Files
LocalAI/Makefile
Ettore Di Giacinto d67623230f feat(vllm): parity with llama.cpp backend (#9328)
* fix(schema): serialize ToolCallID and Reasoning in Messages.ToProto

The ToProto conversion was dropping tool_call_id and reasoning_content
even though both proto and Go fields existed, breaking multi-turn tool
calling and reasoning passthrough to backends.

* refactor(config): introduce backend hook system and migrate llama-cpp defaults

Adds RegisterBackendHook/runBackendHooks so each backend can register
default-filling functions that run during ModelConfig.SetDefaults().

Migrates the existing GGUF guessing logic into hooks_llamacpp.go,
registered for both 'llama-cpp' and the empty backend (auto-detect).
Removes the old guesser.go shim.

* feat(config): add vLLM parser defaults hook and importer auto-detection

Introduces parser_defaults.json mapping model families to vLLM
tool_parser/reasoning_parser names, with longest-pattern-first matching.

The vllmDefaults hook auto-fills tool_parser and reasoning_parser
options at load time for known families, while the VLLMImporter writes
the same values into generated YAML so users can review and edit them.

Adds tests covering MatchParserDefaults, hook registration via
SetDefaults, and the user-override behavior.

* feat(vllm): wire native tool/reasoning parsers + chat deltas + logprobs

- Use vLLM's ToolParserManager/ReasoningParserManager to extract structured
  output (tool calls, reasoning content) instead of reimplementing parsing
- Convert proto Messages to dicts and pass tools to apply_chat_template
- Emit ChatDelta with content/reasoning_content/tool_calls in Reply
- Extract prompt_tokens, completion_tokens, and logprobs from output
- Replace boolean GuidedDecoding with proper GuidedDecodingParams from Grammar
- Add TokenizeString and Free RPC methods
- Fix missing `time` import used by load_video()

* feat(vllm): CPU support + shared utils + vllm-omni feature parity

- Split vllm install per acceleration: move generic `vllm` out of
  requirements-after.txt into per-profile after files (cublas12, hipblas,
  intel) and add CPU wheel URL for cpu-after.txt
- requirements-cpu.txt now pulls torch==2.7.0+cpu from PyTorch CPU index
- backend/index.yaml: register cpu-vllm / cpu-vllm-development variants
- New backend/python/common/vllm_utils.py: shared parse_options,
  messages_to_dicts, setup_parsers helpers (used by both vllm backends)
- vllm-omni: replace hardcoded chat template with tokenizer.apply_chat_template,
  wire native parsers via shared utils, emit ChatDelta with token counts,
  add TokenizeString and Free RPCs, detect CPU and set VLLM_TARGET_DEVICE
- Add test_cpu_inference.py: standalone script to validate CPU build with
  a small model (Qwen2.5-0.5B-Instruct)

* fix(vllm): CPU build compatibility with vllm 0.14.1

Validated end-to-end on CPU with Qwen2.5-0.5B-Instruct (LoadModel, Predict,
TokenizeString, Free all working).

- requirements-cpu-after.txt: pin vllm to 0.14.1+cpu (pre-built wheel from
  GitHub releases) for x86_64 and aarch64. vllm 0.14.1 is the newest CPU
  wheel whose torch dependency resolves against published PyTorch builds
  (torch==2.9.1+cpu). Later vllm CPU wheels currently require
  torch==2.10.0+cpu which is only available on the PyTorch test channel
  with incompatible torchvision.
- requirements-cpu.txt: bump torch to 2.9.1+cpu, add torchvision/torchaudio
  so uv resolves them consistently from the PyTorch CPU index.
- install.sh: add --index-strategy=unsafe-best-match for CPU builds so uv
  can mix the PyTorch index and PyPI for transitive deps (matches the
  existing intel profile behaviour).
- backend.py LoadModel: vllm >= 0.14 removed AsyncLLMEngine.get_model_config
  so the old code path errored out with AttributeError on model load.
  Switch to the new get_tokenizer()/tokenizer accessor with a fallback
  to building the tokenizer directly from request.Model.

* fix(vllm): tool parser constructor compat + e2e tool calling test

Concrete vLLM tool parsers override the abstract base's __init__ and
drop the tools kwarg (e.g. Hermes2ProToolParser only takes tokenizer).
Instantiating with tools= raised TypeError which was silently caught,
leaving chat_deltas.tool_calls empty.

Retry the constructor without the tools kwarg on TypeError — tools
aren't required by these parsers since extract_tool_calls finds tool
syntax in the raw model output directly.

Validated with Qwen/Qwen2.5-0.5B-Instruct + hermes parser on CPU:
the backend correctly returns ToolCallDelta{name='get_weather',
arguments='{"location": "Paris, France"}'} in ChatDelta.

test_tool_calls.py is a standalone smoke test that spawns the gRPC
backend, sends a chat completion with tools, and asserts the response
contains a structured tool call.

* ci(backend): build cpu-vllm container image

Add the cpu-vllm variant to the backend container build matrix so the
image registered in backend/index.yaml (cpu-vllm / cpu-vllm-development)
is actually produced by CI.

Follows the same pattern as the other CPU python backends
(cpu-diffusers, cpu-chatterbox, etc.) with build-type='' and no CUDA.
backend_pr.yml auto-picks this up via its matrix filter from backend.yml.

* test(e2e-backends): add tools capability + HF model name support

Extends tests/e2e-backends to cover backends that:
- Resolve HuggingFace model ids natively (vllm, vllm-omni) instead of
  loading a local file: BACKEND_TEST_MODEL_NAME is passed verbatim as
  ModelOptions.Model with no download/ModelFile.
- Parse tool calls into ChatDelta.tool_calls: new "tools" capability
  sends a Predict with a get_weather function definition and asserts
  the Reply contains a matching ToolCallDelta. Uses UseTokenizerTemplate
  with OpenAI-style Messages so the backend can wire tools into the
  model's chat template.
- Need backend-specific Options[]: BACKEND_TEST_OPTIONS lets a test set
  e.g. "tool_parser:hermes,reasoning_parser:qwen3" at LoadModel time.

Adds make target test-extra-backend-vllm that:
- docker-build-vllm
- loads Qwen/Qwen2.5-0.5B-Instruct
- runs health,load,predict,stream,tools with tool_parser:hermes

Drops backend/python/vllm/test_{cpu_inference,tool_calls}.py — those
standalone scripts were scaffolding used while bringing up the Python
backend; the e2e-backends harness now covers the same ground uniformly
alongside llama-cpp and ik-llama-cpp.

* ci(test-extra): run vllm e2e tests on CPU

Adds tests-vllm-grpc to the test-extra workflow, mirroring the
llama-cpp and ik-llama-cpp gRPC jobs. Triggers when files under
backend/python/vllm/ change (or on run-all), builds the local-ai
vllm container image, and runs the tests/e2e-backends harness with
BACKEND_TEST_MODEL_NAME=Qwen/Qwen2.5-0.5B-Instruct, tool_parser:hermes,
and the tools capability enabled.

Uses ubuntu-latest (no GPU) — vllm runs on CPU via the cpu-vllm
wheel we pinned in requirements-cpu-after.txt. Frees disk space
before the build since the docker image + torch + vllm wheel is
sizeable.

