Intelligent Cloud-Native DevOps Architecture for Enterprise Transformation Leveraging Blockchain, BERT Models, and AI-Powered Financial Cryptosystems

Main Article Content

Henrik Tobias Hansen

Abstract

The convergence of artificial intelligence (AI), cloud computing, and blockchain technologies is reshaping enterprise transformation through intelligent automation, secure data exchange, and decentralized innovation. This paper proposes an Intelligent Cloud-Native DevOps Architecture that integrates AI-driven cognitive analytics, Natural Language Processing (NLP) using BERT models, and blockchain-enabled financial cryptosystems. The framework enables continuous integration and deployment pipelines (CI/CD) powered by machine learning for adaptive scalability, fault-tolerant microservices, and predictive quality assurance in cloud-native environments. BERT-based NLP modules enhance financial data interpretation, anomaly detection, and transaction transparency, while blockchain ensures immutability, auditability, and trust within distributed enterprise ecosystems. Through the fusion of DevOps automation, AI intelligence, and blockchain verification, the proposed model advances digital transformation by delivering higher operational agility, cyber resilience, and regulatory compliance. Experimental evaluation demonstrates improved deployment efficiency, reduced latency, and enhanced transaction security in enterprise-grade cloud applications. This interdisciplinary architecture paves the way for next-generation financial systems that are intelligent, transparent, and autonomously governed.

Article Details

Section

Articles

How to Cite

Intelligent Cloud-Native DevOps Architecture for Enterprise Transformation Leveraging Blockchain, BERT Models, and AI-Powered Financial Cryptosystems. (2025). International Journal of Research Publications in Engineering, Technology and Management (IJRPETM), 8(Special Issue 1), 1-5. https://doi.org/10.15662/IJRPETM.2025.0801801

References

1. Aler Tubella, A., Theodorou, A., Dignum, V., & Dignum, F. (2019). Governance by Glass Box: Implementing Transparent Moral Bounds for AI Behaviour. arXiv preprint arXiv:1905.04994.

2. Poornima, G., & Anand, L. (2025). Medical image fusion model using CT and MRI images based on dual scale weighted fusion based residual attention network with encoder-decoder architecture. Biomedical Signal Processing and Control, 108, 107932.

3. Mula, K. (2025). Real-Time Revolution: The Evolution of Financial Transaction Processing Systems. Available at SSRN 5535199. https://papers.ssrn.com/sol3/papers.cfm?abstract_id=5535199

4. Reddy, B. T. K., & Sugumar, R. (2025, June). Effective forest fire detection by UAV image using Resnet 50 compared over Google Net. In AIP Conference Proceedings (Vol. 3267, No. 1, p. 020274). AIP Publishing LLC.

5. Manda, P. (2025). DISASTER RECOVERY BY DESIGN: BUILDING RESILIENT ORACLE DATABASE SYSTEMS IN CLOUD AND HYPERCONVERGED ENVIRONMENTS. International Journal of Research and Applied Innovations, 8(4), 12568-12579.

6. Adari, V. K., Chunduru, V. K., Gonepally, S., Amuda, K. K., & Kumbum, P. K. (2024). Artificial Neural Network in Fibre-Reinforced Polymer Composites using ARAS method. International Journal of Research Publications in Engineering, Technology and Management (IJRPETM), 7(2), 9801-9806.

7. Jannatul, F., Md Saiful, I., Md, S., & Gul Maqsood, S. (2025). AI-Driven Investment Strategies Ethical Implications and Financial Performance in Volatile Markets. American Journal of Business Practice, 2(8), 21-51.

8. Jung, J., Patnam, M., & Ter Martirosyan, A. (2018). AI in public financial management: managing risks and challenges. In OECD. AI in Public Financial Management. OECD Publishing.

9. Mitchell, T. (2019). Machine Learning and the Science of Intelligence. Philosophical Transactions of the Royal Society A, 376(2118).

10. Shi, M. (2023). A Literature Review on the Application of Artificial Intelligence in Financial Statement Analysis. Accounting, Marketing and Organization.

11. Mani, R., & Pasumarthi, A. (2025). End-to-End SAP S/4HANA Rise Migration to SAP Cloud: Architecting a Secure and Scalable Landscape with Cloud Connector, Landscape Migration Server, SLT Server, Cloud Integration, and Governance Framework. International Journal of Humanities and Information Technology, 7(01), 46-62.

12. Baker, S., & Xiang, W. (2023). Explainable AI is Responsible AI: How Explainability Creates Trustworthy and Socially Responsible Artificial Intelligence. arXiv preprint arXiv:2312.01555.

13. Batool, A., Zowghi, D., & Bano, M. (2023). Responsible AI Governance: A Systematic Literature Review. arXiv preprint arXiv:2401.10896.

14. Garg, N. (2024). A systematic literature review on artificial intelligence technology in banking. Academy of Strategic Management Journal, 23(S1), 1 20.

15. TrustPath. (2023). AI transparency: What it is and why it matters for compliance? TrustPath article.

16. Hardoon, D. R., Aguerre, C., Gandhi, T. (2022). Artificial Intelligence Disclosures Are Key to Customer Trust. MIT Sloan Management Review.

17. Kondra, S., Raghavan, V., & kumar Adari, V. (2025). Beyond Text: Exploring Multimodal BERT Models. International Journal of Research Publications in Engineering, Technology and Management (IJRPETM), 8(1), 11764-11769.

18. Ahmad, S. (2024). The Role of Artificial Intelligence in Reducing Implicit Bias in Recruitment: A Systematic Review. International Journal of Advanced Research in Computer Science & Technology (IJARCST), 7(6), 11253-11260.

19. Balaji, P. C., & Sugumar, R. (2025, June). Multi-level thresholding of RGB images using Mayfly algorithm comparison with Bat algorithm. In AIP Conference Proceedings (Vol. 3267, No. 1, p. 020180). AIP Publishing LLC.

20. Christadoss, J., Das, D., & Muthusamy, P. (2025). AI-Agent Driven Test Environment Setup and Teardown for Scalable Cloud Applications. Journal of Knowledge Learning and Science Technology ISSN: 2959-6386 (online), 4(3), 1-13.

21. Pasumarthi, A. (2022). Architecting Resilient SAP Hana Systems: A Framework for Implementation, Performance Optimization, and Lifecycle Maintenance. International Journal of Research and Applied Innovations, 5(6), 7994-8003.

22. Anugula Sethupathy, U.K. (2022). API-driven architectures for modern digital payment and virtual account systems. International Research Journal of Modernization in Engineering Technology and Science, 4(8), 2442–2451. https://doi.org/10.56726/IRJMETS29156

23. Archana, R., & Anand, L. (2025). Residual u-net with Self-Attention based deep convolutional adaptive capsule network for liver cancer segmentation and classification. Biomedical Signal Processing and Control, 105, 107665.

24. Shi, M. (2023). A Literature Review on the Application of Artificial Intelligence in Financial Statement Analysis.