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Apple just proved AI "reasoning" models like Claude, DeepSeek-R1, and o3-mini don't actually reason at all. They just memorize patterns really well.

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  • Claiming it's just marketing fluff is indicates you do not know what you're talking about.

    They published a research paper on it. You are free to publish your own paper disproving theirs.

    At the moment, you sound like one of those "I did my own research" people except you didn't even bother doing your own research.

    You misunderstand. I do not take issue with anything that’s written in the scientific paper. What I take issue with is how the paper is marketed to the general public. When you read the article you will see that it does not claim to “proof” that these models cannot reason. It merely points out some strengths and weaknesses of the models.

  • Yes, LLM inference consists of deterministic matrix multiplications applied to the current context. But that simplicity in operations does not make it equivalent to a Markov chain. The definition of a Markov process requires that the next output depends only on the current state. You’re assuming that the LLM’s “state” is its current context window. But in an LLM, this “state” is not discrete. It is a structured, deeply encoded set of vectors shaped by non-linear transformations across layers. The state is not just the visible tokens—it is the full set of learned representations computed from them.

    A Markov chain transitions between discrete, enumerable states with fixed transition probabilities. LLMs instead apply a learned function over a high-dimensional, continuous input space, producing outputs by computing context-sensitive interactions. These interactions allow generalization and compositionality, not just selection among known paths.

    The fact that inference uses fixed weights does not mean it reduces to a transition table. The output is computed by composing multiple learned projections, attention mechanisms, and feedforward layers that operate in ways no Markov chain ever has. You can’t describe an attention head with a transition matrix. You can’t reduce positional encoding or attention-weighted context mixing into state transitions. These are structured transformations, not symbolic transitions.

    You can describe any deterministic process as a function, but not all deterministic functions are Markovian. What makes a process Markov is not just forgetting prior history. It is having a fixed, memoryless probabilistic structure where transitions depend only on a defined discrete state. LLMs don’t transition between states in this sense. They recompute probability distributions from scratch each step, based on context-rich, continuous-valued encodings. That is not a Markov process. It’s a stateless function approximator conditioned on a window, built to generalize across unseen input patterns.

    the fact that it is a fixed function, that only depends on the context AND there are a finite number of discrete inputs possible does make it equivalent to a huge, finite table. You really don't want this to be true. And again, you are describing training. Once training finishes anything you said does not apply anymore and you are left with fixed, unchanging matrices, which in turn means that it is a mathematical function of the context (by the mathematical definition of "function". stateless, and deterministic) which also has the property that the set of all possible inputs is finite. So the set of possible outputs is also finite and strictly smaller or equal to the size of the set of possible inputs. This makes the actual function that the tokens are passed through CAN be precomputed in full (in theory) making it equivalent to a conventional state transition table.

    This is true whether you'd like it to or not. The training process builds a markov chain.

  • This paper does provide a solid proof by counterexample of reasoning not occuring (following an algorithm) when it should.

    The paper doesn't need to prove that reasoning never has or will occur. It's only demonstrates that current claims of AI reasoning are overhyped.

    It does need to do that to meaningfully change anything, however.

  • Intuition is about the only thing it has. It's a statistical system. The problem is it doesn't have logic. We assume because its computer based that it must be more logic oriented but it's the opposite. That's the problem. We can't get it to do logic very well because it basically feels out the next token by something like instinct. In particular it doesn't mask or disconsider irrelevant information very well if two segments are near each other in embedding space, which doesn't guarantee relevance. So then the model is just weighing all of this info, relevant or irrelevant to a weighted feeling for the next token.

    This is the core problem. People can handle fuzzy topics and discrete topics. But we really struggle to create any system that can do both like we can. Either we create programming logic that is purely discrete or we create statistics that are fuzzy.

    Of course this issue of masking out information that is close in embedding space but is irrelevant to a logical premise is something many humans suck at too. But high functioning humans don't and we can't get these models to copy that ability. Too many people, sadly many on the left in particular, not only will treat association as always relevant but sometimes as equivalence. RE racism is assoc with nazism is assoc patriarchy is historically related to the origins of capitalism ∴ nazism ≡ capitalism. While national socialism was anti-capitalist. Associative thinking removes nuance. And sadly some people think this way. And they 100% can be replaced by LLMs today, because at least the LLM is mimicking what logic looks like better though still built on blind association. It just has more blind associations and finetune weighting for summing them. More than a human does. So it can carry that to mask as logical further than a human who is on the associative thought train can.

