Artificial Super Intelligence Might be  Here Already....
11:09

Artificial Super Intelligence Might be Here Already....

TheAIGRID 11.11.2024 48 206 просмотров 989 лайков

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Prepare for AGI with me - https://www.skool.com/postagiprepardness 🐤 Follow Me on Twitter https://twitter.com/TheAiGrid 🌐 Checkout My website - https://theaigrid.com/ Links From Todays Video: https://x.com/calebwatney/status/1855016577646666123 Welcome to my channel where i bring you the latest breakthroughs in AI. From deep learning to robotics, i cover it all. My videos offer valuable insights and perspectives that will expand your knowledge and understanding of this rapidly evolving field. Be sure to subscribe and stay updated on my latest videos. Was there anything i missed? (For Business Enquiries) contact@theaigrid.com Music Used LEMMiNO - Cipher https://www.youtube.com/watch?v=b0q5PR1xpA0 CC BY-SA 4.0 LEMMiNO - Encounters https://www.youtube.com/watch?v=xdwWCl_5x2s #LLM #Largelanguagemodel #chatgpt #AI #ArtificialIntelligence #MachineLearning #DeepLearning #NeuralNetworks #Robotics #DataScience

Оглавление (3 сегментов)

Segment 1 (00:00 - 05:00)

so the idea of artificial super intelligence might seem like a far-fetched dream at the moment but currently there are a few things that show us that we might not be as far away as we think recently we had this research from MIT come out and say artificial intelligence scientific discovery and product Innovation and essentially what this paper discusses is how crazy artificial intelligence is at when it comes to accelerating scientific discovery overall and I'm pretty sure all of you guys recently remember where Sam Alman himself was talking about how when we do have incredible levels of scientific discovery this is going to lead to a complete transformation in society if we can make an AI system that is like materially better at all of open AI than doing at doing AI research that does feel to me like some sort of important discontinuity it's probably still wrong to think about it that way it probably still is the smooth exponential curve but that feels like a real Milestone and the reason that we know that this is really important for open AI is because the next level for open AI after agents which is quite likely to be next year is of course AI inventors and innovators which is what they dub sci-fi stuff and this paper coming out of MIT basically shows us the glimpse into the future with as to how advanced technology is going to really transform our society and of course speed up one of the most important botonics with as to technological progress and that's of course scientific discovery the level four innovators is going to be completely crazy once we do manage to get there because that is going to change absolutely everything now in this paper they essentially talk about the entire process of doing inventions which is where basically you can see that you have the idea generation this is where scientists come up with new ideas for materials that could potentially meet specific needs or have desirable properties for example strength flexibility conductivity then of course you've got the candidate materials and this is of course scientists create possible material designs then you've got prioritization and since it's pretty expensive to decide which designs are the most promising and should be tested first this step is pretty tricky because they have to figure out which materials would actually work which actually leads to many false positives and then it moves to testing viable materials and then you can see after filing patents you get improved products and then of course you then get commercialization now this entire process is actually quite long it's actually quite extensive you know that from invention from literally idea to final Market release it's probably something on the line to like 10 to 20 years but when we look at how AI is changing the game this is going to be something that is remarkable for us because we're now going to have the ability to create products and inventions in a much shorter Loop so from idea to Market release that time frame is going to be condensed quite a lot which is why many AI researchers and those at Frontier labs are talking about the fact that there's this idea that we are probably going to have a compressed 21st century remember guys from the Dario amade the COO of anthropic at his article what he called the compressed 21st century and basically this is the idea that after powerful AI is developed we will in a few years make all the progress in biology and medicine that we would have made in the entire whole 21st century which is absolutely incredible think about that guys so when you think about that that's basically stating that look there's going to be 75 years of progress in 5 to 10 years which is absolutely insane so it's quite like we're going to be living let's say maybe two or three lifetimes all in a short span and this is basically because if you can Master automated AI research and Discovery you can have remarkable breakthroughs across science that transition into a remarkable different way of living for the average person essentially this just talks about things like the elimination of most cancer prevention of basically nearly all infectious disease and the crazy things like doubling of the human lifespan and the idea that the compressed 21st century could once again double it to age 100 50 I don't know about you guys but I find the idea of living to the age 150 to be rather incredible granted that you're still in of course Peak physical condition because there's no point being alive if your life isn't great so this is where they also show us the rise of deep learning in Material Science and this shows a significant advance in the use of deep learning in Material Science over the past decade and in the context of this paper this graph helps us illustrate how the field of Material Science has embraced AI Technologies like deep learning since 2015 15 and the graph basically has two components here the blue circles which is the material science Publications and this line represents the cumulative percentage increase in materials since Publications that mentioned deep learning and since 2015 there's been a really rapid increase which reflects the growing influence of AI in research and Innovation and this search corresponds with technological advances in AI as well and we can imagine how crazy that is going to get once we start to get things like AGI that's able to accelerate this development even further overall this should show you guys that

