Intelligent Distributed Cloud Infrastructure for SAP Financial Testing and Validation

Authors

  • Bhavesh Dilip Patel Cloud Engineer, Tororo, Uganda Author

DOI:

https://doi.org/10.15662/IJARCST.2025.0806013

Keywords:

SAP, Artificial Intelligence, Cloud Computing, Distributed Systems, Financial Testing, Automation, Validation.

Abstract

In the era of digital transformation, enterprise financial systems such as SAP demand robust, scalable, and intelligent testing environments to ensure reliability, performance, and compliance. This paper presents an Intelligent Distributed Cloud Infrastructure designed to automate and optimize testing and validation processes for SAP-based financial systems. The proposed framework integrates Artificial Intelligence (AI) and Cloud Computing to enhance test case generation, defect prediction, and performance monitoring across distributed environments. The architecture employs AI-driven analytics to identify anomalies, optimize test coverage, and ensure data consistency within financial modules. Cloud-based distribution enhances scalability and resource allocation, enabling real-time collaboration and faster test execution cycles. Experimental evaluations demonstrate the system’s ability to reduce manual effort, increase test accuracy, and accelerate validation processes in complex SAP financial ecosystems. This research contributes to the advancement of intelligent automation in enterprise software testing, bridging the gap between AI-driven analytics and cloud-native distributed infrastructures.

References

1. Kratzke, N., & Peinl, R. (2017). ClouNS — A cloud native application reference model for enterprise architects. arXiv preprint arXiv:1709.04883.

2. Soundappan, S.J., Sugumar, R.: Optimal knowledge extraction technique based on hybridisation of improved artificial bee colony algorithm and cuckoo search algorithm. Int. J. Bus. Intell. Data Min. 11, 338 (2016)

3. Adari, V. K. (2024). The Path to Seamless Healthcare Data Exchange: Analysis of Two Leading Interoperability Initiatives. International Journal of Research Publications in Engineering, Technology and Management (IJRPETM), 7(6), 11472-11480.

4. Archana, R., & Anand, L. (2023, May). Effective Methods to Detect Liver Cancer Using CNN and Deep Learning Algorithms. In 2023 International Conference on Advances in Computing, Communication and Applied Informatics (ACCAI) (pp. 1-7). IEEE.

5. Yu, Z., Du, H., Li, Q., Zhuang, F., Liu, J., & Kou, G. (2022). A comprehensive survey on enterprise financial risk analysis from big data perspective. arXiv preprint arXiv:2211.14997.

6. Konda, S. K. (2025). LEVERAGING CLOUD-BASED ANALYTICS FOR PERFORMANCE OPTIMIZATION IN INTELLIGENT BUILDING SYSTEMS. International Journal of Research Publications in Engineering, Technology and Management (IJRPETM), 8(1), 11770-11785.

7. Sivaraju, P. S. (2024). Driving Operational Excellence Via Multi-Market Network Externalization: A Quantitative Framework for Optimizing Availability, Security, And Total Cost in Distributed Systems. International Journal of Research and Applied Innovations, 7(5), 11349-11365.

8. SAP. (2024). AI in finance: Myths, misconceptions, and reality. Retrieved from https://www.sap.com/research/ai-in-finance-myths-misconceptions-reality SAP

9. Mula, K. (2025). Real-Time Revolution: The Evolution of Financial Transaction Processing Systems. Available at SSRN 5535199.

10. Galberaith, S. (2023). The future of finance: AI driven FP&A with SAP + SimpleFi. SAPinsider. Retrieved from https://sapinsider.org/map/the-future-of-finance-ai-driven-fpa-with-sap-simplefi/ SAPinsider

11. Dr R., Sugumar (2023). Deep Fraud Net: A Deep Learning Approach for Cyber Security and Financial Fraud Detection and Classification (13th edition). Journal of Internet Services and Information Security 13 (4):138-157.

