Machine learning at the energy and intensity frontiers of particle physics

A Radovic, M Williams, D Rousseau, M Kagan… - Nature, 2018 - nature.com
A Radovic, M Williams, D Rousseau, M Kagan, D Bonacorsi, A Himmel, A Aurisano, K Terao
Nature, 2018nature.com
Our knowledge of the fundamental particles of nature and their interactions is summarized
by the standard model of particle physics. Advancing our understanding in this field has
required experiments that operate at ever higher energies and intensities, which produce
extremely large and information-rich data samples. The use of machine-learning techniques
is revolutionizing how we interpret these data samples, greatly increasing the discovery
potential of present and future experiments. Here we summarize the challenges and …
Abstract
Our knowledge of the fundamental particles of nature and their interactions is summarized by the standard model of particle physics. Advancing our understanding in this field has required experiments that operate at ever higher energies and intensities, which produce extremely large and information-rich data samples. The use of machine-learning techniques is revolutionizing how we interpret these data samples, greatly increasing the discovery potential of present and future experiments. Here we summarize the challenges and opportunities that come with the use of machine learning at the frontiers of particle physics.
nature.com
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