The Most Talented Man in AI
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The Most Talented Man in AI

Newsthink 31.05.2026 220 438 просмотров 6 997 лайков

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How Andrej Karpathy shaped the future of AI. Try Brilliant’s new tutor for free: https://brilliant.org/Newsthink/ and get 20% off your annual premium subscription Chapters 00:00 Elon Musk’s Secret Recruitment 0:42 Leaving Slovakia for Canada 1:54 Geoffrey Hinton and the AI Revolution 2:27 Teaching Computers to See 3:28 The Obama Photo That Stumped AI 4:55 Karpathy vs. AI 5:46 Building Tesla’s Autopilot 6:18 Fixing a Major Tesla Problem 7:00 Becoming an AI Teacher 7:21 Rise of Vibe Coding 7:36 The $100 Million Talent War 8:17 Learn Math With a Private Tutor Newsthink is produced and presented by Cindy Pom https://x.com/cindypom Grab your Newsthink merch here: https://newsthink.creator-spring.com Support Cindy on Patreon! https://www.patreon.com/Newsthink Sources: Woman riding a horse: Greg Dunham, CC BY 2.0 via Wikimedia Commons People on a beach by Dirk, CC BY 2.0 via Wikimedia Commons Cat resting on a couch: www.Pixel.la Free Stock Photos, CC0, via Wikimedia Commons Pictures of the baby elephant, baby Cyrus, Christ the Redeemer, Luffy the dog, video of Bangkok traffic at nighttime were photographed, filmed, and/or properties of Cindy Pom and Newsthink Ltd.

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Elon Musk’s Secret Recruitment

At 22 years old, Andrej Karpathy could  solve a Rubik’s Cube in under 16 seconds. That obsession with cracking patterns would  serve him well in artificial intelligence. One of the hardest problems is teaching  machines to understand the world around them. Andrej is one of the best computer vision  people in the world. Arguably the best. Okay, thank you. By his early 30s, Karpathy had become one of  the most respected AI researchers in the world.   So respected that Elon Musk personally  recruited him from OpenAI to lead AI at Tesla.   In an email to engineer Jim Keller, Musk wrote: Andrej is arguably the #2 guy in  the world in computer vision after   Ilya Sutskever. The OpenAI guys are gonna  want to kill me, but it had to be done. Andrej Karpathy was born in Bratislava,  Slovakia, on October 23, 1986.

Leaving Slovakia for Canada

When he was 15 years old, his family  left their comfortable life behind   and moved to Toronto in search of better  opportunities for Andrej and his sister.   He reflected on his parents’ sacrifice:  “It is in large part my determination to   vindicate their leap of faith and make  them proud that drives my ambitions. ”  He studied computer science and  physics at the University of Toronto. Originally, his plan was to  work in quantum computing. But as he immersed himself in his quantum  mechanics classes, something felt off: https://www. datascienceweekly. org/data-scientist-interviews/training-deep-learning-models-browser-andrej-karpathy-interview He said in an interview: “it became apparent  that I was not having fun. It was too distant,   too limiting. I couldn't get my hands dirty. ” There one was field where  he could get hands dirty. Artificial intelligence. One day, while walking through a library  surrounded by endless shelves of books Karpathy realized he wanted to learn everything in  all the books but that was impossible, there was   too much knowledge for a person to absorb. That led him to a different idea:   “... if I can't learn everything there is to know  myself, maybe I could build something that could. ” He shifted his focus to machine learning,   a branch of AI focused on teaching computers  to recognize patterns and learn from data. His introduction to the field came  through a class taught by Professor

Geoffrey Hinton and the AI Revolution

Geoffrey Hinton, often called the Godfather of AI. In 2012, Hinton and his students trained a neural  network called AlexNet that stunned the AI world   after dominating ImageNet, the Olympics  of computer vision. Its image recognition   error rate was dramatically  lower than its competitors. Karpathy went on to complete a Master’s  at the University of British Columbia,   where he worked on physically simulated robots. Instead of manually programming every  movement, these systems learned to obey   the laws of physics — balancing, falling,  and moving almost like living things. Then came a PhD at Stanford  under Professor Fei-Fei Li,

Teaching Computers to See

one of the most influential  researchers in computer vision. Karpathy would later thank her, in his  words, “for teaching me how to think. ” At Stanford University, Karpathy became known  for connecting images with natural language. In other words, teaching computers not just  to recognize images but to describe them. Earlier AI systems mostly  worked through classification: Elephant Baby Christ the Redeemer But could a machine describe what  it was seeing using human language? For example, early AI systems might simply  label this picture of my dog Luffy as: husky But newer systems could generate something like: A husky mix completely passed out in a dog bed  with one leg awkwardly sticking into the air. Today, this kind of image understanding  powers systems like ChatGPT. But in the early 2010s, the idea  that a computer could look at an   image and describe it naturally felt magical. That leap didn’t happen automatically  as progress in AI wasn’t inevitable. Researchers had to push it forward.

