End-to-End AI-Powered Automation Testing Framework: Architecture, Implementation, and Empirical Evaluation
DOI:
https://doi.org/10.38124/ijsrmt.v3i4.1540Keywords:
Artificial Intelligence, Test Automation, Machine Learning, Self-Healing Framework, NLP Test Generation, CI/CD, Quality Assurance, End-to-End TestingAbstract
The rapid evolution of software systems has rendered traditional manual and rule-based test automation frameworks inadequate for modern enterprise-scale applications. This paper presents EATAF (End-to-End AI-Powered Test Automation Framework), a novel multi-layer architecture that integrates machine learning, natural language processing (NLP), computer vision, and self-healing mechanisms to comprehensively automate the software testing lifecycle. EATAF encompasses intelligent test case generation, dynamic test prioritization, autonomous fault localization, and AI-driven reporting. The framework is evaluated across three real-world industrial case studies comprising over 50,000 test scenarios spanning web, API, and mobile application domains. Experimental results demonstrate a 93% improvement in test coverage, a 78% reduction in maintenance effort, an 81% reduction in mean time to detect (MTTD), and a 120% return on investment (ROI) within 12 months compared to conventional automation approaches. Our findings establish EATAF as a transformative paradigm shift in quality assurance engineering.
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Copyright (c) 2024 International Journal of Scientific Research and Modern Technology

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