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NSF Underwrites Cloud Research

Researchers receive a two-year $450,000 grant from the National Science Foundation

 Researchers from the San Diego Supercomputer Center (SDSC) at the University of California, San Diego have gotten a two-year $450,000 grant from the National Science Foundation (NSF) to explore new ways for academic researchers to provision and manage extremely large data sets on clouds using the Google-IBM CluE Cluster Exploratory Cluster and the open source Apache Hadoop programming environment. Seems the ever-increasing volume of scientific data is beginning to overwhelm current approaches to data management. IBM and Google are picking up the tab for running CluE.

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Maureen O'Gara the most read technology reporter for the past 20 years, is the Cloud Computing and Virtualization News Desk editor of SYS-CON Media. She is the publisher of famous "Billygrams" and the editor-in-chief of "Client/Server News" for more than a decade. One of the most respected technology reporters in the business, Maureen can be reached by email at maureen(at)sys-con.com or paperboy(at)g2news.com, and by phone at 516 759-7025. Twitter: @MaureenOGara

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