“In 10 years, computers will be doing this a million times faster.” The head of Nvidia does not believe that there is a need to invest trillions of dollars in the production of chips for AI - eviltoast

“In 10 years, computers will be doing this a million times faster.” The head of Nvidia does not believe that there is a need to invest trillions of dollars in the production of chips for AI::Despite the fact that Nvidia is now almost the main beneficiary of the growing interest in AI, the head of the company, Jensen Huang, does not believe that

  • General_Effort@lemmy.world
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    9 months ago

    Despite the fact that Nvidia is now almost the main beneficiary of the growing interest in AI, the head of the company, Jensen Huang, does not believe that additional trillions of dollars need to be invested in the industry.

    *Because of

    You heard it, guys. There’s no need to create competition to Nvidia’s chips. It’s perfectly fine if all the profits go to Nvidia, says Nvidia’s CEO.

  • BetaDoggo_@lemmy.world
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    9 months ago

    This isn’t necessarily about just hardware. Current ML architectures and inference engines are far from being at peak efficiency. Just last year we saw 20x speedups for llm inference on some hardware. “a million times” is obviously hyperpole though.

    • NegativeInf@lemmy.world
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      9 months ago

      Literally reading preprint papers daily on more efficient implementations of self attention approximations.

  • Esqplorer@lemmy.zip
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    9 months ago

    He doesn’t want a new competitor. He’s just spouting whatever will make the line move up. It has nothing to do with his opinion.

  • rebelsimile@sh.itjust.works
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    9 months ago

    Honestly as someone who has watched the once-fanciful prefixes “giga” and “tera” enter common parlance, and saw kilobytes of RAM turn to gigabytes, it’s really hard for me to think what he’s saying is impossible.

    • Buddahriffic@lemmy.world
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      9 months ago

      Even if he is accurate, specialist hardware will outperform generic hardware at what it is specialized for.

      I remember a story sometime in the 00s about PCs finally getting to the point where they were as fast as one of the WWII code breaking computers (or something like that). It wasn’t because we backtracked in computer speeds after WWII, but because even that ancient hardware was able to get good performance when it was purpose-built, but it couldn’t do anything else and likely would have required a lot of work to adjust to a different kind of cypher scheme, if it could be adapted at all.

      So GP compute might be a million times faster in a decade, but specialist AI chips might be a million times faster than that.

      A hardware neural net might be able to eliminate memory latency by giving each neuron fast resisters to handle all their memory needs. If it doesn’t need to change connections, each connection could be hard wired. A GPU wouldn’t have a chance at keeping up no matter how wide that memory bus gets or how many channels it gets split into. It might even use way less power (though with the elimination of memory latency, it could go fast enough to use way more, too).

    • TheGrandNagus@lemmy.world
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      9 months ago

      Nobody is saying it won’t happen eventually. But a million times within the next decade, i.e. 4x better every year for 10 years?

      This generation isn’t better than last generation by even close to that. Nevermind doing 4x for 10 years straight.

      • fidodo@lemmy.world
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        9 months ago

        He was probably not being literal with the number, but when you’re the head of a computer chip hardware company you should pick numbers carefully.

  • Buffalox@lemmy.world
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    9 months ago

    Sorry I have doubts, because that would require a factor 4x increase every year for 10 years! 4x^10 = 1,048,576x
    Considering they historically have had problems achieving just twice the speed per year, it does not seem likely.

      • Buffalox@lemmy.world
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        9 months ago

        Why does that make a difference? Compute for AI is build on the progress for compute first for GPU then for data center. They are similar in nature.
        Yes they have exceeded 2x for AI for a while, but that has been achieved through exploding die size and cost, but even that won’t make a million times faster in 10 years possible, because they can’t increase die sizes any further.

        • ryannathans@aussie.zone
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          9 months ago

          Building an ASIC for purpose built computation is significantly faster than generic gpu compute cores. Like when ASICs were built for bitcoin mining/sha256 and a little 5 watt usb device could outperform the best GPUs

          • frezik@midwest.social
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            9 months ago

            It may be even more specialized than that. It might be a return to analog computers.

            Which isn’t going to work for Nvidia’s traditional products, either.

          • Buffalox@lemmy.world
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            9 months ago

            The H200 is evolved from Nvidia GPU designs, and will be by far the most powerful AI component in existence when it arrives later this year, AI is now so complex, that it doesn’t really make sense to call it an ASIC or to use an ASIC for the purpose, and the cost is $40,000.- for a single H200 unit!!! So no not small 5 watt units, more like 100x that.
            If they could make small ASICS that did the same, they’d all do it. Nvidia AMD Intel Google Amazon Huawei etc. But it’s simply not an option.

            Edit:

            In principle the H200 AI/Compute system, is a giant cluster of tiny ASICS built onto one chip for massive parallel compute and greater speed.

        • fidodo@lemmy.world
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          9 months ago

          There’s also software improvements to consider, there’s a lot of room for efficiency improvements.

