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If you believe the hype, artificial intelligence will soon take all our jobs, or solve all our problems, or destroy all boundaries between reality and lies, or help us live forever, or take over the world and exterminate humanity. That’s a pretty wide spectrum, and leaves a lot of people very confused about what exactly AI can and can’t do. In this episode, we’ll help you sort that out: For example, we’ll talk about why even superintelligent AI cannot simply replace humans for most of what we do, nor can it perfect or ruin our world unless we let it.
Arvind Narayanan studies the societal impact of digital technologies with a focus on how AI does and doesn’t work, and what it can and can’t do. He believes that if we set aside all the hype, and set the right guardrails around AI’s training and use, it has the potential to be a profoundly empowering and liberating technology. Narayanan joins EFF’s Cindy Cohn and Jason Kelley to discuss how we get to a world in which AI can improve aspects of our lives from education to transportation—if we make some system improvements first—and how AI will likely work in ways that we barely notice but that help us grow and thrive.
In this episode you’ll learn about:
Arvind Narayanan is professor of computer science and director of the Center for Information Technology Policy at Princeton University. Along with Sayash Kapoor, he publishes the AI Snake Oil newsletter, followed by tens of thousands of researchers, policy makers, journalists, and AI enthusiasts; they also have authored “AI Snake Oil: What Artificial Intelligence Can Do, What It Can’t, and How to Tell the Difference” (2024, Princeton University Press). He has studied algorithmic amplification on social media as a visiting senior researcher at Columbia University's Knight First Amendment Institute; co-authored an online a textbook on fairness and machine learning; and led Princeton's Web Transparency and Accountability Project, uncovering how companies collect and use our personal information.
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117117 ratings
If you believe the hype, artificial intelligence will soon take all our jobs, or solve all our problems, or destroy all boundaries between reality and lies, or help us live forever, or take over the world and exterminate humanity. That’s a pretty wide spectrum, and leaves a lot of people very confused about what exactly AI can and can’t do. In this episode, we’ll help you sort that out: For example, we’ll talk about why even superintelligent AI cannot simply replace humans for most of what we do, nor can it perfect or ruin our world unless we let it.
Arvind Narayanan studies the societal impact of digital technologies with a focus on how AI does and doesn’t work, and what it can and can’t do. He believes that if we set aside all the hype, and set the right guardrails around AI’s training and use, it has the potential to be a profoundly empowering and liberating technology. Narayanan joins EFF’s Cindy Cohn and Jason Kelley to discuss how we get to a world in which AI can improve aspects of our lives from education to transportation—if we make some system improvements first—and how AI will likely work in ways that we barely notice but that help us grow and thrive.
In this episode you’ll learn about:
Arvind Narayanan is professor of computer science and director of the Center for Information Technology Policy at Princeton University. Along with Sayash Kapoor, he publishes the AI Snake Oil newsletter, followed by tens of thousands of researchers, policy makers, journalists, and AI enthusiasts; they also have authored “AI Snake Oil: What Artificial Intelligence Can Do, What It Can’t, and How to Tell the Difference” (2024, Princeton University Press). He has studied algorithmic amplification on social media as a visiting senior researcher at Columbia University's Knight First Amendment Institute; co-authored an online a textbook on fairness and machine learning; and led Princeton's Web Transparency and Accountability Project, uncovering how companies collect and use our personal information.
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