999. // helper function to determine if it is better to use BLAS or not
  10000. // for large matrices, BLAS is faster
  10001. static bool ggml_compute_forward_mul_mat_use_blas(struct ggml_tensor * dst) {
  10002. const struct ggml_tensor * src0 = dst->src[0];
  10003. const struct ggml_tensor * src1 = dst->src[1];
  10004. //const int64_t ne00 = src0->ne[0];
  10005. //const int64_t ne01 = src0->ne[1];
  10006. const int64_t ne10 = src1->ne[0];
  10007. const int64_t ne0 = dst->ne[0];
  10008. const int64_t ne1 = dst->ne[1];
  10009. // NOTE: with GGML_OP_MUL_MAT_ID we don't want to go through the BLAS branch because it will dequantize (to_float)
  10010. // all the experts for each batch element and the processing would become incredibly slow
  10011. // TODO: find the optimal values for these
  10012. if (dst->op != GGML_OP_MUL_MAT_ID &&
  10013. ggml_is_contiguous(src0) &&
  10014. ggml_is_contiguous(src1) &&
  10015. //src0->type == GGML_TYPE_F32 &&
  10016. src1->type == GGML_TYPE_F32 &&
  10017. (ne0 >= 32 && ne1 >= 32 && ne10 >= 32)) {
  10018. /*printf("BLAS: %d %d %d %d %d\n", ne0, ne1, ne10, ne00, ne01);*/
  10019. return true;
  10020. }
  10021. return false;
  10022. }
  10023. #endif
  10024. static void ggml_compute_forward_mul_mat_one_chunk(
  10025. const struct ggml_compute_params * params,
  10026. struct ggml_tensor * dst,
  10027. const int64_t num_rows_per_vec_dot,
  10028. const int64_t ir0_start,
  10029. const int64_t ir0_end,
  10030. const int64_t ir1_start,
  10031. const int64_t ir1_end) {
  10032. const struct ggml_tensor * src0 = dst->src[0];
  10033. const struct ggml_tensor * src1 = dst->src[1];
  10034. GGML_TENSOR_BINARY_OP_LOCALS
  10035. const enum ggml_type type = src0->type;
  10036. const bool src1_cont = ggml_is_contiguous(src1);
  10037. ggml_vec_dot_t const vec_dot = type_traits[type].vec_dot;
  10038. enum ggml_type const vec_dot_type = type_traits[type].vec_dot_type;
  10039. // broadcast factors
  10040. const int64_t r2 = ne12 / ne02;
  10041. const int64_t r3 = ne13 / ne03;
  10042. //printf("ir0_start = %6lld, ir0_end = %6lld, ir1_start = %6lld, ir1_end = %6lld\n", ir0_start, ir0_end, ir1_start, ir1_end);
  10043. // threads with no work simply yield (not sure if it helps)
  10044. if (ir0_start >= ir0_end || ir1_start >= ir1_end) {
  10045. return;
  10046. }
  10047. const void * wdata = (src1->type == vec_dot_type) ? src1->data : params->wdata;
  10048. const size_t row_size = ggml_row_size(vec_dot_type, ne10);
  10049. assert(ne12 % ne02 == 0);
  10050. assert(ne13 % ne03 == 0);
  10051. // block-tiling attempt
  10052. const int64_t blck_0 = 16;
  10053. const int64_t blck_1 = 16;
  10054. const size_t src1_col_stride = src1_cont || src1->type != vec_dot_type ? row_size : nb11;
  10055. // attempt to reduce false-sharing (does not seem to make a difference)
  10056. // 16 * 2, accounting for mmla kernels
  10057. float tmp[32];
  10058. for (int64_t iir1 = ir1_start; iir1 < ir1_end; iir1 += blck_1) {
  10059. for (int64_t iir0 = ir0_start; iir0 < ir0_end; iir0 += blck_0) {
  10060. for (int64_t ir1 = iir1; ir1 < iir1 + blck_1 && ir1 < ir1_end; ir1 += num_rows_per_vec_dot) {
  10061. const int64_t i13 = (ir1 / (ne12 * ne1));
  10062. const int64_t i12 = (ir1 - i13 * ne12 * ne1) / ne1;
  10063. const int64_t i11 = (ir1 - i13 * ne12 * ne1 - i12 * ne1);
  10064. // broadcast src0 into src1
  10065. const int64_t i03 = i13 / r3;
  10066. const int64_t i02 = i12 / r2;
  10067. const int64_t i1 = i11;
  10068. const int64_t i2 = i12;
  10069. const int64_t i3 = i13;
  10070. const char * src0_row = (const char*)src0->data + (0 + i02 * nb02 + i03 * nb03);
  10071. // desc: when src1 is not a contiguous memory block we have to calculate the offset using the strides
  10072. // if it is, then we have either copied the data to params->wdata and made it contiguous or we are using
  10073. // the original src1 data pointer, so we should index using the indices directly
  10074. // TODO: this is a bit of a hack, we should probably have a better way to handle this
  10075. const char * src1_col = (const char*)wdata +
  10076. (src1_cont || src1->type != vec_dot_type
  10077. ? (i11 + i12 * ne11 + i13 * ne12 * ne11) * row_size
  10078. : (i11 * nb11 + i12 * nb12 + i13 * nb13));
  10079. float * dst_col = (float*)((char*)dst->data + (i1 * nb1 + i2 * nb2 + i3 * nb3));
  10080. //for (int64_t ir0 = iir0; ir0 < iir0 + blck_0 && ir0 < ir0_end; ++ir0) {
  10081. // vec_dot(ne00, &dst_col[ir0], src0_row + ir0*nb01, src1_col);
  10082. //}
  10083. for (int64_t ir0 = iir0; ir0 < iir0 + blck_0 && ir0 < ir0_end; ir0 += num_rows_per_vec_dot) {
  10084. vec_dot(ne00, &tmp[ir0 - iir0], (num_rows_per_vec_dot > 1 ? 16 : 0), src0_row + ir0 * nb01, (num_rows_per_vec_dot > 1 ? nb01 : 0), src1_col, (num_rows_per_vec_dot > 1 ? src1_col_stride : 0), num_rows_per_vec_dot);
  10085. }
  10086. for (int cn = 0; cn < num_rows_per_vec_dot; ++cn) {
  10087. memcpy(&dst_col[iir0 + cn * nb1 / nb0], tmp + (cn * 16), (MIN(iir0 + blck_0, ir0_end) - iir0) * sizeof(float));
  10088. }
  10089. }
  10090. }
  10091. }
  10092. }
  10093. static void ggml_compute_forward_mul_mat(
  10094. const struct ggml_compute_params * params,
  10095. struct ggml_tensor * dst,
  10096. struct ggml_compute_state * state) {
  10097. const struct ggml_tensor * src0 = dst->src[0];
  10098. const struct ggml_tensor * src1 = dst->src[1];
  10099. int64_t t0 = ggml_perf_time_us();
  10100. UNUSED(t0);
  10101. GGML_TENSOR_BINARY_OP_LOCALS
  10102. const int ith = params->ith;
  10103. const int nth = params->nth;
  10104. const enum ggml_type type = src0->type;
  10105. enum ggml_type const vec_dot_type = type_traits[type].vec_dot_type;
  10106. ggml_from_float_t const from_float_to_vec_dot = type_traits[vec_dot_type].from_float;
  10107. int64_t const vec_dot_num_rows = type_traits[type].nrows;
  10108. GGML_ASSERT(ne0 == ne01);
  10109. GGML_ASSERT(ne1 == ne11);
  10110. GGML_ASSERT(ne2 == ne12);
  10111. GGML_ASSERT(ne3 == ne13);
  10112. // we don't support permuted src0 or src1
  10113. GGML_ASSERT(nb00 == ggml_type_size(type));
  10114. GGML_ASSERT(nb10 == ggml_type_size(src1->type));
  10115. // dst cannot be transposed or permuted
  10116. GGML_ASSERT(nb0 == sizeof(float));
  10117. GGML_ASSERT(nb0 <= nb1);
  10118. GGML_ASSERT(nb1 <= nb2);
  10119. GGML_ASSERT(nb2 <= nb3);
  10120. // broadcast factors
  10121. const int64_t r2 = ne12 / ne02;
  10122. const int64_t r3 = ne13 / ne03;
  10123. UNUSED(r2);
  10124. UNUSED(r3);
  10125. // nb01 >= nb00 - src0 is not transposed
  10126. // compute by src0 rows
  10127. #if defined(GGML_USE_ACCELERATE) || defined(GGML_USE_OPENBLAS)
  10128. if (ggml_compute_forward_mul_mat_use_blas(dst)) {
  10129. const int64_t ne_plane = ne01*ne00;
  10130. const size_t desired_wsize = ne13*ne12*ne_plane*sizeof(float);
  10131. UNUSED(desired_wsize);
  10132. if (params->type == GGML_TASK_TYPE_INIT) {
  10133. if (type != GGML_TYPE_F32) {
  10134. assert(params->wsize >= desired_wsize);
  10135. // parallelize by src0 rows
  10136. for (int64_t i13 = 0; i13 < ne13; i13++) {
  10137. for (int64_t i12 = 0; i12 < ne12; i12++) {
  10138. // broadcast src0 into src1 across 2nd,3rd dimension
  10139. const int64_t i03 = i13/r3;
  10140. const int64_t i02 = i12/r2;
  10141. const void * x = (char *) src0->data + i02*nb02 + i03*nb03;
  10142. float * const wdata = (float *) params->wdata + i13*ne12*ne_plane + i12*ne_plane;
  10143. ggml_to_float_t const to_float = type_traits[type].to_float;
  10144. for (int64_t i01 = ith; i01 < ne01; i01 += nth) {
  10145. to_float((const char *) x + i01*nb01, wdata + i01*ne00, ne00);
  10146. }
  10147. }
  10148. }
  10149. }
  10150. return;
  10151. }
  10152. if (params->type == GGML_TASK_TYPE_FINALIZE) {
  10153. return;
  10154. }
  10155. // perform sgemm, parallelization controlled by blas lib
  10156. if (ith != 0) {
  10157. return;
  10158. }
  10159. //const int64_t tgemm0 = ggml_perf_time_us();
  10160. for (int64_t i13 = 0; i13 < ne13; i13++) {
  10161. for (int64_t i12 = 0; i12 < ne12; i12++) {
  10162. const int64_t i03 = i13/r3;
  10163. const int64_t i02 = i12/r2;
  10164. const void * x = (char *) src0->data + i02*nb02 + i03*nb03;
  10165. const float * y = (float *) ((char *) src1->data + i12*nb12 + i13*nb13);
  10166. float * d = (float *) ((char *) dst->data + i12*nb2 + i13*nb3);
  10167. if (type != GGML_TYPE_F32) {
  10168. x = (float *) params->wdata + i13*ne12*ne_plane + i12*ne_plane;
  10169. }
  10170. cblas_sgemm(CblasRowMajor, CblasNoTrans, CblasTrans,
  10171. ne1, ne01, ne10,
  10172. 1.0f, y, ne10,
  10173. x, ne00,
  10174. 0.0f, d, ne01);
  10175. }
  10176. }
  10177. //printf("cblas_sgemm = %.3f ms, %lld flops\n", (ggml_perf_time_us() - tgemm0)/1000.0, ne13*ne12*ne1*ne01*ne10*2);
  10178. //printf("CBLAS = %f ms, %d x %d x %d x %d\n", (ggml_perf_time_us() - t0)/1000.0, ne0, ne1, ne2, ne3);
  10179. return;
  10180. }
  10181. #endif
  10182. #if GGML_USE_LLAMAFILE
  10183. const bool src1_cont = ggml_is_contiguous(src1);
  10184. if (src1_cont) {
  10185. for (int64_t i13 = 0; i13 < ne13; i13++)
  10186. for (int64_t i12 = 0; i12 < ne12; i12++)
  10187. if (!llamafile_sgemm(ne01, ne11, ne00/ggml_blck_size(src0->type),
  10188. (const char *)src0->data + i12/r2*nb02 + i13/r3*nb03,
  10189. nb01/ggml_type_size(src0->type),
  10190. (const char *)src1->data + i12*nb12 + i13*nb13,
  10191. nb11/ggml_type_size(src1->type),
  10192. (char *)dst->data + i12*nb2 + i13*nb3,
  10193. nb1/ggml_type_size(dst->type),
  10194. ith, nth,
  10195. params->type,
  10196. src0->type,
  10197. src1->type,
  10198. dst->type))
  10199. goto UseGgmlGemm1;
  10200. return;
  10201. }
  10202. UseGgmlGemm1:;
  10203. #endif
  10204. if (params->type == GGML_TASK_TYPE_INIT) {
  10205. if (ith != 0) {
  10206. return;
  10207. }
  10208. // Every thread starts at ith, so the first unprocessed chunk is nth. This save a bit of coordination right at the start.
  10209. atomic_store(&state->shared->current_chunk, nth);
  10210. if (src1->type != vec_dot_type) {
  10211. char * wdata = params->wdata;
  10212. const size_t row_size = ggml_row_size(vec_dot_type, ne10);
  10213. assert(params->wsize >= ne11*ne12*ne13*row_size);
  10214. GGML_ASSERT(src1->type == GGML_TYPE_F32);
  10215. for (int64_t i13 = 0; i13 < ne13; ++i13) {
  10216. for (int64_t i12 = 0; i12 < ne12; ++i12) {
  10217. for (int64_t i11 = 0; i11 < ne11; ++i11) {
  10218. from_float_to_vec_dot((float *)((char *) src1->data + i13*nb13 + i12*nb12 + i11*nb11), (void *) wdata, ne10);
  10219. wdata += row_size;
  10220. }
  10221. }
  10222. }
  10223. }
  10224. return;
  10225. }
  10226. if (params->type == GGML_TASK_TYPE_FINALIZE) {
  10227. return;
  10228. }
  10229. #if GGML_USE_LLAMAFILE
  10230. if (src1->type != vec_dot_type) {
  10231. const void* wdata = (src1->type == vec_dot_type) ? src1->data : params->wdata;
  10232. const size_t row_size = ggml_row_size(vec_dot_type, ne10);
  10233. for (int64_t i13 = 0; i13 < ne13; i13++)
  10234. for (int64_t i12 = 0; i12 < ne12; i12++)
  10235. if (!llamafile_sgemm(ne01, ne11, ne00/ggml_blck_size(src0->type),
  10236. (const char *)src0->data + i12/r2*nb02 + i13/r3*nb03,
  10237. nb01/ggml_type_size(src0->type),
  10238. (const char *)wdata + (i12*ne11 + i13*ne12*ne11)*row_size,
  10239. row_size/ggml_type_size(vec_dot_type),
  10240. (char *)dst->data + i12*nb2 + i13*nb3,
  10241. nb1/ggml_type_size(dst->type),
  10242. ith, nth,
  10243. params->type,
  10244. src0->type,
  10245. vec_dot_type,
  10246. dst->type))
  10247. goto UseGgmlGemm2;
  10248. return;
  10249. }
  10250. UseGgmlGemm2:;
  10251. #endif
  10252. #ifdef GGML_PERF
  10253. int chunks_executed = 0;
  10254. UNUSED(chunks_executed);
  10255. #endif
  10256. // This is the size of the first dimension of the result, so we can iterate that way. (see the ASSERT above, these are the same numbers)
  10257. const int64_t nr0 = ne0;
  10258. // This is the size of the rest of the dimensions of the result
  10259. const int64_t nr1 = ne1 * ne2 * ne3;
  10260. // dot kernels can handle 1 row and col at a time, but mmla kernels can process 2 rows and cols
  10261. int64_t num_rows_per_vec_dot = vec_dot_num_rows;
  10262. // TODO: currently the mmla kernels support only even numbered rows/cols.
  10263. // this check can be removed once they are extended to support odd numbered rows/cols too
  10264. if ((nr0 % 2 != 0) || (ne11 % 2 != 0)) {
  10265. num_rows_per_vec_dot = 1;
  10266. }
  10267. // Now select a reasonable chunk size.
  10268. int chunk_size = 16;
  10269. // We need to step up the size if it's small
  10270. if (nr0 == 1 || nr1 == 1) {
  10271. chunk_size = 64;
  10272. }
  10273. // distribute the work across the inner or outer loop based on which one is larger
  10274. // The number of chunks in the 0/1 dim.
  10275. // CEIL(nr0/chunk_size)
  10276. int64_t nchunk0 = (nr0 + chunk_size - 1) / chunk_size;
  10277. int64_t nchunk1 = (nr1 + chunk_size - 1) / chunk_size;
  10278. // If the chunking is poor for the number of threads on this setup, scrap the whole plan. Re-chunk it by thread.
  10279. // Also, chunking by thread was measured to have perform better on NUMA systems. See https://github.com/ggerganov/llama.cpp/pull/6915
  10280. // In theory, chunking should be just as useful on NUMA and non NUMA systems, but testing disagreed with that.
  10281. if (nchunk0 * nchunk1 < nth * 4 || ggml_is_numa()) {
  10282. // distribute the thread work across the inner or outer loop based on which one is larger
  10283. nchunk0 = nr0 > nr1 ? nth : 1; // parallelize by src0 rows
  10284. nchunk1 = nr0 > nr1 ? 1 : nth; // parallelize by src1 rows
  10285. }
  10286. // The number of elements in each chunk
  10287. const int64_t dr0 = (nr0 + nchunk0 - 1) / nchunk0;
  10288. const int64_t dr1 = (nr1 + nchunk1 - 1) / nchunk1;
  10289. //if (ith == 0)
  10290. // printf("MUL_MAT = [%d, %d, %d, %d] x [%d, %d, %d, %d] = %d x %d = %d. Fp Ops/Ch %d\n", ne00, ne01, ne02, ne03, ne10, ne11, ne12, ne13, nchunk0, nchunk1, nchunk0 * nchunk1, ne00 * nr0 * nr1 / nchunk0 / nchunk1);
  10291. // The first chunk comes from our thread_id, the rest will get auto-assigned.
  10292. int current_chunk = ith;
  10293. while (current_chunk < nchunk0 * nchunk1) {
  10294. const int64_t ith0 = current_chunk % nchunk0;
  10295. const int64_t ith1 = current_chunk / nchunk0;
  10296. const int64_t ir0_start = dr0 * ith0;
  10297. const int64_t ir0_end = MIN(ir0_start + dr0, nr0);
  10298. const int64_t ir1_start = dr1 * ith1;
  10299. const int64_t ir1_end = MIN(ir1_start + dr1, nr1);
  10300. ggml_compute_forward_mul_mat_one_chunk(params, dst, num_rows_per_vec_dot, ir0_start, ir0_end, ir1_start, ir1_end);
  10301. #ifdef GGML_PERF
  10302. chunks_executed++;
  10303. #endif
  10304. if (nth >= nchunk0 * nchunk1) {
  10305. break;
  10306. }
  10307. current_chunk = atomic_fetch_add(&state->shared->current_chunk, 1);
  10308. }
  10309. #ifdef GGML_PERF
  10310. // These numbers are useful when trying to measure how well the threading scheduling works.
  10311. //int64_t workSize = (ne01 * ne11 * ne12 * ne13 * ne00) / nchunk0 / nchunk1;
  10312. //float time = (ggml_perf_time_us() - t0);
  10313. //printf("MUL_MAT = %f ms, [%d, %d, %d, %d] x [%d, %d, %d, %d] = %I64u, %f ops/usec in %d chunks.\n", time / 1000.0, ne00, ne01, ne02, ne03, ne10, ne11, ne12, ne13, workSize, (float)workSize/time, chunks_executed);
  10314. #endif
  10315. }
  10316. // ggml_compute_forward_mul_mat_id
  10317. static void ggml_compute_forward_mul_mat_id(
  10318. const struct ggml_compute_params * params,
  10319. struct ggml_tensor * dst) {
  10320. const struct ggml_tensor * src0 = dst->src[0];
  10321. const struct ggml_tensor * src1 = dst->src[1];
  10322. const struct ggml_tensor * ids = dst->src[2];
  10323. GGML_TENSOR_BINARY_OP_LOCALS
  10324. const int ith = params->ith;
  10325. const int nth = params->nth;
  10326. const enum ggml_type type = src0->type;
  10327. const bool src1_cont = ggml_is_contiguous(src1);
  10328. ggml_vec_dot_t const vec_dot = type_traits[type].vec_dot;
  10329. enum ggml_type const vec_dot_type = type_traits[type].vec_dot_type;
  10330. ggml_from_float_t const from_float_to_vec_dot = type_traits[vec_dot_type].from_float;
  10331. // we don't support permuted src0 or src1
  10332. GGML_ASSERT(nb00 == ggml_type_size(type));
  10333. GGML_ASSERT(nb10 == ggml_type_size(src1->type));
  10334. // dst cannot be transposed or permuted
  10335. GGML_ASSERT(nb0 == sizeof(float));
  10336. GGML_ASSERT(nb0 <= nb1);
  10337. GGML_ASSERT(nb1 <= nb2);
  10338. GGML_ASSERT(nb2 <= nb3);
  10339. // row groups
  10340. const int n_ids = ids->ne[0]; // n_expert_used
  10341. const int n_as = ne02; // n_expert
  10342. char * wdata_src1_end = (src1->type == vec_dot_type) ?
  10343. (char *) params->wdata :
  10344. (char *) params->wdata + GGML_PAD(ggml_row_size(vec_dot_type, ggml_nelements(src1)), sizeof(int64_t));
  10345. struct mmid_row_mapping {
  10346. int32_t i1;
  10347. int32_t i2;
  10348. };
  10349. int64_t * matrix_row_counts = (int64_t *) (wdata_src1_end); // [n_as]
  10350. struct mmid_row_mapping * matrix_rows = (struct mmid_row_mapping *)(matrix_row_counts + n_as); // [n_as][ne11]
  10351. if (params->type == GGML_TASK_TYPE_INIT) {
  10352. if (ith != 0) {
  10353. return;
  10354. }
  10355. char * wdata = params->wdata;
  10356. if (src1->type != vec_dot_type) {
  10357. const size_t row_size = ggml_row_size(vec_dot_type, ne10);
  10358. assert(params->wsize >= ne11*ne12*ne13*row_size);
  10359. assert(src1->type == GGML_TYPE_F32);
  10360. for (int64_t i13 = 0; i13 < ne13; ++i13) {
  10361. for (int64_t i12 = 0; i12 < ne12; ++i12) {
  10362. for (int64_t i11 = 0; i11 < ne11; ++i11) {
  10363. from_float_to_vec_dot((float *)((char *) src1->data + i13*nb13 + i12*nb12 + i11*nb11), (void *) wdata, ne10);
  10364. wdata += row_size;
  10365. }
  10366. }
  10367. }
  10368. }
  10369. // initialize matrix_row_counts
  10370. memset(matrix_row_counts, 0, n_as*sizeof(int64_t));
  10371. #define MMID_MATRIX_ROW(row_id, i1) matrix_rows[(row_id)*ne12 + (i1)]
  10372. // group rows by src0 matrix
  10373. for (int64_t iid1 = 0; iid1 < ids->ne[1]; ++iid1) {
  10374. for (int id = 0; id < n_ids; ++id) {
  10375. const int32_t i02 = *(const int32_t *) ((const char *) ids->data + iid1*ids->nb[1] + id*ids->nb[0]);
  10376. assert(i02 >= 0 && i02 < n_as);
  10377. MMID_MATRIX_ROW(i02, matrix_row_counts[i02]) = (struct mmid_row_mapping) {id, iid1};
  10378. matrix_row_counts[i02] += 1;
  10379. }
  10380. }
  10381. return;
  10382. }
  10383. if (params->type == GGML_TASK_TYPE_FINALIZE) {
  10384. return;
  10385. }
  10386. // compute each matrix multiplication in sequence
  10387. for (int cur_a = 0; cur_a < n_as; ++cur_a) {
  10388. const int64_t cne1 = matrix_row_counts[cur_a];
  10389. if (cne1 == 0) {
  10390. continue;
  10391. }
  10392. const char * src0_cur = (const char *) src0->data + cur_a*nb02;
  10393. const void * wdata = (src1->type == vec_dot_type) ? src1->data : params->wdata;
  10394. const size_t row_size = ggml_row_size(vec_dot_type, ne10);
  10395. const int64_t nr0 = ne01; // src0 rows
  10396. const int64_t nr1 = cne1; // src1 rows
  10397. // distribute the thread work across the inner or outer loop based on which one is larger
  10398. const int64_t nth0 = nr0 > nr1 ? nth : 1; // parallelize by src0 rows
  10399. const int64_t nth1 = nr0 > nr1 ? 1 : nth; // parallelize by src1 rows
  10400. const int64_t ith0 = ith % nth0;
  10401. const int64_t ith1 = ith / nth0;
  10402. const int64_t dr0 = (nr0 + nth0 - 1)/nth0;
  10403. const int64_t dr1 = (nr1 + nth1 - 1)/nth1;
  10404. const int64_t ir010 = dr0*ith0;
  10405. const int64_t ir011 = MIN(ir010 + dr0, nr0);
  10406. const int64_t ir110 = dr1*ith1;
  10407. const int64_t ir111 = MIN(ir110 + dr1, nr1);
  10408. // threads with no work simply yield (not sure if it helps)
  10409. //if (ir010 >= ir011 || ir110 >= ir111) {
  10410. // sched_yield();
  10411. // continue;
  10412. //}
  10413. // block-tiling attempt
  10414. const int64_t blck_0 = 16;
  10415. const int64_t blck_1 = 16;
  10416. // attempt to reduce false-sharing (does not seem to make a difference)
  10417. float tmp[16];
  10418. for (int64_t iir1 = ir110; iir1 < ir111; iir1 += blck_1) {
  10419. for (int64_t iir0 = ir010; iir0 < ir011; iir0 += blck_0) {
  10420. for (int64_t ir1 = iir1; ir1 < iir1 + blck_1 && ir1 < ir111; ++ir1) {
  10421. const int64_t _i12 = ir1; // logical row index for this expert
  10422. struct mmid_row_mapping row_mapping = MMID_MATRIX_ROW(cur_a, _i12);
  10423. const int id = row_mapping.i1; // selected expert index
  10424. const int64_t i11 = id % ne11;
  10425. const int64_t i12 = row_mapping.i2; // row index in src1
  10426. const int64_t i1 = id; // selected expert index
  10427. const int64_t i2 = i12; // row
  10428. // desc: when src1 is not a contiguous memory block we have to calculate the offset using the strides
  10429. // if it is, then we have either copied the data to params->wdata and made it contiguous or we are using
  10430. // the original src1 data pointer, so we should index using the indices directly
  10431. // TODO: this is a bit of a hack, we should probably have a better way to handle this
  10432. const char * src1_col = (const char *) wdata +
  10433. (src1_cont || src1->type != vec_dot_type
  10434. ? (i11 + i12*ne11)*row_size
  10435. : (i11*nb11 + i12*nb12));
  10436. float * dst_col = (float *) ((char *) dst->data + (i1*nb1 + i2*nb2));
  10437. //for (int64_t ir0 = iir0; ir0 < iir0 + blck_0 && ir0 < ir011; ++ir0) {
  10438. // vec_dot(ne00, &dst_col[ir0], src0_row + ir0*nb01, src1_col);
  10439. //}
  10440. for (int64_t ir0 = iir0; ir0 < iir0 + blck_0 && ir0 < ir011; ++ir0) {
  10441. vec_dot(ne00, &tmp[ir0 - iir0], 0, src0_cur + ir0*nb01, 0, src1_col, 0, 1);
  10442. }
  10443. memcpy(&dst_col[iir0], tmp, (MIN(iir0 + blck_0, ir011) - iir0)*sizeof(float));
  10444. }
  10445. }
  10446. }
  10447. }
  10448. #undef MMID_MATRIX_ROW
  10449. }
  10450. // ggml_compute_forward_out_prod
  10451. static void ggml_compute_forward_out_prod_f32(
  10452. const struct ggml_compute_params * params,
  10453. struct ggml_tensor * dst) {
  10454. const struct ggml_tensor * src0 = dst->src[0];
  10455. const struct ggml_tensor * src1 = dst->src[1];
  10456. // int64_t t0 = ggml_perf_time_us();
  10457. // UNUSED(t0);
  10458. GGML_TENSOR_BINARY_OP_LOCALS
  10459. const int ith = params->ith;
  10460. const int nth = params->nth;
  10461. GGML_ASSERT(ne0 == ne00);
  10462. GGML_ASSERT(ne1 == ne10);
  10463. GGML_ASSERT(ne2 == ne02);
  10464. GGML_ASSERT(ne02 == ne12);
  10465. GGML_ASSERT(ne3 == ne13);
  10466. GGML_ASSERT(ne03 == ne13);
  10467. // we don't support permuted src0 or src1
  10468. GGML_ASSERT(nb00 == sizeof(float));
  10469. // dst cannot be transposed or permuted
  10470. GGML_ASSERT(nb0 == sizeof(float));
  10471. // GGML_ASSERT(nb0 <= nb1);
  10472. // GGML_ASSERT(nb1 <= nb2);
  10473. // GGML_ASSERT(nb2 <= nb3);
  10474. // nb01 >= nb00 - src0 is not transposed
  10475. // compute by src0 rows
  10476. #if defined(GGML_USE_ACCELERATE) || defined(GGML_USE_OPENBLAS)
  10477. bool use_blas = ggml_is_matrix(src0) &&
  10478. ggml_is_matrix(src1) &&
  10479. ggml_is_contiguous(src0) &&
  10480. (ggml_is_contiguous(src1) || ggml_is_transposed(src1));
  10481. #endif
  10482. if (params->type == GGML_TASK_TYPE_INIT) {
  10483. #if defined(GGML_USE_ACCELERATE) || defined(GGML_USE_OPENBLAS) // gemm beta will zero dst
  10484. if (use_blas) {
  10485. return;
  10486. }
  10487. #endif
  10488. if (ith != 0) {
  10489. return;
  10490. }
  10491. ggml_vec_set_f32(ne0*ne1*ne2*ne3, dst->data, 0);
  10492. return;
  10493. }
  10494. if (params->type == GGML_TASK_TYPE_FINALIZE) {
  10495. return;
  10496. }
  10497. #if defined(GGML_USE_ACCELERATE) || defined(GGML_USE_OPENBLAS)
  10498. if (use_blas) {
  10499. if (params->ith != 0) { // All threads other than the first do no work.
  10500. return;
  10501. }
  10502. // Arguments to ggml_compute_forward_out_prod (expressed as major,minor)
  10503. // src0: (k,n)
  10504. // src1: (k,m)
  10505. // dst: (m,n)
  10506. //
  10507. // Arguments to sgemm (see https://github.com/Reference-LAPACK/lapack/blob/master/BLAS/SRC/sgemm.f)
  10508. // Also expressed as (major,minor)
  10509. // a: (m,k): so src1 transposed
  10510. // b: (k,n): so src0
  10511. // c: (m,n)
  10512. //
  10513. // However, if ggml_is_transposed(src1) is true, then
  10514. // src1->data already contains a transposed version, so sgemm mustn't
  10515. // transpose it further.
  10516. int n = src0->ne[0];
  10517. int k = src0->ne[1];
  10518. int m = src1->ne[0];
  10519. int transposeA, lda;
  10520. if (!ggml_is_transposed(src1)) {
  10521. transposeA = CblasTrans;
  10522. lda = m;
  10523. } else {
  10524. transposeA = CblasNoTrans;
  10525. lda = k;
  10526. }
  10527. float * a = (float *) ((char *) src1->data);
  10528. float * b = (float *) ((char *) src0->data);
  10529. float * c = (float *) ((char *) dst->data);
  10530. cblas_sgemm(CblasRowMajor, transposeA, CblasNoTrans, m, n, k, 1.0, a, lda, b, n, 0.0, c, n);
  10531. return;
  10532. }
  10533. #endif
  10534. // dst[:,:,:,:] = 0
  10535. // for i2,i3:
  10536. // for i1:
  10537. // for i01:
  10538. // for i0:
  10539. // dst[i0,i1,i2,i3] += src0[i0,i01,i2,i3] * src1[i1,i01,i2,i3]
  10540. // parallelize by last three dimensions
  10541. // total rows in dst
  10542. const int64_t nr = ne1*ne2*ne3;
  10543. // rows per thread
  10544. const int64_t dr = (nr + nth - 1)/nth;
  10545. // row range for this thread
  10546. const int64_t ir0 = dr*ith;
  10547. const int64_t ir1 = MIN(ir0 + dr, nr);
  10548. // block-tiling attempt
  10549. const int64_t blck_0 = MAX(GGML_VEC_MAD_UNROLL, 32);
  10550. const int64_t blck_1 = 16;
  10551. for (int64_t bir = ir0; bir < ir1; bir += blck_1) {
  10552. const int64_t bir1 = MIN(bir + blck_1, ir1);
  10553. for (int64_t bi01 = 0; bi01 < ne01; bi01 += blck_0) {
  10554. const int64_t bne01 = MIN(bi01 + blck_0, ne01);
  10555. for (int64_t ir = bir; ir < bir1; ++ir) {
  10556. // dst indices
  10557. const int64_t i3 = ir/(ne2*ne1);
  10558. const int64_t i2 = (ir - i3*ne2*ne1)/ne1;
  10559. const int64_t i1 = (ir - i3*ne2*ne1 - i2*ne1);
  10560. const int64_t i02 = i2;
  10561. const int64_t i03 = i3;
  10562. //const int64_t i10 = i1;
  10563. const int64_t i12 = i2;
  10564. const int64_t i13 = i3;
  10565. #if GGML_VEC_MAD_UNROLL > 2
  10566. const int64_t bne01_unroll = bne01 - (bne01 % GGML_VEC_MAD_UNROLL);
  10567. for (int64_t i01 = bi01; i01 < bne01_unroll; i01 += GGML_VEC_MAD_UNROLL) {
  10568. const int64_t i11 = i01;
  10569. float * s0 = (float *) ((char *) src0->data + ( i01*nb01 + i02*nb02 + i03*nb03));
  10570. float * s1 = (float *) ((char *) src1->data + (i1*nb10 + i11*nb11 + i12*nb12 + i13*nb13));
  10571. float * d = (float *) ((char *) dst->data + ( i1*nb1 + i2*nb2 + i3*nb3));
  10572. ggml_vec_mad_f32_unroll(ne0, nb01, nb11, d, s0, s1);
  10573. }
  10574. for (int64_t i01 = bne01_unroll; i01 < bne01; ++i01) {
  10575. const int64_t i11 = i01;
  10576. float * s0 = (float *) ((char *) src0->data + ( i01*nb01 + i02*nb02 + i03*nb03));
  10577. float * s1 = (float *) ((char *) src1->data + (i1*nb10 + i11*nb11 + i12*nb12 + i13*nb13));
  10578. float * d = (float *) ((char *) dst->data + ( i1*nb1 + i2*nb2 + i3*nb3));
  10579. ggml_vec_mad_f32(ne0, d, s0, *s1);
  10580. }
  10581. #else
  10582. for (int64_t i01 = bi01; i01 < bne01; ++i01) {
  10583. const int64_t i11 = i01;
  10584. float * s0 = (float *) ((char *) src0->data + ( i01*nb01 + i02*nb02 + i03*nb03));
  10585. float * s1 = (float *) ((char *) src1->data + (i1*nb10 + i11*nb11 + i12*nb12 + i13*nb13));
  10586. float * d = (float *) ((char *) dst->data + ( i1*nb1 + i2*nb2 + i3*nb3));
  10587. ggml_vec_mad_f32(ne0, d, s0, *s1);
  10588. }
  10589. #endif
  10590. }
  10591. }
  10592. }
  10593. //int64_t t1 = ggml_perf_time_us();
  10594. //static int64_t acc = 0;
  10595. //acc += t1 - t0;
  10596. //if (t1 - t0 > 10) {
  10597. // printf("\n");
  10598. // printf("ne00 = %5d, ne01 = %5d, ne02 = %5d, ne03 = %5d\n", ne00, ne01, ne02, ne03);
  10599. // printf("nb00 = %5d, nb01 = %5d, nb02 = %5d, nb03 = %5d\n", nb00, nb01, nb02, nb03);
  10600. // printf("ne10 = %5d, ne11 = %5d, ne12 = %5d, ne13 = %5d\n", ne10, ne11, ne12, ne13);
  10601. // printf("nb10 = %5d, nb11 = %5d, nb12 = %5d, nb13 = %5d\n", nb10, nb11, nb12, nb13);
  10602. // printf("XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX task %d/%d: %d us, acc = %d\n", ith, nth, (int) (t1 - t0), (int) acc);
  10603. //}
  10604. }
  10605. static void ggml_compute_forward_out_prod_q_f32(
  10606. const struct ggml_compute_params * params,
  10607. struct ggml_tensor * dst) {
  10608. const struct ggml_tensor * src0 = dst->src[0];
  10609. const struct ggml_tensor * src1 = dst->src[1];
  10610. // int64_t t0 = ggml_perf_time_us();
  10611. // UNUSED(t0);
  10612. GGML_TENSOR_BINARY_OP_LOCALS;
  10613. const int ith = params->ith;
  10614. const int nth = params->nth;
  10615. const enum ggml_type type = src0->type;
  10616. ggml_to_float_t const dequantize_row_q = type_traits[type].to_float;
  10617. GGML_ASSERT(ne02 == ne12);
  10618. GGML_ASSERT(ne03 == ne13);
  10619. GGML_ASSERT(ne2 == ne12);
  10620. GGML_ASSERT(ne3 == ne13);
  10621. // we don't support permuted src0 dim0
  10622. GGML_ASSERT(nb00 == ggml_type_size(type));
  10623. // dst dim0 cannot be transposed or permuted
  10624. GGML_ASSERT(nb0 == sizeof(float));
  10625. // GGML_ASSERT(nb0 <= nb1);
  10626. // GGML_ASSERT(nb1 <= nb2);
  10627. // GGML_ASSERT(nb2 <= nb3);
  10628. GGML_ASSERT(ne0 == ne00);
  10629. GGML_ASSERT(ne1 == ne10);
  10630. GGML_ASSERT(ne2 == ne02);
  10631. GGML_ASSERT(ne3 == ne03);
  10632. // nb01 >= nb00 - src0 is not transposed
  10633. // compute by src0 rows
  10634. // TODO: #if defined(GGML_USE_ACCELERATE) || defined(GGML_USE_OPENBLAS)
  10635. if (params->type == GGML_TASK_TYPE_INIT) {
  10636. if (ith != 0) {
  10637. return;
  10638. }
  10639. ggml_vec_set_f32(ne0*ne1*ne2*ne3, dst->data, 0);
  10640. return;
  10641. }
  10642. if (params->type == GGML_TASK_TYPE_FINALIZE) {
  10643. return;
  10644. }
  10645. // parallelize by last three dimensions
  10646. // total rows in dst
  10647. const int64_t nr = ne1*ne2*ne3;
  10648. // rows per thread
  10649. const int64_t dr = (nr + nth - 1)/nth;
  10650. // row range for this thread
  10651. const int64_t ir0 = dr*ith;
  10652. const int64_t ir1 = MIN(ir0 + dr, nr);
  10653. // dst[:,:,:,:] = 0
  10654. // for i2,i3:
  10655. // for i1:
  10656. // for i01:
  10657. // for i0:
  10658. // dst[i0,i1,i2,i3] += src0[i0,i01,i2,i3] * src1[i1,i01,i2,i3]
  10659. float * wdata = (float *) params->wdata + (ne0 + CACHE_LINE_SIZE_F32) * ith;
  10660. for (int64_t ir = ir0; ir < ir1; ++ir) {
  10661. // dst indices
  10662. const int64_t i3 = ir/(ne2*ne1);
  10663. const int64_t i2 = (ir - i3*ne2*ne1)/ne1;
  10664. const int64_t i1 = (ir - i3*ne2*ne1 - i2*ne1);
  10665. const int64_t i02 = i2;
  10666. const int64_t i03 = i3;
  10667. //const int64_t i10 = i1;
  10668. const int64_t i12 = i2;
  10669. const int64_t i13 = i3;
  10670. for (int64_t i01 = 0; i01 < ne01; ++i01) {
  10671. const int64_t i11 = i01;
  10672. float * s0 = (float *) ((char *) src0->data + ( i01*nb01 + i02*nb02 + i03*nb03));
  10673. float * s1 = (float *) ((char *) src1->data + (i1*nb10 + i11*nb11 + i12*nb12 + i13*nb13));
  10674. float * d = (float *) ((char *) dst->data + ( i1*nb1 + i2*nb2 + i3*nb3));
  10675. dequantize_row_q(s0, wdata, ne0);
  10676. ggml_vec_mad_f32(ne0, d, wdata, *s1);
  10677. }
  10678. }
  10679. //int64_t t1 = ggml_perf_time_us();
  10680. //static int64_t acc = 0;
  10681. //acc += t1 - t0;
  10682. //if (t1 - t0 > 10) {
  10683. // printf("\n");
  10684. // printf("ne00 = %5d, ne01 = %5d, ne02 = %5d, ne03 = %5d\n", ne00, ne01, ne02, ne03);
  10685. // printf("nb00 = %5d, nb01 = %5d, nb02 = %5d, nb03 = %5d\n", nb00, nb01, nb02, nb03);
  10686. // printf("ne10 = %5d, ne11 = %5d, ne12 = %5d, ne13 = %5d\n", ne10, ne11, ne12, ne13);
  10687. // printf("nb10 = %5d, nb11 = %5d, nb12 = %5d, nb13 = %5d\n", nb10, nb11, nb12, nb13);
  10688. // printf("XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX task %d/%d: %d us, acc = %d\n", ith, nth, (int) (t1 - t0), (int) acc);
  10689. //}
  10690. }
  10691. static void ggml_compute_forward_out_prod(
  10692. const struct ggml_compute_params * params,
  10693. struct ggml_tensor * dst) {
  10694. const struct ggml_tensor * src0 = dst->src[0];
  10695. switch (src0->type) {
  10696. case GGML_TYPE_Q4_0:
  10697. case GGML_TYPE_Q4_1:
  10698. case GGML_TYPE_Q5_0:
  10699. case GGML_TYPE_Q5_1:
  10700. case GGML_TYPE_Q8_0:
  10701. case GGML_TYPE_Q2_K:
  10702. case GGML_TYPE_Q3_K:
  10703. case GGML_TYPE_Q4_K:
  10704. case GGML_TYPE_Q5_K:
  10705. case GGML_TYPE_Q6_K:
  10706. case GGML_TYPE_IQ2_XXS:
  10707. case GGML_TYPE_IQ2_XS:
  10708. case GGML_TYPE_IQ3_XXS:
  10709. case GGML_TYPE_IQ1_S:
  10710. case GGML_TYPE_IQ1_M:
  10711. case GGML_TYPE_IQ4_NL:
  10712. case GGML_TYPE_IQ4_XS:
  10713. case GGML_TYPE_IQ3_S:
  10714. case GGML_TYPE_IQ2_S:
  10715. {
  10716. ggml_compute_forward_out_prod_q_f32(params, dst);
  10717. } break;
  10718. case GGML_TYPE_F16:
  10719. {
  10720. GGML_ASSERT(false); // todo
  10721. // ggml_compute_forward_out_prod_f16_f32(params, dst);
  10722. } break;
  10723. case GGML_TYPE_F32:
  10724. {
  10725. ggml_compute_forward_out_prod_f32(params, dst);
  10726. } break;
  10727. default:
  10728. {
  10729. GGML_ASSERT(false);
  10730. } break;
  10731. }
  10732. }
  10733. // ggml_compute_forward_scale
  10734. static void ggml_compute_forward_scale_f32(
  10735. const struct ggml_compute_params * params,
  10736. struct ggml_tensor * dst) {
  10737. const struct ggml_tensor * src0 = dst->src[0];
  10738. GGML_ASSERT(ggml_is_contiguous(src0));
  10739. GGML_ASSERT(ggml_is_contiguous(dst));
  10740. GGML_ASSERT(ggml_are_same_shape(src0, dst));
  10741. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  10742. return;
  10743. }
  10744. // scale factor
  10745. float v;
  10746. memcpy(&v, dst->op_params, sizeof(float));
  10747. const int ith = params->ith;
  10748. const int nth = params->nth;
  10749. const int nc = src0->ne[0];
  10750. const int nr = ggml_nrows(src0);
  10751. // rows per thread
  10752. const int dr = (nr + nth - 1)/nth;
  10753. // row range for this thread
  10754. const int ir0 = dr*ith;
  10755. const int ir1 = MIN(ir0 + dr, nr);
  10756. const size_t nb01 = src0->nb[1];
  10757. const size_t nb1 = dst->nb[1];
  10758. for (int i1 = ir0; i1 < ir1; i1++) {
  10759. if (dst->data != src0->data) {
  10760. // src0 is same shape as dst => same indices
  10761. memcpy((char *)dst->data + i1*nb1, (char *)src0->data + i1*nb01, nc * sizeof(float));
  10762. }
  10763. ggml_vec_scale_f32(nc, (float *) ((char *) dst->data + i1*nb1), v);
  10764. }
  10765. }
  10766. static void ggml_compute_forward_scale(
  10767. const struct ggml_compute_params * params,
  10768. struct ggml_tensor * dst) {
  10769. const struct ggml_tensor * src0 = dst->src[0];
  10770. switch (src0->type) {
  10771. case GGML_TYPE_F32:
  10772. {
  10773. ggml_compute_forward_scale_f32(params, dst);
  10774. } break;
  10775. default:
  10776. {
  10777. GGML_ASSERT(false);
  10778. } break;
  10779. }
  10780. }
  10781. // ggml_compute_forward_set
  10782. static void ggml_compute_forward_set_f32(
  10783. const struct ggml_compute_params * params,
  10784. struct ggml_tensor * dst) {
  10785. const struct ggml_tensor * src0 = dst->src[0];
  10786. const struct ggml_tensor * src1 = dst->src[1];
  10787. GGML_ASSERT(ggml_are_same_shape(src0, dst));
  10788. GGML_ASSERT(ggml_is_contiguous(dst) && ggml_is_contiguous(src0));
  10789. // view src0 and dst with these strides and data offset inbytes during set
  10790. // nb0 is implicitly element_size because src0 and dst are contiguous
  10791. size_t nb1 = ((int32_t *) dst->op_params)[0];
  10792. size_t nb2 = ((int32_t *) dst->op_params)[1];
  10793. size_t nb3 = ((int32_t *) dst->op_params)[2];
  10794. size_t offset = ((int32_t *) dst->op_params)[3];
  10795. bool inplace = (bool) ((int32_t *) dst->op_params)[4];
  10796. if (!inplace && (params->type == GGML_TASK_TYPE_INIT)) {
  10797. if (params->ith != 0) {
  10798. return;
  10799. }
  10800. // memcpy needs to be synchronized across threads to avoid race conditions.
