ggml.go 16 KB

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  1. package ggml
  2. import (
  3. "encoding/binary"
  4. "errors"
  5. "fmt"
  6. "io"
  7. "log/slog"
  8. "slices"
  9. "strings"
  10. "github.com/ollama/ollama/fs/util/bufioutil"
  11. )
  12. type GGML struct {
  13. container
  14. model
  15. }
  16. type model interface {
  17. KV() KV
  18. Tensors() Tensors
  19. }
  20. type KV map[string]any
  21. func (kv KV) Architecture() string {
  22. return kv.String("general.architecture", "unknown")
  23. }
  24. func (kv KV) Kind() string {
  25. return kv.String("general.type", "unknown")
  26. }
  27. func (kv KV) ParameterCount() uint64 {
  28. return keyValue[uint64](kv, "general.parameter_count")
  29. }
  30. func (kv KV) FileType() fileType {
  31. if t := kv.Uint("general.file_type"); t > 0 {
  32. return fileType(t)
  33. }
  34. return fileTypeUnknown
  35. }
  36. func (kv KV) BlockCount() uint64 {
  37. return uint64(kv.Uint("block_count"))
  38. }
  39. func (kv KV) EmbeddingLength() uint64 {
  40. return uint64(kv.Uint("embedding_length"))
  41. }
  42. func (kv KV) HeadCount() uint64 {
  43. return uint64(kv.Uint("attention.head_count"))
  44. }
  45. func (kv KV) HeadCountKV() uint64 {
  46. return uint64(kv.Uint("attention.head_count_kv", 1))
  47. }
  48. func (kv KV) EmbeddingHeadCount() uint64 {
  49. if heads := kv.HeadCount(); heads > 0 {
  50. return kv.EmbeddingLength() / heads
  51. }
  52. return 0
  53. }
  54. func (kv KV) EmbeddingHeadCountK() uint64 {
  55. return uint64(kv.Uint("attention.key_length", uint32(kv.EmbeddingHeadCount())))
  56. }
  57. func (kv KV) EmbeddingHeadCountV() uint64 {
  58. return uint64(kv.Uint("attention.value_length", uint32(kv.EmbeddingHeadCount())))
  59. }
  60. func (kv KV) GQA() uint64 {
  61. return kv.HeadCount() / kv.HeadCountKV()
  62. }
  63. func (kv KV) ContextLength() uint64 {
  64. return uint64(kv.Uint("context_length"))
  65. }
  66. func (kv KV) ChatTemplate() string {
  67. return kv.String("tokenizer.chat_template")
  68. }
  69. func (kv KV) String(key string, defaultValue ...string) string {
  70. return keyValue(kv, key, append(defaultValue, "")...)
  71. }
  72. func (kv KV) Uint(key string, defaultValue ...uint32) uint32 {
  73. return keyValue(kv, key, append(defaultValue, 0)...)
  74. }
  75. func (kv KV) Float(key string, defaultValue ...float32) float32 {
  76. return keyValue(kv, key, append(defaultValue, 0)...)
  77. }
  78. func (kv KV) Bool(key string, defaultValue ...bool) bool {
  79. return keyValue(kv, key, append(defaultValue, false)...)
