backend.go 10.1 KB
Newer Older
Michael Yang's avatar
Michael Yang committed
1
2
3
4
package ml

import (
	"bytes"
5
	"context"
Michael Yang's avatar
Michael Yang committed
6
7
	"encoding/binary"
	"fmt"
8
	"math"
Michael Yang's avatar
Michael Yang committed
9
	"slices"
Michael Yang's avatar
Michael Yang committed
10
11
12
	"strconv"
	"strings"

13
14
	"github.com/ollama/ollama/fs"
)
Michael Yang's avatar
Michael Yang committed
15
16

type Backend interface {
Jesse Gross's avatar
Jesse Gross committed
17
18
19
	// Close frees all memory associated with this backend
	Close()

20
	Load(ctx context.Context, progress func(float32)) error
21
22
23
24

	// BackendMemory returns the memory allocations that were made for this model
	BackendMemory() BackendMemory

25
	Config() fs.Config
Michael Yang's avatar
Michael Yang committed
26
27
	Get(name string) Tensor
	NewContext() Context
28
	NewContextSize(size int) Context
29
30
31

	// Enumerate the devices available for inference via this backend
	BackendDevices() []DeviceInfo
Michael Yang's avatar
Michael Yang committed
32
33
}

34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
// BackendCacheConfig should be implemented by backends that need special output
// from the cache to meet specific requirements. It is frequently implemented in
// conjunction with ScaledDotProductAttention.
type BackendCacheConfig interface {
	CacheConfig() CacheConfig
}

// CacheConfig controls optimizations (mostly backend-specific) that may transform
// the output the cache to work better with specific kernels.
type CacheConfig struct {
	// CachePadding specifies the multiple for the number of tokens of cache history
	// that will be returned from cache Get for k, v and mask. The capacity of the
	// cache itself will also be increased to a multiple of this size if needed.
	CachePadding int

	// PermutedV performs Permute(ctx, 1, 2, 0, 3) on v tensors stored via Put
	// and return the permuted version via Get. This uses the cache copy operation
	// to avoid a Contiguous call on the permuted tensor.
	PermutedV bool
53
54
55
56
57
58
59
60

	// MaskDType specifies the data type for generating the mask. If unset it will
	// default to DTypeF32.
	MaskDType DType

	// MaskBatchPadding specifies the multiple for the batch size dimension in the mask.
	// Any position that does not correspond to an actual token will be filled with -Inf.
	MaskBatchPadding int
61
62
}

63
64
// BackendParams controls how the backend loads and executes models
type BackendParams struct {
Jesse Gross's avatar
Jesse Gross committed
65
66
67
68
69
	// AllocMemory causes the backend to allocate memory for the model. If
	// false, this is only being used for discovering the required amount of
	// memory and cannot load the model for running.
	AllocMemory bool

70
71
	// NumThreads sets the number of threads to use if running on the CPU
	NumThreads int
Michael Yang's avatar
Michael Yang committed
72

Jesse Gross's avatar
Jesse Gross committed
73
74
	// GPULayers is the set of layers to offload to GPUs
	GPULayers GPULayersList
75
76
77

	// FlashAttention indicates that we should use a fused flash attention kernel
	FlashAttention bool
78
79
}

80
var backends = make(map[string]func(string, BackendParams) (Backend, error))
81

82
func RegisterBackend(name string, f func(string, BackendParams) (Backend, error)) {
Michael Yang's avatar
Michael Yang committed
83
84
85
86
87
88
89
	if _, ok := backends[name]; ok {
		panic("backend: backend already registered")
	}

	backends[name] = f
}

90
func NewBackend(modelPath string, params BackendParams) (Backend, error) {
Michael Yang's avatar
Michael Yang committed
91
	if backend, ok := backends["ggml"]; ok {
92
		return backend(modelPath, params)
Michael Yang's avatar
Michael Yang committed
93
94
95
96
97
98
	}

	return nil, fmt.Errorf("unsupported backend")
}

type Context interface {
99
	Empty(dtype DType, shape ...int) Tensor
Michael Yang's avatar
Michael Yang committed
100
	Zeros(dtype DType, shape ...int) Tensor
Michael Yang's avatar
Michael Yang committed
101
102
103
	FromBytes(dtype DType, s []byte, shape ...int) Tensor
	FromFloats(s []float32, shape ...int) Tensor
	FromInts(s []int32, shape ...int) Tensor
Michael Yang's avatar
Michael Yang committed
104

