AI in Healthcare: Augmented Cloud-Native ERP Framework Integrating Digital Payments with SAP HANA and Machine Learning

Authors

  • Shravan Uday Chatterjee Department of Computer Engineering, SIT, Pune, India Author

DOI:

https://doi.org/10.15680/IJCTECE.2024.0706012

Keywords:

AI augmented software development, cloud native ERP, SAP HANA, digital payment automation, machine learning, software engineering framework, DevOps for ERP

Abstract

This paper proposes an AI‑augmented software development framework aimed at enabling cloud‑native enterprise resource planning (ERP) systems that integrate digital payment automation, leveraging the in‑memory database platform SAP HANA and machine‑learning models. The framework envisions a layered architecture in which AI‑driven modules support automated payment workflows (capture, reconciliation, fraud detection), embedded within a cloud‑native ERP environment. By aligning software development practices (code generation, testing automation, continuous integration) with AI‑augmented capabilities, the proposed approach seeks to accelerate development time, ensure higher quality and reliability, and better adapt to evolving payment ecosystems. The cloud‑native nature of the ERP platform enables elasticity, micro‑service modularization, and modern DevOps pipelines, while SAP HANA provides real‑time transaction analytics, machine‑learning model embedding, and seamless enterprise integration. We articulate the research design, describe the conceptual model, and discuss hypothetical evaluation results showing improvements in development cycle‑time reduction, defect rates, payment processing latency and automation coverage. The paper also examines the advantages (speed, scalability, integration) and disadvantages (complexity, cost, governance) of the framework. Ultimately, we conclude that AI‑augmented software development frameworks for cloud‑native ERP environments hold substantial promise for digital‑payment automation, and we highlight directions for future research, including cross‑domain reuse, adaptive ML models, and edge‑cloud hybrids.

References

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

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. Manda, P. (2023). A Comprehensive Guide to Migrating Oracle Databases to the Cloud: Ensuring Minimal Downtime, Maximizing Performance, and Overcoming Common Challenges. International Journal of Research Publications in Engineering, Technology and Management (IJRPETM), 6(3), 8201-8209.

4. Arulraj AM, Sugumar, R., Estimating social distance in public places for COVID-19 protocol using region CNN, Indonesian Journal of Electrical Engineering and Computer Science, 30(1), pp.414-424, April 2023.

5. HV, M. S., & Kumar, S. S. (2024). Fusion Based Depression Detection through Artificial Intelligence using Electroencephalogram (EEG). Fusion: Practice & Applications, 14(2).

6. Vinay Kumar Ch, Srinivas G, Kishor Kumar A, Praveen Kumar K, Vijay Kumar A. (2021). Real-time optical wireless mobile communication with high physical layer reliability Using GRA Method. J Comp Sci Appl Inform Technol. 6(1): 1-7. DOI: 10.15226/2474-9257/6/1/00149

7. Kandula, N. (2023). Evaluating Social Media Platforms A Comprehensive Analysis of Their Influence on Travel Decision-Making. J Comp Sci Appl Inform Technol, 8(2), 1-9.

8. IBM Architecture Center. (2023, December 5). AI Augmented Software Development with Agents (Assistants). IBM.

9. Rawat, C. (2023). Role of ERP Modernization in Digital Transformation: PeopleSoft Insight. arXiv:2303.03224.

10. Zhao, L., Wang, Q., Wang, C., Li, Q., Shen, C., Lin, X., Hu, S., & Du, M. (2019). VeriML: Enabling integrity assurances and fair payments for machine learning as a service. arXiv. https://arxiv.org/abs/1909.06961 arXiv

11. Kumar, A., Anand, L., & Kannur, A. (2024, November). Optimized Learning Model for Brain-Computer Interface Using Electroencephalogram (EEG) for Neuroprosthetics Robotic Arm Design for Society 5.0. In 2024 International Conference on Computing, Semiconductor, Mechatronics, Intelligent Systems and Communications (COSMIC) (pp. 30-35). IEEE.

12. Carcillo, F., Dal Pozzolo, A., Le Borgne, Y. A., Caelen, O., Mazzer, Y., & Bontempi, G. (2017). SCARFF: A scalable framework for streaming credit card fraud detection with Spark. arXiv. https://arxiv.org/abs/1709.08920 arXiv

13. Kesavan, E. (2024). Shift-Left and Continuous Testing in Quality Assurance Engineering Ops and DevOps. International Journal of Scientific Research and Modern Technology, 3(1), 16-21.

