clip.cpp 85 KB

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  1. // NOTE: This is modified from clip.cpp only for LLaVA,
  2. // so there might be still unnecessary artifacts hanging around
  3. // I'll gradually clean and extend it
  4. // Note: Even when using identical normalized image inputs (see normalize_image_u8_to_f32()) we have a significant difference in resulting embeddings compared to pytorch
  5. #include "clip.h"
  6. #include "log.h"
  7. #include "ggml.h"
  8. #include "ggml-alloc.h"
  9. #include "ggml-backend.h"
  10. #ifdef GGML_USE_CUDA
  11. #include "ggml-cuda.h"
  12. #endif
  13. #ifdef GGML_USE_METAL
  14. #include "ggml-metal.h"
  15. #endif
  16. #define STB_IMAGE_IMPLEMENTATION
  17. #include "stb_image.h"
  18. #include <cassert>
  19. #include <cmath>
  20. #include <cstdlib>
  21. #include <cstring>
  22. #include <fstream>
  23. #include <map>
  24. #include <regex>
  25. #include <stdexcept>
  26. #include <vector>
  27. #include <sstream>
  28. #include <cinttypes>
  29. #include <limits>
  30. //#define CLIP_DEBUG_FUNCTIONS
  31. // RGB uint8 image
  32. struct clip_image_u8 {
  33. int nx;
  34. int ny;
  35. std::vector<uint8_t> buf;
  36. };
  37. // RGB float32 image (NHWC)
  38. // Memory layout: RGBRGBRGB...
  39. struct clip_image_f32 {
  40. int nx;
  41. int ny;
  42. std::vector<float> buf;
  43. };
  44. static std::string format(const char * fmt, ...) {
  45. va_list ap;
  46. va_list ap2;
  47. va_start(ap, fmt);
  48. va_copy(ap2, ap);
  49. int size = vsnprintf(NULL, 0, fmt, ap);
  50. GGML_ASSERT(size >= 0 && size < INT_MAX); // NOLINT
  51. std::vector<char> buf(size + 1);
  52. int size2 = vsnprintf(buf.data(), size + 1, fmt, ap2);
  53. GGML_ASSERT(size2 == size);
  54. va_end(ap2);
  55. va_end(ap);
  56. return std::string(buf.data(), buf.size());
  57. }
  58. //
  59. // key constants
  60. //
  61. #define KEY_FTYPE "general.file_type"
  62. #define KEY_NAME "general.name"
  63. #define KEY_DESCRIPTION "general.description"
  64. #define KEY_HAS_TEXT_ENC "clip.has_text_encoder"
  65. #define KEY_HAS_VIS_ENC "clip.has_vision_encoder"
  66. #define KEY_HAS_LLAVA_PROJ "clip.has_llava_projector"
  67. #define KEY_USE_GELU "clip.use_gelu"
  68. #define KEY_N_EMBD "clip.%s.embedding_length"
  69. #define KEY_N_FF "clip.%s.feed_forward_length"
  70. #define KEY_N_BLOCK "clip.%s.block_count"
  71. #define KEY_N_HEAD "clip.%s.attention.head_count"
  72. #define KEY_LAYER_NORM_EPS "clip.%s.attention.layer_norm_epsilon"
  73. #define KEY_PROJ_DIM "clip.%s.projection_dim"
  74. #define KEY_TOKENS "tokenizer.ggml.tokens"
  75. #define KEY_N_POSITIONS "clip.text.context_length"
  76. #define KEY_IMAGE_SIZE "clip.vision.image_size"
  77. #define KEY_PATCH_SIZE "clip.vision.patch_size"
  78. #define KEY_IMAGE_MEAN "clip.vision.image_mean"
  79. #define KEY_IMAGE_STD "clip.vision.image_std"
  80. #define KEY_PROJ_TYPE "clip.projector_type"
  81. #define KEY_MM_PATCH_MERGE_TYPE "clip.vision.mm_patch_merge_type"
  82. #define KEY_IMAGE_GRID_PINPOINTS "clip.vision.image_grid_pinpoints"
  83. #define KEY_IMAGE_CROP_RESOLUTION "clip.vision.image_crop_resolution"
  84. //
  85. // tensor name constants
  86. //
  87. #define TN_TOKEN_EMBD "%s.token_embd.weight"
  88. #define TN_POS_EMBD "%s.position_embd.weight"
  89. #define TN_CLASS_EMBD "v.class_embd"
  90. #define TN_PATCH_EMBD "v.patch_embd.weight"
  91. #define TN_PATCH_BIAS "v.patch_embd.bias"
  92. #define TN_ATTN_K "%s.blk.%d.attn_k.%s"
  93. #define TN_ATTN_Q "%s.blk.%d.attn_q.%s"
  94. #define TN_ATTN_V "%s.blk.%d.attn_v.%s"
  95. #define TN_ATTN_OUTPUT "%s.blk.%d.attn_out.%s"
  96. #define TN_FFN_DOWN "%s.blk.%d.ffn_down.%s"
  97. #define TN_FFN_UP "%s.blk.%d.ffn_up.%s"
  98. #define TN_LN_1 "%s.blk.%d.ln1.%s"
  99. #define TN_LN_2 "%s.blk.%d.ln2.%s"
  100. #define TN_LN_PRE "%s.pre_ln.%s"
  101. #define TN_LN_POST "%s.post_ln.%s"
  102. #define TN_TEXT_PROJ "text_projection.weight"
  103. #define TN_VIS_PROJ "visual_projection.weight"
  104. #define TN_LLAVA_PROJ "mm.%d.%s"
  105. #define TN_MVLM_PROJ_MLP "mm.model.mlp.%d.%s"
  106. #define TN_MVLM_PROJ_BLOCK "mm.model.mb_block.%d.block.%d.%s"
  107. #define TN_MVLM_PROJ_PEG "mm.model.peg.%d.%s"
  108. #define TN_IMAGE_NEWLINE "model.image_newline"
  109. enum projector_type {
  110. PROJECTOR_TYPE_MLP,
  111. PROJECTOR_TYPE_MLP_NORM,
  112. PROJECTOR_TYPE_LDP,
  113. PROJECTOR_TYPE_LDPV2,
  114. PROJECTOR_TYPE_UNKNOWN,
  115. };
  116. static std::map<projector_type, std::string> PROJECTOR_TYPE_NAMES = {
  117. { PROJECTOR_TYPE_MLP, "mlp" },
  118. { PROJECTOR_TYPE_LDP, "ldp" },
  119. { PROJECTOR_TYPE_LDPV2, "ldpv2"},
  120. };
  121. //
  122. // utilities to get data from a gguf file
  123. //
  124. static int get_key_idx(const gguf_context * ctx, const char * key) {
  125. int i = gguf_find_key(ctx, key);
  126. if (i == -1) {
  127. LOG_TEE("key %s not found in file\n", key);
  128. throw std::runtime_error(format("Missing required key: %s", key));
  129. }
  130. return i;
  131. }
  132. static uint32_t get_u32(const gguf_context * ctx, const std::string & key) {
  133. const int i = get_key_idx(ctx, key.c_str());
  134. return gguf_get_val_u32(ctx, i);
  135. }
  136. static float get_f32(const gguf_context * ctx, const std::string & key) {
  137. const int i = get_key_idx(ctx, key.c_str());
  138. return gguf_get_val_f32(ctx, i);
  139. }
  140. static struct ggml_tensor * get_tensor(struct ggml_context * ctx, const std::string & name) {
  141. struct ggml_tensor * cur = ggml_get_tensor(ctx, name.c_str());
  142. if (!cur) {
  143. throw std::runtime_error(format("%s: unable to find tensor %s\n", __func__, name.c_str()));
  144. }
  145. return cur;
  146. }
  147. static std::string get_ftype(int ftype) {
  148. return ggml_type_name(static_cast<ggml_type>(ftype));
  149. }
  150. static std::string gguf_data_to_str(enum gguf_type type, const void * data, int i) {
  151. switch (type) {
  152. case GGUF_TYPE_UINT8: return std::to_string(((const uint8_t *)data)[i]);
  153. case GGUF_TYPE_INT8: return std::to_string(((const int8_t *)data)[i]);
  154. case GGUF_TYPE_UINT16: return std::to_string(((const uint16_t *)data)[i]);
  155. case GGUF_TYPE_INT16: return std::to_string(((const int16_t *)data)[i]);
  156. case GGUF_TYPE_UINT32: return std::to_string(((const uint32_t *)data)[i]);
  157. case GGUF_TYPE_INT32: return std::to_string(((const int32_t *)data)[i]);
  158. case GGUF_TYPE_UINT64: return std::to_string(((const uint64_t *)data)[i]);
  159. case GGUF_TYPE_INT64: return std::to_string(((const int64_t *)data)[i]);
  160. case GGUF_TYPE_FLOAT32: return std::to_string(((const float *)data)[i]);
  161. case GGUF_TYPE_FLOAT64: return std::to_string(((const double *)data)[i]);
  162. case GGUF_TYPE_BOOL: return ((const bool *)data)[i] ? "true" : "false";
  163. default: return format("unknown type %d", type);
  164. }
  165. }
  166. static void replace_all(std::string & s, const std::string & search, const std::string & replace) {
  167. std::string result;
  168. for (size_t pos = 0; ; pos += search.length()) {
  169. auto new_pos = s.find(search, pos);
  170. if (new_pos == std::string::npos) {
  171. result += s.substr(pos, s.size() - pos);
  172. break;
  173. }
  174. result += s.substr(pos, new_pos - pos) + replace;
  175. pos = new_pos;
  176. }
  177. s = std::move(result);
  178. }
  179. static std::string gguf_kv_to_str(const struct gguf_context * ctx_gguf, int i) {
  180. const enum gguf_type type = gguf_get_kv_type(ctx_gguf, i);
  181. switch (type) {
  182. case GGUF_TYPE_STRING:
  183. return gguf_get_val_str(ctx_gguf, i);
  184. case GGUF_TYPE_ARRAY:
  185. {
  186. const enum gguf_type arr_type = gguf_get_arr_type(ctx_gguf, i);
  187. int arr_n = gguf_get_arr_n(ctx_gguf, i);
  188. const void * data = gguf_get_arr_data(ctx_gguf, i);
  189. std::stringstream ss;
  190. ss << "[";
  191. for (int j = 0; j < arr_n; j++) {
  192. if (arr_type == GGUF_TYPE_STRING) {
  193. std::string val = gguf_get_arr_str(ctx_gguf, i, j);
  194. // escape quotes
  195. replace_all(val, "\\", "\\\\");
  196. replace_all(val, "\"", "\\\"");
  197. ss << '"' << val << '"';
  198. } else if (arr_type == GGUF_TYPE_ARRAY) {
  199. ss << "???";
  200. } else {
  201. ss << gguf_data_to_str(arr_type, data, j);
  202. }
  203. if (j < arr_n - 1) {
  204. ss << ", ";
  205. }
  206. }
  207. ss << "]";
  208. return ss.str();
  209. }
  210. default:
  211. return gguf_data_to_str(type, gguf_get_val_data(ctx_gguf, i), 0);
  212. }
  213. }
  214. static void print_tensor_info(const ggml_tensor * tensor, const char * prefix = "") {
  215. size_t tensor_size = ggml_nbytes(tensor);
  216. LOG_TEE("%s: n_dims = %d, name = %s, tensor_size=%zu, shape:[%" PRId64 ", %" PRId64 ", %" PRId64 ", %" PRId64 "], type = %s\n",
  217. prefix, ggml_n_dims(tensor), tensor->name, tensor_size,
  218. tensor->ne[0], tensor->ne[1], tensor->ne[2], tensor->ne[3], ggml_type_name(tensor->type));
  219. }
  220. static projector_type clip_projector_type_from_string(const std::string & name) {
  221. for (const auto & kv : PROJECTOR_TYPE_NAMES) { // NOLINT
  222. if (kv.second == name) {
  223. return kv.first;
  224. }
  225. }
  226. return PROJECTOR_TYPE_UNKNOWN;
  227. }
  228. #ifdef CLIP_DEBUG_FUNCTIONS
  229. static void clip_image_write_image_to_ppm(const clip_image_u8& img, const std::string& filename) {
  230. std::ofstream file(filename, std::ios::binary);
  231. if (!file.is_open()) {
  232. LOG_TEE("Failed to open file for writing: %s\n", filename.c_str());
  233. return;
  234. }
  235. // PPM header: P6 format, width, height, and max color value
  236. file << "P6\n" << img.nx << " " << img.ny << "\n255\n";
  237. // Write pixel data
  238. for (size_t i = 0; i < img.buf.size(); i += 3) {
  239. // PPM expects binary data in RGB format, which matches our image buffer
  240. file.write(reinterpret_cast<const char*>(&img.buf[i]), 3);
  241. }
  242. file.close();
  243. }
  244. static void clip_image_save_to_bmp(const clip_image_u8& img, const std::string& filename) {
  245. std::ofstream file(filename, std::ios::binary);
  246. if (!file.is_open()) {
  247. LOG_TEE("Failed to open file for writing: %s\n", filename.c_str());
  248. return;
  249. }
  250. int fileSize = 54 + 3 * img.nx * img.ny; // File header + info header + pixel data
  251. int bytesPerPixel = 3;
  252. int widthInBytes = img.nx * bytesPerPixel;
  253. int paddingAmount = (4 - (widthInBytes % 4)) % 4;
  254. int stride = widthInBytes + paddingAmount;
  255. // Bitmap file header
  256. unsigned char fileHeader[14] = {
  257. 'B','M', // Signature
