A Self-Adaptive, AI-Powered Testing Framework for Cross-Platform Systems: An Architectural Design and Industrial Evaluation

Authors

DOI:

https://doi.org/10.63412/dhfapm89

Keywords:

Artificial Intelligence in Software Testing, Cross-Platform Testing, Self-Healing Tests, Machine Learning, Predictive Analytics, DevOps, Continuous Testing, Test Automation.

Abstract

The escalating complexity of cross-platform applications, which must operate seamlessly across a heterogeneous ecosystem of devices and operating systems, has rendered conventional script-based test automation unsustainable. These legacy approaches are plagued by inherent brittleness, inadequate test coverage, and exorbitant maintenance overhead, creating a critical bottleneck in modern DevOps pipelines. This paper proposes a novel, integrated framework for an intelligent testing ecosystem that leverages machine learning to engender self-adaptation, predictive analytics, and autonomous operation. We delineate a modular architecture incorporating three core intelligent capabilities: cognitive test generation using reinforcement learning and natural language processing,  self-healing test execution via multi-modal locator strategies and computer vision, and  predictive defect localization through ensemble-based risk modeling. The framework's efficacy is empirically validated through two longitudinal industrial case studies in the FinTech and E-commerce domains. Quantitative results demonstrate a 55-70% reduction in test maintenance effort, a 40% improvement in test coverage, and a 60-62.5% acceleration in regression testing cycles. Furthermore, we critically discuss implementation challenges—including data dependency, computational overhead, and model explainability—and propose a research trajectory toward causal inference and end-to-end autonomous testing systems. Our findings substantiate that the integration of AI is not merely an incremental enhancement but a paradigmatic shift essential for achieving robust, continuous quality assurance in cross-platform development. 

Author Biography

  • Prathap Raghavan, Independent Researcher

    Prathap is a seasoned IT leader with over two decades years of experience in enterprise software development, test automation, and product lifecycle management.  Oversees end-to-end product strategy, roadmap planning, stakeholder engagement, and delivery alignment across multiple digital platforms. He works closely with cross-functional teams to translate business needs into actionable technology solutions, prioritizing features, managing releases, and ensuring value delivery. Prathap is a strategic technology leader specializing in intelligent automation, Generative AI integration, and enterprise-scale quality engineering. He brings deep hands-on expertise in combining Generative AI with Playwright MCP to create adaptive, self-healing test scripts, accelerating automation efficiency and improving test resilience. He has led the design of modular RPA frameworks using UiPath, enabling regression, smoke, and sanity testing across critical enterprise systems. His solutions include exception-aware, data-driven workflows, seamless CI/CD integration, and orchestrated bot deployments—dramatically improving release velocity and reducing operational overhead.

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Published

2025-12-21

How to Cite

[1]
P. Raghavan, “A Self-Adaptive, AI-Powered Testing Framework for Cross-Platform Systems: An Architectural Design and Industrial Evaluation”, IJGIS, vol. 2, no. 10, Dec. 2025, doi: 10.63412/dhfapm89.

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