The term “cloud-native” refers to a set of technologies and design patterns that have become the standard for building large-scale cloud applications. In this editorial we describe basic properties of successful cloud applications including dynamic scalability, extreme fault tolerance, seamless upgradeability and maintenance and security. To make it possible to build applications that meet these requirements we describe the microservice architecture and serverless computing foundation that are central to cloud-native design.
Cloud computing has recently emerged as a new paradigm for hosting and delivering services over the Internet. Cloud computing
is attractive to business owners as it eliminates the requirement for users to plan ahead for provisioning, and allows enterprises
to start from the small and increase resources only when there is a rise in service demand. However, despite the fact that
cloud computing offers huge opportunities to the IT industry, the development of cloud computing technology is currently at
its infancy, with many issues still to be addressed. In this paper, we present a survey of cloud computing, highlighting its
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in this increasingly important area.
KeywordsCloud computing-Data centers-Virtualization
If cloud computing (CC) is to achieve its potential, there needs to be a clear understanding of the various issues involved, both from the perspectives of the providers and the consumers of the technology. There is an equally urgent need for understanding the business-related issues surrounding CC. We interviewed several industry executives who are either involved as developers or are evaluating CC as an enterprise user. We identify the strengths, weaknesses, opportunities and threats for the industry. We also identify the various issues that will affect the different stakeholders of CC. We issue a set of recommendations for the practitioners who will provide and manage this technology. For IS researchers, we outline the different areas of research that need attention so that we are in a position to advise the industry in the years to come. Finally, we outline some of the key issues facing governmental agencies who will be involved in the regulation of cloud computing.
Cloud computing emerges as one of the hottest topic in field of information technology. Cloud computing is based on several other computing research areas such as HPC, virtualization, utility computing and grid computing. In order to make clear the essential of cloud computing, we propose the characteristics of this area which make cloud computing being cloud computing and distinguish it from other research areas. The cloud computing has its own conceptional, technical, economic and user experience characteristics. The service oriented, loose coupling, strong fault tolerant, business model and ease use are main characteristics of cloud computing. Clear insights into cloud computing will help the development and adoption of this evolving technology both for academe and industry.
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