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Job Scheduling for Cloud Computing Using Neural Networks

机译:使用神经网络进行云计算的作业调度

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Cloud computing aims to maximize the benefit of distributed resources and aggregate them to achieve higher throughput to solve large scale computation problems. In this technology, the customers rent the resources and only pay per use. Job scheduling is one of the biggest issues in cloud computing. Scheduling of users' requests means how to allocate resources to these requests to finish the tasks in minimum time. The main task of job scheduling system is to find the best resources for user's jobs, taking into consideration some statistics and dynamic parameters restrictions of users' jobs. In this research, we introduce cloud computing, genetic algorithm and artificial neural networks, and then review the literature of cloud job scheduling. Many researchers in the literature tried to solve the cloud job scheduling using different techniques. Most of them use artificial intelligence techniques such as genetic algorithm and ant colony to solve the problem of job scheduling and to find the optimal distribution of resources. Unfortunately, there are still some problems in this research area. Therefore, we propose implementing artificial neural networks to optimize the job scheduling results in cloud as it can find new set of classifications not only search within the available set.
机译:云计算旨在最大程度地利用分布式资源并对其进行聚合,以实现更高的吞吐量,从而解决大规模计算问题。在这项技术中,客户租用资源,仅按使用付费。作业调度是云计算中最大的问题之一。安排用户的请求意味着如何为这些请求分配资源以在最短的时间内完成任务。作业调度系统的主要任务是为用户的作业找到最佳资源,同时要考虑到用户作业的一些统计信息和动态参数限制。在这项研究中,我们介绍了云计算,遗传算法和人工神经网络,然后回顾了云作业调度的文献。文献中的许多研究人员试图使用不同的技术来解决云作业调度。他们中的大多数使用诸如遗传算法和蚁群之类的人工智能技术来解决作业调度问题并找到最佳的资源分配。不幸的是,该研究领域仍然存在一些问题。因此,我们建议实施人工神经网络以优化云中的作业调度结果,因为它不仅可以在可用集中搜索,而且可以找到新的分类集。

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