[OpenAI CEO Sam] Altman brags about ChatGPT-4.5’s improved “emotional intelligence,” which he says makes users feel like they’re “talking to a thoughtful person.” Dario Amodei, the CEO of the AI company Anthropic, argued last year that the next generation of artificial intelligence will be “smarter than a Nobel Prize winner.” Demis Hassabis, the CEO of Google’s DeepMind, said the goal is to create “models that are able to understand the world around us.” These statements betray a conceptual error: Large language models do not, cannot, and will not “understand” anything at all. They are not emotionally intelligent or smart in any meaningful or recognizably human sense of the word. LLMs are impressive probability gadgets that have been fed nearly the entire internet, and produce writing not by thinking but by making statistically informed guesses about which lexical item is likely to follow another.

OP: https://slashdot.org/story/25/06/09/062257/ai-is-not-intelligent-the-atlantic-criticizes-scam-underlying-the-ai-industry

Primary source: https://www.msn.com/en-us/technology/artificial-intelligence/artificial-intelligence-is-not-intelligent/ar-AA1GcZBz

Secondary source: https://bookshop.org/a/12476/9780063418561

  • masterspace@lemmy.ca
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    1 day ago

    Saying ‘clearly’ in this context is a thought terminating expression, not reasoning.

    • queermunist she/her@lemmy.ml
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      Okay, but LLMs don’t have thoughts that can be terminated, so that’s just another way they aren’t intelligent. Saying “clearly” for them would just be a way to continue the pattern, they wouldn’t use it the way I did to express how self evident and insultingly obvious it is.

      AI isn’t impossible, but LLMs are not intelligent and you need to stop dehumanizing yourself to argue for their intelligence.

      • masterspace@lemmy.ca
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        1 day ago

        Okay, but LLMs don’t have thoughts that can be terminated, so that’s just another way they aren’t intelligent. Saying “clearly” for them would just be a way to continue the pattern, they wouldn’t use it the way I did to express how self evident and insultingly obvious it is.

        So? As you said, nothing says that they couldn’t eventually be part of an intelligence, but the reasoning presented in the article is basically just ‘theyre made of math so they could never be intelligent’.

        AI isn’t impossible, but LLMs are not intelligent and you need to stop dehumanizing yourself to argue for their intelligence.

        You need to stop limiting yourself to thinking of all intelligence worthy of consideration as having to be exactly the same as humans. That’s literally one of the core lessons of Star Trek and basically every single BBC documentary. Are LLMs intelligent? No. Could we make synthetic intelligence worthy of consideration? All evidence points to eventually yes.

        • queermunist she/her@lemmy.ml
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          The article is about LLMs specifically? And it’s arguing that intelligence can’t exist without subjectivity, the qualia of experiential data. These LLM text generators are being assigned intelligence they do not have because we have a tendency to assume there is a mind behind the text.

          This is not about AI being conceptually impossible they’re “made of math”. I’m not even sure where you got that? Where did that quote come from? It’s not in the link, or the Atlantic article.

          • masterspace@lemmy.ca
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            1 day ago

            It’s the last line quoted in the post. They talk a lot of fancy talk up front but their entire reasoning for LLMs not being capable of thought boils down to that they’re statistical probability machines.

            So is the process of human thought.

            • queermunist she/her@lemmy.ml
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              LLMs are impressive probability gadgets that have been fed nearly the entire internet, and produce writing not by thinking but by making statistically informed guesses about which lexical item is likely to follow another.

              This line?

              Because that sure isn’t the process of human thought! We have reasoning, logical deductions, experiential qualia, subjectivity. Intelligence is so much more than just making statistically informed guesses, we can actually prove things and uncover truths.

              You’re dehumanizing yourself by comparing yourself to a chatbot. Stop that.

              • masterspace@lemmy.ca
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                1 day ago

                Yes and newer models arent just raw LLMs, but specifically models designed to reason and deduct and start chaining LLMs with other types of models.

                It’s not dehumanizing to recognize that alien intelligence could exist, and it’s not dehumanizing to think that we are capable of building synthetic intelligence.

                • hendrik@palaver.p3x.de
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                  I feel you’re wasting your time here. Some people seem to be under the impression it’s the year 1990 or 1950 and we’re talking about markov chain chatbots. The stochastic parrot argument would certainly apply there. But we’re talking about something else here.

                  And it’s also a fairly common misconception that AI somehow has to be intelligent in the same way a human is. And by using the same methods. But it really doesn’t work that way. That’s why we put the word “Artificial” in front of “Intelligence”.

                  But this take gets repeated over and over again and I don’t really know why we need to argue about how maths and statistics are a part of our world, how language and perception work and who is dehumanizing themselves… The scientific approach is to define intelligence, come up with some means of measuring it, and then do it… And that’s what we’ve done. We can get rid of the perception part of language. We can measure how “intelligent” entities can memorize and recall facts, combine them, transfer and apply knowledge… That’s not really a secret… I mean obviously it seems to be misunderstood or hyped or whatever by lots of people. But we also (in theory) know some of the facts about AI and what it can and can not do and how that relates to the vague concept of intelligence.

                  • masterspace@lemmy.ca
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                    1 day ago

                    Given the inherently simplistic nature of a community called ‘fuck ai’, I assume what I’m saying will be unpopular, but there’s always some people genuinely open to reason and rational discussion.

              • masterspace@lemmy.ca
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                Yes and newer models arent just raw LLMs, but specifically models designed to reason and deduct and start chaining LLMs with other types of models.

