speculative.cpp 15 KB

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  1. #include "build-info.h"
  2. #include "common.h"
  3. #include "llama.h"
  4. #include <cmath>
  5. #include <cstdio>
  6. #include <string>
  7. #include <vector>
  8. #define SPEC_VOCAB_MAX_SIZE_DIFFERENCE 100
  9. #define SPEC_VOCAB_CHECK_START_TOKEN_ID 5
  10. struct seq_draft {
  11. bool active = false;
  12. bool drafting = false;
  13. bool skip = false;
  14. int i_batch_dft = 0;
  15. std::vector<int> i_batch_tgt;
  16. std::vector<llama_token> tokens;
  17. struct llama_sampling_context * ctx_sampling;
  18. };
  19. int main(int argc, char ** argv) {
  20. gpt_params params;
  21. if (gpt_params_parse(argc, argv, params) == false) {
  22. return 1;
  23. }
  24. if (params.model_draft.empty()) {
  25. fprintf(stderr, "%s: error: --model-draft is required\n", __func__);
  26. return 1;
  27. }
  28. // max number of parallel drafting sequences (i.e. tree branches)
  29. const int n_seq_dft = params.n_parallel;
  30. // TODO: make this configurable
  31. const float p_accept = 0.80f;
  32. const float p_split = 0.10f;
  33. #ifndef LOG_DISABLE_LOGS
  34. log_set_target(log_filename_generator("speculative", "log"));
  35. LOG_TEE("Log start\n");
  36. log_dump_cmdline(argc, argv);
  37. #endif // LOG_DISABLE_LOGS
  38. // init llama.cpp
  39. llama_backend_init(params.numa);
  40. llama_model * model_tgt = NULL;
  41. llama_model * model_dft = NULL;
  42. llama_context * ctx_tgt = NULL;
  43. llama_context * ctx_dft = NULL;
  44. // load the target model
  45. params.logits_all = true;
  46. std::tie(model_tgt, ctx_tgt) = llama_init_from_gpt_params(params);
  47. // load the draft model
  48. params.model = params.model_draft;
  49. params.n_gpu_layers = params.n_gpu_layers_draft;
  50. std::tie(model_dft, ctx_dft) = llama_init_from_gpt_params(params);
  51. {
  52. const int n_vocab_tgt = llama_n_vocab(model_tgt);
  53. const int n_vocab_dft = llama_n_vocab(model_dft);
  54. const int vocab_diff = n_vocab_tgt > n_vocab_dft
  55. ? n_vocab_tgt - n_vocab_dft
  56. : n_vocab_dft - n_vocab_tgt;
  57. if (vocab_diff > SPEC_VOCAB_MAX_SIZE_DIFFERENCE) {
  58. fprintf(stderr, "%s: error: draft model vocab must closely match target model to use speculation but ", __func__);
  59. fprintf(stderr, "target vocab size %d does not match draft vocab size %d - difference %d, max allowed %d\n",
  60. n_vocab_tgt, llama_n_vocab(model_dft), vocab_diff, SPEC_VOCAB_MAX_SIZE_DIFFERENCE);
  61. return 1;
  62. }
  63. for (int i = SPEC_VOCAB_CHECK_START_TOKEN_ID; i < std::min(n_vocab_tgt, n_vocab_dft); ++i) {
  64. const char * token_text_tgt = llama_token_get_text(model_tgt, i);
  65. const char * token_text_dft = llama_token_get_text(model_dft, i);
  66. if (std::strcmp(token_text_tgt, token_text_dft) != 0) {
  67. fprintf(stderr, "%s: error: draft model vocab must match target model to use speculation but ", __func__);
  68. fprintf(stderr, "token %d content differs - target '%s', draft '%s'\n", i,
  69. llama_token_to_piece(ctx_tgt, i).c_str(),
  70. llama_token_to_piece(ctx_dft, i).c_str());
  71. return 1;
  72. }
  73. }
  74. }
  75. // tokenize the prompt
  76. std::vector<llama_token> inp;
  77. inp = ::llama_tokenize(ctx_tgt, params.prompt, true);
  78. const int max_context_size = llama_n_ctx(ctx_tgt);
  79. const int max_tokens_list_size = max_context_size - 4;
  80. if ((int) inp.size() > max_tokens_list_size) {
  81. fprintf(stderr, "%s: error: prompt too long (%d tokens, max %d)\n", __func__, (int) inp.size(), max_tokens_list_size);
