llama.cpp 151 KB

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  1. /**
  2. * llama.cpp - git 3ebb00935f3f0522b75df49c2769ab1774b91380
  3. *
  4. * MIT License
  5. *
  6. * Copyright (c) 2023 Georgi Gerganov
  7. *
  8. * Permission is hereby granted, free of charge, to any person obtaining a copy
  9. * of this software and associated documentation files (the "Software"), to deal
  10. * in the Software without restriction, including without limitation the rights
  11. * to use, copy, modify, merge, publish, distribute, sublicense, and/or sell
  12. * copies of the Software, and to permit persons to whom the Software is
  13. * furnished to do so, subject to the following conditions:
  14. *
  15. * The above copyright notice and this permission notice shall be included in all
  16. * copies or substantial portions of the Software.
  17. *
  18. * THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR
  19. * IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY,
  20. * FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE
  21. * AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER
  22. * LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM,
  23. * OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE
  24. * SOFTWARE.
  25. */
  26. // Defines fileno on msys:
  27. #ifndef _GNU_SOURCE
  28. #define _GNU_SOURCE
  29. #include <cstddef>
  30. #include <cstdint>
  31. #include <cstdio>
  32. #endif
  33. #include "llama-util.h"
  34. #include "llama.h"
  35. #include "ggml.h"
  36. #ifdef GGML_USE_CUBLAS
  37. #include "ggml-cuda.h"
  38. #elif defined(GGML_USE_CLBLAST)
  39. #include "ggml-opencl.h"
  40. #endif
  41. #ifdef GGML_USE_METAL
  42. #include "ggml-metal.h"
  43. #endif
  44. #ifdef GGML_USE_MPI
  45. #include "ggml-mpi.h"
  46. #endif
  47. #ifdef GGML_USE_K_QUANTS
  48. #ifndef QK_K
  49. #ifdef GGML_QKK_64
  50. #define QK_K 64
  51. #else
  52. #define QK_K 256
  53. #endif
  54. #endif
  55. #endif
  56. #include <array>
  57. #include <ctime>
  58. #include <cinttypes>
  59. #include <fstream>
  60. #include <random>
  61. #include <map>
  62. #include <unordered_map>
  63. #include <queue>
  64. #include <cassert>
  65. #include <cstring>
  66. #include <climits>
  67. #include <memory>
  68. #include <algorithm>
  69. #include <initializer_list>
  70. #include <thread>
  71. #include <atomic>
  72. #include <mutex>
  73. #include <sstream>
  74. #include <numeric>
  75. #if defined(_MSC_VER)
  76. #pragma warning(disable: 4244 4267) // possible loss of data
  77. #endif
  78. static void llama_log_internal(llama_log_level level, const char* format, ...);
  79. static void llama_log_callback_default(llama_log_level level, const char * text, void * user_data);
  80. #define LLAMA_LOG_INFO(...) llama_log_internal(LLAMA_LOG_LEVEL_INFO , __VA_ARGS__)
  81. #define LLAMA_LOG_WARN(...) llama_log_internal(LLAMA_LOG_LEVEL_WARN , __VA_ARGS__)
  82. #define LLAMA_LOG_ERROR(...) llama_log_internal(LLAMA_LOG_LEVEL_ERROR, __VA_ARGS__)
  83. #if !defined(GGML_USE_CUBLAS) && !defined(GGML_USE_METAL)
  84. #include "ggml-alloc.h"
  85. #define LLAMA_USE_ALLOCATOR
  86. #else
  87. #define LLAMA_USE_SCRATCH
  88. #define LLAMA_MAX_SCRATCH_BUFFERS 16
  89. #endif
  90. // available llama models
  91. enum e_model {
  92. MODEL_UNKNOWN,
  93. MODEL_3B,
  94. MODEL_7B,
  95. MODEL_13B,
  96. MODEL_30B,
  97. MODEL_34B,
  98. MODEL_65B,
  99. MODEL_70B,
  100. };
  101. static const size_t kB = 1024;
  102. static const size_t MB = 1024*1024;
  103. // computed for n_ctx == 2048
  104. // TODO: dynamically determine these sizes
  105. // needs modifications in ggml
  106. typedef void (*offload_func_t)(struct ggml_tensor * tensor);
  107. void llama_nop(struct ggml_tensor * tensor) { // don't offload by default
  108. (void) tensor;
  109. }
  110. //
  111. // ggml helpers
  112. //
  113. static void ggml_graph_compute_helper(std::vector<uint8_t> & buf, ggml_cgraph * graph, int n_threads) {
  114. struct ggml_cplan plan = ggml_graph_plan(graph, n_threads);
  115. if (plan.work_size > 0) {
  116. buf.resize(plan.work_size);
  117. plan.work_data = buf.data();
  118. }
  119. ggml_graph_compute(graph, &plan);
  120. }
  121. //
  122. // memory sizes (calculated for n_batch == 512)
  123. //
  124. static const std::map<e_model, size_t> & MEM_REQ_SCRATCH0(int n_ctx)
  125. {
  126. static std::map<e_model, size_t> k_sizes = {
  127. { MODEL_3B, ((size_t) n_ctx / 16ull + 92ull) * MB },
  128. { MODEL_7B, ((size_t) n_ctx / 16ull + 100ull) * MB },
  129. { MODEL_13B, ((size_t) n_ctx / 12ull + 120ull) * MB },
  130. { MODEL_30B, ((size_t) n_ctx / 9ull + 160ull) * MB },
  131. { MODEL_34B, ((size_t) n_ctx / 9ull + 160ull) * MB },
  132. { MODEL_65B, ((size_t) n_ctx / 6ull + 256ull) * MB }, // guess
  133. { MODEL_70B, ((size_t) n_ctx / 7ull + 164ull) * MB },
  134. };
  135. return k_sizes;
  136. }
  137. static const std::map<e_model, size_t> & MEM_REQ_SCRATCH1()
  138. {
  139. static std::map<e_model, size_t> k_sizes = {
  140. { MODEL_3B, 128ull * MB },
  141. { MODEL_7B, 160ull * MB },
  142. { MODEL_13B, 192ull * MB },
  143. { MODEL_30B, 256ull * MB },
  144. { MODEL_34B, 256ull * MB },
  145. { MODEL_65B, 384ull * MB }, // guess
  146. { MODEL_70B, 304ull * MB },
  147. };
  148. return k_sizes;
  149. }
  150. // used to store the compute graph tensors + non-scratch data
  151. static const std::map<e_model, size_t> & MEM_REQ_EVAL()
  152. {
  153. static std::map<e_model, size_t> k_sizes = {
  154. { MODEL_3B, 8ull * MB },
  155. { MODEL_7B, 10ull * MB },
  156. { MODEL_13B, 12ull * MB },
  157. { MODEL_30B, 16ull * MB },
  158. { MODEL_34B, 16ull * MB },
  159. { MODEL_65B, 24ull * MB }, // guess
  160. { MODEL_70B, 24ull * MB },
  161. };
  162. return k_sizes;
  163. }
  164. // amount of VRAM needed per batch size to hold temporary results
  165. // the values for 3b are not derived from testing but instead chosen conservatively
  166. static const std::map<e_model, size_t> & VRAM_REQ_SCRATCH_BASE()
  167. {
  168. static std::map<e_model, size_t> k_sizes = {
  169. { MODEL_3B, 512ull * kB },
  170. { MODEL_7B, 512ull * kB },
  171. { MODEL_13B, 640ull * kB },
  172. { MODEL_30B, 768ull * kB },
  173. { MODEL_34B, 768ull * kB },
  174. { MODEL_65B, 1280ull * kB },
  175. { MODEL_70B, 1280ull * kB },
  176. };
  177. return k_sizes;
  178. }
  179. // amount of VRAM needed per batch size and context to hold temporary results
  180. // the values for 3b are not derived from testing but instead chosen conservatively
  181. static const std::map<e_model, size_t> & VRAM_REQ_SCRATCH_PER_CONTEXT()
  182. {
  183. static std::map<e_model, size_t> k_sizes = {
  184. { MODEL_3B, 128ull },
  185. { MODEL_7B, 128ull },
  186. { MODEL_13B, 160ull },
  187. { MODEL_30B, 208ull },
  188. { MODEL_34B, 208ull },
  189. { MODEL_65B, 256ull },
  190. { MODEL_70B, 256ull },
  191. };
  192. return k_sizes;
  193. }
  194. // default hparams (LLaMA 7B)
  195. struct llama_hparams {
  196. uint32_t n_vocab = 32000;
  197. uint32_t n_ctx = 512; // this is provided as user input?
  198. uint32_t n_embd = 4096;
  199. uint32_t n_mult = 256;
  200. uint32_t n_head = 32;
  201. uint32_t n_head_kv = 32;
  202. uint32_t n_layer = 32;
  203. uint32_t n_rot = 64;
  204. // LLaMAv2
  205. // TODO: load from model data hparams
  206. float f_ffn_mult = 1.0f;
  207. float f_rms_norm_eps = LLAMA_DEFAULT_RMS_EPS;
  208. float rope_freq_base = 10000.0f;
  209. float rope_freq_scale = 1.0f;
  210. enum llama_ftype ftype = LLAMA_FTYPE_MOSTLY_F16;
  211. bool operator!=(const llama_hparams & other) const {
  212. return static_cast<bool>(memcmp(this, &other, sizeof(llama_hparams))); // NOLINT
  213. }
  214. uint32_t n_gqa() const {
  215. return n_head/n_head_kv;
  216. }
  217. uint32_t n_embd_head() const {
  218. return n_embd/n_head;
  219. }
  220. uint32_t n_embd_gqa() const {
  221. return n_embd/n_gqa();
  222. }
  223. size_t kv_size() const {
  224. size_t result = 2ull;
  225. result *= (size_t) n_embd_gqa();
  226. result *= (size_t) n_ctx;
  227. result *= (size_t) n_layer;
  228. result *= sizeof(ggml_fp16_t);
  229. return result;
  230. }
  231. };
  232. struct llama_layer {
  233. // normalization
  234. struct ggml_tensor * attention_norm;
  235. // attention
  236. struct ggml_tensor * wq;
  237. struct ggml_tensor * wk;
  238. struct ggml_tensor * wv;
  239. struct ggml_tensor * wo;
  240. // normalization
  241. struct ggml_tensor * ffn_norm;
  242. // ff
  243. struct ggml_tensor * w1;
  244. struct ggml_tensor * w2;
  245. struct ggml_tensor * w3;
  246. };
  247. struct llama_kv_cache {
  248. struct ggml_tensor * k = NULL;
  249. struct ggml_tensor * v = NULL;
  250. struct ggml_context * ctx = NULL;
  251. llama_ctx_buffer buf;
  252. int n; // number of tokens currently in the cache
  253. ~llama_kv_cache() {
  254. if (ctx) {
  255. ggml_free(ctx);
  256. }
  257. #ifdef GGML_USE_CUBLAS
  258. ggml_cuda_free_data(k);
  259. ggml_cuda_free_data(v);
  260. #endif // GGML_USE_CUBLAS
  261. }
  262. };
  263. struct llama_vocab {
  264. using id = int32_t;
  265. using token = std::string;
  266. struct token_score {
  267. token tok;
  268. float score;
  269. };
  270. std::unordered_map<token, id> token_to_id;
  271. std::vector<token_score> id_to_token;
  272. };
  273. struct llama_model {
  274. e_model type = MODEL_UNKNOWN;
  275. llama_hparams hparams;
  276. struct ggml_tensor * tok_embeddings;
  277. struct ggml_tensor * norm;
  278. struct ggml_tensor * output;
  279. std::vector<llama_layer> layers;
  280. int n_gpu_layers;
  281. // context
  282. struct ggml_context * ctx = NULL;
  283. // the model memory buffer
  284. llama_ctx_buffer buf;
  285. // model memory mapped file
  286. std::unique_ptr<llama_mmap> mapping;
  287. // objects representing data potentially being locked in memory
  288. llama_mlock mlock_buf;
  289. llama_mlock mlock_mmap;
  290. // for quantize-stats only
  291. std::vector<std::pair<std::string, struct ggml_tensor *>> tensors_by_name;
  292. int64_t t_load_us = 0;
  293. int64_t t_start_us = 0;
  294. llama_vocab vocab;
  295. ~llama_model() {
  296. if (ctx) {
  297. ggml_free(ctx);
  298. }
  299. #ifdef GGML_USE_CUBLAS
  300. for (size_t i = 0; i < tensors_by_name.size(); ++i) {
  301. ggml_cuda_free_data(tensors_by_name[i].second);
  302. }
  303. ggml_cuda_free_scratch();
  304. #elif defined(GGML_USE_CLBLAST)
  305. for (size_t i = 0; i < tensors_by_name.size(); ++i) {
  306. ggml_cl_free_data(tensors_by_name[i].second);
  307. }
  308. #endif
  309. }
  310. };
  311. struct llama_context {
  312. llama_context(const llama_model & model) : model(model), t_load_us(model.t_load_us), t_start_us(model.t_start_us) {}
  313. ~llama_context() {
  314. if (model_owner) {
  315. delete &model;
  316. }
  317. #ifdef GGML_USE_METAL
  318. if (ctx_metal) {
  319. ggml_metal_free(ctx_metal);
  320. }
  321. #endif
  322. #ifdef LLAMA_USE_ALLOCATOR
  323. if (alloc) {
  324. ggml_allocr_free(alloc);
  325. }
  326. #endif
  327. }
  328. std::mt19937 rng;
  329. bool has_evaluated_once = false;
  330. int64_t t_sample_us = 0;
  331. int64_t t_eval_us = 0;
  332. int64_t t_p_eval_us = 0;
  333. int32_t n_sample = 0; // number of tokens sampled
  334. int32_t n_eval = 0; // number of eval calls
  335. int32_t n_p_eval = 0; // number of tokens in eval calls for the prompt (with batch size > 1)
  336. const llama_model & model;
  337. bool model_owner = false;
  338. int64_t t_load_us;
  339. int64_t t_start_us;
  340. // key + value cache for the self attention
  341. struct llama_kv_cache kv_self;
  342. size_t mem_per_token = 0;
  343. // decode output (2-dimensional array: [n_tokens][n_vocab])
  344. std::vector<float> logits;
  345. bool logits_all = false;
  346. // input embedding (1-dimensional array: [n_embd])
  347. std::vector<float> embedding;
  348. // reusable buffer for `struct ggml_graph_plan.work_data`
  349. std::vector<uint8_t> work_buffer;
  350. // memory buffers used to evaluate the model
  351. // TODO: move in llama_state
  352. llama_ctx_buffer buf_compute;
  353. #ifdef LLAMA_USE_ALLOCATOR
  354. llama_ctx_buffer buf_alloc;
  355. ggml_allocr * alloc = NULL;
  356. #endif
  357. #ifdef LLAMA_USE_SCRATCH
  358. llama_ctx_buffer buf_scratch[LLAMA_MAX_SCRATCH_BUFFERS];
  359. int buf_last = 0;
  360. size_t buf_max_size[LLAMA_MAX_SCRATCH_BUFFERS] = { 0 };
  361. #endif
  362. #ifdef GGML_USE_METAL
  363. ggml_metal_context * ctx_metal = NULL;
  364. #endif
  365. #ifdef GGML_USE_MPI
  366. ggml_mpi_context * ctx_mpi = NULL;
  367. #endif
  368. void use_buf(struct ggml_context * ctx, int i) {
  369. #if defined(LLAMA_USE_SCRATCH)
  370. size_t last_size = 0;
  371. if (i == -1) {
  372. last_size = ggml_set_scratch(ctx, { 0, 0, nullptr, });
  373. } else {
  374. auto & buf = buf_scratch[i];
  375. last_size = ggml_set_scratch(ctx, { 0, buf.size, buf.addr, });
  376. }
  377. if (buf_last >= 0) {
  378. buf_max_size[buf_last] = std::max(buf_max_size[buf_last], last_size);
  379. }
  380. buf_last = i;
  381. #else
  382. (void) i;
  383. (void) ctx;
  384. #endif
  385. }
  386. size_t get_buf_max_mem(int i) const {
  387. #if defined(LLAMA_USE_SCRATCH)
  388. return buf_max_size[i];
  389. #else
  390. (void) i;
  391. return 0;
  392. #endif
  393. }
  394. };
  395. struct llama_state {
  396. // We save the log callback globally
  397. llama_log_callback log_callback = llama_log_callback_default;
  398. void * log_callback_user_data = nullptr;
  399. };
  400. // global state
  401. static llama_state g_state;
  402. template <typename T>
  403. static T checked_mul(T a, T b) {
  404. T ret = a * b;
  405. if (a != 0 && ret / a != b) {
  406. throw std::runtime_error(format("overflow multiplying %llu * %llu",
  407. (unsigned long long) a, (unsigned long long) b));
  408. }
  409. return ret;
  410. }
  411. static size_t checked_div(size_t a, size_t b) {
  412. if (b == 0 || a % b != 0) {
  413. throw std::runtime_error(format("error dividing %zu / %zu", a, b));
  414. }
  415. return a / b;
  416. }
  417. static std::string llama_format_tensor_shape(const std::vector<uint32_t> & ne) {
  418. char buf[256];
  419. snprintf(buf, sizeof(buf), "%5u", ne.at(0));
  420. for (size_t i = 1; i < ne.size(); i++) {
  421. snprintf(buf + strlen(buf), sizeof(buf) - strlen(buf), " x %5u", ne.at(i));
  422. }
  423. return buf;
  424. }
  425. static size_t llama_calc_tensor_size(const std::vector<uint32_t> & ne, enum ggml_type type) {
  426. size_t size = ggml_type_size(type);
  427. for (uint32_t dim : ne) {
  428. size = checked_mul<size_t>(size, dim);
  429. }
  430. return size / ggml_blck_size(type);
  431. }
  432. struct llama_load_tensor {
  433. std::string name;
  434. enum ggml_type type = GGML_TYPE_F32;
  435. std::vector<uint32_t> ne;
  436. size_t file_off;
  437. size_t size;
  438. struct ggml_tensor * ggml_tensor = NULL;
  439. uint8_t * data;
  440. };
  441. struct llama_load_tensors_map {
  442. // tensors is kept in a separate vector to preserve file order
  443. std::vector<llama_load_tensor> tensors;
  444. std::unordered_map<std::string, size_t> name_to_idx;
  445. };
  446. enum llama_file_version {
  447. LLAMA_FILE_VERSION_GGML,
  448. LLAMA_FILE_VERSION_GGMF_V1, // added version field and scores in vocab
  449. LLAMA_FILE_VERSION_GGJT_V1, // added padding
  450. LLAMA_FILE_VERSION_GGJT_V2, // changed quantization format
  451. LLAMA_FILE_VERSION_GGJT_V3, // changed Q4 and Q8 quantization format
  452. };
  453. struct llama_file_loader {
  454. llama_file file;
  455. llama_file_version file_version;
  456. llama_hparams hparams;
  457. llama_vocab vocab;
  458. llama_file_loader(const char * fname, llama_load_tensors_map & tensors_map)
  459. : file(fname, "rb") {
  460. LLAMA_LOG_INFO("llama.cpp: loading model from %s\n", fname);
  461. read_magic();
  462. read_hparams();
  463. read_vocab();
  464. read_tensor_metadata(tensors_map);
  465. }
  466. void read_magic() {
  467. uint32_t magic = file.read_u32();
  468. if (magic == LLAMA_FILE_MAGIC_GGML) {
  469. file_version = LLAMA_FILE_VERSION_GGML;
  470. return;
  471. }
  472. uint32_t version = file.read_u32();
  473. switch (magic) {
  474. case LLAMA_FILE_MAGIC_GGMF:
  475. switch (version) {
  476. case 1: file_version = LLAMA_FILE_VERSION_GGMF_V1; return;
  477. }
  478. break;
  479. case LLAMA_FILE_MAGIC_GGJT:
  480. switch (version) {
  481. case 1: file_version = LLAMA_FILE_VERSION_GGJT_V1; return;
  482. case 2: file_version = LLAMA_FILE_VERSION_GGJT_V2; return;
  483. case 3: file_version = LLAMA_FILE_VERSION_GGJT_V3; return;
  484. }
  485. }
  486. throw std::runtime_error(format("unknown (magic, version) combination: %08x, %08x; is this really a GGML file?",
  487. magic, version));
  488. }
  489. void read_hparams() {
  490. hparams.n_vocab = file.read_u32();
  491. hparams.n_embd = file.read_u32();
  492. hparams.n_mult = file.read_u32();
  493. hparams.n_head = file.read_u32();
  494. hparams.n_layer = file.read_u32();
  495. hparams.n_rot = file.read_u32();
  496. hparams.ftype = (enum llama_ftype) file.read_u32();
  497. // LLaMAv2
  498. // TODO: read from header
  499. hparams.n_head_kv = hparams.n_head;
  500. }
  501. void read_vocab() {
  502. vocab.id_to_token.resize(hparams.n_vocab);
  503. for (uint32_t i = 0; i < hparams.n_vocab; i++) {
  504. uint32_t len = file.read_u32();
  505. std::string word = file.read_string(len);
  506. float score = 0.0f;
  507. file.read_raw(&score, sizeof(score));
  508. vocab.token_to_id[word] = i;
  509. auto & tok_score = vocab.id_to_token[i];
  510. tok_score.tok = std::move(word);
  511. tok_score.score = score;
  512. }
  513. }
  514. void read_tensor_metadata(llama_load_tensors_map & tensors_map) {
  515. while (file.tell() < file.size) {
  516. llama_load_tensor tensor;
  517. uint32_t n_dims = file.read_u32();
  518. uint32_t name_len = file.read_u32();
  519. tensor.type = (enum ggml_type) file.read_u32();
  520. tensor.ne.resize(n_dims);
  521. file.read_raw(tensor.ne.data(), sizeof(tensor.ne[0]) * n_dims);
  522. std::string name = file.read_string(name_len);
  523. if (n_dims < 1 || n_dims > 2) {
  524. throw std::runtime_error(format("llama.cpp: tensor '%s' should not be %u-dimensional", name.c_str(), n_dims));
