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SwissLog: Robust and Unified Deep Learning Based Log Anomaly Detection for Diverse Faults

机译:SwissLog:基于健壮且统一的深度学习的日志异常检测,适用于各种故障

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Log-based anomaly detection has been widely studied and achieves a satisfying performance on stable log data. But, the existing approaches still fall short meeting these challenges: 1) Log formats are changing continually in practice in those software systems under active development and maintenance. 2) Performance issues are latent causes that may not be detected by trivial monitoring tools. We thus propose SwissLog, namely a robust and unified deep learning based anomaly detection model for detecting diverse faults. SwissLog targets at those faults resulting in log sequence order changes and log time interval changes. To achieve that, an advanced log parser is introduced. Moreover, the semantic embedding and the time embedding approaches are combined to train a unified attention based BiLSTM model to detect anomalies. The experiments on real-world datasets and synthetic datasets show that SwissLog is robust to the changing log data and effective for diverse faults.
机译:基于日志的异常检测已经得到了广泛的研究,并在稳定的日志数据上取得了令人满意的性能。但是,现有方法仍不足以应对这些挑战:1)在那些积极开发和维护的软件系统中,日志格式实际上在不断变化。 2)性能问题是潜在的原因,这些琐碎的监视工具可能无法检测到这些问题。因此,我们提出了SwissLog,即基于鲁棒且统一的深度学习的异常检测模型,用于检测各种故障。 SwissLog针对那些会导致日志顺序顺序更改和日志时间间隔更改的故障。为此,引入了高级日志解析器。此外,将语义嵌入和时间嵌入方法相结合,以训练基于统一注意力的BiLSTM模型来检测异常。在真实数据集和综合数据集上的实验表明,SwissLog对变化的日志数据具有鲁棒性,并且对于各种故障均有效。

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