  80. }
  81. func (kv KV) Strings(key string, defaultValue ...[]string) []string {
  82. r := keyValue(kv, key, &array{})
  83. s := make([]string, r.size)
  84. for i := range r.size {
  85. s[i] = r.values[i].(string)
  86. }
  87. return s
  88. }
  89. func (kv KV) Uints(key string, defaultValue ...[]uint32) []uint32 {
  90. r := keyValue(kv, key, &array{})
  91. s := make([]uint32, r.size)
  92. for i := range r.size {
  93. s[i] = uint32(r.values[i].(int32))
  94. }
  95. return s
  96. }
  97. func (kv KV) Floats(key string, defaultValue ...[]float32) []float32 {
  98. r := keyValue(kv, key, &array{})
  99. s := make([]float32, r.size)
  100. for i := range r.size {
  101. s[i] = float32(r.values[i].(float32))
  102. }
  103. return s
  104. }
  105. func keyValue[T string | uint32 | uint64 | float32 | *array | bool](kv KV, key string, defaultValue ...T) T {
  106. if !strings.HasPrefix(key, "tokenizer.") && !strings.HasPrefix(key, "general.") {
  107. key = kv.Architecture() + "." + key
  108. }
  109. if val, ok := kv[key]; ok {
  110. return val.(T)
  111. }
  112. slog.Warn("key not found", "key", key, "default", defaultValue[0])
  113. return defaultValue[0]
  114. }
  115. type Tensors struct {
  116. items []*Tensor
  117. Offset uint64
  118. }
  119. func (s Tensors) Items(prefix ...string) []*Tensor {
  120. if len(prefix) == 0 {
  121. return s.items
  122. }
  123. var items []*Tensor
  124. for _, t := range s.items {
  125. if strings.HasPrefix(t.Name, prefix[0]) {
  126. items = append(items, t)
  127. }
  128. }
  129. return items
  130. }
  131. func (ts Tensors) GroupLayers() map[string]Layer {
  132. layers := make(map[string]Layer)
  133. for _, t := range ts.items {
  134. parts := strings.Split(t.Name, ".")
  135. if index := slices.IndexFunc(parts, func(s string) bool { return s == "blk" || s == "mm" }); index != -1 {
  136. if len(parts) > index+2 {
  137. // blk and mm should have a number after them, join it
  138. parts = append(
  139. []string{strings.Join(parts[:index+2], ".")},
  140. parts[index+2:]...)
  141. }
  142. }
  143. if _, ok := layers[parts[0]]; !ok {
  144. layers[parts[0]] = make(Layer)
  145. }
  146. layers[parts[0]][strings.Join(parts[1:], ".")] = t
  147. }
  148. return layers
  149. }
  150. type Layer map[string]*Tensor
  151. func (l Layer) Size() (size uint64) {
  152. for _, t := range l {
  153. size += t.Size()
  154. }
  155. return size
  156. }
  157. type Tensor struct {
  158. Name string `json:"name"`
  159. Kind uint32 `json:"kind"`
  160. Offset uint64 `json:"-"`
  161. // Shape is the number of elements in each dimension
  162. Shape []uint64 `json:"shape"`
  163. io.WriterTo `json:"-"`
  164. }
  165. func (t Tensor) block() (n int) {
  166. if _, err := fmt.Sscanf(t.Name, "blk.%d.", &n); err != nil {
  167. return -1
  168. }
  169. return
  170. }
  171. func (t Tensor) blockSize() uint64 {
  172. switch t.Kind {
  173. case
  174. 0, // F32
  175. 1, // F16
  176. 24, // I8
  177. 25, // I16
  178. 26, // I32
  179. 27, // I64
  180. 28, // F64
  181. 30: // BF16
  182. return 1
  183. case
  184. 2, // Q4_0
  185. 3, // Q4_1
  186. 6, // Q5_0
  187. 7, // Q5_1
  188. 8, // Q8_0
  189. 9, // Q8_1
  190. 20: // IQ4_NL
  191. return 32
  192. default:
  193. return 256
  194. }
  195. }
  196. func (t Tensor) typeSize() uint64 {
  197. blockSize := t.blockSize()
  198. switch t.Kind {
  199. case 0: // FP32
  200. return 4
