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ad0e30bca5
* refactor: move backends into the backends directory Signed-off-by: Ettore Di Giacinto <mudler@localai.io> * refactor: move main close to implementation for every backend Signed-off-by: Ettore Di Giacinto <mudler@localai.io> --------- Signed-off-by: Ettore Di Giacinto <mudler@localai.io>
258 lines
7.2 KiB
Go
258 lines
7.2 KiB
Go
package main
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// This is a wrapper to statisfy the GRPC service interface
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// It is meant to be used by the main executable that is the server for the specific backend type (falcon, gpt3, etc)
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import (
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"fmt"
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"path/filepath"
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"github.com/go-skynet/LocalAI/pkg/grpc/base"
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pb "github.com/go-skynet/LocalAI/pkg/grpc/proto"
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"github.com/go-skynet/go-llama.cpp"
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)
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type LLM struct {
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base.SingleThread
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llama *llama.LLama
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draftModel *llama.LLama
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}
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func (llm *LLM) Load(opts *pb.ModelOptions) error {
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ropeFreqBase := float32(10000)
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ropeFreqScale := float32(1)
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if opts.RopeFreqBase != 0 {
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ropeFreqBase = opts.RopeFreqBase
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}
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if opts.RopeFreqScale != 0 {
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ropeFreqScale = opts.RopeFreqScale
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}
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llamaOpts := []llama.ModelOption{
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llama.WithRopeFreqBase(ropeFreqBase),
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llama.WithRopeFreqScale(ropeFreqScale),
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}
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if opts.NoMulMatQ {
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llamaOpts = append(llamaOpts, llama.SetMulMatQ(false))
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}
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// Get base path of opts.ModelFile and use the same for lora (assume the same path)
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basePath := filepath.Dir(opts.ModelFile)
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if opts.LoraAdapter != "" {
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llamaOpts = append(llamaOpts, llama.SetLoraAdapter(filepath.Join(basePath, opts.LoraAdapter)))
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}
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if opts.LoraBase != "" {
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llamaOpts = append(llamaOpts, llama.SetLoraBase(filepath.Join(basePath, opts.LoraBase)))
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}
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if opts.ContextSize != 0 {
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llamaOpts = append(llamaOpts, llama.SetContext(int(opts.ContextSize)))
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}
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if opts.F16Memory {
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llamaOpts = append(llamaOpts, llama.EnableF16Memory)
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}
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if opts.Embeddings {
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llamaOpts = append(llamaOpts, llama.EnableEmbeddings)
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}
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if opts.NGPULayers != 0 {
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llamaOpts = append(llamaOpts, llama.SetGPULayers(int(opts.NGPULayers)))
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}
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llamaOpts = append(llamaOpts, llama.SetMMap(opts.MMap))
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llamaOpts = append(llamaOpts, llama.SetMainGPU(opts.MainGPU))
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llamaOpts = append(llamaOpts, llama.SetTensorSplit(opts.TensorSplit))
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if opts.NBatch != 0 {
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llamaOpts = append(llamaOpts, llama.SetNBatch(int(opts.NBatch)))
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} else {
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llamaOpts = append(llamaOpts, llama.SetNBatch(512))
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}
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if opts.NUMA {
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llamaOpts = append(llamaOpts, llama.EnableNUMA)
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}
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if opts.LowVRAM {
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llamaOpts = append(llamaOpts, llama.EnabelLowVRAM)
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}
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if opts.DraftModel != "" {
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// https://github.com/ggerganov/llama.cpp/blob/71ca2fad7d6c0ef95ef9944fb3a1a843e481f314/examples/speculative/speculative.cpp#L40
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llamaOpts = append(llamaOpts, llama.SetPerplexity(true))
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}
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model, err := llama.New(opts.ModelFile, llamaOpts...)
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if opts.DraftModel != "" {
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// opts.DraftModel is relative to opts.ModelFile, so we need to get the basepath of opts.ModelFile
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if !filepath.IsAbs(opts.DraftModel) {
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dir := filepath.Dir(opts.ModelFile)
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opts.DraftModel = filepath.Join(dir, opts.DraftModel)
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}
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draftModel, err := llama.New(opts.DraftModel, llamaOpts...)
