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Relational Feature Caching for Accelerating Diffusion Transformers

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Feature caching approaches accelerate diffusion transformers (DiTs) by storing the output features of computationally expensive modules at certain timesteps, and exploiting them for subsequent steps to reduce redundant computations. Recent forecasting-based caching approaches employ temporal extrapolation techniques to approximate the output features with cached ones. Although effective, relying exclusively on temporal extrapolation still suffers from significant prediction errors, leading to performance degradation. Through a detailed analysis, we find that 1) these errors stem from the irregular magnitude of changes in the output features, and 2) an input feature of a module is strongly correlated with the corresponding output. Based on this, we propose relational feature caching (RFC), a novel framework that leverages the input-output relationship to enhance the accuracy of the feature prediction. Specifically, we introduce relational feature estimation (RFE) to estimate the magnitude of changes in the output features from the inputs, enabling more accurate feature predictions. We also present relational cache scheduling (RCS), which estimates the prediction errors using the input features and performs full computations only when the errors are expected to be substantial. Extensive experiments across various DiT models demonstrate that RFC consistently outperforms prior approaches significantly. Project page is available at https://cvlab.yonsei.ac.kr/projects/RFC

Byunggwan Son, Jeimin Jeon, Jeongwoo Choi, Bumsub Ham• 2026

Related benchmarks

TaskDatasetResultRank
Class-conditional Image GenerationImageNet
FID2.52
132
Text-to-Video GenerationVBench HunyuanVideo (test)
VBench Score (%)80.83
21
Text-to-Video GenerationVBench (test)
Total Score80.83
14
Text-to-Image GenerationDrawBench FLUX.1 (dev)
IR0.9499
13
Image GenerationLSUN Bedroom (test)
FID2FC8.55
6
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