• NeilBrü@lemmy.world
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    6 days ago

    An LLM is a poor computational/predictive paradigm for playing chess.

      • NeilBrü@lemmy.world
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        7 days ago

        I’m impressed, if that’s true! In general, an LLM’s training cost vs. an LSTM, RNN, or some other more appropriate DNN algorithm suitable for the ruleset is laughably high.

        • Takapapatapaka@lemmy.world
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          6 days ago

          Oh yes, cost of training are ofc a great loss here, it’s not optimized at all, and it’s stuck at an average level.

          Interestingly, i believe some people did research on it and found some parameters in the model that seemed to represent the state of the chess board (as in, they seem to reflect the current state of the board, and when artificially modified, the model takes modification into account in its playing). It was used by a french youtuber to show how LLMs can somehow have a kinda representation of the world. I can try to get the sources back if you’re interested.

          • NeilBrü@lemmy.world
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            6 days ago

            Absolutely interested. Thank you for your time to share that.

            My career path in neural networks began as a researcher for cancerous tissue object detection in medical diagnostic imaging. Now it is switched to generative models for CAD (architecture, product design, game assets, etc.). I don’t really mess about with fine-tuning LLMs.

            However, I do self-host my own LLMs as code assistants. Thus, I’m only tangentially involved with the current LLM craze.

            But it does interest me, nonetheless!

            • Takapapatapaka@lemmy.world
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              6 days ago

              Here is the main blog post that i remembered : it has a follow up, a more scientific version, and uses two other articles as a basis, so you might want to dig around what they mention in the introduction.

              It is indeed a quite technical discovery, and it still lacks complete and wider analysis, but it is very interesting for the fact that it kinda invalidates the common gut feeling that llms are pure lucky random.

    • Bleys@lemmy.world
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      6 days ago

      The underlying neural network tech is the same as what the best chess AIs (AlphaZero, Leela) use. The problem is, as you said, that ChatGPT is designed specifically as an LLM so it’s been optimized strictly to write semi-coherent text first, and then any problem solving beyond that is ancillary. Which should say a lot about how inconsistent ChatGPT is at solving problems, given that it’s not actually optimized for any specific use cases.

      • NeilBrü@lemmy.world
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        6 days ago

        Yes, I agree wholeheartedly with your clarification.

        My career path, as I stated in a different comment in regards to neural networks, is focused on generative DNNs for CAD applications and parametric 3D modeling. Before that, I began as a researcher in cancerous tissue classification and object detection in medical diagnostic imaging.

        Thus, large language models are well out of my area of expertise in terms of the architecture of their models.

        However, fundamentally it boils down to the fact that the specific large language model used was designed to predict text and not necessarily solve problems/play games to “win”/“survive”.

        (I admit that I’m just parroting what you stated and maybe rehashing what I stated even before that, but I like repeating and refining in simple terms to practice explaining to laymen and, dare I say, clients. It helps me feel as if I don’t come off too pompously when talking about this subject to others; forgive my tedium.)

  • nednobbins@lemm.ee
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    7 days ago

    Sometimes it seems like most of these AI articles are written by AIs with bad prompts.

    Human journalists would hopefully do a little research. A quick search would reveal that researches have been publishing about this for over a year so there’s no need to sensationalize it. Perhaps the human journalist could have spent a little time talking about why LLMs are bad at chess and how researchers are approaching the problem.

    LLMs on the other hand, are very good at producing clickbait articles with low information content.

    • nova_ad_vitum@lemmy.ca
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      7 days ago

      Gotham chess has a video of making chatgpt play chess against stockfish. Spoiler: chatgpt does not do well. It plays okay for a few moves but then the moment it gets in trouble it straight up cheats. Telling it to follow the rules of chess doesn’t help.

      This sort of gets to the heart of LLM-based “AI”. That one example to me really shows that there’s no actual reasoning happening inside. It’s producing answers that statistically look like answers that might be given based on that input.

      For some things it even works. But calling this intelligence is dubious at best.

      • Ultraviolet@lemmy.world
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        7 days ago

        Because it doesn’t have any understanding of the rules of chess or even an internal model of the game state, it just has the text of chess games in its training data and can reproduce the notation, but nothing to prevent it from making illegal moves, trying to move or capture pieces that don’t exist, incorrectly declaring check/checkmate, or any number of nonsensical things.

      • JacksonLamb@lemmy.world
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        7 days ago

        ChatGPT versus Deepseek is hilarious. They both cheat like crazy and then one side jedi mind tricks the winner into losing.

