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Deep Neural Networks for Physics Analysis on low-level whole-detector data at the LHC

Authors :
Bhimji, Wahid
Farrell, Steven Andrew
Kurth, Thorsten
Paganini, Michela
Prabhat
Racah, Evan
Publication Year :
2017

Abstract

There has been considerable recent activity applying deep convolutional neural nets (CNNs) to data from particle physics experiments. Current approaches on ATLAS/CMS have largely focussed on a subset of the calorimeter, and for identifying objects or particular particle types. We explore approaches that use the entire calorimeter, combined with track information, for directly conducting physics analyses: i.e. classifying events as known-physics background or new-physics signals. We use an existing RPV-Supersymmetry analysis as a case study and explore CNNs on multi-channel, high-resolution sparse images: applied on GPU and multi-node CPU architectures (including Knights Landing (KNL) Xeon Phi nodes) on the Cori supercomputer at NERSC.<br />Comment: Presented at ACAT 2017 Conference, Submitted to J. Phys. Conf. Ser

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1711.03573
Document Type :
Working Paper