MCP Hub
Back to servers

agentic-debugger

A specialized MCP server for interactive code debugging that allows AI assistants to inject live instrumentation and capture runtime variable values across JavaScript, TypeScript, and Python projects.

Tools
7
Updated
Dec 30, 2025

agentic-debugger

An MCP (Model Context Protocol) server that enables interactive debugging with code instrumentation for AI coding assistants. Inspired by Cursor's debug mode.

Works with any MCP-compatible AI coding tool:

  • Claude Code
  • Cursor
  • Windsurf
  • Cline
  • GitHub Copilot
  • Kiro
  • Zed
  • And more...

Features

  • Live code instrumentation - Inject debug logging at specific lines
  • Variable capture - Log variable values at runtime
  • Multi-language support - JavaScript, TypeScript, and Python
  • Browser support - CORS-enabled for browser JS debugging
  • Clean removal - Region markers ensure instruments are fully removed

Installation

Using npx (recommended)

Add to your MCP configuration:

{
  "mcpServers": {
    "debug": {
      "command": "npx",
      "args": ["-y", "agentic-debugger"]
    }
  }
}

Configuration file locations:

  • Claude Code: ~/.mcp.json
  • Cursor: .cursor/mcp.json in your project or ~/.cursor/mcp.json
  • Other tools: Check your tool's MCP documentation

Global install

npm install -g agentic-debugger

Then configure:

{
  "mcpServers": {
    "debug": {
      "command": "agentic-debugger"
    }
  }
}

Available Tools

ToolDescription
start_debug_sessionStart HTTP server for log collection
stop_debug_sessionStop server and cleanup
add_instrumentInsert logging code at file:line
remove_instrumentsRemove debug code from file(s)
list_instrumentsShow all active instruments
read_debug_logsRead captured log data
clear_debug_logsClear the log file

How It Works

  1. Start session - Spawns a local HTTP server (default port 9876)
  2. Add instruments - Injects fetch() calls that POST to the server
  3. Reproduce bug - Run your code, instruments capture variable values
  4. Analyze logs - Read the captured data to identify issues
  5. Cleanup - Remove all instruments and stop the server

Debug Workflow Example

You: "Help me debug why the total is NaN"

AI Assistant:
1. Starts debug session
2. Reads your code to understand the logic
3. Adds instruments at suspicious locations
4. "Please run your code to reproduce the issue"

You: *runs code* "Done"

AI Assistant:
5. Reads debug logs
6. "I see `discount` is undefined at line 15..."
7. Removes instruments
8. Fixes the bug
9. Stops debug session

Instrument Examples

JavaScript/TypeScript

// #region agentic-debug-abc123
fetch('http://localhost:9876/log', {
  method: 'POST',
  headers: { 'Content-Type': 'application/json' },
  body: JSON.stringify({
    id: 'abc123',
    location: 'cart.js:15',
    timestamp: Date.now(),
    data: { total, discount, items }
  })
}).catch(() => {});
// #endregion agentic-debug-abc123

Python

# region agentic-debug-abc123
try:
    import urllib.request as __req, json as __json
    __req.urlopen(__req.Request(
        'http://localhost:9876/log',
        data=__json.dumps({
            'id': 'abc123',
            'location': 'cart.py:15',
            'timestamp': __import__('time').time(),
            'data': {'total': total, 'discount': discount}
        }).encode(),
        headers={'Content-Type': 'application/json'}
    ))
except: pass
# endregion agentic-debug-abc123

Supported Languages

LanguageExtensions
JavaScript.js, .mjs, .cjs
TypeScript.ts, .tsx
Python.py

Requirements

  • Node.js >= 18.0.0
  • An MCP-compatible AI coding assistant

License

MIT

Reviews

No reviews yet

Sign in to write a review