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Business Analytics Using Secured Data Forwarding

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Submitted By smaditya
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Business Analytics using Secured Cloud Storage System
M Swetha Chandra1, M Suma Latha2, KODAVATIKANTI S M Aditya Kumar3, S K R Swamy4
1,2,3,4 Department of CSE, TRR College of Engineering, Inole, Patancheru, Hyderabad, AP, India
1 sweet.smily99@gmail.com 2 msumalathacse@gmail.com 3 smaditya@gmail.com 4 kramas2004@yahoo.com | | |

ABSTRACT
Business analytics go far beyond reports, dashboards, and scorecards. Analytic impact occurs after the numbers are delivered, and analytic value is driven by the kinds of questions that are answered. Ordinary analytics tell you what has already happened. Good analytics provide insight into why things happen, and great analytics provide foresight to see what lies ahead. Today’s business climate demands extraordinary analytics. Business managers need to know more than what. The hard questions today are why, what if, and what next.
According to Gartner, BI and Analytics is a $12.2 billion market with 16.4% growth in 2011. Gartner's 2012 CIO survey showed that analytics/BI is the No. 1 technology priority for CIOs. The mega vendors such as Oracle, SAS, IBM etc., are already having major portion of the revenue with their packaged applications in these areas. It is estimated by Gartner that Analytics will be touching 75% of potential users by 2020. This is proven by the growth rate of new vendors such as QlickTech and Tableau by 45% (as per Gartner report).
Cloud Storage: Cloud Storage, also referred as Data Storage as a Service, is a delivery of virtualized storage on demand over network. In Cloud Storage, user can perform common operation like create, read, update and delete. In addition, there are other aspects of Cloud Storage like, customer can move or copy the data from one Cloud Storage vendor to another for getting benefits of storage costs and better services. Storage Networking Industry Association (SNIA) has come…...

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