2,863 subscribers
با برنامه Player FM !
پادکست هایی که ارزش شنیدن دارند
حمایت شده


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
Manage episode 436599968 series 73567
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?
1288 قسمت
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
The Twenty Minute VC (20VC): Venture Capital | Startup Funding | The Pitch
Manage episode 436599968 series 73567
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?
1288 قسمت
Semua episode
×

1 20VC: Microsoft CTO on Where Value Accrues in an AI World | Why Scaling Laws are BS | An Evaluation of Deepseek and How We Underestimate the Chinese | The Future of Software Development and The… 45:08


1 20VC: Will Revolut and Monzo List in the UK | How Does London Compete Against the US To Win The Best UK IPOs | Are UK Public Companies Punished on Price for Listing in London | The Myths and the… 50:14


1 20VC: Why Traditional VC is Broken: How VCs Learned Nothing from 2021 | Why LPs are More Important than Founders & Advice to Emerging Managers | Bull Case for Bytedance & Why TikTok's Ban Doesn't… 1:19:26


1 20VC: The Insane Story of DeliveryHero: Losing $200M on a Gorillas Investment | Winning the Emerging Markets Delivery War with 35 Acquisitions | Competing with Uber and Doordash in a Capital Arms… 1:01:10


1 20VC: AI Chip Wars: How Cerebras Plans to Topple NVIDIA's Dominance | Why We Have Not Reached Scaling Laws in AI | What Happens to the Cost of Inference | How We Underestimate China and Shouldn't… 1:03:21


1 20VC: Selling Drift for $1.2BN is the Biggest Failure: What No One Tells You About Selling Your Company | Why Incumbents Are Slower & Worse Than Ever | Why the Most Valuable Companies in a World of… 1:07:22


1 20VC: The 10 Question Framework a $217BN Manager Uses to Make Investment Decisions | Lessons from Turning Down Stripe, Coinbase and Losing Money on Northvault | The Bull Case for Bytedance | How… 1:11:40


1 20VC: HubSpot CEO on Where Value Accrues in SaaS AI | How HubSpot Competes Against Salesforce | Why B2B Is Not a Winner Take All Market | How to Go From SMB to Enterprise an Win | How SEO Dying… 55:12


1 20Product: How to Design and Build Products in a World of Agents | Why AI Will Kill Many SaaS Products | What Products Will Thrive and Die in a World of 100M Developers with Matt Biilmann,… 49:04


1 20VC: Lessons from Investing $2BN and Returning $8BN in Cash | Why Most Venture Partnerships are Broken | We Sold Salesforce Early and Lost Out on Billions | Are The Best Deals Always Expensive and… 1:28:49


1 20Sales: Everything You Know About Sales Playbooks is Wrong | How to Hire and Train Your First Sales Hires | How to Crush Pipeline and Deal Reviews as a Team | How to Structure Sales Teams and Sales… 51:52


1 20VC: Lovable on Hitting $17.5M in ARR in 3 Months | Adding $2.1M ARR Every Week | Hitting 85% Day 30 Retention: Better than ChatGPT | The Story of Europe's Fastest Scaling Company with Anton Osika 50:44


1 20VC: Anthropic CPO Mike Krieger: Where Will Value Be Created in a World of AI | Have Foundation Models Commoditized | When Do Model Providers Become Application Providers | What Anthropic Learned… 1:06:06


1 20Growth: Inside Ramp's Growth Engine: How Ramp Became the Fastest Growing SaaS Company Ever | What Worked & What Did Not Work | How to Hire for Growth | How to Find Alpha in Channels Where No One… 55:21


1 20VC: The Insane Story of Glovo: Selling 30% of the Company for €100K | The McDonalds Deal That Saved Them | Running out of Money Three Times | Burning $1M Per Day | Being Acquired for $2.2BN with… 1:07:27
به Player FM خوش آمدید!
Player FM در سراسر وب را برای یافتن پادکست های با کیفیت اسکن می کند تا همین الان لذت ببرید. این بهترین برنامه ی پادکست است که در اندروید، آیفون و وب کار می کند. ثبت نام کنید تا اشتراک های شما در بین دستگاه های مختلف همگام سازی شود.