  258. 0,0,0,0, // Image file size in bytes
  259. 0,0,0,0, // Reserved
  260. 54,0,0,0 // Start of pixel array
  261. };
  262. // Total file size
  263. fileSize = 54 + (stride * img.ny);
  264. fileHeader[2] = (unsigned char)(fileSize);
  265. fileHeader[3] = (unsigned char)(fileSize >> 8);
  266. fileHeader[4] = (unsigned char)(fileSize >> 16);
  267. fileHeader[5] = (unsigned char)(fileSize >> 24);
  268. // Bitmap information header (BITMAPINFOHEADER)
  269. unsigned char infoHeader[40] = {
  270. 40,0,0,0, // Size of this header (40 bytes)
  271. 0,0,0,0, // Image width
  272. 0,0,0,0, // Image height
  273. 1,0, // Number of color planes
  274. 24,0, // Bits per pixel
  275. 0,0,0,0, // No compression
  276. 0,0,0,0, // Image size (can be 0 for no compression)
  277. 0,0,0,0, // X pixels per meter (not specified)
  278. 0,0,0,0, // Y pixels per meter (not specified)
  279. 0,0,0,0, // Total colors (color table not used)
  280. 0,0,0,0 // Important colors (all are important)
  281. };
  282. // Width and height in the information header
  283. infoHeader[4] = (unsigned char)(img.nx);
  284. infoHeader[5] = (unsigned char)(img.nx >> 8);
  285. infoHeader[6] = (unsigned char)(img.nx >> 16);
  286. infoHeader[7] = (unsigned char)(img.nx >> 24);
  287. infoHeader[8] = (unsigned char)(img.ny);
  288. infoHeader[9] = (unsigned char)(img.ny >> 8);
  289. infoHeader[10] = (unsigned char)(img.ny >> 16);
  290. infoHeader[11] = (unsigned char)(img.ny >> 24);
  291. // Write file headers
  292. file.write(reinterpret_cast<char*>(fileHeader), sizeof(fileHeader));
  293. file.write(reinterpret_cast<char*>(infoHeader), sizeof(infoHeader));
  294. // Pixel data
  295. std::vector<unsigned char> padding(3, 0); // Max padding size to be added to each row
  296. for (int y = img.ny - 1; y >= 0; --y) { // BMP files are stored bottom-to-top
  297. for (int x = 0; x < img.nx; ++x) {
  298. // Each pixel
  299. size_t pixelIndex = (y * img.nx + x) * 3;
  300. unsigned char pixel[3] = {
  301. img.buf[pixelIndex + 2], // BMP stores pixels in BGR format
  302. img.buf[pixelIndex + 1],
  303. img.buf[pixelIndex]
  304. };
  305. file.write(reinterpret_cast<char*>(pixel), 3);
  306. }
  307. // Write padding for the row
  308. file.write(reinterpret_cast<char*>(padding.data()), paddingAmount);
  309. }
  310. file.close();
  311. }
  312. // debug function to convert f32 to u8
  313. static void clip_image_convert_f32_to_u8(const clip_image_f32& src, clip_image_u8& dst) {
  314. dst.nx = src.nx;
  315. dst.ny = src.ny;
  316. dst.buf.resize(3 * src.nx * src.ny);
  317. for (size_t i = 0; i < src.buf.size(); ++i) {
  318. dst.buf[i] = static_cast<uint8_t>(std::min(std::max(int(src.buf[i] * 255.0f), 0), 255));
  319. }
  320. }
  321. #endif
  322. //
  323. // clip layers
  324. //
  325. struct clip_hparams {
  326. int32_t image_size;
  327. int32_t patch_size;
  328. int32_t hidden_size;
  329. int32_t n_intermediate;
  330. int32_t projection_dim;
  331. int32_t n_head;
  332. int32_t n_layer;
  333. float eps;
  334. char mm_patch_merge_type[32] = "flat"; // spatial_unpad or flat (default)
  335. int32_t image_grid_pinpoints[32];
  336. int32_t image_crop_resolution;
  337. };
  338. struct clip_layer {
  339. // attention
  340. struct ggml_tensor * k_w;
  341. struct ggml_tensor * k_b;
  342. struct ggml_tensor * q_w;
  343. struct ggml_tensor * q_b;
  344. struct ggml_tensor * v_w;
  345. struct ggml_tensor * v_b;
  346. struct ggml_tensor * o_w;
  347. struct ggml_tensor * o_b;
  348. // layernorm 1
  349. struct ggml_tensor * ln_1_w;
  350. struct ggml_tensor * ln_1_b;
  351. // ff
  352. struct ggml_tensor * ff_i_w;
  353. struct ggml_tensor * ff_i_b;
  354. struct ggml_tensor * ff_o_w;
  355. struct ggml_tensor * ff_o_b;
  356. // layernorm 2
  357. struct ggml_tensor * ln_2_w;
  358. struct ggml_tensor * ln_2_b;
  359. };
  360. struct clip_vision_model {
  361. struct clip_hparams hparams;
  362. // embeddings
  363. struct ggml_tensor * class_embedding;
  364. struct ggml_tensor * patch_embeddings;
  365. struct ggml_tensor * patch_bias;
  366. struct ggml_tensor * position_embeddings;
  367. struct ggml_tensor * pre_ln_w;
  368. struct ggml_tensor * pre_ln_b;
  369. std::vector<clip_layer> layers;
  370. struct ggml_tensor * post_ln_w;
  371. struct ggml_tensor * post_ln_b;
  372. struct ggml_tensor * projection;
  373. // LLaVA projection
  374. struct ggml_tensor * mm_0_w = NULL;
  375. struct ggml_tensor * mm_0_b = NULL;
  376. struct ggml_tensor * mm_2_w = NULL;
  377. struct ggml_tensor * mm_2_b = NULL;
  378. struct ggml_tensor * image_newline = NULL;
  379. // Yi type models with mlp+normalization projection
  380. struct ggml_tensor * mm_1_w = NULL; // Yi type models have 0, 1, 3, 4
  381. struct ggml_tensor * mm_1_b = NULL;
  382. struct ggml_tensor * mm_3_w = NULL;
  383. struct ggml_tensor * mm_3_b = NULL;
  384. struct ggml_tensor * mm_4_w = NULL;
  385. struct ggml_tensor * mm_4_b = NULL;
  386. // MobileVLM projection
  387. struct ggml_tensor * mm_model_mlp_1_w;
  388. struct ggml_tensor * mm_model_mlp_1_b;
  389. struct ggml_tensor * mm_model_mlp_3_w;
  390. struct ggml_tensor * mm_model_mlp_3_b;
  391. struct ggml_tensor * mm_model_block_1_block_0_0_w;
  392. struct ggml_tensor * mm_model_block_1_block_0_1_w;
  393. struct ggml_tensor * mm_model_block_1_block_0_1_b;
  394. struct ggml_tensor * mm_model_block_1_block_1_fc1_w;
  395. struct ggml_tensor * mm_model_block_1_block_1_fc1_b;
  396. struct ggml_tensor * mm_model_block_1_block_1_fc2_w;
  397. struct ggml_tensor * mm_model_block_1_block_1_fc2_b;
  398. struct ggml_tensor * mm_model_block_1_block_2_0_w;
  399. struct ggml_tensor * mm_model_block_1_block_2_1_w;
  400. struct ggml_tensor * mm_model_block_1_block_2_1_b;
  401. struct ggml_tensor * mm_model_block_2_block_0_0_w;
  402. struct ggml_tensor * mm_model_block_2_block_0_1_w;
  403. struct ggml_tensor * mm_model_block_2_block_0_1_b;
  404. struct ggml_tensor * mm_model_block_2_block_1_fc1_w;
  405. struct ggml_tensor * mm_model_block_2_block_1_fc1_b;
  406. struct ggml_tensor * mm_model_block_2_block_1_fc2_w;
  407. struct ggml_tensor * mm_model_block_2_block_1_fc2_b;
  408. struct ggml_tensor * mm_model_block_2_block_2_0_w;
  409. struct ggml_tensor * mm_model_block_2_block_2_1_w;
  410. struct ggml_tensor * mm_model_block_2_block_2_1_b;
  411. // MobileVLM_V2 projection
  412. struct ggml_tensor * mm_model_mlp_0_w;
  413. struct ggml_tensor * mm_model_mlp_0_b;
  414. struct ggml_tensor * mm_model_mlp_2_w;
  415. struct ggml_tensor * mm_model_mlp_2_b;
  416. struct ggml_tensor * mm_model_peg_0_w;
  417. struct ggml_tensor * mm_model_peg_0_b;
  418. };
  419. struct clip_ctx {
  420. bool has_text_encoder = false;
  421. bool has_vision_encoder = false;
  422. bool has_llava_projector = false;
  423. struct clip_vision_model vision_model;
  424. projector_type proj_type = PROJECTOR_TYPE_MLP;
  425. float image_mean[3];
  426. float image_std[3];
  427. bool use_gelu = false;
  428. int32_t ftype = 1;
  429. bool has_class_embedding = true;
  430. bool has_pre_norm = true;
  431. bool has_post_norm = false;
  432. bool has_patch_bias = false;
  433. struct gguf_context * ctx_gguf;
  434. struct ggml_context * ctx_data;
  435. std::vector<uint8_t> buf_compute_meta;
  436. // memory buffers to evaluate the model
  437. ggml_backend_buffer_t params_buffer = NULL;
  438. ggml_backend_t backend = NULL;
  439. ggml_gallocr_t compute_alloc = NULL;
  440. };
  441. static ggml_cgraph * clip_image_build_graph(clip_ctx * ctx, const clip_image_f32_batch * imgs) {
  442. if (!ctx->has_vision_encoder) {
  443. LOG_TEE("This gguf file seems to have no vision encoder\n");
  444. return nullptr;
  445. }
  446. const auto & model = ctx->vision_model;
  447. const auto & hparams = model.hparams;
  448. const int image_size = hparams.image_size;
  449. const int patch_size = hparams.patch_size;
  450. const int num_patches = ((image_size / patch_size) * (image_size / patch_size));
  451. const int num_patches_per_side = image_size / patch_size; GGML_UNUSED(num_patches_per_side);
  452. const int num_positions = num_patches + (ctx->has_class_embedding ? 1 : 0);
  453. const int hidden_size = hparams.hidden_size;
  454. const int n_head = hparams.n_head;
  455. const int d_head = hidden_size / n_head;
  456. const int n_layer = hparams.n_layer;
  457. const float eps = hparams.eps;
  458. const int batch_size = imgs->size;
  459. if (ctx->has_llava_projector) {
  460. GGML_ASSERT(batch_size == 1);
  461. }
  462. struct ggml_init_params params = {
  463. /*.mem_size =*/ ctx->buf_compute_meta.size(),
  464. /*.mem_buffer =*/ ctx->buf_compute_meta.data(),
  465. /*.no_alloc =*/ true,
  466. };
  467. struct ggml_context * ctx0 = ggml_init(params);
  468. struct ggml_cgraph * gf = ggml_new_graph(ctx0);
  469. struct ggml_tensor * inp_raw = ggml_new_tensor_4d(ctx0, GGML_TYPE_F32, image_size, image_size, 3, batch_size);
  470. ggml_set_name(inp_raw, "inp_raw");
  471. ggml_set_input(inp_raw);
  472. struct ggml_tensor * inp = ggml_conv_2d(ctx0, model.patch_embeddings, inp_raw, patch_size, patch_size, 0, 0, 1, 1);
  473. inp = ggml_reshape_3d(ctx0, inp, num_patches, hidden_size, batch_size);
  474. inp = ggml_cont(ctx0, ggml_permute(ctx0, inp, 1, 0, 2, 3));
  475. if (ctx->has_patch_bias) {
  476. // inp = ggml_add(ctx0, inp, ggml_repeat(ctx0, model.patch_bias, inp));
  477. inp = ggml_add(ctx0, inp, model.patch_bias);
  478. }
  479. // concat class_embeddings and patch_embeddings
  480. struct ggml_tensor * embeddings = inp;
  481. if (ctx->has_class_embedding) {
  482. embeddings = ggml_new_tensor_3d(ctx0, GGML_TYPE_F32, hidden_size, num_positions, batch_size);
  483. ggml_set_name(embeddings, "embeddings");
  484. ggml_set_input(embeddings);
  485. embeddings = ggml_acc(ctx0, embeddings, model.class_embedding,
  486. embeddings->nb[1], embeddings->nb[2], embeddings->nb[3], 0);
  487. embeddings = ggml_acc(ctx0, embeddings, inp,
  488. embeddings->nb[1], embeddings->nb[2], embeddings->nb[3], model.class_embedding->nb[1]);
  489. }
  490. struct ggml_tensor * positions = ggml_new_tensor_1d(ctx0, GGML_TYPE_I32, num_positions);
  491. ggml_set_name(positions, "positions");
  492. ggml_set_input(positions);
  493. embeddings =
  494. ggml_add(ctx0, embeddings, ggml_get_rows(ctx0, model.position_embeddings, positions));
  495. // pre-layernorm
  496. if (ctx->has_pre_norm) {
  497. embeddings = ggml_norm(ctx0, embeddings, eps);
  498. ggml_set_name(embeddings, "pre_ln");
  499. embeddings = ggml_add(ctx0, ggml_mul(ctx0, embeddings, model.pre_ln_w), model.pre_ln_b);
  500. }
  501. // loop over layers
