CAD-MCP
Control CAD software with natural language instructions to perform drawing operations.
CAD-MCP Server (CAD Model Context Protocol Server)
Project Introduction
CAD-MCP is an innovative CAD control service that allows controlling CAD software for drawing operations through natural language instructions. This project combines natural language processing and CAD automation technology, enabling users to create and modify CAD drawings through simple text commands without manually operating the CAD interface.
Features
CAD Control Functions
- Multiple CAD Software Support: Supports mainstream CAD software including AutoCAD, GstarCAD (GCAD) and ZWCAD
- Basic Drawing Functions:
- Line drawing
- Circle drawing
- Arc drawing
- Rectangle drawing
- Polyline drawing
- Text addition
- Pattern filling
- Dimension annotation
- Layer Management: Create and switch layers
- Drawing Save: Save the current drawing as a DWG file
Natural Language Processing Functions
- Command Parsing: Parse natural language instructions into CAD operation parameters
- Color Recognition: Extract color information from text and apply it to drawing objects
- Shape Keyword Mapping: Support recognition of various shape description words
- Action Keyword Mapping: Recognize various drawing and editing actions
Demo
The following is the demo video.

Installation Requirements
Dependencies
pywin32>=228 # Windows COM interface support
mcp>=0.1.0 # Model Control Protocol library
pydantic>=2.0.0 # Data validation
typing>=3.7.4.3 # Type annotation support
System Requirements
- Windows operating system
- Installed CAD software (AutoCAD, GstarCAD, or ZWCAD)
Configuration
The configuration file is located at src/config.json and contains the following main settings:
{
"server": {
"name": "CAD MCP Server",
"version": "1.0.0"
},
"cad": {
"type": "AutoCAD",
"startup_wait_time": 20,
"command_delay": 0.5
},
"output": {
"directory": "./output",
"default_filename": "cad_drawing.dwg"
}
}
- server: Server name and version information
- cad:
type: CAD software type (AutoCAD, GCAD, GstarCAD, or ZWCAD)startup_wait_time: CAD startup waiting time (seconds)command_delay: Command execution delay (seconds)
- output: Output file settings
Usage
Starting the Service
python src/server.py
Claude Desktop & Windsurf
# add to claude_desktop_config.json. Note: use your path
{
"mcpServers": {
"CAD": {
"command": "python",
"args": [
# your path, e.g.: "C:\\cad-mcp\\src\\server.py"
"~/server.py"
]
}
}
}
Cursor
# Add according to the following diagram Cursor MCP. Note: use your path

Note:The new version of cursor has also been changed to JSON configuration, please refer to the previous section
MCP Inspector
# Note: use your path
npx -y @modelcontextprotocol/inspector python C:\\cad-mcp\\src\\server.py
Service API
The server provides the following main API functions:
draw_line: Draw a linedraw_circle: Draw a circledraw_arc: Draw an arcdraw_polyline: Draw a polylinedraw_rectangle: Draw a rectangledraw_text: Add textdraw_hatch: Draw a hatch patternadd_dimension: Add linear dimensionsave_drawing: Save the drawingprocess_command: Process natural language commands
Project Structure
CAD-MCP/
├── imgs/ # Images and video resources
│ └── CAD-mcp.mp4 # Demo video
├── requirements.txt # Project dependencies
└── src/ # Source code
├── __init__.py # Package initialization
├── cad_controller.py # CAD controller
├── config.json # Configuration file
├── nlp_processor.py # Natural language processor
└── server.py # Server implementation
License
MIT License
Server Terkait
Scout Monitoring MCP
sponsorPut performance and error data directly in the hands of your AI assistant.
Alpha Vantage MCP Server
sponsorAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
MCP Agentic AI Crash Course with Python
A comprehensive crash course on the Model Context Protocol (MCP), covering everything from basic concepts to building production-ready MCP servers and clients in Python.
MCP Project Setup
A starter project with setup instructions and example MCP servers, including a weather server.
MCP Ollama Agent
A TypeScript agent that integrates MCP servers with Ollama, allowing AI models to use various tools through a unified interface.
BlenderMCP
Connects Blender to Claude AI via the Model Context Protocol (MCP), enabling direct interaction and control for prompt-assisted 3D modeling, scene creation, and manipulation.
Replicate Imagen 4 MCP Server
Access Google's Imagen 4 Ultra model via the Replicate platform for high-quality image generation.
Projet MCP Server-Client
An implementation of the Model Context Protocol (MCP) for communication between AI models and external tools, featuring server and client examples in Python and Spring Boot.
Codebase Context Dumper
Easily provide codebase context to Large Language Models (LLMs).
ucn
Universal Code Navigator - a lightweight MCP server that gives AI agents call-graph-level understanding of code. Instead of reading entire files, agents ask structural questions like: "who calls this function", "what breaks if I change it", "what's unused", and get precise, AST-verified answers. UCN parses JS/TS, Python, Go, Rust, Java, and HTML inline scripts with tree-sitter, then exposes 28 navigation commands as a CLI tool, MCP server, or agent skill.
Terraform MCP Server by Binadox
MCP server for Terraform — automatically validates, secures, and estimates cloud costs for Terraform configurations. Developed by Binadox, it integrates with any Model Context Protocol (MCP) client (e.g. Claude Desktop or other MCP-compatible AI assistants).
MCP Gemini CLI
Integrate with Google Gemini through its command-line interface (CLI).