  201. case 1: // FP16
  202. return 2
  203. case 2: // Q4_0
  204. return 2 + blockSize/2
  205. case 3: // Q4_1
  206. return 2 + 2 + blockSize/2
  207. case 6: // Q5_0
  208. return 2 + 4 + blockSize/2
  209. case 7: // Q5_1
  210. return 2 + 2 + 4 + blockSize/2
  211. case 8: // Q8_0
  212. return 2 + blockSize
  213. case 9: // Q8_1
  214. return 2 + 2 + blockSize
  215. case 10: // Q2_K
  216. return blockSize/16 + blockSize/4 + 2 + 2
  217. case 11: // Q3_K
  218. return blockSize/8 + blockSize/4 + 12 + 2
  219. case 12: // Q4_K
  220. return 2 + 2 + 12 + blockSize/2
  221. case 13: // Q5_K
  222. return 2 + 2 + 12 + blockSize/8 + blockSize/2
  223. case 14: // Q6_K
  224. return blockSize/2 + blockSize/4 + blockSize/16 + 2
  225. case 15: // Q8_K
  226. return 4 + blockSize + 2*blockSize/16
  227. case 16: // IQ2_XXS
  228. return 2 + 2*blockSize/8
  229. case 17: // IQ2_XS
  230. return 2 + 2*blockSize/8 + blockSize/32
  231. case 18: // IQ3_XXS
  232. return 2 + blockSize/4 + blockSize/8
  233. case 19: // IQ1_S
  234. return 2 + blockSize/8 + blockSize/16
  235. case 20: // IQ4_NL
  236. return 2 + blockSize/2
  237. case 21: // IQ3_S
  238. return 2 + blockSize/4 + blockSize/8 + blockSize/32 + 4
  239. case 22: // IQ2_S
  240. return 2 + blockSize/4 + blockSize/16
  241. case 23: // IQ4_XS
  242. return 2 + 2 + blockSize/2 + blockSize/64
  243. case 24: // I8
  244. return 1
  245. case 25: // I16
  246. return 2
  247. case 26: // I32
  248. return 4
  249. case 27: // I64
  250. return 8
  251. case 28: // F64
  252. return 8
  253. case 29: // IQ1_M
  254. return blockSize/8 + blockSize/16 + blockSize/32
  255. case 30: // BF16
  256. return 2
  257. default:
  258. return 0
  259. }
  260. }
  261. func (t Tensor) parameters() uint64 {
  262. var count uint64 = 1
  263. for _, n := range t.Shape {
  264. count *= n
  265. }
  266. return count
  267. }
  268. func (t Tensor) Size() uint64 {
  269. return t.parameters() * t.typeSize() / t.blockSize()
  270. }
  271. type container interface {
  272. Name() string
  273. Decode(io.ReadSeeker) (model, error)
  274. }
  275. const (
  276. // Magic constant for `ggml` files (unversioned).
  277. FILE_MAGIC_GGML = 0x67676d6c
  278. // Magic constant for `ggml` files (versioned, ggmf).
  279. FILE_MAGIC_GGMF = 0x67676d66
  280. // Magic constant for `ggml` files (versioned, ggjt).
  281. FILE_MAGIC_GGJT = 0x67676a74
  282. // Magic constant for `ggla` files (LoRA adapter).
  283. FILE_MAGIC_GGLA = 0x67676C61
  284. // Magic constant for `gguf` files (versioned, gguf)
  285. FILE_MAGIC_GGUF_LE = 0x46554747
  286. FILE_MAGIC_GGUF_BE = 0x47475546
  287. )
  288. var ErrUnsupportedFormat = errors.New("unsupported model format")
  289. func DetectContentType(b []byte) string {
  290. switch binary.LittleEndian.Uint32(b[:4]) {
  291. case FILE_MAGIC_GGML:
  292. return "ggml"
  293. case FILE_MAGIC_GGMF:
  294. return "ggmf"
  295. case FILE_MAGIC_GGJT:
  296. return "ggjt"
  297. case FILE_MAGIC_GGLA:
  298. return "ggla"
  299. case FILE_MAGIC_GGUF_LE, FILE_MAGIC_GGUF_BE:
  300. return "gguf"
  301. default:
  302. return ""
  303. }
  304. }
  305. // Decode decodes a GGML model from the given reader.
  306. //
  307. // It collects array values for arrays with a size less than or equal to
  308. // maxArraySize. If maxArraySize is 0, the default value of 1024 is used. If
  309. // the maxArraySize is negative, all arrays are collected.