  502. for (int il = 0; il < n_layer - 1; il++) {
  503. struct ggml_tensor * cur = embeddings; // embeddings = residual, cur = hidden_states
  504. //const size_t nb_q_w = model.layers[il].q_w->nb[0];
  505. // layernorm1
  506. {
  507. cur = ggml_norm(ctx0, cur, eps);
  508. cur = ggml_add(ctx0, ggml_mul(ctx0, cur, model.layers[il].ln_1_w),
  509. model.layers[il].ln_1_b);
  510. }
  511. // self-attention
  512. {
  513. struct ggml_tensor * Q =
  514. ggml_add(ctx0, ggml_mul_mat(ctx0, model.layers[il].q_w, cur), model.layers[il].q_b);
  515. Q = ggml_scale_inplace(ctx0, Q, 1.0f / sqrt((float)d_head));
  516. Q = ggml_reshape_4d(ctx0, Q, d_head, n_head, num_positions, batch_size);
  517. Q = ggml_cont(ctx0, ggml_permute(ctx0, Q, 0, 2, 1, 3));
  518. Q = ggml_reshape_3d(ctx0, Q, d_head, num_positions, n_head * batch_size);
  519. struct ggml_tensor * K =
  520. ggml_add(ctx0, ggml_mul_mat(ctx0, model.layers[il].k_w, cur), model.layers[il].k_b);
  521. K = ggml_reshape_4d(ctx0, K, d_head, n_head, num_positions, batch_size);
  522. K = ggml_cont(ctx0, ggml_permute(ctx0, K, 0, 2, 1, 3));
  523. K = ggml_reshape_3d(ctx0, K, d_head, num_positions, n_head * batch_size);
  524. struct ggml_tensor * V =
  525. ggml_add(ctx0, ggml_mul_mat(ctx0, model.layers[il].v_w, cur), model.layers[il].v_b);
  526. V = ggml_reshape_4d(ctx0, V, d_head, n_head, num_positions, batch_size);
  527. V = ggml_cont(ctx0, ggml_permute(ctx0, V, 1, 2, 0, 3));
  528. V = ggml_reshape_3d(ctx0, V, num_positions, d_head, n_head * batch_size);
  529. struct ggml_tensor * KQ = ggml_mul_mat(ctx0, K, Q);
  530. KQ = ggml_soft_max_inplace(ctx0, KQ);
  531. struct ggml_tensor * KQV = ggml_mul_mat(ctx0, V, KQ);
  532. KQV = ggml_reshape_4d(ctx0, KQV, d_head, num_positions, n_head, batch_size);
  533. KQV = ggml_permute(ctx0, KQV, 0, 2, 1, 3);
  534. cur = ggml_cont_3d(ctx0, KQV, hidden_size, num_positions, batch_size);
  535. }
  536. // attention output
  537. cur = ggml_add(ctx0, ggml_mul_mat(ctx0, model.layers[il].o_w, cur), model.layers[il].o_b);
  538. // re-add the layer input, e.g., residual
  539. cur = ggml_add(ctx0, cur, embeddings);
  540. embeddings = cur; // embeddings = residual, cur = hidden_states
  541. // layernorm2
  542. {
  543. cur = ggml_norm(ctx0, cur, eps);
  544. cur = ggml_add(ctx0, ggml_mul(ctx0, cur, model.layers[il].ln_2_w), model.layers[il].ln_2_b);
  545. }
  546. cur = ggml_mul_mat(ctx0, model.layers[il].ff_i_w, cur);
  547. cur = ggml_add(ctx0, cur, model.layers[il].ff_i_b);
  548. if (ctx->use_gelu) {
  549. cur = ggml_gelu_inplace(ctx0, cur);
  550. } else {
  551. cur = ggml_gelu_quick_inplace(ctx0, cur);
  552. }
  553. cur = ggml_mul_mat(ctx0, model.layers[il].ff_o_w, cur);
  554. cur = ggml_add(ctx0, cur, model.layers[il].ff_o_b);
  555. // residual 2
  556. cur = ggml_add(ctx0, embeddings, cur);
  557. embeddings = cur;
  558. }
  559. // post-layernorm
  560. if (ctx->has_post_norm) {
  561. embeddings = ggml_norm(ctx0, embeddings, eps);
  562. ggml_set_name(embeddings, "post_ln");
  563. embeddings = ggml_add(ctx0, ggml_mul(ctx0, embeddings, model.post_ln_w), model.post_ln_b);
  564. }
  565. // llava projector
  566. {
  567. embeddings = ggml_reshape_2d(ctx0, embeddings, embeddings->ne[0], embeddings->ne[1]);
  568. struct ggml_tensor * patches = ggml_new_tensor_1d(ctx0, GGML_TYPE_I32, num_patches);
  569. ggml_set_name(patches, "patches");
  570. ggml_set_input(patches);
  571. // shape [1, 576, 1024]
  572. // ne is whcn, ne = [1024, 576, 1, 1]
  573. embeddings = ggml_get_rows(ctx0, embeddings, patches);
  574. // print_tensor_info(embeddings, "embeddings");
  575. // llava projector
  576. if (ctx->proj_type == PROJECTOR_TYPE_MLP) {
  577. embeddings = ggml_mul_mat(ctx0, model.mm_0_w, embeddings);
  578. embeddings = ggml_add(ctx0, embeddings, model.mm_0_b);
  579. embeddings = ggml_gelu(ctx0, embeddings);
  580. embeddings = ggml_mul_mat(ctx0, model.mm_2_w, embeddings);
  581. embeddings = ggml_add(ctx0, embeddings, model.mm_2_b);
  582. } else if (ctx->proj_type == PROJECTOR_TYPE_MLP_NORM) {
  583. embeddings = ggml_mul_mat(ctx0, model.mm_0_w, embeddings);
  584. embeddings = ggml_add(ctx0, embeddings, model.mm_0_b);
  585. // ggml_tensor_printf(embeddings, "mm_0_w",0,true,false);
  586. // First LayerNorm
  587. embeddings = ggml_norm(ctx0, embeddings, eps);
  588. embeddings = ggml_add(ctx0, ggml_mul(ctx0, embeddings, model.mm_1_w),
  589. model.mm_1_b);
  590. // GELU activation
  591. embeddings = ggml_gelu(ctx0, embeddings);
  592. // Second linear layer
  593. embeddings = ggml_mul_mat(ctx0, model.mm_3_w, embeddings);
  594. embeddings = ggml_add(ctx0, embeddings, model.mm_3_b);
  595. // Second LayerNorm
  596. embeddings = ggml_norm(ctx0, embeddings, eps);
  597. embeddings = ggml_add(ctx0, ggml_mul(ctx0, embeddings, model.mm_4_w),
  598. model.mm_4_b);
  599. }
  600. else if (ctx->proj_type == PROJECTOR_TYPE_LDP) {
  601. // MobileVLM projector
  602. int n_patch = 24;
  603. struct ggml_tensor * mlp_1 = ggml_mul_mat(ctx0, model.mm_model_mlp_1_w, embeddings);
  604. mlp_1 = ggml_add(ctx0, mlp_1, model.mm_model_mlp_1_b);
  605. mlp_1 = ggml_gelu(ctx0, mlp_1);
  606. struct ggml_tensor * mlp_3 = ggml_mul_mat(ctx0, model.mm_model_mlp_3_w, mlp_1);
  607. mlp_3 = ggml_add(ctx0, mlp_3, model.mm_model_mlp_3_b);
  608. // mlp_3 shape = [1, 576, 2048], ne = [2048, 576, 1, 1]
  609. // block 1
  610. struct ggml_tensor * block_1 = nullptr;
  611. {
  612. // transpose from [1, 576, 2048] --> [1, 2048, 576] --> [1, 2048, 24, 24]
  613. mlp_3 = ggml_cont(ctx0, ggml_permute(ctx0, mlp_3, 1, 0, 2, 3));
  614. mlp_3 = ggml_reshape_4d(ctx0, mlp_3, n_patch, n_patch, mlp_3->ne[1], mlp_3->ne[2]);
  615. // stride = 1, padding = 1, bias is nullptr
  616. block_1 = ggml_conv_depthwise_2d(ctx0, model.mm_model_block_1_block_0_0_w, mlp_3, 1, 1, 1, 1, 1, 1);
  617. // layer norm
  618. // // block_1 shape = [1, 2048, 24, 24], ne = [24, 24, 2048, 1]
  619. block_1 = ggml_cont(ctx0, ggml_permute(ctx0, block_1, 1, 2, 0, 3));
  620. // block_1 shape = [1, 24, 24, 2048], ne = [2048, 24, 24, 1]
  621. block_1 = ggml_norm(ctx0, block_1, eps);
  622. block_1 = ggml_add(ctx0, ggml_mul(ctx0, block_1, model.mm_model_block_1_block_0_1_w), model.mm_model_block_1_block_0_1_b);
  623. block_1 = ggml_cont(ctx0, ggml_permute(ctx0, block_1, 2, 0, 1, 3));
  624. // block_1 shape = [1, 2048, 24, 24], ne = [24, 24, 2048, 1]
  625. // hardswish
  626. struct ggml_tensor * block_1_hw = ggml_hardswish(ctx0, block_1);
  627. block_1 = ggml_pool_2d(ctx0, block_1_hw, GGML_OP_POOL_AVG, block_1_hw->ne[0], block_1_hw->ne[1], block_1_hw->ne[0], block_1_hw->ne[1], 0, 0);
  628. // block_1 shape = [1, 2048, 1, 1], ne = [1, 1, 2048, 1]
  629. // pointwise conv
  630. block_1 = ggml_reshape_2d(ctx0, block_1, block_1->ne[0]*block_1->ne[1]*block_1->ne[2], block_1->ne[3]);
  631. block_1 = ggml_mul_mat(ctx0, model.mm_model_block_1_block_1_fc1_w, block_1);
  632. block_1 = ggml_add(ctx0, block_1, model.mm_model_block_1_block_1_fc1_b);
  633. block_1 = ggml_relu(ctx0, block_1);
  634. block_1 = ggml_mul_mat(ctx0, model.mm_model_block_1_block_1_fc2_w, block_1);
  635. block_1 = ggml_add(ctx0, block_1, model.mm_model_block_1_block_1_fc2_b);
  636. block_1 = ggml_hardsigmoid(ctx0, block_1);
  637. // block_1_hw shape = [1, 2048, 24, 24], ne = [24, 24, 2048, 1], block_1 shape = [1, 2048], ne = [2048, 1, 1, 1]
  638. block_1 = ggml_reshape_4d(ctx0, block_1, 1, 1, block_1->ne[0], block_1->ne[1]);
  639. block_1 = ggml_mul(ctx0, block_1_hw, block_1);
  640. int w = block_1->ne[0], h = block_1->ne[1];
  641. block_1 = ggml_reshape_3d(ctx0, block_1, w*h, block_1->ne[2], block_1->ne[3]);
  642. block_1 = ggml_cont(ctx0, ggml_permute(ctx0, block_1, 1, 0, 2, 3));
  643. // block_1 shape = [1, 24*24, 2048], ne = [24*24, 2048, 1]
  644. block_1 = ggml_mul_mat(ctx0, model.mm_model_block_1_block_2_0_w, block_1);
  645. block_1 = ggml_reshape_4d(ctx0, block_1, block_1->ne[0], w, h, block_1->ne[3]);
  646. // block_1 shape = [1, 24, 24, 2048], ne = [2048, 24, 24, 1]
  647. block_1 = ggml_norm(ctx0, block_1, eps);
  648. block_1 = ggml_add(ctx0, ggml_mul(ctx0, block_1, model.mm_model_block_1_block_2_1_w), model.mm_model_block_1_block_2_1_b);
  649. block_1 = ggml_cont(ctx0, ggml_permute(ctx0, block_1, 2, 0, 1, 3));
  650. // block1 shape = [1, 2048, 24, 24], ne = [24, 24, 2048, 1]
  651. // residual
  652. block_1 = ggml_add(ctx0, mlp_3, block_1);
  653. }
  654. // block_2
  655. {
  656. // stride = 2
  657. block_1 = ggml_conv_depthwise_2d(ctx0, model.mm_model_block_2_block_0_0_w, block_1, 2, 2, 1, 1, 1, 1);
  658. // block_1 shape = [1, 2048, 12, 12], ne = [12, 12, 2048, 1]
  659. // layer norm
  660. block_1 = ggml_cont(ctx0, ggml_permute(ctx0, block_1, 1, 2, 0, 3));
  661. // block_1 shape = [1, 12, 12, 2048], ne = [2048, 12, 12, 1]
  662. block_1 = ggml_norm(ctx0, block_1, eps);
  663. block_1 = ggml_add(ctx0, ggml_mul(ctx0, block_1, model.mm_model_block_2_block_0_1_w), model.mm_model_block_2_block_0_1_b);
  664. block_1 = ggml_cont(ctx0, ggml_permute(ctx0, block_1, 2, 0, 1, 3));
  665. // block_1 shape = [1, 2048, 12, 12], ne = [12, 12, 2048, 1]
  666. // hardswish
  667. struct ggml_tensor * block_1_hw = ggml_hardswish(ctx0, block_1);
  668. // not sure the parameters is right for globalAvgPooling
  669. block_1 = ggml_pool_2d(ctx0, block_1_hw, GGML_OP_POOL_AVG, block_1_hw->ne[0], block_1_hw->ne[1], block_1_hw->ne[0], block_1_hw->ne[1], 0, 0);
  670. // block_1 shape = [1, 2048, 1, 1], ne = [1, 1, 2048, 1]
  671. // pointwise conv
  672. block_1 = ggml_reshape_2d(ctx0, block_1, block_1->ne[0]*block_1->ne[1]*block_1->ne[2], block_1->ne[3]);
  673. block_1 = ggml_mul_mat(ctx0, model.mm_model_block_2_block_1_fc1_w, block_1);
  674. block_1 = ggml_add(ctx0, block_1, model.mm_model_block_2_block_1_fc1_b);
  675. block_1 = ggml_relu(ctx0, block_1);
  676. block_1 = ggml_mul_mat(ctx0, model.mm_model_block_2_block_1_fc2_w, block_1);
  677. block_1 = ggml_add(ctx0, block_1, model.mm_model_block_2_block_1_fc2_b);
  678. block_1 = ggml_hardsigmoid(ctx0, block_1);
  679. // block_1_hw shape = [1, 2048, 12, 12], ne = [12, 12, 2048, 1], block_1 shape = [1, 2048, 1, 1], ne = [1, 1, 2048, 1]
  680. block_1 = ggml_reshape_4d(ctx0, block_1, 1, 1, block_1->ne[0], block_1->ne[1]);
  681. block_1 = ggml_mul(ctx0, block_1_hw, block_1);
  682. int w = block_1->ne[0], h = block_1->ne[1];
  683. block_1 = ggml_reshape_3d(ctx0, block_1, w*h, block_1->ne[2], block_1->ne[3]);
  684. block_1 = ggml_cont(ctx0, ggml_permute(ctx0, block_1, 1, 0, 2, 3));
  685. // block_1 shape = [1, 24*24, 2048], ne = [24*24, 2048, 1]
