package llm import ( "context" "fmt" "log" "os" "runtime" "github.com/pbnjay/memory" "github.com/jmorganca/ollama/api" "github.com/jmorganca/ollama/format" "github.com/jmorganca/ollama/gpu" ) type LLM interface { Predict(context.Context, PredictOpts, func(PredictResult)) error Embedding(context.Context, string) ([]float64, error) Encode(context.Context, string) ([]int, error) Decode(context.Context, []int) (string, error) Close() } // Set to false on linux/windows if we are able to load the shim var ShimPresent = false func New(workDir, model string, adapters, projectors []string, opts api.Options) (LLM, error) { if _, err := os.Stat(model); err != nil { return nil, err } f, err := os.Open(model) if err != nil { return nil, err } defer f.Close() ggml, err := DecodeGGML(f) if err != nil { return nil, err } if runtime.GOOS == "darwin" { switch ggml.FileType() { case "F32", "Q5_0", "Q5_1", "Q8_0": if ggml.Name() != "gguf" && opts.NumGPU != 0 { // GGML Q8_0 do not support Metal API and will // cause the runner to segmentation fault so disable GPU log.Printf("WARNING: GPU disabled for F32, Q5_0, Q5_1, and Q8_0") opts.NumGPU = 0 } } var requiredMemory int64 var f16Multiplier int64 = 2 switch ggml.ModelType() { case "3B", "7B": requiredMemory = 8 * format.GigaByte case "13B": requiredMemory = 16 * format.GigaByte case "30B", "34B", "40B": requiredMemory = 32 * format.GigaByte case "65B", "70B": requiredMemory = 64 * format.GigaByte case "180B": requiredMemory = 128 * format.GigaByte f16Multiplier = 4 } systemMemory := int64(memory.TotalMemory()) if ggml.FileType() == "F16" && requiredMemory*f16Multiplier > systemMemory { return nil, fmt.Errorf("F16 model requires at least %s of total memory", format.HumanBytes(requiredMemory)) } else if requiredMemory > systemMemory { return nil, fmt.Errorf("model requires at least %s of total memory", format.HumanBytes(requiredMemory)) } } opts.NumGQA = 0 opts.RopeFrequencyBase = 0.0 opts.RopeFrequencyScale = 0.0 gpuInfo := gpu.GetGPUInfo() if gpuInfo.Driver == "ROCM" && ShimPresent { return newRocmShimExtServer(model, adapters, projectors, ggml.NumLayers(), opts) } else { // Rely on the built-in CUDA/Metal based server which will fall back to CPU return newLlamaExtServer(model, adapters, projectors, ggml.NumLayers(), opts) } } // Give any native cgo implementations an opportunity to initialize func Init(workdir string) error { return nativeInit(workdir) }