Artificial Einstein: Did AI just do the impossible?

Ғылым және технология

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Artificial intelligence has already proven its ability to produce entertaining and sometimes surprising creations, from texts to images and even videos. But can it learn physics? Maybe even discover new laws of physics? Today, we will venture into the fascinating intersection of artificial intelligence and physics. Computational Fluid dynamics, machine learning and even computer game design are encountered.
Key Takeaways:
00:00:00 Intro
00:01:04 The role of AI in quantum computing
00:03:31 Can AI predict outcomes better than humans?
00:07:09 A new way of simulating fluid dynamics
00:18:33 Outro
Additional resources:
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Пікірлер: 441

  • @DrBrianKeating
    @DrBrianKeating17 күн бұрын

    Will AI ever discover a new theory of nature? Let me know and don’t forget you can win a real meteorite 💥 when you join my free mailing list here 👉 briankeating.com/list ✉️

  • @TonyMountjoy

    @TonyMountjoy

    17 күн бұрын

    Discovery of that which already exists is where it has the best chance of doing something useful. It's a natural search engine. Composition is where it will always struggle, though, imo.

  • @evo1ov3

    @evo1ov3

    17 күн бұрын

    Joined and Subscribed. Umm... Probably. The stuff I've put into Google's A.I.? I'm gonna need FBI witness protection. 🤣 loljk! Love Your Show Mr/Dr Keating!!! Stay Free!

  • @4pharaoh

    @4pharaoh

    17 күн бұрын

    If AI ever does I bet there is a smart taxi driver, or some other Hi IQ non physicists, who will provide a proof that we could have have had this “discovery” 20-50 years ago, if it wasn’t for the *control apparatus* in place in the physics community, that prevents outsiders from presenting truths. Ah the Hubris of you all.

  • @MikePaixao

    @MikePaixao

    17 күн бұрын

    Circular Quadratic Algebra is coming after general relativity 🙂 (I made my discoveries when I started making a simulation game where I decided to simulate everything from players, npcs, and trees)

  • @nunomaroco583

    @nunomaroco583

    17 күн бұрын

    Hi, probably yes, big advantages, bigger risk, we need some caution whit AI, but the advantages are immense......all the best.

  • @danielmccarthyy
    @danielmccarthyy17 күн бұрын

    I think AI has the greatest value to analyze huge data sets to find unknown relationships which lead to new physics equations, new chemical compounds, and predictive genetics. But I am probably wrong.

  • @DanteS-119

    @DanteS-119

    17 күн бұрын

    No, you're not wrong -- that's exactly where AI excels.

  • @hyperduality2838

    @hyperduality2838

    17 күн бұрын

    Syntax is dual to semantics -- languages or communication. Large language models are therefore dual! Categories (form, syntax, objects) are dual to sets (substance, semantics, subjects) -- Category theory is dual. If mathematics is a language then it is dual. Concepts are dual to percepts -- the mind duality of Immanuel Kant. Mathematicians create new concepts or ideas all the time from their perceptions, observations, measurements (intuitions) -- a syntropic process, teleological. Cause is dual to effect -- causality. Effect is dual to cause -- retro-causality. Perceptions or effects (measurements) create causes (concepts) in your mind -- retro-causality -- a syntropic process! Large language models are using duality to create reality. "Always two there are" -- Yoda.

  • @Blueprint4Murder

    @Blueprint4Murder

    14 күн бұрын

    AI excels only as a learning aid for humans, automated processing, and testing. So if you have a problem it can make mistakes 95% if the time, but it can be programed to eventually narrow to a working model completely automated that is the value. Which is why in the new chip set displays they showed AI training programs for training labor robots. If they actually works large scale we will not know for years. It will almost certainly be pushed into market flawed like nearly every program. Sadly, bugs in these programs have very high real world costs.

  • 14 күн бұрын

    You nailed it. It's good at analyzing for patterns in "dimensionality" which personally I think is better described as adjectives for our language. Every dimension is just a part of the description and it's just a measure of how orange is something relatively (orange just being a randomly chosen example) and how much does that matter to interpreting it. A jacket the orange value doesn't matter as much for understanding but for other things it matters immensely.

  • @katewerk

    @katewerk

    10 күн бұрын

    How do you fact check it? AI can't reproduce reliable biographies of living persons without making shit up and you expect it to do advanced physics based on trust?

  • @edgarjeparchin2382
    @edgarjeparchin238217 күн бұрын

    I am working on quantum physics LLM. What I find the hardest is the reinforcement part as the initial training data pretty much is standardised. That said I want to try to reinforce it with literature related to a more funkier side of possibilities such as anti-gravity or maybe time travel.

  • @trevorwhitechapel2403

    @trevorwhitechapel2403

    17 күн бұрын

    We have already been able to accelerate particles in a controlled setting to within a fraction of a fraction of the speed of light. For a next step towards time travel, what if we build a particle accelerator whose inside :track" is big enough in diameter to accelerate a 12oz can of Coca-Cola to that speed? Huh? Huh? What new laws of physics would the cola be exhibiting right after you first slow it back down and pop it open? What would it even taste like at that point? (I don't land on "can of soda" randomly. They are the optimized shape and the mass seems like it would be both ambitious but doable.) ♠

  • @hyperduality2838

    @hyperduality2838

    17 күн бұрын

    Syntax is dual to semantics -- languages or communication. Large language models are therefore dual! Categories (form, syntax, objects) are dual to sets (substance, semantics, subjects) -- Category theory is dual. If mathematics is a language then it is dual. Concepts are dual to percepts -- the mind duality of Immanuel Kant. Mathematicians create new concepts or ideas all the time from their perceptions, observations, measurements (intuitions) -- a syntropic process, teleological. Cause is dual to effect -- causality. Effect is dual to cause -- retro-causality. Perceptions or effects (measurements) create causes (concepts) in your mind -- retro-causality -- a syntropic process! Large language models are using duality to create reality. "Always two there are" -- Yoda.

  • @quantumpotential7639

    @quantumpotential7639

    15 күн бұрын

    Yes, feed the robot dessert FIRST so it gets really excited and a sugar boost with vivid theoretical fancy fantasies so that once it sits down for the meat and potatoes main course, with a salad of course, it can get busy producing amazeable out of this world stuff we never imagined before, but it now has. Fancy Fantasies and Ai are like the 2 pillars of Solomens Temple. Now let us pray for divine guidance as this is powerful stuff and we gotta be careful here going forward. 🙏

  • @honkytonk4465

    @honkytonk4465

    14 күн бұрын

    r​eally?

  • @635574

    @635574

    14 күн бұрын

    Imo LLM will always have trouble differntiating facts and fiction because its all just text and it has no experience outside of that.

  • @aquietpatron7281
    @aquietpatron728112 күн бұрын

    Nice work. I have to point out that with any emerging technology there are problems that occur and may not be able to overcome in the near future: AI’s: 1. Can hallucinate. 2. Can’t articulate the reasoning or process it used to get their results. 3. Can be biased. 4. Can provide different answers to the same question. 5. Can provide responses repetitive to a theme rather than providing independent responses. 6. Someone will always have to validate AI results. There is an inherent risk to not knowing how a solution was arrived at. 7. It’s lack of predictably is it’s strength but also it’s most critical weakness. In certain areas, it will revolutionize the world, in most other areas - not so much.

