4.2 Article

CloudConsumerism: A Consumer-Centric Ranking Model for Efficient Service Mapping in Cloud

Journal

MOBILE INFORMATION SYSTEMS
Volume 2022, Issue -, Pages -

Publisher

HINDAWI LTD
DOI: 10.1155/2022/5960976

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This paper presents an efficient CloudConsumerism model for evaluating the performance of cloud service providers (CSPs) and consumers using the multicriteria decision-making method (MCDM) TOPSIS. It introduces a service mapping algorithm for efficient mapping and conducts extensive simulation experiments to validate the proposed framework, which shows promising results for online cloud-based platforms.
In cloud, service providers and consumers are primary stakeholders that maintain a business liaison. Cloud service providers (CSPs) offer the services, and consumer uses the services on a payment basis. From a business perspective, the selection of a service based on mutual evaluation benefits both the CSPs and consumers. This paper presents an efficient CloudConsumerism model where the multicriteria decision-making method (MCDM) method, TOPSIS, is used for evaluating the performance of CSPs and consumers. For performance evaluation of CSPs, the performance attributes defined by Cloud Service Measurement Initiative Consortium (CSMIC) are exploited. For evaluating the consumers, this paper is the first approach towards identifying the behavioral attributes for evaluating the cloud consumers analogous to the business models. A service mapping algorithm is proposed for efficient (less overhead and higher robustness) mapping. Extensive simulation experiments are conducted; the results show that the proposed framework can be used for the online cloud-based platform due to limited overhead and high robustness.

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