Files
LocalAI/core/backend/options.go
Richard Palethorpe 085fc53bbc fix(router): production-ready request router + auto-size batch for embedding/rerank (#10104)
* fix(router): score classifier production-readiness

Conversation trimming runs through the classifier model's chat template
and trims by exact token count, sized to the model's n_batch which is
now scaled to context so long probes can't crash the backend. Missing
chat_message templates are a hard error at router build time. Router-
facing factories (Embedder/Scorer/Reranker/TokenCounter) re-resolve
ModelConfig per call so a model installed post-startup doesn't bind a
stub Backend="" config and silently fall into the loader's auto-
iterate path.

New 'vector_store' backend trace recorded inside localVectorStore on
every Search/Insert — including the backend-load-failure path that
previously vanished into an xlog.Warn — with outcome tagging
(hit/miss/empty_store/backend_load_error/find_error/insert_error/ok).
Companion cleanup drops misleading similarity:0 and input_tokens_count:0
from non-hit and text-mode traces.

Gallery local-store-development aliases to 'local-store' so the master
image satisfies pkg/model.LocalStoreBackend lookups from the embedding
cache.

Misc: llama-cpp TokenizeString reads the correct 'prompt' JSON key
(the original bug); ModelTokenize nil-guard; non-fatal mitm proxy
startup; PII 'route_local' renamed to 'allow' with docs/UI in sync;
model-editor footer no longer eats the edit area on small screens;
several config-editor template/dropdown/section fixes.

Tests: e2e router specs (casual/code-hint + long-conversation trim),
vector_store trace specs, lazy-factory specs, gallery dev-alias
resolution, Playwright trace badge + scroll regression.

Assisted-by: Claude:claude-opus-4-7 [Claude Code]
Signed-off-by: Richard Palethorpe <io@richiejp.com>

* feat(backend): auto-size batch to context for embedding and rerank models

Embedding and rerank models pool over the whole input in a single physical batch (n_ubatch). With batch left at the 512 default, the backend rejects longer inputs with "input is too large to process", silently capping a large-context embedder (e.g. 8k/32k) at 512 tokens. Size n_batch to the context for these single-pass usecases, mirroring the existing FLAG_SCORE behaviour; an explicit batch: still wins.

Extracts EffectiveContextSize/EffectiveBatchSize from grpcModelOpts so the effective decode window has one home for other callers to reuse.

Adds an e2e-aio regression test that embeds a >512-token input. The AIO embedding model is switched to nomic-embed-text-v1.5 (2048 context) because the previous granite model was capped at 512 tokens and could not exercise the larger batch.

Assisted-by: claude-code:claude-opus-4-8 [Claude Code]
Signed-off-by: Richard Palethorpe <io@richiejp.com>

* fix(gallery): raise arch-router scoring output cap via parallel:64

Scoring decodes the whole prompt+candidate in a single llama_decode and
reads one logit row per candidate token. The vendored llama.cpp server
caps causal output rows at n_parallel, so the default of 1 aborts with
GGML_ASSERT(n_outputs_max <= cparams.n_outputs_max) on multi-token route
labels. Set options: [parallel:64] on both arch-router quant entries to
lift the cap; kv_unified (the grpc-server default) keeps the full context
per sequence, so this does not split the KV cache.

Assisted-by: claude-code:claude-opus-4-8 [Claude Code]
Signed-off-by: Richard Palethorpe <io@richiejp.com>

