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

What this book covers

Chapter 1, Python Development Environment Setup, is aimed at setting up the development environment so that you can start working with Python and FastAPI. We'll introduce the various tools that are commonly used in the Python community to ease development.

Chapter 2, Python Programming Specificities, introduces you to the specificities of programming in Python, specifically, block indentation, control flow statements, exceptions handling, and the object-oriented paradigm. We'll also cover features such as list comprehensions and generators. Finally, we'll see how type hinting and asynchronous I/O work. 

Chapter 3, Developing a RESTful API with FastAPI, covers the basics of the creation of a RESTful API with FastAPI: routing, parameters, request body validation, and response. We'll also show how to properly structure a FastAPI project with dedicated modules and separate routers.

Chapter 4, Managing pydantic Data Models in FastAPI, covers in more detail the definition of data models with Pydantic, the underlying data validation library used by FastAPI. We'll explain how to implement variations of the same model without repeating ourselves thanks to class inheritance. Finally, we'll show how to implement custom data validation logic on those models.

Chapter 5, Dependency Injections in FastAPI, explains how dependency injection works and how we can define our own dependencies to reuse logic across different routers and endpoints.

Chapter 6, Databases and Asynchronous ORMs, demonstrates how we can set up a connection with a database to read and write data. We'll cover how to use two libraries to work asynchronously with SQL databases and how they interact with the Pydantic model. Finally, we'll also show you how to work with MongoDB, a NoSQL database.

Chapter 7, Managing Authentication and Security in FastAPI, shows us how to implement a basic authentication system to protect our API endpoints and return the relevant data for the authenticated user. We'll also talk about the best practices around CORS and how to be safe from CSRF attacks.

Chapter 8, Defining WebSockets for Two-Way Interactive Communication in FastAPI, is aimed at understanding WebSockets and how to create them and handle the messages received with FastAPI.

Chapter 9, Testing an API Asynchronously with pytest and HTTPX, shows us how to write tests for our REST API endpoints.

Chapter 10, Deploying a FastAPI Project, covers the common configuration for running FastAPI applications smoothly in production. We'll also explore several deployment options: DigitalOcean App Platform, Docker, and the traditional server setup.

Chapter 11, Introduction to NumPy and pandas, introduces two core libraries for data science in Python: NumPy and pandas. We'll see how to create and manipulate arrays with NumPy and how we can do efficient operations on them. We'll then show how to manage large datasets with pandas.

Chapter 12, Training Machine Learning Models with scikit-learn, gives a quick introduction to machine learning before moving on to the scikit-learn library, a set of ready-to-use tools to perform machine learning tasks in Python. We'll review some of the most common algorithms and train prediction models.

Chapter 13, Creating an Efficient Prediction API Endpoint with FastAPI, shows us how we can efficiently store a trained machine learning model using Joblib. Then, we'll integrate it in a FastAPI backend, considering some technical details of FastAPI internals to achieve maximum performance. Finally, we'll show a way to cache results using Joblib.

Chapter 14, Implementing a Real-Time Face Detection System Using WebSockets with FastAPI and OpenCV, implements a simple application to perform face detection in the browser, backed by a FastAPI WebSocket and OpenCV, a popular library for computer vision.

lock icon The rest of the chapter is locked
Next Chapter arrow right
Register for a free Packt account to unlock a world of extra content!
A free Packt account unlocks extra newsletters, articles, discounted offers, and much more. Start advancing your knowledge today.
Unlock this book and the full library FREE for 7 days
Get unlimited access to 7000+ expert-authored eBooks and videos courses covering every tech area you can think of
Renews at $15.99/month. Cancel anytime}