Containerized Superior Performance: Advanced Optimization Strategies in Openshift Environment

Authors

  • Mounika Gaddam Performance Engineer at Sparksoft Corporation, USA Author
  • Pranitha Yeruva Sr. Software Developer at Northern Trust Bank, USA Author
  • Sunny Mulukuntla Site Reliability and Systems Architect Lead at State of Maine, USA Author

Keywords:

Kubernetes optimization, container orchestration, performance excellence, load balancing

Abstract

In the developing field of Kubernetes, where the coordination of containerized applications sounds like a sophisticated symphony, reaching performance excellence is both a science and an art. This paper investigates the challenging field of performance improvement in Kubernetes systems by providing creative approaches above conventional ones. We investigate the complex challenges of efficiently scaling programs to ensure best use of resources, thereby keeping the flexibility needed for real-time responsiveness. Our discussion focuses on the pragmatics of implementing container ecosystems—environments defined by their complexity and the major demands they put on infrastructure and operators. This article offers a road map for properly controlling the scaling of services to fit changing demand, maximize resource use to avoid waste, and change to fit the dynamic circumstances of the digital world within a well-orchestrated Kubernetes environment. Practical and progressive, our approach emphasizes solutions that predict future trends in containerization, therefore improving the larger discussion on technology resilience and inventiveness.

Downloads

Download data is not yet available.

References

Ferreira, A. P., & Sinnott, R. (2019, December). A performance evaluation of containers running on managed kubernetes services. In 2019 IEEE International Conference on Cloud Computing Technology and Science (CloudCom) (pp. 199-208). IEEE.

Sayfan, G. (2018). Mastering Kubernetes: Master the art of container management by using the power of Kubernetes. Packt Publishing Ltd.

Chiba, T., Nakazawa, R., Horii, H., Suneja, S., & Seelam, S. (2019, June). Confadvisor: A performance-centric configuration tuning framework for containers on kubernetes. In 2019 IEEE International Conference on Cloud Engineering (IC2E) (pp. 168-178). IEEE.

Xie, X. L., Wang, P., & Wang, Q. (2017, July). The performance analysis of Docker and rkt based on Kubernetes. In 2017 13th International Conference on Natural Computation, Fuzzy Systems and Knowledge Discovery (ICNC-FSKD) (pp. 2137-2141). IEEE.

Javed, A. (2016). Container-based IoT sensor node on raspberry Pi and the Kubernetes cluster framework (Master's thesis).

Barik, R. K., Lenka, R. K., Rao, K. R., & Ghose, D. (2016, April). Performance analysis of virtual machines and containers in cloud computing. In 2016 international conference on computing, communication and automation (iccca) (pp. 1204-1210). IEEE.

Gholipour, N., Arianyan, E., & Buyya, R. (2012). Recent Advances in Energy-Efficient Resource Management Techniques in Cloud Computing Environments. New Frontiers in Cloud Computing and Internet of Things, 31-68.

Mao, C. N., Huang, M. H., Padhy, S., Wang, S. T., Chung, W. C., Chung, Y. C., & Hsu, C. H. (2015, November). Minimizing latency of real-time container cloud for software radio access networks. In 2015 IEEE 7th international conference on cloud computing technology and science (CloudCom) (pp. 611-616). IEEE.

Ghribi, C. (2014). Energy efficient resource allocation in cloud computing environments (Doctoral dissertation, Institut National des Télécommunications).

Bernini, G., Venturi, N., Kraja, E., Nxw, M. D. A., Ropodi, A., Margaris, A., ... & Conti, A. (2007). DELIVERABLE D4. 4.

Learning, W. B. (2008). Work-Based Learning. Work, 2008(2012).

Mohammed, I. A. (2011). A Comprehensive Study Of The A Road Map For Improving Devops Operations In Software Organizations. International Journal of Current Science (IJCSPUB) www. ijcspub. org, ISSN, 2250-1770.

De la Torre, C. (2016). Containerized Docker Application Lifecycle with Microsoft Platform and Tools. Redmond: Washington, 98052-6399.

Mao, C. N., Huang, M. H., Padhy, S., Wang, S. T., Chung, W. C., Chung, Y. C., & Hsu, C. H. (2015, November). Minimizing latency of real-time container cloud for software radio access networks. In 2015 IEEE 7th international conference on cloud computing technology and science (CloudCom) (pp. 611-616). IEEE.

