一种基于模型的基于虚拟机迁移的I/O密集型云应用优化算法

Kento Sato, Hitoshi Sato, S. Matsuoka
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引用次数: 45

摘要

地理分布环境中的联邦存储资源正在成为数据密集型云和网格应用程序的可行平台。为了提高这种环境下的I/O性能,我们提出了一种新的基于模型的I/O性能优化算法,用于运行在虚拟集群上的数据密集型应用程序,该算法决定了虚拟机(VM)迁移策略,即:即迁移虚拟机的时间和地点,同时最小化文件访问时间的期望值。我们将此问题作为加权直接无环图(DAG)的最短路径问题来解决,其中加权顶点表示VM的位置和从该位置的期望文件访问时间,加权边表示VM的迁移和时间。我们从表示文件依赖关系的马尔可夫模型中构造DAG。我们基于模拟的研究表明,我们提出的算法可以实现比简单技术更高的性能,例如从不迁移vm: 38%或始终将vm迁移到保存目标文件的位置:47%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Model-Based Algorithm for Optimizing I/O Intensive Applications in Clouds Using VM-Based Migration
Federated storage resources in geographically distributed environments are becoming viable platforms for data-intensive cloud and grid applications. To improveI /O performance in such environments, we propose a novel model-based I/O performance optimization algorithm for data-intensive applications running on a virtual cluster, which determines virtual machine (VM) migration strategies,i.e., when and where a VM should be migrated, while minimizing the expected value of file access time. We solve this problem as a shortest path problem of a weighted direct acyclic graph (DAG), where the weighted vertex represents a location of a VM and expected file access time from the location, and the weighted edge represents a migration of a VM and time. We construct the DAG from our markov model which represents the dependency of files. Our simulation-based studies suggest that our proposed algorithm can achieve higher performance than simple techniques, such as ones that never migrate VMs: 38% or always migrate VMs onto the locations that hold target files: 47%.
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