AWS::Bedrock::KnowledgeBase VectorKnowledgeBaseConfiguration - Amazon CloudFormation
Services or capabilities described in Amazon Web Services documentation might vary by Region. To see the differences applicable to the China Regions, see Getting Started with Amazon Web Services in China (PDF).

AWS::Bedrock::KnowledgeBase VectorKnowledgeBaseConfiguration

Contains details about the model used to create vector embeddings for the knowledge base.

Syntax

To declare this entity in your Amazon CloudFormation template, use the following syntax:

Properties

EmbeddingModelArn

The Amazon Resource Name (ARN) of the model or inference profile used to create vector embeddings for the knowledge base.

Required: Yes

Type: String

Pattern: ^(arn:aws(-[^:]+)?:[a-z0-9-]+:[a-z0-9-]{1,20}:[0-9]{0,12}:[a-zA-Z0-9-:/._+]+)$

Minimum: 20

Maximum: 2048

Update requires: Replacement

EmbeddingModelConfiguration

The embeddings model configuration details for the vector model used in Knowledge Base.

Required: No

Type: EmbeddingModelConfiguration

Update requires: Replacement

SupplementalDataStorageConfiguration

If you include multimodal data from your data source, use this object to specify configurations for the storage location of the images extracted from your documents. These images can be retrieved and returned to the end user. They can also be used in generation when using RetrieveAndGenerate.

Required: No

Type: SupplementalDataStorageConfiguration

Update requires: Replacement