A Mattermost integration that connects to Model Context Protocol (MCP) servers, leveraging a LangGraph-based AI agent to provide an intelligent interface for interacting with users and executing tools directly within Mattermost.
1. Github Agent in support channel - searches the existing issues and PRs and creates a new issue if not found
- 🤖 Langgraph Agent Integration: Uses a LangGraph agent to understand user requests and orchestrate responses.
- 🔌 MCP Server Integration: Connects to multiple MCP servers defined in
mcp-servers.json. - 🛠️ Dynamic Tool Loading: Automatically discovers tools from connected MCP servers and makes them available to the AI agent. Converts MCP tools to langchain structured tools.
- 💬 Thread-Aware Conversations: Maintains conversational context within Mattermost threads for coherent interactions.
- 🔄 Intelligent Tool Use: The AI agent can decide when to use available tools (including chaining multiple calls) to fulfill user requests.
- 🔍 MCP Capability Discovery: Allows users to list available servers, tools, resources, and prompts via direct commands.
- #️⃣ Direct Command Interface: Interact directly with MCP servers using a command prefix (default:
#).
The integration works as follows:
- Mattermost Connection (
mattermost_client.py): Connects to the Mattermost server via API and WebSocket to listen for messages in a specified channel. - MCP Connections (
mcp_client.py): Establishes connections (primarilystdio) to each MCP server defined insrc/mattermost_mcp_host/mcp-servers.json. It discovers available tools on each server. - Agent Initialization (
agent/llm_agent.py): ALangGraphAgentis created, configured with the chosen LLM provider and the dynamically loaded tools from all connected MCP servers. - Message Handling (
main.py):- If a message starts with the command prefix (
#), it's parsed as a direct command to list servers/tools or call a specific tool via the correspondingMCPClient. - Otherwise, the message (along with thread history) is passed to the
LangGraphAgent.
- If a message starts with the command prefix (
- Agent Execution: The agent processes the request, potentially calling one or more MCP tools via the
MCPClientinstances, and generates a response. - Response Delivery: The final response from the agent or command execution is posted back to the appropriate Mattermost channel/thread.
-
Clone the repository:
git clone <repository-url> cd mattermost-mcp-host
-
Install:
- Using uv (recommended):
# Install uv if you don't have it yet # curl -LsSf https://astral.sh/uv/install.sh | sh # Activate venv source .venv/bin/activate # Install the package with uv uv sync # To install dev dependencies uv sync --dev --all-extras
- Using uv (recommended):
-
Configure Environment (
.envfile): Copy the.env.exampleand fill in the values or Create a.envfile in the project root (or set environment variables):# Mattermost Details MATTERMOST_URL=http://your-mattermost-url MATTERMOST_TOKEN=your-bot-token # Needs permissions to post, read channel, etc. MATTERMOST_TEAM_NAME=your-team-name MATTERMOST_CHANNEL_NAME=your-channel-name # Channel for the bot to listen in # MATTERMOST_CHANNEL_ID= # Optional: Auto-detected if name is provided # LLM Configuration (Azure OpenAI is default) DEFAULT_PROVIDER=azure AZURE_OPENAI_ENDPOINT=your-azure-endpoint AZURE_OPENAI_API_KEY=your-azure-api-key AZURE_OPENAI_DEPLOYMENT=your-deployment-name # e.g., gpt-4o # AZURE_OPENAI_API_VERSION= # Optional, defaults provided # Optional: Other providers (install with `[all]` extra) # OPENAI_API_KEY=... # ANTHROPIC_API_KEY=... # GOOGLE_API_KEY=... # Command Prefix COMMAND_PREFIX=#
See
.env.examplefor more options. -
Configure MCP Servers: Edit
src/mattermost_mcp_host/mcp-servers.jsonto define the MCP servers you want to connect to. Seesrc/mattermost_mcp_host/mcp-servers-example.json. Depending on the server configuration, you mightnpx,uvx,dockerinstalled in your system and in path. -
Start the Integration:
mattermost-mcp-host
- Python 3.13.1+
- uv package manager
- Mattermost server instance
- Mattermost Bot Account with API token
- Access to a LLM API (Azure OpenAI)
- One or more MCP servers configured in
mcp-servers.json - Tavily web search requires
TAVILY_API_KEYin.envfile
Once the integration is running and connected:
- Direct Chat: Simply chat in the configured channel or with the bot. The AI agent will respond, using tools as needed. It maintains context within message threads.
- Direct Commands: Use the command prefix (default
#) for specific actions:#help- Display help information.#servers- List configured and connected MCP servers.#<server_name> tools- List available tools for<server_name>.#<server_name> call <tool_name> <json_arguments>- Call<tool_name>on<server_name>with arguments provided as a JSON string.- Example:
#my-server call echo '{"message": "Hello MCP!"}'
- Example:
#<server_name> resources- List available resources for<server_name>.#<server_name> prompts- List available prompts for<server_name>.
- ⚙️ Configurable LLM Backend: Supports multiple AI providers (Azure OpenAI default, OpenAI, Anthropic Claude, Google Gemini) via environment variables.
- Create a Bot Account
- Go to Integrations > Bot Accounts > Add Bot Account
- Give it a name and description
- Save the access token in the .env file
- Required Bot Permissions
- post_all
- create_post
- read_channel
- create_direct_channel
- read_user
- Add Bot to Team/Channel
- Invite the bot to your team
- Add bot to desired channels
- Connection Issues
- Verify Mattermost server is running
- Check bot token permissions
- Ensure correct team/channel names
- AI Provider Issues
- Validate API keys
- Check API quotas and limits
- Verify network access to API endpoints
- MCP Server Issues
- Check server logs
- Verify server configurations
- Ensure required dependencies are installed and env variables are defined
Please feel free to open a PR.
This project is licensed under the MIT License - see the LICENSE file for details.


