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Deep Learning fast inference on FPGA for CMS Muon Level-1 Trigger studies

With the advent of the High-Luminosity phase of the LHC (HL-LHC), the instantaneous luminosity of the Large Hadron Collider at CERN is expected to increase up to $\approx 7.5 \cdot 10^{34} cm^{-2}s^{-1}$. Therefore, new strategies for data acquisition and processing will be necessary, in preparation...

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Detalles Bibliográficos
Autores principales: Diotalevi, Tommaso, Lorusso, Marco, Travaglini, Riccardo, Battilana, Carlo, Bonacorsi, Daniele
Lenguaje:eng
Publicado: 2021
Materias:
Acceso en línea:https://dx.doi.org/10.22323/1.378.0005
http://cds.cern.ch/record/2816664
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author Diotalevi, Tommaso
Lorusso, Marco
Travaglini, Riccardo
Battilana, Carlo
Bonacorsi, Daniele
author_facet Diotalevi, Tommaso
Lorusso, Marco
Travaglini, Riccardo
Battilana, Carlo
Bonacorsi, Daniele
author_sort Diotalevi, Tommaso
collection CERN
description With the advent of the High-Luminosity phase of the LHC (HL-LHC), the instantaneous luminosity of the Large Hadron Collider at CERN is expected to increase up to $\approx 7.5 \cdot 10^{34} cm^{-2}s^{-1}$. Therefore, new strategies for data acquisition and processing will be necessary, in preparation for the higher number of signals produced inside the detectors. In the context of an upgrade of the trigger system of the Compact Muon Solenoid (CMS), new reconstruction algorithms, aiming for an improved performance, are being developed. For what concerns the online tracking of muons, one of the figures that is being improved is the accuracy of the transverse momentum ($p_T$) measurement. Machine Learning techniques have already been considered as a promising solution for this problem, as they make possible, with the use of more information collected by the detector, to build models able to predict with an improved precision the $p_T$. This work aims to implement such models onto an FPGA, which promises smaller latency with respect to traditional inference algorithms running on CPU, an important aspect for a trigger system. The analysis carried out in this work will use data obtained through Monte Carlo simulations of muons crossing the barrel region of the CMS muon chambers, and compare the results with the $p_T$ assigned by the current CMS Level 1 Barrel Muon Track Finder (BMTF) trigger system.
id cern-2816664
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2021
record_format invenio
spelling cern-28166642022-07-27T08:30:05Zdoi:10.22323/1.378.0005http://cds.cern.ch/record/2816664engDiotalevi, TommasoLorusso, MarcoTravaglini, RiccardoBattilana, CarloBonacorsi, DanieleDeep Learning fast inference on FPGA for CMS Muon Level-1 Trigger studiesComputing and ComputersWith the advent of the High-Luminosity phase of the LHC (HL-LHC), the instantaneous luminosity of the Large Hadron Collider at CERN is expected to increase up to $\approx 7.5 \cdot 10^{34} cm^{-2}s^{-1}$. Therefore, new strategies for data acquisition and processing will be necessary, in preparation for the higher number of signals produced inside the detectors. In the context of an upgrade of the trigger system of the Compact Muon Solenoid (CMS), new reconstruction algorithms, aiming for an improved performance, are being developed. For what concerns the online tracking of muons, one of the figures that is being improved is the accuracy of the transverse momentum ($p_T$) measurement. Machine Learning techniques have already been considered as a promising solution for this problem, as they make possible, with the use of more information collected by the detector, to build models able to predict with an improved precision the $p_T$. This work aims to implement such models onto an FPGA, which promises smaller latency with respect to traditional inference algorithms running on CPU, an important aspect for a trigger system. The analysis carried out in this work will use data obtained through Monte Carlo simulations of muons crossing the barrel region of the CMS muon chambers, and compare the results with the $p_T$ assigned by the current CMS Level 1 Barrel Muon Track Finder (BMTF) trigger system.oai:cds.cern.ch:28166642021
spellingShingle Computing and Computers
Diotalevi, Tommaso
Lorusso, Marco
Travaglini, Riccardo
Battilana, Carlo
Bonacorsi, Daniele
Deep Learning fast inference on FPGA for CMS Muon Level-1 Trigger studies
title Deep Learning fast inference on FPGA for CMS Muon Level-1 Trigger studies
title_full Deep Learning fast inference on FPGA for CMS Muon Level-1 Trigger studies
title_fullStr Deep Learning fast inference on FPGA for CMS Muon Level-1 Trigger studies
title_full_unstemmed Deep Learning fast inference on FPGA for CMS Muon Level-1 Trigger studies
title_short Deep Learning fast inference on FPGA for CMS Muon Level-1 Trigger studies
title_sort deep learning fast inference on fpga for cms muon level-1 trigger studies
topic Computing and Computers
url https://dx.doi.org/10.22323/1.378.0005
http://cds.cern.ch/record/2816664
work_keys_str_mv AT diotalevitommaso deeplearningfastinferenceonfpgaforcmsmuonlevel1triggerstudies
AT lorussomarco deeplearningfastinferenceonfpgaforcmsmuonlevel1triggerstudies
AT travagliniriccardo deeplearningfastinferenceonfpgaforcmsmuonlevel1triggerstudies
AT battilanacarlo deeplearningfastinferenceonfpgaforcmsmuonlevel1triggerstudies
AT bonacorsidaniele deeplearningfastinferenceonfpgaforcmsmuonlevel1triggerstudies