* fix(vllm): build from source on CI to avoid SIGILL on prebuilt wheel

The prebuilt vllm 0.14.1+cpu wheel from GitHub releases is compiled with
SIMD instructions (AVX-512 VNNI/BF16 or AMX-BF16) that not every CPU
supports. GitHub Actions ubuntu-latest runners SIGILL when vllm spawns
the model_executor.models.registry subprocess for introspection, so
LoadModel never reaches the actual inference path.

- install.sh: when FROM_SOURCE=true on a CPU build, temporarily hide
  requirements-cpu-after.txt so installRequirements installs the base
  deps + torch CPU without pulling the prebuilt wheel, then clone vllm
  and compile it with VLLM_TARGET_DEVICE=cpu. The resulting binaries
  target the host's actual CPU.
- backend/Dockerfile.python: accept a FROM_SOURCE build-arg and expose
  it as an ENV so install.sh sees it during `make`.
- Makefile docker-build-backend: forward FROM_SOURCE as --build-arg
  when set, so backends that need source builds can opt in.
- Makefile test-extra-backend-vllm: call docker-build-vllm via a
  recursive $(MAKE) invocation so FROM_SOURCE flows through.
- .github/workflows/test-extra.yml: set FROM_SOURCE=true on the
  tests-vllm-grpc job. Slower but reliable — the prebuilt wheel only
  works on hosts that share the build-time SIMD baseline.

Answers 'did you test locally?': yes, end-to-end on my local machine
with the prebuilt wheel (CPU supports AVX-512 VNNI). The CI runner CPU
gap was not covered locally — this commit plugs that gap.

* ci(vllm): use bigger-runner instead of source build

The prebuilt vllm 0.14.1+cpu wheel requires SIMD instructions (AVX-512
VNNI/BF16) that stock ubuntu-latest GitHub runners don't support —
vllm.model_executor.models.registry SIGILLs on import during LoadModel.

Source compilation works but takes 30-40 minutes per CI run, which is
too slow for an e2e smoke test. Instead, switch tests-vllm-grpc to the
bigger-runner self-hosted label (already used by backend.yml for the
llama-cpp CUDA build) — that hardware has the required SIMD baseline
and the prebuilt wheel runs cleanly.

FROM_SOURCE=true is kept as an opt-in escape hatch:
- install.sh still has the CPU source-build path for hosts that need it
- backend/Dockerfile.python still declares the ARG + ENV
- Makefile docker-build-backend still forwards the build-arg when set
Default CI path uses the fast prebuilt wheel; source build can be
re-enabled by exporting FROM_SOURCE=true in the environment.

* ci(vllm): install make + build deps on bigger-runner

bigger-runner is a bare self-hosted runner used by backend.yml for
docker image builds — it has docker but not the usual ubuntu-latest
toolchain. The make-based test target needs make, build-essential
(cgo in 'go test'), and curl/unzip (the Makefile protoc target
downloads protoc from github releases).

protoc-gen-go and protoc-gen-go-grpc come via 'go install' in the
install-go-tools target, which setup-go makes possible.

* ci(vllm): install libnuma1 + libgomp1 on bigger-runner

The vllm 0.14.1+cpu wheel ships a _C C++ extension that dlopens
libnuma.so.1 at import time. When the runner host doesn't have it,
the extension silently fails to register its torch ops, so
EngineCore crashes on init_device with:

  AttributeError: '_OpNamespace' '_C_utils' object has no attribute
    'init_cpu_threads_env'

Also add libgomp1 (OpenMP runtime, used by torch CPU kernels) to be
safe on stripped-down runners.

* feat(vllm): bundle libnuma/libgomp via package.sh

The vllm CPU wheel ships a _C extension that dlopens libnuma.so.1 at
import time; torch's CPU kernels in turn use libgomp.so.1 (OpenMP).
Without these on the host, vllm._C silently fails to register its
torch ops and EngineCore crashes with:

  AttributeError: '_OpNamespace' '_C_utils' object has no attribute
    'init_cpu_threads_env'

Rather than asking every user to install libnuma1/libgomp1 on their
host (or every LocalAI base image to ship them), bundle them into
the backend image itself — same pattern fish-speech and the GPU libs
already use. libbackend.sh adds ${EDIR}/lib to LD_LIBRARY_PATH at
run time so the bundled copies are picked up automatically.

- backend/python/vllm/package.sh (new): copies libnuma.so.1 and
  libgomp.so.1 from the builder's multilib paths into ${BACKEND}/lib,
  preserving soname symlinks. Runs during Dockerfile.python's
  'Run backend-specific packaging' step (which already invokes
  package.sh if present).
- backend/Dockerfile.python: install libnuma1 + libgomp1 in the
  builder stage so package.sh has something to copy (the Ubuntu
  base image otherwise only has libgomp in the gcc dep chain).
- test-extra.yml: drop the workaround that installed these libs on
  the runner host — with the backend image self-contained, the
  runner no longer needs them, and the test now exercises the
  packaging path end-to-end the way a production host would.

* ci(vllm): disable tests-vllm-grpc job (heterogeneous runners)

Both ubuntu-latest and bigger-runner have inconsistent CPU baselines:
some instances support the AVX-512 VNNI/BF16 instructions the prebuilt
vllm 0.14.1+cpu wheel was compiled with, others SIGILL on import of
vllm.model_executor.models.registry. The libnuma packaging fix doesn't
help when the wheel itself can't be loaded.

FROM_SOURCE=true compiles vllm against the actual host CPU and works
everywhere, but takes 30-50 minutes per run — too slow for a smoke
test on every PR.

Comment out the job for now. The test itself is intact and passes
locally; run it via 'make test-extra-backend-vllm' on a host with the
required SIMD baseline. Re-enable when:
  - we have a self-hosted runner label with guaranteed AVX-512 VNNI/BF16, or
  - vllm publishes a CPU wheel with a wider baseline, or
  - we set up a docker layer cache that makes FROM_SOURCE acceptable

The detect-changes vllm output, the test harness changes (tests/
e2e-backends + tools cap), the make target (test-extra-backend-vllm),
the package.sh and the Dockerfile/install.sh plumbing all stay in
place.
2026-04-13 11:00:29 +02:00

