Process data infrastructure and data services

Authors
  • M. Bobak
  • O. Habala
  • V. Tran
  • J. Meizner
  • P. Nowakowski
  • M. Graziani
  • H. Müller
Publication date 2020
Journal Computing and Informatics
Volume | Issue number 39 | 4
Pages (from-to) 724-756
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
Due to energy limitation and high operational costs, it is likely that exascale computing will not be achieved by one or two datacentres but will require many more. A simple calculation, which aggregates the computation power of the 2017 Top500 supercomputers, can only reach 418 petaflops. Companies like Rescale, which claims 1.4 exaflops of peak computing power, describes its infrastructure as composed of 8 million servers spread across 30 datacentres. Any proposed solution to address exascale computing challenges has to take into consideration these facts and by design should aim to support the use of geographically distributed and likely independent datacentres. It should also consider, whenever possible, the co-allocation of the storage with the computation as it would take 3 years to transfer 1 exabyte on a dedicated 100 Gb Ethernet connection. This means we have to be smart about managing data more and more geographically dispersed and spread across different administrative domains. As the natural settings of the PROCESS project is to operate within the European Research Infrastructure and serve the European research communities facing exascale challenges, it is important that PROCESS architecture and solutions are well positioned within the European computing and data management landscape namely PRACE, EGI, and EUDAT. In this paper we propose a scalable and programmable data infrastructure that is easy to deploy and can be tuned to support various data-intensive scientific applications.
Document type Article
Note Funding Information: This workis supported by the “PROviding Computing solutions for ExaScale ChallengeS” (PROCESS)project that has receivedfunding from the European Union’s Horizon 2020 research and innovation programme under grant agreemetn No. 777533, by the project APVV-17-0619 (U-COMP) “Urgent Computing for Exas-cale Data” and by the VEGA project “New Methods and Approahcesfor Distributed Scalable Computing” No. 2/0125/20. Publisher Copyright: © 2020 Slovak Academy of Sciences. All rights reserved. Copyright: Copyright 2021 Elsevier B.V., All rights reserved.
Language English
Published at https://doi.org/10.31577/CAI_2020_4_724
Other links https://www.scopus.com/pages/publications/85100306722
Permalink to this page
Back