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TZOFFSETFROM:+0000
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DTSTART:20230101T000000
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DTSTART;TZID=UTC:20231005T160000
DTEND;TZID=UTC:20231005T170000
DTSTAMP:20260414T214452
CREATED:20231002T165452Z
LAST-MODIFIED:20231002T165452Z
UID:2386-1696521600-1696525200@rpm.physics.lbl.gov
SUMMARY:Speaker: Jure Zupan (University of Cincinnati) - Title: From quarks and gluons to hadrons
DESCRIPTION:Research Progress Meeting \nDate: October 5\, 2023 \nTime: 4:00- 5:00 pm \nLocation: Sessler Conference Room- 50A-5132 [In-Person and HYBRID]  \nSpeaker: Jure Zupan (University of Cincinnati) \nTitle: From quarks and gluons to hadrons\n \nAbstract: Monte Carlo event generators for particle collisions are composed of three block\, the calculations of hard matrix elements\, parton shower\, and hadronization. While the first two are theoretically under good control and systematically improvable using perturbative techniques\, hadronization relies on the use of phenomenological models. I will review the first attempts to use Machine Learning architectures to describe hadronization\, with the ultimate goal to train directly on data. The first practical side product of this effort is an algorithm for faster evaluation of uncertainties associated with the Lund string model implemented in Pythia. \nJoin Zoom Meeting\nhttps://lbnl.zoom.us/j/98854322464?pwd=K2tKUm1VZjRlV1J5RHE3cXdHQzRxdz09\n\nMeeting ID: 988 5432 2464\n\nPasscode: 142239
URL:https://rpm.physics.lbl.gov/event/speaker-jure-zupan-university-of-cincinnati-title-from-quarks-and-gluons-to-hadrons/
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