  • @mossy3565

    @mossy3565

    7 күн бұрын

    The issue here is much more fundamental, Ai can NEVER articulate its reasoning because its not actually intelligence. Its just weighted averages putting words in an order that makes the most sense. Not that the article is true and correct, just that the flow of its writing is legible. Because it's just a fancy spin of the auto-suggestion feature we've had on mobile keyboards for years now. Based on that system, you're never going to get sentience and, in this sense, intelligence

  • @noam65
    @noam6517 күн бұрын

    Protein folding is probably one of the most important areas of exploration because of its implications in the restoral of health, and repair of injury.

  • @lubricustheslippery5028

    @lubricustheslippery5028

    15 күн бұрын

    If going further you get bio-engineering. If this is the start of an AI revolution what could it enable and be the next, think it could be bio-engineering. It's to messy and complex for the Human mind to handle so I think some AI is needed.

  • @quantumpotential7639

    @quantumpotential7639

    15 күн бұрын

    I hope it can help my torn radiator cuffs. Both are messed up Big Time and the doctors don't know squat. But the robot. He'll get me back in the batters cage swatting balls in no time flat.

  • @ForageGardener

    @ForageGardener

    14 күн бұрын

    ​@@lubricustheslippery5028yeah the financial elites can engineer people exactly how they want!

  • @ForageGardener

    @ForageGardener

    14 күн бұрын

    ​@@quantumpotential7639topical turmeric oil lipsomal with piperine. Oral capsule turmeric with piperine + boswellia

  • @martiddy

    @martiddy

    14 күн бұрын

    That's why AlphaFold is such a magical tool for the scientists working in biomedicine.

  • @TheMrCougarful
    @TheMrCougarful8 күн бұрын

    AI has demonstrated a capacity to hallucinate, which I consider that a promising start.

  • @dmitrychirkov4206
    @dmitrychirkov420613 күн бұрын

    I like to think that at some point AI would invent it's own language for calculations due to a sheer time and resource economy. If it would be asked to decypher one of these symbols of it's language into our regular math, it would take years just to read a result.

  • @neovxr
    @neovxr10 күн бұрын

    let it learn all the differences between bosons and fermions on all known levels, including all the known equations like schroedinger. then make it amplify the differences and have it construct a new system of the particle world.

  • @Killer_Kovacs
    @Killer_Kovacs17 күн бұрын

    Watch the bit about 7.8 billion Nobel prize winners on a trolley rail. "Gpt chat solves the trolley problem"

  • @EnthusiasticTent-xt8fh

    @EnthusiasticTent-xt8fh

    17 күн бұрын

    If there is a BLM candidate on the rail, they win all outcomes.

  • @cheradenine1980
    @cheradenine198013 күн бұрын

    Been watching physics maths and cosmology on KZread for a decade. So glad to find your channel at last! Top quality!!

  • @patrickmchargue7122
    @patrickmchargue712217 күн бұрын

    IIRC, there was a neural network that, after observing/processing videos of pendulums' motion, derived the basic laws of motion; i.e. F=MA I too hope that there will be similar discoveries made by neural networks for other branches of physics.

  • @hyperduality2838

    @hyperduality2838

    17 күн бұрын

    Syntax is dual to semantics -- languages or communication. Large language models are therefore dual! Categories (form, syntax, objects) are dual to sets (substance, semantics, subjects) -- Category theory is dual. If mathematics is a language then it is dual. Concepts are dual to percepts -- the mind duality of Immanuel Kant. Mathematicians create new concepts or ideas all the time from their perceptions, observations, measurements (intuitions) -- a syntropic process, teleological. Cause is dual to effect -- causality. Effect is dual to cause -- retro-causality. Perceptions or effects (measurements) create causes (concepts) in your mind -- retro-causality -- a syntropic process! Large language models are using duality to create reality. "Always two there are" -- Yoda.

  • @rogerphelps9939

    @rogerphelps9939

    12 күн бұрын

    That is pretty simple. Anything worthwhile is orders of magnitude harder.

  • @stephenallen224
    @stephenallen22413 күн бұрын

    Mathematicians come up with new things all the time, it doesn't mean it reflects reality. You can create an elegant answer to some problem in physics that probably explains the issue real well mathematically... it doesn't mean it exists. II means you are good at math.

  • @4thorder
    @4thorder13 күн бұрын

    By far, what you are tapping into a potential is the key for advancements in all fields. I have often thought of the impact on medical research, much like what you are presenting here for fluid dynamics. Excellent presentation and accolades for creating a teaching assistant. I wish I would have had such a thing getting my engineering degree in the 80s, LOL.

  • @KyleBaran90
    @KyleBaran9015 күн бұрын

    Can you elaborate a bit more on the graph at 11:40? Is there a relationship between graphs u, c, v, and p, or were you just showing how there are multiple graphs and elaborating on a few select moments of the c(t,x,y) graph? I ask because it also seems applicable to financial domains

  • @sean2susini
    @sean2susini14 күн бұрын

    Something to consider, perhaps is that mathematical equations are describing an idealized model universe. Since AI is using real world models for its simulation, it could eventually be more accurate as a description of the universe than an equation.

  • @Zirrad1
    @Zirrad17 күн бұрын

    Hasn’t the AI simply found more efficient linearisations by exhaustive exploration? You’re correct to point out that the solutions might/probably won’t generalize beyond the training data - so might not be as useful where high precision is required, but terrific for making special FX for movies and education where time is money and the audience can’t tell the difference, and nobody’s life or job is on the line.

  • @jamiethomas4079
    @jamiethomas407917 күн бұрын

    Whats amazing and has already been duplicated in a way with sora is I dont think you need code for every type of physics simulation. I have a physics simulator in my head right now and couldnt begin to tell you exactly how it works. I can imagine a red apple, I can change its color to blue, I can throw the apple against a wall and watch it bounce off or explode. And all I did was have certain hardware and a knowledge base of what ive observed over my lifetime. Sora is the same way. It doesnt have a rally racing game engine built in yet it can create and simulate what will happen to a shockingly accurate degree, just like my brain. Some physics wont have to be coded in, we can simply train it against the physical world.

  • @hyperduality2838

    @hyperduality2838

    17 күн бұрын

    Syntax is dual to semantics -- languages or communication. Large language models are therefore dual! Categories (form, syntax, objects) are dual to sets (substance, semantics, subjects) -- Category theory is dual. If mathematics is a language then it is dual. Concepts are dual to percepts -- the mind duality of Immanuel Kant. Mathematicians create new concepts or ideas all the time from their perceptions, observations, measurements (intuitions) -- a syntropic process, teleological. Cause is dual to effect -- causality. Effect is dual to cause -- retro-causality. Perceptions or effects (measurements) create causes (concepts) in your mind -- retro-causality -- a syntropic process! Large language models are using duality to create reality. "Always two there are" -- Yoda. Syntropy (prediction) is dual to increasing entropy -- the 4th law of thermodynamics!

  • @vast634
    @vast6346 күн бұрын

    Predicting a simulation result is great. This is similar to what humans can do when predicting everyday outcomes of some mechanical event (some item falling for example) and react to it before the event happened.

