Benchmarking Web-testing - Selenium versus Watir and the Choice of Programming Language and Browser
November 02, 2016 Β· Declared Dead Β· π arXiv.org
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Authors
Miikka Kuutila, Mika MΓ€ntylΓ€, PΓ€ivi Raulamo-Jurvanen
arXiv ID
1611.00578
Category
cs.SE: Software Engineering
Citations
5
Venue
arXiv.org
Last Checked
4 months ago
Abstract
Context: Selenium is claimed to be the most popular software test automation tool. Past academic works have mainly neglected testing tools in favor of more methodological topics. Objective: We investigated the performance of web-testing tools, to provide empirical evidence supporting choices in software test tool selection and configuration. Method: We used 4*5 factorial design to study 20 different configurations for testing a web-store. We studied 5 programming language bindings (C#, Java, Python, and Ruby for Selenium, while Watir supports Ruby only) and 4 browsers (Google Chrome, Internet Explorer, Mozilla Firefox and Opera). Performance was measured with execution time, memory usage, length of the test scripts and stability of the tests. Results: Considering all measures the best configuration was Selenium with Python language binding for Chrome. Selenium with Python bindings was the best option for all browsers. The effect size of the difference between the slowest and fastest configuration was very high (Cohens d=41.5, 91% increase in execution time). Overall Internet Explorer was the fastest browser while having the worst results in the stability. Conclusions: We recommend benchmarking tools before adopting them. Weighting of factors, e.g. how much test stability is one willing to sacrifice for faster performance, affects the decision.
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