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Cost-efficiency of Large-scale Electronic Structure Simulations with Intel Xeon Phi Processors

<!--HTML-->Benefits of Intel Xeon Phi Knights Landing (KNL) systems in computing cost are examined with tight-binding simulations of large-scale electronic structures that involve sparse system matrices whose dimensions normally reach several tens of millions. Speed and energy usage of our in-...

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Autor principal: Ryu, Hoon
Lenguaje:eng
Publicado: 2019
Materias:
Acceso en línea:http://cds.cern.ch/record/2691237
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author Ryu, Hoon
author_facet Ryu, Hoon
author_sort Ryu, Hoon
collection CERN
description <!--HTML-->Benefits of Intel Xeon Phi Knights Landing (KNL) systems in computing cost are examined with tight-binding simulations of large-scale electronic structures that involve sparse system matrices whose dimensions normally reach several tens of millions. Speed and energy usage of our in-house Schroedinger equation solver are benchmarked in KNL systems for realistic modelling tasks, and are discussed against the cost required by offload computing with P100 GPU devices. Superiority in speed and energy-efficiency observed in KNL systems justify the practicality of bootable manycore processors that are adopted by nearly 30% of largest supercomputers in the world. With a demonstration of the strong scalability up to 2,500 nodes, this work serves as an useful case study that supports the utility of KNL systems for handling memory-bound applications including ours and other numerical problems that involve large-scale sparse matrix-vector multiplications, particularly compared to GPU-based systems.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2019
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spelling cern-26912372022-11-02T22:24:41Zhttp://cds.cern.ch/record/2691237engRyu, HoonCost-efficiency of Large-scale Electronic Structure Simulations with Intel Xeon Phi ProcessorsIXPUG 2019 Annual Conference at CERNother events or meetings<!--HTML-->Benefits of Intel Xeon Phi Knights Landing (KNL) systems in computing cost are examined with tight-binding simulations of large-scale electronic structures that involve sparse system matrices whose dimensions normally reach several tens of millions. Speed and energy usage of our in-house Schroedinger equation solver are benchmarked in KNL systems for realistic modelling tasks, and are discussed against the cost required by offload computing with P100 GPU devices. Superiority in speed and energy-efficiency observed in KNL systems justify the practicality of bootable manycore processors that are adopted by nearly 30% of largest supercomputers in the world. With a demonstration of the strong scalability up to 2,500 nodes, this work serves as an useful case study that supports the utility of KNL systems for handling memory-bound applications including ours and other numerical problems that involve large-scale sparse matrix-vector multiplications, particularly compared to GPU-based systems.oai:cds.cern.ch:26912372019
spellingShingle other events or meetings
Ryu, Hoon
Cost-efficiency of Large-scale Electronic Structure Simulations with Intel Xeon Phi Processors
title Cost-efficiency of Large-scale Electronic Structure Simulations with Intel Xeon Phi Processors
title_full Cost-efficiency of Large-scale Electronic Structure Simulations with Intel Xeon Phi Processors
title_fullStr Cost-efficiency of Large-scale Electronic Structure Simulations with Intel Xeon Phi Processors
title_full_unstemmed Cost-efficiency of Large-scale Electronic Structure Simulations with Intel Xeon Phi Processors
title_short Cost-efficiency of Large-scale Electronic Structure Simulations with Intel Xeon Phi Processors
title_sort cost-efficiency of large-scale electronic structure simulations with intel xeon phi processors
topic other events or meetings
url http://cds.cern.ch/record/2691237
work_keys_str_mv AT ryuhoon costefficiencyoflargescaleelectronicstructuresimulationswithintelxeonphiprocessors
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