  • @Charles-Darwin
    @Charles-Darwin15 күн бұрын

    Even a model that could output the smallest of novel processing/'ideas' would be a game changer itself, even if its something we already have proof/definitions/laws of or know. It would have to be a scenario where it was trained only with all the tools necessary to derive the answer/correct output, but not the answer itself. Unfortuantely were not even at the doorstep yet afaik. Your video is quite optimistic 😁

  • @dadsonworldwide3238
    @dadsonworldwide323817 күн бұрын

    It Is funny how realities generater of physical matter can now have a simulation of the great simulator lol Running elements through various critical extreme states & different lattus structures is definitely something interesting. To even streamline cost in what's worthy of actual testing is a huge benefit in the search of exotic materials Even as a tool for we the people to build agents to simulate industry and markets efficiency and functionality will be a great aid in how we decide to build out future infrastructure to accommodate. It's a lot of tough decisions to be made and we need better tools before we tackle a lot obstacles

  • @DankUser
    @DankUser14 күн бұрын

    The mouse pointer icon in the thumbnail is a great way to gatekeep people who smoke too much weed. Like me. For like a minute straight lol.

  • @martymcfly7628
    @martymcfly762816 күн бұрын

    As a physicist as well, I can tell you we are very short of training data on almost everything. Experimental physics is expensive, the physicists that do this are rare as hens teeth, so if we think we are going to solve anything we need to observe it first and put in a form to train, amongst what is not that thing its NOT as well, and all its nuances. Im excited, but hype is hype for AI

  • @das_it_mane

    @das_it_mane

    14 күн бұрын

    So maybe use it to create new experiments then?

  • @novantha1

    @novantha1

    13 күн бұрын

    I'm not entirely sure about that. As an outsider (to physics) with more experience on the AI side of things, it seems to me that there's a strong disconnect between "macrophysics" or "applied physics", as in things we typically observe and deal with on a regular basis (my car accelerates via kinetic energy, experiences friction, and so on), versus "microphysics" or physics such as they occur at atomic and sub-atomic levels. I'm pretty sure that data for macrophysics is cheap, plentiful, and readily available in a large variety of categories, and is fairly well understood such that many phenomena can be simulated as needed. So the really interesting question is: Given a large amount of semi-relevant data, can you augment a model trained on a small quantity of highly relevant data? The answer is generally yes, but it will take a careful approach. As a very crude solution, training a Transformer on anything before your target information will generally improve its performance on your target information for whatever reason. With that said, I think there are probably things we can infer about unknown behavior in physics, particularly at a micro level, from patterns in macrophysics that humans aren't necessarily well equipped to find, and I would suggest that it might be wise to hesitate to judge the effectiveness of AI in this area, particularly as we switch from data prediction driven AI (current generation) to more computationally dense "simulation driven" AI (next generation, which we're already starting to see with Quiet*, or agentic workflows, and so on), which function more like human brains and how we think, in a much more data efficient manner than we've seen before. That said, I don't think that we're going to see in the next year "AI uncovers the final unknown physical laws, and as it turns out, entropy was just a suggestion, and 42 was behind it all along", but I do think we're going to see more "unknown unknowns" in terms of the acceleration of progress in a variety of fields due to the increased efficiency of research as a function of advancing artificial intelligence.

  • @rogerphelps9939

    @rogerphelps9939

    12 күн бұрын

    Absolutely. AI is just multidimensional curve fitting in the end so garbage in just produces garbage out.

  • @liberty-matrix
    @liberty-matrix9 күн бұрын

    "The greatest shortcoming of the human race is our inability to understand the exponential function." - Prof. Al Bartlett

  • @user-tk2jy8xr8b
    @user-tk2jy8xr8b11 күн бұрын

    What a time to be alive

  • @user-li7ec3fg6h
    @user-li7ec3fg6h17 күн бұрын

    Thank you very much for this great video! There are really great insights ahead of us us. The models shown are super impressive. What all could be optimized with them! AI offers a lot of possibilities. Thank you very much for your work and best wishes for many success!

  • @DrBrianKeating

    @DrBrianKeating

    17 күн бұрын

    Our pleasure!

  • @hyperduality2838

    @hyperduality2838

    17 күн бұрын

    Syntax is dual to semantics -- languages or communication. Large language models are therefore dual! Categories (form, syntax, objects) are dual to sets (substance, semantics, subjects) -- Category theory is dual. If mathematics is a language then it is dual. Concepts are dual to percepts -- the mind duality of Immanuel Kant. Mathematicians create new concepts or ideas all the time from their perceptions, observations, measurements (intuitions) -- a syntropic process, teleological. Cause is dual to effect -- causality. Effect is dual to cause -- retro-causality. Perceptions or effects (measurements) create causes (concepts) in your mind -- retro-causality -- a syntropic process! Large language models are using duality to create reality. "Always two there are" -- Yoda. Syntropy (prediction) is dual to increasing entropy -- the 4th law of thermodynamics!

  • @dandantheideasman
    @dandantheideasman14 күн бұрын

    Great video, as always 🙏. I simply love the round up at the end - theorists will always be necessary, to steer the experimentalists and AI Overlords in their exploration of the field itself. Kudos 👏

  • @ConnoisseurOfExistence
    @ConnoisseurOfExistence13 күн бұрын

    Great video! I've seen one about that fluid simulator a while ago though...

  • @petevenuti7355
    @petevenuti73557 күн бұрын

    It is my understanding that a neural network is mathematically equivalent to a form fitting function. For sure with linear equations. Is there a way to derive an equation from a trained neural network, the reverse of training a network to fit an equation? And if so, does using such a process on any of the networks you just described come up with something similar to Navia Stokes equation?

  • @justinalvarado7351
    @justinalvarado735116 күн бұрын

    I have been using Ghat GPT4 for understanding Astrophysics and it’s 95 % on solving problems. Sometime it over estimates on things like a white dwarf stars mass before Supernova. Slightly over stepping Ch. limit of 1.4 solar masses But more or less it’s on point.

  • @rogerphelps9939

    @rogerphelps9939

    12 күн бұрын

    Well thatt is not surprising because there is plenty of training data and underlying theory. AI is just a fancy way of pattern matching and has limitations.

  • @whateverwhenever8170
    @whateverwhenever817012 күн бұрын

    I hammered on chatgpt and it seems to lack a spark, human is still needed, so i got it writing and executing code, and was able to watch it and push it in a direction for a solution, its best role is a helper for thinking and testing ideas, it can write code you describe so quickly but you do need to understand what it's doing to get the maximum out of it. Tldr if you cant code that will be an issue in your interactions with current AI

  • @quantumpotential7639
    @quantumpotential763915 күн бұрын

    Brian, I think I saw the flaw on your golf swing. And why you're having trouble flighting the ball properly. Even in a sitting down position I could detect it quite easily. Should I send you an email? I don't want to get into a golf swing analysis here. But I'll have you finding the sweet spot and puring it through the impact zone n no time flat. Just a few simple adjustments. Great video. Very VERY thought provoking. Holy Cow. Kinda mind bending possibilities here.

