How Surveys, Tutors, and Software Help to Assess Scrum Adoption in a Classroom Software Engineering Project
September 03, 2018 Β· Declared Dead Β· π 2016 IEEE/ACM 38th International Conference on Software Engineering Companion (ICSE-C)
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Authors
Christoph Matthies, Thomas Kowark, Keven Richly, Matthias Uflacker, Hasso Plattner
arXiv ID
1809.00650
Category
cs.SE: Software Engineering
Citations
29
Venue
2016 IEEE/ACM 38th International Conference on Software Engineering Companion (ICSE-C)
Last Checked
3 months ago
Abstract
Agile methods are best taught in a hands-on fashion in realistic projects. The main challenge in doing so is to assess whether students apply the methods correctly without requiring complete supervision throughout the entire project. This paper presents experiences from a classroom project where 38 students developed a single system using a scaled version of Scrum. Surveys helped us to identify which elements of Scrum correlated most with student satisfaction or posed the biggest challenges. These insights were augmented by a team of tutors, which accompanied main meetings throughout the project to provide feedback to the teams, and captured impressions of method application in practice. Finally, we performed a post-hoc, tool-supported analysis of collaboration artifacts to detect concrete indicators for anti-patterns in Scrum adoption. Through the combination of these techniques we were able to understand how students implemented Scrum in this course and which elements require further lecturing and tutoring in future iterations. Automated analysis of collaboration artifacts proved to be a promising addition to the development process that could potentially reduce manual efforts in future courses and allow for more concrete and targeted feedback, as well as more objective assessment.
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