Amazon Bedrock Managed Knowledge Base simplifies enterprise RAG pipeline management for AI applications
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@DCABib
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Summary
Amazon Web Services announced Amazon Bedrock Managed Knowledge Base, a fully managed service that simplifies building enterprise-grade generative AI applications with proprietary data. The service abstracts away the complexity of building and managing Retrieval-Augmented Generation (RAG) pipelines by providing native data connectors, Smart Parsing for automatic multi-format data preparation, and an Agentic Retriever for complex multi-step queries. Integrated with AgentCore Gateway, it allows developers to focus on business outcomes rather than infrastructure management, enabling faster and more accurate enterprise AI applications.
Key quotes
· 3 pulledToday, we're announcing Amazon Bedrock Managed Knowledge Base, a new set of capabilities that enables developers to build enterprise-grade generative AI applications with their proprietary data in minutes.
Organizations building agentic AI applications need secure, reliable, and up-to-date access to enterprise-wide data to deliver accurate, fast, and trusted outcomes.
Managed Knowledge Base abstracts away the complexity of building and managing retrieval-augmented generation (RAG) pipelines.
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