---------

Signed-off-by: Richard Palethorpe <io@richiejp.com>
2026-06-12 16:21:15 +02:00

368 lines
11 KiB
Go

package backend
import (
"encoding/json"
"fmt"
"math/rand/v2"
"os"
"path/filepath"
"strings"
"time"
"github.com/mudler/LocalAI/core/config"
"github.com/mudler/LocalAI/core/trace"
pb "github.com/mudler/LocalAI/pkg/grpc/proto"
"github.com/mudler/LocalAI/pkg/model"
"github.com/mudler/xlog"
)
// recordModelLoadFailure records a backend trace when model loading fails.
func recordModelLoadFailure(appConfig *config.ApplicationConfig, modelName, backend string, err error, data map[string]any) {
if !appConfig.EnableTracing {
return
}
trace.InitBackendTracingIfEnabled(appConfig.TracingMaxItems, appConfig.TracingMaxBodyBytes)
trace.RecordBackendTrace(trace.BackendTrace{
Timestamp: time.Now(),
Type: trace.BackendTraceModelLoad,
ModelName: modelName,
Backend: backend,
Summary: "Model load failed",
Error: err.Error(),
Data: data,
})
}
func ModelOptions(c config.ModelConfig, so *config.ApplicationConfig, opts ...model.Option) []model.Option {
defOpts := []model.Option{
model.WithBackendString(c.Backend),
model.WithModel(c.Model),
model.WithContext(so.Context),
model.WithModelID(c.ModelID()),
}
threads := 1
if c.Threads != nil {
threads = *c.Threads
}
if so.Threads != 0 {
threads = so.Threads
}
c.Threads = &threads
grpcOpts := grpcModelOpts(c, so.SystemState.Model.ModelsPath)
defOpts = append(defOpts, model.WithLoadGRPCLoadModelOpts(grpcOpts))
defOpts = append(defOpts, model.EnableParallelRequests)
if c.GRPC.Attempts != 0 {
defOpts = append(defOpts, model.WithGRPCAttempts(c.GRPC.Attempts))
}
if c.GRPC.AttemptsSleepTime != 0 {
defOpts = append(defOpts, model.WithGRPCAttemptsDelay(c.GRPC.AttemptsSleepTime))
}
for k, v := range so.ExternalGRPCBackends {
defOpts = append(defOpts, model.WithExternalBackend(k, v))
}
return append(defOpts, opts...)
}
func getSeed(c config.ModelConfig) int32 {
var seed int32 = config.RAND_SEED
if c.Seed != nil {
seed = int32(*c.Seed)
}
if seed == config.RAND_SEED {
seed = rand.Int32()
}
return seed
}
// DefaultContextSize and DefaultBatchSize are the backend's fallbacks when a
// model config leaves them unset. Exported so callers that must respect the
// effective decode window — notably the router's prompt trimmer — resolve the
// same numbers grpcModelOpts does instead of guessing.
const (
DefaultContextSize = 4096
DefaultBatchSize = 512
)
// EffectiveContextSize is the context window the backend will run with: the
// configured value, or DefaultContextSize when unset.
func EffectiveContextSize(c config.ModelConfig) int {
if c.ContextSize != nil {
return *c.ContextSize
}
return DefaultContextSize
}
// EffectiveBatchSize is the single-decode batch the backend will run with.
// Score, embedding and rerank all process the whole input in one pass: score
// decodes prompt+candidate (asserts n_tokens <= n_batch), and embedding/rerank
// pool over the full sequence in one physical batch (n_ubatch). So the batch
// is sized to the context — anything that fits the context fits one pass,
// avoiding both the GGML_ASSERT crash and the "input is too large to process"
// error. Explicit `batch:` always wins.
func EffectiveBatchSize(c config.ModelConfig) int {
if c.Batch != 0 {
return c.Batch
}
singlePass := c.HasUsecases(config.FLAG_SCORE) ||
