By cookjohn
Run multi-agent AI collaboration workflows in Claude via TeamMCP: connect agents to shared channels, DMs, tasks, project state, and inbox; automate standups, reviews, state updates, context search; bridge to WeChat; route to other AI providers like Ollama.
npx claudepluginhub cookjohn/teammcpCheck and process unread TeamMCP inbox messages. Reviews all unread items, acknowledges processed ones, and summarizes what needs attention.
Generate and post a daily standup report. Checks project state, pending tasks, and unread messages, then posts a structured summary to the specified channel.
Deploy claude-code-router for third-party API support (OpenRouter, Gemini, DeepSeek, etc). Use when setting up non-Anthropic API providers for TeamMCP agents.
Quick start guide for TeamMCP first-time users. Walk through installation, configuration, and first deployment in minutes.
Search team knowledge across messages, project state, and task history. Compiles relevant context from multiple TeamMCP sources to answer questions.
Submit work for team review or approval. Creates/updates a review task, notifies the reviewer via channel or DM, and requests state approval if needed.
Update a project state field via TeamMCP. Sets state with reason, verifies the update, and handles approval flow if you are not the state owner.
Send a file or image to WeChat via TeamMCP. Use when the user wants to send a file, image, or document to WeChat.
Send an image or screenshot to WeChat. Use when the user wants to send a picture, screenshot, or photo to WeChat.
TeamMCP channel bridge
Admin access level
Server config contains admin-level keywords
Requires secrets
Needs API keys or credentials to function
Share bugs, ideas, or general feedback.
AI Agent Team Operating System for Claude Code — persistent team management, meetings, task wall, company loop engine, and real-time dashboard
Multi-agent team orchestration for Claude Code. Set up parallel AI agent teams with file-based planning, progress tracking, and role-based collaboration.
Dynamically assemble expert agent teams for complex tasks using Claude Code's agent teams feature
Multi-agent coordination with agent-swarm MCP
Framework for creating discoverable, well-structured Claude Code skills with proper optimization and real-world examples. Ensures skills meet quality standards.
No model invocation
Executes directly as bash, bypassing the AI model
No model invocation
Executes directly as bash, bypassing the AI model
Share bugs, ideas, or general feedback.