Some researchers proposed using, instead of the term "AI", the much more fitting "self-parametrising probabilistic model" or just advanced auto-complete - that would certainly take the hype-inducing marketing PR away.
I prefer Tesla's approach to call their adaptive cruise control "FSD (supervised)".
AI (supervised).
That’s like arguing that washing machines should be called rapid-rotation water agitators.
It’s the result that consumers are interested in, not the mechanics of how it’s achieved. Software engineers are often extraordinarily bad at seeing the difference because they’re so interested in the implementation details.
The problem is that intelligence isn't the result, or at the very least the ideas that word evokes in people don't match the actual capabilities of the machine.
Washing is a useful word to describe what that machine does. Our current setup is like if washing machines were called "badness removers," and there was a widespread belief that we were only a few years out from a new model of washing machine being able to cure diseases.
What about letting customers actually try the products and figure out for themselves what it does and whether that's useful to them?
I don't understand this mindset that because someone stuck the label "AI" on it, consumers are suddenly unable to think for themselves. AI as a marketing label has been used for dozens of years, yet only now is it taking off like crazy. The word hasn't change - what it's actually capable of doing has.
Arguably there isn't even a widely shared, coherent definition of intelligence: To some people, it might mean pure problem solving without in-task learning; others equate it with encyclopedic knowledge etc.
Given that, I consider it quite possible that we'll reach a point where even more people will consider LLMs having reached or surpassed AGI, while others still only consider it "sufficiently advanced autocomplete".
Businesses are interested in something that can work for them. And the way the LLM based agentic systems are going, it might actually deliver on "Automated Knowledge Workers". Probably not with full autonomy, but in teams lead by a human. The human needs to tend the AKW, much like we do with washing machines and industrial automation machines.
I'd be mad if washing machines were marketed as a "robot maid"
A woman from 1825 would probably happily accept that description though (notwithstanding that the word “robot” wasn’t invented yet).
A machine that magically replaces several hours of her manual work? As far as she’s concerned, it’s a specialized maid that doesn’t eat at her table and never gets sick.
Machines do get "sick" though, and they eat electricity.
Negligible cost compared to a real maid in 1825. The washing machine also doesn’t get pregnant by your teenage son and doesn’t run away one night with your silver spoons — the upkeep risks and replacement costs are much lower.
In 1825 both electricity prices and replacement costs would have been unaffordable for anyone, though. Because there was literally no prize you could pay to get these things.
They do and will randomly kill people
19 century washing machines were called washing/mangling machines.
They were not called maids nor personified.
Shame we are in 2025 huh? Ask someone today if they accept washing machine as robot maid.
The point is that, as far as development of AI is concerned, 2025 consumers are in the same position as the 1825 housewife.
In both cases, automation of what was previously human labor is very early and they’ve seen almost nothing yet.
I agree that in the year 2225 people are not going to consider basic LLMs artificial intelligences, just like we don’t consider a washing machine a maid replacement anymore.
"Washer" and "dryer" are accepted colloquial terms for these appliances.
I could even see the humour in "washer-bot" and "dryer-bot" if they did anything notably more complex. But we don't need/want appliances to become more complex than is necessary. We usually just call such things programmable.
I can accept calling our new, over-hyped, hallucinating overlords chatbots. But to be fair to the technology, it is we chatty humans doing all the hyping and hallucinating.
The market capitalisation for this sector is sickly feverish — all we have done is to have built a significantly better ELIZA [1]. Not a HIGGINS and certainly not AGI. If this results in the construction of new nuclear power facilities, maybe we can do the latter with significant improvement too. (I hope.)
My toaster and oven will never be bots to me. Although my current vehicle is better than earlier generations, it contains plenty of bad code and it spews telemetry. It should not be trusted with any important task.
[1] _ https://en.wikipedia.org/wiki/ELIZA
The term "AI" didn't make sense from the beginning, but I guess it sounded cool and that's why everything is "AI" now. And I doubt it will change, regardless of its correctness.
John McCarthy coined the term "Artificial Intelligence" in the 1950s. I doubt he was trying to be cool. The whole field of research involved in getting computers to do intelligent things has been referred to as AI for many decades.
It's a nice naming, fellow language-capable electrobiochemical autonomous agent.
The proof of Riemann hypothesis is [....autocomplete here...]
AI is intermitent wipers, for words,
and the two are completly tied, as the perfect test for AI, will be to run intermitent wipers, to everybodys satisfaction.
Exactly! I am going for "glorified auto complete" is far more useful than it seems. In GOFAI terms, it does case-based reasoning.. but better.
I call it clippy’s revengeance
Clippy 2: Clippy Goes Nuclear
But more seriously, this is ELIZA with network effects. Credulous multitudes chatting with a system that they believe is sentient.
I am quite happy with LLM being more and more available 24/7 to be useful to human kind ... than some sentient being that never sleep and is more intelligent than me, with its own agenda.