  310. func Decode(rs io.ReadSeeker, maxArraySize int) (*GGML, int64, error) {
  311. if maxArraySize == 0 {
  312. maxArraySize = 1024
  313. }
  314. rs = bufioutil.NewBufferedSeeker(rs, 32<<10)
  315. var magic uint32
  316. if err := binary.Read(rs, binary.LittleEndian, &magic); err != nil {
  317. return nil, 0, err
  318. }
  319. var c container
  320. switch magic {
  321. case FILE_MAGIC_GGUF_LE:
  322. c = &containerGGUF{ByteOrder: binary.LittleEndian, maxArraySize: maxArraySize}
  323. case FILE_MAGIC_GGUF_BE:
  324. c = &containerGGUF{ByteOrder: binary.BigEndian, maxArraySize: maxArraySize}
  325. default:
  326. return nil, 0, errors.New("invalid file magic")
  327. }
  328. model, err := c.Decode(rs)
  329. if err != nil {
  330. return nil, 0, err
  331. }
  332. offset, err := rs.Seek(0, io.SeekCurrent)
  333. if err != nil {
  334. return nil, 0, err
  335. }
  336. // final model type
  337. return &GGML{
  338. container: c,
  339. model: model,
  340. }, offset, nil
  341. }
  342. func (f GGML) GraphSize(context, batch uint64, kvCacheType string) (kv, partialOffload, fullOffload uint64) {
  343. embedding := f.KV().EmbeddingLength()
  344. heads := f.KV().HeadCount()
  345. headsKV := f.KV().HeadCountKV()
  346. vocab := uint64(f.KV()["tokenizer.ggml.tokens"].(*array).size)
  347. embeddingHeads := f.KV().EmbeddingHeadCount()
  348. embeddingHeadsK := f.KV().EmbeddingHeadCountK()
  349. embeddingHeadsV := f.KV().EmbeddingHeadCountV()
  350. layers := f.Tensors().GroupLayers()
  351. bytesPerElement := kvCacheBytesPerElement(kvCacheType)
  352. kv = uint64(float64(context*f.KV().BlockCount()*(embeddingHeadsK+embeddingHeadsV)*headsKV) * bytesPerElement)
  353. switch f.KV().Architecture() {
  354. case "llama":
  355. fullOffload = max(
  356. 4*batch*(1+4*embedding+context*(1+heads)),
  357. 4*batch*(embedding+vocab),
  358. )
  359. partialOffload = 4 * batch * embedding
  360. partialOffload += max(
  361. 4*batch*(1+embedding+max(context, embedding))+embedding*embedding*9/16+4*context*(batch*heads+embeddingHeads*headsKV),
  362. 4*batch*(embedding+vocab)+embedding*vocab*105/128,
  363. )
  364. if ffnGateExpsWeight, ok := layers["blk.0"]["ffn_gate_exps.weight"]; ok {
  365. // mixtral 8x22b
  366. ff := uint64(f.KV()["llama.feed_forward_length"].(uint32))
  367. partialOffload = max(
  368. 3*ffnGateExpsWeight.Size()+4*batch*(2*ff+headsKV+embedding+context+embeddingHeads*headsKV),
  369. 4*(context*batch*heads+context*embeddingHeads*headsKV+batch*1024+embeddingHeads*headsKV*batch),
  370. )
  371. } else if ffnGateWeight, ok := layers["blk.0"]["ffn_gate.0.weight"]; ok {
  372. // mixtral 8x7b
  373. ffnGateWeight1 := ffnGateWeight.Shape[1]
  374. fullOffload = 4 * batch * (2 + 3*embedding + context*(1+heads) + 2*headsKV + ffnGateWeight1)
  375. partialOffload = max(
  376. 4*batch*(3+embeddingHeads*headsKV+embedding+context*(1+heads)+ffnGateWeight1)+(embedding*embedding+3*embedding*headsKV*ffnGateWeight1)*9/16,
  377. 4*batch*(1+2*embedding+context*(1+heads))+embedding*(6*context*headsKV/heads+embedding*9/16),
