Grid Global Behavior Prediction

Jesús Montes, Alberto Sánchez, María S. Pérez
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引用次数: 7

Abstract

Complexity has always been one of the most important issues in distributed computing. From the first clusters to grid and now cloud computing, dealing correctly and efficiently with system complexity is the key to taking technology a step further. In this sense, global behavior modeling is an innovative methodology aimed at understanding the grid behavior. The main objective of this methodology is to synthesize the grid's vast, heterogeneous nature into a simple but powerful behavior model, represented in the form of a single, abstract entity, with a global state. Global behavior modeling has proved to be very useful in effectively managing grid complexity but, in many cases, deeper knowledge is needed. It generates a descriptive model that could be greatly improved if extended not only to explain behavior, but also to predict it. In this paper we present a prediction methodology whose objective is to define the techniques needed to create global behavior prediction models for grid systems. This global behavior prediction can benefit grid management, specially in areas such as fault tolerance or job scheduling. The paper presents experimental results obtained in real scenarios in order to validate this approach.
网格全局行为预测
复杂性一直是分布式计算的重要问题之一。从最初的集群到网格,再到现在的云计算,正确有效地处理系统复杂性是使技术进一步发展的关键。从这个意义上说,全局行为建模是一种旨在理解网格行为的创新方法。该方法的主要目标是将网格庞大的异构性质综合成一个简单但功能强大的行为模型,以具有全局状态的单一抽象实体的形式表示。全局行为建模已被证明在有效管理网格复杂性方面非常有用,但在许多情况下,需要更深入的知识。它生成了一个描述性模型,如果不仅可以扩展到解释行为,还可以预测行为,那么这个模型可以得到极大的改进。在本文中,我们提出了一种预测方法,其目的是定义为网格系统创建全局行为预测模型所需的技术。这种全局行为预测有利于网格管理,特别是在容错或作业调度等领域。文中给出了实际场景下的实验结果,验证了该方法的有效性。
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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