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ThermoSim: Deep learning based framework for modeling and simulation of thermal-aware resource management for cloud computing environments

机译:热敏泵:基于深度学习的云计算环境热感知资源管理的建模与仿真框架

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摘要

Current cloud computing frameworks host millions of physical servers that utilize cloud computing resources in the form of different virtual machines. Cloud Data Center (CDC) infrastructures require significant amounts of energy to deliver large scale computational services. Moreover, computing nodes generate large volumes of heat, requiring cooling units in turn to eliminate the effect of this heat. Thus, overall energy consumption of the CDC increases tremendously for servers as well as for cooling units. However, current workload allocation policies do not take into account effect on temperature and it is challenging to simulate the thermal behavior of CDCs. There is a need for a thermal-aware framework to simulate and model the behavior of nodes and measure the important performance parameters which can be affected by its temperature. In this paper, we propose a lightweight framework, ThermoSim, for modeling and simulation of thermal-aware resource management for cloud computing environments. This work presents a Recurrent Neural Network based deep learning temperature predictor for CDCs which is utilized by ThermoSim for lightweight resource management in constrained cloud environments. ThermoSim extends the CloudSim toolkit helping to analyze the performance of various key parameters such as energy consumption, service level agreement violation rate, number of virtual machine migrations and temperature during the management of cloud resources for execution of workloads. Further, different energy-aware and thermal-aware resource management techniques are tested using the proposed ThermoSim framework in order to validate it against the existing framework (Thas). The experimental results demonstrate the proposed framework is capable of modeling and simulating the thermal behavior of a CDC and ThermoSim framework is better than Thas in terms of energy consumption, cost, time, memory usage and prediction accuracy.
机译:当前云计算框架主机满足数百万物理服务器,该服务器利用不同虚拟机的形式使用云计算资源。云数据中心(CDC)基础设施需要大量的能量来提供大规模的计算服务。此外,计算节点产生大量的热量,要求冷却单元反过来消除这种热量的效果。因此,CDC的整体能量消耗对于服务器以及冷却装置来说巨大地增加。但是,目前的工作负载分配策略没有考虑到温度的影响,模拟CDC的热行为有挑战性。需要一种热感知框架来模拟和模拟节点的行为,并测量可能受温度影响的重要性能参数。在本文中,我们提出了一种轻量级框架,热敏镜,用于云计算环境的热感知资源管理的建模和仿真。该工作提出了一种基于常规神经网络的基于CDC的深度学习温度预测器,其通过Thermosim用于在约束云环境中用于轻量级资源管理。 ThermoSim扩展了CloudSim工具包帮助分析各种关键参数的性能,例如能耗,服务级别协议违规率,虚拟机迁移数和管理过程中的虚拟机迁移数,以执行工作负载。此外,使用所提出的Thermosim框架测试不同的能量感知和热感知资源管理技术,以便将其验证对现有框架(THA)进行验证。实验结果证明了所提出的框架能够建模和模拟CDC的热行为,并且在能量消耗,成本,时间,内存使用和预测准确性方面优于THA。

著录项

  • 来源
    《The Journal of Systems and Software》 |2020年第8期|110596.1-110596.20|共20页
  • 作者单位

    School of Electronic Engineering and Computer Science Queen Mary University of London UK Cloud Computing and Distributed Systems (CLOUDS) Laboratory School of Computing and Information Systems The University of Melbourne Australia;

    Department of Computer Science and Engineering Indian Institute of Technology (IIT) Delhi India;

    Faculty of Information Technology Monash University Clayton Australia;

    School of Electronic Engineering and Computer Science Queen Mary University of London UK Technical University of Madrid (UPM) Spain;

    School of Computing and Communications Lancaster University UK;

    School of Computer Science University of Birmingham Birmingham UK;

    Department of Computer Science University of Western Ontario London Canada;

    School of Computer Science University of Manchester Oxford Road Manchester UK;

    School of Computer Science and Informatics Cardiff University Cardiff UK;

    Distributed Systems Group Vienna University of Technology Vienna Austria;

    Cloud Computing and Distributed Systems (CLOUDS) Laboratory School of Computing and Information Systems The University of Melbourne Australia;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Cloud computing; Resource management; Thermal-aware; Simulation; Deep learning; Energy;

    机译:云计算;资源管理;热感知;模拟;深度学习;活力;

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