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#237 Guardrails for the Future of AI with Viktor Mayer-Schönberger, Professor of Internet Governance and Regulation at the University of Oxford

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Designing Flexible and Adaptive Regulatory Guardrails for AI

Effective regulatory guardrails for artificial intelligence must be designed with several core principles in mind. First, they should empower individuals while maintaining flexibility to adapt to changing contexts and goals. Clear objectives can guide the design of these mechanisms; however, if objectives are unclear or the problem is not fully understood, the guardrails must remain flexible to foster learning from past decisions. This adaptability is crucial, especially when regulators lack a comprehensive understanding of emerging technologies. A successful regulatory framework should not only facilitate learning from missteps to prevent future errors but also allow for iterative adjustments based on ongoing developments. The challenge for regulators lies in balancing the need for detailed guidelines with the necessity for flexibility, ensuring that guardrails evolve as the context and objectives shift.

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