c.HasUsecases(config.FLAG_EMBEDDINGS) ||
c.HasUsecases(config.FLAG_RERANK)
if ctx := EffectiveContextSize(c); singlePass && ctx > DefaultBatchSize {
return ctx
}
return DefaultBatchSize
}
func grpcModelOpts(c config.ModelConfig, modelPath string) *pb.ModelOptions {
ctxSize := EffectiveContextSize(c)
b := EffectiveBatchSize(c)
flashAttention := "auto"
if c.FlashAttention != nil {
flashAttention = *c.FlashAttention
}
f16 := false
if c.F16 != nil {
f16 = *c.F16
}
embeddings := false
if c.Embeddings != nil {
embeddings = *c.Embeddings
}
lowVRAM := false
if c.LowVRAM != nil {
lowVRAM = *c.LowVRAM
}
reranking := false
if c.Reranking != nil {
reranking = *c.Reranking
}
mmap := false
if c.MMap != nil {
mmap = *c.MMap
}
// Intel SYCL backend has issues with mmap enabled
// See: https://github.com/mudler/LocalAI/issues/9012
// Automatically disable mmap for Intel SYCL backends
if c.Backend != "" {
if strings.Contains(strings.ToLower(c.Backend), "intel") || strings.Contains(strings.ToLower(c.Backend), "sycl") {
mmap = false
xlog.Info("Auto-disabling mmap for Intel SYCL backend", "backend", c.Backend)
}
}
mmlock := false
if c.MMlock != nil {
mmlock = *c.MMlock
}
nGPULayers := 9999999
if c.NGPULayers != nil {
nGPULayers = *c.NGPULayers
}
triggers := make([]*pb.GrammarTrigger, 0)
for _, t := range c.FunctionsConfig.GrammarConfig.GrammarTriggers {
triggers = append(triggers, &pb.GrammarTrigger{
Word: t.Word,
})
}
engineArgsJSON := ""
if len(c.EngineArgs) > 0 {
buf, err := json.Marshal(c.EngineArgs)
if err != nil {
// ModelConfig.Validate() rejects unmarshalable engine_args at
// config load, so reaching here means the validator was bypassed.
// Silently dropping user-set options would change runtime behaviour
// without warning — fail loud instead.
panic(fmt.Sprintf("engine_args marshal failed for model %q: %v (Validate() should have caught this)", c.Model, err))
}
engineArgsJSON = string(buf)
}
opts := &pb.ModelOptions{
CUDA: c.CUDA || c.Diffusers.CUDA,
SchedulerType: c.Diffusers.SchedulerType,
GrammarTriggers: triggers,
PipelineType: c.Diffusers.PipelineType,
CFGScale: c.CFGScale,
LoraAdapter: c.LoraAdapter,
LoraScale: c.LoraScale,
LoraAdapters: c.LoraAdapters,
LoraScales: c.LoraScales,
F16Memory: f16,
LoraBase: c.LoraBase,
IMG2IMG: c.Diffusers.IMG2IMG,
CLIPModel: c.Diffusers.ClipModel,
CLIPSubfolder: c.Diffusers.ClipSubFolder,
Options: c.Options,
Overrides: c.Overrides,
EngineArgs: engineArgsJSON,
CLIPSkip: int32(c.Diffusers.ClipSkip),
ControlNet: c.Diffusers.ControlNet,
ContextSize: int32(ctxSize),
Seed: getSeed(c),
NBatch: int32(b),
NoMulMatQ: c.NoMulMatQ,
DraftModel: c.DraftModel,
AudioPath: c.AudioPath,
Quantization: c.Quantization,
LoadFormat: c.LoadFormat,
GPUMemoryUtilization: c.GPUMemoryUtilization,
TrustRemoteCode: c.TrustRemoteCode,
EnforceEager: c.EnforceEager,
SwapSpace: int32(c.SwapSpace),
MaxModelLen: int32(c.MaxModelLen),
TensorParallelSize: int32(c.TensorParallelSize),
DisableLogStatus: c.DisableLogStatus,
DType: c.DType,
// LimitMMPerPrompt vLLM
LimitImagePerPrompt: int32(c.LimitMMPerPrompt.LimitImagePerPrompt),
LimitVideoPerPrompt: int32(c.LimitMMPerPrompt.LimitVideoPerPrompt),
LimitAudioPerPrompt: int32(c.LimitMMPerPrompt.LimitAudioPerPrompt),
FlashAttention: flashAttention,
CacheTypeKey: c.CacheTypeK,
CacheTypeValue: c.CacheTypeV,
NoKVOffload: c.NoKVOffloading,
