Mcp Jacoco Reporter

Created By
crisschana year ago
Overview

What is MCP-JaCoCo?

MCP-JaCoCo is a server tool that converts JaCoCo code coverage reports into formats optimized for Large Language Models (LLMs), enhancing AI-driven analysis in software development.

How to use MCP-JaCoCo?

To use MCP-JaCoCo, install it using the provided configuration and run the jacoco_reporter_server to read JaCoCo XML reports and return coverage data in JSON format.

Key features of MCP-JaCoCo?

  • Smart conversion of JaCoCo XML reports into LLM-friendly JSON format.
  • Supports multiple coverage metrics (instruction, branch, line, etc.).
  • Fast and lightweight report processing.
  • Well-organized JSON output for easy AI consumption.
  • Customizable analysis by filtering coverage data.

Use cases of MCP-JaCoCo?

  1. Simplifying code coverage reports for AI analysis.
  2. Identifying untested or poorly tested code segments.
  3. Generating smart suggestions for new test cases.
  4. Streamlining AI-assisted test planning.
  5. Automating documentation of coverage results.

FAQ from MCP-JaCoCo?

  • Can MCP-JaCoCo handle all JaCoCo reports?

Yes! MCP-JaCoCo is designed to work with any JaCoCo XML report.

  • Is MCP-JaCoCo free to use?

Yes! MCP-JaCoCo is open-source and free for everyone.

  • How does MCP-JaCoCo improve testing workflows?

By converting complex XML reports into a structured JSON format, it allows for quicker analysis and better integration with AI tools.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
crisschan
Star
-
Language
-
License
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