ggml.go 14 KB

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  1. package ggml
  2. // #cgo CPPFLAGS: -I${SRCDIR}/ggml/include
  3. // #include <stdlib.h>
  4. // #include <stdint.h>
  5. // #include "ggml.h"
  6. // #include "ggml-cpu.h"
  7. // #include "ggml-backend.h"
  8. import "C"
  9. import (
  10. "bytes"
  11. "encoding/binary"
  12. "fmt"
  13. "io"
  14. "log/slog"
  15. "os"
  16. "sync"
  17. "unsafe"
  18. "github.com/ollama/ollama/format"
  19. fs "github.com/ollama/ollama/fs/ggml"
  20. "github.com/ollama/ollama/ml"
  21. "golang.org/x/sync/errgroup"
  22. "github.com/ollama/ollama/ml/backend/ggml/ggml/src"
  23. )
  24. type device struct {
  25. d *C.struct_ggml_backend_device
  26. }
  27. func (d device) LogValue() slog.Value {
  28. var free, total uint64
  29. C.ggml_backend_dev_memory(d.d, (*C.size_t)(&free), (*C.size_t)(&total))
  30. kind := "unknown"
  31. switch C.ggml_backend_dev_type(d.d) {
  32. case C.GGML_BACKEND_DEVICE_TYPE_CPU:
  33. kind = "cpu"
  34. case C.GGML_BACKEND_DEVICE_TYPE_GPU:
  35. kind = "gpu"
  36. case C.GGML_BACKEND_DEVICE_TYPE_ACCEL:
  37. kind = "accel"
  38. }
  39. return slog.GroupValue(
  40. slog.String("name", C.GoString(C.ggml_backend_dev_name(d.d))),
  41. slog.String("description", C.GoString(C.ggml_backend_dev_description(d.d))),
  42. slog.String("kind", kind),
  43. slog.String("free", format.HumanBytes2(free)),
  44. slog.String("total", format.HumanBytes2(total)),
  45. )
  46. }
  47. var devices = sync.OnceValue(func() []device {
  48. ggml.OnceLoad()
  49. s := make([]device, C.ggml_backend_dev_count())
  50. for i := range s {
  51. s[i] = device{C.ggml_backend_dev_get(C.size_t(i))}
  52. }
  53. return s
  54. })
  55. type Backend struct {
  56. meta *fs.GGML
  57. cpus, gpus []Context
  58. tensors map[string]*Context
  59. }
  60. func New(r *os.File) (ml.Backend, error) {
  61. meta, n, err := fs.Decode(r, -1)
  62. if err != nil {
  63. return nil, err
  64. }
  65. slog.Info(
  66. "",
  67. "architecture", meta.KV().Architecture(),
  68. "file_type", meta.KV().FileType(),
  69. "name", meta.KV().String("general.name"),
  70. "description", meta.KV().String("general.description"),
  71. "num_tensors", len(meta.Tensors().Items()),
  72. "num_key_values", len(meta.KV()),
  73. )
  74. var cpus, gpus []Context
  75. for _, d := range devices() {
  76. switch C.ggml_backend_dev_type(d.d) {
  77. case C.GGML_BACKEND_DEVICE_TYPE_CPU,
  78. C.GGML_BACKEND_DEVICE_TYPE_ACCEL:
  79. slog.Info("cpu", "device", d)
  80. cpus = append(cpus, Context{
  81. ctx: C.ggml_init(C.struct_ggml_init_params{
  82. mem_size: C.size_t(int(C.ggml_tensor_overhead()) * (len(meta.Tensors().Items()) + 1 + int(meta.KV().BlockCount())*2)),
  83. no_alloc: true,
  84. }),
  85. backend: C.ggml_backend_dev_init(d.d, nil),
  86. })
  87. case C.GGML_BACKEND_DEVICE_TYPE_GPU:
  88. slog.Info("gpu", "device", d)
  89. gpus = append(gpus, Context{
  90. ctx: C.ggml_init(C.struct_ggml_init_params{
  91. mem_size: C.size_t(int(C.ggml_tensor_overhead()) * (len(meta.Tensors().Items()) + 1 + int(meta.KV().BlockCount())*2)),
  92. no_alloc: true,
  93. }),
  94. backend: C.ggml_backend_dev_init(d.d, nil),
  95. })
  96. }
  97. }
  98. ctxFunc := func(s []Context) (*Context, error) {
  99. for _, e := range s {
  100. return &e, nil
  101. }
  102. return nil, fmt.Errorf("no devices available")
  103. }
  104. tensors := make(map[*fs.Tensor]*Context, len(meta.Tensors().Items()))
  105. for _, t := range meta.Tensors().Items() {
  106. c, err := ctxFunc(append(gpus, cpus...))
