LGAICVOct 9, 2025

FreqCa: Accelerating Diffusion Models via Frequency-Aware Caching

CMU
arXiv:2510.08669v19 citationsh-index: 6
Originality Incremental advance
AI Analysis

This work addresses the computational bottleneck in diffusion models for AI practitioners, offering an incremental improvement over existing caching techniques.

The paper tackles the high inference cost of diffusion transformers by proposing FreqCa, a frequency-aware caching method that reuses low-frequency features and predicts high-frequency ones, reducing memory footprint by 99% and demonstrating effectiveness in generation and editing tasks.

The application of diffusion transformers is suffering from their significant inference costs. Recently, feature caching has been proposed to solve this problem by reusing features from previous timesteps, thereby skipping computation in future timesteps. However, previous feature caching assumes that features in adjacent timesteps are similar or continuous, which does not always hold in all settings. To investigate this, this paper begins with an analysis from the frequency domain, which reveal that different frequency bands in the features of diffusion models exhibit different dynamics across timesteps. Concretely, low-frequency components, which decide the structure of images, exhibit higher similarity but poor continuity. In contrast, the high-frequency bands, which decode the details of images, show significant continuity but poor similarity. These interesting observations motivate us to propose Frequency-aware Caching (FreqCa) which directly reuses features of low-frequency components based on their similarity, while using a second-order Hermite interpolator to predict the volatile high-frequency ones based on its continuity. Besides, we further propose to cache Cumulative Residual Feature (CRF) instead of the features in all the layers, which reduces the memory footprint of feature caching by 99%. Extensive experiments on FLUX.1-dev, FLUX.1-Kontext-dev, Qwen-Image, and Qwen-Image-Edit demonstrate its effectiveness in both generation and editing. Codes are available in the supplementary materials and will be released on GitHub.

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