  686. block_1 = ggml_mul_mat(ctx0, model.mm_model_block_2_block_2_0_w, block_1);
  687. block_1 = ggml_reshape_4d(ctx0, block_1, block_1->ne[0], w, h, block_1->ne[3]);
  688. // block_1 shape = [1, 12, 12, 2048], ne = [2048, 12, 12, 1]
  689. block_1 = ggml_norm(ctx0, block_1, eps);
  690. block_1 = ggml_add(ctx0, ggml_mul(ctx0, block_1, model.mm_model_block_2_block_2_1_w), model.mm_model_block_2_block_2_1_b);
  691. block_1 = ggml_reshape_3d(ctx0, block_1, block_1->ne[0], block_1->ne[1] * block_1->ne[2], block_1->ne[3]);
  692. // block_1 shape = [1, 144, 2048], ne = [2048, 144, 1]
  693. }
  694. embeddings = block_1;
  695. }
  696. else if (ctx->proj_type == PROJECTOR_TYPE_LDPV2)
  697. {
  698. int n_patch = 24;
  699. struct ggml_tensor * mlp_0 = ggml_mul_mat(ctx0, model.mm_model_mlp_0_w, embeddings);
  700. mlp_0 = ggml_add(ctx0, mlp_0, model.mm_model_mlp_0_b);
  701. mlp_0 = ggml_gelu(ctx0, mlp_0);
  702. struct ggml_tensor * mlp_2 = ggml_mul_mat(ctx0, model.mm_model_mlp_2_w, mlp_0);
  703. mlp_2 = ggml_add(ctx0, mlp_2, model.mm_model_mlp_2_b);
  704. // mlp_2 ne = [2048, 576, 1, 1]
  705. // // AVG Pool Layer 2*2, strides = 2
  706. mlp_2 = ggml_cont(ctx0, ggml_permute(ctx0, mlp_2, 1, 0, 2, 3));
  707. // mlp_2 ne = [576, 2048, 1, 1]
  708. mlp_2 = ggml_reshape_4d(ctx0, mlp_2, n_patch, n_patch, mlp_2->ne[1], mlp_2->ne[2]);
  709. // mlp_2 ne [24, 24, 2048, 1]
  710. mlp_2 = ggml_pool_2d(ctx0, mlp_2, GGML_OP_POOL_AVG, 2, 2, 2, 2, 0, 0);
  711. // weight ne = [3, 3, 2048, 1]
  712. struct ggml_tensor * peg_0 = ggml_conv_depthwise_2d(ctx0, model.mm_model_peg_0_w, mlp_2, 1, 1, 1, 1, 1, 1);
  713. peg_0 = ggml_cont(ctx0, ggml_permute(ctx0, peg_0, 1, 2, 0, 3));
  714. peg_0 = ggml_add(ctx0, peg_0, model.mm_model_peg_0_b);
  715. mlp_2 = ggml_cont(ctx0, ggml_permute(ctx0, mlp_2, 1, 2, 0, 3));
  716. peg_0 = ggml_add(ctx0, peg_0, mlp_2);
  717. peg_0 = ggml_reshape_3d(ctx0, peg_0, peg_0->ne[0], peg_0->ne[1] * peg_0->ne[2], peg_0->ne[3]);
  718. embeddings = peg_0;
  719. }
  720. else {
  721. GGML_ASSERT(false);
  722. }
  723. }
  724. // build the graph
  725. ggml_build_forward_expand(gf, embeddings);
  726. ggml_free(ctx0);
  727. return gf;
  728. }
  729. // read and create ggml_context containing the tensors and their data
  730. struct clip_ctx * clip_model_load(const char * fname, const int verbosity = 1) {
  731. struct ggml_context * meta = NULL;
  732. struct gguf_init_params params = {
  733. /*.no_alloc = */ true,
  734. /*.ctx = */ &meta,
  735. };
  736. struct gguf_context * ctx = gguf_init_from_file(fname, params);
  737. if (!ctx) {
  738. throw std::runtime_error(format("%s: failed to load CLIP model from %s. Does this file exist?\n", __func__, fname));
  739. }
  740. if (verbosity >= 1) {
  741. const int n_tensors = gguf_get_n_tensors(ctx);
  742. const int n_kv = gguf_get_n_kv(ctx);
  743. const int ftype = get_u32(ctx, KEY_FTYPE);
  744. const std::string ftype_str = get_ftype(ftype);
  745. const int idx_desc = get_key_idx(ctx, KEY_DESCRIPTION);
  746. const std::string description = gguf_get_val_str(ctx, idx_desc);
  747. const int idx_name = gguf_find_key(ctx, KEY_NAME);
  748. if (idx_name != -1) { // make name optional temporarily as some of the uploaded models missing it due to a bug
  749. const std::string name = gguf_get_val_str(ctx, idx_name);
  750. LOG_TEE("%s: model name: %s\n", __func__, name.c_str());
  751. }
  752. LOG_TEE("%s: description: %s\n", __func__, description.c_str());
  753. LOG_TEE("%s: GGUF version: %d\n", __func__, gguf_get_version(ctx));
  754. LOG_TEE("%s: alignment: %zu\n", __func__, gguf_get_alignment(ctx));
  755. LOG_TEE("%s: n_tensors: %d\n", __func__, n_tensors);
  756. LOG_TEE("%s: n_kv: %d\n", __func__, n_kv);
  757. LOG_TEE("%s: ftype: %s\n", __func__, ftype_str.c_str());
  758. LOG_TEE("\n");
  759. }
  760. const int n_tensors = gguf_get_n_tensors(ctx);
  761. // kv
  762. const int n_kv = gguf_get_n_kv(ctx);
  763. LOG_TEE("%s: loaded meta data with %d key-value pairs and %d tensors from %s\n",
  764. __func__, n_kv, n_tensors, fname);
  765. {
  766. std::map<enum ggml_type, uint32_t> n_type;
  767. for (int i = 0; i < n_tensors; i++) {
  768. enum ggml_type type = gguf_get_tensor_type(ctx, i);
  769. n_type[type]++;
  770. }
  771. LOG_TEE("%s: Dumping metadata keys/values. Note: KV overrides do not apply in this output.\n", __func__);
  772. for (int i = 0; i < n_kv; i++) {
  773. const char * name = gguf_get_key(ctx, i);
  774. const enum gguf_type type = gguf_get_kv_type(ctx, i);
  775. const std::string type_name =
  776. type == GGUF_TYPE_ARRAY
  777. ? format("%s[%s,%d]", gguf_type_name(type), gguf_type_name(gguf_get_arr_type(ctx, i)), gguf_get_arr_n(ctx, i))
  778. : gguf_type_name(type);
  779. std::string value = gguf_kv_to_str(ctx, i);
  780. const size_t MAX_VALUE_LEN = 40;
  781. if (value.size() > MAX_VALUE_LEN) {
  782. value = format("%s...", value.substr(0, MAX_VALUE_LEN - 3).c_str());
  783. }
  784. replace_all(value, "\n", "\\n");
  785. LOG_TEE("%s: - kv %3d: %42s %-16s = %s\n", __func__, i, name, type_name.c_str(), value.c_str());
  786. }
  787. // print type counts
  788. for (auto & kv : n_type) {
  789. if (kv.second == 0) {
  790. continue;
  791. }
  792. LOG_TEE("%s: - type %4s: %4d tensors\n", __func__, ggml_type_name(kv.first), kv.second);
  793. }
  794. }
  795. // data
  796. size_t model_size = 0;
  797. {
  798. for (int i = 0; i < n_tensors; ++i) {
  799. const char * name = gguf_get_tensor_name(ctx, i);
  800. const size_t offset = gguf_get_tensor_offset(ctx, i);
  801. enum ggml_type type = gguf_get_tensor_type(ctx, i);
  802. struct ggml_tensor * cur = ggml_get_tensor(meta, name);
  803. size_t tensor_size = ggml_nbytes(cur);
  804. model_size += tensor_size;
  805. if (verbosity >= 3) {
  806. LOG_TEE("%s: tensor[%d]: n_dims = %d, name = %s, tensor_size=%zu, offset=%zu, shape:[%" PRIu64 ", %" PRIu64 ", %" PRIu64 ", %" PRIu64 "], type = %s\n",
  807. __func__, i, ggml_n_dims(cur), cur->name, tensor_size, offset, cur->ne[0], cur->ne[1], cur->ne[2], cur->ne[3], ggml_type_name(type));
  808. }
  809. }
  810. }
  811. clip_ctx * new_clip = new clip_ctx;
  812. // update projector type
  813. {
  814. int idx = gguf_find_key(ctx, KEY_PROJ_TYPE);
  815. if (idx != -1) {
  816. const std::string proj_type = gguf_get_val_str(ctx, idx);
  817. new_clip->proj_type = clip_projector_type_from_string(proj_type);
  818. } else {
  819. new_clip->proj_type = PROJECTOR_TYPE_MLP;
  820. }
  821. if (new_clip->proj_type == PROJECTOR_TYPE_MLP) {
  822. if (gguf_find_tensor(ctx, format(TN_LLAVA_PROJ, 3, "weight").c_str()) != -1) {
  823. new_clip->proj_type = PROJECTOR_TYPE_MLP_NORM;
  824. }
  825. }
  826. }
  827. #ifdef GGML_USE_CUDA
  828. new_clip->backend = ggml_backend_cuda_init(0);
  829. LOG_TEE("%s: CLIP using CUDA backend\n", __func__);
  830. #endif
  831. #ifdef GGML_USE_METAL
  832. new_clip->backend = ggml_backend_metal_init();
  833. LOG_TEE("%s: CLIP using Metal backend\n", __func__);
  834. #endif
  835. if (!new_clip->backend) {
  836. new_clip->backend = ggml_backend_cpu_init();
  837. LOG_TEE("%s: CLIP using CPU backend\n", __func__);
  838. }
  839. // model size and capabilities
  840. {
  841. int idx = get_key_idx(ctx, KEY_HAS_TEXT_ENC);
  842. new_clip->has_text_encoder = gguf_get_val_bool(ctx, idx);
  843. idx = get_key_idx(ctx, KEY_HAS_VIS_ENC);
  844. new_clip->has_vision_encoder = gguf_get_val_bool(ctx, idx);
  845. idx = gguf_find_key(ctx, KEY_HAS_LLAVA_PROJ);
  846. if (idx != -1) {
  847. new_clip->has_llava_projector = gguf_get_val_bool(ctx, idx);
  848. }
  849. GGML_ASSERT(new_clip->has_llava_projector); // see monatis/clip.cpp for image and/or text encoding for semantic search
  850. GGML_ASSERT(new_clip->has_vision_encoder);
  851. GGML_ASSERT(!new_clip->has_text_encoder);
  852. idx = get_key_idx(ctx, KEY_USE_GELU);
  853. new_clip->use_gelu = gguf_get_val_bool(ctx, idx);
  854. if (verbosity >= 1) {
  855. LOG_TEE("%s: text_encoder: %d\n", __func__, new_clip->has_text_encoder);
  856. LOG_TEE("%s: vision_encoder: %d\n", __func__, new_clip->has_vision_encoder);
  857. LOG_TEE("%s: llava_projector: %d\n", __func__, new_clip->has_llava_projector);
  858. LOG_TEE("%s: model size: %.2f MB\n", __func__, model_size / 1024.0 / 1024.0);
  859. LOG_TEE("%s: metadata size: %.2f MB\n", __func__, ggml_get_mem_size(meta) / 1024.0 / 1024.0);
  860. }
  861. }
  862. LOG_TEE("%s: params backend buffer size = % 6.2f MB (%i tensors)\n", __func__, model_size / (1024.0 * 1024.0), n_tensors);
  863. // load tensors
  864. {
  865. std::vector<uint8_t> read_buf;
  866. struct ggml_init_params params = {
  867. /*.mem_size =*/ (n_tensors + 1) * ggml_tensor_overhead(),
  868. /*.mem_buffer =*/ NULL,
  869. /*.no_alloc =*/ true,
  870. };
  871. new_clip->ctx_data = ggml_init(params);
  872. if (!new_clip->ctx_data) {
  873. LOG_TEE("%s: ggml_init() failed\n", __func__);
  874. clip_free(new_clip);
  875. gguf_free(ctx);
  876. return nullptr;
  877. }
  878. auto fin = std::ifstream(fname, std::ios::binary);
  879. if (!fin) {
  880. LOG_TEE("cannot open model file for loading tensors\n");
  881. clip_free(new_clip);
  882. gguf_free(ctx);
  883. return nullptr;
  884. }
  885. // add tensors to context
  886. for (int i = 0; i < n_tensors; ++i) {
  887. const char * name = gguf_get_tensor_name(ctx, i);
  888. struct ggml_tensor * t = ggml_get_tensor(meta, name);
  889. struct ggml_tensor * cur = ggml_dup_tensor(new_clip->ctx_data, t);
  890. ggml_set_name(cur, name);
  891. }
  892. // alloc memory and offload data
  893. new_clip->params_buffer = ggml_backend_alloc_ctx_tensors(new_clip->ctx_data, new_clip->backend);
  894. for (int i = 0; i < n_tensors; ++i) {
  895. const char * name = gguf_get_tensor_name(ctx, i);
  896. struct ggml_tensor * cur = ggml_get_tensor(new_clip->ctx_data, name);
  897. const size_t offset = gguf_get_data_offset(ctx) + gguf_get_tensor_offset(ctx, i);
  898. fin.seekg(offset, std::ios::beg);
  899. if (!fin) {
  900. LOG_TEE("%s: failed to seek for tensor %s\n", __func__, name);
  901. clip_free(new_clip);
  902. gguf_free(ctx);
  903. return nullptr;
  904. }
  905. int num_bytes = ggml_nbytes(cur);
  906. if (ggml_backend_buffer_is_host(new_clip->params_buffer)) {
  907. // for the CPU and Metal backend, we can read directly into the tensor
  908. fin.read(reinterpret_cast<char *>(cur->data), num_bytes);
  909. } else {
  910. // read into a temporary buffer first, then copy to device memory
  911. read_buf.resize(num_bytes);
  912. fin.read(reinterpret_cast<char *>(read_buf.data()), num_bytes);
  913. ggml_backend_tensor_set(cur, read_buf.data(), 0, num_bytes);
