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Omni-Path
Omni-Path is a high-performance communication architecture owned by Intel. This communication architecture offers low communication latency, low…
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Related topics
Related topics
10 relations
Fabric computing
IWARP
InfiniBand
List of device bit rates
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Broader (1)
Parallel computing
Papers overview
Semantic Scholar uses AI to extract papers important to this topic.
2018
2018
Multiple endpoints for improved MPI performance on a lattice QCD code
L. Meadows
,
K. Ishikawa
,
T. Boku
,
Masashi Horikoshi
HPC Asia Workshops
2018
Corpus ID: 26127805
This paper provides results using multiple threads and a high-performance MPI implementation of MPI_THREAD_MULTIPLE applied to a…
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2018
2018
Design and Optimization of OpenSHMEM 1.4 for the Intel® Omni-Path Fabric 100 Series
David Ozog
,
Md. Wasi-ur-Rahman
,
Kayla Seager
,
James Dinan
Workshop on OpenSHMEM and Related Technologies
2018
Corpus ID: 132685119
The OpenSHMEM 1.4 specification recently introduced support for multithreaded hybrid programming and a new communication…
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Review
2017
Review
2017
Accelerating HPC codes on Intel(R) Omni-Path Architecture networks: From particle physics to Machine Learning
P. Boyle
,
Michael Chuvelev
,
G. Cossu
,
Christopher Kelly
,
C. Lehner
,
Lawrence Meadows
arXiv.org
2017
Corpus ID: 40364824
We discuss practical methods to ensure near wirespeed performance from clusters with either one or two Intel(R) Omni-Path host…
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2017
2017
Evaluation of Intel Omni-Path on the Intel Knights Landing Processor
C. Rosales
,
A. Gómez-Iglesias
Practice and Experience in Advanced Research…
2017
Corpus ID: 39514557
When a new technology is introduced into the HPC community, it is necessary to understand its performance and how it can affect…
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2017
2017
Wilson and Domainwall Kernels on Oakforest-PACS
I. Kanamori
,
H. Matsufuru
arXiv.org
2017
Corpus ID: 4919976
We report the performance of Wilson and Domainwall Kernels on a new Intel Xeon Phi Knights Landing based machine named Oakforest…
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2017
2017
MPI Process and Network Device Affinitization for Optimal HPC Application Performance
Ravindra Babu Ganapathi
,
Aravind Gopalakrishnan
,
Russell W. McGuire
IEEE Symposium on High-Performance Interconnects
2017
Corpus ID: 23829440
High Performance Computing(HPC) applications are highly optimized to maximize allocated resources for the job such as compute…
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2017
2017
An Evaluation of 100-Gb/s LAN Networks for the LHCb DAQ Upgrade
S. Valat
,
B. Voneki
,
N. Neufeld
,
Jonathan Machen
,
R. Schwemmer
,
D. Campora Perez
IEEE Transactions on Nuclear Science
2017
Corpus ID: 47334615
The Large Hadron Collider Beauty experiment (LHCb) experiment is preparing a major upgrade resulting in the need for a high-end…
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2017
2017
Performance of Caffe on QCT Deep Learning Reference Architecture — A Preliminary Case Study
V. Shankar
,
Stephen Chang
International Conference on Cyber Security and…
2017
Corpus ID: 10206938
Deep learning is a sub-set of machine learning practice employing models based on various learning network architectures and…
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2016
2016
Benchmarking message queue libraries and network technologies to transport large data volume in the ALICE O system
V. Barroso
,
U. Fuchs
,
A. Wegrzynek
IEEE-NPSS Real-Time Conference
2016
Corpus ID: 40535371
ALICE (A Large Ion Collider Experiment) is the heavy-ion detector designed to study the physics of strongly interacting matter…
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2015
2015
Intel Architecture and Technology for Future HPC System Building Blocks
P. Gepner
International Symposium on Parallel and…
2015
Corpus ID: 33193935
Summary form only given. Intel Corporation developed several new and enhanced technologies bolstering its leadership in high…
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