    You had a compelling description of how ML models work and just had to swerve into politics, huh?

  • For me it kinda went the other way, I'm almost convinced that human intelligence is the same pattern repeating, just more general (yet)

    Except that wouldn't explain conscience. There's absolutely no need for conscience or an illusion(*) of conscience. Yet we have it.

    • arguably, conscience can by definition not be an illusion. We either perceive "ourselves" or we don't
  • Wow it's almost like the computer scientists were saying this from the start but were shouted over by marketing teams.

    And engineers who stood to make a lot of money

  • It does need to do that to meaningfully change anything, however.

    Other way around. The claimed meaningful change (reasoning) has not occurred.

  • LOOK MAA I AM ON FRONT PAGE

    hey I cant recognize patterns so theyre smarter than me at least

  • Other way around. The claimed meaningful change (reasoning) has not occurred.

    Meaningful change is not happening because of this paper, either, I don't know why you're playing semantic games with me though.

  • I think it's an easy mistake to confuse sentience and intelligence. It happens in Hollywood all the time - "Skynet began learning at a geometric rate, on July 23 2004 it became self-aware" yadda yadda

    But that's not how sentience works. We don't have to be as intelligent as Skynet supposedly was in order to be sentient. We don't start our lives as unthinking robots, and then one day - once we've finally got a handle on calculus or a deep enough understanding of the causes of the fall of the Roman empire - we suddenly blink into consciousness. On the contrary, even the stupidest humans are accepted as being sentient. Even a young child, not yet able to walk or do anything more than vomit on their parents' new sofa, is considered as a conscious individual.

    So there is no reason to think that AI - whenever it should be achieved, if ever - will be conscious any more than the dumb computers that precede it.

    Good point.

  • Meaningful change is not happening because of this paper, either, I don't know why you're playing semantic games with me though.

    I don't know why you're playing semantic games

    I'm trying to highlight the goal of this paper.

    This is a knock them down paper by Apple justifying (to their shareholders) their non investment in LLMs. It is not a build them up paper trying for meaningful change and to create a better AI.

  • I don't know why you're playing semantic games

    I'm trying to highlight the goal of this paper.

    This is a knock them down paper by Apple justifying (to their shareholders) their non investment in LLMs. It is not a build them up paper trying for meaningful change and to create a better AI.

    That's not the only way to make meaningful change, getting people to give up on llms would also be meaningful change. This does very little for anyone who isn't apple.

  • I hate this analogy. As a throwaway whimsical quip it'd be fine, but it's specious enough that I keep seeing it used earnestly by people who think that LLMs are in any way sentient or conscious, so it's lowered my tolerance for it as a topic even if you did intend it flippantly.

    I don't mean it to extol LLM's but rather to denigrate humans. How many of us are self imprisoned in echo chambers so we can have our feelings validated to avoid the uncomfortable feeling of thinking critically and perhaps changing viewpoints?

    Humans have the ability to actually think, unlike LLM's. But it's frightening how far we'll go to make sure we don't.

  • the fact that it is a fixed function, that only depends on the context AND there are a finite number of discrete inputs possible does make it equivalent to a huge, finite table. You really don't want this to be true. And again, you are describing training. Once training finishes anything you said does not apply anymore and you are left with fixed, unchanging matrices, which in turn means that it is a mathematical function of the context (by the mathematical definition of "function". stateless, and deterministic) which also has the property that the set of all possible inputs is finite. So the set of possible outputs is also finite and strictly smaller or equal to the size of the set of possible inputs. This makes the actual function that the tokens are passed through CAN be precomputed in full (in theory) making it equivalent to a conventional state transition table.

    This is true whether you'd like it to or not. The training process builds a markov chain.

    You’re absolutely right that inference in an LLM is a fixed, deterministic function after training, and that the input space is finite due to the discrete token vocabulary and finite context length. So yes, in theory, you could precompute every possible input-output mapping and store them in a giant table. That much is mathematically valid. But where your argument breaks down is in claiming that this makes an LLM equivalent to a conventional Markov chain in function or behavior.

