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Foundations of Computing and Decision Sciences

The Journal of Poznan University of Technology

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Bottlenecks in Software Defect Prediction Implementation in Industrial Projects

Jarosław Hryszko / Lech Madeyski
Published Online: 2015-03-01 | DOI: https://doi.org/10.1515/fcds-2015-0002


Case studies focused on software defect prediction in real, industrial software development projects are extremely rare. We report on dedicated R&D project established in cooperation between Wroclaw University of Technology and one of the leading automotive software development companies to research possibilities of introduction of software defect prediction using an open source, extensible software measurement and defect prediction framework called DePress (Defect Prediction in Software Systems) the authors are involved in. In the first stage of the R&D project, we verified what kind of problems can be encountered. This work summarizes results of that phase.

Keywords: software defect prediction; industrial application; depress framework


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About the article

Published Online: 2015-03-01

Citation Information: Foundations of Computing and Decision Sciences, Volume 40, Issue 1, Pages 17–33, ISSN (Online) 2300-3405, DOI: https://doi.org/10.1515/fcds-2015-0002.

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© 2015 Jarosław Hryszko and Lech Madeyski. This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 3.0 License. BY-NC-ND 3.0

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