提高虚拟环境中功耗预测的准确性

H. Salam, F. Davoli, A. Timm‐Giel
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引用次数: 1

摘要

具有多核和多种电源状态的现代处理器使服务器的电源建模具有挑战性。由于管理程序的存在,这个问题在虚拟环境中变得更加复杂。在客户机(即虚拟机,VM)级别处理的请求和指令不能与在主机上处理的指令直接相关,这种关系随着虚拟环境配置的变化而变化。然而,观察主客两层的性能可能有助于开发实际的性能模型。此外,在数据中心和云等现代计算环境中,虚拟系统的规模非常大,这些系统在分配、调度、迁移等方面需要管理大量数据。对于这种异构系统和大规模数据,机器学习(ML)方法可以发挥至关重要的作用。在主人和客人级别使用有效的性能计数器开发功率和性能模型可以为训练数据提供重要的特性。在本研究中,针对不同的模型对正在运行的应用程序的相关性能计数器进行了监控和训练。这种在两个级别监视性能计数器的新方法提供了有关单个vm和服务器的深入性能信息。结果表明,使用这些模型估计功率可以减少预测误差,从而有助于提供更有效的功率感知决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Prediction Accuracy for Power Consumption in Virtual Environments
Modern processors with multi-cores and several power states make power modeling of servers challenging. This issue becomes more complex in virtualized environments, owing to the presence of hypervisors. Requests and instructions as processed at the guest (i.e Virtual Machine, VM) level cannot be straightforwardly related to instructions processed at the host, and this relation varies with changing virtual environment configuration. However, observing performance at both levels, host and guest, might be helpful in developing realistic performance models. Also, the scale of virtual systems in modern computing environments such as data centers and clouds is very large, and these systems have massive data to manage, in terms of their allocation, scheduling, migration, etc. For such heterogeneous systems and large scale data, machine learning (ML) methodologies can play a vital role. Developing power and performance models using effective performance counters at host and guest level can provide significant features for training data. In this research work correlated performance counters for the running applications are monitored and trained for different models. This novel approach of monitoring performance counters at both levels provides in-depth performance information about individual VMs and servers. Results show that estimating power using these models reduces the prediction error, and hence can help in providing more effective power-aware decisions.
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