808 lines
33 KiB
Makefile

# Disable parallel execution for backend builds
.NOTPARALLEL: backends/diffusers backends/llama-cpp backends/outetts backends/piper backends/stablediffusion-ggml backends/whisper backends/faster-whisper backends/silero-vad backends/local-store backends/huggingface backends/rfdetr backends/kitten-tts backends/kokoro backends/chatterbox backends/llama-cpp-darwin backends/neutts build-darwin-python-backend build-darwin-go-backend backends/mlx backends/diffuser-darwin backends/mlx-vlm backends/mlx-audio backends/mlx-distributed backends/stablediffusion-ggml-darwin backends/vllm backends/vllm-omni backends/moonshine backends/pocket-tts backends/qwen-tts backends/faster-qwen3-tts backends/qwen-asr backends/nemo backends/voxcpm backends/whisperx backends/ace-step backends/acestep-cpp backends/fish-speech backends/voxtral backends/opus backends/trl backends/llama-cpp-quantization backends/kokoros backends/sam3-cpp backends/qwen3-tts-cpp
GOCMD=go
GOTEST=$(GOCMD) test
GOVET=$(GOCMD) vet
BINARY_NAME=local-ai
LAUNCHER_BINARY_NAME=local-ai-launcher
UBUNTU_VERSION?=2404
UBUNTU_CODENAME?=noble
GORELEASER?=
export BUILD_TYPE?=
export CUDA_MAJOR_VERSION?=13
export CUDA_MINOR_VERSION?=0
GO_TAGS?=
BUILD_ID?=
NATIVE?=false
TEST_DIR=/tmp/test
TEST_FLAKES?=5
RANDOM := $(shell bash -c 'echo $$RANDOM')
VERSION?=$(shell git describe --always --tags || echo "dev" )
# go tool nm ./local-ai | grep Commit
LD_FLAGS?=-s -w
override LD_FLAGS += -X "github.com/mudler/LocalAI/internal.Version=$(VERSION)"
override LD_FLAGS += -X "github.com/mudler/LocalAI/internal.Commit=$(shell git rev-parse HEAD)"
OPTIONAL_TARGETS?=
export OS := $(shell uname -s)
ARCH := $(shell uname -m)
GREEN := $(shell tput -Txterm setaf 2)
YELLOW := $(shell tput -Txterm setaf 3)
WHITE := $(shell tput -Txterm setaf 7)
CYAN := $(shell tput -Txterm setaf 6)
RESET := $(shell tput -Txterm sgr0)
# Default Docker bridge IP
E2E_BRIDGE_IP?=172.17.0.1
ifndef UNAME_S
UNAME_S := $(shell uname -s)
endif
ifeq ($(OS),Darwin)
ifeq ($(OSX_SIGNING_IDENTITY),)
OSX_SIGNING_IDENTITY := $(shell security find-identity -v -p codesigning | grep '"' | head -n 1 | sed -E 's/.*"(.*)"/\1/')
endif
endif
# check if goreleaser exists
ifeq (, $(shell which goreleaser))
GORELEASER=curl -sfL https://goreleaser.com/static/run | bash -s --
else
GORELEASER=$(shell which goreleaser)
endif
TEST_PATHS?=./api/... ./pkg/... ./core/...
.PHONY: all test build vendor
all: help
## GENERIC
rebuild: ## Rebuilds the project
$(GOCMD) clean -cache
$(MAKE) build
clean: ## Remove build related file
$(GOCMD) clean -cache
rm -f prepare
rm -rf $(BINARY_NAME)
rm -rf release/
$(MAKE) protogen-clean
rmdir pkg/grpc/proto || true
clean-tests:
rm -rf test-models
rm -rf test-dir
## Install Go tools
install-go-tools:
go install google.golang.org/grpc/cmd/protoc-gen-go-grpc@1958fcbe2ca8bd93af633f11e97d44e567e945af
go install google.golang.org/protobuf/cmd/protoc-gen-go@v1.34.2
## React UI:
react-ui:
ifneq ($(wildcard core/http/react-ui/dist),)
@echo "react-ui dist already exists, skipping build"
else
cd core/http/react-ui && npm install && npm run build
endif
react-ui-docker:
docker run --entrypoint /bin/bash -v $(CURDIR):/app:z oven/bun:1 \
-c "cd /app/core/http/react-ui && bun install && bun run build"
core/http/react-ui/dist: react-ui
## Build:
build: protogen-go generate install-go-tools core/http/react-ui/dist ## Build the project
$(info ${GREEN}I local-ai build info:${RESET})
$(info ${GREEN}I BUILD_TYPE: ${YELLOW}$(BUILD_TYPE)${RESET})
$(info ${GREEN}I GO_TAGS: ${YELLOW}$(GO_TAGS)${RESET})
$(info ${GREEN}I LD_FLAGS: ${YELLOW}$(LD_FLAGS)${RESET})
$(info ${GREEN}I UPX: ${YELLOW}$(UPX)${RESET})
rm -rf $(BINARY_NAME) || true
CGO_LDFLAGS="$(CGO_LDFLAGS)" $(GOCMD) build -ldflags "$(LD_FLAGS)" -tags "$(GO_TAGS)" -o $(BINARY_NAME) ./cmd/local-ai
build-launcher: ## Build the launcher application
$(info ${GREEN}I local-ai launcher build info:${RESET})
$(info ${GREEN}I BUILD_TYPE: ${YELLOW}$(BUILD_TYPE)${RESET})
$(info ${GREEN}I GO_TAGS: ${YELLOW}$(GO_TAGS)${RESET})
$(info ${GREEN}I LD_FLAGS: ${YELLOW}$(LD_FLAGS)${RESET})
rm -rf $(LAUNCHER_BINARY_NAME) || true
CGO_LDFLAGS="$(CGO_LDFLAGS)" $(GOCMD) build -ldflags "$(LD_FLAGS)" -tags "$(GO_TAGS)" -o $(LAUNCHER_BINARY_NAME) ./cmd/launcher
build-all: build build-launcher ## Build both server and launcher
build-dev: ## Run LocalAI in dev mode with live reload
@command -v air >/dev/null 2>&1 || go install github.com/air-verse/air@latest
air -c .air.toml
dev-dist:
$(GORELEASER) build --snapshot --clean
dist:
$(GORELEASER) build --clean
osx-signed: build
codesign --deep --force --sign "$(OSX_SIGNING_IDENTITY)" --entitlements "./Entitlements.plist" "./$(BINARY_NAME)"
## Run
run: ## run local-ai
CGO_LDFLAGS="$(CGO_LDFLAGS)" $(GOCMD) run ./
test-models/testmodel.ggml:
mkdir -p test-models
mkdir -p test-dir
wget -q https://huggingface.co/mradermacher/gpt2-alpaca-gpt4-GGUF/resolve/main/gpt2-alpaca-gpt4.Q4_K_M.gguf -O test-models/testmodel.ggml
wget -q https://huggingface.co/ggerganov/whisper.cpp/resolve/main/ggml-base.en.bin -O test-models/whisper-en
wget -q https://cdn.openai.com/whisper/draft-20220913a/micro-machines.wav -O test-dir/audio.wav
cp tests/models_fixtures/* test-models
prepare-test: protogen-go
cp tests/models_fixtures/* test-models
########################################################
## Tests
########################################################
## Test targets
test: test-models/testmodel.ggml protogen-go
@echo 'Running tests'
export GO_TAGS="debug"
$(MAKE) prepare-test
