Published 14-09-2021
Keywords
- EKS,
- Elastic Kubernetes Service
This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.
How to Cite
Abstract
Latency optimization for cross-region data replication in Amazon Elastic Kubernetes Service (EKS) is critical for ensuring efficient and reliable application performance in distributed systems. Organizations often rely on EKS for its scalability and seamless integration with Kubernetes, but cross-region replication presents challenges due to network latencies, bandwidth limitations, and consistency requirements. This paper explores strategies to minimize latency while maintaining data integrity and availability across geographically dispersed regions. Critical approaches include leveraging intelligent replication techniques, such as asynchronous and incremental data synchronization, which reduce the amount of data transferred and mitigate the impact of network latency. Additionally, implementing region-aware traffic routing and prioritizing data transfers for high-priority applications ensures optimal resource allocation. The study also examines the benefits of employing caching mechanisms, data compression, and network optimization tools to enhance performance. Monitoring and observability tools are vital in identifying bottlenecks, enabling dynamic adjustments to replication strategies in real time. Case studies demonstrate how optimizing latency for cross-region replication can significantly improve end-user experience, reduce operational costs, and support compliance with data sovereignty requirements. By integrating these best practices, organizations can enhance the resilience and performance of their EKS-powered applications, ensuring they meet the demands of modern, globally distributed user bases.
Downloads
References
- 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.
- Wilkins, M. (2019). Learning Amazon Web Services (AWS): A hands-on guide to the fundamentals of AWS Cloud. Addison-Wesley Professional.
- Gade, K. R. (2019). Data Migration Strategies for Large-Scale Projects in the Cloud for Fintech. Innovative Computer Sciences Journal, 5(1).
- Rogers, A. J., Raby, B. A., Lima, J., Lasky-Su, J. A., Murphy, A., Lazarus, R., ... & Weiss, S. T. (2010). Stronger Evidence for Replication of NPPA Using Genome-wide Genotyping Data. American journal of respiratory and critical care medicine, 181(1), 96-96.
- Timarová, S., Dragsted, B., & Hansen, I. G. (2011). Time lag in translation and interpreting. Methods and strategies of process research, 121-146.
- Chu, Z. Y., Harvey, J., Liu, C. Z., Guo, J. H., Wu, F. Y., Tian, W., ... & Yang, Y. H. (2013). Source of highly potassic basalts in northeast China: evidence from Re–Os, Sr–Nd–Hf isotopes and PGE geochemistry. Chemical Geology, 357, 52-66.
- Qiao, D., Lange, C., Beaty, T. H., Crapo, J. D., Laird, N. M., Hobbs, B. D., ... & Cho, M. H. (2017). Whole Exome Sequencing Analysis Of Severe COPD. In C21. OMICS IN LUNG DISEASE (pp. A4965-A4965). American Thoracic Society.
- Do, H. G., & Ng, W. K. (2017, June). Blockchain-based system for secure data storage with private keyword search. In 2017 IEEE World Congress on Services (SERVICES) (pp. 90-93). IEEE.
- Ifrah, S., & Ifrah, S. (2019). Deploy a containerized application with amazon EKS. Deploy Containers on AWS: With EC2, ECS, and EKS, 135-173.
- Ren, J., Yu, G., He, Y., & Li, G. Y. (2019). Collaborative cloud and edge computing for latency minimization. IEEE Transactions on Vehicular Technology, 68(5), 5031-5044.
- Chandrasekaran, V., Parrilo, P. A., & Willsky, A. S. (2010, September). Latent variable graphical model selection via convex optimization. In 2010 48th Annual Allerton Conference on Communication, Control, and Computing (Allerton) (pp. 1610-1613). IEEE.
- Schurgers, C., Tsiatsis, V., Ganeriwal, S., & Srivastava, M. (2002). Optimizing sensor networks in the energy-latency-density design space. IEEE transactions on mobile computing, 1(1), 70-80.
- Rusu, A. A., Rao, D., Sygnowski, J., Vinyals, O., Pascanu, R., Osindero, S., & Hadsell, R. (2018). Meta-learning with latent embedding optimization. arXiv preprint arXiv:1807.05960.
- Duong, T. N. B., Li, X., Goh, R. S. M., Tang, X., & Cai, W. (2012, October). QoS-aware revenue-cost optimization for latency-sensitive services in IaaS clouds. In 2012 IEEE/ACM 16th International Symposium on Distributed Simulation and Real Time Applications (pp. 11-18). IEEE.
- Borghoff, J., Canteaut, A., Güneysu, T., Kavun, E. B., Knezevic, M., Knudsen, L. R., ... & Yalçın, T. (2012). PRINCE–a low-latency block cipher for pervasive computing applications. In Advances in Cryptology–ASIACRYPT 2012: 18th International Conference on the Theory and Application of Cryptology and Information Security, Beijing, China, December 2-6, 2012. Proceedings 18 (pp. 208-225). Springer Berlin Heidelberg.
- Gade, K. R. (2017). Integrations: ETL vs. ELT: Comparative analysis and best practices. Innovative Computer Sciences Journal, 3(1).
- Komandla, V. Enhancing Security and Fraud Prevention in Fintech: Comprehensive Strategies for Secure Online Account Opening.
- Gade, K. R. (2019). Data Migration Strategies for Large-Scale Projects in the Cloud for Fintech. Innovative Computer Sciences Journal, 5(1).
- Komandla, V. Transforming Financial Interactions: Best Practices for Mobile Banking App Design and Functionality to Boost User Engagement and Satisfaction.
- Gade, K. R. (2018). Real-Time Analytics: Challenges and Opportunities. Innovative Computer Sciences Journal, 4(1).