  107. if err != nil {
  108. return nil, err
  109. }
  110. func() {
  111. tt := C.ggml_new_tensor(c.ctx, t.Kind, C.int(len(t.Shape)), (*C.int64_t)(unsafe.Pointer(&t.Shape[0])))
  112. cname := C.CString(t.Name)
  113. defer C.free(unsafe.Pointer(cname))
  114. C.ggml_set_name(tt, cname)
  115. tensors[t] = c
  116. }()
  117. }
  118. for _, b := range append(gpus, cpus...) {
  119. C.ggml_backend_alloc_ctx_tensors(b.ctx, b.backend)
  120. }
  121. sr := io.NewSectionReader(r, int64(meta.Tensors().Offset), n-int64(meta.Tensors().Offset))
  122. var g errgroup.Group
  123. for t, c := range tensors {
  124. g.Go(func() error {
  125. bts := make([]byte, t.Size())
  126. n, err := io.ReadFull(io.NewSectionReader(sr, int64(t.Offset), int64(t.Size())), bts)
  127. if err != nil {
  128. return err
  129. }
  130. if n != int(t.Size()) {
  131. return fmt.Errorf("expected %d bytes, got %d", t.Size(), n)
  132. }
  133. cname := C.CString(t.Name)
  134. defer C.free(unsafe.Pointer(cname))
  135. C.ggml_backend_tensor_set(C.ggml_get_tensor(c.ctx, cname), unsafe.Pointer(&bts[0]), 0, C.size_t(n))
  136. return nil
  137. })
  138. }
  139. if err := g.Wait(); err != nil {
  140. return nil, err
  141. }
  142. return &Backend{
  143. meta: meta,
  144. cpus: cpus,
  145. gpus: gpus,
  146. }, nil
  147. }
  148. func init() {
  149. ml.RegisterBackend("ggml", New)
  150. }
  151. func (b *Backend) Config() ml.Config {
  152. return b.meta.KV()
  153. }
  154. func (b *Backend) Get(name string) ml.Tensor {
  155. cname := C.CString(name)
  156. defer C.free(unsafe.Pointer(cname))
  157. for _, c := range append(b.gpus, b.cpus...) {
  158. if t := C.ggml_get_tensor(c.ctx, cname); t != nil {
  159. return &Tensor{t: t}
  160. }
  161. }
  162. return nil
  163. }
  164. func (b *Backend) NewContext() ml.Context {
  165. nodes := max(8192, len(b.meta.Tensors().Items())*5)
  166. bts := make([]byte, C.size_t(nodes)*C.ggml_tensor_overhead()+C.ggml_graph_overhead_custom(C.size_t(nodes), false))
  167. c := C.ggml_init(C.struct_ggml_init_params{
  168. mem_buffer: unsafe.Pointer(&bts[0]),
  169. mem_size: C.size_t(len(bts)),
  170. no_alloc: true,
  171. })
  172. backends := make([]*C.struct_ggml_backend, len(b.gpus)+len(b.cpus))
  173. bufts := make([]*C.struct_ggml_backend_buffer_type, len(b.gpus)+len(b.cpus))
  174. for i, c := range append(b.gpus, b.cpus...) {
  175. backends[i] = c.backend
  176. bufts[i] = C.ggml_backend_get_default_buffer_type(c.backend)
  177. }
  178. return &Context{
  179. ctx: c,
  180. backend: backends[0],
  181. nodes: nodes,
  182. sched: C.ggml_backend_sched_new(
  183. (*C.ggml_backend_t)(unsafe.Pointer(&backends[0])),
