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X-WR-CALNAME:The Rutgers Artificial Intelligence and Data Science (RAD) Collaboratory
X-ORIGINAL-URL:https://radcollaboratory.rutgers.edu
X-WR-CALDESC:Events for The Rutgers Artificial Intelligence and Data Science (RAD) Collaboratory
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TZID:UTC
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TZOFFSETFROM:+0000
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TZNAME:UTC
DTSTART:20250101T000000
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DTSTART;TZID=UTC:20250416T120000
DTEND;TZID=UTC:20250416T130000
DTSTAMP:20260504T094554
CREATED:20250414T080012Z
LAST-MODIFIED:20250416T144334Z
UID:2295-1744804800-1744808400@radcollaboratory.rutgers.edu
SUMMARY:Seminar: Diamond: Democratizing Large Foundation Model Training for Science
DESCRIPTION:The Rutgers University Institute for Quantitative Biomedicine in collaboration with the RAD Collaboratory and the Protein Data Bank invite you to the following seminar: \n  \nZhao Zhang\, Rutgers University \nDiamond: Democratizing Large Foundation Model Training for Science \nWednesday\, April 16 | 12:00 PM \nIn Person: Proteomics Building\, Room 120\nZoom: go.rutgers.edu/gvyyc2xu \nAbstract: \nDiamond is a service designed to facilitate large model training across GPU clusters for scientists. It exposes web user interface to build container images\, manage training jobs\, monitor job progress\, and manage data and provenance across clusters. Diamond relies on Globus Auth\, Globus Transfer/Search\, and Globus Compute for authentication\, data management\, and container/job management. So far\, Diamond has been tested on NCSA Delta\, TACC Frontera\, and Lonestar6. We aim to release the alpha version of Diamond in early April and to support all NAIRR Pilot GPU resources. In this talk\, I will show a demo of running OpenFold using Diamond and discuss various opportunities of applying modern deep learning techniques for structural biology.
URL:https://radcollaboratory.rutgers.edu/event/seminar-april16/
LOCATION:NJ
CATEGORIES:RAD Collaboratory Events,Rutgers Events
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