  525. }
  526. switch (tensor.type) {
  527. case GGML_TYPE_F32:
  528. case GGML_TYPE_F16:
  529. case GGML_TYPE_Q4_0:
  530. case GGML_TYPE_Q4_1:
  531. case GGML_TYPE_Q5_0:
  532. case GGML_TYPE_Q5_1:
  533. case GGML_TYPE_Q8_0:
  534. case GGML_TYPE_Q2_K:
  535. case GGML_TYPE_Q3_K:
  536. case GGML_TYPE_Q4_K:
  537. case GGML_TYPE_Q5_K:
  538. case GGML_TYPE_Q6_K:
  539. break;
  540. default: {
  541. throw std::runtime_error(format("unrecognized tensor type %u\n", tensor.type));
  542. }
  543. }
  544. // skip to the next multiple of 32 bytes
  545. if (file_version >= LLAMA_FILE_VERSION_GGJT_V1) {
  546. file.seek(-static_cast<ptrdiff_t>(file.tell()) & 31, SEEK_CUR);
  547. }
  548. tensor.file_off = file.tell();
  549. tensor.name = name;
  550. tensor.size = llama_calc_tensor_size(tensor.ne, tensor.type);
  551. file.seek(tensor.size, SEEK_CUR);
  552. tensors_map.tensors.push_back(tensor);
  553. tensors_map.name_to_idx[name] = tensors_map.tensors.size() - 1;
  554. }
  555. }
  556. };
  557. struct llama_file_saver {
  558. llama_file file;
  559. llama_file_loader * any_file_loader;
  560. llama_file_saver(const char * fname, llama_file_loader * any_file_loader, enum llama_ftype new_ftype)
  561. : file(fname, "wb"), any_file_loader(any_file_loader) {
  562. LLAMA_LOG_INFO("llama.cpp: saving model to %s\n", fname);
  563. write_magic();
  564. write_hparams(new_ftype);
  565. write_vocab();
  566. }
  567. void write_magic() {
  568. file.write_u32(LLAMA_FILE_MAGIC); // magic
  569. file.write_u32(LLAMA_FILE_VERSION); // version
  570. }
  571. void write_hparams(enum llama_ftype new_ftype) {
  572. const llama_hparams & hparams = any_file_loader->hparams;
  573. file.write_u32(hparams.n_vocab);
  574. file.write_u32(hparams.n_embd);
  575. file.write_u32(hparams.n_mult);
  576. file.write_u32(hparams.n_head);
  577. file.write_u32(hparams.n_layer);
  578. file.write_u32(hparams.n_rot);
  579. file.write_u32(new_ftype);
  580. }
  581. void write_vocab() {
  582. if (any_file_loader->file_version == LLAMA_FILE_VERSION_GGML) {
  583. LLAMA_LOG_WARN("llama.cpp: WARNING: input is an old file that doesn't have scores; will add dummy scores\n");
  584. }
  585. uint32_t n_vocab = any_file_loader->hparams.n_vocab;
  586. for (uint32_t i = 0; i < n_vocab; i++) {
  587. const auto & token_score = any_file_loader->vocab.id_to_token.at(i);
  588. file.write_u32((uint32_t) token_score.tok.size());
  589. file.write_raw(token_score.tok.data(), token_score.tok.size());
  590. file.write_raw(&token_score.score, sizeof(token_score.score));
  591. }
  592. }
  593. void write_tensor(llama_load_tensor & tensor, enum ggml_type new_type, const void * new_data, size_t new_size) {
  594. switch (new_type) {
  595. case GGML_TYPE_F32:
  596. case GGML_TYPE_F16:
  597. case GGML_TYPE_Q4_0:
  598. case GGML_TYPE_Q4_1:
  599. case GGML_TYPE_Q5_0:
  600. case GGML_TYPE_Q5_1:
  601. case GGML_TYPE_Q8_0:
  602. case GGML_TYPE_Q2_K:
  603. case GGML_TYPE_Q3_K:
  604. case GGML_TYPE_Q4_K:
  605. case GGML_TYPE_Q5_K:
  606. case GGML_TYPE_Q6_K:
  607. break;
  608. default: LLAMA_ASSERT(false);
  609. }
  610. file.write_u32((uint32_t) tensor.ne.size());
  611. file.write_u32((uint32_t) tensor.name.size());
  612. file.write_u32(new_type);
  613. file.write_raw(tensor.ne.data(), sizeof(tensor.ne[0]) * tensor.ne.size());
  614. file.write_raw(tensor.name.data(), tensor.name.size());
  615. file.seek(-static_cast<ptrdiff_t>(file.tell()) & 31, SEEK_CUR);
  616. LLAMA_ASSERT(new_size == llama_calc_tensor_size(tensor.ne, new_type));
  617. file.write_raw(new_data, new_size);
  618. }
  619. };
  620. struct llama_model_loader {
  621. std::unique_ptr<llama_file_loader> file_loader;
  622. llama_load_tensors_map tensors_map;
  623. bool use_mmap;
  624. size_t num_ggml_tensors_created = 0;
  625. struct ggml_context * ggml_ctx = NULL;
  626. std::unique_ptr<llama_mmap> mapping;
  627. llama_model_loader(const std::string & fname_base, bool use_mmap) {
  628. file_loader = std::unique_ptr<llama_file_loader>(new llama_file_loader(fname_base.c_str(), tensors_map));
  629. if (!llama_mmap::SUPPORTED) {
  630. use_mmap = false;
  631. }
  632. this->use_mmap = use_mmap;
  633. }
  634. void calc_sizes(size_t * ctx_size_p, size_t * mmapped_size_p) const {
  635. *ctx_size_p = *mmapped_size_p = 0;
  636. for (const llama_load_tensor & lt : tensors_map.tensors) {
  637. *ctx_size_p += sizeof(struct ggml_tensor) + GGML_OBJECT_SIZE;
  638. *(use_mmap ? mmapped_size_p : ctx_size_p) += lt.size + 16;
  639. }
  640. }
  641. struct ggml_tensor * get_tensor(const std::string & name, const std::vector<uint32_t> & ne, ggml_backend backend) {
  642. auto it = tensors_map.name_to_idx.find(name);
  643. if (it == tensors_map.name_to_idx.end()) {
  644. throw std::runtime_error(std::runtime_error(format("llama.cpp: tensor '%s' is missing from model", name.c_str())));
  645. }
  646. llama_load_tensor & lt = tensors_map.tensors.at(it->second);
  647. if (lt.ne != ne) {
  648. throw std::runtime_error(format("llama.cpp: tensor '%s' has wrong shape; expected %s, got %s",
  649. name.c_str(), llama_format_tensor_shape(ne).c_str(), llama_format_tensor_shape(lt.ne).c_str()));
  650. }
  651. return get_tensor_for(lt, backend);
  652. }
  653. struct ggml_tensor * get_tensor_for(llama_load_tensor & lt, ggml_backend backend) {
  654. struct ggml_tensor * tensor;
  655. if (backend != GGML_BACKEND_CPU) {
  656. ggml_set_no_alloc(ggml_ctx, true);
  657. }
  658. if (lt.ne.size() == 2) {
  659. tensor = ggml_new_tensor_2d(ggml_ctx, lt.type, lt.ne.at(0), lt.ne.at(1));
  660. } else {
  661. LLAMA_ASSERT(lt.ne.size() == 1);
  662. tensor = ggml_new_tensor_1d(ggml_ctx, lt.type, lt.ne.at(0));
  663. }
  664. ggml_set_name(tensor, lt.name.c_str());
  665. LLAMA_ASSERT(lt.ggml_tensor == NULL); // if this fails, we called get_tensor twice on the same tensor
  666. if (backend != GGML_BACKEND_CPU) {
  667. ggml_set_no_alloc(ggml_ctx, use_mmap);
  668. }
  669. tensor->backend = backend;
  670. lt.ggml_tensor = tensor;
  671. num_ggml_tensors_created++;
  672. return tensor;
  673. }
  674. void done_getting_tensors() const {
  675. if (num_ggml_tensors_created != tensors_map.tensors.size()) {
  676. throw std::runtime_error(std::string("llama.cpp: file contained more tensors than expected"));
  677. }
  678. }
  679. void load_all_data(llama_progress_callback progress_callback, void * progress_callback_user_data, llama_mlock * lmlock) {
  680. size_t data_size = 0;
  681. size_t prefetch_size = file_loader->file.size;
  682. size_t lock_size = 0;
  683. for (const llama_load_tensor & lt : tensors_map.tensors) {
  684. data_size += lt.size;
  685. if (lt.ggml_tensor->backend != GGML_BACKEND_CPU) {
  686. prefetch_size -= lt.size;
  687. }
  688. }
  689. if (use_mmap) {
  690. mapping.reset(new llama_mmap(&file_loader->file, prefetch_size, ggml_is_numa()));
  691. if (lmlock) {
  692. lmlock->init(mapping->addr);
  693. }
  694. }
  695. size_t done_size = 0;
  696. for (llama_load_tensor & lt : tensors_map.tensors) {
  697. if (progress_callback) {
  698. progress_callback((float) done_size / data_size, progress_callback_user_data);
  699. }
  700. LLAMA_ASSERT(lt.ggml_tensor); // unused tensors should have been caught by load_data already
  701. lt.data = (uint8_t *) lt.ggml_tensor->data;
  702. // allocate temp buffer if not using mmap
  703. if (!use_mmap && lt.data == NULL) {
  704. GGML_ASSERT(lt.ggml_tensor->backend != GGML_BACKEND_CPU);
  705. lt.data = (uint8_t*)malloc(ggml_nbytes(lt.ggml_tensor));
  706. }
  707. load_data_for(lt);
  708. switch(lt.ggml_tensor->backend) {
  709. case GGML_BACKEND_CPU:
  710. lt.ggml_tensor->data = lt.data;
  711. if (use_mmap && lmlock) {
  712. lock_size += lt.size;
  713. lmlock->grow_to(lock_size);
  714. }
  715. break;
  716. #if defined(GGML_USE_CUBLAS)
  717. case GGML_BACKEND_GPU:
  718. case GGML_BACKEND_GPU_SPLIT:
  719. ggml_cuda_transform_tensor(lt.data, lt.ggml_tensor);
  720. if (!use_mmap) {
  721. free(lt.data);
  722. }
  723. break;
  724. #elif defined(GGML_USE_CLBLAST)
  725. case GGML_BACKEND_GPU:
  726. ggml_cl_transform_tensor(lt.data, lt.ggml_tensor);
  727. if (!use_mmap) {
  728. free(lt.data);
  729. }
  730. break;
  731. #endif
  732. default:
  733. continue;
  734. }
  735. done_size += lt.size;
  736. }
  737. }
  738. void load_data_for(llama_load_tensor & lt) {
  739. if (use_mmap) {
  740. lt.data = (uint8_t *) mapping->addr + lt.file_off;
  741. } else {
  742. llama_file & file = file_loader->file;
  743. file.seek(lt.file_off, SEEK_SET);
  744. file.read_raw(lt.data, lt.size);
  745. }
  746. if (0) {
  747. print_checksum(lt);
  748. }
  749. }
  750. static void print_checksum(llama_load_tensor & lt) {
  751. uint32_t sum = 0;
  752. for (size_t i = 0; i < lt.size; i++) {
  753. uint8_t byte = lt.data[i];
  754. sum = byte + (sum << 6) + (sum << 16) - sum; // sdbm hash
  755. }
  756. LLAMA_LOG_INFO("%s checksum: %#08x (%s, size %zu)\n", lt.name.c_str(), sum,
  757. llama_format_tensor_shape(lt.ne).c_str(), lt.size);
  758. }
  759. };
  760. //
  761. // kv cache
  762. //
  763. static bool kv_cache_init(
  764. const struct llama_hparams & hparams,
  765. struct llama_kv_cache & cache,
  766. ggml_type wtype,
  767. int n_ctx,
  768. int n_gpu_layers) {
  769. const int n_embd = hparams.n_embd_gqa();
  770. const int n_layer = hparams.n_layer;
  771. const int64_t n_mem = n_layer*n_ctx;
  772. const int64_t n_elements = n_embd*n_mem;
  773. cache.buf.resize(2u*n_elements*ggml_type_size(wtype) + 2u*MB);
  774. cache.n = 0;
  775. struct ggml_init_params params;
  776. params.mem_size = cache.buf.size;
  777. params.mem_buffer = cache.buf.addr;
  778. params.no_alloc = false;
  779. cache.ctx = ggml_init(params);
  780. if (!cache.ctx) {
  781. LLAMA_LOG_ERROR("%s: failed to allocate memory for kv cache\n", __func__);
  782. return false;
  783. }
  784. cache.k = ggml_new_tensor_1d(cache.ctx, wtype, n_elements);
  785. cache.v = ggml_new_tensor_1d(cache.ctx, wtype, n_elements);
  786. ggml_set_name(cache.k, "cache_k");
  787. ggml_set_name(cache.v, "cache_v");
  788. (void) n_gpu_layers;
  789. #ifdef GGML_USE_CUBLAS
  790. if (n_gpu_layers > n_layer + 1) {
  791. ggml_cuda_assign_buffers_no_scratch(cache.v);
  792. }
  793. if (n_gpu_layers > n_layer + 2) {
  794. ggml_cuda_assign_buffers_no_scratch(cache.k);
  795. }
  796. #endif // GGML_USE_CUBLAS
  797. return true;
  798. }
  799. struct llama_context_params llama_context_default_params() {
  800. struct llama_context_params result = {
  801. /*.seed =*/ LLAMA_DEFAULT_SEED,
  802. /*.n_ctx =*/ 512,
  803. /*.n_batch =*/ 512,
  804. /*.n_gqa =*/ 1,
  805. /*.rms_norm_eps =*/ LLAMA_DEFAULT_RMS_EPS,
  806. /*.gpu_layers =*/ 0,
  807. /*.main_gpu =*/ 0,
  808. /*.tensor_split =*/ nullptr,
  809. /*.rope_freq_base =*/ 10000.0f,
  810. /*.rope_freq_scale =*/ 1.0f,
  811. /*.progress_callback =*/ nullptr,
  812. /*.progress_callback_user_data =*/ nullptr,
  813. /*.low_vram =*/ false,
  814. /*.mul_mat_q =*/ false,
  815. /*.f16_kv =*/ true,
  816. /*.logits_all =*/ false,
  817. /*.vocab_only =*/ false,
  818. /*.use_mmap =*/ true,
  819. /*.use_mlock =*/ false,
  820. /*.embedding =*/ false,
  821. };
  822. return result;
  823. }
  824. struct llama_model_quantize_params llama_model_quantize_default_params() {
  825. struct llama_model_quantize_params result = {
  826. /*.nthread =*/ 0,
  827. /*.ftype =*/ LLAMA_FTYPE_MOSTLY_Q5_1,
  828. /*.allow_requantize =*/ false,
  829. /*.quantize_output_tensor =*/ true,
  830. };
  831. return result;
  832. }
  833. int llama_max_devices() {
  834. return LLAMA_MAX_DEVICES;
  835. }
  836. bool llama_mmap_supported() {
  837. return llama_mmap::SUPPORTED;
  838. }
  839. bool llama_mlock_supported() {
  840. return llama_mlock::SUPPORTED;
  841. }
  842. void llama_backend_init(bool numa) {
  843. ggml_time_init();
  844. // needed to initialize f16 tables
  845. {
  846. struct ggml_init_params params = { 0, NULL, false };
  847. struct ggml_context * ctx = ggml_init(params);
  848. ggml_free(ctx);
  849. }
  850. if (numa) {
  851. ggml_numa_init();
  852. }
  853. #ifdef GGML_USE_MPI
  854. ggml_mpi_backend_init();
  855. #endif
  856. }
  857. void llama_backend_free() {
  858. #ifdef GGML_USE_MPI
  859. ggml_mpi_backend_free();
  860. #endif
  861. }
  862. int64_t llama_time_us() {
  863. return ggml_time_us();
  864. }
  865. //
  866. // model loading
  867. //
  868. static const char *llama_file_version_name(llama_file_version version) {
  869. switch (version) {
  870. case LLAMA_FILE_VERSION_GGML: return "'ggml' (old version with low tokenizer quality and no mmap support)";
  871. case LLAMA_FILE_VERSION_GGMF_V1: return "ggmf v1 (old version with no mmap support)";
  872. case LLAMA_FILE_VERSION_GGJT_V1: return "ggjt v1 (pre #1405)";
  873. case LLAMA_FILE_VERSION_GGJT_V2: return "ggjt v2 (pre #1508)";
  874. case LLAMA_FILE_VERSION_GGJT_V3: return "ggjt v3 (latest)";
  875. }
  876. return "unknown";
  877. }
  878. static const char *llama_ftype_name(enum llama_ftype ftype) {
  879. switch (ftype) {
  880. case LLAMA_FTYPE_ALL_F32: return "all F32";
  881. case LLAMA_FTYPE_MOSTLY_F16: return "mostly F16";
  882. case LLAMA_FTYPE_MOSTLY_Q4_0: return "mostly Q4_0";
  883. case LLAMA_FTYPE_MOSTLY_Q4_1: return "mostly Q4_1";
  884. case LLAMA_FTYPE_MOSTLY_Q4_1_SOME_F16:
  885. return "mostly Q4_1, some F16";
  886. case LLAMA_FTYPE_MOSTLY_Q5_0: return "mostly Q5_0";
  887. case LLAMA_FTYPE_MOSTLY_Q5_1: return "mostly Q5_1";
  888. case LLAMA_FTYPE_MOSTLY_Q8_0: return "mostly Q8_0";
  889. // K-quants
  890. case LLAMA_FTYPE_MOSTLY_Q2_K: return "mostly Q2_K";
  891. case LLAMA_FTYPE_MOSTLY_Q3_K_S: return "mostly Q3_K - Small";
  892. case LLAMA_FTYPE_MOSTLY_Q3_K_M: return "mostly Q3_K - Medium";
  893. case LLAMA_FTYPE_MOSTLY_Q3_K_L: return "mostly Q3_K - Large";
  894. case LLAMA_FTYPE_MOSTLY_Q4_K_S: return "mostly Q4_K - Small";
  895. case LLAMA_FTYPE_MOSTLY_Q4_K_M: return "mostly Q4_K - Medium";
  896. case LLAMA_FTYPE_MOSTLY_Q5_K_S: return "mostly Q5_K - Small";
  897. case LLAMA_FTYPE_MOSTLY_Q5_K_M: return "mostly Q5_K - Medium";
  898. case LLAMA_FTYPE_MOSTLY_Q6_K: return "mostly Q6_K";
  899. default: return "unknown, may not work";
  900. }
  901. }
  902. static const char *llama_model_type_name(e_model type) {
  903. switch (type) {
  904. case MODEL_3B: return "3B";
  905. case MODEL_7B: return "7B";
  906. case MODEL_13B: return "13B";
  907. case MODEL_30B: return "30B";
  908. case MODEL_34B: return "34B";
  909. case MODEL_65B: return "65B";
  910. case MODEL_70B: return "70B";
  911. default: LLAMA_ASSERT(false);
  912. }
  913. }
  914. static void llama_model_load_internal(
  915. const std::string & fname,
  916. llama_model & model,
  917. llama_vocab & vocab,
  918. int n_ctx,
  919. int n_batch,
  920. int n_gqa,
  921. float rms_norm_eps,
  922. int n_gpu_layers,
  923. int main_gpu,
  924. const float * tensor_split,
  925. const bool mul_mat_q,
  926. float rope_freq_base,
  927. float rope_freq_scale,
  928. bool low_vram,
  929. ggml_type memory_type,
  930. bool use_mmap,
  931. bool use_mlock,
  932. bool vocab_only,
  933. llama_progress_callback progress_callback,
  934. void * progress_callback_user_data) {
  935. model.t_start_us = ggml_time_us();
  936. std::unique_ptr<llama_model_loader> ml(new llama_model_loader(fname, use_mmap));
  937. vocab = std::move(ml->file_loader->vocab);
  938. model.hparams = ml->file_loader->hparams;
  939. model.n_gpu_layers = n_gpu_layers;
  940. llama_file_version file_version = ml->file_loader->file_version;
  941. auto & hparams = model.hparams;
  942. // TODO: read from file
  943. hparams.f_rms_norm_eps = rms_norm_eps;
  944. {
  945. switch (hparams.n_layer) {
  946. case 26: model.type = e_model::MODEL_3B; break;
  947. case 32: model.type = e_model::MODEL_7B; break;
  948. case 40: model.type = e_model::MODEL_13B; break;
  949. case 48: model.type = e_model::MODEL_34B; break;
  950. case 60: model.type = e_model::MODEL_30B; break;
  951. case 80: model.type = e_model::MODEL_65B; break;
  952. default:
  953. {
  954. if (hparams.n_layer < 32) {
  955. model.type = e_model::MODEL_7B;
  956. }
  957. } break;
  958. }
  959. hparams.n_ctx = n_ctx;
  960. // LLaMAv2
  961. // TODO: temporary until GGUF
  962. LLAMA_ASSERT(hparams.n_head % n_gqa == 0);
  963. hparams.n_head_kv = hparams.n_head / n_gqa;
  964. if (model.type == e_model::MODEL_65B && n_gqa == 8) {
  965. LLAMA_LOG_WARN("%s: warning: assuming 70B model based on GQA == %d\n", __func__, n_gqa);
  966. model.type = e_model::MODEL_70B;
  967. hparams.f_ffn_mult = 1.3f; // from the params.json of the 70B model
  968. } else if (model.type == e_model::MODEL_34B && n_gqa == 8) {
  969. hparams.f_ffn_mult = 1.0f; // from the params.json of the 34B model
  970. }
  971. hparams.rope_freq_base = rope_freq_base;
  972. hparams.rope_freq_scale = rope_freq_scale;
  973. }
  974. // ref: https://github.com/facebookresearch/llama/blob/6c7fe276574e78057f917549435a2554000a876d/llama/model.py#L194-L199
  975. const uint32_t n_ff_raw = 2*(4*hparams.n_embd)/3;
  976. const uint32_t n_ff_mult = hparams.f_ffn_mult*n_ff_raw;
  977. const uint32_t n_ff = ((n_ff_mult + hparams.n_mult - 1)/hparams.n_mult)*hparams.n_mult;
  978. //const uint32_t n_ff = 28672;
  979. {
  980. LLAMA_LOG_INFO("%s: format = %s\n", __func__, llama_file_version_name(file_version));
  981. LLAMA_LOG_INFO("%s: n_vocab = %u\n", __func__, hparams.n_vocab);
  982. LLAMA_LOG_INFO("%s: n_ctx = %u\n", __func__, hparams.n_ctx);
  983. LLAMA_LOG_INFO("%s: n_embd = %u\n", __func__, hparams.n_embd);
  984. LLAMA_LOG_INFO("%s: n_mult = %u\n", __func__, hparams.n_mult);
  985. LLAMA_LOG_INFO("%s: n_head = %u\n", __func__, hparams.n_head);
  986. LLAMA_LOG_INFO("%s: n_head_kv = %u\n", __func__, hparams.n_head_kv);
  987. LLAMA_LOG_INFO("%s: n_layer = %u\n", __func__, hparams.n_layer);
  988. LLAMA_LOG_INFO("%s: n_rot = %u\n", __func__, hparams.n_rot); // a.k.a. n_embd_head, n_head_dim
  989. LLAMA_LOG_INFO("%s: n_gqa = %u\n", __func__, hparams.n_gqa());
  990. LLAMA_LOG_INFO("%s: rnorm_eps = %.1e\n", __func__, hparams.f_rms_norm_eps);
