Option (a) of PREFILL_GEMM_SCOPE.md: route large-M (prefill) NVFP4 dense weight GEMMs off the decode-tuned FP4-MMQ kernel onto the dequant->bf16 cuBLAS (nvjet) tensor-core path, wired via an M-threshold in ggml_cuda_should_use_mmq. Lands the validated, bit-exact-gated mechanism and records the honest GB10 result: it is a regression, so it ships default-off (== stock), mirroring the patch-0017 default-off discipline. Three-edit scaffold (no new kernel): should_use_mmq routes NVFP4+Blackwell+dense M>LLAMA_FP4_PREFILL_M to cuBLAS; op_mul_mat_cublas gains an NVFP4 branch that dequants the FP4 weights to a transient bf16 pool buffer (not cached - stays FP4-resident) and runs cublasGemmEx CUDA_R_16BF/COMPUTE_32F; ggml_get_to_bf16_cuda gains the NVFP4 case. Bit-exact gate PASS (benign): test-backend-ops MUL_MAT 1146/1146 + MUL_MAT_ID 806/806; the forced path (LLAMA_FP4_PREFILL_M=64) is green CUDA-vs-CPU at NVFP4 large-M shapes; greedy md5 on q36-27b is byte-identical to FP4-MMQ both for short prefill (5951a5b4, decode untouched) and for a >threshold prefill that exercises the bf16 path (5f3967df - no greedy argmax flips). Performance REGRESSES on GB10 (S_PP, q36-27b dense, A/B via env): M=512 958.99 -> 486.65 (-49%), M=1024 1013.65 -> 587.27 (-42%), M=2048 918.46 -> 649.42 (-29%). The scope premise (FP4-MMQ ~3% of FP4 peak at large M) is false here: FP4-MMQ beats bf16-cuBLAS because bf16 peak is ~half FP4 peak and the per-step weight dequant + 4x bf16 weight traffic (~8x total vs the FP4 read) dominate, only partially amortizing as M grows. Default-off keeps stock S_PP (966.98). Phase 2 (MoE grouped large-M) not implemented: it inherits the same bf16-peak<FP4-peak ceiling plus a per-expert dequant, so grouped bf16-cuBLAS would regress for the same reason; a real prefill GEMM win needs option (b), a native FP4-MMA large-M kernel. Full A/B in docs/PREFILL_GEMM_RESULTS.md. Assisted-by: Claude:opus-4.8 [Claude Code] Signed-off-by: Ettore Di Giacinto <mudler@localai.io>
LocalAI Backend Architecture
This directory contains the core backend infrastructure for LocalAI, including the gRPC protocol definition, multi-language Dockerfiles, and language-specific backend implementations.
Overview
LocalAI uses a unified gRPC-based architecture that allows different programming languages to implement AI backends while maintaining consistent interfaces and capabilities. The backend system supports multiple hardware acceleration targets and provides a standardized way to integrate various AI models and frameworks.
Architecture Components
1. Protocol Definition (backend.proto)
The backend.proto file defines the gRPC service interface that all backends must implement. This ensures consistency across different language implementations and provides a contract for communication between LocalAI core and backend services.
Core Services
- Text Generation:
Predict,PredictStreamfor LLM inference - Embeddings:
Embeddingfor text vectorization - Image Generation:
GenerateImagefor stable diffusion and image models - Audio Processing:
AudioTranscription,TTS,SoundGeneration - Video Generation:
GenerateVideofor video synthesis - Object Detection:
Detectfor computer vision tasks - Vector Storage:
StoresSet,StoresGet,StoresFindfor RAG operations - Reranking:
Rerankfor document relevance scoring - Voice Activity Detection:
VADfor audio segmentation
Key Message Types
PredictOptions: Comprehensive configuration for text generationModelOptions: Model loading and configuration parametersResult: Standardized response formatStatusResponse: Backend health and memory usage information
2. Multi-Language Dockerfiles
The backend system provides language-specific Dockerfiles that handle the build environment and dependencies for different programming languages:
Dockerfile.pythonDockerfile.golangDockerfile.llama-cpp
3. Language-Specific Implementations
Python Backends (python/)
- transformers: Hugging Face Transformers framework
- vllm: High-performance LLM inference
- mlx: Apple Silicon optimization
- diffusers: Stable Diffusion models
- Audio: coqui, faster-whisper, kitten-tts
- Vision: mlx-vlm, rfdetr
- Specialized: rerankers, chatterbox, kokoro
Go Backends (go/)
- whisper: OpenAI Whisper speech recognition in Go with GGML cpp backend (whisper.cpp)
- stablediffusion-ggml: Stable Diffusion in Go with GGML Cpp backend
- piper: Text-to-speech synthesis Golang with C bindings using rhaspy/piper
- local-store: Vector storage backend
C++ Backends (cpp/)
- llama-cpp: Llama.cpp integration
- grpc: GRPC utilities and helpers
Hardware Acceleration Support
CUDA (NVIDIA)
- Versions: CUDA 12.x, 13.x
- Features: cuBLAS, cuDNN, TensorRT optimization
- Targets: x86_64, ARM64 (Jetson)
ROCm (AMD)
- Features: HIP, rocBLAS, MIOpen
- Targets: AMD GPUs with ROCm support
Intel
- Features: oneAPI, Intel Extension for PyTorch
- Targets: Intel GPUs, XPUs, CPUs
Vulkan
- Features: Cross-platform GPU acceleration
- Targets: Windows, Linux, Android, macOS
Apple Silicon
- Features: MLX framework, Metal Performance Shaders
- Targets: M1/M2/M3 Macs
Backend Registry (index.yaml)
The index.yaml file serves as a central registry for all available backends, providing:
- Metadata: Name, description, license, icons
- Capabilities: Hardware targets and optimization profiles
- Tags: Categorization for discovery
- URLs: Source code and documentation links
Building Backends
Prerequisites
- Docker with multi-architecture support
- Appropriate hardware drivers (CUDA, ROCm, etc.)
