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A company is developing a customer support AI assistant by using an Amazon Bedrock Retrieval...

A company is developing a customer support AI assistant by using an Amazon Bedrock Retrieval Augmented Generation (RAG) pipeline. The AI assistant retrieves articles from a knowledge base stored in Amazon S3. The company uses Amazon OpenSearch Service to index the knowledge base. The AI assistant uses an Amazon Bedrock Titan Embeddings model for vector search.

The company wants to improve the relevance of the retrieved articles to improve the quality of the AI assistant ' s answers.

Which solution will meet these requirements?

A.

Use auto-summarization on the retrieved articles by using Amazon SageMaker JumpStart.

B.

Use a reranker model before passing the articles to the foundation model (FM).

C.

Use Amazon Athena to pre-filter the articles based on metadata before retrieval.

D.

Use Amazon Bedrock Provisioned Throughput to process queries more efficiently.

Amazon Web Services MLA-C01 Summary

  • Vendor: Amazon Web Services
  • Product: MLA-C01
  • Update on: Jun 18, 2026
  • Questions: 241
Price: $52.5  $149.99
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