this post was submitted on 27 Nov 2023
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Machine Learning
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Not to start an argument here but I can't imagine anybody with any level of understanding who should start diving deeper by reading the "Attention is All You Need" paper. Yes, this is a diverse community, but when you try to address everybody's needs, you usually end up with addressing nobody's needs.
Just me, but I think of busy coworkers with great background in math/stats and 'classic' ML who would ramp up quickly from a list like this. When I onboarded chemists (PhDs) to my ML team at a drug startup, I would send them a similarly dense reading list. With their strong background in physics, it would take them two weeks flat to understand the necessary theory and jargon to be productive (in our niche field).
Didn't mean to say those papers are completely useless, but even for those with a strong Math/ML background I would advise starting with recent survey papers. Reading "Attention is All You Need" is kind of like reading the General Relativity papers of Einstein - cool as a historical curiosity, but not ideal for optimizing expertise acquisition.
Since "Attention is All You Need" is fairly high on my reading list for understanding the details of transformer architecture, what do you recommend instead?
https://arxiv.org/abs/2106.04554
If you're trying to learn more about language models don't bother with anything written before 2020. That's basically the Stone Age.
Thank you!