I think what Terry is saying is that with the current set of tools, there are classes of problems requiring cleverness: where you can guess and check (glorified autocomplete), check answer, fail and then add information from failure and repeat.
I guess ultimately what is intelligence? We compact our memories, forget things, and try repeatedly. Our inputs are a bit more diverse but ultimately we autocomplete our lives. Hmm… maybe we’ve already achieved this.
The text continues "with current AI tools" which is not clearly defined to me (does it mean current Gen + scaffold? Anything which is llm reasoning model? Anything built with a large llm inside? ). In any case, the title is misleading for not containing the end of the sentence. Please can we fix the title?
Also i think the main source of interest is because it is said by Terry, so that should be in the title too.
Terry Tao is a genius, and I am not. So I probably have no standing to claim to disagree with him. But I find this post less than fulfilling.
For starters, I think we can rightly ask what it means to say "genuine artificial general intelligence", as opposed to just "artificial general intelligence". Actually, I think it's fair to ask what "genuine artificial" $ANYTHING would be.
I suspect that what he means is something like "artificial intelligence, but that works just like human intelligence". Something like that seems to be what a lot of people are saying when they talk about AI and make claims like "that's not real AI". But for myself, I reject the notion that we need "genuine artificial general intelligence" that works like human intelligence in order to say we have artificial general intelligence. Human intelligence is a nice existence proof that some sort of "general intelligence" is possible, and a nice example to model after, but the marquee sign does say artificial at the end of the day.
Beyond that... I know, I know - it's the oldest cliche in the world, but I will fall back on it because it's still valid, no matter how trite. We don't say "airplanes don't really fly" because they don't use the exact same mechanism as birds. And I don't see any reason to say that an AI system isn't "really intelligent" if it doesn't use the same mechanism as human.
Now maybe I'm wrong and Terry meant something altogether different, and all of this is moot. But it felt worth writing this out, because I feel like a lot of commenters on this subject engage in a line of thinking like what is described above, and I think it's a poor way of viewing the issue no matter who is doing it.
> I suspect that what he means is something like "artificial intelligence, but that works just like human intelligence".
I think he means "something that can discover new areas of mathematics".
Very reasonable, given his background!
That does seem awfully specific though, in the context of talking about "general" intelligence. But I suppose it could rightly be argued that any intelligence capable of "discovering new areas of mathematics" would inherently need to be fairly general.
> That does seem awfully specific though
It's one of a large set of attributes you would expect in something called "AGI."
I’d love to take that bet
I interpret “artificial” in “artificial general intelligence” as “non-biological”.
So in Tao’s statement I interpret “genuine” not as an adverb modifying the “artificial” adjective but as an attributive adjective modifying the noun “intelligence”, describing its quality… “genuine intelligence that is non-biological in nature”
So in Tao’s statement I interpret “genuine” not as an adverb modifying the “artificial” adjective but as an attributive adjective modifying the noun “intelligence”, describing its quality… “genuine intelligence that is non-biological in nature”
That's definitely possible. But it seems redundant to phrase it that way. That is to say, the goal (the end goal anyway) of the AI enterprise has always been, at least as I've always understood it, to make "genuine intelligence that is non-biological in nature". That said, Terry is a mathematician, not an "AI person" so maybe it makes more sense when you look at it from that perspective. I've been immersed in AI stuff for 35+ years, so I may have developed a bit of myopia in some regards.
I agree, it’s redundant.
To us humans - to me at least - intelligence is always general (calculator: not; chimpansee: a little), so “general intelligence” can also already be considered redundant. Using “genuine” is more redundancy being heaped on (with the assumed goal of making a distinction between “genuine” AGI and tools that appear smart in limited domains)
I find it odd that the post above is downvoted to grey, feels like some sort of latent war of viewpoints going on, like below some other AI posts. (Although these misvotes are usually fixed when the US wakes up.)
The point above is valid. I'd like to deconstruct the concept of intelligence even more. What humans are able to do is a relatively artificial collection of skills a physical and social organism needs. The so highly valued intelligence around math etc. is a corner case of those abilities.
There's no reason to think that human mathematical intelligence is unique by its structure, an isolated well-defined skill. Artificial systems are likely to be able to do much more, maybe not exactly the same peak ability, but adjacent ones, many of which will be superhuman and augmentative to what humans do. This will likely include "new math" in some sense too.
What everybody is looking for is imagination and invention. Current AI systems can give best guess statistical answer from dataset the've been fed. It is always compression.
The problem and what most people intuitively understand is that this compression is not enough. There is something more going on because people can come up with novel ideas/solutions and whats more important they can judge and figure out if the solution will work. So even if the core of the idea is “compressed” or “mixed” from past knowledge there is some other process going on that leads to the important part of invention-progress.
That is why people hate the term AI because it is just partial capability of “inteligence” or it might even be complete illusion of inteligence that is nowhere close what people would expect.
> Current AI systems can give best guess statistical answer from dataset the've been fed.
What about reinforcement learning? RL models don't train on an existing dataset, they try their own solutions and learn from feedback.