OPUS_SHIM_LIBRARY=$(abspath ./pkg/opus/shim/libopusshim.so) \
HUGGINGFACE_GRPC=$(abspath ./)/backend/python/transformers/run.sh TEST_DIR=$(abspath ./)/test-dir/ FIXTURES=$(abspath ./)/tests/fixtures CONFIG_FILE=$(abspath ./)/test-models/config.yaml MODELS_PATH=$(abspath ./)/test-models BACKENDS_PATH=$(abspath ./)/backends \
$(GOCMD) run github.com/onsi/ginkgo/v2/ginkgo --label-filter="!llama-gguf" --flake-attempts $(TEST_FLAKES) --fail-fast -v -r $(TEST_PATHS)
$(MAKE) test-llama-gguf
$(MAKE) test-tts
$(MAKE) test-stablediffusion
########################################################
## E2E AIO tests (uses standard image with pre-configured models)
########################################################
docker-build-e2e:
docker build \
--build-arg MAKEFLAGS="--jobs=5 --output-sync=target" \
--build-arg BASE_IMAGE=$(BASE_IMAGE) \
--build-arg IMAGE_TYPE=$(IMAGE_TYPE) \
--build-arg BUILD_TYPE=$(BUILD_TYPE) \
--build-arg CUDA_MAJOR_VERSION=$(CUDA_MAJOR_VERSION) \
--build-arg CUDA_MINOR_VERSION=$(CUDA_MINOR_VERSION) \
--build-arg UBUNTU_VERSION=$(UBUNTU_VERSION) \
--build-arg UBUNTU_CODENAME=$(UBUNTU_CODENAME) \
--build-arg GO_TAGS="$(GO_TAGS)" \
-t local-ai:tests -f Dockerfile .
e2e-aio:
LOCALAI_BACKEND_DIR=$(abspath ./backends) \
LOCALAI_MODELS_DIR=$(abspath ./tests/e2e-aio/models) \
LOCALAI_IMAGE_TAG=tests \
LOCALAI_IMAGE=local-ai \
$(MAKE) run-e2e-aio
run-e2e-aio: protogen-go
@echo 'Running e2e AIO tests'
$(GOCMD) run github.com/onsi/ginkgo/v2/ginkgo --flake-attempts $(TEST_FLAKES) -v -r ./tests/e2e-aio
########################################################
## E2E tests
########################################################
prepare-e2e:
docker build \
--build-arg IMAGE_TYPE=core \
--build-arg BUILD_TYPE=$(BUILD_TYPE) \
--build-arg BASE_IMAGE=$(BASE_IMAGE) \
--build-arg CUDA_MAJOR_VERSION=$(CUDA_MAJOR_VERSION) \
--build-arg CUDA_MINOR_VERSION=$(CUDA_MINOR_VERSION) \
--build-arg UBUNTU_VERSION=$(UBUNTU_VERSION) \
--build-arg UBUNTU_CODENAME=$(UBUNTU_CODENAME) \
--build-arg GO_TAGS="$(GO_TAGS)" \
--build-arg MAKEFLAGS="$(DOCKER_MAKEFLAGS)" \
-t localai-tests .
run-e2e-image:
docker run -p 5390:8080 -e MODELS_PATH=/models -e THREADS=1 -e DEBUG=true -d --rm -v $(TEST_DIR):/models --name e2e-tests-$(RANDOM) localai-tests
test-e2e: build-mock-backend prepare-e2e run-e2e-image
@echo 'Running e2e tests'
BUILD_TYPE=$(BUILD_TYPE) \
LOCALAI_API=http://$(E2E_BRIDGE_IP):5390 \
$(GOCMD) run github.com/onsi/ginkgo/v2/ginkgo --flake-attempts $(TEST_FLAKES) -v -r ./tests/e2e
$(MAKE) clean-mock-backend
$(MAKE) teardown-e2e
docker rmi localai-tests
teardown-e2e:
rm -rf $(TEST_DIR) || true
docker stop $$(docker ps -q --filter ancestor=localai-tests)
########################################################
## Integration and unit tests
########################################################
test-llama-gguf: prepare-test
TEST_DIR=$(abspath ./)/test-dir/ FIXTURES=$(abspath ./)/tests/fixtures CONFIG_FILE=$(abspath ./)/test-models/config.yaml MODELS_PATH=$(abspath ./)/test-models BACKENDS_PATH=$(abspath ./)/backends \
$(GOCMD) run github.com/onsi/ginkgo/v2/ginkgo --label-filter="llama-gguf" --flake-attempts $(TEST_FLAKES) -v -r $(TEST_PATHS)
test-tts: prepare-test
TEST_DIR=$(abspath ./)/test-dir/ FIXTURES=$(abspath ./)/tests/fixtures CONFIG_FILE=$(abspath ./)/test-models/config.yaml MODELS_PATH=$(abspath ./)/test-models BACKENDS_PATH=$(abspath ./)/backends \
$(GOCMD) run github.com/onsi/ginkgo/v2/ginkgo --label-filter="tts" --flake-attempts $(TEST_FLAKES) -v -r $(TEST_PATHS)
test-stablediffusion: prepare-test
TEST_DIR=$(abspath ./)/test-dir/ FIXTURES=$(abspath ./)/tests/fixtures CONFIG_FILE=$(abspath ./)/test-models/config.yaml MODELS_PATH=$(abspath ./)/test-models BACKENDS_PATH=$(abspath ./)/backends \
$(GOCMD) run github.com/onsi/ginkgo/v2/ginkgo --label-filter="stablediffusion" --flake-attempts $(TEST_FLAKES) -v -r $(TEST_PATHS)
test-stores:
$(GOCMD) run github.com/onsi/ginkgo/v2/ginkgo --label-filter="stores" --flake-attempts $(TEST_FLAKES) -v -r tests/integration
test-opus:
@echo 'Running opus backend tests'
$(MAKE) -C backend/go/opus libopusshim.so
$(GOCMD) run github.com/onsi/ginkgo/v2/ginkgo --flake-attempts $(TEST_FLAKES) -v -r ./backend/go/opus/...
test-opus-docker:
@echo 'Running opus backend tests in Docker'
docker build --target builder \
--build-arg BUILD_TYPE=$(or $(BUILD_TYPE),) \
--build-arg BASE_IMAGE=$(or $(BASE_IMAGE),ubuntu:24.04) \
--build-arg BACKEND=opus \
-t localai-opus-test -f backend/Dockerfile.golang .
docker run --rm localai-opus-test \
bash -c 'cd /LocalAI && go run github.com/onsi/ginkgo/v2/ginkgo --flake-attempts $(TEST_FLAKES) -v -r ./backend/go/opus/...'
test-realtime: build-mock-backend
@echo 'Running realtime e2e tests (mock backend)'
$(GOCMD) run github.com/onsi/ginkgo/v2/ginkgo --label-filter="Realtime && !real-models" --flake-attempts $(TEST_FLAKES) -v -r ./tests/e2e
# Real-model realtime tests. Set REALTIME_TEST_MODEL to use your own pipeline,
# or leave unset to auto-build one from the component env vars below.
REALTIME_VAD?=silero-vad-ggml
REALTIME_STT?=whisper-1
REALTIME_LLM?=qwen3-0.6b
REALTIME_TTS?=tts-1
REALTIME_BACKENDS_PATH?=$(abspath ./)/backends
test-realtime-models: build-mock-backend
@echo 'Running realtime e2e tests (real models)'
REALTIME_TEST_MODEL=$${REALTIME_TEST_MODEL:-realtime-test-pipeline} \
REALTIME_VAD=$(REALTIME_VAD) \
REALTIME_STT=$(REALTIME_STT) \
REALTIME_LLM=$(REALTIME_LLM) \
REALTIME_TTS=$(REALTIME_TTS) \
REALTIME_BACKENDS_PATH=$(REALTIME_BACKENDS_PATH) \
