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          "start_page": 148
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          "objective": "Sweep global AI regulation jurisdiction by jurisdiction",
          "confidence": 78,
          "start_page": 155
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          "objective": "Surface compounding cost of compute hunger and security gaps",
          "confidence": 60,
          "start_page": 168
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          "start_page": 172
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          "confidence": 78,
          "start_page": 176
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          "objective": "Show jailbreaking arms race across attack surfaces",
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          "start_page": 182
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