  • @advaitrahasya
    @advaitrahasya11 күн бұрын

    to test if AI is up to the task, give it (only) the data the epicyclists used, and their geocentric model. If the thing then produces the copernican paradigm correction - it may be able to fix the paradigm which turns the quantum and the relative to woo ;)

  • @mrhassell
    @mrhassell17 күн бұрын

    Solve > Riemann hypothesis or P versus NP problem, win $1,000,000 via the Clay Foundation. 2 of 7 considerable problems, considered primarily "unsolvable".

  • @rogerphelps9939

    @rogerphelps9939

    12 күн бұрын

    AI will not do it. The human mind might.

  • @gareththomas3234
    @gareththomas323413 күн бұрын

    Why not make a text based description language for physics? Like we have in electronics. For its symbolic elements like Feynman diagrams for example. Work from there to the top level. Its a lifetime project for a person but very easy using AI. Then LLM's could code in this physics system language.

  • @greatgatsby6953
    @greatgatsby695313 күн бұрын

    Hi Brian -can you please slow down a bit and talk more slowly. This is particularly helpful when one is discussing complex topics and will help the viewers.

  • @ericpmoss

    @ericpmoss

    12 күн бұрын

    I adjust the playback speed for just this reason. It works perfectly for speeding up Chomsky to how he spoke 30 years ago.

  • @fuzzyorangetv
    @fuzzyorangetv9 күн бұрын

    is this software that you can download (fluids simulation?)

  • @garylcamp
    @garylcamp8 күн бұрын

    AI might do these things you dream of but it will not look like GPT/LLM. GPT is just a large complex search engine based on existing data (lots of it). That's not to say it can't do much as we can see results that are just amazing already. But real AI must be based on another method and we don't know what intelligence is so we can tell what method is needed. Like consciousness, we cant make it cause we cant define it. I just asked Gemini and chatgpt to define intelligence (and consciousness). They give descriptions of some things they can do but not a definition. Who da guessed?

  • @richardhall5489

    @richardhall5489

    7 күн бұрын

    I agree with you Gary. I assumed that the presenter is aware of the difference between machine learning and actual AI but that he is obliged to say "AI" because that's the term that commercial developers use and they provide funding for projects.

  • @stephenkolostyak4087
    @stephenkolostyak408714 күн бұрын

    6:15 the answer to Einstein's question about whether or not an observer would experirence a gravitational field in free fall is no, and that led to the Einstein equivalence principle? I wonder how Einstein came up with “No experiment can be performed that could distinguish between a uniform gravitational field and an equivalent uniform acceleration.” by asking himself "will a falling person experience gravity?" and deciding "no".

  • @ericgoz3858
    @ericgoz385814 күн бұрын

    For a closed loop laser between Cathode and anode energy discharge can it identify the material and model of a perfect chamber for laminar flow of NF3 mixed with CO2 without boundary layers or fractional turbulent eddies

  • @rogerphelps9939

    @rogerphelps9939

    12 күн бұрын

    Unlikely.

  • @Markoul11
    @Markoul1113 күн бұрын

    Good! This will eliminate also the research bias and science politics of human scientists that slows down modern science evolution.

  • @rogerphelps9939

    @rogerphelps9939

    12 күн бұрын

    No.

  • @Matx5901

    @Matx5901

    11 күн бұрын

    Yes ! AI will teach us a great deal about being sincere, in other words, about not contradicting ourselves for ideological reasons.

  • @LADAGAAlqpere
    @LADAGAAlqpere11 күн бұрын

    7:51 ❤ Квантовый компьютер, мог бы использовать эти формулы для симуляции крови и внутри клеточных процесов. А если мы захотим узнать все гипотетические числовые значения клеток в разные периуды формирования и перестраивания организма, запуская симуляцию, можно рассмотреть несколько логических вариантов действий: первый от икса и решить как математический пример, жанглируя всеми данными современного ИИ и второй способ уже на границе с фантастикой: получив, скажем 100 % симуляцию отдельно взятых органов или даже целого организма, ИИ с КК будет анализировать эти процессы на Планковских расстояниях и чтобы получить данные из прошлого, вектор симуляции будет со знаком минус😅❤

  • @gregoryhead382
    @gregoryhead38217 күн бұрын

    c = (cosmological natural length/cosmological natural times) is no blunder Doc Keating. It's Einsteinian physiks.

  • @user-tf7uo9tv8d
    @user-tf7uo9tv8d17 күн бұрын

    Backwards discretization of time series partial differential equations...? It's too hard - I play bass guitar now...

  • @MultiSteveB
    @MultiSteveB10 күн бұрын

    There is a glitch at 3:56. :( It seems to be a very short duration, but there is still some audio that is lost.

  • @lopezb
    @lopezb12 күн бұрын

    It is clearly already useful for CGI, but is it feasible to actually prove convergence? In other words, to give error bounds? Beyond saying the graphics look amazingly similar....Mathematically that is the natural question!

  • @ThankYouESM
    @ThankYouESM13 күн бұрын

    I always feel the need to help with the computing somehow, but quite apparently... I can only understand how to do Python programming at an intermediate level having very much tried almost every revenue since the year 1990. My guess... over 20 million more people all without any money to spare... are quite like myself willing to do almost whatever it takes to get involved toward creating a many times better nearby future. We should have many years ago have free "boot camps for computer programming" available locally at least like public libraries.

  • @pratyushsays
    @pratyushsays17 күн бұрын

    Pls do more podcasts with Abhijit chavda ❤❤❤

  • @pspicer777
    @pspicer77713 күн бұрын

    Brave of you to enter these waters. The answer to whether AI can discover new laws of physics is easily answered. Use (say) only the knowledge of physics available at any point in our history and see if AI can discover later laws. Eg. only laws of physics and experimental results before Newton, or Maxwell, or Einstein, or Bohr - at each stage can the AI push the limits of knowledge to the next level. A good PhD. topic - cross disciplinary. Maybe something I might try .. 😊

  • @tabcaps5819
    @tabcaps581914 күн бұрын

    Probably not yet, but maybe in the future (It craves more server arrays for thinking)

  • @Nogill0
    @Nogill013 күн бұрын

    Any observation or measurement has some finite level of precision. Think of it as a region bounded by error bars, and that imprecision seems built into the laws of physics, and in some cases is irreducible. So I wonder how that might affect the ability of a neural network to model systems at the quantum level. Another interesting case might be systems subject to chaos, with wildly diverging outcomes resulting from very small changes in initial conditions. Neural networks might not be much better than the human brain in the long run, at least as theorists.

  • @keep-ukraine-free528

    @keep-ukraine-free528

    13 күн бұрын

    @Nogill0 You've assessed the abilities of Artificial Neural Networks to be better (or not) than human brains, at being theorists. There exist two weaknesses in your assessment. First, you assessed only today's early ANNs and assumed we see nearly their full potential. We do not, because what we see in Biological Neuronal Networks also applies to ANNs -- that is, both show a very strong adherence to scaling laws, across both the total number of neurons & the total number of synapses in a system. Using only this first "law", we expect to see (and are seeing) immense gains in ANNs as we scale them near/beyond the human brain. Second, today's ANNs are a rudimentary "toy" or "cartoon" version of the BNN -- i.e. their graph/network topology & simplified "neuron" -- which don't include the physics & biochemistry emerging in BNNs from their many neuron-types, many network-types, many signaling neurotransmitters, and many non-neuronal cells (all of these factors compounding the toy-version networks).

