Smart Routing for Uncertain AI Responses

Smart Routing for Uncertain AI Responses

Teaching LLMs to recognize when they don't know the answer

This research introduces a novel approach for LLMs to self-assess confidence and intelligently route requests to appropriate experts when uncertain.

  • Enables AI systems to recognize their own limitations and redirect questions when necessary
  • Implements special confidence tokens that help models express uncertainty
  • Creates more reliable AI systems for high-stakes applications
  • Demonstrates significant improvements in identifying untrustworthy outputs

For security applications, this approach is crucial as it provides a mechanism to prevent potentially harmful or incorrect AI responses in critical situations by defaulting to safer alternatives when confidence is low.

Learning to Route LLMs with Confidence Tokens

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