Michael Yang's avatar
arange  
Michael Yang committed
105
106
107
	// Arange creates a 1D tensor with values within an interval (start, stop] increased by step.
	Arange(start, stop, step float32, dtype DType) Tensor

108
	Forward(...Tensor) Context
109
	Compute(...Tensor)
110
	ComputeWithNotify(func(), ...Tensor) // notify callback once compute has begun
111
112
113
114
115

	// Reserve is analogous to Compute but rather than executing a
	// graph, simply preallocates memory. Typically called with a
	// worst case graph to ensure all resources are available for
	// for future inference.
116
	Reserve()
117

118
	MaxGraphNodes() int
119
	Close()
120

121
122
	// Input returns a context appropriate for creating tensors that are
	// inputs to the model (which includes things like output locations)
123
124
125
126
	Input() Context

	// Layer returns a context appropriate for creating intermediate tensors
	Layer(int) Context
Michael Yang's avatar
Michael Yang committed
127
128
129
}

type Tensor interface {
130
131
	Dim(n int) int
	Stride(n int) int
Michael Yang's avatar
Michael Yang committed
132

133
	Shape() []int
Michael Yang's avatar
Michael Yang committed
134
	DType() DType
135
	Cast(ctx Context, dtype DType) Tensor
Michael Yang's avatar
Michael Yang committed
136
137
138
139

	Bytes() []byte
	Floats() []float32

Michael Yang's avatar
Michael Yang committed
140
141
142
	FromBytes([]byte)
	FromFloats([]float32)
	FromInts([]int32)
143

144
	Neg(ctx Context) Tensor
Michael Yang's avatar
Michael Yang committed
145
	Add(ctx Context, t2 Tensor) Tensor
Michael Yang's avatar
Michael Yang committed
146
	Sub(ctx Context, t2 Tensor) Tensor
Michael Yang's avatar
Michael Yang committed
147
	Mul(ctx Context, t2 Tensor) Tensor
148
149
	Div(ctx Context, t2 Tensor) Tensor

Michael Yang's avatar
Michael Yang committed
150
	Mulmat(ctx Context, t2 Tensor) Tensor
151
	MulmatFullPrec(ctx Context, t2 Tensor) Tensor
Michael Yang's avatar
llama4  
Michael Yang committed
152
	MulmatID(ctx Context, t2, ids Tensor) Tensor
153
	AddID(ctx Context, t2, ids Tensor) Tensor
Michael Yang's avatar
Michael Yang committed
154
155

	Softmax(ctx Context) Tensor
156
	L2Norm(ctx Context, eps float32) Tensor
Michael Yang's avatar
Michael Yang committed
157
158
159
	LayerNorm(ctx Context, weight, bias Tensor, eps float32) Tensor
	RMSNorm(ctx Context, weight Tensor, eps float32) Tensor
	Scale(ctx Context, s float64) Tensor
160
	SumRows(ctx Context) Tensor
Michael Yang's avatar
Michael Yang committed
161

Michael Yang's avatar
Michael Yang committed
162
	AvgPool2D(ctx Context, k, s int, p float32) Tensor
Michael Yang's avatar
Michael Yang committed
163
	Conv2D(ctx Context, weight Tensor, s0, s1, p0, p1, d0, d1 int) Tensor
164
	Conv3D(ctx Context, weight Tensor, c, s0, s1, s2, p0, p1, p2, d0, d1, d2 int) Tensor
Michael Yang's avatar
Michael Yang committed
165

166
	IM2Col(ctx Context, weight Tensor, s0, s1, p0, p1, d0, d1 int) Tensor
Michael Yang's avatar
Michael Yang committed
167

168
169
	Sin(ctx Context) Tensor
	Cos(ctx Context) Tensor
Michael Yang's avatar
Michael Yang committed
170
	Tanh(ctx Context) Tensor
171
172
173
	GELU(ctx Context, up ...Tensor) Tensor
	SILU(ctx Context, up ...Tensor) Tensor
	RELU(ctx Context, up ...Tensor) Tensor
Michael Yang's avatar
llama4  
Michael Yang committed
174
	Sigmoid(ctx Context) Tensor
175
176
177

	// AlphaLimitSILU is a variant of SILU that clamps the input to the range [-limit, limit]
	SILUAlphaLimit(ctx Context, up Tensor, alpha, limit float32) Tensor
Michael Yang's avatar
Michael Yang committed
178

