
UK’s Cooper warns of an AI ‘Hiroshima’ and calls for global rules
THE SO WHAT
When a sitting foreign secretary frames AI as the "greatest security challenge of the next decade" and reaches for Hiroshima analogies, AI governance is moving from tech policy to core national security doctrine. Expect more hard-power tools—treaties, export controls, intelligence coordination—shaping what models you can train, where you can deploy them, and who you can sell to.
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