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Physics Community Needs, Tools, and Resources for Machine Learning
2022
Citations Over Time
Philip Harris, E. Katsavounidis, W. P. McCormack, Dylan Rankin, Yongbin Feng, A. Gandrakota, Christian Herwig, B. Holzman, K. Pedro, Nhan Viet Tran, T. Yang, J. Ngadiuba, M. W. Coughlin, Scott Hauck, S.‐C. Hsu, E. E. Khoda, Deming Chen, M. S. Neubauer, J. Duarte, G. Karagiorgi, Mia Liu
Abstract
Machine learning (ML) is becoming an increasingly important component of cutting-edge physics research, but its computational requirements present significant challenges. In this white paper, we discuss the needs of the physics community regarding ML across latency and throughput regimes, the tools and resources that offer the possibility of addressing these needs, and how these can be best utilized and accessed in the coming years.
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