179
	Reshape(ctx Context, shape ...int) Tensor
Michael Yang's avatar
Michael Yang committed
180
181
	View(ctx Context, offset int, shape ...int) Tensor
	Permute(ctx Context, shape ...int) Tensor
Michael Yang's avatar
Michael Yang committed
182
	Contiguous(ctx Context, shape ...int) Tensor
Michael Yang's avatar
Michael Yang committed
183
	Set(ctx Context, t2 Tensor, offset int, strides ...int) Tensor
Michael Yang's avatar
Michael Yang committed
184

185
	Pad(ctx Context, shape ...int) Tensor
Michael Yang's avatar
Michael Yang committed
186
187

	Stack(ctx Context, dim int, s ...Tensor) Tensor
188
189
190

	// Repeat repeats the tensor n times along dimension dim
	Repeat(ctx Context, dim, n int) Tensor
Michael Yang's avatar
Michael Yang committed
191
192
193
	Concat(ctx Context, t2 Tensor, dim int) Tensor
	Rows(ctx Context, t2 Tensor) Tensor
	Copy(ctx Context, t2 Tensor) Tensor
194
	Duplicate(ctx Context) Tensor
Michael Yang's avatar
llama4  
Michael Yang committed
195
196

	TopK(ctx Context, k int) Tensor
197
	Argsort(ctx Context) Tensor
Michael Yang's avatar
Michael Yang committed
198
199
200
201
202
203
	Mean(ctx Context) Tensor
	Variance(ctx Context) Tensor
	Stddev(ctx Context) Tensor
	Sqr(ctx Context) Tensor
	Sqrt(ctx Context) Tensor
	Clamp(ctx Context, min, max float32) Tensor
Michael Yang's avatar
Michael Yang committed
204
205
}

206
207
208
209
// ScaledDotProductAttention implements a fused attention
// operation equivalent to following code on a tensor named
// query:
//
210
211
212
213
// query = query.Permute(ctx, 0, 2, 1, 3)
// key = key.Permute(ctx, 0, 2, 1, 3)
// value = value.Permute(ctx, 1, 2, 0, 3).Contiguous(ctx)
//
214
215
216
217
218
219
220
221
222
223
224
225
226
// kq := key.MulmatFullPrec(ctx, query)
//
// kq = kq.Scale(ctx, scale)
//
//	if mask != nil {
//		kq = kq.Add(ctx, mask)
//	}
//
// kq = kq.Softmax(ctx)
//
// kqv := value.Mulmat(ctx, kq)
// return kqv.Permute(ctx, 0, 2, 1, 3).Contiguous(ctx)
type ScaledDotProductAttention interface {
227
	ScaledDotProductAttention(ctx Context, key, value, mask, sinks Tensor, scale float64) Tensor
228
229
}

Michael Yang's avatar
Michael Yang committed
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
type number interface {
	~int | ~int8 | ~int16 | ~int32 | ~int64 |
		~uint | ~uint8 | ~uint16 | ~uint32 | ~uint64 |
		~float32 | ~float64 |
		~complex64 | ~complex128
}

func mul[T number](s ...T) T {
	p := T(1)
	for _, v := range s {
		p *= v
	}

	return p
}

246
type DumpOptions func(*dumpOptions)
Michael Yang's avatar
Michael Yang committed
247

248
249
250
251
252
// DumpWithPrecision sets the number of decimal places to print. Applies to float32 and float64.
func DumpWithPrecision(n int) DumpOptions {
	return func(opts *dumpOptions) {
		opts.Precision = n
	}
Michael Yang's avatar
Michael Yang committed
253
254
}

255
256
257
258
259
260
261
262
263
264
265
266
267
268
269
270
271
272
273
274
275
276
277
278
279
280
281
282
// DumpWithThreshold sets the threshold for printing the entire tensor. If the number of elements
// is less than or equal to this value, the entire tensor will be printed. Otherwise, only the
// beginning and end of each dimension will be printed.
func DumpWithThreshold(n int) DumpOptions {
	return func(opts *dumpOptions) {
		opts.Threshold = n
	}
}

