|
This site uses |
Last updated on
28 October 2024 |
G. Kousiouris, T. Cucinotta, T. Varvarigou. "The Effects of Scheduling, Workload Type and Consolidation Scenarios on Virtual Machine Performance and their Prediction through Optimized Artificial Neural Networks," Elsevier Journal of Systems & Software (JSS). DOI 10.1016/j.jss.2011.04.013, 2011.
The aim of this paper is to study and predict the effect of a number of critical parameters on the performance of Virtual Machines (VMs). These parameters include allocation percentages, real-time scheduling decisions and co-placement of VMs when these are deployed concurrently on the same physical node, as dictated by the server consolidation trend and the recent advances in the Cloud computing systems. Different combinations of VM workload types are investigated in relation to the aforementioned factors in order to find the optimal allocation strategies. What is more, different levels of memory sharing are applied, based on the coupling of VMs to cores on a multi-core architecture. For all the aforementioned cases, the effect on the score of specific benchmarks running inside the VMs is measured. Finally, a black box method based on genetically optimized Artificial Neural Networks is inserted in order to investigate the degradation prediction ability a priori of the execution and is compared to the linear regression method.
See paper on publisher website
BibTeX entry:
@article{Kousiouris2011, doi = {10.1016/j.jss.2011.04.013}, url = {https://doi.org/10.1016%2Fj.jss.2011.04.013}, year = 2011, month = aug, publisher = {Elsevier {BV}}, volume = {84}, number = {8}, pages = {1270--1291}, author = {George Kousiouris and Tommaso Cucinotta and Theodora Varvarigou}, title = {The effects of scheduling, workload type and consolidation scenarios on virtual machine performance and their prediction through optimized artificial neural networks}, journal = {Journal of Systems and Software} }
Last updated on
07 November 2024 |