Next Generation Enterprise Ecosystems Powered by Predictive Intelligence and Cloud Native Innovation

Authors

  • Harpreet Singh Senior Software Engineer, Shopify, Canada Author

DOI:

https://doi.org/10.15662/IJEETR.2023.0503007

Keywords:

Predictive Intelligence, Cloud Native Innovation, Enterprise Ecosystems, Artificial Intelligence, Machine Learning, Digital Transformation, Big Data Analytics, Cloud Computing, Business Intelligence, Organizational Agility, Automation, Digital Innovation

Abstract

The integration of these technologies creates agile enterprise environments that support continuous innovation, automation, and digital transformation. Organizations adopting predictive intelligence and cloud-native solutions gain competitive advantages through improved resource utilization, accelerated product development, enhanced cybersecurity, and data-driven governance. However, challenges such as data privacy concerns, integration complexity, skill shortages, and regulatory compliance must be addressed for successful implementation. This study examines the evolution of enterprise ecosystems, reviews existing literature on predictive intelligence and cloud-native technologies, and proposes a research methodology to evaluate their impact on organizational performance. The findings contribute to understanding how intelligent and cloud-driven ecosystems can shape sustainable business growth, innovation, and resilience in the digital economy

References

1. Socrates, S., Shanmugapriya, M., Murugeshwari, B., & Angalaeswari, S. (2024). Efficient Design for Implantable Device Constant Current Induction Doubly Fed Generating Incorporating Grid Connectivity. In Intelligent Solutions for Sustainable Power Grids (pp. 382-392). IGI Global Scientific Publishing.

2. Vimal Raja, G. (2022). Leveraging Machine Learning for Real-Time Short-Term Snowfall Forecasting Using MultiSource Atmospheric and Terrain Data Integration. International Journal of Multidisciplinary Research in Science, Engineering and Technology, 5(8), 1336-1339.

3. Rajendran, S., Sundarapandi, A. M. S., Krishnamurthy, A., & Thanarajan, T. (2022). An intelligent face recognition technology for iot-based smart city application using condition-cnn with foraging learning pso model. International Journal of Pattern Recognition and Artificial Intelligence, 36(14), 2256018.

4. Anand, L., & Syed Ibrahim, S. P. (2018). HANN: a hybrid model for liver syndrome classification by feature assortment optimization. Journal of medical systems, 42(11), 211.

5. Adepu, G. (2022). Machine learning-driven environmental monitoring systems for real-time regulatory compliance and risk detection. International Journal of Engineering & Extended Technologies Research (IJEETR), 4(2), 22–37.

6. Watham, S. D., & Vimal, V. R. (2013). Design and Implementation of Data Sanitization Technique For Effective Filtering With Enhanced Medical Support System in Cloud Architecture Diagram. International Journal of Emerging Technology and Advanced Engineering, 3(12), 471-473.Kavuri, S. (2022). Large Language Model (LLM)-Based Automation for Software Test Script Generation. Computer Fraud & Security, 17-28.

7. Shewale, V. (2022). IT/OT Convergence: A Zero Trust Reference Architecture for the Energy Sector. International Journal of Science, Research and Technology, 5(5), 8494-8502.

8. Parasa, M. (2022). Addressing the underutilization of exit interview data: A structured AI-assisted framework for actionable workforce insights in SAP SuccessFactors. Global Scientific and Academic Research Journal of Multidisciplinary Studies, 1(6), 42–52. https://gsarpublishers.com/abstract-2326/

9. Raja, G. V. (2022). Integrating network forensics with data mining for advanced cybercrime investigation. International Journal of Engineering & Extended Technologies Research (IJEETR), 4(5), 5321–5326.

10. Padwal, R. A., & Mulajkar, R. M. (2016). A COMPARATIVE STUDY OF IMAGE SEGMENTATION METHOD. International Journal of Advance Research in Engineering, Science & Technology, 3(7), 151-163.

11. Mathew, A. (2021). Artificial intelligence and cognitive computing for 6G communications & networks. International Journal of Computer Science and Mobile Computing, 10(3), 26-31.

12. Rajasekar, M., Aruldoss, A. C., & Bennet, M. A. (2018). A novel method to detect corrosion in underwater infrastructure using an image processing. ARPN Journal of Engineering and Applied Science, 13(7), 2556-2561.

13. Subramanyam, S. P. (2022). CyberArk integrated privileged access security for Azure DevOps environments. International Journal of Research and Applied Innovations (IJRAI), 5(1), 9478–9485. https://doi.org/10.15662/IJRAI.2022.0501008

14. Namdeo, A. (2022). Graph neural networks for real-time supply chain risk. International Journal of Humanities and Information Technology, 4(1–3), 175–192.

