blender-open-mcp

Created By
dhakalnirajana year ago
Open Models MCP for Blender Using Ollama
Overview

What is blender-open-mcp?

blender-open-mcp is an open-source project that integrates Blender with local AI models using the Model Context Protocol (MCP). It allows users to control Blender through natural language prompts, enhancing 3D modeling tasks with AI assistance.

How to use blender-open-mcp?

To use blender-open-mcp, install Blender and Ollama, clone the repository, set up a virtual environment, and install the necessary dependencies. After starting the Ollama and MCP servers, you can interact with Blender using the mcp command-line tool.

Key features of blender-open-mcp?

  • Control Blender with natural language prompts.
  • Integration with the Model Context Protocol for structured communication.
  • Support for local AI models via Ollama.
  • A Blender add-on for user interface and server communication.
  • Optional integration with PolyHaven for asset management.
  • Basic 3D operations like creating, modifying, and rendering objects.

Use cases of blender-open-mcp?

  1. Automating 3D modeling tasks using AI prompts.
  2. Enhancing workflow efficiency in Blender with natural language commands.
  3. Downloading and utilizing assets from PolyHaven directly in Blender.

FAQ from blender-open-mcp?

  • Can I use any AI model with blender-open-mcp?
    Yes, you can use any compatible model with Ollama.

  • Is there a user interface for this project?
    Yes, the project includes a Blender add-on that provides a user interface.

  • What are the prerequisites for installation?
    You need Blender 3.0 or later, Ollama, Python 3.10 or later, and Git.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
dhakalnirajan
Star
11
Language
Python
License
View license

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