Focus_mcp_sql

Created By
FocusSearcha year ago
A NL2SQL plugin based on FocusSearch keyword parsing, offering greater accuracy, higher speed, and more reliability!
Overview

What is Focus_mcp_sql?

Focus_mcp_sql is a natural language to SQL (NL2SQL) plugin that utilizes FocusSearch keyword parsing to convert natural language queries into SQL statements with improved accuracy, speed, and reliability.

How to use Focus_mcp_sql?

To use Focus_mcp_sql, clone the repository from GitHub, build the server using Gradle, and configure it in your Model Context Protocol (MCP) settings. You can then use the provided tools to convert natural language into SQL queries.

Key features of Focus_mcp_sql?

  • Two-step SQL generation process for better control over results.
  • Low hallucination risk due to keyword verification.
  • Fast and deterministic keyword-to-SQL conversion.
  • User-friendly for non-technical users.

Use cases of Focus_mcp_sql?

  1. Converting user queries into SQL for data retrieval.
  2. Assisting non-technical users in generating SQL queries.
  3. Enhancing the accuracy of SQL generation in applications.

FAQ from Focus_mcp_sql?

  • What is the advantage of using Focus_mcp_sql over traditional LLM frameworks?

Focus_mcp_sql offers a transparent two-step generation process, reducing hallucination risks and improving user trust in the generated SQL.

  • Is Focus_mcp_sql free to use?

Yes! Focus_mcp_sql is open-source and available for free on GitHub.

  • What are the prerequisites for using Focus_mcp_sql?

You need JDK 23 or higher and Gradle 8.12 or higher to build the server.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
FocusSearch
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