mirror of
https://github.com/ollama/ollama.git
synced 2025-11-11 17:37:11 +01:00
* TEMPORARY: Update the llama.cpp upstream to my fork's Granite Four branch
This will be redone once my branch is merged upstream in llama.cpp
* feat: Update all patches
There are a number that are no longer needed at all:
- 0003-embeddings: Embeddings entirely overhauled on master
- 0008-ensure-KV-cache-is-fully-defragmented: KV caching entirely
overhauled on master
- 0019-metal-add-mean-kernel-14267: Merged upstream
- 0020-CUDA-add-mean-operation-14313: Merged upstream
* feat: Sync llama.cpp and ggml
* fix: Update rsync-filter for all moved/new/removed files
* fix: Add files missing from sync
* fix: Update ggml rsync-filter for new ggml-cpu/arch subdirs
* fix: Add ggml files missing from sync
* fix: Narrow llama.cpp rsync-filter to not include mtmd main tool cpp files
* fix: Remove mtmd main cpp files
* fix: Add missing include in sampling_ext.cpp
* fix: Update llama.go to use mtmd instead of clip/llava
* fix: Add patch for mtmd_input_text
* chore: Ignore *.patched in the patch directory
* fix: Fix support for arch-specific ggml-cpu source files with new arrangement
In https://github.com/ggml-org/llama.cpp/pull/13892, all arch-specific
implementations were split out into a nested tree structure under
ggml-cpu/arch. This conflicts with standard CGO layout where all
arch-specific source files are expected to live in the same directory as
the parent go module and use suffixes based on GOOS and GOARCH. As such,
there were really two options for getting this to work:
1. Add a patch on top of the GGML sync to rearrange the files to match the
GO layout convention
2. Use CGO directives to conditionally include the nested source files in
the compilation units
This commit does (2) in order to minimize the set of changes needed on top
of the upstream file layout. To get this to work, there are two key things
needed:
1. In cpu.go, #cgo directives are added to explicitly set __${GOARCH}__ in
the preprocessor directives
2. In arch-impls.c|cpp, use an #ifdef | #elif defined | #endif chain to
explicitly include the .c|.cpp files for the given architecture from the
nested directory
* fix: Use mtmd_helper to correctly load the bitmap for the image
* fix: Apply patch for mtmd_text_input
* fix: Add missing stb to llama.cpp rsync-filter
* fix: Add sync'ed stb vendored header
* fix: Use c++17 and include vendor for go wrapper modules
* fix: Update patch 0015 for upstream implementation of uuid
* feat: Bump to the latest tip of the branch
* fix: Update patches for bump
* feat: Bump back to the cenral repo and point at the latest master
This includes granite 4 and a number of other model architectures!
* fix: Revert changes to ggml export GPU UUID patch
* fix: Add patch for GGML_VERSION and GGML_COMMIT constants
* feat: Sync all patched code
* build: Include cmake/common.cmake in ggml sync
* build: Add top-level include for GNUINstallDirs in CMakeLists.txt
This is used to populate CMAKE_INSTALL_BINDIR
* fix: Add a patch to avoid power throttling API on non-msvc windows builds
* fix: Sync patch changes for ggml-cpu.c
* feat: Bump llama.cpp to 4a4f42
This picks up support for Kimi K2 and PLaMO-2
* feat: Sync llama.cpp
* fix: Handle multi-chunk image encodings from mtmd
* fix: Re-number patches after merge with `main`
* feat: Bump to 41e78c in the makefile
* fix: Fix Solar and argsort/copy patches after bump
* fix: Remove Gemma3n CUDA Graphs patch
It was implemented upstream:
https://github.com/ggml-org/llama.cpp/pull/14741
* feat: Sync llama.cpp / ggml after latest bump
* build: Remove unnecessary CFLAGS definitions in cpu.go
* fix: Remove unnecessary additions in the rsync-filter
* fix: Remove unused vendored code for chat template parsing
* Revert "fix: Remove Gemma3n CUDA Graphs patch"
This reverts commit d724caced3.