  991. LLAMA_LOG_INFO("%s: n_ff = %u\n", __func__, n_ff);
  992. LLAMA_LOG_INFO("%s: freq_base = %.1f\n", __func__, hparams.rope_freq_base);
  993. LLAMA_LOG_INFO("%s: freq_scale = %g\n", __func__, hparams.rope_freq_scale);
  994. LLAMA_LOG_INFO("%s: ftype = %u (%s)\n", __func__, hparams.ftype, llama_ftype_name(hparams.ftype));
  995. LLAMA_LOG_INFO("%s: model size = %s\n", __func__, llama_model_type_name(model.type));
  996. }
  997. if (file_version < LLAMA_FILE_VERSION_GGJT_V2) {
  998. if (hparams.ftype != LLAMA_FTYPE_ALL_F32 &&
  999. hparams.ftype != LLAMA_FTYPE_MOSTLY_F16 &&
  1000. hparams.ftype != LLAMA_FTYPE_MOSTLY_Q8_0) {
  1001. throw std::runtime_error(format("this format is no longer supported (see https://github.com/ggerganov/llama.cpp/pull/1405)"));
  1002. }
  1003. }
  1004. if (file_version < LLAMA_FILE_VERSION_GGJT_V3) {
  1005. if (hparams.ftype == LLAMA_FTYPE_MOSTLY_Q4_0 ||
  1006. hparams.ftype == LLAMA_FTYPE_MOSTLY_Q4_1 ||
  1007. hparams.ftype == LLAMA_FTYPE_MOSTLY_Q8_0) {
  1008. throw std::runtime_error(format("this format is no longer supported (see https://github.com/ggerganov/llama.cpp/pull/1508)"));
  1009. }
  1010. }
  1011. if (vocab_only) {
  1012. return;
  1013. }
  1014. auto & ctx = model.ctx;
  1015. size_t ctx_size;
  1016. size_t mmapped_size;
  1017. ml->calc_sizes(&ctx_size, &mmapped_size);
  1018. LLAMA_LOG_INFO("%s: ggml ctx size = %7.2f MB\n", __func__, ctx_size/1024.0/1024.0);
  1019. // create the ggml context
  1020. {
  1021. model.buf.resize(ctx_size);
  1022. if (use_mlock) {
  1023. model.mlock_buf.init (model.buf.addr);
  1024. model.mlock_buf.grow_to(model.buf.size);
  1025. }
  1026. struct ggml_init_params params = {
  1027. /*.mem_size =*/ model.buf.size,
  1028. /*.mem_buffer =*/ model.buf.addr,
  1029. /*.no_alloc =*/ ml->use_mmap,
  1030. };
  1031. model.ctx = ggml_init(params);
  1032. if (!model.ctx) {
  1033. throw std::runtime_error(format("ggml_init() failed"));
  1034. }
  1035. }
  1036. (void) main_gpu;
  1037. (void) mul_mat_q;
  1038. #if defined(GGML_USE_CUBLAS)
  1039. LLAMA_LOG_INFO("%s: using CUDA for GPU acceleration\n", __func__);
  1040. ggml_cuda_set_main_device(main_gpu);
  1041. ggml_cuda_set_mul_mat_q(mul_mat_q);
  1042. #define LLAMA_BACKEND_OFFLOAD GGML_BACKEND_GPU
  1043. #define LLAMA_BACKEND_OFFLOAD_SPLIT GGML_BACKEND_GPU_SPLIT
  1044. #elif defined(GGML_USE_CLBLAST)
  1045. LLAMA_LOG_INFO("%s: using OpenCL for GPU acceleration\n", __func__);
  1046. #define LLAMA_BACKEND_OFFLOAD GGML_BACKEND_GPU
  1047. #define LLAMA_BACKEND_OFFLOAD_SPLIT GGML_BACKEND_GPU
  1048. #else
  1049. #define LLAMA_BACKEND_OFFLOAD GGML_BACKEND_CPU
  1050. #define LLAMA_BACKEND_OFFLOAD_SPLIT GGML_BACKEND_CPU
  1051. #endif
  1052. // prepare memory for the weights
  1053. size_t vram_weights = 0;
  1054. size_t vram_scratch = 0;
  1055. {
  1056. const uint32_t n_embd = hparams.n_embd;
  1057. const uint32_t n_embd_gqa = hparams.n_embd_gqa();
  1058. const uint32_t n_layer = hparams.n_layer;
  1059. const uint32_t n_vocab = hparams.n_vocab;
  1060. ml->ggml_ctx = ctx;
  1061. model.tok_embeddings = ml->get_tensor("tok_embeddings.weight", {n_embd, n_vocab}, GGML_BACKEND_CPU);
  1062. // "output" tensor
  1063. {
  1064. ggml_backend backend_norm;
  1065. ggml_backend backend_output;
  1066. if (n_gpu_layers > int(n_layer)) { // NOLINT
  1067. // norm is not performance relevant on its own but keeping it in VRAM reduces data copying
  1068. // on Windows however this is detrimental unless everything is on the GPU
  1069. #ifndef _WIN32
  1070. backend_norm = low_vram ? GGML_BACKEND_CPU : LLAMA_BACKEND_OFFLOAD;
  1071. #else
  1072. backend_norm = low_vram || n_gpu_layers <= (int) n_layer + 2 ? GGML_BACKEND_CPU : LLAMA_BACKEND_OFFLOAD;
  1073. #endif // _WIN32
  1074. backend_output = LLAMA_BACKEND_OFFLOAD_SPLIT;
  1075. } else {
  1076. backend_norm = GGML_BACKEND_CPU;
  1077. backend_output = GGML_BACKEND_CPU;
  1078. }
  1079. model.norm = ml->get_tensor("norm.weight", {n_embd}, backend_norm);
  1080. model.output = ml->get_tensor("output.weight", {n_embd, n_vocab}, backend_output);
  1081. if (backend_norm == GGML_BACKEND_GPU) {
  1082. vram_weights += ggml_nbytes(model.norm);
  1083. }
  1084. if (backend_output == GGML_BACKEND_GPU_SPLIT) {
  1085. vram_weights += ggml_nbytes(model.output);
  1086. }
  1087. }
  1088. const int i_gpu_start = n_layer - n_gpu_layers;
  1089. model.layers.resize(n_layer);
  1090. for (uint32_t i = 0; i < n_layer; ++i) {
  1091. const ggml_backend backend = int(i) < i_gpu_start ? GGML_BACKEND_CPU : LLAMA_BACKEND_OFFLOAD; // NOLINT
  1092. const ggml_backend backend_split = int(i) < i_gpu_start ? GGML_BACKEND_CPU : LLAMA_BACKEND_OFFLOAD_SPLIT; // NOLINT
  1093. auto & layer = model.layers[i];
  1094. std::string layers_i = "layers." + std::to_string(i);
  1095. layer.attention_norm = ml->get_tensor(layers_i + ".attention_norm.weight", {n_embd}, backend);
  1096. layer.wq = ml->get_tensor(layers_i + ".attention.wq.weight", {n_embd, n_embd}, backend_split);
  1097. layer.wk = ml->get_tensor(layers_i + ".attention.wk.weight", {n_embd, n_embd_gqa}, backend_split);
  1098. layer.wv = ml->get_tensor(layers_i + ".attention.wv.weight", {n_embd, n_embd_gqa}, backend_split);
  1099. layer.wo = ml->get_tensor(layers_i + ".attention.wo.weight", {n_embd, n_embd}, backend_split);
  1100. layer.ffn_norm = ml->get_tensor(layers_i + ".ffn_norm.weight", {n_embd}, backend);
  1101. layer.w1 = ml->get_tensor(layers_i + ".feed_forward.w1.weight", {n_embd, n_ff}, backend_split);
  1102. layer.w2 = ml->get_tensor(layers_i + ".feed_forward.w2.weight", { n_ff, n_embd}, backend_split);
  1103. layer.w3 = ml->get_tensor(layers_i + ".feed_forward.w3.weight", {n_embd, n_ff}, backend_split);
  1104. if (backend == GGML_BACKEND_GPU) {
  1105. vram_weights +=
  1106. ggml_nbytes(layer.attention_norm) + ggml_nbytes(layer.wq) + ggml_nbytes(layer.wk) +
  1107. ggml_nbytes(layer.wv) + ggml_nbytes(layer.wo) + ggml_nbytes(layer.ffn_norm) +
  1108. ggml_nbytes(layer.w1) + ggml_nbytes(layer.w2) + ggml_nbytes(layer.w3);
  1109. }
  1110. }
  1111. }
  1112. ml->done_getting_tensors();
  1113. // print memory requirements
  1114. {
  1115. const size_t scale = memory_type == GGML_TYPE_F32 ? 2 : 1;
  1116. // this is the total memory required to run the inference
  1117. size_t mem_required =
  1118. ctx_size +
  1119. mmapped_size - vram_weights; // weights in VRAM not in memory
  1120. #ifndef LLAMA_USE_ALLOCATOR
  1121. mem_required +=
  1122. MEM_REQ_SCRATCH0(hparams.n_ctx).at(model.type) +
  1123. MEM_REQ_SCRATCH1().at(model.type) +
  1124. MEM_REQ_EVAL().at(model.type);
  1125. #endif
  1126. // this is the memory required by one llama_state
  1127. const size_t mem_required_state =
  1128. scale*hparams.kv_size();
  1129. LLAMA_LOG_INFO("%s: mem required = %7.2f MB (+ %7.2f MB per state)\n", __func__,
  1130. mem_required / 1024.0 / 1024.0, mem_required_state / 1024.0 / 1024.0);
  1131. (void) vram_scratch;
  1132. (void) n_batch;
  1133. #ifdef GGML_USE_CUBLAS
  1134. if (low_vram) {
  1135. LLAMA_LOG_INFO("%s: not allocating a VRAM scratch buffer due to low VRAM option\n", __func__);
  1136. ggml_cuda_set_scratch_size(0); // disable scratch
  1137. } else {
  1138. const size_t vram_scratch_base = VRAM_REQ_SCRATCH_BASE().at(model.type);
  1139. const size_t vram_scratch_per_context = VRAM_REQ_SCRATCH_PER_CONTEXT().at(model.type);
  1140. vram_scratch = n_batch * (vram_scratch_base + n_ctx * vram_scratch_per_context);
  1141. ggml_cuda_set_scratch_size(vram_scratch);
  1142. if (n_gpu_layers > 0) {
  1143. LLAMA_LOG_INFO("%s: allocating batch_size x (%zd kB + n_ctx x %zd B) = %zd MB VRAM for the scratch buffer\n",
  1144. __func__, vram_scratch_base / kB, vram_scratch_per_context,
  1145. (vram_scratch + MB - 1) / MB); // round up
  1146. }
  1147. }
  1148. #endif // GGML_USE_CUBLAS
  1149. #if defined(GGML_USE_CUBLAS) || defined(GGML_USE_CLBLAST)
  1150. const int n_gpu = std::min(n_gpu_layers, int(hparams.n_layer));
  1151. LLAMA_LOG_INFO("%s: offloading %d repeating layers to GPU\n", __func__, n_gpu);
  1152. if (n_gpu_layers > (int) hparams.n_layer) {
  1153. LLAMA_LOG_INFO("%s: offloading non-repeating layers to GPU\n", __func__);
  1154. }
  1155. size_t vram_kv_cache = 0;
  1156. #ifdef GGML_USE_CUBLAS
  1157. const int max_backend_supported_layers = hparams.n_layer + 3;
  1158. const int max_offloadable_layers = low_vram ? hparams.n_layer + 1 : hparams.n_layer + 3;
  1159. if (n_gpu_layers > (int) hparams.n_layer + 1) {
  1160. if (low_vram) {
  1161. LLAMA_LOG_INFO("%s: cannot offload v cache to GPU due to low VRAM option\n", __func__);
  1162. } else {
  1163. LLAMA_LOG_INFO("%s: offloading v cache to GPU\n", __func__);
  1164. vram_kv_cache += hparams.kv_size() / 2;
  1165. }
  1166. }
  1167. if (n_gpu_layers > (int) hparams.n_layer + 2) {
  1168. if (low_vram) {
  1169. LLAMA_LOG_WARN("%s: cannot offload k cache to GPU due to low VRAM option\n", __func__);
  1170. } else {
  1171. LLAMA_LOG_INFO("%s: offloading k cache to GPU\n", __func__);
  1172. vram_kv_cache += hparams.kv_size() / 2;
  1173. }
  1174. }
  1175. #elif defined(GGML_USE_CLBLAST)
  1176. const int max_backend_supported_layers = hparams.n_layer + 1;
  1177. const int max_offloadable_layers = hparams.n_layer + 1;
  1178. #endif // GGML_USE_CUBLAS
  1179. LLAMA_LOG_INFO("%s: offloaded %d/%d layers to GPU\n",
  1180. __func__, std::min(n_gpu_layers, max_offloadable_layers), max_backend_supported_layers);
  1181. LLAMA_LOG_INFO("%s: total VRAM used: %zu MB\n",
  1182. __func__, (vram_weights + vram_scratch + vram_kv_cache + MB - 1) / MB); // round up
  1183. #else
  1184. (void) n_gpu_layers;
  1185. #endif // defined(GGML_USE_CUBLAS) || defined(GGML_USE_CLBLAST)
  1186. }
  1187. // populate `tensors_by_name`
  1188. for (llama_load_tensor & lt : ml->tensors_map.tensors) {
  1189. model.tensors_by_name.emplace_back(lt.name, lt.ggml_tensor);
  1190. }
  1191. (void) tensor_split;
  1192. #if defined(GGML_USE_CUBLAS)
  1193. {
  1194. ggml_cuda_set_tensor_split(tensor_split);
  1195. }
  1196. #endif
  1197. ml->load_all_data(progress_callback, progress_callback_user_data, use_mlock ? &model.mlock_mmap : NULL);
  1198. if (progress_callback) {
  1199. progress_callback(1.0f, progress_callback_user_data);
  1200. }
  1201. model.mapping = std::move(ml->mapping);
  1202. // loading time will be recalculate after the first eval, so
  1203. // we take page faults deferred by mmap() into consideration
  1204. model.t_load_us = ggml_time_us() - model.t_start_us;
  1205. }
  1206. static bool llama_model_load(
  1207. const std::string & fname,
  1208. llama_model & model,
  1209. llama_vocab & vocab,
  1210. int n_ctx,
  1211. int n_batch,
  1212. int n_gqa,
  1213. float rms_norm_eps,
  1214. int n_gpu_layers,
  1215. int main_gpu,
  1216. const float * tensor_split,
  1217. const bool mul_mat_q,
  1218. float rope_freq_base,
  1219. float rope_freq_scale,
  1220. bool low_vram,
  1221. ggml_type memory_type,
  1222. bool use_mmap,
  1223. bool use_mlock,
  1224. bool vocab_only,
  1225. llama_progress_callback progress_callback,
  1226. void *progress_callback_user_data) {
  1227. try {
  1228. llama_model_load_internal(fname, model, vocab, n_ctx, n_batch, n_gqa, rms_norm_eps, n_gpu_layers,
  1229. main_gpu, tensor_split, mul_mat_q, rope_freq_base, rope_freq_scale, low_vram, memory_type,
  1230. use_mmap, use_mlock, vocab_only, progress_callback, progress_callback_user_data);
  1231. return true;
  1232. } catch (const std::exception & err) {
  1233. LLAMA_LOG_ERROR("error loading model: %s\n", err.what());
  1234. return false;
  1235. }
  1236. }
  1237. static struct ggml_cgraph * llama_build_graph(
  1238. llama_context & lctx,
  1239. const llama_token * tokens,
  1240. const float * embd,
  1241. int n_tokens,
  1242. int n_past) {
  1243. LLAMA_ASSERT((!tokens && embd) || (tokens && !embd));
  1244. const int N = n_tokens;
  1245. const auto & model = lctx.model;
  1246. const auto & hparams = model.hparams;
  1247. const auto & kv_self = lctx.kv_self;
  1248. LLAMA_ASSERT(!!kv_self.ctx);
  1249. const int64_t n_embd = hparams.n_embd;
  1250. const int64_t n_layer = hparams.n_layer;
  1251. const int64_t n_ctx = hparams.n_ctx;
  1252. const int64_t n_head = hparams.n_head;
  1253. const int64_t n_head_kv = hparams.n_head_kv;
  1254. const int64_t n_embd_head = hparams.n_embd_head();
  1255. const int64_t n_embd_gqa = hparams.n_embd_gqa();
  1256. LLAMA_ASSERT(n_embd_head == hparams.n_rot);
  1257. const float freq_base = hparams.rope_freq_base;
  1258. const float freq_scale = hparams.rope_freq_scale;
  1259. const float rms_norm_eps = hparams.f_rms_norm_eps;
  1260. const int n_gpu_layers = model.n_gpu_layers;
  1261. auto & mem_per_token = lctx.mem_per_token;
  1262. auto & buf_compute = lctx.buf_compute;
  1263. struct ggml_init_params params = {
  1264. /*.mem_size =*/ buf_compute.size,
  1265. /*.mem_buffer =*/ buf_compute.addr,
  1266. /*.no_alloc =*/ false,
  1267. };
  1268. #ifdef LLAMA_USE_ALLOCATOR
  1269. params.no_alloc = true;
  1270. #endif
  1271. struct ggml_context * ctx0 = ggml_init(params);
  1272. ggml_cgraph * gf = ggml_new_graph(ctx0);
  1273. struct ggml_tensor * cur;
  1274. struct ggml_tensor * inpL;
  1275. if (tokens) {
  1276. struct ggml_tensor * inp_tokens = ggml_new_tensor_1d(ctx0, GGML_TYPE_I32, N);
  1277. #ifdef LLAMA_USE_ALLOCATOR
  1278. ggml_allocr_alloc(lctx.alloc, inp_tokens);
  1279. if (!ggml_allocr_is_measure(lctx.alloc)) {
  1280. memcpy(inp_tokens->data, tokens, N*ggml_element_size(inp_tokens));
  1281. }
  1282. #else
  1283. memcpy(inp_tokens->data, tokens, N*ggml_element_size(inp_tokens));
  1284. #endif
  1285. ggml_set_name(inp_tokens, "inp_tokens");
  1286. inpL = ggml_get_rows(ctx0, model.tok_embeddings, inp_tokens);
  1287. } else {
  1288. #ifdef GGML_USE_MPI
  1289. GGML_ASSERT(false && "not implemented");
  1290. #endif
  1291. inpL = ggml_new_tensor_2d(ctx0, GGML_TYPE_F32, n_embd, N);
  1292. #ifdef LLAMA_USE_ALLOCATOR
  1293. ggml_allocr_alloc(lctx.alloc, inpL);
  1294. if (!ggml_allocr_is_measure(lctx.alloc)) {
  1295. memcpy(inpL->data, embd, N * n_embd * ggml_element_size(inpL));
  1296. }
  1297. #else
  1298. memcpy(inpL->data, embd, N * n_embd * ggml_element_size(inpL));
  1299. #endif
  1300. }
  1301. const int i_gpu_start = n_layer - n_gpu_layers;
  1302. (void) i_gpu_start;
  1303. // offload functions set the tensor output backend to GPU
  1304. // tensors are GPU-accelerated if any input or the output has been offloaded
  1305. //
  1306. // with the low VRAM option VRAM scratch is disabled in llama_load_model_internal
  1307. // in that case ggml_cuda_assign_buffers has no effect
  1308. offload_func_t offload_func_nr = llama_nop; // nr = non-repeating
  1309. offload_func_t offload_func_kq = llama_nop;
  1310. offload_func_t offload_func_v = llama_nop;
  1311. #ifdef GGML_USE_CUBLAS
  1312. if (n_gpu_layers > n_layer) {
  1313. offload_func_nr = ggml_cuda_assign_buffers;
  1314. }
  1315. if (n_gpu_layers > n_layer + 1) {
  1316. offload_func_v = ggml_cuda_assign_buffers;
  1317. }
  1318. if (n_gpu_layers > n_layer + 2) {
  1319. offload_func_kq = ggml_cuda_assign_buffers;
  1320. }
  1321. #endif // GGML_USE_CUBLAS
  1322. struct ggml_tensor * KQ_scale = ggml_new_tensor_1d(ctx0, GGML_TYPE_F32, 1);
  1323. #ifdef LLAMA_USE_ALLOCATOR
  1324. ggml_allocr_alloc(lctx.alloc, KQ_scale);
  1325. if (!ggml_allocr_is_measure(lctx.alloc)) {
  1326. ggml_set_f32(KQ_scale, 1.0f/sqrtf(float(n_embd)/n_head));
  1327. }
  1328. #else
  1329. ggml_set_f32(KQ_scale, 1.0f/sqrtf(float(n_embd)/n_head));
  1330. #endif
  1331. ggml_set_name(KQ_scale, "1/sqrt(n_embd_head)");
  1332. for (int il = 0; il < n_layer; ++il) {
  1333. ggml_format_name(inpL, "layer_inp_%d", il);
  1334. offload_func_t offload_func = llama_nop;
  1335. #ifdef GGML_USE_CUBLAS
  1336. if (il >= i_gpu_start) {
  1337. offload_func = ggml_cuda_assign_buffers;
  1338. }
  1339. #endif // GGML_USE_CUBLAS
  1340. struct ggml_tensor * inpSA = inpL;
  1341. lctx.use_buf(ctx0, 0);
  1342. // norm
  1343. {
  1344. cur = ggml_rms_norm(ctx0, inpL, rms_norm_eps);
  1345. offload_func(cur);
  1346. ggml_set_name(cur, "rms_norm_0");
  1347. // cur = cur*attention_norm(broadcasted)
  1348. cur = ggml_mul(ctx0, cur, model.layers[il].attention_norm);
  1349. offload_func(cur);
  1350. ggml_set_name(cur, "attention_norm_0");
  1351. }
  1352. // self-attention
  1353. {
  1354. // compute Q and K and RoPE them
  1355. struct ggml_tensor * tmpk = ggml_mul_mat(ctx0, model.layers[il].wk, cur);
  1356. offload_func_kq(tmpk);
  1357. ggml_set_name(tmpk, "tmpk");
  1358. struct ggml_tensor * tmpq = ggml_mul_mat(ctx0, model.layers[il].wq, cur);
  1359. offload_func_kq(tmpq);
  1360. ggml_set_name(tmpq, "tmpq");
  1361. struct ggml_tensor * Kcur = ggml_rope_custom_inplace(ctx0, ggml_reshape_3d(ctx0, tmpk, n_embd_head, n_head_kv, N), n_past, n_embd_head, 0, 0, freq_base, freq_scale);
  1362. offload_func_kq(Kcur);
  1363. ggml_set_name(Kcur, "Kcur");
  1364. struct ggml_tensor * Qcur = ggml_rope_custom_inplace(ctx0, ggml_reshape_3d(ctx0, tmpq, n_embd_head, n_head, N), n_past, n_embd_head, 0, 0, freq_base, freq_scale);
  1365. offload_func_kq(Qcur);
  1366. ggml_set_name(Qcur, "Qcur");
  1367. // store key and value to memory
  1368. {
  1369. // compute the transposed [N, n_embd] V matrix
  1370. struct ggml_tensor * tmpv = ggml_mul_mat(ctx0, model.layers[il].wv, cur);
  1371. offload_func_v(tmpv);
  1372. ggml_set_name(tmpv, "tmpv");
  1373. struct ggml_tensor * Vcur = ggml_transpose(ctx0, ggml_reshape_2d(ctx0, tmpv, n_embd_gqa, N));
  1374. offload_func_v(Vcur);
  1375. ggml_set_name(Vcur, "Vcur");
  1376. struct ggml_tensor * k = ggml_view_1d(ctx0, kv_self.k, N*n_embd_gqa, (ggml_element_size(kv_self.k)*n_embd_gqa)*(il*n_ctx + n_past));
  1377. offload_func_kq(k);
  1378. ggml_set_name(k, "k");
  1379. struct ggml_tensor * v = ggml_view_2d(ctx0, kv_self.v, N, n_embd_gqa,
  1380. ( n_ctx)*ggml_element_size(kv_self.v),
  1381. (il*n_ctx)*ggml_element_size(kv_self.v)*n_embd_gqa + n_past*ggml_element_size(kv_self.v));
  1382. offload_func_v(v);
  1383. ggml_set_name(v, "v");
  1384. // important: storing RoPE-ed version of K in the KV cache!
