AI-Powered Cloud Modernization Framework for Intelligent Risk and Financial Process Management in SAP Environments
DOI:
https://doi.org/10.15662/IJEETR.2025.0706001Keywords:
Artificial Intelligence (AI), Cloud Computing, SAP Integration, Machine Learning (ML), Financial Risk Management, Business Process Modernization, Predictive AnalyticsAbstract
This research introduces an AI-powered cloud modernization framework aimed at optimizing financial process efficiency and advancing intelligent risk management within SAP-integrated enterprise ecosystems. The proposed system integrates artificial intelligence (AI) and machine learning (ML) methodologies to automate complex data analysis, detect operational anomalies, and forecast potential financial risks with high accuracy in real time. Through the seamless convergence of cloud computing and SAP business modules, the framework delivers a scalable, secure, and adaptive platform that supports digital transformation and continuous process improvement. The model employs predictive analytics to enhance cash flow forecasting, credit and liquidity risk evaluation, and regulatory compliance monitoring, thereby reducing human error and improving the speed of financial decision-making. Experimental evaluation demonstrates notable gains in data reliability, risk prediction accuracy, and operational transparency. Overall, this study provides a robust and intelligent approach to modernizing financial infrastructures through AI-driven automation and cloud-enabled business intelligence within SAP environments.
References
1. Al-Mashari, M. (2003). A process change-oriented model for ERP application. International Journal of Human–Computer Interaction, 16(1), 39–55.
2. Shashank, P. S. R. B., Anand, L., & Pitchai, R. (2024, December). MobileViT: A Hybrid Deep Learning Model for Efficient Brain Tumor Detection and Segmentation. In 2024 International Conference on Progressive Innovations in Intelligent Systems and Data Science (ICPIDS) (pp. 157-161). IEEE.
3. 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.
4. Batchu, K. C. (2022). Modern Data Warehousing in the Cloud: Evaluating Performance and Cost Trade-offs in Hybrid Architectures. International Journal of Advanced Research in Computer Science & Technology (IJARCST), 5(6), 7343-7349.
5. 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.
6. Venkata Ramana Reddy Bussu. “Databricks- Data Intelligence Platform for Advanced Data Architecture.” Volume. 9 Issue.4, April - 2024 International Journal of Innovative Science and Research Technology (IJISRT), www.ijisrt.com, ISSN - 2456-2165, PP :-108-112:-https://doi.org/10.38124/ijisrt/IJISRT24APR166.
7. Joyce, S., Pasumarthi, A., & Anbalagan, B. SECURITY OF SAP SYSTEMS IN AZURE: ENHANCING SECURITY POSTURE OF SAP WORKLOADS ON AZURE–A COMPREHENSIVE REVIEW OF AZURE-NATIVE TOOLS AND PRACTICES. Adari, V. K. (2024). How Cloud Computing is Facilitating Interoperability in Banking and Finance. International Journal of Research Publications in Engineering, Technology and Management (IJRPETM), 7(6), 11465-11471.
8. Markus, M. L., Tanis, C., & Van Fenema, P. C. (2000). Multisite ERP implementations. Communications of the ACM, 43(4), 42–46.
9. Balaji, P. C., & Sugumar, R. (2025, April). Accurate thresholding of grayscale images using Mayfly algorithm comparison with Cuckoo search algorithm. In AIP Conference Proceedings (Vol. 3270, No. 1, p. 020114). AIP Publishing LLC.
10. 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
11. Nurtaz Begum, A., Samira Alam, C., & KM, Z. (2025). Enhancing Data Privacy in National Business Infrastructure: Measures that Concern the Analytics and Finance Industry. American Journal of Technology Advancement, 2(10), 46-54.
12. Densborn, F. (2016). How to Transition to SAP S/4HANA. SAP Professional Journal, 18(1), 13–20.
13. 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.
14. 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.
15. Md Manarat Uddin, M., Sakhawat Hussain, T., & Rahanuma, T. (2025). Developing AI-Powered Credit Scoring Models Leveraging Alternative Data for Financially Underserved US Small Businesses. International Journal of Informatics and Data Science Research, 2(10), 58-86.
16. Shahin, M., Babar, M. A., & Zhu, L. (2017). Continuous integration and deployment: A systematic review. IEEE Software, 35(2), 16–25.
17. Sivaraju, P. S. (2023). Global Network Migrations & IPv4 Externalization: Balancing Scalability, Security, and Risk in Large-Scale Deployments. ISCSITR-INTERNATIONAL JOURNAL OF COMPUTER APPLICATIONS (ISCSITR-IJCA), 4(1), 7-34.
18. 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.
19. Khan, M. I. (2025). MANAGING THREATS IN CLOUD COMPUTING: A CYBERSECURITY RISK MITIGATION FRAMEWORK. International Journal of Advanced Research in Computer Science, 15(5). https://www.researchgate.net/profile/Md-Imran-Khan-12/publication/396737007_MANAGING_THREATS_IN_CLOUD_COMPUTING_A_CYBERSECURITY_RISK_MITIGATION_FRAMEWORK/links/68f79392220a341aa156b531/MANAGING-THREATS-IN-CLOUD-COMPUTING-A-CYBERSECURITY-RISK-MITIGATION-FRAMEWORK.pdf
20. Jaiswal, C. (2022). AI- and cloud-driven modernization of traditional ERP systems. International Journal of Intelligent Systems and Applications in Engineering, 10(1), 218–225.
21. Adari, Vijay Kumar, “Interoperability and Data Modernization: Building a Connected Banking Ecosystem,” International Journal of Computer Engineering and Technology (IJCET), vol. 15, no. 6, pp.653-662, Nov-Dec 2024. DOI:https://doi.org/10.5281/zenodo.14219429.
22. Pokala, P. (2023). Integration and impact of AI in modern ERP systems. International Journal of Computer Engineering and Technology, 14(3), 45–58.
23. 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.
24. Reddy, B. V. S., & Sugumar, R. (2025, April). Improving dice-coefficient during COVID 19 lesion extraction in lung CT slice with watershed segmentation compared to active contour. In AIP Conference Proceedings (Vol. 3270, No. 1, p. 020094). AIP Publishing LLC.
25. Sridhar Kakulavaram. (2024). Artificial Intelligence-Driven Frameworks for Enhanced Risk Management in Life Insurance. Journal of Computational Analysis and Applications (JoCAAA), 33(08), 4873–4897. Retrieved from https://www.eudoxuspress.com/index.php/pub/article/view/2996
26. Poornima, G., & Anand, L. (2024, April). Effective strategies and techniques used for pulmonary carcinoma survival analysis. In 2024 1st International Conference on Trends in Engineering Systems and Technologies (ICTEST) (pp. 1-6). IEEE.
27. AKTER, S., ISLAM, M., FERDOUS, J., HASSAN, M. M., & JABED, M. M. I. (2023). Synergizing Theoretical Foundations and Intelligent Systems: A Unified Approach Through Machine Learning and Artificial Intelligence.
28. Madathala, H., Yeturi, G., Mane, V., & Muneshwar, P. D. (2025, February). Navigating SAP ERP Implementation: Identifying Success Drivers and Pitfalls. In 2025 3rd International Conference on Intelligent Data Communication Technologies and Internet of Things (IDCIoT) (pp. 75-83). IEEE.
29. Jawad, Z. N., & Balázs, V. (2023). Machine learning-driven optimization of ERP systems. Beni-Suef University Journal of Basic and Applied Sciences, 12(4), 110–122.





