Tool Support for Continuous Quality Control
November 28, 2016 Β· Declared Dead Β· π IEEE Software
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Authors
Florian Deissenboeck, Stefan Wagner, Markus Pizka, Benjamin Hummel, Elmar Juergens, Benedikt Mas y Parareda
arXiv ID
1611.09116
Category
cs.SE: Software Engineering
Citations
92
Venue
IEEE Software
Last Checked
3 months ago
Abstract
Over time, software systems suffer gradual quality decay and therefore costs can rise if organizations fail to take proactive countermeasures. Quality control is the first step to avoiding this cost trap. Continuous quality assessments help users identify quality problems early, when their removal is still inexpensive; they also aid decision making by providing an integrated view of a software system's current status. As a side effect, continuous and timely feedback helps developers and maintenance personnel improve their skills and thereby decreases the likelihood of future quality defects. To make regular quality control feasible, it must be highly automated, and assessment results must be presented in an aggregated manner to avoid overwhelming users with data. This article offers an overview of tools that aim to address these issues. The authors also discuss their own flexible, open-source toolkit, which supports the creation of dashboards for quality control.
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