Global Multidisciplinary Journal

Open Access Peer Review International
Open Access

Automation-Enhanced Transformation Of Legacy Quality Assurance: Integrating AI-Driven Pipelines For Cloud-Native Enterprise Systems

4 Department of Information Systems and Digital Innovation, University of Zurich, Switzerland

Abstract

The acceleration of digital transformation across enterprise environments has redefined the strategic importance of quality assurance, data governance, cybersecurity, and operational efficiency in software-intensive organizations. Legacy quality assurance ecosystems, traditionally grounded in manual testing, siloed defect tracking, and rigid release cycles, are increasingly misaligned with the demands of cloud-native, microservices-oriented, and artificial intelligence-enabled enterprises. This misalignment has produced structural inefficiencies, escalating costs, heightened security risks, and declining responsiveness to market dynamics. In response, organizations are migrating toward automation-driven, AI-augmented pipelines that integrate quality assurance directly into continuous integration and continuous delivery workflows, enabling adaptive, predictive, and self-optimizing validation of enterprise software systems. Despite this shift, scholarly understanding of how legacy QA systems can be systematically transformed into AI-driven digital pipelines remains fragmented across software engineering, cloud migration, cybersecurity, and enterprise economics.

This study develops a comprehensive theoretical and analytical framework for the automation-driven transformation of legacy quality assurance into AI-augmented enterprise pipelines. Drawing on recent scholarship in cloud migration, predictive analytics, cybersecurity, procurement economics, and enterprise modernization, the article situates QA transformation as a central pillar of digital enterprise architecture rather than a peripheral technical function. The framework is anchored in the conceptual blueprint of automation-driven digital transformation articulated by Tiwari (2025), which posits that legacy QA must be re-engineered through AI-enabled orchestration, data-centric validation, and continuous risk-adaptive control. By embedding this blueprint within a broader ecosystem of cloud computing, zero-trust security, microservices architecture, and econometric cost optimization, the study extends the theoretical reach of automation-based QA beyond software testing into enterprise-wide governance.

Using an integrative methodological approach grounded in systematic literature synthesis, conceptual modeling, and comparative theoretical analysis, the research examines how AI-augmented QA pipelines enable real-time defect prediction, automated compliance verification, and continuous performance optimization across heterogeneous cloud and hybrid environments. The analysis further demonstrates that automation-driven QA contributes not only to technical quality but also to financial efficiency by reducing procurement waste, minimizing rework costs, and enabling data-driven investment prioritization. Security and data integrity emerge as critical mediating variables, as AI-based validation and zero-trust architectures jointly mitigate the vulnerabilities inherent in legacy system migrations.

The findings of this research indicate that automation-driven QA transformation generates a form of organizational intelligence in which testing, monitoring, and governance become self-learning processes embedded in enterprise workflows. This intelligence allows organizations to shift from reactive quality control to predictive quality governance, fundamentally altering the economics, risk profile, and strategic agility of digital enterprises. By synthesizing diverse streams of research into a unified conceptual model, the article offers both theoretical advancement and practical guidance for organizations seeking to modernize their quality assurance functions as part of broader digital transformation initiatives.

