-
Book Overview & Buying
-
Table Of Contents
Machine Learning Engineering on AWS - Second Edition
By :
In this chapter, you explored how to build and work with a transactional data lake using S3 tables. More specifically, you learned how to create an Amazon S3 table bucket, launch an Amazon EMR cluster with Apache Iceberg installed, and perform queries using Apache Spark. You also practiced running time travel queries on S3 tables to retrieve previous dataset versions while enabling exploration of data changes across time.
In the next chapter, you will build on what you set up in this chapter and dive deeper into working with AWS Lake Formation permissions, running SQL queries in Amazon Athena, ingesting data into an Amazon SageMaker AI Feature Store, adding searchable metadata to features, and retrieving data from both online and offline feature store repositories.