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Evaluating Auto-scaling Strategies for Cloud Computing Environments

机译:评估云计算环境的自动扩展策略

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摘要

Auto-scaling is a key feature in clouds responsible for adjusting the number of available resources to meet service demand. Resource pool modifications are necessary to keep performance indicators, such as utilisation level, between user-defined lower and upper bounds. Auto-scaling strategies that are not properly configured according to user workload characteristics may lead to unacceptable QoS and large resource waste. As a consequence, there is a need for a deeper understanding of auto-scaling strategies and how they should be configured to minimise these problems. In this work, we evaluate various auto-scaling strategies using log traces from a production Google data centre cluster comprising millions of jobs. Using utilisation level as performance indicator, our results show that proper management of auto-scaling parameters reduces the difference between the target utilisation interval and the actual values-we define such difference as Auto-scaling Demand Index. We also present a set of lessons from this study to help cloud providers build recommender systems for auto-scaling operations.
机译:自动缩放是云中的一项关键功能,负责调整可用资源的数量以满足服务需求。必须进行资源池修改,以将性能指标(例如利用率水平)保持在用户定义的上限和下限之间。如果未根据用户工作负载特征正确配置自动缩放策略,则可能会导致QoS不可接受以及大量资源浪费。因此,需要对自动缩放策略以及如何配置它们以最小化这些问题有更深入的了解。在这项工作中,我们使用来自包含数百万个工作岗位的生产Google数据中心集群中的日志跟踪信息,评估了各种自动扩展策略。使用利用率水平作为性能指标,我们的结果表明,对自动缩放参数的正确管理可以减小目标利用率间隔和实际值之间的差异,我们将这种差异定义为自动缩放需求指数。我们还提供了本研究的一系列教训,以帮助云提供商构建自动扩展操作的推荐系统。

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