AI + work: Understanding AI’s impact on the labor market
The Budget Lab at Yale, The Hamilton Project at the Brookings Institution, and Peterson Institute for International Economics hosted an event on AI’s impact on the labor market. The discussion focused on what data sources are most useful for understanding how AI is affecting the labor market and how to best utilize those data to make educated inferences. The event featured a research presentation by Jed Kolko (Peterson Institute for International Economics) followed by a panel discussion with Bharat Chandar (Stanford Digital Economy Lab and Institute for Human-Centered Artificial Intelligence), Martha Gimbel (Budget Lab at Yale), and Nathan Goldschlag (Economic Innovation Group), moderated by Ben Casselman (The New York Times).

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Keynote: After the AI Hype – What’s Real, and What’s Next - Richard Campbell - 2026

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AI + work: Building pro-worker AI

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Leading in the Age of AI: A Conversation with NVIDIA CEO Jensen Huang | Global Conference 2026

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This is not the AI we were promised | The Royal Society

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Opportunities and challenges in AI regulation

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THESE Apps Are SPYING on You — Shut Them Off NOW!

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Something is jamming GPS over Europe. Here's what we found

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The Big Short (2015): The Jenga Scene – Explaining the Financial Collapse

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The French Do Not Care About Work

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Utah’s Progress Report on America’s Anniversary

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How AI Is Pushing the Semiconductor Supply Chain to the Limit | Bloomberg Primer

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6 Tips on Being a Successful Entrepreneur | John Mullins | TED

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The Future of AI Agents with Andrew Ng | Interrupt 26

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Billionaire's WARNING: I'm SELLING. The Crash Is Already Here!

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'Listen Like You Might Be Wrong': Harvard Student Goes Viral For Stunning Speech On Trump Amid Feud

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Stanford Leadership Forum 2026: Rewiring the Workforce in the Age of AI

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AI, Machine Learning, Deep Learning and Generative AI Explained

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The Real Reason European Cars Can't Compete

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The AI rollout is here - and it's messy | FT Working It

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