  914. }
  915. }
  916. fin.close();
  917. }
  918. // vision model
  919. if (new_clip->has_vision_encoder) {
  920. // load vision model
  921. auto & vision_model = new_clip->vision_model;
  922. auto & hparams = vision_model.hparams;
  923. hparams.hidden_size = get_u32(ctx, format(KEY_N_EMBD, "vision"));
  924. hparams.n_head = get_u32(ctx, format(KEY_N_HEAD, "vision"));
  925. hparams.n_intermediate = get_u32(ctx, format(KEY_N_FF, "vision"));
  926. hparams.n_layer = get_u32(ctx, format(KEY_N_BLOCK, "vision"));
  927. hparams.image_size = get_u32(ctx, KEY_IMAGE_SIZE);
  928. hparams.patch_size = get_u32(ctx, KEY_PATCH_SIZE);
  929. hparams.projection_dim = get_u32(ctx, format(KEY_PROJ_DIM, "vision"));
  930. hparams.eps = get_f32(ctx, format(KEY_LAYER_NORM_EPS, "vision"));
  931. try {
  932. int idx = get_key_idx(ctx, KEY_IMAGE_GRID_PINPOINTS);
  933. int n = gguf_get_arr_n(ctx, idx);
  934. const int32_t * pinpoints = (const int32_t *)gguf_get_arr_data(ctx, idx);
  935. for (int i = 0; i < 32 && i < n && pinpoints[i] != 0; ++i) {
  936. hparams.image_grid_pinpoints[i] = pinpoints[i];
  937. }
  938. if (n < 32)
  939. hparams.image_grid_pinpoints[n] = 0;
  940. } catch (std::runtime_error & /*e*/) {
  941. hparams.image_grid_pinpoints[0]=0;
  942. }
  943. try {
  944. int idx = get_key_idx(ctx, KEY_MM_PATCH_MERGE_TYPE);
  945. strcpy(hparams.mm_patch_merge_type, gguf_get_val_str(ctx, idx));
  946. } catch (std::runtime_error & /*e*/) {
  947. strcpy(hparams.mm_patch_merge_type, "flat");
  948. }
  949. try {
  950. hparams.image_crop_resolution = get_u32(ctx, KEY_IMAGE_CROP_RESOLUTION); // llava-1.6
  951. } catch(const std::exception& /*e*/) {
  952. hparams.image_crop_resolution = hparams.image_size;
  953. }
  954. int idx_mean = get_key_idx(ctx, KEY_IMAGE_MEAN);
  955. int idx_std = get_key_idx(ctx, KEY_IMAGE_STD);
  956. const float * mean_data = (const float *)gguf_get_arr_data(ctx, idx_mean);
  957. const float * std_data = (const float *)gguf_get_arr_data(ctx, idx_std);
  958. for (int i = 0; i < 3; ++i) {
  959. new_clip->image_mean[i] = mean_data[i];
  960. new_clip->image_std[i] = std_data[i];
  961. }
  962. if (verbosity >= 2) {
  963. LOG_TEE("\n%s: vision model hparams\n", __func__);
  964. LOG_TEE("image_size %d\n", hparams.image_size);
  965. LOG_TEE("patch_size %d\n", hparams.patch_size);
  966. LOG_TEE("v_hidden_size %d\n", hparams.hidden_size);
  967. LOG_TEE("v_n_intermediate %d\n", hparams.n_intermediate);
  968. LOG_TEE("v_projection_dim %d\n", hparams.projection_dim);
  969. LOG_TEE("v_n_head %d\n", hparams.n_head);
  970. LOG_TEE("v_n_layer %d\n", hparams.n_layer);
  971. LOG_TEE("v_eps %f\n", hparams.eps);
  972. LOG_TEE("v_image_mean %f %f %f\n", new_clip->image_mean[0], new_clip->image_mean[1], new_clip->image_mean[2]);
  973. LOG_TEE("v_image_std %f %f %f\n", new_clip->image_std[0], new_clip->image_std[1], new_clip->image_std[2]);
  974. LOG_TEE("v_image_grid_pinpoints: ");
  975. for (int i = 0; i < 32 && (hparams.image_grid_pinpoints[i] != 0); ++i) {
  976. LOG_TEE("%d ", hparams.image_grid_pinpoints[i]);
  977. }
  978. LOG_TEE("\n");
  979. LOG_TEE("v_mm_patch_merge_type: %s\n", hparams.mm_patch_merge_type);
  980. }
  981. try {
  982. vision_model.class_embedding = get_tensor(new_clip->ctx_data, TN_CLASS_EMBD);
  983. new_clip->has_class_embedding = true;
  984. } catch (const std::exception& /*e*/) {
  985. new_clip->has_class_embedding = false;
  986. }
  987. try {
  988. vision_model.pre_ln_w = get_tensor(new_clip->ctx_data, format(TN_LN_PRE, "v", "weight"));
  989. vision_model.pre_ln_b = get_tensor(new_clip->ctx_data, format(TN_LN_PRE, "v", "bias"));
  990. new_clip->has_pre_norm = true;
  991. } catch (std::exception & /*e*/) {
  992. new_clip->has_pre_norm = false;
  993. }
  994. try {
  995. vision_model.post_ln_w = get_tensor(new_clip->ctx_data, format(TN_LN_POST, "v", "weight"));
  996. vision_model.post_ln_b = get_tensor(new_clip->ctx_data, format(TN_LN_POST, "v", "bias"));
  997. new_clip->has_post_norm = true;
  998. } catch (std::exception & /*e*/) {
  999. new_clip->has_post_norm = false;
  1000. }
  1001. try {
  1002. vision_model.patch_bias = get_tensor(new_clip->ctx_data, TN_PATCH_BIAS);
  1003. new_clip->has_patch_bias = true;
  1004. } catch (std::exception & /*e*/) {
  1005. new_clip->has_patch_bias = false;
  1006. }
  1007. try {
  1008. vision_model.patch_embeddings = get_tensor(new_clip->ctx_data, TN_PATCH_EMBD);
  1009. vision_model.position_embeddings = get_tensor(new_clip->ctx_data, format(TN_POS_EMBD, "v"));
  1010. } catch(const std::exception& /*e*/) {
  1011. LOG_TEE("%s: failed to load vision model tensors\n", __func__);
  1012. }
  1013. // LLaVA projection
  1014. if (new_clip->proj_type == PROJECTOR_TYPE_MLP || new_clip->proj_type == PROJECTOR_TYPE_MLP_NORM) {
  1015. vision_model.mm_0_w = get_tensor(new_clip->ctx_data, format(TN_LLAVA_PROJ, 0, "weight"));
  1016. vision_model.mm_0_b = get_tensor(new_clip->ctx_data, format(TN_LLAVA_PROJ, 0, "bias"));
  1017. try {
  1018. // Yi-type llava
  1019. vision_model.mm_1_w = get_tensor(new_clip->ctx_data, format(TN_LLAVA_PROJ, 1, "weight"));
  1020. vision_model.mm_1_b = get_tensor(new_clip->ctx_data, format(TN_LLAVA_PROJ, 1, "bias"));
  1021. } catch (std::runtime_error & /*e*/) { }
  1022. try {
  1023. // missing in Yi-type llava
  1024. vision_model.mm_2_w = get_tensor(new_clip->ctx_data, format(TN_LLAVA_PROJ, 2, "weight"));
  1025. vision_model.mm_2_b = get_tensor(new_clip->ctx_data, format(TN_LLAVA_PROJ, 2, "bias"));
  1026. } catch (std::runtime_error & /*e*/) { }
  1027. try {
  1028. // Yi-type llava
  1029. vision_model.mm_3_w = get_tensor(new_clip->ctx_data, format(TN_LLAVA_PROJ, 3, "weight"));
  1030. vision_model.mm_3_b = get_tensor(new_clip->ctx_data, format(TN_LLAVA_PROJ, 3, "bias"));
  1031. } catch (std::runtime_error & /*e*/) { }
  1032. try {
  1033. // Yi-type llava
  1034. vision_model.mm_4_w = get_tensor(new_clip->ctx_data, format(TN_LLAVA_PROJ, 4, "weight"));
  1035. vision_model.mm_4_b = get_tensor(new_clip->ctx_data, format(TN_LLAVA_PROJ, 4, "bias"));
  1036. } catch (std::runtime_error & /*e*/) { }
  1037. try {
  1038. vision_model.image_newline = get_tensor(new_clip->ctx_data, TN_IMAGE_NEWLINE);
  1039. // LOG_TEE("%s: image_newline tensor (llava-1.6) found\n", __func__);
  1040. } catch (std::runtime_error & /*e*/) { }
  1041. } else if (new_clip->proj_type == PROJECTOR_TYPE_LDP) {
  1042. // MobileVLM projection
  1043. vision_model.mm_model_mlp_1_w = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_MLP, 1, "weight"));
  1044. vision_model.mm_model_mlp_1_b = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_MLP, 1, "bias"));
  1045. vision_model.mm_model_mlp_3_w = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_MLP, 3, "weight"));
  1046. vision_model.mm_model_mlp_3_b = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_MLP, 3, "bias"));
  1047. vision_model.mm_model_block_1_block_0_0_w = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_BLOCK, 1, 0, "0.weight"));
  1048. vision_model.mm_model_block_1_block_0_1_w = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_BLOCK, 1, 0, "1.weight"));
  1049. vision_model.mm_model_block_1_block_0_1_b = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_BLOCK, 1, 0, "1.bias"));
  1050. vision_model.mm_model_block_1_block_1_fc1_w = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_BLOCK, 1, 1, "fc1.weight"));
  1051. vision_model.mm_model_block_1_block_1_fc1_b = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_BLOCK, 1, 1, "fc1.bias"));
  1052. vision_model.mm_model_block_1_block_1_fc2_w = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_BLOCK, 1, 1, "fc2.weight"));
  1053. vision_model.mm_model_block_1_block_1_fc2_b = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_BLOCK, 1, 1, "fc2.bias"));
  1054. vision_model.mm_model_block_1_block_2_0_w = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_BLOCK, 1, 2, "0.weight"));
  1055. vision_model.mm_model_block_1_block_2_1_w = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_BLOCK, 1, 2, "1.weight"));
  1056. vision_model.mm_model_block_1_block_2_1_b = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_BLOCK, 1, 2, "1.bias"));
  1057. vision_model.mm_model_block_2_block_0_0_w = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_BLOCK, 2, 0, "0.weight"));
  1058. vision_model.mm_model_block_2_block_0_1_w = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_BLOCK, 2, 0, "1.weight"));
  1059. vision_model.mm_model_block_2_block_0_1_b = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_BLOCK, 2, 0, "1.bias"));
  1060. vision_model.mm_model_block_2_block_1_fc1_w = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_BLOCK, 2, 1, "fc1.weight"));
  1061. vision_model.mm_model_block_2_block_1_fc1_b = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_BLOCK, 2, 1, "fc1.bias"));
  1062. vision_model.mm_model_block_2_block_1_fc2_w = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_BLOCK, 2, 1, "fc2.weight"));
  1063. vision_model.mm_model_block_2_block_1_fc2_b = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_BLOCK, 2, 1, "fc2.bias"));
  1064. vision_model.mm_model_block_2_block_2_0_w = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_BLOCK, 2, 2, "0.weight"));
  1065. vision_model.mm_model_block_2_block_2_1_w = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_BLOCK, 2, 2, "1.weight"));
  1066. vision_model.mm_model_block_2_block_2_1_b = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_BLOCK, 2, 2, "1.bias"));
  1067. }
  1068. else if (new_clip->proj_type == PROJECTOR_TYPE_LDPV2)
  1069. {
  1070. // MobilVLM_V2 projection
  1071. vision_model.mm_model_mlp_0_w = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_MLP, 0, "weight"));
  1072. vision_model.mm_model_mlp_0_b = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_MLP, 0, "bias"));
  1073. vision_model.mm_model_mlp_2_w = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_MLP, 2, "weight"));
  1074. vision_model.mm_model_mlp_2_b = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_MLP, 2, "bias"));
  1075. vision_model.mm_model_peg_0_w = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_PEG, 0, "weight"));
  1076. vision_model.mm_model_peg_0_b = get_tensor(new_clip->ctx_data, format(TN_MVLM_PROJ_PEG, 0, "bias"));
  1077. }
  1078. else {
  1079. std::string proj_type = PROJECTOR_TYPE_NAMES[new_clip->proj_type];
  1080. throw std::runtime_error(format("%s: don't support projector with: %s currently\n", __func__, proj_type.c_str()));
  1081. }
  1082. vision_model.layers.resize(hparams.n_layer);
