llama.go 9.4 KB

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  1. package llama
  2. /*
  3. #cgo CPPFLAGS: -O3 -Wall -Wextra -Werror -Wno-unused-function -Wno-unused-variable -DNDEBUG -DGGML_USE_K_QUANTS
  4. #cgo CXXFLAGS: -std=gnu++11
  5. #cgo darwin CPPFLAGS: -DGGML_USE_ACCELERATE -DGGML_USE_METAL -DGGML_METAL_NDEBUG
  6. #cgo darwin LDFLAGS: -framework Accelerate -framework Foundation -framework Metal -framework MetalKit -framework MetalPerformanceShaders
  7. #include <stdlib.h>
  8. #include "llama.h"
  9. struct llama_sample_options
  10. {
  11. float repeat_penalty;
  12. float frequency_penalty;
  13. float presence_penalty;
  14. float temperature;
  15. int32_t top_k;
  16. float top_p;
  17. float tfs_z;
  18. float typical_p;
  19. int mirostat;
  20. float mirostat_tau;
  21. float mirostat_eta;
  22. bool penalize_newline;
  23. };
  24. llama_token llama_sample(
  25. struct llama_context *ctx,
  26. struct llama_token_data *candidates,
  27. size_t n_candidates,
  28. const llama_token *last_tokens,
  29. size_t n_last_tokens,
  30. struct llama_sample_options *opts)
  31. {
  32. llama_token_data_array candidates_p = {
  33. candidates,
  34. n_candidates,
  35. false,
  36. };
  37. struct llama_token_data newline = candidates_p.data[llama_token_nl()];
  38. llama_sample_repetition_penalty(
  39. ctx, &candidates_p,
  40. last_tokens, n_last_tokens,
  41. opts->repeat_penalty);
  42. llama_sample_frequency_and_presence_penalties(
  43. ctx, &candidates_p,
  44. last_tokens, n_last_tokens,
  45. opts->frequency_penalty, opts->presence_penalty);
  46. if (!opts->penalize_newline) {
  47. candidates_p.data[llama_token_nl()] = newline;
  48. }
  49. if (opts->temperature <= 0) {
  50. return llama_sample_token_greedy(ctx, &candidates_p);
  51. }
  52. if (opts->mirostat == 1) {
  53. int mirostat_m = 100;
  54. float mirostat_mu = 2.0f * opts->mirostat_tau;
  55. llama_sample_temperature(ctx, &candidates_p, opts->temperature);
  56. return llama_sample_token_mirostat(
  57. ctx, &candidates_p,
  58. opts->mirostat_tau, opts->mirostat_eta,
  59. mirostat_m, &mirostat_mu);
  60. } else if (opts->mirostat == 2) {
  61. float mirostat_mu = 2.0f * opts->mirostat_tau;
  62. llama_sample_temperature(ctx, &candidates_p, opts->temperature);
  63. return llama_sample_token_mirostat_v2(
  64. ctx, &candidates_p,
  65. opts->mirostat_tau, opts->mirostat_eta,
  66. &mirostat_mu);
  67. } else {
  68. llama_sample_top_k(ctx, &candidates_p, opts->top_k, 1);
  69. llama_sample_tail_free(ctx, &candidates_p, opts->tfs_z, 1);
  70. llama_sample_typical(ctx, &candidates_p, opts->typical_p, 1);
  71. llama_sample_top_p(ctx, &candidates_p, opts->top_p, 1);
  72. llama_sample_temperature(ctx, &candidates_p, opts->temperature);
  73. return llama_sample_token(ctx, &candidates_p);
  74. }
  75. }
  76. */
  77. import "C"
  78. import (
  79. "bytes"
  80. "errors"
  81. "fmt"
  82. "io"
  83. "log"
  84. "os"
  85. "strings"
  86. "sync"
  87. "unicode/utf8"
  88. "unsafe"
  89. "github.com/jmorganca/ollama/api"
  90. )
  91. type LLM struct {
  92. params *C.struct_llama_context_params
  93. model *C.struct_llama_model
  94. ctx *C.struct_llama_context
  95. last []C.llama_token
  96. embd []C.llama_token
  97. cursor int
  98. mu sync.Mutex
  99. gc bool
  100. api.Options
  101. }
  102. func New(model string, opts api.Options) (*LLM, error) {
  103. if _, err := os.Stat(model); err != nil {
  104. return nil, err
  105. }
  106. llm := LLM{Options: opts}
  107. C.llama_backend_init(C.bool(llm.UseNUMA))
  108. params := C.llama_context_default_params()
  109. params.seed = C.uint(llm.Seed)
  110. params.n_ctx = C.int(llm.NumCtx)
  111. params.n_batch = C.int(llm.NumBatch)