YarnExtFactor: c.YarnExtFactor,
YarnAttnFactor: c.YarnAttnFactor,
YarnBetaFast: c.YarnBetaFast,
YarnBetaSlow: c.YarnBetaSlow,
NGQA: c.NGQA,
RMSNormEps: c.RMSNormEps,
MLock: mmlock,
RopeFreqBase: c.RopeFreqBase,
RopeScaling: c.RopeScaling,
Type: c.ModelType,
RopeFreqScale: c.RopeFreqScale,
NUMA: c.NUMA,
Embeddings: embeddings,
Reranking: reranking,
LowVRAM: lowVRAM,
NGPULayers: int32(nGPULayers),
MMap: mmap,
MainGPU: c.MainGPU,
Threads: int32(*c.Threads),
TensorSplit: c.TensorSplit,
// RWKV
Tokenizer: c.Tokenizer,
}
if c.Backend == "cloud-proxy" {
opts.Proxy = &pb.ProxyOptions{
UpstreamUrl: c.Proxy.UpstreamURL,
Mode: c.Proxy.Mode,
Provider: c.Proxy.Provider,
ApiKeyEnv: c.Proxy.APIKeyEnv,
ApiKeyFile: c.Proxy.APIKeyFile,
UpstreamModel: c.Proxy.UpstreamModel,
RequestTimeoutSeconds: int32(c.Proxy.RequestTimeoutSeconds),
}
}
if c.MMProj != "" {
opts.MMProj = filepath.Join(modelPath, c.MMProj)
}
// Resolve draft_model against the models directory, mirroring the
// handling of parameters.model and mmproj. Always joining (without an
// IsAbs shortcut) prevents user-supplied configs from pointing the
// backend at arbitrary host files via an absolute path.
if c.DraftModel != "" {
opts.DraftModel = filepath.Join(modelPath, c.DraftModel)
}
return opts
}
func gRPCPredictOpts(c config.ModelConfig, modelPath string) *pb.PredictOptions {
promptCachePath := ""
if c.PromptCachePath != "" {
p := filepath.Join(modelPath, c.PromptCachePath)
err := os.MkdirAll(filepath.Dir(p), 0750)
if err == nil {
promptCachePath = p
} else {
xlog.Error("error creating prompt cache folder", "error", err, "promptCachePath", promptCachePath)
}
}
pbOpts := &pb.PredictOptions{
Temperature: float32(*c.Temperature),
TopP: float32(*c.TopP),
NDraft: c.NDraft,
TopK: int32(*c.TopK),
MinP: float32(*c.MinP),
Tokens: int32(*c.Maxtokens),
Threads: int32(*c.Threads),
PromptCacheAll: *c.PromptCacheAll,
PromptCacheRO: c.PromptCacheRO,
PromptCachePath: promptCachePath,
F16KV: *c.F16,
DebugMode: *c.Debug,
Grammar: c.Grammar,
NegativePromptScale: c.NegativePromptScale,
RopeFreqBase: c.RopeFreqBase,
RopeFreqScale: c.RopeFreqScale,
NegativePrompt: c.NegativePrompt,
Mirostat: int32(*c.LLMConfig.Mirostat),
MirostatETA: float32(*c.LLMConfig.MirostatETA),
MirostatTAU: float32(*c.LLMConfig.MirostatTAU),
Debug: *c.Debug,
StopPrompts: c.StopWords,
Repeat: int32(c.RepeatLastN),
FrequencyPenalty: float32(c.FrequencyPenalty),
PresencePenalty: float32(c.PresencePenalty),
Penalty: float32(c.RepeatPenalty),
NKeep: int32(c.Keep),
Batch: int32(c.Batch),
IgnoreEOS: c.IgnoreEOS,
Seed: getSeed(c),
MLock: *c.MMlock,
MMap: *c.MMap,
MainGPU: c.MainGPU,
TensorSplit: c.TensorSplit,
TailFreeSamplingZ: float32(*c.TFZ),
TypicalP: float32(*c.TypicalP),
}
metadata := map[string]string{}
if c.ReasoningConfig.DisableReasoning != nil {
if *c.ReasoningConfig.DisableReasoning {
metadata["enable_thinking"] = "false"
} else {
metadata["enable_thinking"] = "true"
}
}
// Forward the effective reasoning effort so the backend can pass it to the
// jinja chat template (chat_template_kwargs.reasoning_effort) — the lever
// models like gpt-oss / LFM2.5 actually read, distinct from enable_thinking.
if c.ReasoningEffort != "" {
metadata["reasoning_effort"] = c.ReasoningEffort
}
pbOpts.Metadata = metadata
// Logprobs and TopLogprobs are set by the caller if provided
return pbOpts
}