Transforming Enterprise Integration with Cloud Native Innovations and Next Generation Technology Paradigms

Main Article Content

Tejaswi Bharadwaj Katta

Abstract

The changing environment of enterprise integration requires a shift of paradigm to more scaled, agile, and efficient systems. The present research article examines how cloud-native innovations and next-generation technologies transform the approaches to enterprise integration. With the help of modern technologies, such as microservices, containerization, and serverless computing, organizations could streamline their work, improve their scalability, and decrease costs. The suggested framework combines these innovative technologies with the conventional enterprise systems which allow ease of interoperability and versatile deployments.


 


The framework is aligned into four components, including cloud-native architecture, automation, data interoperability, and security. All the components will solve the problems of silos and inefficiencies in the legacy system integration. The article provides examples of success stories of cloud-native strategies implementation, including their capacity to encourage agility, accelerate the time-to-market, and provide solid security.


 


Study results indicate that there are significant gains in performance of the system, accessibility of data, and their cost-effectiveness. Cloud-native solutions with built-in AI and machine learning are the means to help enterprises make data-driven decisions and maximize operations. Moreover, the incorporation of the next generation technologies can make the enterprise systems more flexible and resilient giving organizations an advantage in a highly dynamic market.


 


Conclusively, this study outlines the transformative possibilities of cloud-native innovations in the enterprise integration process and offers a business strategy in order to remain relevant in the digital age.

Article Details

Section

Articles

How to Cite

Transforming Enterprise Integration with Cloud Native Innovations and Next Generation Technology Paradigms. (2024). International Journal of Research Publications in Engineering, Technology and Management (IJRPETM), 7(2), 10347-10358. https://doi.org/10.15662/IJRPETM.2024.0702006

References

1. N. Kratzke and P.-C. Quint, "Understanding Cloud-Native Applications After 10 Years of Cloud Computing—A Systematic Mapping Study," J. Syst. Softw., vol. 126, pp. 1–16, Apr. 2017.

2. F. Zampetti, S. Geremia, G. Bavota, and M. Di Penta, "CI/CD Pipelines Evolution and Restructuring: A Qualitative and Quantitative Study," in Proc. IEEE Int. Conf. Softw. Maintenance Evol. (ICSME), Sep. 2021, pp. 471–482.

3. S. Barlev, Z. Basil, S. Kohanim, R. Peleg, S. Regev, and A. Shulman-Peleg, "Secure Yet Usable: Protecting Servers and Linux Containers," IBM J. Res. Develop., vol. 60, no. 4, pp. 12:1–12:10, Jul. 2016.

4. L. Leite, C. Rocha, F. Kon, D. Milojicic, and P. Meirelles, "A Survey of DevOps Concepts and Challenges," ACM Comput. Surv., vol. 52, no. 6, pp. 1–35, Nov. 2020.

5. N. Kratzke, "A Brief History of Cloud Application Architectures," Appl. Sci., vol. 8, no. 8, p. 1368, Aug. 2018.

6. Q. Duan, "Intelligent and Autonomous Management in Cloud-Native Future Networks—A Survey on Related Standards from an Architectural Perspective," Future Internet, vol. 13, no. 2, p. 42, 2021.

7. C. Surianarayanan and P. R. Chelliah, Demystifying Cloud-Native Comput. Paradigm, Cham, Switzerland: Springer, 2023, pp. 321–345.

8. B. Hindman et al., "Mesos: A Platform for Fine-Grained Resource Sharing in the Data Center," in Proc. 8th USENIX Symp. Networked Syst. Design Implement. (NSDI), Boston, MA, USA: USENIX Association, Mar. 2011, pp. 1–17.

9. W. Li et al., "Service Mesh: Challenges, State of the Art, and Future Research Opportunities," in Proc. IEEE Int. Conf. Service-Oriented Syst. Eng. (SOSE), Apr. 2019, pp. 122–1225.

10. V. K. Vavilapalli et al., "Apache Hadoop YARN: Yet Another Resource Negotiator," in Proc. 4th Annu. Symp. Cloud Comput., 2013, pp. 1–16.

11. X. Xu et al., "Test Report on Kubeedge’s Support for 100,000 Edge Nodes," 2022. [Online]. Available: https://kubeedge.io/en/blog/scalability-testreport/

12. G. Zhang, R. Lu, and W. Wu, "Zeus: Improving Resource Efficiency via Workload Colocation for Massive Kubernetes Clusters," IEEE Access, vol. 9, pp. 105192–105204, 2021.

13. J. Santos et al., "Towards Network-Aware Resource Provisioning in Kubernetes for Fog Computing Applications," in Proc. IEEE Conf. Netw. Softw. (NetSoft), Jun. 2019, pp. 351–359.

14. Y. Yim et al., "Tailored Learning-Based Scheduling for Kubernetes-Oriented Edge-Cloud System," in Proc. IEEE INFOCOM Conf. Comput. Commun., May 2021, pp. 1–10.

15. X. Zhang, L. Li, Y. Wang, E. Chen, and L. Shou, "Zeus: Improving Resource Efficiency via Workload Colocation for Massive Kubernetes Clusters," IEEE Access, vol. 9, pp. 105192–105204, 2021.