CVAIJun 11, 2024

AsyncDiff: Parallelizing Diffusion Models by Asynchronous Denoising

arXiv:2406.06911v325 citationsHas Code
Originality Highly original
AI Analysis

This addresses the inference speed bottleneck for users of diffusion models, offering a plug-and-play acceleration method.

The paper tackles the high latency of diffusion models by introducing AsyncDiff, a parallelization scheme that achieves a 2.7x to 4.0x speedup on Stable Diffusion v2.1 with minimal quality degradation.

Diffusion models have garnered significant interest from the community for their great generative ability across various applications. However, their typical multi-step sequential-denoising nature gives rise to high cumulative latency, thereby precluding the possibilities of parallel computation. To address this, we introduce AsyncDiff, a universal and plug-and-play acceleration scheme that enables model parallelism across multiple devices. Our approach divides the cumbersome noise prediction model into multiple components, assigning each to a different device. To break the dependency chain between these components, it transforms the conventional sequential denoising into an asynchronous process by exploiting the high similarity between hidden states in consecutive diffusion steps. Consequently, each component is facilitated to compute in parallel on separate devices. The proposed strategy significantly reduces inference latency while minimally impacting the generative quality. Specifically, for the Stable Diffusion v2.1, AsyncDiff achieves a 2.7x speedup with negligible degradation and a 4.0x speedup with only a slight reduction of 0.38 in CLIP Score, on four NVIDIA A5000 GPUs. Our experiments also demonstrate that AsyncDiff can be readily applied to video diffusion models with encouraging performances. The code is available at https://github.com/czg1225/AsyncDiff.

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