This is exactly what I’m talking about when I argue with people who insist that an LLM is super complex and totally is a thinking machine just like us.
It’s nowhere near the complexity of the human brain. We are several orders of magnitude more complex than the largest LLMs, and our complexity changes with each pulse of thought.
LLM’S don’t work like the human brain, you are comparing apples to suspension bridges.
The human brain works by the series of interconnected nodes and complex chemical interactions, LLM’s work on multi-dimensional search spaces, their brains exist in 15 billion spatial dimensions. Yours doesn’t, you can’t compare the two and come up with any kind of meaningful comparison. All you can do is challenge it against human level tasks and see how it stacks up. You can’t estimate it from complexity.
You’re missing half of it. The data cube is just for storing and finding weights. Those weights are then loaded into the nodes of a neural network to do the actual work. The neural network was inspired by actual brains.
I mean you can model a neuronal activation numerically, and in that sense human brains are remarkably similar to hyper dimensional spatial computing devices. They’re arguably higher dimensional since they don’t just integrate over strength of input but physical space and time as well.
Back in the early 2000s CERN was able to simulate the brain of a flat worm. Actually simulate the individual neurons firing. A 100% digital representation of a flatworm brain. And it took up an immense amount of processing capacity for a form of life that basic, far more processor intensive than the most advanced AIs we currently have.
Modern AIs don’t bother to simulate brains, they do something completely different. So you really can’t compare them to anything organic.
2014, not early 2000s (unless you were talking about the century or something).
OpenWorm project, not CERN.
And it was run on Lego Mindstorm. I am no AI expert, but I am fairly certain that it is not “far more processor intensive than the most advanced AIs we currently have”.
Citation needed on that comment of yours. Because I know for a fact that what I said is true. Go look it up.
Maybe you should be a little less sure of your “facts”, and listen to what the world has to teach you. It can be marvelous.
far more processor intensive than the most advanced AIs we currently have
This is the second comment I’ve seen from you where you confidently say something incorrect. Maybe stop trying to be orator of the objective and learn a little more first.
I agree, but it isn’t so clear cut. Where is the cutoff on complexity required? As it stands, both our brains and most complex AI are pretty much black boxes. It’s impossible to say this system we know vanishingly little about is/isn’t dundamentally the same as this system we know vanishingly little about, just on a differentscale. The first AGI will likely still have most people saying the same things about it, “it isn’t complex enough to approach a human brain.” But it doesn’t need to equal a brain to still be intelligent.
It’s demonstrably several orders of magnitude less complex. That’s mathematically clear cut.
Where is the cutoff on complexity required?
Philosophical question without an answer - We do know that it’s nowhere near the complexity of the brain.
both our brains and most complex AI are pretty much black boxes.
There are many things we cannot directly interrogate which we can still describe.
It’s impossible to say this system we know vanishingly little about is/isn’t dundamentally the same as this system we know vanishingly little about, just on a differentscale
It’s entirely possible to say that because we know the fundamental structures of each, even if we don’t map the entirety of eithers complexity. We know they’re fundamentally different - Their basic behaviors are fundamentally different. That’s what fundamentals are.
The first AGI will likely still have most people saying the same things about it, “it isn’t complex enough to approach a human brain.”
Speculation but entirely possible. We’re nowhere near that though. There’s nothing even approaching intelligence in LLMs. We’ve never seen emergent behavior or evidence of an id or ego. There’s no ongoing thought processes, no rationality - because that’s not what an LLM is. An LLM is a static model of raw text inputs and the statistical association thereof. Any “knowledge” encoded in an LLM exists entirely in the encoding - It cannot and will not ever generate anything that wasn’t programmed into it.
It’s possible that an LLM might represent a single, tiny, module of AGI in the future. But that module will be no more the AGI itself than you are your cerebellum.
But it doesn’t need to equal a brain to still be intelligent.
