Machine Learning in Nuclear Physics
A. Boehnlein
M. Diefenthaler
C. Fanelli
M. Hjorth-Jensen
T. Horn
M. Kuchera
Dean Lee
W. Nazarewicz
K. Orginos
P. Ostroumov
L. Pang
Alan Poon
Nobuo Sato
M. Schram
A. Scheinker
Michael S. Smith
Xin-Nian Wang
Veronique Ziegler

Abstract
Advances in machine learning methods provide tools that have broad applicability in scientific research. These techniques are being applied across the diversity of nuclear physics research topics, leading to advances that will facilitate scientific discoveries and societal applications. This Review gives a snapshot of nuclear physics research which has been transformed by machine learning techniques.
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