AI-Driven Test Automation: Transforming Software Quality Engineering
DOI:
https://doi.org/10.32996/jcsts.2025.7.2.35Keywords:
AI-powered Test Generation, Self-healing Automation, Predictive Defect Analysis, Computer Vision Validation, Resource OptimizationAbstract
The integration of artificial intelligence into test automation represents a paradigm shift in software quality engineering, addressing longstanding challenges of traditional testing methods. As applications grow increasingly complex with microservices architectures, cloud-native components, and frequent deployment cycles, AI-driven testing emerges as a solution to the brittleness and maintenance overhead of conventional approaches. By leveraging machine learning, natural language processing, computer vision, and self-learning systems, organizations can reduce script maintenance efforts while improving defect detection rates. These advanced frameworks enable automated test case generation, self-healing automation, predictive defect analysis, and enhanced performance testing capabilities. The transition from rule-based to intelligent testing follows an evolutionary path through augmentation, hybrid, intelligence-dominant, and autonomous phases, with each stage delivering progressive improvements in efficiency, accuracy, and scalability. AI-powered testing ultimately transforms quality assurance from a reactive verification activity into a proactive, adaptive mechanism capable of keeping pace with modern development practices.