Squrve: A Unified and Modular Framework for Complex Real-World Text-to-SQL Tasks
Wang, Yihan, Liu, Peiyu, Chen, Runyu, Pu, Jiaxing, Xu, Wei
–arXiv.org Artificial Intelligence
Text-to-SQL technology has evolved rapidly, with diverse academic methods achieving impressive results. However, deploying these techniques in real-world systems remains challenging due to limited integration tools. Despite these advances, we introduce Squrve, a unified, modular, and extensive Text-to-SQL framework designed to bring together research advances and real-world applications. Squrve first establishes a universal execution paradigm that standardizes invocation interfaces, then proposes a multi-actor collaboration mechanism based on seven abstracted effective atomic actor components. Experiments on widely adopted benchmarks demonstrate that the collaborative workflows consistently outperform the original individual methods, thereby opening up a new effective avenue for tackling complex real-world queries. The codes are available at https://github.com/Satissss/Squrve.
arXiv.org Artificial Intelligence
Oct-29-2025
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