Mendix Context Bridge
Enables AI agents to read and understand local Mendix project structure and logic by connecting directly to the .mpr file via MCP. Allows querying microflows, entities, attributes, and modules in read-only mode without requiring cloud access.
README
Mendix MCP Server
A powerful bridge between Mendix Applications and AI Agents.
The Mendix Local MCP Server is a Model Context Protocol (MCP) server designed to empower AI tools (like Google Antigravity, Claude Desktop, or Cursor) to inspect, read, and understand the structure of Mendix projects.
It operates in a unique Dual Mode:
- Shadow SDK (Local): Instant, offline access to
.mprfiles via direct binary parsing. - Official SDK (Cloud): Deep, accurate inspection using the Mendix Platform SDK.
Why Use This Tool?
Integrating Low-Code platforms with AI agents is notoriously difficult due to proprietary file formats. This tool solves that problem.
- š AI-Ready: Exposes complex Mendix logic (Microflows, Domain Models) as clean, AI-readable JSON.
- ā” Blazing Fast (Local): Uses a custom "Shadow SDK" to parse
.mprSQLite databases and.mxunitbinaries without waiting for the Model SDK to load. - š”ļø Circular-Safe: Automatically handles the notorious "Circular Structure" errors common in the Mendix SDK by applying a DTO Transformation Layer.
- š Privacy-First: Can operate entirely offline (Local Mode), keeping your intellectual property on your machine.
Key Features
- Project Discovery: Automatically detects Mendix projects in your workspace.
- Module Browsing: Recursively filters documents (Microflows, Pages) by Module.
- Shadow Parsing: Extracts metadata from binary blobs without the overhead of the full SDK.
- Official SDK Integration: Fetches authoritative data from the Mendix Cloud when absolute precision is required.
- DTO Sanitization: Maps complex Mendix objects to flat, safe JSON for AI consumption.
Installation
Prerequisites
- Mendix Studio Pro v10.24.13 or newer (Required for the new SQLite-based
.mprformat) - Node.js (v18 or higher)
- A local Mendix project (Git-backed or local file)
Setup
-
Clone the repository:
git clone https://github.com/YourUsername/mendix-local-mcp.git cd mendix-local-mcp -
Install Dependencies:
npm install -
Build the Project:
npm run build
Configuration
To unlock the full power of the Official SDK (Cloud Mode), you must configure your Mendix Personal Access Token (PAT).
Add the server to your MCP Client configuration (e.g., mcp_config.json for Antigravity or Claude Desktop):
{
"mcpServers": {
"mendix-local-mcp": {
"command": "node",
"args": ["/absolute/path/to/mendix-local-mcp/build/server.js"],
"env": {
"MENDIX_TOKEN": "your_generated_pat_string",
"MENDIX_USERNAME": "your_email@domain.com"
}
}
}
}
Note: Generate your PAT in the Mendix Developer Portal with the scope
mx:modelrepository:repo:read.
Usage
Once running, the server exposes the following tools to your AI Agent:
Local Mode Tools (Offline)
These tools use the "Shadow SDK" and do not require a token.
list_local_documents(module_name?)- Lists all documents in the project. Optional filter by module.
get_domain_model(module_name)- Extracts a simplified Domain Model using parsing.
inspect_local_microflow(microflow_name)- Reads binary definitions to show microflow logic.
inspect_database_schema(table_name?)- (Debug) Inspects the internal
.mprSQLite schema.
- (Debug) Inspects the internal
Cloud Mode Tools (Online)
These tools use the Official Mendix SDK.
get_module_entities_sdk(module_name, project_id, branch?)- Recommended for Refactoring. Fetches a 100% accurate, sanitized JSON representation of the Domain Model from the Mendix Cloud.
Project Structure
mendix-local-mcp/
āāā src/
ā āāā index.ts # Main entry point (SDK implementation)
ā āāā server.ts # MCP Server definition and Tool handlers
ā āāā mprReader.ts # Shadow SDK: SQLite connection & query logic
ā āāā mendixParser.ts # Shadow SDK: Binary stream parser for .mxunit
ā āāā mappers.ts # Official SDK: DTO definitions (Entity, Attribute...)
āāā build/ # Compiled JavaScript output
āāā package.json # Dependencies & Scripts
āāā tsconfig.json # TypeScript configuration
Contributing
Contributions are welcome! If you'd like to improve the Binary Parser or add more DTO mappers:
- Fork the repository.
- Create a feature branch (
git checkout -b feature/amazing-feature). - Commit your changes (
git commit -m 'Add some amazing feature'). - Push to the branch (
git push origin feature/amazing-feature). - Open a Pull Request.
License
This project is licensed under the MIT License - see the LICENSE file for details.
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