CATTO: Just-in-time Test Case Selection and Execution
June 17, 2022 Β· Declared Dead Β· π IEEE International Conference on Software Maintenance and Evolution
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Authors
Dario Amoroso d'Aragona, Fabiano Pecorelli, Simone Romano, Giuseppe Scanniello, Maria Teresa Baldassarre, Andrea Janes, Valentina Lenarduzzi
arXiv ID
2206.08718
Category
cs.SE: Software Engineering
Citations
2
Venue
IEEE International Conference on Software Maintenance and Evolution
Last Checked
4 months ago
Abstract
Regression testing ensures a System Under Test (SUT) still works as expected after changes to it. The simplest approach for regression testing consists of re-running the entire test suite against the changed version of the SUT. However, this might result in a time- and resource-consuming process; \eg when dealing with large and/or complex SUTs and test suits. To work around this problem, test Case Selection (TCS) strategies can be used. Such strategies seek to build a temporary test suite comprising only those test cases that are relevant to the changes made to the SUT, so avoiding executing those test cases that do not exercise the changed parts. In this paper, we introduce CATTO (Commit Adaptive Tool for Test suite Optimization) and CATTO INTELLIJ PLUGIN. The former is a tool implementing a TCS strategy for SUTs written in Java, while the latter is a wrapper to allow developers to use \toolName directly in IntelliJ. We also conducted a preliminary evaluation of CATTO on seven open-source Java SUTs in terms of reductions in test-suite size, fault-reveling test cases, and fault-detection capability. The results are promising and suggest that CATTO can be of help to developers when performing regression testing. The video demo and the documentation of the tool is available at: \url{https://catto-tool.github.io/}
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