Text2VectorSQL: Towards a Unified Interface for Vector Search and SQL Queries

arXiv — cs.CLFriday, November 7, 2025 at 5:00:00 AM

Text2VectorSQL: Towards a Unified Interface for Vector Search and SQL Queries

The introduction of Text2VectorSQL marks a significant advancement in how we interact with both structured and unstructured data. By bridging the gap between traditional SQL queries and modern vector search techniques, this new interface aims to simplify the querying process, making it more accessible for users. This is important because as data continues to grow in complexity, having a unified approach can enhance data retrieval efficiency and accuracy, ultimately benefiting various industries that rely on data-driven decisions.
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