  184. (*C.ggml_backend_buffer_type_t)(unsafe.Pointer(&bufts[0])),
  185. C.int(len(backends)),
  186. C.size_t(nodes),
  187. true,
  188. ),
  189. }
  190. }
  191. type Context struct {
  192. ctx *C.struct_ggml_context
  193. backend *C.struct_ggml_backend
  194. sched *C.struct_ggml_backend_sched
  195. graph *C.struct_ggml_cgraph
  196. nodes int
  197. }
  198. func (c *Context) Forward(t ml.Tensor) {
  199. if c.graph == nil {
  200. c.graph = C.ggml_new_graph_custom(c.ctx, C.size_t(c.nodes), false)
  201. }
  202. C.ggml_build_forward_expand(c.graph, t.(*Tensor).t)
  203. }
  204. func (c *Context) Compute(t ml.Tensor) ml.Tensor {
  205. c.Forward(t)
  206. C.ggml_backend_sched_graph_compute_async(c.sched, c.graph)
  207. backend := C.ggml_backend_sched_get_tensor_backend(c.sched, t.(*Tensor).t)
  208. t.(*Tensor).data = make([]byte, C.ggml_nbytes(t.(*Tensor).t))
  209. C.ggml_backend_tensor_get_async(backend, t.(*Tensor).t, unsafe.Pointer(&t.(*Tensor).data[0]), 0, C.ggml_nbytes(t.(*Tensor).t))
  210. return t
  211. }
  212. func (c Context) Zeros(dtype ml.DType, shape ...int) ml.Tensor {
  213. if len(shape) < 1 || len(shape) > 4 {
  214. panic("unsupported number of dimensions")
  215. }
  216. for _, dim := range shape {
  217. if dim < 1 {
  218. panic("invalid shape")
  219. }
  220. }
  221. var t *C.struct_ggml_tensor
  222. switch dtype {
  223. case ml.DTypeF32:
  224. t = C.ggml_new_tensor(c.ctx, C.GGML_TYPE_F32, C.int(len(shape)), (*C.int64_t)(unsafe.Pointer(&shape[0])))
  225. case ml.DTypeI32:
  226. t = C.ggml_new_tensor(c.ctx, C.GGML_TYPE_I32, C.int(len(shape)), (*C.int64_t)(unsafe.Pointer(&shape[0])))
  227. default:
  228. panic("unsupported dtype")
  229. }
  230. b := C.ggml_backend_alloc_buffer(c.backend, C.ggml_nbytes(t))
  231. C.ggml_backend_tensor_alloc(b, t, C.ggml_backend_buffer_get_base(b))
  232. C.ggml_set_zero(t)
  233. return &Tensor{t: t}
  234. }
  235. func fromSlice[S ~[]E, E float32 | int32](ctx Context, s S, shape []int, dtype uint32) (ml.Tensor, error) {
  236. n := len(s)
  237. for _, v := range shape {
  238. n /= v
  239. }
  240. if n != 1 {
  241. return nil, fmt.Errorf("invalid shape %v for %d elements", shape, len(s))
  242. }
  243. t := C.ggml_new_tensor(ctx.ctx, dtype, C.int(len(shape)), (*C.int64_t)(unsafe.Pointer(&shape[0])))
  244. b := C.ggml_backend_alloc_buffer(ctx.backend, C.ggml_nbytes(t))
  245. C.ggml_backend_tensor_alloc(b, t, C.ggml_backend_buffer_get_base(b))
  246. C.ggml_backend_tensor_set(t, unsafe.Pointer(&s[0]), 0, C.ggml_nbytes(t))
  247. return &Tensor{t: t}, nil
  248. }
  249. func (c Context) FromFloatSlice(s []float32, shape ...int) (ml.Tensor, error) {