      • propitiouspanda@lemmy.cafe
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        6 days ago

        It plays okay for a few moves but then the moment it gets in trouble it straight up cheats.

        Lol. More comparisons to how AI is currently like a young child.

      • interdimensionalmeme@lemmy.ml
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        7 days ago

        I think the biggest problem is it’s very low ability to “test time adaptability”. Even when combined with a reasonning model outputting into its context, the weights do not learn out of the immediate context.

        I think the solution might be to train a LoRa overlay on the fly against the weights and run inference with that AND the unmodified weights and then have an overseer model self evaluate and recompose the raw outputs.

        Like humans are way better at answering stuff when it’s a collaboration of more than one person. I suspect the same is true of LLMs.

        • nednobbins@lemm.ee
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          7 days ago

          Like humans are way better at answering stuff when it’s a collaboration of more than one person. I suspect the same is true of LLMs.

          It is.

          It’s really common for non-language implementations of neural networks. If you have an NN that’s right some percentage of the time, you can often run it through a bunch of copies of the NNs and take the average and that average is correct a higher percentage of the time.

          Aider is an open source AI coding assistant that lets you use one model to plan the coding and a second one to do the actual coding. It works better than doing it in a single pass, even if you assign the the same model to planing and coding.

    • Lovable Sidekick@lemmy.world
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      7 days ago

      In this case it’s not even bad prompts, it’s a problem domain ChatGPT wasn’t designed to be good at. It’s like saying modern medicine is clearly bullshit because a doctor loses a basketball game.

  • Halosheep@lemm.ee
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    7 days ago

    I swear every single article critical of current LLMs is like, “The square got BLASTED by the triangle shape when it completely FAILED to go through the triangle shaped hole.”

    • drspod@lemmy.ml
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      7 days ago

      It’s newsworthy when the sellers of squares are saying that nobody will ever need a triangle again, and the shape-sector of the stock market is hysterically pumping money into companies that make or use squares.

    • lambalicious@lemmy.sdf.org
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      7 days ago

      Well, the first and obvious thing to do to show that AI is bad is to show that AI is bad. If it provides that much of a low-hanging fruit for the demonstration… that just further emphasizes the point.

    • PushButton@lemmy.world
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      7 days ago

      And yet everybody is selling to write code.

      The last time I checked, coding was requiring logic.

      • jj4211@lemmy.world
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        7 days ago

        To be fair, a decent chunk of coding is stupid boilerplate/minutia that varies environment to environment, language to language, library to library.

        So LLM can do some code completion, filling out a bunch of boilerplate that is blatantly obvious, generating the redundant text mandated by certain patterns, and keeping straight details between languages like “does this language want join as a method on a list with a string argument, or vice versa?”

        Problem is this can be sometimes more annoying than it’s worth, as miscompletions are annoying.

        • PushButton@lemmy.world
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          7 days ago

          Fair point.

          I liked the “upgraded autocompletion”, you know, an completion based on the context, just before the time that they pushed it too much with 20 lines of non sense…

          Now I am thinking of a way of doing the thing, then I receive a 20 lines suggestion.

          So I am checking if that make sense, losing my momentum, only to realize the suggestion us calling shit that don’t exist…

          Screw that.

          • merdaverse@lemm.ee
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            7 days ago

            The amount of garbage it spits out in autocomplete is distracting. If it’s constantly making me 5-10% less productive the many times it’s wrong, it should save me a lot of time when it is right, and generally, I haven’t found it able to do that.

            Yesterday I tried to prompt it to change around 20 call sites for a function where I had changed the signature. Easy, boring and repetitive, something that a junior could easily do. And all the models were absolutely clueless about it (using copilot)

        • lambalicious@lemmy.sdf.org
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          7 days ago

          a decent chunk of coding is stupid boilerplate/minutia that varies

          …according to a logic, which means LLMs are bad at it.

          • jj4211@lemmy.world
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            7 days ago

            I’d say that those details that vary tend not to vary within a language and ecosystem, so a fairly dumb correlative relationship is enough to generally be fine. There’s no way to use logic to infer that it’s obvious that in language X you need to do mylist.join(string) but in language Y you need to do string.join(mylist), but it’s super easy to recognize tokens that suggest those things and a correlation to the vocabulary that matches the context.

            Rinse and repeat for things like do I need to specify type and what is the vocabulary for the best type for a numeric value, This variable that makes sense is missing a declaration, does this look to actually be a new distinct variable or just a typo of one that was declared.

