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auto-AID: A data mining framework for autonomic anomaly identification in networked computer systems

机译:auto-AID:一种用于网络计算机系统中自主异常识别的数据挖掘框架

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Networked computer systems continue to grow in scale and in the complexity of their components and interactions. Component failures become norms instead of exceptions in these environments. A failure will cause one or multiple computer(s) to be unavailable, which affects the resource utilization and system throughput. When a computer fails to function properly, health-related data are valuable for troubleshooting. However, it is challenging to effectively identify anomalies from the voluminous amount of noisy, high-dimensional data. In this paper, we present auto-AID, an autonomic mechanism for anomaly identification in networked computer systems. It is composed of a set of data mining techniques that facilitates automatic analysis of system health data. The identification results are very valuable for the system administrators to manage systems and schedule the available resources. We implement a prototype of auto-AID and evaluate it on a production institution-wide compute grid. The results show that auto-AID can effectively identify anomalies with little human intervention.
机译:联网计算机系统规模不断扩大,其组件和交互的复杂性也在不断增长。在这些环境中,组件故障已成为规范,而非异常。故障将导致一台或多台计算机不可用,从而影响资源利用率和系统吞吐量。当计算机无法正常运行时,与健康相关的数据对于故障排除很有用。然而,从大量的嘈杂的高维数据中有效地识别异常是具有挑战性的。在本文中,我们介绍了auto-AID,这是一种用于在联网计算机系统中进行异常识别的自主机制。它由一组数据挖掘技术组成,这些技术有助于对系统运行状况数据进行自动分析。标识结果对于系统管理员管理系统和安排可用资源非常有价值。我们实现了自动AID的原型,并在生产机构范围的计算网格中对其进行了评估。结果表明,自动AID可以在几乎不需要人工干预的情况下有效地识别异常。

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