  250. return fromSlice(c, s, shape, C.GGML_TYPE_F32)
  251. }
  252. func (c Context) FromIntSlice(s []int32, shape ...int) (ml.Tensor, error) {
  253. return fromSlice(c, s, shape, C.GGML_TYPE_I32)
  254. }
  255. func (c *Context) Close() {
  256. C.ggml_backend_sched_free(c.sched)
  257. C.ggml_free(c.ctx)
  258. }
  259. type Tensor struct {
  260. t *C.struct_ggml_tensor
  261. data []byte
  262. }
  263. func (t *Tensor) LogValue() slog.Value {
  264. return slog.GroupValue(
  265. slog.String("name", C.GoString(C.ggml_get_name(t.t))),
  266. slog.String("type", C.GoString(C.ggml_type_name(t.t._type))),
  267. slog.Any("shape", t.Shape()),
  268. )
  269. }
  270. func (t *Tensor) Dim(n int) int64 {
  271. return int64(t.t.ne[n])
  272. }
  273. func (t *Tensor) Stride(n int) int64 {
  274. return int64(t.t.nb[n])
  275. }
  276. func (t *Tensor) Shape() []int64 {
  277. shape := make([]int64, C.ggml_n_dims(t.t))
  278. for i := range shape {
  279. shape[i] = t.Dim(i)
  280. }
  281. return shape
  282. }
  283. func (t *Tensor) Bytes() []byte {
  284. if bts := C.ggml_get_data(t.t); bts != nil {
  285. return C.GoBytes(bts, C.int(C.ggml_nbytes(t.t)))
  286. }
  287. return nil
  288. }
  289. func (t *Tensor) Floats() (f32s []float32) {
  290. if t.data != nil {
  291. f32s = make([]float32, C.ggml_nelements(t.t))
  292. _ = binary.Read(bytes.NewReader(t.data), binary.LittleEndian, f32s)
  293. }
  294. return
  295. }
  296. func (t *Tensor) DType() ml.DType {
  297. switch t.t._type {
  298. case C.GGML_TYPE_F32:
  299. return ml.DTypeF32
  300. case C.GGML_TYPE_I32:
  301. return ml.DTypeI32
  302. default:
  303. return ml.DTypeOther
  304. }
  305. }
  306. func (t *Tensor) Add(ctx ml.Context, t2 ml.Tensor) ml.Tensor {
  307. return &Tensor{
  308. t: C.ggml_add(ctx.(*Context).ctx, t.t, t2.(*Tensor).t),
  309. }
  310. }
  311. func (t *Tensor) Stack(ctx ml.Context, dim int, s ...ml.Tensor) ml.Tensor {
  312. if len(s) > 0 {
  313. return t.Concat(ctx, s[0].Stack(ctx, dim, s[1:]...), dim)
  314. }
  315. return t
  316. }
  317. func (t *Tensor) Concat(ctx ml.Context, t2 ml.Tensor, dim int) ml.Tensor {
  318. return &Tensor{
  319. t: C.ggml_concat(ctx.(*Context).ctx, t.t, t2.(*Tensor).t, C.int(dim)),
  320. }
  321. }
  322. func (t *Tensor) Contiguous(ctx ml.Context) ml.Tensor {
  323. return &Tensor{
  324. t: C.ggml_cont(ctx.(*Context).ctx, t.t),
  325. }
  326. }
  327. func (t *Tensor) Mul(ctx ml.Context, t2 ml.Tensor) ml.Tensor {
  328. return &Tensor{
  329. t: C.ggml_mul(ctx.(*Context).ctx, t.t, t2.(*Tensor).t),
  330. }
  331. }
  332. func (t *Tensor) Mulmat(ctx ml.Context, t2 ml.Tensor) ml.Tensor {
  333. return &Tensor{
