A DARPA Perspective on Artificial Intelligence
What's the ground truth on artificial intelligence (AI)? In this video, John Launchbury, the Director of DARPA's Information Innovation Office (I2O), attempts to demystify AI--what it can do, what it can't do, and where it is headed. Through a discussion of the "three waves of AI" and the capabilities required for AI to reach its full potential, John provides analytical context to help understand the roles AI already has played, does play now, and could play in the future.
Download the slides at: http://www.darpa.mil/about-us/darpa-perspective-on-ai
Видео A DARPA Perspective on Artificial Intelligence канала DARPAtv
Download the slides at: http://www.darpa.mil/about-us/darpa-perspective-on-ai
Видео A DARPA Perspective on Artificial Intelligence канала DARPAtv
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