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RAPID^3: Tri-Level Reinforced Acceleration Policies for Diffusion Transformer

26 September 2025
Wangbo Zhao
Yizeng Han
Zhiwei Tang
Jiasheng Tang
Pengfei Zhou
Kai Wang
Bohan Zhuang
Zinan Lin
Fan Wang
Yang You
ArXiv (abs)PDFHTMLGithub (24372★)
Main:8 Pages
9 Figures
Bibliography:5 Pages
10 Tables
Appendix:9 Pages
Abstract

Diffusion Transformers (DiTs) excel at visual generation yet remain hampered by slow sampling. Existing training-free accelerators - step reduction, feature caching, and sparse attention - enhance inference speed but typically rely on a uniform heuristic or a manually designed adaptive strategy for all images, leaving quality on the table. Alternatively, dynamic neural networks offer per-image adaptive acceleration, but their high fine-tuning costs limit broader applicability. To address these limitations, we introduce RAPID3: Tri-Level Reinforced Acceleration Policies for Diffusion Transformers, a framework that delivers image-wise acceleration with zero updates to the base generator. Specifically, three lightweight policy heads - Step-Skip, Cache-Reuse, and Sparse-Attention - observe the current denoising state and independently decide their corresponding speed-up at each timestep. All policy parameters are trained online via Group Relative Policy Optimization (GRPO) while the generator remains frozen. Meanwhile, an adversarially learned discriminator augments the reward signal, discouraging reward hacking by boosting returns only when generated samples stay close to the original model's distribution. Across state-of-the-art DiT backbones, including Stable Diffusion 3 and FLUX, RAPID3 achieves nearly 3x faster sampling with competitive generation quality.

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