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AI / Data Science
International Actuaries Day 2024: Actuarial Intelligence - The AI Enhanced Actuary
Host and Moderator: Charles Cowling, IAA President
Guest Speakers:
Adam Driussi - Co-founder and Chief Executive Officer of Quantium
Dorothy L. Andrews, PhD - Senior Behavioral Data Scientist and Actuary for the National Association of Insurance Commissioners (NAIC)
September 2, 2024
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