  10801. // => do it in INIT phase
  10802. memcpy(
  10803. ((char *) dst->data),
  10804. ((char *) src0->data),
  10805. ggml_nbytes(dst));
  10806. }
  10807. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  10808. return;
  10809. }
  10810. const int ith = params->ith;
  10811. const int nth = params->nth;
  10812. const int nr = ggml_nrows(src1);
  10813. const int nc = src1->ne[0];
  10814. GGML_TENSOR_LOCALS(int64_t, ne1, src1, ne)
  10815. GGML_TENSOR_LOCALS(size_t, nb1, src1, nb)
  10816. // src0 and dst as viewed during set
  10817. const size_t nb0 = ggml_element_size(src0);
  10818. const int im0 = (ne10 == 0 ? 0 : ne10-1);
  10819. const int im1 = (ne11 == 0 ? 0 : ne11-1);
  10820. const int im2 = (ne12 == 0 ? 0 : ne12-1);
  10821. const int im3 = (ne13 == 0 ? 0 : ne13-1);
  10822. GGML_ASSERT(offset + im0*nb0 + im1*nb1 + im2*nb2 + im3*nb3 <= ggml_nbytes(dst));
  10823. GGML_ASSERT(nb10 == sizeof(float));
  10824. // rows per thread
  10825. const int dr = (nr + nth - 1)/nth;
  10826. // row range for this thread
  10827. const int ir0 = dr*ith;
  10828. const int ir1 = MIN(ir0 + dr, nr);
  10829. for (int ir = ir0; ir < ir1; ++ir) {
  10830. // src0 and dst are viewed with shape of src1 and offset
  10831. // => same indices
  10832. const int i3 = ir/(ne12*ne11);
  10833. const int i2 = (ir - i3*ne12*ne11)/ne11;
  10834. const int i1 = (ir - i3*ne12*ne11 - i2*ne11);
  10835. ggml_vec_cpy_f32(nc,
  10836. (float *) ((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1 + offset),
  10837. (float *) ((char *) src1->data + i3*nb13 + i2*nb12 + i1*nb11));
  10838. }
  10839. }
  10840. static void ggml_compute_forward_set(
  10841. const struct ggml_compute_params * params,
  10842. struct ggml_tensor * dst) {
  10843. const struct ggml_tensor * src0 = dst->src[0];
  10844. switch (src0->type) {
  10845. case GGML_TYPE_F32:
  10846. {
  10847. ggml_compute_forward_set_f32(params, dst);
  10848. } break;
  10849. case GGML_TYPE_F16:
  10850. case GGML_TYPE_BF16:
  10851. case GGML_TYPE_Q4_0:
  10852. case GGML_TYPE_Q4_1:
  10853. case GGML_TYPE_Q5_0:
  10854. case GGML_TYPE_Q5_1:
  10855. case GGML_TYPE_Q8_0:
  10856. case GGML_TYPE_Q8_1:
  10857. case GGML_TYPE_Q2_K:
  10858. case GGML_TYPE_Q3_K:
  10859. case GGML_TYPE_Q4_K:
  10860. case GGML_TYPE_Q5_K:
  10861. case GGML_TYPE_Q6_K:
  10862. case GGML_TYPE_IQ2_XXS:
  10863. case GGML_TYPE_IQ2_XS:
  10864. case GGML_TYPE_IQ3_XXS:
  10865. case GGML_TYPE_IQ1_S:
  10866. case GGML_TYPE_IQ1_M:
  10867. case GGML_TYPE_IQ4_NL:
  10868. case GGML_TYPE_IQ4_XS:
  10869. case GGML_TYPE_IQ3_S:
  10870. case GGML_TYPE_IQ2_S:
  10871. default:
  10872. {
  10873. GGML_ASSERT(false);
  10874. } break;
  10875. }
  10876. }
  10877. // ggml_compute_forward_cpy
  10878. static void ggml_compute_forward_cpy(
  10879. const struct ggml_compute_params * params,
  10880. struct ggml_tensor * dst) {
  10881. ggml_compute_forward_dup(params, dst);
  10882. }
  10883. // ggml_compute_forward_cont
  10884. static void ggml_compute_forward_cont(
  10885. const struct ggml_compute_params * params,
  10886. struct ggml_tensor * dst) {
  10887. ggml_compute_forward_dup(params, dst);
  10888. }
  10889. // ggml_compute_forward_reshape
  10890. static void ggml_compute_forward_reshape(
  10891. const struct ggml_compute_params * params,
  10892. struct ggml_tensor * dst) {
  10893. // NOP
  10894. UNUSED(params);
  10895. UNUSED(dst);
  10896. }
  10897. // ggml_compute_forward_view
  10898. static void ggml_compute_forward_view(
  10899. const struct ggml_compute_params * params,
  10900. const struct ggml_tensor * dst) {
  10901. // NOP
  10902. UNUSED(params);
  10903. UNUSED(dst);
  10904. }
  10905. // ggml_compute_forward_permute
  10906. static void ggml_compute_forward_permute(
  10907. const struct ggml_compute_params * params,
  10908. const struct ggml_tensor * dst) {
  10909. // NOP
  10910. UNUSED(params);
  10911. UNUSED(dst);
  10912. }
  10913. // ggml_compute_forward_transpose
  10914. static void ggml_compute_forward_transpose(
  10915. const struct ggml_compute_params * params,
  10916. const struct ggml_tensor * dst) {
  10917. // NOP
  10918. UNUSED(params);
  10919. UNUSED(dst);
  10920. }
  10921. // ggml_compute_forward_get_rows
  10922. static void ggml_compute_forward_get_rows_q(
  10923. const struct ggml_compute_params * params,
  10924. struct ggml_tensor * dst) {
  10925. const struct ggml_tensor * src0 = dst->src[0];
  10926. const struct ggml_tensor * src1 = dst->src[1];
  10927. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  10928. return;
  10929. }
  10930. GGML_TENSOR_BINARY_OP_LOCALS
  10931. const int64_t nc = ne00;
  10932. const int64_t nr = ggml_nelements(src1);
  10933. const enum ggml_type type = src0->type;
  10934. ggml_to_float_t const dequantize_row_q = type_traits[type].to_float;
  10935. assert(ne0 == nc);
  10936. assert(ne02 == ne11);
  10937. assert(nb00 == ggml_type_size(type));
  10938. assert(ggml_nrows(dst) == nr);
  10939. const int ith = params->ith;
  10940. const int nth = params->nth;
  10941. // rows per thread
  10942. const int dr = (nr + nth - 1)/nth;
  10943. // row range for this thread
  10944. const int ir0 = dr*ith;
  10945. const int ir1 = MIN(ir0 + dr, nr);
  10946. for (int64_t i = ir0; i < ir1; ++i) {
  10947. const int64_t i12 = i/(ne11*ne10);
  10948. const int64_t i11 = (i - i12*ne11*ne10)/ne10;
  10949. const int64_t i10 = (i - i12*ne11*ne10 - i11*ne10);
  10950. const int64_t i01 = *(int32_t *) ((char *) src1->data + i10*nb10 + i11*nb11 + i12*nb12);
  10951. dequantize_row_q(
  10952. (const void *) ((char *) src0->data + i01*nb01 + i11*nb02 + i12*nb03),
  10953. (float *) ((char *) dst->data + i10*nb1 + i11*nb2 + i12*nb3), nc);
  10954. }
  10955. }
  10956. static void ggml_compute_forward_get_rows_f16(
  10957. const struct ggml_compute_params * params,
  10958. struct ggml_tensor * dst) {
  10959. const struct ggml_tensor * src0 = dst->src[0];
  10960. const struct ggml_tensor * src1 = dst->src[1];
  10961. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  10962. return;
  10963. }
  10964. GGML_TENSOR_BINARY_OP_LOCALS
  10965. const int64_t nc = ne00;
  10966. const int64_t nr = ggml_nelements(src1);
  10967. assert(ne0 == nc);
  10968. assert(ne02 == ne11);
  10969. assert(nb00 == sizeof(ggml_fp16_t));
  10970. assert(ggml_nrows(dst) == nr);
  10971. const int ith = params->ith;
  10972. const int nth = params->nth;
  10973. // rows per thread
  10974. const int dr = (nr + nth - 1)/nth;
  10975. // row range for this thread
  10976. const int ir0 = dr*ith;
  10977. const int ir1 = MIN(ir0 + dr, nr);
  10978. for (int64_t i = ir0; i < ir1; ++i) {
  10979. const int64_t i12 = i/(ne11*ne10);
  10980. const int64_t i11 = (i - i12*ne11*ne10)/ne10;
  10981. const int64_t i10 = (i - i12*ne11*ne10 - i11*ne10);
  10982. const int64_t i01 = *(int32_t *) ((char *) src1->data + i10*nb10 + i11*nb11 + i12*nb12);
  10983. ggml_fp16_to_fp32_row(
  10984. (const void *) ((char *) src0->data + i01*nb01 + i11*nb02 + i12*nb03),
  10985. (float *) ((char *) dst->data + i10*nb1 + i11*nb2 + i12*nb3), nc);
  10986. }
  10987. }
  10988. static void ggml_compute_forward_get_rows_bf16(
  10989. const struct ggml_compute_params * params,
  10990. struct ggml_tensor * dst) {
  10991. const struct ggml_tensor * src0 = dst->src[0];
  10992. const struct ggml_tensor * src1 = dst->src[1];
  10993. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  10994. return;
  10995. }
  10996. GGML_TENSOR_BINARY_OP_LOCALS
  10997. const int64_t nc = ne00;
  10998. const int64_t nr = ggml_nelements(src1);
  10999. assert(ne0 == nc);
  11000. assert(ne02 == ne11);
  11001. assert(nb00 == sizeof(ggml_bf16_t));
  11002. assert(ggml_nrows(dst) == nr);
  11003. const int ith = params->ith;
  11004. const int nth = params->nth;
  11005. // rows per thread
  11006. const int dr = (nr + nth - 1)/nth;
  11007. // row range for this thread
  11008. const int ir0 = dr*ith;
  11009. const int ir1 = MIN(ir0 + dr, nr);
  11010. for (int64_t i = ir0; i < ir1; ++i) {
  11011. const int64_t i12 = i/(ne11*ne10);
  11012. const int64_t i11 = (i - i12*ne11*ne10)/ne10;
  11013. const int64_t i10 = (i - i12*ne11*ne10 - i11*ne10);
  11014. const int64_t i01 = *(int32_t *) ((char *) src1->data + i10*nb10 + i11*nb11 + i12*nb12);
  11015. ggml_bf16_to_fp32_row(
  11016. (const void *) ((char *) src0->data + i01*nb01 + i11*nb02 + i12*nb03),
  11017. (float *) ((char *) dst->data + i10*nb1 + i11*nb2 + i12*nb3), nc);
  11018. }
  11019. }
  11020. static void ggml_compute_forward_get_rows_f32(
  11021. const struct ggml_compute_params * params,
  11022. struct ggml_tensor * dst) {
  11023. const struct ggml_tensor * src0 = dst->src[0];
  11024. const struct ggml_tensor * src1 = dst->src[1];
  11025. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  11026. return;
  11027. }
  11028. GGML_TENSOR_BINARY_OP_LOCALS
  11029. const int64_t nc = ne00;
  11030. const int64_t nr = ggml_nelements(src1);
  11031. assert(ne0 == nc);
  11032. assert(ne02 == ne11);
  11033. assert(nb00 == sizeof(float));
  11034. assert(ggml_nrows(dst) == nr);
  11035. const int ith = params->ith;
  11036. const int nth = params->nth;
  11037. // rows per thread
  11038. const int dr = (nr + nth - 1)/nth;
  11039. // row range for this thread
  11040. const int ir0 = dr*ith;
  11041. const int ir1 = MIN(ir0 + dr, nr);
  11042. for (int64_t i = ir0; i < ir1; ++i) {
  11043. const int64_t i12 = i/(ne11*ne10);
  11044. const int64_t i11 = (i - i12*ne11*ne10)/ne10;
  11045. const int64_t i10 = (i - i12*ne11*ne10 - i11*ne10);
  11046. const int64_t i01 = *(int32_t *) ((char *) src1->data + i10*nb10 + i11*nb11 + i12*nb12);
  11047. ggml_vec_cpy_f32(nc,
  11048. (float *) ((char *) dst->data + i10*nb1 + i11*nb2 + i12*nb3),
  11049. (float *) ((char *) src0->data + i01*nb01 + i11*nb02 + i12*nb03));
  11050. }
  11051. }
  11052. static void ggml_compute_forward_get_rows(
  11053. const struct ggml_compute_params * params,
  11054. struct ggml_tensor * dst) {
  11055. const struct ggml_tensor * src0 = dst->src[0];
  11056. switch (src0->type) {
  11057. case GGML_TYPE_Q4_0:
  11058. case GGML_TYPE_Q4_1:
  11059. case GGML_TYPE_Q5_0:
  11060. case GGML_TYPE_Q5_1:
  11061. case GGML_TYPE_Q8_0:
  11062. case GGML_TYPE_Q8_1:
  11063. case GGML_TYPE_Q2_K:
  11064. case GGML_TYPE_Q3_K:
  11065. case GGML_TYPE_Q4_K:
  11066. case GGML_TYPE_Q5_K:
  11067. case GGML_TYPE_Q6_K:
  11068. case GGML_TYPE_IQ2_XXS:
  11069. case GGML_TYPE_IQ2_XS:
  11070. case GGML_TYPE_IQ3_XXS:
  11071. case GGML_TYPE_IQ1_S:
  11072. case GGML_TYPE_IQ1_M:
  11073. case GGML_TYPE_IQ4_NL:
  11074. case GGML_TYPE_IQ4_XS:
  11075. case GGML_TYPE_IQ3_S:
  11076. case GGML_TYPE_IQ2_S:
  11077. {
  11078. ggml_compute_forward_get_rows_q(params, dst);
  11079. } break;
  11080. case GGML_TYPE_F16:
  11081. {
  11082. ggml_compute_forward_get_rows_f16(params, dst);
  11083. } break;
  11084. case GGML_TYPE_BF16:
  11085. {
  11086. ggml_compute_forward_get_rows_bf16(params, dst);
  11087. } break;
  11088. case GGML_TYPE_F32:
  11089. case GGML_TYPE_I32:
  11090. {
  11091. ggml_compute_forward_get_rows_f32(params, dst);
  11092. } break;
  11093. default:
  11094. {
  11095. GGML_ASSERT(false);
  11096. } break;
  11097. }
  11098. //static bool first = true;
  11099. //printf("ne0 = %d, ne1 = %d, ne2 = %d\n", dst->ne[0], dst->ne[1], dst->ne[2]);
  11100. //if (first) {
  11101. // first = false;
  11102. //} else {
  11103. // for (int k = 0; k < dst->ne[1]; ++k) {
  11104. // for (int j = 0; j < dst->ne[0]/16; ++j) {
  11105. // for (int i = 0; i < 16; ++i) {
  11106. // printf("%8.4f ", ((float *) dst->data)[k*dst->ne[0] + j*16 + i]);
  11107. // }
  11108. // printf("\n");
  11109. // }
  11110. // printf("\n");
  11111. // }
  11112. // printf("\n");
  11113. // exit(0);
  11114. //}
  11115. }
  11116. // ggml_compute_forward_get_rows_back
  11117. static void ggml_compute_forward_get_rows_back_f32_f16(
  11118. const struct ggml_compute_params * params,
  11119. struct ggml_tensor * dst) {
  11120. const struct ggml_tensor * src0 = dst->src[0];
  11121. const struct ggml_tensor * src1 = dst->src[1];
  11122. GGML_ASSERT(params->ith == 0);
  11123. GGML_ASSERT(ggml_is_contiguous(dst));
  11124. // ggml_compute_forward_dup_same_cont(params, opt0, dst);
  11125. if (params->type == GGML_TASK_TYPE_INIT) {
  11126. if (params->ith != 0) {
  11127. return;
  11128. }
  11129. memset(dst->data, 0, ggml_nbytes(dst));
  11130. }
  11131. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  11132. return;
  11133. }
  11134. const int nc = src0->ne[0];
  11135. const int nr = ggml_nelements(src1);
  11136. GGML_ASSERT( dst->ne[0] == nc);
  11137. GGML_ASSERT(src0->nb[0] == sizeof(ggml_fp16_t));
  11138. for (int i = 0; i < nr; ++i) {
  11139. const int r = ((int32_t *) src1->data)[i];
  11140. for (int j = 0; j < nc; ++j) {
  11141. ggml_fp16_t v = ((ggml_fp16_t *) ((char *) src0->data + i*src0->nb[1]))[j];
  11142. ((float *) ((char *) dst->data + r*dst->nb[1]))[j] += GGML_FP16_TO_FP32(v);
  11143. }
  11144. }
  11145. }
  11146. static void ggml_compute_forward_get_rows_back_f32(
  11147. const struct ggml_compute_params * params,
  11148. struct ggml_tensor * dst) {
  11149. const struct ggml_tensor * src0 = dst->src[0];
  11150. const struct ggml_tensor * src1 = dst->src[1];
  11151. GGML_ASSERT(params->ith == 0);
  11152. GGML_ASSERT(ggml_is_contiguous(dst));
  11153. // ggml_compute_forward_dup_same_cont(params, opt0, dst);
  11154. if (params->type == GGML_TASK_TYPE_INIT) {
  11155. if (params->ith != 0) {
  11156. return;
  11157. }
  11158. memset(dst->data, 0, ggml_nbytes(dst));
  11159. }
  11160. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  11161. return;
  11162. }
  11163. const int nc = src0->ne[0];
  11164. const int nr = ggml_nelements(src1);
  11165. GGML_ASSERT( dst->ne[0] == nc);
  11166. GGML_ASSERT(src0->nb[0] == sizeof(float));
  11167. for (int i = 0; i < nr; ++i) {
  11168. const int r = ((int32_t *) src1->data)[i];
  11169. ggml_vec_add_f32(nc,
  11170. (float *) ((char *) dst->data + r*dst->nb[1]),
  11171. (float *) ((char *) dst->data + r*dst->nb[1]),
  11172. (float *) ((char *) src0->data + i*src0->nb[1]));
  11173. }
  11174. }
  11175. static void ggml_compute_forward_get_rows_back(
  11176. const struct ggml_compute_params * params,
  11177. struct ggml_tensor * dst) {
  11178. const struct ggml_tensor * src0 = dst->src[0];
  11179. switch (src0->type) {
  11180. case GGML_TYPE_F16:
  11181. {
  11182. ggml_compute_forward_get_rows_back_f32_f16(params, dst);
  11183. } break;
  11184. case GGML_TYPE_F32:
  11185. {
  11186. ggml_compute_forward_get_rows_back_f32(params, dst);
  11187. } break;
  11188. default:
  11189. {
  11190. GGML_ASSERT(false);
  11191. } break;
  11192. }
  11193. //static bool first = true;
  11194. //printf("ne0 = %d, ne1 = %d, ne2 = %d\n", dst->ne[0], dst->ne[1], dst->ne[2]);
  11195. //if (first) {
  11196. // first = false;
  11197. //} else {
  11198. // for (int k = 0; k < dst->ne[1]; ++k) {
  11199. // for (int j = 0; j < dst->ne[0]/16; ++j) {
  11200. // for (int i = 0; i < 16; ++i) {
  11201. // printf("%8.4f ", ((float *) dst->data)[k*dst->ne[0] + j*16 + i]);
  11202. // }
  11203. // printf("\n");
  11204. // }
  11205. // printf("\n");
  11206. // }
  11207. // printf("\n");
  11208. // exit(0);
  11209. //}
  11210. }
  11211. // ggml_compute_forward_diag
  11212. static void ggml_compute_forward_diag_f32(
  11213. const struct ggml_compute_params * params,
  11214. struct ggml_tensor * dst) {
  11215. const struct ggml_tensor * src0 = dst->src[0];
  11216. GGML_ASSERT(params->ith == 0);
  11217. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  11218. return;
  11219. }
  11220. // TODO: handle transposed/permuted matrices
  11221. GGML_TENSOR_UNARY_OP_LOCALS
  11222. GGML_ASSERT(ne00 == ne0);
  11223. GGML_ASSERT(ne00 == ne1);
  11224. GGML_ASSERT(ne01 == 1);
  11225. GGML_ASSERT(ne02 == ne2);
  11226. GGML_ASSERT(ne03 == ne3);
  11227. GGML_ASSERT(nb00 == sizeof(float));
  11228. GGML_ASSERT(nb0 == sizeof(float));
  11229. for (int i3 = 0; i3 < ne3; i3++) {
  11230. for (int i2 = 0; i2 < ne2; i2++) {
  11231. for (int i1 = 0; i1 < ne1; i1++) {
  11232. float * d = (float *)((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1);
  11233. float * s = (float *)((char *) src0->data + i3*nb03 + i2*nb02);
  11234. for (int i0 = 0; i0 < i1; i0++) {
  11235. d[i0] = 0;
  11236. }
  11237. d[i1] = s[i1];
  11238. for (int i0 = i1+1; i0 < ne0; i0++) {
  11239. d[i0] = 0;
  11240. }
  11241. }
  11242. }
  11243. }
  11244. }
  11245. static void ggml_compute_forward_diag(
  11246. const struct ggml_compute_params * params,
  11247. struct ggml_tensor * dst) {
  11248. const struct ggml_tensor * src0 = dst->src[0];
  11249. switch (src0->type) {
  11250. case GGML_TYPE_F32:
  11251. {
  11252. ggml_compute_forward_diag_f32(params, dst);
  11253. } break;
  11254. default:
  11255. {
  11256. GGML_ASSERT(false);
  11257. } break;
  11258. }
  11259. }
  11260. // ggml_compute_forward_diag_mask_inf
  11261. static void ggml_compute_forward_diag_mask_f32(
  11262. const struct ggml_compute_params * params,
  11263. struct ggml_tensor * dst,
  11264. const float value) {
  11265. const struct ggml_tensor * src0 = dst->src[0];
  11266. const int ith = params->ith;
  11267. const int nth = params->nth;
  11268. const int n_past = ((int32_t *) dst->op_params)[0];
  11269. const bool inplace = src0->data == dst->data;
  11270. GGML_ASSERT(n_past >= 0);
  11271. if (!inplace && (params->type == GGML_TASK_TYPE_INIT)) {
  11272. if (ith != 0) {
  11273. return;
  11274. }
  11275. // memcpy needs to be synchronized across threads to avoid race conditions.
  11276. // => do it in INIT phase
  11277. GGML_ASSERT(ggml_nelements(dst) == ggml_nelements(src0));
  11278. GGML_ASSERT(ggml_is_contiguous(dst) && ggml_is_contiguous(src0));
  11279. memcpy(
  11280. ((char *) dst->data),
  11281. ((char *) src0->data),
  11282. ggml_nbytes(dst));
  11283. }
  11284. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  11285. return;
  11286. }
  11287. // TODO: handle transposed/permuted matrices
  11288. const int n = ggml_nrows(src0);
  11289. const int nc = src0->ne[0];
  11290. const int nr = src0->ne[1];
  11291. const int nz = n/nr;
  11292. GGML_ASSERT( dst->nb[0] == sizeof(float));
  11293. GGML_ASSERT(src0->nb[0] == sizeof(float));
  11294. for (int k = 0; k < nz; k++) {
  11295. for (int j = ith; j < nr; j += nth) {
  11296. for (int i = n_past; i < nc; i++) {
  11297. if (i > n_past + j) {
  11298. *(float *)((char *) dst->data + k*dst->nb[2] + j*dst->nb[1] + i*dst->nb[0]) = value;
  11299. }
  11300. }
  11301. }
  11302. }
  11303. }
  11304. static void ggml_compute_forward_diag_mask_inf(
  11305. const struct ggml_compute_params * params,
  11306. struct ggml_tensor * dst) {
  11307. const struct ggml_tensor * src0 = dst->src[0];
  11308. switch (src0->type) {
  11309. case GGML_TYPE_F32:
  11310. {
  11311. ggml_compute_forward_diag_mask_f32(params, dst, -INFINITY);
  11312. } break;
  11313. default:
  11314. {
  11315. GGML_ASSERT(false);
  11316. } break;
  11317. }
  11318. }
  11319. static void ggml_compute_forward_diag_mask_zero(
  11320. const struct ggml_compute_params * params,
  11321. struct ggml_tensor * dst) {
  11322. const struct ggml_tensor * src0 = dst->src[0];
  11323. switch (src0->type) {
  11324. case GGML_TYPE_F32:
  11325. {
  11326. ggml_compute_forward_diag_mask_f32(params, dst, 0);
  11327. } break;
  11328. default:
  11329. {
  11330. GGML_ASSERT(false);
  11331. } break;
  11332. }
  11333. }
  11334. // ggml_compute_forward_soft_max
  11335. static void ggml_compute_forward_soft_max_f32(
  11336. const struct ggml_compute_params * params,
  11337. struct ggml_tensor * dst) {
  11338. const struct ggml_tensor * src0 = dst->src[0];
  11339. const struct ggml_tensor * src1 = dst->src[1];
  11340. assert(ggml_is_contiguous(dst));
  11341. assert(ggml_are_same_shape(src0, dst));
  11342. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  11343. return;
  11344. }
  11345. float scale = 1.0f;
  11346. float max_bias = 0.0f;
  11347. memcpy(&scale, (float *) dst->op_params + 0, sizeof(float));
  11348. memcpy(&max_bias, (float *) dst->op_params + 1, sizeof(float));
  11349. // TODO: handle transposed/permuted matrices
  11350. const int ith = params->ith;
  11351. const int nth = params->nth;
  11352. GGML_TENSOR_UNARY_OP_LOCALS
  11353. //const int64_t ne11 = src1 ? src1->ne[1] : 1;
  11354. // TODO: is this supposed to be ceil instead of floor?
  11355. // https://huggingface.co/mosaicml/mpt-7b/blob/main/attention.py#L370
  11356. const uint32_t n_head = ne02;
  11357. const uint32_t n_head_log2 = 1u << (uint32_t) floor(log2(n_head));
  11358. const float m0 = powf(2.0f, -(max_bias ) / n_head_log2);
  11359. const float m1 = powf(2.0f, -(max_bias / 2.0f) / n_head_log2);
  11360. const int nc = src0->ne[0];
  11361. const int nr = ggml_nrows(src0);
  11362. // rows per thread
  11363. const int dr = (nr + nth - 1)/nth;
  11364. // row range for this thread
  11365. const int ir0 = dr*ith;
  11366. const int ir1 = MIN(ir0 + dr, nr);
  11367. float * wp = (float *) params->wdata + (nc + CACHE_LINE_SIZE_F32) * ith;
  11368. const bool use_f16 = (src1 && src1->type == GGML_TYPE_F16);
  11369. for (int i1 = ir0; i1 < ir1; i1++) {
  11370. // ALiBi
  11371. const uint32_t h = (i1/ne01)%ne02; // head
  11372. const float slope = (max_bias > 0.0f) ? h < n_head_log2 ? powf(m0, h + 1) : powf(m1, 2*(h - n_head_log2) + 1) : 1.0f;
  11373. float * sp = (float *)((char *) src0->data + i1*src0->nb[1]);
  11374. float * dp = (float *)((char *) dst->data + i1*dst->nb[1]);
  11375. // broadcast the mask across rows
  11376. ggml_fp16_t * mp_f16 = src1 ? (ggml_fp16_t *)((char *) src1->data) + (i1%ne01)*ne00 : NULL;
  11377. float * mp_f32 = src1 ? (float *)((char *) src1->data) + (i1%ne01)*ne00 : NULL;
  11378. ggml_vec_cpy_f32 (nc, wp, sp);
  11379. ggml_vec_scale_f32(nc, wp, scale);
  11380. if (mp_f32) {
  11381. if (use_f16) {
  11382. for (int i = 0; i < nc; ++i) {
  11383. wp[i] += slope*GGML_FP16_TO_FP32(mp_f16[i]);
  11384. }
  11385. } else {
  11386. for (int i = 0; i < nc; ++i) {
  11387. wp[i] += slope*mp_f32[i];
  11388. }
  11389. }
  11390. }
  11391. #ifndef NDEBUG
  11392. for (int i = 0; i < nc; ++i) {
  11393. //printf("p[%d] = %f\n", i, p[i]);
  11394. assert(!isnan(wp[i]));
  11395. }
  11396. #endif
  11397. float max = -INFINITY;
  11398. ggml_vec_max_f32(nc, &max, wp);
  11399. ggml_float sum = ggml_vec_soft_max_f32(nc, dp, wp, max);
  11400. assert(sum > 0.0);
  11401. sum = 1.0/sum;
  11402. ggml_vec_scale_f32(nc, dp, sum);
  11403. #ifndef NDEBUG
  11404. for (int i = 0; i < nc; ++i) {
  11405. assert(!isnan(dp[i]));
  11406. assert(!isinf(dp[i]));
  11407. }
  11408. #endif
  11409. }
  11410. }
  11411. static void ggml_compute_forward_soft_max(
  11412. const struct ggml_compute_params * params,
  11413. struct ggml_tensor * dst) {
  11414. const struct ggml_tensor * src0 = dst->src[0];
  11415. switch (src0->type) {
  11416. case GGML_TYPE_F32:
  11417. {
  11418. ggml_compute_forward_soft_max_f32(params, dst);
  11419. } break;
  11420. default:
  11421. {
  11422. GGML_ASSERT(false);
  11423. } break;
  11424. }
  11425. }
  11426. // ggml_compute_forward_soft_max_back
  11427. static void ggml_compute_forward_soft_max_back_f32(
  11428. const struct ggml_compute_params * params,
  11429. struct ggml_tensor * dst) {
  11430. const struct ggml_tensor * src0 = dst->src[0];
  11431. const struct ggml_tensor * src1 = dst->src[1];
  11432. GGML_ASSERT(ggml_is_contiguous(src0));
  11433. GGML_ASSERT(ggml_is_contiguous(src1));
  11434. GGML_ASSERT(ggml_is_contiguous(dst));
  11435. GGML_ASSERT(ggml_are_same_shape(src0, dst));
  11436. GGML_ASSERT(ggml_are_same_shape(src1, dst));
  11437. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  11438. return;
  11439. }
  11440. // TODO: handle transposed/permuted matrices
  11441. const int ith = params->ith;
  11442. const int nth = params->nth;
  11443. const int nc = src0->ne[0];
  11444. const int nr = ggml_nrows(src0);
  11445. // rows per thread
  11446. const int dr = (nr + nth - 1)/nth;
  11447. // row range for this thread
  11448. const int ir0 = dr*ith;
  11449. const int ir1 = MIN(ir0 + dr, nr);
  11450. for (int i1 = ir0; i1 < ir1; i1++) {
  11451. float *dy = (float *)((char *) src0->data + i1*src0->nb[1]);
  11452. float *y = (float *)((char *) src1->data + i1*src1->nb[1]);
  11453. float *dx = (float *)((char *) dst->data + i1*dst->nb[1]);
  11454. #ifndef NDEBUG
  11455. for (int i = 0; i < nc; ++i) {
  11456. //printf("p[%d] = %f\n", i, p[i]);
  11457. assert(!isnan(dy[i]));
  11458. assert(!isnan(y[i]));
  11459. }
  11460. #endif
  11461. // Jii = yi - yi*yi
  11462. // Jij = -yi*yj
  11463. // J = diag(y)-y.T*y
  11464. // dx = J * dy
  11465. // dxk = sum_i(Jki * dyi)
  11466. // dxk = sum_i(-yk*yi * dyi) - (-yk*yk)*dyk + (yk - yk*yk)*dyk
  11467. // dxk = sum_i(-yk*yi * dyi) + yk*yk*dyk + yk*dyk - yk*yk*dyk
  11468. // dxk = sum_i(-yk*yi * dyi) + yk*dyk
  11469. // dxk = -yk * sum_i(yi * dyi) + yk*dyk
  11470. // dxk = -yk * dot(y, dy) + yk*dyk
  11471. // dxk = yk * (- dot(y, dy) + dyk)
  11472. // dxk = yk * (dyk - dot(y, dy))
  11473. //
  11474. // post-order:
  11475. // dot_y_dy := dot(y, dy)
  11476. // dx := dy
  11477. // dx := dx - dot_y_dy
  11478. // dx := dx * y
  11479. // linear runtime, no additional memory
  11480. float dot_y_dy = 0;
  11481. ggml_vec_dot_f32 (nc, &dot_y_dy, 0, y, 0, dy, 0, 1);
  11482. ggml_vec_cpy_f32 (nc, dx, dy);
  11483. ggml_vec_acc1_f32(nc, dx, -dot_y_dy);
  11484. ggml_vec_mul_f32 (nc, dx, dx, y);
  11485. #ifndef NDEBUG
  11486. for (int i = 0; i < nc; ++i) {
  11487. assert(!isnan(dx[i]));
  11488. assert(!isinf(dx[i]));
  11489. }
  11490. #endif
  11491. }
  11492. }
  11493. static void ggml_compute_forward_soft_max_back(
  11494. const struct ggml_compute_params * params,
  11495. struct ggml_tensor * dst) {
  11496. const struct ggml_tensor * src0 = dst->src[0];
  11497. switch (src0->type) {
  11498. case GGML_TYPE_F32:
  11499. {
  11500. ggml_compute_forward_soft_max_back_f32(params, dst);
  11501. } break;
  11502. default:
  11503. {
  11504. GGML_ASSERT(false);
  11505. } break;
  11506. }
  11507. }
  11508. // ggml_compute_forward_clamp
  11509. static void ggml_compute_forward_clamp_f32(
  11510. const struct ggml_compute_params * params,
  11511. struct ggml_tensor * dst) {
  11512. const struct ggml_tensor * src0 = dst->src[0];
  11513. assert(params->ith == 0);
  11514. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  11515. return;
  11516. }
  11517. float min;
  11518. float max;
  11519. memcpy(&min, (float *) dst->op_params + 0, sizeof(float));
  11520. memcpy(&max, (float *) dst->op_params + 1, sizeof(float));
  11521. const int ith = params->ith;
  11522. const int nth = params->nth;
  11523. const int n = ggml_nrows(src0);
  11524. const int nc = src0->ne[0];
  11525. const size_t nb00 = src0->nb[0];
  11526. const size_t nb01 = src0->nb[1];
  11527. const size_t nb0 = dst->nb[0];
  11528. const size_t nb1 = dst->nb[1];
  11529. GGML_ASSERT( nb0 == sizeof(float));
  11530. GGML_ASSERT(nb00 == sizeof(float));
  11531. for (int j = ith; j < n; j += nth) {
  11532. float * dst_ptr = (float *) ((char *) dst->data + j*nb1);
  11533. float * src0_ptr = (float *) ((char *) src0->data + j*nb01);
  11534. for (int i = 0; i < nc; i++) {
  11535. dst_ptr[i] = MAX(MIN(src0_ptr[i], max), min);
  11536. }
  11537. }
  11538. }
  11539. static void ggml_compute_forward_clamp(
  11540. const struct ggml_compute_params * params,
  11541. struct ggml_tensor * dst) {
  11542. const struct ggml_tensor * src0 = dst->src[0];
  11543. switch (src0->type) {
  11544. case GGML_TYPE_F32:
  11545. {
  11546. ggml_compute_forward_clamp_f32(params, dst);
  11547. } break;
  11548. case GGML_TYPE_F16:
  11549. case GGML_TYPE_BF16:
  11550. case GGML_TYPE_Q4_0:
  11551. case GGML_TYPE_Q4_1:
  11552. case GGML_TYPE_Q5_0:
  11553. case GGML_TYPE_Q5_1:
  11554. case GGML_TYPE_Q8_0:
  11555. case GGML_TYPE_Q8_1:
  11556. case GGML_TYPE_Q2_K:
  11557. case GGML_TYPE_Q3_K:
  11558. case GGML_TYPE_Q4_K:
  11559. case GGML_TYPE_Q5_K:
  11560. case GGML_TYPE_Q6_K:
  11561. case GGML_TYPE_IQ2_XXS:
  11562. case GGML_TYPE_IQ2_XS:
  11563. case GGML_TYPE_IQ3_XXS:
  11564. case GGML_TYPE_IQ1_S:
  11565. case GGML_TYPE_IQ1_M:
  11566. case GGML_TYPE_IQ4_NL:
  11567. case GGML_TYPE_IQ4_XS:
  11568. case GGML_TYPE_IQ3_S:
  11569. case GGML_TYPE_IQ2_S:
  11570. case GGML_TYPE_Q8_K:
  11571. case GGML_TYPE_I8:
  11572. case GGML_TYPE_I16:
  11573. case GGML_TYPE_I32:
  11574. case GGML_TYPE_I64:
  11575. case GGML_TYPE_F64:
  11576. case GGML_TYPE_COUNT:
  11577. {
  11578. GGML_ASSERT(false);
  11579. } break;
  11580. }
  11581. }
  11582. // ggml_compute_forward_rope
  11583. static float rope_yarn_ramp(const float low, const float high, const int i0) {
  11584. const float y = (i0 / 2 - low) / MAX(0.001f, high - low);
  11585. return 1 - MIN(1, MAX(0, y));
  11586. }
  11587. // YaRN algorithm based on LlamaYaRNScaledRotaryEmbedding.py from https://github.com/jquesnelle/yarn
  11588. // MIT licensed. Copyright (c) 2023 Jeffrey Quesnelle and Bowen Peng.
  11589. static void rope_yarn(
  11590. float theta_extrap, float freq_scale, float corr_dims[2], int64_t i0, float ext_factor, float mscale,
  11591. float * cos_theta, float * sin_theta) {
  11592. // Get n-d rotational scaling corrected for extrapolation
  11593. float theta_interp = freq_scale * theta_extrap;
  11594. float theta = theta_interp;
  11595. if (ext_factor != 0.0f) {
  11596. float ramp_mix = rope_yarn_ramp(corr_dims[0], corr_dims[1], i0) * ext_factor;
  11597. theta = theta_interp * (1 - ramp_mix) + theta_extrap * ramp_mix;
  11598. // Get n-d magnitude scaling corrected for interpolation
  11599. mscale *= 1.0f + 0.1f * logf(1.0f / freq_scale);
  11600. }
  11601. *cos_theta = cosf(theta) * mscale;
  11602. *sin_theta = sinf(theta) * mscale;
  11603. }
  11604. // Apparently solving `n_rot = 2pi * x * base^((2 * max_pos_emb) / n_dims)` for x, we get
  11605. // `corr_dim(n_rot) = n_dims * log(max_pos_emb / (n_rot * 2pi)) / (2 * log(base))`
  11606. static float ggml_rope_yarn_corr_dim(int n_dims, int n_ctx_orig, float n_rot, float base) {
  11607. return n_dims * logf(n_ctx_orig / (n_rot * 2 * (float)M_PI)) / (2 * logf(base));
  11608. }
  11609. static void ggml_rope_cache_init(
  11610. float theta_base, float freq_scale, const float * freq_factors, float corr_dims[2], int64_t ne0, float ext_factor, float mscale,
  11611. float * cache, float sin_sign, float theta_scale) {
  11612. // ref: https://github.com/jquesnelle/yarn/blob/master/scaled_rope/LlamaYaRNScaledRotaryEmbedding.py
  11613. float theta = theta_base;
  11614. for (int64_t i0 = 0; i0 < ne0; i0 += 2) {
  11615. const float ff = freq_factors ? freq_factors[i0/2] : 1.0f;
  11616. rope_yarn(
  11617. theta/ff, freq_scale, corr_dims, i0, ext_factor, mscale, &cache[i0 + 0], &cache[i0 + 1]
  11618. );
  11619. cache[i0 + 1] *= sin_sign;
  11620. theta *= theta_scale;
  11621. }
  11622. }
  11623. GGML_CALL void ggml_rope_yarn_corr_dims(
  11624. int n_dims, int n_ctx_orig, float freq_base, float beta_fast, float beta_slow, float dims[2]
  11625. ) {
  11626. // start and end correction dims
  11627. float start = floorf(ggml_rope_yarn_corr_dim(n_dims, n_ctx_orig, beta_fast, freq_base));
  11628. float end = ceilf(ggml_rope_yarn_corr_dim(n_dims, n_ctx_orig, beta_slow, freq_base));
  11629. dims[0] = MAX(0, start);
  11630. dims[1] = MIN(n_dims - 1, end);
  11631. }
  11632. static void ggml_compute_forward_rope_f32(
  11633. const struct ggml_compute_params * params,
  11634. struct ggml_tensor * dst,
  11635. const bool forward) {
  11636. const struct ggml_tensor * src0 = dst->src[0];
  11637. const struct ggml_tensor * src1 = dst->src[1];
  11638. const struct ggml_tensor * src2 = dst->src[2];
  11639. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  11640. return;
  11641. }
  11642. float freq_base, freq_scale, ext_factor, attn_factor, beta_fast, beta_slow;
  11643. //const int n_past = ((int32_t *) dst->op_params)[0];
  11644. const int n_dims = ((int32_t *) dst->op_params)[1];
  11645. const int mode = ((int32_t *) dst->op_params)[2];
  11646. //const int n_ctx = ((int32_t *) dst->op_params)[3];
  11647. const int n_ctx_orig = ((int32_t *) dst->op_params)[4];
  11648. memcpy(&freq_base, (int32_t *) dst->op_params + 5, sizeof(float));
  11649. memcpy(&freq_scale, (int32_t *) dst->op_params + 6, sizeof(float));
  11650. memcpy(&ext_factor, (int32_t *) dst->op_params + 7, sizeof(float));
  11651. memcpy(&attn_factor, (int32_t *) dst->op_params + 8, sizeof(float));
  11652. memcpy(&beta_fast, (int32_t *) dst->op_params + 9, sizeof(float));
  11653. memcpy(&beta_slow, (int32_t *) dst->op_params + 10, sizeof(float));
  11654. GGML_TENSOR_UNARY_OP_LOCALS
  11655. //printf("ne0: %d, ne1: %d, ne2: %d, ne3: %d\n", ne0, ne1, ne2, ne3);
  11656. //printf("n_past = %d, ne2 = %d\n", n_past, ne2);
  11657. GGML_ASSERT(nb00 == sizeof(float));
  11658. const int ith = params->ith;
  11659. const int nth = params->nth;
  11660. const int nr = ggml_nrows(dst);
  11661. GGML_ASSERT(n_dims <= ne0);
  11662. GGML_ASSERT(n_dims % 2 == 0);
  11663. // rows per thread
  11664. const int dr = (nr + nth - 1)/nth;
  11665. // row range for this thread
  11666. const int ir0 = dr*ith;
  11667. const int ir1 = MIN(ir0 + dr, nr);
  11668. // row index used to determine which thread to use
  11669. int ir = 0;
  11670. const float theta_scale = powf(freq_base, -2.0f/n_dims);
  11671. float corr_dims[2];
  11672. ggml_rope_yarn_corr_dims(n_dims, n_ctx_orig, freq_base, beta_fast, beta_slow, corr_dims);
  11673. const bool is_neox = mode & 2;
  11674. const float * freq_factors = NULL;
  11675. if (src2 != NULL) {
  11676. GGML_ASSERT(src2->type == GGML_TYPE_F32);
  11677. GGML_ASSERT(src2->ne[0] >= n_dims / 2);
  11678. freq_factors = (const float *) src2->data;
  11679. }
  11680. // backward process uses inverse rotation by cos and sin.
  11681. // cos and sin build a rotation matrix, where the inverse is the transpose.
  11682. // this essentially just switches the sign of sin.
  11683. const float sin_sign = forward ? 1.0f : -1.0f;
  11684. const int32_t * pos = (const int32_t *) src1->data;
  11685. for (int64_t i3 = 0; i3 < ne3; i3++) {
  11686. for (int64_t i2 = 0; i2 < ne2; i2++) {
  11687. const int64_t p = pos[i2];
  11688. float * cache = (float *) params->wdata + (ne0 + CACHE_LINE_SIZE_F32)*ith;
  11689. ggml_rope_cache_init(p, freq_scale, freq_factors, corr_dims, ne0, ext_factor, attn_factor, cache, sin_sign, theta_scale);
  11690. for (int64_t i1 = 0; i1 < ne1; i1++) {
  11691. if (ir++ < ir0) continue;
  11692. if (ir > ir1) break;
  11693. if (!is_neox) {
  11694. for (int64_t i0 = 0; i0 < n_dims; i0 += 2) {
  11695. const float cos_theta = cache[i0 + 0];
  11696. const float sin_theta = cache[i0 + 1];
  11697. const float * const src = (float *)((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01 + i0*nb00);
  11698. float * dst_data = (float *)((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1 + i0*nb0);
  11699. const float x0 = src[0];
  11700. const float x1 = src[1];
  11701. dst_data[0] = x0*cos_theta - x1*sin_theta;
  11702. dst_data[1] = x0*sin_theta + x1*cos_theta;
  11703. }
  11704. } else {
  11705. for (int64_t i0 = 0; i0 < n_dims; i0 += 2) {
  11706. const int64_t ic = i0/2;
  11707. const float cos_theta = cache[i0 + 0];
  11708. const float sin_theta = cache[i0 + 1];
  11709. const float * const src = (float *)((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01 + ic*nb00);
  11710. float * dst_data = (float *)((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1 + ic*nb0);
  11711. const float x0 = src[0];
  11712. const float x1 = src[n_dims/2];
  11713. dst_data[0] = x0*cos_theta - x1*sin_theta;
  11714. dst_data[n_dims/2] = x0*sin_theta + x1*cos_theta;
  11715. }
  11716. }
  11717. for (int64_t i0 = n_dims; i0 < ne0; i0 += 2) {
  11718. const float * const src = (float *)((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01 + i0*nb00);
  11719. float * dst_data = (float *)((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1 + i0*nb0);
  11720. dst_data[0] = src[0];
  11721. dst_data[1] = src[1];
  11722. }
  11723. }
  11724. }
  11725. }
  11726. }
  11727. // TODO: deduplicate f16/f32 code
  11728. static void ggml_compute_forward_rope_f16(
  11729. const struct ggml_compute_params * params,
  11730. struct ggml_tensor * dst,
  11731. const bool forward) {
  11732. const struct ggml_tensor * src0 = dst->src[0];
  11733. const struct ggml_tensor * src1 = dst->src[1];
  11734. const struct ggml_tensor * src2 = dst->src[2];
  11735. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  11736. return;
  11737. }
  11738. float freq_base, freq_scale, ext_factor, attn_factor, beta_fast, beta_slow;
  11739. //const int n_past = ((int32_t *) dst->op_params)[0];
  11740. const int n_dims = ((int32_t *) dst->op_params)[1];
  11741. const int mode = ((int32_t *) dst->op_params)[2];
  11742. //const int n_ctx = ((int32_t *) dst->op_params)[3];
  11743. const int n_ctx_orig = ((int32_t *) dst->op_params)[4];
  11744. memcpy(&freq_base, (int32_t *) dst->op_params + 5, sizeof(float));
  11745. memcpy(&freq_scale, (int32_t *) dst->op_params + 6, sizeof(float));
  11746. memcpy(&ext_factor, (int32_t *) dst->op_params + 7, sizeof(float));
  11747. memcpy(&attn_factor, (int32_t *) dst->op_params + 8, sizeof(float));
  11748. memcpy(&beta_fast, (int32_t *) dst->op_params + 9, sizeof(float));
  11749. memcpy(&beta_slow, (int32_t *) dst->op_params + 10, sizeof(float));
  11750. GGML_TENSOR_UNARY_OP_LOCALS
  11751. //printf("ne0: %d, ne1: %d, ne2: %d, ne3: %d\n", ne0, ne1, ne2, ne3);
  11752. //printf("n_past = %d, ne2 = %d\n", n_past, ne2);
  11753. GGML_ASSERT(nb0 == sizeof(ggml_fp16_t));
  11754. const int ith = params->ith;
  11755. const int nth = params->nth;
  11756. const int nr = ggml_nrows(dst);
  11757. GGML_ASSERT(n_dims <= ne0);
  11758. GGML_ASSERT(n_dims % 2 == 0);
  11759. // rows per thread
  11760. const int dr = (nr + nth - 1)/nth;
  11761. // row range for this thread
  11762. const int ir0 = dr*ith;
  11763. const int ir1 = MIN(ir0 + dr, nr);
  11764. // row index used to determine which thread to use
  11765. int ir = 0;
  11766. const float theta_scale = powf(freq_base, -2.0f/n_dims);
  11767. float corr_dims[2];
  11768. ggml_rope_yarn_corr_dims(n_dims, n_ctx_orig, freq_base, beta_fast, beta_slow, corr_dims);
  11769. const bool is_neox = mode & 2;
  11770. const float * freq_factors = NULL;
  11771. if (src2 != NULL) {
  11772. GGML_ASSERT(src2->type == GGML_TYPE_F32);
  11773. GGML_ASSERT(src2->ne[0] >= n_dims / 2);
  11774. freq_factors = (const float *) src2->data;
  11775. }
  11776. // backward process uses inverse rotation by cos and sin.
  11777. // cos and sin build a rotation matrix, where the inverse is the transpose.
  11778. // this essentially just switches the sign of sin.
