Techniques for Tracking Cloud Costs in Huge Amazon EKS Clusters
Keywords:
Amazon EKS, Cloud Cost Monitoring, KubeCostAbstract
For businesses expanding their infrastructure, controlling cloud expenses is becoming increasingly crucial, particularly for Kubernetes-based solutions like Amazon Elastic Kubernetes Service . With dynamics, complicated clusters hosting several services & workloads, keeping track of expenditures can be difficult. A useful methods for tracking & maximizing their expenses in extensive Elastic Kubernetes Service settings is described in this article. The article offers doable tactics for putting in place of a successful cost-monitoring's system, assisting businesses in remaining productively & economically . By using these information's, companies can manage their cloud costs & their guarantee peak performances in multi-tenant Elastic Kubernetes Service clusters. It places a strong emphasis on using tools like AWS Cost Explorer & Prometheus to obtain real-time insights into cost allocation & also resources utilization. By combining these organizations may identify inefficiencies, cost-tracking with Kubernetes-native monitoring , reduce wastes & get a better understanding of expenditure trends.
References
1. Sikeridis, D., Papapanagiotou, I., Rimal, B. P., & Devetsikiotis, M. (2017). A Comparative taxonomy and survey of public cloud infrastructure vendors. arXiv preprint arXiv:1710.01476.
2. Sayfan, G. (2018). Mastering Kubernetes: Master the art of container management by using the power of Kubernetes. Packt Publishing Ltd.
3. Arundel, J., & Domingus, J. (2019). Cloud Native DevOps with Kubernetes: building, deploying, and scaling modern applications in the Cloud. O'Reilly Media.
4. Chen, G. (2019). Modernizing Applications with Containers in Public Cloud. Amazon Web Services.
5. Baier, J., & White, J. (2018). Getting Started with Kubernetes: Extend your containerization strategy by orchestrating and managing large-scale container deployments. Packt Publishing Ltd.
6. Menga, J. (2018). Docker on Amazon Web Services: Build, deploy, and manage your container applications at scale. Packt Publishing Ltd.
7. Raju, C. V. N. (2015). Data Integration with Spatial Data Mining and Security Model in Cloud Computing. International Journal of Advance Research in Computer Science and Management Studies, 3(11), 272-279.
8. Li, Z., Zhang, H., O’Brien, L., Cai, R., & Flint, S. (2013). On evaluating commercial cloud services: A systematic review. Journal of Systems and Software, 86(9), 2371-2393.
9. Martınez, P. J. C. (2011). A Middleware framework for selfadaptive large scale distributed services (Doctoral dissertation, PhD thesis, Universitat Politecnica de Catalunya, Departament d’Arquitectura dels Computadors, 2011.(Cited on pages 72, 78, 81, and 82.)).
10. Chacin Martínez, P. J. (2011). A Middleware framework for self-adaptive large scale distributed services.
11. Wunder, S. (2005). Payments for environmental services: some nuts and bolts (Vol. 42, pp. 1-32). Bogor: Cifor.
12. Krautheim, F. J. (2010). Building trust into utility cloud computing. University of Maryland, Baltimore County.
13. Duan, Y. C. (2014). Market research of commercial recommendation engines for online and offline retail (Doctoral dissertation, Massachusetts Institute of Technology).
14. Gade, K. R. (2019). Data Migration Strategies for Large-Scale Projects in the Cloud for Fintech. Innovative Computer Sciences Journal, 5(1).
15. Myllylä, S. (2015). Terrains of struggle: the Finnish forest industry cluster and corporate community responsibility to Indigenous Peoples in Brazil (Doctoral dissertation, University of Jyväskylä).
16. Boda, V. V. R., & Immaneni, J. (2019). Streamlining FinTech Operations: The Power of SysOps and Smart Automation. Innovative Computer Sciences Journal, 5(1).
17. Nookala, G., Gade, K. R., Dulam, N., & Thumburu, S. K. R. (2019). End-to-End Encryption in Enterprise Data Systems: Trends and Implementation Challenges. Innovative Computer Sciences Journal, 5(1).
18. Komandla, V. Enhancing Security and Fraud Prevention in Fintech: Comprehensive Strategies for Secure Online Account Opening.
19. Komandla, V. Transforming Financial Interactions: Best Practices for Mobile Banking App Design and Functionality to Boost User Engagement and Satisfaction.
20. Gade, K. R. (2018). Real-Time Analytics: Challenges and Opportunities. Innovative Computer Sciences Journal, 4(1).
21. Gade, K. R. (2017). Integrations: ETL vs. ELT: Comparative analysis and best practices. Innovative Computer Sciences Journal, 3(1).
22. Katari, A. (2019). ETL for Real-Time Financial Analytics: Architectures and Challenges. Innovative Computer Sciences Journal, 5(1).
23. Katari, A. (2019). Data Quality Management in Financial ETL Processes: Techniques and Best Practices. Innovative Computer Sciences Journal, 5(1).
24. Muneer Ahmed Salamkar, and Karthik Allam. Architecting Data Pipelines: Best Practices for Designing Resilient, Scalable, and Efficient Data Pipelines. Distributed Learning and Broad Applications in Scientific Research, vol. 5, Jan. 2019
25. Muneer Ahmed Salamkar. ETL Vs ELT: A Comprehensive Exploration of Both Methodologies, Including Real-World Applications and Trade-Offs. Distributed Learning and Broad Applications in Scientific Research, vol. 5, Mar. 2019
26. Naresh Dulam, et al. “Kubernetes Operators: Automating Database Management in Big Data Systems”. Distributed Learning and Broad Applications in Scientific Research, vol. 5, Jan. 2019
27. Naresh Dulam, and Karthik Allam. “Snowflake Innovations: Expanding Beyond Data Warehousing ”. Distributed Learning and Broad Applications in Scientific Research, vol. 5, Apr. 2019
28. Naresh Dulam. The Shift to Cloud-Native Data Analytics: AWS, Azure, and Google Cloud Discussing the Growing Trend of Cloud-Native Big Data Processing Solutions. Distributed Learning and Broad Applications in Scientific Research, vol. 1, Feb. 2015, pp. 28-48
29. Sarbaree Mishra. A Distributed Training Approach to Scale Deep Learning to Massive Datasets. Distributed Learning and Broad Applications in Scientific Research, vol. 5, Jan. 2019
30. Sarbaree Mishra, et al. Training Models for the Enterprise - A Privacy Preserving Approach. Distributed Learning and Broad Applications in Scientific Research, vol. 5, Mar. 2019
Published
Issue
Section
License

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