Enabling Autonomous Teams and Continuous Deployment at Scale
November 14, 2022 Β· Declared Dead Β· π IT Professional
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Authors
Torgeir DingsΓΈyr, Magne JΓΈrgensen, Frode Odde Carlsen, Lena CarlstrΓΆm, Jens Engelsrud, Kine Hansvold, Mari HeibΓΈ-Bagheri, Kjetil RΓΈe, Karl Ove Vika SΓΈrensen
arXiv ID
2211.07435
Category
cs.SE: Software Engineering
Citations
7
Venue
IT Professional
Last Checked
4 months ago
Abstract
In this article, we give advice on transitioning to a more agile delivery model for large-scale agile development projects based on experience from the Parental Benefit Project of the Norwegian Labour and Welfare Administration. The project modernized a central part of the organizations IT portfolio and included up to ten development teams working in parallel. The project successfully changed from using a delivery model which combined traditional project management elements and agile methods to a more agile delivery model with autonomous teams and continuous deployment. This transition was completed in tandem with the project execution. We identify key lessons learned which will be useful for other organizations considering similar changes and report how the new delivery model reduced risk and opened up a range of new possibilities for delivering the benefits of digitalization.
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