* fix: Update 0020 CUDA Graphs for gemma3n to keep both llama.cpp and ollama fixes
https://github.com/ollama/ollama/pull/11195#issuecomment-3137312394
* fix: Sync ggml-cuda.cu after keeping both style cuda graph fixes for gemma3n
* unwind mxfp4 patch
Prepare to bump ggml with their impl for mxfp4
* bump
* fix windows build error
* Convert tensors at load time
Repack the mxfp4 tensors as ggmls kernels expect them to be.
* convert mlp bf16 to f32
* buffer the conversion better
* reshape earlier
* openai swiglu
* add ids
* split qkv, gate_up
* fix nested alt tags
* fast attention
* remove debug messages
* fix lint
* remove redundant test
* remap values only if source/target are different
* add back i32->i32 copy
* refactor cpu quants
* clean up vendor
* update patch instructions
* clean up patches
* remove webgpu
* update mem
* also handle gpt-oss
* revert convert changes
---------
Signed-off-by: Gabe Goodhart <ghart@us.ibm.com>
Co-authored-by: Gabe Goodhart <ghart@us.ibm.com>
Co-authored-by: Daniel Hiltgen <daniel@ollama.com>
705 lines
18 KiB
Go
705 lines
18 KiB
Go
package llama
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/*
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#cgo CFLAGS: -std=c11
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#cgo windows CFLAGS: -Wno-dll-attribute-on-redeclaration
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#cgo CXXFLAGS: -std=c++17
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#cgo CPPFLAGS: -I${SRCDIR}/llama.cpp/include
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#cgo CPPFLAGS: -I${SRCDIR}/llama.cpp/common
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#cgo CPPFLAGS: -I${SRCDIR}/llama.cpp/vendor
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#cgo CPPFLAGS: -I${SRCDIR}/llama.cpp/tools/mtmd
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#cgo CPPFLAGS: -I${SRCDIR}/llama.cpp/src
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#cgo CPPFLAGS: -I${SRCDIR}/../ml/backend/ggml/ggml/include
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#include <stdlib.h>
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#include "ggml.h"
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#include "llama.h"
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#include "mtmd.h"
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#include "mtmd-helper.h"
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#include "gguf.h"
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#include "sampling_ext.h"
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extern bool llamaProgressCallback(float progress, void *user_data);
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extern void llamaLog(int level, char* text, void* user_data);
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*/
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import "C"
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import (
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"context"
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_ "embed"
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"errors"
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"fmt"
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"log/slog"
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"os"
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"runtime"
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"runtime/cgo"
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"slices"
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"strings"
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"sync"
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"unsafe"
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_ "github.com/ollama/ollama/llama/llama.cpp/common"
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_ "github.com/ollama/ollama/llama/llama.cpp/src"
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_ "github.com/ollama/ollama/llama/llama.cpp/tools/mtmd"
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ggml "github.com/ollama/ollama/ml/backend/ggml/ggml/src"
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)
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func init() {
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C.llama_log_set(C.ggml_log_callback(C.llamaLog), nil)
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}
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//export llamaLog
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func llamaLog(level C.int, text *C.char, _ unsafe.Pointer) {
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// slog levels zeros INFO and are multiples of 4
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if slog.Default().Enabled(context.TODO(), slog.Level(int(level-C.GGML_LOG_LEVEL_INFO)*4)) {
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fmt.Fprint(os.Stderr, C.GoString(text))
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}
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}
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func BackendInit() {
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ggml.OnceLoad()
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C.llama_backend_init()
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}
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func GetModelArch(modelPath string) (string, error) {
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mp := C.CString(modelPath)
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defer C.free(unsafe.Pointer(mp))
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gguf_ctx := C.gguf_init_from_file(mp, C.struct_gguf_init_params{no_alloc: true, ctx: (**C.struct_ggml_context)(C.NULL)})
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if gguf_ctx == nil {
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return "", errors.New("unable to load model file")
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}
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defer C.gguf_free(gguf_ctx)
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key := C.CString("general.architecture")
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defer C.free(unsafe.Pointer(key))
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arch_index := C.gguf_find_key(gguf_ctx, key)
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if int(arch_index) < 0 {
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return "", errors.New("unknown model architecture")
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}
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arch := C.gguf_get_val_str(gguf_ctx, arch_index)
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return C.GoString(arch), nil
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}
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type ContextParams struct {
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c C.struct_llama_context_params
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}
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func NewContextParams(numCtx int, batchSize int, numSeqMax int, threads int, flashAttention bool, kvCacheType string) ContextParams {
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params := C.llama_context_default_params()
