Wolfram Alpha
Access Wolfram Alpha's computational knowledge engine for expert-level answers and data analysis.
MCP Wolfram Alpha (Server + Client)
Seamlessly integrate Wolfram Alpha into your chat applications.
This project implements an MCP (Model Context Protocol) server designed to interface with the Wolfram Alpha API. It enables chat-based applications to perform computational queries and retrieve structured knowledge, facilitating advanced conversational capabilities.
Included is an MCP-Client example utilizing Gemini via LangChain, demonstrating how to connect large language models to the MCP server for real-time interactions with Wolfram Alpha’s knowledge engine.
Features
-
Wolfram|Alpha Integration for math, science, and data queries.
-
Modular Architecture Easily extendable to support additional APIs and functionalities.
-
Multi-Client Support Seamlessly handle interactions from multiple clients or interfaces.
-
MCP-Client example using Gemini (via LangChain).
-
UI Support using Gradio for a user-friendly web interface to interact with Google AI and Wolfram Alpha MCP server.
Installation
Clone the Repo
git clone https://github.com/ricocf/mcp-wolframalpha.git
cd mcp-wolframalpha
Set Up Environment Variables
Create a .env file based on the example:
-
WOLFRAM_API_KEY=your_wolframalpha_appid
-
GeminiAPI=your_google_gemini_api_key (Optional if using Client method below.)
Install Requirements
pip install -r requirements.txt
Install the required dependencies with uv:
Ensure uv is installed.
uv sync
Configuration
To use with the VSCode MCP Server:
- Create a configuration file at
.vscode/mcp.jsonin your project root. - Use the example provided in
configs/vscode_mcp.jsonas a template. - For more details, refer to the VSCode MCP Server Guide.
To use with Claude Desktop:
{
"mcpServers": {
"WolframAlphaServer": {
"command": "python3",
"args": [
"/path/to/src/core/server.py"
]
}
}
}
Client Usage Example
This project includes an LLM client that communicates with the MCP server.
Run with Gradio UI
- Required: GeminiAPI
- Provides a local web interface to interact with Google AI and Wolfram Alpha.
- To run the client directly from the command line:
python main.py --ui
Docker
To build and run the client inside a Docker container:
docker build -t wolframalphaui -f .devops/ui.Dockerfile .
docker run wolframalphaui
UI
- Intuitive interface built with Gradio to interact with both Google AI (Gemini) and the Wolfram Alpha MCP server.
- Allows users to switch between Wolfram Alpha, Google AI (Gemini), and query history.

Run as CLI Tool
- Required: GeminiAPI
- To run the client directly from the command line:
python main.py
Docker
To build and run the client inside a Docker container:
docker build -t wolframalpha -f .devops/llm.Dockerfile .
docker run -it wolframalpha
Contact
Feel free to give feedback. The e-mail address is shown if you execute this in a shell:
printf "\x61\x6b\x61\x6c\x61\x72\x69\x63\x31\x40\x6f\x75\x74\x6c\x6f\x6f\x6b\x2e\x63\x6f\x6d\x0a"
Serveurs connexes
Genji MCP Server
Search and analyze classical Japanese literature using the Genji API, with advanced normalization features.
Bucketeer Docs Local MCP Server
A local server to query Bucketeer documentation, which automatically fetches and caches content from its GitHub repository.
Unsplash MCP Server
Search and integrate images from Unsplash using its official API.
Bowlly Search
Search, analyze, and compare cat food products with ingredient- and nutrition-based tools.
doctree-mcp
BM25 search + tree navigation over markdown docs for AI agents. No embeddings, no LLM calls at index time.
secEdgarMCP
An MCP server that allows a client to fetch data from the SEC EDGAR API and pull documents into terminal rendering
Zenn Articles
A server for searching articles on the Zenn blogging platform.
Simple arXiv
Search and retrieve academic papers from the arXiv repository via its API.
SerpApi
Provides search capabilities and data retrieval from SerpAPI and YouTube for AI assistants.
Inkeep
RAG Search over your content powered by Inkeep