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  4. Experience-based model-driven improvement management with combined data sources from industry and academia
 
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2003
Conference Paper
Titel

Experience-based model-driven improvement management with combined data sources from industry and academia

Abstract
Experience-based improvement using various modelling techniques is an important issue in software engineering. Many approaches have been proposed and applied in both industry and academia, e.g., case studies, pilot projects, controlled experiments, assessments, expert opinion polls, experience bases, goal-oriented measurement, process modelling, statistical modelling, data mining, and simulation. Although these approaches can be combined and organized according to the principles of the Quality Improvement Paradigm (QIP) and the associated Experience Factory (EF) concepts, there are serious problems with: a) effective and efficient integration of the various approaches; and, b) the exchange of experience and data between industry and academia. In particular the second problem strongly limits opportunities for joint research efforts and cross-organizational synergy. Based upon lessons learned from large-scale European joint research initiatives involving both industry and academia, this paper proposes the vision of an integrated software process improvement framework that facilitates solutions to the problems mentioned above.
Author(s)
Jedlitschka, A.
Pfahl, D.
Hauptwerk
International Symposium on Empirical Software Engineering, ISESE 2003. Proceedings
Konferenz
International Symposium on Empirical Software Engineering (ISESE) 2003
Thumbnail Image
DOI
10.1109/ISESE.2003.1237974
Language
English
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Fraunhofer-Institut für Experimentelles Software Engineering IESE
Tags
  • experience-based improvement

  • improvement management

  • industry data

  • model-driven improvement

  • software

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