This seems to be a good middle ground then. It allows for a way to prevent political projects getting grants under the guise of "scientific research", at least when they directly oppose the voters. I don't see any push to defund basic research, and if politicians start doing that there's at least a way for people to voice their disapproval through voting.
Aside from that, so much money was wasted on Alzheimer's research based on fraud.
Instead of programming something yourself now you'll be forced to program through the interface of someone that doesn't speak English putting what you say into an LLM. We've peaked.
> but there’s no denying that the barrier to entry has fallen significantly.
The barrier to entry to make slop is lower, but it's gotten much higher for developing the skill of programming. There was already an issue with a lack of mentorship and path for juniors when agile attempted to turn software engineers into assembly line workers, among other issues with the industry becoming hyper short-term focused.
Now you have educational barriers where students are competing with other students that are cheating with LLMs. There are psychological barriers with learned helplessness. The 100k lines of vibecoded slop produced hits a wall but they've gained no understanding of the code in the process or ability to make changes themselves. At the first job juniors and interns get they're being told not to take the time to learn and understand the problem they're working and instead they need to hit the LLM slot machine or risk getting fired.
> Clearly the theory that LLM's can't "extrapolate" is woefully incomplete at best (and most likely simply incorrect).
What example is there where an LLM has extrapolated? All I've seen is a data set so large and an extra decomposition process making it so interpolation feels like extrapolation if you don't look close enough.
> but a theory of why further advancements can't solve the deficiencies
Newton did it at 23 and there would have been very few people with mathematical training. The LLM would be trained on the entirety of recorded human knowledge and mathematics up to that point, and would get to use a lot more energy so it still has a massive material advantage over young Isaac. Yet I don't believe calculus would magically appear in its response.
A good way to look at it is to compare it to today: LLMs are already trained and are operationalizing a lot more mathematical knowledge than any human, including experts.
Why are they not coming up with paradigm shift in knowledge expression/discovery like humans did back then?
LLMs have been trained on a lot more data than any single human (text wise at least) for years now and these sort of results have only been possible for the latest crop of models in the past few months. Models get better as they get better.
The argument is whether models of today, suitably trained on pre-17th century data (if comparable quantity was available) would be able to "invent" calculus et cetera.
If we believe today's models are sufficiently capable to have been able to do so, why are we not getting these types of results today compared to the entire world knowledge and especially math?
Are research mathematicians simply not prompting LLMs in the right way?
> What is preventing AI from continuing to improve until it is absolutely better than humans at any mental task?
No matter how much compute time it's given to combine training samples with each other and run through a validation engine it will still be missing some chunk of the "long tail". To make progress in the long tail it would need to have understanding, and not just a mimicry of understanding. Unless that happens they will always be dependent on the humans that they are mimicking in order to improve.
> What is the difference between what LLM's do and "true" understanding?
The thing where you can understand the meaning of this sentence without first compiling a statistical representation of a 10 trillion line corpus of training data.
When you think about the word apple and what it signifies, what do you experience? Is there a feeling of "appleness"? Do you think that sense of meaning is equivalent to the numerical weights of an LLM?
When you think about the word apple and what it signifies, what do you experience?
So I have all sorts of associations with "apple" and spent a little time playing with it.
First in a raw physical sense I can imagine an apple in my head, spin it around, imagine its physics with near cylindrical symmetry etc. A red apple is what first pops into my head, although of course I know there are many apple variants and have opinions on their taste etc.
There are many cultural associations I have with apples from Newton to George Washington. The company Apple has its own set of ideas that I interact with when I hear the word.
In other words I can think of various associations I have to the word apple of various strengths. These associations and strengths are functions of my experience encountering the word and actual apples.
Is there a feeling of "appleness"?
I don't really know what this would mean. I would say no, unless it can perhaps be defined what appleness means and feels like. I don't really notice any strong set of emotions or feelings from this thought exercise.
Do you think that sense of meaning is equivalent to the numerical weights of an LLM?