$(GOCMD) run github.com/onsi/ginkgo/v2/ginkgo --label-filter="Realtime" --flake-attempts $(TEST_FLAKES) -v -r ./tests/e2e
# --- Container-based real-model testing ---
REALTIME_BACKEND_NAMES ?= silero-vad whisper llama-cpp kokoro
REALTIME_MODELS_DIR ?= $(abspath ./models)
REALTIME_BACKENDS_DIR ?= $(abspath ./local-backends)
REALTIME_DOCKER_FLAGS ?= --gpus all
local-backends:
mkdir -p local-backends
extract-backend-%: docker-build-% local-backends
@echo "Extracting backend $*..."
@CID=$$(docker create local-ai-backend:$*) && \
rm -rf local-backends/$* && mkdir -p local-backends/$* && \
docker cp $$CID:/ - | tar -xf - -C local-backends/$* && \
docker rm $$CID > /dev/null
extract-realtime-backends: $(addprefix extract-backend-,$(REALTIME_BACKEND_NAMES))
test-realtime-models-docker: build-mock-backend
docker build --target build-requirements \
--build-arg BUILD_TYPE=$(or $(BUILD_TYPE),cublas) \
--build-arg CUDA_MAJOR_VERSION=$(or $(CUDA_MAJOR_VERSION),13) \
--build-arg CUDA_MINOR_VERSION=$(or $(CUDA_MINOR_VERSION),0) \
-t localai-test-runner .
docker run --rm \
$(REALTIME_DOCKER_FLAGS) \
-v $(abspath ./):/build \
-v $(REALTIME_MODELS_DIR):/models:ro \
-v $(REALTIME_BACKENDS_DIR):/backends \
-v localai-go-cache:/root/go/pkg/mod \
-v localai-go-build-cache:/root/.cache/go-build \
-e REALTIME_TEST_MODEL=$${REALTIME_TEST_MODEL:-realtime-test-pipeline} \
-e REALTIME_VAD=$(REALTIME_VAD) \
-e REALTIME_STT=$(REALTIME_STT) \
-e REALTIME_LLM=$(REALTIME_LLM) \
-e REALTIME_TTS=$(REALTIME_TTS) \
-e REALTIME_BACKENDS_PATH=/backends \
-e REALTIME_MODELS_PATH=/models \
-w /build \
localai-test-runner \
bash -c 'git config --global --add safe.directory /build && \
make protogen-go && make build-mock-backend && \
go run github.com/onsi/ginkgo/v2/ginkgo --label-filter="Realtime" --flake-attempts $(TEST_FLAKES) -v -r ./tests/e2e'
test-container:
docker build --target requirements -t local-ai-test-container .
docker run -ti --rm --entrypoint /bin/bash -ti -v $(abspath ./):/build local-ai-test-container
########################################################
## Help
########################################################
## Help:
help: ## Show this help.
@echo ''
@echo 'Usage:'
@echo ' ${YELLOW}make${RESET} ${GREEN}<target>${RESET}'
@echo ''
@echo 'Targets:'
@awk 'BEGIN {FS = ":.*?## "} { \
if (/^[a-zA-Z_-]+:.*?##.*$$/) {printf " ${YELLOW}%-20s${GREEN}%s${RESET}\n", $$1, $$2} \
else if (/^## .*$$/) {printf " ${CYAN}%s${RESET}\n", substr($$1,4)} \
}' $(MAKEFILE_LIST)
########################################################
## Backends
########################################################
.PHONY: protogen
protogen: protogen-go
protoc:
@OS_NAME=$$(uname -s | tr '[:upper:]' '[:lower:]'); \
ARCH_NAME=$$(uname -m); \
if [ "$$OS_NAME" = "darwin" ]; then \
if [ "$$ARCH_NAME" = "arm64" ]; then \
FILE=protoc-31.1-osx-aarch_64.zip; \
elif [ "$$ARCH_NAME" = "x86_64" ]; then \
FILE=protoc-31.1-osx-x86_64.zip; \
else \
echo "Unsupported macOS architecture: $$ARCH_NAME"; exit 1; \
fi; \
elif [ "$$OS_NAME" = "linux" ]; then \
if [ "$$ARCH_NAME" = "x86_64" ]; then \
FILE=protoc-31.1-linux-x86_64.zip; \
elif [ "$$ARCH_NAME" = "aarch64" ] || [ "$$ARCH_NAME" = "arm64" ]; then \
FILE=protoc-31.1-linux-aarch_64.zip; \
elif [ "$$ARCH_NAME" = "ppc64le" ]; then \
FILE=protoc-31.1-linux-ppcle_64.zip; \
elif [ "$$ARCH_NAME" = "s390x" ]; then \
FILE=protoc-31.1-linux-s390_64.zip; \
elif [ "$$ARCH_NAME" = "i386" ] || [ "$$ARCH_NAME" = "x86" ]; then \
FILE=protoc-31.1-linux-x86_32.zip; \
else \
echo "Unsupported Linux architecture: $$ARCH_NAME"; exit 1; \
fi; \
else \
echo "Unsupported OS: $$OS_NAME"; exit 1; \
fi; \
URL=https://github.com/protocolbuffers/protobuf/releases/download/v31.1/$$FILE; \
curl -L $$URL -o protoc.zip && \
unzip -j -d $(CURDIR) protoc.zip bin/protoc && rm protoc.zip
.PHONY: protogen-go
protogen-go: protoc install-go-tools
mkdir -p pkg/grpc/proto
./protoc --experimental_allow_proto3_optional -Ibackend/ --go_out=pkg/grpc/proto/ --go_opt=paths=source_relative --go-grpc_out=pkg/grpc/proto/ --go-grpc_opt=paths=source_relative \
backend/backend.proto
core/config/inference_defaults.json: ## Fetch inference defaults from unsloth (only if missing)
$(GOCMD) generate ./core/config/...
.PHONY: generate
generate: core/config/inference_defaults.json ## Ensure inference defaults exist
.PHONY: generate-force
generate-force: ## Re-fetch inference defaults from unsloth (always)
$(GOCMD) generate ./core/config/...
.PHONY: protogen-go-clean
protogen-go-clean:
$(RM) pkg/grpc/proto/backend.pb.go pkg/grpc/proto/backend_grpc.pb.go
$(RM) bin/*
prepare-test-extra: protogen-python
$(MAKE) -C backend/python/transformers
$(MAKE) -C backend/python/outetts
$(MAKE) -C backend/python/diffusers
$(MAKE) -C backend/python/chatterbox
$(MAKE) -C backend/python/vllm
$(MAKE) -C backend/python/vllm-omni
$(MAKE) -C backend/python/vibevoice
$(MAKE) -C backend/python/moonshine
$(MAKE) -C backend/python/pocket-tts
$(MAKE) -C backend/python/qwen-tts
$(MAKE) -C backend/python/fish-speech
$(MAKE) -C backend/python/faster-qwen3-tts
$(MAKE) -C backend/python/qwen-asr
$(MAKE) -C backend/python/nemo
$(MAKE) -C backend/python/voxcpm
$(MAKE) -C backend/python/faster-whisper
$(MAKE) -C backend/python/whisperx
$(MAKE) -C backend/python/ace-step
$(MAKE) -C backend/python/trl
$(MAKE) -C backend/rust/kokoros kokoros-grpc
test-extra: prepare-test-extra
$(MAKE) -C backend/python/transformers test
$(MAKE) -C backend/python/outetts test
$(MAKE) -C backend/python/diffusers test
$(MAKE) -C backend/python/chatterbox test
$(MAKE) -C backend/python/vllm test
