Title
An accurate resource scheduling system for virtual machines based on CPU load monitoring and assessment
Abstract
An accurate resource scheduling system (RSS) for virtual machines based on CPU monitoring and load assessment is presented to solve the shortcoming of resource scheduling in cloud computing systems. A new architecture is designed to improve Credit scheduler, including three core components: CPU load monitoring component (CLMA), CPU load assessment component (CLAA), and the resource adjustment component (RSA). On the basis of the prototype design, we make an evaluation between Credit scheduler and our system with a typical example in Xen platform. The experimental results show that the proposed system could satisfy the personalized resources requirements from users with higher tasks resource utilization and lower system resource utilization when compared with Credit scheduler. RSS has a strong sensitivity to meet the requirements of cloud computing systems, since it can accelerate the executions of applications via dynamic resource scheduling.
Year
DOI
Venue
2018
10.1007/s10586-017-1344-z
Cluster Computing
Keywords
Field
DocType
Cloud computing, Virtualization, Load monitoring, Load assessment, Resource adjustment, Resource scheduling
Virtualization,Resource (disambiguation),Virtual machine,Fair-share scheduling,Computer science,Resource scheduling,Real-time computing,Cpu load,RSS,Distributed computing,Cloud computing
Journal
Volume
Issue
ISSN
21
2
1573-7543
Citations 
PageRank 
References 
0
0.34
29
Authors
5
Name
Order
Citations
PageRank
Ying Li1332.12
Jing Zhang28410.71
Xiaojun Chen31298107.51
Junhuai Li43916.44
JuLan Ding500.34