Keywords

References

📄 Abbey ABN, Olaleye IA, Mokogwu C, Queen A. Developing economic frameworks for optimizing procurement strategies in public and private sectors. 2023b.
📄 Evans, H., & Turner, C. AI-driven approaches to data validation in ERP transitions. Journal of Artificial Intelligence Applications, 16(4), 310–327.
📄 Habibullah S. Evolving legacy enterprise systems with microservices-based architecture in cloud environments. 2021.
📄 Adepoju PA, Austin-Gabriel B, Ige AB, Hussain NY, Amoo OO, Afolabi AI. Machine learning innovations for enhancing quantum-resistant cryptographic protocols in secure communication. Open Access Research Journal of Multidisciplinary Studies. 2022;4(1):131–9.
📄 Ike CC, Ige AB, Oladosu SA, Adepoju PA, Amoo OO, Afolabi AI. Redefining zero trust architecture in cloud networks: A conceptual shift towards granular, dynamic access control and policy enforcement. Magna Scientia Advanced Research and Reviews. 2021;2(1):74–86.
📄 Williams, D., & Brown, E. Risk management in data migration: Strategies for minimizing disruption. International Journal of IT and Business Management, 22(4), 233–247.
📄 Gade KR. Migrations: Cloud migration strategies, data migration challenges, and legacy system modernization. Journal of Computing and Information Technology. 2021;1(1).
📄 Tiwari, S. K. (2025). Automation Driven Digital Transformation Blueprint: Migrating Legacy QA to AI Augmented Pipelines. Frontiers in Emerging Artificial Intelligence and Machine Learning, 2(12), 01-20.
📄 Deb M, Choudhury A. Hybrid cloud: A new paradigm in cloud computing. Machine Learning Techniques and Analytics for Cloud Security. 2021;1–23.
📄 Aslan Ö, Aktuğ SS, Ozkan-Okay M, Yilmaz AA, Akin E. A comprehensive review of cyber security vulnerabilities, threats, attacks, and solutions. Electronics. 2023;12(6):1333.
📄 Austin-Gabriel B, Hussain N, Ige A, Adepoju P, Amoo O, Afolabi A. Advancing zero trust architecture with AI and data science for enterprise cybersecurity frameworks. Open Access Research Journal of Engineering and Technology. 2021;1(1):47–55.
📄 Smith, J., & Chen, L. Best practices in data cleansing for legacy systems. International Journal of Data Quality, 12(1), 45–59.
📄 Ikwuanusi UF, Azubuike C, Odionu C, Sule A. Leveraging AI to address resource allocation challenges in academic and research libraries. IRE Journals. 2022;5(10):311.
📄 Jephte IF. Extract, transform, and load data from legacy systems to Azure cloud. Universidade NOVA de Lisboa (Portugal). 2021.
📄 Evans, H., & Turner, C. AI-driven approaches to data validation in ERP transitions. Journal of Artificial Intelligence Applications, 16(4), 310–327.
📄 Abbey ABN, Olaleye IA, Mokogwu C, Queen A. Building econometric models for evaluating cost efficiency in healthcare procurement systems. 2023a.
📄 Lewis, R., & Zhang, Y. Hybrid migration models: Balancing legacy integration and modernization. Journal of Cloud Computing, 10(1), 65–82.
📄 Gholami MF, Daneshgar F, Beydoun G, Rabhi F. Challenges in migrating legacy software systems to the cloud—An empirical study. Information Systems. 2017;67:100–13.
📄 Kumar, S., & Gupta, R. Data migration challenges: A framework for effective legacy system modernization. Journal of Information Systems, 29(3), 150–168.
📄 Patel, R., & Lee, K. Integrating legacy data: A case study in ERP migration. Journal of Enterprise Computing, 18(2), 76–92.
📄 Miller, S. Security challenges in cloud-based ERP systems. Information Security Journal, 14(2), 142–159.
📄 Clark, J. Enhancing operational efficiency through seamless data migration. Journal of Business Process Management, 20(2), 98–115.
📄 Anderson, T., & Martinez, F. Automation in data migration: Leveraging AI for ERP modernization. IEEE International Conference on Cloud Computing, 255–267.
📄 Martin, K. Overcoming data silos in enterprise migrations: A systematic approach. International Journal of Information Management, 30(5), 243–259.
📄 Robinson, P., & Davis, G. The role of predictive analytics in ERP data migration. Journal of Big Data Research, 8(3), 198–215.
📄 Thompson, J. Real-time data synchronization in hybrid migration environments. Proceedings of the IEEE Symposium on Information Technology, 89–102.
📄 Garcia, P. Data quality assurance in cloud ERP migrations. Journal of Systems Integration, 15(3), 112–129.
📄 Habib G, Sharma S, Ibrahim S, Ahmad I, Qureshi S, Ishfaq M. Blockchain technology: Benefits, challenges, applications, and integration of blockchain technology with cloud computing. Future Internet. 2022;14(11):341.
📄 Akinade AO, Adepoju PA, Ige AB, Afolabi AI, Amoo OO. Advancing segment routing technology: A new model for scalable and low-latency IP/MPLS backbone optimization. Open Access Research Journal of Science and Technology. 2022;5(2):77–95.
📄 Akinade AO, Adepoju PA, Ige AB, Afolabi AI, Amoo OO. A conceptual model for network security automation: Leveraging AI-driven frameworks to enhance multi-vendor infrastructure resilience. International Journal of Science and Technology Research Archive. 2021;1(1):39

How to Cite

Viola Hartmann. (2026). Automation-Enhanced Transformation Of Legacy Quality Assurance: Integrating AI-Driven Pipelines For Cloud-Native Enterprise Systems. Global Multidisciplinary Journal, 5(02), 26-34. https://www.grpublishing.org/journals/index.php/gmj/article/view/324

Most read articles by the same author(s)

<< < 7 8 9 10 11 12 13 14 > >> 

Similar Articles

1-10 of 72

You may also start an advanced similarity search for this article.