Again I think I would need a definition of "sense of meaning". I don't seem to derive a singular pointlike meaning when contemplating a singular word. I never was contending that human and LLM cognition are exactly equivalent, but I could see these association strengths being represented in LLM weights. I would say then if an LLM has similar association strengths with "apple" then it "understands" apples as well as I do. Of course this is really hard to test, but frontier models could give you all sorts of apple facts and cultural associations and so on. It may slip up and hallucinate, and I'm sure that I also believe at least one false thing about apples.
So what is your brightline between LLM and human understanding in this example? I assume that your line of reasoning would argue that LLMs do not understand apples. Why don't LLMs understand the word "apple?
It sounds like you don't have the subjective experience of meaning that most humans do, so maybe that would explain why you don't think there is anything beyond associations. Maybe this is the core difference that's determining how people see LLMs.
I'm not sure how I would convey what meaning and understanding is to someone if they don't experience them. This is my poor attempt though: There can not just be associations there need to be "things" to associate between. Otherwise you have no ground, it is all map and no territory. Ultimately it would just be meaningless associations between meaningless symbols.
> I think that's just a matter of having them able to work on longer and longer time horizons.
No this will never do the kind of math that humans did when coming up with complex numbers, or hell just regular numbers ex nihilo. No matter how long it's given to combine things in its training data.
I currently operate under the assumption that humans are at most as powerful as Turing Machines. And from what I understand these models internally are modeling increasingly harder and larger DFAs, so they're at least as powerful as regular languages.
Assuming humans are more powerful than regular languages I could maybe agree that these methods may not eventually yield entirely human like intelligence, but just better and better approximations.
The vibe I get though is that we aren't more powerful than regular languages, cause human beings feel computationally bounded. So I could see given enough "human signal" these things could learn to imitate us precisely.
Well yeah there is likely an equivalence between computability and epistemology, but I'm not sure it matters when comparing LLM intelligence to human intelligence. There is clearly a missing link that prevents the LLM from reaching beyond its training data the way humans do.
If you look at the life efforts and accomplishments of the ~100 billion humans who have ever lived, how many lifetimes would you discount as having "non-human intelligence" based on the lack of "novel" contributions to frontier of our species' scientific understanding according to the same high bar you apply to LLMs?
You're not quite addressing the question. More and more of the training data is now synthetic.
To be very specific - what novel things did the majority of the ~8 bil humans on Earth do say, yesterday, that you wouldn't otherwise dismiss as non-intelligent rehashing of the same tired patterns they always inhabit were those same actions attributed to LLMs?
What I'm getting at is that I think you're falling into the trap of thinking of the rare geniuses of human history, and furthermore their rare moments of accomplishment (relative to the long span of their lifetimes filled mostly without these accomplishments) when you think of "human intelligence", which is of course far overstating what actual human intelligence is.
Synthetic training data is carefully crafted by humans. The rare geniuses of human history use a different magnitude and configuration of the same kind of human intelligence that posted a dad joke on a site that got scraped into the training set and repeated, convincing people that it is intelligent like humans.
> that you wouldn't otherwise dismiss as non-intelligent rehashing of the same tired patterns they always inhabit were those same actions attributed to LLMs?
Regardless of whether something's been done before people still come up with them on their own without directly copying or amalgamating several copies. Pretty much every skilled profession includes figuring things out on the fly through the use of general reasoning that doesn't involve pattern matching against millions of examples.
> Synthetic training data is carefully crafted by humans.
Much, if not the majority of synthetic data is AI generated. Human experts then evaluate samples of the data, but nothing like the entire corpus which can be trillions of tokens of generated material.
> The rare geniuses of human history use a different magnitude and configuration of the same kind of human intelligence
I agree. What I don’t see any strong evidence for is that this intelligence is unique to humans. Nor do I see how it could ever be anything other than recombinations of existing data with random mutation. Where else would the building blocks for each invention come from, divine insight? We build on the shoulders of giants etc etc
Worth noting, as a sidebar, that we’re having this discussion on a post mentioning a novel breakthrough made by AI over a topic that many brilliant human mathematicians including Erdos himself failed to do.
