Apache Iceberg has emerged as the open table format for data lakes. It handles petabyte-scale datasets, lets teams evolve schemas and partitions in place, and supports time travel and incremental processing for data lake management at scale. Amazon S3 Tables provide a fully managed Apache Iceberg table experience in Amazon S3, optimized for analytics workloads, and integrate with the AWS Glue Data Catalog so AWS analytics services such as Amazon Redshift, Amazon EMR, Amazon Athena, Amazon SageMaker, and AWS Glue query your data. Together, they form the foundation of a modern data lake architecture on AWS.
This is a companion discussion topic for the original entry at https://aws.amazon.com/blogs/big-data/how-to-use-streamlined-permissions-for-amazon-s3-tables-and-iceberg-materialized-views/