Enhanced load balancer with multi-layer processing architecture for heavy load over cloud network

N. S. Randhawa, Mandeep K. Dhami, Parminder Singh
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引用次数: 1

Abstract

Load balancing is an efficient part of cloud computing environment which confirms that all procedures work similar amount of work in particular time period. The different types of algorithms for load balancing over cloud environment have been implemented with the main goal to develop cloud resources accessible to the end users with easy and accessibility. The main load balancing problem is the run time overload owed to the change of load data amongst CPUs, selection of processes for decision making and transfers the job from processor to processor. The proposed approach analyzes the conditions and divides the load balancing approach in multiple layers. The Multi-queue management policy is used to check and divide requests in multiple queues according to their execution priorities and other layer handles inner requests of the queue over cloud network using network manager. Due to handling of both phases of this area the problem of heavy load processing overcome in various terms like energy consumption, response time, network load. All these terms used to analysis the performance of a system along with heavy load on network. The proposed metrics calculated in .net platform and it achieves the overall 28% approximate enhancement in all the cases.
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增强的负载平衡器,具有多层处理架构,适用于云网络上的高负载
负载平衡是云计算环境的一个有效组成部分,它确认所有过程在特定时间段内完成的工作量相似。在云环境中实现不同类型的负载平衡算法的主要目标是开发最终用户可以轻松访问的云资源。主要的负载平衡问题是由于cpu之间负载数据的变化、决策过程的选择以及任务从处理器到处理器的传输而导致的运行时过载。该方法通过对条件的分析,将负载均衡方法划分为多个层次。多队列管理策略用于根据请求的执行优先级在多个队列中检查和划分请求,其他层使用网络管理器在云网络上处理队列的内部请求。由于处理了该区域的两个阶段,因此在能耗、响应时间、网络负载等各个方面克服了重载处理的问题。所有这些术语都用于分析系统在网络负载较大时的性能。所提出的指标在。net平台上进行了计算,在所有情况下都实现了28%左右的总体增强。
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