Automatisch MCP Server
Enables AI assistants to interact with Automatisch workflow automation platform, allowing them to create, manage, and monitor workflows, connections, and executions through natural language commands.
README
Automatisch MCP Server
A Model Context Protocol (MCP) server that provides AI assistants with access to Automatisch workflow automation capabilities.
Overview
This MCP server enables AI assistants to interact with Automatisch, an open-source Zapier alternative for workflow automation. It provides tools to manage workflows, connections, executions, and app integrations.
Features
Tools Available
- Workflow Management: Create, read, update, delete, and test workflows
- Connection Management: Manage app connections and credentials
- Execution Monitoring: View workflow execution history and status
- App Discovery: Browse available apps and their capabilities
- Testing: Test workflows with sample data
Resources Provided
- Workflows overview with status summary
- App connections listing
- Available apps catalog
- Recent executions log
Prerequisites
- Node.js 18+
- Running Automatisch instance
- Automatisch API access (API key recommended)
Installation
-
Clone or download the MCP server code
-
Install dependencies:
npm install -
Build the project:
npm run build
Configuration
Set environment variables:
# Automatisch instance URL (default: http://localhost:3001)
export AUTOMATISCH_BASE_URL="http://your-automatisch-instance:3001"
# API key for authentication (optional but recommended)
export AUTOMATISCH_API_KEY="your-api-key"
Usage
Claude Desktop Integration
Add to your Claude Desktop configuration file:
{
"mcpServers": {
"automatisch": {
"command": "npx",
"args": ["-y", "automatisch-mcp-server"],
"env": {
"AUTOMATISCH_BASE_URL": "http://localhost:3001",
"AUTOMATISCH_API_KEY": "your-api-key"
}
}
}
}
Standalone Usage
npm start
Available Tools
Workflow Management
list_workflows- List all workflows with optional filteringget_workflow- Get detailed workflow informationcreate_workflow- Create new workflowupdate_workflow- Update existing workflowdelete_workflow- Delete workflowtest_workflow- Test workflow with sample data
Connection Management
list_connections- List app connectionscreate_connection- Create new app connection
Monitoring & Discovery
list_executions- View workflow execution historyget_available_apps- Browse available apps and integrations
Example Usage with AI Assistant
# List all active workflows
"Show me all active workflows"
# Create a new workflow
"Create a workflow named 'Email Notifications' that sends emails when new GitHub issues are created"
# Check recent executions
"Show me the recent workflow executions and their status"
# Get workflow details
"Tell me about the workflow with ID 'abc123'"
# List available apps
"What apps are available for integration?"
API Endpoints
The server interfaces with these Automatisch API endpoints:
GET /api/flows- List workflowsPOST /api/flows- Create workflowPATCH /api/flows/:id- Update workflowDELETE /api/flows/:id- Delete workflowGET /api/connections- List connectionsPOST /api/connections- Create connectionGET /api/executions- List executionsGET /api/apps- List available apps
Development
Running in Development Mode
npm run dev
Building
npm run build
Cleaning Build Files
npm run clean
Error Handling
The server includes comprehensive error handling:
- Network connectivity issues with Automatisch
- Invalid API responses
- Missing required parameters
- Authentication failures
Errors are logged and returned as structured responses to the AI assistant.
Security Considerations
- Use API keys for authentication when available
- Ensure Automatisch instance is properly secured
- Limit network access to trusted sources
- Regularly update dependencies
Troubleshooting
Common Issues
- Connection Failed: Verify
AUTOMATISCH_BASE_URLis correct and accessible - Authentication Error: Check
AUTOMATISCH_API_KEYis valid - Tool Not Found: Ensure MCP server is properly registered with Claude Desktop
- API Errors: Check Automatisch logs for detailed error information
Debug Mode
Enable debug logging by setting:
export NODE_ENV=development
Contributing
- Fork the repository
- Create a feature branch
- Make your changes
- Add tests if applicable
- Submit a pull request
License
This project is licensed under the MIT License.
Related Projects
- Automatisch - Open source workflow automation
- Model Context Protocol - Protocol specification
- MCP SDK - TypeScript SDK
Support
For issues related to:
- Issues specific to MCP Server integration or this repository: Open an issue here
- Automatisch: Visit Automatisch GitHub Issues
- MCP Protocol: Check MCP Documentation
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