Back to Search Start Over

Task Admission Control and Boundary Analysis of Cognitive Cloud Data Centers

Authors :
Ni, Wenlong
Zhang, Yuhong
Li, Wei
Ni, Wenlong
Zhang, Yuhong
Li, Wei
Publication Year :
2020

Abstract

A novel cloud data center (DC) model is studied here with cognitive capabilities for real-time (or online) flow compared to the batch tasks. Here, a DC can determine the cost of using resources and an online user or the user with batch tasks may decide whether or not to pay for getting the services. The online service tasks have a higher priority in getting the service over batch tasks. Both types of tasks need a certain number of virtual machines (VM). By targeting on the maximization of total discounted reward, an optimal policy for admitting task tasks is finally verified to be a state-related control limit policy. Next, a lower and an upper bound for such an optimal policy are derived, respectively, for the estimation and utilization in reality. Finally, a comprehensive set of experiments on the various cases to validate this proposed model and the solution is conducted. As a demonstration, the machine learning method is adopted to show how to obtain the optimal values by using a feed-forward neural network model. The results achieved in this paper will be expectedly utilized in various cloud data centers with cognitive characteristics in an economically optimal strategy.<br />Comment: 11 pages, 1 figure

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1228436019
Document Type :
Electronic Resource