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eventConference

New Horizons in Generative AI: Science, Creativity, and Society

Status
Past
Date
Tuesday, October 24, 2023 9:00 AM - 5:00 PM PST/PDT
Location
Gates Computer Science Building, Room 119, Stanford University
Topics
Sciences (Social, Health, Biological, Physical)
Overview
Agenda
Speakers
Rishi Bommasani
Senior Research Scholar, Stanford HAI
Erik Brynjolfsson
Jerry Yang and Akiko Yamazaki Professor | Senior Fellow, Stanford HAI | Senior Fellow, SIEPR | Professor, by courtesy, of Economics; of Operations, Information & Technology; and of Economics at the Stanford Graduate School of Business
Chris Donahue
Assistant Professor, Carnegie Mellon University; Part-time Research Scientist, Google Magenta
Surya Ganguli headshot
Surya Ganguli
Associate Professor of Applied Physics, and by courtesy, of Neurobiology, of Electrical Engineering, and of Computer Science, Stanford University | Associate Director and Senior Fellow, Stanford HAI
Angjoo Kanazawa
Assistant Professor, Department of Electrical Engineering and Computer Sciences, University of California, Berkeley; Director, Kanazawa AI Research (KAIR); Advisory Board: Wonder Dynamics and Luma AI
Been Kim
Senior Staff Research Scientist, Google DeepMind
Daphne Koller
CEO and Founder, insitro; Adjunct Professor of Computer Science, Stanford University
Jaron Lanier
Prime Unifying Scientist, Microsoft
Percy Liang
Percy Liang
Associate Professor of Computer Science, Stanford University | Director, Stanford Center for Research on Foundation Models | Senior Fellow, Stanford HAI
Shakir Mohamed
Senior Research Scientist, Google DeepMind
Joon Sung Park
Ph.D. Candidate of Computer Science, Stanford University
Alex Rives
Computer scientist focused on language models for biology
Lisa Schut
Doctoral Candidate in Machine Learning, University of Oxford; Research Scientist Intern, Google DeepMind
Aditi Sheshadri
Assistant Professor of Earth System Science and, by courtesy, Senior Fellow at the Woods Institute for the Environment, Stanford University
Pratyusha Sharma
PhD Candidate, EECS, MIT
Ge Wang
Associate Professor of Music and Associate Professor, by courtesy, of Computer Science, Stanford | Associate Director and Senior Fellow, Stanford HAI
Ashia Wilson
Assistant Professor, Department of Electrical Engineering and Computer Science, MIT
Diyi Yang
Assistant Professor, Computer Science Department, Stanford University
Overview
Agenda
Speakers
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Event Contact
HAI Events Team
stanford-hai@stanford.edu
Related
  • Surya Ganguli
    Associate Professor of Applied Physics, and by courtesy, of Neurobiology, of Electrical Engineering, and of Computer Science, Stanford University | Associate Director and Senior Fellow, Stanford HAI
    Surya Ganguli headshot
  • Curtis Langlotz
    Senior Associate Vice Provost for Research | Professor of Radiology (Integrative Biomedical Imaging Informatics), of Medicine (Biomedical Informatics Research), of Biomedical Data Science | Senior Fellow, Stanford HAI
    Curt Langlotz headshot
  • Percy Liang
    Associate Professor of Computer Science, Stanford University | Director, Stanford Center for Research on Foundation Models | Senior Fellow, Stanford HAI
    Percy Liang

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