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Isaac Sim MCP Server

by omni-mcp

The Isaac Sim MCP Server and its extension enable natural language control of NVIDIA Isaac Sim using the Model Context Protocol (MCP) framework. This allows users to transform conversational AI inputs into precise simulation manipulation.

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Isaac Sim MCP Extension and MCP Server

The MCP Server and its extension leverage the Model Context Protocol (MCP) framework to enable natural language control of NVIDIA Isaac Sim, transforming conversational AI inputs into precise simulation manipulation. This expansion bridges the MCP ecosystem with embodied intelligence applications.

Features

  • Natural language control of Isaac Sim
  • Dynamic robot positioning and movement
  • Custom lighting and scene creation
  • Advanced robot simulations with obstacle navigation
  • Interactive code preview before execution

Requirements

  • NVIDIA Isaac Sim 4.2.0 or higher
  • Python 3.9+
  • Cursor AI editor for MCP integration

Mandatory Pre-requisite

Installation

cd ~/Documents
git clone https://github.com/omni-mcp/isaac-sim-mcp

Install and Enable Extension

Isaac Sim extension folder should point to your project folder:

  • Extension location: ~/Documents/isaac-sim-mcp
  • Extension ID: isaac.sim.mcp_extension
# Enable extension in Isaac Simulation
# cd to your Isaac Sim installation directory
# You can change assets root to local with --/persistent/isaac/asset_root/default="<your asset location>"
# By default it is an AWS bucket, e.g. --/persistent/isaac/asset_root/default="/share/Assets/Isaac/4.2"

cd ~/.local/share/ov/pkg/isaac-sim-4.2.0
./isaac-sim.sh --ext-folder /home/ubuntu/Documents/isaac-sim-mcp/ --enable isaac.sim.mcp_extension 

Verify the extension starts successfully. The output should look like:

[7.160s] [ext: isaac.sim.mcp_extension-0.1.0] startup
trigger  on_startup for:  isaac.sim.mcp_extension-0.1.0
settings:  {'envPath': '/home/ubuntu/.local/share/ov/data/Kit/Isaac-Sim/4.2/pip3-envs/default', 'archiveDirs': {}, 'installCheckIgnoreVersion': False, 'allowOnlineIndex': True, 'tryUpgradePipOnFirstUse': False}
Server thread startedIsaac Sim MCP server started on localhost:8766

The extension should be listening at localhost:8766 by default.

Install MCP Server

  1. Go to terminal and run, make sure mcp server could start sucessfully at terminal with base venv.
    uv pip install "mcp[cli]"
    uv run /home/ubuntu/Documents/isaac-sim-mcp/isaac_mcp/server.py
    
  2. Start Cursor and open the folder ~/Documents/isaac-sim-mcp
  3. Go to Cursor preferences, choose MCP and add a global MCP server:
{
    "mcpServers": {
        "isaac-sim": {
            "command": "uv run /home/ubuntu/Documents/isaac-sim-mcp/isaac_mcp/server.py"
        }
    }
}

Development Mode

To develop the MCP Server, start the MCP inspector:

uv run mcp dev ~/Documents/isaac-sim-mcp/isaac_mcp/server.py

You can visit the debug page through http://localhost:5173

Example Prompts for Simulation

Notice: Switch to Agent mode in top left of Chat dialog before you type prompt and choose sonnet 3.7 for better coding.

Robot Party

# Create robots and improve lighting
create  3x3 frankas robots in these current stage across location [3, 0, 0] and [6, 3, 0]
always check connection with get_scene_info before execute code.
add more light in the stage


# Add specific robots at positions
create a g1 robot at [3, 9, 0]
add Go1 robot at location [2, 1, 0]
move go1 robot to [1, 1, 0]

Factory Setup

# Create multiple robots in a row
acreate  3x3 frankas robots in these current stage across location [3, 0, 0] and [6, 3, 0]
always check connection with get_scene_info before execute code.
add more light in the stage


Vibe Coding from scratch

reference to g1.py to create an new g1 robot simulation and allow robot g1 walk straight  from [0, 0, 0] to [3, 0, 0] and [3, 3, 0]
create more obstacles in the stage

MCP Tools

The Isaac Sim MCP Extension provides several specialized tools that can be accessed through natural language in Cursor AI. These tools enable you to control and manipulate NVIDIA Isaac Sim with simple commands:

Connection and Scene Management

  • get_scene_info - Pings the Isaac Sim Extension Server to verify connection status and retrieve basic scene information. Always use this first to ensure the connection is active.

Physics and Environment Creation

  • create_physics_scene - Creates a physics scene with configurable parameters:
    • objects: List of objects to create (each with type and position)
    • floor: Whether to create a ground plane (default: true)
    • gravity: Vector defining gravity direction and magnitude (default: [0, -0.981, 0])
    • scene_name: Name for the scene (default: "physics_scene")

Robot Creation and Control

  • create_robot - Creates a robot in the scene at a specified position:
    • robot_type: Type of robot to create (options: "franka", "jetbot", "carter", "g1", "go1")
    • position: [x, y, z] position coordinates

Omniverse Kit and Scripting

  • omni_kit_command - Executes an Omni Kit command:

    • command: The Omni Kit command to execute (e.g., "CreatePrim")
    • prim_type: The primitive type for the command (e.g., "Sphere")
  • execute_script - Executes arbitrary Python code in Isaac Sim:

    • code: Python code to execute

Usage Best Practices

  1. Always check connection with get_scene_info before executing any commands
  2. Initialize a physics scene with create_physics_scene before adding robots
  3. Use create_robot for standard robot placement before trying custom scripts
  4. For complex simulations, use execute_script with proper async patterns
  5. Preview code in chat before execution for verification

Contributing

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

License

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

Video Demonstrations

Below are demonstrations of the Isaac Sim MCP Extension in action:

Robot Party Demo

Robot Party Demo

Robot Party Demo

GIF: Adding more robots to the simulation using natural language commands

Video Format (MP4)

For higher quality video, you can access the MP4 version directly:

When viewing on GitHub, you can click the link above to view or download the MP4 file.