  334. t: C.ggml_mul_mat(ctx.(*Context).ctx, t.t, t2.(*Tensor).t),
  335. }
  336. }
  337. func (t *Tensor) LayerNorm(ctx ml.Context, w, b ml.Tensor, eps float32) ml.Tensor {
  338. tt := (&Tensor{t: C.ggml_norm(ctx.(*Context).ctx, t.t, C.float(eps))}).Mul(ctx, w)
  339. if b != nil {
  340. tt = tt.Add(ctx, b)
  341. }
  342. return tt
  343. }
  344. func (t *Tensor) RMSNorm(ctx ml.Context, w ml.Tensor, eps float32) ml.Tensor {
  345. return (&Tensor{t: C.ggml_norm(ctx.(*Context).ctx, t.t, C.float(eps))}).Mul(ctx, w)
  346. }
  347. func (t *Tensor) Pad(ctx ml.Context, shape ...int64) ml.Tensor {
  348. if len(shape) != 4 {
  349. panic("expected 4 dimensions")
  350. }
  351. return &Tensor{
  352. t: C.ggml_pad(ctx.(*Context).ctx, t.t, C.int(shape[0]), C.int(shape[1]), C.int(shape[2]), C.int(shape[3])),
  353. }
  354. }
  355. func (t *Tensor) Permute(ctx ml.Context, shape ...int) ml.Tensor {
  356. if len(shape) != 4 {
  357. panic("expected 4 dimensions")
  358. }
  359. return &Tensor{
  360. t: C.ggml_permute(ctx.(*Context).ctx, t.t, C.int(shape[0]), C.int(shape[1]), C.int(shape[2]), C.int(shape[3])),
  361. }
  362. }
  363. func (t *Tensor) Rows(ctx ml.Context, t2 ml.Tensor) ml.Tensor {
  364. return &Tensor{
  365. t: C.ggml_get_rows(ctx.(*Context).ctx, t.t, t2.(*Tensor).t),
  366. }
  367. }
  368. func (t *Tensor) Copy(ctx ml.Context, t2 ml.Tensor) ml.Tensor {
  369. return &Tensor{
  370. t: C.ggml_cpy(ctx.(*Context).ctx, t.t, t2.(*Tensor).t),
  371. }
  372. }
  373. func (t *Tensor) Reshape(ctx ml.Context, shape ...int64) ml.Tensor {
  374. switch len(shape) {
  375. case 1:
  376. return &Tensor{
  377. t: C.ggml_reshape_1d(ctx.(*Context).ctx, t.t, C.int64_t(shape[0])),
  378. }
  379. case 2:
  380. return &Tensor{
  381. t: C.ggml_reshape_2d(ctx.(*Context).ctx, t.t, C.int64_t(shape[0]), C.int64_t(shape[1])),
  382. }
  383. case 3:
  384. return &Tensor{
  385. t: C.ggml_reshape_3d(ctx.(*Context).ctx, t.t, C.int64_t(shape[0]), C.int64_t(shape[1]), C.int64_t(shape[2])),
  386. }
  387. case 4:
  388. return &Tensor{
  389. t: C.ggml_reshape_4d(ctx.(*Context).ctx, t.t, C.int64_t(shape[0]), C.int64_t(shape[1]), C.int64_t(shape[2]), C.int64_t(shape[3])),
  390. }
  391. default:
  392. panic("unsupported number of dimensions")
  393. }
  394. }
  395. func (t *Tensor) Scale(ctx ml.Context, s float64) ml.Tensor {
  396. return &Tensor{
  397. t: C.ggml_scale(ctx.(*Context).ctx, t.t, (C.float)(s)),
  398. }
  399. }
  400. func (t *Tensor) Softmax(ctx ml.Context) ml.Tensor {
  401. return &Tensor{
  402. t: C.ggml_soft_max(ctx.(*Context).ctx, t.t),
  403. }
  404. }
  405. func (t *Tensor) Tanh(ctx ml.Context) ml.Tensor {
  406. return &Tensor{
