Saved in:
Bibliographic Details
Main Authors: Shmilovich, Dor, Wu, Tony, Dahan, Aviad, Domb, Yuval
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.11062
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866912708847206400
author Shmilovich, Dor
Wu, Tony
Dahan, Aviad
Domb, Yuval
author_facet Shmilovich, Dor
Wu, Tony
Dahan, Aviad
Domb, Yuval
contents Diffusion Transformers, particularly for video generation, achieve remarkable quality but suffer from quadratic attention complexity, leading to prohibitive latency. Existing acceleration methods face a fundamental trade-off: dynamically estimating sparse attention patterns at each denoising step incurs high computational overhead and estimation errors, while static sparsity patterns remain fixed and often suboptimal throughout denoising. We identify a key structural property of diffusion attention, namely, its sparsity patterns exhibit strong temporal coherence across denoising steps. Tiles deemed non-essential at step $t$ typically remain so at step $t+δ$. Leveraging this observation, we introduce LiteAttention, a method that exploits temporal coherence to enable evolutionary computation skips across the denoising sequence. By marking non-essential tiles early and propagating skip decisions forward, LiteAttention eliminates redundant attention computations without repeated profiling overheads, combining the adaptivity of dynamic methods with the efficiency of static ones. We implement a highly optimized LiteAttention kernel on top of FlashAttention and demonstrate substantial speedups on production video diffusion models, with no degradation in quality. The code and implementation details will be publicly released.
format Preprint
id arxiv_https___arxiv_org_abs_2511_11062
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle LiteAttention: A Temporal Sparse Attention for Diffusion Transformers
Shmilovich, Dor
Wu, Tony
Dahan, Aviad
Domb, Yuval
Computer Vision and Pattern Recognition
Artificial Intelligence
Diffusion Transformers, particularly for video generation, achieve remarkable quality but suffer from quadratic attention complexity, leading to prohibitive latency. Existing acceleration methods face a fundamental trade-off: dynamically estimating sparse attention patterns at each denoising step incurs high computational overhead and estimation errors, while static sparsity patterns remain fixed and often suboptimal throughout denoising. We identify a key structural property of diffusion attention, namely, its sparsity patterns exhibit strong temporal coherence across denoising steps. Tiles deemed non-essential at step $t$ typically remain so at step $t+δ$. Leveraging this observation, we introduce LiteAttention, a method that exploits temporal coherence to enable evolutionary computation skips across the denoising sequence. By marking non-essential tiles early and propagating skip decisions forward, LiteAttention eliminates redundant attention computations without repeated profiling overheads, combining the adaptivity of dynamic methods with the efficiency of static ones. We implement a highly optimized LiteAttention kernel on top of FlashAttention and demonstrate substantial speedups on production video diffusion models, with no degradation in quality. The code and implementation details will be publicly released.
title LiteAttention: A Temporal Sparse Attention for Diffusion Transformers
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2511.11062