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Building Data Science Applications with FastAPI

You're reading from  Building Data Science Applications with FastAPI

Product type Book
Published in Oct 2021
Publisher Packt
ISBN-13 9781801079211
Pages 426 pages
Edition 1st Edition
Languages
Author (1):
François Voron François Voron
Profile icon François Voron

Table of Contents (19) Chapters

Preface 1. Section 1: Introduction to Python and FastAPI
2. Chapter 1: Python Development Environment Setup 3. Chapter 2: Python Programming Specificities 4. Chapter 3: Developing a RESTful API with FastAPI 5. Chapter 4: Managing Pydantic Data Models in FastAPI 6. Chapter 5: Dependency Injections in FastAPI 7. Section 2: Build and Deploy a Complete Web Backend with FastAPI
8. Chapter 6: Databases and Asynchronous ORMs 9. Chapter 7: Managing Authentication and Security in FastAPI 10. Chapter 8: Defining WebSockets for Two-Way Interactive Communication in FastAPI 11. Chapter 9: Testing an API Asynchronously with pytest and HTTPX 12. Chapter 10: Deploying a FastAPI Project 13. Section 3: Build a Data Science API with Python and FastAPI
14. Chapter 11: Introduction to NumPy and pandas 15. Chapter 12: Training Machine Learning Models with scikit-learn 16. Chapter 13: Creating an Efficient Prediction API Endpoint with FastAPI 17. Chapter 14: Implement a Real-Time Face Detection System Using WebSockets with FastAPI and OpenCV 18. Other Books You May Enjoy

Persisting a trained model with Joblib

In the previous chapter, you learned how to train an estimator with scikit-learn. When building such models, you'll likely obtain a rather complex Python script to load your training data, pre-process it, and train your model with the best set of parameters. However, when deploying your model in a web application, such as FastAPI, you don't want to repeat this script and run all those operations when the server is starting. Instead, you need a ready-to-use representation of your trained model that you can just load and use.

This is what Joblib does. This library aims to provide tools for efficiently saving Python objects to disk, such as large arrays of data or function results: this operation is generally called dumping. Joblib is already a dependency of scikit-learn, so we don't even need to install it. scikit-learn uses it internally to load the bundled toy datasets.

As we'll see, dumping a trained model involves just...

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