The Gradient: Perspectives on AI cover image

Hattie Zhou: Lottery Tickets and Algorithmic Reasoning in LLMs

The Gradient: Perspectives on AI

CHAPTER

How Much Precision Do You Need in the Weights?

I think it's probably related to the stability idea that was explored in the follow-up paper lottery ticket at scale, or maybe they changed the title. So basically, if you scale to ImageNet, the original experiments don't hold anymore, and you need to rewind to the weight after a few epochs of training. For these larger data sets, it's more unstable early on, so you want to kind of skip that unstable period. And I suspect this is related to stability, so like how much precision you need in the weights is also related to how stable the training dynamics are. Yeah, I've heard that in some experiments, the sign observations don't hold, but then

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