  407. t: C.ggml_tanh_inplace(ctx.(*Context).ctx, t.t),
  408. }
  409. }
  410. func (t *Tensor) Unpad(ctx ml.Context, shape ...int64) ml.Tensor {
  411. if len(shape) != 4 {
  412. panic("expected 4 dimensions")
  413. }
  414. return &Tensor{
  415. t: C.ggml_unpad(ctx.(*Context).ctx, t.t, C.int(shape[0]), C.int(shape[1]), C.int(shape[2]), C.int(shape[3])),
  416. }
  417. }
  418. func (t *Tensor) View(ctx ml.Context, offset int, shape ...int) ml.Tensor {
  419. switch len(shape) {
  420. case 1:
  421. return &Tensor{
  422. t: C.ggml_view_1d(ctx.(*Context).ctx, t.t, C.int64_t(shape[0]), C.size_t(offset)),
  423. }
  424. case 3:
  425. return &Tensor{
  426. t: C.ggml_view_2d(ctx.(*Context).ctx, t.t,
  427. C.int64_t(shape[0]), C.int64_t(shape[2]),
  428. C.size_t(shape[1]),
  429. C.size_t(offset)),
  430. }
  431. case 5:
  432. return &Tensor{
  433. t: C.ggml_view_3d(ctx.(*Context).ctx, t.t,
  434. C.int64_t(shape[0]), C.int64_t(shape[2]), C.int64_t(shape[4]),
  435. C.size_t(shape[1]), C.size_t(shape[3]),
  436. C.size_t(offset)),
  437. }
  438. case 7:
  439. return &Tensor{
  440. t: C.ggml_view_4d(ctx.(*Context).ctx, t.t,
  441. C.int64_t(shape[0]), C.int64_t(shape[2]), C.int64_t(shape[4]), C.int64_t(shape[6]),
  442. C.size_t(shape[1]), C.size_t(shape[3]), C.size_t(shape[5]),
  443. C.size_t(offset)),
  444. }
  445. default:
  446. panic("unsupported number of dimensions")
  447. }
  448. }
  449. const (
  450. ropeTypeNorm C.int = iota
  451. )
  452. func (t *Tensor) RoPE(ctx ml.Context, positionIDs, ropeFactors ml.Tensor, ropeDim uint32, ropeBase, ropeScale float32) ml.Tensor {
  453. if ropeFactors == nil {
  454. ropeFactors = &Tensor{}
  455. }
  456. return &Tensor{
  457. t: C.ggml_rope_ext(
  458. ctx.(*Context).ctx, t.t, positionIDs.(*Tensor).t, ropeFactors.(*Tensor).t,
  459. C.int(ropeDim),
  460. 131072, // YaRN n_ctx_train
  461. ropeTypeNorm, // ROPE_TYPE_NORM
  462. C.float(ropeBase),
  463. C.float(ropeScale),
  464. 0., // YaRN ext_factor
  465. 1., // YaRN attn_factor
  466. 32., // YaRN beta_fast
  467. 1., // YaRN beta_slow
  468. ),
  469. }
  470. }
  471. func (t *Tensor) GELU(ctx ml.Context) ml.Tensor {
  472. return &Tensor{
  473. t: C.ggml_gelu_inplace(ctx.(*Context).ctx, t.t),
  474. }
  475. }
  476. func (t *Tensor) SILU(ctx ml.Context) ml.Tensor {
  477. return &Tensor{
  478. t: C.ggml_silu_inplace(ctx.(*Context).ctx, t.t),
  479. }
  480. }
  481. func (t *Tensor) Conv2D(ctx ml.Context, t2 ml.Tensor, s0, s1, p0, p1, d0, d1 int) ml.Tensor {
  482. return &Tensor{
  483. t: C.ggml_conv_2d(ctx.(*Context).ctx, t.t, t2.(*Tensor).t, C.int(s0), C.int(s1), C.int(p0), C.int(p1), C.int(d0), C.int(d1)),
  484. }
  485. }