    A Markov chain is not simply defined as “a function from finite context to next-token distribution.” It is defined by a specific type of process where the next state depends on the current state via fixed transition probabilities between discrete states. The model operates over symbolic states with no internal computation. LLMs, even during inference, compute outputs via multi-layered continuous transformations, with attention mixing, learned positional embeddings, and non-linear activations. These mechanisms mean that while the function is fixed, its structure does not resemble a state machine—it resembles a hierarchical pattern recognizer and function approximator.

    Your claim is essentially that “any deterministic function over a finite input space is equivalent to a table.” This is true in a computational sense but misleading in a representational and behavioral sense. If I gave you a function that maps 4096-bit inputs to 50257-dimensional probability vectors and said, “This is equivalent to a transition table,” you could technically agree, but the structure and generative capacity of that function is not Markovian. That function may simulate reasoning, abstraction, and composition. A Markov chain never does.

    You are collapsing implementation equivalence (yes, the function could be stored in a table) with model equivalence (no, it does not behave like a Markov chain). The fact that you could freeze the output behavior into a lookup structure doesn’t change that the lookup structure is derived from a fundamentally different class of computation.

    The training process doesn’t “build a Markov chain.” It builds a function that estimates conditional token probabilities via optimization over a non-Markov architecture. The inference process then applies that function. That makes it a stateless function, yes—but not a Markov chain. Determinism plus finiteness does not imply Markovian behavior.

  • I'd encourage you to research more about this space and learn more.

    As it is, the statement "Markov chains are still the basis of inference" doesn't make sense, because markov chains are a separate thing. You might be thinking of Markov decision processes, which is used in training RL agents, but that's also unrelated because these models are not RL agents, they're supervised learning agents. And even if they were RL agents, the MDP describes the training environment, not the model itself, so it's not really used for inference.

    I mean this just as an invitation to learn more, and not pushback for raising concerns. Many in the research community would be more than happy to welcome you into it. The world needs more people who are skeptical of AI doing research in this field.

    Which method, then, is the inference built upon, if not the embeddings? And the question still stands, how does "AI" escape the inherent limits of statistical inference?

  • You’re absolutely right that inference in an LLM is a fixed, deterministic function after training, and that the input space is finite due to the discrete token vocabulary and finite context length. So yes, in theory, you could precompute every possible input-output mapping and store them in a giant table. That much is mathematically valid. But where your argument breaks down is in claiming that this makes an LLM equivalent to a conventional Markov chain in function or behavior.

    A Markov chain is not simply defined as “a function from finite context to next-token distribution.” It is defined by a specific type of process where the next state depends on the current state via fixed transition probabilities between discrete states. The model operates over symbolic states with no internal computation. LLMs, even during inference, compute outputs via multi-layered continuous transformations, with attention mixing, learned positional embeddings, and non-linear activations. These mechanisms mean that while the function is fixed, its structure does not resemble a state machine—it resembles a hierarchical pattern recognizer and function approximator.

    Your claim is essentially that “any deterministic function over a finite input space is equivalent to a table.” This is true in a computational sense but misleading in a representational and behavioral sense. If I gave you a function that maps 4096-bit inputs to 50257-dimensional probability vectors and said, “This is equivalent to a transition table,” you could technically agree, but the structure and generative capacity of that function is not Markovian. That function may simulate reasoning, abstraction, and composition. A Markov chain never does.

    You are collapsing implementation equivalence (yes, the function could be stored in a table) with model equivalence (no, it does not behave like a Markov chain). The fact that you could freeze the output behavior into a lookup structure doesn’t change that the lookup structure is derived from a fundamentally different class of computation.

    The training process doesn’t “build a Markov chain.” It builds a function that estimates conditional token probabilities via optimization over a non-Markov architecture. The inference process then applies that function. That makes it a stateless function, yes—but not a Markov chain. Determinism plus finiteness does not imply Markovian behavior.

    you wouldn't be "freezing" anything. Each possible combination of input tokens maps to one output probability distribution. Those values are fixed and they are what they are whether you compute them or not, or when, or how many times.

