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by dheerkt
484 days ago
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I recently wrote a post outlining our method to reduce hallucinations in LLM agents by leveraging a verified semantic cache. The approach pre-populates the cache with verified question-answer pairs, ensuring that frequently asked questions are answered accurately and consistently without invoking the LLM unnecessarily. The key idea lies in dynamically determining how queries are handled: - Strong matches (≥80% similarity): Responses are directly served from the cache. - Partial matches (60–80% similarity): Verified answers are used as few-shot examples to guide the LLM. - No matches (<60% similarity): The query is processed by the LLM as usual. This not only minimizes hallucinations but also reduces costs and improves response times. Here's a Jupyter notebook walkthrough if anyone's interested in diving deeper: https://github.com/aws-samples/Reducing-Hallucinations-in-LL... Would love to hear your thoughts—anyone else working on similar techniques or approaches? Thanks. |
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