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A Data Centric Approach to Big Data Management

Organizations generate huge volumes of data that double every two years on average, the vast majority of which is unstructured. While the volume and velocity of big data increases, there are costs, risks and usability challenges associated with managing big data including end-to-end data risk protection, search, discovery and access – regardless of the file type, size or device. Data–intensive verticals that strive to gain insights from big data can gain tremendous competitive advantage by taking a data centric storage approach.

Learn How To:
· Tap into the full value of vast stores of big data
· Meet increasing compliance regulations & ensure long-term preservation of data
· Ensure massive scalability, protection & security of big data
· Gain a greater competitive advantage & make improved informed decisions
Recorded Mar 10 2015 32 mins
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Presented by
Shahbaz Ali, President and CEO, Tarmin
Presentation preview: A Data Centric Approach to Big Data Management

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Join this webcast to learn:
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    •How the SIRF format works and its key elements
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    •Availability of Open SIRF

    SNIA experts that developed the SIRF standard will be on hand to answer your questions.
Make smarter moves with your big data management
Make smarter moves with your big data management

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  • Live at: Mar 10 2015 6:00 pm
  • Presented by: Shahbaz Ali, President and CEO, Tarmin
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