aws-samples/Reducing-Hallucinations-in-LLM-Agents-with-a-Verified-Semantic-Cache
This repository contains sample code demonstrating how to implement a verified semantic cache using Amazon Bedrock Knowledge Bases to prevent hallucinations in Large Language Model (LLM) responses while improving latency and reducing costs.
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