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Co-design Center for Exascale Machine Learning Technologies (ExaLearn)

Authors :
Shinjae Yoo
Logan Ward
Nikoli Dryden
Ramakrishnan Kannan
Rajeev Thakur
Bert Debusschere
Ganesh Sivaraman
Sutanay Choudhury
Zhengchun Liu
Neeraj Kumar
Peter Nugent
Francis J. Alexander
Sudip K. Seal
Shantenu Jha
James A. Ang
David Pugmire
Li Tan
Ian Foster
Yunzhi Huang
Paul M. Welch
Cristina Garcia Cardona
Sivasankaran Rajamanickam
Thomas Proffen
Ai Kagawa
Malachi Schram
Byung-Jun Yoon
Jamaludin Mohd-Yusof
Erin McCarthy
Tiernan Casey
Sotiris S. Xantheas
Vinay Ramakrishniah
Jan Balewski
Sayan Ghosh
Brian Van Essen
Michael M. Wolf
Christine Sweeney
J. Austin Ellis
Peter Harrington
Jong Choi
Yosuke Oyama
Naoya Maruyama
Satoshi Matsuoka
Jenna A. Bilbrey
Kevin G. Yager
Anthony M. DeGennaro
Travis Johnston
Ryan Chard
Source :
The International Journal of High Performance Computing Applications. 35:598-616
Publication Year :
2021
Publisher :
SAGE Publications, 2021.

Abstract

Rapid growth in data, computational methods, and computing power is driving a remarkable revolution in what variously is termed machine learning (ML), statistical learning, computational learning, and artificial intelligence. In addition to highly visible successes in machine-based natural language translation, playing the game Go, and self-driving cars, these new technologies also have profound implications for computational and experimental science and engineering, as well as for the exascale computing systems that the Department of Energy (DOE) is developing to support those disciplines. Not only do these learning technologies open up exciting opportunities for scientific discovery on exascale systems, they also appear poised to have important implications for the design and use of exascale computers themselves, including high-performance computing (HPC) for ML and ML for HPC. The overarching goal of the ExaLearn co-design project is to provide exascale ML software for use by Exascale Computing Project (ECP) applications, other ECP co-design centers, and DOE experimental facilities and leadership class computing facilities.

Details

ISSN :
17412846 and 10943420
Volume :
35
Database :
OpenAIRE
Journal :
The International Journal of High Performance Computing Applications
Accession number :
edsair.doi...........44a49db17ac8125ad46733a17d870250
Full Text :
https://doi.org/10.1177/10943420211029302