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

Summary

In this chapter, we continued to build on the CDK application we started in Chapter 4, Continuous Integration and Continuous Delivery (CI/CD) for Machine Learning. In doing so, you were further presented with how to deploy the CDK application and automate the deployment of an optimized ML model.

You were also introduced to the importance of an agile, cross-function team as being integral to the success of an automated ML solution. We saw how these various teams bridged the gap between the ML modeling process (from the perspective of ML practitioners), all the way to automated model deployment (from the perspective of application development and operations teams).

Additionally, in this chapter, you saw how the AWS development tools, namely CodeCommit, CodeBuild, and CodePipeline, can be used to orchestrate the CI/CD process. Though the hands-on example, you saw for yourself how the typical ML process introduced in Chapter 1, Getting Started with Automated Machine Learning...