Multi-Cloud Deployment Strategies for Microservices: A Comparative Study of AWS and Azure

Authors

  • Sashi Kiran Vuppala Technical Architect McKinney, Texas. Author

DOI:

https://doi.org/10.63282/3050-9246/ICRTCSIT-130

Keywords:

Multi-cloud deployment, Microservices, Amazon Web Services (AWS), Microsoft Azure, Cost optimization, Scalability, Performance, Security, Cloud computing, Service interoperability

Abstract

The research analyzes microservice multi-cloud deployment approaches by studying the efficiency and execution performance of Amazon Web Services (AWS) relative to Microsoft Azure. This analysis monitors essential characteristics that include performance together with cost optimization and scalability and security features and service interoperability capabilities during microservices deployment across Amazon Web Services (AWS) and Microsoft Azure platforms. Secondary data comparison allows the study to statistically measure important elements pertaining to latency and resource allocation alongside cost-efficiency and security efficiency. The performance analysis shows AWS's superiority regarding latency and compute expenses but Azure demonstrates better value and Microsoft integration capabilities. The research study outputs concrete recommendations organizations need for their multi-cloud strategy implementations according to their individual workload specifications

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Published

2025-10-10

How to Cite

1.
Vuppala SK. Multi-Cloud Deployment Strategies for Microservices: A Comparative Study of AWS and Azure. IJETCSIT [Internet]. 2025 Oct. 10 [cited 2025 Nov. 7];:215-26. Available from: https://www.ijetcsit.org/index.php/ijetcsit/article/view/450

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