👲 Monitor & Debug n8n Workflows with Claude AI Assistant and MCP Server

Tags*: AI Agent, MCP Server, n8n API, Monitoring, Debugging, Workflow Analytics, Automation

Context

Hi! I’m Samir — a Supply Chain Engineer and Data Scientist based in Paris, and founder of LogiGreen Consulting.

This workflow is part of my latest project: an AI assistant that automatically analyses n8n workflow executions, detects failures, and identifies root causes through natural conversation with Claude Desktop.

> Turn your automation logs into intelligent conversations with an AI that understands your workflows.

The idea is to use Claude Desktop to help monitor and debug your workflows deployed in production.

The workflow shared here is part of the setup.

📬 For business inquiries, you can find me on LinkedIn

Who is this template for?

This template is designed for automation engineers, data professionals, and AI enthusiasts who manage multiple workflows in n8n and want a smarter way to track errors or performance without manually browsing execution logs.

If you’ve ever discovered a failed workflow hours after it happened — this is for you.

What does this workflow do?

This workflow acts as the bridge between your n8n instance and the Claude MCP Server.

It exposes three main routes that can be triggered via a webhook:

get_active_workflows → Fetches all currently active workflows
get_workflow_executions → Retrieves the latest executions and calculates health KPIs
get_execution_details → Extracts detailed information about failed executions for debugging

Each request is automatically routed and processed, providing Claude with structured execution data for real-time analysis.

How does it fit in the overall setup?

Here’s the complete architecture: Claude Desktop ←→ MCP Server ←→ n8n Monitor Webhook ←→ n8n API

The MCP Server (Python-based) communicates with your n8n instance through this workflow.
The Claude Desktop app can then query workflow health, execution logs, and error patterns using natural language.
The n8n workflow aggregates, cleans, and returns the relevant metrics (failures, success rates, timing, alerts).

📘 The full concept and architecture are explained in my article published on my blog:
👉 Deploy your AI Assistant to Monitor and Debug n8n Workflows using Claude and MCP

🎥 Tutorial

The full setup tutorial (with source code and demo) is available on YouTube:

How does it work?

🌐 Webhook Trigger receives the MCP server requests
🔀 Switch node routes actions based on "action" parameter
⚙️ HTTP Request nodes fetch execution and workflow data via the n8n API
🧮 A Code node calculates KPIs (success/failure rates, timing, alerts)
📤 The processed results are returned as JSON for Claude to interpret

Example use cases

Once connected, you can ask Claude questions like: “Show me all workflows that failed in the last 25 executions.”
“Why is my Bangkok Meetup Scraper workflow failing?”
“Give me a health report of my n8n instance.”

Claude will reply with structured insights, including failure patterns, node diagnostics, and health status indicators (🟢🟡🔴).

What do I need to get started?

You’ll need: A self-hosted n8n instance Claude Desktop** app installed The MCP server source code (shared in the tutorial description) The webhook URL from this workflow is configured in your .env file

Follow the tutorial for more details, don't hesitate to leave your questions in the comment section.

Next Steps

🗒️ Use the sticky notes inside the workflow to: Replace <YOUR_N8N_INSTANCE> with your own URL
Test the webhook routes individually using the “Execute Workflow” button
Connect the MCP server and Claude Desktop to start monitoring

This template was built using n8n v.116.2
Submitted: November 2025

0
Downloads
8
Views
7.34
Quality Score
beginner
Complexity
Author:Samir Saci(View Original →)
Created:11/25/2025
Updated:11/30/2025

🔒 Please log in to import templates to n8n and favorite templates

Workflow Visualization

Loading...

Preparing workflow renderer

Comments (0)

Login to post comments