  11779. const float sin_sign = forward ? 1.0f : -1.0f;
  11780. const int32_t * pos = (const int32_t *) src1->data;
  11781. for (int64_t i3 = 0; i3 < ne3; i3++) {
  11782. for (int64_t i2 = 0; i2 < ne2; i2++) {
  11783. const int64_t p = pos[i2];
  11784. float * cache = (float *) params->wdata + (ne0 + CACHE_LINE_SIZE_F32)*ith;
  11785. ggml_rope_cache_init(p, freq_scale, freq_factors, corr_dims, ne0, ext_factor, attn_factor, cache, sin_sign, theta_scale);
  11786. for (int64_t i1 = 0; i1 < ne1; i1++) {
  11787. if (ir++ < ir0) continue;
  11788. if (ir > ir1) break;
  11789. if (!is_neox) {
  11790. for (int64_t i0 = 0; i0 < n_dims; i0 += 2) {
  11791. const float cos_theta = cache[i0 + 0];
  11792. const float sin_theta = cache[i0 + 1];
  11793. const ggml_fp16_t * const src = (ggml_fp16_t *)((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01 + i0*nb00);
  11794. ggml_fp16_t * dst_data = (ggml_fp16_t *)((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1 + i0*nb0);
  11795. const float x0 = GGML_FP16_TO_FP32(src[0]);
  11796. const float x1 = GGML_FP16_TO_FP32(src[1]);
  11797. dst_data[0] = GGML_FP32_TO_FP16(x0*cos_theta - x1*sin_theta);
  11798. dst_data[1] = GGML_FP32_TO_FP16(x0*sin_theta + x1*cos_theta);
  11799. }
  11800. } else {
  11801. for (int64_t i0 = 0; i0 < n_dims; i0 += 2) {
  11802. const int64_t ic = i0/2;
  11803. const float cos_theta = cache[i0 + 0];
  11804. const float sin_theta = cache[i0 + 1];
  11805. const ggml_fp16_t * const src = (ggml_fp16_t *)((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01 + ic*nb00);
  11806. ggml_fp16_t * dst_data = (ggml_fp16_t *)((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1 + ic*nb0);
  11807. const float x0 = GGML_FP16_TO_FP32(src[0]);
  11808. const float x1 = GGML_FP16_TO_FP32(src[n_dims/2]);
  11809. dst_data[0] = GGML_FP32_TO_FP16(x0*cos_theta - x1*sin_theta);
  11810. dst_data[n_dims/2] = GGML_FP32_TO_FP16(x0*sin_theta + x1*cos_theta);
  11811. }
  11812. }
  11813. for (int64_t i0 = n_dims; i0 < ne0; i0 += 2) {
  11814. const ggml_fp16_t * const src = (ggml_fp16_t *)((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01 + i0*nb00);
  11815. ggml_fp16_t * dst_data = (ggml_fp16_t *)((char *) dst->data + i3*nb3 + i2*nb2 + i1*nb1 + i0*nb0);
  11816. dst_data[0] = src[0];
  11817. dst_data[1] = src[1];
  11818. }
  11819. }
  11820. }
  11821. }
  11822. }
  11823. static void ggml_compute_forward_rope(
  11824. const struct ggml_compute_params * params,
  11825. struct ggml_tensor * dst) {
  11826. const struct ggml_tensor * src0 = dst->src[0];
  11827. switch (src0->type) {
  11828. case GGML_TYPE_F16:
  11829. {
  11830. ggml_compute_forward_rope_f16(params, dst, true);
  11831. } break;
  11832. case GGML_TYPE_F32:
  11833. {
  11834. ggml_compute_forward_rope_f32(params, dst, true);
  11835. } break;
  11836. default:
  11837. {
  11838. GGML_ASSERT(false);
  11839. } break;
  11840. }
  11841. }
  11842. // ggml_compute_forward_rope_back
  11843. static void ggml_compute_forward_rope_back(
  11844. const struct ggml_compute_params * params,
  11845. struct ggml_tensor * dst) {
  11846. const struct ggml_tensor * src0 = dst->src[0];
  11847. switch (src0->type) {
  11848. case GGML_TYPE_F16:
  11849. {
  11850. ggml_compute_forward_rope_f16(params, dst, false);
  11851. } break;
  11852. case GGML_TYPE_F32:
  11853. {
  11854. ggml_compute_forward_rope_f32(params, dst, false);
  11855. } break;
  11856. default:
  11857. {
  11858. GGML_ASSERT(false);
  11859. } break;
  11860. }
  11861. }
  11862. // ggml_compute_forward_conv_transpose_1d
  11863. static void ggml_compute_forward_conv_transpose_1d_f16_f32(
  11864. const struct ggml_compute_params * params,
  11865. struct ggml_tensor * dst) {
  11866. const struct ggml_tensor * src0 = dst->src[0];
  11867. const struct ggml_tensor * src1 = dst->src[1];
  11868. GGML_ASSERT(src0->type == GGML_TYPE_F16);
  11869. GGML_ASSERT(src1->type == GGML_TYPE_F32);
  11870. GGML_ASSERT( dst->type == GGML_TYPE_F32);
  11871. int64_t t0 = ggml_perf_time_us();
  11872. UNUSED(t0);
  11873. GGML_TENSOR_BINARY_OP_LOCALS
  11874. const int ith = params->ith;
  11875. const int nth = params->nth;
  11876. const int nk = ne00*ne01*ne02;
  11877. GGML_ASSERT(nb00 == sizeof(ggml_fp16_t));
  11878. GGML_ASSERT(nb10 == sizeof(float));
  11879. if (params->type == GGML_TASK_TYPE_INIT) {
  11880. if (ith != 0) {
  11881. return;
  11882. }
  11883. memset(params->wdata, 0, params->wsize);
  11884. // permute kernel data (src0) from (K x Cout x Cin) to (Cin x K x Cout)
  11885. {
  11886. ggml_fp16_t * const wdata = (ggml_fp16_t *) params->wdata + 0;
  11887. for (int64_t i02 = 0; i02 < ne02; i02++) {
  11888. for (int64_t i01 = 0; i01 < ne01; i01++) {
  11889. const ggml_fp16_t * const src = (ggml_fp16_t *)((char *) src0->data + i02*nb02 + i01*nb01);
  11890. ggml_fp16_t * dst_data = wdata + i01*ne00*ne02;
  11891. for (int64_t i00 = 0; i00 < ne00; i00++) {
  11892. dst_data[i00*ne02 + i02] = src[i00];
  11893. }
  11894. }
  11895. }
  11896. }
  11897. // permute source data (src1) from (L x Cin) to (Cin x L)
  11898. {
  11899. ggml_fp16_t * const wdata = (ggml_fp16_t *) params->wdata + nk;
  11900. ggml_fp16_t * dst_data = wdata;
  11901. for (int64_t i11 = 0; i11 < ne11; i11++) {
  11902. const float * const src = (float *)((char *) src1->data + i11*nb11);
  11903. for (int64_t i10 = 0; i10 < ne10; i10++) {
  11904. dst_data[i10*ne11 + i11] = GGML_FP32_TO_FP16(src[i10]);
  11905. }
  11906. }
  11907. }
  11908. // need to zero dst since we are accumulating into it
  11909. memset(dst->data, 0, ggml_nbytes(dst));
  11910. return;
  11911. }
  11912. if (params->type == GGML_TASK_TYPE_FINALIZE) {
  11913. return;
  11914. }
  11915. const int32_t s0 = ((const int32_t*)(dst->op_params))[0];
  11916. // total rows in dst
  11917. const int nr = ne1;
  11918. // rows per thread
  11919. const int dr = (nr + nth - 1)/nth;
  11920. // row range for this thread
  11921. const int ir0 = dr*ith;
  11922. const int ir1 = MIN(ir0 + dr, nr);
  11923. ggml_fp16_t * const wdata = (ggml_fp16_t *) params->wdata + 0;
  11924. ggml_fp16_t * const wdata_src = wdata + nk;
  11925. for (int i1 = ir0; i1 < ir1; i1++) {
  11926. float * dst_data = (float *)((char *) dst->data + i1*nb1);
  11927. ggml_fp16_t * wdata_kernel = wdata + i1*ne02*ne00;
  11928. for (int i10 = 0; i10 < ne10; i10++) {
  11929. const int i1n = i10*ne11;
  11930. for (int i00 = 0; i00 < ne00; i00++) {
  11931. float v = 0;
  11932. ggml_vec_dot_f16(ne02, &v, 0,
  11933. (ggml_fp16_t *) wdata_src + i1n, 0,
  11934. (ggml_fp16_t *) wdata_kernel + i00*ne02, 0, 1);
  11935. dst_data[i10*s0 + i00] += v;
  11936. }
  11937. }
  11938. }
  11939. }
  11940. static void ggml_compute_forward_conv_transpose_1d_f32(
  11941. const struct ggml_compute_params * params,
  11942. struct ggml_tensor * dst) {
  11943. const struct ggml_tensor * src0 = dst->src[0];
  11944. const struct ggml_tensor * src1 = dst->src[1];
  11945. GGML_ASSERT(src0->type == GGML_TYPE_F32);
  11946. GGML_ASSERT(src1->type == GGML_TYPE_F32);
  11947. GGML_ASSERT( dst->type == GGML_TYPE_F32);
  11948. int64_t t0 = ggml_perf_time_us();
  11949. UNUSED(t0);
  11950. GGML_TENSOR_BINARY_OP_LOCALS
  11951. const int ith = params->ith;
  11952. const int nth = params->nth;
  11953. const int nk = ne00*ne01*ne02;
  11954. GGML_ASSERT(nb00 == sizeof(float));
  11955. GGML_ASSERT(nb10 == sizeof(float));
  11956. if (params->type == GGML_TASK_TYPE_INIT) {
  11957. if (ith != 0) {
  11958. return;
  11959. }
  11960. memset(params->wdata, 0, params->wsize);
  11961. // prepare kernel data (src0) from (K x Cout x Cin) to (Cin x K x Cout)
  11962. {
  11963. float * const wdata = (float *) params->wdata + 0;
  11964. for (int64_t i02 = 0; i02 < ne02; i02++) {
  11965. for (int64_t i01 = 0; i01 < ne01; i01++) {
  11966. const float * const src = (float *)((char *) src0->data + i02*nb02 + i01*nb01);
  11967. float * dst_data = wdata + i01*ne00*ne02;
  11968. for (int64_t i00 = 0; i00 < ne00; i00++) {
  11969. dst_data[i00*ne02 + i02] = src[i00];
  11970. }
  11971. }
  11972. }
  11973. }
  11974. // prepare source data (src1)
  11975. {
  11976. float * const wdata = (float *) params->wdata + nk;
  11977. float * dst_data = wdata;
  11978. for (int64_t i11 = 0; i11 < ne11; i11++) {
  11979. const float * const src = (float *)((char *) src1->data + i11*nb11);
  11980. for (int64_t i10 = 0; i10 < ne10; i10++) {
  11981. dst_data[i10*ne11 + i11] = src[i10];
  11982. }
  11983. }
  11984. }
  11985. // need to zero dst since we are accumulating into it
  11986. memset(dst->data, 0, ggml_nbytes(dst));
  11987. return;
  11988. }
  11989. if (params->type == GGML_TASK_TYPE_FINALIZE) {
  11990. return;
  11991. }
  11992. const int32_t s0 = ((const int32_t*)(dst->op_params))[0];
  11993. // total rows in dst
  11994. const int nr = ne1;
  11995. // rows per thread
  11996. const int dr = (nr + nth - 1)/nth;
  11997. // row range for this thread
  11998. const int ir0 = dr*ith;
  11999. const int ir1 = MIN(ir0 + dr, nr);
  12000. float * const wdata = (float *) params->wdata + 0;
  12001. float * const wdata_src = wdata + nk;
  12002. for (int i1 = ir0; i1 < ir1; i1++) {
  12003. float * dst_data = (float *)((char *) dst->data + i1*nb1);
  12004. float * wdata_kernel = wdata + i1*ne02*ne00;
  12005. for (int i10 = 0; i10 < ne10; i10++) {
  12006. const int i1n = i10*ne11;
  12007. for (int i00 = 0; i00 < ne00; i00++) {
  12008. float v = 0;
  12009. ggml_vec_dot_f32(ne02, &v, 0,
  12010. wdata_src + i1n, 0,
  12011. wdata_kernel + i00*ne02, 0, 1);
  12012. dst_data[i10*s0 + i00] += v;
  12013. }
  12014. }
  12015. }
  12016. }
  12017. static void ggml_compute_forward_conv_transpose_1d(
  12018. const struct ggml_compute_params * params,
  12019. struct ggml_tensor * dst) {
  12020. const struct ggml_tensor * src0 = dst->src[0];
  12021. switch (src0->type) {
  12022. case GGML_TYPE_F16:
  12023. {
  12024. ggml_compute_forward_conv_transpose_1d_f16_f32(params, dst);
  12025. } break;
  12026. case GGML_TYPE_F32:
  12027. {
  12028. ggml_compute_forward_conv_transpose_1d_f32(params, dst);
  12029. } break;
  12030. default:
  12031. {
  12032. GGML_ASSERT(false);
  12033. } break;
  12034. }
  12035. }
  12036. // src0: kernel [OC, IC, KH, KW]
  12037. // src1: image [N, IC, IH, IW]
  12038. // dst: result [N, OH, OW, IC*KH*KW]
  12039. static void ggml_compute_forward_im2col_f32(
  12040. const struct ggml_compute_params * params,
  12041. struct ggml_tensor * dst) {
  12042. const struct ggml_tensor * src0 = dst->src[0];
  12043. const struct ggml_tensor * src1 = dst->src[1];
  12044. GGML_ASSERT(src0->type == GGML_TYPE_F16);
  12045. GGML_ASSERT(src1->type == GGML_TYPE_F32);
  12046. GGML_ASSERT( dst->type == GGML_TYPE_F32);
  12047. int64_t t0 = ggml_perf_time_us();
  12048. UNUSED(t0);
  12049. GGML_TENSOR_BINARY_OP_LOCALS;
  12050. const int32_t s0 = ((const int32_t *)(dst->op_params))[0];
  12051. const int32_t s1 = ((const int32_t *)(dst->op_params))[1];
  12052. const int32_t p0 = ((const int32_t *)(dst->op_params))[2];
  12053. const int32_t p1 = ((const int32_t *)(dst->op_params))[3];
  12054. const int32_t d0 = ((const int32_t *)(dst->op_params))[4];
  12055. const int32_t d1 = ((const int32_t *)(dst->op_params))[5];
  12056. const bool is_2D = ((const int32_t *)(dst->op_params))[6] == 1;
  12057. const int ith = params->ith;
  12058. const int nth = params->nth;
  12059. const int64_t N = is_2D ? ne13 : ne12;
  12060. const int64_t IC = is_2D ? ne12 : ne11;
  12061. const int64_t IH = is_2D ? ne11 : 1;
  12062. const int64_t IW = ne10;
  12063. const int64_t KH = is_2D ? ne01 : 1;
  12064. const int64_t KW = ne00;
  12065. const int64_t OH = is_2D ? ne2 : 1;
  12066. const int64_t OW = ne1;
  12067. int ofs0 = is_2D ? nb13 : nb12;
  12068. int ofs1 = is_2D ? nb12 : nb11;
  12069. GGML_ASSERT(nb00 == sizeof(ggml_fp16_t));
  12070. GGML_ASSERT(nb10 == sizeof(float));
  12071. if (params->type == GGML_TASK_TYPE_INIT) {
  12072. return;
  12073. }
  12074. if (params->type == GGML_TASK_TYPE_FINALIZE) {
  12075. return;
  12076. }
  12077. // im2col: [N, IC, IH, IW] => [N, OH, OW, IC*KH*KW]
  12078. {
  12079. float * const wdata = (float *) dst->data;
  12080. for (int64_t in = 0; in < N; in++) {
  12081. for (int64_t ioh = 0; ioh < OH; ioh++) { // 1
  12082. for (int64_t iow = 0; iow < OW; iow++) {
  12083. for (int64_t iic = ith; iic < IC; iic += nth) {
  12084. // micro kernel
  12085. float * dst_data = wdata + (in*OH*OW + ioh*OW + iow)*(IC*KH*KW); // [IC, KH, KW]
  12086. const float * const src_data = (float *)((char *) src1->data + in*ofs0 + iic*ofs1); // [IH, IW]
  12087. for (int64_t ikh = 0; ikh < KH; ikh++) { // 1
  12088. for (int64_t ikw = 0; ikw < KW; ikw++) {
  12089. const int64_t iiw = iow*s0 + ikw*d0 - p0;
  12090. const int64_t iih = ioh*s1 + ikh*d1 - p1;
  12091. if (iih < 0 || iih >= IH || iiw < 0 || iiw >= IW) {
  12092. dst_data[iic*(KH*KW) + ikh*KW + ikw] = 0;
  12093. } else {
  12094. dst_data[iic*(KH*KW) + ikh*KW + ikw] = (src_data[iih*IW + iiw]);
  12095. }
  12096. }
  12097. }
  12098. }
  12099. }
  12100. }
  12101. }
  12102. }
  12103. }
  12104. // src0: kernel [OC, IC, KH, KW]
  12105. // src1: image [N, IC, IH, IW]
  12106. // dst: result [N, OH, OW, IC*KH*KW]
  12107. static void ggml_compute_forward_im2col_f16(
  12108. const struct ggml_compute_params * params,
  12109. struct ggml_tensor * dst) {
  12110. const struct ggml_tensor * src0 = dst->src[0];
  12111. const struct ggml_tensor * src1 = dst->src[1];
  12112. GGML_ASSERT(src0->type == GGML_TYPE_F16);
  12113. GGML_ASSERT(src1->type == GGML_TYPE_F32);
  12114. GGML_ASSERT( dst->type == GGML_TYPE_F16);
  12115. int64_t t0 = ggml_perf_time_us();
  12116. UNUSED(t0);
  12117. GGML_TENSOR_BINARY_OP_LOCALS;
  12118. const int32_t s0 = ((const int32_t *)(dst->op_params))[0];
  12119. const int32_t s1 = ((const int32_t *)(dst->op_params))[1];
  12120. const int32_t p0 = ((const int32_t *)(dst->op_params))[2];
  12121. const int32_t p1 = ((const int32_t *)(dst->op_params))[3];
  12122. const int32_t d0 = ((const int32_t *)(dst->op_params))[4];
  12123. const int32_t d1 = ((const int32_t *)(dst->op_params))[5];
  12124. const bool is_2D = ((const int32_t *)(dst->op_params))[6] == 1;
  12125. const int ith = params->ith;
  12126. const int nth = params->nth;
  12127. const int64_t N = is_2D ? ne13 : ne12;
  12128. const int64_t IC = is_2D ? ne12 : ne11;
  12129. const int64_t IH = is_2D ? ne11 : 1;
  12130. const int64_t IW = ne10;
  12131. const int64_t KH = is_2D ? ne01 : 1;
  12132. const int64_t KW = ne00;
  12133. const int64_t OH = is_2D ? ne2 : 1;
  12134. const int64_t OW = ne1;
  12135. int ofs0 = is_2D ? nb13 : nb12;
  12136. int ofs1 = is_2D ? nb12 : nb11;
  12137. GGML_ASSERT(nb00 == sizeof(ggml_fp16_t));
  12138. GGML_ASSERT(nb10 == sizeof(float));
  12139. if (params->type == GGML_TASK_TYPE_INIT) {
  12140. return;
  12141. }
  12142. if (params->type == GGML_TASK_TYPE_FINALIZE) {
  12143. return;
  12144. }
  12145. // im2col: [N, IC, IH, IW] => [N, OH, OW, IC*KH*KW]
  12146. {
  12147. ggml_fp16_t * const wdata = (ggml_fp16_t *) dst->data;
  12148. for (int64_t in = 0; in < N; in++) {
  12149. for (int64_t ioh = 0; ioh < OH; ioh++) { // 1
  12150. for (int64_t iow = 0; iow < OW; iow++) {
  12151. for (int64_t iic = ith; iic < IC; iic += nth) {
  12152. // micro kernel
  12153. ggml_fp16_t * dst_data = wdata + (in*OH*OW + ioh*OW + iow)*(IC*KH*KW); // [IC, KH, KW]
  12154. const float * const src_data = (float *)((char *) src1->data + in*ofs0 + iic*ofs1); // [IH, IW]
  12155. for (int64_t ikh = 0; ikh < KH; ikh++) { // 1
  12156. for (int64_t ikw = 0; ikw < KW; ikw++) {
  12157. const int64_t iiw = iow*s0 + ikw*d0 - p0;
  12158. const int64_t iih = ioh*s1 + ikh*d1 - p1;
  12159. if (iih < 0 || iih >= IH || iiw < 0 || iiw >= IW) {
  12160. dst_data[iic*(KH*KW) + ikh*KW + ikw] = 0;
  12161. } else {
  12162. dst_data[iic*(KH*KW) + ikh*KW + ikw] = GGML_FP32_TO_FP16(src_data[iih*IW + iiw]);
  12163. }
  12164. }
  12165. }
  12166. }
  12167. }
  12168. }
  12169. }
  12170. }
  12171. }
  12172. static void ggml_compute_forward_im2col(
  12173. const struct ggml_compute_params * params,
  12174. struct ggml_tensor * dst) {
  12175. switch (dst->type) {
  12176. case GGML_TYPE_F16:
  12177. {
  12178. ggml_compute_forward_im2col_f16(params, dst);
  12179. } break;
  12180. case GGML_TYPE_F32:
  12181. {
  12182. ggml_compute_forward_im2col_f32(params, dst);
  12183. } break;
  12184. default:
  12185. {
  12186. GGML_ASSERT(false);
  12187. } break;
  12188. }
  12189. }
  12190. // ggml_compute_forward_conv_transpose_2d
  12191. static void ggml_compute_forward_conv_transpose_2d(
  12192. const struct ggml_compute_params * params,
  12193. struct ggml_tensor * dst) {
  12194. const struct ggml_tensor * src0 = dst->src[0];
  12195. const struct ggml_tensor * src1 = dst->src[1];
  12196. GGML_ASSERT(src0->type == GGML_TYPE_F16);
  12197. GGML_ASSERT(src1->type == GGML_TYPE_F32);
  12198. GGML_ASSERT( dst->type == GGML_TYPE_F32);
  12199. int64_t t0 = ggml_perf_time_us();
  12200. UNUSED(t0);
  12201. GGML_TENSOR_BINARY_OP_LOCALS
  12202. const int ith = params->ith;
  12203. const int nth = params->nth;
  12204. const int nk = ne00*ne01*ne02*ne03;
  12205. GGML_ASSERT(nb00 == sizeof(ggml_fp16_t));
  12206. GGML_ASSERT(nb10 == sizeof(float));
  12207. if (params->type == GGML_TASK_TYPE_INIT) {
  12208. if (ith != 0) {
  12209. return;
  12210. }
  12211. memset(params->wdata, 0, params->wsize);
  12212. // permute kernel data (src0) from (Kw x Kh x Cout x Cin) to (Cin x Kw x Kh x Cout)
  12213. {
  12214. ggml_fp16_t * const wdata = (ggml_fp16_t *) params->wdata + 0;
  12215. for (int64_t i03 = 0; i03 < ne03; i03++) {
  12216. for (int64_t i02 = 0; i02 < ne02; i02++) {
  12217. const ggml_fp16_t * const src = (ggml_fp16_t *)((char *) src0->data + i03*nb03 + i02*nb02);
  12218. ggml_fp16_t * dst_data = wdata + i02*ne01*ne00*ne03;
  12219. for (int64_t i01 = 0; i01 < ne01; i01++) {
  12220. for (int64_t i00 = 0; i00 < ne00; i00++) {
  12221. dst_data[i01*ne00*ne03 + i00*ne03 + i03] = src[i01 * ne00 + i00];
  12222. }
  12223. }
  12224. }
  12225. }
  12226. }
  12227. // permute source data (src1) from (Sw x Sh x Cin) to (Cin x Sw x Sh)
  12228. {
  12229. ggml_fp16_t * const wdata = (ggml_fp16_t *) params->wdata + nk;
  12230. for (int i12 = 0; i12 < ne12; i12++) {
  12231. for (int i11 = 0; i11 < ne11; i11++) {
  12232. const float * const src = (float *)((char *) src1->data + i12*nb12 + i11*nb11);
  12233. ggml_fp16_t * dst_data = wdata + i11*ne10*ne12;
  12234. for (int i10 = 0; i10 < ne10; i10++) {
  12235. dst_data[i10*ne12 + i12] = GGML_FP32_TO_FP16(src[i10]);
  12236. }
  12237. }
  12238. }
  12239. }
  12240. memset(dst->data, 0, ggml_nbytes(dst));
  12241. return;
  12242. }
  12243. if (params->type == GGML_TASK_TYPE_FINALIZE) {
  12244. return;
  12245. }
  12246. const int32_t stride = ggml_get_op_params_i32(dst, 0);
  12247. // total patches in dst
  12248. const int np = ne2;
  12249. // patches per thread
  12250. const int dp = (np + nth - 1)/nth;
  12251. // patch range for this thread
  12252. const int ip0 = dp*ith;
  12253. const int ip1 = MIN(ip0 + dp, np);
  12254. ggml_fp16_t * const wdata = (ggml_fp16_t *) params->wdata + 0;
  12255. ggml_fp16_t * const wdata_src = wdata + nk;
  12256. for (int i2 = ip0; i2 < ip1; i2++) { // Cout
  12257. float * dst_data = (float *)((char *) dst->data + i2*nb2);
  12258. ggml_fp16_t * wdata_kernel = wdata + i2*ne01*ne00*ne03;
  12259. for (int i11 = 0; i11 < ne11; i11++) {
  12260. for (int i10 = 0; i10 < ne10; i10++) {
  12261. const int i1n = i11*ne10*ne12 + i10*ne12;
  12262. for (int i01 = 0; i01 < ne01; i01++) {
  12263. for (int i00 = 0; i00 < ne00; i00++) {
  12264. float v = 0;
  12265. ggml_vec_dot_f16(ne03, &v, 0,
  12266. wdata_src + i1n, 0,
  12267. wdata_kernel + i01*ne00*ne03 + i00*ne03, 0, 1);
  12268. dst_data[(i11*stride + i01)*ne0 + i10*stride + i00] += v;
  12269. }
  12270. }
  12271. }
  12272. }
  12273. }
  12274. }
  12275. // ggml_compute_forward_pool_1d_sk_p0
  12276. static void ggml_compute_forward_pool_1d_sk_p0(
  12277. const struct ggml_compute_params * params,
  12278. const enum ggml_op_pool op,
  12279. const int k,
  12280. struct ggml_tensor * dst) {
  12281. const struct ggml_tensor * src = dst->src[0];
  12282. assert(src->type == GGML_TYPE_F32);
  12283. assert(params->ith == 0);
  12284. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  12285. return;
  12286. }
  12287. const char * cdata = (const char *)src->data;
  12288. const char * const data_end = cdata + ggml_nbytes(src);
  12289. float * drow = (float *)dst->data;
  12290. const int64_t rs = dst->ne[0];
  12291. while (cdata < data_end) {
  12292. const float * const srow = (const float *)cdata;
  12293. int j = 0;
  12294. for (int64_t i = 0; i < rs; ++i) {
  12295. switch (op) {
  12296. case GGML_OP_POOL_AVG: drow[i] = 0; break;
  12297. case GGML_OP_POOL_MAX: drow[i] = -FLT_MAX; break;
  12298. case GGML_OP_POOL_COUNT: GGML_ASSERT(false); break;
  12299. }
  12300. for (int ki = 0; ki < k; ++ki) {
  12301. switch (op) {
  12302. case GGML_OP_POOL_AVG: drow[i] += srow[j]; break;
  12303. case GGML_OP_POOL_MAX: if (srow[j] > drow[i]) drow[i] = srow[j]; break;
  12304. case GGML_OP_POOL_COUNT: GGML_ASSERT(false); break;
  12305. }
  12306. ++j;
  12307. }
  12308. switch (op) {
  12309. case GGML_OP_POOL_AVG: drow[i] /= k; break;
  12310. case GGML_OP_POOL_MAX: break;
  12311. case GGML_OP_POOL_COUNT: GGML_ASSERT(false); break;
  12312. }
  12313. }
  12314. cdata += src->nb[1];
  12315. drow += rs;
  12316. }
  12317. }
  12318. // ggml_compute_forward_pool_1d
  12319. static void ggml_compute_forward_pool_1d(
  12320. const struct ggml_compute_params * params,
  12321. struct ggml_tensor * dst) {
  12322. const int32_t * opts = (const int32_t *)dst->op_params;
  12323. enum ggml_op_pool op = opts[0];
  12324. const int k0 = opts[1];
  12325. const int s0 = opts[2];
  12326. const int p0 = opts[3];
  12327. GGML_ASSERT(p0 == 0); // padding not supported
  12328. GGML_ASSERT(k0 == s0); // only s = k supported
  12329. ggml_compute_forward_pool_1d_sk_p0(params, op, k0, dst);
  12330. }
  12331. // ggml_compute_forward_pool_2d
  12332. static void ggml_compute_forward_pool_2d(
  12333. const struct ggml_compute_params * params,
  12334. struct ggml_tensor * dst) {
  12335. const struct ggml_tensor * src = dst->src[0];
  12336. GGML_ASSERT(src->type == GGML_TYPE_F32);
  12337. GGML_ASSERT(params->ith == 0);
  12338. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  12339. return;
  12340. }
  12341. const int32_t * opts = (const int32_t *)dst->op_params;
  12342. enum ggml_op_pool op = opts[0];
  12343. const int k0 = opts[1];
  12344. const int k1 = opts[2];
  12345. const int s0 = opts[3];
  12346. const int s1 = opts[4];
  12347. const int p0 = opts[5];
  12348. const int p1 = opts[6];
  12349. const char * cdata = (const char*)src->data;
  12350. const char * const data_end = cdata + ggml_nbytes(src);
  12351. const int64_t px = dst->ne[0];
  12352. const int64_t py = dst->ne[1];
  12353. const int64_t pa = px * py;
  12354. float * dplane = (float *)dst->data;
  12355. const int ka = k0 * k1;
  12356. const int offset0 = -p0;
  12357. const int offset1 = -p1;
  12358. while (cdata < data_end) {
  12359. for (int oy = 0; oy < py; ++oy) {
  12360. float * const drow = dplane + oy * px;
  12361. for (int ox = 0; ox < px; ++ox) {
  12362. float * const out = drow + ox;
  12363. switch (op) {
  12364. case GGML_OP_POOL_AVG: *out = 0; break;
  12365. case GGML_OP_POOL_MAX: *out = -FLT_MAX; break;
  12366. case GGML_OP_POOL_COUNT: GGML_ASSERT(false); break;
  12367. }
  12368. const int ix = offset0 + ox * s0;
  12369. const int iy = offset1 + oy * s1;
  12370. for (int ky = 0; ky < k1; ++ky) {
  12371. if (iy + ky < 0 || iy + ky >= src->ne[1]) continue;
  12372. const float * const srow = (const float *)(cdata + src->nb[1] * (iy + ky));
  12373. for (int kx = 0; kx < k0; ++kx) {
  12374. int j = ix + kx;
  12375. if (j < 0 || j >= src->ne[0]) continue;
  12376. switch (op) {
  12377. case GGML_OP_POOL_AVG: *out += srow[j]; break;
  12378. case GGML_OP_POOL_MAX: if (srow[j] > *out) *out = srow[j]; break;
  12379. case GGML_OP_POOL_COUNT: GGML_ASSERT(false); break;
  12380. }
  12381. }
  12382. }
  12383. switch (op) {
  12384. case GGML_OP_POOL_AVG: *out /= ka; break;
  12385. case GGML_OP_POOL_MAX: break;
  12386. case GGML_OP_POOL_COUNT: GGML_ASSERT(false); break;
  12387. }
  12388. }
  12389. }
  12390. cdata += src->nb[2];
  12391. dplane += pa;
  12392. }
  12393. }
  12394. // ggml_compute_forward_upscale
  12395. static void ggml_compute_forward_upscale_f32(
  12396. const struct ggml_compute_params * params,
  12397. struct ggml_tensor * dst) {
  12398. const struct ggml_tensor * src0 = dst->src[0];
  12399. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  12400. return;
  12401. }
  12402. GGML_ASSERT(src0->type == GGML_TYPE_F32);
  12403. const int ith = params->ith;
  12404. const int nth = params->nth;
  12405. GGML_TENSOR_UNARY_OP_LOCALS
  12406. const float sf0 = (float)ne0/src0->ne[0];
  12407. const float sf1 = (float)ne1/src0->ne[1];
  12408. const float sf2 = (float)ne2/src0->ne[2];
  12409. const float sf3 = (float)ne3/src0->ne[3];
  12410. // TODO: optimize
  12411. for (int64_t i3 = 0; i3 < ne3; i3++) {
  12412. const int64_t i03 = i3 / sf3;
  12413. for (int64_t i2 = ith; i2 < ne2; i2 += nth) {
  12414. const int64_t i02 = i2 / sf2;
  12415. for (int64_t i1 = 0; i1 < ne1; i1++) {
  12416. const int64_t i01 = i1 / sf1;
  12417. for (int64_t i0 = 0; i0 < ne0; i0++) {
  12418. const int64_t i00 = i0 / sf0;
  12419. const float * x = (float *)((char *) src0->data + i00*nb00 + i01*nb01 + i02*nb02 + i03*nb03);
  12420. float * y = (float *)((char *) dst->data + i0*nb0 + i1*nb1 + i2*nb2 + i3*nb3);
  12421. *y = *x;
  12422. }
  12423. }
  12424. }
  12425. }
  12426. }
  12427. static void ggml_compute_forward_upscale(
  12428. const struct ggml_compute_params * params,
  12429. struct ggml_tensor * dst) {
  12430. const struct ggml_tensor * src0 = dst->src[0];
  12431. switch (src0->type) {
  12432. case GGML_TYPE_F32:
  12433. {
  12434. ggml_compute_forward_upscale_f32(params, dst);
  12435. } break;
  12436. default:
  12437. {
  12438. GGML_ASSERT(false);
  12439. } break;
  12440. }
  12441. }
  12442. // ggml_compute_forward_pad
  12443. static void ggml_compute_forward_pad_f32(
  12444. const struct ggml_compute_params * params,
  12445. struct ggml_tensor * dst) {
  12446. const struct ggml_tensor * src0 = dst->src[0];
  12447. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  12448. return;
  12449. }
  12450. GGML_ASSERT(src0->nb[0] == sizeof(float));
  12451. GGML_ASSERT( dst->nb[0] == sizeof(float));
  12452. const int ith = params->ith;
  12453. const int nth = params->nth;
  12454. GGML_TENSOR_UNARY_OP_LOCALS
  12455. float * dst_ptr = (float *) dst->data;
  12456. // TODO: optimize
  12457. for (int64_t i2 = 0; i2 < ne2; ++i2) {
  12458. for (int64_t i1 = ith; i1 < ne1; i1 += nth) {
  12459. for (int64_t i0 = 0; i0 < ne0; ++i0) {
  12460. for (int64_t i3 = 0; i3 < ne3; ++i3) {
  12461. const int64_t dst_idx = i3*(ne0*ne1*ne2) + i2*(ne0*ne1) + i1*ne0 + i0;
  12462. const float * src_ptr = (const float *)((char *) src0->data + i3*nb03 + i2*nb02 + i1*nb01 + i0*nb00);
  12463. if (i0 < ne00 && i1 < ne01 && i2 < ne02 && i3 < ne03) {
  12464. dst_ptr[dst_idx] = *src_ptr;
  12465. } else {
  12466. dst_ptr[dst_idx] = 0;
  12467. }
  12468. }
  12469. }
  12470. }
  12471. }
  12472. }
  12473. static void ggml_compute_forward_pad(
  12474. const struct ggml_compute_params * params,
  12475. struct ggml_tensor * dst) {
  12476. const struct ggml_tensor * src0 = dst->src[0];
  12477. switch (src0->type) {
  12478. case GGML_TYPE_F32:
  12479. {
  12480. ggml_compute_forward_pad_f32(params, dst);
  12481. } break;
  12482. default:
  12483. {
  12484. GGML_ASSERT(false);
  12485. } break;
  12486. }
  12487. }
  12488. // ggml_compute_forward_arange
  12489. static void ggml_compute_forward_arange_f32(
  12490. const struct ggml_compute_params * params,
  12491. struct ggml_tensor * dst) {
  12492. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  12493. return;
  12494. }
  12495. GGML_ASSERT(dst->nb[0] == sizeof(float));
  12496. const int ith = params->ith;
  12497. const int nth = params->nth;
  12498. const float start = ggml_get_op_params_f32(dst, 0);
  12499. const float stop = ggml_get_op_params_f32(dst, 1);
  12500. const float step = ggml_get_op_params_f32(dst, 2);
  12501. const int64_t steps = (int64_t) ceilf((stop - start) / step);
  12502. GGML_ASSERT(ggml_nelements(dst) == steps);
  12503. for (int64_t i = ith; i < steps; i+= nth) {
  12504. float value = start + step * i;
  12505. ((float *)dst->data)[i] = value;
  12506. }
  12507. }
  12508. static void ggml_compute_forward_arange(
  12509. const struct ggml_compute_params * params,
  12510. struct ggml_tensor * dst) {
  12511. switch (dst->type) {
  12512. case GGML_TYPE_F32:
  12513. {
  12514. ggml_compute_forward_arange_f32(params, dst);
  12515. } break;
  12516. default:
  12517. {
  12518. GGML_ASSERT(false);
  12519. } break;
  12520. }
  12521. }
  12522. static void ggml_compute_forward_timestep_embedding_f32(
  12523. const struct ggml_compute_params * params,
  12524. struct ggml_tensor * dst) {
  12525. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  12526. return;
  12527. }
  12528. const struct ggml_tensor * src0 = dst->src[0];
  12529. GGML_ASSERT(src0->nb[0] == sizeof(float));
  12530. const int ith = params->ith;
  12531. const int nth = params->nth;
  12532. GGML_TENSOR_UNARY_OP_LOCALS
  12533. const int dim = ggml_get_op_params_i32(dst, 0);
  12534. const int max_period = ggml_get_op_params_i32(dst, 1);
  12535. int half = dim / 2;
  12536. for (int64_t i = 0; i < ne00; i++) {
  12537. float * embed_data = (float *)((char *) dst->data + i*nb1);
  12538. for (int64_t j = ith; j < half; j += nth) {
  12539. float timestep = ((float *)src0->data)[i];
  12540. float freq = (float)expf(-logf(max_period) * j / half);
  12541. float arg = timestep * freq;
  12542. embed_data[j] = cosf(arg);
  12543. embed_data[j + half] = sinf(arg);
  12544. }
  12545. if (dim % 2 != 0 && ith == 0) {
  12546. embed_data[dim] = 0.f;
  12547. }
  12548. }
  12549. }
  12550. static void ggml_compute_forward_timestep_embedding(
  12551. const struct ggml_compute_params * params,
  12552. struct ggml_tensor * dst) {
  12553. const struct ggml_tensor * src0 = dst->src[0];
  12554. switch (src0->type) {
  12555. case GGML_TYPE_F32:
  12556. {
  12557. ggml_compute_forward_timestep_embedding_f32(params, dst);
  12558. } break;
  12559. default:
  12560. {
  12561. GGML_ASSERT(false);
  12562. } break;
  12563. }
  12564. }
  12565. // ggml_compute_forward_argsort
  12566. static void ggml_compute_forward_argsort_f32(
  12567. const struct ggml_compute_params * params,
  12568. struct ggml_tensor * dst) {
  12569. const struct ggml_tensor * src0 = dst->src[0];
  12570. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  12571. return;
  12572. }
  12573. GGML_TENSOR_UNARY_OP_LOCALS
  12574. GGML_ASSERT(nb0 == sizeof(float));
  12575. const int ith = params->ith;
  12576. const int nth = params->nth;
  12577. const int64_t nr = ggml_nrows(src0);
  12578. enum ggml_sort_order order = (enum ggml_sort_order) ggml_get_op_params_i32(dst, 0);
  12579. for (int64_t i = ith; i < nr; i += nth) {
  12580. int32_t * dst_data = (int32_t *)((char *) dst->data + i*nb1);
  12581. const float * src_data = (float *)((char *) src0->data + i*nb01);
  12582. for (int64_t j = 0; j < ne0; j++) {
  12583. dst_data[j] = j;
  12584. }
  12585. // C doesn't have a functional sort, so we do a bubble sort instead
  12586. for (int64_t j = 0; j < ne0; j++) {
  12587. for (int64_t k = j + 1; k < ne0; k++) {
  12588. if ((order == GGML_SORT_ORDER_ASC && src_data[dst_data[j]] > src_data[dst_data[k]]) ||
  12589. (order == GGML_SORT_ORDER_DESC && src_data[dst_data[j]] < src_data[dst_data[k]])) {
  12590. int32_t tmp = dst_data[j];
  12591. dst_data[j] = dst_data[k];
  12592. dst_data[k] = tmp;
  12593. }
  12594. }
  12595. }
  12596. }
  12597. }
  12598. static void ggml_compute_forward_argsort(
  12599. const struct ggml_compute_params * params,
  12600. struct ggml_tensor * dst) {
  12601. const struct ggml_tensor * src0 = dst->src[0];
  12602. switch (src0->type) {
  12603. case GGML_TYPE_F32:
  12604. {
  12605. ggml_compute_forward_argsort_f32(params, dst);
  12606. } break;
  12607. default:
  12608. {
  12609. GGML_ASSERT(false);
  12610. } break;
  12611. }
  12612. }
  12613. // ggml_compute_forward_flash_attn_ext
  12614. static void ggml_compute_forward_flash_attn_ext_f16(
  12615. const struct ggml_compute_params * params,
  12616. const struct ggml_tensor * q,
  12617. const struct ggml_tensor * k,
  12618. const struct ggml_tensor * v,
  12619. const struct ggml_tensor * mask,
  12620. struct ggml_tensor * dst) {
  12621. int64_t t0 = ggml_perf_time_us();
  12622. UNUSED(t0);
  12623. GGML_TENSOR_LOCALS(int64_t, neq, q, ne)
  12624. GGML_TENSOR_LOCALS(size_t, nbq, q, nb)
  12625. GGML_TENSOR_LOCALS(int64_t, nek, k, ne)
  12626. GGML_TENSOR_LOCALS(size_t, nbk, k, nb)
  12627. GGML_TENSOR_LOCALS(int64_t, nev, v, ne)
  12628. GGML_TENSOR_LOCALS(size_t, nbv, v, nb)
  12629. GGML_TENSOR_LOCALS(int64_t, ne, dst, ne)
  12630. GGML_TENSOR_LOCALS(size_t, nb, dst, nb)
  12631. const int ith = params->ith;
  12632. const int nth = params->nth;
  12633. const int64_t D = neq0;
  12634. const int64_t N = neq1;
  12635. GGML_ASSERT(ne0 == D);
  12636. GGML_ASSERT(ne2 == N);
  12637. // input tensor rows must be contiguous
  12638. GGML_ASSERT(nbq0 == ggml_type_size(q->type));
  12639. GGML_ASSERT(nbk0 == ggml_type_size(k->type));
  12640. GGML_ASSERT(nbv0 == ggml_type_size(v->type));
  12641. GGML_ASSERT(neq0 == D);
  12642. GGML_ASSERT(nek0 == D);
  12643. GGML_ASSERT(nev0 == D);
  12644. GGML_ASSERT(neq1 == N);
  12645. GGML_ASSERT(nev0 == D);
  12646. // dst cannot be transposed or permuted
  12647. GGML_ASSERT(nb0 == sizeof(float));
  12648. GGML_ASSERT(nb0 <= nb1);
  12649. GGML_ASSERT(nb1 <= nb2);
  12650. GGML_ASSERT(nb2 <= nb3);
  12651. // broadcast factors
  12652. const int64_t rk2 = neq2/nek2;
  12653. const int64_t rk3 = neq3/nek3;
  12654. const int64_t rv2 = neq2/nev2;
  12655. const int64_t rv3 = neq3/nev3;
  12656. if (params->type == GGML_TASK_TYPE_INIT) {
  12657. return;
  12658. }
  12659. if (params->type == GGML_TASK_TYPE_FINALIZE) {
  12660. return;
  12661. }
  12662. // parallelize by q rows using ggml_vec_dot_f32
  12663. // total rows in q
  12664. const int nr = neq1*neq2*neq3;
  12665. // rows per thread
  12666. const int dr = (nr + nth - 1)/nth;
  12667. // row range for this thread
  12668. const int ir0 = dr*ith;
  12669. const int ir1 = MIN(ir0 + dr, nr);
  12670. float scale = 1.0f;
  12671. float max_bias = 0.0f;
  12672. memcpy(&scale, (float *) dst->op_params + 0, sizeof(float));
  12673. memcpy(&max_bias, (float *) dst->op_params + 1, sizeof(float));
  12674. const uint32_t n_head = neq2;
  12675. const uint32_t n_head_log2 = 1u << (uint32_t) floor(log2(n_head));
  12676. const float m0 = powf(2.0f, -(max_bias ) / n_head_log2);
  12677. const float m1 = powf(2.0f, -(max_bias / 2.0f) / n_head_log2);
  12678. enum ggml_type const k_vec_dot_type = type_traits[k->type].vec_dot_type;
  12679. ggml_from_float_t const q_to_vec_dot = type_traits[k_vec_dot_type].from_float;
  12680. ggml_vec_dot_t const kq_vec_dot = type_traits[k->type].vec_dot;
  12681. ggml_to_float_t const v_to_float = type_traits[v->type].to_float;
  12682. // loop over n_batch and n_head
  12683. for (int ir = ir0; ir < ir1; ++ir) {
  12684. // q indices
  12685. const int iq3 = ir/(neq2*neq1);
  12686. const int iq2 = (ir - iq3*neq2*neq1)/neq1;
  12687. const int iq1 = (ir - iq3*neq2*neq1 - iq2*neq1);
  12688. const uint32_t h = iq2; // head index
  12689. const float slope = (max_bias > 0.0f) ? h < n_head_log2 ? powf(m0, h + 1) : powf(m1, 2*(h - n_head_log2) + 1) : 1.0f;
  12690. float S = 0.0f; // sum
  12691. float M = -INFINITY; // maximum KQ value
  12692. float * VKQ32 = (float *) params->wdata + ith*(3*D + CACHE_LINE_SIZE_F32); // FP32 VKQ accumulator
  12693. float * V32 = (VKQ32 + 1*D); // (temporary) FP32 V buffer
  12694. ggml_fp16_t * VKQ16 = (ggml_fp16_t *) (VKQ32 + 1*D); // (temporary) FP16 VKQ accumulator
  12695. ggml_fp16_t * Q_q = (ggml_fp16_t *) (VKQ32 + 2*D); // (temporary) buffer for Q converted to quantized/FP16
  12696. if (v->type == GGML_TYPE_F16) {
  12697. memset(VKQ16, 0, D*sizeof(ggml_fp16_t));
  12698. } else {
  12699. memset(VKQ32, 0, D*sizeof(float));
  12700. }
  12701. const ggml_fp16_t * mp = mask ? (ggml_fp16_t *)((char *) mask->data + iq1*mask->nb[1]) : NULL;
  12702. // k indices
  12703. const int ik3 = iq3 / rk3;
  12704. const int ik2 = iq2 / rk2;
  12705. // v indices
  12706. const int iv3 = iq3 / rv3;
  12707. const int iv2 = iq2 / rv2;
  12708. const float * pq = (const float *) ((char *) q->data + (iq1*nbq1 + iq2*nbq2 + iq3*nbq3));
  12709. q_to_vec_dot(pq, Q_q, D);
  12710. // online softmax / attention
  12711. // loop over n_kv and n_head_kv
  12712. // ref: https://arxiv.org/pdf/2112.05682.pdf
  12713. for (int64_t ic = 0; ic < nek1; ++ic) {
  12714. const float mv = mp ? slope*GGML_FP16_TO_FP32(mp[ic]) : 0.0f;
  12715. if (mv == -INFINITY) {
  12716. continue;
  12717. }
  12718. float s; // KQ value
  12719. const char * k_data = (const char *) k->data + ( ic*nbk1 + ik2*nbk2 + ik3*nbk3);
  12720. kq_vec_dot(D, &s, 0, k_data, 0, Q_q, 0, 1);
  12721. s = s*scale + mv; // scale KQ value and apply mask
  12722. const float Mold = M;
  12723. float ms = 1.0f; // upon new higher max val, scale VKQ and KQ sum with this value
  12724. float vs = 1.0f; // post-softmax KQ value, expf(s - M)
  12725. const char * v_data = ((const char *) v->data + (ic*nbv1 + iv2*nbv2 + iv3*nbv3));
  12726. if (v->type== GGML_TYPE_F16) {
  12727. if (s > M) {
  12728. // s is new maximum, ms < 1.0f, vs == expf(s - s) == 1.0f
  12729. M = s;
  12730. ms = expf(Mold - M);
  12731. // V = V*expf(Mold - M)
  12732. ggml_vec_scale_f16(D, VKQ16, ms);
  12733. } else {
  12734. // no new maximum, ms == 1.0f, vs != 1.0f
  12735. vs = expf(s - M);
  12736. }
  12737. // V += v*expf(s - M)
  12738. ggml_vec_mad_f16(D, VKQ16, (const ggml_fp16_t *) v_data, vs);
  12739. } else {
  12740. if (s > M) {
  12741. // s is new maximum, ms < 1.0f, vs == expf(s - s) == 1.0f
  12742. M = s;
  12743. ms = expf(Mold - M);
  12744. // V = V*expf(Mold - M)
  12745. ggml_vec_scale_f32(D, VKQ32, ms);
  12746. } else {
  12747. // no new maximum, ms == 1.0f, vs != 1.0f
  12748. vs = expf(s - M);
  12749. }
  12750. v_to_float(v_data, V32, D);
  12751. // V += v*expf(s - M)
  12752. ggml_vec_mad_f32(D, VKQ32, V32, vs);
  12753. }
  12754. S = S*ms + vs; // scale and increment sum with partial sum
  12755. }
  12756. if (v->type == GGML_TYPE_F16) {
  12757. for (int64_t d = 0; d < D; ++d) {
  12758. VKQ32[d] = GGML_FP16_TO_FP32(VKQ16[d]);
  12759. }
  12760. }
  12761. // V /= S
  12762. const float S_inv = 1.0f/S;
  12763. ggml_vec_scale_f32(D, VKQ32, S_inv);
  12764. // dst indices
  12765. const int i1 = iq1;
  12766. const int i2 = iq2;
  12767. const int i3 = iq3;
  12768. // original
  12769. //memcpy((char *) dst->data + (i1*nb1 + i2*nb2 + i3*nb3), V, nev0*sizeof(float));
  12770. // permute(0, 2, 1, 3)
  12771. memcpy((char *) dst->data + (i3*ne2*ne1 + i2 + i1*ne1)*nb1, VKQ32, nb1);
  12772. }
  12773. }
  12774. static void ggml_compute_forward_flash_attn_ext(
  12775. const struct ggml_compute_params * params,
  12776. const struct ggml_tensor * q,
  12777. const struct ggml_tensor * k,
  12778. const struct ggml_tensor * v,
  12779. const struct ggml_tensor * mask,
  12780. struct ggml_tensor * dst) {
  12781. switch (dst->op_params[2]) {
  12782. case GGML_PREC_DEFAULT:
  12783. case GGML_PREC_F32:
  12784. {
  12785. // uses F32 accumulators
  12786. ggml_compute_forward_flash_attn_ext_f16(params, q, k, v, mask, dst);
  12787. } break;
  12788. default:
  12789. {
  12790. GGML_ASSERT(false);
  12791. } break;
  12792. }
  12793. }
  12794. // ggml_compute_forward_flash_attn_back
  12795. static void ggml_compute_forward_flash_attn_back_f32(
  12796. const struct ggml_compute_params * params,
  12797. const bool masked,
  12798. struct ggml_tensor * dst) {
  12799. const struct ggml_tensor * q = dst->src[0];
  12800. const struct ggml_tensor * k = dst->src[1];
  12801. const struct ggml_tensor * v = dst->src[2];
  12802. const struct ggml_tensor * d = dst->src[3];
  12803. int64_t t0 = ggml_perf_time_us();
  12804. UNUSED(t0);
  12805. GGML_TENSOR_LOCALS(int64_t, neq, q, ne)
  12806. GGML_TENSOR_LOCALS(size_t, nbq, q, nb)
  12807. GGML_TENSOR_LOCALS(int64_t, nek, k, ne)
  12808. GGML_TENSOR_LOCALS(size_t, nbk, k, nb)
  12809. GGML_TENSOR_LOCALS(int64_t, nev, v, ne)
  12810. GGML_TENSOR_LOCALS(size_t, nbv, v, nb)
  12811. GGML_TENSOR_LOCALS(int64_t, ned, d, ne)
  12812. GGML_TENSOR_LOCALS(size_t, nbd, d, nb)
  12813. GGML_TENSOR_LOCALS(int64_t, ne, dst, ne)
  12814. GGML_TENSOR_LOCALS(size_t, nb, dst, nb)
  12815. const int ith = params->ith;
  12816. const int nth = params->nth;
  12817. const int64_t D = neq0;
  12818. const int64_t N = neq1;
  12819. const int64_t P = nek1 - N;
  12820. const int64_t M = P + N;
  12821. const int Mup = ggml_up(M, GGML_SOFT_MAX_UNROLL);
  12822. const int mxDM = MAX(D, Mup);
  12823. // GGML_ASSERT(ne0 == D);
  12824. // GGML_ASSERT(ne1 == N);
  12825. GGML_ASSERT(P >= 0);
  12826. GGML_ASSERT(nbq0 == sizeof(float));
  12827. GGML_ASSERT(nbk0 == sizeof(float));
  12828. GGML_ASSERT(nbv0 == sizeof(float));
  12829. GGML_ASSERT(neq0 == D);
  12830. GGML_ASSERT(nek0 == D);
  12831. GGML_ASSERT(nev1 == D);
  12832. GGML_ASSERT(ned0 == D);
  12833. GGML_ASSERT(neq1 == N);
  12834. GGML_ASSERT(nek1 == N + P);
  12835. GGML_ASSERT(nev1 == D);
  12836. GGML_ASSERT(ned1 == N);
  12837. // dst cannot be transposed or permuted
  12838. GGML_ASSERT(nb0 == sizeof(float));
  12839. GGML_ASSERT(nb0 <= nb1);
  12840. GGML_ASSERT(nb1 <= nb2);
  12841. GGML_ASSERT(nb2 <= nb3);
  12842. if (params->type == GGML_TASK_TYPE_INIT) {
  12843. if (ith == 0) {
  12844. memset(dst->data, 0, nb0*ne0*ne1*ne2*ne3);
  12845. }
  12846. return;
  12847. }
  12848. if (params->type == GGML_TASK_TYPE_FINALIZE) {
  12849. return;
  12850. }
  12851. const int64_t elem_q = ggml_nelements(q);
  12852. const int64_t elem_k = ggml_nelements(k);
  12853. enum ggml_type result_type = dst->type;
  12854. GGML_ASSERT(ggml_blck_size(result_type) == 1);
  12855. const size_t tsize = ggml_type_size(result_type);
  12856. const size_t offs_q = 0;
  12857. const size_t offs_k = offs_q + GGML_PAD(elem_q * tsize, GGML_MEM_ALIGN);
  12858. const size_t offs_v = offs_k + GGML_PAD(elem_k * tsize, GGML_MEM_ALIGN);
  12859. void * grad_q = (char *) dst->data;
  12860. void * grad_k = (char *) dst->data + offs_k;
  12861. void * grad_v = (char *) dst->data + offs_v;
  12862. const size_t nbgq1 = nb0*neq0;
  12863. const size_t nbgq2 = nb0*neq0*neq1;
  12864. const size_t nbgq3 = nb0*neq0*neq1*neq2;
  12865. const size_t nbgk1 = nb0*nek0;
  12866. const size_t nbgk2 = nb0*nek0*nek1;
  12867. const size_t nbgk3 = nb0*nek0*nek1*neq2;
  12868. const size_t nbgv1 = nb0*nev0;
  12869. const size_t nbgv2 = nb0*nev0*nev1;
  12870. const size_t nbgv3 = nb0*nev0*nev1*neq2;
  12871. // parallelize by k rows using ggml_vec_dot_f32
  12872. // total rows in k
  12873. const int nr = nek2*nek3;
  12874. // rows per thread
  12875. const int dr = (nr + nth - 1)/nth;
  12876. // row range for this thread
  12877. const int ir0 = dr*ith;
  12878. const int ir1 = MIN(ir0 + dr, nr);
  12879. const float scale = 1.0f/sqrtf(D);
  12880. //printf("P=%d N=%d D=%d ir0=%d ir1=%d scale = %f\n", P, N, D, ir0, ir1, scale);
  12881. // how often k2 (and v2) is repeated in q2
  12882. int nrep = neq2/nek2;
  12883. for (int ir = ir0; ir < ir1; ++ir) {
  12884. // q indices
  12885. const int ik3 = ir/(nek2);
  12886. const int ik2 = ir - ik3*nek2;
  12887. const int iq3 = ik3;
  12888. const int id3 = ik3;
  12889. const int iv3 = ik3;
  12890. const int iv2 = ik2;
  12891. for (int irep = 0; irep < nrep; ++irep) {
  12892. const int iq2 = ik2 + irep*nek2;
  12893. const int id2 = iq2;
  12894. // (ik2 + irep*nek2) % nek2 == ik2
  12895. for (int iq1 = 0; iq1 < neq1; ++iq1) {
  12896. const int id1 = iq1;
  12897. // not sure about CACHE_LINE_SIZE_F32..
  12898. // - maybe it must not be multiplied by 2 and excluded from .. in SM 1*(..) offset?
  12899. float * S = (float *) params->wdata + ith*2*(mxDM + CACHE_LINE_SIZE_F32) + 0*(mxDM+CACHE_LINE_SIZE_F32);
  12900. float * SM = (float *) params->wdata + ith*2*(mxDM + CACHE_LINE_SIZE_F32) + 1*(mxDM+CACHE_LINE_SIZE_F32);
  12901. for (int i = M; i < Mup; ++i) {
  12902. S[i] = -INFINITY;
  12903. }
  12904. const int64_t masked_begin = masked ? (P + iq1 + 1) : M;
  12905. for (int64_t ic = 0; ic < masked_begin; ++ic) {
  12906. // k indices
  12907. const int ik1 = ic;
  12908. // S indices
  12909. const int i1 = ik1;
  12910. ggml_vec_dot_f32(neq0,
  12911. S + i1, 0,
  12912. (float *) ((char *) k->data + (ik1*nbk1 + ik2*nbk2 + ik3*nbk3)), 0,
  12913. (float *) ((char *) q->data + (iq1*nbq1 + iq2*nbq2 + iq3*nbq3)), 0, 1);
  12914. }
  12915. // scale
  12916. ggml_vec_scale_f32(masked_begin, S, scale);
  12917. for (int64_t i = masked_begin; i < M; i++) {
  12918. S[i] = -INFINITY;
  12919. }
  12920. // softmax
  12921. // exclude known -INF S[..] values from max and loop
  12922. // dont forget to set their SM values to zero
  12923. {
  12924. float max = -INFINITY;
  12925. ggml_vec_max_f32(masked_begin, &max, S);
  12926. ggml_float sum = 0.0;
  12927. {
  12928. #ifdef GGML_SOFT_MAX_ACCELERATE
  12929. max = -max;
  12930. vDSP_vsadd(SM, 1, &max, SM, 1, Mup);
  12931. vvexpf(SM, SM, &Mup);
  12932. ggml_vec_sum_f32(Mup, &sum, SM);
  12933. #else
  12934. sum = ggml_vec_soft_max_f32(Mup, SM, S, max);
  12935. #endif
  12936. }
  12937. assert(sum > 0.0);
  12938. sum = 1.0/sum;
  12939. ggml_vec_scale_f32(masked_begin, SM, sum);
  12940. }
  12941. // step-by-step explanation
  12942. {
  12943. // forward-process shape grads from backward process
  12944. // parallel_for ik2,ik3:
  12945. // for irep:
  12946. // iq2 = ik2 + irep*nek2
  12947. // k[:D,:M,:,:] [D,M,:,:] grad[k][:D,:M,ik2,ik3] += grad[kcur]
  12948. // q[:D,:N,:,:] [D,N,:,:] grad[q][:D,iq1,iq2,iq3] += grad[qcur]
  12949. // v[:M,:D,:,:] [M,D,:,:] grad[v][:M,:D,iv2,iv3] += grad[vcur]
  12950. // for iq1:
  12951. // kcur = k[:D,:M,ik2,ik3] [D,M,1,1] grad[kcur] = grad[S1].T @ qcur
  12952. // qcur = q[:D,iq1,iq2,iq3] [D,1,1,1] grad[qcur] = grad[S1] @ kcur
  12953. // vcur = v[:M,:D,iv2,iv3] [M,D,1,1] grad[vcur] = grad[S5].T @ S4
  12954. // S0 = -Inf [D,1,1,1]
  12955. // ~S1[i] = dot(kcur[:D,i], qcur)
  12956. // S1 = qcur @ kcur.T [M,1,1,1] grad[S1] = grad[S2] * scale
  12957. // S2 = S1 * scale [M,1,1,1] grad[S2] = diag_mask_zero(grad[S3], P)
  12958. // S3 = diag_mask_inf(S2, P) [M,1,1,1] grad[S3] = S4 * (grad[S4] - dot(S4, grad[S4]))
  12959. // S4 = softmax(S3) [M,1,1,1] grad[S4] = grad[S5] @ vcur
  12960. // ~S5[i] = dot(vcur[:,i], S4)
  12961. // S5 = S4 @ vcur.T [D,1,1,1] grad[S5] = d[:D,id1,id2,id3]
  12962. // ~dst[i,iq1,iq2,iq3] = S5[i] ^
  12963. // dst[:D,iq1,iq2,iq3] = S5 | grad[dst[:D,iq1,iq2,iq3]] = d[:D,id1,id2,id3]
  12964. // dst backward-/ grad[dst] = d
  12965. //
  12966. // output gradients with their dependencies:
  12967. //
  12968. // grad[kcur] = grad[S1].T @ qcur
  12969. // grad[S1] = diag_mask_zero(grad[S3], P) * scale
  12970. // grad[S3] = S4 * (grad[S4] - dot(S4, grad[S4]))
  12971. // grad[S4] = grad[S5] @ vcur
  12972. // grad[S4] = d[:D,id1,id2,id3] @ vcur
  12973. // grad[qcur] = grad[S1] @ kcur
  12974. // grad[vcur] = grad[S5].T @ S4
  12975. // grad[vcur] = d[:D,id1,id2,id3].T @ S4
  12976. //
  12977. // in post-order:
  12978. //
  12979. // S1 = qcur @ kcur.T
  12980. // S2 = S1 * scale
  12981. // S3 = diag_mask_inf(S2, P)
  12982. // S4 = softmax(S3)
  12983. // grad[S4] = d[:D,id1,id2,id3] @ vcur
  12984. // grad[S3] = S4 * (grad[S4] - dot(S4, grad[S4]))
  12985. // grad[S1] = diag_mask_zero(grad[S3], P) * scale
  12986. // grad[qcur] = grad[S1] @ kcur
  12987. // grad[kcur] = grad[S1].T @ qcur
  12988. // grad[vcur] = d[:D,id1,id2,id3].T @ S4
  12989. //
  12990. // using less variables (SM=S4):
  12991. //
  12992. // S = diag_mask_inf(qcur @ kcur.T * scale, P)
  12993. // SM = softmax(S)
  12994. // S = d[:D,iq1,iq2,iq3] @ vcur
  12995. // dot_SM_gradSM = dot(SM, S)
  12996. // S = SM * (S - dot(SM, S))
  12997. // S = diag_mask_zero(S, P) * scale
  12998. //
  12999. // grad[q][:D,iq1,iq2,iq3] += S @ kcur
  13000. // grad[k][:D,:M,ik2,ik3] += S.T @ qcur
  13001. // grad[v][:M,:D,iv2,iv3] += d[:D,id1,id2,id3].T @ SM
  13002. }
  13003. // S = gradSM = d[:D,id1,id2,id3] @ vcur[:,:,iv2,iv3]
  13004. // S = d[:D,id1,id2,id3] @ vcur[:,:,iv2,iv3]
  13005. // for ic:
  13006. // S[:M] += vcur[:M,ic,iv2,iv3] * d[ic,id1,id2,id3]
  13007. // exclude known future zero S[..] values from operation
  13008. ggml_vec_set_f32(masked_begin, S, 0);
  13009. for (int64_t ic = 0; ic < D; ++ic) {
  13010. ggml_vec_mad_f32(masked_begin,
  13011. S,
  13012. (float *) ((char *) v->data + ( ic*nbv1 + iv2*nbv2 + iv3*nbv3)),
  13013. *(float *) ((char *) d->data + (ic*nbd0 + id1*nbd1 + id2*nbd2 + id3*nbd3)));
  13014. }
  13015. // S = SM * (S - dot(SM, S))
  13016. float dot_SM_gradSM = 0;
  13017. ggml_vec_dot_f32 (masked_begin, &dot_SM_gradSM, 0, SM, 0, S, 0, 1);
  13018. ggml_vec_acc1_f32(M, S, -dot_SM_gradSM);
  13019. ggml_vec_mul_f32 (masked_begin, S, S, SM);
  13020. // S = diag_mask_zero(S, P) * scale
  13021. // already done by above ggml_vec_set_f32
  13022. // exclude known zero S[..] values from operation
  13023. ggml_vec_scale_f32(masked_begin, S, scale);
  13024. // S shape [M,1]
  13025. // SM shape [M,1]
  13026. // kcur shape [D,M]
  13027. // qcur shape [D,1]
  13028. // vcur shape [M,D]
  13029. // grad[q][:D,iq1,iq2,iq3] += S @ kcur
  13030. // grad[q][:D,iq1,iq2,iq3] += shape[M,1] @ shape[D,M]
  13031. // for ic:
  13032. // grad[q][:D,iq1,iq2,iq3] += S[ic] * kcur[:D,ic,ik2,ik3]
  13033. // exclude known zero S[..] values from loop
  13034. for (int64_t ic = 0; ic < masked_begin; ++ic) {
  13035. ggml_vec_mad_f32(D,
  13036. (float *) ((char *) grad_q + (iq1*nbgq1 + iq2*nbgq2 + iq3*nbgq3)),
  13037. (float *) ((char *) k->data + (ic*nbk1 + ik2*nbk2 + ik3*nbk3)),
  13038. S[ic]);
  13039. }
  13040. // grad[k][:D,:M,iq2,iq3] += S.T @ qcur
  13041. // for ic:
  13042. // grad[k][:D,ic,iq2,iq3] += S.T[0,ic] * qcur[:D,0]
  13043. // grad[k][:D,ic,iq2,iq3] += S[ic] * qcur[:D,0]
  13044. // exclude known zero S[..] values from loop
  13045. for (int64_t ic = 0; ic < masked_begin; ++ic) {
  13046. ggml_vec_mad_f32(D,
  13047. (float *) ((char *) grad_k + (ic*nbgk1 + ik2*nbgk2 + ik3*nbgk3)),
  13048. (float *) ((char *) q->data + (iq1*nbq1 + iq2*nbq2 + iq3*nbq3)),
  13049. S[ic]);
  13050. }
  13051. // grad[v][:M,:D,iv2,iv3] += d[:D,id1,id2,id3].T @ SM
  13052. // for ic:
  13053. // grad[v][:M,ic,iv2,iv3] += d[:D,id1,id2,id3].T[0,ic] * SM[:M]
  13054. // grad[v][:M,ic,iv2,iv3] += d[ic,id1,id2,id3] * SM[:M]
  13055. // exclude known zero SM[..] values from mad
  13056. for (int64_t ic = 0; ic < D; ++ic) {
  13057. ggml_vec_mad_f32(masked_begin,
  13058. (float *) ((char *) grad_v + ( ic*nbgv1 + iv2*nbgv2 + iv3*nbgv3)),
  13059. SM,
  13060. *(float *) ((char *) d->data + (ic*nbd0 + id1*nbd1 + id2*nbd2 + id3*nbd3)));
  13061. }
  13062. }
  13063. }
  13064. }
  13065. }
  13066. static void ggml_compute_forward_flash_attn_back(
  13067. const struct ggml_compute_params * params,
  13068. const bool masked,
  13069. struct ggml_tensor * dst) {
  13070. const struct ggml_tensor * q = dst->src[0];
  13071. switch (q->type) {
  13072. case GGML_TYPE_F32:
  13073. {
  13074. ggml_compute_forward_flash_attn_back_f32(params, masked, dst);
  13075. } break;
  13076. default:
  13077. {
  13078. GGML_ASSERT(false);
  13079. } break;
  13080. }
  13081. }
  13082. // ggml_compute_forward_ssm_conv
  13083. static void ggml_compute_forward_ssm_conv_f32(
  13084. const struct ggml_compute_params * params,
  13085. struct ggml_tensor * dst) {
  13086. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  13087. return;
  13088. }
  13089. const struct ggml_tensor * src0 = dst->src[0]; // conv_state
  13090. const struct ggml_tensor * src1 = dst->src[1]; // x
  13091. const struct ggml_tensor * src2 = dst->src[2]; // conv1d.weight
  13092. const struct ggml_tensor * src3 = dst->src[3]; // state_seq
  13093. const int ith = params->ith;
  13094. const int nth = params->nth;
  13095. const int nc = src2->ne[0]; // d_conv
  13096. const int nr = src0->ne[1]; // d_inner
  13097. const int n_t = src1->ne[1]; // n_tokens
  13098. const int n_kv = src0->ne[2]; // max number of sequences in the batch
  13099. GGML_ASSERT((nr*n_t) + (nc*nr*n_kv) == ggml_nelements(dst));
  13100. GGML_ASSERT(src0->nb[0] == sizeof(float));
  13101. GGML_ASSERT(src1->nb[0] == sizeof(float));
  13102. GGML_ASSERT(src2->nb[0] == sizeof(float));
  13103. GGML_ASSERT(src3->nb[0] == sizeof(int32_t));
  13104. GGML_ASSERT(src0->nb[1] == src0->ne[0]*sizeof(float));
  13105. // for use with the destination state offset between sequences
  13106. GGML_ASSERT(src2->nb[2] == src2->ne[1]*src2->ne[0]*sizeof(float));
  13107. // rows per thread
  13108. const int dr = (nr + nth - 1)/nth;
  13109. // row range for this thread
  13110. const int ir0 = dr*ith;
  13111. const int ir1 = MIN(ir0 + dr, nr);
  13112. const int ir = ir1 - ir0;
  13113. if (n_kv > 1) {
  13114. // multiple sequences means it's hard to know when it's the first time a state is read,
  13115. // so copy them all over to the destination, just to be sure.
