QueryWeaver
### TL;DR
QueryWeaver is an open-source Text2SQL tool developed by FalkorDB that transforms natural language queries into SQL using graph-powered schema understanding. It enables users to interact with databases in plain English, simplifying the process of generating accurate SQL queries. ([github.com](https://github.com/FalkorDB/QueryWeaver?utm_source=openai))
Key Insights & Metrics
Key Features
- Converts natural language questions into SQL queries.
- Utilizes graph-powered schema understanding for accurate query generation.
- Open-source project allowing for community contributions and adaptations.
- Supports complex enterprise schemas for enhanced data analysis.
- Provides a REST API and Model Context Protocol (MCP) for integration.
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