Introduction of the new Operating System Kernel Internals for the New Metrics for the Performance Prediction on the Clouds

Sena Seneviratne, L. D. Silva, Jie Hu, Wenxing Hong, Judith Beveridge, D. Levy
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Abstract

In this paper, the introduction of the new OS kernel internals for the new metrics for the grid and cloud performance prediction is explained. This new introduction is named as Division of Load (DOL). The DOL method breaks down the CPU load by individual users and then separates the Disk IO load from the CPU load. In the first part, the concepts of the load signals are shown theoretically and experimentally as these metrics are introduced into the kernel for the first time. In the second part, the required code changes which are introduced to the OS kernel are discussed. The separation will help to collect the computer loads separately for individual users as CPU loads and Disk IOs loads. Such a move will open Grid, Cluster and Cloud Performance Predictors to use the divided data archives for better predictability of both CPU and Disk IO loads. Many existing Grid and Cloud resource prediction engines are going to be advantaged by this data purification and specialization.
为云上性能预测的新指标引入了新的操作系统内核内部
在本文中,介绍了新的操作系统内核内部的网格和云性能预测的新指标。这一新的引入被命名为负载划分(DOL)。DOL方法按单个用户分解CPU负载,然后将磁盘IO负载从CPU负载中分离出来。在第一部分中,首次将负载信号的概念引入内核,从理论上和实验上展示了这些指标的概念。在第二部分中,讨论了引入OS内核所需的代码更改。这种分离将有助于为单个用户分别收集计算机负载,如CPU负载和磁盘IOs负载。这样的举动将打开网格、集群和云性能预测器,使用划分的数据存档,以更好地预测CPU和磁盘IO负载。许多现有的网格和云资源预测引擎将受益于这种数据净化和专业化。
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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