
40 - Jason Gross on Compact Proofs and Interpretability
AXRP - the AI X-risk Research Podcast
Understanding Compact Proofs in AI
This chapter explores the challenges and implications of compact proofs in the evaluation of large AI models. It highlights the significance of these proofs in deriving insights about model behavior and safety, while emphasizing the distinction between models that merely appear effective and those that genuinely perform well. Through various strategies and examples, the discussion illustrates how compact proofs can enhance mechanistic interpretability and improve the reliability of AI systems.
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