  82. return 1;
  83. }
  84. fprintf(stderr, "\n\n");
  85. for (auto id : inp) {
  86. fprintf(stderr, "%s", llama_token_to_piece(ctx_tgt, id).c_str());
  87. }
  88. fflush(stderr);
  89. const int n_input = inp.size();
  90. const auto t_enc_start = ggml_time_us();
  91. // eval the prompt with both models
  92. llama_decode(ctx_tgt, llama_batch_get_one( inp.data(), n_input - 1, 0, 0));
  93. llama_decode(ctx_tgt, llama_batch_get_one(&inp.back(), 1, n_input - 1, 0));
  94. llama_decode(ctx_dft, llama_batch_get_one( inp.data(), n_input, 0, 0));
  95. const auto t_enc_end = ggml_time_us();
  96. // the 2 models should have the same vocab
  97. //GGML_ASSERT(n_vocab == llama_n_vocab(model_dft));
  98. // how many tokens to draft each time
  99. int n_draft = params.n_draft;
  100. int n_predict = 0;
  101. int n_drafted = 0;
  102. int n_accept = 0;
  103. int n_past_tgt = inp.size();
  104. int n_past_dft = inp.size();
  105. // used to determine end of generation
  106. bool has_eos = false;
  107. // target model sampling context
  108. struct llama_sampling_context * ctx_sampling = llama_sampling_init(params.sparams);
  109. // draft sequence data
  110. std::vector<seq_draft> drafts(n_seq_dft);
  111. params.sparams.grammar.clear(); // the draft samplers will copy the target sampler's grammar
  112. params.sparams.temp = std::max(0.01f, params.sparams.temp);
  113. for (int s = 0; s < n_seq_dft; ++s) {
  114. drafts[s].ctx_sampling = llama_sampling_init(params.sparams);
  115. }
  116. llama_batch batch_dft = llama_batch_init(params.n_ctx, 0, 1);
  117. llama_batch batch_tgt = llama_batch_init(params.n_ctx, 0, n_seq_dft);
  118. const auto t_dec_start = ggml_time_us();
  119. // sample from the last token of the prompt
  120. drafts[0].i_batch_tgt.resize(1);
  121. drafts[0].i_batch_tgt[0] = 0;
  122. while (true) {
  123. // print current draft sequences
  124. for (int s = 0; s < n_seq_dft; ++s) {
  125. if (!drafts[s].active) {
  126. continue;
  127. }
  128. const auto & tokens = drafts[s].tokens;
  129. LOG("draft %d: %s\n", s, LOG_TOKENS_TOSTR_PRETTY(ctx_dft, tokens).c_str());
  130. }
  131. int i_dft = 0;
  132. int s_keep = 0;
  133. while (true) {
  134. LOG("sampling target: s_keep = %3d, i_dft = %3d, i_batch_tgt = %3d\n", s_keep, i_dft, drafts[s_keep].i_batch_tgt[i_dft]);
  135. // sample from the target model
  136. llama_token id = llama_sampling_sample(ctx_sampling, ctx_tgt, NULL, drafts[s_keep].i_batch_tgt[i_dft]);
  137. llama_sampling_accept(ctx_sampling, ctx_tgt, id, true);
  138. //LOG("last: %s\n", LOG_TOKENS_TOSTR_PRETTY(ctx_tgt, ctx_sampling->prev).c_str());
  139. const std::string token_str = llama_token_to_piece(ctx_tgt, id);
  140. printf("%s", token_str.c_str());
  141. fflush(stdout);
  142. if (id == llama_token_eos(model_tgt)) {
  143. has_eos = true;
  144. }
  145. ++n_predict;
  146. // check if the target token matches any of the drafts
  147. {
  148. bool matches = false;
  149. for (int s = 0; s < n_seq_dft; ++s) {
  150. if (!drafts[s].active) {
  151. continue;
  152. }
  153. if (i_dft < (int) drafts[s].tokens.size() && id == drafts[s].tokens[i_dft]) {
  154. LOG("the sampled target token matches the %dth drafted token of sequence %d (%d, '%s') - accepted\n", i_dft, s, id, token_str.c_str());
  155. s_keep = s;
  156. matches = true;
  157. } else {
  158. drafts[s].active = false;
  159. }
  160. }
  161. if (matches) {
  162. ++n_accept;
  163. ++n_past_tgt;
  164. ++n_past_dft;
