Meshy AI MCP Server
@pasie15
About Meshy AI MCP Server
This is a Model Context Protocol (MCP) server for interacting with the Meshy AI API. It provides tools for generating 3D models from text and images, applying textures, and remeshing models.
Basic information
Config
Add this server to your MCP-compatible client using the configuration below.
{
"mcpServers": {
"meshy-ai-mcp-server": {
"command": "python",
"args": [
"-m",
"venv",
".venv"
]
}
}
}Tools
No tools detected
We auto-extract tools from the README. The maintainer can list them under a ## Tools heading to populate this section.
Overview
What is Meshy AI MCP Server?
Meshy AI MCP Server is a Model Context Protocol (MCP) server that provides tools for interacting with the Meshy AI API. It allows developers to generate 3D models from text prompts or images, apply textures, and remesh models, all through a standardized MCP interface compatible with AI‑assisted coding environments.
How to use Meshy AI MCP Server?
Clone the repository, set up a Python virtual environment, install the mcp package and dependencies, then add your Meshy AI API key to a .env file. Start the server with python src/server.py or with the MCP CLI (mcp run config.json). Configure the server in your editor’s MCP settings (e.g., Cline, Roo‑Cline, Cursor, VS Code) by pointing to the server script.
Key features of Meshy AI MCP Server
- Generate 3D models from text prompts
- Generate 3D models from images
- Apply textures to 3D models using text prompts
- Remesh and optimize 3D models
- Stream task progress in real time
- List, retrieve, and monitor tasks
- Check Meshy AI account balance
Use cases of Meshy AI MCP Server
- Quickly prototype 3D assets from textual descriptions
- Convert reference images into full 3D models
- Add or update textures on existing 3D models
- Optimize 3D model geometry through remeshing
- Automate 3D asset generation pipelines in AI‑powered IDEs
FAQ from Meshy AI MCP Server
What does Meshy AI MCP Server do?
It is an MCP server that exposes Meshy AI’s 3D generation, texturing, and remeshing capabilities as tools and resources usable by any MCP client, such as AI‑assisted coding editors.
What are the dependencies and runtime requirements?
Python 3.9+ is recommended, along with the mcp package and the dependencies listed in requirements.txt. A valid Meshy AI API key is required.
How do I configure and start the server?
Set the MESHY_API_KEY environment variable in a .env file. Start the server with python src/server.py or via the MCP CLI. Optionally, use mcp dev src/server.py for debugging with the MCP inspector.
Which tools does the server provide?
It offers creation tools (text‑to‑3D, image‑to‑3D, text‑to‑texture, remesh), retrieval tools (get task details), listing tools (list tasks), streaming tools (real‑time progress), and a utility tool to check account balance.
How can I stream task progress?
Use the streaming tools (e.g., stream_text_to_3d_task) to subscribe to updates for a specific task. The server supports real‑time progress via the task timeout configuration.
More Other MCP servers
Inbox Zero AI MCP
elie222The world's best AI personal assistant for email. Open source app to help you reach inbox zero fast.
AutoBrowser MCP
autobrowser-aiBrowser MCP is a Model Context Provider (MCP) server that allows AI applications to control your browser
Core Philosophy: Connect, Unify, Respond
mindsdbDelegate anything. It comes back done.

EverArt
modelcontextprotocolModel Context Protocol Servers
Production-ready MCP integrations for AI applications
Klavis-AIKlavis AI: MCP integration platforms that let AI agents use tools reliably at any scale
Comments