14. Lucas, Y., Portier, P. E., Laporte, L., He Guelton, L., Caelen, O., Granitzer, M., & Calabretto, S. (2019). Towards automated feature engineering for credit card fraud detection using multi perspective HMMs. arXiv. https://arxiv.org/abs/1909.01185 arXiv

15. Konda, S. K. (2022). ENGINEERING RESILIENT INFRASTRUCTURE FOR BUILDING MANAGEMENT SYSTEMS: NETWORK RE-ARCHITECTURE AND DATABASE UPGRADE AT NESTLÉ PHX. International Journal of Research Publications in Engineering, Technology and Management (IJRPETM), 5(1), 6186-6201.

16. Bhatia, R. (2023). 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. https://doi.org/10.32628/CSEIT251112140

17. Kotapati, V. B. R., Perumalsamy, J., & Yakkanti, B. (2022). Risk-Adapted Investment Strategies using Quantum-enhanced Machine Learning Models. American Journal of Autonomous Systems and Robotics Engineering, 2, 279-312.

18. Perumalsamy, J., & Christadoss, J. (2024). Predictive Modeling for Autonomous Detection and Correction of AI-Agent Hallucinations Using Transformer Networks. Journal of Artificial Intelligence General science (JAIGS) ISSN: 3006-4023, 6(1), 581-603.

19. Sridhar Kakulavaram. (2022). Life Insurance Customer Prediction and Sustainbility Analysis Using Machine Learning Techniques. International Journal of Intelligent Systems and Applications in Engineering, 10(3s), 390 –.Retrieved from https://ijisae.org/index.php/IJISAE/article/view/7649

20. 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.

21. Bhowmik, L., & Dhar, A. (2021). Machine Learning with SAP Models and Applications. SAP PRESS. (Note: this is essentially the same as reference #1 but emphasises models/applications)

22. Urs, A. D. (2023). Advancing Precision Surgery through Patient-Specific 3D Anatomical Modeling. International Journal of Computer Technology and Electronics Communication, 6(2), 6654-6657.

23. Tamizharasi, S., Rubini, P., Saravana Kumar, S., & Arockiam, D. Adapting federated learning-based AI models to dynamic cyberthreats in pervasive IoT environments.

24. Gosangi, S. R. (2023). AI AND THE FUTURE OF PUBLIC SECTOR ERP: INTELLIGENT AUTOMATION BEYOND DATA ANALYTICS. International Journal of Research Publications in Engineering, Technology and Management (IJRPETM), 6(4), 8991-8995.

25. 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).

26. Arul Raj A. M., Sugumar R. (2024). Detection of Covid-19 based on convolutional neural networks using pre-processed chest X-ray images (14th edition). Aip Advances 14 (3):1-11.

27. Amuda, K. K., Kumbum, P. K., Adari, V. K., Chunduru, V. K., & Gonepally, S. (2020). Applying design methodology to software development using WPM method. Journal ofComputer Science Applications and Information Technology, 5(1), 1-8.

28. Thambireddy, S., Bussu, V. R. R., & Joyce, S. (2023). Strategic Frameworks for Migrating Sap S/4HANA To Azure: Addressing Hostname Constraints, Infrastructure Diversity, And Deployment Scenarios Across Hybrid and Multi-Architecture Landscapes. Journal ID, 9471, 1297. https://www.researchgate.net/publication/396446597_Strategic_Frameworks_for_Migrating_Sap_S4HANA_To_Azure_Addressing_Hostname_Constraints_Infrastructure_Diversity_And_Deployment_Scenarios_Across_Hybrid_and_Multi-Architecture_Landscapes

29. Hammer, M., & Champy, J. (1993). Reengineering the Corporation: A Manifesto for Business Revolution. HarperBusiness. (Foundational work for business process & ERP thinking)

Downloads

Published

2024-12-15

How to Cite

AI in Healthcare: Augmented Cloud-Native ERP Framework Integrating Digital Payments with SAP HANA and Machine Learning. (2024). International Journal of Computer Technology and Electronics Communication, 7(6), 9797-9802. https://doi.org/10.15680/IJCTECE.2024.0706012

Most read articles by the same author(s)