  378. )
  379. }
  380. case "mllama":
  381. var visionTokens, tiles uint64 = 1601, 4
  382. if crossAttentionLayers, ok := f.KV()["mllama.attention.cross_attention_layers"].(*array); ok {
  383. kv = headsKV *
  384. (embeddingHeadsK + embeddingHeadsV) * // one for K, one for V
  385. (2* // sizeof(float16)
  386. (f.KV().BlockCount()-uint64(crossAttentionLayers.size))* // num non-cross attention layers
  387. context +
  388. 4* // sizeof(float32)
  389. uint64(crossAttentionLayers.size)* // num cross attention layers
  390. visionTokens*
  391. tiles)
  392. }
  393. fullOffload = max(
  394. 4*batch*(2+3*embedding+embeddingHeadsK*heads+context*(1+heads)),
  395. // vocab graph
  396. 4*batch*(embedding+vocab),
  397. )
  398. var ropeFreqsCount uint64
  399. if ropeFreqs, ok := f.Tensors().GroupLayers()["rope_freqs"]; ok {
  400. if ropeFreqsWeights, ok := ropeFreqs["weights"]; ok {
  401. ropeFreqsCount = ropeFreqsWeights.parameters()
  402. }
  403. }
  404. partialOffload = max(
  405. 4*(batch*
  406. (2*embedding+1+context*(1+heads)+embeddingHeadsK*heads)+
  407. ropeFreqsCount+
  408. embeddingHeadsK*context*headsKV),
  409. // vocab graph
  410. 4*batch*(embedding+vocab)+embedding*vocab*105/128,
  411. )
  412. case "gemma", "gemma2", "gemma3":
  413. fullOffload = max(
  414. 4*batch*(embedding+vocab),
  415. 4*batch*(2+context+context*heads+2*embedding+2*embeddingHeadsK*heads),
  416. )
  417. partialOffload = max(
  418. 4*embedding*batch+embedding*vocab*105/128+4*vocab*batch,
  419. 4*batch*(2*embedding+1+2*embeddingHeadsK*heads+context+context*heads)+
  420. 4*embeddingHeadsK*context*8+
  421. embedding*embeddingHeadsK*heads*9/16,
  422. )
  423. case "command-r":
  424. fullOffload = max(
  425. 4*batch*(embedding+vocab),
  426. 4*batch*(2+4*embedding+context*(1+heads)),
  427. )
  428. partialOffload = max(
  429. 4*batch*(embedding+vocab)+embedding*vocab*105/128,
  430. 4*batch*(1+2*embedding+context*(1+heads))+4*embedding*context+embedding*embedding*9/16,
  431. )
  432. case "qwen2":
  433. fullOffload = max(
  434. 4*batch*(embedding+vocab),
  435. 4*batch*(1+2*embedding+context+context*heads),
  436. )
  437. partialOffload = max(
  438. 4*batch*(embedding+vocab)+embedding*vocab*105/128,
  439. 4*(batch*(1+2*embedding+context*(1+heads))+embedding*(1+context)),
  440. )
  441. case "phi2":
  442. fullOffload = max(
  443. 4*batch*(embedding+vocab),
  444. 4*batch*(1+4*embedding+context+context*heads),
  445. )
  446. partialOffload = max(
  447. 4*batch*(2*embedding+vocab)+embedding*vocab*105/128,
  448. 4*batch*(2+3*embedding+context+context*heads),
  449. )
  450. case "stablelm":
  451. fullOffload = 4 * batch * (context*(1+heads) + 3*embedding + 2)
  452. partialOffload = max(
  453. 4*batch*(vocab+2*embedding),
  454. fullOffload,
  455. )
  456. case "deepseek2":
  457. fullOffload = max(
  458. 4*batch*(3*embedding+vocab),
  459. 4*batch*(3*embedding+2+context*(1+headsKV)+2*embeddingHeadsK*headsKV),
  460. )
  461. partialOffload = max(
  462. 4*batch*(3*embedding+vocab)+embedding*vocab*105/128,
