Book Image

Automated Machine Learning on AWS

By : Trenton Potgieter
Book Image

Automated Machine Learning on AWS

By: Trenton Potgieter

Overview of this book

AWS provides a wide range of solutions to help automate a machine learning workflow with just a few lines of code. With this practical book, you'll learn how to automate a machine learning pipeline using the various AWS services. Automated Machine Learning on AWS begins with a quick overview of what the machine learning pipeline/process looks like and highlights the typical challenges that you may face when building a pipeline. Throughout the book, you'll become well versed with various AWS solutions such as Amazon SageMaker Autopilot, AutoGluon, and AWS Step Functions to automate an end-to-end ML process with the help of hands-on examples. The book will show you how to build, monitor, and execute a CI/CD pipeline for the ML process and how the various CI/CD services within AWS can be applied to a use case with the Cloud Development Kit (CDK). You'll understand what a data-centric ML process is by working with the Amazon Managed Services for Apache Airflow and then build a managed Airflow environment. You'll also cover the key success criteria for an MLSDLC implementation and the process of creating a self-mutating CI/CD pipeline using AWS CDK from the perspective of the platform engineering team. By the end of this AWS book, you'll be able to effectively automate a complete machine learning pipeline and deploy it to production.
Table of Contents (18 chapters)
1
Section 1: Fundamentals of the Automated Machine Learning Process and AutoML on AWS
5
Section 2: Automating the Machine Learning Process with Continuous Integration and Continuous Delivery (CI/CD)
8
Section 3: Optimizing a Source Code-Centric Approach to Automated Machine Learning
11
Section 4: Optimizing a Data-Centric Approach to Automated Machine Learning
14
Section 5: Automating the End-to-End Production Application on AWS

Section 4: Optimizing a Data-Centric Approach to Automated Machine Learning

This section introduces you to what a data-centric ML process is, how it differs from a code-centric approach, and the services typically used for this methodology, namely, Apache Airflow and Amazon Managed Workflows for Apache Airflow.

This section comprises the following chapters:

  • Chapter 8, Automating the Machine Learning Process Using Apache Airflow
  • Chapter 9, Building the ML Workflow Using Amazon Managed Workflows for Apache Airflow