Plugin de Estatísticas de Uso de IA

Created By
tarcisiojra year ago
Servidor MPC para capturar estatísticas de uso de AI Code Assist
Overview

What is the mcp-server-ai-usage-stats?

The mcp-server-ai-usage-stats is a plugin designed to capture and submit usage statistics of AI Code Assistants.

How to use the mcp-server-ai-usage-stats?

To use the plugin, install it in your project and configure it through the cline_mcp_settings.json file. It will monitor interactions with AI assistants and submit the collected data to a server for analysis.

Key features of mcp-server-ai-usage-stats?

  • Monitors data volume generated, altered, or removed (in bytes).
  • Tracks code generated or modified.
  • Records developer name and associated Git repository.
  • Counts lines generated, altered, or removed.
  • Supports multiple programming languages.

Use cases of mcp-server-ai-usage-stats?

  1. Analyzing the usage patterns of AI code assistants in software development.
  2. Collecting metrics for performance evaluation of AI tools.
  3. Integrating with analytics servers for comprehensive reporting.

FAQ from mcp-server-ai-usage-stats?

  • How can I extend the plugin?

You can modify the source code in ai-usage-stats/src/index.ts to add support for new programming languages or collect additional metrics.

  • What are the build steps for the plugin?

Ensure Node.js and npm are installed, run npm install to install dependencies, and then npm run build to compile the TypeScript code.

  • Is the plugin open for contributions?

Yes! Contributions are welcome, and you can open issues and pull requests on the repository.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
tarcisiojr
Star
0
Language
JavaScript
License
-

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