AI-Powered Test Automation Frameworks for Continuous Delivery in Banking Software Ecosystems
Keywords:
Test automation, artificial intelligence, banking software, DevOps, machine learning, anomaly detection, quality assuranceAbstract
In the rapidly evolving banking software landscape, the demand for robust, scalable, and intelligent testing mechanisms has surged, primarily due to continuous delivery (CD) pipelines and regulatory requirements. This paper explores the integration of AI-powered test automation frameworks that enhance test coverage, reduce regression cycles, and ensure reliability in high-stakes financial environments. By incorporating machine learning, anomaly detection, and intelligent test case generation, these frameworks support faster deployment cycles without compromising software quality. The focus is on evaluating architectural patterns, performance metrics, and real-world deployment strategies in banking ecosystems.
References
Bertolino, Antonia. "Software testing research: Achievements, challenges, dreams." Future of Software Engineering (2013): 85–103.
Meszaros, Gerard. xUnit Test Patterns: Refactoring Test Code. Addison-Wesley, 2014.
Memon, Atif, et al. "Using Machine Learning to Prioritize Tests in Continuous Integration." IEEE Software, 2017.
Maroju, P.K., & Aragani, V.M. (2025). Predictive analytics in education: Early intervention and proactive support with Gen AI Cloud. In Smart Education and Sustainable Learning Environments in Smart Cities (pp. 317–332). IGI Global. https://doi.org/10.4018/979-8-3693-7723-9.ch019.
Shahin, Mojtaba, et al. "Continuous Integration, Delivery and Deployment: A Systematic Review on Approaches, Tools, Challenges and Practices." IEEE Access (2017): 3909–3943.
Aragani, V. M., & Maroju, P. K. (2024). Future of blue-green cities: Emerging trends and innovations in iCloud infrastructure. In Integrating Blue-Green Infrastructure Into Urban Development (pp. 223–244). IGI Global. https://doi.org/10.4018/979-8-3693-8069-7.ch011.
Lau, W.Y. "Unsupervised Anomaly Detection in Test Automation Results." Journal of Testing & Evaluation (2019).
Nguyen, Hoan, et al. "Automating Test Case Generation Using Natural Language Processing." Software Quality Journal (2021).
Attaluri, V., & Aragani, V. M. (2025). Sustainable business models: Role-based access control (RBAC) enhancing security and user management. In Driving Business Success Through Eco-Friendly Strategies (pp. 341–356). IGI Global.
Rajput, Kunal, and M. Narayanan. "AI-Powered Bots in Regression Testing for Indian Banking Systems." Indian Journal of Fintech Applications (2023).
Myers, Glenford J. The Art of Software Testing. John Wiley & Sons, 2011.
Karhu, Ville, et al. "Test Automation Strategies for Enterprise Applications." Empirical Software Engineering (2016).
Chen, Lin, and Hong Zhu. "Model-Based Testing in Financial Software." Software Testing, Verification and Reliability (2015).
Aragani, V. M., & Thirunagalingam, A. (2025). Leveraging advanced analytics for sustainable success: The green data revolution. In Driving Business Success Through Eco-Friendly Strategies (pp. 229–248). IGI Global. https://doi.org/10.4018/979-8-3693-9750-3.ch012
Burnstein, Ilene. Practical Software Testing: A Process-Oriented Approach. Springer, 2010.
Lemos, Otavio. "Search-Based Test Case Selection in CI Environments." ACM Transactions on Software Engineering (2020).
Yoon, Minsuk, et al. "AI-Assisted QA Pipelines in Large Enterprises." Software: Practice and Experience (2022).
Aragani, V. M. (2024). The future of automation: Integrating AI and quality assurance for unparalleled performance. International Journal of Innovations in Applied Sciences and Engineering, 10(1), 19–27.
Thomas, Anil. "Test Orchestration in DevOps for Finance." DevOps Digest (2021).
Downloads
Published
Issue
Section
License

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.