DBAICLIROct 15, 2024

LR-SQL: A Supervised Fine-Tuning Method for Text2SQL Tasks under Low-Resource Scenarios

arXiv:2410.11457v14 citationsh-index: 1Has CodeElectronics
Originality Incremental advance
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This addresses a resource efficiency problem for researchers and practitioners working on Text2SQL in low-resource scenarios, representing an incremental improvement.

The paper tackles the high GPU memory demands in fine-tuning large language models for Text2SQL tasks by proposing LR-SQL, a method that reduces total GPU memory usage by 40% while only losing 2% accuracy in schema linking and 0.6% in execution accuracy.

Large language models revolutionize Text2SQL through supervised fine-tuning, yet a crucial limitation is overlooked: the complexity of databases leads to an increased context length, consequently resulting in higher GPU memory demands for model fine-tuning. To address this issue, we propose LR-SQL. LR-SQL comprises two supervised fine-tuning models: the schema\_link model and the SQL\_generation model, with the schema\_link model serving as the focal point for streamlining the overall process. During the fine-tuning of the schema\_link model, LR-SQL breaks down the complete database into flexible combinations of tables with adjustable quantities, enabling the model to learn the relationships within the entire database from these dispersed slices. Furthermore, to enhance the model's ability to perceive the relationships among various discrete slices during inference, LR-SQL trains the model's Chain-of-Thought capability for this task. Experimental results demonstrate that LR-SQL can reduce the total GPU memory usage by 40\% compared to existing fine-tuning methods, while only losing 2\% of table prediction accuracy in schema\_link task. For the overall Text2SQL task, the Execution Accuracy decrease by 0.6\%.Our project is now available on https://github.com/hongWin/LR-SQL

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