    Now you can either precompute the whole table (theory), or somehow compute each cell value every time you need it (practice). In either case, the resulting function (table lookup vs matrix multiplications) takes in only the context, and produces a probability distribution. And the mapping they generate is the same for all possible inputs. So they are the same function. A function can be implemented in multiple ways, but the implementation is not the function itself. The only difference between the two in this case is the implementation, or more specifically, whether you precompute a table or not. But the function itself is the same.

    You are somehow saying that your choice of implementation for that function will somehow change the function. Which means that according to you, if you do precompute (or possibly cache, full precomputation is just an infinite cache size) individual mappings it somehow magically makes some magic happen that gains some deep insight. It does not. We have already established that it is the same function.

  • LOOK MAA I AM ON FRONT PAGE

    WTF does the author think reasoning is

  • That depends on your assumption that the left would have anything relevant to gain by embracing AI (whatever that's actually supposed to mean).

    Saw this earlier in the week and thought of you. These short, funny videos are popping up more and more and they're only getting better. They’re sharp, engaging, and they spread like wildfire.

    You strike me as someone who gets it what it means when one side embraces the latest tools while the other rejects them.

    The left is still holed up on Lemmy, clinging to “Fuck AI” groups. But why? Go back to the beginning. Look at the early coverage of AI it was overwhelmingly targeted at left-leaning spaces, full of panic and doom. Compare that to how the right talks about immigration. The headlines are cut and pasted from each other. Same playbook, different topic. The media set out to alienate the left from these tools.

  • Saw this earlier in the week and thought of you. These short, funny videos are popping up more and more and they're only getting better. They’re sharp, engaging, and they spread like wildfire.

    You strike me as someone who gets it what it means when one side embraces the latest tools while the other rejects them.

    The left is still holed up on Lemmy, clinging to “Fuck AI” groups. But why? Go back to the beginning. Look at the early coverage of AI it was overwhelmingly targeted at left-leaning spaces, full of panic and doom. Compare that to how the right talks about immigration. The headlines are cut and pasted from each other. Same playbook, different topic. The media set out to alienate the left from these tools.

    I don't have even the slightest idea what that video is supposed to mean. (Happy cake day tho.)

  • I don't have even the slightest idea what that video is supposed to mean. (Happy cake day tho.)

    Come on, you know what I’m talking about. It’s a channel that started with AI content and is now pivoting to videos about the riots. You can see where this is going. Sooner or later, it’ll expand into targeting protestors and other left-leaning causes.

    It’s a novelty now, but it’s spreading fast, and more channels like it are popping up every day.

    Meanwhile, the left is losing ground. Losing cultural capture. Because as a group, they’re being manipulated into isolating themselves from the very tools and platforms that shape public opinion. Social media. AI. All of it. They're walking away from the battlefield while the other side builds momentum.

  • Why so much hate toward AI?

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    Many people on Lemmy are extremely negative towards AI which is unfortunate. There are MANY dangers, but there are also Many obvious use cases where AI can be of help (summarizing a meeting, cleaning up any text etc.) Yes, the wax how these models have been trained is shameful, but unfoet9tjat ship has sailed, let's be honest.
  • Power-Hungry Data Centers Are Warming Homes in Nordic Countries

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    This is also a thing in Denmark. It's required by law to even build a data center.
  • Where do I install this nvme drive on my laptop?

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    ??? The thing is on the right side of the pic. Your image is up side down. Edit: oh.duh, the two horizontal slots. I'm a dummy. Sorry.
  • Catbox.moe got screwed 😿