  463. 4*batch*(2*embedding+1+2*embeddingHeadsK*headsKV+context+context*headsKV)+4*embeddingHeadsK*context*headsKV+embedding*embeddingHeadsK*headsKV*9/16,
  464. )
  465. case "chatglm":
  466. fullOffload = 4 * batch * (embedding + vocab)
  467. partialOffload = 4*batch*(embedding+vocab) + embedding*vocab*105/128
  468. if qkvBias, ok := layers["blk.0"]["attn_qkv.bias"]; ok {
  469. fullOffload = max(
  470. fullOffload,
  471. 4*batch*(2+
  472. 2*embedding+
  473. context+
  474. context*heads+
  475. embeddingHeadsK*heads+
  476. qkvBias.Shape[0]),
  477. )
  478. partialOffload = max(
  479. partialOffload,
  480. 4*batch*(1+
  481. 2*embedding+
  482. embeddingHeadsK*heads+
  483. context+
  484. context*heads)+
  485. 4*embeddingHeadsK*context+
  486. 4*context*embeddingHeadsK+
  487. 4*qkvBias.Shape[0],
  488. )
  489. }
  490. }
  491. return
  492. }
  493. func (llm GGML) VisionGraphSize() (weights, graphSize uint64) {
  494. switch llm.KV().Architecture() {
  495. case "mllama":
  496. for _, layer := range llm.Tensors().GroupLayers()["v"] {
  497. weights += layer.Size()
  498. }
  499. kv := func(n string) uint64 {
  500. if v, ok := llm.KV()["mllama.vision."+n].(uint32); ok {
  501. return uint64(v)
  502. }
  503. return 0
  504. }
  505. imageSize := kv("image_size")
  506. maxNumTiles := kv("max_num_tiles")
  507. embeddingLength := kv("embedding_length")
  508. headCount := kv("attention.head_count")
  509. numPatches := (imageSize / kv("patch_size")) * (imageSize / kv("patch_size"))
  510. if _, ok := llm.Tensors().GroupLayers()["v"]["class_embd"]; ok {
  511. numPatches++
  512. }
  513. numPaddedPatches := numPatches + 8 - (numPatches%8)%8
  514. graphSize = 4 * (8 +
  515. imageSize*imageSize*kv("num_channels")*maxNumTiles +
  516. embeddingLength*numPatches*maxNumTiles +
  517. 9*embeddingLength*numPaddedPatches*maxNumTiles +
  518. numPaddedPatches*maxNumTiles*numPaddedPatches*maxNumTiles*headCount)
  519. }
  520. return weights, graphSize
  521. }
  522. // SupportsKVCacheType checks if the requested cache type is supported
  523. func (f GGML) SupportsKVCacheType(cacheType string) bool {
  524. return slices.Contains([]string{"f16", "q8_0", "q4_0"}, cacheType)
  525. }
  526. // SupportsFlashAttention checks if the model supports flash attention
  527. func (f GGML) SupportsFlashAttention() bool {
  528. _, isEmbedding := f.KV()[fmt.Sprintf("%s.pooling_type", f.KV().Architecture())]
  529. if isEmbedding {
  530. return false
  531. }
  532. // Check head counts match and are non-zero
  533. headCountK := f.KV().EmbeddingHeadCountK()
  534. headCountV := f.KV().EmbeddingHeadCountV()
  535. return headCountK != 0 && headCountV != 0 && headCountK == headCountV
  536. }
  537. // kvCacheBytesPerElement returns the number of bytes per element for a given KV cache type
  538. func kvCacheBytesPerElement(cacheType string) float64 {
  539. switch cacheType {
  540. case "q8_0":
  541. return 1 // 1/2 of fp16
  542. case "q4_0":
  543. return 0.5 // 1/4 of fp16
  544. default:
  545. return 2 // f16 (default)
  546. }
  547. }