Segment 2 (05:00 - 10:00)

the rate of Material Science Publications and other discoveries are increasing year over year and this is where they basically talk about graph neural networks and these networks are designed to understand materials at a very detailed level kind of like creating a super detailed 3D map of atoms and bonds in a substance and it's basically trained to predict how new structures based on certain characteristics that scientists are looking for so one of the first steps is inverse material Design This is where the goal here is to find new materials that meet specific requirements scientists input Target features like strength or flexibility into the AI and then the GNN which is the graph new network the layers process this information and generate a possible material structure imagine it like having an advanced recipe where you input your desired dish and then the AI suggests ingredient combinations that could make it then of course we've got the three-steps training process and pretty sure some of you guys are familiar with these steps so this is where it goes through pre-training this is where the first AI learns from a big collection of known materials it understands different kinds of structures similar to a student studying existing examples before trying to create their own then what we have is the fine tuning then the AI adjusts its learning for specific types of materials by focusing on certain properties making it better at predicting materials for particular uses and lastly we have reinforcement finally the AI is tested by the scientist who synthesized the materials it predicts and based on how well the predictions turn out AI keeps learning to improve then of course we have the graft diff Fusion architecture this is where the AI uses something called a grafted Fusion Pro proess to create new materials it starts with a known compound and adds some Randomness basically like add adding a bit of noise to come up with new possible versions of the material then the AI Works backwards to refine these noisy versions into something useful trying to remove the randomness and end up with a stable practical new material which is somewhat similar to diffusion models in images so when we actually think about how this all fits into the paper this is basically just crucial because it significantly improves the materials discoveries process so instead of scientists manage trying different combinations through trial and error which you know takes a lot of time the AI tool can quickly generate suggestions that are more likely to succeed and this process allows scientists to be more efficient focusing their efforts on evaluating promising AI generated ideas rather than generating them from scratch now the crazy thing about this is that we also have this graph right here and basically on the first graph you can see that this one labeled new materials basically shows how the number of new materials discoveries basically changed before and after adopting the AI tool before we can see that the rate of material Discovery stayed relatively steady and after AI was introduced there's a clear upward Trend indicating that scientists began discovering more new materials basically the AI tool helped scientists generate more Innovative materials increasing their productivity significantly and automating the tedious parts of coming up with ideas allowing researchers to focus on the evaluation and testing process and we can also see the same in the patent filings we can see an increase right after the AI integration and we can see the same in product prototypes overall showing you that right now of course this is just using gnns but imagine what happens once you get to AGI or even ASI level AI That's able to increase the rate of discovery it's going to be pretty crazy now one of the craziest things that I saw about the study that isn't related to ASI but is somehow related to the economy was basically how these individuals had their attitudes changed after interacting with this AI tool which highlights both the optimism and concerns regarding its impact it basically tracks agreement levels across several statements measured on a 1 to 10 scale initially scientists agreed that AI will make scientists in my field more productive and this belief grew even stronger after they used AI tool however there's concerns about AI replacing scientists also increased after using the tool which basically suggests that direct experience with AI led to Greater awareness of its disruptive potential and the agreement that AI will change of skills needed to succeed also Rose showing that scientists realize that the need for new abilities whilst working alongside AI is there and of course some scientists plan to Res skill to collaborate effectively with AI and interestingly satisfaction with their choice of field decreased after using the AI tool which reflects the concerns over reduced creativity and increased Automation in their roles overall showing that once individuals start to use these tools they realize how productive they are but of course potentially they're diminishing roles for the future interestingly what we actually did see here and I'm just going to read this for batim basically it says consequently the number of researchers planning to rescale grow substantially finally scientists report a small reduction in satisfaction with their choice to field consistent with a decline in job satisfaction in the previous section and it says here okay these results show that hands-on experience with AI can dramatically influence views on the technology furthermore the responses reveal an important fact scientists did not anticipate the effects documented in this paper and this fits a recurring

Segment 3 (10:00 - 11:00)

pattern of domain experts underestimating the capabilities of AI in their respective Fields basically stating that look the majority of people that don't interact with AI tools will underestimate their capabilities until they use them and what's crazy okay one of the statements from the actual researchers said that look while I was impressed by the performance of the AI tool I couldn't help but the feeling that much of my education is now worthless this is not what I was trained to do and we also get to see comments from Rune honest honly I don't know who ruin is there are some speculation that he's an open AI employee there's some that he's an AI Insider but he basically said that obviously don't believe any economic studies at face value but this is what it looks like when you've discovered super intelligence the researchers are Outsourcing idea generation tasks and running the experiments themselves extensively effectively making themselves lab robots and basically this is just a provocative interpretation of the MIT study we just looked at and essentially this kinds of shows us an early indicator of super intelligence and whilst yes there does a crazy statement this is essentially what super intelligence will be used for it's not going to be used to do your taxes or write essays or even create movies it's going to be used for scientific discovery

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