            But again, I’m thinking mostly in what kind of sort of can work, my experience personally is that it’s wrong so often as to be annoying and get in the way of more traditional completion behaviors that play it safe, though with less help particularly for languages like python or javascript.

      • Schadrach@lemmy.sdf.org
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        7 days ago

        A lot of writing code is relatively standard patterns and variations on them. For most but the really interesting parts, you could probably write a sufficiently detailed description and get an LLM to produce functional code that does the thing.

        Basically for a bunch of common structures and use cases, the logic already exists and is well known and replicated by enough people in enough places in enough languages that an LLM can replicate it well enough, like literally anyone else who has ever written anything in that language.

  • Steve Dice@sh.itjust.works
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    5 days ago

    2025 Mazda MX-5 Miata ‘got absolutely wrecked’ by Inflatable Boat in beginner’s boat racing match — Mazda’s newest model bamboozled by 1930s technology.

  • arc99@lemmy.world
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    7 days ago

    Hardly surprising. Llms aren’t -thinking- they’re just shitting out the next token for any given input of tokens.

      • arc99@lemmy.world
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        4 days ago

        An LLM is an ordered series of parameterized / weighted nodes which are fed a bunch of tokens, and millions of calculations later result generates the next token to append and repeat the process. It’s like turning a handle on some complex Babbage-esque machine. LLMs use a tiny bit of randomness (“temperature”) when choosing the next token so the responses are not identical each time.

        But it is not thinking. Not even remotely so. It’s a simulacrum. If you want to see this, run ollama with the temperature set to 0 e.g.

        ollama run gemma3:4b
        >>> /set parameter temperature 0
        >>> what is a leaf
        

        You will get the same answer every single time.

  • jsomae@lemmy.ml
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    6 days ago

    Using an LLM as a chess engine is like using a power tool as a table leg. Pretty funny honestly, but it’s obviously not going to be good at it, at least not without scaffolding.

    • kent_eh@lemmy.ca
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      6 days ago

      is like using a power tool as a table leg.

      Then again, our corporate lords and masters are trying to replace all manner of skilled workers with those same LLM “AI” tools.

      And clearly that will backfire on them and they’ll eventually scramble to find people with the needed skills, but in the meantime tons of people will have lost their source of income.

      • jsomae@lemmy.ml
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        5 days ago

        If you believe LLMs are not good at anything then there should be relatively little to worry about in the long-term, but I am more concerned.

        It’s not obvious to me that it will backfire for them, because I believe LLMs are good at some things (that is, when they are used correctly, for the correct tasks). Currently they’re being applied to far more use cases than they are likely to be good at – either because they’re overhyped or our corporate lords and masters are just experimenting to find out what they’re good at and what not. Some of these cases will be like chess, but others will be like code*.

        (* not saying LLMs are good at code in general, but for some coding applications I believe they are vastly more efficient than humans, even if a human expert can currently write higher-quality less-buggy code.)

        • kent_eh@lemmy.ca
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          5 days ago

          I believe LLMs are good at some things

          The problem is that they’re being used for all the things, including a large number of tasks that thwy are not well suited to.

          • jsomae@lemmy.ml
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            5 days ago

            yeah, we agree on this point. In the short term it’s a disaster. In the long-term, assuming AI’s capabilities don’t continue to improve at the rate they have been, our corporate overlords will only replace people for whom it’s actually worth it to them to replace with AI.

  • finitebanjo@lemmy.world
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    7 days ago

    All these comments asking “why don’t they just have chatgpt go and look up the correct answer”.

    That’s not how it works, you buffoons, it trains off of datasets long before it releases. It doesn’t think. It doesn’t learn after release, it won’t remember things you try to teach it.

    Really lowering my faith in humanity when even the AI skeptics don’t understand that it generates statistical representations of an answer based on answers given in the past.

  • FourWaveforms@lemm.ee
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    5 days ago

    If you don’t play chess, the Atari is probably going to beat you as well.

    LLMs are only good at things to the extent that they have been well-trained in the relevant areas. Not just learning to predict text string sequences, but reinforcement learning after that, where a human or some other agent says “this answer is better than that one” enough times in enough of the right contexts. It mimics the way humans learn, which is through repeated and diverse exposure.

    If they set up a system to train it against some chess program, or (much simpler) simply gave it a tool call, it would do much better. Tool calling already exists and would be by far the easiest way.

    It could also be instructed to write a chess solver program and then run it, at which point it would be on par with the Atari, but it wouldn’t compete well with a serious chess solver.