Abstract
Identifying a deterministic approach to perform resource scheduling in cloud computing is crucial requirement, which is since, the volume of the anomalies and the high dimensionality of the values projected to these anomalies observed during resource scheduling. The volume of tasks that evinces flash-crowd state at resource broker of the IAAS, and high dimensionality of the anomalies projected for resource quality factors are out of scope in regard to contemporary resource scheduling strategies contributed in recent past. Hence’ the resource scheduling by contemporary methods in such conditions are insignificant as the resource scheduling optimality observed as probabilistic. In order to optimize the resource scheduling in the context of aforesaid properties high volume of tasks (flash-crowd state at resource broker) and high dimensional projection of anomalies, this manuscript derived an ensemble resource scheduling strategy, which fall in to the category of batch scheduling. The experimental study outlined that the proposal is most prominent and robust to deliver optimal resource scheduling in the context of anomalies of high volume and dimensionality that compared to the contemporary method.
Author supplied keywords
Cite
CITATION STYLE
Ravindra Babu, B., & Veera Sekhar Rao, M. (2019). Diversified quality aware ensemble resource scheduling (DQAERS) for IAAS with massive load of tasks and resources in cloud computing. International Journal of Engineering and Advanced Technology, 8(6), 3758–3762. https://doi.org/10.35940/ijeat.F9386.088619
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.