// DumpWithEdgeItems sets the number of elements to print at the beginning and end of each dimension.
func DumpWithEdgeItems(n int) DumpOptions {
	return func(opts *dumpOptions) {
		opts.EdgeItems = n
	}
}

type dumpOptions struct {
	Precision, Threshold, EdgeItems int
}

func Dump(ctx Context, t Tensor, optsFuncs ...DumpOptions) string {
	opts := dumpOptions{Precision: 4, Threshold: 1000, EdgeItems: 3}
	for _, optsFunc := range optsFuncs {
		optsFunc(&opts)
	}

	if mul(t.Shape()...) <= opts.Threshold {
		opts.EdgeItems = math.MaxInt
Michael Yang's avatar
Michael Yang committed
283
284
285
286
	}

	switch t.DType() {
	case DTypeF32:
287
288
		return dump[[]float32](ctx, t, opts.EdgeItems, func(f float32) string {
			return strconv.FormatFloat(float64(f), 'f', opts.Precision, 32)
Jesse Gross's avatar
Jesse Gross committed
289
		})
290
	case DTypeF16, DTypeQ80, DTypeQ40:
291
		f32 := ctx.Input().Empty(DTypeF32, t.Shape()...)
Jesse Gross's avatar
Jesse Gross committed
292
		f32 = t.Copy(ctx, f32)
293
294
		return dump[[]float32](ctx, f32, opts.EdgeItems, func(f float32) string {
			return strconv.FormatFloat(float64(f), 'f', opts.Precision, 32)
Michael Yang's avatar
Michael Yang committed
295
296
		})
	case DTypeI32:
297
		return dump[[]int32](ctx, t, opts.EdgeItems, func(i int32) string {
Michael Yang's avatar
Michael Yang committed
298
299
300
301
302
303
304
			return strconv.FormatInt(int64(i), 10)
		})
	default:
		return "<unsupported>"
	}
}

Jesse Gross's avatar
Jesse Gross committed
305
306
func dump[S ~[]E, E number](ctx Context, t Tensor, items int, fn func(E) string) string {
	if t.Bytes() == nil {
307
		ctx.Forward(t).Compute(t)
Michael Yang's avatar
Michael Yang committed
308
309
310
311
312
313
314
315
	}

	s := make(S, mul(t.Shape()...))
	if err := binary.Read(bytes.NewBuffer(t.Bytes()), binary.LittleEndian, &s); err != nil {
		panic(err)
	}

	shape := t.Shape()
Michael Yang's avatar
Michael Yang committed
316
	slices.Reverse(shape)
Michael Yang's avatar
Michael Yang committed
317
318

	var sb strings.Builder
319
320
	var f func([]int, int)
	f = func(dims []int, stride int) {
Michael Yang's avatar
Michael Yang committed
321
		prefix := strings.Repeat(" ", len(shape)-len(dims)+1)
Michael Yang's avatar
Michael Yang committed
322
323
		sb.WriteString("[")
		defer func() { sb.WriteString("]") }()
324
		for i := 0; i < dims[0]; i++ {
Michael Yang's avatar
Michael Yang committed
325
			if i >= items && i < dims[0]-items {
Michael Yang's avatar
Michael Yang committed
326
				sb.WriteString("..., ")
Michael Yang's avatar
Michael Yang committed
327
328
329
330
331
332
333
334
335
336
337
338
339
340
				// skip to next printable element
				skip := dims[0] - 2*items
				if len(dims) > 1 {
					stride += mul(append(dims[1:], skip)...)
					fmt.Fprint(&sb, strings.Repeat("\n", len(dims)-1), prefix)
				}
				i += skip - 1
			} else if len(dims) > 1 {
				f(dims[1:], stride)
				stride += mul(dims[1:]...)
				if i < dims[0]-1 {
					fmt.Fprint(&sb, ",", strings.Repeat("\n", len(dims)-1), prefix)
				}
			} else {
Michael Yang's avatar
Michael Yang committed
341
342
343
344
345
346
				text := fn(s[stride+i])
				if len(text) > 0 && text[0] != '-' {
					sb.WriteString(" ")
				}

				sb.WriteString(text)
Michael Yang's avatar
Michael Yang committed
347
				if i < dims[0]-1 {
Michael Yang's avatar
Michael Yang committed
348
					sb.WriteString(", ")
Michael Yang's avatar
Michael Yang committed
349
350
351
352
353
354
355
356
357
358
359
360
				}
			}
		}
	}
	f(shape, 0)

	return sb.String()
}

type DType int

const (
Jesse Gross's avatar
Jesse Gross committed
361
362
363
	DTypeOther DType = iota
	DTypeF32
	DTypeF16
364
365
	DTypeQ80
	DTypeQ40
Michael Yang's avatar
Michael Yang committed
366
	DTypeI32
Michael Yang's avatar
Michael Yang committed
367
	DTypeMXFP4
Michael Yang's avatar
Michael Yang committed
368
)