Python Workers: FastMCP Example

Created By
davila7a year ago
Overview

what is FastAPI Worker: FastMCP Example?

FastAPI Worker: FastMCP Example is a demonstration project that showcases how to use the FastMCP package to create Python Workers for deployment on Cloudflare Workers.

how to use FastAPI Worker?

To use this project, you need to set up a Python environment with Python 3.12, install the necessary packages, and follow the deployment instructions provided in the documentation.

key features of FastAPI Worker?

  • Example implementation of Python Workers using FastMCP
  • Detailed instructions for setting up and deploying the worker
  • Support for vendoring packages and managing dependencies

use cases of FastAPI Worker?

  1. Deploying serverless Python applications on Cloudflare Workers.
  2. Managing and deploying Python packages in a cloud environment.
  3. Testing and developing Python Workers with FastAPI.

FAQ from FastAPI Worker?

  • What version of Python is required?

Python 3.12 is required for this project.

  • Can I use this on the free plan?

No, this example exceeds the 3MB size limit for free plan users.

  • How do I test the worker?

You can test the worker by running the provided test commands after setting up your environment.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
davila7
Star
0
Language
Python
License
-

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