  13116. for (int i3 = 0; i3 < n_kv; ++i3) {
  13117. float * s0 = (float *) ((char *) src0->data + ir0*(src0->nb[1]) + i3*(src0->nb[2]));
  13118. float * s = (float *) ((char *) dst->data + ir0*(src2->nb[1]) + i3*(src2->nb[2]) + nr*n_t*sizeof(float));
  13119. // can't use memcpy because of d_conv vs d_conv - 1
  13120. for (int i1 = 0; i1 < ir; ++i1) {
  13121. for (int i0 = 0; i0 < nc - 1; ++i0) {
  13122. // copy s0 to last (d_conv - 1) columns of s
  13123. s[1 + i0 + i1*nc] = s0[i0 + i1*(nc - 1)];
  13124. }
  13125. }
  13126. }
  13127. }
  13128. for (int i2 = 0; i2 < n_t; ++i2) {
  13129. int32_t * sq = (int32_t *) ((char *) src3->data + i2*(src3->nb[1])); // {n_kv, n_tokens}
  13130. float * x = (float *) ((char *) dst->data + ir0*sizeof(float) + i2*(nr*sizeof(float))); // {d_inner, n_tokens}
  13131. float * s = (float *) ((char *) dst->data + ir0*(src2->nb[1]) + sq[0]*(src2->nb[2]) + nr*n_t*sizeof(float)); // {d_conv, d_inner, n_kv}
  13132. float * s0; // {d_conv - 1, d_inner, n_kv}
  13133. float * x0 = (float *) ((char *) src1->data + ir0*(src1->nb[0]) + i2*(src1->nb[1])); // {d_inner, n_tokens}
  13134. float * c = (float *) ((char *) src2->data + ir0*(src2->nb[1])); // {d_conv, d_inner}
  13135. int ne0s0;
  13136. GGML_ASSERT(0 <= sq[0] && sq[0] < n_kv);
  13137. // avoid needing to copy the state for the first token
  13138. if (i2 == 0) {
  13139. s0 = (float *) ((char *) src0->data + ir0*(src0->nb[1]) + sq[0]*(src0->nb[2])); // {d_conv - 1, d_inner, n_kv}
  13140. ne0s0 = src0->ne[0];
  13141. } else {
  13142. // the source is the last (d_conv - 1) columns of the destination
  13143. s0 = s + 1;
  13144. ne0s0 = nc;
  13145. }
  13146. // d_inner
  13147. for (int i1 = 0; i1 < ir; ++i1) {
  13148. // shift state left
  13149. for (int i0 = 0; i0 < nc - 1; ++i0) {
  13150. s[i0 + i1*nc] = s0[i0 + i1*ne0s0];
  13151. }
  13152. // insert x on the last column
  13153. s[(nc - 1) + i1*nc] = x0[i1];
  13154. }
  13155. // handle copies when there are multiple output states
  13156. for (int i3 = 1; i3 < n_kv; ++i3) {
  13157. int32_t seq = sq[i3];
  13158. if (0 <= seq && seq < n_kv) {
  13159. float * s1 = s + (seq - sq[0])*nc*nr;
  13160. memcpy(s1, s, nc*ir*sizeof(float));
  13161. } else {
  13162. // stop at negative or too big seq_ids
  13163. break;
  13164. }
  13165. }
  13166. // it seems a little faster when this is separate from the state shift
  13167. for (int i1 = 0; i1 < ir; ++i1) {
  13168. // rowwise dot product
  13169. float sumf = 0.0f;
  13170. for (int i0 = 0; i0 < nc; ++i0) {
  13171. int i = i0 + i1*nc;
  13172. sumf += s[i] * c[i];
  13173. }
  13174. x[i1] = sumf;
  13175. }
  13176. }
  13177. }
  13178. static void ggml_compute_forward_ssm_conv(
  13179. const struct ggml_compute_params * params,
  13180. struct ggml_tensor * dst) {
  13181. switch (dst->src[0]->type) {
  13182. case GGML_TYPE_F32:
  13183. {
  13184. ggml_compute_forward_ssm_conv_f32(params, dst);
  13185. } break;
  13186. default:
  13187. {
  13188. GGML_ASSERT(false);
  13189. } break;
  13190. }
  13191. }
  13192. // ggml_compute_forward_ssm_scan
  13193. static void ggml_compute_forward_ssm_scan_f32(
  13194. const struct ggml_compute_params * params,
  13195. struct ggml_tensor * dst) {
  13196. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  13197. return;
  13198. }
  13199. const struct ggml_tensor * src0 = dst->src[0]; // s
  13200. const struct ggml_tensor * src1 = dst->src[1]; // x
  13201. const struct ggml_tensor * src2 = dst->src[2]; // dt
  13202. const struct ggml_tensor * src3 = dst->src[3]; // A
  13203. const struct ggml_tensor * src4 = dst->src[4]; // B
  13204. const struct ggml_tensor * src5 = dst->src[5]; // C
  13205. const struct ggml_tensor * src6 = dst->src[6]; // sq
  13206. const int ith = params->ith;
  13207. const int nth = params->nth;
  13208. const int64_t nc = src0->ne[0]; // d_state
  13209. const int64_t nr = src0->ne[1]; // d_inner
  13210. const int64_t n_t = src1->ne[1]; // number of tokens in the batch
  13211. const int64_t n_kv = src0->ne[2]; // max number of sequences in the batch
  13212. GGML_ASSERT(ggml_nelements(src1) + ggml_nelements(src0) == ggml_nelements(dst));
  13213. GGML_ASSERT(src0->nb[0] == sizeof(float));
  13214. GGML_ASSERT(src1->nb[0] == sizeof(float));
  13215. GGML_ASSERT(src2->nb[0] == sizeof(float));
  13216. GGML_ASSERT(src3->nb[0] == sizeof(float));
  13217. GGML_ASSERT(src4->nb[0] == sizeof(float));
  13218. GGML_ASSERT(src5->nb[0] == sizeof(float));
  13219. // required for the dot product between s and C, and when copying the states
  13220. GGML_ASSERT(src0->nb[1] == src0->ne[0]*sizeof(float));
  13221. // required for per-sequence offsets for states
  13222. GGML_ASSERT(src0->nb[2] == src0->ne[0]*src0->ne[1]*sizeof(float));
  13223. // required to get correct offset for state destination (i.e. src1->nb[2])
  13224. GGML_ASSERT(src1->nb[2] == src1->ne[0]*src1->ne[1]*sizeof(float));
  13225. // rows per thread
  13226. const int dr = (nr + nth - 1)/nth;
  13227. // row range for this thread
  13228. const int ir0 = dr*ith;
  13229. const int ir1 = MIN(ir0 + dr, nr);
  13230. const int ir = ir1 - ir0;
  13231. if (n_kv > 1) {
  13232. // it's hard to know if the source states have already been copied
  13233. // when there are multiple, so copy them already.
  13234. for (int i3 = 0; i3 < n_kv; ++i3) {
  13235. float * s0 = (float *) ((char *) src0->data + ir0*(src0->nb[1]) + i3*(src0->nb[2]));
  13236. float * s = (float *) ((char *) dst->data + ir0*(src0->nb[1]) + i3*(src0->nb[2]) + src1->nb[2]);
  13237. memcpy(s, s0, nc*ir*sizeof(float));
  13238. }
  13239. }
  13240. for (int i2 = 0; i2 < n_t; ++i2) {
  13241. int32_t * sq = (int32_t *) ((char *) src6->data + i2*(src6->nb[1])); // {n_kv, n_tokens}
  13242. float * y = (float *) ((char *) dst->data + ir0*(src1->nb[0]) + i2*(src1->nb[1])); // {d_inner, n_tokens}
  13243. float * s = (float *) ((char *) dst->data + ir0*(src0->nb[1]) + sq[0]*(src0->nb[2]) + src1->nb[2]); // {d_state, d_inner, n_kv}
  13244. float * s0;
  13245. float * x = (float *) ((char *) src1->data + ir0*(src1->nb[0]) + i2*(src1->nb[1])); // {d_inner, n_tokens}
  13246. float * dt = (float *) ((char *) src2->data + ir0*(src2->nb[0]) + i2*(src2->nb[1])); // {d_inner, n_tokens}
  13247. float * A = (float *) ((char *) src3->data + ir0*(src3->nb[1])); // {d_state, d_inner}
  13248. float * B = (float *) ((char *) src4->data + i2*(src4->nb[1])); // {d_state, n_tokens}
  13249. float * C = (float *) ((char *) src5->data + i2*(src5->nb[1])); // {d_state, n_tokens}
  13250. GGML_ASSERT(0 <= sq[0] && sq[0] < n_kv);
  13251. // avoid needing to copy the state for the first token
  13252. if (i2 == 0) {
  13253. s0 = (float *) ((char *) src0->data + ir0*(src0->nb[1]) + sq[0]*(src0->nb[2])); // {d_state, d_inner, n_kv}
  13254. } else {
  13255. // otherwise the source is the same as the destination
  13256. s0 = s;
  13257. }
  13258. // d_inner
  13259. for (int i1 = 0; i1 < ir; ++i1) {
  13260. // ref: https://github.com/state-spaces/mamba/blob/34076d664838588a3c97727b263478ab9f621a07/mamba_ssm/ops/triton/selective_state_update.py#L78
  13261. float dt_soft_plus = dt[i1] <= 20.0f ? log1pf(expf(dt[i1])) : dt[i1];
  13262. float x_dt = x[i1] * dt_soft_plus;
  13263. float sumf = 0.0f;
  13264. // d_state
  13265. for (int i0 = 0; i0 < nc; ++i0) {
  13266. int i = i0 + i1*nc;
  13267. // state = prev_state * dA + dB * x
  13268. float state = (s0[i] * expf(dt_soft_plus * A[i])) + (B[i0] * x_dt);
  13269. // y = rowwise_dotprod(state, C)
  13270. sumf += state * C[i0];
  13271. s[i] = state;
  13272. }
  13273. y[i1] = sumf;
  13274. }
  13275. // handle copies when there are multiple output states
  13276. for (int i3 = 1; i3 < n_kv; ++i3) {
  13277. int32_t seq = sq[i3];
  13278. if (0 <= seq && seq < n_kv) {
  13279. float * s1 = s + (seq - sq[0])*nc*nr;
  13280. memcpy(s1, s, nc*ir*sizeof(float));
  13281. } else {
  13282. // stop at negative or too big seq_ids
  13283. break;
  13284. }
  13285. }
  13286. }
  13287. }
  13288. static void ggml_compute_forward_ssm_scan(
  13289. const struct ggml_compute_params * params,
  13290. struct ggml_tensor * dst) {
  13291. switch (dst->src[0]->type) {
  13292. case GGML_TYPE_F32:
  13293. {
  13294. ggml_compute_forward_ssm_scan_f32(params, dst);
  13295. } break;
  13296. default:
  13297. {
  13298. GGML_ASSERT(false);
  13299. } break;
  13300. }
  13301. }
  13302. // ggml_compute_forward_win_part
  13303. static void ggml_compute_forward_win_part_f32(
  13304. const struct ggml_compute_params * params,
  13305. struct ggml_tensor * dst) {
  13306. const struct ggml_tensor * src0 = dst->src[0];
  13307. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  13308. return;
  13309. }
  13310. GGML_TENSOR_LOCALS(int64_t, ne0, src0, ne)
  13311. GGML_TENSOR_LOCALS(int64_t, ne, dst, ne)
  13312. const int32_t nep0 = ((const int32_t *)(dst->op_params))[0];
  13313. const int32_t nep1 = ((const int32_t *)(dst->op_params))[1];
  13314. const int32_t w = ((const int32_t *)(dst->op_params))[2];
  13315. assert(ne00 == ne0);
  13316. assert(ne3 == nep0*nep1);
  13317. // TODO: optimize / multi-thread
  13318. for (int py = 0; py < nep1; ++py) {
  13319. for (int px = 0; px < nep0; ++px) {
  13320. const int64_t i3 = py*nep0 + px;
  13321. for (int64_t i2 = 0; i2 < ne2; ++i2) {
  13322. for (int64_t i1 = 0; i1 < ne1; ++i1) {
  13323. for (int64_t i0 = 0; i0 < ne0; ++i0) {
  13324. const int64_t i02 = py*w + i2;
  13325. const int64_t i01 = px*w + i1;
  13326. const int64_t i00 = i0;
  13327. const int64_t i = i3*ne2*ne1*ne0 + i2*ne1*ne0 + i1*ne0 + i0;
  13328. const int64_t j = i02*ne01*ne00 + i01*ne00 + i00;
  13329. if (py*w + i2 >= ne02 || px*w + i1 >= ne01) {
  13330. ((float *) dst->data)[i] = 0.0f;
  13331. } else {
  13332. ((float *) dst->data)[i] = ((float *) src0->data)[j];
  13333. }
  13334. }
  13335. }
  13336. }
  13337. }
  13338. }
  13339. }
  13340. static void ggml_compute_forward_win_part(
  13341. const struct ggml_compute_params * params,
  13342. struct ggml_tensor * dst) {
  13343. const struct ggml_tensor * src0 = dst->src[0];
  13344. switch (src0->type) {
  13345. case GGML_TYPE_F32:
  13346. {
  13347. ggml_compute_forward_win_part_f32(params, dst);
  13348. } break;
  13349. default:
  13350. {
  13351. GGML_ASSERT(false);
  13352. } break;
  13353. }
  13354. }
  13355. // ggml_compute_forward_win_unpart
  13356. static void ggml_compute_forward_win_unpart_f32(
  13357. const struct ggml_compute_params * params,
  13358. struct ggml_tensor * dst) {
  13359. const struct ggml_tensor * src0 = dst->src[0];
  13360. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  13361. return;
  13362. }
  13363. GGML_TENSOR_LOCALS(int64_t, ne0, src0, ne)
  13364. GGML_TENSOR_LOCALS(int64_t, ne, dst, ne)
  13365. const int32_t w = ((const int32_t *)(dst->op_params))[0];
  13366. // padding
  13367. const int px = (w - ne1%w)%w;
  13368. //const int py = (w - ne2%w)%w;
  13369. const int npx = (px + ne1)/w;
  13370. //const int npy = (py + ne2)/w;
  13371. assert(ne0 == ne00);
  13372. // TODO: optimize / multi-thread
  13373. for (int64_t i2 = 0; i2 < ne2; ++i2) {
  13374. for (int64_t i1 = 0; i1 < ne1; ++i1) {
  13375. for (int64_t i0 = 0; i0 < ne0; ++i0) {
  13376. const int ip2 = i2/w;
  13377. const int ip1 = i1/w;
  13378. const int64_t i02 = i2%w;
  13379. const int64_t i01 = i1%w;
  13380. const int64_t i00 = i0;
  13381. const int64_t i = (ip2*npx + ip1)*ne02*ne01*ne00 + i02*ne01*ne00 + i01*ne00 + i00;
  13382. const int64_t j = i2*ne1*ne0 + i1*ne0 + i0;
  13383. ((float *) dst->data)[j] = ((float *) src0->data)[i];
  13384. }
  13385. }
  13386. }
  13387. }
  13388. static void ggml_compute_forward_win_unpart(
  13389. const struct ggml_compute_params * params,
  13390. struct ggml_tensor * dst) {
  13391. const struct ggml_tensor * src0 = dst->src[0];
  13392. switch (src0->type) {
  13393. case GGML_TYPE_F32:
  13394. {
  13395. ggml_compute_forward_win_unpart_f32(params, dst);
  13396. } break;
  13397. default:
  13398. {
  13399. GGML_ASSERT(false);
  13400. } break;
  13401. }
  13402. }
  13403. //gmml_compute_forward_unary
  13404. static void ggml_compute_forward_unary(
  13405. const struct ggml_compute_params * params,
  13406. struct ggml_tensor * dst) {
  13407. const enum ggml_unary_op op = ggml_get_unary_op(dst);
  13408. switch (op) {
  13409. case GGML_UNARY_OP_ABS:
  13410. {
  13411. ggml_compute_forward_abs(params, dst);
  13412. } break;
  13413. case GGML_UNARY_OP_SGN:
  13414. {
  13415. ggml_compute_forward_sgn(params, dst);
  13416. } break;
  13417. case GGML_UNARY_OP_NEG:
  13418. {
  13419. ggml_compute_forward_neg(params, dst);
  13420. } break;
  13421. case GGML_UNARY_OP_STEP:
  13422. {
  13423. ggml_compute_forward_step(params, dst);
  13424. } break;
  13425. case GGML_UNARY_OP_TANH:
  13426. {
  13427. ggml_compute_forward_tanh(params, dst);
  13428. } break;
  13429. case GGML_UNARY_OP_ELU:
  13430. {
  13431. ggml_compute_forward_elu(params, dst);
  13432. } break;
  13433. case GGML_UNARY_OP_RELU:
  13434. {
  13435. ggml_compute_forward_relu(params, dst);
  13436. } break;
  13437. case GGML_UNARY_OP_SIGMOID:
  13438. {
  13439. ggml_compute_forward_sigmoid(params, dst);
  13440. } break;
  13441. case GGML_UNARY_OP_GELU:
  13442. {
  13443. ggml_compute_forward_gelu(params, dst);
  13444. } break;
  13445. case GGML_UNARY_OP_GELU_QUICK:
  13446. {
  13447. ggml_compute_forward_gelu_quick(params, dst);
  13448. } break;
  13449. case GGML_UNARY_OP_SILU:
  13450. {
  13451. ggml_compute_forward_silu(params, dst);
  13452. } break;
  13453. case GGML_UNARY_OP_HARDSWISH:
  13454. {
  13455. ggml_compute_forward_hardswish(params, dst);
  13456. } break;
  13457. case GGML_UNARY_OP_HARDSIGMOID:
  13458. {
  13459. ggml_compute_forward_hardsigmoid(params, dst);
  13460. } break;
  13461. default:
  13462. {
  13463. GGML_ASSERT(false);
  13464. } break;
  13465. }
  13466. }
  13467. // ggml_compute_forward_get_rel_pos
  13468. static void ggml_compute_forward_get_rel_pos_f16(
  13469. const struct ggml_compute_params * params,
  13470. struct ggml_tensor * dst) {
  13471. const struct ggml_tensor * src0 = dst->src[0];
  13472. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  13473. return;
  13474. }
  13475. // ref: https://github.com/facebookresearch/segment-anything/blob/main/segment_anything/modeling/image_encoder.py#L292-L322
  13476. GGML_TENSOR_UNARY_OP_LOCALS
  13477. const int64_t w = ne1;
  13478. ggml_fp16_t * src0_data = (ggml_fp16_t *) src0->data;
  13479. ggml_fp16_t * dst_data = (ggml_fp16_t *) dst->data;
  13480. for (int64_t i2 = 0; i2 < ne2; ++i2) {
  13481. for (int64_t i1 = 0; i1 < ne1; ++i1) {
  13482. const int64_t pos = (w - i1 - 1) + i2;
  13483. for (int64_t i0 = 0; i0 < ne0; ++i0) {
  13484. dst_data[i2*ne1*ne0 + i1*ne0 + i0] = src0_data[pos*ne00 + i0];
  13485. }
  13486. }
  13487. }
  13488. }
  13489. static void ggml_compute_forward_get_rel_pos(
  13490. const struct ggml_compute_params * params,
  13491. struct ggml_tensor * dst) {
  13492. const struct ggml_tensor * src0 = dst->src[0];
  13493. switch (src0->type) {
  13494. case GGML_TYPE_F16:
  13495. case GGML_TYPE_BF16:
  13496. {
  13497. ggml_compute_forward_get_rel_pos_f16(params, dst);
  13498. } break;
  13499. default:
  13500. {
  13501. GGML_ASSERT(false);
  13502. } break;
  13503. }
  13504. }
  13505. // ggml_compute_forward_add_rel_pos
  13506. static void ggml_compute_forward_add_rel_pos_f32(
  13507. const struct ggml_compute_params * params,
  13508. struct ggml_tensor * dst) {
  13509. const struct ggml_tensor * src0 = dst->src[0];
  13510. const struct ggml_tensor * src1 = dst->src[1];
  13511. const struct ggml_tensor * src2 = dst->src[2];
  13512. const bool inplace = (bool) ((int32_t *) dst->op_params)[0];
  13513. if (!inplace && params->type == GGML_TASK_TYPE_INIT) {
  13514. if (params->ith != 0) {
  13515. return;
  13516. }
  13517. memcpy((char *) dst->data, (char *) src0->data, ggml_nbytes(dst));
  13518. return;
  13519. }
  13520. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  13521. return;
  13522. }
  13523. int64_t t0 = ggml_perf_time_us();
  13524. UNUSED(t0);
  13525. // ref: https://github.com/facebookresearch/segment-anything/blob/main/segment_anything/modeling/image_encoder.py#L357-L359
  13526. float * src1_data = (float *) src1->data;
  13527. float * src2_data = (float *) src2->data;
  13528. float * dst_data = (float *) dst->data;
  13529. const int64_t ne10 = src1->ne[0];
  13530. const int64_t ne11 = src1->ne[1];
  13531. const int64_t ne12 = src1->ne[2];
  13532. const int64_t ne13 = src1->ne[3];
  13533. const int ith = params->ith;
  13534. const int nth = params->nth;
  13535. // total patches in dst
  13536. const int np = ne13;
  13537. // patches per thread
  13538. const int dp = (np + nth - 1)/nth;
  13539. // patch range for this thread
  13540. const int ip0 = dp*ith;
  13541. const int ip1 = MIN(ip0 + dp, np);
  13542. for (int64_t i13 = ip0; i13 < ip1; ++i13) {
  13543. for (int64_t i12 = 0; i12 < ne12; ++i12) {
  13544. for (int64_t i11 = 0; i11 < ne11; ++i11) {
  13545. const int64_t jp1 = i13*ne12*ne11*ne10 + i12*ne11*ne10 + i11*ne10;
  13546. for (int64_t i10 = 0; i10 < ne10; ++i10) {
  13547. const int64_t jp0 = jp1 + i10;
  13548. const float src1_e = src1_data[jp0];
  13549. const float src2_e = src2_data[jp0];
  13550. const int64_t jdh = jp0 * ne10;
  13551. const int64_t jdw = jdh - (ne10 - 1) * i10;
  13552. for (int64_t j = 0; j < ne10; ++j) {
  13553. dst_data[jdh + j ] += src2_e;
  13554. dst_data[jdw + j*ne10] += src1_e;
  13555. }
  13556. }
  13557. }
  13558. }
  13559. }
  13560. }
  13561. static void ggml_compute_forward_add_rel_pos(
  13562. const struct ggml_compute_params * params,
  13563. struct ggml_tensor * dst) {
  13564. const struct ggml_tensor * src0 = dst->src[0];
  13565. switch (src0->type) {
  13566. case GGML_TYPE_F32:
  13567. {
  13568. ggml_compute_forward_add_rel_pos_f32(params, dst);
  13569. } break;
  13570. default:
  13571. {
  13572. GGML_ASSERT(false);
  13573. } break;
  13574. }
  13575. }
  13576. // ggml_compute_forward_map_unary
  13577. static void ggml_compute_forward_map_unary_f32(
  13578. const struct ggml_compute_params * params,
  13579. struct ggml_tensor * dst,
  13580. const ggml_unary_op_f32_t fun) {
  13581. const struct ggml_tensor * src0 = dst->src[0];
  13582. assert(params->ith == 0);
  13583. assert(ggml_is_contiguous_1(src0));
  13584. assert(ggml_is_contiguous_1(dst));
  13585. assert(ggml_are_same_shape(src0, dst));
  13586. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  13587. return;
  13588. }
  13589. const int n = ggml_nrows(src0);
  13590. const int nc = src0->ne[0];
  13591. for (int i = 0; i < n; i++) {
  13592. fun(nc,
  13593. (float *) ((char *) dst->data + i*( dst->nb[1])),
  13594. (float *) ((char *) src0->data + i*(src0->nb[1])));
  13595. }
  13596. }
  13597. static void ggml_compute_forward_map_unary(
  13598. const struct ggml_compute_params * params,
  13599. struct ggml_tensor * dst,
  13600. const ggml_unary_op_f32_t fun) {
  13601. const struct ggml_tensor * src0 = dst->src[0];
  13602. switch (src0->type) {
  13603. case GGML_TYPE_F32:
  13604. {
  13605. ggml_compute_forward_map_unary_f32(params, dst, fun);
  13606. } break;
  13607. default:
  13608. {
  13609. GGML_ASSERT(false);
  13610. } break;
  13611. }
  13612. }
  13613. // ggml_compute_forward_map_binary
  13614. static void ggml_compute_forward_map_binary_f32(
  13615. const struct ggml_compute_params * params,
  13616. struct ggml_tensor * dst,
  13617. const ggml_binary_op_f32_t fun) {
  13618. const struct ggml_tensor * src0 = dst->src[0];
  13619. const struct ggml_tensor * src1 = dst->src[1];
  13620. assert(params->ith == 0);
  13621. assert(ggml_is_contiguous_1(src0));
  13622. assert(ggml_is_contiguous_1(src1));
  13623. assert(ggml_is_contiguous_1(dst));
  13624. assert(ggml_are_same_shape(src0, src1) && ggml_are_same_shape(src0, dst));
  13625. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  13626. return;
  13627. }
  13628. const int n = ggml_nrows(src0);
  13629. const int nc = src0->ne[0];
  13630. for (int i = 0; i < n; i++) {
  13631. fun(nc,
  13632. (float *) ((char *) dst->data + i*( dst->nb[1])),
  13633. (float *) ((char *) src0->data + i*(src0->nb[1])),
  13634. (float *) ((char *) src1->data + i*(src1->nb[1])));
  13635. }
  13636. }
  13637. static void ggml_compute_forward_map_binary(
  13638. const struct ggml_compute_params * params,
  13639. struct ggml_tensor * dst,
  13640. const ggml_binary_op_f32_t fun) {
  13641. const struct ggml_tensor * src0 = dst->src[0];
  13642. switch (src0->type) {
  13643. case GGML_TYPE_F32:
  13644. {
  13645. ggml_compute_forward_map_binary_f32(params, dst, fun);
  13646. } break;
  13647. default:
  13648. {
  13649. GGML_ASSERT(false);
  13650. } break;
  13651. }
  13652. }
  13653. // ggml_compute_forward_map_custom1
  13654. static void ggml_compute_forward_map_custom1_f32(
  13655. const struct ggml_compute_params * params,
  13656. struct ggml_tensor * dst,
  13657. const ggml_custom1_op_f32_t fun) {
  13658. const struct ggml_tensor * a = dst->src[0];
  13659. assert(params->ith == 0);
  13660. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  13661. return;
  13662. }
  13663. fun(dst, a);
  13664. }
  13665. // ggml_compute_forward_map_custom2
  13666. static void ggml_compute_forward_map_custom2_f32(
  13667. const struct ggml_compute_params * params,
  13668. struct ggml_tensor * dst,
  13669. const ggml_custom2_op_f32_t fun) {
  13670. const struct ggml_tensor * a = dst->src[0];
  13671. const struct ggml_tensor * b = dst->src[1];
  13672. assert(params->ith == 0);
  13673. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  13674. return;
  13675. }
  13676. fun(dst, a, b);
  13677. }
  13678. // ggml_compute_forward_map_custom3
  13679. static void ggml_compute_forward_map_custom3_f32(
  13680. const struct ggml_compute_params * params,
  13681. struct ggml_tensor * dst,
  13682. const ggml_custom3_op_f32_t fun) {
  13683. const struct ggml_tensor * a = dst->src[0];
  13684. const struct ggml_tensor * b = dst->src[1];
  13685. const struct ggml_tensor * c = dst->src[1];
  13686. assert(params->ith == 0);
  13687. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  13688. return;
  13689. }
  13690. fun(dst, a, b, c);
  13691. }
  13692. // ggml_compute_forward_map_custom1
  13693. static void ggml_compute_forward_map_custom1(
  13694. const struct ggml_compute_params * params,
  13695. struct ggml_tensor * dst) {
  13696. const struct ggml_tensor * a = dst->src[0];
  13697. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  13698. return;
  13699. }
  13700. struct ggml_map_custom1_op_params p;
  13701. memcpy(&p, dst->op_params, sizeof(p));
  13702. p.fun(dst, a, params->ith, params->nth, p.userdata);
  13703. }
  13704. // ggml_compute_forward_map_custom2
  13705. static void ggml_compute_forward_map_custom2(
  13706. const struct ggml_compute_params * params,
  13707. struct ggml_tensor * dst) {
  13708. const struct ggml_tensor * a = dst->src[0];
  13709. const struct ggml_tensor * b = dst->src[1];
  13710. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  13711. return;
  13712. }
  13713. struct ggml_map_custom2_op_params p;
  13714. memcpy(&p, dst->op_params, sizeof(p));
  13715. p.fun(dst, a, b, params->ith, params->nth, p.userdata);
  13716. }
  13717. // ggml_compute_forward_map_custom3
  13718. static void ggml_compute_forward_map_custom3(
  13719. const struct ggml_compute_params * params,
  13720. struct ggml_tensor * dst) {
  13721. const struct ggml_tensor * a = dst->src[0];
  13722. const struct ggml_tensor * b = dst->src[1];
  13723. const struct ggml_tensor * c = dst->src[2];
  13724. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  13725. return;
  13726. }
  13727. struct ggml_map_custom3_op_params p;
  13728. memcpy(&p, dst->op_params, sizeof(p));
  13729. p.fun(dst, a, b, c, params->ith, params->nth, p.userdata);
  13730. }
  13731. // ggml_compute_forward_cross_entropy_loss
  13732. static void ggml_compute_forward_cross_entropy_loss_f32(
  13733. const struct ggml_compute_params * params,
  13734. struct ggml_tensor * dst) {
  13735. const struct ggml_tensor * src0 = dst->src[0];
  13736. const struct ggml_tensor * src1 = dst->src[1];
  13737. GGML_ASSERT(ggml_is_contiguous(src0));
  13738. GGML_ASSERT(ggml_is_contiguous(src1));
  13739. GGML_ASSERT(ggml_is_scalar(dst));
  13740. GGML_ASSERT(ggml_are_same_shape(src0, src1));
  13741. const int ith = params->ith;
  13742. const int nth = params->nth;
  13743. float * sums = (float *) params->wdata;
  13744. // TODO: handle transposed/permuted matrices
  13745. const int nc = src0->ne[0];
  13746. const int nr = ggml_nrows(src0);
  13747. GGML_ASSERT(params->wsize >= sizeof(float) * (nth + nth * nc));
  13748. if (params->type == GGML_TASK_TYPE_INIT) {
  13749. if (ith == 0) {
  13750. memset(sums, 0, sizeof(float) * (nth + nth * nc));
  13751. }
  13752. return;
  13753. }
  13754. if (params->type == GGML_TASK_TYPE_FINALIZE) {
  13755. if (ith == 0) {
  13756. float * dp = (float *) dst->data;
  13757. ggml_vec_sum_f32(nth, dp, sums);
  13758. dp[0] *= -1.0f / (float) nr;
  13759. }
  13760. return;
  13761. }
  13762. const double eps = 1e-9;
  13763. // rows per thread
  13764. const int dr = (nr + nth - 1)/nth;
  13765. // row range for this thread
  13766. const int ir0 = dr*ith;
  13767. const int ir1 = MIN(ir0 + dr, nr);
  13768. for (int i1 = ir0; i1 < ir1; i1++) {
  13769. float * s0 = (float *)((char *) src0->data + i1*src0->nb[1]);
  13770. float * s1 = (float *)((char *) src1->data + i1*src1->nb[1]);
  13771. float * st = ((float *) params->wdata) + nth + ith*nc;
  13772. #ifndef NDEBUG
  13773. for (int i = 0; i < nc; ++i) {
  13774. //printf("p[%d] = %f\n", i, p[i]);
  13775. assert(!isnan(s0[i]));
  13776. assert(!isnan(s1[i]));
  13777. }
  13778. #endif
  13779. // soft_max
  13780. float max = -INFINITY;
  13781. ggml_vec_max_f32(nc, &max, s0);
  13782. ggml_float sum = ggml_vec_soft_max_f32(nc, st, s0, max);
  13783. assert(sum > 0.0);
  13784. sum = (1.0 - eps) / sum;
  13785. // avoid log(0) by rescaling from [0..1] to [eps..1]
  13786. ggml_vec_scale_f32(nc, st, sum);
  13787. ggml_vec_add1_f32(nc, st, st, eps);
  13788. ggml_vec_log_f32(nc, st, st);
  13789. ggml_vec_mul_f32(nc, st, st, s1);
  13790. float st_sum = 0;
  13791. ggml_vec_sum_f32(nc, &st_sum, st);
  13792. sums[ith] += st_sum;
  13793. #ifndef NDEBUG
  13794. for (int i = 0; i < nc; ++i) {
  13795. assert(!isnan(st[i]));
  13796. assert(!isinf(st[i]));
  13797. }
  13798. #endif
  13799. }
  13800. }
  13801. static void ggml_compute_forward_cross_entropy_loss(
  13802. const struct ggml_compute_params * params,
  13803. struct ggml_tensor * dst) {
  13804. const struct ggml_tensor * src0 = dst->src[0];
  13805. switch (src0->type) {
  13806. case GGML_TYPE_F32:
  13807. {
  13808. ggml_compute_forward_cross_entropy_loss_f32(params, dst);
  13809. } break;
  13810. default:
  13811. {
  13812. GGML_ASSERT(false);
  13813. } break;
  13814. }
  13815. }
  13816. // ggml_compute_forward_cross_entropy_loss_back
  13817. static void ggml_compute_forward_cross_entropy_loss_back_f32(
  13818. const struct ggml_compute_params * params,
  13819. struct ggml_tensor * dst) {
  13820. const struct ggml_tensor * src0 = dst->src[0];
  13821. const struct ggml_tensor * src1 = dst->src[1];
  13822. const struct ggml_tensor * opt0 = dst->src[2];
  13823. GGML_ASSERT(ggml_is_contiguous(dst));
  13824. GGML_ASSERT(ggml_is_contiguous(src0));
  13825. GGML_ASSERT(ggml_is_contiguous(src1));
  13826. GGML_ASSERT(ggml_is_contiguous(opt0));
  13827. GGML_ASSERT(ggml_are_same_shape(src0, src1) && ggml_are_same_shape(src0, dst));
  13828. const int64_t ith = params->ith;
  13829. const int64_t nth = params->nth;
  13830. if (params->type == GGML_TASK_TYPE_INIT || params->type == GGML_TASK_TYPE_FINALIZE) {
  13831. return;
  13832. }
  13833. const double eps = 1e-9;
  13834. // TODO: handle transposed/permuted matrices
  13835. const int64_t nc = src0->ne[0];
  13836. const int64_t nr = ggml_nrows(src0);
  13837. // rows per thread
  13838. const int64_t dr = (nr + nth - 1)/nth;
  13839. // row range for this thread
  13840. const int64_t ir0 = dr*ith;
  13841. const int64_t ir1 = MIN(ir0 + dr, nr);
  13842. float * d = (float *) opt0->data;
  13843. for (int64_t i1 = ir0; i1 < ir1; i1++) {
  13844. float * ds0 = (float *)((char *) dst->data + i1*dst->nb[1]);
  13845. float * s0 = (float *)((char *) src0->data + i1*src0->nb[1]);
  13846. float * s1 = (float *)((char *) src1->data + i1*src1->nb[1]);
  13847. #ifndef NDEBUG
  13848. for (int i = 0; i < nc; ++i) {
  13849. //printf("p[%d] = %f\n", i, p[i]);
  13850. assert(!isnan(s0[i]));
  13851. assert(!isnan(s1[i]));
  13852. }
  13853. #endif
  13854. // soft_max
  13855. float max = -INFINITY;
  13856. ggml_vec_max_f32(nc, &max, s0);
  13857. ggml_float sum = ggml_vec_soft_max_f32(nc, ds0, s0, max);
  13858. assert(sum > 0.0);
  13859. sum = (1.0 - eps) / sum;
  13860. // grad(src0) = (softmax(src0) - src1) * grad(cross_entropy_loss(src0, src1)) / nr
  13861. ggml_vec_scale_f32(nc, ds0, sum);
  13862. ggml_vec_add1_f32(nc, ds0, ds0, eps);
  13863. ggml_vec_sub_f32(nc, ds0, ds0, s1);
  13864. ggml_vec_scale_f32(nc, ds0, d[0] / (float) nr);
  13865. #ifndef NDEBUG
  13866. for (int i = 0; i < nc; ++i) {
  13867. assert(!isnan(ds0[i]));
  13868. assert(!isinf(ds0[i]));
  13869. }
  13870. #endif
  13871. }
  13872. }
  13873. static void ggml_compute_forward_cross_entropy_loss_back(
  13874. const struct ggml_compute_params * params,
  13875. struct ggml_tensor * dst) {
  13876. const struct ggml_tensor * src0 = dst->src[0];
  13877. switch (src0->type) {
  13878. case GGML_TYPE_F32:
  13879. {
  13880. ggml_compute_forward_cross_entropy_loss_back_f32(params, dst);
  13881. } break;
  13882. default:
  13883. {
  13884. GGML_ASSERT(false);
  13885. } break;
  13886. }
  13887. }
  13888. /////////////////////////////////
  13889. static void ggml_compute_forward(struct ggml_compute_params * params, struct ggml_tensor * tensor, struct ggml_compute_state * state) {
  13890. GGML_ASSERT(params);
  13891. if (tensor->op == GGML_OP_NONE || ggml_is_empty(tensor)) {
  13892. return;
  13893. }
  13894. switch (tensor->op) {
  13895. case GGML_OP_DUP:
  13896. {
  13897. ggml_compute_forward_dup(params, tensor);
  13898. } break;
  13899. case GGML_OP_ADD:
  13900. {
  13901. ggml_compute_forward_add(params, tensor);
  13902. } break;
  13903. case GGML_OP_ADD1:
  13904. {
  13905. ggml_compute_forward_add1(params, tensor);
  13906. } break;
  13907. case GGML_OP_ACC:
  13908. {
  13909. ggml_compute_forward_acc(params, tensor);
  13910. } break;
  13911. case GGML_OP_SUB:
  13912. {
  13913. ggml_compute_forward_sub(params, tensor);
  13914. } break;
  13915. case GGML_OP_MUL:
  13916. {
  13917. ggml_compute_forward_mul(params, tensor);
  13918. } break;
  13919. case GGML_OP_DIV:
  13920. {
  13921. ggml_compute_forward_div(params, tensor);
  13922. } break;
  13923. case GGML_OP_SQR:
  13924. {
  13925. ggml_compute_forward_sqr(params, tensor);
  13926. } break;
  13927. case GGML_OP_SQRT:
  13928. {
  13929. ggml_compute_forward_sqrt(params, tensor);
  13930. } break;
  13931. case GGML_OP_LOG:
  13932. {
  13933. ggml_compute_forward_log(params, tensor);
  13934. } break;
  13935. case GGML_OP_SUM:
  13936. {
  13937. ggml_compute_forward_sum(params, tensor);
  13938. } break;
  13939. case GGML_OP_SUM_ROWS:
  13940. {
  13941. ggml_compute_forward_sum_rows(params, tensor);
  13942. } break;
  13943. case GGML_OP_MEAN:
  13944. {
  13945. ggml_compute_forward_mean(params, tensor);
  13946. } break;
  13947. case GGML_OP_ARGMAX:
  13948. {
  13949. ggml_compute_forward_argmax(params, tensor);
  13950. } break;
  13951. case GGML_OP_REPEAT:
  13952. {
  13953. ggml_compute_forward_repeat(params, tensor);
  13954. } break;
  13955. case GGML_OP_REPEAT_BACK:
  13956. {
  13957. ggml_compute_forward_repeat_back(params, tensor);
  13958. } break;
  13959. case GGML_OP_CONCAT:
  13960. {
  13961. ggml_compute_forward_concat(params, tensor);
  13962. } break;
  13963. case GGML_OP_SILU_BACK:
  13964. {
  13965. ggml_compute_forward_silu_back(params, tensor);
  13966. } break;
  13967. case GGML_OP_NORM:
  13968. {
  13969. ggml_compute_forward_norm(params, tensor);
  13970. } break;
  13971. case GGML_OP_RMS_NORM:
  13972. {
  13973. ggml_compute_forward_rms_norm(params, tensor);
  13974. } break;
  13975. case GGML_OP_RMS_NORM_BACK:
  13976. {
  13977. ggml_compute_forward_rms_norm_back(params, tensor);
  13978. } break;
  13979. case GGML_OP_GROUP_NORM:
  13980. {
  13981. ggml_compute_forward_group_norm(params, tensor);
  13982. } break;
  13983. case GGML_OP_MUL_MAT:
  13984. {
  13985. ggml_compute_forward_mul_mat(params, tensor, state);
  13986. } break;
  13987. case GGML_OP_MUL_MAT_ID:
  13988. {
  13989. ggml_compute_forward_mul_mat_id(params, tensor);
  13990. } break;
  13991. case GGML_OP_OUT_PROD:
  13992. {
  13993. ggml_compute_forward_out_prod(params, tensor);
  13994. } break;
  13995. case GGML_OP_SCALE:
  13996. {
  13997. ggml_compute_forward_scale(params, tensor);
  13998. } break;
  13999. case GGML_OP_SET:
  14000. {
  14001. ggml_compute_forward_set(params, tensor);
  14002. } break;
  14003. case GGML_OP_CPY:
  14004. {
  14005. ggml_compute_forward_cpy(params, tensor);
  14006. } break;
  14007. case GGML_OP_CONT:
  14008. {
  14009. ggml_compute_forward_cont(params, tensor);
  14010. } break;
  14011. case GGML_OP_RESHAPE:
  14012. {
  14013. ggml_compute_forward_reshape(params, tensor);
  14014. } break;
  14015. case GGML_OP_VIEW:
  14016. {
  14017. ggml_compute_forward_view(params, tensor);
  14018. } break;
  14019. case GGML_OP_PERMUTE:
  14020. {
  14021. ggml_compute_forward_permute(params, tensor);
  14022. } break;
  14023. case GGML_OP_TRANSPOSE:
  14024. {
  14025. ggml_compute_forward_transpose(params, tensor);
  14026. } break;
  14027. case GGML_OP_GET_ROWS:
  14028. {
  14029. ggml_compute_forward_get_rows(params, tensor);
  14030. } break;
  14031. case GGML_OP_GET_ROWS_BACK:
  14032. {
  14033. ggml_compute_forward_get_rows_back(params, tensor);
  14034. } break;
  14035. case GGML_OP_DIAG:
  14036. {
  14037. ggml_compute_forward_diag(params, tensor);
  14038. } break;
  14039. case GGML_OP_DIAG_MASK_INF:
  14040. {
  14041. ggml_compute_forward_diag_mask_inf(params, tensor);
  14042. } break;
  14043. case GGML_OP_DIAG_MASK_ZERO:
  14044. {
  14045. ggml_compute_forward_diag_mask_zero(params, tensor);
  14046. } break;
  14047. case GGML_OP_SOFT_MAX:
  14048. {
  14049. ggml_compute_forward_soft_max(params, tensor);
  14050. } break;
  14051. case GGML_OP_SOFT_MAX_BACK:
  14052. {
  14053. ggml_compute_forward_soft_max_back(params, tensor);
  14054. } break;
  14055. case GGML_OP_ROPE:
  14056. {
  14057. ggml_compute_forward_rope(params, tensor);
  14058. } break;
  14059. case GGML_OP_ROPE_BACK:
  14060. {
  14061. ggml_compute_forward_rope_back(params, tensor);
  14062. } break;
  14063. case GGML_OP_CLAMP:
  14064. {
  14065. ggml_compute_forward_clamp(params, tensor);
  14066. } break;
  14067. case GGML_OP_CONV_TRANSPOSE_1D:
  14068. {
  14069. ggml_compute_forward_conv_transpose_1d(params, tensor);
  14070. } break;
  14071. case GGML_OP_IM2COL:
  14072. {
  14073. ggml_compute_forward_im2col(params, tensor);
  14074. } break;
  14075. case GGML_OP_CONV_TRANSPOSE_2D:
  14076. {
  14077. ggml_compute_forward_conv_transpose_2d(params, tensor);
  14078. } break;
  14079. case GGML_OP_POOL_1D:
  14080. {
  14081. ggml_compute_forward_pool_1d(params, tensor);
  14082. } break;
  14083. case GGML_OP_POOL_2D:
  14084. {
  14085. ggml_compute_forward_pool_2d(params, tensor);
  14086. } break;
  14087. case GGML_OP_UPSCALE:
  14088. {
  14089. ggml_compute_forward_upscale(params, tensor);
  14090. } break;
  14091. case GGML_OP_PAD:
  14092. {
  14093. ggml_compute_forward_pad(params, tensor);
  14094. } break;
  14095. case GGML_OP_ARANGE:
  14096. {
  14097. ggml_compute_forward_arange(params, tensor);
  14098. } break;
  14099. case GGML_OP_TIMESTEP_EMBEDDING:
  14100. {
  14101. ggml_compute_forward_timestep_embedding(params, tensor);
  14102. } break;
  14103. case GGML_OP_ARGSORT:
  14104. {
  14105. ggml_compute_forward_argsort(params, tensor);
  14106. } break;
  14107. case GGML_OP_LEAKY_RELU:
  14108. {
  14109. ggml_compute_forward_leaky_relu(params, tensor);
  14110. } break;
  14111. case GGML_OP_FLASH_ATTN_EXT:
  14112. {
  14113. ggml_compute_forward_flash_attn_ext(params, tensor->src[0], tensor->src[1], tensor->src[2], tensor->src[3], tensor);
  14114. } break;
  14115. case GGML_OP_FLASH_ATTN_BACK:
  14116. {
  14117. int32_t t = ggml_get_op_params_i32(tensor, 0);
  14118. GGML_ASSERT(t == 0 || t == 1);
  14119. bool masked = t != 0;
  14120. ggml_compute_forward_flash_attn_back(params, masked, tensor);
  14121. } break;
  14122. case GGML_OP_SSM_CONV:
  14123. {
  14124. ggml_compute_forward_ssm_conv(params, tensor);
  14125. } break;
  14126. case GGML_OP_SSM_SCAN:
  14127. {
  14128. ggml_compute_forward_ssm_scan(params, tensor);
  14129. } break;
  14130. case GGML_OP_WIN_PART:
  14131. {
  14132. ggml_compute_forward_win_part(params, tensor);
  14133. } break;
  14134. case GGML_OP_WIN_UNPART:
  14135. {
  14136. ggml_compute_forward_win_unpart(params, tensor);
  14137. } break;
  14138. case GGML_OP_UNARY:
  14139. {
  14140. ggml_compute_forward_unary(params, tensor);
  14141. } break;
  14142. case GGML_OP_GET_REL_POS:
  14143. {
  14144. ggml_compute_forward_get_rel_pos(params, tensor);
  14145. } break;
  14146. case GGML_OP_ADD_REL_POS:
  14147. {
  14148. ggml_compute_forward_add_rel_pos(params, tensor);
  14149. } break;
  14150. case GGML_OP_MAP_UNARY:
  14151. {
  14152. ggml_unary_op_f32_t fun;
  14153. memcpy(&fun, tensor->op_params, sizeof(fun));
  14154. ggml_compute_forward_map_unary(params, tensor, fun);
  14155. }
  14156. break;
  14157. case GGML_OP_MAP_BINARY:
  14158. {
  14159. ggml_binary_op_f32_t fun;
  14160. memcpy(&fun, tensor->op_params, sizeof(fun));
  14161. ggml_compute_forward_map_binary(params, tensor, fun);
  14162. }
  14163. break;
  14164. case GGML_OP_MAP_CUSTOM1_F32:
  14165. {
  14166. ggml_custom1_op_f32_t fun;
  14167. memcpy(&fun, tensor->op_params, sizeof(fun));
  14168. ggml_compute_forward_map_custom1_f32(params, tensor, fun);
  14169. }
  14170. break;
  14171. case GGML_OP_MAP_CUSTOM2_F32:
  14172. {
  14173. ggml_custom2_op_f32_t fun;
  14174. memcpy(&fun, tensor->op_params, sizeof(fun));
  14175. ggml_compute_forward_map_custom2_f32(params, tensor, fun);
  14176. }
  14177. break;
  14178. case GGML_OP_MAP_CUSTOM3_F32:
  14179. {
  14180. ggml_custom3_op_f32_t fun;
  14181. memcpy(&fun, tensor->op_params, sizeof(fun));
  14182. ggml_compute_forward_map_custom3_f32(params, tensor, fun);
  14183. }
  14184. break;
  14185. case GGML_OP_MAP_CUSTOM1:
  14186. {
  14187. ggml_compute_forward_map_custom1(params, tensor);
  14188. }
  14189. break;
  14190. case GGML_OP_MAP_CUSTOM2:
  14191. {
  14192. ggml_compute_forward_map_custom2(params, tensor);
  14193. }
  14194. break;
  14195. case GGML_OP_MAP_CUSTOM3:
  14196. {
  14197. ggml_compute_forward_map_custom3(params, tensor);
  14198. }
  14199. break;
  14200. case GGML_OP_CROSS_ENTROPY_LOSS:
  14201. {
  14202. ggml_compute_forward_cross_entropy_loss(params, tensor);
  14203. }
  14204. break;
  14205. case GGML_OP_CROSS_ENTROPY_LOSS_BACK:
  14206. {
  14207. ggml_compute_forward_cross_entropy_loss_back(params, tensor);
  14208. }
  14209. break;
  14210. case GGML_OP_NONE:
  14211. {
  14212. // nop
  14213. } break;
  14214. case GGML_OP_COUNT:
  14215. {
  14216. GGML_ASSERT(false);
  14217. } break;
  14218. }
  14219. }
  14220. ////////////////////////////////////////////////////////////////////////////////
  14221. static size_t ggml_hash_size(size_t min_sz) {
  14222. // next primes after powers of two
  14223. static const size_t primes[] = {
  14224. 2, 3, 5, 11, 17, 37, 67, 131, 257, 521, 1031,
  14225. 2053, 4099, 8209, 16411, 32771, 65537, 131101,
  14226. 262147, 524309, 1048583, 2097169, 4194319, 8388617,
  14227. 16777259, 33554467, 67108879, 134217757, 268435459,
  14228. 536870923, 1073741827, 2147483659
  14229. };
  14230. static const size_t n_primes = sizeof(primes)/sizeof(primes[0]);
  14231. // find the smallest prime that is larger or equal to min_sz
  14232. size_t l = 0;
  14233. size_t r = n_primes;
  14234. while (l < r) {
  14235. size_t m = (l + r)/2;
  14236. if (primes[m] < min_sz) {
  14237. l = m + 1;
  14238. } else {
  14239. r = m;
  14240. }
  14241. }
  14242. size_t sz = l < n_primes ? primes[l] : min_sz | 1;
  14243. return sz;
  14244. }
  14245. static size_t ggml_hash(const void * p) {
  14246. return (size_t)p;
  14247. }
  14248. size_t ggml_hash_find(const struct ggml_hash_set hash_set, struct ggml_tensor * key) {
  14249. size_t h = ggml_hash(key) % hash_set.size;
  14250. // linear probing
  14251. size_t i = h;
  14252. while (hash_set.keys[i] != NULL && hash_set.keys[i] != key) {
  14253. i = (i + 1) % hash_set.size;
  14254. if (i == h) {
  14255. // visited all hash table entries -> not found
  14256. return GGML_HASHTABLE_FULL;
  14257. }
  14258. }
  14259. return i;
  14260. }
  14261. bool ggml_hash_contains(struct ggml_hash_set hash_set, struct ggml_tensor * key) {
  14262. size_t i = ggml_hash_find(hash_set, key);
  14263. return i != GGML_HASHTABLE_FULL && hash_set.keys[i] == key;
  14264. }
  14265. size_t ggml_hash_insert(struct ggml_hash_set hash_set, struct ggml_tensor * key) {
  14266. size_t i = ggml_hash_find(hash_set, key);
  14267. GGML_ASSERT(i != GGML_HASHTABLE_FULL);
  14268. if (hash_set.keys[i] == key) {
  14269. return GGML_HASHTABLE_ALREADY_EXISTS;
  14270. }
  14271. // insert
  14272. GGML_ASSERT(hash_set.keys[i] == NULL);
  14273. hash_set.keys[i] = key;
  14274. return i;
  14275. }
  14276. size_t ggml_hash_find_or_insert(struct ggml_hash_set hash_set, struct ggml_tensor * key) {
  14277. size_t i = ggml_hash_find(hash_set, key);
  14278. GGML_ASSERT(i != GGML_HASHTABLE_FULL);
  14279. hash_set.keys[i] = key;
  14280. return i;
  14281. }
  14282. struct ggml_hash_set ggml_hash_set_new(size_t size) {
  14283. size = ggml_hash_size(size);
  14284. struct ggml_hash_set result;
  14285. result.size = size;
  14286. result.keys = GGML_MALLOC(sizeof(struct ggml_tensor *) * size);
  14287. memset(result.keys, 0, sizeof(struct ggml_tensor *) * size);
  14288. return result;
  14289. }
  14290. static void ggml_hash_set_free(struct ggml_hash_set hash_set) {
  14291. GGML_FREE(hash_set.keys);
  14292. }
  14293. struct hash_map {
  14294. struct ggml_hash_set set;
  14295. struct ggml_tensor ** vals;
  14296. };
  14297. static struct hash_map * ggml_new_hash_map(size_t size) {
  14298. struct hash_map * result = GGML_MALLOC(sizeof(struct hash_map));
  14299. result->set = ggml_hash_set_new(size);
  14300. result->vals = GGML_MALLOC(sizeof(struct ggml_tensor *) * result->set.size);
  14301. memset(result->vals, 0, sizeof(struct ggml_tensor *) * result->set.size);
  14302. return result;
  14303. }
  14304. static void ggml_hash_map_free(struct hash_map * map) {
  14305. ggml_hash_set_free(map->set);
  14306. GGML_FREE(map->vals);
  14307. GGML_FREE(map);
  14308. }
  14309. // gradient checkpointing
  14310. static struct ggml_tensor * ggml_recompute_graph_node(
