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by jcranmer
712 days ago
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> Communities that are willing to run AI over their knowledge base are going to develop a big advantage over those who don't. I have a hard time seeing this. If you're an academic or an industrial researcher, the hard part of the literature review isn't finding the relevant papers, it's digesting them--and in some fields (e.g., chemistry), replicating their results. If you're more an industry person trying to apply academic research, well in general, you probably want a good textbook synthesis of the field rather than trying to understand stuff from research papers. From your second paragraph, it seems to me that you're thinking AI will help with the textbook synthesis step, but this is the sort of thing that as far as I can tell, current LLMs are just fundamentally bad at. To use a concrete example, I have been off-and-on poking at research into simplex presolving, and one of the things you quickly find is that just about everybody has their own definition of the "standard model", so to mix and match different papers, you have to start by recasting everything into a single model. And capturing the nuance of "these papers use the same symbols to mean completely different things" isn't a strong point of LLMs. |
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That sentence there is what will probably be the wedge point that gives LLM-heavy communities an advantage. As LLMs improve, the question becomes "why shouldn't industry people apply academic research directly?".
> ... as far as I can tell, current LLMs are just ...
We're in the upswing of a new technology, it wasn't that long ago that interesting progress was a monthly or weekly occurrence. I'm not to phased about where we might be right now. Alibaba are one of the companies with every chance of pushing the state of the art forward and regardless of that that state is going to get pushed by someone.