Evaluating Microservice Organizational Coupling based on Cross-service Contribution
September 07, 2023 Β· Declared Dead Β· π International Conference on Product Focused Software Process Improvement
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Authors
Xiaozhou Li, Dario Amoroso dAragona, Davide Taibi
arXiv ID
2309.03552
Category
cs.SE: Software Engineering
Citations
8
Venue
International Conference on Product Focused Software Process Improvement
Last Checked
4 months ago
Abstract
For traditional modular software systems, "high cohesion, low coupling" is a recommended setting while it remains so for microservice architectures. However, coupling phenomena commonly exist therein which are caused by cross-service calls and dependencies. In addition, it is noticeable that teams for microservice projects can also suffer from high coupling issues in terms of their cross-service contribution, which can inevitably result in technical debt and high managerial costs. Such organizational coupling needs to be detected and mitigated in time to prevent future losses. Therefore, this paper proposes an automatable approach to evaluate the organizational couple by investigating the microservice ownership and cross-service contribution.
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