Amazon SageMaker Catalog, part of the next generation of Amazon SageMaker, now supports AI recommendations for descriptions—including table summaries, use cases, and column-level descriptions—for custom structured assets registered programmatically. This applies to a wide range of assets, for example, Iceberg tables in Amazon S3, or datasets from third-party and internal applications.
Building on existing automated metadata capabilities for harvested assets from native services like AWS Glue and Amazon Redshift, this enhancement enables users to generate business-friendly descriptions for custom assets using large language models (LLMs) via Amazon Bedrock.
With just a few clicks, users can trigger AI-generated suggestions, review and refine descriptions, and publish enriched asset metadata directly to the catalog. This helps reduce manual documentation effort, improves metadata consistency, and accelerates asset discoverability across organizations.
Learn more about how to generate automated metadata for custom assets in our product documentation.
Categories:
Source: Amazon Web Services
Latest Posts
- Updates to custom scripting in sites and Classic Publishing site creation [MC1117115]
- Announcing Public Preview of Project Manager agent in Shared Premium Plans [MC1117098]
- Microsoft OneDrive for Business | Updated order of Shortcut and Sync commands [MC1117105]
- Standard and Priority access to Copilot capabilities [MC1117101]