✨ From vibe coding to vibe deployment. UBOS MCP turns ideas into infra with one message.

Learn more

MCP-Odoo

Model Context Protocol server for Odoo integration, allowing AI agents to access and manipulate Odoo data through a standardized interface.

Overview

MCP-Odoo provides a bridge between Odoo ERP systems and AI agents using the Model Context Protocol (MCP). This enables AI systems to:

  • Access partner information
  • View and analyze accounting data including invoices and payments
  • Perform reconciliation of financial records
  • Query vendor bills and customer invoices

Features

  • 🔌 Easy integration with Odoo instances
  • 🤖 Standard MCP interface for AI agent compatibility
  • 📊 Rich accounting data access
  • 🔒 Secure authentication with Odoo

Installation

# Clone the repository
git clone https://github.com/yourtechtribe/model-context-protocol-mcp-odoo.git
cd model-context-protocol-mcp-odoo

# Install dependencies
pip install -r requirements.txt

Configuration

Create a .env file in the project root with the following variables:

ODOO_URL=https://your-odoo-instance.com
ODOO_DB=your_database
ODOO_USERNAME=your_username
ODOO_PASSWORD=your_password
HOST=0.0.0.0
PORT=8080

Usage

Start the MCP server:

# Using the SSE transport (default)
python -m mcp_odoo_public

# Using stdio for local agent integration
python -m mcp_odoo_public --transport stdio

Documentation

Comprehensive documentation is available in the docs/ directory:

  • Documentation Home - Start here for an overview of all documentation
  • Implementation Guide - Detailed architecture and implementation details
  • Accounting Functionality - In-depth guide to accounting features
  • Troubleshooting - Solutions for common issues
  • Usage Examples - Practical examples to get started

Development

Project Structure

  • mcp_odoo_public/: Main package
    • odoo/: Odoo client and related modules
    • resources/: MCP resources definitions (tools and schemas)
    • server.py: MCP server implementation
    • config.py: Configuration management
    • mcp_instance.py: FastMCP instance definition

Adding New Resources

Resources define the capabilities exposed to AI agents through MCP. To add a new resource:

  1. Create a new file in the resources/ directory
  2. Define your resource using the @mcp.tool() decorator
  3. Import your resource in resources/__init__.py

For detailed instructions, see the Implementation Guide.

License

This project is licensed under the MIT License - see the LICENSE file for details.

Author

Albert Gil López

  • Email: albert.gil@yourtechtribe.com
  • LinkedIn: https://www.linkedin.com/in/albertgilopez/

Contributing

Contributions are welcome! Please feel free to submit a Pull Request.

Featured Templates

View More

Start your free trial

Build your solution today. No credit card required.

Sign In

Register

Reset Password

Please enter your username or email address, you will receive a link to create a new password via email.