Many existing end-to-end systems for hybrid question answering tasks can often be boiled down to a "prompt-and-pray" paradigm, where the user has limited control and insight into the intermediate reasoning steps used to achieve the final result. Additionally, due to the context size limitation of many transformer-based LLMs, it is often not reasonable to expect that the full structured and unstructured context will fit into a given prompt in a zero-shot setting, let alone a few-shot setting. We introduce BlendSQL, a superset of SQLite to act as a unified dialect for orchestrating reasoning across both unstructured and structured data. For hybrid question answering tasks involving multi-hop reasoning, we encode the full decomposed reasoning roadmap into a single interpretable BlendSQL query. Notably, we show that BlendSQL can scale to massive datasets and improve the performance of end-to-end systems while using 35% fewer tokens. Our code is available and installable as a package at https://github.com/parkervg/blendsql.
BlendSQL: A Scalable Dialect for Unifying Hybrid Question Answering in Relational Algebra
BlendSQL, a unified SQL dialect, improves hybrid question answering systems by encoding multi-hop reasoning in interpretable queries, scaling to large datasets, and reducing token usage.
- Year
- 2024
- Venue
- arXiv 2024
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- 4
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- arxiv.org/abs/2402.17882v2ARXIV-DEFAULT
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