  112. params.n_gpu_layers = C.int(llm.NumGPU)
  113. params.main_gpu = C.int(llm.MainGPU)
  114. params.low_vram = C.bool(llm.LowVRAM)
  115. params.f16_kv = C.bool(llm.F16KV)
  116. params.logits_all = C.bool(llm.LogitsAll)
  117. params.vocab_only = C.bool(llm.VocabOnly)
  118. params.use_mmap = C.bool(llm.UseMMap)
  119. params.use_mlock = C.bool(llm.UseMLock)
  120. params.embedding = C.bool(llm.EmbeddingOnly)
  121. llm.params = &params
  122. cModel := C.CString(model)
  123. defer C.free(unsafe.Pointer(cModel))
  124. llm.model = C.llama_load_model_from_file(cModel, params)
  125. if llm.model == nil {
  126. return nil, errors.New("failed to load model")
  127. }
  128. llm.ctx = C.llama_new_context_with_model(llm.model, params)
  129. if llm.ctx == nil {
  130. return nil, errors.New("failed to create context")
  131. }
  132. // warm up the model
  133. bos := []C.llama_token{C.llama_token_bos()}
  134. C.llama_eval(llm.ctx, unsafe.SliceData(bos), C.int(len(bos)), 0, C.int(opts.NumThread))
  135. C.llama_reset_timings(llm.ctx)
  136. return &llm, nil
  137. }
  138. func (llm *LLM) Close() {
  139. llm.gc = true
  140. llm.mu.Lock()
  141. defer llm.mu.Unlock()
  142. defer C.llama_free_model(llm.model)
  143. defer C.llama_free(llm.ctx)
  144. C.llama_print_timings(llm.ctx)
  145. }
  146. func (llm *LLM) Predict(ctx []int, prompt string, fn func(api.GenerateResponse)) error {
  147. llm.mu.Lock()
  148. defer llm.mu.Unlock()
  149. C.llama_reset_timings(llm.ctx)
  150. tokens := make([]C.llama_token, len(ctx))
  151. for i := range tokens {
  152. tokens[i] = C.llama_token(ctx[i])
  153. }
  154. if len(tokens) == 0 {
  155. tokens = llm.tokenize(" ")
  156. }
  157. llm.marshalPrompt(tokens, prompt)
  158. C.llama_set_rng_seed(llm.ctx, C.uint(llm.Seed))
  159. var b bytes.Buffer
  160. for {
  161. token, err := llm.next()
  162. if errors.Is(err, io.EOF) {
  163. break
  164. } else if err != nil {
  165. return err
  166. } else if llm.gc {
  167. return io.EOF
  168. }
  169. b.WriteString(llm.detokenize(token))
  170. if utf8.Valid(b.Bytes()) || b.Len() >= utf8.UTFMax {
  171. fn(api.GenerateResponse{Response: b.String()})
  172. b.Reset()
  173. }
  174. }
  175. last := make([]int, 0, len(llm.last))
  176. for _, i := range llm.last {
  177. if i != 0 {
  178. last = append(last, int(i))
  179. }
  180. }
  181. timings := C.llama_get_timings(llm.ctx)
  182. fn(api.GenerateResponse{
  183. Done: true,
  184. Context: last,
  185. PromptEvalCount: int(timings.n_p_eval),
  186. PromptEvalDuration: parseDurationMs(float64(timings.t_p_eval_ms)),
  187. EvalCount: int(timings.n_eval),
  188. EvalDuration: parseDurationMs(float64(timings.t_eval_ms)),
  189. })
  190. return nil
  191. }
  192. func (llm *LLM) marshalPrompt(ctx []C.llama_token, prompt string) []C.llama_token {
  193. tokens := append(ctx, llm.tokenize(prompt)...)
  194. if llm.NumKeep < 0 {
  195. llm.NumKeep = len(tokens)
  196. }
  197. // min(llm.NumCtx - 4, llm.NumKeep)
  198. if llm.NumCtx-4 < llm.NumKeep {
  199. llm.NumKeep = llm.NumCtx - 4
  200. }
  201. if len(tokens) >= llm.NumCtx {
  202. // truncate input
  203. numLeft := (llm.NumCtx - llm.NumKeep) / 2
  204. truncated := tokens[:llm.NumKeep]
  205. erasedBlocks := (len(tokens) - llm.NumKeep - numLeft - 1) / numLeft
  206. truncated = append(truncated, tokens[llm.NumKeep+erasedBlocks*numLeft:]...)
  207. copy(llm.last, tokens[len(tokens)-llm.NumCtx:])
  208. tokens = truncated
  209. log.Printf("input truncated: num_ctx=%d num_keep=%d num_left=%d num_tokens=%d", llm.NumCtx, llm.NumKeep, numLeft, len(truncated))
  210. } else {
  211. llm.last = make([]C.llama_token, llm.NumCtx-len(tokens))
  212. llm.last = append(llm.last, tokens...)
