MCP Server for Generating Chart Image (FastMCP + FastAPI)

Created By
qnnpneta year ago
Overview

what is MCP Server?

MCP Server is a server application designed to generate chart images from Python code using FastMCP and FastAPI.

how to use MCP Server?

To use MCP Server, clone the repository, install the required dependencies, and run the server. You can then send a POST request with your Python code to generate a chart image.

key features of MCP Server?

  • Generates chart images from Python code.
  • Utilizes FastAPI for fast and efficient server responses.
  • Supports various Python libraries for chart generation, including Matplotlib.

use cases of MCP Server?

  1. Creating dynamic charts for data visualization in web applications.
  2. Automating the generation of reports with embedded charts.
  3. Providing chart generation as a service for other applications.

FAQ from MCP Server?

  • What libraries are required to run MCP Server?

You need Python 3.11+, FastMCP, FastAPI, Uvicorn, Python-dotenv, Requests, and Matplotlib.

  • How do I generate a chart image?

Send a POST request to the /generate_chart endpoint with your Python code in the request body.

  • Can I customize the charts?

Yes! You can modify the Python code you send to customize the charts as needed.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
qnnpnet
Star
0
Language
Python
License
-

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