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params.n_ctx = C.uint(numCtx)
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params.n_batch = C.uint(batchSize)
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params.n_seq_max = C.uint(numSeqMax)
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params.n_threads = C.int(threads)
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params.n_threads_batch = params.n_threads
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params.embeddings = C.bool(true)
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params.flash_attn = C.bool(flashAttention)
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params.type_k = kvCacheTypeFromStr(strings.ToLower(kvCacheType))
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params.type_v = kvCacheTypeFromStr(strings.ToLower(kvCacheType))
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return ContextParams{c: params}
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}
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// kvCacheTypeFromStr converts a string cache type to the corresponding GGML type value
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func kvCacheTypeFromStr(s string) C.enum_ggml_type {
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if s == "" {
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return C.GGML_TYPE_F16
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}
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switch s {
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case "q8_0":
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return C.GGML_TYPE_Q8_0
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case "q4_0":
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return C.GGML_TYPE_Q4_0
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default:
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return C.GGML_TYPE_F16
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}
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}
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type Context struct {
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c *C.struct_llama_context
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numThreads int
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}
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var ErrKvCacheFull = errors.New("could not find a kv cache slot")
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func (c *Context) Decode(batch *Batch) error {
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// Positive return values does not mean a fatal error, but rather a warning.
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// 0 - success
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// 1 - could not find a KV slot for the batch (try reducing the size of the batch or increase the context)
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// < 0 - error
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code := int(C.llama_decode(c.c, batch.c))
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if code < 0 {
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return fmt.Errorf("llama_decode failed with code %d", code)
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}
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if code > 0 {
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return ErrKvCacheFull
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}
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return nil
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}
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func (c *Context) Model() *Model {
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return &Model{c: C.llama_get_model(c.c)}
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}
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func (c *Context) KvCacheSeqAdd(seqId int, p0 int, p1 int, delta int) {
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C.llama_memory_seq_add(C.llama_get_memory(c.c), C.int(seqId), C.int(p0), C.int(p1), C.int(delta))
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}
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func (c *Context) KvCacheSeqRm(seqId int, p0 int, p1 int) bool {
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return bool(C.llama_memory_seq_rm(C.llama_get_memory(c.c), C.int(seqId), C.int(p0), C.int(p1)))
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}
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func (c *Context) KvCacheSeqCp(srcSeqId int, dstSeqId int, p0 int, p1 int) {
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C.llama_memory_seq_cp(C.llama_get_memory(c.c), C.int(srcSeqId), C.int(dstSeqId), C.int(p0), C.int(p1))
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}
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func (c *Context) KvCacheClear() {
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C.llama_memory_clear(C.llama_get_memory(c.c), true)
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}
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func (c *Context) KvCacheCanShift() bool {
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return bool(C.llama_memory_can_shift(C.llama_get_memory(c.c)))
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}
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// Get the embeddings for a sequence id
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func (c *Context) GetEmbeddingsSeq(seqId int) []float32 {
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e := unsafe.Pointer(C.llama_get_embeddings_seq(c.c, C.int(seqId)))
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if e == nil {
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return nil
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}
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embeddings := make([]float32, c.Model().NEmbd())
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_ = copy(embeddings, unsafe.Slice((*float32)(e), c.Model().NEmbd()))
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return embeddings
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}
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func (c *Context) GetEmbeddingsIth(i int) []float32 {
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e := unsafe.Pointer(C.llama_get_embeddings_ith(c.c, C.int32_t(i)))
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if e == nil {
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return nil
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}
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embeddings := make([]float32, c.Model().NEmbd())
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_ = copy(embeddings, unsafe.Slice((*float32)(e), c.Model().NEmbd()))
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return embeddings
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}
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type ModelParams struct {
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NumGpuLayers int
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MainGpu int
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UseMmap bool