  1083. for (int il = 0; il < hparams.n_layer; ++il) {
  1084. auto & layer = vision_model.layers[il];
  1085. layer.k_w = get_tensor(new_clip->ctx_data, format(TN_ATTN_K, "v", il, "weight"));
  1086. layer.q_w = get_tensor(new_clip->ctx_data, format(TN_ATTN_Q, "v", il, "weight"));
  1087. layer.v_w = get_tensor(new_clip->ctx_data, format(TN_ATTN_V, "v", il, "weight"));
  1088. layer.o_w = get_tensor(new_clip->ctx_data, format(TN_ATTN_OUTPUT, "v", il, "weight"));
  1089. layer.ln_1_w = get_tensor(new_clip->ctx_data, format(TN_LN_1, "v", il, "weight"));
  1090. layer.ln_2_w = get_tensor(new_clip->ctx_data, format(TN_LN_2, "v", il, "weight"));
  1091. layer.ff_i_w = get_tensor(new_clip->ctx_data, format(TN_FFN_DOWN, "v", il, "weight"));
  1092. layer.ff_o_w = get_tensor(new_clip->ctx_data, format(TN_FFN_UP, "v", il, "weight"));
  1093. layer.k_b = get_tensor(new_clip->ctx_data, format(TN_ATTN_K, "v", il, "bias"));
  1094. layer.q_b = get_tensor(new_clip->ctx_data, format(TN_ATTN_Q, "v", il, "bias"));
  1095. layer.v_b = get_tensor(new_clip->ctx_data, format(TN_ATTN_V, "v", il, "bias"));
  1096. layer.o_b = get_tensor(new_clip->ctx_data, format(TN_ATTN_OUTPUT, "v", il, "bias"));
  1097. layer.ln_1_b = get_tensor(new_clip->ctx_data, format(TN_LN_1, "v", il, "bias"));
  1098. layer.ln_2_b = get_tensor(new_clip->ctx_data, format(TN_LN_2, "v", il, "bias"));
  1099. layer.ff_i_b = get_tensor(new_clip->ctx_data, format(TN_FFN_DOWN, "v", il, "bias"));
  1100. layer.ff_o_b = get_tensor(new_clip->ctx_data, format(TN_FFN_UP, "v", il, "bias"));
  1101. }
  1102. }
  1103. ggml_free(meta);
  1104. new_clip->ctx_gguf = ctx;
  1105. // measure mem requirement and allocate
  1106. {
  1107. new_clip->buf_compute_meta.resize(GGML_DEFAULT_GRAPH_SIZE * ggml_tensor_overhead() + ggml_graph_overhead());
  1108. new_clip->compute_alloc = ggml_gallocr_new(ggml_backend_get_default_buffer_type(new_clip->backend));
  1109. clip_image_f32_batch batch;
  1110. batch.size = 1;
  1111. ggml_cgraph * gf = clip_image_build_graph(new_clip, &batch);
  1112. ggml_gallocr_reserve(new_clip->compute_alloc, gf);
  1113. size_t compute_memory_buffer_size = ggml_gallocr_get_buffer_size(new_clip->compute_alloc, 0);
  1114. LOG_TEE("%s: compute allocated memory: %.2f MB\n", __func__, compute_memory_buffer_size /1024.0/1024.0);
  1115. }
  1116. return new_clip;
  1117. }
  1118. struct clip_image_u8 * clip_image_u8_init() {
  1119. return new clip_image_u8();
  1120. }
  1121. struct clip_image_f32 * clip_image_f32_init() {
  1122. return new clip_image_f32();
  1123. }
  1124. void clip_image_u8_free(struct clip_image_u8 * img) { delete img; }
  1125. void clip_image_f32_free(struct clip_image_f32 * img) { delete img; }
  1126. void clip_image_u8_batch_free(struct clip_image_u8_batch * batch) {
  1127. if (batch->size > 0) {
  1128. delete[] batch->data;
  1129. batch->size = 0;
  1130. }
  1131. }
  1132. void clip_image_f32_batch_free(struct clip_image_f32_batch * batch) {
  1133. if (batch->size > 0) {
  1134. delete[] batch->data;
  1135. batch->size = 0;
  1136. }
  1137. }
  1138. static void build_clip_img_from_data(const stbi_uc * data, int nx, int ny, clip_image_u8 * img) {
  1139. img->nx = nx;
  1140. img->ny = ny;
  1141. img->buf.resize(3 * nx * ny);
  1142. memcpy(img->buf.data(), data, img->buf.size());
  1143. }
  1144. bool clip_image_load_from_file(const char * fname, clip_image_u8 * img) {
  1145. int nx, ny, nc;
  1146. auto * data = stbi_load(fname, &nx, &ny, &nc, 3);
  1147. if (!data) {
  1148. LOG_TEE("%s: failed to load image '%s'\n", __func__, fname);
  1149. return false;
  1150. }
  1151. build_clip_img_from_data(data, nx, ny, img);
  1152. stbi_image_free(data);
  1153. return true;
  1154. }
  1155. bool clip_image_load_from_bytes(const unsigned char * bytes, size_t bytes_length, struct clip_image_u8 * img) {
  1156. int nx, ny, nc;
  1157. auto * data = stbi_load_from_memory(bytes, bytes_length, &nx, &ny, &nc, 3);
  1158. if (!data) {
  1159. LOG_TEE("%s: failed to decode image bytes\n", __func__);
  1160. return false;
  1161. }
  1162. build_clip_img_from_data(data, nx, ny, img);
  1163. stbi_image_free(data);
  1164. return true;
  1165. }
  1166. // Linear interpolation between two points
  1167. inline float clip_lerp(float s, float e, float t) {
  1168. return s + (e - s) * t;
  1169. }
  1170. // Bilinear resize function
  1171. static void bilinear_resize(const clip_image_u8& src, clip_image_u8& dst, int target_width, int target_height) {
  1172. dst.nx = target_width;
  1173. dst.ny = target_height;
  1174. dst.buf.resize(3 * target_width * target_height);
  1175. float x_ratio = static_cast<float>(src.nx - 1) / target_width;
  1176. float y_ratio = static_cast<float>(src.ny - 1) / target_height;
  1177. for (int y = 0; y < target_height; y++) {
  1178. for (int x = 0; x < target_width; x++) {
  1179. float px = x_ratio * x;
  1180. float py = y_ratio * y;
  1181. int x_floor = static_cast<int>(px);
  1182. int y_floor = static_cast<int>(py);
  1183. float x_lerp = px - x_floor;
  1184. float y_lerp = py - y_floor;
  1185. for (int c = 0; c < 3; c++) {
  1186. float top = clip_lerp(
  1187. static_cast<float>(src.buf[3 * (y_floor * src.nx + x_floor) + c]),
  1188. static_cast<float>(src.buf[3 * (y_floor * src.nx + (x_floor + 1)) + c]),
  1189. x_lerp
  1190. );
  1191. float bottom = clip_lerp(
  1192. static_cast<float>(src.buf[3 * ((y_floor + 1) * src.nx + x_floor) + c]),
  1193. static_cast<float>(src.buf[3 * ((y_floor + 1) * src.nx + (x_floor + 1)) + c]),
  1194. x_lerp
  1195. );
  1196. dst.buf[3 * (y * target_width + x) + c] = static_cast<uint8_t>(clip_lerp(top, bottom, y_lerp));
  1197. }
  1198. }
  1199. }
  1200. }
  1201. // Normalize image to float32 - careful with pytorch .to(model.device, dtype=torch.float16) - this sometimes reduces precision (32>16>32), sometimes not
  1202. static void normalize_image_u8_to_f32(const clip_image_u8* src, clip_image_f32* dst, const float mean[3], const float std[3]) {
  1203. dst->nx = src->nx;
  1204. dst->ny = src->ny;
  1205. dst->buf.resize(src->buf.size());
  1206. for (size_t i = 0; i < src->buf.size(); ++i) {
  1207. int c = i % 3; // rgb
  1208. dst->buf[i] = (static_cast<float>(src->buf[i]) / 255.0f - mean[c]) / std[c];
  1209. }
  1210. }
  1211. inline float clip(float x, float lower, float upper) {
  1212. return std::max(lower, std::min(x, upper));
  1213. }
  1214. static bool bicubic_resize(const clip_image_u8 &img, clip_image_u8 &dst, int target_width, int target_height) {
  1215. const int nx = img.nx;
  1216. const int ny = img.ny;
  1217. dst.nx = target_width;
  1218. dst.ny = target_height;
  1219. dst.buf.resize(3 * target_width * target_height);
  1220. float Cc;
  1221. float C[5];
  1222. float d0, d2, d3, a0, a1, a2, a3;
  1223. int i, j, k, jj;
  1224. int x, y;
  1225. float dx, dy;
  1226. float tx, ty;
  1227. tx = (float)nx / (float)target_width;
  1228. ty = (float)ny / (float)target_height;
  1229. // Bicubic interpolation; adapted from ViT.cpp, inspired from :
  1230. // -> https://github.com/yglukhov/bicubic-interpolation-image-processing/blob/master/libimage.c#L36
  1231. // -> https://en.wikipedia.org/wiki/Bicubic_interpolation
  1232. for (i = 0; i < target_height; i++) {
  1233. for (j = 0; j < target_width; j++) {
  1234. x = (int)(tx * j);
  1235. y = (int)(ty * i);
  1236. dx = tx * j - x;
  1237. dy = ty * i - y;
  1238. for (k = 0; k < 3; k++) {
  1239. for (jj = 0; jj <= 3; jj++) {
  1240. d0 = img.buf[(clip(y - 1 + jj, 0, ny - 1) * nx + clip(x - 1, 0, nx - 1)) * 3 + k] - img.buf[(clip(y - 1 + jj, 0, ny - 1) * nx + clip(x, 0, nx - 1)) * 3 + k];
  1241. d2 = img.buf[(clip(y - 1 + jj, 0, ny - 1) * nx + clip(x + 1, 0, nx - 1)) * 3 + k] - img.buf[(clip(y - 1 + jj, 0, ny - 1) * nx + clip(x, 0, nx - 1)) * 3 + k];
  1242. d3 = img.buf[(clip(y - 1 + jj, 0, ny - 1) * nx + clip(x + 2, 0, nx - 1)) * 3 + k] - img.buf[(clip(y - 1 + jj, 0, ny - 1) * nx + clip(x, 0, nx - 1)) * 3 + k];
  1243. a0 = img.buf[(clip(y - 1 + jj, 0, ny - 1) * nx + clip(x, 0, nx - 1)) * 3 + k];
  1244. a1 = -1.0 / 3 * d0 + d2 - 1.0 / 6 * d3;
  1245. a2 = 1.0 / 2 * d0 + 1.0 / 2 * d2;
  1246. a3 = -1.0 / 6 * d0 - 1.0 / 2 * d2 + 1.0 / 6 * d3;
  1247. C[jj] = a0 + a1 * dx + a2 * dx * dx + a3 * dx * dx * dx;
  1248. d0 = C[0] - C[1];
  1249. d2 = C[2] - C[1];
  1250. d3 = C[3] - C[1];
  1251. a0 = C[1];
  1252. a1 = -1.0 / 3 * d0 + d2 - 1.0 / 6 * d3;
  1253. a2 = 1.0 / 2 * d0 + 1.0 / 2 * d2;
  1254. a3 = -1.0 / 6 * d0 - 1.0 / 2 * d2 + 1.0 / 6 * d3;
  1255. Cc = a0 + a1 * dy + a2 * dy * dy + a3 * dy * dy * dy;
  1256. const uint8_t Cc2 = std::min(std::max(std::round(Cc), 0.0f), 255.0f);
  1257. dst.buf[(i * target_width + j) * 3 + k] = float(Cc2);
  1258. }
  1259. }
  1260. }
  1261. }
  1262. return true;
  1263. }
  1264. // llava-1.6 type of resize_and_pad (black)
  1265. static void resize_and_pad_image(const clip_image_u8& image, clip_image_u8 &image_output, const std::pair<int, int>& target_resolution) {
  1266. int target_width = target_resolution.first;
  1267. int target_height = target_resolution.second;
  1268. float scale_w = static_cast<float>(target_width) / image.nx;
  1269. float scale_h = static_cast<float>(target_height) / image.ny;
  1270. int new_width, new_height;
  1271. if (scale_w < scale_h) {
  1272. new_width = target_width;
  1273. new_height = std::min(static_cast<int>(std::ceil(image.ny * scale_w)), target_height);
  1274. } else {
  1275. new_height = target_height;
  1276. new_width = std::min(static_cast<int>(std::ceil(image.nx * scale_h)), target_width);
  1277. }
  1278. clip_image_u8 resized_image;
  1279. // bilinear_resize(image, resized_image, new_width, new_height);
  1280. bicubic_resize(image, resized_image, new_width, new_height);
  1281. clip_image_u8 padded_image;
  1282. padded_image.nx = target_width;
  1283. padded_image.ny = target_height;
  1284. padded_image.buf.resize(3 * target_width * target_height, 0); // Initialize with black
  1285. // Calculate padding offsets
  1286. int pad_x = (target_width - new_width) / 2;
  1287. int pad_y = (target_height - new_height) / 2;
  1288. // Copy the resized image into the center of the padded buffer
  1289. for (int y = 0; y < new_height; ++y) {
  1290. for (int x = 0; x < new_width; ++x) {
  1291. for (int c = 0; c < 3; ++c) {
  1292. padded_image.buf[3 * ((y + pad_y) * target_width + (x + pad_x)) + c] = resized_image.buf[3 * (y * new_width + x) + c];
  1293. }
  1294. }
  1295. }
  1296. image_output = std::move(padded_image);
  1297. }
  1298. /**
  1299. * Selects the best resolution from a list of possible resolutions based on the original size.
