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The Big Data decision path incorporating SAP landscapes

Leading companies derive big data technology choices from business needs instead of technology merits. With the variety of possible use cases, either Hadoop, Spark or SAP HANA may provide the best fit to solve business challenges and create value.

Sounds easy, but managing a variety of big data solutions within a single company puts a skills and cost premium on the organization.

This session will guide you to the right big data technology according to business needs and highlights the fastest path to adoption.
Recorded Jun 8 2016 49 mins
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Presented by
Swen Conrad, CEO, Ocean9
Presentation preview: The Big Data decision path incorporating SAP landscapes

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Make smarter moves with your big data management
Make smarter moves with your big data management

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  • Presented by: Swen Conrad, CEO, Ocean9
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