  14311. struct ggml_context * ctx,
  14312. struct ggml_cgraph * graph,
  14313. struct hash_map * replacements,
  14314. struct ggml_tensor * node) {
  14315. if (node == NULL) {
  14316. return NULL;
  14317. }
  14318. if (node->flags & GGML_TENSOR_FLAG_PARAM) {
  14319. return node;
  14320. }
  14321. if (!ggml_hash_contains(graph->visited_hash_table, node)) {
  14322. return node;
  14323. }
  14324. int count_children = 0;
  14325. for (int k = 0; k < GGML_MAX_SRC; ++k) {
  14326. if (node->src[k]) {
  14327. ++count_children;
  14328. }
  14329. }
  14330. if (count_children == 0) {
  14331. return node;
  14332. }
  14333. size_t i = ggml_hash_find(replacements->set, node);
  14334. GGML_ASSERT(i != GGML_HASHTABLE_FULL); // assert that not full
  14335. if (replacements->set.keys[i] == node) {
  14336. return replacements->vals[i];
  14337. }
  14338. struct ggml_tensor * clone = ggml_new_tensor(ctx, node->type, GGML_MAX_DIMS, node->ne);
  14339. // insert clone into replacements
  14340. GGML_ASSERT(replacements->set.keys[i] == NULL); // assert that we don't overwrite
  14341. replacements->set.keys[i] = node;
  14342. replacements->vals[i] = clone;
  14343. clone->op = node->op;
  14344. clone->grad = node->grad;
  14345. clone->flags = node->flags;
  14346. clone->extra = node->extra;
  14347. for (int k = 0; k < GGML_MAX_DIMS; ++k) {
  14348. clone->nb[k] = node->nb[k];
  14349. }
  14350. for (int k = 0; k < GGML_MAX_SRC; ++k) {
  14351. clone->src[k] = ggml_recompute_graph_node(ctx, graph, replacements, node->src[k]);
  14352. }
  14353. if (node->view_src != NULL) {
  14354. clone->data = (node->view_src->data == NULL)
  14355. ? NULL // view_src not yet allocated
  14356. : (char *) node->view_src->data // view_src already allocated
  14357. + node->view_offs;
  14358. clone->view_src = node->view_src;
  14359. clone->view_offs = node->view_offs;
  14360. }
  14361. GGML_ASSERT(sizeof(node->op_params) == sizeof(int32_t) * (GGML_MAX_OP_PARAMS / sizeof(int32_t)));
  14362. GGML_ASSERT(sizeof(node->name) == GGML_MAX_NAME);
  14363. memcpy(clone->op_params, node->op_params, sizeof(node->op_params));
  14364. ggml_format_name(clone, "%s (clone)", ggml_get_name(node));
  14365. return clone;
  14366. }
  14367. void ggml_build_backward_gradient_checkpointing(
  14368. struct ggml_context * ctx,
  14369. struct ggml_cgraph * gf,
  14370. struct ggml_cgraph * gb,
  14371. struct ggml_cgraph * gb_tmp,
  14372. struct ggml_tensor * * checkpoints,
  14373. int n_checkpoints) {
  14374. ggml_graph_cpy(gf, gb_tmp);
  14375. ggml_build_backward_expand(ctx, gf, gb_tmp, true);
  14376. if (n_checkpoints <= 0) {
  14377. ggml_graph_cpy(gb_tmp, gb);
  14378. return;
  14379. }
  14380. struct hash_map * replacements = ggml_new_hash_map(gf->n_nodes + gf->n_leafs + n_checkpoints);
  14381. // insert checkpoints in replacements
  14382. for (int i = 0; i < n_checkpoints; ++i) {
  14383. size_t k = ggml_hash_find(replacements->set, checkpoints[i]);
  14384. GGML_ASSERT(k != GGML_HASHTABLE_FULL); // assert that not full
  14385. GGML_ASSERT(replacements->set.keys[k] == NULL); // assert that we don't overwrite
  14386. replacements->set.keys[k] = checkpoints[i];
  14387. replacements->vals[k] = checkpoints[i];
  14388. }
  14389. ggml_graph_cpy(gf, gb);
  14390. // rewrite gb_tmp->nodes[gf->n_nodes:gb_tmp->n_nodes],
  14391. // replacing references to gb_tmp->nodes[0:gf->n_nodes] ( == gf->nodes[0:gf->n_nodes]),
  14392. // by recomputing them from checkpoints
  14393. for (int i = gf->n_nodes; i<gb_tmp->n_nodes; ++i) {
  14394. struct ggml_tensor * node = gb_tmp->nodes[i];
  14395. for (int k = 0; k < GGML_MAX_SRC; ++k) {
  14396. // insert new tensors recomputing src, reusing already made replacements,
  14397. // remember replacements: remember new tensors with mapping from corresponding gf nodes
  14398. // recurse for input tensors,
  14399. // unless (i.e. terminating when) input tensors are replacements (like checkpoints)
  14400. node->src[k] = ggml_recompute_graph_node(ctx, gf, replacements, node->src[k]);
  14401. }
  14402. // insert rewritten backward node with replacements made into resulting backward graph gb
  14403. ggml_build_forward_expand(gb, node);
  14404. }
  14405. ggml_hash_map_free(replacements);
  14406. }
  14407. // functions to change gradients considering the case that input a might be initial gradient with zero value
  14408. static struct ggml_tensor * ggml_add_or_set(struct ggml_context * ctx, struct ggml_tensor * a, struct ggml_tensor * b, struct ggml_hash_set zero_table) {
  14409. if (ggml_hash_contains(zero_table, a)) {
  14410. return b;
  14411. } else {
  14412. return ggml_add_impl(ctx, a, b, false);
  14413. }
  14414. }
  14415. static struct ggml_tensor * ggml_acc_or_set(struct ggml_context * ctx, struct ggml_tensor * a, struct ggml_tensor * b, size_t nb1, size_t nb2, size_t nb3, size_t offset, struct ggml_hash_set zero_table) {
  14416. if (ggml_hash_contains(zero_table, a)) {
  14417. struct ggml_tensor * a_zero = ggml_scale(ctx, a, 0.0f);
  14418. return ggml_acc_impl(ctx, a_zero, b, nb1, nb2, nb3, offset, false);
  14419. } else {
  14420. return ggml_acc_impl(ctx, a, b, nb1, nb2, nb3, offset, false);
  14421. }
  14422. }
  14423. static struct ggml_tensor * ggml_add1_or_set(struct ggml_context * ctx, struct ggml_tensor * a, struct ggml_tensor * b, struct ggml_hash_set zero_table) {
  14424. if (ggml_hash_contains(zero_table, a)) {
  14425. return ggml_repeat(ctx, b, a);
  14426. } else {
  14427. return ggml_add1_impl(ctx, a, b, false);
  14428. }
  14429. }
  14430. static struct ggml_tensor * ggml_sub_or_set(struct ggml_context * ctx, struct ggml_tensor * a, struct ggml_tensor * b, struct ggml_hash_set zero_table) {
  14431. if (ggml_hash_contains(zero_table, a)) {
  14432. return ggml_neg(ctx, b);
  14433. } else {
  14434. return ggml_sub_impl(ctx, a, b, false);
  14435. }
  14436. }
  14437. static void ggml_compute_backward(struct ggml_context * ctx, struct ggml_tensor * tensor, struct ggml_hash_set zero_table) {
  14438. struct ggml_tensor * src0 = tensor->src[0];
  14439. struct ggml_tensor * src1 = tensor->src[1];
  14440. struct ggml_tensor * src2 = tensor->src[2];
  14441. switch (tensor->op) {
  14442. case GGML_OP_DUP:
  14443. {
  14444. if (src0->grad) {
  14445. src0->grad = ggml_add_or_set(ctx, src0->grad, tensor->grad, zero_table);
  14446. }
  14447. } break;
  14448. case GGML_OP_ADD:
  14449. {
  14450. if (src0->grad) {
  14451. src0->grad = ggml_add_or_set(ctx, src0->grad, tensor->grad, zero_table);
  14452. }
  14453. if (src1->grad) {
  14454. src1->grad = ggml_add_or_set(ctx, src1->grad, tensor->grad, zero_table);
  14455. }
  14456. } break;
  14457. case GGML_OP_ADD1:
  14458. {
  14459. if (src0->grad) {
  14460. src0->grad = ggml_add_or_set(ctx, src0->grad, tensor->grad, zero_table);
  14461. }
  14462. if (src1->grad) {
  14463. src1->grad = ggml_add_or_set(ctx,
  14464. src1->grad,
  14465. ggml_mean(ctx, tensor->grad), // TODO: should probably be sum instead of mean
  14466. zero_table);
  14467. }
  14468. } break;
  14469. case GGML_OP_ACC:
  14470. {
  14471. if (src0->grad) {
  14472. src0->grad = ggml_add_or_set(ctx, src0->grad, tensor->grad, zero_table);
  14473. }
  14474. if (src1->grad) {
  14475. const size_t nb1 = ((int32_t *) tensor->op_params)[0];
  14476. const size_t nb2 = ((int32_t *) tensor->op_params)[1];
  14477. const size_t nb3 = ((int32_t *) tensor->op_params)[2];
  14478. const size_t offset = ((int32_t *) tensor->op_params)[3];
  14479. struct ggml_tensor * tensor_grad_view = ggml_view_4d(ctx,
  14480. tensor->grad,
  14481. src1->grad->ne[0],
  14482. src1->grad->ne[1],
  14483. src1->grad->ne[2],
  14484. src1->grad->ne[3],
  14485. nb1, nb2, nb3, offset);
  14486. src1->grad =
  14487. ggml_add_or_set(ctx,
  14488. src1->grad,
  14489. ggml_reshape(ctx,
  14490. ggml_cont(ctx, tensor_grad_view),
  14491. src1->grad),
  14492. zero_table);
  14493. }
  14494. } break;
  14495. case GGML_OP_SUB:
  14496. {
  14497. if (src0->grad) {
  14498. src0->grad = ggml_add_or_set(ctx, src0->grad, tensor->grad, zero_table);
  14499. }
  14500. if (src1->grad) {
  14501. src1->grad = ggml_sub_or_set(ctx, src1->grad, tensor->grad, zero_table);
  14502. }
  14503. } break;
  14504. case GGML_OP_MUL:
  14505. {
  14506. if (src0->grad) {
  14507. src0->grad =
  14508. ggml_add_or_set(ctx,
  14509. src0->grad,
  14510. ggml_mul(ctx, src1, tensor->grad),
  14511. zero_table);
  14512. }
  14513. if (src1->grad) {
  14514. src1->grad =
  14515. ggml_add_or_set(ctx,
  14516. src1->grad,
  14517. ggml_mul(ctx, src0, tensor->grad),
  14518. zero_table);
  14519. }
  14520. } break;
  14521. case GGML_OP_DIV:
  14522. {
  14523. if (src0->grad) {
  14524. src0->grad =
  14525. ggml_add_or_set(ctx,
  14526. src0->grad,
  14527. ggml_div(ctx, tensor->grad, src1),
  14528. zero_table);
  14529. }
  14530. if (src1->grad) {
  14531. src1->grad =
  14532. ggml_sub_or_set(ctx,
  14533. src1->grad,
  14534. ggml_mul(ctx,
  14535. tensor->grad,
  14536. ggml_div(ctx, tensor, src1)),
  14537. zero_table);
  14538. }
  14539. } break;
  14540. case GGML_OP_SQR:
  14541. {
  14542. if (src0->grad) {
  14543. src0->grad =
  14544. ggml_add_or_set(ctx,
  14545. src0->grad,
  14546. ggml_scale(ctx,
  14547. ggml_mul(ctx, src0, tensor->grad),
  14548. 2.0f),
  14549. zero_table);
  14550. }
  14551. } break;
  14552. case GGML_OP_SQRT:
  14553. {
  14554. if (src0->grad) {
  14555. src0->grad =
  14556. ggml_add_or_set(ctx,
  14557. src0->grad,
  14558. ggml_scale(ctx,
  14559. ggml_div(ctx,
  14560. tensor->grad,
  14561. tensor),
  14562. 0.5f),
  14563. zero_table);
  14564. }
  14565. } break;
  14566. case GGML_OP_LOG:
  14567. {
  14568. if (src0->grad) {
  14569. src0->grad =
  14570. ggml_add_or_set(ctx,
  14571. src0->grad,
  14572. ggml_div(ctx,
  14573. tensor->grad,
  14574. src0),
  14575. zero_table);
  14576. }
  14577. } break;
  14578. case GGML_OP_SUM:
  14579. {
  14580. if (src0->grad) {
  14581. src0->grad =
  14582. ggml_add1_or_set(ctx,
  14583. src0->grad,
  14584. tensor->grad,
  14585. zero_table);
  14586. }
  14587. } break;
  14588. case GGML_OP_SUM_ROWS:
  14589. {
  14590. if (src0->grad) {
  14591. src0->grad =
  14592. ggml_add_or_set(ctx,
  14593. src0->grad,
  14594. ggml_repeat(ctx,
  14595. tensor->grad,
  14596. src0->grad),
  14597. zero_table);
  14598. }
  14599. } break;
  14600. case GGML_OP_MEAN:
  14601. case GGML_OP_ARGMAX:
  14602. {
  14603. GGML_ASSERT(false); // TODO: implement
  14604. } break;
  14605. case GGML_OP_REPEAT:
  14606. {
  14607. // necessary for llama
  14608. if (src0->grad) {
  14609. src0->grad = ggml_add_or_set(ctx,
  14610. src0->grad,
  14611. ggml_repeat_back(ctx, tensor->grad, src0->grad),
  14612. zero_table);
  14613. }
  14614. } break;
  14615. case GGML_OP_REPEAT_BACK:
  14616. {
  14617. if (src0->grad) {
  14618. // TODO: test this
  14619. src0->grad = ggml_add_or_set(ctx,
  14620. src0->grad,
  14621. ggml_repeat(ctx, tensor->grad, src0->grad),
  14622. zero_table);
  14623. }
  14624. } break;
  14625. case GGML_OP_CONCAT:
  14626. {
  14627. GGML_ASSERT(false); // TODO: implement
  14628. } break;
  14629. case GGML_OP_SILU_BACK:
  14630. {
  14631. GGML_ASSERT(false); // TODO: not implemented
  14632. } break;
  14633. case GGML_OP_NORM:
  14634. {
  14635. GGML_ASSERT(false); // TODO: not implemented
  14636. } break;
  14637. case GGML_OP_RMS_NORM:
  14638. {
  14639. // necessary for llama
  14640. if (src0->grad) {
  14641. float eps;
  14642. memcpy(&eps, tensor->op_params, sizeof(float));
  14643. src0->grad = ggml_add_or_set(ctx,
  14644. src0->grad,
  14645. ggml_rms_norm_back(ctx, src0, tensor->grad, eps),
  14646. zero_table);
  14647. }
  14648. } break;
  14649. case GGML_OP_RMS_NORM_BACK:
  14650. {
  14651. GGML_ASSERT(false); // TODO: not implemented
  14652. } break;
  14653. case GGML_OP_GROUP_NORM:
  14654. {
  14655. GGML_ASSERT(false); // TODO: not implemented
  14656. } break;
  14657. case GGML_OP_MUL_MAT:
  14658. {
  14659. // https://cs231n.github.io/optimization-2/#staged
  14660. // # forward pass
  14661. // s0 = np.random.randn(5, 10)
  14662. // s1 = np.random.randn(10, 3)
  14663. // t = s0.dot(s1)
  14664. // # now suppose we had the gradient on t from above in the circuit
  14665. // dt = np.random.randn(*t.shape) # same shape as t
  14666. // ds0 = dt.dot(s1.T) #.T gives the transpose of the matrix
  14667. // ds1 = t.T.dot(dt)
  14668. // tensor.shape [m,p,qq,rr]
  14669. // src0.shape [n,m,q1,r1]
  14670. // src1.shape [n,p,qq,rr]
  14671. // necessary for llama
  14672. if (src0->grad) {
  14673. struct ggml_tensor * s1_tg =
  14674. ggml_out_prod(ctx, // [n,m,qq,rr]
  14675. src1, // [n,p,qq,rr]
  14676. tensor->grad); // [m,p,qq,rr]
  14677. const int64_t qq = s1_tg->ne[2];
  14678. const int64_t rr = s1_tg->ne[3];
  14679. const int64_t q1 = src0->ne[2];
  14680. const int64_t r1 = src0->ne[3];
  14681. const bool ne2_broadcasted = qq > q1;
  14682. const bool ne3_broadcasted = rr > r1;
  14683. if (ne2_broadcasted || ne3_broadcasted) {
  14684. // sum broadcast repetitions of s1_tg into shape of src0
  14685. s1_tg = ggml_repeat_back(ctx, s1_tg, src0);
  14686. }
  14687. src0->grad =
  14688. ggml_add_or_set(ctx,
  14689. src0->grad, // [n,m,q1,r1]
  14690. s1_tg, // [n,m,q1,r1]
  14691. zero_table);
  14692. }
  14693. if (src1->grad) {
  14694. src1->grad =
  14695. ggml_add_or_set(ctx,
  14696. src1->grad, // [n,p,qq,rr]
  14697. // ggml_mul_mat(ctx, // [n,p,qq,rr]
  14698. // ggml_cont(ctx, // [m,n,q1,r1]
  14699. // ggml_transpose(ctx, src0)), // [m,n,q1,r1]
  14700. // tensor->grad), // [m,p,qq,rr]
  14701. // // when src0 is bigger than tensor->grad (this is mostly the case in llama),
  14702. // // avoid transpose of src0, rather transpose smaller tensor->grad
  14703. // // and then use ggml_out_prod
  14704. ggml_out_prod(ctx, // [n,p,qq,rr]
  14705. src0, // [n,m,q1,r1]
  14706. ggml_transpose(ctx, // [p,m,qq,rr]
  14707. tensor->grad)), // [m,p,qq,rr]
  14708. zero_table);
  14709. }
  14710. } break;
  14711. case GGML_OP_MUL_MAT_ID:
  14712. {
  14713. GGML_ASSERT(false); // TODO: not implemented
  14714. } break;
  14715. case GGML_OP_OUT_PROD:
  14716. {
  14717. GGML_ASSERT(false); // TODO: not implemented
  14718. } break;
  14719. case GGML_OP_SCALE:
  14720. {
  14721. // necessary for llama
  14722. if (src0->grad) {
  14723. float s;
  14724. memcpy(&s, tensor->op_params, sizeof(float));
  14725. src0->grad =
  14726. ggml_add_or_set(ctx,
  14727. src0->grad,
  14728. ggml_scale_impl(ctx, tensor->grad, s, false),
  14729. zero_table);
  14730. }
  14731. } break;
  14732. case GGML_OP_SET:
  14733. {
  14734. const size_t nb1 = ((int32_t *) tensor->op_params)[0];
  14735. const size_t nb2 = ((int32_t *) tensor->op_params)[1];
  14736. const size_t nb3 = ((int32_t *) tensor->op_params)[2];
  14737. const size_t offset = ((int32_t *) tensor->op_params)[3];
  14738. struct ggml_tensor * tensor_grad_view = NULL;
  14739. if (src0->grad || src1->grad) {
  14740. GGML_ASSERT(src0->type == tensor->type);
  14741. GGML_ASSERT(tensor->grad->type == tensor->type);
  14742. GGML_ASSERT(tensor->grad->type == src1->grad->type);
  14743. tensor_grad_view = ggml_view_4d(ctx,
  14744. tensor->grad,
  14745. src1->grad->ne[0],
  14746. src1->grad->ne[1],
  14747. src1->grad->ne[2],
  14748. src1->grad->ne[3],
  14749. nb1, nb2, nb3, offset);
  14750. }
  14751. if (src0->grad) {
  14752. src0->grad = ggml_add_or_set(ctx,
  14753. src0->grad,
  14754. ggml_acc_impl(ctx,
  14755. tensor->grad,
  14756. ggml_neg(ctx, tensor_grad_view),
  14757. nb1, nb2, nb3, offset, false),
  14758. zero_table);
  14759. }
  14760. if (src1->grad) {
  14761. src1->grad =
  14762. ggml_add_or_set(ctx,
  14763. src1->grad,
  14764. ggml_reshape(ctx,
  14765. ggml_cont(ctx, tensor_grad_view),
  14766. src1->grad),
  14767. zero_table);
  14768. }
  14769. } break;
  14770. case GGML_OP_CPY:
  14771. {
  14772. // necessary for llama
  14773. // cpy overwrites value of src1 by src0 and returns view(src1)
  14774. // the overwriting is mathematically equivalent to:
  14775. // tensor = src0 * 1 + src1 * 0
  14776. if (src0->grad) {
  14777. // dsrc0 = dtensor * 1
  14778. src0->grad = ggml_add_or_set(ctx, src0->grad, tensor->grad, zero_table);
  14779. }
  14780. if (src1->grad) {
  14781. // dsrc1 = dtensor * 0 -> noop
  14782. }
  14783. } break;
  14784. case GGML_OP_CONT:
  14785. {
  14786. // same as cpy
  14787. if (src0->grad) {
  14788. GGML_ASSERT(ggml_is_contiguous(src0->grad));
  14789. GGML_ASSERT(ggml_is_contiguous(tensor->grad));
  14790. src0->grad = ggml_add_or_set(ctx, src0->grad, tensor->grad, zero_table);
  14791. }
  14792. } break;
  14793. case GGML_OP_RESHAPE:
  14794. {
  14795. // necessary for llama
  14796. if (src0->grad) {
  14797. src0->grad =
  14798. ggml_add_or_set(ctx, src0->grad,
  14799. ggml_reshape(ctx,
  14800. ggml_is_contiguous(tensor->grad)
  14801. ? tensor->grad
  14802. : ggml_cont(ctx, tensor->grad),
  14803. src0->grad),
  14804. zero_table);
  14805. }
  14806. } break;
  14807. case GGML_OP_VIEW:
  14808. {
  14809. // necessary for llama
  14810. if (src0->grad) {
  14811. size_t offset;
  14812. memcpy(&offset, tensor->op_params, sizeof(offset));
  14813. size_t nb1 = tensor->nb[1];
  14814. size_t nb2 = tensor->nb[2];
  14815. size_t nb3 = tensor->nb[3];
  14816. if (src0->type != src0->grad->type) {
  14817. // gradient is typically F32, but src0 could be other type
  14818. size_t ng = ggml_element_size(src0->grad);
  14819. size_t n0 = ggml_element_size(src0);
  14820. GGML_ASSERT(offset % n0 == 0);
  14821. GGML_ASSERT(nb1 % n0 == 0);
  14822. GGML_ASSERT(nb2 % n0 == 0);
  14823. GGML_ASSERT(nb3 % n0 == 0);
  14824. offset = (offset / n0) * ng;
  14825. nb1 = (nb1 / n0) * ng;
  14826. nb2 = (nb2 / n0) * ng;
  14827. nb3 = (nb3 / n0) * ng;
  14828. }
  14829. src0->grad = ggml_acc_or_set(ctx, src0->grad, tensor->grad, nb1, nb2, nb3, offset, zero_table);
  14830. }
  14831. } break;
  14832. case GGML_OP_PERMUTE:
  14833. {
  14834. // necessary for llama
  14835. if (src0->grad) {
  14836. int32_t * axes = (int32_t *) tensor->op_params;
  14837. int axis0 = axes[0] & 0x3;
  14838. int axis1 = axes[1] & 0x3;
  14839. int axis2 = axes[2] & 0x3;
  14840. int axis3 = axes[3] & 0x3;
  14841. int axes_backward[4] = {0,0,0,0};
  14842. axes_backward[axis0] = 0;
  14843. axes_backward[axis1] = 1;
  14844. axes_backward[axis2] = 2;
  14845. axes_backward[axis3] = 3;
  14846. src0->grad =
  14847. ggml_add_or_set(ctx, src0->grad,
  14848. ggml_permute(ctx,
  14849. tensor->grad,
  14850. axes_backward[0],
  14851. axes_backward[1],
  14852. axes_backward[2],
  14853. axes_backward[3]),
  14854. zero_table);
  14855. }
  14856. } break;
  14857. case GGML_OP_TRANSPOSE:
  14858. {
  14859. // necessary for llama
  14860. if (src0->grad) {
  14861. src0->grad =
  14862. ggml_add_or_set(ctx, src0->grad,
  14863. ggml_transpose(ctx, tensor->grad),
  14864. zero_table);
  14865. }
  14866. } break;
  14867. case GGML_OP_GET_ROWS:
  14868. {
  14869. // necessary for llama (only for tokenizer)
  14870. if (src0->grad) {
  14871. src0->grad =
  14872. ggml_add_or_set(ctx, src0->grad,
  14873. // last ggml_get_rows_back argument src0->grad is only
  14874. // necessary to setup correct output shape
  14875. ggml_get_rows_back(ctx, tensor->grad, src1, src0->grad),
  14876. zero_table);
  14877. }
  14878. if (src1->grad) {
  14879. // noop
  14880. }
  14881. } break;
  14882. case GGML_OP_GET_ROWS_BACK:
  14883. {
  14884. GGML_ASSERT(false); // TODO: not implemented
  14885. } break;
  14886. case GGML_OP_DIAG:
  14887. {
  14888. GGML_ASSERT(false); // TODO: not implemented
  14889. } break;
  14890. case GGML_OP_DIAG_MASK_INF:
  14891. {
  14892. // necessary for llama
  14893. if (src0->grad) {
  14894. const int n_past = ((int32_t *) tensor->op_params)[0];
  14895. src0->grad =
  14896. ggml_add_or_set(ctx, src0->grad,
  14897. /* ggml_diag_mask_inf_impl() shouldn't be here */
  14898. /* ref: https://github.com/ggerganov/llama.cpp/pull/4203#discussion_r1412377992 */
  14899. ggml_diag_mask_zero_impl(ctx, tensor->grad, n_past, false),
  14900. zero_table);
  14901. }
  14902. } break;
  14903. case GGML_OP_DIAG_MASK_ZERO:
  14904. {
  14905. // necessary for llama
  14906. if (src0->grad) {
  14907. const int n_past = ((int32_t *) tensor->op_params)[0];
  14908. src0->grad =
  14909. ggml_add_or_set(ctx, src0->grad,
  14910. ggml_diag_mask_zero_impl(ctx, tensor->grad, n_past, false),
  14911. zero_table);
  14912. }
  14913. } break;
  14914. case GGML_OP_SOFT_MAX:
  14915. {
  14916. // necessary for llama
  14917. if (src0->grad) {
  14918. src0->grad =
  14919. ggml_add_or_set(ctx, src0->grad,
  14920. ggml_soft_max_back(ctx, tensor->grad, tensor),
  14921. zero_table);
  14922. }
  14923. } break;
  14924. case GGML_OP_SOFT_MAX_BACK:
  14925. {
  14926. GGML_ASSERT(false); // TODO: not implemented
  14927. } break;
  14928. case GGML_OP_ROPE:
  14929. {
  14930. // necessary for llama
  14931. if (src0->grad) {
  14932. //const int n_past = ((int32_t *) tensor->op_params)[0];
  14933. const int n_dims = ((int32_t *) tensor->op_params)[1];
  14934. const int mode = ((int32_t *) tensor->op_params)[2];
  14935. //const int n_ctx = ((int32_t *) tensor->op_params)[3];
  14936. const int n_ctx_orig = ((int32_t *) tensor->op_params)[4];
  14937. float freq_base, freq_scale, ext_factor, attn_factor, beta_fast, beta_slow;
  14938. memcpy(&freq_base, (int32_t *) tensor->op_params + 5, sizeof(float));
  14939. memcpy(&freq_scale, (int32_t *) tensor->op_params + 6, sizeof(float));
  14940. memcpy(&ext_factor, (int32_t *) tensor->op_params + 7, sizeof(float));
  14941. memcpy(&attn_factor, (int32_t *) tensor->op_params + 8, sizeof(float));
  14942. memcpy(&beta_fast, (int32_t *) tensor->op_params + 9, sizeof(float));
  14943. memcpy(&beta_slow, (int32_t *) tensor->op_params + 10, sizeof(float));
  14944. src0->grad = ggml_add_or_set(ctx,
  14945. src0->grad,
  14946. ggml_rope_back(ctx,
  14947. tensor->grad,
  14948. src1,
  14949. src2,
  14950. n_dims,
  14951. mode,
  14952. n_ctx_orig,
  14953. freq_base,
  14954. freq_scale,
  14955. ext_factor,
  14956. attn_factor,
  14957. beta_fast,
  14958. beta_slow),
  14959. zero_table);
  14960. }
  14961. } break;
  14962. case GGML_OP_ROPE_BACK:
  14963. {
  14964. if (src0->grad) {
  14965. //const int n_past = ((int32_t *) tensor->op_params)[0];
  14966. const int n_dims = ((int32_t *) tensor->op_params)[1];
  14967. const int mode = ((int32_t *) tensor->op_params)[2];
  14968. //const int n_ctx = ((int32_t *) tensor->op_params)[3];
  14969. const int n_ctx_orig = ((int32_t *) tensor->op_params)[4];
  14970. float freq_base, freq_scale, ext_factor, attn_factor, beta_fast, beta_slow;
  14971. memcpy(&freq_base, (int32_t *) tensor->op_params + 5, sizeof(float));
  14972. memcpy(&freq_scale, (int32_t *) tensor->op_params + 6, sizeof(float));
  14973. memcpy(&ext_factor, (int32_t *) tensor->op_params + 7, sizeof(float));
  14974. memcpy(&attn_factor, (int32_t *) tensor->op_params + 8, sizeof(float));
  14975. memcpy(&beta_fast, (int32_t *) tensor->op_params + 9, sizeof(float));
  14976. memcpy(&beta_slow, (int32_t *) tensor->op_params + 10, sizeof(float));
  14977. src0->grad = ggml_add_or_set(ctx,
  14978. src0->grad,
  14979. ggml_rope_impl(ctx,
  14980. tensor->grad,
  14981. src1,
  14982. src2,
  14983. n_dims,
  14984. mode,
  14985. n_ctx_orig,
  14986. freq_base,
  14987. freq_scale,
  14988. ext_factor,
  14989. attn_factor,
  14990. beta_fast,
  14991. beta_slow,
  14992. false),
  14993. zero_table);
  14994. }
  14995. } break;
  14996. case GGML_OP_CLAMP:
  14997. {
  14998. GGML_ASSERT(false); // TODO: not implemented
  14999. } break;
  15000. case GGML_OP_CONV_TRANSPOSE_1D:
  15001. {
  15002. GGML_ASSERT(false); // TODO: not implemented
  15003. } break;
  15004. case GGML_OP_IM2COL:
  15005. {
  15006. GGML_ASSERT(false); // TODO: not implemented
  15007. } break;
  15008. case GGML_OP_CONV_TRANSPOSE_2D:
  15009. {
  15010. GGML_ASSERT(false); // TODO: not implemented
  15011. } break;
  15012. case GGML_OP_POOL_1D:
  15013. {
  15014. GGML_ASSERT(false); // TODO: not implemented
  15015. } break;
  15016. case GGML_OP_POOL_2D:
  15017. {
  15018. GGML_ASSERT(false); // TODO: not implemented
  15019. } break;
  15020. case GGML_OP_UPSCALE:
  15021. {
  15022. GGML_ASSERT(false); // TODO: not implemented
  15023. } break;
  15024. case GGML_OP_PAD:
  15025. {
  15026. GGML_ASSERT(false); // TODO: not implemented
  15027. } break;
  15028. case GGML_OP_ARANGE:
  15029. {
  15030. GGML_ASSERT(false); // TODO: not implemented
  15031. } break;
  15032. case GGML_OP_TIMESTEP_EMBEDDING:
  15033. {
  15034. GGML_ASSERT(false); // TODO: not implemented
  15035. } break;
  15036. case GGML_OP_ARGSORT:
  15037. {
  15038. GGML_ASSERT(false); // TODO: not implemented
  15039. } break;
  15040. case GGML_OP_LEAKY_RELU:
  15041. {
  15042. GGML_ASSERT(false); // TODO: not implemented
  15043. } break;
  15044. case GGML_OP_FLASH_ATTN_EXT:
  15045. {
  15046. struct ggml_tensor * flash_grad = NULL;
  15047. if (src0->grad || src1->grad || tensor->src[2]->grad) {
  15048. int32_t t = ggml_get_op_params_i32(tensor, 0);
  15049. GGML_ASSERT(t == 0 || t == 1);
  15050. bool masked = t != 0;
  15051. flash_grad =
  15052. ggml_flash_attn_back(ctx,
  15053. src0,
  15054. src1,
  15055. tensor->src[2],
  15056. tensor->grad,
  15057. masked);
  15058. }
  15059. const int64_t elem_q = ggml_nelements(src0);
  15060. const int64_t elem_k = ggml_nelements(src1);
  15061. const int64_t elem_v = ggml_nelements(src2);
  15062. enum ggml_type result_type = flash_grad->type;
  15063. GGML_ASSERT(ggml_blck_size(result_type) == 1);
  15064. const size_t tsize = ggml_type_size(result_type);
  15065. const size_t offs_q = 0;
  15066. const size_t offs_k = offs_q + GGML_PAD(elem_q * tsize, GGML_MEM_ALIGN);
  15067. const size_t offs_v = offs_k + GGML_PAD(elem_k * tsize, GGML_MEM_ALIGN);
  15068. if (src0->grad) {
  15069. struct ggml_tensor * view_q = ggml_view_1d(ctx, flash_grad, elem_q, offs_q);
  15070. struct ggml_tensor * grad_q = ggml_reshape(ctx, view_q, src0);
  15071. src0->grad = ggml_add_or_set(ctx,
  15072. src0->grad,
  15073. grad_q,
  15074. zero_table);
  15075. }
  15076. if (src1->grad) {
  15077. struct ggml_tensor * view_k = ggml_view_1d(ctx, flash_grad, elem_k, offs_k);
  15078. struct ggml_tensor * grad_k = ggml_reshape(ctx, view_k, src1);
  15079. src1->grad = ggml_add_or_set(ctx,
  15080. src1->grad,
  15081. grad_k,
  15082. zero_table);
  15083. }
  15084. if (src2->grad) {
  15085. struct ggml_tensor * view_v = ggml_view_1d(ctx, flash_grad, elem_v, offs_v);
  15086. struct ggml_tensor * grad_v = ggml_reshape(ctx, view_v, src2);
  15087. src2->grad = ggml_add_or_set(ctx,
  15088. src2->grad,
  15089. grad_v,
  15090. zero_table);
  15091. }
  15092. } break;
  15093. case GGML_OP_FLASH_ATTN_BACK:
  15094. {
  15095. GGML_ASSERT(false); // not supported
  15096. } break;
  15097. case GGML_OP_SSM_CONV:
  15098. case GGML_OP_SSM_SCAN:
  15099. {
  15100. GGML_ASSERT(false); // TODO: not implemented
  15101. } break;
  15102. case GGML_OP_WIN_PART:
  15103. case GGML_OP_WIN_UNPART:
  15104. case GGML_OP_UNARY:
  15105. {
  15106. switch (ggml_get_unary_op(tensor)) {
  15107. case GGML_UNARY_OP_ABS:
  15108. {
  15109. if (src0->grad) {
  15110. src0->grad =
  15111. ggml_add_or_set(ctx,
  15112. src0->grad,
  15113. ggml_mul(ctx,
  15114. ggml_sgn(ctx, src0),
  15115. tensor->grad),
  15116. zero_table);
  15117. }
  15118. } break;
  15119. case GGML_UNARY_OP_SGN:
  15120. {
  15121. if (src0->grad) {
  15122. // noop
  15123. }
  15124. } break;
  15125. case GGML_UNARY_OP_NEG:
  15126. {
  15127. if (src0->grad) {
  15128. src0->grad = ggml_sub_or_set(ctx, src0->grad, tensor->grad, zero_table);
  15129. }
  15130. } break;
  15131. case GGML_UNARY_OP_STEP:
  15132. {
  15133. if (src0->grad) {
  15134. // noop
  15135. }
  15136. } break;
  15137. case GGML_UNARY_OP_TANH:
  15138. {
  15139. GGML_ASSERT(false); // TODO: not implemented
  15140. } break;
  15141. case GGML_UNARY_OP_ELU:
  15142. {
  15143. GGML_ASSERT(false); // TODO: not implemented
  15144. } break;
  15145. case GGML_UNARY_OP_RELU:
  15146. {
  15147. if (src0->grad) {
  15148. src0->grad = ggml_add_or_set(ctx,
  15149. src0->grad,
  15150. ggml_mul(ctx,
  15151. ggml_step(ctx, src0),
  15152. tensor->grad),
  15153. zero_table);
  15154. }
  15155. } break;
  15156. case GGML_UNARY_OP_SIGMOID:
  15157. {
  15158. GGML_ASSERT(false); // TODO: not implemented
  15159. } break;
  15160. case GGML_UNARY_OP_GELU:
  15161. {
  15162. GGML_ASSERT(false); // TODO: not implemented
  15163. } break;
  15164. case GGML_UNARY_OP_GELU_QUICK:
  15165. {
  15166. GGML_ASSERT(false); // TODO: not implemented
  15167. } break;
  15168. case GGML_UNARY_OP_SILU:
  15169. {
  15170. // necessary for llama
  15171. if (src0->grad) {
  15172. src0->grad = ggml_add_or_set(ctx,
  15173. src0->grad,
  15174. ggml_silu_back(ctx, src0, tensor->grad),
  15175. zero_table);
  15176. }
  15177. } break;
  15178. default:
  15179. GGML_ASSERT(false);
  15180. }
  15181. } break;
  15182. case GGML_OP_GET_REL_POS:
  15183. case GGML_OP_ADD_REL_POS:
  15184. case GGML_OP_MAP_UNARY:
  15185. case GGML_OP_MAP_BINARY:
  15186. case GGML_OP_MAP_CUSTOM1_F32:
  15187. case GGML_OP_MAP_CUSTOM2_F32:
  15188. case GGML_OP_MAP_CUSTOM3_F32:
  15189. case GGML_OP_MAP_CUSTOM1:
  15190. case GGML_OP_MAP_CUSTOM2:
  15191. case GGML_OP_MAP_CUSTOM3:
  15192. {
  15193. GGML_ASSERT(false); // not supported
  15194. } break;
  15195. case GGML_OP_CROSS_ENTROPY_LOSS:
  15196. {
  15197. if (src0->grad) {
  15198. src0->grad = ggml_add_or_set(ctx,
  15199. src0->grad,
  15200. ggml_cross_entropy_loss_back(ctx,
  15201. src0,
  15202. src1,
  15203. tensor->grad),
  15204. zero_table);
  15205. }
  15206. } break;
  15207. case GGML_OP_CROSS_ENTROPY_LOSS_BACK:
  15208. {
  15209. GGML_ASSERT(false); // not supported
  15210. } break;
  15211. case GGML_OP_NONE:
  15212. {
  15213. // nop
  15214. } break;
  15215. case GGML_OP_COUNT:
  15216. {
  15217. GGML_ASSERT(false);
  15218. } break;
  15219. }
  15220. for (int i = 0; i < GGML_MAX_SRC; ++i) {
  15221. if (tensor->src[i] && tensor->src[i]->grad) {
  15222. GGML_ASSERT(ggml_are_same_shape(tensor->src[i], tensor->src[i]->grad));
  15223. }
  15224. }
  15225. }
  15226. static void ggml_visit_parents(struct ggml_cgraph * cgraph, struct ggml_tensor * node) {
  15227. if (node->grad == NULL) {
  15228. // this usually happens when we generate intermediate nodes from constants in the backward pass
  15229. // it can also happen during forward pass, if the user performs computations with constants
  15230. if (node->op != GGML_OP_NONE) {
  15231. //GGML_PRINT_DEBUG("%s: warning: node %p has no grad, but op %d\n", __func__, (void *) node, node->op);
  15232. }
  15233. }
  15234. // check if already visited
  15235. if (ggml_hash_insert(cgraph->visited_hash_table, node) == GGML_HASHTABLE_ALREADY_EXISTS) {
  15236. return;
  15237. }
  15238. for (int i = 0; i < GGML_MAX_SRC; ++i) {
  15239. const int k =
  15240. (cgraph->order == GGML_CGRAPH_EVAL_ORDER_LEFT_TO_RIGHT) ? i :
  15241. (cgraph->order == GGML_CGRAPH_EVAL_ORDER_RIGHT_TO_LEFT) ? (GGML_MAX_SRC-1-i) :
  15242. /* unknown order, just fall back to using i*/ i;
  15243. if (node->src[k]) {
  15244. ggml_visit_parents(cgraph, node->src[k]);
  15245. }
  15246. }
  15247. if (node->op == GGML_OP_NONE && node->grad == NULL) {
  15248. // reached a leaf node, not part of the gradient graph (e.g. a constant)
  15249. GGML_ASSERT(cgraph->n_leafs < cgraph->size);
  15250. if (strlen(node->name) == 0) {
  15251. ggml_format_name(node, "leaf_%d", cgraph->n_leafs);
  15252. }
  15253. cgraph->leafs[cgraph->n_leafs] = node;
  15254. cgraph->n_leafs++;
  15255. } else {
  15256. GGML_ASSERT(cgraph->n_nodes < cgraph->size);
  15257. if (strlen(node->name) == 0) {
  15258. ggml_format_name(node, "node_%d", cgraph->n_nodes);
  15259. }
  15260. cgraph->nodes[cgraph->n_nodes] = node;
  15261. if (cgraph->grads) {
  15262. cgraph->grads[cgraph->n_nodes] = node->grad;
  15263. }
  15264. cgraph->n_nodes++;
  15265. }
  15266. }
  15267. static void ggml_build_forward_impl(struct ggml_cgraph * cgraph, struct ggml_tensor * tensor, bool expand) {
  15268. if (!expand) {
  15269. // TODO: this branch isn't accessible anymore, maybe move this to ggml_build_forward_expand
  15270. ggml_graph_clear(cgraph);
  15271. }
  15272. const int n0 = cgraph->n_nodes;
  15273. UNUSED(n0);
  15274. ggml_visit_parents(cgraph, tensor);
  15275. const int n_new = cgraph->n_nodes - n0;
  15276. GGML_PRINT_DEBUG("%s: visited %d new nodes\n", __func__, n_new);
  15277. if (n_new > 0) {
  15278. // the last added node should always be starting point
  15279. GGML_ASSERT(cgraph->nodes[cgraph->n_nodes - 1] == tensor);
  15280. }
  15281. }
  15282. void ggml_build_forward_expand(struct ggml_cgraph * cgraph, struct ggml_tensor * tensor) {
  15283. ggml_build_forward_impl(cgraph, tensor, true);
  15284. }
  15285. void ggml_build_backward_expand(struct ggml_context * ctx, struct ggml_cgraph * gf, struct ggml_cgraph * gb, bool keep) {
  15286. GGML_ASSERT(gf->n_nodes > 0);
  15287. // if we are keeping the gradient graph, we have to detach the gradient nodes from the original graph
  15288. if (keep) {
  15289. for (int i = 0; i < gf->n_nodes; i++) {
  15290. struct ggml_tensor * node = gf->nodes[i];
  15291. if (node->grad) {
  15292. node->grad = ggml_dup_tensor(ctx, node);
  15293. gf->grads[i] = node->grad;
  15294. }
  15295. }
  15296. }
  15297. // remember original gradients which start with zero values
  15298. struct ggml_hash_set zero_table = ggml_hash_set_new(gf->size);
  15299. for (int i = 0; i < gf->n_nodes; i++) {
  15300. if (gf->grads[i]) {
  15301. ggml_hash_insert(zero_table, gf->grads[i]);
  15302. }
  15303. }
  15304. for (int i = gf->n_nodes - 1; i >= 0; i--) {
  15305. struct ggml_tensor * node = gf->nodes[i];
  15306. // inplace operations to add gradients are not created by ggml_compute_backward
  15307. // use allocator to automatically make inplace operations
  15308. if (node->grad) {
  15309. ggml_compute_backward(ctx, node, zero_table);
  15310. }
  15311. }
  15312. for (int i = 0; i < gf->n_nodes; i++) {
  15313. struct ggml_tensor * node = gf->nodes[i];
  15314. if (node->flags & GGML_TENSOR_FLAG_PARAM) {
  15315. GGML_PRINT_DEBUG("%s: found root node %p\n", __func__, (void *) node);
  15316. ggml_build_forward_expand(gb, node->grad);
  15317. }
  15318. }
  15319. ggml_hash_set_free(zero_table);
  15320. }
  15321. static size_t ggml_graph_nbytes(size_t size, bool grads) {
  15322. size_t nbytes = sizeof(struct ggml_cgraph);
  15323. nbytes += size * sizeof(struct ggml_tensor *) * 2; // leafs + nodes
  15324. if (grads) {
  15325. nbytes += size * sizeof(struct ggml_tensor *); // grads
  15326. }
  15327. nbytes += ggml_hash_size(size * 2) * sizeof(struct ggml_tensor *); // hash set
  15328. return nbytes;
  15329. }
  15330. size_t ggml_graph_overhead_custom(size_t size, bool grads) {
  15331. return GGML_OBJECT_SIZE + GGML_PAD(ggml_graph_nbytes(size, grads), GGML_MEM_ALIGN);
  15332. }
  15333. size_t ggml_graph_overhead(void) {
  15334. return ggml_graph_overhead_custom(GGML_DEFAULT_GRAPH_SIZE, false);
  15335. }
  15336. struct ggml_cgraph * ggml_new_graph_custom(struct ggml_context * ctx, size_t size, bool grads) {
  15337. const size_t obj_size = ggml_graph_nbytes(size, grads);
  15338. struct ggml_object * obj = ggml_new_object(ctx, GGML_OBJECT_TYPE_GRAPH, obj_size);
  15339. struct ggml_cgraph * cgraph = (struct ggml_cgraph *) ((char *) ctx->mem_buffer + obj->offs);
  15340. struct ggml_tensor ** data_start = (struct ggml_tensor **) (cgraph + 1);
  15341. size_t hash_size = ggml_hash_size(size * 2);
  15342. struct ggml_tensor ** nodes_ptr = data_start;
  15343. struct ggml_tensor ** leafs_ptr = nodes_ptr + size;
  15344. struct ggml_tensor ** hash_keys_ptr = leafs_ptr + size;
  15345. struct ggml_tensor ** grads_ptr = grads ? hash_keys_ptr + hash_size : NULL;
  15346. // check that we allocated the correct amount of memory
  15347. assert(obj_size == (size_t) (
  15348. (grads ? (char *)(grads_ptr + size) : (char *)(hash_keys_ptr + hash_size)) - (char *)cgraph));
  15349. memset(hash_keys_ptr, 0, hash_size * sizeof(struct ggml_tensor *));
  15350. *cgraph = (struct ggml_cgraph) {
  15351. /*.size =*/ size,
  15352. /*.n_nodes =*/ 0,
  15353. /*.n_leafs =*/ 0,
  15354. /*.nodes =*/ nodes_ptr,
  15355. /*.grads =*/ grads_ptr,
  15356. /*.leafs =*/ leafs_ptr,
  15357. /*.hash_table =*/ { hash_size, hash_keys_ptr },
  15358. /*.order =*/ GGML_CGRAPH_EVAL_ORDER_LEFT_TO_RIGHT,
  15359. /*.perf_runs =*/ 0,
  15360. /*.perf_cycles =*/ 0,
  15361. /*.perf_time_us =*/ 0,
  15362. };
  15363. return cgraph;
  15364. }
  15365. struct ggml_cgraph * ggml_new_graph(struct ggml_context * ctx) {
  15366. return ggml_new_graph_custom(ctx, GGML_DEFAULT_GRAPH_SIZE, false);
  15367. }
  15368. struct ggml_cgraph ggml_graph_view(struct ggml_cgraph * cgraph0, int i0, int i1) {
  15369. struct ggml_cgraph cgraph = {
  15370. /*.size =*/ 0,
  15371. /*.n_nodes =*/ i1 - i0,
  15372. /*.n_leafs =*/ 0,
  15373. /*.nodes =*/ cgraph0->nodes + i0,
  15374. /*.grads =*/ cgraph0->grads ? cgraph0->grads + i0 : NULL,
  15375. /*.leafs =*/ NULL,
  15376. /*.hash_table =*/ { 0, NULL },
  15377. /*.order =*/ cgraph0->order,
  15378. /*.perf_runs =*/ 0,
  15379. /*.perf_cycles =*/ 0,
  15380. /*.perf_time_us =*/ 0,
  15381. };
  15382. return cgraph;
  15383. }
  15384. void ggml_graph_cpy(struct ggml_cgraph * src, struct ggml_cgraph * dst) {
  15385. GGML_ASSERT(dst->size >= src->n_leafs);
  15386. GGML_ASSERT(dst->size >= src->n_nodes);
  15387. GGML_ASSERT(dst->visited_hash_table.size >= src->visited_hash_table.size);
  15388. dst->n_leafs = src->n_leafs;
  15389. dst->n_nodes = src->n_nodes;
  15390. dst->order = src->order;
  15391. for (int i = 0; i < src->n_leafs; ++i) {
  15392. dst->leafs[i] = src->leafs[i];
  15393. }
  15394. for (int i = 0; i < src->n_nodes; ++i) {
  15395. dst->nodes[i] = src->nodes[i];
  15396. }
  15397. if (src->grads) {
  15398. GGML_ASSERT(dst->grads != NULL);
  15399. for (int i = 0; i < src->n_nodes; ++i) {
  15400. dst->grads[i] = src->grads[i];
  15401. }
  15402. }
  15403. for (size_t i = 0; i < src->visited_hash_table.size; ++i) {
  15404. if (src->visited_hash_table.keys[i]) {
  15405. ggml_hash_insert(dst->visited_hash_table, src->visited_hash_table.keys[i]);
  15406. }
  15407. }
  15408. }
  15409. struct ggml_cgraph * ggml_graph_dup(struct ggml_context * ctx, struct ggml_cgraph * cgraph) {
  15410. struct ggml_cgraph * result = ggml_new_graph_custom(ctx, cgraph->size, cgraph->grads != NULL);
  15411. ggml_graph_cpy(cgraph, result);
  15412. return result;
  15413. }
  15414. void ggml_graph_reset(struct ggml_cgraph * cgraph) {
  15415. GGML_ASSERT(cgraph->grads != NULL);
  15416. for (int i = 0; i < cgraph->n_nodes; i++) {
  15417. struct ggml_tensor * grad = cgraph->grads[i];
  15418. if (grad) {
  15419. ggml_set_zero(grad);
  15420. }
  15421. }
  15422. }
  15423. void ggml_graph_clear(struct ggml_cgraph * cgraph) {
  15424. cgraph->n_leafs = 0;
  15425. cgraph->n_nodes = 0;
  15426. memset(cgraph->visited_hash_table.keys, 0, cgraph->visited_hash_table.size * sizeof(struct ggml_tensor *));
  15427. }
  15428. //
  15429. // thread data
  15430. //
  15431. // synchronization is done via busy loops
  15432. // I tried using spin locks, but not sure how to use them correctly - the things I tried were slower than busy loops
  15433. //
  15434. #ifdef __APPLE__
  15435. //#include <os/lock.h>
  15436. //
  15437. //typedef os_unfair_lock ggml_lock_t;
  15438. //
  15439. //#define ggml_lock_init(x) UNUSED(x)
  15440. //#define ggml_lock_destroy(x) UNUSED(x)
  15441. //#define ggml_lock_lock os_unfair_lock_lock
  15442. //#define ggml_lock_unlock os_unfair_lock_unlock
  15443. //
  15444. //#define GGML_LOCK_INITIALIZER OS_UNFAIR_LOCK_INIT
  15445. typedef int ggml_lock_t;
  15446. #define ggml_lock_init(x) UNUSED(x)
  15447. #define ggml_lock_destroy(x) UNUSED(x)
  15448. #define ggml_lock_lock(x) UNUSED(x)
  15449. #define ggml_lock_unlock(x) UNUSED(x)
  15450. #define GGML_LOCK_INITIALIZER 0
  15451. #define ggml_thread_create pthread_create
  15452. #define ggml_thread_join pthread_join
  15453. #else
  15454. //typedef pthread_spinlock_t ggml_lock_t;
  15455. //#define ggml_lock_init(x) pthread_spin_init(x, PTHREAD_PROCESS_PRIVATE)
  15456. //#define ggml_lock_destroy pthread_spin_destroy
  15457. //#define ggml_lock_lock pthread_spin_lock
  15458. //#define ggml_lock_unlock pthread_spin_unlock
  15459. typedef int ggml_lock_t;
  15460. #define ggml_lock_init(x) UNUSED(x)
  15461. #define ggml_lock_destroy(x) UNUSED(x)
  15462. #if defined(__x86_64__) || (defined(_MSC_VER) && defined(_M_AMD64))
  15463. #define ggml_lock_lock(x) _mm_pause()
  15464. #else
  15465. #define ggml_lock_lock(x) UNUSED(x)
  15466. #endif
  15467. #define ggml_lock_unlock(x) UNUSED(x)
  15468. #define GGML_LOCK_INITIALIZER 0
  15469. #define ggml_thread_create pthread_create
  15470. #define ggml_thread_join pthread_join
  15471. #endif
  15472. // Android's libc implementation "bionic" does not support setting affinity
  15473. #if defined(__gnu_linux__)
  15474. static void set_numa_thread_affinity(int thread_n) {
  15475. if (!ggml_is_numa()) {
  15476. return;
  15477. }
  15478. int node_num;
  15479. int rv;
  15480. size_t setsize = CPU_ALLOC_SIZE(g_state.numa.total_cpus);
  15481. switch(g_state.numa.numa_strategy) {
  15482. case GGML_NUMA_STRATEGY_DISTRIBUTE:
  15483. // run thread on node_num thread_n / (threads per node)
  15484. node_num = thread_n % g_state.numa.n_nodes;
  15485. break;
  15486. case GGML_NUMA_STRATEGY_ISOLATE:
  15487. // run thread on current_node
  15488. node_num = g_state.numa.current_node;
  15489. break;
  15490. case GGML_NUMA_STRATEGY_NUMACTL:
  15491. // use the cpuset that numactl gave us
  15492. rv = pthread_setaffinity_np(pthread_self(), setsize, &g_state.numa.cpuset);
  15493. if (rv) {
  15494. fprintf(stderr, "warning: pthread_setaffinity_np() failed: %s\n",strerror(rv));
  15495. }
  15496. return;
  15497. default:
  15498. return;
  15499. }
  15500. struct ggml_numa_node * node = &g_state.numa.nodes[node_num];
  15501. cpu_set_t * cpus = CPU_ALLOC(g_state.numa.total_cpus);
  15502. CPU_ZERO_S(setsize, cpus);
  15503. for (size_t i = 0; i < node->n_cpus; ++i) {
  15504. CPU_SET_S(node->cpus[i], setsize, cpus);
  15505. }
  15506. rv = pthread_setaffinity_np(pthread_self(), setsize, cpus);
  15507. if (rv) {
  15508. fprintf(stderr, "warning: pthread_setaffinity_np() failed: %s\n", strerror(rv));
  15509. }
  15510. CPU_FREE(cpus);
  15511. }
  15512. static void clear_numa_thread_affinity(void) {
  15513. if (!ggml_is_numa()) {
  15514. return;
  15515. }
  15516. size_t setsize = CPU_ALLOC_SIZE(g_state.numa.total_cpus);
  15517. cpu_set_t * cpus = CPU_ALLOC(g_state.numa.total_cpus);
  15518. CPU_ZERO_S(setsize, cpus);
  15519. for (unsigned i = 0; i < g_state.numa.total_cpus; ++i) {
  15520. CPU_SET_S(i, setsize, cpus);
  15521. }
  15522. int rv = pthread_setaffinity_np(pthread_self(), setsize, cpus);
  15523. if (rv) {
  15524. fprintf(stderr, "warning: pthread_setaffinity_np() failed: %s\n", strerror(rv));
  15525. }
  15526. CPU_FREE(cpus);
  15527. }
  15528. #else
  15529. // TODO: Windows etc.