      • Buffalox@lemmy.world
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        9 months ago

        Yes, but usually we keep those 2 kinds of optimizations separate, only combining chip design and production process. Because if the software is optimized, the hardware isn’t really doing the same thing.
        So yes AI speed may increase more than just the hardware, but for the most sophisticated systems, the tasks will be more complex, which may again slow the software down.
        So I think they will never be able to achieve it even when considering software optimizations too. Just the latest Tesla cars boast about 4 times higher resolution cameras, that will require 4 times the processing power to process image recognition, which then will be more accurate, but relatively slower.
        We are not where we want to be, and the systems of the future will clearly be more complex, and on the software are more likely to be slower than faster.

  • eleitl@lemmy.ml
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    9 months ago

    So a Cerebras wafer will be 10^6 faster for the same computation as now, for the same price, in just 10 years? Not after Moore scaling ended many years ago and neural hardware architecture has matured. You can sure go analog, but that’s not the same computation. And that’s the end of the line, not without true 3d integration.

    • Buffalox@lemmy.world
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      9 months ago

      It requires 4X speed increase every year, production quality scale can’t provide even close to half of that, maybe 25%, then another 25% from design, and regarding increasing die sizes they are already close to the end. So the only way to get from 150% to 400% per year is by using multi chip designs, meaning they will have to use 2.5x more chips per year. so the multi chip package in 10 years will probably have to have almost 10,000 chips! All of them bleeding edge!!!

      The H200 is estimated to cost $40K, the future 10 year chip will be more like $40 million. Or maybe more like impossible to achieve.

        • Buffalox@lemmy.world
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          9 months ago

          A chip is also called a die, it’s the piece cut out from the wafer, which is then packaged onto a chip package.
          Since traditionally there were always 1 chip per chip package, the 2 words were used almost synonymously.
          I this case it’s basically GPU chips, which AFAIK AMD has already figured out how to use in multi chip packages. Meaning one package contains multiple chips that work “almost” as well as a single chip of similar size.

          The advantage of multichip packages are obvious, production costs are way lower because smaller dies causes lower percentage of flawed dies, and allows for better binning of higher end parts.
          Additionally it allows designs of way more complex packages, than would be possible with monolithic chips. This is the reason AMD has been taking marketshare in server markets from Intel. Because Intel has not been able to match the multichip design AMD introduced with Epyc in 2016/17, which originally was 4 Ryzen chiplets/chips/dies packaged together as one big 32 core server chip. Where the biggest Intel could make was 28 cores.

          But packaging almost 10000 GPU chips together is completely different, and I don’t think that will be relevant within 10 years.

          Amdahls law however is part obvious and part bullshit. Everything your mind is able to do semi efficiently, can be multithreaded, it is very few things that can’t.
          Amdahls law is basically irrelevant with regard to AI, as AI has a lot of patten recognition, and pattern recognition is perfect for multi threading.

          • TheGrandNagus@lemmy.world
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            9 months ago

            And to add: currently TSMC nodes have a reticle limit of 858mm². I.e. that’s the largest chips you can make on their wafers. Then in the real world you do it slightly below that.

            Future nodes are reducing this to the 350-450mm² range.

            High end GPUs/HPC cards basically have to go to multi-die, even in the fantasy world of 100% perfect yields.

    • Pistcow@lemm.ee
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      9 months ago

      Then stop making new chips each year with a 5-7% performance improvement with a 20% increase in prices.

    • someacnt_@lemmy.world
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      9 months ago

      Yeah really, semiconductor has begun stagnating in progress recently due to fundamental limits. I’m gonna call bull on this one, I think they are rather forecasting pluging demand.

    • givesomefucks@lemmy.world
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      9 months ago

      It depends what you call AI.

      True artificial intelligence likely requires quantum computing because there’s some quantum stuff happening our brains and probably the smartest living human (Sir Roger Penrose) thinks that’s where the secret to consciousness is hiding after spending the last couple decades investigating that after helping Hawking finish up Einstein’s work

      If you just mean a chat bot that can pass the Turing test, then yeah we can just wait a decade instead of developing special tech for AI.

      I mean, if we really develop artificial intelligence before we understand our own consciousness, we’re probably fucked anyways.

      It’d be like somehow inventing a nuclear bomb before understanding what radiation was. We’d have no idea what we’re creating or what the consequences of flipping the switch would be.

      • General_Effort@lemmy.world
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        9 months ago

        Roger Penrose is a mathematician who made important contributions to theoretical physics in the 1960ies, for which he received a Nobel Prize. In later decades, he published speculative books on consciousness, quantum physics, and neurobiology. These ideas have been out there for about 30 years now but have not been able to convince scientists in general. Rather, they are generally considered implausible or outright contradicted by the evidence. Simply put: It’s wrong.

        The idea that quantum physics plays a direct role in brain function is very much on the fringes of science.

        No offense meant. I know these ideas are very important to many spiritual people, but I felt the casual reader should know that it is not important in science.

