How the Amazon.com Catalog Team built self-learning generative AI at scale with Amazon Bedrock | Amazon Web Services

How the Amazon.com Catalog Team built self-learning generative AI at scale with Amazon Bedrock | Amazon Web Services

The Amazon.com Catalog is the foundation of every customer’s shopping experience—the definitive source of product information with attributes that power search, recommendations, and discovery. When a seller lists a new product, the catalog system must extract structured attributes—dimensions, materials, compatibility, and technical specifications—while generating content such as titles that match how customers search. A title isn’t a simple enumeration like color or size; it must balance seller intent, customer search behavior, and discoverability. This complexity, multiplied by millions of daily submissions, makes catalog enrichment an ideal proving ground for self-learning AI.

In this post, we demonstrate how the Amazon Catalog Team built a self-learning system that continuously improves accuracy while reducing costs at scale using Amazon Bedrock.

The challenge

In generative AI deployment environments, improving model performance calls for…

https://aws.amazon.com/blogs/machine-learning/how-the-amazon-com-catalog-team-built-self-learning-generative-ai-at-scale-with-amazon-bedrock/