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A Unified Cache Acceleration Framework for 🤗 Diffusers: Qwen-Image, Qwen-Image-Lightning, HunyuanImage, FLUX.1, Wan 2.1/2.2, etc.

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A Unified, Flexible and Training-free Cache Acceleration Framework for 🤗Diffusers
♥️ Cache Acceleration with One-line Code ~ ♥️

🎉Now, cache-dit covers almost All Diffusers' DiT Pipelines🎉
🔥Qwen-Image | Qwen-Image-Edit | Qwen-Image-Edit-Plus 🔥
🔥FLUX.1 | Qwen-Image-Lightning 4/8 Steps | Wan 2.1 | Wan 2.2 🔥
🔥HunyuanImage-2.1 | HunyuanVideo | HunyuanDiT | HiDream | AuraFlow🔥
🔥CogView3Plus | CogView4 | LTXVideo | CogVideoX | CogVideoX 1.5 | ConsisID🔥
🔥Cosmos | SkyReelsV2 | VisualCloze | OmniGen 1/2 | Lumina 1/2 | PixArt🔥
🔥Chroma | Sana | Allegro | Mochi | SD 3/3.5 | Amused | ... | DiT-XL🔥
♥️ Please consider to leave a ⭐️ Star to support us ~ ♥️

🔥Wan2.2 MoE | +cache-dit:2.0x↑🎉 | HunyuanVideo | +cache-dit:2.1x↑🎉

🔥Qwen-Image | +cache-dit:1.8x↑🎉 | FLUX.1-dev | +cache-dit:2.1x↑🎉

🔥Qwen...Lightning | +cache-dit:1.14x↑🎉 | HunyuanImage | +cache-dit:1.7x↑🎉

🔥Qwen-Image-Edit | Input w/o Edit | Baseline | +cache-dit:1.6x↑🎉 | 1.9x↑🎉

🔥Click here to show many Image/Video cases🔥

🔥FLUX-Kontext-dev | Baseline | +cache-dit:1.3x↑🎉 | 1.7x↑🎉 | 2.0x↑ 🎉

🔥HiDream-I1 | +cache-dit:1.9x↑🎉 | CogView4 | +cache-dit:1.4x↑🎉 | 1.7x↑🎉

🔥CogView3 | +cache-dit:1.5x↑🎉 | 2.0x↑🎉| Chroma1-HD | +cache-dit:1.9x↑🎉

🔥Mochi-1-preview | +cache-dit:1.8x↑🎉 | SkyReelsV2 | +cache-dit:1.6x↑🎉

🔥VisualCloze-512 | Model | Cloth | Baseline | +cache-dit:1.4x↑🎉 | 1.7x↑🎉

🔥LTX-Video-0.9.7 | +cache-dit:1.7x↑🎉 | CogVideoX1.5 | +cache-dit:2.0x↑🎉

🔥OmniGen-v1 | +cache-dit:1.5x↑🎉 | 3.3x↑🎉 | Lumina2 | +cache-dit:1.9x↑🎉

🔥Allegro | +cache-dit:1.36x↑🎉 | AuraFlow-v0.3 | +cache-dit:2.27x↑🎉

🔥Sana | +cache-dit:1.3x↑🎉 | 1.6x↑🎉| PixArt-Sigma | +cache-dit:2.3x↑🎉

🔥PixArt-Alpha | +cache-dit:1.6x↑🎉 | 1.8x↑🎉| SD 3.5 | +cache-dit:2.5x↑🎉

🔥Asumed | +cache-dit:1.1x↑🎉 | 1.2x↑🎉 | DiT-XL-256 | +cache-dit:1.8x↑🎉
♥️ Please consider to leave a ⭐️ Star to support us ~ ♥️

🔥Hightlight

We are excited to announce that the first API-stable version (v1.0.0) of cache-dit has finally been released! cache-dit is a Unified, Flexible, and Training-free cache acceleration framework for 🤗 Diffusers, enabling cache acceleration with just one line of code. Key features include Unified Cache APIs, Forward Pattern Matching, Automatic Block Adapter, Hybrid Forward Pattern, DBCache, TaylorSeer Calibrator, and Cache CFG.

