# SGLang Diffusion SGLang Diffusion is an inference framework for accelerated image and video generation using diffusion models. It provides an end-to-end unified pipeline with optimized kernels and an efficient scheduler loop. ## Key Features - **Broad Model Support**: Wan series, FastWan series, Hunyuan, Qwen-Image, Qwen-Image-Edit, Flux, Z-Image, GLM-Image, and more - **Fast Inference**: Optimized kernels, efficient scheduler loop, and Cache-DiT acceleration - **Ease of Use**: OpenAI-compatible API, CLI, and Python SDK - **Multi-Platform**: NVIDIA GPUs (H100, H200, A100, B200, 4090), AMD GPUs (MI300X, MI325X) and Ascend NPU (A2, A3) --- ## Quick Start ### Installation ```bash uv pip install "sglang[diffusion]" --prerelease=allow ``` See [Installation Guide](installation.md) for more installation methods and ROCm-specific instructions. ### Basic Usage Generate an image with the CLI: ```bash sglang generate --model-path Qwen/Qwen-Image \ --prompt "A beautiful sunset over the mountains" \ --save-output ``` Or start a server with the OpenAI-compatible API: ```bash sglang serve --model-path Qwen/Qwen-Image --port 30010 ``` --- ## Documentation ### Getting Started - **[Installation](installation.md)** - Install SGLang Diffusion via pip, uv, Docker, or from source - **[Compatibility Matrix](compatibility_matrix.md)** - Supported models and optimization compatibility ### Usage - **[CLI Documentation](api/cli.md)** - Command-line interface for `sglang generate` and `sglang serve` - **[OpenAI API](api/openai_api.md)** - OpenAI-compatible API for image/video generation and LoRA management ### Performance Optimization - **[Performance Overview](performance/index.md)** - Overview of all performance optimization strategies - **[Attention Backends](performance/attention_backends.md)** - Available attention backends (FlashAttention, SageAttention, etc.) - **[Caching Strategies](performance/cache/)** - Cache-DiT and TeaCache acceleration - **[Profiling](performance/profiling.md)** - Profiling techniques with PyTorch Profiler and Nsight Systems ### Reference - **[Environment Variables](environment_variables.md)** - Configuration via environment variables - **[Support New Models](support_new_models.md)** - Guide for adding new diffusion models - **[Contributing](contributing.md)** - Contribution guidelines and commit message conventions - **[CI Performance](ci_perf.md)** - Performance baseline generation script --- ## CLI Quick Reference ### Generate (one-off generation) ```bash sglang generate --model-path --prompt "" --save-output ``` ### Serve (HTTP server) ```bash sglang serve --model-path --port 30010 ``` ### Enable Cache-DiT acceleration ```bash SGLANG_CACHE_DIT_ENABLED=true sglang generate --model-path --prompt "" ``` --- ## References - [SGLang GitHub](https://github.com/sgl-project/sglang) - [Cache-DiT](https://github.com/vipshop/cache-dit) - [FastVideo](https://github.com/hao-ai-lab/FastVideo) - [xDiT](https://github.com/xdit-project/xDiT) - [Diffusers](https://github.com/huggingface/diffusers)