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April 2008 (vol. 41 no. 4)
pp. 30-32
Paul Greenfield, Australia's Commonwealth Scientific and Industrial Research Organisation
The deluge of data that future applications must process—in domains ranging from science to business informatics—creates a compelling argument for substantially increased R&D targeted at discovering scalable hardware and software solutions for data-intensive problems.
1. 30 W. Johnston, "High-Speed, Wide Area, Data-Intensive Computing: A Ten-Year Retrospective," Proc. 7th IEEE Symp. High-Performance Distributed Computing, IEEE Press, 1998, pp. 280–291.2. T. Hey and A. Trefethen, "The Data Deluge: An e-Science Perspective;" www.rcuk.ac.uk/cmsweb/downloads/rcuk/research/ escidatadeluge.pdf.3. G. Bell, J. Gray, and A. Szalay, "Petascale Computational Systems," Computer, Jan. 2006, pp. 110–112.4. H.B. Newman, M.H. Ellisman, and J.A. Orcutt, "Data-Intensive E-Science Frontier Research," Comm. ACM, Nov. 2003, pp. 68–77.
Index Terms:
data-intensive computing, compute-intensive problems
Citation:
Ian Gorton, Paul Greenfield, Alex Szalay, Roy Williams, "Data-Intensive Computing in the 21st Century," Computer, vol. 41, no. 4, pp. 30-32, Apr. 2008, doi:10.1109/MC.2008.122