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Even within our own research team, timelines for transformative AI differ substantially. In this episode, the two Epoch AI researchers with the longest and the shortest timelines for transformative AI candidly examine the roots of their disagreements. They discuss: How and why their timelines for specific milestones differ Current...

159,795 görüntüleme • 1 yıl önce •via X (Twitter)

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Epoch AI1 yıl önce

Epoch After Hours: Youtube: Apple Podcasts: Spotify: Pocket Casts: RSS Feed:

Coral AI News profil fotoğrafı
Coral AI News1 yıl önce

Coral AI is the most powerful AI for documents. See the difference yourself:

Spencer Schiff profil fotoğrafı
Spencer Schiff1 yıl önce

Oh my fucking god this is like the Superbowl for me

Jordan Schneider profil fotoğrafı
Jordan Schneider1 yıl önce

ugh first one was 5 hrs hate to see you losing steam

Sean profil fotoğrafı
Sean1 yıl önce

Gotta back the diet coke guy.

Rogs 🔍🔸 profil fotoğrafı
Rogs 🔍🔸1 yıl önce

> How a world with AGI might look like Pet peeve: it should be "what ... look like" or "how ... look", but never "how ... look like".

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Joseph Noel Walker

85,856 görüntüleme • 1 yıl önce

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Lex Fridman

906,632 görüntüleme • 4 ay önce

Another mindblowing conversation with my good friend .Emad... Enjoy!! 00:00 - Introduction 00:22 - AI: The Biggest Shift in Human History 00:42 - AI’s Impact on Society and the Economy 01:03 - Conversation with Emad Mostaque Begins 01:50 - The Acceleration of AI and Economic Takeoff 03:07 - AI Intelligence: Beyond Human IQ 04:08 - The Rise of AI Chefs and Super Cooks 05:07 - Breaking AI Constraints: Compute and Energy 07:03 - The Future of AI: Ubiquitous Intelligence 08:04 - The Shift to Local AI Models 10:07 - Why Has Apple Lagged in AI? 11:21 - The AI Race: OpenAI, Grok, Gemini, and More 13:11 - China’s Open-Source AI Strategy 14:57 - AI Bias and Ethical Challenges 16:57 - AI’s Cross-Pollination and Memory 18:02 - Are AI Models Becoming Self-Aware? 19:16 - AI, Bitcoin, and Self-Sustaining Algorithms 21:26 - AI-Driven Economies and Autonomous Companies 23:41 - The Future of Labor: A World Without Jobs? 25:26 - AI-Powered Robots: The Next Workforce Revolution 27:28 - The End of Traditional Economic Models 30:27 - The Political Shift: Humanist vs. Transhumanist 33:04 - AI in Financial Markets: The End of Human Traders? 36:03 - The Evolution of Investing in an AI World 38:33 - AI’s Impact on Capital Formation and Business Disruption 40:01 - The Rise of Digital Twins and Post-Capital Society 42:45 - Building AI for Education, Healthcare, and Governance 46:42 - The Future of Money in an AI-Driven World 50:11 - Universal Basic AI: A New Economic Model 54:29 - The Deflationary Impact of AI and Crypto’s Role 57:02 - The AI Singularity: Five Years Until Everything Changes 58:56 - The Road Ahead: AI, Crypto, and the Future of Civilization 01:02:24 - Final Thoughts: The Most Exciting and Terrifying Time in History

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326,827 görüntüleme • 1 yıl önce