Adaptive Automation: Leveraging Machine Learning to Support Uninterrupted Automated Testing of Software Applications
Rajesh Mathur, Scott Miles, Miao Du

TL;DR
This paper introduces an adaptive automation framework that employs machine learning techniques like fuzzy matching and error recovery to enhance the robustness and effectiveness of automated software testing, reducing manual intervention and delays.
Contribution
It presents a novel framework integrating machine learning for adaptive recovery in automated testing, addressing the brittleness of existing tools and enabling uninterrupted testing processes.
Findings
Framework successfully recovers from unexpected obstructions.
Reduces manual intervention in automated testing.
Improves test suite reliability and efficiency.
Abstract
Checking software application suitability using automated software tools has become a vital element for most organisations irrespective of whether they produce in-house software or simply customise off-the-shelf software applications for internal use. As software solutions become ever more complex, the industry becomes increasingly dependent on software automation tools, yet the brittle nature of the available software automation tools limits their effectiveness. Companies invest significantly in obtaining and implementing automation software but most of the tools fail to deliver when the cost of maintaining an effective automation test suite exceeds the cost and time that would have otherwise been spent on manual testing. A failing in the current generation of software automation tools is they do not adapt to unexpected modifications and obstructions without frequent (and time…
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Taxonomy
TopicsSoftware Testing and Debugging Techniques · Software Reliability and Analysis Research · Advanced Malware Detection Techniques
