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Systems Architectures and Innovation

This is a working paper by Stefano Miraglia. The concepts developed in the paper may provide partners with new principles for product design and engineering, and indications for developing more accurate measures of two fundamental characteristics of technological products: modularity and integrality. In particular, the proposed framework may help IT architects design software and hardware platforms that can be more easily and effectively altered, reconfigured, and upgraded to meet ever changing market and customer needs.

PDF document icon 2014 July Paper_Systems Architecture_Miraglia.pdf — PDF document, 736 KB (754426 bytes)

Cambridge Service Alliance

Welcome to the Cambridge Service Alliance…

  • a unique global alliance between leading businesses and universities;
  • bringing together the world's leading firms and academics;
  • all of whom are devoted to delivering today the tools, education and insights needed for the complex service solutions of tomorrow.

Members of the Cambridge Service Alliance include BAE Systems, Caterpillar, IBM and the University of Cambridge.

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