Survey on Prediction and Task aware system for resource monitoring in Virtual Cloud Environment

SEEE DIGIBOOK ON ENGINEERING & TECHNOLOGY, VOL. 01, MAY 2021 PP. (60-64)
Abstract– Huge-rule data hubs are in charge of regulating virtualization hardware in order to attain enormous quantities of source applications, scalability, and high accessibility. In a perfect world, the act of presenting sequentially exclusive material on a Virtual Computer (VM) should be autonomous with respect to co-located submissions and other VMs utilising the same physical computer. When working in virtualized environments, however, there are potentially damaging interference effects, which are particularly severe for programmes that make substantial use of statistics. In this paper, we provide TRACON, a novel Task and Resource Allocation control system that moderates the intrusion properties of concurrent statistics-intensive systems. TRACON was created as part of this initiative. TRACON utilises modelling and control techniques deduced from algebraic mechanism is comprised of three major components: the interference prediction model, which infers application performance based on resource consumption observed from various VMs; the interference-aware scheduler, which is designed to use the model for effective category; and the task and resource monitor, which gathers application characteristics at runtime for model use. TRACON combines algebraic modelling and control approaches. The results of the evaluation indicate that TRACON has the potential to boost application throughput on virtualized servers by up to 25 percent..
Index Terms – Cloud computing, virtualization, scheduling
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Gajalakshmi S, Mehala G, Ananthi P
Department of Information Technology,
Rathinam Technical Campus, Coimbatore, Tamilnadu, India

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