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this post was submitted on 17 Aug 2023
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You're the one who doesn't understand how these things work.
I am glad you've explained.
And the other guy did?
Llms are massive neutral networks which are turning complete. There is real logic and understanding to their behavior, even if it isn't human.
I think you should educate yourself before arguing. LLMs are not what you are saying. They are huge math formulas with many variables, they can't think, they can't apply logic.
And you're a bunch of cells. Neurons can't apply logic either, until you get a few billion in a group organized in a certain way.
You tell me to educate myself, but you assert the most plain bare understanding of what an LLM. "It's a big math function" is hilariously reductive. Our entire universe and everything within it can be represented by a big math function.
Like seriously. A big math function can't apply logic? That's like half of what math is.
An LLM is a big series of functions which are tuned to coordinate with one another to be able to accomplish literally any computation. These functions are special because they can be trained (within the length of a human time span) to find a solution to basically any problem.
That trainability means we can throw data at a few billion of these artificial neurons and over time they will learn to produce an accurate prediction of the next word for a given situation. What's that mean?
That means that if you invent a simple game, throw the text of that game into an LLM for a few thousand cycles of training, you can actually go into the LLM and find a rough representation of the game board that is being used to predict the next move.
It isn't just memorizing or reproducing, it literally recreated the logic required to predict the next move, and in doing so actually learned the problem space like a person would.
The big time LLMs of course are a lot more complicated because they are trying to learn literally the sum of all human knowledge we have thrown onto the internet.
But rest assured, the output of these large LLMs contains real understanding and prediction. It's not going to exist across all domains and problem spaces - but there is real knowledge and logic being applied.
Now an LLM doesn't operate on the same level humans do. It's not a continually thinking "experiencing" entity. But you're making a capital B big mistake if you assume for even a moment that because it doesn't think like a human means that it doesn't think or have understanding at all.
You're manipulating. I've never said that we aren't bunch of cells and that our universe can't be represented by a math function. You think you were having your "I'm very smart" moment, but in reality you changed the actual subject of the argument, because you couldn't win it. None of what you said changes the fact that LLMs (at least current) can't think and apply logic. This has been proven by many researchers.
You're either a troll or hilariously stupid
OpenAI and other companies working on LLMs: we are not sure how exactly this works
Neuroscientists: we are not sure how exactly our brains work
bioemerl: I KNOW HOW ALL THIS WORKS AND IF YOU DO NOT AGREE YOU ARE EITHER TROLL OR JUST STUPID
Man, try being less ignorant and arrogant.
Oh sure, they understand logic and their behavior, but they don't understand what's they're saying (particularly the validity of it) https://arstechnica.com/?p=1961606
They're like... a story author. They understand the rules of language well enough they can write a story, but they don't understand the data or reality well enough to know if they've told you the truth, told you a lie, or told you something in-between.
i.e. they have no idea if they've told you fact or fiction, they just know they've done a convincing job of conveying the message based on language patterns, and that is an extremely big problem.
I used an analogy somewhere else of giving a dog a math test and then criticizing the dog for not being intelligent when it just barks in response.
Large language models are trained on words in their relationships. They understand what they are trained on, they understand logic in the form of words in their relationships, but the beautiful thing is that are words and their relationships can express most human knowledge, so in learning to predict those things these LLMs have also picked up most human knowledge and can make rational conclusions from it.
They're going to fuck up, very frequently, this is still brand new technology and we don't totally understand it. But to suggest that these things don't have logic or reason behind what they do, I think that's just crazy.
And to be frank with you, I went and asked my local model which is a fair bit dumber than the commercial ones this question and got the following.
Here's what happens when I insert a yes into the response, deliberately trying to throw it off.