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How ‘AI control’ aims to prevent catastrophic outcomes while preserving AI’s utility
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Core concept: AI control safety measures aim to prevent catastrophic outcomes by monitoring and limiting AI systems’ actions, similar to how surveillance affects human behavior, but with more comprehensive digital oversight.

Key framework and approach: There are a variety of ways to prevent AI-enabled catastrophic risks through capability controls and disposition management.

  • Catastrophic risks require both capabilities and disposition (intention) to materialize
  • Prevention strategies focus on either raising thresholds for catastrophe or lowering AI systems’ capabilities/disposition
  • Redwood’s AI Control agenda specifically targets raising capability thresholds while maintaining AI utility

Current state of research: The field of AI control presents promising developments but faces significant resource limitations.

  • Less than 10 full-time researchers currently work on AI control
  • The agenda shows potential to become a major focus in near-term safety
  • Initial support from labs exists due to alignment with security concerns

Implementation challenges: The practical application of control measures faces several hurdles.

  • Control protocols must balance restriction with maintaining AI utility
  • Experimental settings need to adequately reflect real deployment conditions
  • Gap between simplified test environments and complex deployment systems requires bridging
  • Internal and external deployment scenarios may need different approaches

Safety case requirements: Effective AI control requires meeting specific conditions.

  • Blue teams must design robust monitoring protocols
  • Red teams need sufficient capability to test system vulnerabilities
  • Experimental settings must accurately reflect deployment conditions
  • Continuous oversight and audit mechanisms are necessary

Future considerations: The scalability of control measures presents long-term challenges.

  • Highly intelligent AI systems may eventually circumvent monitoring protocols
  • Alternative approaches like using AI systems to monitor each other are being explored
  • Integration with other safety measures, such as interpretability tools, could enhance effectiveness
  • Critical infrastructure dependence may complicate emergency shutdown procedures

Looking ahead: While AI control measures show promise for near and medium-term safety, their limitations warrant careful consideration and continuous development of complementary approaches to ensure long-term effectiveness.

Near- and medium-termAI Control Safety Cases

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