  1385. ggml_build_forward_expand(gf, ggml_cpy(ctx0, Kcur, k));
  1386. ggml_build_forward_expand(gf, ggml_cpy(ctx0, Vcur, v));
  1387. }
  1388. struct ggml_tensor * Q =
  1389. ggml_permute(ctx0,
  1390. Qcur,
  1391. 0, 2, 1, 3);
  1392. offload_func_kq(Q);
  1393. ggml_set_name(Q, "Q");
  1394. struct ggml_tensor * K =
  1395. ggml_permute(ctx0,
  1396. ggml_reshape_3d(ctx0,
  1397. ggml_view_1d(ctx0, kv_self.k, (n_past + N)*n_embd_gqa, il*n_ctx*ggml_element_size(kv_self.k)*n_embd_gqa),
  1398. n_embd_head, n_head_kv, n_past + N),
  1399. 0, 2, 1, 3);
  1400. offload_func_kq(K);
  1401. ggml_set_name(K, "K");
  1402. // K * Q
  1403. struct ggml_tensor * KQ = ggml_mul_mat(ctx0, K, Q);
  1404. offload_func_kq(KQ);
  1405. ggml_set_name(KQ, "KQ");
  1406. // KQ_scaled = KQ / sqrt(n_embd_head)
  1407. // KQ_scaled shape [n_past + N, N, n_head, 1]
  1408. struct ggml_tensor * KQ_scaled = ggml_scale_inplace(ctx0, KQ, KQ_scale);
  1409. offload_func_kq(KQ_scaled);
  1410. ggml_set_name(KQ_scaled, "KQ_scaled");
  1411. // KQ_masked = mask_past(KQ_scaled)
  1412. struct ggml_tensor * KQ_masked = ggml_diag_mask_inf_inplace(ctx0, KQ_scaled, n_past);
  1413. offload_func_kq(KQ_masked);
  1414. ggml_set_name(KQ_masked, "KQ_masked");
  1415. // KQ = soft_max(KQ_masked)
  1416. struct ggml_tensor * KQ_soft_max = ggml_soft_max_inplace(ctx0, KQ_masked);
  1417. offload_func_v(KQ_soft_max);
  1418. ggml_set_name(KQ_soft_max, "KQ_soft_max");
  1419. // split cached V into n_head heads
  1420. struct ggml_tensor * V =
  1421. ggml_view_3d(ctx0, kv_self.v,
  1422. n_past + N, n_embd_head, n_head_kv,
  1423. n_ctx*ggml_element_size(kv_self.v),
  1424. n_ctx*ggml_element_size(kv_self.v)*n_embd_head,
  1425. n_ctx*ggml_element_size(kv_self.v)*n_embd_gqa*il);
  1426. offload_func_v(V);
  1427. ggml_set_name(V, "V");
  1428. #if 1
  1429. struct ggml_tensor * KQV = ggml_mul_mat(ctx0, V, KQ_soft_max);
  1430. offload_func_v(KQV);
  1431. ggml_set_name(KQV, "KQV");
  1432. #else
  1433. // make V contiguous in memory to speed up the matmul, however we waste time on the copy
  1434. // on M1 this is faster for the perplexity computation, but ~5% slower for the single-token generation
  1435. // is there a better way?
  1436. struct ggml_tensor * V_cont = ggml_cpy(ctx0, V, ggml_new_tensor_3d(ctx0, kv_self.v->type, n_past + N, n_embd_head, n_head));
  1437. struct ggml_tensor * KQV = ggml_mul_mat(ctx0, V_cont, KQ_soft_max);
  1438. #endif
  1439. // KQV_merged = KQV.permute(0, 2, 1, 3)
  1440. struct ggml_tensor * KQV_merged = ggml_permute(ctx0, KQV, 0, 2, 1, 3);
  1441. offload_func_v(KQV_merged);
  1442. ggml_set_name(KQV_merged, "KQV_merged");
  1443. // cur = KQV_merged.contiguous().view(n_embd, N)
  1444. cur = ggml_cpy(ctx0,
  1445. KQV_merged,
  1446. ggml_new_tensor_2d(ctx0, GGML_TYPE_F32, n_embd, N));
  1447. offload_func_v(cur);
  1448. ggml_set_name(cur, "KQV_merged_contiguous");
  1449. // projection (no bias)
  1450. cur = ggml_mul_mat(ctx0,
  1451. model.layers[il].wo,
  1452. cur);
  1453. offload_func(cur);
  1454. ggml_set_name(cur, "result_wo");
  1455. }
  1456. lctx.use_buf(ctx0, 1);
  1457. struct ggml_tensor * inpFF = ggml_add(ctx0, cur, inpSA);
  1458. offload_func(inpFF);
  1459. ggml_set_name(inpFF, "inpFF");
  1460. // feed-forward network
  1461. {
  1462. // norm
  1463. {
  1464. cur = ggml_rms_norm(ctx0, inpFF, rms_norm_eps);
  1465. offload_func(cur);
  1466. ggml_set_name(cur, "rms_norm_1");
  1467. // cur = cur*ffn_norm(broadcasted)
  1468. cur = ggml_mul(ctx0, cur, model.layers[il].ffn_norm);
  1469. offload_func(cur);
  1470. ggml_set_name(cur, "ffn_norm");
  1471. }
  1472. struct ggml_tensor * tmp = ggml_mul_mat(ctx0,
  1473. model.layers[il].w3,
  1474. cur);
  1475. offload_func(tmp);
  1476. ggml_set_name(tmp, "result_w3");
  1477. cur = ggml_mul_mat(ctx0,
  1478. model.layers[il].w1,
  1479. cur);
  1480. offload_func(cur);
  1481. ggml_set_name(cur, "result_w1");
  1482. // SILU activation
  1483. cur = ggml_silu(ctx0, cur);
  1484. offload_func(cur);
  1485. ggml_set_name(cur, "silu");
  1486. cur = ggml_mul(ctx0, cur, tmp);
  1487. offload_func(cur);
  1488. ggml_set_name(cur, "silu_x_result_w3");
  1489. cur = ggml_mul_mat(ctx0,
  1490. model.layers[il].w2,
  1491. cur);
  1492. offload_func(cur);
  1493. ggml_set_name(cur, "result_w2");
  1494. }
  1495. cur = ggml_add(ctx0, cur, inpFF);
  1496. offload_func(cur);
  1497. ggml_set_name(cur, "inpFF_+_result_w2");
  1498. // input for next layer
  1499. inpL = cur;
  1500. }
  1501. lctx.use_buf(ctx0, 0);
  1502. // norm
  1503. {
  1504. cur = ggml_rms_norm(ctx0, inpL, rms_norm_eps);
  1505. offload_func_nr(cur);
  1506. ggml_set_name(cur, "rms_norm_2");
  1507. // cur = cur*norm(broadcasted)
  1508. cur = ggml_mul(ctx0, cur, model.norm);
  1509. // offload_func_nr(cur); // TODO CPU + GPU mirrored backend
  1510. ggml_set_name(cur, "result_norm");
  1511. }
  1512. // lm_head
  1513. cur = ggml_mul_mat(ctx0, model.output, cur);
  1514. ggml_set_name(cur, "result_output");
  1515. lctx.use_buf(ctx0, -1);
  1516. // logits -> probs
  1517. //cur = ggml_soft_max_inplace(ctx0, cur);
  1518. ggml_build_forward_expand(gf, cur);
  1519. if (mem_per_token == 0) {
  1520. mem_per_token = ggml_used_mem(ctx0)/N;
  1521. }
  1522. #if 0
  1523. LLAMA_LOG_INFO("\n%s: used_mem: eval ctx %.3f MB, scratch %.3f MB %.3f MB, work buf %.3f MB, n_past = %d, N = %d\n", __func__,
  1524. ggml_used_mem(ctx0)/1024.0/1024.0,
  1525. lctx.get_buf_max_mem(0)/1024.0/1024.0,
  1526. lctx.get_buf_max_mem(1)/1024.0/1024.0,
  1527. lctx.work_buffer.size()/1024.0/1024.0,
  1528. n_past, N);
  1529. #endif
  1530. ggml_free(ctx0);
  1531. return gf;
  1532. }
  1533. // evaluate the transformer
  1534. //
  1535. // - lctx: llama context
  1536. // - tokens: new batch of tokens to process
  1537. // - embd embeddings input
  1538. // - n_tokens number of tokens
  1539. // - n_past: the context size so far
  1540. // - n_threads: number of threads to use
  1541. //
  1542. static bool llama_eval_internal(
  1543. llama_context & lctx,
  1544. const llama_token * tokens,
  1545. const float * embd,
  1546. int n_tokens,
  1547. int n_past,
  1548. int n_threads,
  1549. const char * cgraph_fname) {
  1550. LLAMA_ASSERT((!tokens && embd) || (tokens && !embd));
  1551. const int64_t t_start_us = ggml_time_us();
  1552. #ifdef GGML_USE_MPI
  1553. ggml_mpi_eval_init(lctx.ctx_mpi, &n_tokens, &n_past, &n_threads);
  1554. #endif
  1555. const int N = n_tokens;
  1556. const auto & model = lctx.model;
  1557. const auto & hparams = model.hparams;
  1558. const auto & kv_self = lctx.kv_self;
  1559. LLAMA_ASSERT(!!kv_self.ctx);
  1560. const int64_t n_embd = hparams.n_embd;
  1561. const int64_t n_vocab = hparams.n_vocab;
  1562. #ifdef LLAMA_USE_ALLOCATOR
  1563. ggml_allocr_reset(lctx.alloc);
  1564. #endif
  1565. ggml_cgraph * gf = llama_build_graph(lctx, tokens, embd, n_tokens, n_past);
  1566. #ifdef LLAMA_USE_ALLOCATOR
  1567. ggml_allocr_alloc_graph(lctx.alloc, gf);
  1568. #endif
  1569. // LLAMA_LOG_INFO("graph build time: %.3f ms (%d nodes, %d leafs)\n", (ggml_time_us() - t_start_us)/1000.0, gf->n_nodes, gf->n_leafs);
  1570. // for big prompts, if BLAS is enabled, it is better to use only one thread
  1571. // otherwise, the threads are spin-lock waiting for the BLAS calls and are degrading the performance
  1572. n_threads = N >= 32 && ggml_cpu_has_blas() && !ggml_cpu_has_gpublas() ? 1 : n_threads;
  1573. struct ggml_tensor * res = gf->nodes[gf->n_nodes - 1];
  1574. struct ggml_tensor * embeddings = gf->nodes[gf->n_nodes - 2];
  1575. LLAMA_ASSERT(strcmp(res->name, "result_output") == 0);
  1576. LLAMA_ASSERT(strcmp(embeddings->name, "result_norm") == 0);
  1577. #if GGML_USE_MPI
  1578. const int64_t n_layer = hparams.n_layer;
  1579. ggml_mpi_graph_compute_pre(lctx.ctx_mpi, gf, n_layer);
  1580. #endif
  1581. #ifdef GGML_USE_METAL
  1582. if (lctx.ctx_metal && N == 1) {
  1583. // TODO: disabled until #2413 is resolved
  1584. //if (!ggml_metal_if_optimized(lctx.ctx_metal)) {
  1585. // ggml_metal_graph_find_concurrency(lctx.ctx_metal, gf);
  1586. //}
  1587. ggml_metal_set_n_cb (lctx.ctx_metal, n_threads);
  1588. ggml_metal_graph_compute(lctx.ctx_metal, gf);
  1589. ggml_metal_get_tensor (lctx.ctx_metal, res);
  1590. if (!lctx.embedding.empty()) {
  1591. ggml_metal_get_tensor(lctx.ctx_metal, embeddings);
  1592. }
  1593. } else {
  1594. // IMPORTANT:
  1595. // Since we don't have efficient Matrix x Matrix Metal multiplication yet, we fallback to vanilla
  1596. // ggml_graph_compute(). It uses Apple's Accelerate CBLAS API which takes advantage of the ANE or the AMX
  1597. // coprocessor.
  1598. //
  1599. // When we implement Matrix x Matrix Metal multiplication, we can avoid this branch.
  1600. // But for now, we have focused only on Matrix x Vector Metal multiplication.
  1601. //
  1602. // TODO: avoid these syncs via shared memory (ref #1696)
  1603. //
  1604. if (lctx.ctx_metal) {
  1605. // We need to sync the GPU KV cache with the CPU KV cache
  1606. ggml_metal_get_tensor(lctx.ctx_metal, kv_self.k);
  1607. ggml_metal_get_tensor(lctx.ctx_metal, kv_self.v);
  1608. }
  1609. ggml_graph_compute_helper(lctx.work_buffer, gf, n_threads);
  1610. }
  1611. #else
  1612. ggml_graph_compute_helper(lctx.work_buffer, gf, n_threads);
  1613. #endif
  1614. #if GGML_USE_MPI
  1615. ggml_mpi_graph_compute_post(lctx.ctx_mpi, gf, n_layer);
  1616. #endif
  1617. // update kv token count
  1618. lctx.kv_self.n = n_past + N;
  1619. if (cgraph_fname) {
  1620. ggml_graph_export(gf, cgraph_fname);
  1621. }
  1622. #ifdef GGML_PERF
  1623. // print timing information per ggml operation (for debugging purposes)
  1624. // requires GGML_PERF to be defined
  1625. ggml_graph_print(gf);
  1626. #endif
  1627. // plot the computation graph in dot format (for debugging purposes)
  1628. //if (n_past%100 == 0) {
  1629. // ggml_graph_dump_dot(gf, NULL, "llama.dot");
  1630. //}
  1631. // extract logits
  1632. {
  1633. auto & logits_out = lctx.logits;
  1634. if (lctx.logits_all) {
  1635. logits_out.resize(n_vocab * N);
  1636. memcpy(logits_out.data(), (float *) ggml_get_data(res), sizeof(float)*n_vocab*N);
  1637. } else {
  1638. // return result for just the last token
  1639. logits_out.resize(n_vocab);
  1640. memcpy(logits_out.data(), (float *) ggml_get_data(res) + (n_vocab*(N-1)), sizeof(float)*n_vocab);
  1641. }
  1642. }
  1643. // extract embeddings
  1644. if (!lctx.embedding.empty()) {
  1645. auto & embedding_out = lctx.embedding;
  1646. embedding_out.resize(n_embd);
  1647. memcpy(embedding_out.data(), (float *) ggml_get_data(embeddings) + (n_embd*(N - 1)), sizeof(float)*n_embd);
  1648. }
  1649. // measure the performance only for the single-token evals
  1650. if (N == 1) {
  1651. lctx.t_eval_us += ggml_time_us() - t_start_us;
  1652. lctx.n_eval++;
  1653. }
  1654. else if (N > 1) {
  1655. lctx.t_p_eval_us += ggml_time_us() - t_start_us;
  1656. lctx.n_p_eval += N;
  1657. }
  1658. return true;
  1659. }
  1660. //
  1661. // tokenizer
  1662. //
  1663. static size_t utf8_len(char src) {
  1664. const size_t lookup[] = { 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 2, 2, 3, 4 };
  1665. uint8_t highbits = static_cast<uint8_t>(src) >> 4;
  1666. return lookup[highbits];
  1667. }
  1668. struct llama_sp_symbol {
  1669. using index = int;
  1670. index prev;
  1671. index next;
  1672. const char * text;
  1673. size_t n;
  1674. };
  1675. static_assert(std::is_trivially_copyable<llama_sp_symbol>::value, "llama_sp_symbol is not trivially copyable");
  1676. struct llama_sp_bigram {
  1677. struct comparator {
  1678. bool operator()(llama_sp_bigram & l, llama_sp_bigram & r) {
  1679. return (l.score < r.score) || (l.score == r.score && l.left > r.left);
  1680. }
  1681. };
  1682. using queue_storage = std::vector<llama_sp_bigram>;
  1683. using queue = std::priority_queue<llama_sp_bigram, queue_storage, comparator>;
  1684. llama_sp_symbol::index left;
  1685. llama_sp_symbol::index right;
  1686. float score;
  1687. size_t size;
  1688. };
  1689. // original implementation:
  1690. // https://github.com/ggerganov/llama.cpp/commit/074bea2eb1f1349a0118239c4152914aecaa1be4
  1691. struct llama_tokenizer {
  1692. llama_tokenizer(const llama_vocab & vocab): vocab_(vocab) {}
  1693. void tokenize(const std::string & text, std::vector<llama_vocab::id> & output) {
  1694. // split string into utf8 chars
  1695. int index = 0;
  1696. size_t offs = 0;
  1697. while (offs < text.size()) {
  1698. llama_sp_symbol sym;
  1699. size_t char_len = std::min(text.size() - offs, utf8_len(text[offs]));
  1700. sym.text = text.c_str() + offs;
  1701. sym.n = char_len;
  1702. offs += char_len;
  1703. sym.prev = index - 1;
  1704. sym.next = offs == text.size() ? -1 : index + 1;
  1705. index++;
  1706. symbols_.emplace_back(sym);
  1707. }
  1708. // seed the work queue with all possible 2-character tokens.
  1709. for (size_t i = 1; i < symbols_.size(); ++i) {
  1710. try_add_bigram(i - 1, i);
  1711. }
  1712. // keep substituting the highest frequency pairs for as long as we can.
  1713. while (!work_queue_.empty()) {
  1714. auto bigram = work_queue_.top();
  1715. work_queue_.pop();
  1716. auto & left_sym = symbols_[bigram.left];
  1717. auto & right_sym = symbols_[bigram.right];
  1718. // if one of the symbols already got merged, skip it.
  1719. if (left_sym.n == 0 || right_sym.n == 0 ||
  1720. left_sym.n + right_sym.n != bigram.size) {
  1721. continue;
  1722. }
  1723. // merge the right sym into the left one
  1724. left_sym.n += right_sym.n;
  1725. right_sym.n = 0;
  1726. //LLAMA_LOG_INFO("left = '%*s' size = %zu\n", (int) left_sym.n, left_sym.text, bigram.size);
  1727. // remove the right sym from the chain
  1728. left_sym.next = right_sym.next;
  1729. if (right_sym.next >= 0) {
  1730. symbols_[right_sym.next].prev = bigram.left;
  1731. }
  1732. // find more substitutions
  1733. try_add_bigram(left_sym.prev, bigram.left);
  1734. try_add_bigram(bigram.left, left_sym.next);
  1735. }
  1736. for (int i = 0; i != -1; i = symbols_[i].next) {
  1737. auto & symbol = symbols_[i];
  1738. auto token = vocab_.token_to_id.find(std::string(symbol.text, symbol.n));
  1739. if (token == vocab_.token_to_id.end()) {
  1740. // output any symbols that did not form tokens as bytes.
  1741. for (int j = 0; j < (int) symbol.n; ++j) {
  1742. // NOTE: old version, before #2420 - not sure what are the implications of this
  1743. //llama_vocab::id token_id = static_cast<uint8_t>(symbol.text[j]) + 3;
  1744. llama_vocab::id token_id = vocab_.token_to_id.at(std::string(1, symbol.text[j]));
  1745. output.push_back(token_id);
  1746. }
  1747. } else {
  1748. output.push_back((*token).second);
  1749. }
  1750. }
  1751. }
  1752. private:
  1753. void try_add_bigram(int left, int right) {
  1754. if (left == -1 || right == -1) {
  1755. return;
  1756. }
  1757. const std::string text = std::string(symbols_[left].text, symbols_[left].n + symbols_[right].n);
  1758. auto token = vocab_.token_to_id.find(text);
  1759. if (token == vocab_.token_to_id.end()) {
  1760. return;
  1761. }
  1762. if (static_cast<size_t>((*token).second) >= vocab_.id_to_token.size()) {
  1763. return;
  1764. }
  1765. const auto &tok_score = vocab_.id_to_token[(*token).second];
  1766. llama_sp_bigram bigram;
  1767. bigram.left = left;
  1768. bigram.right = right;
  1769. bigram.score = tok_score.score;
  1770. bigram.size = text.size();
  1771. work_queue_.push(bigram);
  1772. }
  1773. const llama_vocab & vocab_;
  1774. std::vector<llama_sp_symbol> symbols_;
  1775. llama_sp_bigram::queue work_queue_;
  1776. };
  1777. static std::vector<llama_vocab::id> llama_tokenize(const llama_vocab & vocab, const std::string & text, bool bos) {
  1778. llama_tokenizer tokenizer(vocab);
  1779. std::vector<llama_vocab::id> output;
  1780. if (text.empty()) {
  1781. return output;
  1782. }
  1783. if (bos) {
  1784. output.push_back(llama_token_bos());
  1785. }
  1786. tokenizer.tokenize(text, output);
  1787. return output;
  1788. }
  1789. //
  1790. // grammar - internal
  1791. //
  1792. struct llama_grammar {
  1793. const std::vector<std::vector<llama_grammar_element>> rules;
  1794. std::vector<std::vector<const llama_grammar_element *>> stacks;
  1795. };
  1796. struct llama_grammar_candidate {
  1797. size_t index;
  1798. const uint32_t * code_points;
  1799. };
  1800. // NOTE: assumes valid utf8 (but checks for overrun)
  1801. // adds a terminating 0 for use as pointer
  1802. std::vector<uint32_t> decode_utf8(const char * src) {
  1803. static const int lookup[] = { 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 2, 2, 3, 4 };
  1804. const char * pos = src;
  1805. std::vector<uint32_t> code_points;
  1806. while (*pos != 0) {
  1807. uint8_t first_byte = static_cast<uint8_t>(*pos);
  1808. uint8_t highbits = first_byte >> 4;
  1809. int len = lookup[highbits];
  1810. uint8_t mask = (1 << (8 - len)) - 1;
  1811. uint32_t value = first_byte & mask;
  1812. const char * end = pos + len; // may overrun!
