Elon Musk and UK Prime Minister Sunak at AI Safety Summit — Full Transcript
Complete transcript of the on-stage conversation between Elon Musk and UK PM Rishi Sunak at the AI Safety Summit, covering regulation, risk, and innovation.
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Elon Musk and UK PM Sunak at AI Safety Summit
Elon Musk and UK Prime Minister Rishi Sunak discussed AI regulation and safety at the Bletchley Park AI Safety Summit.
Key Points
Musk advocated for a regulatory agency similar to the FAA for AI: an organization that certifies model safety before deployment, conducts audits, and can ground unsafe systems.
He emphasized that AI safety research must scale with capability advances. The current trajectory of capability outpacing safety research is concerning.
On Regulation
Sunak announced the UK AI Safety Institute to evaluate frontier models. Musk argued that international coordination is essential — AI does not respect borders.
Predictions
Musk reiterated his AGI timeline of 5 years and warned that the window for implementing safety measures is closing. He advocated for transparency requirements on training compute and evaluation results.
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