Investigating DevOps Maturity Models for Optimizing Software Delivery and Operational Excellence in Large Enterprises

Authors

Aaliyah Amira
Automation Engineer, Malaysia.

Keywords:

DevOps maturity models, software delivery, operational excellence, continuous integration, deployment automation, large enterprises

Synopsis

DevOps maturity models have emerged as vital frameworks for evaluating and enhancing the effectiveness of software delivery and operational practices in large enterprises. These models enable organizations to benchmark their DevOps capabilities, identify gaps, and implement strategic improvements. This paper explores key DevOps maturity models, their dimensions, and their impact on operational excellence. Challenges and future trends in DevOps adoption within large-scale enterprises are also discussed.

 

 

References

[1] Burns, A., & Oppenheimer, D. (2016). Scaling DevOps with Infrastructure as Code. O'Reilly Media.

[2] Potla, R.B. (2023). Supplier Collaboration Portals for Component Manufacturers: Procure-to-Pay Automation and Working-Capital Outcomes. International Journal of Artificial Intelligence (ISCSITR-IJAI), 4(1), 16–40. https://doi.org/10.63397/ISCSITR-IJAI_04_01_002

[3] Chapin, S., & Gregory, P. (2015). The DevOps Handbook: How to Create World-Class Agility, Reliability, & Security in Technology Organizations. IT Revolution Press.

[4] Gundaboina, A. (2024). Automated patch management for endpoints: Ensuring compliance in healthcare and education sectors. International Journal of Computer Science and Information Technology Research, 5(2), 114–134. https://doi.org/10.63530/IJCSITR_2024_05_02_010

[5] Dawson, P. (2017). Managing Automation in DevOps. Wiley.

[6] Srividhya S, Genetic Programming for Automated Error Handling and Recovery in DevOps Environments. International Journal of DevOps (IJDO). 1(1), 2024, 1-10.

[7] Uppuluri, V. (2024). Real-Time Monitoring of Patient Adherence Using AI. Frontiers in Computer Science and Artificial Intelligence, 3(1), 59–68. https://doi.org/10.32996/fcsai.2024.3.1.7

[8] Docker, C., & Andrews, J. (2018). Automating Infrastructure with Terraform. Packt Publishing.

[9] Gundaboina, A. (2024). DevSecOps in Healthcare: Building Secure and Compliant Patient Engagement Applications. Journal of Artificial Intelligence, Machine Learning & Data Science, 2(4), 3052–3059. https://doi.org/10.51219/JAIMLD/anjan-gundaboina/62

[10] Grinberg, M., & Mason, L. (2019). Mastering Jenkins for DevOps Pipelines. Packt Publishing.

[11] Jones, D., & Price, T. (2020). Infrastructure as Code: A Comprehensive Guide to Managing Cloud Environments. Springer.

[12] Vallemoni, R. Canonical Payment Data Models for Merchant Acquiring: Merchants, Terminals, Transactions, Fees, and Chargebacks. Int. J. Comput. Sci. Eng. (ISCSITR-IJCSE) 3(1), 42–66 (2022). https://doi.org/10.63397/ISCSITR-IJCSE_03_01_006

[13] Murray, R. (2021). Using Ansible for DevOps Automation. Apress.

[14] Patel, R., & McCann, B. (2022). Advanced Terraform Techniques for DevOps. O'Reilly Media.

[15] Taylor, S., & Richards, J. (2023). The Role of Automation Tools in Modern DevOps Practices. IT Pro Publishing.

[16] White, K., & Cook, D. (2024). The Future of AI-Driven DevOps Automation. Wiley.

IJSEG

Published

July 19, 2025