  1813. ++pos;
  1814. for ( ; pos < end && *pos != 0; ++pos) {
  1815. value = (value << 6) + (static_cast<uint8_t>(*pos) & 0x3F);
  1816. }
  1817. code_points.push_back(value);
  1818. }
  1819. code_points.push_back(0);
  1820. return code_points;
  1821. }
  1822. // returns true iff pos points to the end of one of the definitions of a rule
  1823. static bool llama_grammar_is_end_of_sequence(const llama_grammar_element * pos) {
  1824. switch (pos->type) {
  1825. case LLAMA_GRETYPE_END: return true;
  1826. case LLAMA_GRETYPE_ALT: return true;
  1827. default: return false;
  1828. }
  1829. }
  1830. // returns true iff chr satisfies the char range at pos (regular or inverse range)
  1831. // asserts that pos is pointing to a char range element
  1832. static std::pair<bool, const llama_grammar_element *> llama_grammar_match_char(
  1833. const llama_grammar_element * pos,
  1834. const uint32_t chr) {
  1835. bool found = false;
  1836. bool is_positive_char = pos->type == LLAMA_GRETYPE_CHAR;
  1837. LLAMA_ASSERT(is_positive_char || pos->type == LLAMA_GRETYPE_CHAR_NOT);
  1838. do {
  1839. if (pos[1].type == LLAMA_GRETYPE_CHAR_RNG_UPPER) {
  1840. // inclusive range, e.g. [a-z]
  1841. found = found || (pos->value <= chr && chr <= pos[1].value);
  1842. pos += 2;
  1843. } else {
  1844. // exact char match, e.g. [a] or "a"
  1845. found = found || pos->value == chr;
  1846. pos += 1;
  1847. }
  1848. } while (pos->type == LLAMA_GRETYPE_CHAR_ALT);
  1849. return std::make_pair(found == is_positive_char, pos);
  1850. }
  1851. // transforms a grammar pushdown stack into N possible stacks, all ending
  1852. // at a character range (terminal element)
  1853. static void llama_grammar_advance_stack(
  1854. const std::vector<std::vector<llama_grammar_element>> & rules,
  1855. const std::vector<const llama_grammar_element *> & stack,
  1856. std::vector<std::vector<const llama_grammar_element *>> & new_stacks) {
  1857. if (stack.empty()) {
  1858. new_stacks.push_back(stack);
  1859. return;
  1860. }
  1861. const llama_grammar_element * pos = stack.back();
  1862. switch (pos->type) {
  1863. case LLAMA_GRETYPE_RULE_REF: {
  1864. const size_t rule_id = static_cast<size_t>(pos->value);
  1865. const llama_grammar_element * subpos = rules[rule_id].data();
  1866. do {
  1867. // init new stack without the top (pos)
  1868. std::vector<const llama_grammar_element *> new_stack(stack.begin(), stack.end() - 1);
  1869. if (!llama_grammar_is_end_of_sequence(pos + 1)) {
  1870. // if this rule ref is followed by another element, add that to stack
  1871. new_stack.push_back(pos + 1);
  1872. }
  1873. if (!llama_grammar_is_end_of_sequence(subpos)) {
  1874. // if alternate is nonempty, add to stack
  1875. new_stack.push_back(subpos);
  1876. }
  1877. llama_grammar_advance_stack(rules, new_stack, new_stacks);
  1878. while (!llama_grammar_is_end_of_sequence(subpos)) {
  1879. // scan to end of alternate def
  1880. subpos++;
  1881. }
  1882. if (subpos->type == LLAMA_GRETYPE_ALT) {
  1883. // there's another alternate def of this rule to process
  1884. subpos++;
  1885. } else {
  1886. break;
  1887. }
  1888. } while (true);
  1889. break;
  1890. }
  1891. case LLAMA_GRETYPE_CHAR:
  1892. case LLAMA_GRETYPE_CHAR_NOT:
  1893. new_stacks.push_back(stack);
  1894. break;
  1895. default:
  1896. // end of alternate (LLAMA_GRETYPE_END, LLAMA_GRETYPE_ALT) or middle of char range
  1897. // (LLAMA_GRETYPE_CHAR_ALT, LLAMA_GRETYPE_CHAR_RNG_UPPER); stack should never be left on
  1898. // those
  1899. LLAMA_ASSERT(false);
  1900. }
  1901. }
  1902. // takes a set of possible pushdown stacks on a grammar, which are required to
  1903. // be positioned at a character range (see `llama_grammar_advance_stack`), and
  1904. // produces the N possible stacks if the given char is accepted at those
  1905. // positions
  1906. static std::vector<std::vector<const llama_grammar_element *>> llama_grammar_accept(
  1907. const std::vector<std::vector<llama_grammar_element>> & rules,
  1908. const std::vector<std::vector<const llama_grammar_element *>> & stacks,
  1909. const uint32_t chr) {
  1910. std::vector<std::vector<const llama_grammar_element *>> new_stacks;
  1911. for (const auto & stack : stacks) {
  1912. if (stack.empty()) {
  1913. continue;
  1914. }
  1915. auto match = llama_grammar_match_char(stack.back(), chr);
  1916. if (match.first) {
  1917. const llama_grammar_element * pos = match.second;
  1918. // update top of stack to next element, if any
  1919. std::vector<const llama_grammar_element *> new_stack(stack.begin(), stack.end() - 1);
  1920. if (!llama_grammar_is_end_of_sequence(pos)) {
  1921. new_stack.push_back(pos);
  1922. }
  1923. llama_grammar_advance_stack(rules, new_stack, new_stacks);
  1924. }
  1925. }
  1926. return new_stacks;
  1927. }
  1928. static std::vector<llama_grammar_candidate> llama_grammar_reject_candidates(
  1929. const std::vector<std::vector<llama_grammar_element>> & rules,
  1930. const std::vector<std::vector<const llama_grammar_element *>> & stacks,
  1931. const std::vector<llama_grammar_candidate> & candidates);
  1932. static std::vector<llama_grammar_candidate> llama_grammar_reject_candidates_for_stack(
  1933. const std::vector<std::vector<llama_grammar_element>> & rules,
  1934. const std::vector<const llama_grammar_element *> & stack,
  1935. const std::vector<llama_grammar_candidate> & candidates) {
  1936. std::vector<llama_grammar_candidate> rejects;
  1937. if (stack.empty()) {
  1938. // accept nothing; EOS is handled elsewhere
  1939. rejects.insert(rejects.end(), candidates.begin(), candidates.end());
  1940. return rejects;
  1941. }
  1942. const llama_grammar_element * stack_pos = stack.back();
  1943. std::vector<llama_grammar_candidate> next_candidates;
  1944. for (auto tok : candidates) {
  1945. if (llama_grammar_match_char(stack_pos, tok.code_points[0]).first) {
  1946. if (tok.code_points[1] != 0) {
  1947. next_candidates.push_back({ tok.index, tok.code_points + 1 });
  1948. }
  1949. } else {
  1950. rejects.push_back(tok);
  1951. }
  1952. }
  1953. auto stack_pos_after = llama_grammar_match_char(stack_pos, 0).second;
  1954. // update top of stack to next element, if any
  1955. std::vector<const llama_grammar_element *> stack_after(stack.begin(), stack.end() - 1);
  1956. if (!llama_grammar_is_end_of_sequence(stack_pos_after)) {
  1957. stack_after.push_back(stack_pos_after);
  1958. }
  1959. std::vector<std::vector<const llama_grammar_element *>> next_stacks;
  1960. llama_grammar_advance_stack(rules, stack_after, next_stacks);
  1961. auto next_rejects = llama_grammar_reject_candidates(rules, next_stacks, next_candidates);
  1962. for (auto tok : next_rejects) {
  1963. rejects.push_back({ tok.index, tok.code_points - 1 });
  1964. }
  1965. return rejects;
  1966. }
  1967. static std::vector<llama_grammar_candidate> llama_grammar_reject_candidates(
  1968. const std::vector<std::vector<llama_grammar_element>> & rules,
  1969. const std::vector<std::vector<const llama_grammar_element *>> & stacks,
  1970. const std::vector<llama_grammar_candidate> & candidates) {
  1971. LLAMA_ASSERT(!stacks.empty()); // REVIEW
  1972. if (candidates.empty()) {
  1973. return std::vector<llama_grammar_candidate>();
  1974. }
  1975. auto rejects = llama_grammar_reject_candidates_for_stack(rules, stacks.front(), candidates);
  1976. for (size_t i = 1, size = stacks.size(); i < size; ++i) {
  1977. rejects = llama_grammar_reject_candidates_for_stack(rules, stacks[i], rejects);
  1978. }
  1979. return rejects;
  1980. }
  1981. //
  1982. // grammar - external
  1983. //
  1984. struct llama_grammar * llama_grammar_init(
  1985. const llama_grammar_element ** rules,
  1986. size_t n_rules,
  1987. size_t start_rule_index) {
  1988. const llama_grammar_element * pos;
  1989. // copy rule definitions into vectors
  1990. std::vector<std::vector<llama_grammar_element>> vec_rules(n_rules);
  1991. for (size_t i = 0; i < n_rules; i++) {
  1992. for (pos = rules[i]; pos->type != LLAMA_GRETYPE_END; pos++) {
  1993. vec_rules[i].push_back(*pos);
  1994. }
  1995. vec_rules[i].push_back({LLAMA_GRETYPE_END, 0});
  1996. }
  1997. // loop over alternates of start rule to build initial stacks
  1998. std::vector<std::vector<const llama_grammar_element *>> stacks;
  1999. pos = rules[start_rule_index];
  2000. do {
  2001. std::vector<const llama_grammar_element *> stack;
  2002. if (!llama_grammar_is_end_of_sequence(pos)) {
  2003. // if alternate is nonempty, add to stack
  2004. stack.push_back(pos);
  2005. }
  2006. llama_grammar_advance_stack(vec_rules, stack, stacks);
  2007. while (!llama_grammar_is_end_of_sequence(pos)) {
  2008. // scan to end of alternate def
  2009. pos++;
  2010. }
  2011. if (pos->type == LLAMA_GRETYPE_ALT) {
  2012. // there's another alternate def of this rule to process
  2013. pos++;
  2014. } else {
  2015. break;
  2016. }
  2017. } while (true);
  2018. return new llama_grammar{ std::move(vec_rules), std::move(stacks) };
  2019. }
  2020. void llama_grammar_free(struct llama_grammar * grammar) {
  2021. delete grammar;
  2022. }
  2023. //
  2024. // sampling
  2025. //
  2026. void llama_sample_softmax(struct llama_context * ctx, llama_token_data_array * candidates) {
  2027. assert(candidates->size > 0);
  2028. const int64_t t_start_sample_us = ggml_time_us();
  2029. // Sort the logits in descending order
  2030. if (!candidates->sorted) {
  2031. std::sort(candidates->data, candidates->data + candidates->size, [](const llama_token_data & a, const llama_token_data & b) {
  2032. return a.logit > b.logit;
  2033. });
  2034. candidates->sorted = true;
  2035. }
  2036. float max_l = candidates->data[0].logit;
  2037. float cum_sum = 0.0f;
  2038. for (size_t i = 0; i < candidates->size; ++i) {
  2039. float p = expf(candidates->data[i].logit - max_l);
  2040. candidates->data[i].p = p;
  2041. cum_sum += p;
  2042. }
  2043. for (size_t i = 0; i < candidates->size; ++i) {
  2044. candidates->data[i].p /= cum_sum;
  2045. }
  2046. if (ctx) {
  2047. ctx->t_sample_us += ggml_time_us() - t_start_sample_us;
  2048. }
  2049. }
  2050. void llama_sample_top_k(struct llama_context * ctx, llama_token_data_array * candidates, int k, size_t min_keep) {
  2051. const int64_t t_start_sample_us = ggml_time_us();
  2052. k = std::max(k, (int) min_keep);
  2053. k = std::min(k, (int) candidates->size);
  2054. // Sort scores in descending order
  2055. if (!candidates->sorted) {
  2056. auto comp = [](const llama_token_data & a, const llama_token_data & b) {
  2057. return a.logit > b.logit;
  2058. };
  2059. if (k == (int) candidates->size) {
  2060. std::sort(candidates->data, candidates->data + candidates->size, comp);
  2061. } else {
  2062. std::partial_sort(candidates->data, candidates->data + k, candidates->data + candidates->size, comp);
  2063. }
  2064. candidates->sorted = true;
  2065. }
  2066. candidates->size = k;
  2067. if (ctx) {
  2068. ctx->t_sample_us += ggml_time_us() - t_start_sample_us;
  2069. }
  2070. }
  2071. void llama_sample_top_p(struct llama_context * ctx, llama_token_data_array * candidates, float p, size_t min_keep) {
  2072. if (p >= 1.0f) {
  2073. return;
  2074. }
  2075. llama_sample_softmax(ctx, candidates);
  2076. const int64_t t_start_sample_us = ggml_time_us();
  2077. // Compute the cumulative probabilities
  2078. float cum_sum = 0.0f;
  2079. size_t last_idx = candidates->size;
  2080. for (size_t i = 0; i < candidates->size; ++i) {
  2081. cum_sum += candidates->data[i].p;
  2082. // Check if the running sum is at least p or if we have kept at least min_keep tokens
  2083. // we set the last index to i+1 to indicate that the current iterate should be included in the set
  2084. if (cum_sum >= p && i + 1 >= min_keep) {
  2085. last_idx = i + 1;
  2086. break;
  2087. }
  2088. }
  2089. // Resize the output vector to keep only the top-p tokens
  2090. candidates->size = last_idx;
  2091. if (ctx) {
  2092. ctx->t_sample_us += ggml_time_us() - t_start_sample_us;
  2093. }
  2094. }
  2095. void llama_sample_tail_free(struct llama_context * ctx, llama_token_data_array * candidates, float z, size_t min_keep) {
  2096. if (z >= 1.0f || candidates->size <= 2) {
  2097. return;
  2098. }
  2099. llama_sample_softmax(nullptr, candidates);
  2100. const int64_t t_start_sample_us = ggml_time_us();
  2101. // Compute the first and second derivatives
  2102. std::vector<float> first_derivatives(candidates->size - 1);
  2103. std::vector<float> second_derivatives(candidates->size - 2);
  2104. for (size_t i = 0; i < first_derivatives.size(); ++i) {
  2105. first_derivatives[i] = candidates->data[i].p - candidates->data[i + 1].p;
  2106. }
  2107. for (size_t i = 0; i < second_derivatives.size(); ++i) {
  2108. second_derivatives[i] = first_derivatives[i] - first_derivatives[i + 1];
  2109. }
  2110. // Calculate absolute value of second derivatives
  2111. for (size_t i = 0; i < second_derivatives.size(); ++i) {
  2112. second_derivatives[i] = abs(second_derivatives[i]);
  2113. }
  2114. // Normalize the second derivatives
  2115. {
  2116. const float second_derivatives_sum = std::accumulate(second_derivatives.begin(), second_derivatives.end(), 0.0f);
  2117. if (second_derivatives_sum > 1e-6f) {
  2118. for (float & value : second_derivatives) {
  2119. value /= second_derivatives_sum;
  2120. }
  2121. } else {
  2122. for (float & value : second_derivatives) {
  2123. value = 1.0f / second_derivatives.size();
  2124. }
  2125. }
  2126. }
  2127. float cum_sum = 0.0f;
  2128. size_t last_idx = candidates->size;
  2129. for (size_t i = 0; i < second_derivatives.size(); ++i) {
  2130. cum_sum += second_derivatives[i];
  2131. // Check if the running sum is greater than z or if we have kept at least min_keep tokens
  2132. if (cum_sum > z && i >= min_keep) {
  2133. last_idx = i;
  2134. break;
  2135. }
  2136. }
  2137. // Resize the output vector to keep only the tokens above the tail location
  2138. candidates->size = last_idx;
  2139. if (ctx) {
  2140. ctx->t_sample_us += ggml_time_us() - t_start_sample_us;
  2141. }
  2142. }
  2143. void llama_sample_typical(struct llama_context * ctx, llama_token_data_array * candidates, float p, size_t min_keep) {
  2144. // Reference implementation:
  2145. // https://github.com/huggingface/transformers/compare/main...cimeister:typical-sampling:typical-pr
  2146. if (p >= 1.0f) {
  2147. return;
  2148. }
  2149. // Compute the softmax of logits and calculate entropy
  2150. llama_sample_softmax(nullptr, candidates);
  2151. const int64_t t_start_sample_us = ggml_time_us();
  2152. float entropy = 0.0f;
  2153. for (size_t i = 0; i < candidates->size; ++i) {
  2154. entropy += -candidates->data[i].p * logf(candidates->data[i].p);
  2155. }
  2156. // Compute the absolute difference between negative log probability and entropy for each candidate
  2157. std::vector<float> shifted_scores;
  2158. for (size_t i = 0; i < candidates->size; ++i) {
  2159. float shifted_score = fabsf(-logf(candidates->data[i].p) - entropy);
  2160. shifted_scores.push_back(shifted_score);
  2161. }
  2162. // Sort tokens based on the shifted_scores and their corresponding indices
  2163. std::vector<size_t> indices(candidates->size);
  2164. std::iota(indices.begin(), indices.end(), 0);
  2165. std::sort(indices.begin(), indices.end(), [&](size_t a, size_t b) {
  2166. return shifted_scores[a] < shifted_scores[b];
  2167. });
  2168. // Compute the cumulative probabilities
  2169. float cum_sum = 0.0f;
  2170. size_t last_idx = indices.size();
  2171. for (size_t i = 0; i < indices.size(); ++i) {
  2172. size_t idx = indices[i];
  2173. cum_sum += candidates->data[idx].p;
  2174. // Check if the running sum is greater than typical or if we have kept at least min_keep tokens
  2175. if (cum_sum > p && i >= min_keep - 1) {
  2176. last_idx = i + 1;
  2177. break;
  2178. }
  2179. }
  2180. // Resize the output vector to keep only the locally typical tokens
  2181. std::vector<llama_token_data> new_candidates;
  2182. for (size_t i = 0; i < last_idx; ++i) {
  2183. size_t idx = indices[i];
  2184. new_candidates.push_back(candidates->data[idx]);
  2185. }
  2186. // Replace the data in candidates with the new_candidates data
  2187. std::copy(new_candidates.begin(), new_candidates.end(), candidates->data);
  2188. candidates->size = new_candidates.size();
  2189. if (ctx) {
  2190. ctx->t_sample_us += ggml_time_us() - t_start_sample_us;
  2191. }
  2192. }
  2193. void llama_sample_temperature(struct llama_context * ctx, llama_token_data_array * candidates_p, float temp) {
  2194. const int64_t t_start_sample_us = ggml_time_us();
  2195. for (size_t i = 0; i < candidates_p->size; ++i) {
  2196. candidates_p->data[i].logit /= temp;
  2197. }
  2198. if (ctx) {
  2199. ctx->t_sample_us += ggml_time_us() - t_start_sample_us;
  2200. }
  2201. }
  2202. void llama_sample_repetition_penalty(struct llama_context * ctx, llama_token_data_array * candidates, const llama_token * last_tokens, size_t last_tokens_size, float penalty) {
  2203. if (last_tokens_size == 0 || penalty == 1.0f) {
  2204. return;
  2205. }
  2206. const int64_t t_start_sample_us = ggml_time_us();
  2207. for (size_t i = 0; i < candidates->size; ++i) {
  2208. const auto * token_iter = std::find(last_tokens, last_tokens + last_tokens_size, candidates->data[i].id);
  2209. if (token_iter == last_tokens + last_tokens_size) {
  2210. continue;
  2211. }
  2212. // The academic publication that described this technique actually just only divided, but that would cause tokens with negative logits to become more likely, which is obviously wrong.
  2213. // This is common fix for this problem, which is to multiply by the penalty instead of dividing.
  2214. if (candidates->data[i].logit <= 0) {
  2215. candidates->data[i].logit *= penalty;
  2216. } else {
  2217. candidates->data[i].logit /= penalty;
  2218. }
  2219. }
  2220. candidates->sorted = false;
  2221. if (ctx) {
  2222. ctx->t_sample_us += ggml_time_us() - t_start_sample_us;
  2223. }
  2224. }
  2225. void llama_sample_frequency_and_presence_penalties(struct llama_context * ctx, llama_token_data_array * candidates, const llama_token * last_tokens_p, size_t last_tokens_size, float alpha_frequency, float alpha_presence) {
  2226. if (last_tokens_size == 0 || (alpha_frequency == 0.0f && alpha_presence == 0.0f)) {
  2227. return;
  2228. }
  2229. const int64_t t_start_sample_us = ggml_time_us();
  2230. // Create a frequency map to count occurrences of each token in last_tokens
  2231. std::unordered_map<llama_token, int> token_count;
  2232. for (size_t i = 0; i < last_tokens_size; ++i) {
  2233. token_count[last_tokens_p[i]]++;
  2234. }
  2235. // Apply frequency and presence penalties to the candidates
  2236. for (size_t i = 0; i < candidates->size; ++i) {
  2237. auto token_iter = token_count.find(candidates->data[i].id);
  2238. if (token_iter == token_count.end()) {
  2239. continue;
  2240. }
  2241. int count = token_iter->second;
  2242. candidates->data[i].logit -= float(count) * alpha_frequency + float(count > 0) * alpha_presence;
  2243. }
  2244. candidates->sorted = false;
  2245. if (ctx) {
  2246. ctx->t_sample_us += ggml_time_us() - t_start_sample_us;
  2247. }
  2248. }
  2249. void llama_sample_grammar(struct llama_context * ctx, llama_token_data_array * candidates, const struct llama_grammar * grammar) {
  2250. assert(ctx);
  2251. const int64_t t_start_sample_us = ggml_time_us();
  2252. bool allow_eos = false;
  2253. for (const auto & stack : grammar->stacks) {
  2254. if (stack.empty()) {
  2255. allow_eos = true;
  2256. break;
  2257. }
  2258. }
  2259. const llama_token eos = llama_token_eos();
  2260. std::vector<std::vector<uint32_t>> candidates_decoded;
  2261. std::vector<llama_grammar_candidate> candidates_grammar;
  2262. for (size_t i = 0; i < candidates->size; ++i) {
  2263. const llama_token id = candidates->data[i].id;
  2264. const char * str = llama_token_to_str(ctx, id);
  2265. if (id == eos) {
  2266. if (!allow_eos) {
  2267. candidates->data[i].logit = -INFINITY;
  2268. }
