Cargando…

Hardware Accelerated ATLAS Workloads on the WLCG grid

In recent years the usage of machine learning techniques within data-intensive sciences in general and high-energy physics in particular has rapidly increased, in part due to the availability of large datasets on which such algorithms can be trained as well as suitable hardware, such as graphics or...

Descripción completa

Detalles Bibliográficos
Autores principales: Forti, Alessandra, Heinrich, Lukas, Guth, Manuel
Lenguaje:eng
Publicado: 2019
Materias:
Acceso en línea:https://dx.doi.org/10.1088/1742-6596/1525/1/012059
http://cds.cern.ch/record/2676789
_version_ 1780962745226625024
author Forti, Alessandra
Heinrich, Lukas
Guth, Manuel
author_facet Forti, Alessandra
Heinrich, Lukas
Guth, Manuel
author_sort Forti, Alessandra
collection CERN
description In recent years the usage of machine learning techniques within data-intensive sciences in general and high-energy physics in particular has rapidly increased, in part due to the availability of large datasets on which such algorithms can be trained as well as suitable hardware, such as graphics or tensor processing units which greatly accelerate the training and execution of such algorithms. Within the HEP domain, the development of these techniques has so far relied on resources external to the primary computing infrastructure of the WLCG. In this paper we present an integration of hardware-accelerated workloads into the Grid through the declaration of dedicated queues with access to hardware accelerators and the use of linux container images holding a modern data science software stack. A frequent use-case of in the development of machine learning algorithms is the optimization of neural networks through the tuning of their hyper parameters. For this often a large range of network variations must be trained and compared, which for some optimization schemes can be performed in parallel -- a workload well suited for grid computing. An example of such a hyper-parameter scan on Grid resources for the case of Flavor Tagging within ATLAS is presented.
id cern-2676789
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2019
record_format invenio
spelling cern-26767892022-01-14T14:54:29Zdoi:10.1088/1742-6596/1525/1/012059http://cds.cern.ch/record/2676789engForti, AlessandraHeinrich, LukasGuth, ManuelHardware Accelerated ATLAS Workloads on the WLCG gridParticle Physics - ExperimentIn recent years the usage of machine learning techniques within data-intensive sciences in general and high-energy physics in particular has rapidly increased, in part due to the availability of large datasets on which such algorithms can be trained as well as suitable hardware, such as graphics or tensor processing units which greatly accelerate the training and execution of such algorithms. Within the HEP domain, the development of these techniques has so far relied on resources external to the primary computing infrastructure of the WLCG. In this paper we present an integration of hardware-accelerated workloads into the Grid through the declaration of dedicated queues with access to hardware accelerators and the use of linux container images holding a modern data science software stack. A frequent use-case of in the development of machine learning algorithms is the optimization of neural networks through the tuning of their hyper parameters. For this often a large range of network variations must be trained and compared, which for some optimization schemes can be performed in parallel -- a workload well suited for grid computing. An example of such a hyper-parameter scan on Grid resources for the case of Flavor Tagging within ATLAS is presented.ATL-SOFT-PROC-2019-006oai:cds.cern.ch:26767892019-05-30
spellingShingle Particle Physics - Experiment
Forti, Alessandra
Heinrich, Lukas
Guth, Manuel
Hardware Accelerated ATLAS Workloads on the WLCG grid
title Hardware Accelerated ATLAS Workloads on the WLCG grid
title_full Hardware Accelerated ATLAS Workloads on the WLCG grid
title_fullStr Hardware Accelerated ATLAS Workloads on the WLCG grid
title_full_unstemmed Hardware Accelerated ATLAS Workloads on the WLCG grid
title_short Hardware Accelerated ATLAS Workloads on the WLCG grid
title_sort hardware accelerated atlas workloads on the wlcg grid
topic Particle Physics - Experiment
url https://dx.doi.org/10.1088/1742-6596/1525/1/012059
http://cds.cern.ch/record/2676789
work_keys_str_mv AT fortialessandra hardwareacceleratedatlasworkloadsonthewlcggrid
AT heinrichlukas hardwareacceleratedatlasworkloadsonthewlcggrid
AT guthmanuel hardwareacceleratedatlasworkloadsonthewlcggrid