Advanced Connectivity of CI/CD Pipelines for Multi-Environment EKS Implementations
Keywords:
DevOps automation, continuous testing, microservicesAbstract
Teams may be deployers software more quickly, confidently, & efficiently by using these kinds of principles, which also provide a continuous feedback loop that improves the process & the program. Modern software development has been transformed by CI/CD, which allows teams to produce apps efficiently & consistently. When CI/CD pipelines are used in conjunction with Kubernetes, particularly Amazon Elastic Kubernetes Service, they provide flexibility, scalability, & efficiency, which helps to deployments become more predictable & seamless as businesses expands. By automating the processes like building, testing & deployment using tools like Jenkins, GitLab & AWS CodePipeline, advanced CI/CD procedures for Elastic Kubernetes Service enhances the pipeline from code commit to production. These pipelines guarantee reliable & more effective delivery by streamlining the procedure across the testing, staging & production environments. In CI/CD pipelines, security & the compliance are very essential. Early in the process, automating security tests like vulnerability scanning & the static codes analysis aids in identifying the problems before they effect production. Every stage of the program has built-in monitoring & observability, which preserves its health & enables the teams to see & fix their problems very quickly. In order to ensure that the new code is integrated smoothly & doesn't interfere with functionality and the testing is an essential step in this process. Updates with little downtime are made be more possible via installed techniques like blue-green positions & canary releases.
References
1. Joshi, P. K. (2021). CI/CD Automation for Payment Gateways: Azure vs. AWS. ESP Journal of Engineering & Technology Advancements (ESP JETA), 1(2), 163-175.
2. Salecha, R. (2022). What Is GitOps?. In Practical GitOps: Infrastructure Management Using Terraform, AWS, and GitHub Actions (pp. 1-30). Berkeley, CA: Apress.
3. Cowell, C., Lotz, N., & Timberlake, C. (2023). Automating DevOps with GitLab CI/CD Pipelines: Build efficient CI/CD pipelines to verify, secure, and deploy your code using real-life examples. Packt Publishing Ltd.
4. MUSTYALA, A. (2022). CI/CD Pipelines in Kubernetes: Accelerating Software Development and Deployment. EPH-International Journal of Science And Engineering, 8(3), 1-11.
5. Kromer, M. (2022). Basics of CI/CD and pipeline scheduling. In Mapping Data Flows in Azure Data Factory: Building Scalable ETL Projects in the Microsoft Cloud (pp. 139-154). Berkeley, CA: Apress.
6. Sivathapandi, P., Paul, D., & Sudharsanam, S. R. (2021). Enhancing Cloud-Native CI/CD Pipelines with AI-Driven Automation and Predictive Analytics. Australian Journal of Machine Learning Research & Applications, 1(1), 226-265.
7. Nalini, M. K., Mahalakshmi, B. S., Khandelwal, N., Pai, N., & Sharan, L. (2023, November). CI/CD Pipeline with Vulnerability Mitigation. In 2023 International Conference on Recent Advances in Science and Engineering Technology (ICRASET) (pp. 1-6). IEEE.
8. Satapathy, B. S., Satapathy, S. S., Singh, S. I., & Chakraborty, J. (2023, March). Continuous Integration and Continuous Deployment (CI/CD) Pipeline for the SaaS Documentation Delivery. In International Conference on Information Technology (pp. 41-50). Singapore: Springer Nature Singapore.
9. Sethi, F. (2020). Automating software code deployment using continuous integration and continuous delivery pipeline for business intelligence solutions. Authorea Preprints.
10. Zampetti, F., Geremia, S., Bavota, G., & Di Penta, M. (2021, September). CI/CD pipelines evolution and restructuring: A qualitative and quantitative study. In 2021 IEEE International Conference on Software Maintenance and Evolution (ICSME) (pp. 471-482). IEEE.
11. Aghera, S. (2021). SECURING CI/CD PIPELINES USING AUTOMATED ENDPOINT SECURITY HARDENING. JOURNAL OF BASIC SCIENCE AND ENGINEERING, 18(1).
12. Levée, M. (2023). Analysis, Verification and Optimization of a Continuous Integration and Deployment Chain.
13. Kushtov, M. (2022). Serverless CI/CD pipeline based on Google Cloud Platform.
14. Muñoz, A., Farao, A., Correia, J. R. C., & Xenakis, C. (2021). P2ISE: preserving project integrity in CI/CD based on secure elements. Information, 12(9), 357.
15. Quetzalli, A. (2023). Integrating Docs into CI/CD Pipelines. In Docs-as-Ecosystem: The Community Approach to Engineering Documentation (pp. 117-129). Berkeley, CA: Apress.
16. Immaneni, J. (2023). Best Practices for Merging DevOps and MLOps in Fintech. MZ Computing Journal, 4(2).
17. Immaneni, J. (2023). Scalable, Secure Cloud Migration with Kubernetes for Financial Applications. MZ Computing Journal, 4(1).