This is exactly what I’m talking about when I argue with people who insist that an LLM is super complex and totally is a thinking machine just like us.
It’s nowhere near the complexity of the human brain. We are several orders of magnitude more complex than the largest LLMs, and our complexity changes with each pulse of thought.
The brain is amazing. This is such a cool image.
LLM’S don’t work like the human brain, you are comparing apples to suspension bridges.
The human brain works by the series of interconnected nodes and complex chemical interactions, LLM’s work on multi-dimensional search spaces, their brains exist in 15 billion spatial dimensions. Yours doesn’t, you can’t compare the two and come up with any kind of meaningful comparison. All you can do is challenge it against human level tasks and see how it stacks up. You can’t estimate it from complexity.
You’re missing half of it. The data cube is just for storing and finding weights. Those weights are then loaded into the nodes of a neural network to do the actual work. The neural network was inspired by actual brains.
I wonder where it got it’s name from?
I have no idea. Maybe someone with a larger neural network than mine can figure it out.
I mean you can model a neuronal activation numerically, and in that sense human brains are remarkably similar to hyper dimensional spatial computing devices. They’re arguably higher dimensional since they don’t just integrate over strength of input but physical space and time as well.
I think of LLMs like digital bugs, doing their thing, basically programmed.
They’re just programmed with virtual life experience instead of a traditional programmer.
Back in the early 2000s CERN was able to simulate the brain of a flat worm. Actually simulate the individual neurons firing. A 100% digital representation of a flatworm brain. And it took up an immense amount of processing capacity for a form of life that basic, far more processor intensive than the most advanced AIs we currently have.
Modern AIs don’t bother to simulate brains, they do something completely different. So you really can’t compare them to anything organic.
https://www.sciencealert.com/scientists-put-worm-brain-in-lego-robot-openworm-connectome
2014, not early 2000s (unless you were talking about the century or something).
OpenWorm project, not CERN.
And it was run on Lego Mindstorm. I am no AI expert, but I am fairly certain that it is not “far more processor intensive than the most advanced AIs we currently have”.
Maybe you should be a little less sure of your “facts”, and listen to what the world has to teach you. It can be marvelous.
This is the second comment I’ve seen from you where you confidently say something incorrect. Maybe stop trying to be orator of the objective and learn a little more first.
Citation needed on that comment of yours. Because I know for a fact that what I said is true. Go look it up.
I think the claim that 24 year old technology is more computationally intensive than the ground breaking tech of the modern day needs the citation.
I agree, but it isn’t so clear cut. Where is the cutoff on complexity required? As it stands, both our brains and most complex AI are pretty much black boxes. It’s impossible to say this system we know vanishingly little about is/isn’t dundamentally the same as this system we know vanishingly little about, just on a differentscale. The first AGI will likely still have most people saying the same things about it, “it isn’t complex enough to approach a human brain.” But it doesn’t need to equal a brain to still be intelligent.
It’s demonstrably several orders of magnitude less complex. That’s mathematically clear cut.
Philosophical question without an answer - We do know that it’s nowhere near the complexity of the brain.
There are many things we cannot directly interrogate which we can still describe.
It’s entirely possible to say that because we know the fundamental structures of each, even if we don’t map the entirety of eithers complexity. We know they’re fundamentally different - Their basic behaviors are fundamentally different. That’s what fundamentals are.
Speculation but entirely possible. We’re nowhere near that though. There’s nothing even approaching intelligence in LLMs. We’ve never seen emergent behavior or evidence of an id or ego. There’s no ongoing thought processes, no rationality - because that’s not what an LLM is. An LLM is a static model of raw text inputs and the statistical association thereof. Any “knowledge” encoded in an LLM exists entirely in the encoding - It cannot and will not ever generate anything that wasn’t programmed into it.
It’s possible that an LLM might represent a single, tiny, module of AGI in the future. But that module will be no more the AGI itself than you are your cerebellum.
First thing I think we agree on.