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Hauptverfasser: Han, Shihao, Yang, Hao, Hu, Xinting, Mei, Xiaofeng, Jiang, Yi, Qi, Xiaojuan
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2605.30325
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author Han, Shihao
Yang, Hao
Hu, Xinting
Mei, Xiaofeng
Jiang, Yi
Qi, Xiaojuan
author_facet Han, Shihao
Yang, Hao
Hu, Xinting
Mei, Xiaofeng
Jiang, Yi
Qi, Xiaojuan
contents Scaling Diffusion Transformers to generate high-resolution, long videos is constrained by the quadratic cost of self-attention, and existing sparse attention methods degrade under high sparsity. We show empirically that generation quality is determined not by the sparsity ratio itself, but by how well the sparse mask aligns with the tile-wise geometry of full attention. Based on this insight, we propose Veda, a distilled sparse attention framework that formulates tile selection as an explicit reconstruction problem from full attention. Veda integrates statistics-aware tile scoring with head-aware tiling to reduce estimation error and structural mismatch, enabling aggressive sparsity. A hardware-efficient tile-skipping kernel converts theoretical sparsity into practical wall-clock speedups. Experiments on large video diffusion models, including Waver and Wan2.1, demonstrate substantial acceleration with no noticeable degradation in generation quality. To generate 720P 10-second videos on Waver-T2V-12B, Veda achieves a 5.1$\times$ end-to-end speedup and a 10.5$\times$ self-attention speedup, reducing attention overhead from 92% to 50%. Notably, the gains increase with sequence length, indicating that Veda scales favorably with spatiotemporal resolution across models.
format Preprint
id arxiv_https___arxiv_org_abs_2605_30325
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Veda: Scalable Video Diffusion via Distilled Sparse Attention
Han, Shihao
Yang, Hao
Hu, Xinting
Mei, Xiaofeng
Jiang, Yi
Qi, Xiaojuan
Computer Vision and Pattern Recognition
Scaling Diffusion Transformers to generate high-resolution, long videos is constrained by the quadratic cost of self-attention, and existing sparse attention methods degrade under high sparsity. We show empirically that generation quality is determined not by the sparsity ratio itself, but by how well the sparse mask aligns with the tile-wise geometry of full attention. Based on this insight, we propose Veda, a distilled sparse attention framework that formulates tile selection as an explicit reconstruction problem from full attention. Veda integrates statistics-aware tile scoring with head-aware tiling to reduce estimation error and structural mismatch, enabling aggressive sparsity. A hardware-efficient tile-skipping kernel converts theoretical sparsity into practical wall-clock speedups. Experiments on large video diffusion models, including Waver and Wan2.1, demonstrate substantial acceleration with no noticeable degradation in generation quality. To generate 720P 10-second videos on Waver-T2V-12B, Veda achieves a 5.1$\times$ end-to-end speedup and a 10.5$\times$ self-attention speedup, reducing attention overhead from 92% to 50%. Notably, the gains increase with sequence length, indicating that Veda scales favorably with spatiotemporal resolution across models.
title Veda: Scalable Video Diffusion via Distilled Sparse Attention
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2605.30325