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CPS for Smart Factories integrates the EIT cPAS activity and focuses on combined use cases in the steel and robot domain

Published by Max Biwersi on January 1, 2015January 1, 2015

We welcome our new Industry 4.0 partners from Fraunhofer (transfer of DFKI’s digital product memory technology).

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