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Thank you to all reviewers for your great feedback. The Public Review period has now closed. Please watch this space for details of pre-ordering

DAMA-DMBOK2 is being published on 30th June 2017

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Data - Driven News
Data Warehouse vs. Data Lake Technology: Different Approaches to Managing Data

Solving business problems using Big Data depends upon the approach taken. For example, if an organization only knows Data Warehouses, then challenges will be framed to fit using a Data Warehouse.

VersaStack with IBM Flash Accelerates Data Transfer for Hybrid Cloud Workloads

by Angela Guess According to a new press release, “IBM today announced new Virtual Desktop Infrastructure (VDI) and hybrid cloud capabilities for the VersaStack™ converged infrastructure solution.

New Panzura Freedom 7 Empowers Enterprise IT to Manage Growth of Unstructured Data

by Angela Guess A new press release reports, “Panzura, the leader in unstructured data management for the cloud, today announced the new Panzura Freedom 7 Family, which enables organizations to combine the economics of cloud storage with the perfo

AI Is the Next Frontier in Sophisticated Technology Solutions for the Intelligent Building

by Angela Guess A recent press release reports, “A new report from Navigant Research examines the role of artificial intelligence (AI) across the commercial buildings value chain, analyzing the outlook for six key types of AI and providing an anal

Smart Data Webinar: Machine Learning Case Studies

To view just the slides from this presentation, click HERE>> About the Webinar The state of the art and practice for machine learning (ML) has matured rapidly in the past 3 years, making it an ideal time to take a look at what works and what

Smart Data Slides: Machine Learning Case Studies

Smart Data Slides: Machine Learning – Case Studies from DATAVERSITY To view the On Demand recording of this presentation, click HERE>> About the Webinar The state of the art and practice for machine learning (ML) has matured rapidly in the p

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