HDFS数据集异常检测

Marwa Chnib, Wafa Gabsi
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引用次数: 0

摘要

大数据系统足够稳定,可以存储和处理大量快速变化的数据。然而,这些系统由大量硬件资源组成,这很容易导致它们的子组件出现故障。容错是这类系统的一个关键属性,因为它们在故障期间保持可用性、可靠性和稳定的性能。在大数据中实现高效的容错解决方案是一个挑战,因为容错必须满足一些与系统性能和资源消耗相关的约束。为了保护在线计算机系统免受恶意攻击或故障,日志异常检测至关重要。本文提供了一种新的方法来识别HDFS (Hadoop分布式文件系统)日志数据集中的异常日志序列,使用三种算法:Logbert, DeepLog和LOF。然后,它从准确性、召回率和f1分数方面评估所有算法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of anomalies in the HDFS dataset
Big data systems are stable enough to store and process large volumes of quickly changing data. However, these systems are composed of massive hardware resources, which can easily cause their subcomponents to fail. Fault tolerance is a key attribute of such systems as they maintain availability, reliability and constant performance during failures. Implementing efficient fault-tolerant solutions in big data presents a challenge because fault tolerance has to satisfy some constraints related to system performance and resource consumption. To protect online computer systems from malicious attacks or malfunctions, log anomaly detection is crucial. This paper provides a new approach to identify anomalous log sequences in the HDFS (Hadoop Distributed File System) log dataset using three algorithms: Logbert, DeepLog and LOF. Then, it assess performance of all algorithms in terms of accuracy, recall, and F1-score.
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