2min chapter

Machine Learning Street Talk (MLST) cover image

Neel Nanda - Mechanistic Interpretability

Machine Learning Street Talk (MLST)

CHAPTER

How to Scale Up the Bandwidth of the Model

In a sense you know we were talking about being able to reuse things that you've learned before and not having to learn them again. i guess i think of it as a kind of translational equivariance in the in the layered regime which is that you have a computation which is learned early on and now it can just be composed into subsequent layers. It's like you've got a menu of computational functions that you can call on at any layerYeah pretty much i Think of it as like the shared memory and shared bandwidth of the model yeah you're almost like a memory busyeah sometimes models will dedicate neurons like cleaning up the memory and deleting things that are no longer needed Yeah this is the

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