  1300. *
  1301. * @param original_size The original size of the image in the format (width, height).
  1302. * @param possible_resolutions A list of possible resolutions in the format [(width1, height1), (width2, height2), ...].
  1303. * @return The best fit resolution in the format (width, height).
  1304. */
  1305. static std::pair<int, int> select_best_resolution(const std::pair<int, int> & original_size, const std::vector<std::pair<int, int>> & possible_resolutions) {
  1306. int original_width = original_size.first;
  1307. int original_height = original_size.second;
  1308. std::pair<int, int> best_fit;
  1309. int max_effective_resolution = 0;
  1310. int min_wasted_resolution = std::numeric_limits<int>::max();
  1311. for (const auto& resolution : possible_resolutions) {
  1312. int width = resolution.first;
  1313. int height = resolution.second;
  1314. float scale = std::min(static_cast<float>(width) / original_width, static_cast<float>(height) / original_height);
  1315. int downscaled_width = static_cast<int>(original_width * scale);
  1316. int downscaled_height = static_cast<int>(original_height * scale);
  1317. int effective_resolution = std::min(downscaled_width * downscaled_height, original_width * original_height);
  1318. int wasted_resolution = (width * height) - effective_resolution;
  1319. // LOG_TEE("resolution: %d %d, scale: %f, downscaled: %d %d, effective: %d, wasted: %d\n", width, height, scale, downscaled_width, downscaled_height, effective_resolution, wasted_resolution);
  1320. if (effective_resolution > max_effective_resolution || (effective_resolution == max_effective_resolution && wasted_resolution < min_wasted_resolution)) {
  1321. max_effective_resolution = effective_resolution;
  1322. min_wasted_resolution = wasted_resolution;
  1323. best_fit = resolution;
  1324. }
  1325. }
  1326. return best_fit;
  1327. }
  1328. static std::vector<clip_image_u8*> divide_to_patches_u8(const clip_image_u8 & image, int patch_size) {
  1329. std::vector<clip_image_u8*> patches;
  1330. int width = image.nx;
  1331. int height = image.ny;
  1332. for (int i = 0; i < height; i += patch_size) {
  1333. for (int j = 0; j < width; j += patch_size) {
  1334. clip_image_u8 *patch = clip_image_u8_init();
  1335. patch->nx = std::min(patch_size, width - j);
  1336. patch->ny = std::min(patch_size, height - i);
  1337. patch->buf.resize(3 * patch->nx * patch->ny);
  1338. for (int y = 0; y < patch->ny; ++y) {
  1339. for (int x = 0; x < patch->nx; ++x) {
  1340. for (int c = 0; c < 3; ++c) {
  1341. patch->buf[3 * (y * patch->nx + x) + c] = image.buf[3 * ((i + y) * width + (j + x)) + c];
  1342. }
  1343. }
  1344. }
  1345. patches.push_back(patch);
  1346. }
  1347. }
  1348. return patches;
  1349. }
  1350. // returns the normalized float tensor for llava-1.5, for spatial_unpad with anyres processing for llava-1.6 it returns the normalized image patch tensors as a vector
  1351. // res_imgs memory is being allocated here, previous allocations will be freed if found
  1352. bool clip_image_preprocess(struct clip_ctx * ctx, const clip_image_u8 * img, clip_image_f32_batch * res_imgs) {
  1353. bool pad_to_square = true;
  1354. if (!ctx->has_vision_encoder) {
  1355. LOG_TEE("This gguf file seems to have no vision encoder\n");
  1356. return false;
  1357. }
  1358. auto & params = ctx->vision_model.hparams;
  1359. // The model config actually contains all we need to decide on how to preprocess, here we automatically switch to the new llava-1.6 preprocessing
  1360. if (strcmp(params.mm_patch_merge_type, "spatial_unpad") == 0) {
  1361. pad_to_square = false;
  1362. }
  1363. // free the previous res_imgs if any set
  1364. if (res_imgs->size > 0) {
  1365. clip_image_f32_batch_free(res_imgs);
  1366. }
  1367. res_imgs->data = nullptr;
  1368. res_imgs->size = 0;
  1369. // the logic below is to pad the shorter side to the longer side with a background color: rgb(122, 116, 104)
  1370. // see https://github.com/haotian-liu/LLaVA/blob/e854a2bf85118c504f6f16bf5c3c7c92f8fa8c6b/llava/conversation.py#L113-L156
  1371. clip_image_u8 * temp = clip_image_u8_init(); // we will keep the input image data here temporarily
  1372. if (pad_to_square && img->nx != img->ny) {
  1373. int longer_side = std::max(img->nx, img->ny);
  1374. temp->nx = longer_side;
  1375. temp->ny = longer_side;
  1376. temp->buf.resize(3 * longer_side * longer_side);
  1377. const uint8_t bc[3] = {122, 116, 104}; // background color in RGB from LLaVA (this is the mean rgb color * 255)
  1378. // fill with background color
  1379. for (size_t i = 0; i < temp->buf.size(); i++) {
  1380. temp->buf[i] = bc[i % 3];
  1381. }
  1382. // copy from the input image
  1383. for (int y = 0; y < img->ny; y++) {
  1384. for (int x = 0; x < img->nx; x++) {
  1385. const int i = 3 * (y * img->nx + x);
  1386. const int j = 3 * (y * temp->nx + x);
  1387. temp->buf[j] = img->buf[i];
  1388. temp->buf[j+1] = img->buf[i+1];
  1389. temp->buf[j+2] = img->buf[i+2];
  1390. }
  1391. }
  1392. } else {
  1393. if (params.image_grid_pinpoints[0] != 0) {
  1394. // "spatial_unpad" with "anyres" processing for llava-1.6
  1395. std::vector<std::pair<int, int>> possible_resolutions;
  1396. for (int i = 0; i < 32 && params.image_grid_pinpoints[i] != 0; i+=2) {
  1397. possible_resolutions.push_back({params.image_grid_pinpoints[i], params.image_grid_pinpoints[i+1]});
  1398. }
  1399. std::pair<int, int> best_resolution = select_best_resolution({img->nx, img->ny}, possible_resolutions);
  1400. // clip_image_save_to_bmp(*img, "input.bmp");
  1401. resize_and_pad_image(*img, *temp, best_resolution); // we do not pad with mean-bg color anymore in llava-1.6
  1402. // clip_image_save_to_bmp(*temp, "resized.bmp");
  1403. // visually verify normalized image:
  1404. // normalize_image_u8_to_f32(*temp, *res, ctx->image_mean, ctx->image_std);
  1405. // {
  1406. // clip_image_u8 * temp2 = clip_image_u8_init();
  1407. // clip_image_convert_f32_to_u8(*res, *temp2);
  1408. // clip_image_save_to_bmp(*temp2, "resized_normalized_f32.bmp");
  1409. // clip_image_u8_free(temp2);
  1410. // }
  1411. std::vector<clip_image_u8 *> patches = divide_to_patches_u8(*temp, params.image_size); // prepare spatial sorted main patches of image_size each (336 in llava-1.6)
  1412. clip_image_u8 *image_original_resize = clip_image_u8_init();
  1413. // bilinear_resize(*img, *image_original_resize, params.image_size, params.image_size); // in python this is "shortest_edge", but all CLIP are square
  1414. bicubic_resize(*img, *image_original_resize, params.image_size, params.image_size); // in python this is "shortest_edge", but all CLIP are square
  1415. patches.insert(patches.begin(), image_original_resize);
  1416. // clip_image_f32_batch_init(patches.size());
  1417. res_imgs->size = patches.size();
  1418. res_imgs->data = new clip_image_f32[res_imgs->size];
  1419. int num=0;
  1420. for (auto& patch : patches) {
  1421. normalize_image_u8_to_f32(patch, &res_imgs->data[num], ctx->image_mean, ctx->image_std);
  1422. num++;
  1423. }
  1424. for (size_t i = 0; i < patches.size(); i++) {
  1425. // LOG_TEE("patch %d: %d %d\n", i, patches[i]->nx, patches[i]->ny);
  1426. clip_image_u8_free(patches[i]);
  1427. }
  1428. clip_image_u8_free(temp);
  1429. return true;
  1430. } else {
  1431. temp->nx = img->nx;
  1432. temp->ny = img->ny;
  1433. temp->buf.resize(img->buf.size());
  1434. memcpy(temp->buf.data(), img->buf.data(), temp->buf.size());
  1435. }
  1436. }
  1437. const int nx = temp->nx;
  1438. const int ny = temp->ny;
  1439. // clip_image_save_to_bmp(*temp, "resized_vanilla.bmp");
  1440. const int nx2 = ctx->vision_model.hparams.image_size;
  1441. const int ny2 = ctx->vision_model.hparams.image_size;
  1442. clip_image_f32 * res = clip_image_f32_init();
  1443. res->nx = nx2;
  1444. res->ny = ny2;
  1445. res->buf.resize(3 * nx2 * ny2);
  1446. const float scale = std::max(nx, ny) / (float)ctx->vision_model.hparams.image_size;
  1447. const int nx3 = int(nx / scale + 0.5f);
  1448. const int ny3 = int(ny / scale + 0.5f);
  1449. const auto & m3 = ctx->image_mean; // {0.48145466f, 0.4578275f, 0.40821073f};
  1450. const auto & s3 = ctx->image_std; // {0.26862954f, 0.26130258f, 0.27577711f};
  1451. for (int y = 0; y < ny3; y++) {
  1452. for (int x = 0; x < nx3; x++) {
  1453. for (int c = 0; c < 3; c++) {
  1454. // linear interpolation
  1455. const float sx = (x + 0.5f) * scale - 0.5f;
  1456. const float sy = (y + 0.5f) * scale - 0.5f;
  1457. const int x0 = std::max(0, (int)std::floor(sx));
  1458. const int y0 = std::max(0, (int)std::floor(sy));
  1459. const int x1 = std::min(x0 + 1, nx - 1);
  1460. const int y1 = std::min(y0 + 1, ny - 1);
  1461. const float dx = sx - x0;
  1462. const float dy = sy - y0;
  1463. const int j00 = 3 * (y0 * nx + x0) + c;
  1464. const int j01 = 3 * (y0 * nx + x1) + c;
  1465. const int j10 = 3 * (y1 * nx + x0) + c;
  1466. const int j11 = 3 * (y1 * nx + x1) + c;
  1467. const float v00 = temp->buf[j00];
  1468. const float v01 = temp->buf[j01];
  1469. const float v10 = temp->buf[j10];
  1470. const float v11 = temp->buf[j11];
  1471. const float v0 = v00 * (1.0f - dx) + v01 * dx;
  1472. const float v1 = v10 * (1.0f - dx) + v11 * dx;
  1473. const float v = v0 * (1.0f - dy) + v1 * dy;
  1474. const uint8_t v2 = std::min(std::max(std::round(v), 0.0f), 255.0f);
  1475. const int i = 3 * (y * nx3 + x) + c;
  1476. res->buf[i] = ((float(v2) / 255.0f) - m3[c]) / s3[c];
  1477. }
  1478. }
  1479. }
  1480. clip_image_u8_free(temp);
  1481. // {
  1482. // clip_image_u8 * temp2 = clip_image_u8_init();
  1483. // clip_image_convert_f32_to_u8(*res, *temp2);
  1484. // clip_image_save_to_bmp(*temp2, "resized_normalized_f32_vanilla.bmp");
  1485. // clip_image_u8_free(temp2);
  1486. // }
  1487. // res_imgs.push_back(res);
  1488. res_imgs->size = 1;
  1489. res_imgs->data = new clip_image_f32[res_imgs->size];
  1490. res_imgs->data[0] = *res;
  1491. clip_image_f32_free(res);
  1492. return true;
  1493. }
  1494. ggml_tensor * clip_get_newline_tensor(const struct clip_ctx * ctx) {
  1495. return ctx->vision_model.image_newline;
  1496. }
  1497. void clip_free(clip_ctx * ctx) {
  1498. ggml_free(ctx->ctx_data);
  1499. gguf_free(ctx->ctx_gguf);
  1500. ggml_backend_buffer_free(ctx->params_buffer);
  1501. ggml_backend_free(ctx->backend);
