BullMQ MCP

Created By
adamhancock10 months ago
A comprehensive BullMQ MCP (Model Context Protocol) server for managing BullMQ Redis-based job queues. This BullMQ MCP integration enables Claude Code and other AI assistants to interact with BullMQ queues, monitor job status, manage workers, and perform queue operations through natural language.
Overview

What is BullMQ MCP?

BullMQ MCP (Model Context Protocol) is a server designed for managing BullMQ Redis-based job queues, allowing AI assistants like Claude to interact with these queues using natural language.

How to use BullMQ MCP?

To use BullMQ MCP, install it via npm, pnpm, or Docker, and configure it with Claude Desktop to manage job queues and monitor job statuses.

Key features of BullMQ MCP?

  • Connect to multiple Redis instances
  • Perform various queue operations (list, pause, resume, drain, clean)
  • Manage jobs (add, remove, retry, promote)
  • Monitor job details, logs, and statistics
  • Execute bulk operations on jobs

Use cases of BullMQ MCP?

  1. Monitoring the health of job queues
  2. Debugging and retrying failed jobs
  3. Managing jobs across different environments (development, staging, production)

FAQ from BullMQ MCP?

  • Can BullMQ MCP manage multiple Redis instances?

Yes, it supports connection management for multiple Redis instances.

  • Is BullMQ MCP compatible with Claude Desktop?

Yes, it is designed to integrate seamlessly with Claude Desktop for natural language queue management.

  • How do I install BullMQ MCP?

You can install it using npm, pnpm, or Docker.

Server Config

{
  "mcpServers": {
    "bullmq": {
      "command": "docker",
      "args": [
        "run",
        "--rm",
        "-i",
        "ghcr.io/adamhancock/bullmq-mcp:latest"
      ],
      "env": {
        "REDIS_URL": "redis://host.docker.internal:6379"
      }
    }
  }
}
Project Info
Created At
10 months ago
Updated At
10 months ago
Author Name
adamhancock
Star
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Language
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License
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