从历史观测中建模netflow的通用学习方法

Peter Chronz, F. Feldhaus, P. Kasprzak
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引用次数: 0

摘要

本文提出了一种通用的学习算法,对服务间的通信模式进行建模。当前的服务环境,特别是在联邦环境中,其特点是服务数量庞大,变化程度高。在本文中,我们提出了一种以自治方式量化服务之间通信模式的方法,以允许预测服务环境中的未来使用模式,以便进行优化和模拟。提出的学习算法使用机器学习技术,并根据观察到的网络流量信息生成概率模型。我们基于在云测试平台上捕获的真实netflow数据执行学习并评估学习算法。本文最后讨论了该算法在服务管理自治优化框架中的潜在应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Generic Learning Approach to Modelling Netflows from Historic Observations
In this paper we present a generic learning algo- rithm that models the communication patterns between services. Current service landscapes especially in federated environments are characterized by a huge number of services and by a high de- gree of change. In this paper we present a method for quantifying the communication patterns between services in a autonomous fashion to allow predictions of future usage patterns in the service landscape for optimization and simulation. The proposed learning algorithm uses machine learning techniques and generates a probabilistic model based on observed network flow information. We perform the learning and evaluate the learning algorithm based on real world netflow data captured on a cloud testbed. The paper finally discusses potential applications of the proposed algorithm in a autonomous optimization framework for service management.
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