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TensorSplit []float32
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Progress func(float32)
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VocabOnly bool
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}
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//export llamaProgressCallback
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func llamaProgressCallback(progress C.float, userData unsafe.Pointer) C.bool {
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handle := *(*cgo.Handle)(userData)
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callback := handle.Value().(func(float32))
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callback(float32(progress))
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return true
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}
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func LoadModelFromFile(modelPath string, params ModelParams) (*Model, error) {
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cparams := C.llama_model_default_params()
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cparams.n_gpu_layers = C.int(params.NumGpuLayers)
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cparams.main_gpu = C.int32_t(params.MainGpu)
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cparams.use_mmap = C.bool(params.UseMmap)
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cparams.vocab_only = C.bool(params.VocabOnly)
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if len(params.TensorSplit) > 0 {
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tensorSplitData := ¶ms.TensorSplit[0]
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var tensorSplitPin runtime.Pinner
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tensorSplitPin.Pin(tensorSplitData)
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defer tensorSplitPin.Unpin()
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cparams.tensor_split = (*C.float)(unsafe.Pointer(tensorSplitData))
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}
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if params.Progress != nil {
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handle := cgo.NewHandle(params.Progress)
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defer handle.Delete()
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var handlePin runtime.Pinner
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handlePin.Pin(&handle)
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defer handlePin.Unpin()
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cparams.progress_callback = C.llama_progress_callback(C.llamaProgressCallback)
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cparams.progress_callback_user_data = unsafe.Pointer(&handle)
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}
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m := Model{c: C.llama_model_load_from_file(C.CString(modelPath), cparams)}
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if m.c == nil {
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return nil, fmt.Errorf("unable to load model: %s", modelPath)
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}
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return &m, nil
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}
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func FreeModel(model *Model) {
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C.llama_model_free(model.c)
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}
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func NewContextWithModel(model *Model, params ContextParams) (*Context, error) {
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c := Context{
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c: C.llama_init_from_model(model.c, params.c),
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numThreads: int(params.c.n_threads),
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}
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if c.c == nil {
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return nil, errors.New("unable to create llama context")
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}
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return &c, nil
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}
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func (m *Model) NumVocab() int {
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return int(C.llama_vocab_n_tokens(m.Vocab()))
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}
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func (m *Model) TokenIsEog(token int) bool {
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return bool(C.llama_vocab_is_eog(m.Vocab(), C.llama_token(token)))
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}
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func (m *Model) AddBOSToken() bool {
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return bool(C.llama_vocab_get_add_bos(m.Vocab()))
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}
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func (m *Model) ApplyLoraFromFile(context *Context, loraPath string, scale float32, threads int) error {
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cLoraPath := C.CString(loraPath)
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defer C.free(unsafe.Pointer(cLoraPath))
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loraAdapter := C.llama_adapter_lora_init(m.c, cLoraPath)
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if loraAdapter == nil {
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return errors.New("unable to load lora")
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}
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err := -1
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if loraAdapter != nil {
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err = int(C.llama_set_adapter_lora(context.c, loraAdapter, C.float(scale)))
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}
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if err != 0 {
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return errors.New("error applying lora from file")
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}
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return nil
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}
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func (m *Model) Vocab() *C.struct_llama_vocab {
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return C.llama_model_get_vocab(m.c)
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}
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type Batch struct {
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c C.struct_llama_batch
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batchSize int
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maxSeq int
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embedSize int
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}
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// Creates a new batch for either word tokens or image embeddings (if embedSize is non-zero).