  15530. // (the linux implementation may also work on BSD, someone should test)
  15531. static void set_numa_thread_affinity(int thread_n) { UNUSED(thread_n); }
  15532. static void clear_numa_thread_affinity(void) {}
  15533. #endif
  15534. static void ggml_graph_compute_perf_stats_node(struct ggml_tensor * node, const struct ggml_compute_state_shared * st) {
  15535. int64_t cycles_cur = ggml_perf_cycles() - st->perf_node_start_cycles;
  15536. int64_t time_us_cur = ggml_perf_time_us() - st->perf_node_start_time_us;
  15537. node->perf_runs++;
  15538. node->perf_cycles += cycles_cur;
  15539. node->perf_time_us += time_us_cur;
  15540. }
  15541. static int ggml_get_n_tasks(struct ggml_tensor * node, int n_threads, int n_cur_threads) {
  15542. int n_tasks = 0;
  15543. if (ggml_is_empty(node)) {
  15544. // no need to multi-thread a no-op
  15545. n_tasks = 1;
  15546. return n_tasks;
  15547. }
  15548. switch (node->op) {
  15549. case GGML_OP_CPY:
  15550. case GGML_OP_DUP:
  15551. case GGML_OP_ADD:
  15552. case GGML_OP_ADD1:
  15553. case GGML_OP_ACC:
  15554. {
  15555. n_tasks = n_threads;
  15556. } break;
  15557. case GGML_OP_SUB:
  15558. case GGML_OP_SQR:
  15559. case GGML_OP_SQRT:
  15560. case GGML_OP_LOG:
  15561. case GGML_OP_SUM:
  15562. case GGML_OP_SUM_ROWS:
  15563. case GGML_OP_MEAN:
  15564. case GGML_OP_ARGMAX:
  15565. case GGML_OP_REPEAT:
  15566. case GGML_OP_REPEAT_BACK:
  15567. case GGML_OP_LEAKY_RELU:
  15568. {
  15569. n_tasks = 1;
  15570. } break;
  15571. case GGML_OP_UNARY:
  15572. switch (ggml_get_unary_op(node)) {
  15573. case GGML_UNARY_OP_ABS:
  15574. case GGML_UNARY_OP_SGN:
  15575. case GGML_UNARY_OP_NEG:
  15576. case GGML_UNARY_OP_STEP:
  15577. case GGML_UNARY_OP_TANH:
  15578. case GGML_UNARY_OP_ELU:
  15579. case GGML_UNARY_OP_RELU:
  15580. case GGML_UNARY_OP_SIGMOID:
  15581. case GGML_UNARY_OP_HARDSWISH: // to opt for multiple threads
  15582. case GGML_UNARY_OP_HARDSIGMOID: // to opt for multiple threads
  15583. {
  15584. n_tasks = 1;
  15585. } break;
  15586. case GGML_UNARY_OP_GELU:
  15587. case GGML_UNARY_OP_GELU_QUICK:
  15588. case GGML_UNARY_OP_SILU:
  15589. {
  15590. n_tasks = n_threads;
  15591. } break;
  15592. default:
  15593. GGML_ASSERT(false);
  15594. }
  15595. break;
  15596. case GGML_OP_SILU_BACK:
  15597. case GGML_OP_MUL:
  15598. case GGML_OP_DIV:
  15599. case GGML_OP_NORM:
  15600. case GGML_OP_RMS_NORM:
  15601. case GGML_OP_RMS_NORM_BACK:
  15602. case GGML_OP_GROUP_NORM:
  15603. case GGML_OP_CONCAT:
  15604. {
  15605. n_tasks = n_threads;
  15606. } break;
  15607. case GGML_OP_MUL_MAT:
  15608. {
  15609. n_tasks = n_threads;
  15610. // TODO: use different scheduling for different matrix sizes
  15611. //const int nr0 = ggml_nrows(node->src[0]);
  15612. //const int nr1 = ggml_nrows(node->src[1]);
  15613. //n_tasks = MIN(n_threads, MAX(1, nr0/128));
  15614. //printf("nr0 = %8d, nr1 = %8d, nr0*nr1 = %8d, n_tasks%d\n", nr0, nr1, nr0*nr1, n_tasks);
  15615. } break;
  15616. case GGML_OP_MUL_MAT_ID:
  15617. {
  15618. n_tasks = n_threads;
  15619. } break;
  15620. case GGML_OP_OUT_PROD:
  15621. {
  15622. n_tasks = n_threads;
  15623. } break;
  15624. case GGML_OP_GET_ROWS:
  15625. {
  15626. // FIXME: the cost of launching additional threads decreases performance with GPU offloading
  15627. //n_tasks = MIN(n_threads, ggml_nelements(node->src[1]));
  15628. n_tasks = MIN(n_cur_threads, ggml_nelements(node->src[1]));
  15629. } break;
  15630. case GGML_OP_SCALE:
  15631. case GGML_OP_SET:
  15632. case GGML_OP_CONT:
  15633. case GGML_OP_RESHAPE:
  15634. case GGML_OP_VIEW:
  15635. case GGML_OP_PERMUTE:
  15636. case GGML_OP_TRANSPOSE:
  15637. case GGML_OP_GET_ROWS_BACK:
  15638. case GGML_OP_DIAG:
  15639. {
  15640. n_tasks = 1;
  15641. } break;
  15642. case GGML_OP_DIAG_MASK_ZERO:
  15643. case GGML_OP_DIAG_MASK_INF:
  15644. case GGML_OP_SOFT_MAX_BACK:
  15645. case GGML_OP_ROPE:
  15646. case GGML_OP_ROPE_BACK:
  15647. case GGML_OP_ADD_REL_POS:
  15648. {
  15649. n_tasks = n_threads;
  15650. } break;
  15651. case GGML_OP_CLAMP:
  15652. {
  15653. n_tasks = 1; //TODO
  15654. } break;
  15655. case GGML_OP_SOFT_MAX:
  15656. {
  15657. n_tasks = MIN(n_threads, ggml_nrows(node->src[0]));
  15658. } break;
  15659. case GGML_OP_CONV_TRANSPOSE_1D:
  15660. {
  15661. n_tasks = n_threads;
  15662. } break;
  15663. case GGML_OP_IM2COL:
  15664. {
  15665. n_tasks = n_threads;
  15666. } break;
  15667. case GGML_OP_CONV_TRANSPOSE_2D:
  15668. {
  15669. n_tasks = n_threads;
  15670. } break;
  15671. case GGML_OP_POOL_1D:
  15672. case GGML_OP_POOL_2D:
  15673. {
  15674. n_tasks = 1;
  15675. } break;
  15676. case GGML_OP_UPSCALE:
  15677. {
  15678. n_tasks = n_threads;
  15679. } break;
  15680. case GGML_OP_PAD:
  15681. {
  15682. n_tasks = n_threads;
  15683. } break;
  15684. case GGML_OP_ARANGE:
  15685. {
  15686. n_tasks = n_threads;
  15687. } break;
  15688. case GGML_OP_TIMESTEP_EMBEDDING:
  15689. {
  15690. n_tasks = n_threads;
  15691. } break;
  15692. case GGML_OP_ARGSORT:
  15693. {
  15694. n_tasks = n_threads;
  15695. } break;
  15696. case GGML_OP_FLASH_ATTN_EXT:
  15697. {
  15698. n_tasks = n_threads;
  15699. } break;
  15700. case GGML_OP_FLASH_ATTN_BACK:
  15701. {
  15702. n_tasks = n_threads;
  15703. } break;
  15704. case GGML_OP_SSM_CONV:
  15705. case GGML_OP_SSM_SCAN:
  15706. {
  15707. n_tasks = n_threads;
  15708. } break;
  15709. case GGML_OP_WIN_PART:
  15710. case GGML_OP_WIN_UNPART:
  15711. case GGML_OP_GET_REL_POS:
  15712. case GGML_OP_MAP_UNARY:
  15713. case GGML_OP_MAP_BINARY:
  15714. case GGML_OP_MAP_CUSTOM1_F32:
  15715. case GGML_OP_MAP_CUSTOM2_F32:
  15716. case GGML_OP_MAP_CUSTOM3_F32:
  15717. {
  15718. n_tasks = 1;
  15719. } break;
  15720. case GGML_OP_MAP_CUSTOM1:
  15721. {
  15722. struct ggml_map_custom1_op_params p;
  15723. memcpy(&p, node->op_params, sizeof(p));
  15724. if (p.n_tasks == GGML_N_TASKS_MAX) {
  15725. n_tasks = n_threads;
  15726. } else {
  15727. n_tasks = MIN(p.n_tasks, n_threads);
  15728. }
  15729. } break;
  15730. case GGML_OP_MAP_CUSTOM2:
  15731. {
  15732. struct ggml_map_custom2_op_params p;
  15733. memcpy(&p, node->op_params, sizeof(p));
  15734. if (p.n_tasks == GGML_N_TASKS_MAX) {
  15735. n_tasks = n_threads;
  15736. } else {
  15737. n_tasks = MIN(p.n_tasks, n_threads);
  15738. }
  15739. } break;
  15740. case GGML_OP_MAP_CUSTOM3:
  15741. {
  15742. struct ggml_map_custom3_op_params p;
  15743. memcpy(&p, node->op_params, sizeof(p));
  15744. if (p.n_tasks == GGML_N_TASKS_MAX) {
  15745. n_tasks = n_threads;
  15746. } else {
  15747. n_tasks = MIN(p.n_tasks, n_threads);
  15748. }
  15749. } break;
  15750. case GGML_OP_CROSS_ENTROPY_LOSS:
  15751. {
  15752. n_tasks = n_threads;
  15753. } break;
  15754. case GGML_OP_CROSS_ENTROPY_LOSS_BACK:
  15755. {
  15756. n_tasks = n_threads;
  15757. } break;
  15758. case GGML_OP_NONE:
  15759. {
  15760. n_tasks = 1;
  15761. } break;
  15762. case GGML_OP_COUNT:
  15763. {
  15764. GGML_ASSERT(false);
  15765. } break;
  15766. default:
  15767. {
  15768. fprintf(stderr, "%s: op not implemented: ", __func__);
  15769. if (node->op < GGML_OP_COUNT) {
  15770. fprintf(stderr, "%s\n", ggml_op_name(node->op));
  15771. } else {
  15772. fprintf(stderr, "%d\n", node->op);
  15773. }
  15774. GGML_ASSERT(false);
  15775. } break;
  15776. }
  15777. assert(n_tasks > 0);
  15778. return n_tasks;
  15779. }
  15780. static void ggml_graph_compute_thread_sync_node(int * node_n, struct ggml_compute_state * state, const bool do_yield) {
  15781. // wait for other threads to finish
  15782. const int last_node_n = * node_n;
  15783. while (true) {
  15784. if (do_yield) {
  15785. sched_yield();
  15786. }
  15787. * node_n = atomic_load(&state->shared->node_n);
  15788. if (* node_n != last_node_n) break;
  15789. #if defined(__SSE3__)
  15790. // Tell the processor we're spinning. It's a processor hint for spinlocks.
  15791. _mm_pause();
  15792. #endif
  15793. }
  15794. }
  15795. static void ggml_graph_compute_thread_sync_task(int * task_phase, struct ggml_compute_state * state, const bool do_yield) {
  15796. // wait for other threads to finish
  15797. const int last_task_phase = * task_phase;
  15798. while (true) {
  15799. if (do_yield) {
  15800. sched_yield();
  15801. }
  15802. * task_phase = atomic_load(&state->shared->node_task);
  15803. if (* task_phase != last_task_phase) break;
  15804. #if defined(__SSE3__)
  15805. // Tell the processor we're spinning. It's a processor hint for spinlocks.
  15806. _mm_pause();
  15807. #endif
  15808. }
  15809. }
  15810. static thread_ret_t ggml_graph_compute_thread(void * data) {
  15811. struct ggml_compute_state * state = (struct ggml_compute_state *) data;
  15812. const struct ggml_cgraph * cgraph = state->shared->cgraph;
  15813. const struct ggml_cplan * cplan = state->shared->cplan;
  15814. const int n_threads = state->shared->n_threads;
  15815. set_numa_thread_affinity(state->ith);
  15816. int node_n = -1;
  15817. int task_phase = GGML_TASK_TYPE_FINALIZE;
  15818. while (true) {
  15819. if (cplan->abort_callback && cplan->abort_callback(cplan->abort_callback_data)) {
  15820. state->shared->node_n += 1;
  15821. state->ec = GGML_STATUS_ABORTED;
  15822. return 0;
  15823. }
  15824. if (atomic_fetch_sub(&state->shared->n_active, 1) == 1) {
  15825. // all other threads are finished and spinning
  15826. // do finalize and init here so we don't have synchronize again
  15827. struct ggml_compute_params params = {
  15828. /*.type =*/ GGML_TASK_TYPE_FINALIZE,
  15829. /*.ith =*/ 0,
  15830. /*.nth =*/ 0,
  15831. /*.wsize =*/ cplan->work_size,
  15832. /*.wdata =*/ cplan->work_data,
  15833. };
  15834. if (node_n != -1) {
  15835. /* FINALIZE */
  15836. struct ggml_tensor * node = cgraph->nodes[node_n];
  15837. if (GGML_OP_HAS_FINALIZE[node->op]) {
  15838. params.nth = ggml_get_n_tasks(node, n_threads, state->shared->n_threads);
  15839. ggml_compute_forward(&params, node, state);
  15840. }
  15841. ggml_graph_compute_perf_stats_node(node, state->shared);
  15842. }
  15843. // distribute new work or execute it direct if 1T
  15844. while (++node_n < cgraph->n_nodes) {
  15845. GGML_PRINT_DEBUG_5("%s: %d/%d\n", __func__, node_n, cgraph->n_nodes);
  15846. struct ggml_tensor * node = cgraph->nodes[node_n];
  15847. const int n_tasks = ggml_get_n_tasks(node, n_threads, state->shared->n_threads);
  15848. state->shared->perf_node_start_cycles = ggml_perf_cycles();
  15849. state->shared->perf_node_start_time_us = ggml_perf_time_us();
  15850. params.nth = n_tasks;
  15851. if (n_tasks == 1) {
  15852. /* INIT */
  15853. if (GGML_OP_HAS_INIT[node->op]) {
  15854. params.type = GGML_TASK_TYPE_INIT;
  15855. ggml_compute_forward(&params, node, state);
  15856. }
  15857. // TODO: maybe push node_n to the atomic but if other threads see n_tasks is 1,
  15858. // they do something more efficient than spinning (?)
  15859. params.type = GGML_TASK_TYPE_COMPUTE;
  15860. ggml_compute_forward(&params, node, state);
  15861. if (GGML_OP_HAS_FINALIZE[node->op]) {
  15862. params.type = GGML_TASK_TYPE_FINALIZE;
  15863. ggml_compute_forward(&params, node, state);
  15864. }
  15865. ggml_graph_compute_perf_stats_node(node, state->shared);
  15866. } else {
  15867. break;
  15868. }
  15869. if (cplan->abort_callback && cplan->abort_callback(cplan->abort_callback_data)) {
  15870. break;
  15871. }
  15872. }
  15873. task_phase = GGML_TASK_TYPE_INIT;
  15874. atomic_store(&state->shared->n_active, n_threads);
  15875. atomic_store(&state->shared->node_n, node_n);
  15876. atomic_store(&state->shared->node_task, task_phase);
  15877. } else {
  15878. ggml_graph_compute_thread_sync_node(&node_n, state, false);
  15879. ggml_graph_compute_thread_sync_task(&task_phase, state, false);
  15880. }
  15881. // check if we should stop
  15882. if (node_n >= cgraph->n_nodes) break;
  15883. /* INIT & COMPUTE */
  15884. struct ggml_tensor * node = cgraph->nodes[node_n];
  15885. const int n_tasks = ggml_get_n_tasks(node, n_threads, state->shared->n_threads);
  15886. struct ggml_compute_params params = {
  15887. /*.type =*/ GGML_TASK_TYPE_INIT,
  15888. /*.ith =*/ state->ith,
  15889. /*.nth =*/ n_tasks,
  15890. /*.wsize =*/ cplan->work_size,
  15891. /*.wdata =*/ cplan->work_data,
  15892. };
  15893. if (state->ith < n_tasks) {
  15894. if (GGML_OP_HAS_INIT[node->op]) {
  15895. ggml_compute_forward(&params, node, state);
  15896. }
  15897. }
  15898. if (atomic_fetch_sub(&state->shared->n_active, 1) == 1) {
  15899. task_phase = GGML_TASK_TYPE_COMPUTE;
  15900. atomic_store(&state->shared->n_active, n_threads);
  15901. atomic_store(&state->shared->node_task, task_phase);
  15902. }
  15903. else {
  15904. // TODO: this sched_yield can have significant impact on the performance - either positive or negative
  15905. // depending on the workload and the operating system.
  15906. // since it is not clear what is the best approach, it should potentially become user-configurable
  15907. // ref: https://github.com/ggerganov/ggml/issues/291
  15908. // UPD: adding the do_yield flag seems to resolve the issue universally
  15909. const bool do_yield = node_n < 0 || cgraph->nodes[node_n]->op == GGML_OP_MUL_MAT;
  15910. ggml_graph_compute_thread_sync_task(&task_phase, state, do_yield);
  15911. }
  15912. if (state->ith < n_tasks) {
  15913. params.type = GGML_TASK_TYPE_COMPUTE;
  15914. ggml_compute_forward(&params, node, state);
  15915. }
  15916. if (atomic_fetch_sub(&state->shared->n_active, 1) == 1) {
  15917. task_phase = GGML_TASK_TYPE_FINALIZE;
  15918. atomic_store(&state->shared->n_active, n_threads);
  15919. atomic_store(&state->shared->node_task, task_phase);
  15920. }
  15921. else {
  15922. ggml_graph_compute_thread_sync_task(&task_phase, state, false);
  15923. }
  15924. }
  15925. return 0;
  15926. }
  15927. struct ggml_cplan ggml_graph_plan(const struct ggml_cgraph * cgraph, int n_threads) {
  15928. if (n_threads <= 0) {
  15929. n_threads = GGML_DEFAULT_N_THREADS;
  15930. }
  15931. size_t work_size = 0;
  15932. struct ggml_cplan cplan;
  15933. memset(&cplan, 0, sizeof(struct ggml_cplan));
  15934. int max_tasks = 1;
  15935. // thread scheduling for the different operations + work buffer size estimation
  15936. for (int i = 0; i < cgraph->n_nodes; i++) {
  15937. struct ggml_tensor * node = cgraph->nodes[i];
  15938. const int n_tasks = ggml_get_n_tasks(node, n_threads, 1);
  15939. max_tasks = MAX(max_tasks, n_tasks);
  15940. size_t cur = 0;
  15941. switch (node->op) {
  15942. case GGML_OP_CPY:
  15943. case GGML_OP_DUP:
  15944. {
  15945. if (ggml_is_quantized(node->type) ||
  15946. // F16 -> BF16 and BF16 -> F16 copies go through intermediate F32
  15947. (node->src[0]->type == GGML_TYPE_F16 && node->src[1] && node->src[1]->type == GGML_TYPE_BF16) ||
  15948. (node->src[0]->type == GGML_TYPE_BF16 && node->src[1] && node->src[1]->type == GGML_TYPE_F16)) {
  15949. cur = ggml_type_size(GGML_TYPE_F32) * node->ne[0] * n_tasks;
  15950. }
  15951. } break;
  15952. case GGML_OP_ADD:
  15953. case GGML_OP_ADD1:
  15954. {
  15955. if (ggml_is_quantized(node->src[0]->type)) {
  15956. cur = ggml_type_size(GGML_TYPE_F32) * node->src[0]->ne[0] * n_tasks;
  15957. }
  15958. } break;
  15959. case GGML_OP_ACC:
  15960. {
  15961. if (ggml_is_quantized(node->src[0]->type)) {
  15962. cur = ggml_type_size(GGML_TYPE_F32) * node->src[1]->ne[0] * n_tasks;
  15963. }
  15964. } break;
  15965. case GGML_OP_MUL_MAT:
  15966. {
  15967. const enum ggml_type vec_dot_type = type_traits[node->src[0]->type].vec_dot_type;
  15968. #if defined(GGML_USE_ACCELERATE) || defined(GGML_USE_OPENBLAS)
  15969. if (ggml_compute_forward_mul_mat_use_blas(node)) {
  15970. if (node->src[0]->type != GGML_TYPE_F32) {
  15971. // here we need memory for fully dequantized matrix from src0
  15972. // take into account that src0 can be broadcasted into src1[2,3]
  15973. cur = ggml_type_size(GGML_TYPE_F32)
  15974. * node->src[0]->ne[0]*node->src[0]->ne[1]
  15975. * node->src[1]->ne[2]*node->src[1]->ne[3];
  15976. }
  15977. } else
  15978. #endif
  15979. if (node->src[1]->type != vec_dot_type) {
  15980. cur = ggml_row_size(vec_dot_type, ggml_nelements(node->src[1]));
  15981. }
  15982. } break;
  15983. case GGML_OP_MUL_MAT_ID:
  15984. {
  15985. cur = 0;
  15986. const struct ggml_tensor * src0 = node->src[0];
  15987. const struct ggml_tensor * src1 = node->src[1];
  15988. const enum ggml_type vec_dot_type = type_traits[src0->type].vec_dot_type;
  15989. if (src1->type != vec_dot_type) {
  15990. cur += ggml_row_size(vec_dot_type, ggml_nelements(src1));
  15991. }
  15992. const int n_as = src0->ne[2];
  15993. cur += GGML_PAD(cur, sizeof(int64_t)); // align
  15994. cur += n_as * sizeof(int64_t); // matrix_row_counts
  15995. cur += n_as * src1->ne[2] * sizeof(int64_t); // matrix_rows
  15996. } break;
  15997. case GGML_OP_OUT_PROD:
  15998. {
  15999. if (ggml_is_quantized(node->src[0]->type)) {
  16000. cur = ggml_type_size(GGML_TYPE_F32) * node->src[0]->ne[0] * n_tasks;
  16001. }
  16002. } break;
  16003. case GGML_OP_SOFT_MAX:
  16004. case GGML_OP_ROPE:
  16005. {
  16006. cur = ggml_type_size(GGML_TYPE_F32) * node->ne[0] * n_tasks;
  16007. } break;
  16008. case GGML_OP_CONV_TRANSPOSE_1D:
  16009. {
  16010. GGML_ASSERT(node->src[0]->ne[3] == 1);
  16011. GGML_ASSERT(node->src[1]->ne[2] == 1);
  16012. GGML_ASSERT(node->src[1]->ne[3] == 1);
  16013. const int64_t ne00 = node->src[0]->ne[0]; // K
  16014. const int64_t ne01 = node->src[0]->ne[1]; // Cout
  16015. const int64_t ne02 = node->src[0]->ne[2]; // Cin
  16016. const int64_t ne10 = node->src[1]->ne[0]; // L
  16017. const int64_t ne11 = node->src[1]->ne[1]; // Cin
  16018. if ((node->src[0]->type == GGML_TYPE_F16 ||
  16019. node->src[0]->type == GGML_TYPE_BF16) &&
  16020. node->src[1]->type == GGML_TYPE_F32) {
  16021. cur += sizeof(ggml_fp16_t)*ne00*ne01*ne02;
  16022. cur += sizeof(ggml_fp16_t)*ne10*ne11;
  16023. } else if (node->src[0]->type == GGML_TYPE_F32 &&
  16024. node->src[1]->type == GGML_TYPE_F32) {
  16025. cur += sizeof(float)*ne00*ne01*ne02;
  16026. cur += sizeof(float)*ne10*ne11;
  16027. } else {
  16028. GGML_ASSERT(false);
  16029. }
  16030. } break;
  16031. case GGML_OP_CONV_TRANSPOSE_2D:
  16032. {
  16033. const int64_t ne00 = node->src[0]->ne[0]; // W
  16034. const int64_t ne01 = node->src[0]->ne[1]; // H
  16035. const int64_t ne02 = node->src[0]->ne[2]; // Channels Out
  16036. const int64_t ne03 = node->src[0]->ne[3]; // Channels In
  16037. const int64_t ne10 = node->src[1]->ne[0]; // W
  16038. const int64_t ne11 = node->src[1]->ne[1]; // H
  16039. const int64_t ne12 = node->src[1]->ne[2]; // Channels In
  16040. cur += sizeof(ggml_fp16_t)*ne00*ne01*ne02*ne03;
  16041. cur += sizeof(ggml_fp16_t)*ne10*ne11*ne12;
  16042. } break;
  16043. case GGML_OP_FLASH_ATTN_EXT:
  16044. {
  16045. const int64_t ne00 = node->src[0]->ne[0]; // D
  16046. cur = 3*sizeof(float)*ne00*n_tasks; // 3x head size/thread
  16047. } break;
  16048. case GGML_OP_FLASH_ATTN_BACK:
  16049. {
  16050. const int64_t D = node->src[0]->ne[0];
  16051. const int64_t ne11 = ggml_up(node->src[1]->ne[1], GGML_SOFT_MAX_UNROLL);
  16052. const int64_t mxDn = MAX(D, ne11) * 2; // *2 because of S and SM in ggml_compute_forward_flash_attn_back
  16053. if (node->src[1]->type == GGML_TYPE_F32) {
  16054. cur = sizeof(float)*mxDn*n_tasks; // TODO: this can become (n_tasks-1)
  16055. cur += sizeof(float)*mxDn*n_tasks; // this is overestimated by x2
  16056. } else if (node->src[1]->type == GGML_TYPE_F16) {
  16057. cur = sizeof(float)*mxDn*n_tasks; // TODO: this can become (n_tasks-1)
  16058. cur += sizeof(float)*mxDn*n_tasks; // this is overestimated by x2
  16059. } else if (node->src[1]->type == GGML_TYPE_BF16) {
  16060. cur = sizeof(float)*mxDn*n_tasks; // TODO: this can become (n_tasks-1)
  16061. cur += sizeof(float)*mxDn*n_tasks; // this is overestimated by x2
  16062. }
  16063. } break;
  16064. case GGML_OP_CROSS_ENTROPY_LOSS:
  16065. {
  16066. cur = ggml_type_size(node->type)*(n_tasks + node->src[0]->ne[0]*n_tasks);
  16067. } break;
  16068. case GGML_OP_COUNT:
  16069. {
  16070. GGML_ASSERT(false);
  16071. } break;
  16072. default:
  16073. break;
  16074. }
  16075. work_size = MAX(work_size, cur);
  16076. }
  16077. if (work_size > 0) {
  16078. work_size += CACHE_LINE_SIZE*(n_threads - 1);
  16079. }
  16080. cplan.n_threads = MIN(max_tasks, n_threads);
  16081. cplan.work_size = work_size;
  16082. cplan.work_data = NULL;
  16083. return cplan;
  16084. }
  16085. static enum ggml_status ggml_graph_compute_parallel(struct ggml_compute_state * workers, int n_threads) {
  16086. enum ggml_status compute_status = GGML_STATUS_SUCCESS;
  16087. #ifdef GGML_USE_OPENMP
  16088. if (n_threads > 1) {
  16089. #pragma omp parallel num_threads(n_threads)
  16090. {
  16091. #pragma omp single
  16092. {
  16093. // update the number of threads from the actual number of threads that we got from OpenMP
  16094. n_threads = omp_get_num_threads();
  16095. workers[0].shared->n_threads = n_threads;
  16096. workers[0].shared->n_active = n_threads;
  16097. }
  16098. ggml_graph_compute_thread(&workers[omp_get_thread_num()]);
  16099. }
  16100. } else {
  16101. ggml_graph_compute_thread(&workers[0]);
  16102. }
  16103. #else
  16104. // create thread pool
  16105. if (n_threads > 1) {
  16106. for (int j = 1; j < n_threads; ++j) {
  16107. const int rc = ggml_thread_create(&workers[j].thrd, NULL, ggml_graph_compute_thread, &workers[j]);
  16108. GGML_ASSERT(rc == 0);
  16109. UNUSED(rc);
  16110. }
  16111. }
  16112. // this is a work thread too
  16113. ggml_graph_compute_thread(&workers[0]);
  16114. // join or kill thread pool
  16115. if (n_threads > 1) {
  16116. for (int j = 1; j < n_threads; j++) {
  16117. const int rc = ggml_thread_join(workers[j].thrd, NULL);
  16118. GGML_ASSERT(rc == 0);
  16119. UNUSED(rc);
  16120. }
  16121. }
  16122. #endif
  16123. // don't leave affinity set on the main thread
  16124. clear_numa_thread_affinity();
  16125. for (int j = 0; j < n_threads; j++) {
  16126. if (workers[j].ec != GGML_STATUS_SUCCESS) {
  16127. compute_status = workers[j].ec;
  16128. break;
  16129. }
  16130. }
  16131. return compute_status;
  16132. }
  16133. enum ggml_status ggml_graph_compute(struct ggml_cgraph * cgraph, struct ggml_cplan * cplan) {
  16134. {
  16135. GGML_ASSERT(cplan);
  16136. GGML_ASSERT(cplan->n_threads > 0);
  16137. if (cplan->work_size > 0) {
  16138. GGML_ASSERT(cplan->work_data);
  16139. }
  16140. }
  16141. int n_threads = cplan->n_threads;
  16142. #if defined(GGML_USE_OPENMP)
  16143. n_threads = MIN(n_threads, omp_get_max_threads());
  16144. #endif
  16145. struct ggml_compute_state_shared state_shared = {
  16146. /*.cgraph =*/ cgraph,
  16147. /*.cgraph_plan =*/ cplan,
  16148. /*.perf_node_start_cycles =*/ 0,
  16149. /*.perf_node_start_time_us =*/ 0,
  16150. /*.n_threads =*/ n_threads,
  16151. /*.n_active =*/ n_threads,
  16152. /*.node_n =*/ -1,
  16153. /*.node_task =*/ GGML_TASK_TYPE_FINALIZE,
  16154. /*.abort_callback =*/ NULL,
  16155. /*.abort_callback_data =*/ NULL,
  16156. /*.current_chunk; =*/ 0,
  16157. };
  16158. struct ggml_compute_state * workers = alloca(sizeof(struct ggml_compute_state)*n_threads);
  16159. const int64_t perf_start_cycles = ggml_perf_cycles();
  16160. const int64_t perf_start_time_us = ggml_perf_time_us();
  16161. for (int j = 0; j < n_threads; ++j) {
  16162. workers[j] = (struct ggml_compute_state) {
  16163. .thrd = 0,
  16164. .ith = j,
  16165. .shared = &state_shared,
  16166. .ec = GGML_STATUS_SUCCESS,
  16167. };
  16168. }
  16169. enum ggml_status compute_status = ggml_graph_compute_parallel(workers, n_threads);
  16170. // performance stats (graph)
  16171. {
  16172. int64_t perf_cycles_cur = ggml_perf_cycles() - perf_start_cycles;
  16173. int64_t perf_time_us_cur = ggml_perf_time_us() - perf_start_time_us;
  16174. cgraph->perf_runs++;
  16175. cgraph->perf_cycles += perf_cycles_cur;
  16176. cgraph->perf_time_us += perf_time_us_cur;
  16177. GGML_PRINT_DEBUG("%s: perf (%d) - cpu = %.3f / %.3f ms, wall = %.3f / %.3f ms\n",
  16178. __func__, cgraph->perf_runs,
  16179. (double) perf_cycles_cur / (double) ggml_cycles_per_ms(),
  16180. (double) cgraph->perf_cycles / (double) ggml_cycles_per_ms() / (double) cgraph->perf_runs,
  16181. (double) perf_time_us_cur / 1000.0,
  16182. (double) cgraph->perf_time_us / 1000.0 / cgraph->perf_runs);
  16183. }
  16184. return compute_status;
  16185. }
  16186. enum ggml_status ggml_graph_compute_with_ctx(struct ggml_context * ctx, struct ggml_cgraph * cgraph, int n_threads) {
  16187. struct ggml_cplan cplan = ggml_graph_plan(cgraph, n_threads);
  16188. struct ggml_object * obj = ggml_new_object(ctx, GGML_OBJECT_TYPE_WORK_BUFFER, cplan.work_size);
  16189. cplan.work_data = (uint8_t *)ctx->mem_buffer + obj->offs;
  16190. return ggml_graph_compute(cgraph, &cplan);
  16191. }
  16192. struct ggml_tensor * ggml_graph_get_tensor(struct ggml_cgraph * cgraph, const char * name) {
  16193. for (int i = 0; i < cgraph->n_leafs; i++) {
  16194. struct ggml_tensor * leaf = cgraph->leafs[i];
  16195. if (strcmp(leaf->name, name) == 0) {
  16196. return leaf;
  16197. }
  16198. }
  16199. for (int i = 0; i < cgraph->n_nodes; i++) {
  16200. struct ggml_tensor * node = cgraph->nodes[i];
  16201. if (strcmp(node->name, name) == 0) {
  16202. return node;
  16203. }
  16204. }
  16205. return NULL;
  16206. }
  16207. static void ggml_graph_export_leaf(const struct ggml_tensor * tensor, FILE * fout) {
  16208. const int64_t * ne = tensor->ne;
  16209. const size_t * nb = tensor->nb;
  16210. fprintf(fout, "%-6s %-12s %8d %" PRId64 " %" PRId64 " %" PRId64 " %" PRId64 " %16zu %16zu %16zu %16zu %16p %32s\n",
  16211. ggml_type_name(tensor->type),
  16212. ggml_op_name (tensor->op),
  16213. ggml_n_dims(tensor),
  16214. ne[0], ne[1], ne[2], ne[3],
  16215. nb[0], nb[1], nb[2], nb[3],
  16216. tensor->data,
  16217. tensor->name);
  16218. }
  16219. static void ggml_graph_export_node(const struct ggml_tensor * tensor, const char * arg, FILE * fout) {
  16220. const int64_t * ne = tensor->ne;
  16221. const size_t * nb = tensor->nb;
  16222. fprintf(fout, "%-6s %-6s %-12s %8d %" PRId64 " %" PRId64 " %" PRId64 " %" PRId64 " %16zu %16zu %16zu %16zu %16p %32s\n",
  16223. arg,
  16224. ggml_type_name(tensor->type),
  16225. ggml_op_name (tensor->op),
  16226. ggml_n_dims(tensor),
  16227. ne[0], ne[1], ne[2], ne[3],
  16228. nb[0], nb[1], nb[2], nb[3],
  16229. tensor->data,
  16230. tensor->name);
  16231. }
  16232. void ggml_graph_export(const struct ggml_cgraph * cgraph, const char * fname) {
  16233. uint64_t size_eval = 0;
  16234. // compute size of intermediate results
  16235. // TODO: does not take into account scratch buffers !!!!
  16236. for (int i = 0; i < cgraph->n_nodes; ++i) {
  16237. size_eval += ggml_nbytes_pad(cgraph->nodes[i]);
  16238. }
  16239. // print
  16240. {
  16241. FILE * fout = stdout;
  16242. fprintf(fout, "\n");
  16243. fprintf(fout, "%-16s %8x\n", "magic", GGML_FILE_MAGIC);
  16244. fprintf(fout, "%-16s %8d\n", "version", GGML_FILE_VERSION);
  16245. fprintf(fout, "%-16s %8d\n", "leafs", cgraph->n_leafs);
  16246. fprintf(fout, "%-16s %8d\n", "nodes", cgraph->n_nodes);
  16247. fprintf(fout, "%-16s %" PRIu64 "\n", "eval", size_eval);
  16248. // header
  16249. fprintf(fout, "\n");
  16250. fprintf(fout, "%-6s %-12s %8s %8s %8s %8s %8s %16s %16s %16s %16s %16s %16s\n",
  16251. "TYPE", "OP", "NDIMS", "NE0", "NE1", "NE2", "NE3", "NB0", "NB1", "NB2", "NB3", "DATA", "NAME");
  16252. for (int i = 0; i < cgraph->n_leafs; ++i) {
  16253. ggml_graph_export_leaf(cgraph->leafs[i], fout);
  16254. GGML_ASSERT(cgraph->leafs[i]->op == GGML_OP_NONE);
  16255. GGML_ASSERT(cgraph->leafs[i]->src[0] == NULL);
  16256. GGML_ASSERT(cgraph->leafs[i]->src[1] == NULL);
  16257. }
  16258. // header
  16259. fprintf(fout, "\n");
  16260. fprintf(fout, "%-6s %-6s %-12s %8s %8s %8s %8s %8s %16s %16s %16s %16s %8s %16s %16s\n",
  16261. "ARG", "TYPE", "OP", "NDIMS", "NE0", "NE1", "NE2", "NE3", "NB0", "NB1", "NB2", "NB3", "NTASKS", "DATA", "NAME");
  16262. for (int i = 0; i < cgraph->n_nodes; ++i) {
  16263. ggml_graph_export_node(cgraph->nodes[i], "DST", fout);
  16264. for (int j = 0; j < GGML_MAX_SRC; ++j) {
  16265. if (cgraph->nodes[i]->src[j]) {
  16266. ggml_graph_export_node(cgraph->nodes[i]->src[j], "SRC", fout);
  16267. }
  16268. }
  16269. fprintf(fout, "\n");
  16270. }
  16271. fprintf(fout, "\n");
  16272. }
  16273. // write binary data
  16274. {
  16275. FILE * fout = ggml_fopen(fname, "wb");
  16276. if (!fout) {
  16277. fprintf(stderr, "%s: failed to open %s\n", __func__, fname);
  16278. return;
  16279. }
  16280. // header
  16281. {
  16282. const uint32_t magic = GGML_FILE_MAGIC;
  16283. const uint32_t version = GGML_FILE_VERSION;
  16284. const uint32_t n_leafs = cgraph->n_leafs;
  16285. const uint32_t n_nodes = cgraph->n_nodes;
  16286. fwrite(&magic, sizeof(uint32_t), 1, fout);
  16287. fwrite(&version, sizeof(uint32_t), 1, fout);
  16288. fwrite(&n_leafs, sizeof(uint32_t), 1, fout);
  16289. fwrite(&n_nodes, sizeof(uint32_t), 1, fout);
  16290. fwrite(&size_eval, sizeof(uint64_t), 1, fout);
  16291. }
  16292. // leafs
  16293. {
  16294. for (int i = 0; i < cgraph->n_leafs; ++i) {
  16295. const struct ggml_tensor * tensor = cgraph->leafs[i];
  16296. const uint32_t type = tensor->type;
  16297. const uint32_t op = tensor->op;
  16298. fwrite(&type, sizeof(uint32_t), 1, fout);
  16299. fwrite(&op, sizeof(uint32_t), 1, fout);
  16300. for (int j = 0; j < GGML_MAX_DIMS; ++j) {
  16301. const uint64_t ne = tensor->ne[j];
  16302. const uint64_t nb = tensor->nb[j];
  16303. fwrite(&ne, sizeof(uint64_t), 1, fout);
  16304. fwrite(&nb, sizeof(uint64_t), 1, fout);
  16305. }
  16306. fwrite(tensor->name, sizeof(char), GGML_MAX_NAME, fout);
  16307. fwrite(tensor->op_params, sizeof(char), GGML_MAX_OP_PARAMS, fout);
  16308. // dump the data
  16309. // TODO: pad this to 32 byte boundary
  16310. {
  16311. const size_t size = ggml_nbytes(tensor);
  16312. fwrite(tensor->data, sizeof(char), size, fout);
  16313. }
  16314. }
  16315. }
  16316. // nodes
  16317. {
  16318. for (int i = 0; i < cgraph->n_nodes; ++i) {
  16319. const struct ggml_tensor * tensor = cgraph->nodes[i];
  16320. const uint32_t type = tensor->type;
  16321. const uint32_t op = tensor->op;
  16322. fwrite(&type, sizeof(uint32_t), 1, fout);
  16323. fwrite(&op, sizeof(uint32_t), 1, fout);
  16324. for (int j = 0; j < GGML_MAX_DIMS; ++j) {
  16325. const uint64_t ne = tensor->ne[j];
  16326. const uint64_t nb = tensor->nb[j];
  16327. fwrite(&ne, sizeof(uint64_t), 1, fout);
  16328. fwrite(&nb, sizeof(uint64_t), 1, fout);
  16329. }
  16330. fwrite(tensor->name, sizeof(char), GGML_MAX_NAME, fout);
  16331. fwrite(tensor->op_params, sizeof(char), GGML_MAX_OP_PARAMS, fout);
  16332. // output the op arguments
  16333. {
  16334. struct ggml_tensor * args[GGML_MAX_SRC] = { NULL };
  16335. for (int j = 0; j < GGML_MAX_SRC; ++j) {
  16336. args[j] = tensor->src[j];
  16337. }
  16338. for (int j = 0; j < GGML_MAX_SRC; ++j) {
  16339. if (args[j]) {
  16340. int32_t idx = -1;
  16341. // check if leaf
  16342. {
  16343. for (int k = 0; k < cgraph->n_leafs; ++k) {
  16344. if (args[j] == cgraph->leafs[k]) {
  16345. idx = k;
  16346. break;
  16347. }
  16348. }
  16349. }
  16350. // check if node
  16351. if (idx == -1) {
  16352. for (int k = 0; k < cgraph->n_nodes; ++k) {
  16353. if (args[j] == cgraph->nodes[k]) {
  16354. idx = cgraph->n_leafs + k;
  16355. break;
  16356. }
  16357. }
  16358. }
  16359. if (idx == -1) {
  16360. fprintf(stderr, "%s: failed to find tensor, arg = %d, node = %d\n", __func__, j, i);
  16361. fclose(fout);
  16362. return;
  16363. }
  16364. fwrite(&idx, sizeof(int32_t), 1, fout);
  16365. } else {
  16366. const int32_t nul = -1;
  16367. fwrite(&nul, sizeof(int32_t), 1, fout);
  16368. }
  16369. }
  16370. }
  16371. }
  16372. }
  16373. fclose(fout);
  16374. }
  16375. }
  16376. struct ggml_cgraph * ggml_graph_import(const char * fname, struct ggml_context ** ctx_data, struct ggml_context ** ctx_eval) {
  16377. assert(*ctx_data == NULL);
  16378. assert(*ctx_eval == NULL);
  16379. struct ggml_cgraph * result = NULL;
  16380. struct ggml_tensor * data = NULL;
  16381. // read file into data
  16382. {
  16383. FILE * fin = ggml_fopen(fname, "rb");
  16384. if (!fin) {
  16385. fprintf(stderr, "%s: failed to open %s\n", __func__, fname);
  16386. return result;
  16387. }
  16388. size_t fsize = 0;
  16389. fseek(fin, 0, SEEK_END);
  16390. fsize = ftell(fin);
  16391. fseek(fin, 0, SEEK_SET);
  16392. // create the data context
  16393. {
  16394. const size_t overhead = 1*ggml_tensor_overhead();
  16395. struct ggml_init_params params = {
  16396. .mem_size = fsize + overhead,
  16397. .mem_buffer = NULL,
  16398. .no_alloc = false,
  16399. };
  16400. *ctx_data = ggml_init(params);
  16401. if (!*ctx_data) {
  16402. fprintf(stderr, "%s: failed to create ggml context\n", __func__);
  16403. fclose(fin);
  16404. return result;
  16405. }
  16406. }
  16407. data = ggml_new_tensor_1d(*ctx_data, GGML_TYPE_I8, fsize);
  16408. {
  16409. const size_t ret = fread(data->data, sizeof(char), fsize, fin);
  16410. if (ret != fsize) {
  16411. fprintf(stderr, "%s: failed to read %s\n", __func__, fname);
  16412. fclose(fin);
  16413. return result;
  16414. }
  16415. }
  16416. fclose(fin);
  16417. }
  16418. // populate result
  16419. {
  16420. char * ptr = (char *) data->data;
  16421. const uint32_t magic = *(const uint32_t *) ptr; ptr += sizeof(magic);
  16422. if (magic != GGML_FILE_MAGIC) {
  16423. fprintf(stderr, "%s: invalid magic number, got %08x\n", __func__, magic);
  16424. return result;
  16425. }
  16426. const uint32_t version = *(const uint32_t *) ptr; ptr += sizeof(version);
  16427. if (version != GGML_FILE_VERSION) {
  16428. fprintf(stderr, "%s: invalid version number\n", __func__);
  16429. return result;
  16430. }
  16431. const uint32_t n_leafs = *(const uint32_t *) ptr; ptr += sizeof(n_leafs);
  16432. const uint32_t n_nodes = *(const uint32_t *) ptr; ptr += sizeof(n_nodes);
  16433. const uint64_t size_eval = *(const uint64_t *) ptr; ptr += sizeof(size_eval);
  16434. const int graph_size = MAX(n_leafs, n_nodes);
  16435. // create the data context
  16436. {
  16437. const size_t overhead = (n_leafs + n_nodes)*ggml_tensor_overhead() + ggml_graph_overhead_custom(graph_size, false);
  16438. struct ggml_init_params params = {
  16439. .mem_size = size_eval + overhead,
  16440. .mem_buffer = NULL,
  16441. .no_alloc = true,
  16442. };
  16443. *ctx_eval = ggml_init(params);
  16444. if (!*ctx_eval) {
  16445. fprintf(stderr, "%s: failed to create ggml context\n", __func__);
  16446. return result;
  16447. }
  16448. }
  16449. result = ggml_new_graph_custom(*ctx_eval, graph_size, false);
  16450. result->n_leafs = n_leafs;
  16451. result->n_nodes = n_nodes;
  16452. // leafs
  16453. {
  16454. uint32_t type;
  16455. uint32_t op;
  16456. for (uint32_t i = 0; i < n_leafs; ++i) {
  16457. type = *(const uint32_t *) ptr; ptr += sizeof(type);
  16458. op = *(const uint32_t *) ptr; ptr += sizeof(op);
  16459. int64_t ne[GGML_MAX_DIMS];
  16460. size_t nb[GGML_MAX_DIMS];
  16461. for (int j = 0; j < GGML_MAX_DIMS; ++j) {
  16462. uint64_t ne_cur;
  16463. uint64_t nb_cur;
  16464. ne_cur = *(const uint64_t *) ptr; ptr += sizeof(ne_cur);
  16465. nb_cur = *(const uint64_t *) ptr; ptr += sizeof(nb_cur);
  16466. ne[j] = ne_cur;
  16467. nb[j] = nb_cur;
  16468. }
  16469. struct ggml_tensor * tensor = ggml_new_tensor(*ctx_eval, (enum ggml_type) type, GGML_MAX_DIMS, ne);
  16470. tensor->op = (enum ggml_op) op;
  16471. memcpy(tensor->name, ptr, GGML_MAX_NAME); ptr += GGML_MAX_NAME;
  16472. memcpy(tensor->op_params, ptr, GGML_MAX_OP_PARAMS); ptr += GGML_MAX_OP_PARAMS;
  16473. tensor->data = (void *) ptr;
  16474. for (int j = 0; j < GGML_MAX_DIMS; ++j) {
  16475. tensor->nb[j] = nb[j];
  16476. }
  16477. result->leafs[i] = tensor;
  16478. ptr += ggml_nbytes(tensor);
  16479. fprintf(stderr, "%s: loaded leaf %u: '%16s', %9zu bytes\n", __func__, i, tensor->name, ggml_nbytes(tensor));
  16480. }
  16481. }
  16482. ggml_set_no_alloc(*ctx_eval, false);
  16483. // nodes
  16484. {
  16485. uint32_t type;
  16486. uint32_t op;
  16487. for (uint32_t i = 0; i < n_nodes; ++i) {
  16488. type = *(const uint32_t *) ptr; ptr += sizeof(type);
  16489. op = *(const uint32_t *) ptr; ptr += sizeof(op);
  16490. enum ggml_op eop = (enum ggml_op) op;
  16491. int64_t ne[GGML_MAX_DIMS];
  16492. size_t nb[GGML_MAX_DIMS];
  16493. for (int j = 0; j < GGML_MAX_DIMS; ++j) {
  16494. uint64_t ne_cur;
  16495. uint64_t nb_cur;
  16496. ne_cur = *(const uint64_t *) ptr; ptr += sizeof(ne_cur);
  16497. nb_cur = *(const uint64_t *) ptr; ptr += sizeof(nb_cur);
  16498. ne[j] = ne_cur;
  16499. nb[j] = nb_cur;
  16500. }
  16501. const char * ptr_name = ptr; ptr += GGML_MAX_NAME;
  16502. const char * ptr_op_params = ptr; ptr += GGML_MAX_OP_PARAMS;
  16503. const int32_t * ptr_arg_idx = (const int32_t *) ptr; ptr += GGML_MAX_SRC*sizeof(int32_t);
  16504. struct ggml_tensor * args[GGML_MAX_SRC] = { NULL };
  16505. // parse args
  16506. for (int j = 0; j < GGML_MAX_SRC; ++j) {
  16507. const int32_t arg_idx = ptr_arg_idx[j];
  16508. if (arg_idx == -1) {
  16509. continue;
  16510. }
  16511. if (arg_idx < result->n_leafs) {
  16512. args[j] = result->leafs[arg_idx];
  16513. } else {
  16514. args[j] = result->nodes[arg_idx - result->n_leafs];
  16515. }
  16516. }
  16517. // create the tensor
  16518. // "view" operations are handled differently
  16519. // TODO: handle inplace ops - currently a copy is always made
  16520. struct ggml_tensor * tensor = NULL;
  16521. switch (eop) {
  16522. // TODO: implement other view ops
  16523. case GGML_OP_RESHAPE:
  16524. {
  16525. tensor = ggml_reshape_4d(*ctx_eval, args[0], ne[0], ne[1], ne[2], ne[3]);
  16526. } break;
  16527. case GGML_OP_VIEW:
  16528. {
  16529. tensor = ggml_view_4d(*ctx_eval, args[0], ne[0], ne[1], ne[2], ne[3], 0, 0, 0, 0);
  16530. size_t offs;
  16531. memcpy(&offs, ptr_op_params, sizeof(offs));
  16532. tensor->data = ((char *) tensor->data) + offs;
  16533. } break;
  16534. case GGML_OP_TRANSPOSE:
  16535. {
  16536. tensor = ggml_transpose(*ctx_eval, args[0]);
  16537. } break;
  16538. case GGML_OP_PERMUTE:
  16539. {
  16540. tensor = ggml_view_4d(*ctx_eval, args[0], ne[0], ne[1], ne[2], ne[3], 0, 0, 0, 0);
  16541. } break;
  16542. default:
  16543. {
  16544. tensor = ggml_new_tensor(*ctx_eval, (enum ggml_type) type, GGML_MAX_DIMS, ne);
  16545. tensor->op = eop;
  16546. } break;
  16547. }
  16548. memcpy(tensor->name, ptr_name, GGML_MAX_NAME);
  16549. memcpy(tensor->op_params, ptr_op_params, GGML_MAX_OP_PARAMS);
  16550. for (int j = 0; j < GGML_MAX_DIMS; ++j) {
  16551. tensor->nb[j] = nb[j];
  16552. }
  16553. for (int j = 0; j < GGML_MAX_SRC; ++j) {
  16554. tensor->src[j] = args[j];
  16555. }
  16556. result->nodes[i] = tensor;
  16557. fprintf(stderr, "%s: loaded node %u: '%16s', %9zu bytes\n", __func__, i, tensor->name, ggml_nbytes(tensor));
  16558. }
  16559. }
  16560. }
  16561. return result;
  16562. }
  16563. void ggml_graph_print(const struct ggml_cgraph * cgraph) {
  16564. int64_t perf_total_per_op_us[GGML_OP_COUNT] = {0};
  16565. GGML_PRINT("=== GRAPH ===\n");
  16566. GGML_PRINT("n_nodes = %d\n", cgraph->n_nodes);
  16567. for (int i = 0; i < cgraph->n_nodes; i++) {
  16568. struct ggml_tensor * node = cgraph->nodes[i];
  16569. perf_total_per_op_us[node->op] += MAX(1, node->perf_time_us);
  16570. GGML_PRINT(" - %3d: [ %5" PRId64 ", %5" PRId64 ", %5" PRId64 "] %16s %s (%3d) cpu = %7.3f / %7.3f ms, wall = %7.3f / %7.3f ms\n",
  16571. i,
  16572. node->ne[0], node->ne[1], node->ne[2],
  16573. ggml_op_name(node->op), (node->flags & GGML_TENSOR_FLAG_PARAM) ? "x" : node->grad ? "g" : " ", node->perf_runs,
  16574. (double) node->perf_cycles / (double) ggml_cycles_per_ms(),
  16575. (double) node->perf_cycles / (double) ggml_cycles_per_ms() / (double) node->perf_runs,
  16576. (double) node->perf_time_us / 1000.0,
  16577. (double) node->perf_time_us / 1000.0 / node->perf_runs);
  16578. }
  16579. GGML_PRINT("n_leafs = %d\n", cgraph->n_leafs);
  16580. for (int i = 0; i < cgraph->n_leafs; i++) {
  16581. struct ggml_tensor * node = cgraph->leafs[i];
  16582. GGML_PRINT(" - %3d: [ %5" PRId64 ", %5" PRId64 "] %8s %16s\n",
  16583. i,
  16584. node->ne[0], node->ne[1],
  16585. ggml_op_name(node->op),
  16586. ggml_get_name(node));
  16587. }
  16588. for (int i = 0; i < GGML_OP_COUNT; i++) {
  16589. if (perf_total_per_op_us[i] == 0) {
  16590. continue;
  16591. }
  16592. GGML_PRINT("perf_total_per_op_us[%16s] = %7.3f ms\n", ggml_op_name(i), (double) perf_total_per_op_us[i] / 1000.0);
  16593. }
  16594. GGML_PRINT("========================================\n");
  16595. }
  16596. // check if node is part of the graph
  16597. static bool ggml_graph_find(const struct ggml_cgraph * cgraph, const struct ggml_tensor * node) {
  16598. if (cgraph == NULL) {
  16599. return true;
  16600. }
  16601. for (int i = 0; i < cgraph->n_nodes; i++) {
  16602. if (cgraph->nodes[i] == node) {
  16603. return true;
  16604. }
  16605. }
  16606. return false;
  16607. }
  16608. static struct ggml_tensor * ggml_graph_get_parent(const struct ggml_cgraph * cgraph, const struct ggml_tensor * node) {
  16609. for (int i = 0; i < cgraph->n_nodes; i++) {
  16610. struct ggml_tensor * parent = cgraph->nodes[i];
  16611. if (parent->grad == node) {
  16612. return parent;
  16613. }
  16614. }
  16615. return NULL;
  16616. }
  16617. static void ggml_graph_dump_dot_node_edge(FILE * fp, const struct ggml_cgraph * gb, struct ggml_tensor * node, struct ggml_tensor * parent, const char * label) {
  16618. struct ggml_tensor * gparent = ggml_graph_get_parent(gb, node);
  16619. struct ggml_tensor * gparent0 = ggml_graph_get_parent(gb, parent);
  16620. fprintf(fp, " \"%p\":%s -> \"%p\":%s [ arrowhead = %s; style = %s; label = \"%s\"; ]\n",
  16621. gparent0 ? (void *) gparent0 : (void *) parent,
  16622. gparent0 ? "g" : "x",
  16623. gparent ? (void *) gparent : (void *) node,
  16624. gparent ? "g" : "x",
  16625. gparent ? "empty" : "vee",
  16626. gparent ? "dashed" : "solid",
  16627. label);
  16628. }
  16629. static void ggml_graph_dump_dot_leaf_edge(FILE * fp, struct ggml_tensor * node, struct ggml_tensor * parent, const char * label) {
  16630. fprintf(fp, " \"%p\":%s -> \"%p\":%s [ label = \"%s\"; ]\n",
  16631. (void *) parent, "x",
  16632. (void *) node, "x",
  16633. label);
  16634. }
  16635. void ggml_graph_dump_dot(const struct ggml_cgraph * gb, const struct ggml_cgraph * gf, const char * filename) {
  16636. char color[16];
  16637. FILE * fp = ggml_fopen(filename, "w");
  16638. GGML_ASSERT(fp);
  16639. fprintf(fp, "digraph G {\n");
  16640. fprintf(fp, " newrank = true;\n");
  16641. fprintf(fp, " rankdir = LR;\n");
  16642. for (int i = 0; i < gb->n_nodes; i++) {
  16643. struct ggml_tensor * node = gb->nodes[i];
  16644. if (ggml_graph_get_parent(gb, node) != NULL) {
  16645. continue;
  16646. }
  16647. if (node->flags & GGML_TENSOR_FLAG_PARAM) {
  16648. snprintf(color, sizeof(color), "yellow");
  16649. } else if (node->grad) {
  16650. if (ggml_graph_find(gf, node)) {
  16651. snprintf(color, sizeof(color), "green");
  16652. } else {
  16653. snprintf(color, sizeof(color), "lightblue");
  16654. }
  16655. } else {
  16656. snprintf(color, sizeof(color), "white");
  16657. }
  16658. fprintf(fp, " \"%p\" [ "
  16659. "style = filled; fillcolor = %s; shape = record; "
  16660. "label=\"",
  16661. (void *) node, color);
  16662. if (strlen(node->name) > 0) {
  16663. fprintf(fp, "%s (%s)|", node->name, ggml_type_name(node->type));
  16664. } else {
  16665. fprintf(fp, "(%s)|", ggml_type_name(node->type));
  16666. }
  16667. if (ggml_is_matrix(node)) {
  16668. fprintf(fp, "%d [%" PRId64 ", %" PRId64 "] | <x>%s", i, node->ne[0], node->ne[1], ggml_op_symbol(node->op));
  16669. } else {
  16670. fprintf(fp, "%d [%" PRId64 ", %" PRId64 ", %" PRId64 "] | <x>%s", i, node->ne[0], node->ne[1], node->ne[2], ggml_op_symbol(node->op));
  16671. }
  16672. if (node->grad) {
  16673. fprintf(fp, " | <g>%s\"; ]\n", ggml_op_symbol(node->grad->op));
  16674. } else {
  16675. fprintf(fp, "\"; ]\n");
  16676. }
  16677. }
  16678. for (int i = 0; i < gb->n_leafs; i++) {
  16679. struct ggml_tensor * node = gb->leafs[i];
  16680. snprintf(color, sizeof(color), "pink");
  16681. fprintf(fp, " \"%p\" [ "
  16682. "style = filled; fillcolor = %s; shape = record; "
  16683. "label=\"<x>",
  16684. (void *) node, color);
  16685. if (strlen(node->name) > 0) {
  16686. fprintf(fp, "%s (%s)|", node->name, ggml_type_name(node->type));
  16687. } else {
  16688. fprintf(fp, "(%s)|", ggml_type_name(node->type));
  16689. }
  16690. fprintf(fp, "CONST %d [%" PRId64 ", %" PRId64 "]", i, node->ne[0], node->ne[1]);
  16691. if (ggml_nelements(node) < 5) {
  16692. fprintf(fp, " | (");
  16693. for (int j = 0; j < ggml_nelements(node); j++) {
  16694. if (node->type == GGML_TYPE_I8 || node->type == GGML_TYPE_I16 || node->type == GGML_TYPE_I32) {
  16695. fprintf(fp, "%d", ggml_get_i32_1d(node, j));
  16696. }
  16697. else if (node->type == GGML_TYPE_F32 ||
  16698. node->type == GGML_TYPE_F16 ||
  16699. node->type == GGML_TYPE_BF16) {
  16700. fprintf(fp, "%.1e", (double)ggml_get_f32_1d(node, j));
  16701. }
  16702. else {
  16703. fprintf(fp, "#");
  16704. }
  16705. if (j < ggml_nelements(node) - 1) {
  16706. fprintf(fp, ", ");
  16707. }
  16708. }
  16709. fprintf(fp, ")");
  16710. }
  16711. fprintf(fp, "\"; ]\n");
  16712. }
  16713. for (int i = 0; i < gb->n_nodes; i++) {
  16714. struct ggml_tensor * node = gb->nodes[i];
  16715. for (int j = 0; j < GGML_MAX_SRC; j++) {
  16716. if (node->src[j]) {
  16717. char label[16];
  16718. snprintf(label, sizeof(label), "src %d", j);
  16719. ggml_graph_dump_dot_node_edge(fp, gb, node, node->src[j], label);
  16720. }
  16721. }
  16722. }
  16723. for (int i = 0; i < gb->n_leafs; i++) {
  16724. struct ggml_tensor * node = gb->leafs[i];
  16725. for (int j = 0; j < GGML_MAX_SRC; j++) {
  16726. if (node->src[j]) {
  16727. char label[16];
  16728. snprintf(label, sizeof(label), "src %d", j);
  16729. ggml_graph_dump_dot_leaf_edge(fp, node, node->src[j], label);
  16730. }
  16731. }
  16732. }
  16733. fprintf(fp, "}\n");
  16734. fclose(fp);
  16735. GGML_PRINT("%s: dot -Tpng %s -o %s.png && open %s.png\n", __func__, filename, filename, filename);
  16736. }
  16737. ////////////////////////////////////////////////////////////////////////////////
  16738. static void ggml_opt_set_params(int np, struct ggml_tensor * const ps[], const float * x) {
  16739. int i = 0;
  16740. for (int p = 0; p < np; ++p) {
  16741. const int64_t ne = ggml_nelements(ps[p]) ;
  16742. // TODO: add function to set tensor from array
  16743. for (int64_t j = 0; j < ne; ++j) {
  16744. ggml_set_f32_1d(ps[p], j, x[i++]);
  16745. }
  16746. }
  16747. }
  16748. static void ggml_opt_get_params(int np, struct ggml_tensor * const ps[], float * x) {
  16749. int i = 0;
  16750. for (int p = 0; p < np; ++p) {
  16751. const int64_t ne = ggml_nelements(ps[p]) ;
  16752. // TODO: add function to get all elements at once
  16753. for (int64_t j = 0; j < ne; ++j) {
  16754. x[i++] = ggml_get_f32_1d(ps[p], j);
  16755. }
  16756. }
  16757. }
  16758. static void ggml_opt_get_grad(int np, struct ggml_tensor * const ps[], float * g) {
  16759. int64_t i = 0;
  16760. for (int p = 0; p < np; ++p) {
  16761. const int64_t ne = ggml_nelements(ps[p]) ;
  16762. // TODO: add function to get all elements at once
  16763. for (int64_t j = 0; j < ne; ++j) {
  16764. g[i++] = ggml_get_f32_1d(ps[p]->grad, j);
  16765. }
  16766. }
  16767. }
  16768. static void ggml_opt_acc_grad(int np, struct ggml_tensor * const ps[], float * g, float scale) {
  16769. int64_t i = 0;
  16770. for (int p = 0; p < np; ++p) {
  16771. const int64_t ne = ggml_nelements(ps[p]) ;
  16772. // TODO: add function to get all elements at once
  16773. for (int64_t j = 0; j < ne; ++j) {
  16774. g[i++] += ggml_get_f32_1d(ps[p]->grad, j) * scale;
  16775. }
  16776. }
  16777. }
  16778. //
  16779. // Using AdamW - ref: https://arxiv.org/pdf/1711.05101v3.pdf
  16780. //
  16781. // (Original Adam - ref: https://arxiv.org/pdf/1412.6980.pdf)
  16782. //
