English

MonarchAttention: Zero-Shot Conversion to Fast, Hardware-Aware Structured Attention

Machine Learning 2025-10-28 v2

Abstract

Transformers have achieved state-of-the-art performance across various tasks, but suffer from a notable quadratic complexity in sequence length due to the attention mechanism. In this work, we propose MonarchAttention -- a novel approach to sub-quadratic attention approximation via Monarch matrices, an expressive class of structured matrices. Based on the variational form of softmax, we describe an efficient optimization-based algorithm to compute an approximate projection of softmax attention onto the class of Monarch matrices with Θ(NNd)\Theta(N\sqrt{N} d) computational complexity and Θ(Nd)\Theta(Nd) memory/IO complexity. Unlike previous approaches, MonarchAttention is both (1) transferable, yielding minimal performance loss with no additional training, even when replacing every attention layer of the Transformer, and (2) hardware-efficient, utilizing the highest-throughput tensor core units on modern GPUs. With optimized kernels, MonarchAttention achieves substantial speed-ups in wall-time over FlashAttention-2: 1.4×1.4\times for shorter sequences (N=256)(N=256), 4.5×4.5\times for medium-length sequences (N=4K)(N=4K), and 8.2×8.2\times for longer sequences (N=16K)(N=16K). We demonstrate the quality of MonarchAttention on diverse tasks and architectures in vision and language problems, showing that it flexibly and accurately approximates softmax attention in a variety of contexts. Our code is available at https://github.com/cjyaras/monarch-attention.

Keywords

Cite

@article{arxiv.2505.18698,
  title  = {MonarchAttention: Zero-Shot Conversion to Fast, Hardware-Aware Structured Attention},
  author = {Can Yaras and Alec S. Xu and Pierre Abillama and Changwoo Lee and Laura Balzano},
  journal= {arXiv preprint arXiv:2505.18698},
  year   = {2025}
}

Comments

NeurIPS 2025 Spotlight

R2 v1 2026-07-01T02:35:55.086Z