Building Castles in the Cloud: Architecting Resilient and Scalable Infrastructure
- URL: http://arxiv.org/abs/2410.21740v1
- Date: Tue, 29 Oct 2024 04:56:34 GMT
- Title: Building Castles in the Cloud: Architecting Resilient and Scalable Infrastructure
- Authors: Naresh Kumar Gundla,
- Abstract summary: The paper explores significant measures required in designing contexts inside the cloud environment.
It explores the need for replicate servers, fault tolerance, disaster backup and load balancing for high availability.
- Score: 0.0
- License:
- Abstract: In the contemporary world of dynamic digital solutions and services, the significance of effective and stable cloud solutions cannot be overestimated. The cloud adaptation is becoming more popular due to mobile advantages, including flexibility, cheaper costs and scalability. However, creating a fail-proof architecture that can accommodate scale-up and enable high data availability and security is not an easy task. In this paper, a discussion will be made regarding significant measures required in designing contexts inside the cloud environment. It explores the need for replicate servers, fault tolerance, disaster backup and load balancing for high availability. Further, the paper also discusses the optimum strategy for designing cloud infrastructures such as microservices, containerization, and serverless. Based on the literature review, we analyze various approaches that are used to improve cloud reliability and elasticity. The paper also provides a best practice guide for designing a cloud infrastructure for these requirements concerning cases. The results and discussion section outlines the improvement in business continuity and operational efficiency when using the proposed architecture. This paper concludes with recommendations for future studies and the successful application of the elaborated matters.
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