基于优先级规则和机器学习的作业调度比较研究

Saydul Akbar Murad, Z. R. Azmi, Abu Jafar Md Muzahid, Md Al-Imran
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引用次数: 5

摘要

云计算是一种用于大规模运行资源密集型应用程序的潜在技术。为了正确使用云资源,实现合适的调度算法至关重要。最短作业优先(SJF)和最长作业优先(LJF)是两个著名的企业调度器,现在用于管理云任务。虽然这样的算法是基本的和直接开发的,但它们在处理云的动态特性方面的能力有限。在我们的研究中,我们展示了优先算法性能矩阵和机器学习算法之间的比较。在cloudsim和Google Colab中,我们完成了实验。本研究包括CPU时间、周转时间、挂钟时间、等待时间及执行开始时间。对于时间和空间共享模式,将cloudlet分配给CPU。虚拟机始终以空间共享方式分配。我们已经取得了更好的SJF和一个不错的机器学习算法的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Study on Job Scheduling Using Priority Rule and Machine Learning
Cloud computing is a potential technique for running resource-intensive applications on a wide scale. Implementation of a suitable scheduling algorithm is critical in order to properly use cloud resources. Shortest Job First (SJF) and Longest Job First (LJF) are two well-known corporate schedulers that are now used to manage Cloud tasks. Although such algorithms are basic and straightforward to develop, they are limited in their ability to deal with the dynamic nature of the Cloud. In our research, we have demonstrated a comparison in our investigations between the priority algorithm performance matrices and the machine learning algorithm. In cloudsim and Google Colab, we finished our experiment. CPU time, turnaround time, wall clock time, waiting time, and execution start time are all included in this research. For time and space sharing mode, the cloudlet is assigned to the CPU. VM is allocated in space-sharing mode all the time. We’ve achieved better for SJF and a decent machine learning algorithm outcome as well.
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