5G EVE a European platform for 5G Application deployment

  title={5G EVE a European platform for 5G Application deployment},
  author={Fabrizio Moggio and Mauro Renato Boldi and Silvia Canale and Vincenzo Suraci and Claudio Ettore Casetti and Giacomo Bernini and Giada Landi and Paolo Giaccone},
  journal={Proceedings of the 14th International Workshop on Wireless Network Testbeds, Experimental evaluation \& Characterization},
  • Fabrizio MoggioM. Boldi P. Giaccone
  • Published 21 September 2020
  • Computer Science
  • Proceedings of the 14th International Workshop on Wireless Network Testbeds, Experimental evaluation & Characterization
The 5G EVE project [1] is an ICT-17 European project realizing a 5G platform that is distributed in Europe leveraging the 5G mobile networks of the 5G EVE partners. The platform offers to external experimenters a 5G network and a web-based deployment and monitoring environment. An Interworking Layer (IWL) acts as an adapter to the different 5G networks of the partners. The 5G EVE end-to-end facility is based on the interconnection of four 5G site-facilities (France, Spain, Italy, Greece) [2… 

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