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ScaDS Dresden/Leipzig – A competence center for collaborative big data research

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  • ScaDS Dresden/Leipzig – A competence center for collaborative big data research

Jäkel, R. ; Peukert, E. ; Nagel, W. ; Rahm, E.

ScaDS Dresden/Leipzig – A competence center for collaborative big data research

it-Information Technology

2018 / 11

Andere

Abstract

The efficient and intelligent handling of large, often distributed and heterogeneous data sets increasingly determines the scientific and economic competitiveness in most application areas. Mobile applications, social networks, multimedia collections, sensor networks,data-intense scientific experiments, and complex simulations nowadays generate a huge data deluge. Nonetheless,
processing and analyzing these datasets with innovative methods open up new opportunities for its exploitation and new insights. Nevertheless,the resulting resource requirements exceed usually the possibilities of state-of-the-art methods for the acquisition, integration, analysis and visualization of data and are summarized under the term Big Data. ScaDS Dresden/Leipzig, as one Germany-wide competence center for collaborative big data research, bundles efforts to realize data-intensive applications for a wide range of applications in science and industry. In this article, we present the basic concept of the competence center and give insights in some of its research topics.

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