JSON MCP Logs Server

Created By
mfreeman451a year ago
Overview

what is JSON Logs MCP Server?

JSON Logs MCP Server is a Model Context Protocol (MCP) server designed to enable clients like Claude Desktop to read and analyze JSON-formatted log files efficiently.

how to use JSON Logs MCP Server?

To use the server, clone the repository, set up a virtual environment, install the package, and configure the log directory. You can then run the server and interact with it through a compatible MCP client.

key features of JSON Logs MCP Server?

  • 📁 Browse log files: List and read JSON-formatted log files.
  • 🔍 Search and filter: Query logs by various criteria such as level, module, and time range.
  • 📊 Aggregate data: Group and analyze logs based on specified criteria.
  • 📈 Statistics: Obtain comprehensive statistics about log data.
  • 🚀 Fast and efficient: Optimized for handling large log files.

use cases of JSON Logs MCP Server?

  1. Analyzing application logs for debugging purposes.
  2. Monitoring system performance through log data.
  3. Generating reports based on log statistics.

FAQ from JSON Logs MCP Server?

  • Can I use this server with any MCP client?

Yes! It is designed to work with any MCP client, including Claude Desktop.

  • What log format does the server expect?

The server expects JSON log files with one JSON object per line, including specific fields like timestamp, level, and message.

  • Is there a limit to the size of log files?

While the server can handle large log files, performance may vary based on file size and system resources.

Server Config

{
  "mcpServers": {
    "json-logs": {
      "command": "python",
      "args": [
        "/Users/mfreeman/src/nco/json_logs_mcp_server.py"
      ],
      "cwd": "/Users/mfreeman/src/nco"
    }
  }
}
Project Info
Created At
a year ago
Updated At
a year ago
Author Name
mfreeman451
Star
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Language
-
License
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Category

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