Cargando…

Harvester : an edge service harvesting heterogeneous resources for ATLAS

The Production and Distributed Analysis (PanDA) system has been successfully used in the ATLAS experiment as a data-driven workload management system. The PanDA system has proven to be capable of operating at the Large Hadron Collider data processing scale over the last decade including the Run 1 an...

Descripción completa

Detalles Bibliográficos
Autores principales: Maeno, Tadashi, Barreiro Megino, Fernando Harald, Benjamin, Douglas, Cameron, David, Childers, John Taylor, De, Kaushik, De Salvo, Alessandro, Filipcic, Andrej, Hover, John, Lin, Fahui, Oleynik, Danila
Lenguaje:eng
Publicado: 2018
Materias:
Acceso en línea:http://cds.cern.ch/record/2648879
_version_ 1780960700625059840
author Maeno, Tadashi
Barreiro Megino, Fernando Harald
Benjamin, Douglas
Cameron, David
Childers, John Taylor
De, Kaushik
De Salvo, Alessandro
Filipcic, Andrej
Hover, John
Lin, Fahui
Oleynik, Danila
author_facet Maeno, Tadashi
Barreiro Megino, Fernando Harald
Benjamin, Douglas
Cameron, David
Childers, John Taylor
De, Kaushik
De Salvo, Alessandro
Filipcic, Andrej
Hover, John
Lin, Fahui
Oleynik, Danila
author_sort Maeno, Tadashi
collection CERN
description The Production and Distributed Analysis (PanDA) system has been successfully used in the ATLAS experiment as a data-driven workload management system. The PanDA system has proven to be capable of operating at the Large Hadron Collider data processing scale over the last decade including the Run 1 and Run 2 data taking periods. PanDA was originally designed to be weakly coupled with the WLCG processing resources. Lately the system is revealing the difficulties to optimally integrate and exploit new resource types such as HPC and preemptable cloud resources with instant spin-up, and new workflows such as the event service, because their intrinsic nature and requirements are quite different from that of traditional grid resources. Therefore, a new component, Harvester, has been developed to mediate the control and information flow between PanDA and the resources, in order to enable more intelligent workload management and dynamic resource provisioning based on detailed knowledge of resource capabilities and their real-time state. Harvester has been designed around a modular structure to separate core functions and resource specific plugins, simplifying the operation with heterogeneous resources and providing a uniform monitoring view. This paper will give an overview of the Harvester architecture, current status with various resources, and future plans.
id cern-2648879
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2018
record_format invenio
spelling cern-26488792019-09-30T06:29:59Zhttp://cds.cern.ch/record/2648879engMaeno, TadashiBarreiro Megino, Fernando HaraldBenjamin, DouglasCameron, DavidChilders, John TaylorDe, KaushikDe Salvo, AlessandroFilipcic, AndrejHover, JohnLin, FahuiOleynik, DanilaHarvester : an edge service harvesting heterogeneous resources for ATLASParticle Physics - ExperimentThe Production and Distributed Analysis (PanDA) system has been successfully used in the ATLAS experiment as a data-driven workload management system. The PanDA system has proven to be capable of operating at the Large Hadron Collider data processing scale over the last decade including the Run 1 and Run 2 data taking periods. PanDA was originally designed to be weakly coupled with the WLCG processing resources. Lately the system is revealing the difficulties to optimally integrate and exploit new resource types such as HPC and preemptable cloud resources with instant spin-up, and new workflows such as the event service, because their intrinsic nature and requirements are quite different from that of traditional grid resources. Therefore, a new component, Harvester, has been developed to mediate the control and information flow between PanDA and the resources, in order to enable more intelligent workload management and dynamic resource provisioning based on detailed knowledge of resource capabilities and their real-time state. Harvester has been designed around a modular structure to separate core functions and resource specific plugins, simplifying the operation with heterogeneous resources and providing a uniform monitoring view. This paper will give an overview of the Harvester architecture, current status with various resources, and future plans.ATL-SOFT-PROC-2018-029oai:cds.cern.ch:26488792018-11-25
spellingShingle Particle Physics - Experiment
Maeno, Tadashi
Barreiro Megino, Fernando Harald
Benjamin, Douglas
Cameron, David
Childers, John Taylor
De, Kaushik
De Salvo, Alessandro
Filipcic, Andrej
Hover, John
Lin, Fahui
Oleynik, Danila
Harvester : an edge service harvesting heterogeneous resources for ATLAS
title Harvester : an edge service harvesting heterogeneous resources for ATLAS
title_full Harvester : an edge service harvesting heterogeneous resources for ATLAS
title_fullStr Harvester : an edge service harvesting heterogeneous resources for ATLAS
title_full_unstemmed Harvester : an edge service harvesting heterogeneous resources for ATLAS
title_short Harvester : an edge service harvesting heterogeneous resources for ATLAS
title_sort harvester : an edge service harvesting heterogeneous resources for atlas
topic Particle Physics - Experiment
url http://cds.cern.ch/record/2648879
work_keys_str_mv AT maenotadashi harvesteranedgeserviceharvestingheterogeneousresourcesforatlas
AT barreiromeginofernandoharald harvesteranedgeserviceharvestingheterogeneousresourcesforatlas
AT benjamindouglas harvesteranedgeserviceharvestingheterogeneousresourcesforatlas
AT camerondavid harvesteranedgeserviceharvestingheterogeneousresourcesforatlas
AT childersjohntaylor harvesteranedgeserviceharvestingheterogeneousresourcesforatlas
AT dekaushik harvesteranedgeserviceharvestingheterogeneousresourcesforatlas
AT desalvoalessandro harvesteranedgeserviceharvestingheterogeneousresourcesforatlas
AT filipcicandrej harvesteranedgeserviceharvestingheterogeneousresourcesforatlas
AT hoverjohn harvesteranedgeserviceharvestingheterogeneousresourcesforatlas
AT linfahui harvesteranedgeserviceharvestingheterogeneousresourcesforatlas
AT oleynikdanila harvesteranedgeserviceharvestingheterogeneousresourcesforatlas