
40 - Jason Gross on Compact Proofs and Interpretability
AXRP - the AI X-risk Research Podcast
Navigating Challenges in Mechanistic Interpretability
This chapter explores the difficulties of acquiring proofs within mechanistic interpretability, emphasizing the challenges posed by randomness and noise in neural networks. It examines strategies for managing proof lengths against computational costs, illustrating the balance needed for model accuracy. The discussion further highlights the importance of concise proofs and their role in improving our understanding of AI model behavior, particularly in complex scenarios.
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