Paraview_MCP
An autonomous agent that integrates large language models with ParaView for creating and manipulating scientific visualizations using natural language and visual inputs.
Paraview_MCP
ParaView-MCP is an autonomous agent that integrates multimodal large language models with ParaView through the Model Context Protocol, enabling users to create and manipulate scientific visualizations using natural language and visual inputs instead of complex commands or GUI operations. The system features visual feedback capabilities that allow it to observe the viewport and iteratively refine visualizations, making advanced visualization accessible to non-experts while augmenting expert workflows with intelligent automation.
Video Demo
Click the image below to watch the video:
Installation
git clone https://github.com/LLNL/paraview_mcp.git
cd paraview_mcp
conda create -n paraview_mcp python=3.10
conda install conda-forge::paraview
conda install mcp[cli] httpx
Setup for LLM
To set up integration with claude desktop, add the following to claude_desktop_config.json
"mcpServers": {
"ParaView": {
"command": "/path/to/python",
"args": [
"/path/to/paraview_mcp/paraview_mcp_server.py"
]
}
}
running
1. Start paraview server
python pvserver --multi-clients
2. Connect to paraview server from paraview GUI (file -> connect)
3. Start claude desktop app
Citing Paraview_MCP
S. Liu, H. Miao, and P.-T. Bremer, “Paraview-MCP: Autonomous Visualization Agents with Direct Tool Use,” in Proc. IEEE VIS 2025 Short Papers, 2025, pp. 00
@inproceedings{liu2025paraview,
title={Paraview-MCP: Autonomous Visualization Agents with Direct Tool Use},
author={Liu, S. and Miao, H. and Bremer, P.-T.},
booktitle={Proc. IEEE VIS 2025 Short Papers},
pages={00},
year={2025},
organization={IEEE}
}
Authors
Paraview_MCP was created by Shusen Liu ([email protected]) and Haichao Miao ([email protected])
License
Paraview_MCP is distributed under the terms of the BSD-3 license.
LLNL-CODE-2007260
Related Servers
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
Manim MCP Server
Executes Manim Python scripts to generate and return rendered video animations.
Developer Tools MCP Server
Developer resources including GitHub, npm, PyPI, Docker Hub, GitLab, and StackOverflow
ndlovu-code-reviewer
Manual code reviews are time-consuming and often miss the opportunity to combine static analysis with contextual, human-friendly feedback. This project was created to experiment with MCP tooling that gives AI assistants access to a purpose-built reviewer. Uses the Gemini cli application to process the reviews at this time and linting only for typescript/javascript apps at the moment. Will add API based calls to LLM's in the future and expand linting abilities. It's also cheaper than using coderabbit ;)
Lisply-MCP
A Node.js middleware that allows AI agents to interact with Lisp-based systems using the Lisply protocol.
Image
Fetch and process images from URLs, local file paths, and numpy arrays, returning them as base64-encoded strings.
Kodus OSV
Open source vulnerability lookup via osv_query/osv_query_batch tools.
TUUI - Tool Unitary User Interface
A desktop MCP client for tool integration and cross-vendor LLM API orchestration.
Mentor MCP
Provides AI-powered mentorship to LLM agents for tasks like code review, design critique, and brainstorming, using the Deepseek API.
MCP Project Initializer
Automates the setup of new AI-powered MCP server development projects.
oclif MCP Server Plugin
An oclif CLI plugin that automatically discovers and serves commands via the Model Context Protocol (MCP).