Petrovic, N. (2016). Enabling flexibility of data-intensive applications on container-based systems with Node-RED in fog environments.

Katari, A. (2019). ETL for Real-Time Financial Analytics: Architectures and Challenges. Innovative Computer Sciences Journal, 5(1).

Katari, A. (2019). Data Quality Management in Financial ETL Processes: Techniques and Best Practices. Innovative Computer Sciences Journal, 5(1).

Boda, V. V. R., & Immaneni, J. (2019). Streamlining FinTech Operations: The Power of SysOps and Smart Automation. Innovative Computer Sciences Journal, 5(1).

Gade, K. R. (2019). Data Migration Strategies for Large-Scale Projects in the Cloud for Fintech. Innovative Computer Sciences Journal, 5(1).

Gade, K. R. (2018). Real-Time Analytics: Challenges and Opportunities. Innovative Computer Sciences Journal, 4(1).

Komandla, V. Enhancing Security and Fraud Prevention in Fintech: Comprehensive Strategies for Secure Online Account Opening.

Komandla, V. Transforming Financial Interactions: Best Practices for Mobile Banking App Design and Functionality to Boost User Engagement and Satisfaction.

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).

Gade, K. R. (2017). Migrations: Challenges and Best Practices for Migrating Legacy Systems to Cloud-Based Platforms. Innovative Computer Sciences Journal, 3(1).

Katari, A. (2019). Real-Time Data Replication in Fintech: Technologies and Best Practices. Innovative Computer Sciences Journal, 5(1).

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

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

Sarbaree Mishra. Distributed Data Warehouses - An Alternative Approach to Highly Performant Data Warehouses. Distributed Learning and Broad Applications in Scientific Research, vol. 5, May 2019

Sarbaree Mishra, et al. Improving the ETL Process through Declarative Transformation Languages. Distributed Learning and Broad Applications in Scientific Research, vol. 5, June 2019

Sarbaree Mishra. A Novel Weight Normalization Technique to Improve Generative Adversarial Network Training. Distributed Learning and Broad Applications in Scientific Research, vol. 5, Sept. 2019

Naresh Dulam, et al. Data Governance and Compliance in the Age of Big Data. Distributed Learning and Broad Applications in Scientific Research, vol. 4, Nov. 2018

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

Naresh Dulam, and Karthik Allam. “Snowflake Innovations: Expanding Beyond Data Warehousing ”. Distributed Learning and Broad Applications in Scientific Research, vol. 5, Apr. 2019

Naresh Dulam, and Venkataramana Gosukonda. “AI in Healthcare: Big Data and Machine Learning Applications ”. Distributed Learning and Broad Applications in Scientific Research, vol. 5, Aug. 2019

Naresh Dulam. “Real-Time Machine Learning: How Streaming Platforms Power AI Models ”. Distributed Learning and Broad Applications in Scientific Research, vol. 5, Sept. 2019

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

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

Muneer Ahmed Salamkar. Next-Generation Data Warehousing: Innovations in Cloud-Native Data Warehouses and the Rise of Serverless Architectures. Distributed Learning and Broad Applications in Scientific Research, vol. 5, Apr. 2019

Muneer Ahmed Salamkar. Real-Time Data Processing: A Deep Dive into Frameworks Like Apache Kafka and Apache Pulsar. Distributed Learning and Broad Applications in Scientific Research, vol. 5, July 2019

Muneer Ahmed Salamkar, and Karthik Allam. “Data Lakes Vs. Data Warehouses: Comparative Analysis on When to Use Each, With Case Studies Illustrating Successful Implementations”. Distributed Learning and Broad Applications in Scientific Research, vol. 5, Sept. 2019

Downloads

Published

03-08-2021

How to Cite

[1]
Mounika Gaddam, Pranitha Yeruva, and Sunny Mulukuntla, “Containerized Superior Performance: Advanced Optimization Strategies in Openshift Environment”, American J Data Sci Artif Intell Innov, vol. 1, pp. 14–39, Aug. 2021, Accessed: Mar. 07, 2026. [Online]. Available: https://ajdsai.org/index.php/publication/article/view/9