Perform data parity at scale for data modernization programs using AWS Glue Data Quality
Big Data Blog
This article discusses how to use AWS Glue Data Quality to establish data parity during data modernization and migration programs from on-premises databases to AWS cloud.
Specifically, the article covers:
- Overview of the solution architecture for historical and incremental data migration
- Establishing data parity for historical data migration using AWS Glue Data Quality
- Establishing data parity for incremental data using AWS Glue Data Quality
- Establishing data parity using functional queries and business metrics validation
- Prerequisites and step-by-step instructions for setting up the data parity process
- Conclusion summarizing the benefits of using AWS Glue Data Quality for data parity checks
The AWS News Feed is currently looking for gold sponsors. If you want to support the AWS community and reach a large audience of AWS professionals, consider sponsoring the AWS News Feed.
Related articles
Aug 8
2024
2024
AWS Glue announces GA of new ML-powered Glue Data Quality capability
Jun 13
2025
2025
From raw to refined: building a data quality pipeline with AWS Glue and Amazon S3 Tables
Jul 28
2025
2025
AWS Glue Data Quality now supports Amazon S3 Tables and Iceberg Tables
Jun 28
2024
2024
Announcing Data Quality Definition Language (DQDL) enhancements for AWS Glue Data Quality
The AWS News Feed is currently looking for silver sponsors. If you want to support the AWS community and reach a large audience of AWS professionals, consider sponsoring the AWS News Feed.