What Do Practitioners Vary in Using Scrum?
March 30, 2017 Β· Declared Dead Β· π International Conference on Agile Software Development
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Authors
Philipp Diebold, Jan-Peter Ostberg, Stefan Wagner, Ulrich Zendler
arXiv ID
1703.10361
Category
cs.SE: Software Engineering
Citations
103
Venue
International Conference on Agile Software Development
Last Checked
3 months ago
Abstract
Background: Agile software development has become a popular way of developing software. Scrum is the most frequently used agile framework, but it is often reported to be adapted in practice. Objective: Thus, we aim to understand how Scrum is adapted in different contexts and what are the reasons for these changes. Method: Using a structured interview guideline, we interviewed ten German companies about their concrete usage of Scrum and analysed the results qualitatively. Results: All companies vary Scrum in some way. The least variations are in the Sprint length, events, team size and requirements engineering. Many users varied the roles, effort estimations and quality assurance. Conclusions: Many variations constitute a substantial deviation from Scrum as initially proposed. For some of these variations, there are good reasons. Sometimes, however, the variations are a result of a previous non-agile, hierarchical organisation.
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