AWS Big Data Blog

Category: Amazon SageMaker Lakehouse

Access your existing data and resources through Amazon SageMaker Unified Studio, Part 1: AWS Glue Data Catalog and Amazon Redshift

This series of posts demonstrates how you can onboard and access existing AWS data sources using SageMaker Unified Studio. This post focuses on onboarding existing AWS Glue Data Catalog tables and database tables available in Amazon Redshift.

Access your existing data and resources through Amazon SageMaker Unified Studio, Part 2: Amazon S3, Amazon RDS, Amazon DynamoDB, and Amazon EMR

In this post we discuss integrating additional vital data sources such as Amazon Simple Storage Service (Amazon S3) buckets, Amazon Relational Database Service (Amazon RDS), Amazon DynamoDB, and Amazon EMR clusters. We demonstrate how to configure the necessary permissions, establish connections, and effectively use these resources within SageMaker Unified Studio. Whether you’re working with object storage, relational databases, NoSQL databases, or big data processing, this post can help you seamlessly incorporate your existing data infrastructure into your SageMaker Unified Studio workflows.

Amazon SageMaker Lakehouse now supports attribute-based access control

Amazon SageMaker Lakehouse now supports attribute-based access control (ABAC) with AWS Lake Formation, using AWS Identity and Access Management (IAM) principals and session tags to simplify data access, grant creation, and maintenance. In this post, we demonstrate how to get started with SageMaker Lakehouse with ABAC.

Accelerate your analytics with Amazon S3 Tables and Amazon SageMaker Lakehouse

Amazon SageMaker Lakehouse is a unified, open, and secure data lakehouse that now seamlessly integrates with Amazon S3 Tables, the first cloud object store with built-in Apache Iceberg support. In this post, we guide you how to use various analytics services using the integration of SageMaker Lakehouse with S3 Tables.

Enhance governance with metadata enforcement rules in Amazon SageMaker

Amazon SageMaker Catalog now supports metadata rules allowing organizations to enforce metadata standards across data publishing and subscription workflows. In this post, we guide you through two workflows: setting up metadata enforcement rules for a specific domain and publishing an asset or data product in a catalog, and setting up metadata enforcement rules for a specific domain and subscribing to an asset or data product that is owned by a project within that domain.

Using Amazon S3 Tables with Amazon Redshift to query Apache Iceberg tables

In this post, we demonstrate how to get started with S3 Tables and Amazon Redshift Serverless for querying data in Iceberg tables. We show how to set up S3 Tables, load data, register them in the unified data lake catalog, set up basic access controls in SageMaker Lakehouse through AWS Lake Formation, and query the data using Amazon Redshift.

Connect, share, and query where your data sits using Amazon SageMaker Unified Studio

In this blog post, we will demonstrate how business units can use Amazon SageMaker Unified Studio to discover, subscribe to, and analyze these distributed data assets. Through this unified query capability, you can create comprehensive insights into customer transaction patterns and purchase behavior for active products without the traditional barriers of data silos or the need to copy data between systems.