AWS Big Data Blog

Category: AWS Glue

Accelerate AWS Glue zero-ETL data ingestion using Salesforce Bulk API

AWS Glue zero-ETL (extract, transform, and load) now supports Salesforce Bulk API, delivering substantial performance gains compared to Salesforce REST API for large-scale data integration for targets such as Amazon SageMaker lakehouse and Amazon Redshift. In this blog post, we show you how to use zero-ETL powered by AWS Glue with Salesforce Bulk API to accelerate your data integration processes.

Zero-ETL: How AWS is tackling data integration challenges

In this blog post, we show you how Amazon Web Services (AWS) is simplifying data integration with zero-ETL while realizing performance benefits and cost optimizations. As organizations gather data for analytics and AI, they are increasingly finding themselves caught in a complex web of extract, transform, and load (ETL) pipelines—the traditional backbone of data integration. […]

The Amazon SageMaker lakehouse architecture now automates optimization configuration of Apache Iceberg tables on Amazon S3

The Amazon SageMaker lakehouse architecture now automates optimization of Iceberg tables stored in Amazon S3 with catalog-level configuration, optimizing storage in your Iceberg tables and improving query performance. This post demonstrates an end-to-end flow to enable catalog level table optimization setting.

Automate data lineage in Amazon SageMaker using AWS Glue Crawlers supported data sources

In this post, we explore its real-world impact through the lens of an ecommerce company striving to boost their bottom line. To illustrate this practical application, we walk you through how you can use the prebuilt integration between SageMaker Catalog and AWS Glue crawlers to automatically capture lineage for data assets stored in Amazon Simple Storage Service (Amazon S3) and Amazon DynamoDB.

Accelerate your data quality journey for lakehouse architecture with Amazon SageMaker, Apache Iceberg on AWS, Amazon S3 tables, and AWS Glue Data Quality

This post explores how you can use AWS Glue Data Quality to maintain data quality of S3 Tables and Apache Iceberg tables on general purpose S3 buckets. We’ll discuss strategies for verifying the quality of published data and how these integrated technologies can be used to implement effective data quality workflows.

Build an analytics pipeline that is resilient to Avro schema changes using Amazon Athena

This post demonstrates how to build a solution by combining Amazon Simple Storage Service (Amazon S3) for data storage, AWS Glue Data Catalog for schema management, and Amazon Athena for one-time querying. We’ll focus specifically on handling Avro-formatted data in partitioned S3 buckets, where schemas can change frequently while providing consistent query capabilities across all data regardless of schema versions.

Revenue NSW modernises analytics with AWS, enabling unified and scalable data management, processing, and access

Revenue NSW, Australia’s principal revenue management agency, successfully modernized its analytics infrastructure using AWS services. In this blog post, we show how the organization transformed its on-premises data environment into a unified, scalable cloud-based solution using Amazon Redshift, AWS Database Migration Service, Amazon AppFlow, and AWS Glue.