The Obama Photo That Stumped AI

In 2012, before many of the major  breakthroughs, Karpathy was frustrated   and wrote a blog post titled: “The state of Computer Vision   and AI: we are really, really far away. ” To explain the problem, he used this picture of   a man standing on a weighing scale while Barack  Obama secretly presses his foot down on it.   Humans understand the joke almost instantly. But Karpathy realized that for a computer to   truly understand the image, it would require  an enormous amount of hidden knowledge.   The AI would need to understand: that some people in the   image are reflections in mirrors that Obama’s foot is applying force to the scale  that this would increase the weight reading that people are self-conscious about their weight  that the man on the scale is  unaware of what’s happening  that the people around him  find his confusion amusing  and that the fact the prank is being carried out  by the President somehow makes it even funnier  Humans process a massive amount of information in  a fraction of a second without even realizing it.   Karpathy was stunned by the  complexity of that challenge.   He wrote: “How can we even begin to  go about writing an algorithm that can   reason about the scene like I did? ” He ended his post on a bleak note:  In any case, we are very, very far and this  depresses me. What is the way forward?:( Karpathy’s pessimism was understandable  as the Obama image did expose enormous   weaknesses in AI systems. But what  happened next shocked almost everyone. Over the next decade, vision  models improved dramatically. In 2014, Karpathy competed directly  against one of the world’s most

Karpathy vs. AI

advanced image-recognition systems: GoogLeNet,  a neural network created by Google for ImageNet. Karpathy manually labeled around 1,500 difficult   images and compared his performance  directly against the neural network.   His error rate was 5. 1%. GoogLeNet’s was 6. 8%.   So the human had technically won. But barely.   In some instances, the machine  actually performed better.   The neural network had become extraordinarily  good at detecting subtle visual differences across   massive datasets, outperforming humans  at recognizing things like dog breeds. Karpathy realized something profound:  “It is clear that humans will soon  only be able to outperform state of   the art image classification models by use  of significant effort, expertise, and time. ” In other words: the machines were  catching up frighteningly fast. And that mattered because neural  networks were finally becoming

Building Tesla’s Autopilot

good enough to perceive the world, which meant one   of the most ambitious goals in AI was now  far more achievable: a self-driving car. Karpathy became one of the founding members of  OpenAI before Elon Musk recruited him to lead   the computer vision team behind Tesla’s Autopilot. His team designed neural networks that processed   video from the car’s eight cameras into a  three-dimensional understanding of the world. Those neural networks had to  interpret lanes, vehicles,   pedestrians, stop signs, traffic lights, and more. But there was a big problem at the start.

Fixing a Major Tesla Problem

Tesla initially processed each  camera feed separately before   attempting to combine the results afterward. But that didn't work very well. Because each camera interpreted  the world slightly differently,   the resulting 3D representation looked awful. Under Karpathy’s direction,  Tesla made a major change.    It began feeding all cameras into a  single neural network simultaneously. Instead of processing separate  images and fusing them later,   the network learned a unified, consistent 3D  representation directly from all inputs at once.   You can see that it’s basically night  and day. You can actually drive this.   After five years leading AI at Tesla,  Karpathy briefly returned to OpenAI. But he didn’t stay long. He soon  stepped out on his own by launching

Becoming an AI Teacher

his AI education company Eureka Labs, pouring  his energy into teaching the next generation. Hi, everyone. So in this video, I would like to   continue our general audience series  on large language models like ChatGPT. On his YouTube channel, he started posting   in-depth educational videos that  have racked up millions of views. By this point, AI had gotten so good  that Karpathy coined the phrase “vibe

Rise of Vibe Coding

coding” to describe a major shift where  developers are increasingly just guiding   AI systems instead of writing  every line of code themselves. As Karpathy put it: “I barely even touch the keyboard. ”  Even as AI began generating more  and more of the code itself,

The $100 Million Talent War

the biggest AI companies were fighting  to hire the world’s best researchers. Anthropic, the company behind Claude, hired  Karpathy as part of its pre-training team… the group responsible for teaching  Claude how to understand the world. He’s now helping Claude build the next  generation of an even more powerful Claude. We don’t know how much Karpathy is being paid but  the bidding wars have gotten so extreme that Meta   has reportedly offered OpenAI employees signing  bonuses as high as $100 million to switch sides. And yet, even one of the world’s top AI  engineers feels like he’s struggling to keep up.   Karpathy tweeted: I've never felt this much behind as a programmer.   One thing that hasn’t changed is  that people who can work through

Learn Math With a Private Tutor

complex problems have a massive advantage. That’s one of the reasons I’ve been trying the new   Brilliant, which now includes an interactive tutor  that works through problems with you in real time. I’ve been going through their Thinking in Code   course and thought this nested  loop would work, but it didn’t. That’s not it, try again. What I like is that Brilliant’s  personal tutor helped me think   through the problem when I asked  it to explain what went wrong. What condition would make it  stop as soon as it finds a gem? And it helped me solve the problem. This feels like having a real private tutor, and  it’s way better than watching online lessons. You got it. Brilliant’s interactive lessons cover everything  from math to coding to computer science from grade   5 to college and beyond, and it’s designed  by experts from MIT, Harvard, and Stanford. You can get started with Brilliant’s tutor for  FREE by clicking the link in my description or   scanning the QR code. You can upgrade to Premium  to unlock all the courses. And right now,   Newsthink viewers can save 20% off an annual  subscription at Brilliant. org/newsthink. Thanks for watching. For Newsthink, I’m Cindy Pom.

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