18. Nookala, G., Gade, K. R., Dulam, N., & Thumburu, S. K. R. (2024). Building Cross-Organizational Data Governance Models for Collaborative Analytics. MZ Computing Journal, 5(1).
19. Nookala, G. (2024). The Role of SSL/TLS in Securing API Communications: Strategies for Effective Implementation. Journal of Computing and Information Technology, 4(1).
20. Komandla, V. Crafting a Clear Path: Utilizing Tools and Software for Effective Roadmap Visualization.
21. Komandla, V. Enhancing Product Development through Continuous Feedback Integration “Vineela Komandla”.
22. Thumburu, S. K. R. (2023). EDI and API Integration: A Case Study in Healthcare, Retail, and Automotive. Innovative Engineering Sciences Journal, 3(1).
23. Thumburu, S. K. R. (2023). Quality Assurance Methodologies in EDI Systems Development. Innovative Computer Sciences Journal, 9(1).
24. Gade, K. R. (2024). Beyond Data Quality: Building a Culture of Data Trust. Journal of Computing and Information Technology, 4(1).
25. Gade, K. R. (2024). Cost Optimization in the Cloud: A Practical Guide to ELT Integration and Data Migration Strategies. Journal of Computational Innovation, 4(1).
26. Katari, A., & Rodwal, A. NEXT-GENERATION ETL IN FINTECH: LEVERAGING AI AND ML FOR INTELLIGENT DATA TRANSFORMATION.
27. Katari, A. Case Studies of Data Mesh Adoption in Fintech: Lessons Learned-Present Case Studies of Financial Institutions.
28. Gade, K. R. (2023). Data Governance in the Cloud: Challenges and Opportunities. MZ Computing Journal, 4(1).
29. Gade, K. R. (2023). The Role of Data Modeling in Enhancing Data Quality and Security in Fintech Companies. Journal of Computing and Information Technology, 3(1).
30. Nookala, G. (2023). Real-Time Data Integration in Traditional Data Warehouses: A Comparative Analysis. Journal of Computational Innovation, 3(1).
31. Muneer Ahmed Salamkar. Data Visualization: AI-Enhanced Visualization Tools to Better Interpret Complex Data Patterns. Journal of Bioinformatics and Artificial Intelligence, vol. 4, no. 1, Feb. 2024, pp. 204-26
32. Muneer Ahmed Salamkar, and Jayaram Immaneni. Data Governance: AI Applications in Ensuring Compliance and Data Quality Standards. Journal of AI-Assisted Scientific Discovery, vol. 4, no. 1, May 2024, pp. 158-83
33. Naresh Dulam, et al. “GPT-4 and Beyond: The Role of Generative AI in Data Engineering”. Journal of Bioinformatics and Artificial Intelligence, vol. 4, no. 1, Feb. 2024, pp. 227-49
34. Naresh Dulam, et al. Apache Arrow: Optimizing Data Interchange in Big Data Systems. Distributed Learning and Broad Applications in Scientific Research, vol. 3, Oct. 2017, pp. 93-114
35. Naresh Dulam, and Venkataramana Gosukonda. Event-Driven Architectures With Apache Kafka and Kubernetes. Distributed Learning and Broad Applications in Scientific Research, vol. 3, Oct. 2017, pp. 115-36
36. Sarbaree Mishra. “The Lifelong Learner - Designing AI Models That Continuously Learn and Adapt to New Datasets”. Journal of AI-Assisted Scientific Discovery, vol. 4, no. 1, Feb. 2024, pp. 207-2
37. Sarbaree Mishra, and Jeevan Manda. “Improving Real-Time Analytics through the Internet of Things and Data Processing at the Network Edge ”. Journal of AI-Assisted Scientific Discovery, vol. 4, no. 1, Apr. 2024, pp. 184-06
38. Sarbaree Mishra, and Jeevan Manda. “Building a Scalable Enterprise Scale Data Mesh With Apache Snowflake and Iceberg”. Journal of AI-Assisted Scientific Discovery, vol. 3, no. 1, June 2023, pp. 695-16
39. Sarbaree Mishra. “Scaling Rule Based Anomaly and Fraud Detection and Business Process Monitoring through Apache Flink”. Australian Journal of Machine Learning Research & Applications, vol. 3, no. 1, Mar. 2023, pp. 677-98
40. Babulal Shaik. Developing Predictive Autoscaling Algorithms for Variable Traffic Patterns . Journal of Bioinformatics and Artificial Intelligence, vol. 1, no. 2, July 2021, pp. 71-90
41. Babulal Shaik, et al. Automating Zero-Downtime Deployments in Kubernetes on Amazon EKS . Journal of AI-Assisted Scientific Discovery, vol. 1, no. 2, Oct. 2021, pp. 355-77
Downloads
Published
Issue
Section
License

This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.