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Is Long Context All You Need? Leveraging LLM's Extended Context for NL2SQL

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Large Language Models (LLMs) have demonstrated impressive capabilities across a range of natural language processing tasks. In particular, improvements in reasoning abilities and the expansion of context windows have opened new avenues for leveraging these powerful models. NL2SQL is challenging in that the natural language question is inherently ambiguous, while the SQL generation requires a precise understanding of complex data schema and semantics. One approach to this semantic ambiguous problem is to provide more and sufficient contextual information. In this work, we explore the performance and the latency trade-offs of the extended context window (a.k.a., long context) offered by Google's state-of-the-art LLM (\textit{gemini-1.5-pro}). We study the impact of various contextual information, including column example values, question and SQL query pairs, user-provided hints, SQL documentation, and schema. To the best of our knowledge, this is the first work to study how the extended context window and extra contextual information can help NL2SQL generation with respect to both accuracy and latency cost. We show that long context LLMs are robust and do not get lost in the extended contextual information. Additionally, our long-context NL2SQL pipeline based on Google's \textit{gemini-pro-1.5} achieve strong performances on various benchmark datasets without finetuning and expensive self-consistency based techniques.

Yeounoh Chung, Gaurav T. Kakkar, Yu Gan, Brenton Milne, Fatma Ozcan• 2025

Related benchmarks

TaskDatasetResultRank
Text-to-SQLBird
Total Execution Accuracy66.3
64
RetrievalBird
Recall@1096.1
9
Table RetrievalFIBEN
Recall@1041.3
9
Table RetrievalBEAVER
Recall@1027.7
9
Text-to-SQLBEAVER
Execution Accuracy (EX)27.3
4
Text-to-SQLFIBEN
Execution Accuracy (EX)13.7
4
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