- Build tools (make, cmake, compilers)
Build Commands
Example of build commands with Docker
# Build Python backend
docker build -f backend/Dockerfile.python \
--build-arg BACKEND=transformers \
--build-arg BUILD_TYPE=cublas12 \
--build-arg CUDA_MAJOR_VERSION=12 \
--build-arg CUDA_MINOR_VERSION=0 \
-t localai-backend-transformers .
# Build Go backend
docker build -f backend/Dockerfile.golang \
--build-arg BACKEND=whisper \
--build-arg BUILD_TYPE=cpu \
-t localai-backend-whisper .
# Build C++ backend
docker build -f backend/Dockerfile.llama-cpp \
--build-arg BACKEND=llama-cpp \
--build-arg BUILD_TYPE=cublas12 \
-t localai-backend-llama-cpp .
For ARM64/Mac builds, docker can't be used, and the makefile in the respective backend has to be used.
Build Types
cpu: CPU-only optimizationcublas12,cublas13: CUDA 12.x, 13.x with cuBLAShipblas: ROCm with rocBLASintel: Intel oneAPI optimizationvulkan: Vulkan-based accelerationmetal: Apple Metal optimization
Backend Development
Creating a New Backend
- Choose Language: Select Python, Go, or C++ based on requirements
- Implement Interface: Implement the gRPC service defined in
backend.proto - Add Dependencies: Create appropriate requirements files
- Configure Build: Set up Dockerfile and build scripts
- Register Backend: Add entry to
index.yaml - Test Integration: Verify gRPC communication and functionality
Backend Structure
backend-name/
├── backend.py/go/cpp # Main implementation
├── requirements.txt # Dependencies
├── Dockerfile # Build configuration
├── install.sh # Installation script
├── run.sh # Execution script
├── test.sh # Test script
└── README.md # Backend documentation
Required gRPC Methods
At minimum, backends must implement:
Health()- Service health checkLoadModel()- Model loading and initializationPredict()- Main inference endpointStatus()- Backend status and metrics
Integration with LocalAI Core
Backends communicate with LocalAI core through gRPC:
- Service Discovery: Core discovers available backends
- Model Loading: Core requests model loading via
LoadModel - Inference: Core sends requests via
Predictor specialized endpoints - Streaming: Core handles streaming responses for real-time generation
- Monitoring: Core tracks backend health and performance
Performance Optimization
Memory Management
- Model Caching: Efficient model loading and caching
- Batch Processing: Optimize for multiple concurrent requests
- Memory Pinning: GPU memory optimization for CUDA/ROCm
Hardware Utilization
- Multi-GPU: Support for tensor parallelism
- Mixed Precision: FP16/BF16 for memory efficiency
- Kernel Fusion: Optimized CUDA/ROCm kernels
Troubleshooting
Common Issues
- GRPC Connection: Verify backend service is running and accessible
- Model Loading: Check model paths and dependencies
- Hardware Detection: Ensure appropriate drivers and libraries
- Memory Issues: Monitor GPU memory usage and model sizes
Contributing
When contributing to the backend system:
- Follow Protocol: Implement the exact gRPC interface
- Add Tests: Include comprehensive test coverage
- Document: Provide clear usage examples
- Optimize: Consider performance and resource usage
- Validate: Test across different hardware targets