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Mehdi2277 | 1 year ago
So are we now at performance plateau? I know people at openai like places that think AGI is likely in next 3-5 years and is mostly scaling up context/performance/a few other key bets away. I know others who think that is unlikely in next few decades.
My personal view is I would expect 100x speed up to make ML used even more broadly and to allow more companies outside big players to have there own foundation models tuned for their use cases or other specialized domain models outside language modeling. Even now I still see tabular datasets (recommender systems, pricing models, etc) as most common to work in industry jobs. As for impact 100x compute will have for leading models like openai/anthropic I honestly have little confidence what will happen.
The rest of this is very speculative and not sure of, but my personal gut is we still need other algorithmic improvements like better ways to represent storing memory that models can later query/search for, but honestly part of that is just math/cs background in me not wanting everything to end up being hardware problem. Other part is I’m doubtful human like intelligence is so compute expensive and we can’t find more cost efficient ways for models to learn but maybe our nervous system is just much faster at parallel computation?
HdS84|1 year ago
thanksgiving|1 year ago
I had never thought about this before but how do I recognize faces? I mostly recognize faces by context. And I don't have to match against a billion faces, probably a hundred or so? And I still suck at this.
The fact that human brain works with 0.3 kW per day likely doesn't mean much. How do we even start asking the question - is a human brain thermally (or resource in general) constrained?
throwaway48476|1 year ago
unknown|1 year ago
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chii|1 year ago
the term for it is "grokking", amusingly. There's some indication that we are actually undertraining by 10x
Vecr|1 year ago