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Mary (Missy) Cummings received her BS in mathematics from the US Naval Academy in 1988, her MS
in space systems engineering from the Naval Postgraduate
School in 1994, and her PhD in systems engineering from
the University of Virginia in 2004. A naval pilot from 1988
to 1999, she was one of the US Navy’s first female fighter
pilots. She is currently a professor in the Duke University
Electrical and Computer Engineering Department, and the
director of the Humans and Autonomy Laboratory. She is
an AIAA Fellow, and a member of the Defense Innovation
Board and the Veoneer Board of Directors.
Alexander Stimpson is the mission and behavior planning
manager at American Haval Motor Technology. In his current
role, he leads a team to research and design the artificial
intelligence algorithms that enable the higher-level decision-making for self-driving vehicles. Previously he was a
senior research scientist at Duke University, performing
research on human collaboration with intelligent systems. He
received a BS degree in biological engineering from the
University of Florida in 2007, and MS and PhD degrees in
aeronautics and astronautics from the Massachusetts Institute
of Technology in 2011 and 2014, respectively. His research
interests include autonomous systems, supervisory control,
artificial intelligence, and data mining.