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// Batches cannot contain both types at the same time. batchSize is the maximum number of entries
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// that can be added per sequence
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func NewBatch(batchSize int, maxSeq int, embedSize int) (*Batch, error) {
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b := Batch{
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c: C.llama_batch_init(C.int(batchSize*maxSeq), C.int(embedSize), C.int(maxSeq)),
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batchSize: batchSize,
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maxSeq: maxSeq,
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embedSize: embedSize,
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}
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// Check to see if any of the allocations in llama_batch_init() failed
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nilPointer := (embedSize == 0 && b.c.token == nil) || (embedSize != 0 && b.c.embd == nil) ||
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b.c.pos == nil || b.c.n_seq_id == nil || b.c.seq_id == nil || b.c.logits == nil ||
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slices.Contains(unsafe.Slice(b.c.seq_id, b.allocSize()), nil)
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if nilPointer {
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C.llama_batch_free(b.c)
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return nil, fmt.Errorf("unable to allocate batch (batchSize=%v maxSeq=%v embedSize=%v)", batchSize, maxSeq, embedSize)
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}
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return &b, nil
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}
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func (b *Batch) Size() int {
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return b.batchSize
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}
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func (b *Batch) allocSize() int {
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return b.batchSize * b.maxSeq
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}
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func (b *Batch) NumTokens() int {
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return int(b.c.n_tokens)
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}
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func (b *Batch) IsEmbedding() bool {
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return b.embedSize != 0
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}
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// Add adds either a token or an image embedding to the batch depending on the type
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// when the batch was initialized. The other argument will be ignored. Adds to the
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// batch with the given position for the given sequence ids, and optionally instructs
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// to include logits.
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func (b *Batch) Add(token int, embed []float32, pos int, logits bool, seqIds ...int) {
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if !b.IsEmbedding() {
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unsafe.Slice(b.c.token, b.allocSize())[b.c.n_tokens] = C.llama_token(token)
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} else {
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copy(unsafe.Slice((*float32)(b.c.embd), b.allocSize()*b.embedSize)[int(b.c.n_tokens)*b.embedSize:], embed)
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}
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unsafe.Slice(b.c.pos, b.allocSize())[b.c.n_tokens] = C.llama_pos(pos)
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unsafe.Slice(b.c.n_seq_id, b.allocSize())[b.c.n_tokens] = C.int(len(seqIds))
