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385 points vessenes | 1 comments | | HN request time: 0.313s | source

So, Lecun has been quite public saying that he believes LLMs will never fix hallucinations because, essentially, the token choice method at each step leads to runaway errors -- these can't be damped mathematically.

In exchange, he offers the idea that we should have something that is an 'energy minimization' architecture; as I understand it, this would have a concept of the 'energy' of an entire response, and training would try and minimize that.

Which is to say, I don't fully understand this. That said, I'm curious to hear what ML researchers think about Lecun's take, and if there's any engineering done around it. I can't find much after the release of ijepa from his group.

1. jongjong ◴[] No.43369854[source]
It's weird that we don't have human-level AGI yet considering that we have AIs that are in some ways much smarter than humans.

Top-end LLMs write better and faster than most humans.

Top-end stable diffusion models can draw and render video much faster and with much more precision than the best human artists.