  2269. } else if (*str == 0) {
  2270. candidates->data[i].logit = -INFINITY;
  2271. } else {
  2272. candidates_decoded.push_back(decode_utf8(str));
  2273. candidates_grammar.push_back({ i, candidates_decoded.back().data() });
  2274. }
  2275. }
  2276. const auto rejects =
  2277. llama_grammar_reject_candidates(grammar->rules, grammar->stacks, candidates_grammar);
  2278. for (auto & reject : rejects) {
  2279. candidates->data[reject.index].logit = -INFINITY;
  2280. }
  2281. ctx->t_sample_us += ggml_time_us() - t_start_sample_us;
  2282. }
  2283. static void llama_log_softmax(float * array, size_t size) {
  2284. float max_l = *std::max_element(array, array + size);
  2285. float sum = 0.f;
  2286. for (size_t i = 0; i < size; ++i) {
  2287. float p = expf(array[i] - max_l);
  2288. sum += p;
  2289. array[i] = p;
  2290. }
  2291. for (size_t i = 0; i < size; ++i) {
  2292. array[i] = logf(array[i] / sum);
  2293. }
  2294. }
  2295. void llama_sample_classifier_free_guidance(
  2296. struct llama_context * ctx,
  2297. llama_token_data_array * candidates,
  2298. struct llama_context * guidance_ctx,
  2299. float scale) {
  2300. int64_t t_start_sample_us = ggml_time_us();
  2301. assert(ctx);
  2302. auto n_vocab = llama_n_vocab(ctx);
  2303. assert(n_vocab == (int)candidates->size);
  2304. assert(!candidates->sorted);
  2305. std::vector<float> logits_base;
  2306. logits_base.reserve(candidates->size);
  2307. for (size_t i = 0; i < candidates->size; ++i) {
  2308. logits_base.push_back(candidates->data[i].logit);
  2309. }
  2310. llama_log_softmax(logits_base.data(), candidates->size);
  2311. float* logits_guidance = llama_get_logits(guidance_ctx);
  2312. llama_log_softmax(logits_guidance, n_vocab);
  2313. for (int i = 0; i < n_vocab; ++i) {
  2314. float logit_guidance = logits_guidance[i];
  2315. float logit_base = logits_base[i];
  2316. candidates->data[i].logit = scale * (logit_base - logit_guidance) + logit_guidance;
  2317. }
  2318. if (ctx) {
  2319. ctx->t_sample_us += ggml_time_us() - t_start_sample_us;
  2320. }
  2321. }
  2322. llama_token llama_sample_token_mirostat(struct llama_context * ctx, llama_token_data_array * candidates, float tau, float eta, int m, float * mu) {
  2323. assert(ctx);
  2324. auto N = float(llama_n_vocab(ctx));
  2325. int64_t t_start_sample_us;
  2326. t_start_sample_us = ggml_time_us();
  2327. llama_sample_softmax(nullptr, candidates);
  2328. // Estimate s_hat using the most probable m tokens
  2329. float s_hat = 0.0;
  2330. float sum_ti_bi = 0.0;
  2331. float sum_ti_sq = 0.0;
  2332. for (size_t i = 0; i < size_t(m - 1) && i < candidates->size - 1; ++i) {
  2333. float t_i = logf(float(i + 2) / float(i + 1));
  2334. float b_i = logf(candidates->data[i].p / candidates->data[i + 1].p);
  2335. sum_ti_bi += t_i * b_i;
  2336. sum_ti_sq += t_i * t_i;
  2337. }
  2338. s_hat = sum_ti_bi / sum_ti_sq;
  2339. // Compute k from the estimated s_hat and target surprise value
  2340. float epsilon_hat = s_hat - 1;
  2341. float k = powf((epsilon_hat * powf(2, *mu)) / (1 - powf(N, -epsilon_hat)), 1 / s_hat);
  2342. // Sample the next word X using top-k sampling
  2343. llama_sample_top_k(nullptr, candidates, int(k), 1);
  2344. if (ctx) {
  2345. ctx->t_sample_us += ggml_time_us() - t_start_sample_us;
  2346. }
  2347. llama_token X = llama_sample_token(ctx, candidates);
  2348. t_start_sample_us = ggml_time_us();
  2349. // Compute error as the difference between observed surprise and target surprise value
  2350. size_t X_idx = std::distance(candidates->data, std::find_if(candidates->data, candidates->data + candidates->size, [&](const llama_token_data & candidate) {
  2351. return candidate.id == X;
  2352. }));
  2353. float observed_surprise = -log2f(candidates->data[X_idx].p);
  2354. float e = observed_surprise - tau;
  2355. // Update mu using the learning rate and error
  2356. *mu = *mu - eta * e;
  2357. if (ctx) {
  2358. ctx->t_sample_us += ggml_time_us() - t_start_sample_us;
  2359. }
  2360. return X;
  2361. }
  2362. llama_token llama_sample_token_mirostat_v2(struct llama_context * ctx, llama_token_data_array * candidates, float tau, float eta, float * mu) {
  2363. int64_t t_start_sample_us;
  2364. t_start_sample_us = ggml_time_us();
  2365. llama_sample_softmax(ctx, candidates);
  2366. // Truncate the words with surprise values greater than mu
  2367. candidates->size = std::distance(candidates->data, std::find_if(candidates->data, candidates->data + candidates->size, [&](const llama_token_data & candidate) {
  2368. return -log2f(candidate.p) > *mu;
  2369. }));
  2370. if (candidates->size == 0) {
  2371. candidates->size = 1;
  2372. }
  2373. if (ctx) {
  2374. ctx->t_sample_us += ggml_time_us() - t_start_sample_us;
  2375. }
  2376. // Normalize the probabilities of the remaining words
  2377. llama_sample_softmax(ctx, candidates);
  2378. // Sample the next word X from the remaining words
  2379. llama_token X = llama_sample_token(ctx, candidates);
  2380. t_start_sample_us = ggml_time_us();
  2381. // Compute error as the difference between observed surprise and target surprise value
  2382. size_t X_idx = std::distance(candidates->data, std::find_if(candidates->data, candidates->data + candidates->size, [&](const llama_token_data & candidate) {
  2383. return candidate.id == X;
  2384. }));
  2385. float observed_surprise = -log2f(candidates->data[X_idx].p);
  2386. float e = observed_surprise - tau;
  2387. // Update mu using the learning rate and error
  2388. *mu = *mu - eta * e;
  2389. if (ctx) {
  2390. ctx->t_sample_us += ggml_time_us() - t_start_sample_us;
  2391. }
  2392. return X;
  2393. }
  2394. llama_token llama_sample_token_greedy(struct llama_context * ctx, llama_token_data_array * candidates) {
  2395. const int64_t t_start_sample_us = ggml_time_us();
  2396. // Find max element
  2397. auto * max_iter = std::max_element(candidates->data, candidates->data + candidates->size, [](const llama_token_data & a, const llama_token_data & b) {
  2398. return a.logit < b.logit;
  2399. });
  2400. llama_token result = max_iter->id;
  2401. if (ctx) {
  2402. ctx->t_sample_us += ggml_time_us() - t_start_sample_us;
  2403. ctx->n_sample++;
  2404. }
  2405. return result;
  2406. }
  2407. llama_token llama_sample_token(struct llama_context * ctx, llama_token_data_array * candidates) {
  2408. assert(ctx);
  2409. const int64_t t_start_sample_us = ggml_time_us();
  2410. llama_sample_softmax(nullptr, candidates);
  2411. std::vector<float> probs;
  2412. probs.reserve(candidates->size);
  2413. for (size_t i = 0; i < candidates->size; ++i) {
  2414. probs.push_back(candidates->data[i].p);
  2415. }
  2416. std::discrete_distribution<> dist(probs.begin(), probs.end());
  2417. auto & rng = ctx->rng;
  2418. int idx = dist(rng);
  2419. llama_token result = candidates->data[idx].id;
  2420. ctx->t_sample_us += ggml_time_us() - t_start_sample_us;
  2421. ctx->n_sample++;
  2422. return result;
  2423. }
  2424. void llama_grammar_accept_token(struct llama_context * ctx, struct llama_grammar * grammar, llama_token token) {
  2425. const int64_t t_start_sample_us = ggml_time_us();
  2426. if (token == llama_token_eos()) {
  2427. for (const auto & stack : grammar->stacks) {
  2428. if (stack.empty()) {
  2429. return;
  2430. }
  2431. }
  2432. LLAMA_ASSERT(false);
  2433. }
  2434. const char * str = llama_token_to_str(ctx, token);
  2435. // Note terminating 0 in decoded string
  2436. auto code_points = decode_utf8(str);
  2437. for (auto it = code_points.begin(), end = code_points.end() - 1; it != end; ++it) {
  2438. grammar->stacks = llama_grammar_accept(grammar->rules, grammar->stacks, *it);
  2439. }
  2440. LLAMA_ASSERT(!grammar->stacks.empty());
  2441. ctx->t_sample_us += ggml_time_us() - t_start_sample_us;
  2442. }
  2443. //
  2444. // quantization
  2445. //
  2446. static void llama_convert_tensor_internal(const llama_load_tensor & tensor, llama_buffer & output, const int nelements, const int nthread) {
  2447. if (output.size < nelements * sizeof(float)) {
  2448. output.resize(nelements * sizeof(float));
  2449. }
  2450. float * f32_output = (float *) output.addr;
  2451. ggml_type_traits_t qtype;
  2452. if (ggml_is_quantized(tensor.type)) {
  2453. qtype = ggml_internal_get_type_traits(tensor.type);
  2454. if (qtype.to_float == NULL) {
  2455. throw std::runtime_error(format("type %s unsupported for integer quantization: no dequantization available", ggml_type_name(tensor.type)));
  2456. }
  2457. } else if (tensor.type != GGML_TYPE_F16) {
  2458. throw std::runtime_error(format("cannot dequantize/convert tensor type %s", ggml_type_name(tensor.type)));
  2459. }
  2460. if (nthread < 2) {
  2461. if (tensor.type == GGML_TYPE_F16) {
  2462. ggml_fp16_to_fp32_row((ggml_fp16_t *)tensor.data, f32_output, nelements);
  2463. } else if (ggml_is_quantized(tensor.type)) {
  2464. qtype.to_float(tensor.data, f32_output, nelements);
  2465. } else {
  2466. LLAMA_ASSERT(false); // unreachable
  2467. }
  2468. return;
  2469. }
  2470. auto block_size = tensor.type == GGML_TYPE_F16 ? 1 : (size_t)ggml_blck_size(tensor.type);
  2471. auto block_size_bytes = ggml_type_size(tensor.type);
  2472. LLAMA_ASSERT(nelements % block_size == 0);
  2473. auto nblocks = nelements / block_size;
  2474. auto blocks_per_thread = nblocks / nthread;
  2475. auto spare_blocks = nblocks - (blocks_per_thread * nthread); // if blocks aren't divisible by thread count
  2476. std::vector<std::thread> workers;
  2477. for (auto tnum = 0, in_buff_offs = 0, out_buff_offs = 0; tnum < nthread; tnum++) {
  2478. auto thr_blocks = blocks_per_thread + (tnum == nthread - 1 ? spare_blocks : 0); // num blocks for this thread
  2479. auto thr_elems = thr_blocks * block_size; // number of elements for this thread
  2480. auto thr_block_bytes = thr_blocks * block_size_bytes; // number of input bytes for this thread
  2481. auto compute = [qtype] (ggml_type typ, uint8_t * inbuf, float * outbuf, int nels) {
  2482. if (typ == GGML_TYPE_F16) {
  2483. ggml_fp16_to_fp32_row((ggml_fp16_t *)inbuf, outbuf, nels);
  2484. } else {
  2485. qtype.to_float(inbuf, outbuf, nels);
  2486. }
  2487. };
  2488. workers.push_back(std::thread(compute, tensor.type, tensor.data + in_buff_offs, f32_output + out_buff_offs, thr_elems));
  2489. in_buff_offs += thr_block_bytes;
  2490. out_buff_offs += thr_elems;
  2491. }
  2492. for (auto & worker : workers) {
  2493. worker.join();
  2494. }
  2495. }
  2496. static void llama_model_quantize_internal(const std::string & fname_inp, const std::string & fname_out, const llama_model_quantize_params * params) {
  2497. ggml_type quantized_type;
  2498. llama_ftype ftype = params->ftype;
  2499. int nthread = params->nthread;
  2500. switch (params->ftype) {
  2501. case LLAMA_FTYPE_MOSTLY_Q4_0: quantized_type = GGML_TYPE_Q4_0; break;
  2502. case LLAMA_FTYPE_MOSTLY_Q4_1: quantized_type = GGML_TYPE_Q4_1; break;
  2503. case LLAMA_FTYPE_MOSTLY_Q5_0: quantized_type = GGML_TYPE_Q5_0; break;
  2504. case LLAMA_FTYPE_MOSTLY_Q5_1: quantized_type = GGML_TYPE_Q5_1; break;
  2505. case LLAMA_FTYPE_MOSTLY_Q8_0: quantized_type = GGML_TYPE_Q8_0; break;
  2506. case LLAMA_FTYPE_MOSTLY_F16: quantized_type = GGML_TYPE_F16; break;
  2507. case LLAMA_FTYPE_ALL_F32: quantized_type = GGML_TYPE_F32; break;
  2508. #ifdef GGML_USE_K_QUANTS
  2509. // K-quants
  2510. case LLAMA_FTYPE_MOSTLY_Q2_K: quantized_type = GGML_TYPE_Q2_K; break;
  2511. case LLAMA_FTYPE_MOSTLY_Q3_K_S:
  2512. case LLAMA_FTYPE_MOSTLY_Q3_K_M:
  2513. case LLAMA_FTYPE_MOSTLY_Q3_K_L: quantized_type = GGML_TYPE_Q3_K; break;
  2514. case LLAMA_FTYPE_MOSTLY_Q4_K_S:
  2515. case LLAMA_FTYPE_MOSTLY_Q4_K_M: quantized_type = GGML_TYPE_Q4_K; break;
  2516. case LLAMA_FTYPE_MOSTLY_Q5_K_S:
  2517. case LLAMA_FTYPE_MOSTLY_Q5_K_M: quantized_type = GGML_TYPE_Q5_K; break;
  2518. case LLAMA_FTYPE_MOSTLY_Q6_K: quantized_type = GGML_TYPE_Q6_K; break;
  2519. #endif
  2520. default: throw std::runtime_error(format("invalid output file type %d\n", ftype));
  2521. }
  2522. if (nthread <= 0) {
  2523. nthread = std::thread::hardware_concurrency();
  2524. }
  2525. std::unique_ptr<llama_model_loader> model_loader(new llama_model_loader(fname_inp, /*use_mmap*/ false));
  2526. llama_file_saver file_saver(fname_out.c_str(), model_loader->file_loader.get(), params->ftype);
  2527. #ifdef GGML_USE_K_QUANTS
  2528. int n_attention_wv = 0;
  2529. int n_feed_forward_w2 = 0;
  2530. for (auto& tensor : model_loader->tensors_map.tensors) {
  2531. if (tensor.name.find("attention.wv.weight") != std::string::npos) {
  2532. ++n_attention_wv;
  2533. }
  2534. else if (tensor.name.find("feed_forward.w2.weight") != std::string::npos) {
  2535. ++n_feed_forward_w2;
  2536. }
  2537. }
  2538. int i_attention_wv = 0;
  2539. int i_feed_forward_w2 = 0;
  2540. #endif
  2541. size_t total_size_org = 0;
  2542. size_t total_size_new = 0;
  2543. std::vector<int64_t> hist_all(1 << 4, 0);
  2544. std::vector<std::thread> workers;
  2545. std::mutex mutex;
  2546. auto use_more_bits = [] (int i_layer, int num_layers) -> bool {
  2547. return i_layer < num_layers/8 || i_layer >= 7*num_layers/8 || (i_layer - num_layers/8)%3 == 2;
  2548. };
  2549. size_t idx = 0;
  2550. for (llama_load_tensor & tensor : model_loader->tensors_map.tensors) {
  2551. llama_buffer read_data;
  2552. read_data.resize(tensor.size);
  2553. tensor.data = read_data.addr;
  2554. model_loader->load_data_for(tensor);
  2555. LLAMA_LOG_INFO("[%4zu/%4zu] %36s - %16s, type = %6s, ",
  2556. ++idx, model_loader->tensors_map.tensors.size(),
  2557. tensor.name.c_str(), llama_format_tensor_shape(tensor.ne).c_str(),
  2558. ggml_type_name(tensor.type));
  2559. // This used to be a regex, but <regex> has an extreme cost to compile times.
  2560. bool quantize = tensor.name.rfind("weight") == tensor.name.size() - 6; // ends with 'weight'?
  2561. // quantize only 2D tensors
  2562. quantize &= (tensor.ne.size() == 2);
  2563. quantize &= params->quantize_output_tensor || tensor.name != "output.weight";
  2564. quantize &= quantized_type != tensor.type;
  2565. enum ggml_type new_type;
  2566. void * new_data;
  2567. size_t new_size;
  2568. llama_buffer work;
  2569. if (!quantize) {
  2570. new_type = tensor.type;
  2571. new_data = tensor.data;
  2572. new_size = tensor.size;
  2573. LLAMA_LOG_INFO("size = %8.3f MB\n", tensor.size/1024.0/1024.0);
  2574. } else {
  2575. new_type = quantized_type;
  2576. #ifdef GGML_USE_K_QUANTS
  2577. if (tensor.name == "output.weight") {
  2578. int nx = tensor.ne.at(0);
  2579. int ny = tensor.ne.at(1);
  2580. if (nx % QK_K == 0 && ny % QK_K == 0) {
  2581. new_type = GGML_TYPE_Q6_K;
  2582. }
  2583. } else if (tensor.name.find("attention.wv.weight") != std::string::npos) {
  2584. if (ftype == LLAMA_FTYPE_MOSTLY_Q3_K_M || ftype == LLAMA_FTYPE_MOSTLY_Q2_K) new_type = GGML_TYPE_Q4_K;
  2585. else if (ftype == LLAMA_FTYPE_MOSTLY_Q3_K_L) new_type = GGML_TYPE_Q5_K;
  2586. else if ((ftype == LLAMA_FTYPE_MOSTLY_Q4_K_M || ftype == LLAMA_FTYPE_MOSTLY_Q5_K_M) &&
  2587. use_more_bits(i_attention_wv, n_attention_wv)) new_type = GGML_TYPE_Q6_K;
  2588. else if (QK_K == 64 && (ftype == LLAMA_FTYPE_MOSTLY_Q4_K_S || ftype == LLAMA_FTYPE_MOSTLY_Q3_K_S) &&
  2589. (i_attention_wv < n_attention_wv/8 || i_attention_wv >= 7*n_attention_wv/8)) new_type = GGML_TYPE_Q6_K;
  2590. ++i_attention_wv;
  2591. } else if (tensor.name.find("feed_forward.w2.weight") != std::string::npos) {
  2592. if (ftype == LLAMA_FTYPE_MOSTLY_Q3_K_M || ftype == LLAMA_FTYPE_MOSTLY_Q2_K) new_type = GGML_TYPE_Q4_K;
  2593. else if (ftype == LLAMA_FTYPE_MOSTLY_Q3_K_L) new_type = GGML_TYPE_Q5_K;
  2594. else if ((ftype == LLAMA_FTYPE_MOSTLY_Q4_K_M || ftype == LLAMA_FTYPE_MOSTLY_Q5_K_M) &&
  2595. use_more_bits(i_feed_forward_w2, n_feed_forward_w2)) new_type = GGML_TYPE_Q6_K;
  2596. //else if (ftype == LLAMA_FTYPE_MOSTLY_Q4_K_S && i_feed_forward_w2 < n_feed_forward_w2/8) new_type = GGML_TYPE_Q6_K;
  2597. ++i_feed_forward_w2;
  2598. } else if (tensor.name.find("attention.wo.weight") != std::string::npos) {
  2599. if (ftype == LLAMA_FTYPE_MOSTLY_Q3_K_M || ftype == LLAMA_FTYPE_MOSTLY_Q2_K) new_type = GGML_TYPE_Q4_K;
  2600. else if (ftype == LLAMA_FTYPE_MOSTLY_Q3_K_L) new_type = GGML_TYPE_Q5_K;
  2601. }
  2602. bool convert_incompatible_tensor = false;
  2603. if (new_type == GGML_TYPE_Q2_K || new_type == GGML_TYPE_Q3_K || new_type == GGML_TYPE_Q4_K ||
  2604. new_type == GGML_TYPE_Q5_K || new_type == GGML_TYPE_Q6_K) {
  2605. int nx = tensor.ne.at(0);
  2606. int ny = tensor.ne.at(1);
  2607. if (nx % QK_K != 0 || ny % QK_K != 0) {
  2608. LLAMA_LOG_INFO("\n\nTensor sizes %d x %d are not divisible by %d, required for k-quants.\n",nx,ny,QK_K);
  2609. convert_incompatible_tensor = true;
  2610. }
  2611. }
  2612. if (convert_incompatible_tensor) {
  2613. if (tensor.name == "output.weight") {
  2614. new_type = GGML_TYPE_F16; //fall back to F16 instead of just failing.
  2615. LLAMA_LOG_WARN("F16 will be used for this tensor instead.\n");
  2616. } else if (tensor.name == "tok_embeddings.weight") {
  2617. new_type = GGML_TYPE_Q4_0; //fall back to Q4_0 instead of just failing.
  2618. LLAMA_LOG_WARN("Q4_0 will be used for this tensor instead.\n");
  2619. } else {
  2620. throw std::runtime_error("Unsupported tensor size encountered\n");
  2621. }
  2622. }
  2623. #endif
  2624. float * f32_data;
  2625. size_t nelements = tensor.ne.at(0) * tensor.ne.at(1);
  2626. llama_buffer f32_conv_buf;
  2627. if (tensor.type == GGML_TYPE_F32) {
  2628. f32_data = (float *) tensor.data;
  2629. } else if (ggml_is_quantized(tensor.type) && !params->allow_requantize) {
  2630. throw std::runtime_error(format("requantizing from type %s is disabled", ggml_type_name(tensor.type)));
  2631. } else {
  2632. llama_convert_tensor_internal(tensor, f32_conv_buf, nelements, nthread);
  2633. f32_data = (float *) f32_conv_buf.addr;
  2634. }
  2635. LLAMA_LOG_INFO("quantizing to %s .. ", ggml_type_name(new_type));
  2636. fflush(stdout);
  2637. work.resize(nelements * 4); // upper bound on size
  2638. new_data = work.addr;
  2639. std::vector<int64_t> hist_cur(1 << 4, 0);
  2640. int chunk_size = 32 * 512;
  2641. const int nchunk = (nelements + chunk_size - 1)/chunk_size;
  2642. const int nthread_use = nthread > 1 ? std::max(1, std::min(nthread, nchunk)) : 1;
  2643. if (nthread_use < 2) {
  2644. new_size = ggml_quantize_chunk(new_type, f32_data, new_data, 0, nelements, hist_cur.data());
  2645. } else {
  2646. size_t counter = 0;
  2647. new_size = 0;
  2648. auto compute = [&mutex, &counter, &hist_cur, &new_size, new_type, f32_data, new_data, nelements, chunk_size] () {
  2649. std::vector<int64_t> local_hist;
  2650. size_t local_size = 0;
  2651. while (true) {
  2652. std::unique_lock<std::mutex> lock(mutex);
  2653. size_t first = counter; counter += chunk_size;
  2654. if (first >= nelements) {
  2655. if (!local_hist.empty()) {
  2656. for (int j=0; j<int(local_hist.size()); ++j) {
  2657. hist_cur[j] += local_hist[j];
  2658. }
  2659. new_size += local_size;
  2660. }
  2661. break;
  2662. }
  2663. lock.unlock();
  2664. size_t last = std::min(nelements, first + chunk_size);
  2665. if (local_hist.empty()) {
  2666. local_hist.resize(hist_cur.size(), 0);
  2667. }
  2668. local_size += ggml_quantize_chunk(new_type, f32_data, new_data, first, last - first, local_hist.data());
  2669. }
  2670. };
  2671. if ((int) workers.size() < nthread_use - 1) {
  2672. workers.resize(nthread_use - 1);
  2673. }
  2674. for (int it = 0; it < nthread_use - 1; ++it) {
  2675. workers[it] = std::thread(compute);
  2676. }
  2677. compute();
  2678. for (int it = 0; it < nthread_use - 1; ++it) {
  2679. workers[it].join();
  2680. }
  2681. }
  2682. LLAMA_LOG_INFO("size = %8.2f MB -> %8.2f MB | hist: ", tensor.size/1024.0/1024.0, new_size/1024.0/1024.0);
  2683. int64_t tot_count = 0;
  2684. for (size_t i = 0; i < hist_cur.size(); i++) {
  2685. hist_all[i] += hist_cur[i];
  2686. tot_count += hist_cur[i];
  2687. }
  2688. if (tot_count > 0) {
  2689. for (size_t i = 0; i < hist_cur.size(); i++) {
  2690. LLAMA_LOG_INFO("%5.3f ", hist_cur[i] / float(nelements));
