English

Attn-QAT: 4-Bit Attention With Quantization-Aware Training

Machine Learning 2026-03-10 v2 Artificial Intelligence

Abstract

Achieving reliable 4-bit attention is a prerequisite for end-to-end FP4 computation on emerging FP4-capable GPUs, yet attention remains the main obstacle due to FP4's tiny dynamic range and attention's heavy-tailed activations. This paper presents the first systematic study of 4-bit quantization-aware training (QAT) for attention. We find that "drop-in" QAT, which naively combines an FP4 forward pass with a high-precision Flash Attention (FA)-style backward pass, leads to training instability. We identify two key principles for stable FP4 attention: (1) matching low-precision recomputation of attention scores in the backward pass, and (2) resolving implicit precision assumptions in FA's gradient calculation. Based on these insights, we propose Attn-QAT and implement fused Triton kernels for training as well as FP4 inference kernels. Across diffusion and language models, Attn-QAT recovers the quality drop from FP4 attention without explicit outlier-mitigation heuristics used in prior FP4 attention, and delivers up to a 1.5x speedup on an RTX 5090. Video demos can be found at https://drive.google.com/drive/folders/190F6xbBDUF2kGQYIcXBt3ehSYij5jlim?usp=sharing.

Keywords

Cite

@article{arxiv.2603.00040,
  title  = {Attn-QAT: 4-Bit Attention With Quantization-Aware Training},
  author = {Peiyuan Zhang and Matthew Noto and Wenxuan Tan and Chengquan Jiang and Will Lin and Wei Zhou and Hao Zhang},
  journal= {arXiv preprint arXiv:2603.00040},
  year   = {2026}
}
R2 v1 2026-07-01T10:56:09.058Z