Track-SQL: Enhancing Generative Language Models with Dual-Extractive Modules for Schema and Context Tracking in Multi-turn Text-to-SQL explores Track-SQL enhances generative language models with dual-extractive modules for improved schema and context tracking in multi-turn Text-to-SQL, achieving state-of-the-art performance.. Commercial viability score: 8/10 in Text-to-SQL.
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