Quantum-Enhanced AI Cloud Platform for Real-Time Banking Operations with SAP Integration
DOI:
https://doi.org/10.15680/IJCTECE.2025.0805013Keywords:
Quantum Computing, Artificial Intelligence, Cloud Computing, Real-Time Banking, SAP Integration, Financial Technology, Intelligent Banking Systems, Predictive Analytics, Cloud-Based Automation, High-Performance ComputingAbstract
The rapid growth of digital banking requires secure, efficient, and intelligent platforms capable of processing large volumes of transactions in real time. This paper proposes a Quantum-Enhanced AI Cloud Platform that leverages the computational power of quantum computing and advanced artificial intelligence techniques to optimize real-time banking operations. By integrating SAP systems within a cloud-based architecture, the framework ensures seamless data management, predictive analytics, and automated decision-making while maintaining high levels of security and scalability. The proposed solution addresses latency, throughput, and risk mitigation challenges in modern banking, enabling banks to offer faster, smarter, and more reliable services. Simulation and performance analyses demonstrate significant improvements in transaction processing efficiency, predictive accuracy, and system resilience compared to conventional AI-cloud frameworks.
References
1. Chen, L., Zhao, Y., & Kumar, S. (2024). Quantum AI in financial data optimization. Journal of FinTech Systems, 9(1), 34–49.
2. Dave, B. L. (2025). ENHANCING TRANSPARENCY AND AGILITY IN SOCIAL WORK SERVICES VIA THE SWAN PLATFORM. International Journal of Research Publications in Engineering, Technology and Management (IJRPETM), 8(2), 11778-11783.
3. Chiranjeevi, Y., Sugumar, R., & Tahir, S. (2024, November). Effective Classification of Ocular Disease Using Resnet-50 in Comparison with Squeezenet. In 2024 IEEE 9th International Conference on Engineering Technologies and Applied Sciences (ICETAS) (pp. 1-6). IEEE.
4. Devarashetty, P. K. (2024). SAP field service management: Optimizing resource allocation and service delivery in the digital era.
5. Arjunan, T., Arjunan, G., & Kumar, N. J. (2025, July). Optimizing the Quantum Circuit of Quantum K-Nearest Neighbors (QKNN) Using Hybrid Gradient Descent and Golden Eagle Optimization Algorithm. In 2025 International Conference on Computing Technologies & Data Communication (ICCTDC) (pp. 1-7). IEEE.
6. Rahman, F., & Gupta, D. (2023). AI-driven quantum computation for secure cloud finance. IEEE Transactions on Cloud Computing, 11(3), 512–527.
7. Joseph, Jimmy. (2024). AI-Driven Synthetic Biology and Drug Manufacturing Optimization. International Journal of Innovative Research in Computer and Communication Engineering. 12. 1138., 10.15680/IJIRCCE.2024.1202069. https://www.researchgate.net/publication/394614673_AIDriven_Synthetic_Biology_and_Drug_Manufacturing_Optimization
8. Wang, M., & Patel, K. (2023). Optimization of quantum circuits using reinforcement learning. ACM Transactions on Quantum Computing, 4(2), 1–18.
9. Zhou, L., & Li, H. (2022). Noise reduction strategies in quantum finance applications. International Journal of Quantum Technologies, 7(4), 225–240.
10. Gosangi, S. R. (2023). Reimagining Government Financial Systems: A Scalable ERP Upgrade Strategy for Modern Public Sector Needs. International Journal of Research Publications in Engineering, Technology and Management (IJRPETM), 6(1), 8001-8005.
11. Sugumar, R. (2023, September). A Novel Approach to Diabetes Risk Assessment Using Advanced Deep Neural Networks and LSTM Networks. In 2023 International Conference on Network, Multimedia and Information Technology (NMITCON) (pp. 1-7). IEEE.
12. Lopez, M., & Chang, Y. (2023). Quantum encryption and key distribution for financial systems. Journal of Cryptographic Engineering, 13(1), 77–91.
13. Batchu, K. C. (2025). Metadata-Driven ETL Framework for Automated Schema Evolution and Impact Analysis. Journal of Computer Science and Technology Studies, 7(7), 846-852.
14. Sivaraju, P. S. (2024). PRIVATE CLOUD DATABASE CONSOLIDATION IN FINANCIAL SERVICES: A CASE STUDY OF DEUTSCHE BANK APAC MIGRATION. ITEGAM-Journal of Engineering and Technology for Industrial Applications (ITEGAM-JETIA).
15. Abdul Azeem, M., Tanvir Rahman, A., & Ismoth, Z. (2022). BUSINESS RULES AUTOMATION THROUGH ARTIFICIAL INTELLIGENCE: IMPLICATIONS ANALYSIS AND DESIGN. International Journal of Economy and Innovation, 29, 381-404.
16. Singh, R., & Mehta, P. (2023). Hybrid quantum-classical models for cloud banking transactions. Cloud Computing Journal, 15(2), 102–117.
17. Islam, M. S., Ahmad, M. Y., Zerine, I., Biswas, Y. A., & Islam, M. M. Real-Time Data Stream Analytics and Artificial Intelligence for Enhanced Fraud Detec-tion and Transaction Monitoring in Banking Security.
18. 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.
19. Sankar, Thambireddy,. (2024). SEAMLESS INTEGRATION USING SAP TO UNIFY MULTI-CLOUD AND HYBRID APPLICATION. International Journal of Engineering Technology Research & Management (IJETRM), 08(03), 236–246. https://doi.org/10.5281/zenodo.15760884
20. Smith, A., & Zhang, J. (2021). AI-enhanced financial transaction automation in cloud ecosystems. International Journal of Financial Innovation, 8(3), 85–99.
21. Adigun, P. O., Oyekanmi, T. T., & Adeniyi, A. A. (2023). Simulation Prediction of Background Radiation Using Machine Learning. New Mexico Highlands University.
22. Tan, C., & Kim, S. (2022). Reinforcement learning for quantum circuit compilation. Quantum Engineering Review, 5(2), 66–83.
23. Thambireddy, S., Bussu, V. R. R., & Pasumarthi, A. (2022). Engineering Fail-Safe SAP Hana Operations in Enterprise Landscapes: How SUSE Extends Its Advanced High-Availability Framework to Deliver Seamless System Resilience, Automated Failover, and Continuous Business Continuity. International Journal of Research Publications in Engineering, Technology and Management (IJRPETM), 5(3), 6808-6816.
24. Chunduru, V. K., Gonepally, S., Amuda, K. K., Kumbum, P. K., & Adari, V. K. (2022). Evaluation of human information processing: An overview for human-computer interaction using the EDAS method. SOJ Materials Science & Engineering, 9(1), 1–9.
25. Nielsen, M. A., & Chuang, I. L. (2021). Quantum computation and quantum information (2nd ed.). Cambridge University Press.
26. Karvannan, R. (2025). Architecting DSCSA-compliant systems for real-time inventory management in high-volume retail pharmacy networks. International Journal of Computer Engineering and Technology, 16(2), 4181–4194. https://doi.org/10.34218/IJCET_16_02_036
27. Ahmed, M., & Ho, W. (2023). AI-quantum hybrid models for financial forecasting. Journal of Intelligent Systems, 14(3), 201–219.

