• @commandar@lemmy.world
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    427 days ago

    Sure, but those are largely the big tech companies you’re talking about, and research tends to come from universities and private orgs.

    Well, that’s because the hyperscalers are the only ones who can afford it at this point. Altman has said ChatGPT 4 training cost in the neighborhood of $100M (largely subsidized by Microsoft). The scale of capital being set on fire in the pursuit of LLMs is just staggering. That’s why I think the failure of LLMs will have serious knock-on effects with AI research generally.

    To be clear: I don’t disagree with you re: the fact that AI research will continue and will eventually recover. I just think that if the LLM bubble pops, it’s going to set things back for years because it will be much more difficult for researchers to get funded for a long time going forward. It won’t be “LLMs fail and everyone else continues on as normal,” it’s going to be “LLMs fail and have significant collateral damage on the research community.”

    • @sugar_in_your_tea@sh.itjust.works
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      327 days ago

      The scale of capital being set on fire in the pursuit of LLMs is just staggering.

      I’m guessing you weren’t around in the 90s then? Because the amount of money set on fire on stupid dotcom startups was also staggering. Yet here we are, the winners survived and the market is completely recovered now (took about 15 years because 2008 happened).

      I just think that if the LLM bubble pops, it’s going to set things back for years because it will be much more difficult for researchers to get funded for a long time going forward

      Maybe. Or if the research is promising enough, investors will dump money into it just like they did with LLMs, and we’ll be right back where we are now with ridiculous valuations.

      • @commandar@lemmy.world
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        127 days ago

        I’m guessing you weren’t around in the 90s then? Because the amount of money set on fire on stupid dotcom startups was also staggering.

        The scale is very different. OpenAI needs to raise capital at a valuation far higher than any other startup in history just to keep the doors open another 18-24 months. And then continue to do so.

        There’s also a very large difference between far ranging bad investments and extremely concentrated ones. The current bubble is distinctly the latter. There hasn’t really been a bubble completely dependent on massive capital investments by a handful of major players like this before.

        There’s OpenAI and Anthropic (and by proxy MS/Google/Amazon). Meta is a lesser player. Musk-backed companies are pretty much teetering at the edge of also rans and there’s a huge cliff for everything after that.

        It’s hard for me to imagine investors that don’t understand the technology now but getting burned by it being enthusiastic about investing in a new technology they don’t understand that promises the same things, but is totally different this time, trust me. Institutional and systemic trauma is real.

        (took about 15 years because 2008 happened).

        I mean, that’s kind of exactly what I’m saying? Not that it’s irrecoverable, but that losing a decade plus of progress is significant. I think the disconnect is that you don’t seem to think that’s a big deal as long as things eventually bounce back. I see that as potentially losing out on a generation worth of researchers and one of the largest opportunity costs associated with the LLM craze.

        • @sugar_in_your_tea@sh.itjust.works
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          127 days ago

          OpenAI needs to raise capital at a valuation far higher than any other startup in history

          The only difference is the concentration of wealth. Whether you spread the eggs across a dozen baskets or put them all in one doesn’t matter if the farm producing the eggs has a salmonella outbreak. It’s the same underlying problem whether it impacts a handful of companies or hundreds, investors are investing way too much in the same thing.

          That said, the investment is still somewhat spread out among OpenAI, Microsoft, Apple, Google, Meta, and Amazon (leaving Nvidia out intentionally here since their risk is limited). Each of those is investing a ton into AI, so if there’s a problem in management instead of the underlying tech, then there will be winners and losers among that bunch, but if there’s a problem with the underlying tech, all of them are going to get hit.

          It’s hard for me to imagine investors that don’t understand the technology now but getting burned by it being enthusiastic about investing in a new technology they don’t understand that promises the same things

          But that’s just it, they’ll market it differently. Apple has the “Apple intelligence” brand they’re going for, and they’re trying to distance themselves a bit from the rest of the pack. Amazon is largely betting on AI processing hardware, so they’re a bit less exposed if consumers shift from one incarnation to another, provided they still use similar hardware for whatever that replacement is. One of those players will capitalize on the hysteria going the other direction and rebrand successfully to attract investors.

          So if LLMs end up being a liability, we’ll see a bunch of rebranding of similar tech (say, “real intelligence” or “intelligent digital assistant” or whatever). Some companies will transition successfully, others won’t, but tech companies will find a way to keep the funding flowing.

          losing a decade plus of progress is significant

          But it’s not real progress, it’s inflated progress. If you look at average, inflation-adjust returns (CAGR, not simple average) over the past 30 years, from the start of the dotcom (1993 -> 2023), average returns are 7.5%/year. 20 years (1993 -> 2013) is 6.7%.

          If you look at innovations, smartphones started coming out right after the dotcom bust, “Web 2.0” was coined in 1999 (peak of the dotcom bubble) and became a thing in the early 2000s, etc. There was a lot of innovation in tech, which seemed largely unaffected by the dotcom bubble.

          So I’m really not worried about it. We had a massive tech correction in 2000, yet the decade following had some of the biggest changes in tech, a lot of it coming from the companies that survived the dotcom bubble. Likewise after the 2008 crash, the financial sector had a massive run. I don’t see any reason for the AI bubble to be any different.