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Managing Explosive Data Growth

An insight into the analysis of the ever growing data management tasks IT departments face today. This webinar will highlight the challenges faced by IT departments from big data in terms of explosive data growth. It will focus on the problems faced by organizations who are now storing, processing and retaining exponentially more data than previously, to the issues around legacy systems and their ability to cope and will offer solutions to these ongoing challenges.
Recorded Sep 18 2012 46 mins
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Presented by
Simon Ahmet, CommVault EMEA
Presentation preview: Managing Explosive Data Growth

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  • Title: Managing Explosive Data Growth
  • Live at: Sep 18 2012 9:00 am
  • Presented by: Simon Ahmet, CommVault EMEA
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