Download PDFOpen PDF in browserEnhancing Cloud-Based Regression Testing: Leveraging Machine Learning for Swift and Effective Release ManagementEasyChair Preprint 1501411 pages•Date: September 23, 2024AbstractIn the evolving landscape of software development, the demand for rapid and reliable release cycles necessitates advanced methodologies for regression testing. This article explores innovative approaches to cloud-based regression testing through the integration of machine learning techniques. We examine how leveraging machine learning can significantly enhance the efficiency and effectiveness of regression testing processes. By harnessing cloud infrastructure, organizations can achieve scalable, automated testing solutions that adapt to the dynamic nature of modern software development. The article provides a comprehensive analysis of various machine learning models and algorithms, demonstrating their application in predicting test outcomes, identifying potential failure points, and optimizing test suite selection. Through empirical studies and case examples, we illustrate how these advanced methods contribute to faster release management and improved software quality. Our findings highlight the transformative potential of combining cloud-based environments with machine learning to address the complexities of regression testing in contemporary software engineering. Keyphrases: Contemporary, Engineering, Regression, cloud-based, complexities, environments, learning, machine, software
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