15. Fung, J., & Panyala, V. R. (2020). Automating multi-region scalable CI/CD framework for managing AWS CloudWatch alerts. International Journal of Engineering & Extended Technologies Research, 2(5), 1854–1858.

16. Kasireddy, J. R. (2022). From Raw Trades to Audit-Ready Insights Designing Regulator-Grade Market Surveillance Pipelines. International Journal of Engineering & Extended Technologies Research (IJEETR), 4(2), 4609-4616.

17. Adepu, R. (2022). Building secure multi-cloud infrastructure for mission-critical enterprise workloads. The International Journal of Research Publications in Engineering, Technology and Management, 5(5), 14–32.

18. Narayanan, S. (2022). Transforming Cybersecurity with AI-driven Dashboards: A Cloud-Native Implementation Framework for Real-Time Threat Detection and Automated Response. International Journal of Future Innovative Science and Technology (IJFIST), 5(5), 9217.

19. Sudarsan, V., & Sugumar, R. (2019). Building a distributed K‐Means model for Weka using remote method invocation (RMI) feature of Java. Concurrency and Computation: Practice and Experience, 31(14), e5313.

20. V. B. Sarabu. (2018). Building foundational data integrity in enterprise retail systems: A structured approach to early-stage data governance. International Journal of Research Publications in Engineering, Technology and Management, 1(1), 2457–2465

21. Bhende, M., Thakare, A., Saravanan, V., Anbazhagan, K., Patel, H. N., & Kumar, A. (2022). [Retracted] Attention Layer‐Based Multidimensional Feature Extraction for Diagnosis of Lung Cancer. BioMed Research International, 2022(1), 3947434.

22. Sengupta, J., & Alzbutas, R. (2022). Intracranial hemorrhages segmentation and features selection applying cuckoo search algorithm with gated recurrent unit. Applied Sciences, 12(21), 10851.

23. Kunadi, S. K. (2022). Designing high-performance data pipelines using Snowflake and cloud-native architectures. International Journal of Research and Applied Innovations (IJRAI), 5(6), 8220–8230.

24. Prasad, P. K. (2021). Kubernetes everywhere: Operating hybrid and multi-cloud infrastructure at scale. International Journal of Engineering & Extended Technologies Research, 3(4), 3393–3401.

25. Dama, H. B. (2023). Designing highly available multi-cloud database architectures for global financial services. International Journal of Research and Applied Innovations, 6(1), 8329-8336.

26. Boddupally, H. L. (2022). Architectural-driven intelligent refactoring for resilient cloud-native. NET systems. Available at SSRN 6270479.

27. Pasumarthi, H. (2023). A Deep Dive into Enterprise B2B Integrations: Designing High-Availability File and API Workflows with IBM Datapower and Autosys. International Journal of Research Publications in Engineering, Technology and Management (IJRPETM), 6(2), 8363-8370.

28. Raj, A. A., & Sugumar, R. (2022, October). Estimation of Social Distance for COVID19 Prevention using K-Nearest Neighbor Algorithm through deep learning. In 2022 IEEE 2nd Mysore Sub Section International Conference (MysuruCon) (pp. 1-6). IEEE.

29. Dhinakaran, D., Prathap, P. J., Selvaraj, D., Kumar, D. A., & Murugeshwari, B. (2022). Mining privacy-preserving association rules based on parallel processing in cloud computing. International Journal of Engineering Trends and Technology, 70(3), 284-294.

30. Vimal, V. R., Anandan, P., & Kumaratharan, N. (2022). Heart Disease Diagnosis Using Electrocardiography (ECG) Signals. Intelligent Automation & Soft Computing, 32(1).

31. Vanitha, C., Sanmugam, A., Yogananth, A., Rajasekar, M., Kuppusamy, P. G., & Devasagayam, G. (2022). A facile synthesis of polyaniline-WO3 hybrid nanocomposite for enhanced dopamine detection. Materials Letters, 328, 133149.

32. Mathew, A. (2022). Leveraging Big Data Analytics to Power AI and ML (Machine Learning) Automation. Educational Research (IJMCER), 4(5), 131-134.

33. Bharti, N. S., & Mulajkar, R. M. (2015). Detection and classification of plant diseases. International Research Journal of Engineering and Technology, 2(2), 2267-2272.

Downloads

Published

2023-05-05

How to Cite

Next Generation Enterprise Ecosystems Powered by Predictive Intelligence and Cloud Native Innovation. (2023). International Journal of Engineering & Extended Technologies Research (IJEETR), 5(3), 6597-6604. https://doi.org/10.15662/IJEETR.2023.0503007