4min chapter

The Gradient: Perspectives on AI cover image

Hattie Zhou: Lottery Tickets and Algorithmic Reasoning in LLMs

The Gradient: Perspectives on AI

CHAPTER

Can We Develop Algorithms That Capture the Same Benefit Without Iterative Process?

There's a lot of cool work that I think explicitly establishes generalization bounds based off of like input output mutual information. There is this open question of, could we develop algorithms that capture the same benefit without this iterative training process? And I'd love to know if you have either seen work investigating that or have any intuitions on what such a training scheme could look like.

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