-
Book Overview & Buying
-
Table Of Contents
Machine Learning Engineering on AWS - Second Edition
By :
In this chapter, you explored how to use SageMaker AI to implement end-to-end machine learning engineering workflows. You started by training and deploying an XGBoost model and then proceeded to fine-tuning a BERT model. As you worked through the examples, you learned how SageMaker AI simplifies the complexity of building and deploying various types of machine learning models by providing managed infrastructure for training, inference, and model lifecycle management.
In the next chapter, you will shift your focus to data management on AWS and explore how to modernize analytics with a managed transactional data lake. You will work with Amazon S3 Tables backed by the Apache Iceberg table format, which enables ACID transactions, schema evolution, and time-travel queries on data stored in Amazon S3, enabling you to run reliable and consistent analytics directly on your data lake.