$(MAKE) -C backend/python/vllm-omni test
$(MAKE) -C backend/python/vibevoice test
$(MAKE) -C backend/python/moonshine test
$(MAKE) -C backend/python/pocket-tts test
$(MAKE) -C backend/python/qwen-tts test
$(MAKE) -C backend/python/fish-speech test
$(MAKE) -C backend/python/faster-qwen3-tts test
$(MAKE) -C backend/python/qwen-asr test
$(MAKE) -C backend/python/nemo test
$(MAKE) -C backend/python/voxcpm test
$(MAKE) -C backend/python/faster-whisper test
$(MAKE) -C backend/python/whisperx test
$(MAKE) -C backend/python/ace-step test
$(MAKE) -C backend/python/trl test
$(MAKE) -C backend/rust/kokoros test
##
## End-to-end gRPC tests that exercise a built backend container image.
##
## The test suite in tests/e2e-backends is backend-agnostic. You drive it via env
## vars (see tests/e2e-backends/backend_test.go for the full list) and the
## capability-driven harness picks which gRPC RPCs to exercise:
##
## BACKEND_IMAGE Required. Docker image to test, e.g. local-ai-backend:llama-cpp.
## BACKEND_TEST_MODEL_URL URL of a model file to download and load.
## BACKEND_TEST_MODEL_FILE Path to an already-downloaded model (skips download).
## BACKEND_TEST_MODEL_NAME HuggingFace repo id (e.g. Qwen/Qwen2.5-0.5B-Instruct).
## Use this instead of MODEL_URL for backends that
## resolve HF model ids natively (vllm, vllm-omni).
## BACKEND_TEST_CAPS Comma-separated capabilities, default "health,load,predict,stream".
## Adds "tools" to exercise ChatDelta tool call extraction.
## BACKEND_TEST_PROMPT Override the prompt used in predict/stream specs.
## BACKEND_TEST_OPTIONS Comma-separated Options[] entries forwarded to LoadModel,
## e.g. "tool_parser:hermes,reasoning_parser:qwen3".
##
## Direct usage (image already built, no docker-build-* dependency):
##
## make test-extra-backend BACKEND_IMAGE=local-ai-backend:llama-cpp \
## BACKEND_TEST_MODEL_URL=https://.../model.gguf
##
## Convenience wrappers below build a specific backend image first, then run the
## suite against it.
##
BACKEND_TEST_MODEL_URL?=https://huggingface.co/Qwen/Qwen3-0.6B-GGUF/resolve/main/Qwen3-0.6B-Q8_0.gguf
## Generic target — runs the suite against whatever BACKEND_IMAGE points at.
## Depends on protogen-go so pkg/grpc/proto is generated before `go test`.
test-extra-backend: protogen-go
@test -n "$$BACKEND_IMAGE" || { echo "BACKEND_IMAGE must be set" >&2; exit 1; }
BACKEND_IMAGE="$$BACKEND_IMAGE" \
BACKEND_TEST_MODEL_URL="$${BACKEND_TEST_MODEL_URL:-$(BACKEND_TEST_MODEL_URL)}" \
BACKEND_TEST_MODEL_FILE="$$BACKEND_TEST_MODEL_FILE" \
BACKEND_TEST_MODEL_NAME="$$BACKEND_TEST_MODEL_NAME" \
BACKEND_TEST_CAPS="$$BACKEND_TEST_CAPS" \
BACKEND_TEST_PROMPT="$$BACKEND_TEST_PROMPT" \
BACKEND_TEST_OPTIONS="$$BACKEND_TEST_OPTIONS" \
BACKEND_TEST_TOOL_PROMPT="$$BACKEND_TEST_TOOL_PROMPT" \
BACKEND_TEST_TOOL_NAME="$$BACKEND_TEST_TOOL_NAME" \
go test -v -timeout 30m ./tests/e2e-backends/...
## Convenience wrappers: build the image, then exercise it.
test-extra-backend-llama-cpp: docker-build-llama-cpp
BACKEND_IMAGE=local-ai-backend:llama-cpp $(MAKE) test-extra-backend
test-extra-backend-ik-llama-cpp: docker-build-ik-llama-cpp
BACKEND_IMAGE=local-ai-backend:ik-llama-cpp $(MAKE) test-extra-backend
## vllm is resolved from a HuggingFace model id (no file download) and
## exercises Predict + streaming + tool-call extraction via the hermes parser.
## Requires a host CPU with the SIMD instructions the prebuilt vllm CPU
## wheel was compiled against (AVX-512 VNNI/BF16); older CPUs will SIGILL
## on import — on CI this means using the bigger-runner label.
test-extra-backend-vllm: docker-build-vllm
BACKEND_IMAGE=local-ai-backend:vllm \
BACKEND_TEST_MODEL_NAME=Qwen/Qwen2.5-0.5B-Instruct \
BACKEND_TEST_CAPS=health,load,predict,stream,tools \
BACKEND_TEST_OPTIONS=tool_parser:hermes \
$(MAKE) test-extra-backend
DOCKER_IMAGE?=local-ai
IMAGE_TYPE?=core
BASE_IMAGE?=ubuntu:24.04
docker:
docker build \
--build-arg BASE_IMAGE=$(BASE_IMAGE) \
--build-arg IMAGE_TYPE=$(IMAGE_TYPE) \
--build-arg GO_TAGS="$(GO_TAGS)" \
--build-arg MAKEFLAGS="$(DOCKER_MAKEFLAGS)" \
--build-arg BUILD_TYPE=$(BUILD_TYPE) \
--build-arg CUDA_MAJOR_VERSION=$(CUDA_MAJOR_VERSION) \
--build-arg CUDA_MINOR_VERSION=$(CUDA_MINOR_VERSION) \
--build-arg UBUNTU_VERSION=$(UBUNTU_VERSION) \
--build-arg UBUNTU_CODENAME=$(UBUNTU_CODENAME) \
-t $(DOCKER_IMAGE) .
docker-cuda12:
docker build \
--build-arg CUDA_MAJOR_VERSION=${CUDA_MAJOR_VERSION} \
--build-arg CUDA_MINOR_VERSION=${CUDA_MINOR_VERSION} \
--build-arg BASE_IMAGE=$(BASE_IMAGE) \
--build-arg IMAGE_TYPE=$(IMAGE_TYPE) \
--build-arg GO_TAGS="$(GO_TAGS)" \
--build-arg MAKEFLAGS="$(DOCKER_MAKEFLAGS)" \
--build-arg BUILD_TYPE=$(BUILD_TYPE) \
--build-arg UBUNTU_VERSION=$(UBUNTU_VERSION) \
--build-arg UBUNTU_CODENAME=$(UBUNTU_CODENAME) \
-t $(DOCKER_IMAGE)-cuda-12 .
docker-image-intel:
docker build \
--build-arg BASE_IMAGE=intel/oneapi-basekit:2025.3.0-0-devel-ubuntu24.04 \
--build-arg IMAGE_TYPE=$(IMAGE_TYPE) \
--build-arg GO_TAGS="$(GO_TAGS)" \
--build-arg MAKEFLAGS="$(DOCKER_MAKEFLAGS)" \
--build-arg BUILD_TYPE=intel \
--build-arg CUDA_MAJOR_VERSION=$(CUDA_MAJOR_VERSION) \
--build-arg CUDA_MINOR_VERSION=$(CUDA_MINOR_VERSION) \
--build-arg UBUNTU_VERSION=$(UBUNTU_VERSION) \
--build-arg UBUNTU_CODENAME=$(UBUNTU_CODENAME) \
-t $(DOCKER_IMAGE) .
########################################################
## Backends
########################################################
# Pattern rule for standard backends (docker-based)
# This matches all backends that use docker-build-* and docker-save-*
backends/%: docker-build-% docker-save-% build