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for i, s := range seqIds {
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unsafe.Slice((unsafe.Slice(b.c.seq_id, b.allocSize())[b.c.n_tokens]), C.int(len(seqIds)))[i] = C.int32_t(s)
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}
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if logits {
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unsafe.Slice(b.c.logits, b.allocSize())[b.c.n_tokens] = 1
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} else {
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unsafe.Slice(b.c.logits, b.allocSize())[b.c.n_tokens] = 0
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}
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b.c.n_tokens += 1
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}
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func (b *Batch) Clear() {
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b.c.n_tokens = 0
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}
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func (b *Batch) Free() {
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b.batchSize = 0
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C.llama_batch_free(b.c)
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}
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type Model struct {
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c *C.struct_llama_model
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}
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func (m *Model) TokenToPiece(token int) string {
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tokenLen := 12
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buf := make([]byte, tokenLen)
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tokenLen = int(C.llama_token_to_piece(
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m.Vocab(),
|
|
C.int32_t(token),
|
|
(*C.char)(unsafe.Pointer(&buf[0])),
|
|
C.int32_t(tokenLen),
|
|
C.int32_t(0),
|
|
C.bool(true),
|
|
))
|
|
if tokenLen < 0 {
|
|
tokenLen = -tokenLen
|
|
|
|
buf = make([]byte, tokenLen)
|
|
C.llama_token_to_piece(
|
|
m.Vocab(),
|
|
C.int32_t(token),
|
|
(*C.char)(unsafe.Pointer(&buf[0])),
|
|
C.int32_t(tokenLen),
|
|
C.int32_t(0),
|
|
C.bool(true),
|
|
)
|
|
}
|
|
return strings.TrimRight(string(buf), "\x00")
|
|
}
|
|
|
|
func (m *Model) Tokenize(text string, addSpecial bool, parseSpecial bool) ([]int, error) {
|
|
maxTokens := len(text) + 2
|
|
cTokens := make([]C.llama_token, maxTokens)
|
|
cText := C.CString(text)
|
|
defer C.free(unsafe.Pointer(cText))
|
|
|
|
result := C.llama_tokenize(
|
|
m.Vocab(),
|
|
cText,
|
|
C.int32_t(len(text)),
|
|
&cTokens[0],
|
|
C.int32_t(maxTokens),
|
|
C.bool(addSpecial),
|
|
C.bool(parseSpecial),
|
|
)
|
|
|
|
// if the result is negative, reallocate and retry with the correct buffer size
|
|
if result < 0 {
|
|
maxTokens = int(-result)
|
|
cTokens = make([]C.llama_token, maxTokens)
|
|
result = C.llama_tokenize(
|
|
m.Vocab(),
|
|
cText,
|
|
C.int32_t(len(text)),
|
|
&cTokens[0],
|
|
C.int32_t(maxTokens),
|
|
C.bool(addSpecial),
|
|
C.bool(parseSpecial),
|
|
)
|
|
if result < 0 {
|
|
return nil, fmt.Errorf("tokenization failed, required %d tokens", -result)
|
|
}
|
|
}
|
|
|
|
tokens := make([]int, result)
|
|
for i := range result {
|
|
tokens[i] = int(cTokens[i])
|
|
}
|
|
|
|
return tokens, nil
|
|
}
|
|
|
|
func (m *Model) NEmbd() int {
|
|
return int(C.llama_model_n_embd(m.c))
|
|
}
|
|
|
|
// vision processing
|
|
type MtmdContext struct {
|
|
c *C.struct_mtmd_context
|
|
}
|
|
|
|
func NewMtmdContext(llamaContext *Context, modelPath string) (*MtmdContext, error) {
|
|
mp := C.CString(modelPath)
|
|
defer C.free(unsafe.Pointer(mp))
|
|
// TODO: Support non-default params
|
|
cp := C.mtmd_context_params_default()
|
|
|
|
// NOTE: The model and projector embedding lengths are checked during init
|
|
c := C.mtmd_init_from_file(mp, C.llama_get_model(llamaContext.c), cp)
