DBAIHCLGDec 18, 2025

Scaling Text2SQL via LLM-efficient Schema Filtering with Functional Dependency Graph Rerankers

arXiv:2512.16083v11 citationsh-index: 33Has Code
Originality Incremental advance
AI Analysis

This addresses a critical bottleneck for database querying applications by enabling efficient handling of large schemas, though it is incremental as it builds on existing filtering approaches.

The paper tackles the problem of scaling Text2SQL systems to large real-world schemas that exceed LLM context limits by introducing a schema filtering framework that compacts prompts, achieving near-perfect recall and higher precision than existing methods while maintaining sub-second latency on schemas with over 23,000 columns.

Most modern Text2SQL systems prompt large language models (LLMs) with entire schemas -- mostly column information -- alongside the user's question. While effective on small databases, this approach fails on real-world schemas that exceed LLM context limits, even for commercial models. The recent Spider 2.0 benchmark exemplifies this with hundreds of tables and tens of thousands of columns, where existing systems often break. Current mitigations either rely on costly multi-step prompting pipelines or filter columns by ranking them against user's question independently, ignoring inter-column structure. To scale existing systems, we introduce \toolname, an open-source, LLM-efficient schema filtering framework that compacts Text2SQL prompts by (i) ranking columns with a query-aware LLM encoder enriched with values and metadata, (ii) reranking inter-connected columns via a lightweight graph transformer over functional dependencies, and (iii) selecting a connectivity-preserving sub-schema with a Steiner-tree heuristic. Experiments on real datasets show that \toolname achieves near-perfect recall and higher precision than CodeS, SchemaExP, Qwen rerankers, and embedding retrievers, while maintaining sub-second median latency and scaling to schemas with 23,000+ columns. Our source code is available at https://github.com/thanhdath/grast-sql.

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