Time Optimization Workload Management in Hybrid Cloud Computing
Keywords:
time Optimization, Cloud Computing, Cloud SystemAbstract
There is a need to improve the service reliability, security, availability, privacy and regulation complaint requirements in public cloud along with private cloud. By using hybrid cloud environment we can improve those concerns. If the workload is managed properly in the cloud environment, availability will be automatically increased. A better Load Balancing algorithm should be a fault tolerant one. Good Load Balance technique will improve the performance of the entire Cloud. However, there is no common method that can adapt to all possible different situations. However, all the existing Load Balancing algorithms are applied to the entire Cloud Environment. This creates an overhead in maintaining all the status of the nodes.
In the hybrid cloud, the Intelligent workload factoring (IWF) is designed for proactive workload management. The intelligent workload factoring has a three components workload profiling, based load threshold and fast factoring. Based on the internet video workload management streaming, user can divide the workload management as two zones. Base workload as one zone, Flash crowd workload as another zone. The proactive workload management factoring is a fast frequent data item detection algorithm as factorized the data volume and also the data content. This application architecture is increased the Quality of Services (QoS). The workload factoring is mainly concentrate with the smooth workload at all time in data center and the data volume along with the data content.From the real trace driven simulation analysis and evaluation on hybrid cloud of local computing platform the user have a reliable workload prediction and achieve resource efficiency.
References
“Amazon web services,” http://aws.amazon.com/.
“Google app engine,” http://code.google.com/appengine/
Hui Zhang, Guofei Jiang, Kenji Yoshihira, and Haifeng Chen(2014), “Proactive Workload Management in Hybrid Cloud Computing”, IEEE Transactions on Network and Service Management, VOL. 11, NO. 1, MARCH 2014
Gaochao Xu, Junjie Pang & Xiaodong Fu(2013), “A Load balancing Model Based on Cloud Partitioning for Public Cloud ”, IEEE Transactions on Cloud Computing, Vol:18, No:1, pp:34-39.
“Youtube,” http://www.youtube.com.
“Gigaspaces,” http://www.gigaspaces.com.
“Yahoo! video,” http://video.yahoo.com.
Downloads
Published
How to Cite
Issue
Section
License

This work is licensed under a Creative Commons Attribution 4.0 International License.
Authors contributing to this journal agree to publish their articles under the Creative Commons Attribution 4.0 International License, allowing third parties to share their work (copy, distribute, transmit) and to adapt it, under the condition that the authors are given credit and that in the event of reuse or distribution, the terms of this license are made clear.
