Files
ollama37/model/models/mistral3/model.go
Shang Chieh Tseng ef14fb5b26 Sync with upstream ollama/ollama and restore Tesla K80 (compute 3.7) support
This commit represents a complete rework after pulling the latest changes from
official ollama/ollama repository and re-applying Tesla K80 compatibility patches.

## Key Changes

### CUDA Compute Capability 3.7 Support (Tesla K80)
- Added sm_37 (compute 3.7) to CMAKE_CUDA_ARCHITECTURES in CMakeLists.txt
- Updated CMakePresets.json to include compute 3.7 in "CUDA 11" preset
- Using 37-virtual (PTX with JIT compilation) for maximum compatibility

### Legacy Toolchain Compatibility
- **NVIDIA Driver**: 470.256.02 (last version supporting Kepler/K80)
- **CUDA Version**: 11.4.4 (last CUDA 11.x supporting compute 3.7)
- **GCC Version**: 10.5.0 (required by CUDA 11.4 host_config.h)

### CPU Architecture Trade-offs
Due to GCC 10.5 limitation, sacrificed newer CPU optimizations:
- Alderlake CPU variant enabled WITHOUT AVX_VNNI (requires GCC 11+)
- Still supports: SSE4.2, AVX, F16C, AVX2, BMI2, FMA
- Performance impact: ~3-7% on newer CPUs (acceptable for K80 compatibility)

### Build System Updates
- Modified ml/backend/ggml/ggml/src/ggml-cuda/CMakeLists.txt for compute 3.7
- Added -Wno-deprecated-gpu-targets flag to suppress warnings
- Updated ml/backend/ggml/ggml/src/CMakeLists.txt for Alderlake without AVX_VNNI

### Upstream Sync
Merged latest llama.cpp changes including:
- Enhanced KV cache management with ISWA and hybrid memory support
- Improved multi-modal support (mtmd framework)
- New model architectures (Gemma3, Llama4, Qwen3, etc.)
- GPU backend improvements for CUDA, Metal, and ROCm
- Updated quantization support and GGUF format handling

### Documentation
- Updated CLAUDE.md with comprehensive build instructions
- Documented toolchain constraints and CPU architecture trade-offs
- Removed outdated CI/CD workflows (tesla-k80-*.yml)
- Cleaned up temporary development artifacts

## Rationale

This fork maintains Tesla K80 GPU support (compute 3.7) which was dropped in
official Ollama due to legacy driver/CUDA requirements. The toolchain constraint
creates a deadlock:
- K80 → Driver 470 → CUDA 11.4 → GCC 10 → No AVX_VNNI

We accept the loss of cutting-edge CPU optimizations to enable running modern
LLMs on legacy but still capable Tesla K80 hardware (12GB VRAM per GPU).

🤖 Generated with [Claude Code](https://claude.com/claude-code)

Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-05 14:03:05 +08:00

169 lines
5.6 KiB
Go

package mistral3
import (
"bytes"
"image"
"slices"
"github.com/ollama/ollama/fs"
"github.com/ollama/ollama/kvcache"
"github.com/ollama/ollama/ml"
"github.com/ollama/ollama/ml/nn"
"github.com/ollama/ollama/model"
"github.com/ollama/ollama/model/input"
)
type Model struct {
model.Base
model.BytePairEncoding
*TextModel
*VisionModel `gguf:"v"`
*MultiModalProjector `gguf:"mm"`
ImageProcessor
}
// Implement MultimodalProcessor interface
var _ model.MultimodalProcessor = (*Model)(nil)
// Implement TextProcessor interface
var _ model.TextProcessor = (*Model)(nil)
func New(c fs.Config) (model.Model, error) {
m := &Model{
BytePairEncoding: model.NewBytePairEncoding(
&model.Vocabulary{
Values: c.Strings("tokenizer.ggml.tokens"),
Types: c.Ints("tokenizer.ggml.token_type"),
Merges: c.Strings("tokenizer.ggml.merges"),
AddBOS: c.Bool("tokenizer.ggml.add_bos_token", true),
BOS: []int32{int32(c.Uint("tokenizer.ggml.bos_token_id"))},
AddEOS: c.Bool("tokenizer.ggml.add_eos_token", false),
EOS: append(
[]int32{int32(c.Uint("tokenizer.ggml.eos_token_id"))},
c.Ints("tokenizer.ggml.eos_token_ids")...,
),
},
`[^\r\n\p{L}\p{N}]?[\p{Lu}\p{Lt}\p{Lm}\p{Lo}\p{M}]*[\p{Ll}\p{Lm}\p{Lo}\p{M}]+|[^\r\n\p{L}\p{N}]?[\p{Lu}\p{Lt}\p{Lm}\p{Lo}\p{M}]+[\p{Ll}\p{Lm}\p{Lo}\p{M}]*|\p{N}| ?[^\s\p{L}\p{N}]+[\r\n/]*|\s*[\r\n]+|\s+(?!\S)|\s+`,
),
TextModel: newTextModel(c),
VisionModel: newVisionModel(c),
ImageProcessor: newImageProcessor(c),
MultiModalProjector: newMultiModalProjector(c),
}
m.Cache = kvcache.NewCausalCache(m.TextModel.Shift)
return m, nil
}
type PatchMerger struct {
MergingLayer *nn.Linear `gguf:"merging_layer"`
}
func (pm *PatchMerger) Forward(ctx ml.Context, visionOutputs ml.Tensor, size image.Point, spatialMergeSize int) ml.Tensor {
d := visionOutputs.Dim(0)
imageGrid := visionOutputs.Permute(ctx, 1, 0, 2, 3).Contiguous(ctx).Reshape(ctx, size.X, size.Y, d)
kernel := ctx.Input().Empty(ml.DTypeF32, spatialMergeSize, spatialMergeSize, d)
patches := kernel.IM2Col(ctx, imageGrid, spatialMergeSize, spatialMergeSize, 0, 0, 1, 1)
reshaped := patches.Reshape(ctx, d*spatialMergeSize*spatialMergeSize, patches.Dim(1)*patches.Dim(2))
return pm.MergingLayer.Forward(ctx, reshaped)
}
type MultiModalProjector struct {
Norm *nn.RMSNorm `gguf:"norm"`
Linear1 *nn.Linear `gguf:"linear_1"`
Linear2 *nn.Linear `gguf:"linear_2"`
PatchMerger *PatchMerger `gguf:"patch_merger"`
spatialMergeSize int
eps float32
patchSize int
}
func (p *MultiModalProjector) Forward(ctx ml.Context, visionOutputs ml.Tensor, size image.Point) (ml.Tensor, image.Point) {
visionOutputs = p.Norm.Forward(ctx, visionOutputs, p.eps)
patchSizes := image.Point{size.X / p.patchSize, size.Y / p.patchSize}
visionOutputs = p.PatchMerger.Forward(ctx, visionOutputs, patchSizes, p.spatialMergeSize)
visionOutputs = p.Linear1.Forward(ctx, visionOutputs)
visionOutputs = visionOutputs.GELU(ctx)
return p.Linear2.Forward(ctx, visionOutputs), image.Point{patchSizes.X / p.spatialMergeSize, patchSizes.Y / p.spatialMergeSize}
}
func newMultiModalProjector(c fs.Config) *MultiModalProjector {
return &MultiModalProjector{
spatialMergeSize: int(c.Uint("spatial_merge_size", 2)),
eps: c.Float("text_config.rms_norm_eps", 1e-5),
patchSize: int(c.Uint("vision.patch_size", 14)),
}
}
func (m *Model) EncodeMultimodal(ctx ml.Context, multimodalData []byte) ([]input.Multimodal, error) {
if len(m.VisionModel.Layers) == 0 {
return nil, model.ErrNoVisionModel
}
image, _, err := image.Decode(bytes.NewReader(multimodalData))
if err != nil {
return nil, err
}
f32s, size, err := m.ImageProcessor.ProcessImage(image)
if err != nil {
return nil, err
}
pixelValues := ctx.Input().FromFloats(f32s, size.X, size.Y, m.ImageProcessor.numChannels)
visionOutputs := m.VisionModel.Forward(ctx, pixelValues)
features, size := m.MultiModalProjector.Forward(ctx, visionOutputs, size)
// split into patches to be sent to the text transformer
rows := make([]input.Multimodal, size.Y)
for i := range rows {
rows[i].Tensor = features.View(ctx, features.Stride(1)*size.X*i, features.Dim(0), features.Stride(1), size.X)
}
return rows, nil
}
// PostTokenize arranges Mistral 3's inputs for the forward pass
// In Mistral 3 and Pixtral, the input patches are arranged as follows:
// [IMG]...[IMG][IMG_BREAK][IMG]...[IMG][IMG_BREAK][IMG]...[IMG][IMG_END]
// Each sequence of [IMG]...[IMG] is a set of patches of vision embeddings
// that can be processed together.
func (m *Model) PostTokenize(inputs []*input.Input) ([]*input.Input, error) {
var result []*input.Input
for _, inp := range inputs {
if len(inp.Multimodal) == 0 {
result = append(result, inp)
} else {
for i, row := range inp.Multimodal {
// [IMG]
result = append(result, &input.Input{Token: 10, Multimodal: []input.Multimodal{{Tensor: row.Tensor}}, MultimodalHash: inp.MultimodalHash, SameBatch: row.Tensor.Dim(1)})
result = append(result, slices.Repeat([]*input.Input{{Token: 10}}, row.Tensor.Dim(1)-1)...)
if i == len(inp.Multimodal)-1 {
// [IMG_END]
result = append(result, &input.Input{Token: 13})
} else {
// [IMG_BREAK]
result = append(result, &input.Input{Token: 12})
}
}
}
}
return result, nil
}
func (m *Model) Forward(ctx ml.Context, batch input.Batch) (ml.Tensor, error) {
positions := ctx.Input().FromInts(batch.Positions, len(batch.Positions))
return m.TextModel.Forward(ctx, batch.Inputs, positions, batch.Outputs, batch, m.Cache), nil
}
func init() {
model.Register("mistral3", New)
}