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40 MHz Scouting with Deep Learning in CMS

A 40 MHz scouting system at CMS would provide fast and virtually unlimited statistics for detector diagnostics, alternative luminosity measurements and, in some cases, calibrations, and it has the potential to enable the study of otherwise inaccessible signatures, either too common to fit in the L1...

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Autores principales: Golubovic, Dejan, James, Thomas Owen, Meschi, Emilio, Puljak, Ema, Rabady, Dinyar Sebastian, Zahid Rasheed, Awais, Sakulin, Hannes, Vourliotis, Emmanouil, Zejdl, Petr
Lenguaje:eng
Publicado: 2020
Materias:
Acceso en línea:http://cds.cern.ch/record/2792674
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author Golubovic, Dejan
James, Thomas Owen
Meschi, Emilio
Puljak, Ema
Rabady, Dinyar Sebastian
Zahid Rasheed, Awais
Sakulin, Hannes
Vourliotis, Emmanouil
Zejdl, Petr
author_facet Golubovic, Dejan
James, Thomas Owen
Meschi, Emilio
Puljak, Ema
Rabady, Dinyar Sebastian
Zahid Rasheed, Awais
Sakulin, Hannes
Vourliotis, Emmanouil
Zejdl, Petr
author_sort Golubovic, Dejan
collection CERN
description A 40 MHz scouting system at CMS would provide fast and virtually unlimited statistics for detector diagnostics, alternative luminosity measurements and, in some cases, calibrations, and it has the potential to enable the study of otherwise inaccessible signatures, either too common to fit in the L1 accept budget, or with requirements which are orthogonal to ``mainstream'' physics, such as long-lived particles. Deep learning is a class of machine learning algorithms that uses multiple layers to progressively extract higher-level features from the raw inputs. A series of studies on different aspects of LHC data processing have demonstrated the potential of deep learning for CERN applications. The usage of deep learning aims at improving physics performance and reducing execution time. This talk will present a deep learning approach to muon scouting in the Level-1 Trigger of the CMS detector. The idea is to utilise multilayered perceptrons to ``re-fit''' the Level-1 muon tracks, using fully reconstructed offline tracking parameters as the ground truth for neural network training. The network produces corrected helix parameters (transverse momentum, $\eta$ and $\phi$), with a precision that is greatly improved over the standard Level 1 reconstruction. The network is executed on an FPGA-based PCIe board produced by Micron Technology, the SB-852. It is implemented using the Micron Deep Learning Accelerator inference engine. The methodology for developing deep learning models will be presented, alongside the process of compiling the models for fast inference hardware. The metrics for evaluating performance and the achieved results will be discussed.
id cern-2792674
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2020
record_format invenio
spelling cern-27926742021-12-10T19:48:22Zhttp://cds.cern.ch/record/2792674engGolubovic, DejanJames, Thomas OwenMeschi, EmilioPuljak, EmaRabady, Dinyar SebastianZahid Rasheed, AwaisSakulin, HannesVourliotis, EmmanouilZejdl, Petr40 MHz Scouting with Deep Learning in CMSDetectors and Experimental TechniquesA 40 MHz scouting system at CMS would provide fast and virtually unlimited statistics for detector diagnostics, alternative luminosity measurements and, in some cases, calibrations, and it has the potential to enable the study of otherwise inaccessible signatures, either too common to fit in the L1 accept budget, or with requirements which are orthogonal to ``mainstream'' physics, such as long-lived particles. Deep learning is a class of machine learning algorithms that uses multiple layers to progressively extract higher-level features from the raw inputs. A series of studies on different aspects of LHC data processing have demonstrated the potential of deep learning for CERN applications. The usage of deep learning aims at improving physics performance and reducing execution time. This talk will present a deep learning approach to muon scouting in the Level-1 Trigger of the CMS detector. The idea is to utilise multilayered perceptrons to ``re-fit''' the Level-1 muon tracks, using fully reconstructed offline tracking parameters as the ground truth for neural network training. The network produces corrected helix parameters (transverse momentum, $\eta$ and $\phi$), with a precision that is greatly improved over the standard Level 1 reconstruction. The network is executed on an FPGA-based PCIe board produced by Micron Technology, the SB-852. It is implemented using the Micron Deep Learning Accelerator inference engine. The methodology for developing deep learning models will be presented, alongside the process of compiling the models for fast inference hardware. The metrics for evaluating performance and the achieved results will be discussed.CMS-CR-2020-109oai:cds.cern.ch:27926742020-05-30
spellingShingle Detectors and Experimental Techniques
Golubovic, Dejan
James, Thomas Owen
Meschi, Emilio
Puljak, Ema
Rabady, Dinyar Sebastian
Zahid Rasheed, Awais
Sakulin, Hannes
Vourliotis, Emmanouil
Zejdl, Petr
40 MHz Scouting with Deep Learning in CMS
title 40 MHz Scouting with Deep Learning in CMS
title_full 40 MHz Scouting with Deep Learning in CMS
title_fullStr 40 MHz Scouting with Deep Learning in CMS
title_full_unstemmed 40 MHz Scouting with Deep Learning in CMS
title_short 40 MHz Scouting with Deep Learning in CMS
title_sort 40 mhz scouting with deep learning in cms
topic Detectors and Experimental Techniques
url http://cds.cern.ch/record/2792674
work_keys_str_mv AT golubovicdejan 40mhzscoutingwithdeeplearningincms
AT jamesthomasowen 40mhzscoutingwithdeeplearningincms
AT meschiemilio 40mhzscoutingwithdeeplearningincms
AT puljakema 40mhzscoutingwithdeeplearningincms
AT rabadydinyarsebastian 40mhzscoutingwithdeeplearningincms
AT zahidrasheedawais 40mhzscoutingwithdeeplearningincms
AT sakulinhannes 40mhzscoutingwithdeeplearningincms
AT vourliotisemmanouil 40mhzscoutingwithdeeplearningincms
AT zejdlpetr 40mhzscoutingwithdeeplearningincms