Fast, documented Machine Learning APIs with FastAPI


Video description

Use FastAPI to expose an HTTP API for fast live predictions using an ONNX Machine Learning Model. FastAPI is a Python web framework that provides easy development ofdocumented HTTP APIs by offering self-documented endpoints with Swagger – a tool to describe, document, and use RESTful web services.
Learn how to quickly put together an API which validates requests, and self-documents its endpoints using OpenAPI via Swagger. Quickly produce a robust interface for others to consumeyour Machine Learning model by following core best-practices of MLOps.
Parts of this video cover the basics of packaging Machine Learning models, as covered in the Practical MLOps book.
Topics include:
* Create a Python project to serve live predictions using FastAPI
* Use a Dockerfile to package the model and the API using Docker containerization
* With minimal Python code, expose an ONNX model to perform sentiment analysis over an HTTP endpoint
* Dynamically interact with the API using the self-documented endpoint in the container.

Useful links:
* Demo Github Repository with sample code
* Practical MLOps book
* FastAPI Intro tutorial
* RoBERTa ONNX Model for sentiment analysis


Fast, documented Machine Learning APIs with FastAPI, Free Tutorials Download

Download Fast, documented Machine Learning APIs with FastAPI Free Tutorials Direct Links

Go to Download Tutorials Page Go to HomePage Tutorials

Password :

Author: Ho Quang Dai

I am Ho Quang Dai, from Vietnam – A country that loves peace. I share completely free courses from major academic websites around the world. Hope to bring free knowledge to everyone who can’t afford to buy

Related Courses

Notify of
Inline Feedbacks
View all comments

Report Link Die

Please provide the most detailed information, we will re-upload as soon as possible