Cloud resources analysis and prediction system using Deep Neural network
Author(s): N Subalakshmi and M Jeyakarthic
Abstract: Deep Neural Network classifier is one of the Deep Learning models for categorizing the exactness of systematic scaling orders in the groupings as an Administration (IaaS) layer of cloud computing. The hypothesis in this research is that calculation precision of scaling orders can be improved by demonstrating a reasonable time-arrangement expectation calculation dependent on the presentation plan after some time. In the examination, outstanding burden was considered as the exhibition metric and Deep Neural Network (DNN) were utilized as time-arrangement expectation procedures. The aftereffects of the trial demonstrate that expectation exactness of DNN relies upon there mining task at hand plan of the framework under learning. Precisely, the outcomes demonstrate that DNN has better forecast exactness in the situations with occasional and expanding remaining task at hand plans, while DNN in predicting unexpected workload design. Accurately, this paper proposed a design for a self-versatile expectation suite utilizing an autonomic framework technique. This suite can indicate the maximum appropriate prediction technique based on the performance design, which leads to more exact prediction outcomes.
N Subalakshmi, M Jeyakarthic. Cloud resources analysis and prediction system using Deep Neural network. Int J Cloud Comput Database Manage 2020;1(2):17-21. DOI: 10.33545/27075907.2020.v1.i2a.15