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Engineering Out Loud: S9E1 – the beautiful music of robotics and AI


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06 March 2020



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Professors Kagan Tumer (left) and Tom Dietterich discuss their research at the Collaborative Robotics and Intelligent Systems Institute.

How do you integrate ethics, policy, and practicality into the design of revolutionary robotics and artificial intelligence systems? Professors Kagan Tumer and Tom Dietterich are collaborating to find out as they help lead the Oregon State Collaborative Robotics and Intelligent Systems Institute.

From the College of Engineering at Oregon State University, this is “Engineering Out Loud” — a podcast telling the stories of how research and innovation at the University is helping change the world. “Engineering Out Loud” Season Nine focusses on robotics and AI, covering topics from from policy and ethics, to programming and practical applications. You can listen to the full series here.




Engineering Out Loud A podcast from the College of Engineering at Oregon State University
Engineering Out Loud A podcast from the College of Engineering at Oregon State University

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