-
Book Overview & Buying
-
Table Of Contents
Machine Learning Engineering on AWS - Second Edition
By :
In the previous chapter, you learned how to build and work with a transactional data lake for data analytics and machine learning workloads. In this chapter, we will build on that foundation by exploring practical data management techniques for modern cloud-based ML environments, while leveraging AWS's managed services so you don't have to build your own data management solutions from scratch. You will learn how to work with AWS Lake Formation permissions, use Amazon Athena to query and process data stored in S3 table buckets, and ingest data into Amazon SageMaker Feature Store. You will also learn how to add searchable metadata to features and retrieve features from both the online and offline feature stores.
To help you build practical data management skills for modern cloud-based ML workflows, we will cover the following topics in this chapter: