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Unified Modeling Language / Model-driven integration / Systems engineering / Information technology management / Software engineering / Business process modeling / Business process management / Executable UML / Information technology / Computing
Date: 2016-06-27 10:06:37
Unified Modeling Language
Model-driven integration
Systems engineering
Information technology management
Software engineering
Business process modeling
Business process management
Executable UML
Information technology
Computing

E2E Case Study: Model-Driven B2B Integration at B2Bnet

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