  2691. }
  2692. }
  2693. LLAMA_LOG_INFO("\n");
  2694. }
  2695. total_size_org += tensor.size;
  2696. total_size_new += new_size;
  2697. file_saver.write_tensor(tensor, new_type, new_data, new_size);
  2698. }
  2699. LLAMA_LOG_INFO("%s: model size = %8.2f MB\n", __func__, total_size_org/1024.0/1024.0);
  2700. LLAMA_LOG_INFO("%s: quant size = %8.2f MB\n", __func__, total_size_new/1024.0/1024.0);
  2701. {
  2702. int64_t sum_all = 0;
  2703. for (size_t i = 0; i < hist_all.size(); i++) {
  2704. sum_all += hist_all[i];
  2705. }
  2706. if (sum_all > 0) {
  2707. LLAMA_LOG_INFO("%s: hist: ", __func__);
  2708. for (size_t i = 0; i < hist_all.size(); i++) {
  2709. LLAMA_LOG_INFO("%5.3f ", hist_all[i] / float(sum_all));
  2710. }
  2711. LLAMA_LOG_INFO("\n");
  2712. }
  2713. }
  2714. }
  2715. //
  2716. // interface implementation
  2717. //
  2718. struct llama_model * llama_load_model_from_file(
  2719. const char * path_model,
  2720. struct llama_context_params params) {
  2721. ggml_time_init();
  2722. llama_model * model = new llama_model;
  2723. ggml_type memory_type = params.f16_kv ? GGML_TYPE_F16 : GGML_TYPE_F32;
  2724. if (!llama_model_load(path_model, *model, model->vocab, params.n_ctx, params.n_batch, params.n_gqa, params.rms_norm_eps, params.n_gpu_layers,
  2725. params.main_gpu, params.tensor_split, params.mul_mat_q, params.rope_freq_base, params.rope_freq_scale,params.low_vram,
  2726. memory_type, params.use_mmap, params.use_mlock, params.vocab_only, params.progress_callback,
  2727. params.progress_callback_user_data)) {
  2728. LLAMA_LOG_ERROR("%s: failed to load model\n", __func__);
  2729. delete model;
  2730. return nullptr;
  2731. }
  2732. return model;
  2733. }
  2734. void llama_free_model(struct llama_model * model) {
  2735. delete model;
  2736. }
  2737. struct llama_context * llama_new_context_with_model(
  2738. struct llama_model * model,
  2739. struct llama_context_params params) {
  2740. if (!model) {
  2741. return nullptr;
  2742. }
  2743. llama_context * ctx = new llama_context(*model);
  2744. if (params.seed == LLAMA_DEFAULT_SEED) {
  2745. params.seed = time(NULL);
  2746. }
  2747. unsigned cur_percentage = 0;
  2748. if (params.progress_callback == NULL) {
  2749. params.progress_callback_user_data = &cur_percentage;
  2750. params.progress_callback = [](float progress, void * ctx) {
  2751. unsigned * cur_percentage_p = (unsigned *) ctx;
  2752. unsigned percentage = (unsigned) (100 * progress);
  2753. while (percentage > *cur_percentage_p) {
  2754. *cur_percentage_p = percentage;
  2755. LLAMA_LOG_INFO(".");
  2756. if (percentage >= 100) {
  2757. LLAMA_LOG_INFO("\n");
  2758. }
  2759. }
  2760. };
  2761. }
  2762. ctx->rng = std::mt19937(params.seed);
  2763. ctx->logits_all = params.logits_all;
  2764. ggml_type memory_type = params.f16_kv ? GGML_TYPE_F16 : GGML_TYPE_F32;
  2765. // reserve memory for context buffers
  2766. if (!params.vocab_only) {
  2767. if (!kv_cache_init(ctx->model.hparams, ctx->kv_self, memory_type, ctx->model.hparams.n_ctx, params.n_gpu_layers)) {
  2768. LLAMA_LOG_ERROR("%s: kv_cache_init() failed for self-attention cache\n", __func__);
  2769. llama_free(ctx);
  2770. return nullptr;
  2771. }
  2772. {
  2773. const size_t memory_size = ggml_nbytes(ctx->kv_self.k) + ggml_nbytes(ctx->kv_self.v);
  2774. LLAMA_LOG_INFO("%s: kv self size = %7.2f MB\n", __func__, memory_size / 1024.0 / 1024.0);
  2775. }
  2776. const auto & hparams = ctx->model.hparams;
  2777. // resized during inference
  2778. if (params.logits_all) {
  2779. ctx->logits.reserve(hparams.n_ctx*hparams.n_vocab);
  2780. } else {
  2781. ctx->logits.reserve(hparams.n_vocab);
  2782. }
  2783. if (params.embedding){
  2784. ctx->embedding.resize(hparams.n_embd);
  2785. }
  2786. #ifdef LLAMA_USE_ALLOCATOR
  2787. {
  2788. static const size_t tensor_alignment = 32;
  2789. // the compute buffer is used to store the tensor and graph structs, while the allocator buffer is used for the tensor data
  2790. ctx->buf_compute.resize(ggml_tensor_overhead()*GGML_MAX_NODES + ggml_graph_overhead());
  2791. // create measure allocator
  2792. ctx->alloc = ggml_allocr_new_measure(tensor_alignment);
  2793. // build worst-case graph
  2794. int n_tokens = std::min((int)hparams.n_ctx, params.n_batch);
  2795. int n_past = hparams.n_ctx - n_tokens;
  2796. llama_token token = llama_token_bos(); // not actually used by llama_build_graph, but required to choose between token and embedding inputs graph
  2797. ggml_cgraph * gf = llama_build_graph(*ctx, &token, NULL, n_tokens, n_past);
  2798. // measure memory requirements for the graph
  2799. size_t alloc_size = ggml_allocr_alloc_graph(ctx->alloc, gf) + tensor_alignment;
  2800. LLAMA_LOG_INFO("%s: compute buffer total size = %7.2f MB\n", __func__, (ctx->buf_compute.size + alloc_size) / 1024.0 / 1024.0);
  2801. // debug - for comparison with scratch buffer
  2802. //size_t prev_req =
  2803. // MEM_REQ_SCRATCH0(hparams.n_ctx).at(ctx->model.type) +
  2804. // MEM_REQ_SCRATCH1().at(ctx->model.type) +
  2805. // MEM_REQ_EVAL().at(ctx->model.type);
  2806. //LLAMA_LOG_INFO("%s: (debug) equivalent with scratch buffer = %7.2f MB\n", __func__, prev_req / 1024.0 / 1024.0);
  2807. // recreate allocator with exact memory requirements
  2808. ggml_allocr_free(ctx->alloc);
  2809. ctx->buf_alloc.resize(alloc_size);
  2810. ctx->alloc = ggml_allocr_new(ctx->buf_alloc.addr, ctx->buf_alloc.size, tensor_alignment);
  2811. }
  2812. #else
  2813. ctx->buf_compute.resize(MEM_REQ_EVAL().at(ctx->model.type) + ggml_graph_overhead());
  2814. #endif
  2815. #ifdef LLAMA_USE_SCRATCH
  2816. ctx->buf_scratch[0].resize(MEM_REQ_SCRATCH0(hparams.n_ctx).at(ctx->model.type));
  2817. ctx->buf_scratch[1].resize(MEM_REQ_SCRATCH1().at(ctx->model.type));
  2818. #endif
  2819. }
  2820. #ifdef GGML_USE_METAL
  2821. if (params.n_gpu_layers > 0) {
  2822. // this allocates all Metal resources and memory buffers
  2823. ctx->ctx_metal = ggml_metal_init(1);
  2824. if (!ctx->ctx_metal) {
  2825. LLAMA_LOG_ERROR("%s: ggml_metal_init() failed\n", __func__);
  2826. llama_free(ctx);
  2827. return NULL;
  2828. }
  2829. void * data_ptr = NULL;
  2830. size_t data_size = 0;
  2831. if (params.use_mmap) {
  2832. data_ptr = ctx->model.mapping->addr;
  2833. data_size = ctx->model.mapping->size;
  2834. } else {
  2835. data_ptr = ggml_get_mem_buffer(ctx->model.ctx);
  2836. data_size = ggml_get_mem_size (ctx->model.ctx);
  2837. }
  2838. const size_t max_size = ggml_get_max_tensor_size(ctx->model.ctx);
  2839. LLAMA_LOG_INFO("%s: max tensor size = %8.2f MB\n", __func__, max_size/1024.0/1024.0);
  2840. #define LLAMA_METAL_CHECK_BUF(result) \
  2841. if (!(result)) { \
  2842. LLAMA_LOG_ERROR("%s: failed to add buffer\n", __func__); \
  2843. llama_free(ctx); \
  2844. return NULL; \
  2845. }
  2846. LLAMA_METAL_CHECK_BUF(ggml_metal_add_buffer(ctx->ctx_metal, "data", data_ptr, data_size, max_size));
  2847. LLAMA_METAL_CHECK_BUF(ggml_metal_add_buffer(ctx->ctx_metal, "eval", ctx->buf_compute.addr, ctx->buf_compute.size, 0));
  2848. LLAMA_METAL_CHECK_BUF(ggml_metal_add_buffer(ctx->ctx_metal, "kv", ctx->kv_self.buf.addr, ctx->kv_self.buf.size, 0));
  2849. LLAMA_METAL_CHECK_BUF(ggml_metal_add_buffer(ctx->ctx_metal, "scr0", ctx->buf_scratch[0].addr, ctx->buf_scratch[0].size, 0));
  2850. LLAMA_METAL_CHECK_BUF(ggml_metal_add_buffer(ctx->ctx_metal, "scr1", ctx->buf_scratch[1].addr, ctx->buf_scratch[1].size, 0));
  2851. #undef LLAMA_METAL_CHECK_BUF
  2852. }
  2853. #endif
  2854. #ifdef GGML_USE_MPI
  2855. ctx->ctx_mpi = ggml_mpi_init();
  2856. if (ggml_mpi_rank(ctx->ctx_mpi) > 0) {
  2857. // Enter a blocking eval loop with dummy input, letting rank=0 drive the process
  2858. const std::vector<llama_token> tmp(ctx->model.hparams.n_ctx, llama_token_bos());
  2859. while (!llama_eval(ctx, tmp.data(), tmp.size(), 0, 0)) {};
  2860. llama_backend_free();
  2861. exit(1);
  2862. }
  2863. #endif
  2864. return ctx;
  2865. }
  2866. struct llama_context * llama_init_from_file(
  2867. const char * path_model,
  2868. struct llama_context_params params) {
  2869. struct llama_model * model = llama_load_model_from_file(path_model, params);
  2870. if (!model) {
  2871. return nullptr;
  2872. }
  2873. struct llama_context * ctx = llama_new_context_with_model(model, params);
  2874. ctx->model_owner = true;
  2875. return ctx;
  2876. }
  2877. void llama_free(struct llama_context * ctx) {
  2878. delete ctx;
  2879. }
  2880. int llama_model_quantize(
  2881. const char * fname_inp,
  2882. const char * fname_out,
  2883. const llama_model_quantize_params *params) {
  2884. try {
  2885. llama_model_quantize_internal(fname_inp, fname_out, params);
  2886. return 0;
  2887. } catch (const std::exception & err) {
  2888. LLAMA_LOG_ERROR("%s: failed to quantize: %s\n", __func__, err.what());
  2889. return 1;
  2890. }
  2891. }
  2892. int llama_apply_lora_from_file_internal(const struct llama_model & model, const char * path_lora, const char * path_base_model, int n_threads) {
  2893. LLAMA_LOG_INFO("%s: applying lora adapter from '%s' - please wait ...\n", __func__, path_lora);
  2894. const int64_t t_start_lora_us = ggml_time_us();
  2895. auto fin = std::ifstream(path_lora, std::ios::binary);
  2896. if (!fin) {
  2897. LLAMA_LOG_ERROR("%s: failed to open '%s'\n", __func__, path_lora);
  2898. return 1;
  2899. }
  2900. // verify magic and version
  2901. {
  2902. uint32_t magic;
  2903. fin.read((char *) &magic, sizeof(magic));
  2904. if (magic != LLAMA_FILE_MAGIC_GGLA) {
  2905. LLAMA_LOG_ERROR("%s: bad file magic\n", __func__);
  2906. return 1;
  2907. }
  2908. uint32_t format_version;
  2909. fin.read((char *) &format_version, sizeof(format_version));
  2910. if (format_version != 1) {
  2911. LLAMA_LOG_ERROR("%s: unsupported file version\n", __func__ );
  2912. return 1;
  2913. }
  2914. }
  2915. int32_t lora_r;
  2916. int32_t lora_alpha;
  2917. fin.read((char *) &lora_r, sizeof(lora_r));
  2918. fin.read((char *) &lora_alpha, sizeof(lora_alpha));
  2919. float scaling = (float)lora_alpha / (float)lora_r;
  2920. LLAMA_LOG_INFO("%s: r = %d, alpha = %d, scaling = %.2f\n", __func__, lora_r, lora_alpha, scaling);
  2921. // create a temporary ggml context to store the lora tensors
  2922. // todo: calculate size from biggest possible tensor
  2923. std::vector<uint8_t> lora_buf(1024ull * 1024ull * 1024ull);
  2924. struct ggml_init_params params;
  2925. params.mem_size = lora_buf.size();
  2926. params.mem_buffer = lora_buf.data();
  2927. params.no_alloc = false;
  2928. ggml_context * lora_ctx = ggml_init(params);
  2929. std::unordered_map<std::string, struct ggml_tensor *> lora_tensors;
  2930. // create a name -> tensor map of the model to accelerate lookups
  2931. std::unordered_map<std::string, struct ggml_tensor*> model_tensors;
  2932. for (const auto & kv: model.tensors_by_name) {
  2933. model_tensors.insert(kv);
  2934. }
  2935. // load base model
  2936. std::unique_ptr<llama_model_loader> model_loader;
  2937. ggml_context * base_ctx = NULL;
  2938. llama_buffer base_buf;
  2939. if (path_base_model) {
  2940. LLAMA_LOG_INFO("%s: loading base model from '%s'\n", __func__, path_base_model);
  2941. model_loader.reset(new llama_model_loader(path_base_model, /*use_mmap*/ true));
  2942. size_t ctx_size;
  2943. size_t mmapped_size;
  2944. model_loader->calc_sizes(&ctx_size, &mmapped_size);
  2945. base_buf.resize(ctx_size);
  2946. ggml_init_params base_params;
  2947. base_params.mem_size = base_buf.size;
  2948. base_params.mem_buffer = base_buf.addr;
  2949. base_params.no_alloc = model_loader->use_mmap;
  2950. base_ctx = ggml_init(base_params);
  2951. model_loader->ggml_ctx = base_ctx;
  2952. // maybe this should in llama_model_loader
  2953. if (model_loader->use_mmap) {
  2954. model_loader->mapping.reset(new llama_mmap(&model_loader->file_loader->file, /* prefetch */ 0, ggml_is_numa()));
  2955. }
  2956. }
  2957. // read tensors and apply
  2958. bool warned = false;
  2959. int n_tensors = 0;
  2960. std::vector<uint8_t> work_buffer;
  2961. while (true) {
  2962. int32_t n_dims;
  2963. int32_t length;
  2964. int32_t ftype;
  2965. fin.read(reinterpret_cast<char *>(&n_dims), sizeof(n_dims));
  2966. fin.read(reinterpret_cast<char *>(&length), sizeof(length));
  2967. fin.read(reinterpret_cast<char *>(&ftype), sizeof(ftype));
  2968. if (fin.eof()) {
  2969. break;
  2970. }
  2971. int32_t ne[2] = { 1, 1 };
  2972. for (int i = 0; i < n_dims; ++i) {
  2973. fin.read(reinterpret_cast<char *>(&ne[i]), sizeof(ne[i]));
  2974. }
  2975. std::string name;
  2976. {
  2977. char buf[1024];
  2978. fin.read(buf, length);
  2979. name = std::string(buf, length);
  2980. }
  2981. // check for lora suffix and get the type of tensor
  2982. const std::string lora_suffix = ".lora";
  2983. size_t pos = name.rfind(lora_suffix);
  2984. if (pos == std::string::npos) {
  2985. LLAMA_LOG_ERROR("%s: error: '%s' is not a lora tensor\n", __func__, name.c_str());
  2986. return 1;
  2987. }
  2988. std::string lora_type = name.substr(pos + lora_suffix.length());
  2989. std::string base_name = name;
  2990. base_name.erase(pos);
  2991. // LLAMA_LOG_INFO("%s: %s => %s (lora type %s) \n", __func__, name.c_str(),base_name.c_str(), lora_type.c_str());
  2992. if (model_tensors.find(base_name) == model_tensors.end()) {
  2993. LLAMA_LOG_ERROR("%s: unknown tensor '%s' in lora adapter\n", __func__, name.data());
  2994. return 1;
  2995. }
  2996. // create ggml tensor
  2997. ggml_type wtype;
  2998. switch (ftype) {
  2999. case 0: wtype = GGML_TYPE_F32; break;
  3000. case 1: wtype = GGML_TYPE_F16; break;
  3001. default:
  3002. {
  3003. LLAMA_LOG_ERROR("%s: invalid tensor data type '%d'\n",
  3004. __func__, ftype);
  3005. return false;
  3006. }
  3007. }
  3008. ggml_tensor * lora_tensor;
  3009. if (n_dims == 2) {
  3010. lora_tensor = ggml_new_tensor_2d(lora_ctx, wtype, ne[0], ne[1]);
  3011. }
  3012. else {
  3013. LLAMA_LOG_ERROR("%s: unsupported tensor dimension %d\n", __func__, n_dims);
  3014. return 1;
  3015. }
  3016. ggml_set_name(lora_tensor, "lora_tensor");
  3017. // load tensor data
  3018. size_t offset = fin.tellg();
  3019. size_t tensor_data_size = ggml_nbytes(lora_tensor);
  3020. offset = (offset + 31) & -32;
  3021. fin.seekg(offset);
  3022. fin.read((char*)lora_tensor->data, tensor_data_size);
  3023. lora_tensors[name] = lora_tensor;
  3024. // check if we have both A and B tensors and apply
  3025. if (lora_tensors.find(base_name + ".loraA") != lora_tensors.end() &&
  3026. lora_tensors.find(base_name + ".loraB") != lora_tensors.end()) {
  3027. ggml_tensor * dest_t = model_tensors[base_name];
  3028. offload_func_t offload_func = llama_nop;
  3029. offload_func_t offload_func_force_inplace = llama_nop;
  3030. #ifdef GGML_USE_CUBLAS
  3031. if (dest_t->backend == GGML_BACKEND_GPU || dest_t->backend == GGML_BACKEND_GPU_SPLIT) {
  3032. if (dest_t->type != GGML_TYPE_F16) {
  3033. throw std::runtime_error(format(
  3034. "%s: error: the simultaneous use of LoRAs and GPU acceleration is only supported for f16 models", __func__));
  3035. }
  3036. offload_func = ggml_cuda_assign_buffers;
  3037. offload_func_force_inplace = ggml_cuda_assign_buffers_force_inplace;
  3038. }
  3039. #endif // GGML_USE_CUBLAS
  3040. ggml_tensor * base_t;
  3041. if (model_loader) {
  3042. // load from base model
  3043. if (model_loader->tensors_map.name_to_idx.find(base_name) == model_loader->tensors_map.name_to_idx.end()) {
  3044. LLAMA_LOG_ERROR("%s: error: tensor '%s' not found in base model\n", __func__, base_name.c_str());
  3045. return 1;
  3046. }
  3047. size_t idx = model_loader->tensors_map.name_to_idx[base_name];
  3048. llama_load_tensor & lt = model_loader->tensors_map.tensors[idx];
  3049. base_t = model_loader->get_tensor(base_name, { (uint32_t)dest_t->ne[0], (uint32_t)dest_t->ne[1] }, GGML_BACKEND_CPU);
  3050. lt.data = (uint8_t *) lt.ggml_tensor->data;
  3051. model_loader->load_data_for(lt);
  3052. lt.ggml_tensor->data = lt.data;
  3053. }
  3054. else {
  3055. base_t = dest_t;
  3056. }
  3057. if (ggml_is_quantized(base_t->type)) {
  3058. if (!warned) {
  3059. LLAMA_LOG_WARN("%s: warning: using a lora adapter with a quantized model may result in poor quality, "
  3060. "use a f16 or f32 base model with --lora-base\n", __func__);
  3061. warned = true;
  3062. }
  3063. }
  3064. ggml_tensor * loraA = lora_tensors[base_name + ".loraA"];
  3065. GGML_ASSERT(loraA->type == GGML_TYPE_F32);
  3066. ggml_set_name(loraA, "loraA");
  3067. ggml_tensor * loraB = lora_tensors[base_name + ".loraB"];
  3068. GGML_ASSERT(loraB->type == GGML_TYPE_F32);
  3069. ggml_set_name(loraB, "loraB");
  3070. if (base_t->ne[0] != loraA->ne[1] || base_t->ne[1] != loraB->ne[1]) {
  3071. LLAMA_LOG_ERROR("%s: incompatible tensor dimensions (%" PRId64 " and %" PRId64 ");"
  3072. " are you sure that this adapter is for this model?\n", __func__, base_t->ne[0], loraA->ne[1]);
  3073. return 1;
  3074. }
  3075. // w = w + BA*s
  3076. ggml_tensor * BA = ggml_mul_mat(lora_ctx, loraA, loraB);
  3077. offload_func(BA);
  3078. ggml_set_name(BA, "BA");
  3079. if (scaling != 1.0f) {
  3080. ggml_tensor * scale_tensor = ggml_new_f32(lora_ctx, scaling);
  3081. ggml_set_name(scale_tensor, "scale_tensor");
  3082. BA = ggml_scale_inplace(lora_ctx, BA, scale_tensor);
  3083. offload_func(BA);
  3084. ggml_set_name(BA, "BA_scaled");
  3085. }
  3086. ggml_tensor * r;
  3087. if (base_t == dest_t) {
  3088. r = ggml_add_inplace(lora_ctx, dest_t, BA);
  3089. offload_func_force_inplace(r);
  3090. ggml_set_name(r, "r_add_inplace");
  3091. }
  3092. else {
  3093. r = ggml_add(lora_ctx, base_t, BA);
  3094. offload_func(r);
  3095. ggml_set_name(r, "r_add");
  3096. r = ggml_cpy(lora_ctx, r, dest_t);
  3097. offload_func(r);
  3098. ggml_set_name(r, "r_cpy");
  3099. }
  3100. struct ggml_cgraph gf = ggml_build_forward(r);
  3101. ggml_graph_compute_helper(work_buffer, &gf, n_threads);
  3102. // we won't need these tensors again, reset the context to save memory
  3103. ggml_free(lora_ctx);
  3104. lora_ctx = ggml_init(params);
  3105. lora_tensors.clear();
  3106. n_tensors++;
  3107. if (n_tensors % 4 == 0) {
  3108. LLAMA_LOG_INFO(".");
  3109. }
  3110. }
  3111. }
  3112. // TODO: this should be in a destructor, it will leak on failure
  3113. ggml_free(lora_ctx);
  3114. if (base_ctx) {
  3115. ggml_free(base_ctx);
  3116. }
  3117. const int64_t t_lora_us = ggml_time_us() - t_start_lora_us;
  3118. LLAMA_LOG_INFO(" done (%.2f ms)\n", t_lora_us / 1000.0);
  3119. return 0;
  3120. }
  3121. int llama_apply_lora_from_file(struct llama_context * ctx, const char * path_lora, const char * path_base_model, int n_threads) {
  3122. try {
  3123. return llama_apply_lora_from_file_internal(ctx->model, path_lora, path_base_model, n_threads);
  3124. } catch (const std::exception & err) {
  3125. LLAMA_LOG_ERROR("%s: failed to apply lora adapter: %s\n", __func__, err.what());
  3126. return 1;
  3127. }
  3128. }
  3129. int llama_model_apply_lora_from_file(const struct llama_model * model, const char * path_lora, const char * path_base_model, int n_threads) {
  3130. try {
  3131. return llama_apply_lora_from_file_internal(*model, path_lora, path_base_model, n_threads);
  3132. } catch (const std::exception & err) {
  3133. LLAMA_LOG_ERROR("%s: failed to apply lora adapter: %s\n", __func__, err.what());
  3134. return 1;
  3135. }
  3136. }
  3137. int llama_get_kv_cache_token_count(const struct llama_context * ctx) {
  3138. return ctx->kv_self.n;
  3139. }
  3140. #define LLAMA_MAX_RNG_STATE (64*1024)
  3141. void llama_set_rng_seed(struct llama_context * ctx, uint32_t seed) {
  3142. if (seed == LLAMA_DEFAULT_SEED) {
  3143. seed = time(NULL);
  3144. }
  3145. ctx->rng.seed(seed);
  3146. }
  3147. // Returns the *maximum* size of the state
  3148. size_t llama_get_state_size(const struct llama_context * ctx) {
  3149. // we don't know size of rng until we actually serialize it. so reserve more than enough memory for its serialized state.
  3150. // for reference, std::mt19937(1337) serializes to 6701 bytes.
