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QUITE: A Query Rewrite System Beyond Rules with LLM Agents

9 June 2025
Yuyang Song
Hanxu Yan
Jiale Lao
Yibo Wang
Yufei Li
Yuanchun Zhou
Jianguo Wang
Mingjie Tang
    LRM
ArXiv (abs)PDFHTML
Main:12 Pages
9 Figures
Bibliography:2 Pages
10 Tables
Abstract

Query rewrite transforms SQL queries into semantically equivalent forms that run more efficiently. Existing approaches mainly rely on predefined rewrite rules, but they handle a limited subset of queries and can cause performance regressions. This limitation stems from three challenges of rule-based query rewrite: (1) it is hard to discover and verify new rules, (2) fixed rewrite rules do not generalize to new query patterns, and (3) some rewrite techniques cannot be expressed as fixed rules. Motivated by the fact that human experts exhibit significantly better rewrite ability but suffer from scalability, and Large Language Models (LLMs) have demonstrated nearly human-level semantic and reasoning abilities, we propose a new approach of using LLMs to rewrite SQL queries beyond rules. Due to the hallucination problems in LLMs, directly applying LLMs often leads to nonequivalent and suboptimal queries. To address this issue, we propose QUITE (query rewrite), a training-free and feedback-aware system based on LLM agents that rewrites SQL queries into semantically equivalent forms with significantly better performance, covering a broader range of query patterns and rewrite strategies compared to rule-based methods. Firstly, we design a multi-agent framework controlled by a finite state machine (FSM) to equip LLMs with the ability to use external tools and enhance the rewrite process with real-time database feedback. Secondly, we develop a rewrite middleware to enhance the ability of LLMs to generate optimized query equivalents. Finally, we employ a novel hint injection technique to improve execution plans for rewritten queries. Extensive experiments show that QUITE reduces query execution time by up to 35.8% over state-of-the-art approaches and produces 24.1% more rewrites than prior methods, covering query cases that earlier systems did not handle.

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@article{song2025_2506.07675,
  title={ QUITE: A Query Rewrite System Beyond Rules with LLM Agents },
  author={ Yuyang Song and Hanxu Yan and Jiale Lao and Yibo Wang and Yufei Li and Yuanchun Zhou and Jianguo Wang and Mingjie Tang },
  journal={arXiv preprint arXiv:2506.07675},
  year={ 2025 }
}
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