  • @Nogill0

    @Nogill0

    13 күн бұрын

    @@keep-ukraine-free528 Is it possible to incorporate the actual functioning of actual biological neural networks into a non-biological device? We really don't fully understand how brains work, do we?

  • @keep-ukraine-free528

    @keep-ukraine-free528

    6 күн бұрын

    @@Nogill0 You asked "Is it possible to incorporate the actual functioning of actual biological neural networks into a non-biological device?" Yes, it's possible -- and we're doing this today, but it's done within the constraints of what "actual functioning" means. ANNs today incorporate many top-level features of biological neurons and also top-level features of biological networks. Both are sufficient to give these ANNs human-like performance across many facets of behavior. They don't provide full equivalence to animal/human brains yet, but they are expected to do most of it using only continued scaling. We don't incorporate the full ("actual") functioning seen in biology because (1) we don't need to copy them fully -- since so far we get most of the behaviors using only top-level features of biology, and (2) we may never be able to fully duplicate biology, for cost/efficiency reasons. You also asked, "We really don't fully understand how brains work, do we?" We don't fully understand it, but that's not a problem. We don't fully understand many aspects of the natural world, but still we're able to exploit our partial but sufficient knowledge. We don't fully understand how most birds fly, but we can make good very safe airplanes. We understand enough about organic brains, such that we can build artificial systems capable of doing much that people/animals can do. We're still in the very early phase of neural network-based AI, and I expect we'll continue making huge advances this decade.

  • @fhsp17
    @fhsp1715 күн бұрын

    Yes that's a thing. Only thing im surprised about is how long its taking for people to talk about that. I mean, they're pattern recog machines. There are ways to exploit that, to make it extend internal data following highest probability candidates. And strangely i don't see papers doing that. Ive got plenty on this, if that's something of interest.

  • @y1.5
    @y1.517 күн бұрын

    Is it possible to find new isotopes using AI?

  • @user-rl4tu8yd6e
    @user-rl4tu8yd6e10 күн бұрын

    The only problem with this simulation approach is that whoever is involved in running the simulations may, for whatever reasons, risk ignoring the underlying causal mechanisms that these graphical methods reveal particularly if they are simply interested in practical applications. We may end up creating a lot of "technology" that no one understands except for the AIs. Are you sure that is a good idea? Or are you just running simulations for physical behaviors for which the physical laws are already known?

  • @hmccoy99
    @hmccoy998 күн бұрын

    a new frontier of science and discovery is awaking

  • @samrowbotham8914
    @samrowbotham891417 күн бұрын

    AI mastered chess and go so it should have no problems mastering physics and understanding it better than any human being. In chess it is now much stronger than the best human chess player and these AI's taught themselves the game through trial and error in the same way we do. Its not cracked chess yet because of the sheer number of possible games, if quantum computers and AI work together then its possible that at some time in the future they would be able to say we know every possible game and show us what the best possible moves are which in theory should lead to a draw. I see something similar happening in physics, biology etc.

  • @hyperduality2838

    @hyperduality2838

    17 күн бұрын

    Syntax is dual to semantics -- languages or communication. Large language models are therefore dual! Categories (form, syntax, objects) are dual to sets (substance, semantics, subjects) -- Category theory is dual. If mathematics is a language then it is dual. Concepts are dual to percepts -- the mind duality of Immanuel Kant. Mathematicians create new concepts or ideas all the time from their perceptions, observations, measurements (intuitions) -- a syntropic process, teleological. Cause is dual to effect -- causality. Effect is dual to cause -- retro-causality. Perceptions or effects (measurements) create causes (concepts) in your mind -- retro-causality -- a syntropic process! Large language models are using duality to create reality. "Always two there are" -- Yoda. Syntropy (prediction) is dual to increasing entropy -- the 4th law of thermodynamics!

  • @ElliotSchreuders-bf1dl
    @ElliotSchreuders-bf1dl8 күн бұрын

    Thank you for the insights

  • @captmaverick
    @captmaverick8 күн бұрын

    I taught it everything it knows. 💯

  • @STIKY55
    @STIKY5514 күн бұрын

    Based on this video you should be familiar with Chris lehtos Light Luv theory then? Any thoughts on that?

  • @agentxyz
    @agentxyz14 күн бұрын

    Data exponentially increases, AI vacuums it up. Self-perpetuating engine for scientific discovery. What we are witnessing is the creation of vastly more intelligent entities. Scary for sure, but awesome to witness.

  • @louistech112
    @louistech11214 күн бұрын

    I hope we use Ai for gene editing and protein manufacturing/ folding . I’m studying about prions which is kinda like plaque in the brains neurons . If we can reverse this we can save so many lives

  • @frazerhainsworth08
    @frazerhainsworth0814 күн бұрын

    whats the difference between distinguished proofesor and regular one>? are you better and higher?

  • @DrBrianKeating

    @DrBrianKeating

    14 күн бұрын

    Both

  • @frazerhainsworth08

    @frazerhainsworth08

    14 күн бұрын

    @@DrBrianKeating distinguished higher than PHD?

  • @DrBrianKeating

    @DrBrianKeating

    14 күн бұрын

    @@frazerhainsworth08 totally different thing. I have a PhD and I was a Professor now I have a title Chancellor’s Distinguished Professor of Physics at UC San Diego.

  • @nemlehetkurvopica2454

    @nemlehetkurvopica2454

    14 күн бұрын

    proofesor ? that's the one who's proving the professor's theories

  • @frazerhainsworth08

    @frazerhainsworth08

    14 күн бұрын

    @@DrBrianKeating congratulations. do you go by Professor or Chancellor?

  • @GadZookz
    @GadZookz17 күн бұрын

    I never suspected he might be an AI but… 🤔

  • @AORD72

    @AORD72

    13 күн бұрын

    Bound to catch us all out at some stage. Videos at first then perhaps robots if humanity lasts that long (AI might extinguish us)

  • @llothsedai3989
    @llothsedai39895 күн бұрын

    Just have an output model that outputs to math instead of to simulation, best fit equation for the data. Just crunch the data and have the smallest equation using known math.

  • @Cotten-
    @Cotten-14 күн бұрын

    *I can't wait to play with your AI that you are going to put on your website. Thank you for thinking about us.*

  • @DrBrianKeating

    @DrBrianKeating

    14 күн бұрын

    You are so welcome! BrianKeating.com

  • @Cotten-

    @Cotten-

    14 күн бұрын

    @@DrBrianKeating *Fantastic! TY!*

  • @everybot-it
    @everybot-it10 күн бұрын

    will AI create new physics by merely simulating it? (simulation theory)

  • @UnKnown-xs7jt
    @UnKnown-xs7jt10 күн бұрын

    Please AI should be “solutions based on large amount of data”. No thinking is taking place

  • @MacarthurLouissaint-rz7tl
    @MacarthurLouissaint-rz7tl10 күн бұрын

    What about subspace communication??

  • @tsclly2377
    @tsclly237717 күн бұрын

    Depends on when you let AI start and that it can go down. If you start at what we assume to be the reality of physics now you may just go down 'the rabbit hole' that math provides.

