Autonomous DevOps Framework for Multi-Cloud ERP Systems AI-Driven Integration of SAP S4HANA with Apache Ecosystem and Wireless Sensor Networks
DOI:
https://doi.org/10.15662/IJEETR.2025.0706004Keywords:
AI-Driven DevOps, Multi-Cloud ERP, SAP S/4HANA, Apache Ecosystem, Wireless Sensor Networks (WSN), Autonomous Framework, Machine Learning, Cloud Integration, Zero-Trust Security, DevSecOps, Predictive Analytics, IoT-Enabled ERP, Reinforcement Learning, Continuous Testing, Data OrchestrationAbstract
The rapid evolution of enterprise digital infrastructures has accelerated the need for intelligent, autonomous, and secure DevOps frameworks capable of managing multi-cloud Enterprise Resource Planning (ERP) environments. This paper proposes an AI-driven Autonomous DevOps Framework for the seamless integration of SAP S/4HANA within a multi-cloud architecture, enhanced by the Apache open-source ecosystem and Wireless Sensor Networks (WSNs). The proposed framework leverages machine learning, predictive analytics, and reinforcement learning to automate configuration management, performance optimization, and anomaly detection across distributed cloud systems.
By incorporating sensor-driven data streams into ERP workflows, the system enables real-time monitoring of physical and operational parameters, enhancing supply chain visibility and adaptive decision-making. The Apache stack (Kafka, Spark, Airflow) serves as the data orchestration backbone, ensuring scalable, low-latency data processing and secure inter-service communication. The architecture adopts a Zero-Trust Security Model and integrates AI-based continuous testing pipelines within DevSecOps for compliance, resilience, and cost optimization across multi-cloud deployments.
This research contributes a unified model that bridges ERP automation, AI-based DevOps, and IoT-driven intelligence, fostering digital transformation for enterprises seeking efficiency, agility, and predictive operational control. Performance simulations and prototype evaluations demonstrate enhanced deployment velocity, reduced operational costs, and improved system resilience, positioning the framework as a cornerstone for next-generation enterprise automation.
References
1. Begoli, E., Camacho Rodríguez, J., Hyde, J., Mior, J., & Lemire, D. (2018). Apache Calcite: A foundational framework for optimized query processing over heterogeneous data sources. arXiv.
2. Kiran, A., & Kumar, S. A methodology and an empirical analysis to determine the most suitable synthetic data generator. IEEE Access 12, 12209–12228 (2024).
3. 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.
4. 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.
5. Peddamukkula, P. K. Advanced Fraud Prevention Frameworks in Financial Services: Leveraging Cloud Computing, Data Modernization, and Automation Technologies. https://www.researchgate.net/profile/Praveen-Peddamukkula/publication/396983756_Advanced_Fraud_Prevention_Frameworks_in_Financial_Services_Leveraging_Cloud_Computing_Data_Modernization_and_Automation_Technologies/links/6900dcf9368b49329fa787fc/Advanced-Fraud-Prevention-Frameworks-in-Financial-Services-Leveraging-Cloud-Computing-Data-Modernization-and-Automation-Technologies.pdf
6. Balaji, P. C., & Sugumar, R. (2025, June). Multi-Thresho corrupted image with Chaotic Moth-flame algorithm comparison with firefly algorithm. In AIP Conference Proceedings (Vol. 3267, No. 1, p. 020179). AIP Publishing LLC.
7. Gosangi, S. R. (2025). ARCHITECTING INTELLIGENT INVOICING PLATFORMS: LEVERAGING ORACLE EBS CUSTOMIZATION FOR HIGH-VOLUME REVENUE MANAGEMENT IN THE PUBLIC SECTOR. International Journal of Research Publications in Engineering, Technology and Management (IJRPETM), 8(1), 11798-11809.
8. Lin, T. (2025). Enterprise AI governance frameworks: A product management approach to balancing innovation and risk. International Research Journal of Management, Engineering, Technology, and Science, 1(1), 123–145. https://doi.org/10.56726/IRJMETS67008
9. Kandula, N. Innovative Fabrication of Advanced Robots Using The Waspas Method A New Era In Robotics Engineering. IJRMLT 2025, 1, 1–13. [Google Scholar] [CrossRef]
10. Bussu, V. R. R. Leveraging AI with Databricks and Azure Data Lake Storage. https://pdfs.semanticscholar.org/cef5/9d7415eb5be2bcb1602b81c6c1acbd7e5cdf.pdf
11. Hsiao, R. S., Lin, D. B., Lin, H. P., & Chung, C. H. (2014). A wireless sensor network deployment planning tool to support building automation. Applied Mechanics and Materials, 479 480, 646 650.
12. Mahendra, R., Sushil, K., Kumar, A., & Kharel, R. (2022). Green computing for industrial wireless sensor networks: Energy oriented cross layer modelling. Recent Patents on Engineering, 16(3), e170921196577.
13. Musa, P., Sugeru, H., & Wibowo, E. P. (2023). Wireless sensor networks for precision agriculture: A review of NPK sensor implementations. Preprints.
14. Pochu, S., Nersu, S. R. K., & Kathram, S. R. (2024). Multi cloud DevOps strategies: A framework for agility and cost optimisation. Journal of Artificial Intelligence General Science, 7(01), 104 119.
15. Taibi, D., Lenarduzzi, V., & Pahl, C. (2019). Continuous architecting with microservices and DevOps: A systematic mapping study. arXiv.
16. 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.
17. 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
18. Waseem, M., Liang, P., & Shahin, M. (2020). A systematic mapping study on microservices architecture in DevOps. arXiv.
19. 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.
20. “Analysis of node deployment in wireless sensor networks in warehouse environment monitoring systems.” (2019). EURASIP Journal on Wireless Communications and Networking, Article 288.
21. “Cloud based ML framework built using Apache ecosystem.” (2020). International Journal of Scientific Research in Science, Engineering and Technology (IJSRSET), 7(1), 334 340.
22. Kotapati, V. B. R., & Yakkanti, B. (2023). Real-Time Analytics Optimization Using Apache Spark Structured Streaming: A Lambda Architecture-based Scala Framework. American Journal of Data Science and Artificial Intelligence Innovations, 3, 86-119.
23. Mani, R., & Sivaraju, P. S. (2024). Optimizing LDDR Costs with Dual-Purpose Hardware and Elastic File Systems: A New Paradigm for NFS-Like High Availability and Synchronization. International Journal of Research Publications in Engineering, Technology and Management (IJRPETM), 7(1), 9916-9930.
24. 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.
25. 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.
26. Reddy, B. V. S., & Sugumar, R. (2025, June). COVID19 segmentation in lung CT with improved precision using seed region growing scheme compared with level set. In AIP Conference Proceedings (Vol. 3267, No. 1, p. 020154). AIP Publishing LLC.
27. Kiran, A., Rubini, P., & Kumar, S. S. (2025). Comprehensive review of privacy, utility and fairness offered by synthetic data. IEEE Access.
28. “Design, implementation, and evaluation of wireless sensor network systems.” (2010). EURASIP Journal on Wireless Communications and Networking, Article 439890.





