Publication | Closed Access
LogMaster: Mining Event Correlations in Logs of Large-Scale Cluster Systems
85
Citations
56
References
2012
Year
Cluster ComputingEngineeringEvent CorrelationPattern MiningText MiningSequence Mining EfficiencyData ScienceData MiningComplex Event ProcessingMining Event CorrelationsManagementData IntegrationLog MasterLog ManagementData ManagementPredictive AnalyticsKnowledge DiscoveryEvent SeverityComputer ScienceLog AnalysisFrequent Pattern MiningEvent-driven MonitoringBig Data
This paper presents a set of innovative algorithms and a system, named Log Master, for mining correlations of events that have multiple attributions, i.e., node ID, application ID, event type, and event severity, in logs of large-scale cloud and HPC systems. Different from traditional transactional data, e.g., supermarket purchases, system logs have their unique characteristics, and hence we propose several innovative approaches to mining their correlations. We parse logs into an n-ary sequence where each event is identified by an informative nine-tuple. We propose a set of enhanced apriori-like algorithms for improving sequence mining efficiency, we propose an innovative abstraction-event correlation graphs (ECGs) to represent event correlations, and present an ECGs-based algorithm for fast predicting events. The experimental results on three logs of production cloud and HPC systems, varying from 433490 entries to 4747963 entries, show that our method can predict failures with a high precision and an acceptable recall rates.
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