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Summary

In this one-hour webinar, Elham Tabassi, Chief of Staff in the Information Technology Laboratory at the National Institute of Standards and Technology (NIST), joins Brandie Nonnecke and Tejas Narechania, co-directors of the Project on Artificial Intelligence, Platforms, and Society at the Berkeley Center for Law and Technology, along with Jessica Newman, Research Fellow at the Center for Long-Term Cybersecurity and Director, Artificial Intelligence Security Initiative, to discuss the NIST AI Risk Management Framework (RMF). Together they’ll explore ways to effectively implement the NIST AI RMF, highlight NIST’s next steps, and discuss whether the AI RMF is in alignment with AI risk mitigation strategies outlined in the EU AI Act.

This webinar is the first in a three part series associated with the 2022 Berkeley Law AI Institute. A recording of the second program in the series on Generative AI is also available.

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Recorded on March 14, 2023

Guests

Headshot of Brandie Nonnecke

Brandie Nonnecke

Director of CITRIS Policy Lab & Leader of the Project on Artificial Intelligence, Platforms, and Society at the Berkeley Center for Law & Technology

Headshot of Tejas Narechania

Tejas Narechania

Faculty Director at Berkeley Center for Law & Technology and Robert and Nanci Corson Assistant Professor of Law at Berkeley Law

Headshot of Jessica Newman

Jessica Newman

Director of the AI Security Initiative at CLTC

Headshot of Elham Tabassi

Elham Tabassi

Chief Of Staff at Information Technology Laboratory, NIST