  16783. static enum ggml_opt_result ggml_opt_adam(
  16784. struct ggml_context * ctx,
  16785. struct ggml_opt_context * opt,
  16786. struct ggml_opt_params params,
  16787. struct ggml_tensor * f,
  16788. struct ggml_cgraph * gf,
  16789. struct ggml_cgraph * gb,
  16790. ggml_opt_callback callback,
  16791. void * callback_data) {
  16792. GGML_ASSERT(ggml_is_scalar(f));
  16793. // these will store the parameters we want to optimize
  16794. struct ggml_tensor * ps[GGML_MAX_PARAMS];
  16795. int np = 0;
  16796. int64_t nx = 0;
  16797. for (int i = 0; i < gf->n_nodes; ++i) {
  16798. if (gf->nodes[i]->flags & GGML_TENSOR_FLAG_PARAM) {
  16799. GGML_PRINT_DEBUG("found param %d: grad->op = %d\n", np, gf->nodes[i]->grad->op);
  16800. GGML_ASSERT(np < GGML_MAX_PARAMS);
  16801. ps[np++] = gf->nodes[i];
  16802. nx += ggml_nelements(gf->nodes[i]);
  16803. }
  16804. }
  16805. if ((opt->params.type != params.type) || (opt->nx != nx) || (opt->params.past != params.past)) {
  16806. int iter = opt->iter;
  16807. ggml_opt_init(opt->ctx, opt, params, nx);
  16808. opt->iter = iter;
  16809. }
  16810. // constants
  16811. float sched = params.adam.sched;
  16812. const float alpha = params.adam.alpha;
  16813. const float decay = params.adam.decay * alpha;
  16814. const float beta1 = params.adam.beta1;
  16815. const float beta2 = params.adam.beta2;
  16816. const float eps = params.adam.eps;
  16817. const float gclip = params.adam.gclip;
  16818. const int decay_min_ndim = params.adam.decay_min_ndim;
  16819. const int n_accum = MAX(1, params.n_gradient_accumulation);
  16820. const float accum_norm = 1.0f / (float) n_accum;
  16821. float * g = opt->adam.g->data; // gradients
  16822. float * m = opt->adam.m->data; // first moment
  16823. float * v = opt->adam.v->data; // second moment
  16824. float * pf = params.past > 0 ? opt->adam.pf->data : NULL; // past function values
  16825. struct ggml_cplan cplan = ggml_graph_plan(gb, params.n_threads);
  16826. struct ggml_object * obj = ggml_new_object(ctx, GGML_OBJECT_TYPE_WORK_BUFFER, cplan.work_size);
  16827. cplan.work_data = (uint8_t *)ctx->mem_buffer + obj->offs;
  16828. bool cancel = false;
  16829. // compute the function value
  16830. float fx = 0;
  16831. ggml_set_zero(opt->adam.g);
  16832. for (int accum_step = 0; accum_step < n_accum; ++accum_step) {
  16833. if (callback) {
  16834. callback(callback_data, accum_step, &sched, &cancel);
  16835. if (cancel) {
  16836. return GGML_OPT_RESULT_CANCEL;
  16837. }
  16838. }
  16839. // ggml_graph_reset (gf);
  16840. ggml_set_f32 (f->grad, 1.0f);
  16841. ggml_graph_compute(gb, &cplan);
  16842. ggml_opt_acc_grad(np, ps, g, accum_norm);
  16843. fx += ggml_get_f32_1d(f, 0);
  16844. }
  16845. fx *= accum_norm;
  16846. opt->adam.fx_prev = fx;
  16847. opt->adam.fx_best = opt->adam.fx_prev;
  16848. if (pf) {
  16849. pf[opt->iter % params.past] = opt->adam.fx_prev;
  16850. }
  16851. opt->loss_before = opt->adam.fx_prev;
  16852. opt->loss_after = opt->adam.fx_prev;
  16853. // initialize
  16854. if (opt->just_initialized) {
  16855. opt->adam.n_no_improvement = 0;
  16856. opt->just_initialized = false;
  16857. }
  16858. float * fx_best = &opt->adam.fx_best;
  16859. float * fx_prev = &opt->adam.fx_prev;
  16860. int * n_no_improvement = &opt->adam.n_no_improvement;
  16861. int iter0 = opt->iter;
  16862. // run the optimizer
  16863. for (int t = 0; t < params.adam.n_iter; ++t) {
  16864. opt->iter = iter0 + t + 1;
  16865. GGML_PRINT_DEBUG ("=== iter %d ===\n", t);
  16866. GGML_PRINT_DEBUG ("f = %10.6f\n", ggml_get_f32_1d(f, 0));
  16867. GGML_PRINT_DEBUG_5("df/dx0 = %10.6f\n", ggml_get_f32_1d(ps[0]->grad, 0));
  16868. GGML_PRINT_DEBUG_5("df/dx1 = %10.6f\n", ggml_get_f32_1d(ps[1]->grad, 0));
  16869. for (int i = 0; i < np; ++i) {
  16870. GGML_PRINT_DEBUG("param %d: %10.6f, g = %10.6f\n", i,
  16871. ggml_get_f32_1d(ps[i], 0), ggml_get_f32_1d(ps[i]->grad, 0));
  16872. }
  16873. const int64_t t_start_wall = ggml_time_us();
  16874. const int64_t t_start_cpu = ggml_cycles();
  16875. UNUSED(t_start_wall);
  16876. UNUSED(t_start_cpu);
  16877. {
  16878. float gnorm = 1.0f;
  16879. if (gclip > 0.0f) {
  16880. // gradient clipping
  16881. ggml_float sum = 0.0;
  16882. for (int64_t i = 0; i < nx; ++i) {
  16883. sum += (ggml_float)(g[i]*g[i]);
  16884. }
  16885. ggml_float norm = sqrt(sum);
  16886. if (norm > (ggml_float) gclip) {
  16887. gnorm = (float) ((ggml_float) gclip / norm);
  16888. }
  16889. }
  16890. const float beta1h = alpha*sched/(1.0f - powf(beta1, opt->iter));
  16891. const float beta2h = 1.0f/(1.0f - powf(beta2, opt->iter));
  16892. int64_t i = 0;
  16893. for (int p = 0; p < np; ++p) {
  16894. const int64_t ne = ggml_nelements(ps[p]);
  16895. const float p_decay = ((ggml_n_dims(ps[p]) >= decay_min_ndim) ? decay : 0.0f) * sched;
  16896. for (int64_t j = 0; j < ne; ++j) {
  16897. float x = ggml_get_f32_1d(ps[p], j);
  16898. float g_ = g[i]*gnorm;
  16899. m[i] = m[i]*beta1 + g_*(1.0f - beta1);
  16900. v[i] = v[i]*beta2 + g_*g_*(1.0f - beta2);
  16901. float mh = m[i]*beta1h;
  16902. float vh = v[i]*beta2h;
  16903. vh = sqrtf(vh) + eps;
  16904. x = x*(1.0f - p_decay) - mh/vh;
  16905. ggml_set_f32_1d(ps[p], j, x);
  16906. ++i;
  16907. }
  16908. }
  16909. }
  16910. fx = 0;
  16911. ggml_set_zero(opt->adam.g);
  16912. for (int accum_step = 0; accum_step < n_accum; ++accum_step) {
  16913. if (callback) {
  16914. callback(callback_data, accum_step, &sched, &cancel);
  16915. if (cancel) {
  16916. return GGML_OPT_RESULT_CANCEL;;
  16917. }
  16918. }
  16919. // ggml_graph_reset (gf);
  16920. ggml_set_f32 (f->grad, 1.0f);
  16921. ggml_graph_compute(gb, &cplan);
  16922. ggml_opt_acc_grad(np, ps, g, accum_norm);
  16923. fx += ggml_get_f32_1d(f, 0);
  16924. }
  16925. fx *= accum_norm;
  16926. opt->loss_after = fx;
  16927. // check convergence
  16928. if (fabsf(fx - fx_prev[0])/fx < params.adam.eps_f) {
  16929. GGML_PRINT_DEBUG("converged\n");
  16930. return GGML_OPT_RESULT_OK;
  16931. }
  16932. // delta-based convergence test
  16933. if (pf != NULL) {
  16934. // need at least params.past iterations to start checking for convergence
  16935. if (params.past <= iter0 + t) {
  16936. const float rate = (pf[(iter0 + t)%params.past] - fx)/fx;
  16937. if (fabsf(rate) < params.delta) {
  16938. return GGML_OPT_RESULT_OK;
  16939. }
  16940. }
  16941. pf[(iter0 + t)%params.past] = fx;
  16942. }
  16943. // check for improvement
  16944. if (params.max_no_improvement > 0) {
  16945. if (fx_best[0] > fx) {
  16946. fx_best[0] = fx;
  16947. n_no_improvement[0] = 0;
  16948. } else {
  16949. ++n_no_improvement[0];
  16950. if (n_no_improvement[0] >= params.max_no_improvement) {
  16951. return GGML_OPT_RESULT_OK;
  16952. }
  16953. }
  16954. }
  16955. fx_prev[0] = fx;
  16956. {
  16957. const int64_t t_end_cpu = ggml_cycles();
  16958. GGML_PRINT_DEBUG("time iter: %5.3f s\n", ((float)(t_end_cpu - t_start_cpu))/CLOCKS_PER_SEC);
  16959. UNUSED(t_end_cpu);
  16960. const int64_t t_end_wall = ggml_time_us();
  16961. GGML_PRINT_DEBUG("wall time iter: %5.3f s\n", (t_end_wall - t_start_wall)/1e6);
  16962. UNUSED(t_end_wall);
  16963. }
  16964. }
  16965. return GGML_OPT_RESULT_DID_NOT_CONVERGE;
  16966. }
  16967. //
  16968. // L-BFGS
  16969. //
  16970. // the L-BFGS implementation below is based on the following implementation:
  16971. //
  16972. // https://github.com/chokkan/liblbfgs
  16973. //
  16974. struct ggml_lbfgs_iteration_data {
  16975. float alpha;
  16976. float ys;
  16977. float * s;
  16978. float * y;
  16979. };
  16980. static enum ggml_opt_result linesearch_backtracking(
  16981. const struct ggml_opt_params * params,
  16982. int nx,
  16983. float * x,
  16984. float * fx,
  16985. float * g,
  16986. float * d,
  16987. float * step,
  16988. const float * xp,
  16989. struct ggml_tensor * f,
  16990. struct ggml_cgraph * gb,
  16991. struct ggml_cplan * cplan,
  16992. const int np,
  16993. struct ggml_tensor * ps[],
  16994. bool * cancel,
  16995. ggml_opt_callback callback,
  16996. void * callback_data) {
  16997. int count = 0;
  16998. float width = 0.0f;
  16999. float dg = 0.0f;
  17000. float finit = 0.0f;
  17001. float dginit = 0.0f;
  17002. float dgtest = 0.0f;
  17003. const float dec = 0.5f;
  17004. const float inc = 2.1f;
  17005. const int n_accum = MAX(1, params->n_gradient_accumulation);
  17006. const float accum_norm = 1.0f / (float) n_accum;
  17007. if (*step <= 0.f) {
  17008. return GGML_LINESEARCH_INVALID_PARAMETERS;
  17009. }
  17010. // compute the initial gradient in the search direction
  17011. ggml_vec_dot_f32(nx, &dginit, 0, g, 0, d, 0, 1);
  17012. // make sure that d points to a descent direction
  17013. if (0 < dginit) {
  17014. return GGML_LINESEARCH_FAIL;
  17015. }
  17016. // initialize local variables
  17017. finit = *fx;
  17018. dgtest = params->lbfgs.ftol*dginit;
  17019. while (true) {
  17020. ggml_vec_cpy_f32(nx, x, xp);
  17021. ggml_vec_mad_f32(nx, x, d, *step);
  17022. // evaluate the function and gradient values
  17023. {
  17024. ggml_opt_set_params(np, ps, x);
  17025. *fx = 0;
  17026. memset(g, 0, sizeof(float)*nx);
  17027. for (int accum_step = 0; accum_step < n_accum; ++accum_step) {
  17028. if (callback) {
  17029. // LBFG-S does not support learning rate -> ignore learning schedule
  17030. float sched = 0;
  17031. callback(callback_data, accum_step, &sched, cancel);
  17032. if (*cancel) {
  17033. return GGML_OPT_RESULT_CANCEL;
  17034. }
  17035. }
  17036. // ggml_graph_reset (gf);
  17037. ggml_set_f32 (f->grad, 1.0f);
  17038. ggml_graph_compute(gb, cplan);
  17039. ggml_opt_acc_grad(np, ps, g, accum_norm);
  17040. *fx += ggml_get_f32_1d(f, 0);
  17041. }
  17042. *fx *= accum_norm;
  17043. }
  17044. ++count;
  17045. if (*fx > finit + (*step)*dgtest) {
  17046. width = dec;
  17047. } else {
  17048. // Armijo condition is satisfied
  17049. if (params->lbfgs.linesearch == GGML_LINESEARCH_BACKTRACKING_ARMIJO) {
  17050. return count;
  17051. }
  17052. ggml_vec_dot_f32(nx, &dg, 0, g, 0, d, 0, 1);
  17053. // check the Wolfe condition
  17054. if (dg < params->lbfgs.wolfe * dginit) {
  17055. width = inc;
  17056. } else {
  17057. if(params->lbfgs.linesearch == GGML_LINESEARCH_BACKTRACKING_WOLFE) {
  17058. // regular Wolfe conditions
  17059. return count;
  17060. }
  17061. if(dg > -params->lbfgs.wolfe*dginit) {
  17062. width = dec;
  17063. } else {
  17064. // strong Wolfe condition (GGML_LINESEARCH_BACKTRACKING_STRONG_WOLFE)
  17065. return count;
  17066. }
  17067. }
  17068. }
  17069. if (*step < params->lbfgs.min_step) {
  17070. return GGML_LINESEARCH_MINIMUM_STEP;
  17071. }
  17072. if (*step > params->lbfgs.max_step) {
  17073. return GGML_LINESEARCH_MAXIMUM_STEP;
  17074. }
  17075. if (params->lbfgs.max_linesearch <= count) {
  17076. return GGML_LINESEARCH_MAXIMUM_ITERATIONS;
  17077. }
  17078. (*step) *= width;
  17079. }
  17080. GGML_ASSERT(false && "line search failed");
  17081. return GGML_LINESEARCH_FAIL;
  17082. }
  17083. static enum ggml_opt_result ggml_opt_lbfgs(
  17084. struct ggml_context * ctx,
  17085. struct ggml_opt_context * opt,
  17086. struct ggml_opt_params params,
  17087. struct ggml_tensor * f,
  17088. struct ggml_cgraph * gf,
  17089. struct ggml_cgraph * gb,
  17090. ggml_opt_callback callback,
  17091. void * callback_data) {
  17092. if (params.lbfgs.linesearch == GGML_LINESEARCH_BACKTRACKING_WOLFE ||
  17093. params.lbfgs.linesearch == GGML_LINESEARCH_BACKTRACKING_STRONG_WOLFE) {
  17094. if (params.lbfgs.wolfe <= params.lbfgs.ftol || 1.f <= params.lbfgs.wolfe) {
  17095. return GGML_OPT_RESULT_INVALID_WOLFE;
  17096. }
  17097. }
  17098. const int m = params.lbfgs.m;
  17099. // these will store the parameters we want to optimize
  17100. struct ggml_tensor * ps[GGML_MAX_PARAMS];
  17101. int np = 0;
  17102. int nx = 0;
  17103. for (int i = 0; i < gf->n_nodes; ++i) {
  17104. if (gf->nodes[i]->flags & GGML_TENSOR_FLAG_PARAM) {
  17105. GGML_PRINT_DEBUG("found param %d: grad->op = %d\n", np, gf->nodes[i]->grad->op);
  17106. GGML_ASSERT(np < GGML_MAX_PARAMS);
  17107. ps[np++] = gf->nodes[i];
  17108. nx += ggml_nelements(gf->nodes[i]);
  17109. }
  17110. }
  17111. if ((opt->params.type != params.type) || (opt->nx != nx) || (opt->params.past != params.past) || (opt->params.lbfgs.m != params.lbfgs.m)) {
  17112. int iter = opt->iter;
  17113. ggml_opt_init(ctx, opt, params, nx);
  17114. opt->iter = iter;
  17115. }
  17116. struct ggml_cplan cplan = ggml_graph_plan(gb, params.n_threads);
  17117. struct ggml_object * obj = ggml_new_object(ctx, GGML_OBJECT_TYPE_WORK_BUFFER, cplan.work_size);
  17118. cplan.work_data = (uint8_t *)ctx->mem_buffer + obj->offs;
  17119. float * x = opt->lbfgs.x->data; // current parameters
  17120. float * xp = opt->lbfgs.xp->data; // previous parameters
  17121. float * g = opt->lbfgs.g->data; // current gradient
  17122. float * gp = opt->lbfgs.gp->data; // previous gradient
  17123. float * d = opt->lbfgs.d->data; // search direction
  17124. float * pf = params.past > 0 ? opt->lbfgs.pf->data : NULL; // past function values
  17125. const int n_accum = MAX(1, params.n_gradient_accumulation);
  17126. const float accum_norm = 1.0f / (float) n_accum;
  17127. float fx = 0.0f; // cost function value
  17128. float xnorm = 0.0f; // ||x||
  17129. float gnorm = 0.0f; // ||g||
  17130. // initialize x from the graph nodes
  17131. ggml_opt_get_params(np, ps, x);
  17132. // the L-BFGS memory
  17133. float * lm_alpha = opt->lbfgs.lmal->data;
  17134. float * lm_ys = opt->lbfgs.lmys->data;
  17135. float * lm_s = opt->lbfgs.lms->data;
  17136. float * lm_y = opt->lbfgs.lmy->data;
  17137. bool cancel = false;
  17138. // evaluate the function value and its gradient
  17139. {
  17140. ggml_opt_set_params(np, ps, x);
  17141. fx = 0;
  17142. memset(g, 0, sizeof(float)*nx);
  17143. for (int accum_step = 0; accum_step < n_accum; ++accum_step) {
  17144. if (callback) {
  17145. // LBFG-S does not support learning rate -> ignore learning schedule
  17146. float sched = 0;
  17147. callback(callback_data, accum_step, &sched, &cancel);
  17148. if (cancel) {
  17149. return GGML_OPT_RESULT_CANCEL;
  17150. }
  17151. }
  17152. // ggml_graph_reset (gf);
  17153. ggml_set_f32 (f->grad, 1.0f);
  17154. ggml_graph_compute(gb, &cplan);
  17155. ggml_opt_acc_grad(np, ps, g, accum_norm);
  17156. fx += ggml_get_f32_1d(f, 0);
  17157. }
  17158. fx *= accum_norm;
  17159. opt->loss_before = fx;
  17160. opt->loss_after = fx;
  17161. }
  17162. // search direction = -gradient
  17163. ggml_vec_neg_f32(nx, d, g);
  17164. // ||x||, ||g||
  17165. ggml_vec_norm_f32(nx, &xnorm, x);
  17166. ggml_vec_norm_f32(nx, &gnorm, g);
  17167. if (xnorm < 1.0f) {
  17168. xnorm = 1.0f;
  17169. }
  17170. // already optimized
  17171. if (gnorm/xnorm <= params.lbfgs.eps) {
  17172. return GGML_OPT_RESULT_OK;
  17173. }
  17174. if (opt->just_initialized) {
  17175. if (pf) {
  17176. pf[0] = fx;
  17177. }
  17178. opt->lbfgs.fx_best = fx;
  17179. // initial step
  17180. ggml_vec_norm_inv_f32(nx, &opt->lbfgs.step, d);
  17181. opt->lbfgs.j = 0;
  17182. opt->lbfgs.k = 1;
  17183. opt->lbfgs.end = 0;
  17184. opt->lbfgs.n_no_improvement = 0;
  17185. opt->just_initialized = false;
  17186. }
  17187. float * fx_best = &opt->lbfgs.fx_best;
  17188. float * step = &opt->lbfgs.step;
  17189. int * j = &opt->lbfgs.j;
  17190. int * k = &opt->lbfgs.k;
  17191. int * end = &opt->lbfgs.end;
  17192. int * n_no_improvement = &opt->lbfgs.n_no_improvement;
  17193. int ls = 0;
  17194. int bound = 0;
  17195. float ys = 0.0f;
  17196. float yy = 0.0f;
  17197. float beta = 0.0f;
  17198. int it = 0;
  17199. while (true) {
  17200. // store the current position and gradient vectors
  17201. ggml_vec_cpy_f32(nx, xp, x);
  17202. ggml_vec_cpy_f32(nx, gp, g);
  17203. // TODO: instead of passing &cancel here, use the return code of the linesearch
  17204. // to determine if the optimization should be cancelled
  17205. // this is a simple change, but not doing this atm, since I don't have a nice
  17206. // way to test and don't want to break something with so many changes lined up
  17207. ls = linesearch_backtracking(&params, nx, x, &fx, g, d, step, xp, f, gb, &cplan, np, ps, &cancel, callback, callback_data);
  17208. if (cancel) {
  17209. return GGML_OPT_RESULT_CANCEL;
  17210. }
  17211. if (ls < 0) {
  17212. // linesearch failed - go back to the previous point and return
  17213. ggml_vec_cpy_f32(nx, x, xp);
  17214. ggml_vec_cpy_f32(nx, g, gp);
  17215. return ls;
  17216. }
  17217. opt->loss_after = fx;
  17218. ggml_vec_norm_f32(nx, &xnorm, x);
  17219. ggml_vec_norm_f32(nx, &gnorm, g);
  17220. GGML_PRINT_DEBUG("f = %10.6f\n", ggml_get_f32_1d(f, 0));
  17221. if (xnorm < 1.0f) {
  17222. xnorm = 1.0f;
  17223. }
  17224. if (gnorm/xnorm <= params.lbfgs.eps) {
  17225. // converged
  17226. return GGML_OPT_RESULT_OK;
  17227. }
  17228. // delta-based convergence test
  17229. if (pf != NULL) {
  17230. // need at least params.past iterations to start checking for convergence
  17231. if (params.past <= k[0]) {
  17232. const float rate = (pf[k[0]%params.past] - fx)/fx;
  17233. if (fabsf(rate) < params.delta) {
  17234. return GGML_OPT_RESULT_OK;
  17235. }
  17236. }
  17237. pf[k[0]%params.past] = fx;
  17238. }
  17239. // check for improvement
  17240. if (params.max_no_improvement > 0) {
  17241. if (fx < fx_best[0]) {
  17242. fx_best[0] = fx;
  17243. n_no_improvement[0] = 0;
  17244. } else {
  17245. n_no_improvement[0]++;
  17246. if (n_no_improvement[0] >= params.max_no_improvement) {
  17247. return GGML_OPT_RESULT_OK;
  17248. }
  17249. }
  17250. }
  17251. if (params.lbfgs.n_iter != 0 && params.lbfgs.n_iter < it + 1) {
  17252. // reached the maximum number of iterations
  17253. return GGML_OPT_RESULT_DID_NOT_CONVERGE;
  17254. }
  17255. // update vectors s and y:
  17256. // s_{k+1} = x_{k+1} - x_{k} = \step * d_{k}.
  17257. // y_{k+1} = g_{k+1} - g_{k}.
  17258. //
  17259. ggml_vec_sub_f32(nx, &lm_s[end[0]*nx], x, xp);
  17260. ggml_vec_sub_f32(nx, &lm_y[end[0]*nx], g, gp);
  17261. // compute scalars ys and yy:
  17262. // ys = y^t \cdot s -> 1 / \rho.
  17263. // yy = y^t \cdot y.
  17264. //
  17265. ggml_vec_dot_f32(nx, &ys, 0, &lm_y[end[0]*nx], 0, &lm_s[end[0]*nx], 0, 1);
  17266. ggml_vec_dot_f32(nx, &yy, 0, &lm_y[end[0]*nx], 0, &lm_y[end[0]*nx], 0, 1);
  17267. lm_ys[end[0]] = ys;
  17268. // find new search direction
  17269. // ref: https://en.wikipedia.org/wiki/Limited-memory_BFGS
  17270. bound = (m <= k[0]) ? m : k[0];
  17271. k[0]++;
  17272. it++;
  17273. end[0] = (end[0] + 1)%m;
  17274. // initialize search direction with -g
  17275. ggml_vec_neg_f32(nx, d, g);
  17276. j[0] = end[0];
  17277. for (int i = 0; i < bound; ++i) {
  17278. j[0] = (j[0] + m - 1) % m;
  17279. // \alpha_{j} = \rho_{j} s^{t}_{j} \cdot q_{k+1}
  17280. ggml_vec_dot_f32(nx, &lm_alpha[j[0]], 0, &lm_s[j[0]*nx], 0, d, 0, 1);
  17281. lm_alpha[j[0]] /= lm_ys[j[0]];
  17282. // q_{i} = q_{i+1} - \alpha_{i} y_{i}
  17283. ggml_vec_mad_f32(nx, d, &lm_y[j[0]*nx], -lm_alpha[j[0]]);
  17284. }
  17285. ggml_vec_scale_f32(nx, d, ys/yy);
  17286. for (int i = 0; i < bound; ++i) {
  17287. // \beta_{j} = \rho_{j} y^t_{j} \cdot \gamma_{i}
  17288. ggml_vec_dot_f32(nx, &beta, 0, &lm_y[j[0]*nx], 0, d, 0, 1);
  17289. beta /= lm_ys[j[0]];
  17290. // \gamma_{i+1} = \gamma_{i} + (\alpha_{j} - \beta_{j}) s_{j}
  17291. ggml_vec_mad_f32(nx, d, &lm_s[j[0]*nx], lm_alpha[j[0]] - beta);
  17292. j[0] = (j[0] + 1)%m;
  17293. }
  17294. step[0] = 1.0;
  17295. }
  17296. GGML_ASSERT(false && "lbfgs failed");
  17297. return GGML_OPT_RESULT_DID_NOT_CONVERGE;
  17298. }
  17299. struct ggml_opt_params ggml_opt_default_params(enum ggml_opt_type type) {
  17300. struct ggml_opt_params result;
  17301. switch (type) {
  17302. case GGML_OPT_TYPE_ADAM:
  17303. {
  17304. result = (struct ggml_opt_params) {
  17305. .type = GGML_OPT_TYPE_ADAM,
  17306. .graph_size = GGML_DEFAULT_GRAPH_SIZE,
  17307. .n_threads = 1, // FIXME: GGML_DEFAULT_N_THREADS ?
  17308. .past = 0,
  17309. .delta = 1e-5f,
  17310. .max_no_improvement = 100,
  17311. .print_forward_graph = true,
  17312. .print_backward_graph = true,
  17313. .n_gradient_accumulation = 1,
  17314. .adam = {
  17315. .n_iter = 10000,
  17316. .sched = 1.000f,
  17317. .decay = 0.0f,
  17318. .decay_min_ndim = 2,
  17319. .alpha = 0.001f,
  17320. .beta1 = 0.9f,
  17321. .beta2 = 0.999f,
  17322. .eps = 1e-8f,
  17323. .eps_f = 1e-5f,
  17324. .eps_g = 1e-3f,
  17325. .gclip = 0.0f,
  17326. },
  17327. };
  17328. } break;
  17329. case GGML_OPT_TYPE_LBFGS:
  17330. {
  17331. result = (struct ggml_opt_params) {
  17332. .type = GGML_OPT_TYPE_LBFGS,
  17333. .graph_size = GGML_DEFAULT_GRAPH_SIZE,
  17334. .n_threads = 1,
  17335. .past = 0,
  17336. .delta = 1e-5f,
  17337. .max_no_improvement = 0,
  17338. .print_forward_graph = true,
  17339. .print_backward_graph = true,
  17340. .n_gradient_accumulation = 1,
  17341. .lbfgs = {
  17342. .m = 6,
  17343. .n_iter = 100,
  17344. .max_linesearch = 20,
  17345. .eps = 1e-5f,
  17346. .ftol = 1e-4f,
  17347. .wolfe = 0.9f,
  17348. .min_step = 1e-20f,
  17349. .max_step = 1e+20f,
  17350. .linesearch = GGML_LINESEARCH_DEFAULT,
  17351. },
  17352. };
  17353. } break;
  17354. }
  17355. return result;
  17356. }
  17357. GGML_API void ggml_opt_init(
  17358. struct ggml_context * ctx,
  17359. struct ggml_opt_context * opt,
  17360. struct ggml_opt_params params,
  17361. int64_t nx) {
  17362. opt->ctx = ctx;
  17363. opt->params = params;
  17364. opt->iter = 0;
  17365. opt->nx = nx;
  17366. opt->just_initialized = true;
  17367. if (opt->ctx == NULL) {
  17368. struct ggml_init_params ctx_opt_params;
  17369. if (opt->params.type == GGML_OPT_TYPE_ADAM) {
  17370. ctx_opt_params.mem_size = GGML_MEM_ALIGN*3 + ggml_tensor_overhead()*3 + ggml_type_size(GGML_TYPE_F32)*nx*3;
  17371. if (opt->params.past > 0) {
  17372. ctx_opt_params.mem_size += GGML_MEM_ALIGN + ggml_tensor_overhead() + ggml_type_size(GGML_TYPE_F32)*opt->params.past;
  17373. }
  17374. } else if (opt->params.type == GGML_OPT_TYPE_LBFGS) {
  17375. ctx_opt_params.mem_size = GGML_MEM_ALIGN*9 + ggml_tensor_overhead()*9 + ggml_type_size(GGML_TYPE_F32)*(nx*5 + opt->params.lbfgs.m*2 + nx*opt->params.lbfgs.m*2);
  17376. if (opt->params.past > 0) {
  17377. ctx_opt_params.mem_size += GGML_MEM_ALIGN + ggml_tensor_overhead() + ggml_type_size(GGML_TYPE_F32)*opt->params.past;
  17378. }
  17379. }
  17380. ctx_opt_params.mem_buffer = NULL;
  17381. ctx_opt_params.no_alloc = false;
  17382. opt->ctx = ggml_init(ctx_opt_params);
  17383. }
  17384. switch (opt->params.type) {
  17385. case GGML_OPT_TYPE_ADAM:
  17386. {
  17387. opt->adam.g = ggml_new_tensor_1d(opt->ctx, GGML_TYPE_F32, nx);
  17388. opt->adam.m = ggml_new_tensor_1d(opt->ctx, GGML_TYPE_F32, nx);
  17389. opt->adam.v = ggml_new_tensor_1d(opt->ctx, GGML_TYPE_F32, nx);
  17390. opt->adam.pf = params.past > 0
  17391. ? ggml_new_tensor_1d(opt->ctx, GGML_TYPE_F32, params.past)
  17392. : NULL;
  17393. ggml_set_zero(opt->adam.m);
  17394. ggml_set_zero(opt->adam.v);
  17395. if (opt->adam.pf) {
  17396. ggml_set_zero(opt->adam.pf);
  17397. }
  17398. } break;
  17399. case GGML_OPT_TYPE_LBFGS:
  17400. {
  17401. opt->lbfgs.x = ggml_new_tensor_1d(opt->ctx, GGML_TYPE_F32, nx);
  17402. opt->lbfgs.xp = ggml_new_tensor_1d(opt->ctx, GGML_TYPE_F32, nx);
  17403. opt->lbfgs.g = ggml_new_tensor_1d(opt->ctx, GGML_TYPE_F32, nx);
  17404. opt->lbfgs.gp = ggml_new_tensor_1d(opt->ctx, GGML_TYPE_F32, nx);
  17405. opt->lbfgs.d = ggml_new_tensor_1d(opt->ctx, GGML_TYPE_F32, nx);
  17406. opt->lbfgs.pf = params.past > 0
  17407. ? ggml_new_tensor_1d(opt->ctx, GGML_TYPE_F32, params.past)
  17408. : NULL;
  17409. opt->lbfgs.lmal = ggml_new_tensor_1d(opt->ctx, GGML_TYPE_F32, params.lbfgs.m);
  17410. opt->lbfgs.lmys = ggml_new_tensor_1d(opt->ctx, GGML_TYPE_F32, params.lbfgs.m);
  17411. opt->lbfgs.lms = ggml_new_tensor_2d(opt->ctx, GGML_TYPE_F32, nx, params.lbfgs.m);
  17412. opt->lbfgs.lmy = ggml_new_tensor_2d(opt->ctx, GGML_TYPE_F32, nx, params.lbfgs.m);
  17413. ggml_set_zero(opt->lbfgs.x);
  17414. ggml_set_zero(opt->lbfgs.xp);
  17415. ggml_set_zero(opt->lbfgs.g);
  17416. ggml_set_zero(opt->lbfgs.gp);
  17417. ggml_set_zero(opt->lbfgs.d);
  17418. if (opt->lbfgs.pf) {
  17419. ggml_set_zero(opt->lbfgs.pf);
  17420. }
  17421. ggml_set_zero(opt->lbfgs.lmal);
  17422. ggml_set_zero(opt->lbfgs.lmys);
  17423. ggml_set_zero(opt->lbfgs.lms);
  17424. ggml_set_zero(opt->lbfgs.lmy);
  17425. } break;
  17426. }
  17427. }
  17428. enum ggml_opt_result ggml_opt(
  17429. struct ggml_context * ctx,
  17430. struct ggml_opt_params params,
  17431. struct ggml_tensor * f) {
  17432. bool free_ctx = false;
  17433. if (ctx == NULL) {
  17434. struct ggml_init_params params_ctx = {
  17435. .mem_size = 16*1024*1024,
  17436. .mem_buffer = NULL,
  17437. .no_alloc = false,
  17438. };
  17439. ctx = ggml_init(params_ctx);
  17440. if (ctx == NULL) {
  17441. return GGML_OPT_RESULT_NO_CONTEXT;
  17442. }
  17443. free_ctx = true;
  17444. }
  17445. enum ggml_opt_result result = GGML_OPT_RESULT_OK;
  17446. struct ggml_opt_context * opt = (struct ggml_opt_context *) alloca(sizeof(struct ggml_opt_context));
  17447. ggml_opt_init(ctx, opt, params, 0);
  17448. result = ggml_opt_resume(ctx, opt, f);
  17449. if (free_ctx) {
  17450. ggml_free(ctx);
  17451. }
  17452. return result;
  17453. }
  17454. enum ggml_opt_result ggml_opt_resume(
  17455. struct ggml_context * ctx,
  17456. struct ggml_opt_context * opt,
  17457. struct ggml_tensor * f) {
  17458. // build forward + backward compute graphs
  17459. struct ggml_cgraph * gf = ggml_new_graph_custom(ctx, opt->params.graph_size, true);
  17460. ggml_build_forward_expand(gf, f);
  17461. struct ggml_cgraph * gb = ggml_graph_dup(ctx, gf);
  17462. ggml_build_backward_expand(ctx, gf, gb, true);
  17463. return ggml_opt_resume_g(ctx, opt, f, gf, gb, NULL, NULL);
  17464. }
  17465. enum ggml_opt_result ggml_opt_resume_g(
  17466. struct ggml_context * ctx,
  17467. struct ggml_opt_context * opt,
  17468. struct ggml_tensor * f,
  17469. struct ggml_cgraph * gf,
  17470. struct ggml_cgraph * gb,
  17471. ggml_opt_callback callback,
  17472. void * callback_data) {
  17473. // build forward + backward compute graphs
  17474. enum ggml_opt_result result = GGML_OPT_RESULT_OK;
  17475. switch (opt->params.type) {
  17476. case GGML_OPT_TYPE_ADAM:
  17477. {
  17478. result = ggml_opt_adam(ctx, opt, opt->params, f, gf, gb, callback, callback_data);
  17479. } break;
  17480. case GGML_OPT_TYPE_LBFGS:
  17481. {
  17482. result = ggml_opt_lbfgs(ctx, opt, opt->params, f, gf, gb, callback, callback_data);
  17483. } break;
  17484. }
  17485. if (opt->params.print_forward_graph) {
  17486. ggml_graph_print (gf);
  17487. ggml_graph_dump_dot(gf, NULL, "opt-forward.dot");
  17488. }
  17489. if (opt->params.print_backward_graph) {
  17490. ggml_graph_print (gb);
  17491. ggml_graph_dump_dot(gb, gf, "opt-backward.dot");
  17492. }
  17493. return result;
  17494. }
  17495. ////////////////////////////////////////////////////////////////////////////////
  17496. void ggml_set_input(struct ggml_tensor * tensor) {
  17497. tensor->flags |= GGML_TENSOR_FLAG_INPUT;
  17498. }
  17499. void ggml_set_output(struct ggml_tensor * tensor) {
  17500. tensor->flags |= GGML_TENSOR_FLAG_OUTPUT;
  17501. }
  17502. ////////////////////////////////////////////////////////////////////////////////
  17503. void ggml_quantize_init(enum ggml_type type) {
  17504. ggml_critical_section_start();
  17505. switch (type) {
  17506. case GGML_TYPE_IQ2_XXS:
  17507. case GGML_TYPE_IQ2_XS:
  17508. case GGML_TYPE_IQ2_S:
  17509. case GGML_TYPE_IQ1_S:
  17510. case GGML_TYPE_IQ1_M: iq2xs_init_impl(type); break;
  17511. case GGML_TYPE_IQ3_XXS: iq3xs_init_impl(256); break;
  17512. case GGML_TYPE_IQ3_S: iq3xs_init_impl(512); break;
  17513. default: // nothing
  17514. break;
  17515. }
  17516. ggml_critical_section_end();
  17517. }
  17518. void ggml_quantize_free(void) {
  17519. ggml_critical_section_start();
  17520. iq2xs_free_impl(GGML_TYPE_IQ2_XXS);
  17521. iq2xs_free_impl(GGML_TYPE_IQ2_XS);
  17522. iq2xs_free_impl(GGML_TYPE_IQ1_S);
  17523. iq3xs_free_impl(256);
  17524. ggml_critical_section_end();
  17525. }
  17526. bool ggml_quantize_requires_imatrix(enum ggml_type type) {
  17527. return
  17528. type == GGML_TYPE_IQ2_XXS ||
  17529. type == GGML_TYPE_IQ2_XS ||
  17530. type == GGML_TYPE_IQ1_S;// ||
  17531. //type == GGML_TYPE_IQ1_M;
  17532. }
  17533. size_t ggml_quantize_chunk(
  17534. enum ggml_type type,
  17535. const float * src,
  17536. void * dst,
  17537. int64_t start,
  17538. int64_t nrows,
  17539. int64_t n_per_row,
  17540. const float * imatrix) {
  17541. const int64_t n = (int64_t) nrows * n_per_row;
  17542. if (ggml_quantize_requires_imatrix(type)) {
  17543. GGML_ASSERT(imatrix != NULL);
  17544. }
  17545. GGML_ASSERT(start % type_traits[type].blck_size == 0);
  17546. GGML_ASSERT(start % n_per_row == 0);
  17547. ggml_quantize_init(type); // this is noop if already initialized
  17548. const size_t start_row = start / n_per_row;
  17549. const size_t row_size = ggml_row_size(type, n_per_row);
  17550. size_t result = 0;
  17551. switch (type) {
  17552. case GGML_TYPE_Q4_0: result = quantize_q4_0(src + start, (char *) dst + start_row * row_size, nrows, n_per_row, imatrix); break;
  17553. case GGML_TYPE_Q4_1: result = quantize_q4_1(src + start, (char *) dst + start_row * row_size, nrows, n_per_row, imatrix); break;
  17554. case GGML_TYPE_Q5_0: result = quantize_q5_0(src + start, (char *) dst + start_row * row_size, nrows, n_per_row, imatrix); break;
  17555. case GGML_TYPE_Q5_1: result = quantize_q5_1(src + start, (char *) dst + start_row * row_size, nrows, n_per_row, imatrix); break;
  17556. case GGML_TYPE_Q8_0: result = quantize_q8_0(src + start, (char *) dst + start_row * row_size, nrows, n_per_row, imatrix); break;
  17557. case GGML_TYPE_Q2_K: result = quantize_q2_K(src + start, (char *) dst + start_row * row_size, nrows, n_per_row, imatrix); break;
  17558. case GGML_TYPE_Q3_K: result = quantize_q3_K(src + start, (char *) dst + start_row * row_size, nrows, n_per_row, imatrix); break;
  17559. case GGML_TYPE_Q4_K: result = quantize_q4_K(src + start, (char *) dst + start_row * row_size, nrows, n_per_row, imatrix); break;
  17560. case GGML_TYPE_Q5_K: result = quantize_q5_K(src + start, (char *) dst + start_row * row_size, nrows, n_per_row, imatrix); break;
  17561. case GGML_TYPE_Q6_K: result = quantize_q6_K(src + start, (char *) dst + start_row * row_size, nrows, n_per_row, imatrix); break;
  17562. case GGML_TYPE_IQ2_XXS: result = quantize_iq2_xxs(src + start, (char *) dst + start_row * row_size, nrows, n_per_row, imatrix); break;
  17563. case GGML_TYPE_IQ2_XS: result = quantize_iq2_xs (src + start, (char *) dst + start_row * row_size, nrows, n_per_row, imatrix); break;
  17564. case GGML_TYPE_IQ3_XXS: result = quantize_iq3_xxs(src + start, (char *) dst + start_row * row_size, nrows, n_per_row, imatrix); break;
  17565. case GGML_TYPE_IQ3_S: result = quantize_iq3_s (src + start, (char *) dst + start_row * row_size, nrows, n_per_row, imatrix); break;
  17566. case GGML_TYPE_IQ2_S: result = quantize_iq2_s (src + start, (char *) dst + start_row * row_size, nrows, n_per_row, imatrix); break;
  17567. case GGML_TYPE_IQ1_S: result = quantize_iq1_s (src + start, (char *) dst + start_row * row_size, nrows, n_per_row, imatrix); break;
  17568. case GGML_TYPE_IQ1_M: result = quantize_iq1_m (src + start, (char *) dst + start_row * row_size, nrows, n_per_row, imatrix); break;
  17569. case GGML_TYPE_IQ4_NL: result = quantize_iq4_nl (src + start, (char *) dst + start_row * row_size, nrows, n_per_row, imatrix); break;
  17570. case GGML_TYPE_IQ4_XS: result = quantize_iq4_xs (src + start, (char *) dst + start_row * row_size, nrows, n_per_row, imatrix); break;
  17571. case GGML_TYPE_F16:
  17572. {
  17573. size_t elemsize = sizeof(ggml_fp16_t);
  17574. ggml_fp32_to_fp16_row(src + start, (ggml_fp16_t *)dst + start, n);
  17575. result = n * elemsize;
  17576. } break;
  17577. case GGML_TYPE_BF16:
  17578. {
  17579. size_t elemsize = sizeof(ggml_bf16_t);
  17580. ggml_fp32_to_bf16_row(src + start, (ggml_bf16_t *)dst + start, n);
  17581. result = n * elemsize;
  17582. } break;
  17583. case GGML_TYPE_F32:
  17584. {
  17585. size_t elemsize = sizeof(float);
  17586. result = n * elemsize;
  17587. memcpy((uint8_t *)dst + start * elemsize, src + start, result);
  17588. } break;
  17589. default:
  17590. assert(false);
  17591. }
  17592. GGML_ASSERT(result == nrows * row_size);
  17593. return result;
  17594. }
  17595. ////////////////////////////////////////////////////////////////////////////////
  17596. struct gguf_str {
  17597. uint64_t n; // GGUFv2
  17598. char * data;
  17599. };
  17600. static const size_t GGUF_TYPE_SIZE[GGUF_TYPE_COUNT] = {
  17601. [GGUF_TYPE_UINT8] = sizeof(uint8_t),
  17602. [GGUF_TYPE_INT8] = sizeof(int8_t),
  17603. [GGUF_TYPE_UINT16] = sizeof(uint16_t),
  17604. [GGUF_TYPE_INT16] = sizeof(int16_t),
  17605. [GGUF_TYPE_UINT32] = sizeof(uint32_t),
  17606. [GGUF_TYPE_INT32] = sizeof(int32_t),
  17607. [GGUF_TYPE_FLOAT32] = sizeof(float),
  17608. [GGUF_TYPE_BOOL] = sizeof(bool),
  17609. [GGUF_TYPE_STRING] = sizeof(struct gguf_str),
  17610. [GGUF_TYPE_UINT64] = sizeof(uint64_t),
  17611. [GGUF_TYPE_INT64] = sizeof(int64_t),
  17612. [GGUF_TYPE_FLOAT64] = sizeof(double),
  17613. [GGUF_TYPE_ARRAY] = 0, // undefined
  17614. };
  17615. static_assert(GGUF_TYPE_COUNT == 13, "GGUF_TYPE_COUNT != 13");
  17616. static const char * GGUF_TYPE_NAME[GGUF_TYPE_COUNT] = {
  17617. [GGUF_TYPE_UINT8] = "u8",
  17618. [GGUF_TYPE_INT8] = "i8",
  17619. [GGUF_TYPE_UINT16] = "u16",
  17620. [GGUF_TYPE_INT16] = "i16",
  17621. [GGUF_TYPE_UINT32] = "u32",
  17622. [GGUF_TYPE_INT32] = "i32",
  17623. [GGUF_TYPE_FLOAT32] = "f32",
  17624. [GGUF_TYPE_BOOL] = "bool",
  17625. [GGUF_TYPE_STRING] = "str",
  17626. [GGUF_TYPE_ARRAY] = "arr",
  17627. [GGUF_TYPE_UINT64] = "u64",
  17628. [GGUF_TYPE_INT64] = "i64",
  17629. [GGUF_TYPE_FLOAT64] = "f64",
  17630. };
  17631. static_assert(GGUF_TYPE_COUNT == 13, "GGUF_TYPE_COUNT != 13");
  17632. union gguf_value {
  17633. uint8_t uint8;
  17634. int8_t int8;
  17635. uint16_t uint16;
  17636. int16_t int16;
  17637. uint32_t uint32;
  17638. int32_t int32;
  17639. float float32;
  17640. uint64_t uint64;
  17641. int64_t int64;
  17642. double float64;
  17643. bool bool_;
  17644. struct gguf_str str;
  17645. struct {
  17646. enum gguf_type type;
  17647. uint64_t n; // GGUFv2
  17648. void * data;
  17649. } arr;
  17650. };
  17651. struct gguf_kv {
  17652. struct gguf_str key;
  17653. enum gguf_type type;
  17654. union gguf_value value;
  17655. };
  17656. struct gguf_header {
  17657. char magic[4];
  17658. uint32_t version;
  17659. uint64_t n_tensors; // GGUFv2
  17660. uint64_t n_kv; // GGUFv2
  17661. };
  17662. struct gguf_tensor_info {
  17663. struct gguf_str name;
  17664. uint32_t n_dims;
  17665. uint64_t ne[GGML_MAX_DIMS];
  17666. enum ggml_type type;
  17667. uint64_t offset; // offset from start of `data`, must be a multiple of `ALIGNMENT`
  17668. // for writing API
  17669. const void * data;
  17670. size_t size;
  17671. };
  17672. struct gguf_context {
  17673. struct gguf_header header;
  17674. struct gguf_kv * kv;
  17675. struct gguf_tensor_info * infos;
  17676. size_t alignment;
  17677. size_t offset; // offset of `data` from beginning of file
  17678. size_t size; // size of `data` in bytes
  17679. //uint8_t * padding;
  17680. void * data;
  17681. };
  17682. static size_t gguf_type_size(enum gguf_type type) {
  17683. GGML_ASSERT(0 <= type && type < GGUF_TYPE_COUNT);
  17684. return GGUF_TYPE_SIZE[type];
  17685. }
  17686. static void gguf_tensor_info_sanitize(struct gguf_tensor_info * info) {
  17687. GGML_ASSERT(info->n_dims <= GGML_MAX_DIMS);
  17688. GGML_ASSERT(0 <= info->type && info->type < GGML_TYPE_COUNT);
  17689. for (uint32_t i = 0; i < info->n_dims; ++i) {
  17690. GGML_ASSERT(info->ne[i] > 0);
  17691. }
  17692. // prevent overflow for total number of elements
  17693. GGML_ASSERT(INT64_MAX/info->ne[1] > info->ne[0]);
  17694. GGML_ASSERT(INT64_MAX/info->ne[2] > info->ne[0]*info->ne[1]);
  17695. GGML_ASSERT(INT64_MAX/info->ne[3] > info->ne[0]*info->ne[1]*info->ne[2]);
  17696. }
  17697. static bool gguf_fread_el(FILE * file, void * dst, size_t size, size_t * offset) {
  17698. const size_t n = fread(dst, 1, size, file);
  17699. *offset += n;
  17700. return n == size;
  17701. }
  17702. static bool gguf_fread_str(FILE * file, struct gguf_str * p, size_t * offset) {
  17703. p->n = 0;
  17704. p->data = NULL;
  17705. bool ok = true;
  17706. ok = ok && gguf_fread_el(file, &p->n, sizeof(p->n), offset);
  17707. // early exit if string length is invalid, prevents from integer overflow
  17708. if (p->n == SIZE_MAX) {
  17709. fprintf(stderr, "%s: invalid string length (%" PRIu64 ")\n", __func__, p->n);
  17710. return false;
  17711. }
  17712. p->data = GGML_CALLOC(p->n + 1, 1);
  17713. ok = ok && gguf_fread_el(file, p->data, p->n, offset);
  17714. return ok;
  17715. }
  17716. static void gguf_free_kv(struct gguf_kv * kv) {
  17717. if (kv->key.data) {
  17718. GGML_FREE(kv->key.data);
  17719. }
  17720. if (kv->type == GGUF_TYPE_STRING) {
  17721. if (kv->value.str.data) {
  17722. GGML_FREE(kv->value.str.data);
  17723. }
  17724. }
  17725. if (kv->type == GGUF_TYPE_ARRAY) {
  17726. if (kv->value.arr.data) {
  17727. if (kv->value.arr.type == GGUF_TYPE_STRING) {
  17728. for (uint64_t j = 0; j < kv->value.arr.n; ++j) {
  17729. struct gguf_str * str = &((struct gguf_str *) kv->value.arr.data)[j];
  17730. if (str->data) {
  17731. GGML_FREE(str->data);
  17732. }
  17733. }
  17734. }
  17735. GGML_FREE(kv->value.arr.data);
  17736. }
  17737. }
  17738. }
  17739. struct gguf_context * gguf_init_empty(void) {
  17740. struct gguf_context * ctx = GGML_CALLOC(1, sizeof(struct gguf_context));
  17741. memcpy(ctx->header.magic, GGUF_MAGIC, sizeof(ctx->header.magic));
  17742. ctx->header.version = GGUF_VERSION;
  17743. ctx->header.n_tensors = 0;
  17744. ctx->header.n_kv = 0;
  17745. ctx->kv = NULL;
  17746. ctx->infos = NULL;
  17747. ctx->alignment = GGUF_DEFAULT_ALIGNMENT;
  17748. ctx->offset = 0;
  17749. ctx->size = 0;
  17750. ctx->data = NULL;
  17751. return ctx;
  17752. }
  17753. struct gguf_context * gguf_init_from_file(const char * fname, struct gguf_init_params params) {
  17754. FILE * file = ggml_fopen(fname, "rb");
  17755. if (!file) {
  17756. return NULL;
  17757. }
  17758. // offset from start of file
  17759. size_t offset = 0;
  17760. char magic[4];
  17761. // check the magic before making allocations
  17762. {
  17763. gguf_fread_el(file, &magic, sizeof(magic), &offset);
  17764. for (uint32_t i = 0; i < sizeof(magic); i++) {
  17765. if (magic[i] != GGUF_MAGIC[i]) {
  17766. fprintf(stderr, "%s: invalid magic characters '%c%c%c%c'\n", __func__, magic[0], magic[1], magic[2], magic[3]);
  17767. fclose(file);
  17768. return NULL;
  17769. }
  17770. }
  17771. }
  17772. bool ok = true;
  17773. struct gguf_context * ctx = GGML_CALLOC(1, sizeof(struct gguf_context));
  17774. // read the header
  17775. {
  17776. strncpy(ctx->header.magic, magic, 4);
  17777. ctx->kv = NULL;
  17778. ctx->infos = NULL;
  17779. ctx->data = NULL;
  17780. ok = ok && gguf_fread_el(file, &ctx->header.version, sizeof(ctx->header.version), &offset);
  17781. ok = ok && gguf_fread_el(file, &ctx->header.n_tensors, sizeof(ctx->header.n_tensors), &offset);
  17782. ok = ok && gguf_fread_el(file, &ctx->header.n_kv, sizeof(ctx->header.n_kv), &offset);
  17783. if (ctx->header.version == 1) {
  17784. fprintf(stderr, "%s: GGUFv1 is no longer supported. please use a more up-to-date version\n", __func__);
  17785. fclose(file);
  17786. gguf_free(ctx);
  17787. return NULL;
  17788. }
  17789. // sanity-checks to prevent from integer/buffer overflows
  17790. ok = ok && (ctx->header.n_tensors < (SIZE_MAX/2)/sizeof(struct gguf_tensor_info));
  17791. ok = ok && (ctx->header.n_tensors < (SIZE_MAX/2)/ggml_tensor_overhead());
  17792. ok = ok && (ctx->header.n_kv < (SIZE_MAX/2)/sizeof(struct gguf_kv));
  17793. if (!ok) {
  17794. fprintf(stderr, "%s: failed to read header\n", __func__);
  17795. fclose(file);
  17796. gguf_free(ctx);
  17797. return NULL;
  17798. }
  17799. }
  17800. // read the kv pairs
  17801. {
  17802. const uint64_t n_kv = ctx->header.n_kv;
  17803. // header.n_kv will hold the actual value of pairs that were successfully read in the loop below
  17804. ctx->header.n_kv = 0;
  17805. ctx->kv = GGML_CALLOC(n_kv, sizeof(struct gguf_kv));
  17806. for (uint64_t i = 0; i < n_kv; ++i) {
  17807. struct gguf_kv * kv = &ctx->kv[i];
  17808. //fprintf(stderr, "%s: reading kv %d\n", __func__, i);
  17809. ok = ok && gguf_fread_str(file, &kv->key, &offset);
  17810. ok = ok && gguf_fread_el (file, &kv->type, sizeof(kv->type), &offset);
  17811. //fprintf(stderr, "%s: reading kv with key %s\n", __func__, kv->key.data);
  17812. switch (kv->type) {
  17813. case GGUF_TYPE_UINT8: ok = ok && gguf_fread_el (file, &kv->value.uint8, sizeof(kv->value.uint8), &offset); break;
  17814. case GGUF_TYPE_INT8: ok = ok && gguf_fread_el (file, &kv->value.int8, sizeof(kv->value.int8), &offset); break;
  17815. case GGUF_TYPE_UINT16: ok = ok && gguf_fread_el (file, &kv->value.uint16, sizeof(kv->value.uint16), &offset); break;
  17816. case GGUF_TYPE_INT16: ok = ok && gguf_fread_el (file, &kv->value.int16, sizeof(kv->value.int16), &offset); break;
  17817. case GGUF_TYPE_UINT32: ok = ok && gguf_fread_el (file, &kv->value.uint32, sizeof(kv->value.uint32), &offset); break;
  17818. case GGUF_TYPE_INT32: ok = ok && gguf_fread_el (file, &kv->value.int32, sizeof(kv->value.int32), &offset); break;
  17819. case GGUF_TYPE_FLOAT32: ok = ok && gguf_fread_el (file, &kv->value.float32, sizeof(kv->value.float32), &offset); break;
  17820. case GGUF_TYPE_UINT64: ok = ok && gguf_fread_el (file, &kv->value.uint64, sizeof(kv->value.uint64), &offset); break;
  17821. case GGUF_TYPE_INT64: ok = ok && gguf_fread_el (file, &kv->value.int64, sizeof(kv->value.int64), &offset); break;
  17822. case GGUF_TYPE_FLOAT64: ok = ok && gguf_fread_el (file, &kv->value.float64, sizeof(kv->value.float64), &offset); break;
  17823. case GGUF_TYPE_BOOL: ok = ok && gguf_fread_el (file, &kv->value.bool_, sizeof(kv->value.bool_), &offset); break;
  17824. case GGUF_TYPE_STRING: ok = ok && gguf_fread_str(file, &kv->value.str, &offset); break;
  17825. case GGUF_TYPE_ARRAY:
  17826. {
  17827. ok = ok && gguf_fread_el(file, &kv->value.arr.type, sizeof(kv->value.arr.type), &offset);
  17828. ok = ok && gguf_fread_el(file, &kv->value.arr.n, sizeof(kv->value.arr.n), &offset);
  17829. switch (kv->value.arr.type) {
  17830. case GGUF_TYPE_UINT8:
  17831. case GGUF_TYPE_INT8:
  17832. case GGUF_TYPE_UINT16:
  17833. case GGUF_TYPE_INT16:
  17834. case GGUF_TYPE_UINT32:
  17835. case GGUF_TYPE_INT32:
  17836. case GGUF_TYPE_FLOAT32:
  17837. case GGUF_TYPE_UINT64:
  17838. case GGUF_TYPE_INT64:
  17839. case GGUF_TYPE_FLOAT64:
  17840. case GGUF_TYPE_BOOL:
  17841. {
  17842. // prevent from integer overflow in the malloc below
  17843. if (kv->value.arr.n >= SIZE_MAX/gguf_type_size(kv->value.arr.type)) {
  17844. fprintf(stderr, "%s: array size is too large (%" PRIu64 ")\n", __func__, kv->value.arr.n);
  17845. fclose(file);
  17846. gguf_free(ctx);
  17847. return NULL;
  17848. }
  17849. kv->value.arr.data = GGML_CALLOC(kv->value.arr.n, gguf_type_size(kv->value.arr.type));
  17850. ok = ok && gguf_fread_el(file, kv->value.arr.data, kv->value.arr.n * gguf_type_size(kv->value.arr.type), &offset);
  17851. } break;
  17852. case GGUF_TYPE_STRING:
  17853. {
  17854. // prevent from integer overflow in the malloc below
  17855. if (kv->value.arr.n >= SIZE_MAX/sizeof(struct gguf_str)) {
  17856. fprintf(stderr, "%s: array size is too large (%" PRIu64 ")\n", __func__, kv->value.arr.n);
  17857. fclose(file);
  17858. gguf_free(ctx);
  17859. return NULL;
  17860. }
  17861. kv->value.arr.data = GGML_CALLOC(kv->value.arr.n, sizeof(struct gguf_str));
  17862. for (uint64_t j = 0; j < kv->value.arr.n; ++j) {
  17863. ok = ok && gguf_fread_str(file, &((struct gguf_str *) kv->value.arr.data)[j], &offset);
  17864. }
  17865. } break;
  17866. case GGUF_TYPE_ARRAY:
  17867. default: GGML_ASSERT(false && "invalid type"); break;
  17868. }
  17869. } break;
  17870. default: GGML_ASSERT(false && "invalid type");
  17871. }
  17872. if (!ok) {
  17873. break;
  17874. }
  17875. ctx->header.n_kv++;
  17876. }
  17877. if (!ok) {
  17878. fprintf(stderr, "%s: failed to read key-value pairs\n", __func__);
  17879. fclose(file);
  17880. gguf_free(ctx);
  17881. return NULL;
  17882. }
  17883. }
  17884. // read the tensor infos
  17885. if (ctx->header.n_tensors > 0) {
  17886. ctx->infos = GGML_CALLOC(ctx->header.n_tensors, sizeof(struct gguf_tensor_info));
  17887. for (uint64_t i = 0; i < ctx->header.n_tensors; ++i) {
  17888. struct gguf_tensor_info * info = &ctx->infos[i];
  17889. for (int j = 0; j < GGML_MAX_DIMS; ++j) {
  17890. info->ne[j] = 1;
  17891. }
  17892. ok = ok && gguf_fread_str(file, &info->name, &offset);
  17893. ok = ok && gguf_fread_el (file, &info->n_dims, sizeof(info->n_dims), &offset);
  17894. ok = ok && (info->n_dims <= GGML_MAX_DIMS);
  17895. for (uint32_t j = 0; j < info->n_dims; ++j) {
  17896. ok = ok && gguf_fread_el(file, &info->ne[j], sizeof(info->ne[j]), &offset);
  17897. }
  17898. ok = ok && gguf_fread_el (file, &info->type, sizeof(info->type), &offset);
  17899. ok = ok && gguf_fread_el (file, &info->offset, sizeof(info->offset), &offset);
  17900. // TODO: return an error instead of crashing with GGML_ASSERT
  17901. gguf_tensor_info_sanitize(info);
  17902. // make sure there is no duplicated tensor names
  17903. for (uint64_t j = 0; j < i; ++j) {
  17904. if (strcmp(info->name.data, ctx->infos[j].name.data) == 0) {
  17905. fprintf(stderr, "%s: duplicated tensor name %s\n", __func__, info->name.data);
  17906. ok = false;
  17907. }
  17908. }
  17909. if (!ok) {
  17910. fprintf(stderr, "%s: failed to read tensor info\n", __func__);
  17911. fclose(file);
  17912. gguf_free(ctx);
  17913. return NULL;
  17914. }
  17915. }
  17916. }
  17917. ctx->alignment = GGUF_DEFAULT_ALIGNMENT;
  17918. int alignment_idx = gguf_find_key(ctx, "general.alignment");
  17919. if (alignment_idx != -1) {
  17920. ctx->alignment = gguf_get_val_u32(ctx, alignment_idx);
  17921. }
  17922. // we require the data section to be aligned, so take into account any padding
  17923. {
  17924. const size_t offset_pad = offset % ctx->alignment;
  17925. if (offset_pad != 0) {
  17926. offset += ctx->alignment - offset_pad;
  17927. fseek(file, offset, SEEK_SET);
  17928. }
  17929. }
  17930. // store the current file offset - this is where the data section starts
  17931. ctx->offset = offset;
  17932. // compute the total size of the data section, taking into account the alignment
  17933. {
  17934. ctx->size = 0;
  17935. for (uint64_t i = 0; i < ctx->header.n_tensors; ++i) {
  17936. struct gguf_tensor_info * info = &ctx->infos[i];
  17937. const int64_t ne =
  17938. (int64_t) info->ne[0] *
  17939. (int64_t) info->ne[1] *
  17940. (int64_t) info->ne[2] *
  17941. (int64_t) info->ne[3];
  17942. if (ne % ggml_blck_size(info->type) != 0) {
  17943. fprintf(stderr, "%s: tensor '%s' of type %d (%s) number of elements (%" PRId64 ") is not a multiple of block size (%d)\n",
  17944. __func__, info->name.data, (int)info->type, ggml_type_name(info->type), ne, ggml_blck_size(info->type));
  17945. fclose(file);
  17946. gguf_free(ctx);
  17947. return NULL;
  17948. }
  17949. const size_t size_cur = ggml_row_size(info->type, ne);
  17950. ctx->size += GGML_PAD(size_cur, ctx->alignment);
  17951. }
  17952. }
  17953. // load the tensor data only if requested
  17954. if (params.ctx != NULL) {
  17955. // if the provided gguf_context is no_alloc, then we create "empty" tensors and do not read the binary blob
  17956. // otherwise, we load the binary blob into the created ggml_context as well, and point the "data" members of
  17957. // the ggml_tensor structs to the appropriate locations in the binary blob
  17958. // compute the exact size needed for the new ggml_context
  17959. const size_t mem_size =
  17960. params.no_alloc ?