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    I'll gladly give you a reason. I'm actually happy to articulate my stance on this, considering how much I tend to care about digital rights. Services that host files should not be held responsible for what users upload, unless: The service explicitly caters to illegal content by definition or practice (i.e. the if the website is literally titled uploadyourcsamhere[.]com then it's safe to assume they deliberately want to host illegal content) The service has a very easy mechanism to remove illegal content, either when asked, or through simple monitoring systems, but chooses not to do so (catbox does this, and quite quickly too) Because holding services responsible creates a whole host of negative effects. Here's some examples: Someone starts a CDN and some users upload CSAM. The creator of the CDN goes to jail now. Nobody ever wants to create a CDN because of the legal risk, and thus the only providers of CDNs become shady, expensive, anonymously-run services with no compliance mechanisms. You run a site that hosts images, and someone decides they want to harm you. They upload CSAM, then report the site to law enforcement. You go to jail. Anybody in the future who wants to run an image sharing site must now self-censor to try and not upset any human being that could be willing to harm them via their site. A social media site is hosting the posts and content of users. In order to be compliant and not go to jail, they must engage in extremely strict filtering, otherwise even one mistake could land them in jail. All users of the site are prohibited from posting any NSFW or even suggestive content, (including newsworthy media, such as an image of bodies in a warzone) and any violation leads to an instant ban, because any of those things could lead to a chance of actually illegal content being attached. This isn't just my opinion either. Digital rights organizations such as the Electronic Frontier Foundation have talked at length about similar policies before. To quote them: "When social media platforms adopt heavy-handed moderation policies, the unintended consequences can be hard to predict. For example, Twitter’s policies on sexual material have resulted in posts on sexual health and condoms being taken down. YouTube’s bans on violent content have resulted in journalism on the Syrian war being pulled from the site. It can be tempting to attempt to “fix” certain attitudes and behaviors online by placing increased restrictions on users’ speech, but in practice, web platforms have had more success at silencing innocent people than at making online communities healthier." Now, to address the rest of your comment, since I don't just want to focus on the beginning: I think you have to actively moderate what is uploaded Catbox does, and as previously mentioned, often at a much higher rate than other services, and at a comparable rate to many services that have millions, if not billions of dollars in annual profits that could otherwise be spent on further moderation. there has to be swifter and stricter punishment for those that do upload things that are against TOS and/or illegal. The problem isn't necessarily the speed at which people can be reported and punished, but rather that the internet is fundamentally harder to track people on than real life. It's easy for cops to sit around at a spot they know someone will be physically distributing illegal content at in real life, but digitally, even if you can see the feed of all the information passing through the service, a VPN or Tor connection will anonymize your IP address in a manner that most police departments won't be able to track, and most three-letter agencies will simply have a relatively low success rate with. There's no good solution to this problem of identifying perpetrators, which is why platforms often focus on moderation over legal enforcement actions against users so frequently. It accomplishes the goal of preventing and removing the content without having to, for example, require every single user of the internet to scan an ID (and also magically prevent people from just stealing other people's access tokens and impersonating their ID) I do agree, however, that we should probably provide larger amounts of funding, training, and resources, to divisions who's sole goal is to go after online distribution of various illegal content, primarily that which harms children, because it's certainly still an issue of there being too many reports to go through, even if many of them will still lead to dead ends. I hope that explains why making file hosting services liable for user uploaded content probably isn't the best strategy. I hate to see people with good intentions support ideas that sound good in practice, but in the end just cause more untold harms, and I hope you can understand why I believe this to be the case.
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    %100 inherited and old lonely boomers. You'd be surprised how often the courts will not allow POA or Conservatorship to be appointed to the family after they get scammed. I have first hand experience with this and also have a friend as well.
  • Microsoft wants Windows Update to handle all apps

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    the package managers for linux that i know of are great because you can easily control everything they do
  • Apple’s Smart Glasses Expected to Hit the Market by Late Next Year!

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    great, another worthless tech product that no one asked for. I can hardly wait.
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    Epic is a piece of shit company. The only reason they are fighting this fight with Apple is because they want some of Apple’s platform fees for themselves. Period. The fact that they managed to convince a bunch of simpletons that they are somehow Robin Hood coming to free them from the tyrant (who was actually protecting all those users all along) is laughable. Apple created the platform, Apple managed it, curated it, and controlled it. That gives them the right to profit from it. You might dislike that but — guess what? Nobody forced you to buy it. Buy Android if Fortnight is so important to you. Seriously. Please. We won’t miss you. Epic thinks they have a right to profit from Apple’s platform and not pay them for all the work they did to get it to be over 1 billion users. That is simply wrong. They should build their own platform and their own App Store and convince 1 billion people to use it. The reason they aren’t doing that is because they know they will never be as successful as Apple has been.