      • NOSin@lemmy.world
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        9 months ago

        Do you know if there are, or if there are plans for a “new” Turing test ?

        • jackalope@lemmy.ml
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          9 months ago

          The turing test is a rhetorical tool by turing to outline his logical positivist beliefs. Turing did believe in its use as an actual test but it’s not a discrete test, it’s a test of hypothetically infinite time.

      • Gnome Kat@lemmy.blahaj.zone
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        9 months ago

        Can we stop with this “not real AI” meme… it’s a painfully dull response at this point, why does the goal post have legs? Just because Penrose thinks quantum mumbo jumbo is needed doesn’t mean he is right, machine learning is completely outside his field of expertise.

        • givesomefucks@lemmy.world
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          9 months ago

          Mate, I was using chatbots on AIM 24 years ago…

          It wasn’t AI then, it’s not AI now.

          The only reason to get super excited about current chatbots, is if you think they came out of nowhere and not something after decades of slow progression. There’s no reason to expect there to be a sudden huge jump to actual AI unless you don’t know the history.

          People aren’t changing definitions on you…

          Well, some people are, it’s just the ones telling you chatbots are AI.

          They’re just lying to generate hype to get investor money. You’re a bystander that fell for it.

        • TropicalDingdong@lemmy.world
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          9 months ago

          I completely agree on the idiotic consensus around the no-true-AI meme.

          The goal post is practically mounted on wheels they’re having to move it so fast. Machine learning and complexity seems to be enough.

          I think that ChatGPT represents a “deep blue” moment for AI. Finally, something fairly generally, that is at least some what competitive with humans. Hell chat gpt can probably play chess better than the average human too.

          But what we’re waiting for is the “alpha go” moment of AI. The moment when the unconquerable is toppled. I expect it to happen in 2-3 years. I think we’ve got almost all we need from a theoretical side, and that the rest will be engineering.

          I expect AI to be largely independent, to have agency indistinguishable from a humans, but to be better, faster and broader in its scope than most humans in their ability. It will still get beaten by the best of the best humans. It will still make weird, sideways mistakes that don’t seem like obvious mistakes to make to humans. But it will be generally better than most humans at most tasks.

            • TropicalDingdong@lemmy.world
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              9 months ago

              Sure, but in the context of the time, the narrative was that AI would never beat humans at chess. The assumption was you would have to encode all winning positions and that there were just too many positions possible for that to be the case.

              And the narrative and assumptions were wrong. Turns out computer systems can actually not even know what the rules of chess are, learn them, and then learn to play better than any human can ever play.

              Then the nay-sayers came up with a bunch of new qualifications about what “real” AI would be, because they made the wrong assumptions in the first place. The same things are happening right now in the current conversation around AI.

              My point is that there has been historically substantial goal post moving around this domain, and the nay-sayers have been consistently demonstrated to be wrong. Its fun and trendy to be a naysayer. It makes you seem smarter than you are. But we’ve failed to come up with an even basic definition of ‘intelligence’ that is useful for informing debate, let alone a useful definition for what is or is not ‘artificial intelligence’.

              I think we’ll have systems that are indistinguishable if not significantly better at most tasks than humans in 2-3 years. Either you wont be able to tell it wasn’t done by a human, or you’ll be able to tell simply because its so much better than what you would expect a human to be capable of. It will seem ‘super human’ in this regard. Likewise, I think we’ll solve the agency problem as well, at least when looking in from the outside. I don’t think you’ll be able to tell a difference between a machine system or a human operating behind a digital screen, whatsoever, in 2-3 years.

              What is intelligence? What makes some intelligence artificial? Does that divide even really make sense? The whole concept is predicated on the assumption that there is something particularly special about whatever it is that humans possess, and when I see people moving goalposts, it strikes me that they are mostly working to protect “whatever” it is that humans have as something special or divine.

              Realistically, we’re about to get passed on the track. And then, we’re going to get lapped before the naysayers have even noticed we’re not in the lead any more. Its an intentional blindspot.

          • General_Effort@lemmy.world
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            9 months ago

            Yes. The term AI was coined 70 years ago and specifically includes neural nets. LLMs are definitely AI. I don’t know what definition people use when they say it’s not.

            • Match!!@pawb.social
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              9 months ago

              Sure, but 60 years ago they coined “machine learning” when it became clear that there was going to be more work needed to emulate intelligence

              • General_Effort@lemmy.world
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                9 months ago

                That’s wrong. Machine learning is considered part of AI. AI is not necessarily about learning. EG game AI typically doesn’t learn/improve.

                emulate intelligence

                Feel free to define intelligence and/or emulated intelligence.

                • Match!!@pawb.social
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                  9 months ago

                  We’re probably talking at crosspoints here. When people say not real AI, they usually mean not artificial general intelligence, or in many cases, not intelligent in the ways suited to the problem being addressed (e.g. ChatGPT being used out of the box as a customer service rep)

  • Coreidan@lemmy.world
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    9 months ago

    Oh well. The world is going to burn anyway. Fuck this shit hole we call earth