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Smart VM co-scheduling with the precise prediction of performance characteristics

机译:智能VM协同调度与性能特征的精确预测

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摘要

Traditional virtualization systems cannot effectively isolate the shared micro-architectural resources among VMs. Different types of CPU and memory-intensive VMs contending for these shared resources will lead to different levels of performance degradation, which decreases the system efficiency and Quality of Service (QoS) in the cloud. To address these problems, we design and implement a smart VM co-scheduling system with precise prediction of performance characteristics. First, we identify the performance interference factors and design synthetic micro-benchmarks. By co-running these micro-benchmarks with VMs, we decouple two kinds of VM performance characteristics: VM contention sensitivity and contention intensity. Second, based on the characteristics, we build VM performance prediction model using machine learning techniques to quantify the precise levels of performance degradation. By co-running large numbers of different VMs and collecting their performance scores, we train a robust performance prediction model. Finally, based on the prediction model, we design contention aware VM scheduling algorithms to improve system efficiency and guarantee the QoS of VMs in the cloud. Our experimental results show that the performance prediction model achieves high accuracy and the smart VM scheduling algorithms based on the prediction improves system efficiency and VM performance stability.
机译:传统的虚拟化系统无法有效隔离VM之间共享的微体系结构资源。争用这些共享资源的不同类型的CPU和内存密集型VM将导致不同程度的性能下降,从而降低系统效率和云中的服务质量(QoS)。为了解决这些问题,我们设计并实现了一个具有精确预测性能特征的智能VM协同调度系统。首先,我们确定性能干扰因素并设计合成的微基准。通过将这些微基准与VM共同运行,我们将两种VM性能特征分离:VM竞争敏感性和竞争强度。其次,基于这些特征,我们使用机器学习技术构建VM性能预测模型,以量化性能下降的精确水平。通过共同运行大量不同的VM并收集它们的性能得分,我们训练了一个健壮的性能预测模型。最后,基于预测模型,我们设计了竞争竞争的VM调度算法,以提高系统效率并确保云中VM的QoS。我们的实验结果表明,性能预测模型可以达到很高的精度,并且基于该预测的智能VM调度算法可以提高系统效率和VM性能稳定性。

著录项

  • 来源
    《Future generation computer systems》 |2020年第4期|1016-1027|共12页
  • 作者

  • 作者单位

    Deakin University 221 Burwood Highway Burwood VIC 3125 Australia;

    Zhejiang University Zheda Road 38 Xihu District Hangzhou China;

    Deakin University 221 Burwood Highway Burwood VIC 3125 Australia Zhejiang University Zheda Road 38 Xihu District Hangzhou China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Virtual machine; Shared resource contention; Performance prediction; VM co-location;

    机译:虚拟机;共享资源争用;绩效预测;虚拟机托管;

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