Predicting the Performance-Cost Trade-off of Applications Across Multiple Systems

Amir Nassereldine, Safaa Diab, M. Baydoun, Kenneth Leach, M. Alt, D. Milojicic, I. E. Hajj
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引用次数: 1

Abstract

In modern computing environments, users may have multiple systems accessible to them such as local clusters, private clouds, or public clouds. This abundance of choices makes it difficult for users to select the system and configuration for running an application that best meet their performance and cost objectives. To assist such users, we propose a prediction tool that predicts the full performance-cost trade-off space of an application across multiple systems. Our tool runs and profiles a submitted application on a small number of configurations from some of the systems, and uses that information to predict the application's performance on all configurations in all systems. The prediction models are trained offline with data collected from running a large number of applications on a wide variety of configurations. Notable aspects of our tool include: providing different scopes of prediction with varying online profiling requirements, automating the selection of the small number of configurations and systems used for online profiling, performing online profiling using partial runs thereby make predictions for applications without running them to completion, employing a classifier to distinguish applications that scale well from those that scale poorly, and predicting the sensitivity of applications to interference from other users. We evaluate our tool using 69 data analytics and scientific computing benchmarks executing on three different single-node CPU systems with 8–9 configurations each and show that it can achieve low prediction error with modest profiling overhead.
预测跨多个系统的应用程序的性能-成本权衡
在现代计算环境中,用户可以访问多个系统,例如本地集群、私有云或公共云。如此丰富的选择使得用户很难选择系统和配置来运行最能满足其性能和成本目标的应用程序。为了帮助这样的用户,我们提出了一个预测工具,它可以预测跨多个系统的应用程序的完整性能成本权衡空间。我们的工具在一些系统的少量配置上运行和分析提交的应用程序,并使用该信息预测应用程序在所有系统的所有配置上的性能。预测模型是通过在各种配置上运行大量应用程序收集的数据进行脱机训练的。我们的工具值得注意的方面包括:为不同的在线分析需求提供不同的预测范围,自动选择用于在线分析的少量配置和系统,使用部分运行来执行在线分析,从而对应用程序进行预测,而无需将它们运行到完成,使用分类器来区分可扩展性良好的应用程序和可扩展性较差的应用程序,并预测应用程序对其他用户干扰的敏感性。我们使用69个数据分析和科学计算基准来评估我们的工具,这些基准在三个不同的单节点CPU系统上执行,每个系统有8-9个配置,并表明它可以在适度的分析开销下实现低预测误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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