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Governed data discovery: Supports a workflow from data to self-service analytics to system of record (SOR), IT-managed content with governance, re-usability and promotability of user-generated content to certified data and analytics content. They provide great dashboards and easy to use. Conclusion.
Governed data discovery: Supports a workflow from data to self-service analytics to system of record (SOR), IT-managed content with governance, re-usability and promotability of user-generated content to certified data and analytics content. They provide great dashboards and easy to use. Conclusion.
You can’t talk about dataanalytics without talking about data modeling. These two functions are nearly inseparable as we move further into a world of analytics that blends sources of varying volume, variety, veracity, and velocity. Big dataanalytics case study: SkullCandy.
Governed data discovery: Supports a workflow from data to self-service analytics to system of record (SOR), IT-managed content with governance, re-usability and promotability of user-generated content to certified data and analytics content. They provide great dashboards and easy to use. Conclusion.
Governed data discovery: Supports a workflow from data to self-service analytics to system of record (SOR), IT-managed content with governance, re-usability and promotability of user-generated content to certified data and analytics content. They provide great dashboards and easy to use. Conclusion.
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