Author:
Chaitanya Kanth TummalachervuPublished in
Journal of Science Technology and Research( Volume , Issue )
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ABSTRACT:
Contemporary DevOps strategies for augmenting cloud deployment now emphasize containerization in multi-cloud environments. This approach improves workload portability, scalability, and system resilience. Although interest in this area has grown, no systematic review exists. Therefore, we conducted a Systematic Mapping Study (SMS) of 86 papers published between January 2013 and March 2023. As a result, we identified four key themes: Scalability and High Availability, Performance and Optimization, Security and Privacy, and Multi-Cloud Container Monitoring. In addition, 74 deployment patterns were grouped under 10 subcategories and 4 categories. We also identified 10 quality attributes supported by 47 implementation tactics. Moreover, we proposed four challenge-solution frameworks focused on security, automation, deployment, and monitoring. These findings support researchers and practitioners in developing specialized solutions. In conclusion, this study provides a clear foundation for advancing DevOps strategies in managing container-based applications across diverse multi-cloud environments.
INTRODUCTION
Contemporary DevOps strategies for augmenting application deployment now rely heavily on containerization. Containers include the code, system tools, and libraries needed to run software. This design allows applications to move across cloud platforms with minimal changes. In a multi-cloud environment, this ensures flexibility, agility, and cost efficiency. Developers can deploy applications across public, private, or hybrid clouds. Each cloud offers different strengths, such as infrastructure scalability or advanced analytics. Tools like Kubernetes and Docker help manage these containers efficiently. As a result, applications stay consistent and isolated, even in diverse environments. However, challenges such as security risks and monitoring complexity still exist. Therefore, integrating containerization with DevOps practices becomes essential. It helps ensure fast, reliable, and secure application delivery. This introduction highlights the importance of analyzing container practices in multi-cloud settings. It sets the stage for further exploration into scalable and resilient DevOps solutions.

