使用可信模拟来设计云调度器

A. Pucher, Emre Gul, R. Wolski, C. Krintz
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引用次数: 20

摘要

近年来,研究人员贡献了有前途的新技术,以更稳健、更有效和生态可持续的方式分配云资源。不幸的是,到目前为止,这些技术在生产系统中的广泛应用仍然难以实现。其中一个原因是,大规模研究这些创新的最新技术通常只依赖于模型驱动的模拟。然而,生产级云软件要求开发和业务计划的确定性和精确性,这只能来自于对经验观察的验证模拟。在这项工作中,我们采用另一种方法来促进云研究和工程,以便更快地将创新转化为生产部署。特别是,我们提出了一种新的方法,用特定于平台和统计可信的结果补充现有的模型驱动仿真。我们在可测试的尺度和时间框架上模拟系统,然后,基于这些模拟的统计验证,研究超出实际可观察到的场景。我们通过开发能源感知云调度器并使用比实时更快的生产和合成轨迹对其进行评估来演示该方法。我们的结果表明,我们可以准确地模拟生产IaaS系统,简化容量规划,并加快其组件和扩展的可靠开发。
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Using Trustworthy Simulation to Engineer Cloud Schedulers
In recent years, researchers have contributed promising new techniques for allocating cloud resources in more robust, efficient, and ecologically sustainable ways. Unfortunately, the wide-spread use of these techniques in production systems has, to date, remained elusive. One reason for this is that the state of the art for investigating these innovations at scale often relies solely on model-driven simulation. Production-grade cloud software, however, demands certainty and precision for development and business planning that only comes from validating simulation against empirical observation. In this work, we take an alternative approach to facilitating cloud research and engineering in order to transition innovations to production deployment faster. In particular, we present a new methodology that complements existing model-driven simulation with platform-specific and statistically trustworthy results. We simulate systems at scales and on time frames that are testable, and then, based on the statistical validation of these simulations, investigate scenarios beyond those feasibly observable in practice. We demonstrate the approach by developing an energy-aware cloud scheduler and evaluating it using production and synthetic traces in faster than real time. Our results show that we can accurately simulate a production IaaS system, ease capacity planning, and expedite the reliable development of its components and extensions.
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