English

LoSA: Locality Aware Sparse Attention for Block-Wise Diffusion Language Models

Computation and Language 2026-04-15 v1 Machine Learning

Abstract

Block-wise diffusion language models (DLMs) generate multiple tokens in any order, offering a promising alternative to the autoregressive decoding pipeline. However, they still remain bottlenecked by memory-bound attention in long-context scenarios. Naive sparse attention fails on DLMs due to a KV Inflation problem, where different queries select different prefix positions, making the union of accessed KV pages large. To address this, we observe that between consecutive denoising steps, only a small fraction of active tokens exhibit significant hidden-state changes, while the majority of stable tokens remain nearly constant. Based on this insight, we propose LOSA (Locality-aware Sparse Attention), which reuses cached prefix-attention results for stable tokens and applies sparse attention only to active tokens. This substantially shrinks the number of KV indices that must be loaded, yielding both higher speedup and higher accuracy. Across multiple block-wise DLMs and benchmarks, LOSA preserves near-dense accuracy while significantly improving efficiency, achieving up to +9 points in average accuracy at aggressive sparsity levels while maintaining 1.54x lower attention density. It also achieves up to 4.14x attention speedup on RTX A6000 GPUs, demonstrating the effectiveness of the proposed method.

Keywords

Cite

@article{arxiv.2604.12056,
  title  = {LoSA: Locality Aware Sparse Attention for Block-Wise Diffusion Language Models},
  author = {Haocheng Xi and Harman Singh and Yuezhou Hu and Coleman Hooper and Rishabh Tiwari and Aditya Tomar and Minjae Lee and Wonjun Kang and Michael Mahoney and Chenfeng Xu and Kurt Keutzer and Amir Gholami},
  journal= {arXiv preprint arXiv:2604.12056},
  year   = {2026}
}

Comments

16 pages, 11 figures, 6 tables

R2 v1 2026-07-01T12:07:36.628Z