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Cake day: August 29th, 2023

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  • Serious question: what are people’s specific predictions for the coming VC bubble popping/crash/AI winter? (I’ve seen that prediction here before, and overall I agree, but I’m not sure about specifics…)

    For example… I’ve seen speculation that giving up on the massive training runs could free up compute and cause costs to drop which the more streamlined and pragmatic GenAI companies could use to pivot to providing their “services” at sustainable rates (and the price of GPUs would drop to the relief of gamers everywhere). Alternatively, maybe the bubble bursting screws up the GPU producers and cloud service providers as well and the costs on compute and GPUs don’t actually drop that much if any?

    Maybe the bubble bursting makes management stop pushing stuff like vibe coding… but maybe enough programmers have gotten into the habit of using LLMs for boilerplate that it doesn’t go away, and LLM tools and plugins persist to make code shittery.


  • which I estimate is going to slide back out of affordability by the end of 2026.

    You don’t think the coming crash is going to drive compute costs down? I think the VC money for training runs drying up could drive down costs substantially… but maybe the crash hits other aspects of the supply chain and cost of GPUs and compute goes back up.

    He doubles down on copyright despite building businesses that profit from Free Software. And, most gratingly, he talks about the Pareto principle while ignoring that the typical musician is never able to make a career out of their art.

    Yeah this shit grates so much. Copyright is so often a tool of capital to extract rent from other people’s labor.


  • I have two theories on how the modelfarmers (I like that slang, it seems more fitting than “devs” or “programmers”) approached this…

    1. Like you theorized, they noticed people doing lots of logic tests, including twists on standard logic tests (that the LLMs were failing hard on), so they generated (i.e. paid temp workers) to write a bunch of twists on standard logic tests. And here we are, with it able to solve a twist on the duck puzzle, but not really better in general.

    2. There has been a lot of talk of synthetically generated data sets (since they’ve already robbed the internet of all the text they could). Simple logic puzzles could actually be procedurally generated, including the notation diz noted. The modelfarmers have over-generalized the “bitter lesson” (or maybe they’re just lazy/uninspired/looking for a simple solution they can tell the VCs and business majors) and think just some more data, deeper network, more parameters, and more training will solve anything. So you get the buggy attempt at logic notation from synthetically generated logic notation. (Which still doesn’t quite work, lol.)

    I don’t think either of these approaches will actually work for letting LLM’s solve logic puzzles in general, these approaches will just solve individual cases (for solution 1) and make the hallucinations more convincing (for 2). For all their talk of reaching AGI… the approaches the modelfarmers are taking suggest a mindset of just reaching the next benchmark (to win more VC, and maybe market share?) and not of creating anything genuinely reliable much less “AGI”. (I’m actually on the far optimistic end of sneerclub in that I think something useful might be invented that lasts the coming AI winter… but if the modelfarmers just keep scaling and throwing more data at the problem, I doubt they’ll even manage that much).


  • I feel like some of the doomers are already setting things up to pivot when their most major recent prophecy (AI 2027) fails:

    From here:

    (My modal timeline has loss of control of Earth mostly happening in 2028, rather than late 2027, but nitpicking at that scale hardly matters.)

    It starts with some rationalist jargon to say the author agrees but one year later…

    AI 2027 knows this. Their scenario is unrealistically smooth. If they added a couple weird, impactful events, it would be more realistic in its weirdness, but of course it would be simultaneously less realistic in that those particular events are unlikely to occur. This is why the modal narrative, which is more likely than any other particular story, centers around loss of human control the end of 2027, but the median narrative is probably around 2030 or 2031.

    Further walking the timeline back, adding qualifiers and exceptions that the authors of AI 2027 somehow didn’t explain before. Also, the reason AI 2027 didn’t have any mention of Trump blowing up the timeline doing insane shit is because Scott (and maybe some of the other authors, idk) like glazing Trump.

    I expect the bottlenecks to pinch harder, and for 4x algorithmic progress to be an overestimate…

    No shit, that is what every software engineering blogging about LLMs (even the credulous ones) say, even allowing LLMs get better at raw code writing! Maybe this author is better in touch with reality than most lesswrongers…

    …but not by much.

    Nope, they still have insane expectations.

    Most of my disagreements are quibbles

    Then why did you bother writing this? Anyway, I feel like this author has set themselves up to claim credit when it’s December 2027 and none of AI 2027’s predictions are true. They’ll exaggerate their “quibbles” into successful predictions of problems in the AI 2027 timeline, while overlooking the extent to which they agreed.

    I’ll give this author +10 bayes points for noticing Trump does unpredictable batshit stuff, and -100 for not realizing the real reason why Scott didn’t include any call out of that in AI 2027.





  • This isn’t debate club or men of science hour, this is a forum for making fun of idiocy around technology. If you don’t like that you can leave (or post a few more times for us to laugh at before you’re banned).

    As to the particular paper that got linked, we’ve seen people hyping LLMs misrepresent their research as much more exciting than it actually is (all the research advertising deceptive LLMs for example) many many times already, so most of us weren’t going to waste time to track down the actual paper (and not just the marketing release) to pick apart the methods. You could say (raises sunglasses) our priors on it being bullshit were too strong.


  • As to cryonics… for both LLM doomers and accelerationists, they have no need for a frozen purgatory when the techno-rapture is just a few years around the corner.

    As for the rest of the shiny futuristic dreams, they have give way to ugly practical realities:

    • no magic nootropics, just Scott telling people to take adderal and other rationalists telling people to micro dose on LSD

    • no low hanging fruit in terms of gene editing (as epistaxis pointed out over on reddit) so they’re left with eugenics and GeneSmith’s insanity

    • no drexler nanotech so they are left hoping (or fearing) the god-AI can figure it (which is also a problem for ever reviving cryonically frozen people)

    • no exocortex, just over priced google glasses and a hallucinating LLM “assistant”

    • no neural jacks (or neural lace or whatever the cyberpunk term for them is), just Elon murdering a bunch of lab animals and trying out (temporary) hope on paralyzed people

    The future is here, and it’s subpar compared to the early 2000s fantasies. But hey, you can rip off Ghibli’s style for your shitty fanfic projects, so there are a few upsides.