2min chapter

AXRP - the AI X-risk Research Podcast cover image

19 - Mechanistic Interpretability with Neel Nanda

AXRP - the AI X-risk Research Podcast

CHAPTER

Is It Possible to Do the Same in Image Models?

The way that i believe image models even those with a residual stream tends to work is they take the input image which is big and then kind of progressively scale it down. They just totally flatten out what they've got and maybe have another couple of fully connected layers before producing an output. This will just technique just doesn't even work in principle oh oh why not soOh sorry so the naive technique of you just delete these layers  isn't going to work for this type of network. Having the input format be the same is very important, he says. He adds: "If the shape of the output is not the same as the thing if the shape of an intermediate activation is

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