this post was submitted on 23 Mar 2026
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[–] Technus@lemmy.zip 75 points 1 day ago (2 children)

I only have a rather high level understanding of current AI models, but I don't see any way for the current generation of LLMs to actually be intelligent or conscious.

They're entirely stateless, once-through models: any activity in the model that could be remotely considered "thought" is completely lost the moment the model outputs a token. Then it starts over fresh for the next token with nothing but the previous inputs and outputs (the context window) to work with.

That's why it's so stupid to ask an LLM "what were you thinking", because even it doesn't know! All it's going to do is look at what it spat out last and hallucinate a reasonable-sounding answer.

[–] Modern_medicine_isnt@lemmy.world 1 points 13 hours ago (1 children)

I agree, ut not because of lost state. As mentioned by others, state can be managed. You could also just do a feedback loop. These improve, but don't solve. The issue is that it doesn't understand. You mention that it is just a word predictor. And that is the heart of it. It predicts based on odds more or less, not on understanding. That said, it has room to improve. I think having lots and lots of agents that are highly specialized is probably the key. The more narrow the focus, the closer prediction comes to fact. Then throw in asking 5 versions of the agent the same question and tossing the outliers and you should get pretty useful. Not AGI, but useful. The issue is that with current technology, that is simply too expensive. So a breakthrough in the expense of current AI is needed first, then we can get more useful AI. AGI will be a significantly different technology.

[–] Technus@lemmy.zip 3 points 11 hours ago (1 children)

The conversion of the output to tokens inherently loses a lot of the information extracted by the model and any intermediate state it has synthesized (what it "thinks" of the input).

Until the model is able to retain its own internal state and able to integrate new information into that state as it receives it, all it will ever be able to do is try to fill in the blanks.

[–] Modern_medicine_isnt@lemmy.world 1 points 49 minutes ago

Not sure what this internal state you are referring to is. Are you talking about all the values that come out of each step of the computations?

As for your second half... integration. That is a tricky one. Because the inputs it is getting aren't necessarily correct. So that can do more harm than good. The current loop for integrating new data is too long though. They need to reduce that down to like an hour so it can absorb current events at least. And ideally they would be able to take a conversation and identify what worked and what didn't. Then integrate what did. This is what was mentioned about claud.md files and such that essentially keep track of wwhat was learned. There is room for improvement there, as I seem to have to tell the model to go read those or it doesn't.