  165. ++i_dft;
  166. continue;
  167. }
  168. }
  169. LOG("the sampled target token (%d, '%s') did not match, or we ran out of drafted tokens\n", id, token_str.c_str());
  170. // TODO: simplify
  171. {
  172. LOG("keeping sequence %d, n_past_tgt = %d, n_past_dft = %d\n", s_keep, n_past_tgt, n_past_dft);
  173. llama_kv_cache_seq_keep(ctx_dft, s_keep);
  174. llama_kv_cache_seq_cp (ctx_dft, s_keep, 0, -1, -1);
  175. llama_kv_cache_seq_keep(ctx_dft, 0);
  176. llama_kv_cache_seq_rm (ctx_tgt, s_keep, n_past_tgt, -1);
  177. llama_kv_cache_seq_keep(ctx_tgt, s_keep);
  178. llama_kv_cache_seq_cp (ctx_tgt, s_keep, 0, -1, -1);
  179. llama_kv_cache_seq_keep(ctx_tgt, 0);
  180. }
  181. for (int s = 0; s < n_seq_dft; ++s) {
  182. drafts[s].active = false;
  183. drafts[s].tokens.clear();
  184. drafts[s].i_batch_tgt.clear();
  185. }
  186. // note: will be erased after the speculation phase
  187. drafts[0].tokens.push_back(id);
  188. drafts[0].i_batch_tgt.push_back(0);
  189. llama_batch_clear(batch_dft);
  190. llama_batch_add (batch_dft, id, n_past_dft, { 0 }, true);
  191. llama_kv_cache_seq_rm(ctx_dft, 0, n_past_dft, -1);
  192. // LOG("dft batch: %s\n", LOG_BATCH_TOSTR_PRETTY(ctx_dft, batch_dft).c_str());
  193. llama_decode (ctx_dft, batch_dft);
  194. ++n_past_dft;
  195. break;
  196. }
  197. if (n_predict > params.n_predict || has_eos) {
  198. break;
  199. }
  200. llama_sampling_cp(ctx_sampling, drafts[0].ctx_sampling);
  201. int n_seq_cur = 1;
  202. int n_past_cur = n_past_dft;
  203. for (int s = 0; s < n_seq_dft; ++s) {
  204. drafts[s].active = false;
  205. drafts[s].drafting = false;
  206. }
  207. drafts[0].active = true;
  208. drafts[0].drafting = true;
  209. drafts[0].i_batch_dft = 0;
  210. llama_batch_clear(batch_tgt);
  211. llama_batch_add (batch_tgt, drafts[0].tokens[0], n_past_tgt, { 0 }, true);
  212. // sample n_draft tokens from the draft model using tree-based sampling
  213. for (int i = 0; i < n_draft; ++i) {
  214. batch_dft.n_tokens = 0;
  215. for (int s = 0; s < n_seq_dft; ++s) {
  216. drafts[s].skip = false;
  217. }
  218. for (int s = 0; s < n_seq_dft; ++s) {
  219. if (!drafts[s].drafting || drafts[s].skip) {
  220. continue;
  221. }
  222. llama_sampling_sample(drafts[s].ctx_sampling, ctx_dft, NULL, drafts[s].i_batch_dft);
  223. const auto & cur_p = drafts[s].ctx_sampling->cur;
  224. for (int k = 0; k < std::min(n_seq_dft + 3, (int) cur_p.size()); ++k) {
  225. LOG(" - draft candidate %3d for seq %3d, pos %3d: %6d (%8.3f) '%s'\n",
  226. k, s, i, cur_p[k].id, cur_p[k].p, llama_token_to_piece(ctx_dft, cur_p[k].id).c_str());
  227. }
  228. if (cur_p[0].p < p_accept) {
  229. LOG("stopping drafting for seq %3d, probability too low: %.3f < %.3f\n", s, cur_p[0].p, p_accept);
  230. drafts[s].drafting = false;
  231. continue;
  232. }
  233. std::vector<int> sa(1, s);
  234. // attempt to split the branch if the probability is high enough
  235. for (int f = 1; f < 8; ++f) {
  236. if (n_seq_cur < n_seq_dft && cur_p[f].p > p_split) {
  237. LOG("splitting seq %3d into %3d\n", s, n_seq_cur);
  238. llama_kv_cache_seq_rm(ctx_dft, n_seq_cur, -1, -1);
  239. llama_kv_cache_seq_cp(ctx_dft, s, n_seq_cur, -1, -1);
  240. // all previous tokens from this branch are now also part of the new branch
  241. for (int t = 0; t < batch_tgt.n_tokens; ++t) {
  242. for (int p = 0; p < batch_tgt.n_seq_id[t]; ++p) {
  243. if (batch_tgt.seq_id[t][p] == s) {
  244. batch_tgt.seq_id[t][batch_tgt.n_seq_id[t]] = n_seq_cur;
