2020 Fall Conference on Triangulating Intelligence: Melding Neuroscience, Psychology, and AI | Stanford HAI
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eventConference

2020 Fall Conference on Triangulating Intelligence: Melding Neuroscience, Psychology, and AI

Status
Past
Date
Wednesday, October 07, 2020 9:00 AM - 3:30 PM PST/PDT
Topics
Sciences (Social, Health, Biological, Physical)

This conference will zero in on the latest research on cognitive science, neuroscience, vision, language, and thought, informing the pursuit of artificial intelligence.

Questions to be addressed include:

  • How can we hope to build an artificial intelligence when we still understand so little about human intelligence?

  • How can we build a synergistic partnership between cognitive psychology, neuroscience, and artificial intelligence?

Co-Sponsors

https://psychology.stanford.edu/

https://neuroscience.stanford.edu/

https://symsys.stanford.edu/

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  • Christopher Manning
    Thomas M. Siebel Professor of Machine Learning in the Departments of Linguistics and Computer Science | Associate Director and Senior Fellow, Stanford HAI
    Chris Manning headshot

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