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Policy Generation Framework for Large-Scale Storage Infrastructures

机译:大型存储基础架构的策略生成框架

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Cloud computing is gaining acceptance among mainstream technology users. Storage cloud providers often employ Storage Area Networks (SANs) to provide elasticity, rapid adaptability to changing demands, and policy based automation. As storage capacity grows, the storage environment becomes heterogeneous, increasingly complex, harder to manage, and more expensive to operate. This paper presents PGML (Policy Generation for largescale storage infrastructure configuration using Machine Learning), an automated, supervised machine learning framework for generation of best practices for SAN configuration that can potentially reduce configuration errors by up to 70% in a data center. A best practice or policy is nothing but a technique, guideline or methodology that, through experience and research, has proven to lead reliably to a better storage configuration. Given a standards-based representation of SAN management information, PGML builds on the machine learning constructs of inductive logic programming (ILP) to create a transparent mapping of hierarchical, object-oriented management information into multi-dimensional predicate descriptions. Our initial evaluation of PGML shows that given an input of SAN problem reports, it is able to generate best practices by analyzing these reports. Our simulation results based on extrapolated real-world problem scenarios demonstrate that ILP is an appropriate choice as a machine learning technique for this problem. I
机译:云计算在主流技术用户中获得了接受。存储云提供商通常使用存储区域网络(SAN)以提供弹性,对不断变化的需求和基于策略的自动化的快速适应性。随着存储容量的增长,存储环境变得异构,越来越复杂,更难管理,并且操作更昂贵。本文介绍了PGML(使用机器学习的Largescale Storage Infrastructure Configuration的策略生成),一个自动化的监督机器学习框架,用于生成SAN配置的最佳实践,可以在数据中心中可能会将配置误差降低70%。最好的做法或政策只不过是一种技术,指导或方法,即通过经验和研究已经证明可以可靠地延伸到更好的存储配置。鉴于SAN管理信息的基于标准的表示,PGML在电感逻辑编程(ILP)的机器学习构造上构建,以创建分层,面向对象的管理信息的透明映射到多维谓词描述中。我们对PGML的初步评估显示,给定SAN问题的输入,它能够通过分析这些报告来生成最佳实践。 Our simulation results based on extrapolated real-world problem scenarios demonstrate that ILP is an appropriate choice as a machine learning technique for this problem.一世

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