  3151. const size_t s_rng_size = sizeof(size_t);
  3152. const size_t s_rng = LLAMA_MAX_RNG_STATE;
  3153. const size_t s_logits_capacity = sizeof(size_t);
  3154. const size_t s_logits_size = sizeof(size_t);
  3155. const size_t s_logits = ctx->logits.capacity() * sizeof(float);
  3156. const size_t s_embedding_size = sizeof(size_t);
  3157. const size_t s_embedding = ctx->embedding.size() * sizeof(float);
  3158. const size_t s_kv_size = sizeof(size_t);
  3159. const size_t s_kv_ntok = sizeof(int);
  3160. const size_t s_kv = ctx->kv_self.buf.size;
  3161. const size_t s_total = (
  3162. + s_rng_size
  3163. + s_rng
  3164. + s_logits_capacity
  3165. + s_logits_size
  3166. + s_logits
  3167. + s_embedding_size
  3168. + s_embedding
  3169. + s_kv_size
  3170. + s_kv_ntok
  3171. + s_kv
  3172. );
  3173. return s_total;
  3174. }
  3175. /** copy state data into either a buffer or file depending on the passed in context
  3176. *
  3177. * file context:
  3178. * llama_file file("/path", "wb");
  3179. * llama_data_file_context data_ctx(&file);
  3180. * llama_copy_state_data(ctx, &data_ctx);
  3181. *
  3182. * buffer context:
  3183. * std::vector<uint8_t> buf(max_size, 0);
  3184. * llama_data_buffer_context data_ctx(&buf.data());
  3185. * llama_copy_state_data(ctx, &data_ctx);
  3186. *
  3187. */
  3188. void llama_copy_state_data_internal(struct llama_context * ctx, llama_data_context * data_ctx) {
  3189. // copy rng
  3190. {
  3191. std::stringstream rng_ss;
  3192. rng_ss << ctx->rng;
  3193. const size_t rng_size = rng_ss.str().size();
  3194. char rng_buf[LLAMA_MAX_RNG_STATE];
  3195. memset(&rng_buf[0], 0, LLAMA_MAX_RNG_STATE);
  3196. memcpy(&rng_buf[0], rng_ss.str().data(), rng_ss.str().size());
  3197. data_ctx->write(&rng_size, sizeof(rng_size));
  3198. data_ctx->write(&rng_buf[0], LLAMA_MAX_RNG_STATE);
  3199. }
  3200. // copy logits
  3201. {
  3202. const size_t logits_cap = ctx->logits.capacity();
  3203. const size_t logits_size = ctx->logits.size();
  3204. data_ctx->write(&logits_cap, sizeof(logits_cap));
  3205. data_ctx->write(&logits_size, sizeof(logits_size));
  3206. if (logits_size) {
  3207. data_ctx->write(ctx->logits.data(), logits_size * sizeof(float));
  3208. }
  3209. // If there is a gap between the size and the capacity, write padding
  3210. size_t padding_size = (logits_cap - logits_size) * sizeof(float);
  3211. if (padding_size > 0) {
  3212. std::vector<uint8_t> padding(padding_size, 0); // Create a buffer filled with zeros
  3213. data_ctx->write(padding.data(), padding_size);
  3214. }
  3215. }
  3216. // copy embeddings
  3217. {
  3218. const size_t embedding_size = ctx->embedding.size();
  3219. data_ctx->write(&embedding_size, sizeof(embedding_size));
  3220. if (embedding_size) {
  3221. data_ctx->write(ctx->embedding.data(), embedding_size * sizeof(float));
  3222. }
  3223. }
  3224. // copy kv cache
  3225. {
  3226. const auto & kv_self = ctx->kv_self;
  3227. const auto & hparams = ctx->model.hparams;
  3228. const int n_layer = hparams.n_layer;
  3229. const int n_embd = hparams.n_embd_gqa();
  3230. const int n_ctx = hparams.n_ctx;
  3231. const size_t kv_size = kv_self.buf.size;
  3232. const int kv_ntok = llama_get_kv_cache_token_count(ctx);
  3233. data_ctx->write(&kv_size, sizeof(kv_size));
  3234. data_ctx->write(&kv_ntok, sizeof(kv_ntok));
  3235. if (kv_size) {
  3236. const size_t elt_size = ggml_element_size(kv_self.k);
  3237. ggml_context * cpy_ctx = ggml_init({ 4096, NULL, /* no_alloc */ true });
  3238. ggml_cgraph gf{};
  3239. ggml_tensor * kout3d = ggml_new_tensor_3d(cpy_ctx, kv_self.k->type, n_embd, kv_ntok, n_layer);
  3240. std::vector<uint8_t> kout3d_data(ggml_nbytes(kout3d), 0);
  3241. kout3d->data = kout3d_data.data();
  3242. ggml_tensor * vout3d = ggml_new_tensor_3d(cpy_ctx, kv_self.v->type, kv_ntok, n_embd, n_layer);
  3243. std::vector<uint8_t> vout3d_data(ggml_nbytes(vout3d), 0);
  3244. vout3d->data = vout3d_data.data();
  3245. ggml_tensor * k3d = ggml_view_3d(cpy_ctx, kv_self.k,
  3246. n_embd, kv_ntok, n_layer,
  3247. elt_size*n_embd, elt_size*n_embd*n_ctx, 0);
  3248. ggml_tensor * v3d = ggml_view_3d(cpy_ctx, kv_self.v,
  3249. kv_ntok, n_embd, n_layer,
  3250. elt_size*n_ctx, elt_size*n_ctx*n_embd, 0);
  3251. ggml_build_forward_expand(&gf, ggml_cpy(cpy_ctx, k3d, kout3d));
  3252. ggml_build_forward_expand(&gf, ggml_cpy(cpy_ctx, v3d, vout3d));
  3253. ggml_graph_compute_helper(ctx->work_buffer, &gf, /*n_threads*/ 1);
  3254. ggml_free(cpy_ctx);
  3255. // our data is now in the kout3d_data and vout3d_data buffers
  3256. // write them to file
  3257. data_ctx->write(kout3d_data.data(), kout3d_data.size());
  3258. data_ctx->write(vout3d_data.data(), vout3d_data.size());
  3259. }
  3260. }
  3261. }
  3262. size_t llama_copy_state_data(struct llama_context * ctx, uint8_t * dst) {
  3263. llama_data_buffer_context data_ctx(dst);
  3264. llama_copy_state_data_internal(ctx, &data_ctx);
  3265. return data_ctx.get_size_written();
  3266. }
  3267. // Sets the state reading from the specified source address
  3268. size_t llama_set_state_data(struct llama_context * ctx, uint8_t * src) {
  3269. uint8_t * inp = src;
  3270. // set rng
  3271. {
  3272. size_t rng_size;
  3273. char rng_buf[LLAMA_MAX_RNG_STATE];
  3274. memcpy(&rng_size, inp, sizeof(rng_size)); inp += sizeof(rng_size);
  3275. memcpy(&rng_buf[0], inp, LLAMA_MAX_RNG_STATE); inp += LLAMA_MAX_RNG_STATE;
  3276. std::stringstream rng_ss;
  3277. rng_ss.str(std::string(&rng_buf[0], rng_size));
  3278. rng_ss >> ctx->rng;
  3279. LLAMA_ASSERT(rng_ss.fail() == false);
  3280. }
  3281. // set logits
  3282. {
  3283. size_t logits_cap;
  3284. size_t logits_size;
  3285. memcpy(&logits_cap, inp, sizeof(logits_cap)); inp += sizeof(logits_cap);
  3286. memcpy(&logits_size, inp, sizeof(logits_size)); inp += sizeof(logits_size);
  3287. LLAMA_ASSERT(ctx->logits.capacity() == logits_cap);
  3288. if (logits_size) {
  3289. ctx->logits.resize(logits_size);
  3290. memcpy(ctx->logits.data(), inp, logits_size * sizeof(float));
  3291. }
  3292. inp += logits_cap * sizeof(float);
  3293. }
  3294. // set embeddings
  3295. {
  3296. size_t embedding_size;
  3297. memcpy(&embedding_size, inp, sizeof(embedding_size)); inp += sizeof(embedding_size);
  3298. LLAMA_ASSERT(ctx->embedding.capacity() == embedding_size);
  3299. if (embedding_size) {
  3300. memcpy(ctx->embedding.data(), inp, embedding_size * sizeof(float));
  3301. inp += embedding_size * sizeof(float);
  3302. }
  3303. }
  3304. // set kv cache
  3305. {
  3306. const auto & kv_self = ctx->kv_self;
  3307. const auto & hparams = ctx->model.hparams;
  3308. const int n_layer = hparams.n_layer;
  3309. const int n_embd = hparams.n_embd_gqa();
  3310. const int n_ctx = hparams.n_ctx;
  3311. size_t kv_size;
  3312. int kv_ntok;
  3313. memcpy(&kv_size, inp, sizeof(kv_size)); inp += sizeof(kv_size);
  3314. memcpy(&kv_ntok, inp, sizeof(kv_ntok)); inp += sizeof(kv_ntok);
  3315. if (kv_size) {
  3316. LLAMA_ASSERT(kv_self.buf.size == kv_size);
  3317. const size_t elt_size = ggml_element_size(kv_self.k);
  3318. ggml_context * cpy_ctx = ggml_init({ 4096, NULL, /* no_alloc */ true });
  3319. ggml_cgraph gf{};
  3320. ggml_tensor * kin3d = ggml_new_tensor_3d(cpy_ctx, kv_self.k->type, n_embd, kv_ntok, n_layer);
  3321. kin3d->data = (void *) inp;
  3322. inp += ggml_nbytes(kin3d);
  3323. ggml_tensor * vin3d = ggml_new_tensor_3d(cpy_ctx, kv_self.v->type, kv_ntok, n_embd, n_layer);
  3324. vin3d->data = (void *) inp;
  3325. inp += ggml_nbytes(vin3d);
  3326. ggml_tensor * k3d = ggml_view_3d(cpy_ctx, kv_self.k,
  3327. n_embd, kv_ntok, n_layer,
  3328. elt_size*n_embd, elt_size*n_embd*n_ctx, 0);
  3329. ggml_tensor * v3d = ggml_view_3d(cpy_ctx, kv_self.v,
  3330. kv_ntok, n_embd, n_layer,
  3331. elt_size*n_ctx, elt_size*n_ctx*n_embd, 0);
  3332. ggml_build_forward_expand(&gf, ggml_cpy(cpy_ctx, kin3d, k3d));
  3333. ggml_build_forward_expand(&gf, ggml_cpy(cpy_ctx, vin3d, v3d));
  3334. ggml_graph_compute_helper(ctx->work_buffer, &gf, /*n_threads*/ 1);
  3335. ggml_free(cpy_ctx);
  3336. }
  3337. ctx->kv_self.n = kv_ntok;
  3338. }
  3339. const size_t nread = inp - src;
  3340. const size_t max_size = llama_get_state_size(ctx);
  3341. LLAMA_ASSERT(nread <= max_size);
  3342. return nread;
  3343. }
  3344. static bool llama_load_session_file_internal(struct llama_context * ctx, const char * path_session, llama_token * tokens_out, size_t n_token_capacity, size_t * n_token_count_out) {
  3345. llama_file file(path_session, "rb");
  3346. // sanity checks
  3347. {
  3348. const uint32_t magic = file.read_u32();
  3349. const uint32_t version = file.read_u32();
  3350. if (magic != LLAMA_SESSION_MAGIC || version != LLAMA_SESSION_VERSION) {
  3351. LLAMA_LOG_ERROR("%s : unknown (magic, version) for session file: %08x, %08x\n", __func__, magic, version);
  3352. return false;
  3353. }
  3354. llama_hparams session_hparams;
  3355. file.read_raw(&session_hparams, sizeof(llama_hparams));
  3356. if (session_hparams != ctx->model.hparams) {
  3357. LLAMA_LOG_INFO("%s : model hparams didn't match from session file!\n", __func__);
  3358. return false;
  3359. }
  3360. }
  3361. // load the prompt
  3362. {
  3363. const uint32_t n_token_count = file.read_u32();
  3364. if (n_token_count > n_token_capacity) {
  3365. LLAMA_LOG_ERROR("%s : token count in session file exceeded capacity! %u > %zu\n", __func__, n_token_count, n_token_capacity);
  3366. return false;
  3367. }
  3368. file.read_raw(tokens_out, sizeof(llama_token) * n_token_count);
  3369. *n_token_count_out = n_token_count;
  3370. }
  3371. // restore the context state
  3372. {
  3373. const size_t n_state_size_cur = file.size - file.tell();
  3374. const size_t n_state_size_max = llama_get_state_size(ctx);
  3375. if (n_state_size_cur > n_state_size_max) {
  3376. LLAMA_LOG_ERROR("%s : the state size in session file is too big! max %zu, got %zu\n", __func__, n_state_size_max, n_state_size_cur);
  3377. return false;
  3378. }
  3379. std::vector<uint8_t> state_data(n_state_size_max);
  3380. file.read_raw(state_data.data(), n_state_size_cur);
  3381. llama_set_state_data(ctx, state_data.data());
  3382. }
  3383. return true;
  3384. }
  3385. bool llama_load_session_file(struct llama_context * ctx, const char * path_session, llama_token * tokens_out, size_t n_token_capacity, size_t * n_token_count_out) {
  3386. try {
  3387. return llama_load_session_file_internal(ctx, path_session, tokens_out, n_token_capacity, n_token_count_out);
  3388. } catch (const std::exception & err) {
  3389. LLAMA_LOG_ERROR("error loading session file: %s\n", err.what());
  3390. return false;
  3391. }
  3392. }
  3393. bool llama_save_session_file(struct llama_context * ctx, const char * path_session, const llama_token * tokens, size_t n_token_count) {
  3394. llama_file file(path_session, "wb");
  3395. file.write_u32(LLAMA_SESSION_MAGIC);
  3396. file.write_u32(LLAMA_SESSION_VERSION);
  3397. file.write_raw(&ctx->model.hparams, sizeof(llama_hparams));
  3398. // save the prompt
  3399. file.write_u32((uint32_t) n_token_count);
  3400. file.write_raw(tokens, sizeof(llama_token) * n_token_count);
  3401. // save the context state using stream saving
  3402. llama_data_file_context data_ctx(&file);
  3403. llama_copy_state_data_internal(ctx, &data_ctx);
  3404. return true;
  3405. }
  3406. int llama_eval(
  3407. struct llama_context * ctx,
  3408. const llama_token * tokens,
  3409. int n_tokens,
  3410. int n_past,
  3411. int n_threads) {
  3412. if (!llama_eval_internal(*ctx, tokens, nullptr, n_tokens, n_past, n_threads, nullptr)) {
  3413. LLAMA_LOG_ERROR("%s: failed to eval\n", __func__);
  3414. return 1;
  3415. }
  3416. // get a more accurate load time, upon first eval
  3417. // TODO: fix this
  3418. if (!ctx->has_evaluated_once) {
  3419. ctx->t_load_us = ggml_time_us() - ctx->t_start_us;
  3420. ctx->has_evaluated_once = true;
  3421. }
  3422. return 0;
  3423. }
  3424. int llama_eval_embd(
  3425. struct llama_context * ctx,
  3426. const float * embd,
  3427. int n_tokens,
  3428. int n_past,
  3429. int n_threads) {
  3430. if (!llama_eval_internal(*ctx, nullptr, embd, n_tokens, n_past, n_threads, nullptr)) {
  3431. LLAMA_LOG_ERROR("%s: failed to eval\n", __func__);
  3432. return 1;
  3433. }
  3434. // get a more accurate load time, upon first eval
  3435. // TODO: fix this
  3436. if (!ctx->has_evaluated_once) {
  3437. ctx->t_load_us = ggml_time_us() - ctx->t_start_us;
  3438. ctx->has_evaluated_once = true;
  3439. }
  3440. return 0;
  3441. }
  3442. int llama_eval_export(struct llama_context * ctx, const char * fname) {
  3443. const int n_batch = 1;
  3444. const int n_ctx = 512 - n_batch;
  3445. const std::vector<llama_token> tmp(n_batch, llama_token_bos());
  3446. if (!llama_eval_internal(*ctx, tmp.data(), nullptr, tmp.size(), n_ctx, 1, fname)) {
  3447. LLAMA_LOG_ERROR("%s: failed to eval\n", __func__);
  3448. return 1;
  3449. }
  3450. return 0;
  3451. }
  3452. int llama_tokenize_with_model(
  3453. const struct llama_model * model,
  3454. const char * text,
  3455. llama_token * tokens,
  3456. int n_max_tokens,
  3457. bool add_bos) {
  3458. auto res = llama_tokenize(model->vocab, text, add_bos);
  3459. if (n_max_tokens < (int) res.size()) {
  3460. LLAMA_LOG_ERROR("%s: too many tokens\n", __func__);
  3461. return -((int) res.size());
  3462. }
  3463. for (size_t i = 0; i < res.size(); i++) {
  3464. tokens[i] = res[i];
  3465. }
  3466. return res.size();
  3467. }
  3468. int llama_tokenize(
  3469. struct llama_context * ctx,
  3470. const char * text,
  3471. llama_token * tokens,
  3472. int n_max_tokens,
  3473. bool add_bos) {
  3474. return llama_tokenize_with_model(&ctx->model, text, tokens, n_max_tokens, add_bos);
  3475. }
  3476. int llama_n_vocab_from_model(const struct llama_model * model) {
  3477. return model->vocab.id_to_token.size();
  3478. }
  3479. int llama_n_ctx_from_model(const struct llama_model * model) {
  3480. return model->hparams.n_ctx;
  3481. }
  3482. int llama_n_embd_from_model(const struct llama_model * model) {
  3483. return model->hparams.n_embd;
  3484. }
  3485. int llama_n_vocab(const struct llama_context * ctx) {
  3486. return ctx->model.vocab.id_to_token.size();
  3487. }
  3488. int llama_n_ctx(const struct llama_context * ctx) {
  3489. return ctx->model.hparams.n_ctx;
  3490. }
  3491. int llama_n_embd(const struct llama_context * ctx) {
  3492. return ctx->model.hparams.n_embd;
  3493. }
  3494. int llama_get_vocab_from_model(
  3495. const struct llama_model * model,
  3496. const char * * strings,
  3497. float * scores,
  3498. int capacity) {
  3499. int n = std::min(capacity, (int) model->vocab.id_to_token.size());
  3500. for (int i = 0; i<n; ++i) {
  3501. strings[i] = model->vocab.id_to_token[i].tok.c_str();
  3502. scores[i] = model->vocab.id_to_token[i].score;
  3503. }
  3504. return n;
  3505. }
  3506. int llama_get_vocab(
  3507. const struct llama_context * ctx,
  3508. const char * * strings,
  3509. float * scores,
  3510. int capacity) {
  3511. return llama_get_vocab_from_model(&ctx->model, strings, scores, capacity);
  3512. }
  3513. float * llama_get_logits(struct llama_context * ctx) {
  3514. return ctx->logits.data();
  3515. }
  3516. float * llama_get_embeddings(struct llama_context * ctx) {
  3517. return ctx->embedding.data();
  3518. }
  3519. const char * llama_token_to_str_with_model(const struct llama_model * model, llama_token token) {
  3520. if (token >= llama_n_vocab_from_model(model)) {
  3521. return nullptr;
  3522. }
  3523. return model->vocab.id_to_token[token].tok.c_str();
  3524. }
  3525. const char * llama_token_to_str(const struct llama_context * ctx, llama_token token) {
  3526. return llama_token_to_str_with_model(&ctx->model, token);
  3527. }
  3528. llama_token llama_token_bos() {
  3529. return 1;
  3530. }
  3531. llama_token llama_token_eos() {
  3532. return 2;
  3533. }
  3534. llama_token llama_token_nl() {
  3535. return 13;
  3536. }
  3537. struct llama_timings llama_get_timings(struct llama_context * ctx) {
  3538. struct llama_timings result = {
  3539. /*.t_start_ms =*/ 1e-3 * ctx->t_start_us,
  3540. /*.t_end_ms =*/ 1.00 * ggml_time_ms(),
  3541. /*.t_load_ms =*/ 1e-3 * ctx->t_load_us,
  3542. /*.t_sample_ms =*/ 1e-3 * ctx->t_sample_us,
  3543. /*.t_p_eval_ms =*/ 1e-3 * ctx->t_p_eval_us,
  3544. /*.t_eval_ms =*/ 1e-3 * ctx->t_eval_us,
  3545. /*.n_sample =*/ std::max(1, ctx->n_sample),
  3546. /*.n_p_eval =*/ std::max(1, ctx->n_p_eval),
  3547. /*.n_eval =*/ std::max(1, ctx->n_eval),
  3548. };
  3549. return result;
  3550. }
  3551. void llama_print_timings(struct llama_context * ctx) {
  3552. const llama_timings timings = llama_get_timings(ctx);
  3553. LLAMA_LOG_INFO("\n");
  3554. LLAMA_LOG_INFO("%s: load time = %8.2f ms\n", __func__, timings.t_load_ms);
  3555. LLAMA_LOG_INFO("%s: sample time = %8.2f ms / %5d runs (%8.2f ms per token, %8.2f tokens per second)\n",
  3556. __func__, timings.t_sample_ms, timings.n_sample, timings.t_sample_ms / timings.n_sample, 1e3 / timings.t_sample_ms * timings.n_sample);
  3557. LLAMA_LOG_INFO("%s: prompt eval time = %8.2f ms / %5d tokens (%8.2f ms per token, %8.2f tokens per second)\n",
  3558. __func__, timings.t_p_eval_ms, timings.n_p_eval, timings.t_p_eval_ms / timings.n_p_eval, 1e3 / timings.t_p_eval_ms * timings.n_p_eval);
  3559. LLAMA_LOG_INFO("%s: eval time = %8.2f ms / %5d runs (%8.2f ms per token, %8.2f tokens per second)\n",
  3560. __func__, timings.t_eval_ms, timings.n_eval, timings.t_eval_ms / timings.n_eval, 1e3 / timings.t_eval_ms * timings.n_eval);
  3561. LLAMA_LOG_INFO("%s: total time = %8.2f ms\n", __func__, (timings.t_end_ms - timings.t_start_ms));
  3562. }
  3563. void llama_reset_timings(struct llama_context * ctx) {
  3564. ctx->t_start_us = ggml_time_us();
  3565. ctx->t_sample_us = ctx->n_sample = 0;
  3566. ctx->t_eval_us = ctx->n_eval = 0;
  3567. ctx->t_p_eval_us = ctx->n_p_eval = 0;
  3568. }
  3569. const char * llama_print_system_info(void) {
  3570. static std::string s;
  3571. s = "";
  3572. s += "AVX = " + std::to_string(ggml_cpu_has_avx()) + " | ";
  3573. s += "AVX2 = " + std::to_string(ggml_cpu_has_avx2()) + " | ";
  3574. s += "AVX512 = " + std::to_string(ggml_cpu_has_avx512()) + " | ";
  3575. s += "AVX512_VBMI = " + std::to_string(ggml_cpu_has_avx512_vbmi()) + " | ";
  3576. s += "AVX512_VNNI = " + std::to_string(ggml_cpu_has_avx512_vnni()) + " | ";
  3577. s += "FMA = " + std::to_string(ggml_cpu_has_fma()) + " | ";
  3578. s += "NEON = " + std::to_string(ggml_cpu_has_neon()) + " | ";
  3579. s += "ARM_FMA = " + std::to_string(ggml_cpu_has_arm_fma()) + " | ";
  3580. s += "F16C = " + std::to_string(ggml_cpu_has_f16c()) + " | ";
  3581. s += "FP16_VA = " + std::to_string(ggml_cpu_has_fp16_va()) + " | ";
  3582. s += "WASM_SIMD = " + std::to_string(ggml_cpu_has_wasm_simd()) + " | ";
  3583. s += "BLAS = " + std::to_string(ggml_cpu_has_blas()) + " | ";
  3584. s += "SSE3 = " + std::to_string(ggml_cpu_has_sse3()) + " | ";
  3585. s += "VSX = " + std::to_string(ggml_cpu_has_vsx()) + " | ";
  3586. return s.c_str();
  3587. }
  3588. // For internal test use
  3589. const std::vector<std::pair<std::string, struct ggml_tensor *>>& llama_internal_get_tensor_map(struct llama_context * ctx) {
  3590. return ctx->model.tensors_by_name;
  3591. }
  3592. void llama_log_set(llama_log_callback log_callback, void * user_data) {
  3593. g_state.log_callback = log_callback ? log_callback : llama_log_callback_default;
  3594. g_state.log_callback_user_data = user_data;
  3595. }
  3596. #if defined(_MSC_VER) && !defined(vsnprintf)
  3597. #define vsnprintf _vsnprintf
  3598. #endif
  3599. static void llama_log_internal_v(llama_log_level level, const char * format, va_list args) {
  3600. va_list args_copy;
  3601. va_copy(args_copy, args);
  3602. char buffer[128];
  3603. int len = vsnprintf(buffer, 128, format, args);
  3604. if (len < 128) {
  3605. g_state.log_callback(level, buffer, g_state.log_callback_user_data);
  3606. } else {
  3607. char* buffer2 = new char[len+1];
  3608. vsnprintf(buffer2, len+1, format, args_copy);
  3609. buffer2[len] = 0;
  3610. g_state.log_callback(level, buffer2, g_state.log_callback_user_data);
  3611. delete[] buffer2;
  3612. }
  3613. va_end(args_copy);
  3614. }
  3615. static void llama_log_internal(llama_log_level level, const char * format, ...) {
  3616. va_list args;
  3617. va_start(args, format);
  3618. llama_log_internal_v(level, format, args);
  3619. va_end(args);
  3620. }
  3621. static void llama_log_callback_default(llama_log_level level, const char * text, void * user_data) {
  3622. (void) level;
  3623. (void) user_data;
  3624. fputs(text, stderr);
  3625. fflush(stderr);
  3626. }