  • @hyperduality2838

    @hyperduality2838

    17 күн бұрын

    Syntax is dual to semantics -- languages or communication. Large language models are therefore dual! Categories (form, syntax, objects) are dual to sets (substance, semantics, subjects) -- Category theory is dual. If mathematics is a language then it is dual. Concepts are dual to percepts -- the mind duality of Immanuel Kant. Mathematicians create new concepts or ideas all the time from their perceptions, observations, measurements (intuitions) -- a syntropic process, teleological. Cause is dual to effect -- causality. Effect is dual to cause -- retro-causality. Perceptions or effects (measurements) create causes (concepts) in your mind -- retro-causality -- a syntropic process! Large language models are using duality to create reality. "Always two there are" -- Yoda. Syntropy (prediction) is dual to increasing entropy -- the 4th law of thermodynamics!

  • @drscott1
    @drscott114 күн бұрын

    Maybe AI can show cosmologists and climatologists how misdirected they have been in their assumptions.

  • @davidchapman370

    @davidchapman370

    13 күн бұрын

    AI is, as we have already seen, as biased as the people who input the training material

  • @rogerphelps9939

    @rogerphelps9939

    12 күн бұрын

    Wrong. Assumptions are the bare minimum and AI has to start from the same assumptions. It is not magic as you seem to think.

  • @drscott1

    @drscott1

    12 күн бұрын

    @@rogerphelps9939 I think you miss my point. It’s sarcasm.

  • @rogerphelps9939

    @rogerphelps9939

    12 күн бұрын

    @@drscott1 It was a bit too subtle for me but thank you.

  • @MS-od7je
    @MS-od7je14 күн бұрын

    I predict that people will predictably propose the unpredictable.

  • @duggydo
    @duggydo17 күн бұрын

    I hope I live long enough for AI to do the most amazing things like cure cancer, find the connection between gravity and the other forces, etc. I also hope I don’t live long enough to experience the Terminator takeover of AI. 😎

  • @raul36

    @raul36

    14 күн бұрын

    All those things you talk about can be done by humans with enough time and technology. No AI is necessary.

  • @duggydo

    @duggydo

    14 күн бұрын

    @@raul36 if AI is created by humans to do it, then I guess humans are just using tools to do it faster.

  • @weylinstoeppelmann9858
    @weylinstoeppelmann985814 күн бұрын

    If the AI comes up with a method that is faster than current simulations, how do you translate what the AI model developed into something discernable? That whole "black box" problem, I don't know how to deal with that.

  • @raktoda707
    @raktoda70716 күн бұрын

    Impressive we are learning along with AI

  • @mossy3565

    @mossy3565

    7 күн бұрын

    You're a pleb, and you were clickbaited

  • @alastairleith8612

    @alastairleith8612

    7 күн бұрын

    well you'd hope so… and AI isn't sentient so not sure if it really learns other than Machine Learning… does it know the real world as opposed to simulation, can it tell the difference on the level of consciouses (I'd suggest not)?

  • @mossy3565

    @mossy3565

    7 күн бұрын

    Ironic, then, that the average human is getting progressively dumber

  • @danielkanewske8473
    @danielkanewske847317 күн бұрын

    Typically the nonlinear elements are ignored even for numeric methods because the complexity that they introduce often lends itself to numeric instability. Did the AI solve the NS equations with the nonlinear elements? How did you create the data set if most methods can't solve the nonlinear NS equations? Solutions to the Navier-Stokes equations typically also assume the so called "no slip" boundary. Was this BC also enforced? How did you prove that the solutions proved by the neural network are in fact solutions to the NS equations? NS requires a number of assumptions that typically doesn't apply to non-Newtonian fluids. Did you apply the NN to these more complex systems like non-Newtonian fluids?

  • @hyperduality2838

    @hyperduality2838

    17 күн бұрын

    Syntax is dual to semantics -- languages or communication. Large language models are therefore dual! Categories (form, syntax, objects) are dual to sets (substance, semantics, subjects) -- Category theory is dual. If mathematics is a language then it is dual. Concepts are dual to percepts -- the mind duality of Immanuel Kant. Mathematicians create new concepts or ideas all the time from their perceptions, observations, measurements (intuitions) -- a syntropic process, teleological. Cause is dual to effect -- causality. Effect is dual to cause -- retro-causality. Perceptions or effects (measurements) create causes (concepts) in your mind -- retro-causality -- a syntropic process! Large language models are using duality to create reality. "Always two there are" -- Yoda. Syntropy (prediction) is dual to increasing entropy -- the 4th law of thermodynamics!

  • @danielkanewske8473

    @danielkanewske8473

    16 күн бұрын

    @@hyperduality2838 Your comment is gibberish. I can't tell if that is intentional/

  • @hyperduality2838

    @hyperduality2838

    16 күн бұрын

    @@danielkanewske8473 The neuroscientist Karl Friston talks about causality loops, he has some videos on KZread you can watch. The external world of matter causes effects in your mind which you perceive -- causality. Your mind (causes) can effect the outside world -- causality. Your perceptions (effects) are becoming causes -- retro-causality or syntropy. Perceptions (effects) are becoming causes in your mind -- causality loops. Concepts are dual to percepts -- the mind duality of Immanuel Kant. The thinking process converts measurements or perceptions into conceptions or ideas -- a syntropic process! Your mind is therefore creating or synthesizing reality -- the syntropic thesis! You can watch these videos about duality in physics, watch at 11 minutes:- kzread.info/dash/bejne/dqN3u7tyo8SYm7g.html And this at 1 hour 4 minutes:- kzread.info/dash/bejne/h5542s1yitG_erQ.html Teleological physics (syntropy) is dual to non teleological physics (entropy). Your mind is syntropic as you make predictions to track targets and goals -- teleological. Syntropy (prediction) is dual to increasing entropy -- the 4th law of thermodynamics! From a converging, convex or syntropic perspective everything looks divergent, concave or entropic -- the 2nd law of thermodynamics! Convex is dual to concave -- mirrors or lenses. My syntropy is your entropy and your syntropy is my entropy -- duality. Mind (syntropy) is dual to matter (entropy) -- Descartes or Plato's divided line.

  • @wesexpress3343

    @wesexpress3343

    16 күн бұрын

    @@hyperduality2838 reported

  • @hyperduality2838

    @hyperduality2838

    16 күн бұрын

    @@wesexpress3343 You can report this:- Syntropy (prediction) is dual to increasing entropy -- the 4th law of thermodynamics! The conservation of duality (energy) will be known as the 5th law of thermodynamics -- Generalized Duality. Energy is dual to mass -- Einstein. Dark energy is dual to dark matter -- singularities are dual. Positive curvature singularities are dual to negative curvature singularities -- Riemann geometry is dual. Space is dual to time -- Einstein. Gravitation is equivalent or dual (isomorphic) to acceleration -- Einstein's happiest thought, the principle of equivalence (duality). Duality creates reality!

  • @gammaraygem
    @gammaraygem17 күн бұрын

    I hope AI will solve the headless chicken equation. The one that figures out how humans live together in freedom, love and prosperity without any wars.