|
|
if c == nil {
|
|
return nil, fmt.Errorf("unable to load mmtd model: %v", modelPath)
|
|
}
|
|
|
|
return &MtmdContext{c: c}, nil
|
|
}
|
|
|
|
func (c *MtmdContext) Free() {
|
|
C.mtmd_free(c.c)
|
|
}
|
|
|
|
func (c *MtmdContext) NewEmbed(llamaContext *Context, data []byte) ([][]float32, error) {
|
|
// Initialize the input chunks pointer
|
|
ic := C.mtmd_input_chunks_init()
|
|
defer C.mtmd_input_chunks_free(ic)
|
|
|
|
// Initialize an empty text prompt so we can tokenize
|
|
it := C.mtmd_input_text_init(C.mtmd_default_marker(), true, true)
|
|
defer C.mtmd_input_text_free(it)
|
|
|
|
// Initialize a bitmap with the image data
|
|
bm := C.mtmd_helper_bitmap_init_from_buf(c.c, (*C.uchar)(unsafe.Pointer(&data[0])), C.size_t(len(data)))
|
|
defer C.mtmd_bitmap_free(bm)
|
|
|
|
// Tokenize the image
|
|
if C.int32_t(0) != C.mtmd_tokenize(c.c, ic, it, &bm, 1) {
|
|
return nil, errors.New("unable to tokenize mtmd embedding from image")
|
|
}
|
|
nChunks := C.mtmd_input_chunks_size(ic)
|
|
numEmbed := llamaContext.Model().NEmbd()
|
|
lastChunkSize := 0
|
|
for i := range int(nChunks) {
|
|
chunk := C.mtmd_input_chunks_get(ic, C.size_t(i))
|
|
numTokens := int(C.mtmd_input_chunk_get_n_tokens(chunk))
|
|
lastChunkSize = numTokens
|
|
|
|
// Encode the chunk
|
|
if C.int32_t(0) != C.mtmd_encode_chunk(c.c, chunk) {
|
|
return nil, errors.New("unable to encode mtmd image chunk")
|
|
}
|
|
}
|
|
|
|
// Get the embeddings
|
|
embed := make([][]float32, lastChunkSize)
|
|
embd := C.mtmd_get_output_embd(c.c)
|
|
if nil == embd {
|
|
return nil, errors.New("failed to get image embedding")
|
|
}
|
|
|
|
// Extend the embedding array for each token
|
|
s := unsafe.Slice((*float32)(embd), numEmbed*lastChunkSize)
|
|
rows := make([]float32, len(s))
|
|
copy(rows, s)
|
|
for i := range lastChunkSize {
|
|
embed[i] = rows[i*numEmbed : (i+1)*numEmbed]
|
|
}
|
|
|
|
return embed, nil
|
|
}
|
|
|
|
func (c *Context) Synchronize() {
|
|
C.llama_synchronize(c.c)
|
|
}
|
|
|
|
// sampling
|
|
// TODO: this is a temporary wrapper to allow calling C++ code from CGo
|
|
type SamplingContext struct {
|
|
c *C.struct_common_sampler
|
|
}
|
|
|
|
type SamplingParams struct {
|
|
TopK int
|
|
TopP float32
|
|
MinP float32
|
|
TypicalP float32
|
|
Temp float32
|
|
RepeatLastN int
|
|
PenaltyRepeat float32
|
|
PenaltyFreq float32
|
|
PenaltyPresent float32
|
|
PenalizeNl bool
|
|
Seed uint32
|
|
Grammar string
|
|
}
|
|
|
|
func NewSamplingContext(model *Model, params SamplingParams) (*SamplingContext, error) {
|
|
var cparams C.struct_common_sampler_cparams
|
|
cparams.top_k = C.int32_t(params.TopK)
|
|
cparams.top_p = C.float(params.TopP)
|
|
cparams.min_p = C.float(params.MinP)
|
|
cparams.typical_p = C.float(params.TypicalP)
|
|
cparams.temp = C.float(params.Temp)
|
|
cparams.penalty_last_n = C.int32_t(params.RepeatLastN)
|
|
cparams.penalty_repeat = C.float(params.PenaltyRepeat)
|
|
cparams.penalty_freq = C.float(params.PenaltyFreq)
|
|
cparams.penalty_present = C.float(params.PenaltyPresent)
|
|
cparams.seed = C.uint32_t(params.Seed)
|
|
|
|
grammar := C.CString(params.Grammar)
|
|
defer C.free(unsafe.Pointer(grammar))
|
|
|
|
cparams.grammar = grammar
|
|
context := &SamplingContext{c: C.common_sampler_cinit(model.c, &cparams)}
|
|
if context.c == nil {
|
|
return nil, errors.New("unable to create sampling context")
|
|
}
|
|
|
|
runtime.SetFinalizer(context, func(s *SamplingContext) { C.common_sampler_cfree(s.c) })
|
|
|
|
return context, nil
|
|
}
|
|
|
|
func (s *SamplingContext) Reset() {
|
|
C.common_sampler_creset(s.c)
|
|
}
|
|
|
|
func (s *SamplingContext) Sample(llamaContext *Context, idx int) int {
|
|
return int(C.common_sampler_csample(s.c, llamaContext.c, C.int(idx)))
|
|
}
|
|
|
|
func (s *SamplingContext) Accept(id int, applyGrammar bool) {
|
|
C.common_sampler_caccept(s.c, C.llama_token(id), C.bool(applyGrammar))
|
|
}
|
|
|
|
// SchemaToGrammar converts the provided JSON schema to a grammar. It returns
|
|
// nil if the provided schema is invalid JSON or an invalid JSON schema.
