September 2007
Storage Magazine;Sep2007, Vol. 6 Issue 7, p11
The article presents statistics on a variety of topics including the percentage of companies managing more than 10 terabytes (TB) of data, percentage of companies wanting to reduce the size of both storage data and management time by one third, and percentage of companies seeing power consumption for data storage increase by as much as 50%.


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