12. Manda, P. (2022). IMPLEMENTING HYBRID CLOUD ARCHITECTURES WITH ORACLE AND AWS: LESSONS FROM MISSION-CRITICAL DATABASE MIGRATIONS. International Journal of Research Publications in Engineering, Technology and Management (IJRPETM), 5(4), 7111-7122.

13. Thambireddy, S., Bussu, V. R. R., & Mani, R. (2024). Optimizing SAP S/4HANA Upgrades through Sum: The Role of Silent Data Migration (SDMI) in Downtime Reduction. International Journal of Research and Applied Innovations, 7(3), 10727-10734.

14. Kumar, R., Al-Turjman, F., Anand, L., Kumar, A., Magesh, S., Vengatesan, K., ... & Rajesh, M. (2021). Genomic sequence analysis of lung infections using artificial intelligence technique. Interdisciplinary Sciences: Computational Life Sciences, 13(2), 192-200.

15. Bhatia, R. (2024). The impact of SAP Business Technology Platform (BTP) on financial data analytics and reporting. International Journal of Scientific Research in Computer Science, Engineering and Information Technology, 11(1), 1238 1246. IJSRCSEIT+1

16. Mohammed, A. A., Akash, T. R., Zubair, K. M., & Khan, A. (2020). AI-driven Automation of Business rules: Implications on both Analysis and Design Processes. Journal of Computer Science and Technology Studies, 2(2), 53-74.

17. Pasumarthi, A., & Joyce, S. (2025). Leveraging SAP’s Business Technology Platform (BTP) for Enterprise Digital Transformation: Innovations, Impacts, and Strategic Outcomes. International Journal of Computer Technology and Electronics Communication, 8(3), 10720-10732.

18. Garud, S. (2024). Architecting resilient cloud based systems: A development framework for financial risk management. International Journal of Intelligent Systems and Applications in Engineering, 12(23s). IJISAE

19. Nendrambaka, S. K. (2022). Comprehensive overview of SAP S/4HANA Cloud: Features, benefits and challenges. International Journal of Science and Research (IJSR). IJSR

20. Christadoss, J., Panda, M. R., Samal, B. V., & Wali, G. (2025). Development of a Multi-Objective Optimisation Framework for Risk-Aware Fractional Investment Using Reinforcement Learning in Retail Finance. Futurity Proceedings, 3.

21. Dr R., Sugumar (2023). Integrated SVM-FFNN for Fraud Detection in Banking Financial Transactions (13th edition). Journal of Internet Services and Information Security 13 (4):12-25.

22. Pourmajidi, W., Zhang, L., Steinbacher, J., Erwin, T., & Miranskyy, A. (2023). A reference architecture for governance of cloud native applications. arXiv preprint arXiv:2302.11617. arXiv

23. Poornima, G., & Anand, L. (2024, May). Novel AI Multimodal Approach for Combating Against Pulmonary Carcinoma. In 2024 5th International Conference for Emerging Technology (INCET) (pp. 1-6). IEEE.

24. Adari, V. K., Chunduru, V. K., Gonepally, S., Amuda, K. K., & Kumbum, P. K. (2023). Ethical analysis and decision-making framework for marketing communications: A weighted product model approach. Data Analytics and Artificial Intelligence, 3(5), 44–53. https://doi.org/10.46632/daai/3/5/7

25. Gosangi, S. R. (2023). Transforming Government Financial Infrastructure: A Scalable ERP Approach for the Digital Age. International Journal of Humanities and Information Technology, 5(01), 9-15.

26. Balalaie, A., Heydarnoori, A., & Jamshidi, P. (2015). Migrating to cloud native architectures using microservices: An experience report. arXiv preprint arXiv:1507.08217. arXiv

Downloads

Published

2025-11-05

How to Cite

Intelligent Distributed Cloud Infrastructure for SAP Financial Testing and Validation. (2025). International Journal of Advanced Research in Computer Science & Technology(IJARCST), 8(6), 13179-13182. https://doi.org/10.15662/IJARCST.2025.0806013