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DTSTART:20170312T100000
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DTSTART;TZID=America/Los_Angeles:20171020T120000
DTEND;TZID=America/Los_Angeles:20171020T130000
DTSTAMP:20260527T181724
CREATED:20171019T173727Z
LAST-MODIFIED:20171019T173801Z
UID:281-1508500800-1508504400@inpa.lbl.gov
SUMMARY:Prabhat (NERSC at LBL) - Deep Learning for Science
DESCRIPTION:Deep Learning has revolutionized the fields of computer vision\, speech recognition and control systems. Can Deep Learning (DL) work for scientific problems? This talk will explore a variety of DOE/LBL applications that are currently benefiting from Deep Learning. We will review classification and regression problems in astronomy\, cosmology\, neuroscience\, genomics and high-energy physics. We will outline several short and long-term challenges at the frontier of DL research\, and speculate about the future of DL for data-intensive science.
URL:https://inpa.lbl.gov/event/prabhat-nersc-at-lbl-deep-learning-for-science/
LOCATION:50A-5132- Sessler\, 50A-5132 Sessler Conference Room\, CA
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