Book Image

Machine Learning Engineering on AWS

By : Joshua Arvin Lat
Book Image

Machine Learning Engineering on AWS

By: Joshua Arvin Lat

Overview of this book

There is a growing need for professionals with experience in working on machine learning (ML) engineering requirements as well as those with knowledge of automating complex MLOps pipelines in the cloud. This book explores a variety of AWS services, such as Amazon Elastic Kubernetes Service, AWS Glue, AWS Lambda, Amazon Redshift, and AWS Lake Formation, which ML practitioners can leverage to meet various data engineering and ML engineering requirements in production. This machine learning book covers the essential concepts as well as step-by-step instructions that are designed to help you get a solid understanding of how to manage and secure ML workloads in the cloud. As you progress through the chapters, you’ll discover how to use several container and serverless solutions when training and deploying TensorFlow and PyTorch deep learning models on AWS. You’ll also delve into proven cost optimization techniques as well as data privacy and model privacy preservation strategies in detail as you explore best practices when using each AWS. By the end of this AWS book, you'll be able to build, scale, and secure your own ML systems and pipelines, which will give you the experience and confidence needed to architect custom solutions using a variety of AWS services for ML engineering requirements.
Table of Contents (19 chapters)
1
Part 1: Getting Started with Machine Learning Engineering on AWS
5
Part 2:Solving Data Engineering and Analysis Requirements
8
Part 3: Diving Deeper with Relevant Model Training and Deployment Solutions
11
Part 4:Securing, Monitoring, and Managing Machine Learning Systems and Environments
14
Part 5:Designing and Building End-to-end MLOps Pipelines

Registering models to SageMaker Model Registry

In Chapter 6, SageMaker Training and Debugging Solutions, we used the deploy() method of the Estimator instance to immediately deploy our ML model to an inference endpoint right after using the fit() method to train the model. When performing ML experiments and deployments in production, a model may have to be analyzed and evaluated first before proceeding with the deployment step. The individual or team performing the analysis would review the input configuration parameters, the training data, and the algorithm used to train the model, along with other relevant information available. Once the data science team has to work with multiple models, managing and organizing all of these would be much easier using a model registry.

What’s a model registry? A model registry is simply a repository that focuses on helping data scientists and ML practitioners manage, organize, and catalog ML models. After the training step, the data science...