  245. batch_tgt.n_seq_id[t]++;
  246. break;
  247. }
  248. }
  249. }
  250. // copy the draft state
  251. drafts[n_seq_cur].active = true;
  252. drafts[n_seq_cur].drafting = true;
  253. drafts[n_seq_cur].skip = true;
  254. drafts[n_seq_cur].tokens = drafts[s].tokens;
  255. drafts[n_seq_cur].i_batch_dft = drafts[s].i_batch_dft;
  256. drafts[n_seq_cur].i_batch_tgt = drafts[s].i_batch_tgt;
  257. llama_sampling_cp(drafts[s].ctx_sampling, drafts[n_seq_cur].ctx_sampling);
  258. sa.push_back(n_seq_cur);
  259. n_seq_cur++;
  260. } else {
  261. break;
  262. }
  263. }
  264. // add drafted token for each sequence
  265. for (int is = 0; is < (int) sa.size(); ++is) {
  266. const llama_token id = cur_p[is].id;
  267. const int s = sa[is];
  268. llama_sampling_accept(drafts[s].ctx_sampling, ctx_dft, id, true);
  269. drafts[s].tokens.push_back(id);
  270. // add unique drafted tokens to the target batch
  271. drafts[s].i_batch_tgt.push_back(batch_tgt.n_tokens);
  272. llama_batch_add(batch_tgt, id, n_past_tgt + i + 1, { s }, true);
  273. // add the token to the batch for batched decoding with the draft model
  274. drafts[s].i_batch_dft = batch_dft.n_tokens;
  275. llama_batch_add(batch_dft, id, n_past_cur, { s }, true);
  276. if (batch_tgt.n_tokens > n_draft) {
  277. drafts[s].drafting = false;
  278. }
  279. }
  280. }
  281. // no sequence is drafting anymore
  282. if (batch_dft.n_tokens == 0) {
  283. break;
  284. }
  285. // evaluate the drafted tokens on the draft model
  286. llama_decode(ctx_dft, batch_dft);
  287. ++n_past_cur;
  288. ++n_drafted;
  289. if (batch_tgt.n_tokens > n_draft) {
  290. break;
  291. }
  292. }
  293. // evaluate the target model on the drafted tokens
  294. {
  295. llama_kv_cache_seq_keep(ctx_tgt, 0);
  296. for (int s = 1; s < n_seq_dft; ++s) {
  297. llama_kv_cache_seq_cp(ctx_tgt, 0, s, -1, -1);
  298. }
  299. // LOG("target batch: %s\n", LOG_BATCH_TOSTR_PRETTY(ctx_tgt, batch_tgt).c_str());
  300. llama_decode(ctx_tgt, batch_tgt);
  301. ++n_past_tgt;
  302. }
  303. // the first token is always proposed by the traget model before the speculation loop so we erase it here
  304. for (int s = 0; s < n_seq_dft; ++s) {
  305. if (!drafts[s].active) {
  306. continue;
  307. }
  308. drafts[s].tokens.erase(drafts[s].tokens.begin());
  309. }
  310. }
  311. auto t_dec_end = ggml_time_us();
  312. LOG_TEE("\n\n");
  313. LOG_TEE("encoded %4d tokens in %8.3f seconds, speed: %8.3f t/s\n", n_input, (t_enc_end - t_enc_start) / 1e6f, inp.size() / ((t_enc_end - t_enc_start) / 1e6f));
  314. LOG_TEE("decoded %4d tokens in %8.3f seconds, speed: %8.3f t/s\n", n_predict, (t_dec_end - t_dec_start) / 1e6f, n_predict / ((t_dec_end - t_dec_start) / 1e6f));
  315. LOG_TEE("\n");
  316. LOG_TEE("n_draft = %d\n", n_draft);
  317. LOG_TEE("n_predict = %d\n", n_predict);
  318. LOG_TEE("n_drafted = %d\n", n_drafted);
  319. LOG_TEE("n_accept = %d\n", n_accept);
  320. LOG_TEE("accept = %.3f%%\n", 100.0f * n_accept / n_drafted);
  321. LOG_TEE("\ndraft:\n");
  322. llama_print_timings(ctx_dft);
  323. LOG_TEE("\ntarget:\n");
  324. llama_print_timings(ctx_tgt);
  325. llama_sampling_free(ctx_sampling);
  326. for (int s = 0; s < n_seq_dft; ++s) {
  327. llama_sampling_free(drafts[s].ctx_sampling);
  328. }
  329. llama_batch_free(batch_dft);
  330. llama_free(ctx_tgt);
  331. llama_free_model(model_tgt);
  332. llama_free(ctx_dft);
  333. llama_free_model(model_dft);
  334. llama_backend_free();
  335. fprintf(stderr, "\n\n");
  336. return 0;
  337. }