pip3 install -U cache-dit # pip3 install git+https://github.com/vipshop/cache-dit.git

You can install the stable release of cache-dit from PyPI, or the latest development version from GitHub. Then try ♥️ Cache Acceleration with just one line of code ~ ♥️

>>> import cache_dit
>>> from diffusers import DiffusionPipeline
>>> pipe = DiffusionPipeline.from_pretrained("Qwen/Qwen-Image") # Can be any diffusion pipeline
>>> cache_dit.enable_cache(pipe) # One-line code with default cache options.
>>> output = pipe(...) # Just call the pipe as normal.
>>> stats = cache_dit.summary(pipe) # Then, get the summary of cache acceleration stats.
>>> cache_dit.disable_cache(pipe) # Disable cache and run original pipe.

📚Core Features

  • 🎉Full 🤗Diffusers Support: Notably, cache-dit now supports nearly all of Diffusers' DiT-based pipelines, such as Qwen-Image, FLUX.1, Qwen-Image-Lightning, HunyuanImage-2.1, HunyuanVideo, HunyuanDiT, Wan 2.1/2.2, HiDream, AuraFlow, CogView3Plus, CogView4, LTXVideo, CogVideoX 1.5, ConsisID, SkyReelsV2, VisualCloze, OmniGen, Lumina, PixArt, Chroma, Sana, Allegro, Mochi, SD 3.5, Amused, and DiT-XL.
  • 🎉Extremely Easy to Use: In most cases, you only need one line of code: cache_dit.enable_cache(...). After calling this API, just use the pipeline as normal.
  • 🎉Easy New Model Integration: Features like Unified Cache APIs, Forward Pattern Matching, Automatic Block Adapter, Hybrid Forward Pattern, and Patch Functor make it highly functional and flexible. For example, we achieved 🎉 Day 1 support for HunyuanImage-2.1 with 1.7x speedup w/o precision loss—even before it was available in the Diffusers library.
  • 🎉State-of-the-Art Performance: Compared with algorithms including Δ-DiT, Chipmunk, FORA, DuCa, TaylorSeer and FoCa, cache-dit achieves the best accuracy when the speedup ratio is below 4x.
  • 🎉Support for 4/8-Steps Distilled Models: Surprisingly, cache-dit's DBCache works for extremely few-step distilled models—something many other methods fail to do.
  • 🎉Compatibility with Other Optimizations: Designed to work seamlessly with torch.compile, model CPU offload, sequential CPU offload, group offloading, etc.
  • 🎉Hybrid Cache Acceleration: Now supports hybrid DBCache + Calibrator schemes (e.g., DBCache + TaylorSeerCalibrator). DBCache acts as the Indicator to decide when to cache, while the Calibrator decides how to cache. More mainstream cache acceleration algorithms (e.g., FoCa) will be supported in the future, along with additional benchmarks—stay tuned for updates!
  • 🤗Diffusers Ecosystem Integration: 🔥cache-dit has joined the Diffusers community ecosystem as the first DiT-specific cache acceleration framework! Check out the documentation here:

image-reward-bench

🔥Important News

Previous News

📚User Guide

For more advanced features such as Unified Cache APIs, Forward Pattern Matching, Automatic Block Adapter, Hybrid Forward Pattern, Patch Functor, DBCache, TaylorSeer Calibrator, and Hybrid Cache CFG, please refer to the 🎉User_Guide.md for details.

👋Contribute

How to contribute? Star ⭐️ this repo to support us or check CONTRIBUTE.md.

©️Acknowledgements

The cache-dit codebase is adapted from FBCache. Over time its codebase diverged a lot, and cache-dit API is no longer compatible with FBCache.

©️Special Acknowledgements

Special thanks to vipshop's Computer Vision AI Team for supporting document, testing and production-level deployment of this project.

©️Citations

@misc{cache-dit@2025,
  title={cache-dit: A Unified, Flexible and Training-free Cache Acceleration Framework for Diffusers.},
  url={https://github.com/vipshop/cache-dit.git},
  note={Open-source software available at https://github.com/vipshop/cache-dit.git},
  author={vipshop.com},
  year={2025}
}