RL models can definitely "invent" new things. Here's an example where they design novel molecules that bind with a protein: https://academic.oup.com/bioinformatics/article/39/4/btad157...
Finding variations in constrained haystack with measurable defined results is what machine learning has always been good at. Tracing most efficient Trackmania route is impressive and the resulting route might be original as in human would never come up with it. But is it actually novel in creative, critical way? Isn't it simply computational brute force? How big that force would have to be in physical or less constrained world?
The airplane analogy is a good one. Ultimately, if it quacks like a duck and walks like a duck, does it really matter if it’s a real duck or an artificial one? Perhaps only if something tries to eat it, or another duck tries to mate with it. In most other contexts though it could be a valid replacement.
Just out of interest though, can you suggest some of these other contexts where you might want a valid replacement for a duck that looked like one, walked like one and quacked like one but was not one?
Are you suggesting LLMs are decoy for investor hunting?
In the same sly vein of humour, the first rule of Money Club is to never admit that the duck may be lame.
There’s a guaranteed path to AGI, but it’s blocked behind computational complexity. Finding an efficient algorithm to simulate Quantum Mechanics should be top priority for those seeking AGI. A more promising way around it is using Quantum Computing, but we’ll have to wait for that to become good enough..
That would arguably not be artificial intelligence, but rather simulated natural intelligence.
It also seems orders of magnitude less resource efficient than higher-level approaches.
What’s the difference? Arguably the latter will be better IMO than the former
Required energy density at the necessary scale will be your next hurdle.
Once you have the efficient algorithm you approximate asymptotically with the energy you have, of course you can’t obtain the same precision
Or speed. I think Frank Herbert was on to something in Dune. The energy efficiency of the human brain is hard to beat. Perhaps we should invest in discovering "spice." I think it might be more worthwhile.
Okay, enough eggnog and posting.
How would simulating quantum mechanics help with AGI?
Obviously, quantum supremacy is semiologically orthogonal to AGI (Artificial General Inteligence) ontological recursive synapses... this is trivial.
What exactly should get simulated and how do you think quantum mechanics will help with this?
At least the solar system I would say. Quantum mechanics will help you do that in the correct way to obtain what Nature already obtained: general intelligence.
We seem to be moving the goalposts on AGI, are we not? 5 years ago, the argument that AGI wasn't here yet was that you couldn't take something like AlphaGo and use it to play chess. If you wanted that, you had to do a new training run with new training data.
But now, we have LLMs that can reliably beat video games like Pokemon, without any specialized training for playing video games. And those same LLMs can write code, do math, write poetry, be language tutors, find optimal flight routes from one city to another during the busy Christmas season, etc.
How does that not fit the definition of "General Intelligence"? It's literally as capable as a high school student for almost any general task you throw it at.
I think the games tasks are worth exploring more. If you look at that recent Pokemon post - it's not as capable as a high school student - it took a long, long time. I have a private set of tests, that any 8 year old could easily solve that any LLM just absolutely fails on. I suspect that plenty of the people claiming AGI isn't here yet have similar personal tests.
I think we're noticing that our goalposts for AGI were largely "we'll recognize it when we see it", and now as we are getting to some interesting places, it turns out that different people actually understood very different things by that.
These things work well on the extremely limited task impetus that we give them. Even if we sidestep the question of whether or not LLMs are actually on the path to AGI, Imagine instead the amount of computing and electrical power required with current computing methods and hardware in order to respond to and process all the input handled by a person at every moment of the day. Somewhere in between current inputs and handling the full load of inputs the brain handles may lie “AGI” but it’s not clear there is anything like that on the near horizon, if only because of computing power constraints.
> This results in the somewhat unintuitive combination of a technology that can be very useful and impressive, while simultaneously being fundamentally unsatisfying and disappointing
Useful = great. We've made incredible progress in the past 3-5 years.
The people who are disappointed have their standards and expectations set at "science fiction".
I think many people are now learning that their definition of intelligence was actually not very precise.
From what I've seen, in response to that, goalposts are then often moved in the way that requires least updating of somebody's political, societal, metaphysical etc. worldview. (This also includes updates in favor of "this will definitely achieve AGI soon", fwiw.)
I remember when the goal posts were set at the "Turing test."
That's certainly not coming back.
If you know the tricks wont you be able to figure out if some chat is done by a LLM?
Or the people who are disappointed were listening to the AI hype men like Sam Altman, who have, in fact, been promising AGI or something very like it for years now.
I don't think it's fair to deride people who are disappointed in LLMs for not being AGI when many very prominent proponents have been claiming they are or soon will be exactly that.
Remember when your goal posts were Turing test?
The only question remaining is what is the end point of AGI capability.
What’s the final IQ we’ll hit, and more importantly why will it end there?
Power limits? Hardware bandwidth limit? Storage limits? the AI creation math scales to infinity so that’s not an issue.
Source data limits? Most likely. We should have recorded more. We should have recorded more.