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2022 HAI Spring Conference on Key Advances in Artificial Intelligence | Stanford HAI
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eventConference

2022 HAI Spring Conference on Key Advances in Artificial Intelligence

Status
Past
Date
Tuesday, April 12, 2022 8:45 AM - 5:00 PM PST/PDT
Location
David and Joan Traitel Building, Stanford University
Overview
Agenda
Speakers
Event Recordings

The HAI Spring Conference will explore three key advances in artificial intelligence – accountable AI, foundation models, and embodied AI in virtual and real worlds – as well as what the future of this technology might hold.

Event Organizers
fei fei li headshot
Fei-Fei Li
Denning Co-Director, Stanford HAI | Sequoia Professor of Computer Science, Stanford University
Chris Manning headshot
Christopher Manning
Thomas M. Siebel Professor of Machine Learning in the Departments of Linguistics and Computer Science | Associate Director and Senior Fellow, Stanford HAI
Overview
Agenda
Speakers
Event Recordings
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Event Contact
Celia Clark
celia.clark@stanford.edu
Related
  • 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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