English

AB-Cache: Training-Free Acceleration of Diffusion Models via Adams-Bashforth Cached Feature Reuse

Machine Learning 2025-04-16 v1 Artificial Intelligence Machine Learning

Abstract

Diffusion models have demonstrated remarkable success in generative tasks, yet their iterative denoising process results in slow inference, limiting their practicality. While existing acceleration methods exploit the well-known U-shaped similarity pattern between adjacent steps through caching mechanisms, they lack theoretical foundation and rely on simplistic computation reuse, often leading to performance degradation. In this work, we provide a theoretical understanding by analyzing the denoising process through the second-order Adams-Bashforth method, revealing a linear relationship between the outputs of consecutive steps. This analysis explains why the outputs of adjacent steps exhibit a U-shaped pattern. Furthermore, extending Adams-Bashforth method to higher order, we propose a novel caching-based acceleration approach for diffusion models, instead of directly reusing cached results, with a truncation error bound of only O(hk)O(h^k) where hh is the step size. Extensive validation across diverse image and video diffusion models (including HunyuanVideo and FLUX.1-dev) with various schedulers demonstrates our method's effectiveness in achieving nearly 3×3\times speedup while maintaining original performance levels, offering a practical real-time solution without compromising generation quality.

Keywords

Cite

@article{arxiv.2504.10540,
  title  = {AB-Cache: Training-Free Acceleration of Diffusion Models via Adams-Bashforth Cached Feature Reuse},
  author = {Zichao Yu and Zhen Zou and Guojiang Shao and Chengwei Zhang and Shengze Xu and Jie Huang and Feng Zhao and Xiaodong Cun and Wenyi Zhang},
  journal= {arXiv preprint arXiv:2504.10540},
  year   = {2025}
}
R2 v1 2026-06-28T22:58:08.665Z