> Regardless of whether something's been done before people still come up with them on their own without directly copying or amalgamating several copies.
I’m not even saying it in the “there’s nothing new under the sun” sense.
If you follow an average person’s day from beginning to end. Let’s say in Bangkok or NYC or Paris, at which part of the day are they not simply repeating a variation of something they’ve done many times before, or seen others around them do before, or read about others doing before, or heard about others doing before, watched others do before on TV etc etc
What you have left, how is it distinguishable, without reasoning backwards from the desired conclusion of human exceptionalism, from turning up the temperature on an LLM query?
How many data points does a human parse when they attempt to stand up as a toddler? Sight, sound, sensation from every limb and body part, inner ear, internal thought processes at the time conscious and unconscious related to the moment and attempting to interpret it in relation to all that it’s experienced to this point, including all prior attempts and whatever retained associated data, a hard to even comprehend stream of data, coming in continuously over however many minutes, hours, etc of attempts.
The stream of data the brain is processing from both external and internal sources from birth is incredibly rich, and if we attempted to represent the full depth of it it would far outweigh the size of any corpus models are being trained on now.
I think what may be genuinely missing from AI is the type of data that doesn’t translate completely into text. The audio and images/video we feed in are a totally incomplete slice of the POV of say even a single average human through their lifetime, and bereft of all the associated data a human has access to in the moment (sensory etc).
I think this tends more towards the world models that Yann Lecun et al are promoting as the key to more capable AI.
You seem to be missing their point (which I agree with). The type of intelligence we are equipped with allows us not to have the level of memory an LLM does and still complete tasks that are novel to us every single day. Like navigating a shopping cart through tricky coridors in a store, coming up with a dad joke as in sibling example, combining a set of tools to achieve something we have never seen before, etc.
LLMs approximate a lot of that very well by simply having seen it before.
Also watch kids develop language: they learn patterns with much less training data than LLMs.
I addressed much of this in my response to a sibling comment, but a few more here:
> novel to us every single day. Like navigating a shopping cart through tricky coridors in a store
We have been practicing navigating the physical world for something like 16hrs/day every day from the moment of our birth. All the sensory data passing through our brains during that time is far larger than any dataset an LLM is trained on.
Humans navigating a shopping cart at a store have likely navigated the physical world before, pushed a shopping cart before, and in combination have navigated stores while pushing shopping carts before. Nevertheless, many still bump into objects all along the way.
Them succeeding at successive variations of store layouts is not novel unless we expand the definition of novel to mean any recombination whatsoever of pre existing concepts.
I’m certain that with all the intense usage of AI by hundreds of millions of people, there have been countless collections of words passed to LLMs so far that have never before been uttered in exactly such a sequence, let alone in the dataset.
I’m equally certain the LLMs have responded to those words with collections of its own that have also never been uttered in that exact sequence, responding to their unique context.
It is trivial to produce an example of this now yourself if you’d like.
The LLM we’re talking about, mentioned in the OP, has never seen this solution to this problem in its dataset. A large number of brilliant mathematicians were not able to discover this solution. They are themselves expressing that this is a novel breakthrough and had this come from a human it would be treated as such.
If the response to that is “well it’s just recombining concepts it already knows until it finds a solution that works” I would ask how that differs from what humans do?
You missed the core of my point: humans operate, including in the real world, on much less training data. Give a human a shopping cart and ask them to push it backwards, and they'll figure it out in a few minutes even if they've never done it before.
This is the bit that's missing that LLMs do approximate amazingly well through sheer training set size, but in my opinion, it puts a cap on what novel things they can achieve in comparison with humans.
To me, I've thought about a related "invention space" before: with us creating software to solve many problems people are facing, why are there not any perfect solutions for any problem (running a cafe? a CNC machine? ...), and we always need more software built to cover one small (novel?) change for a particular owner?