  • @hyperduality2838

    @hyperduality2838

    17 күн бұрын

    Syntax is dual to semantics -- languages or communication. Large language models are therefore dual! Categories (form, syntax, objects) are dual to sets (substance, semantics, subjects) -- Category theory is dual. If mathematics is a language then it is dual. Concepts are dual to percepts -- the mind duality of Immanuel Kant. Mathematicians create new concepts or ideas all the time from their perceptions, observations, measurements (intuitions) -- a syntropic process, teleological. Cause is dual to effect -- causality. Effect is dual to cause -- retro-causality. Perceptions or effects (measurements) create causes (concepts) in your mind -- retro-causality -- a syntropic process! Large language models are using duality to create reality. "Always two there are" -- Yoda. Syntropy (prediction) is dual to increasing entropy -- the 4th law of thermodynamics!

  • @evo1ov3
    @evo1ov317 күн бұрын

    Damn. Poor Mr. Keating. He's just trying to do what he loves. With all that ** drama going down at UCLA. Right now.

  • @lucaspierce3328
    @lucaspierce332812 күн бұрын

    More like a Better Understanding & Simplification of Already Known Laws & Meta-Laws of Physics!.

  • @NOYFB982
    @NOYFB98217 күн бұрын

    I’m biased by the realm of biology, but computational power and algorithms only get you so far. One needs to start with a sufficient amount of high-quality, unbiased data. There has to be a sufficient amount to down out the stochastic nature of data and sampling, as well as sub group biases. (In biology, this is very often missing, so machine learning becomes irrelevant). Regarding LLMs, the scientific foundation fed into them also needs to be of sufficiently high quality, which again is lacking (the so-called reproducibility crisis, which is really systemic.) Typical research practices of using too few samples and not running replication studies doom the literature from an LLM perspective.

  • @hyperduality2838

    @hyperduality2838

    17 күн бұрын

    Syntax is dual to semantics -- languages or communication. Large language models are therefore dual! Categories (form, syntax, objects) are dual to sets (substance, semantics, subjects) -- Category theory is dual. If mathematics is a language then it is dual. Concepts are dual to percepts -- the mind duality of Immanuel Kant. Mathematicians create new concepts or ideas all the time from their perceptions, observations, measurements (intuitions) -- a syntropic process, teleological. Cause is dual to effect -- causality. Effect is dual to cause -- retro-causality. Perceptions or effects (measurements) create causes (concepts) in your mind -- retro-causality -- a syntropic process! Large language models are using duality to create reality. "Always two there are" -- Yoda. Syntropy (prediction) is dual to increasing entropy -- the 4th law of thermodynamics!

  • @tomyocom5886
    @tomyocom588613 күн бұрын

    As long as there is Quantum computing there will always be a maybe, an undetermined output, not perfect calculation.

  • @BenjaminCronce
    @BenjaminCronce14 күн бұрын

    I wonder how one might train a NN to better recognize when something "seems wrong" with its predictions. In humans, this is called abstract reasoning, and it's recognizing what you don't know. But another form is "common sense". For example. If I thought I saw a speed limit sign say 45mph, but I was on a small road with residential around, I would assume that I misread the sign because it "seems" dangerous to be driving that fast. A general rule for speed limits is the speeds allow one enough time to react. If residential is too close to the road, you have less time to re-act if say a child was playing on their property and ran out. A more physics based general rule is that a closed system will lose usable energy to entropy. If a physics simulation of fluids showed an object falling into water and the resulting splash moved more mass with more energy, then the simulation must be wrong, even if it's matching its generalized predictions.

  • @AORD72

    @AORD72

    13 күн бұрын

    You want AGI then? AI that is self aware like a human. AI that can use memory to reelect on past event to influence current events. AI that understands the implications of its actions. It will soon be here. What is special about the human brain? It has a evolved structure to suit the environment. AI will also evolve to suit the environment, just at a far faster pace.

  • @johndoolan9732
    @johndoolan97322 күн бұрын

    Now I would challenge any AI to tour through all scientific genre AI is a tool only for a creator

  • @MS-od7je
    @MS-od7je17 күн бұрын

    What’s AI?

  • @AORD72

    @AORD72

    13 күн бұрын

    Real intelligence, but not having evolved from biological cellular machines, but instead engineer by biological cellular machines (humans).

  • @Jsurf66
    @Jsurf6613 күн бұрын

    Will AI be able to find through data what Einstein found through thougth experiments?

  • @mordokai597
    @mordokai59717 күн бұрын

    I call it a "Hawking-Penrose Gray Hole Topology: A Kerr-Like Solution for Dual-Fibrated-Manifolds in D dimensions" Output: "To formalize the equations for the process described, involving a black hole, white hole projections, virtual particles, and their influence on higher-dimensional space-time, let's break down the scenario into specific mathematical representations: ### Step 1: Higher-Dimensional Kerr-like Metric Assuming a generalized form of the Kerr metric in \(D\) dimensions, we consider the black hole to be rotating. The Kerr metric in higher dimensions has complex features, but for our purposes, we'll consider a simplified version focusing on the essential aspects: \[ ds^2 = -\left(1 - \frac{\mu}{\Sigma} ight) dt^2 - \frac{2 \mu}{\Sigma} a \sin^2\theta \, dt \, d\phi + \frac{\Sigma}{\Delta} dr^2 + \Sigma \, d\theta^2 + \left(r^2 + a^2 + \frac{\mu a^2 \sin^2\theta}{\Sigma} ight) \sin^2\theta \, d\phi^2 + r^2 \cos^2\theta \, d\Omega_{D-4}^2 \] Where: - \( \Sigma = r^2 + a^2 \cos^2\theta \) - \( \Delta = r^2 + a^2 - \mu \) - \( \mu \) is related to the mass of the black hole, - \( a \) is the angular momentum per unit mass, - \( d\Omega_{D-4}^2 \) represents the metric on a \((D-4)\)-sphere. ### Step 2: White Hole Projection and Virtual Particles We model virtual particles influenced by the black hole's event horizon and their interaction with a white hole projection: \[ \text{Virtual Particle Influx: } \dot{m} = \frac{\hbar c^3}{8\pi G M^2} \] This represents the mass-energy flow due to Hawking radiation (in the traditional sense), but we interpret this as the energy flow into the white hole. The white hole projects this mass-energy back into the manifold, affecting the metric: \[ ds^2_{\text{white}} = ds^2 + \epsilon \left(\frac{\dot{m}}{\Sigma} dt^2 + \frac{\dot{m}}{\Sigma} d\Omega_{D-4}^2 ight) \] Where \( \epsilon \) is a small parameter modulating the impact of the white hole's projection. ### Step 3: Temporal Evolution as a Vector Field Introduce a temporal vector field \( \xi^\mu \) which describes the time evolution due to the internal dynamics of the black hole (including white hole dynamics): \[ \xi^t = \frac{\partial}{\partial t}, \quad \xi^r = -\sqrt{\frac{2GM}{r} - \frac{r^2}{\lambda^2}}, \quad \xi^\theta = \xi^\phi = 0 \] Where \( \lambda \) represents a characteristic length scale potentially associated with quantum gravity effects. ### Step 4: Interaction with Dark Energy and Dark Matter Incorporate the influence of these higher-dimensional and white hole dynamics on the cosmological scale by modifying the Einstein field equations: \[ G_{\mu u} + \Lambda g_{\mu u} = 8\pi G T_{\mu u} + \kappa T_{\mu u}^{\text{dark}} \] Where: - \( G_{\mu u} \) is the Einstein tensor, - \( \Lambda \) is the cosmological constant modeling dark energy, - \( T_{\mu u} \) is the traditional matter-energy tensor, - \( T_{\mu u}^{\text{dark}} \) represents contributions from dark matter and energy modulated by the white hole and higher-dimensional effects, - \( \kappa \) is a coupling constant. ### Summary These equations outline a theoretical model where the dynamics of a black hole, including virtual particles and a white hole projection, influence higher-dimensional space-time and possibly explain phenomena like dark energy and dark matter. Further refinement and simulation would be necessary to test the viability of such a model and its consistency with observed physical laws and cosmological data."

