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Supercharging Enterprise 2.0
July/August 2011 (vol. 13 no. 4)
pp. 29-35
Konstantinos Christidis, National Technical University of Athens
Gregoris Mentzas, National Technical University of Athens
Dimitris Apostolou, University of Piraeus

Semantic and linked-data technologies are key to leveraging Enterprise 2.0. Integrating such technologies into a mainstream content management system can bring relevant information to employees, encourage innovation, and increase business performance.

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Index Terms:
Keywords: Computer-supported cooperative work, knowledge management applications, information technology, social networking
Konstantinos Christidis, Gregoris Mentzas, Dimitris Apostolou, "Supercharging Enterprise 2.0," IT Professional, vol. 13, no. 4, pp. 29-35, July-Aug. 2011, doi:10.1109/MITP.2011.70
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