Navigating AI in Risk
Overview
In this episode of the Executive Exchange series, Agus Sudjanto, the recently retired Head of Model Risk Management at Wells Fargo, discusses the current landscape of model risk management and the importance of adapting these models and practices to accommodate generative AI.
Watch the video to:
- Discover how a strong foundation in physics and mathematics influences risk management and model design.
- Understand the differences between predictive AI and generative AI.
- Learn about the need to adapt model risk management practices for generative AI, including model limitations and user training considerations.
- Explore the shift towards specialized AI models and the significance of companies developing tailored models to meet their specific data needs.
Expert
Agus Sudjianto
Head of Model Risk Management at Wells Fargo (retired)
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