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Old. vs. New Trends in Data Analytics

The “Old” world of BI, with its IT centric solutions, OLAP based reporting, and limited ad-hoc querying, has a lot of shortcomings that inhibit self-service BI. Yet, with increasing data complexity has come a new age of BI that is focused on taking strides to provide faster, more data driven and integrated solutions to try and empower the business user.

Join Ani Manian, Head of Product Strategy at Sisense, as he explains the old and new trends in data analytics, and how you can make sure you benefit from a more business-centric world. You’ll learn how to set up meaningful KPI’s, model data according to specific business needs, and work interactively with business users to prototype relevant reports.
Recorded Sep 14 2016 49 mins
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Ani Manian, Head of Product Strategy, Sisense
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  • Title: Old. vs. New Trends in Data Analytics
  • Live at: Sep 14 2016 3:00 pm
  • Presented by: Ani Manian, Head of Product Strategy, Sisense
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