  213. }
  214. var i int
  215. for i = 0; i < len(llm.embd) && i < len(tokens) && llm.embd[i] == tokens[i]; i++ {
  216. // noop
  217. }
  218. llm.embd = tokens
  219. if i == len(tokens) {
  220. // evaluate at least one token to generate logits
  221. i--
  222. }
  223. llm.cursor = i
  224. log.Printf("prompt: num_past=%d cached=%v eval=%v", i, len(llm.embd[:i]), len(llm.embd[i:]))
  225. return tokens
  226. }
  227. func (llm *LLM) tokenize(prompt string) []C.llama_token {
  228. cPrompt := C.CString(prompt)
  229. defer C.free(unsafe.Pointer(cPrompt))
  230. tokens := make([]C.llama_token, len(prompt)+1)
  231. if n := C.llama_tokenize(llm.ctx, cPrompt, unsafe.SliceData(tokens), C.int(len(tokens)), true); n > 0 {
  232. return tokens[:n]
  233. }
  234. return nil
  235. }
  236. func (llm *LLM) detokenize(tokens ...C.llama_token) string {
  237. var sb strings.Builder
  238. for _, token := range tokens {
  239. sb.WriteString(C.GoString(C.llama_token_to_str(llm.ctx, token)))
  240. }
  241. return sb.String()
  242. }
  243. func (llm *LLM) next() (C.llama_token, error) {
  244. if len(llm.embd) >= llm.NumCtx {
  245. numLeft := (llm.NumCtx - llm.NumKeep) / 2
  246. truncated := llm.embd[:llm.NumKeep]
  247. truncated = append(truncated, llm.embd[len(llm.embd)-numLeft:]...)
  248. llm.embd = truncated
  249. llm.cursor = llm.NumKeep
  250. log.Printf("input truncated: num_ctx=%d num_keep=%d num_left=%d num_tokens=%d cursor=%d", llm.NumCtx, llm.NumKeep, numLeft, len(truncated), llm.cursor)
  251. }
  252. for {
  253. if llm.cursor >= len(llm.embd) {
  254. break
  255. }
  256. numEval := len(llm.embd) - llm.cursor
  257. if numEval > llm.NumBatch {
  258. numEval = llm.NumBatch
  259. }
  260. if retval := C.llama_eval(llm.ctx, unsafe.SliceData(llm.embd[llm.cursor:]), C.int(numEval), C.int(llm.cursor), C.int(llm.NumThread)); retval != 0 {
  261. return 0, fmt.Errorf("llama_eval: %d", retval)
  262. }
  263. llm.cursor += numEval
  264. }
  265. var sampleOpts C.struct_llama_sample_options
  266. sampleOpts.repeat_penalty = C.float(llm.RepeatPenalty)
  267. sampleOpts.frequency_penalty = C.float(llm.FrequencyPenalty)
  268. sampleOpts.presence_penalty = C.float(llm.PresencePenalty)
  269. sampleOpts.temperature = C.float(llm.Temperature)
  270. sampleOpts.top_k = C.int(llm.TopK)
  271. sampleOpts.top_p = C.float(llm.TopP)
  272. sampleOpts.tfs_z = C.float(llm.TFSZ)
  273. sampleOpts.typical_p = C.float(llm.TypicalP)
  274. sampleOpts.mirostat = C.int(llm.Mirostat)
  275. sampleOpts.mirostat_tau = C.float(llm.MirostatTau)
  276. sampleOpts.mirostat_eta = C.float(llm.MirostatEta)
  277. sampleOpts.penalize_newline = C.bool(llm.PenalizeNewline)
  278. numVocab := C.llama_n_vocab(llm.ctx)
  279. logits := unsafe.Slice(C.llama_get_logits(llm.ctx), numVocab)
  280. // TODO: logit bias
  281. candidates := make([]C.llama_token_data, numVocab)
  282. for i := range logits {
  283. candidates[i] = C.llama_token_data{
  284. id: C.int(i),
  285. logit: logits[i],
  286. p: 0,
  287. }
  288. }
  289. repeatLastN := llm.RepeatLastN
  290. if len(llm.last) < repeatLastN {
  291. repeatLastN = len(llm.last)
  292. }
  293. if llm.NumCtx < repeatLastN {
  294. repeatLastN = llm.NumCtx
  295. }
  296. lastN := llm.last[len(llm.last)-repeatLastN:]
  297. token := C.llama_sample(
  298. llm.ctx,
  299. unsafe.SliceData(candidates), C.size_t(len(candidates)),
  300. unsafe.SliceData(lastN), C.size_t(len(lastN)),
  301. &sampleOpts,
  302. )
  303. llm.last = append(llm.last, token)
  304. llm.embd = append(llm.embd, token)
  305. if token == C.llama_token_eos() {
  306. return 0, io.EOF
  307. }
  308. return token, nil
  309. }