  17961. (ctx->header.n_tensors )*ggml_tensor_overhead() :
  17962. (ctx->header.n_tensors + 1)*ggml_tensor_overhead() + ctx->size;
  17963. struct ggml_init_params pdata = {
  17964. .mem_size = mem_size,
  17965. .mem_buffer = NULL,
  17966. .no_alloc = params.no_alloc,
  17967. };
  17968. *params.ctx = ggml_init(pdata);
  17969. struct ggml_context * ctx_data = *params.ctx;
  17970. struct ggml_tensor * data = NULL;
  17971. if (!params.no_alloc) {
  17972. data = ggml_new_tensor_1d(ctx_data, GGML_TYPE_I8, ctx->size);
  17973. ok = ok && data != NULL;
  17974. // read the binary blob with the tensor data
  17975. ok = ok && gguf_fread_el(file, data->data, ctx->size, &offset);
  17976. if (!ok) {
  17977. fprintf(stderr, "%s: failed to read tensor data\n", __func__);
  17978. fclose(file);
  17979. ggml_free(ctx_data);
  17980. gguf_free(ctx);
  17981. return NULL;
  17982. }
  17983. ctx->data = data->data;
  17984. }
  17985. ggml_set_no_alloc(ctx_data, true);
  17986. // create the tensors
  17987. for (uint64_t i = 0; i < ctx->header.n_tensors; ++i) {
  17988. const int64_t ne[GGML_MAX_DIMS] = {
  17989. ctx->infos[i].ne[0],
  17990. ctx->infos[i].ne[1],
  17991. ctx->infos[i].ne[2],
  17992. ctx->infos[i].ne[3],
  17993. };
  17994. struct ggml_tensor * cur = ggml_new_tensor(ctx_data, ctx->infos[i].type, ctx->infos[i].n_dims, ne);
  17995. ok = ok && cur != NULL;
  17996. if (!ok) {
  17997. break;
  17998. }
  17999. ggml_set_name(cur, ctx->infos[i].name.data);
  18000. // point the data member to the appropriate location in the binary blob using the tensor infos
  18001. if (!params.no_alloc) {
  18002. //cur->data = (char *) data->data + ctx->infos[i].offset - ctx->offset; // offset from start of file
  18003. cur->data = (char *) data->data + ctx->infos[i].offset; // offset from data
  18004. }
  18005. }
  18006. if (!ok) {
  18007. fprintf(stderr, "%s: failed to read the tensor data\n", __func__);
  18008. fclose(file);
  18009. ggml_free(ctx_data);
  18010. gguf_free(ctx);
  18011. return NULL;
  18012. }
  18013. ggml_set_no_alloc(ctx_data, params.no_alloc);
  18014. }
  18015. fclose(file);
  18016. return ctx;
  18017. }
  18018. void gguf_free(struct gguf_context * ctx) {
  18019. if (ctx == NULL) {
  18020. return;
  18021. }
  18022. if (ctx->kv) {
  18023. // free string memory - not great..
  18024. for (uint64_t i = 0; i < ctx->header.n_kv; ++i) {
  18025. gguf_free_kv(&ctx->kv[i]);
  18026. }
  18027. GGML_FREE(ctx->kv);
  18028. }
  18029. if (ctx->infos) {
  18030. for (uint64_t i = 0; i < ctx->header.n_tensors; ++i) {
  18031. struct gguf_tensor_info * info = &ctx->infos[i];
  18032. if (info->name.data) {
  18033. GGML_FREE(info->name.data);
  18034. }
  18035. }
  18036. GGML_FREE(ctx->infos);
  18037. }
  18038. GGML_FREE(ctx);
  18039. }
  18040. const char * gguf_type_name(enum gguf_type type) {
  18041. return GGUF_TYPE_NAME[type];
  18042. }
  18043. int gguf_get_version(const struct gguf_context * ctx) {
  18044. return ctx->header.version;
  18045. }
  18046. size_t gguf_get_alignment(const struct gguf_context * ctx) {
  18047. return ctx->alignment;
  18048. }
  18049. size_t gguf_get_data_offset(const struct gguf_context * ctx) {
  18050. return ctx->offset;
  18051. }
  18052. void * gguf_get_data(const struct gguf_context * ctx) {
  18053. return ctx->data;
  18054. }
  18055. int gguf_get_n_kv(const struct gguf_context * ctx) {
  18056. return ctx->header.n_kv;
  18057. }
  18058. int gguf_find_key(const struct gguf_context * ctx, const char * key) {
  18059. // return -1 if key not found
  18060. int keyfound = -1;
  18061. const int n_kv = gguf_get_n_kv(ctx);
  18062. for (int i = 0; i < n_kv; ++i) {
  18063. if (strcmp(key, gguf_get_key(ctx, i)) == 0) {
  18064. keyfound = i;
  18065. break;
  18066. }
  18067. }
  18068. return keyfound;
  18069. }
  18070. const char * gguf_get_key(const struct gguf_context * ctx, int key_id) {
  18071. GGML_ASSERT(key_id >= 0 && key_id < gguf_get_n_kv(ctx));
  18072. return ctx->kv[key_id].key.data;
  18073. }
  18074. enum gguf_type gguf_get_kv_type(const struct gguf_context * ctx, int key_id) {
  18075. GGML_ASSERT(key_id >= 0 && key_id < gguf_get_n_kv(ctx));
  18076. return ctx->kv[key_id].type;
  18077. }
  18078. enum gguf_type gguf_get_arr_type(const struct gguf_context * ctx, int key_id) {
  18079. GGML_ASSERT(key_id >= 0 && key_id < gguf_get_n_kv(ctx));
  18080. GGML_ASSERT(ctx->kv[key_id].type == GGUF_TYPE_ARRAY);
  18081. return ctx->kv[key_id].value.arr.type;
  18082. }
  18083. const void * gguf_get_arr_data(const struct gguf_context * ctx, int key_id) {
  18084. GGML_ASSERT(key_id >= 0 && key_id < gguf_get_n_kv(ctx));
  18085. GGML_ASSERT(ctx->kv[key_id].type == GGUF_TYPE_ARRAY);
  18086. return ctx->kv[key_id].value.arr.data;
  18087. }
  18088. const char * gguf_get_arr_str(const struct gguf_context * ctx, int key_id, int i) {
  18089. GGML_ASSERT(key_id >= 0 && key_id < gguf_get_n_kv(ctx));
  18090. GGML_ASSERT(ctx->kv[key_id].type == GGUF_TYPE_ARRAY);
  18091. struct gguf_kv * kv = &ctx->kv[key_id];
  18092. struct gguf_str * str = &((struct gguf_str *) kv->value.arr.data)[i];
  18093. return str->data;
  18094. }
  18095. int gguf_get_arr_n(const struct gguf_context * ctx, int key_id) {
  18096. GGML_ASSERT(key_id >= 0 && key_id < gguf_get_n_kv(ctx));
  18097. GGML_ASSERT(ctx->kv[key_id].type == GGUF_TYPE_ARRAY);
  18098. return ctx->kv[key_id].value.arr.n;
  18099. }
  18100. uint8_t gguf_get_val_u8(const struct gguf_context * ctx, int key_id) {
  18101. GGML_ASSERT(key_id >= 0 && key_id < gguf_get_n_kv(ctx));
  18102. GGML_ASSERT(ctx->kv[key_id].type == GGUF_TYPE_UINT8);
  18103. return ctx->kv[key_id].value.uint8;
  18104. }
  18105. int8_t gguf_get_val_i8(const struct gguf_context * ctx, int key_id) {
  18106. GGML_ASSERT(key_id >= 0 && key_id < gguf_get_n_kv(ctx));
  18107. GGML_ASSERT(ctx->kv[key_id].type == GGUF_TYPE_INT8);
  18108. return ctx->kv[key_id].value.int8;
  18109. }
  18110. uint16_t gguf_get_val_u16(const struct gguf_context * ctx, int key_id) {
  18111. GGML_ASSERT(key_id >= 0 && key_id < gguf_get_n_kv(ctx));
  18112. GGML_ASSERT(ctx->kv[key_id].type == GGUF_TYPE_UINT16);
  18113. return ctx->kv[key_id].value.uint16;
  18114. }
  18115. int16_t gguf_get_val_i16(const struct gguf_context * ctx, int key_id) {
  18116. GGML_ASSERT(key_id >= 0 && key_id < gguf_get_n_kv(ctx));
  18117. GGML_ASSERT(ctx->kv[key_id].type == GGUF_TYPE_INT16);
  18118. return ctx->kv[key_id].value.int16;
  18119. }
  18120. uint32_t gguf_get_val_u32(const struct gguf_context * ctx, int key_id) {
  18121. GGML_ASSERT(key_id >= 0 && key_id < gguf_get_n_kv(ctx));
  18122. GGML_ASSERT(ctx->kv[key_id].type == GGUF_TYPE_UINT32);
  18123. return ctx->kv[key_id].value.uint32;
  18124. }
  18125. int32_t gguf_get_val_i32(const struct gguf_context * ctx, int key_id) {
  18126. GGML_ASSERT(key_id >= 0 && key_id < gguf_get_n_kv(ctx));
  18127. GGML_ASSERT(ctx->kv[key_id].type == GGUF_TYPE_INT32);
  18128. return ctx->kv[key_id].value.int32;
  18129. }
  18130. float gguf_get_val_f32(const struct gguf_context * ctx, int key_id) {
  18131. GGML_ASSERT(key_id >= 0 && key_id < gguf_get_n_kv(ctx));
  18132. GGML_ASSERT(ctx->kv[key_id].type == GGUF_TYPE_FLOAT32);
  18133. return ctx->kv[key_id].value.float32;
  18134. }
  18135. uint64_t gguf_get_val_u64(const struct gguf_context * ctx, int key_id) {
  18136. GGML_ASSERT(key_id >= 0 && key_id < gguf_get_n_kv(ctx));
  18137. GGML_ASSERT(ctx->kv[key_id].type == GGUF_TYPE_UINT64);
  18138. return ctx->kv[key_id].value.uint64;
  18139. }
  18140. int64_t gguf_get_val_i64(const struct gguf_context * ctx, int key_id) {
  18141. GGML_ASSERT(key_id >= 0 && key_id < gguf_get_n_kv(ctx));
  18142. GGML_ASSERT(ctx->kv[key_id].type == GGUF_TYPE_INT64);
  18143. return ctx->kv[key_id].value.int64;
  18144. }
  18145. double gguf_get_val_f64(const struct gguf_context * ctx, int key_id) {
  18146. GGML_ASSERT(key_id >= 0 && key_id < gguf_get_n_kv(ctx));
  18147. GGML_ASSERT(ctx->kv[key_id].type == GGUF_TYPE_FLOAT64);
  18148. return ctx->kv[key_id].value.float64;
  18149. }
  18150. bool gguf_get_val_bool(const struct gguf_context * ctx, int key_id) {
  18151. GGML_ASSERT(key_id >= 0 && key_id < gguf_get_n_kv(ctx));
  18152. GGML_ASSERT(ctx->kv[key_id].type == GGUF_TYPE_BOOL);
  18153. return ctx->kv[key_id].value.bool_;
  18154. }
  18155. const char * gguf_get_val_str(const struct gguf_context * ctx, int key_id) {
  18156. GGML_ASSERT(key_id >= 0 && key_id < gguf_get_n_kv(ctx));
  18157. GGML_ASSERT(ctx->kv[key_id].type == GGUF_TYPE_STRING);
  18158. return ctx->kv[key_id].value.str.data;
  18159. }
  18160. const void * gguf_get_val_data(const struct gguf_context * ctx, int key_id) {
  18161. GGML_ASSERT(key_id >= 0 && key_id < gguf_get_n_kv(ctx));
  18162. GGML_ASSERT(ctx->kv[key_id].type != GGUF_TYPE_ARRAY);
  18163. GGML_ASSERT(ctx->kv[key_id].type != GGUF_TYPE_STRING);
  18164. return &ctx->kv[key_id].value;
  18165. }
  18166. int gguf_get_n_tensors(const struct gguf_context * ctx) {
  18167. return ctx->header.n_tensors;
  18168. }
  18169. int gguf_find_tensor(const struct gguf_context * ctx, const char * name) {
  18170. // return -1 if tensor not found
  18171. int tensorfound = -1;
  18172. const int n_tensors = gguf_get_n_tensors(ctx);
  18173. for (int i = 0; i < n_tensors; ++i) {
  18174. if (strcmp(name, gguf_get_tensor_name(ctx, i)) == 0) {
  18175. tensorfound = i;
  18176. break;
  18177. }
  18178. }
  18179. return tensorfound;
  18180. }
  18181. size_t gguf_get_tensor_offset(const struct gguf_context * ctx, int i) {
  18182. return ctx->infos[i].offset;
  18183. }
  18184. char * gguf_get_tensor_name(const struct gguf_context * ctx, int i) {
  18185. return ctx->infos[i].name.data;
  18186. }
  18187. enum ggml_type gguf_get_tensor_type(const struct gguf_context * ctx, int i) {
  18188. return ctx->infos[i].type;
  18189. }
  18190. // returns the index
  18191. static int gguf_get_or_add_key(struct gguf_context * ctx, const char * key) {
  18192. const int idx = gguf_find_key(ctx, key);
  18193. if (idx >= 0) {
  18194. return idx;
  18195. }
  18196. const int n_kv = gguf_get_n_kv(ctx);
  18197. ctx->kv = realloc(ctx->kv, (n_kv + 1) * sizeof(struct gguf_kv));
  18198. ctx->kv[n_kv].key.n = strlen(key);
  18199. ctx->kv[n_kv].key.data = strdup(key);
  18200. ctx->header.n_kv++;
  18201. return n_kv;
  18202. }
  18203. void gguf_remove_key(struct gguf_context * ctx, const char * key) {
  18204. const int idx = gguf_find_key(ctx, key);
  18205. if (idx >= 0) {
  18206. const int n_kv = gguf_get_n_kv(ctx);
  18207. gguf_free_kv(&ctx->kv[idx]);
  18208. for (int i = idx; i < n_kv-1; ++i) {
  18209. ctx->kv[i] = ctx->kv[i+1];
  18210. }
  18211. ctx->kv = realloc(ctx->kv, (n_kv - 1) * sizeof(struct gguf_kv));
  18212. ctx->header.n_kv--;
  18213. }
  18214. }
  18215. void gguf_set_val_u8(struct gguf_context * ctx, const char * key, uint8_t val) {
  18216. const int idx = gguf_get_or_add_key(ctx, key);
  18217. ctx->kv[idx].type = GGUF_TYPE_UINT8;
  18218. ctx->kv[idx].value.uint8 = val;
  18219. }
  18220. void gguf_set_val_i8(struct gguf_context * ctx, const char * key, int8_t val) {
  18221. const int idx = gguf_get_or_add_key(ctx, key);
  18222. ctx->kv[idx].type = GGUF_TYPE_INT8;
  18223. ctx->kv[idx].value.int8 = val;
  18224. }
  18225. void gguf_set_val_u16(struct gguf_context * ctx, const char * key, uint16_t val) {
  18226. const int idx = gguf_get_or_add_key(ctx, key);
  18227. ctx->kv[idx].type = GGUF_TYPE_UINT16;
  18228. ctx->kv[idx].value.uint16 = val;
  18229. }
  18230. void gguf_set_val_i16(struct gguf_context * ctx, const char * key, int16_t val) {
  18231. const int idx = gguf_get_or_add_key(ctx, key);
  18232. ctx->kv[idx].type = GGUF_TYPE_INT16;
  18233. ctx->kv[idx].value.int16 = val;
  18234. }
  18235. void gguf_set_val_u32(struct gguf_context * ctx, const char * key, uint32_t val) {
  18236. const int idx = gguf_get_or_add_key(ctx, key);
  18237. ctx->kv[idx].type = GGUF_TYPE_UINT32;
  18238. ctx->kv[idx].value.uint32 = val;
  18239. }
  18240. void gguf_set_val_i32(struct gguf_context * ctx, const char * key, int32_t val) {
  18241. const int idx = gguf_get_or_add_key(ctx, key);
  18242. ctx->kv[idx].type = GGUF_TYPE_INT32;
  18243. ctx->kv[idx].value.int32 = val;
  18244. }
  18245. void gguf_set_val_f32(struct gguf_context * ctx, const char * key, float val) {
  18246. const int idx = gguf_get_or_add_key(ctx, key);
  18247. ctx->kv[idx].type = GGUF_TYPE_FLOAT32;
  18248. ctx->kv[idx].value.float32 = val;
  18249. }
  18250. void gguf_set_val_u64(struct gguf_context * ctx, const char * key, uint64_t val) {
  18251. const int idx = gguf_get_or_add_key(ctx, key);
  18252. ctx->kv[idx].type = GGUF_TYPE_UINT64;
  18253. ctx->kv[idx].value.uint64 = val;
  18254. }
  18255. void gguf_set_val_i64(struct gguf_context * ctx, const char * key, int64_t val) {
  18256. const int idx = gguf_get_or_add_key(ctx, key);
  18257. ctx->kv[idx].type = GGUF_TYPE_INT64;
  18258. ctx->kv[idx].value.int64 = val;
  18259. }
  18260. void gguf_set_val_f64(struct gguf_context * ctx, const char * key, double val) {
  18261. const int idx = gguf_get_or_add_key(ctx, key);
  18262. ctx->kv[idx].type = GGUF_TYPE_FLOAT64;
  18263. ctx->kv[idx].value.float64 = val;
  18264. }
  18265. void gguf_set_val_bool(struct gguf_context * ctx, const char * key, bool val) {
  18266. const int idx = gguf_get_or_add_key(ctx, key);
  18267. ctx->kv[idx].type = GGUF_TYPE_BOOL;
  18268. ctx->kv[idx].value.bool_ = val;
  18269. }
  18270. void gguf_set_val_str(struct gguf_context * ctx, const char * key, const char * val) {
  18271. const int idx = gguf_get_or_add_key(ctx, key);
  18272. ctx->kv[idx].type = GGUF_TYPE_STRING;
  18273. ctx->kv[idx].value.str.n = strlen(val);
  18274. ctx->kv[idx].value.str.data = strdup(val);
  18275. }
  18276. void gguf_set_arr_data(struct gguf_context * ctx, const char * key, enum gguf_type type, const void * data, int n) {
  18277. const int idx = gguf_get_or_add_key(ctx, key);
  18278. ctx->kv[idx].type = GGUF_TYPE_ARRAY;
  18279. ctx->kv[idx].value.arr.type = type;
  18280. ctx->kv[idx].value.arr.n = n;
  18281. ctx->kv[idx].value.arr.data = GGML_CALLOC(n, gguf_type_size(type));
  18282. memcpy(ctx->kv[idx].value.arr.data, data, n*gguf_type_size(type));
  18283. }
  18284. void gguf_set_arr_str(struct gguf_context * ctx, const char * key, const char ** data, int n) {
  18285. const int idx = gguf_get_or_add_key(ctx, key);
  18286. ctx->kv[idx].type = GGUF_TYPE_ARRAY;
  18287. ctx->kv[idx].value.arr.type = GGUF_TYPE_STRING;
  18288. ctx->kv[idx].value.arr.n = n;
  18289. ctx->kv[idx].value.arr.data = GGML_CALLOC(n, sizeof(struct gguf_str));
  18290. for (int i = 0; i < n; i++) {
  18291. struct gguf_str * str = &((struct gguf_str *)ctx->kv[idx].value.arr.data)[i];
  18292. str->n = strlen(data[i]);
  18293. str->data = strdup(data[i]);
  18294. }
  18295. }
  18296. // set or add KV pairs from another context
  18297. void gguf_set_kv(struct gguf_context * ctx, struct gguf_context * src) {
  18298. for (uint32_t i = 0; i < src->header.n_kv; i++) {
  18299. switch (src->kv[i].type) {
  18300. case GGUF_TYPE_UINT8: gguf_set_val_u8 (ctx, src->kv[i].key.data, src->kv[i].value.uint8); break;
  18301. case GGUF_TYPE_INT8: gguf_set_val_i8 (ctx, src->kv[i].key.data, src->kv[i].value.int8); break;
  18302. case GGUF_TYPE_UINT16: gguf_set_val_u16 (ctx, src->kv[i].key.data, src->kv[i].value.uint16); break;
  18303. case GGUF_TYPE_INT16: gguf_set_val_i16 (ctx, src->kv[i].key.data, src->kv[i].value.int16); break;
  18304. case GGUF_TYPE_UINT32: gguf_set_val_u32 (ctx, src->kv[i].key.data, src->kv[i].value.uint32); break;
  18305. case GGUF_TYPE_INT32: gguf_set_val_i32 (ctx, src->kv[i].key.data, src->kv[i].value.int32); break;
  18306. case GGUF_TYPE_FLOAT32: gguf_set_val_f32 (ctx, src->kv[i].key.data, src->kv[i].value.float32); break;
  18307. case GGUF_TYPE_UINT64: gguf_set_val_u64 (ctx, src->kv[i].key.data, src->kv[i].value.uint64); break;
  18308. case GGUF_TYPE_INT64: gguf_set_val_i64 (ctx, src->kv[i].key.data, src->kv[i].value.int64); break;
  18309. case GGUF_TYPE_FLOAT64: gguf_set_val_f64 (ctx, src->kv[i].key.data, src->kv[i].value.float64); break;
  18310. case GGUF_TYPE_BOOL: gguf_set_val_bool(ctx, src->kv[i].key.data, src->kv[i].value.bool_); break;
  18311. case GGUF_TYPE_STRING: gguf_set_val_str (ctx, src->kv[i].key.data, src->kv[i].value.str.data); break;
  18312. case GGUF_TYPE_ARRAY:
  18313. {
  18314. if (src->kv[i].value.arr.type == GGUF_TYPE_STRING) {
  18315. const char ** data = GGML_CALLOC(src->kv[i].value.arr.n, sizeof(char *));
  18316. for (uint32_t j = 0; j < src->kv[i].value.arr.n; j++) {
  18317. data[j] = ((struct gguf_str *)src->kv[i].value.arr.data)[j].data;
  18318. }
  18319. gguf_set_arr_str(ctx, src->kv[i].key.data, data, src->kv[i].value.arr.n);
  18320. GGML_FREE((void *)data);
  18321. } else if (src->kv[i].value.arr.type == GGUF_TYPE_ARRAY) {
  18322. GGML_ASSERT(false && "nested arrays not supported");
  18323. } else {
  18324. gguf_set_arr_data(ctx, src->kv[i].key.data, src->kv[i].value.arr.type, src->kv[i].value.arr.data, src->kv[i].value.arr.n);
  18325. }
  18326. } break;
  18327. default: GGML_ASSERT(false && "invalid type"); break;
  18328. }
  18329. }
  18330. }
  18331. void gguf_add_tensor(
  18332. struct gguf_context * ctx,
  18333. const struct ggml_tensor * tensor) {
  18334. if (gguf_find_tensor(ctx, tensor->name) != -1) {
  18335. GGML_ASSERT(false && "duplicated tensor name");
  18336. }
  18337. const int idx = ctx->header.n_tensors;
  18338. ctx->infos = realloc(ctx->infos, (idx + 1)*sizeof(struct gguf_tensor_info));
  18339. ctx->infos[idx].name.n = strlen(tensor->name);
  18340. ctx->infos[idx].name.data = strdup(tensor->name);
  18341. for (int i = 0; i < GGML_MAX_DIMS; ++i) {
  18342. ctx->infos[idx].ne[i] = 1;
  18343. }
  18344. ctx->infos[idx].n_dims = ggml_n_dims(tensor);
  18345. for (uint32_t i = 0; i < ctx->infos[idx].n_dims; i++) {
  18346. ctx->infos[idx].ne[i] = tensor->ne[i];
  18347. }
  18348. ctx->infos[idx].type = tensor->type;
  18349. ctx->infos[idx].offset = 0;
  18350. ctx->infos[idx].data = tensor->data;
  18351. ctx->infos[idx].size = ggml_nbytes(tensor);
  18352. if (ctx->header.n_tensors > 0) {
  18353. ctx->infos[idx].offset = ctx->infos[idx - 1].offset + GGML_PAD(ctx->infos[idx - 1].size, ctx->alignment);
  18354. }
  18355. ctx->header.n_tensors++;
  18356. }
  18357. void gguf_set_tensor_type(struct gguf_context * ctx, const char * name, enum ggml_type type) {
  18358. const int idx = gguf_find_tensor(ctx, name);
  18359. if (idx < 0) {
  18360. GGML_ASSERT(false && "tensor not found");
  18361. }
  18362. ctx->infos[idx].type = type;
  18363. }
  18364. void gguf_set_tensor_data(struct gguf_context * ctx, const char * name, const void * data, size_t size) {
  18365. const int idx = gguf_find_tensor(ctx, name);
  18366. if (idx < 0) {
  18367. GGML_ASSERT(false && "tensor not found");
  18368. }
  18369. ctx->infos[idx].data = data;
  18370. ctx->infos[idx].size = size;
  18371. // update offsets
  18372. for (uint32_t i = idx + 1; i < ctx->header.n_tensors; ++i) {
  18373. ctx->infos[i].offset = ctx->infos[i - 1].offset + GGML_PAD(ctx->infos[i - 1].size, ctx->alignment);
  18374. }
  18375. }
  18376. //static void gguf_fwrite_str(FILE * file, const struct gguf_str * val) {
  18377. // fwrite(&val->n, sizeof(val->n), 1, file);
  18378. // fwrite(val->data, sizeof(char), val->n, file);
  18379. //}
  18380. //
  18381. //static void gguf_fwrite_el(FILE * file, const void * val, size_t size) {
  18382. // fwrite(val, sizeof(char), size, file);
  18383. //}
  18384. struct gguf_buf {
  18385. void * data;
  18386. size_t size;
  18387. size_t offset;
  18388. };
  18389. static struct gguf_buf gguf_buf_init(size_t size) {
  18390. struct gguf_buf buf = {
  18391. /*buf.data =*/ size == 0 ? NULL : GGML_CALLOC(1, size),
  18392. /*buf.size =*/ size,
  18393. /*buf.offset =*/ 0,
  18394. };
  18395. return buf;
  18396. }
  18397. static void gguf_buf_free(struct gguf_buf buf) {
  18398. if (buf.data) {
  18399. GGML_FREE(buf.data);
  18400. }
  18401. }
  18402. static void gguf_buf_grow(struct gguf_buf * buf, size_t size) {
  18403. if (buf->offset + size > buf->size) {
  18404. buf->size = 1.5*(buf->offset + size);
  18405. if (buf->data) {
  18406. buf->data = realloc(buf->data, buf->size);
  18407. }
  18408. }
  18409. }
  18410. static void gguf_bwrite_str(struct gguf_buf * buf, const struct gguf_str * val) {
  18411. gguf_buf_grow(buf, sizeof(val->n) + val->n);
  18412. if (buf->data) {
  18413. memcpy((char *) buf->data + buf->offset, &val->n, sizeof(val->n));
  18414. }
  18415. buf->offset += sizeof(val->n);
  18416. if (buf->data) {
  18417. memcpy((char *) buf->data + buf->offset, val->data, val->n);
  18418. }
  18419. buf->offset += val->n;
  18420. }
  18421. static void gguf_bwrite_el(struct gguf_buf * buf, const void * val, size_t el_size) {
  18422. gguf_buf_grow(buf, el_size);
  18423. if (buf->data) {
  18424. memcpy((char *) buf->data + buf->offset, val, el_size);
  18425. }
  18426. buf->offset += el_size;
  18427. }
  18428. static void gguf_write_to_buf(const struct gguf_context * ctx, struct gguf_buf * buf, bool only_meta) {
  18429. // write header
  18430. gguf_bwrite_el(buf, &ctx->header.magic, sizeof(ctx->header.magic));
  18431. gguf_bwrite_el(buf, &ctx->header.version, sizeof(ctx->header.version));
  18432. gguf_bwrite_el(buf, &ctx->header.n_tensors, sizeof(ctx->header.n_tensors));
  18433. gguf_bwrite_el(buf, &ctx->header.n_kv, sizeof(ctx->header.n_kv));
  18434. // write key-value pairs
  18435. for (uint32_t i = 0; i < ctx->header.n_kv; ++i) {
  18436. struct gguf_kv * kv = &ctx->kv[i];
  18437. gguf_bwrite_str(buf, &kv->key);
  18438. gguf_bwrite_el (buf, &kv->type, sizeof(kv->type));
  18439. switch (kv->type) {
  18440. case GGUF_TYPE_UINT8: gguf_bwrite_el( buf, &kv->value.uint8, sizeof(kv->value.uint8) ); break;
  18441. case GGUF_TYPE_INT8: gguf_bwrite_el (buf, &kv->value.int8, sizeof(kv->value.int8) ); break;
  18442. case GGUF_TYPE_UINT16: gguf_bwrite_el (buf, &kv->value.uint16, sizeof(kv->value.uint16) ); break;
  18443. case GGUF_TYPE_INT16: gguf_bwrite_el (buf, &kv->value.int16, sizeof(kv->value.int16) ); break;
  18444. case GGUF_TYPE_UINT32: gguf_bwrite_el (buf, &kv->value.uint32, sizeof(kv->value.uint32) ); break;
  18445. case GGUF_TYPE_INT32: gguf_bwrite_el (buf, &kv->value.int32, sizeof(kv->value.int32) ); break;
  18446. case GGUF_TYPE_FLOAT32: gguf_bwrite_el (buf, &kv->value.float32, sizeof(kv->value.float32)); break;
  18447. case GGUF_TYPE_UINT64: gguf_bwrite_el (buf, &kv->value.uint64, sizeof(kv->value.uint64) ); break;
  18448. case GGUF_TYPE_INT64: gguf_bwrite_el (buf, &kv->value.int64, sizeof(kv->value.int64) ); break;
  18449. case GGUF_TYPE_FLOAT64: gguf_bwrite_el (buf, &kv->value.float64, sizeof(kv->value.float64)); break;
  18450. case GGUF_TYPE_BOOL: gguf_bwrite_el (buf, &kv->value.bool_, sizeof(kv->value.bool_) ); break;
  18451. case GGUF_TYPE_STRING: gguf_bwrite_str(buf, &kv->value.str ); break;
  18452. case GGUF_TYPE_ARRAY:
  18453. {
  18454. gguf_bwrite_el(buf, &kv->value.arr.type, sizeof(kv->value.arr.type));
  18455. gguf_bwrite_el(buf, &kv->value.arr.n, sizeof(kv->value.arr.n) );
  18456. switch (kv->value.arr.type) {
  18457. case GGUF_TYPE_UINT8:
  18458. case GGUF_TYPE_INT8:
  18459. case GGUF_TYPE_UINT16:
  18460. case GGUF_TYPE_INT16:
  18461. case GGUF_TYPE_UINT32:
  18462. case GGUF_TYPE_INT32:
  18463. case GGUF_TYPE_FLOAT32:
  18464. case GGUF_TYPE_UINT64:
  18465. case GGUF_TYPE_INT64:
  18466. case GGUF_TYPE_FLOAT64:
  18467. case GGUF_TYPE_BOOL:
  18468. {
  18469. gguf_bwrite_el(buf, kv->value.arr.data, kv->value.arr.n * gguf_type_size(kv->value.arr.type));
  18470. } break;
  18471. case GGUF_TYPE_STRING:
  18472. {
  18473. for (uint32_t j = 0; j < kv->value.arr.n; ++j) {
  18474. gguf_bwrite_str(buf, &((struct gguf_str *) kv->value.arr.data)[j]);
  18475. }
  18476. } break;
  18477. case GGUF_TYPE_ARRAY:
  18478. default: GGML_ASSERT(false && "invalid type"); break;
  18479. }
  18480. } break;
  18481. default: GGML_ASSERT(false && "invalid type");
  18482. }
  18483. }
  18484. // write tensor infos
  18485. for (uint32_t i = 0; i < ctx->header.n_tensors; ++i) {
  18486. struct gguf_tensor_info * info = &ctx->infos[i];
  18487. gguf_bwrite_str(buf, &info->name);
  18488. gguf_bwrite_el (buf, &info->n_dims, sizeof(info->n_dims));
  18489. for (uint32_t j = 0; j < info->n_dims; ++j) {
  18490. gguf_bwrite_el(buf, &info->ne[j], sizeof(info->ne[j]));
  18491. }
  18492. gguf_bwrite_el(buf, &info->type, sizeof(info->type));
  18493. gguf_bwrite_el(buf, &info->offset, sizeof(info->offset));
  18494. }
  18495. // we require the data section to be aligned, so take into account any padding
  18496. {
  18497. const size_t offset = buf->offset;
  18498. const size_t offset_pad = GGML_PAD(offset, ctx->alignment);
  18499. if (offset_pad != offset) {
  18500. uint8_t pad = 0;
  18501. for (size_t i = 0; i < offset_pad - offset; ++i) {
  18502. gguf_bwrite_el(buf, &pad, sizeof(pad));
  18503. }
  18504. }
  18505. }
  18506. if (only_meta) {
  18507. return;
  18508. }
  18509. size_t offset = 0;
  18510. // write tensor data
  18511. for (uint32_t i = 0; i < ctx->header.n_tensors; ++i) {
  18512. struct gguf_tensor_info * info = &ctx->infos[i];
  18513. const size_t size = info->size;
  18514. const size_t size_pad = GGML_PAD(size, ctx->alignment);
  18515. gguf_bwrite_el(buf, info->data, size);
  18516. if (size_pad != size) {
  18517. uint8_t pad = 0;
  18518. for (size_t j = 0; j < size_pad - size; ++j) {
  18519. gguf_bwrite_el(buf, &pad, sizeof(pad));
  18520. }
  18521. }
  18522. GGML_ASSERT(offset == info->offset);
  18523. offset += size_pad;
  18524. }
  18525. }
  18526. void gguf_write_to_file(const struct gguf_context * ctx, const char * fname, bool only_meta) {
  18527. FILE * file = ggml_fopen(fname, "wb");
  18528. if (!file) {
  18529. GGML_ASSERT(false && "failed to open file for writing");
  18530. }
  18531. struct gguf_buf buf = gguf_buf_init(16*1024);
  18532. gguf_write_to_buf(ctx, &buf, only_meta);
  18533. fwrite(buf.data, 1, buf.offset, file);
  18534. gguf_buf_free(buf);
  18535. fclose(file);
  18536. }
  18537. size_t gguf_get_meta_size(const struct gguf_context * ctx) {
  18538. // no allocs - only compute size
  18539. struct gguf_buf buf = gguf_buf_init(0);
  18540. gguf_write_to_buf(ctx, &buf, true);
  18541. return buf.offset;
  18542. }
  18543. void gguf_get_meta_data(const struct gguf_context * ctx, void * data) {
  18544. struct gguf_buf buf = gguf_buf_init(16*1024);
  18545. gguf_write_to_buf(ctx, &buf, true);
  18546. memcpy(data, buf.data, buf.offset);
  18547. gguf_buf_free(buf);
  18548. }
  18549. ////////////////////////////////////////////////////////////////////////////////
  18550. int ggml_cpu_has_avx(void) {
  18551. #if defined(__AVX__)
  18552. return 1;
  18553. #else
  18554. return 0;
  18555. #endif
  18556. }
  18557. int ggml_cpu_has_avx_vnni(void) {
  18558. #if defined(__AVXVNNI__)
  18559. return 1;
  18560. #else
  18561. return 0;
  18562. #endif
  18563. }
  18564. int ggml_cpu_has_avx2(void) {
  18565. #if defined(__AVX2__)
  18566. return 1;
  18567. #else
  18568. return 0;
  18569. #endif
  18570. }
  18571. int ggml_cpu_has_avx512(void) {
  18572. #if defined(__AVX512F__)
  18573. return 1;
  18574. #else
  18575. return 0;
  18576. #endif
  18577. }
  18578. int ggml_cpu_has_avx512_vbmi(void) {
  18579. #if defined(__AVX512VBMI__)
  18580. return 1;
  18581. #else
  18582. return 0;
  18583. #endif
  18584. }
  18585. int ggml_cpu_has_avx512_vnni(void) {
  18586. #if defined(__AVX512VNNI__)
  18587. return 1;
  18588. #else
  18589. return 0;
  18590. #endif
  18591. }
  18592. int ggml_cpu_has_avx512_bf16(void) {
  18593. #if defined(__AVX512BF16__)
  18594. return 1;
  18595. #else
  18596. return 0;
  18597. #endif
  18598. }
  18599. int ggml_cpu_has_fma(void) {
  18600. #if defined(__FMA__)
  18601. return 1;
  18602. #else
  18603. return 0;
  18604. #endif
  18605. }
  18606. int ggml_cpu_has_neon(void) {
  18607. #if defined(__ARM_NEON)
  18608. return 1;
  18609. #else
  18610. return 0;
  18611. #endif
  18612. }
  18613. int ggml_cpu_has_sve(void) {
  18614. #if defined(__ARM_FEATURE_SVE)
  18615. // TODO: Currently, SVE 256 bit is only supported.
  18616. GGML_ASSERT(svcntb() == QK8_0);
  18617. return 1;
  18618. #else
  18619. return 0;
  18620. #endif
  18621. }
  18622. int ggml_cpu_has_arm_fma(void) {
  18623. #if defined(__ARM_FEATURE_FMA)
  18624. return 1;
  18625. #else
  18626. return 0;
  18627. #endif
  18628. }
  18629. int ggml_cpu_has_metal(void) {
  18630. #if defined(GGML_USE_METAL)
  18631. return 1;
  18632. #else
  18633. return 0;
  18634. #endif
  18635. }
  18636. int ggml_cpu_has_f16c(void) {
  18637. #if defined(__F16C__)
  18638. return 1;
  18639. #else
  18640. return 0;
  18641. #endif
  18642. }
  18643. int ggml_cpu_has_fp16_va(void) {
  18644. #if defined(__ARM_FEATURE_FP16_VECTOR_ARITHMETIC)
  18645. return 1;
  18646. #else
  18647. return 0;
  18648. #endif
  18649. }
  18650. int ggml_cpu_has_wasm_simd(void) {
  18651. #if defined(__wasm_simd128__)
  18652. return 1;
  18653. #else
  18654. return 0;
  18655. #endif
  18656. }
  18657. int ggml_cpu_has_blas(void) {
  18658. #if defined(GGML_USE_ACCELERATE) || defined(GGML_USE_OPENBLAS) || defined(GGML_USE_CUDA) || defined(GGML_USE_VULKAN) || defined(GGML_USE_SYCL)
  18659. return 1;
  18660. #else
  18661. return 0;
  18662. #endif
  18663. }
  18664. int ggml_cpu_has_cuda(void) {
  18665. #if defined(GGML_USE_CUDA)
  18666. return 1;
  18667. #else
  18668. return 0;
  18669. #endif
  18670. }
  18671. int ggml_cpu_has_vulkan(void) {
  18672. #if defined(GGML_USE_VULKAN)
  18673. return 1;
  18674. #else
  18675. return 0;
  18676. #endif
  18677. }
  18678. int ggml_cpu_has_kompute(void) {
  18679. #if defined(GGML_USE_KOMPUTE)
  18680. return 1;
  18681. #else
  18682. return 0;
  18683. #endif
  18684. }
  18685. int ggml_cpu_has_sycl(void) {
  18686. #if defined(GGML_USE_SYCL)
  18687. return 1;
  18688. #else
  18689. return 0;
  18690. #endif
  18691. }
  18692. int ggml_cpu_has_rpc(void) {
  18693. #if defined(GGML_USE_RPC)
  18694. return 1;
  18695. #else
  18696. return 0;
  18697. #endif
  18698. }
  18699. int ggml_cpu_has_gpublas(void) {
  18700. return ggml_cpu_has_cuda() || ggml_cpu_has_vulkan() || ggml_cpu_has_kompute() || ggml_cpu_has_sycl();
  18701. }
  18702. int ggml_cpu_has_sse3(void) {
  18703. #if defined(__SSE3__)
  18704. return 1;
  18705. #else
  18706. return 0;
  18707. #endif
  18708. }
  18709. int ggml_cpu_has_ssse3(void) {
  18710. #if defined(__SSSE3__)
  18711. return 1;
  18712. #else
  18713. return 0;
  18714. #endif
  18715. }
  18716. int ggml_cpu_has_vsx(void) {
  18717. #if defined(__POWER9_VECTOR__)
  18718. return 1;
  18719. #else
  18720. return 0;
  18721. #endif
  18722. }
  18723. int ggml_cpu_has_matmul_int8(void) {
  18724. #if defined(__ARM_FEATURE_MATMUL_INT8)
  18725. return 1;
  18726. #else
  18727. return 0;
  18728. #endif
  18729. }
  18730. ////////////////////////////////////////////////////////////////////////////////