Arctic-Text2SQL-R1: Simple Rewards, Strong Reasoning in Text-to-SQL

arXiv — cs.CLWednesday, January 14, 2026 at 5:00:00 AM
  • Arctic-Text2SQL-R1 has been introduced as a reinforcement learning framework aimed at improving the accuracy of SQL generation from natural language queries. This model leverages a simple reward signal based on execution correctness, addressing the challenges faced by large language models in producing executable SQL, particularly for complex queries.
  • The development of Arctic-Text2SQL-R1 is significant as it achieves state-of-the-art execution accuracy across multiple benchmarks, including the BIRD leaderboard, thereby enhancing the reliability of SQL generation in various applications.
  • This advancement reflects a broader trend in AI research focused on optimizing language models for specific tasks, such as SQL generation, while also addressing issues like multilingual reasoning and the integration of dynamic feedback mechanisms to improve model performance.
— via World Pulse Now AI Editorial System

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