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by yathaid
482 days ago
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>> But the limiting behavior remains the same: eventually, if we continue generating from a language model, the probability that we get the answer we want still goes to zero In the previous paragraph, the author makes the case for why Lecun was wrong with the example of reasoning models. Yet, in the next paragraph, this assertion is made which is just a paraphrasing of Yecun's original assertion. Which the author himself says is wrong. >> Instead of waiting for FAA (fully-autonomous agents) we should understand that this is a continuum, and we’re consistently increasing the amount of useful work AIs Yes! But this work is already well underway. There is no magic threshold for AGI - instead the characterization is based on what percentile of the human population the AI can beat. One way to characterize AGI in this manner is "99.99% percentile at every (digital?) activity". |
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This is a subtle point that may have not come across clearly enough in my original writing. A lot of folks were saying that the DeepSeek finding that longer chains of thought can produce higher-quality outputs contradicts Yann's thesis overall. But I don't think so.
It's true that models like R1 can correct small mistakes. But in the limit of tokens generated, the chance that they generate the correct answer still decays to zero.