Understanding Understanding And Improving Llms Through Mechanistic Interpretability

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ACL SIG-FinTech x TFAI Webinar Series (https://sigfintech.github.io/) How can we reverse engineer what a neural network is doing? In this IASEAI '25 session, An Introduction to A discussion on the philosophy of deep learning,

This is a talk I gave to my MATS scholars, with a stylised history of the field of

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