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Adaptive algorithms for diagnosing large-scale failures in computer networks

机译:诊断计算机网络中大规模故障的自适应算法

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In this paper, we propose an algorithm to efficiently diagnose large-scale clustered failures. The algorithm, Cluster-MAX-COVERAGE (CMC), is based on greedy approach. We address the challenge of determining faults with incomplete symptoms. CMC makes novel use of both positive and negative symptoms to output a hypothesis list with a low number of false negatives and false positives quickly. CMC requires reports from about half as many nodes as other existing algorithms to determine failures with 100% accuracy. Moreover, CMC accomplishes this gain significantly faster (sometimes by two orders of magnitude) than an algorithm that matches its accuracy. Furthermore, we propose an adaptive algorithm called Adaptive-MAX-COVERAGE (AMC) that performs efficiently during both kinds of failures, i.e., independent and clustered. During a series of failues that include both independent and clustered, AMC results in a reduced number of false negatives and false positives.
机译:在本文中,我们提出了一种可以有效诊断大规模集群故障的算法。该算法Cluster-MAX-COVERAGE(CMC)基于贪婪方法。我们解决了确定具有不完整症状的故障的挑战。 CMC新颖地使用了阳性和阴性症状,可以快速输出假阴性和假阳性数量少的假设列表。 CMC要求来自其他现有算法的大约一半节点的报告才能以100%的准确性确定故障。此外,CMC比匹配其精度的算法要快得多(有时两个数量级)来实现此增益。此外,我们提出了一种称为Adaptive-MAX-COVERAGE(AMC)的自适应算法,该算法在两种故障(即独立故障和群集故障)期间均能高效执行。在包括独立故障和群集故障的一系列故障中,AMC导致误报和误报的数量减少。

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