arXiv Open Access 2025

Agent Bain vs. Agent McKinsey: A New Text-to-SQL Benchmark for the Business Domain

Yue Li Ran Tao Derek Hommel Yusuf Denizay Dönder Sungyong Chang +2 lainnya
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Abstrak

Text-to-SQL benchmarks have traditionally only tested simple data access as a translation task of natural language to SQL queries. But in reality, users tend to ask diverse questions that require more complex responses including data-driven predictions or recommendations. Using the business domain as a motivating example, we introduce CORGI, a new benchmark that expands text-to-SQL to reflect practical database queries encountered by end users. CORGI is composed of synthetic databases inspired by enterprises such as DoorDash, Airbnb, and Lululemon. It provides questions across four increasingly complicated categories of business queries: descriptive, explanatory, predictive, and recommendational. This challenge calls for causal reasoning, temporal forecasting, and strategic recommendation, reflecting multi-level and multi-step agentic intelligence. We find that LLM performance degrades on higher-level questions as question complexity increases. CORGI also introduces and encourages the text-to-SQL community to consider new automatic methods for evaluating open-ended, qualitative responses in data access tasks. Our experiments show that LLMs exhibit an average 33.12% lower success execution rate (SER) on CORGI compared to existing benchmarks such as BIRD, highlighting the substantially higher complexity of real-world business needs. We release the CORGI dataset, an evaluation framework, and a submission website to support future research.

Topik & Kata Kunci

Penulis (7)

Y

Yue Li

R

Ran Tao

D

Derek Hommel

Y

Yusuf Denizay Dönder

S

Sungyong Chang

D

David Mimno

U

Unso Eun Seo Jo

Format Sitasi

Li, Y., Tao, R., Hommel, D., Dönder, Y.D., Chang, S., Mimno, D. et al. (2025). Agent Bain vs. Agent McKinsey: A New Text-to-SQL Benchmark for the Business Domain. https://arxiv.org/abs/2510.07309

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Tahun Terbit
2025
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en
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arXiv
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Open Access ✓