Service Request Scheduling based on Quantification Principle using Conjoint Analysis and Z-score in Cloud

Service request scheduling has a major impact on the performance of the service processing design in a large-scale distributed computing environment like cloud systems. It is desirable to have a service request scheduling principle that evenly distributes the workload among the servers, according to...

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Veröffentlicht in:International journal of electrical and computer engineering (Malacca, Malacca) Malacca), 2018-04, Vol.8 (2), p.1238
1. Verfasser: Paul Rajan, R. Arokia
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description Service request scheduling has a major impact on the performance of the service processing design in a large-scale distributed computing environment like cloud systems. It is desirable to have a service request scheduling principle that evenly distributes the workload among the servers, according to their capacities. The capacities of the servers are termed high or low relative to one another. Therefore, there is a need to quantify the server capacity to overcome this subjective assessment. Subsequently, a method to split and distribute the service requests based on this quantified server capacity is also needed. The novelty of this research paper is to address these requirements by devising a service request scheduling principle for a heterogeneous distributed system using appropriate statistical methods, namely Conjoint analysis and Z-score. Suitable experiments were conducted and the experimental results show considerable improvement in the performance of the designed service request scheduling principle compared to a few other existing principles. Areas of further improvement have also been identified and presented.
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subjects Cloud computing
Computer networks
Conjoint analysis
Distributed processing
Scheduling
Scientific papers
Statistical methods
Subjective assessment
title Service Request Scheduling based on Quantification Principle using Conjoint Analysis and Z-score in Cloud
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