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if err != nil {
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return err
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}
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llm.draftModel = draftModel
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}
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llm.llama = model
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return err
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}
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func buildPredictOptions(opts *pb.PredictOptions) []llama.PredictOption {
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ropeFreqBase := float32(10000)
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ropeFreqScale := float32(1)
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if opts.RopeFreqBase != 0 {
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ropeFreqBase = opts.RopeFreqBase
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}
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if opts.RopeFreqScale != 0 {
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ropeFreqScale = opts.RopeFreqScale
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}
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predictOptions := []llama.PredictOption{
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llama.SetTemperature(opts.Temperature),
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llama.SetTopP(opts.TopP),
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llama.SetTopK(int(opts.TopK)),
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llama.SetTokens(int(opts.Tokens)),
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llama.SetThreads(int(opts.Threads)),
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llama.WithGrammar(opts.Grammar),
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llama.SetRopeFreqBase(ropeFreqBase),
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llama.SetRopeFreqScale(ropeFreqScale),
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llama.SetNegativePromptScale(opts.NegativePromptScale),
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llama.SetNegativePrompt(opts.NegativePrompt),
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}
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if opts.PromptCacheAll {
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predictOptions = append(predictOptions, llama.EnablePromptCacheAll)
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}
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if opts.PromptCacheRO {
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predictOptions = append(predictOptions, llama.EnablePromptCacheRO)
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}
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// Expected absolute path
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if opts.PromptCachePath != "" {
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predictOptions = append(predictOptions, llama.SetPathPromptCache(opts.PromptCachePath))
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}
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if opts.Mirostat != 0 {
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predictOptions = append(predictOptions, llama.SetMirostat(int(opts.Mirostat)))
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}
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if opts.MirostatETA != 0 {
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predictOptions = append(predictOptions, llama.SetMirostatETA(opts.MirostatETA))
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}
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if opts.MirostatTAU != 0 {
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predictOptions = append(predictOptions, llama.SetMirostatTAU(opts.MirostatTAU))
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}
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if opts.Debug {
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predictOptions = append(predictOptions, llama.Debug)
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}
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predictOptions = append(predictOptions, llama.SetStopWords(opts.StopPrompts...))
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if opts.PresencePenalty != 0 {
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predictOptions = append(predictOptions, llama.SetPenalty(opts.PresencePenalty))
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}
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if opts.NKeep != 0 {
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predictOptions = append(predictOptions, llama.SetNKeep(int(opts.NKeep)))
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}
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if opts.Batch != 0 {
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predictOptions = append(predictOptions, llama.SetBatch(int(opts.Batch)))
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}
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if opts.F16KV {
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predictOptions = append(predictOptions, llama.EnableF16KV)
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}
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if opts.IgnoreEOS {
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predictOptions = append(predictOptions, llama.IgnoreEOS)
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}
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if opts.Seed != 0 {
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predictOptions = append(predictOptions, llama.SetSeed(int(opts.Seed)))
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}
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if opts.NDraft != 0 {
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predictOptions = append(predictOptions, llama.SetNDraft(int(opts.NDraft)))
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}
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//predictOptions = append(predictOptions, llama.SetLogitBias(c.Seed))
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predictOptions = append(predictOptions, llama.SetFrequencyPenalty(opts.FrequencyPenalty))
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predictOptions = append(predictOptions, llama.SetMlock(opts.MLock))
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predictOptions = append(predictOptions, llama.SetMemoryMap(opts.MMap))
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predictOptions = append(predictOptions, llama.SetPredictionMainGPU(opts.MainGPU))
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predictOptions = append(predictOptions, llama.SetPredictionTensorSplit(opts.TensorSplit))
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predictOptions = append(predictOptions, llama.SetTailFreeSamplingZ(opts.TailFreeSamplingZ))
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predictOptions = append(predictOptions, llama.SetTypicalP(opts.TypicalP))
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return predictOptions
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}
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func (llm *LLM) Predict(opts *pb.PredictOptions) (string, error) {
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if llm.draftModel != nil {
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return llm.llama.SpeculativeSampling(llm.draftModel, opts.Prompt, buildPredictOptions(opts)...)
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}
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return llm.llama.Predict(opts.Prompt, buildPredictOptions(opts)...)
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}
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func (llm *LLM) PredictStream(opts *pb.PredictOptions, results chan string) error {
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predictOptions := buildPredictOptions(opts)
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predictOptions = append(predictOptions, llama.SetTokenCallback(func(token string) bool {
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results <- token
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return true
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}))
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go func() {
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var err error
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if llm.draftModel != nil {
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_, err = llm.llama.SpeculativeSampling(llm.draftModel, opts.Prompt, buildPredictOptions(opts)...)
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} else {
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_, err = llm.llama.Predict(opts.Prompt, predictOptions...)
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}
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if err != nil {
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fmt.Println("err: ", err)
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}
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close(results)
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}()
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return nil
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}
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func (llm *LLM) Embeddings(opts *pb.PredictOptions) ([]float32, error) {
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predictOptions := buildPredictOptions(opts)
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if len(opts.EmbeddingTokens) > 0 {
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tokens := []int{}
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for _, t := range opts.EmbeddingTokens {
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tokens = append(tokens, int(t))
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}
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return llm.llama.TokenEmbeddings(tokens, predictOptions...)
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}
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return llm.llama.Embeddings(opts.Embeddings, predictOptions...)
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}
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func (llm *LLM) TokenizeString(opts *pb.PredictOptions) (pb.TokenizationResponse, error) {
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predictOptions := buildPredictOptions(opts)
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l, tokens, err := llm.llama.TokenizeString(opts.Prompt, predictOptions...)
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if err != nil {
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return pb.TokenizationResponse{}, err
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}
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return pb.TokenizationResponse{
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Length: l,
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Tokens: tokens,
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}, nil
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}
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