  1502. ggml_gallocr_free(ctx->compute_alloc);
  1503. delete ctx;
  1504. }
  1505. size_t clip_embd_nbytes(const struct clip_ctx * ctx) {
  1506. return clip_n_patches(ctx) * clip_n_mmproj_embd(ctx) * sizeof(float);
  1507. }
  1508. int32_t clip_image_size(const struct clip_ctx * ctx) {
  1509. return ctx->vision_model.hparams.image_size;
  1510. }
  1511. int32_t clip_patch_size(const struct clip_ctx * ctx) {
  1512. return ctx->vision_model.hparams.patch_size;
  1513. }
  1514. int32_t clip_hidden_size(const struct clip_ctx * ctx) {
  1515. return ctx->vision_model.hparams.hidden_size;
  1516. }
  1517. const char * clip_patch_merge_type(const struct clip_ctx * ctx) {
  1518. return ctx->vision_model.hparams.mm_patch_merge_type;
  1519. }
  1520. const int32_t * clip_image_grid(const struct clip_ctx * ctx) {
  1521. return ctx->vision_model.hparams.image_grid_pinpoints;
  1522. }
  1523. int clip_n_patches(const struct clip_ctx * ctx) {
  1524. const auto & params = ctx->vision_model.hparams;
  1525. int n_patches = (params.image_size / params.patch_size) * (params.image_size / params.patch_size);
  1526. if (ctx->proj_type == PROJECTOR_TYPE_LDP || ctx->proj_type == PROJECTOR_TYPE_LDPV2) {
  1527. n_patches /= 4;
  1528. }
  1529. return n_patches;
  1530. }
  1531. bool clip_image_encode(struct clip_ctx * ctx, const int n_threads, clip_image_f32 * img, float * vec) {
  1532. if (!ctx->has_vision_encoder) {
  1533. LOG_TEE("This gguf file seems to have no vision encoder\n");
  1534. return false;
  1535. }
  1536. clip_image_f32_batch imgs{};
  1537. imgs.size = 1;
  1538. imgs.data = img;
  1539. return clip_image_batch_encode(ctx, n_threads, &imgs, vec);
  1540. }
  1541. bool clip_image_batch_encode(clip_ctx * ctx, const int n_threads, const clip_image_f32_batch * imgs, float * vec) {
  1542. if (!ctx->has_vision_encoder) {
  1543. LOG_TEE("This gguf file seems to have no vision encoder\n");
  1544. return false;
  1545. }
  1546. int batch_size = imgs->size;
  1547. if (ctx->has_llava_projector) {
  1548. GGML_ASSERT(batch_size == 1); // TODO: support multiple images
  1549. }
  1550. // build the inference graph
  1551. ggml_cgraph * gf = clip_image_build_graph(ctx, imgs);
  1552. ggml_gallocr_alloc_graph(ctx->compute_alloc, gf);
  1553. // set inputs
  1554. const auto & model = ctx->vision_model;
  1555. const auto & hparams = model.hparams;
  1556. const int image_size = hparams.image_size;
  1557. const int patch_size = hparams.patch_size;
  1558. const int num_patches = ((image_size / patch_size) * (image_size / patch_size));
  1559. const int num_positions = num_patches + (ctx->has_class_embedding ? 1 : 0);
  1560. {
  1561. struct ggml_tensor * inp_raw = ggml_graph_get_tensor(gf, "inp_raw");
  1562. float * data = (float *)malloc(ggml_nbytes(inp_raw));
  1563. for (size_t i = 0; i < imgs->size; i++) {
  1564. const int nx = imgs->data[i].nx;
  1565. const int ny = imgs->data[i].ny;
  1566. GGML_ASSERT(nx == image_size && ny == image_size);
  1567. const int n = nx * ny;
  1568. for (int b = 0; b < batch_size; b++) {
  1569. for (int k = 0; k < 3; k++) {
  1570. for (int y = 0; y < ny; y++) {
  1571. for (int x = 0; x < nx; x++) {
  1572. data[(b * 3 * n) + k * n + y * nx + x] = imgs->data[b].buf[3 * (y * nx + x) + k];
  1573. }
  1574. }
  1575. }
  1576. }
  1577. }
  1578. ggml_backend_tensor_set(inp_raw, data, 0, ggml_nbytes(inp_raw));
  1579. free(data);
  1580. }
  1581. {
  1582. if (ctx->has_class_embedding) {
  1583. struct ggml_tensor * embeddings = ggml_graph_get_tensor(gf, "embeddings");
  1584. void* zero_mem = malloc(ggml_nbytes(embeddings));
  1585. memset(zero_mem, 0, ggml_nbytes(embeddings));
  1586. ggml_backend_tensor_set(embeddings, zero_mem, 0, ggml_nbytes(embeddings));
  1587. free(zero_mem);
  1588. }
  1589. }
  1590. {
  1591. struct ggml_tensor * positions = ggml_graph_get_tensor(gf, "positions");
  1592. int* positions_data = (int*)malloc(ggml_nbytes(positions));
  1593. for (int i = 0; i < num_positions; i++) {
  1594. positions_data[i] = i;
  1595. }
  1596. ggml_backend_tensor_set(positions, positions_data, 0, ggml_nbytes(positions));
  1597. free(positions_data);
  1598. }
  1599. {
  1600. struct ggml_tensor * patches = ggml_graph_get_tensor(gf, "patches");
  1601. int* patches_data = (int*)malloc(ggml_nbytes(patches));
  1602. for (int i = 0; i < num_patches; i++) {
  1603. patches_data[i] = i + 1;
  1604. }
  1605. ggml_backend_tensor_set(patches, patches_data, 0, ggml_nbytes(patches));
  1606. free(patches_data);
  1607. }
  1608. if (ggml_backend_is_cpu(ctx->backend)) {
  1609. ggml_backend_cpu_set_n_threads(ctx->backend, n_threads);
  1610. }
  1611. #ifdef GGML_USE_METAL
  1612. if (ggml_backend_is_metal(ctx->backend)) {
  1613. ggml_backend_metal_set_n_cb(ctx->backend, n_threads);
  1614. }
  1615. #endif
  1616. ggml_backend_graph_compute(ctx->backend, gf);
  1617. // the last node is the embedding tensor
  1618. struct ggml_tensor * embeddings = gf->nodes[gf->n_nodes - 1];
  1619. // copy the embeddings to the location passed by the user
  1620. ggml_backend_tensor_get(embeddings, vec, 0, ggml_nbytes(embeddings));
  1621. return true;
  1622. }
  1623. bool clip_model_quantize(const char * fname_inp, const char * fname_out, const int itype) {
  1624. ggml_type type = GGML_TYPE_Q4_1;
  1625. assert(itype < GGML_TYPE_COUNT);
  1626. type = static_cast<ggml_type>(itype);
  1627. auto * ctx_clip = clip_model_load(fname_inp, 2);
  1628. const auto & ctx_src = ctx_clip->ctx_gguf;
  1629. const auto & ctx_data = ctx_clip->ctx_data;
  1630. auto * ctx_out = gguf_init_empty();
  1631. gguf_set_kv(ctx_out, ctx_src);
  1632. gguf_set_val_u32(ctx_out, "general.quantization_version", GGML_QNT_VERSION);
  1633. gguf_set_val_u32(ctx_out, "general.file_type", itype);
  1634. auto fout = std::ofstream(fname_out, std::ios::binary);
  1635. const int n_tensors = gguf_get_n_tensors(ctx_src);
  1636. for (int i = 0; i < n_tensors; ++i) {
  1637. const char * name = gguf_get_tensor_name(ctx_src, i);
  1638. struct ggml_tensor * cur = ggml_get_tensor(ctx_data, name);
  1639. gguf_add_tensor(ctx_out, cur);
  1640. }
  1641. const size_t meta_size = gguf_get_meta_size(ctx_out);
  1642. for (size_t i = 0; i < meta_size; ++i) {
  1643. fout.put(0);
  1644. }
  1645. // regexes of tensor names to be quantized
  1646. const std::vector<std::string> k_names = {
  1647. ".*weight",
  1648. };
  1649. std::vector<uint8_t> work(512);
  1650. std::vector<float> conv_buf(512);
  1651. size_t total_size_org = 0;
  1652. size_t total_size_new = 0;
  1653. for (int i = 0; i < n_tensors; ++i) {
  1654. const std::string name = gguf_get_tensor_name(ctx_src, i);
  1655. struct ggml_tensor * cur = ggml_get_tensor(ctx_data, name.c_str());
  1656. enum ggml_type new_type;
  1657. void * new_data;
  1658. size_t new_size;
  1659. bool quantize = false;
  1660. for (const auto & s : k_names) {
  1661. if (std::regex_match(name, std::regex(s))) {
  1662. quantize = true;
  1663. break;
  1664. }
  1665. }
  1666. // quantize only 2D tensors
  1667. quantize &= (ggml_n_dims(cur) == 2);
  1668. if (quantize) {
  1669. new_type = type;
  1670. if (new_type >= GGML_TYPE_Q2_K && name.find("embd") != std::string::npos) {
  1671. new_type = GGML_TYPE_Q8_0; // ggml_get_rows needs non K type
  1672. // LOG_TEE("%s: quantizing %s to %s\n", __func__, name.c_str(), ggml_type_name(new_type));
  1673. }
  1674. const size_t n_elms = ggml_nelements(cur);
  1675. float * f32_data;
  1676. switch (cur->type) {
  1677. case GGML_TYPE_F32:
  1678. f32_data = (float *)cur->data;
  1679. break;
  1680. case GGML_TYPE_F16:
  1681. if (conv_buf.size() < n_elms) {
  1682. conv_buf.resize(n_elms);
  1683. }
  1684. for (size_t j = 0; j < n_elms; ++j) {
  1685. conv_buf[j] = ggml_fp16_to_fp32(((ggml_fp16_t *)cur->data)[j]);
  1686. }
  1687. f32_data = (float *)conv_buf.data();
  1688. break;
  1689. default:
  1690. LOG_TEE("Please use an input file in f32 or f16\n");
  1691. gguf_free(ctx_out);
  1692. return false;
  1693. }
  1694. if (work.size() < n_elms * 4) {
  1695. work.resize(n_elms * 4);
  1696. }
  1697. new_data = work.data();
  1698. new_size = ggml_quantize_chunk(new_type, f32_data, new_data, 0, n_elms/cur->ne[0], cur->ne[0], nullptr);
  1699. } else {
  1700. new_type = cur->type;
  1701. new_data = cur->data;
  1702. new_size = ggml_nbytes(cur);
  1703. }
  1704. const size_t orig_size = ggml_nbytes(cur);
  1705. total_size_org += orig_size;
  1706. total_size_new += new_size;
  1707. gguf_set_tensor_type(ctx_out, name.c_str(), new_type);
  1708. gguf_set_tensor_data(ctx_out, name.c_str(), new_data, new_size);
  1709. fout.write((const char *)new_data, new_size);
  1710. size_t pad = GGML_PAD(new_size, gguf_get_alignment(ctx_out)) - new_size;
  1711. for (size_t j = 0; j < pad; ++j) {
  1712. fout.put(0);
  1713. }
  1714. LOG_TEE("%s: n_dims = %d | quantize=%d | size = %f MB -> %f MB\n", name.c_str(), ggml_n_dims(cur), quantize,
  1715. orig_size / 1024.0 / 1024.0, new_size / 1024.0 / 1024.0);
  1716. }
  1717. // go back to beginning of file and write the updated metadata
  1718. fout.seekp(0, std::ios::beg);
  1719. std::vector<uint8_t> meta(meta_size);
  1720. gguf_get_meta_data(ctx_out, meta.data());
  1721. fout.write((const char *)meta.data(), meta_size);
  1722. fout.close();
  1723. clip_free(ctx_clip);
  1724. gguf_free(ctx_out);
  1725. {
  1726. LOG_TEE("%s: original size = %8.2f MB\n", __func__, total_size_org / 1024.0 / 1024.0);
  1727. LOG_TEE("%s: quantized size = %8.2f MB\n", __func__, total_size_new / 1024.0 / 1024.0);
  1728. }
  1729. return true;
  1730. }
  1731. int clip_n_mmproj_embd(const struct clip_ctx * ctx) {
  1732. if (ctx->proj_type == PROJECTOR_TYPE_LDP) {
  1733. return ctx->vision_model.mm_model_block_1_block_2_1_b->ne[0];
  1734. }
  1735. if (ctx->proj_type == PROJECTOR_TYPE_LDPV2) {
  1736. return ctx->vision_model.mm_model_peg_0_b->ne[0];
  1737. }
  1738. if (ctx->proj_type == PROJECTOR_TYPE_MLP) {
  1739. return ctx->vision_model.mm_2_b->ne[0];
  1740. }
  1741. if (ctx->proj_type == PROJECTOR_TYPE_MLP_NORM) {
  1742. return ctx->vision_model.mm_3_b->ne[0];
  1743. }
  1744. std::string proj_type = PROJECTOR_TYPE_NAMES[ctx->proj_type];
  1745. throw std::runtime_error(format("%s: don't support projector with: %s currently\n", __func__, proj_type.c_str()));
  1746. }