                It’s not dehumanizing to recognize that alien intelligence could exist, and it’s not dehumanizing to think that we are capable of building synthetic intelligence.

                • ZDL@lazysoci.al
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                  19 hours ago

                  Go to one of these “reasoning” AIs. Ask it to explain its reasoning. (It will!) Then ask it to explain its reasoning again. (It will!) Ask it yet again. (It will gladly do it thrice!)

                  Then put the “reasoning” side by side and count the contradictions. There’s a very good chance that the three explanations are not only different from each other, they’re very likely also mutually incompatible.

                  “Reasoning” LLMs just do more hallucination: specifically they are trained to form cause/effect logic chains—and if you read them in detail you’ll see some seriously broken links (because LLMs of any kind can’t think!)—using standard LLM hallucination practice to link the question to the conclusion.

                  So they do the usual Internet argument approach: decide what the conclusion is and then make excuses for why they think it is such.

                  If you don’t believe me, why not ask one? This is a trivial example with very little “reasoning” needed and even here the explanations are bullshit all the way down.

                  Note, especially, the final statement it made:

                  Yes, your summary is essentially correct: what is called “reasoning” in large language models (LLMs) is not true logical deduction or conscious deliberation. Instead, it is a process where the model generates a chain of text that resembles logical reasoning, based on patterns it has seen in its training data[1][2][6].

                  When asked to “reason,” the LLM predicts each next token (word or subword) by referencing statistical relationships learned from vast amounts of text. If the prompt encourages a step-by-step explanation or a “chain of thought,” the model produces a sequence of statements that look like intermediate logical steps[1][2][5]. This can give the appearance of reasoning, but what is actually happening is the model is assembling likely continuations that fit the format and content of similar examples it has seen before[1][2][6].

                  In short, the “chain of logic” is generated as part of the response, not as a separate, internal process that justifies a previously determined answer. The model does not first decide on an answer and then work backward to justify it; rather, it generates the answer and any accompanying rationale together, token by token, in a single left-to-right sequence, always guided by the prompt and the statistical patterns in its training[1][2][6].

                  “Ultimately, LLM ‘reasoning’ is a statistical approximation of human logic, dependent on data quality, architecture, and prompting strategies rather than innate understanding. … Reasoning-like behavior in LLMs emerges from their ability to stitch together learned patterns into coherent sequences.” [1]

                  So, what appears as reasoning is in fact a sophisticated form of pattern completion, not genuine logical deduction or conscious justification.

                  [1] https://milvus.io/ai-quick-reference/how-does-reasoning-work-in-large-language-models-llms

                  [2] https://www.digitalocean.com/community/tutorials/understanding-reasoning-in-llms

                  [3] https://sebastianraschka.com/blog/2025/understanding-reasoning-llms.html

                  [4] https://en.wikipedia.org/wiki/Reasoning_language_model

                  [5] https://arxiv.org/html/2407.11511v1

                  [6] https://www.anthropic.com/research/tracing-thoughts-language-model

                  [7] https://magazine.sebastianraschka.com/p/state-of-llm-reasoning-and-inference-scaling

                  [8] https://cameronrwolfe.substack.com/p/demystifying-reasoning-models

                  Now I’m absolutely technically declined. Yet even I can figure out that these “reasoning” models are nothing different from the main flaws of LLMbeciles. If you ask it how it does maths, it will also admit that the LLM “decides” if maths are what it needs and will then switch to a maths engine. But if the LLM “decides” it can do it on its own it will. So you’ll still get garbage maths out of the machine.

      • masterspace@lemmy.ca
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        1 day ago

        So what do you think we run on? Magic and souls?

        It’s called understanding science and biology. When you drill it down, there’s nothing down there that’s not physical.

        If that’s the case, there’s no reason it couldn’t theoretically be modelled and simulated.

        This would be like all the technical workings for nuclear bombs being published and rather than focusing on their resultant harms and misuses, that you instead stuck your head in the sand and said ‘nuh uh, no way an atom can make a big explosion, don’t you know how small atoms are?’

        • knightly the Sneptaur@pawb.social
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          I think that if the human mind was a simple “probability gadget” then we’d have discovered and implemented the algorithm of consciousness in human-level AI 30 years ago.

              • masterspace@lemmy.ca
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                The article posits that LLMs are just fancy probability machines which is what I was responding to. I’m positing that human intelligence is, while more advanced than current LLMs, still just a probability machine, and thus presumably a more advanced probability machine than an LLM.

                So why would you think that human intelligence wouldve existed 30 years ago if LLMs couldn’t?

                • knightly the Sneptaur@pawb.social
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                  1 day ago

                  The problem with your line of reasoning is that “probability machines” are Turing-complete, and could therefore be used to emulate any computable processes. The statement is literally equivalent to “the mind is a computer”, which is itself a thought-terminating clichè that ignores the actual complexities involved.

                  Nobody’s arguing that simulated or emulated consciousness isn’t possible, just that if it were as simple as you’re making it out to be then we’d have figured it out decades ago.

                  • masterspace@lemmy.ca
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                    Nobody’s arguing that simulated or emulated consciousness isn’t possible, just that if it were as simple as you’re making it out to be then we’d have figured it out decades ago.

                    But I’m not. I have literally stated in every comment that human intelligence is more advanced than LLMs, but that both are just statistical machines.

                    There’s literally no reason to think that would have been possible decades ago based on this line of reasoning.

        • vala@lemmy.world
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          You should read up on modern philosophy. P-zombies and stuff like that. Very interesting.