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19 - Mechanistic Interpretability with Neel Nanda

AXRP - the AI X-risk Research Podcast

CHAPTER

The Induction Head in a Two-Layer Attentionally Model

The attention head looks for tokens whose most previous thing was like the thing you're on right now. The hard part is saying attend to the thing that is immediately preceded by myself yep there's also worth just like briefly staring at this as a central example of how transformers differ from kind of networks without attention or would like really baked in ways of viewing information between positions. Even in a two-layer attentionally model the induction head kind of didn't actually do amazingly if you only let it use strict induction uh strict induction being the  attend to token immediately after copy of current token but did significantly better if you allowed it to have a kind of fuzzier window okay?

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