DiscoverThe Twenty Minute VC (20VC): Venture Capital | Startup Funding | The Pitch20VC: AI Scaling Myths: More Compute is not the Answer | The Core Bottlenecks in AI Today: Data, Algorithms and Compute | The Future of Models: Open vs Closed, Small vs Large with Arvind Narayanan, Professor of Computer Science @ Princeton
20VC: AI Scaling Myths: More Compute is not the Answer | The Core Bottlenecks in AI Today: Data, Algorithms and Compute | The Future of Models: Open vs Closed, Small vs Large with Arvind Narayanan, Professor of Computer Science @ Princeton

20VC: AI Scaling Myths: More Compute is not the Answer | The Core Bottlenecks in AI Today: Data, Algorithms and Compute | The Future of Models: Open vs Closed, Small vs Large with Arvind Narayanan, Professor of Computer Science @ Princeton

Update: 2024-08-281
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Arvind Narayanan is a professor of Computer Science at Princeton and the director of the Center for Information Technology Policy. He is a co-author of the book AI Snake Oil and a big proponent of the AI scaling myths around the importance of just adding more compute. He is also the lead author of a textbook on the computer science of cryptocurrencies which has been used in over 150 courses around the world, and an accompanying Coursera course that has had over 700,000 learners.

In Today's Episode with Arvind Narayanan We Discuss:

1. Compute, Data, Algorithms: What is the Bottleneck:

  • Why does Arvind disagree with the commonly held notion that more compute will result in an equal and continuous level of model performance improvement?
  • Will we continue to see players move into the compute layer in the need to internalise the margin? What does that mean for Nvidia?
  • Why does Arvind not believe that data is the bottleneck? How does Arvind analyse the future of synthetic data? Where is it useful? Where is it not?

2. The Future of Models:

  • Does Arvind agree that this is the fastest commoditization of a technology he has seen?
  • How does Arvind analyse the future of the model landscape? Will we see a world of few very large models or a world of many unbundled and verticalised models?
  • Where does Arvind believe the most value will accrue in the model layer?
  • Is it possible for smaller companies or university research institutions to even play in the model space given the intense cash needed to fund model development?

3. Education, Healthcare and Misinformation: When AI Goes Wrong:

  • What are the single biggest dangers that AI poses to society today?
  • To what extent does Arvind believe misinformation through generative AI is going to be a massive problem in democracies and misinformation?
  • How does Arvind analyse AI impacting the future of education? What does he believe everyone gets wrong about AI and education?
  • Does Arvind agree that AI will be able to put a doctor in everyone's pocket? Where does he believe this theory is weak and falls down?

 

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20VC: AI Scaling Myths: More Compute is not the Answer | The Core Bottlenecks in AI Today: Data, Algorithms and Compute | The Future of Models: Open vs Closed, Small vs Large with Arvind Narayanan, Professor of Computer Science @ Princeton

20VC: AI Scaling Myths: More Compute is not the Answer | The Core Bottlenecks in AI Today: Data, Algorithms and Compute | The Future of Models: Open vs Closed, Small vs Large with Arvind Narayanan, Professor of Computer Science @ Princeton