Files
LocalAI/backend/python
Ettore Di Giacinto 94e3e06b8b fix(process): extend parent-death backstop to C++ and Python backends
The Go parent-death watcher (pkg/grpc/parentwatch.go, commit 772b435d5)
only protects backends that route through pkg/grpc. C++ and Python
backends don't, so the originally-reported case — the llama.cpp gRPC
worker surviving a non-graceful LocalAI death — was still uncovered.

Extend the same best-effort backstop to both languages, reusing the
exact mechanism and semantics:

- capture getppid() at startup, skip if already orphaned (<=1)
- a background thread polls getppid() and self-exits on reparenting
  (getppid() != orig || == 1), portable across Linux/macOS, no-op on
  Windows
- same env vars: LOCALAI_BACKEND_PARENT_WATCH (default on; falsy
  false/0/no/off disable) and LOCALAI_BACKEND_PARENT_WATCH_INTERVAL
  (default 2s; accepts Go-style durations like 500ms/2s/1m)

C++: implemented in backend/cpp/llama-cpp (the reported, most-used C++
backend) as a dependency-free header parent_watch.h, wired into
grpc-server.cpp's main() and copied at build time via prepare.sh. C++
backends have no shared server scaffolding, so other C++ backends
(ds4, ik-llama-cpp, privacy-filter, ...) are not yet covered and would
each need the same one-line include+call as follow-ups.

Python: implemented once in the shared common/parent_watch.py and armed
from common/grpc_auth.py's get_auth_interceptors() — the single helper
every one of the 35 Python backends invokes while building its gRPC
server — so all Python backends (and future ones) are covered with no
per-backend edits and no duplicated implementation.

Tests (real process-tree reparent detection, mirroring the Go test):
- backend/cpp/llama-cpp/parent_watch_test.cpp (via run-unit-tests.sh)
- backend/python/common/parent_watch_test.py (python -m unittest)

Co-Authored-By: Claude Sonnet 5 <noreply@anthropic.com>
Signed-off-by: Ettore Di Giacinto <mudler@localai.io>
2026-07-02 07:31:31 +00:00
..
2026-04-12 08:51:30 +02:00
2026-04-12 08:51:30 +02:00
2026-04-12 08:51:30 +02:00
2026-04-12 08:51:30 +02:00
2026-04-12 08:51:30 +02:00

Python Backends for LocalAI

This directory contains Python-based AI backends for LocalAI, providing support for various AI models and hardware acceleration targets.

Overview

The Python backends use a unified build system based on libbackend.sh that provides:

  • Automatic virtual environment management with support for both uv and pip
  • Hardware-specific dependency installation (CPU, CUDA, Intel, MLX, etc.)
  • Portable Python support for standalone deployments
  • Consistent backend execution across different environments

Available Backends

Core AI Models

  • transformers - Hugging Face Transformers framework (PyTorch-based)
  • vllm - High-performance LLM inference engine
  • mlx - Apple Silicon optimized ML framework

Audio & Speech

  • coqui - Coqui TTS models
  • faster-whisper - Fast Whisper speech recognition
  • kitten-tts - Lightweight TTS
  • mlx-audio - Apple Silicon audio processing
  • chatterbox - TTS model
  • kokoro - TTS models

Computer Vision

  • diffusers - Stable Diffusion and image generation
  • mlx-vlm - Vision-language models for Apple Silicon
  • rfdetr - Object detection models

Specialized

  • rerankers - Text reranking models

Quick Start

Prerequisites

  • Python 3.10+ (default: 3.10.18)
  • uv package manager (recommended) or pip
  • Appropriate hardware drivers for your target (CUDA, Intel, etc.)

Installation

Each backend can be installed individually:

# Navigate to a specific backend
cd backend/python/transformers

# Install dependencies
make transformers
# or
bash install.sh

# Run the backend
make run
# or
bash run.sh

Using the Unified Build System

The libbackend.sh script provides consistent commands across all backends:

# Source the library in your backend script
source $(dirname $0)/../common/libbackend.sh

# Install requirements (automatically handles hardware detection)
installRequirements

# Start the backend server
startBackend $@

# Run tests
runUnittests

Hardware Targets

The build system automatically detects and configures for different hardware:

  • CPU - Standard CPU-only builds
  • CUDA - NVIDIA GPU acceleration (supports CUDA 12/13)
  • Intel - Intel XPU/GPU optimization
  • MLX - Apple Silicon (M1/M2/M3) optimization
  • HIP - AMD GPU acceleration

Target-Specific Requirements

Backends can specify hardware-specific dependencies:

  • requirements.txt - Base requirements
  • requirements-cpu.txt - CPU-specific packages
  • requirements-cublas12.txt - CUDA 12 packages
  • requirements-cublas13.txt - CUDA 13 packages
  • requirements-intel.txt - Intel-optimized packages
  • requirements-mps.txt - Apple Silicon packages

Configuration Options

Environment Variables

  • PYTHON_VERSION - Python version (default: 3.10)
  • PYTHON_PATCH - Python patch version (default: 18)
  • BUILD_TYPE - Force specific build target
  • USE_PIP - Use pip instead of uv (default: false)
  • PORTABLE_PYTHON - Enable portable Python builds
  • LIMIT_TARGETS - Restrict backend to specific targets

Example: CUDA 12 Only Backend

# In your backend script
LIMIT_TARGETS="cublas12"
source $(dirname $0)/../common/libbackend.sh

Example: Intel-Optimized Backend

# In your backend script
LIMIT_TARGETS="intel"
source $(dirname $0)/../common/libbackend.sh

Development

Adding a New Backend

  1. Create a new directory in backend/python/
  2. Copy the template structure from common/template/
  3. Implement your backend.py with the required gRPC interface
  4. Add appropriate requirements files for your target hardware
  5. Use libbackend.sh for consistent build and execution

Testing

# Run backend tests
make test
# or
bash test.sh

Building

# Install dependencies
make <backend-name>

# Clean build artifacts
make clean

Architecture

Each backend follows a consistent structure:

backend-name/
├── backend.py          # Main backend implementation
├── requirements.txt    # Base dependencies
├── requirements-*.txt  # Hardware-specific dependencies
├── install.sh         # Installation script
├── run.sh            # Execution script
├── test.sh           # Test script
├── Makefile          # Build targets
└── test.py           # Unit tests

Troubleshooting

Common Issues

  1. Missing dependencies: Ensure all requirements files are properly configured
  2. Hardware detection: Check that BUILD_TYPE matches your system
  3. Python version: Verify Python 3.10+ is available
  4. Virtual environment: Use ensureVenv to create/activate environments

Contributing

When adding new backends or modifying existing ones:

  1. Follow the established directory structure
  2. Use libbackend.sh for consistent behavior
  3. Include appropriate requirements files for all target hardware
  4. Add comprehensive tests
  5. Update this README if adding new backend types