./local-ai backends install "ocifile://$(abspath ./backend-images/$*.tar)"
# Darwin-specific backends (keep as explicit targets since they have special build logic)
backends/llama-cpp-darwin: build
bash ./scripts/build/llama-cpp-darwin.sh
./local-ai backends install "ocifile://$(abspath ./backend-images/llama-cpp.tar)"
build-darwin-python-backend: build
bash ./scripts/build/python-darwin.sh
build-darwin-go-backend: build
bash ./scripts/build/golang-darwin.sh
backends/mlx:
BACKEND=mlx $(MAKE) build-darwin-python-backend
./local-ai backends install "ocifile://$(abspath ./backend-images/mlx.tar)"
backends/diffuser-darwin:
BACKEND=diffusers $(MAKE) build-darwin-python-backend
./local-ai backends install "ocifile://$(abspath ./backend-images/diffusers.tar)"
backends/mlx-vlm:
BACKEND=mlx-vlm $(MAKE) build-darwin-python-backend
./local-ai backends install "ocifile://$(abspath ./backend-images/mlx-vlm.tar)"
backends/mlx-audio:
BACKEND=mlx-audio $(MAKE) build-darwin-python-backend
./local-ai backends install "ocifile://$(abspath ./backend-images/mlx-audio.tar)"
backends/mlx-distributed:
BACKEND=mlx-distributed $(MAKE) build-darwin-python-backend
./local-ai backends install "ocifile://$(abspath ./backend-images/mlx-distributed.tar)"
backends/stablediffusion-ggml-darwin:
BACKEND=stablediffusion-ggml BUILD_TYPE=metal $(MAKE) build-darwin-go-backend
./local-ai backends install "ocifile://$(abspath ./backend-images/stablediffusion-ggml.tar)"
backend-images:
mkdir -p backend-images
# Backend metadata: BACKEND_NAME | DOCKERFILE_TYPE | BUILD_CONTEXT | PROGRESS_FLAG | NEEDS_BACKEND_ARG
# llama-cpp is special - uses llama-cpp Dockerfile and doesn't need BACKEND arg
BACKEND_LLAMA_CPP = llama-cpp|llama-cpp|.|false|false
# ik-llama-cpp is a fork of llama.cpp with superior CPU performance
BACKEND_IK_LLAMA_CPP = ik-llama-cpp|ik-llama-cpp|.|false|false
# Golang backends
BACKEND_PIPER = piper|golang|.|false|true
BACKEND_LOCAL_STORE = local-store|golang|.|false|true
BACKEND_HUGGINGFACE = huggingface|golang|.|false|true
BACKEND_SILERO_VAD = silero-vad|golang|.|false|true
BACKEND_STABLEDIFFUSION_GGML = stablediffusion-ggml|golang|.|--progress=plain|true
BACKEND_WHISPER = whisper|golang|.|false|true
BACKEND_VOXTRAL = voxtral|golang|.|false|true
BACKEND_ACESTEP_CPP = acestep-cpp|golang|.|false|true
BACKEND_QWEN3_TTS_CPP = qwen3-tts-cpp|golang|.|false|true
BACKEND_OPUS = opus|golang|.|false|true
# Python backends with root context
BACKEND_RERANKERS = rerankers|python|.|false|true
BACKEND_TRANSFORMERS = transformers|python|.|false|true
BACKEND_OUTETTS = outetts|python|.|false|true
BACKEND_FASTER_WHISPER = faster-whisper|python|.|false|true
BACKEND_COQUI = coqui|python|.|false|true
BACKEND_RFDETR = rfdetr|python|.|false|true
BACKEND_KITTEN_TTS = kitten-tts|python|.|false|true
BACKEND_NEUTTS = neutts|python|.|false|true
BACKEND_KOKORO = kokoro|python|.|false|true
BACKEND_VLLM = vllm|python|.|false|true
BACKEND_VLLM_OMNI = vllm-omni|python|.|false|true
BACKEND_DIFFUSERS = diffusers|python|.|--progress=plain|true
BACKEND_CHATTERBOX = chatterbox|python|.|false|true
BACKEND_VIBEVOICE = vibevoice|python|.|--progress=plain|true
BACKEND_MOONSHINE = moonshine|python|.|false|true
BACKEND_POCKET_TTS = pocket-tts|python|.|false|true
BACKEND_QWEN_TTS = qwen-tts|python|.|false|true
BACKEND_FISH_SPEECH = fish-speech|python|.|false|true
BACKEND_FASTER_QWEN3_TTS = faster-qwen3-tts|python|.|false|true
BACKEND_QWEN_ASR = qwen-asr|python|.|false|true
BACKEND_NEMO = nemo|python|.|false|true
BACKEND_VOXCPM = voxcpm|python|.|false|true
BACKEND_WHISPERX = whisperx|python|.|false|true
BACKEND_ACE_STEP = ace-step|python|.|false|true
BACKEND_MLX_DISTRIBUTED = mlx-distributed|python|./|false|true
BACKEND_TRL = trl|python|.|false|true
BACKEND_LLAMA_CPP_QUANTIZATION = llama-cpp-quantization|python|.|false|true
# Rust backends
BACKEND_KOKOROS = kokoros|rust|.|false|true
# C++ backends (Go wrapper with purego)
BACKEND_SAM3_CPP = sam3-cpp|golang|.|false|true
# Helper function to build docker image for a backend
# Usage: $(call docker-build-backend,BACKEND_NAME,DOCKERFILE_TYPE,BUILD_CONTEXT,PROGRESS_FLAG,NEEDS_BACKEND_ARG)
define docker-build-backend
docker build $(if $(filter-out false,$(4)),$(4)) \
--build-arg BUILD_TYPE=$(BUILD_TYPE) \
--build-arg BASE_IMAGE=$(BASE_IMAGE) \
--build-arg CUDA_MAJOR_VERSION=$(CUDA_MAJOR_VERSION) \
--build-arg CUDA_MINOR_VERSION=$(CUDA_MINOR_VERSION) \
--build-arg UBUNTU_VERSION=$(UBUNTU_VERSION) \
--build-arg UBUNTU_CODENAME=$(UBUNTU_CODENAME) \
$(if $(FROM_SOURCE),--build-arg FROM_SOURCE=$(FROM_SOURCE)) \
$(if $(filter true,$(5)),--build-arg BACKEND=$(1)) \
-t local-ai-backend:$(1) -f backend/Dockerfile.$(2) $(3)
endef
# Generate docker-build targets from backend definitions
define generate-docker-build-target
docker-build-$(word 1,$(subst |, ,$(1))):
$$(call docker-build-backend,$(word 1,$(subst |, ,$(1))),$(word 2,$(subst |, ,$(1))),$(word 3,$(subst |, ,$(1))),$(word 4,$(subst |, ,$(1))),$(word 5,$(subst |, ,$(1))))
endef
# Generate all docker-build targets
$(eval $(call generate-docker-build-target,$(BACKEND_LLAMA_CPP)))
$(eval $(call generate-docker-build-target,$(BACKEND_IK_LLAMA_CPP)))
$(eval $(call generate-docker-build-target,$(BACKEND_PIPER)))
$(eval $(call generate-docker-build-target,$(BACKEND_LOCAL_STORE)))
$(eval $(call generate-docker-build-target,$(BACKEND_HUGGINGFACE)))
$(eval $(call generate-docker-build-target,$(BACKEND_SILERO_VAD)))
$(eval $(call generate-docker-build-target,$(BACKEND_STABLEDIFFUSION_GGML)))
