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A Novel Approach of Cloud Based Scheduling Using Deep-Learning Approach in E-Commerce Domain

机译:基于深度学习的电子商务领域基于云的调度新方法

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摘要

Cloud computing represents a new era of using high quality and a lesser quantity of resources in a number of premises. In cloud computing, especially infrastructure base resources (IAAS), cost denotes an important factor from the service provider. So, cost reduction is the major challenge but at the same time, the cost reduction increases the time which affects the quality of the service provider. This challenge in depth is related to the balance between time and cost resulting in a complex decision-based problem. This analysis helps in motivating the use of learning approaches. In this article, the proposed multi-tasking convolution neural network (M-CNN) is used which provides learning of task-based deadline and cost. Further, provides a decision for the process of task scheduling. The experimental analysis uses two types of dataset. One is the tweets and the other is Genome workflow and the comparison of the method proposed has been done with the use of distinct approaches such as PSO and PSO-GA. Simulated results show significant improvement in the use of both the data sets.
机译:云计算代表了在许多场所中使用高质量和少量资源的新时代。在云计算中,尤其是基础架构基础资源(IAAS),成本是服务提供商的重要因素。因此,降低成本是主要挑战,但是同时,降低成本会增加时间,从而影响服务提供商的质量。深入的挑战与时间和成本之间的平衡有关,这导致了一个复杂的基于决策的问题。该分析有助于激发学习方法的使用。在本文中,所提出的多任务卷积神经网络(M-CNN)用于提供基于任务的期限和成本的学习。此外,为任务调度的过程提供决策。实验分析使用两种类型的数据集。一种是推文,另一种是基因组工作流程,并且通过使用不同的方法(例如PSO和PSO-GA)对提议的方法进行了比较。模拟结果表明,两个数据集的使用都得到了显着改善。

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