FloodSQL-Bench: A Retrieval-Augmented Benchmark for Geospatially-Grounded Text-to-SQL
By: Hanzhou Liu , Kai Yin , Zhitong Chen and more
Existing Text-to-SQL benchmarks primarily focus on single-table queries or limited joins in general-purpose domains, and thus fail to reflect the complexity of domain-specific, multi-table and geospatial reasoning, To address this limitation, we introduce FLOODSQL-BENCH, a geospatially grounded benchmark for the flood management domain that integrates heterogeneous datasets through key-based, spatial, and hybrid joins. The benchmark captures realistic flood-related information needs by combining social, infrastructural, and hazard data layers. We systematically evaluate recent large language models with the same retrieval-augmented generation settings and measure their performance across difficulty tiers. By providing a unified, open benchmark grounded in real-world disaster management data, FLOODSQL-BENCH establishes a practical testbed for advancing Text-to-SQL research in high-stakes application domains.
Similar Papers
GeoSQL-Eval: First Evaluation of LLMs on PostGIS-Based NL2GeoSQL Queries
Databases
Helps computers understand map questions and find answers.
Text2SQL-Flow: A Robust SQL-Aware Data Augmentation Framework for Text-to-SQL
Computation and Language
Makes AI better at understanding and writing database questions.
Text2SQL-Flow: A Robust SQL-Aware Data Augmentation Framework for Text-to-SQL
Computation and Language
Makes AI better at understanding and writing database questions.