$(eval $(call generate-docker-build-target,$(BACKEND_WHISPER)))
$(eval $(call generate-docker-build-target,$(BACKEND_VOXTRAL)))
$(eval $(call generate-docker-build-target,$(BACKEND_OPUS)))
$(eval $(call generate-docker-build-target,$(BACKEND_RERANKERS)))
$(eval $(call generate-docker-build-target,$(BACKEND_TRANSFORMERS)))
$(eval $(call generate-docker-build-target,$(BACKEND_OUTETTS)))
$(eval $(call generate-docker-build-target,$(BACKEND_FASTER_WHISPER)))
$(eval $(call generate-docker-build-target,$(BACKEND_COQUI)))
$(eval $(call generate-docker-build-target,$(BACKEND_RFDETR)))
$(eval $(call generate-docker-build-target,$(BACKEND_KITTEN_TTS)))
$(eval $(call generate-docker-build-target,$(BACKEND_NEUTTS)))
$(eval $(call generate-docker-build-target,$(BACKEND_KOKORO)))
$(eval $(call generate-docker-build-target,$(BACKEND_VLLM)))
$(eval $(call generate-docker-build-target,$(BACKEND_VLLM_OMNI)))
$(eval $(call generate-docker-build-target,$(BACKEND_DIFFUSERS)))
$(eval $(call generate-docker-build-target,$(BACKEND_CHATTERBOX)))
$(eval $(call generate-docker-build-target,$(BACKEND_VIBEVOICE)))
$(eval $(call generate-docker-build-target,$(BACKEND_MOONSHINE)))
$(eval $(call generate-docker-build-target,$(BACKEND_POCKET_TTS)))
$(eval $(call generate-docker-build-target,$(BACKEND_QWEN_TTS)))
$(eval $(call generate-docker-build-target,$(BACKEND_FISH_SPEECH)))
$(eval $(call generate-docker-build-target,$(BACKEND_FASTER_QWEN3_TTS)))
$(eval $(call generate-docker-build-target,$(BACKEND_QWEN_ASR)))
$(eval $(call generate-docker-build-target,$(BACKEND_NEMO)))
$(eval $(call generate-docker-build-target,$(BACKEND_VOXCPM)))
$(eval $(call generate-docker-build-target,$(BACKEND_WHISPERX)))
$(eval $(call generate-docker-build-target,$(BACKEND_ACE_STEP)))
$(eval $(call generate-docker-build-target,$(BACKEND_ACESTEP_CPP)))
$(eval $(call generate-docker-build-target,$(BACKEND_QWEN3_TTS_CPP)))
$(eval $(call generate-docker-build-target,$(BACKEND_MLX_DISTRIBUTED)))
$(eval $(call generate-docker-build-target,$(BACKEND_TRL)))
$(eval $(call generate-docker-build-target,$(BACKEND_LLAMA_CPP_QUANTIZATION)))
$(eval $(call generate-docker-build-target,$(BACKEND_KOKOROS)))
$(eval $(call generate-docker-build-target,$(BACKEND_SAM3_CPP)))
# Pattern rule for docker-save targets
docker-save-%: backend-images
docker save local-ai-backend:$* -o backend-images/$*.tar
docker-build-backends: docker-build-llama-cpp docker-build-ik-llama-cpp docker-build-rerankers docker-build-vllm docker-build-vllm-omni docker-build-transformers docker-build-outetts docker-build-diffusers docker-build-kokoro docker-build-faster-whisper docker-build-coqui docker-build-chatterbox docker-build-vibevoice docker-build-moonshine docker-build-pocket-tts docker-build-qwen-tts docker-build-fish-speech docker-build-faster-qwen3-tts docker-build-qwen-asr docker-build-nemo docker-build-voxcpm docker-build-whisperx docker-build-ace-step docker-build-acestep-cpp docker-build-voxtral docker-build-mlx-distributed docker-build-trl docker-build-llama-cpp-quantization docker-build-kokoros docker-build-sam3-cpp docker-build-qwen3-tts-cpp
########################################################
### Mock Backend for E2E Tests
########################################################
build-mock-backend: protogen-go
$(GOCMD) build -o tests/e2e/mock-backend/mock-backend ./tests/e2e/mock-backend
clean-mock-backend:
rm -f tests/e2e/mock-backend/mock-backend
########################################################
### UI E2E Test Server
########################################################
build-ui-test-server: build-mock-backend react-ui protogen-go
$(GOCMD) build -o tests/e2e-ui/ui-test-server ./tests/e2e-ui
test-ui-e2e: build-ui-test-server
cd core/http/react-ui && npm install && npx playwright install --with-deps chromium && npx playwright test
test-ui-e2e-docker:
docker build -t localai-ui-e2e -f tests/e2e-ui/Dockerfile .
docker run --rm localai-ui-e2e
clean-ui-test-server:
rm -f tests/e2e-ui/ui-test-server
########################################################
### END Backends
########################################################
.PHONY: swagger
swagger:
swag init -g core/http/app.go --output swagger
# DEPRECATED: gen-assets is for the legacy Alpine.js UI. Remove when legacy UI is removed.
.PHONY: gen-assets
gen-assets:
$(GOCMD) run core/dependencies_manager/manager.go webui_static.yaml core/http/static/assets
## Documentation
docs/layouts/_default:
mkdir -p docs/layouts/_default
docs/static/gallery.html: docs/layouts/_default
$(GOCMD) run ./.github/ci/modelslist.go ./gallery/index.yaml > docs/static/gallery.html
docs/public: docs/layouts/_default docs/static/gallery.html
cd docs && hugo --minify
docs-clean:
rm -rf docs/public
rm -rf docs/static/gallery.html
.PHONY: docs
docs: docs/static/gallery.html
cd docs && hugo serve
########################################################
## Platform-specific builds
########################################################
## fyne cross-platform build
build-launcher-darwin: build-launcher
go run github.com/tiagomelo/macos-dmg-creator/cmd/createdmg@latest \
--appName "LocalAI" \
--appBinaryPath "$(LAUNCHER_BINARY_NAME)" \
--bundleIdentifier "com.localai.launcher" \
--iconPath "core/http/static/logo.png" \
--outputDir "dist/"
build-launcher-linux:
cd cmd/launcher && go run fyne.io/tools/cmd/fyne@latest package -os linux -icon ../../core/http/static/logo.png --executable $(LAUNCHER_BINARY_NAME)-linux && mv launcher.tar.xz ../../$(LAUNCHER_BINARY_NAME)-linux.tar.xz