10 Biggest Causes of Data Management Overlooked by an Overload



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/>*9 : >* STAGE 1 STAGE 2 STAGE 3 STAGE 4 STAGE 5 REPORTING ANALYZING PREDICTING OPERATIONALIZING ACTIVE WAREHOUSING WHAT happened? WHY did it happen? WHAT will happen? WHAT IS Happening? What do I WANT to happen? Primarily Batch and Pre-defined Queries Increase in Ad Hoc and Concurrent Queries Analytical Modeling Grows Continuous Update & Time Sensitive Queries Gain Importance Event Based Triggering Takes Hold Batch Ad Hoc/Concurrent Queries Analytics Continuous Update and Event-Based Short Tactical/Operational Queries Triggering

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