Tactic: Adaptive Sparse Attention with Clustering and Distribution Fitting for Long-Context LLMs

Abstract

Long-context models are essential for many applications but face inefficiencies in loading large KV caches during decoding. Prior methods enforce fixed token budgets for sparse attention, assuming a set number of tokens can approximate full attention. However, these methods overlook variations in the importance of attention across heads, layers, and contexts. To address these limitations, we propose Tactic, a sparsity-adaptive and calibration-free sparse attention mechanism that dynamically selects tokens based on their cumulative attention scores rather than a fixed token budget. By setting a target fraction of total attention scores, Tactic ensures that token selection naturally adapts to variations in attention sparsity. To efficiently approximate this selection, Tactic leverages clustering-based sorting and distribution fitting, allowing it to accurately estimate token importance with minimal computational overhead. We show that Tactic outperforms existing sparse attention algorithms, achieving superior accuracy and up to 5.14x decode attention speedup. This improvement translates to an overall 1.51x end-to-end inference speedup, making Tactic a practical and effective solution for long-context LLM inference in accuracy-sensitive applications.

Cite

Text

Zhu et al. "Tactic: Adaptive Sparse Attention with Clustering and Distribution Fitting for Long-Context LLMs." International Conference on Learning Representations, 2026.

Markdown

[Zhu et al. "Tactic: Adaptive Sparse Attention with Clustering and Distribution Fitting for Long-Context LLMs." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/zhu2026iclr-tactic/)

BibTeX

@inproceedings{zhu2026iclr-tactic,
  title     = {{Tactic: Adaptive Sparse Attention with Clustering and Distribution Fitting for Long-Context LLMs}},
  author    = {Zhu, Kan and Tang, Tian and Xu, Qinyu and Jin, Zhan and Gu, Yile and Zeng, Zhichen and Kadekodi, Rohan and Zhao, Liangyu and Li, Ang and Krishnamurthy, Arvind and Kasikci, Baris},
  booktitle = {International Conference on Learning Representations},
  year      = {2026},
  url       = {https://mlanthology.org/iclr/2026/zhu2026iclr-tactic/}
}