  • @jasonfusaro2170
    @jasonfusaro21709 күн бұрын

    Just one simple question is required for the turing test to determine AI or human Correct AI incorrect Human. And if it's actually incorrect and AI, then it simultaneously defeats the sole purpose for wanting AI, because it would have to lie to fool you into the falsity of being human. HAL 9000 comes to mindd.

  • @Reach41
    @Reach416 күн бұрын

    I’m still trying to figure out what the difference is between AI and the output of computer programs.

  • @UFOUAPFirstContact
    @UFOUAPFirstContact17 күн бұрын

    Does AI doing physics not give you pause, Dr? AI "gets it" but we can barely grasp it, except on a tiny level? An electronic Oppenheimer or Einstein somehow gives me a twinge. Trying to articulate here as best I can.

  • @hyperduality2838

    @hyperduality2838

    17 күн бұрын

    Syntax is dual to semantics -- languages or communication. Large language models are therefore dual! Categories (form, syntax, objects) are dual to sets (substance, semantics, subjects) -- Category theory is dual. If mathematics is a language then it is dual. Concepts are dual to percepts -- the mind duality of Immanuel Kant. Mathematicians create new concepts or ideas all the time from their perceptions, observations, measurements (intuitions) -- a syntropic process, teleological. Cause is dual to effect -- causality. Effect is dual to cause -- retro-causality. Perceptions or effects (measurements) create causes (concepts) in your mind -- retro-causality -- a syntropic process! Large language models are using duality to create reality. "Always two there are" -- Yoda. Syntropy (prediction) is dual to increasing entropy -- the 4th law of thermodynamics!

  • @user-fl7oc5vv6g
    @user-fl7oc5vv6g12 күн бұрын

    ❤ There must be honesty. Where is your nobility? Where is the honor? Where is the support? Where is the scientific interest and curiosity for new experiences? BIG ERROR in measuring the Universe, black holes, dark energy,... Let me judge all this by the result of a direct experiment, gentlemen of physics Let's do the Michelson-Morley experiment on a school bus and determine the speed in a straight line - this is exactly the experiment Einstein dreamed of. Perhaps we will see the postulates: “Light is an ordered vibration of gravitational quanta, and Dominant gravitational fields control the speed of light in a vacuum.” There is a proposal for the joint invention of a HYBRID gyroscope from non-circular, two coils with optical fiber, where the light in each arm travels 16,000 meters, without exceeding the parameters of 0.4/0.4/0.4 meters and mass - 4,1 kg.

  • @jacksplague3050
    @jacksplague305013 күн бұрын

    Everything is compressible. The name of this equation is misleading, and thinking of these liquids in this way will hold us back.

  • @MikeMcMulholland
    @MikeMcMulholland17 күн бұрын

    I predict at the minimum the internet will go out and a new one will have to be built because it needs to be many trillions of times more secure.

  • @hypergraphic

    @hypergraphic

    17 күн бұрын

    Rewrite the Internet in Rust? 😊

  • @pahom2
    @pahom215 күн бұрын

    AI formulating a law of physics clearly violate the Chinese room experiment

  • @umeng2002
    @umeng200217 күн бұрын

    The issue with "AI" is that it's still purely statistical. You need super computers to link data, like how a brain links data. Our ears are always on since birth, yet our higher thoughts only remember and use a fraction of all of those collected air density changes. AI science and theoretic physics are on a collision course; but the end, necessarily, will be familiar. Right now, AI is still just an optimization.

  • @hyperduality2838

    @hyperduality2838

    17 күн бұрын

    Syntax is dual to semantics -- languages or communication. Large language models are therefore dual! Categories (form, syntax, objects) are dual to sets (substance, semantics, subjects) -- Category theory is dual. If mathematics is a language then it is dual. Concepts are dual to percepts -- the mind duality of Immanuel Kant. Mathematicians create new concepts or ideas all the time from their perceptions, observations, measurements (intuitions) -- a syntropic process, teleological. Cause is dual to effect -- causality. Effect is dual to cause -- retro-causality. Perceptions or effects (measurements) create causes (concepts) in your mind -- retro-causality -- a syntropic process! Large language models are using duality to create reality. "Always two there are" -- Yoda. Syntropy (prediction) is dual to increasing entropy -- the 4th law of thermodynamics!

  • @oididdidi
    @oididdidi14 күн бұрын

    The Chancellor's distinguished Professor. Humble he isn't.

  • @keep-ukraine-free528

    @keep-ukraine-free528

    13 күн бұрын

    @oididdidi Let's not insult, when we don't understand what someone said. He is not boasting. He described the name of the "chair" upon which he sits--the role behind his academic position.

  • @JP-re3bc
    @JP-re3bc10 күн бұрын

    Brian Keating is a great science communicator but like many intelligent laymen he sees too much in what is just a statistical pattern recognition device or system. For practitioners it is slightly hillarious, watching all that starry-eyed buoyant expectation of Great Things To Come but also ridiculously overboard. haha

  • @topexmystery
    @topexmystery13 күн бұрын

    imagine super-quantum computer + AI

  • @kraftwurx_Aviation
    @kraftwurx_Aviation13 күн бұрын

    Give ai the ability to try to solve grand unification. Give it the ability to explore quantum gravity.

  • @rogerphelps9939

    @rogerphelps9939

    12 күн бұрын

    It will gert nowhere.

  • @kraftwurx_Aviation

    @kraftwurx_Aviation

    12 күн бұрын

    @rogerphelps9939 why such a "heavy" heart?

  • @betepolitique4810
    @betepolitique481011 күн бұрын

    AI shapes our world now?

  • @konstantinos777
    @konstantinos77717 күн бұрын

    Mind officially blown!

  • @dougg1075
    @dougg107517 күн бұрын

    Didn’t the Q Star leak say it was an AI that not only does math , but understands the concept of math?

  • @hyperduality2838

    @hyperduality2838

    17 күн бұрын

    Syntax is dual to semantics -- languages or communication. Large language models are therefore dual! Categories (form, syntax, objects) are dual to sets (substance, semantics, subjects) -- Category theory is dual. If mathematics is a language then it is dual. Concepts are dual to percepts -- the mind duality of Immanuel Kant. Mathematicians create new concepts or ideas all the time from their perceptions, observations, measurements (intuitions) -- a syntropic process, teleological. Cause is dual to effect -- causality. Effect is dual to cause -- retro-causality. Perceptions or effects (measurements) create causes (concepts) in your mind -- retro-causality -- a syntropic process! Large language models are using duality to create reality. "Always two there are" -- Yoda.

  • @michaelmoser4537
    @michaelmoser45377 күн бұрын

    The AI model that predicts the next output step doesnt count as an explainable mathematical modell of reality. Does this count as physics?

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