StdoutMCP

StdoutMCP

amitdeshmukh

Captures stdout logs from multiple processes through a named pipe and provides querying/filtering tools for debugging and monitoring.

Lightweight server that captures and manages stdout logs from multiple processes through a named pipe system, maintaining a 100-entry log history and providing robust querying and filtering capabilities for debugging and real-time monitoring.

7653 views9Local (stdio)

What it does

  • Capture stdout logs from multiple processes via named pipes
  • Query and filter log entries from 100-entry history
  • Monitor application output in real-time
  • Analyze logs through MCP interface
  • Redirect application logs to centralized pipe

Best for

Debugging applications in Cursor IDEReal-time monitoring of multiple processesCentralized log collection and analysis
Cross-platform named pipe systemMaintains 100-entry log historyZero setup - works with npx

About StdoutMCP

StdoutMCP is a community-built MCP server published by amitdeshmukh that provides AI assistants with tools and capabilities via the Model Context Protocol. StdoutMCP is a lightweight server for capturing and managing stdout logs from multiple processes, with powerful querying It is categorized under developer tools.

How to install

You can install StdoutMCP in your AI client of choice. Use the install panel on this page to get one-click setup for Cursor, Claude Desktop, VS Code, and other MCP-compatible clients. This server runs locally on your machine via the stdio transport.

License

StdoutMCP is released under the MIT license. This is a permissive open-source license, meaning you can freely use, modify, and distribute the software.

stdout-mcp-server

A Model Context Protocol (MCP) server that captures and manages stdout logs through a named pipe system. This server is particularly useful for:

  • Capturing logs from multiple processes or applications and making them available for debugging in Cursor IDE.
  • Monitoring application output in real-time and providing a MCP interface to query, filter, and analyze logs

How It Works

  1. The server creates a named pipe at a specific location (/tmp/stdout_pipe on Unix/MacOS or \\.\pipe\stdout_pipe on Windows)

  2. Any application can write logs to this pipe using standard output redirection. For example:

your_application | tee /tmp/stdout_pipe # or
your_application > /tmp/stdout_pipe
  1. The server monitors the pipe, captures all incoming logs, and maintains a history of the last 100 entries

  2. Through MCP tools, you can query, filter, and analyze these logs

System Requirements

Before installing, please ensure you have:

  • Node.js v18 or newer

Installation Options

Option 1: Installation in Cursor

  1. Open Cursor and navigate to Cursor > Settings > MCP Servers
  2. Click on "Add new MCP Server"
  3. Update your MCP settings file with the following configuration:
name: stdout-mcp-server
type: command
command: npx stdout-mcp-server

Option 2: Installation in other MCP clients

Installation in other MCP clients

For macOS/Linux:

{
  "mcpServers": {
    "stdio-mcp-server": {
      "command": "npx",
      "args": [
        "stdio-mcp-server"
      ]
    }
  }
}

For Windows:

{
  "mcpServers": {
    "mcp-installer": {
      "command": "cmd.exe",
      "args": ["/c", "npx", "stdio-mcp-server"]
    }
  }
}

Usage Examples

Redirecting Application Logs

To send your application's output to the pipe:

# Unix/MacOS
your_application > /tmp/stdout_pipe

# Windows (PowerShell)
your_application > \\.\pipe\stdout_pipe

Monitoring Multiple Applications

You can redirect logs from multiple sources:

# Application 1
app1 > /tmp/stdout_pipe &

# Application 2
app2 > /tmp/stdout_pipe &

Querying Logs

Your AI will use the get-logs tool in your MCP client to retrieve and filter logs:

// Get last 50 logs
get-logs()

// Get last 100 logs containing "error"
get-logs({ lines: 100, filter: "error" })

// Get logs since a specific timestamp
get-logs({ since: 1648675200000 }) // Unix timestamp in milliseconds

Features

  • Named pipe creation and monitoring
  • Real-time log capture and storage
  • Log filtering and retrieval through MCP tools
  • Configurable log history (default: 100 entries)
  • Cross-platform support (Windows and Unix-based systems)

Named Pipe Locations

  • Windows: \\.\pipe\stdout_pipe
  • Unix/MacOS: /tmp/stdout_pipe

Available Tools

get-logs

Retrieve logs from the named pipe with optional filtering:

Parameters:

  • lines (optional, default: 50): Number of log lines to return
  • filter (optional): Text to filter logs by
  • since (optional): Timestamp to get logs after

Example responses:

// Response format
{
  content: [{
    type: "text",
    text: "[2024-03-20T10:15:30.123Z] Application started\n[2024-03-20T10:15:31.456Z] Connected to database"
  }]
}

License

MIT License

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