The world space is just so large that you need whatever this intelligence is humans (and animals) have to navigate it successfully — but LLMs do not intrinsically.
Whether they can be so large that it does not matter in 99.99% of cases is to be seen.
> You missed the core of my point: humans operate, including in the real world, on much less training data.
I very specifically addressed this in my response to you. How much training data is contained in 16 waking hours of navigating the world fusing all sensory data, never mind data being simultaneously generated within the mind while this is all going on, from birth til death? From birth til pushing that shopping cart?
Far, far more than in all the training datasets being used for AI.
I also addressed this again in my reply to the sibling comment.
People tend to discount how much data humans have passing through their minds 24/7.
A human isn’t born in a vacuum as a fully formed adult and dropped into the shopping cart navigation problem.
A human has had far, far more training data fed into it that contains all the pieces necessary to translate to pushing a shopping cart when first seeing it, than a machine learning model which has been fed 1 million videos of a robot pushing a shopping cart.
Yeah I'm not sure what the exact context of the statement is.
I am absolutely certain that we have not already discovered let alone implemented the best possible learning algorithms. Humans have had more time to evolve, there's a great chance that we do learn more efficiently, and have developed specialized brains that are primed to learning things like how to navigate the physical world on planet Earth as bipeds.
That said, to say that we operate with less training data is just ignoring the reality of all the data we're training on at all times.
If we were to model in lossless fidelity what humans are capable of seeing, hearing, smelling, tasting, feeling, thinking consciously and subconsciously etc. essentially all the data flowing through our minds that we are constantly training on every moment of every day, even while we sleep/are unconscious, what sort of bitrate do you think would be required?
Modern LLMs train on datasets in the what, tens of terabytes in size? Let's call it 100 TB.
I would imagine that to losslessly reproduce the full suite of human sensory data (whatever that means for things like taste, touch, smell) would require a bitrate that hits that 100 TB total relatively quickly?
Let's stick to comparing language skills to language skills: at least in my experience with my two kids, they learn word formation patterns before they turn 2 — easy to notice because you see them make mistakes on exceptions.
LLMs needed how much training data to be able to do so?
FWIW, I still see them make up wrong words not following any grammatical pattern, esp in Serbian with less training data.
"...we're optimized for having not many experiences. You only live for about a billion seconds—that's assuming you don't learn anything after you're 30, which is pretty much true. So you live for about a billion seconds and you've got a 100 trillion connections. So [you've] got crazily more parameters than you have experiences. So our brains [are] optimized for making the best use of not very many experiences."
I think this is disingenuous comparison. When we read a book we can estimate the amount of data we're taking in based on the character count (each character being represented by some fixed amount of bits).
What you're suggesting on the other hand is something akin to counting the number of pixels on each page we look at. That's absurd overestimate of the amount of data a person reading is actually taking in.
I believe there is a point: we simulataneously ingest words, but also glyph shapes and learn acceptable variations between them (eg. serif vs non-serif, large x-height vs small, curlier or more elegant, playful letters...) — all of these contribute to our multi-faceted learning, but ultimately, we do seem to need less of the data to learn (how long it takes for us to learn to recognize letters vs OCR based on ML).
The act of discovery is usually associated with "abductive reasoning", i.e. finding a novel pattern in data.
Usually people point out that humans are more sample efficient: they might notice a novel pattern in a handful of samples, whereas training NN might require take millions.
However a claim that LLMs fundamentally cannot do abductive reasoning at all is not warranted - we don't see a clear cut, it just looks like the way LLMs do it is less efficient.
What did you say that added to the discussion? I wasn't wondering at all. More compute time won't create new mathematics. To believe otherwise is to misunderstand the technology and there is no amount of hackernews votes that will change that.
2. Eventually we'll get to where local models that don't have sycophancy and slot-machine mechanics trained into them will perform better.
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