Cargando…

Using holistic event information in the trigger

In order to achieve the data rates proposed for the future Run 3 upgrade of the LHCb detector, new processing models must be developed to deal with the increased throughput. For this reason we aim to investigate the feasibility of purely data-driven 'holistic' methods, with the constraint...

Descripción completa

Detalles Bibliográficos
Autores principales: Bourgeois, Dylan, Fitzpatrick, Conor, Stahl, Sascha
Lenguaje:eng
Publicado: 2018
Materias:
Acceso en línea:http://cds.cern.ch/record/2632767
_version_ 1780959599814246400
author Bourgeois, Dylan
Fitzpatrick, Conor
Stahl, Sascha
author_facet Bourgeois, Dylan
Fitzpatrick, Conor
Stahl, Sascha
author_sort Bourgeois, Dylan
collection CERN
description In order to achieve the data rates proposed for the future Run 3 upgrade of the LHCb detector, new processing models must be developed to deal with the increased throughput. For this reason we aim to investigate the feasibility of purely data-driven 'holistic' methods, with the constraint of introducing minimal computational overhead, hence using only raw detector information. These filters should be unbiased - having a neutral effect with respect to the studied physics channels. In particular, the use of machine learning based methods seems particularly suitable, potentially providing a natural formulation for heuristic-free, unbiased filters whose objective would be to optimize between throughput and bandwidth.
id cern-2632767
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2018
record_format invenio
spelling cern-26327672023-10-12T05:22:15Zhttp://cds.cern.ch/record/2632767engBourgeois, DylanFitzpatrick, ConorStahl, SaschaUsing holistic event information in the triggerParticle Physics - ExperimentIn order to achieve the data rates proposed for the future Run 3 upgrade of the LHCb detector, new processing models must be developed to deal with the increased throughput. For this reason we aim to investigate the feasibility of purely data-driven 'holistic' methods, with the constraint of introducing minimal computational overhead, hence using only raw detector information. These filters should be unbiased - having a neutral effect with respect to the studied physics channels. In particular, the use of machine learning based methods seems particularly suitable, potentially providing a natural formulation for heuristic-free, unbiased filters whose objective would be to optimize between throughput and bandwidth.In order to achieve the data rates proposed for the future Run 3 upgrade of the LHCb detector, new processing models must be developed to deal with the increased throughput. For this reason we aim to investigate the feasibility of purely data-driven 'holistic' methods, with the constraint of introducing minimal computational overhead, hence using only raw detector information. These filters should be unbiased - having a neutral effect with respect to the studied physics channels. In particular, the use of machine learning based methods seems particularly suitable, potentially providing a natural formulation for heuristic-free, unbiased filters whose objective would be to optimize between throughput and bandwidth.In order to achieve the data rates proposed for the future Run 3 upgrade of the LHCb detector, new processing models must be developed to deal with the increased throughput. For this reason, we aim to investigate the feasibility of purely data-driven holistic methods, with the constraint of introducing minimal computational overhead, hence using only raw detector information. These filters should be unbiased - having a neutral effect with respect to the studied physics channels. In particular, the use of machine learning based methods seems particularly suitable, potentially providing a natural formulation for heuristic-free, unbiased filters whose objective would be to optimize between throughput and bandwidth.arXiv:1808.00711CERN-LHCb-PUB-2018-010LHCb-PUB-2018-010CERN-LHCb-PUB-2018-010oai:cds.cern.ch:26327672018-07-30
spellingShingle Particle Physics - Experiment
Bourgeois, Dylan
Fitzpatrick, Conor
Stahl, Sascha
Using holistic event information in the trigger
title Using holistic event information in the trigger
title_full Using holistic event information in the trigger
title_fullStr Using holistic event information in the trigger
title_full_unstemmed Using holistic event information in the trigger
title_short Using holistic event information in the trigger
title_sort using holistic event information in the trigger
topic Particle Physics - Experiment
url http://cds.cern.ch/record/2632767
work_keys_str_mv AT bourgeoisdylan usingholisticeventinformationinthetrigger
AT fitzpatrickconor usingholisticeventinformationinthetrigger
AT stahlsascha usingholisticeventinformationinthetrigger