|
|
func SchemaToGrammar(schema []byte) []byte {
|
|
cStr := C.CString(string(schema))
|
|
defer C.free(unsafe.Pointer(cStr))
|
|
|
|
// Allocate buffer for grammar based on schema length but with upper bound
|
|
maxLen := max(32768, min(1024*1024, len(schema)*4))
|
|
buf := make([]byte, maxLen)
|
|
|
|
// Call C function to convert schema to grammar
|
|
n := C.schema_to_grammar(cStr, (*C.char)(unsafe.Pointer(&buf[0])), C.size_t(maxLen))
|
|
if n == 0 {
|
|
// preserve nil
|
|
return nil
|
|
}
|
|
return buf[:n]
|
|
}
|
|
|
|
type TokenData struct {
|
|
ID int32
|
|
Logit float32
|
|
}
|
|
|
|
type Grammar struct {
|
|
c *C.struct_llama_grammar
|
|
mu sync.Mutex
|
|
}
|
|
|
|
func NewGrammar(grammar string, vocabIds []uint32, vocabValues []string, eogTokens []int32) *Grammar {
|
|
cGrammar := C.CString(grammar)
|
|
defer C.free(unsafe.Pointer(cGrammar))
|
|
|
|
cTokens := make([]C.uint32_t, len(vocabIds))
|
|
for i, token := range vocabIds {
|
|
cTokens[i] = C.uint32_t(token)
|
|
}
|
|
|
|
cPieces := make([]*C.char, len(vocabValues))
|
|
for i, piece := range vocabValues {
|
|
cPieces[i] = C.CString(piece)
|
|
defer C.free(unsafe.Pointer(cPieces[i]))
|
|
}
|
|
|
|
cEogTokens := make([]C.uint32_t, len(eogTokens))
|
|
for i, token := range eogTokens {
|
|
cEogTokens[i] = C.uint32_t(token)
|
|
}
|
|
|
|
g := C.grammar_init(cGrammar, unsafe.SliceData(cTokens), C.size_t(len(cTokens)), unsafe.SliceData(cPieces), unsafe.SliceData(cEogTokens), C.size_t(len(cEogTokens)))
|
|
if g == nil {
|
|
return nil
|
|
}
|
|
|
|
return &Grammar{c: g}
|
|
}
|
|
|
|
func (g *Grammar) Free() {
|
|
g.mu.Lock()
|
|
defer g.mu.Unlock()
|
|
if g.c != nil {
|
|
C.grammar_free(g.c)
|
|
g.c = nil
|
|
}
|
|
}
|
|
|
|
func (g *Grammar) Apply(tokens []TokenData) {
|
|
g.mu.Lock()
|
|
defer g.mu.Unlock()
|
|
|
|
if g.c == nil {
|
|
return
|
|
}
|
|
|
|
tds := make([]C.struct_llama_token_data, len(tokens))
|
|
for i, token := range tokens {
|
|
tds[i] = C.struct_llama_token_data{
|
|
id: C.int32_t(token.ID),
|
|
logit: C.float(token.Logit),
|
|
p: C.float(0.0),
|
|
}
|
|
}
|
|
tda := &C.llama_token_data_array{
|
|
data: (*C.struct_llama_token_data)(unsafe.Pointer(&tds[0])),
|
|
size: C.size_t(len(tokens)),
|
|
selected: C.int64_t(-1),
|
|
sorted: C.bool(false),
|
|
}
|
|
var pinner runtime.Pinner
|
|
pinner.Pin(&tds[0])
|
|
defer pinner.Unpin()
|
|
|
|
C.grammar_apply(g.c, tda)
|
|
for i := range tokens {
|
|
tokens[i].Logit = float32(tds[i].logit)
|
|
}
|
|
}
|
|
|
|
func (g *Grammar) Accept(token int32) {
|
|
g.mu.Lock()
|
|
defer g.mu.Unlock()
|
|
|
|
// Check if grammar was freed
|
|
if g.c == nil {
|
|
return
|
|
}
|
|
|
|
C.grammar_accept(g.c, C.llama_token(token))
|
|
}
|