专场:优化火花流系统异常检测的人工神经网络

Ahmad Alnafessah, G. Casale
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引用次数: 2

摘要

随着大数据处理技术和云计算服务的发展,多个租户共享计算资源的情况非常普遍,这可能会导致性能异常。迫切需要一种有效的性能异常检测方法,可以在生产环境中使用,以避免任何意外系统故障的后期检测。为了应对这一挑战,我们引入了TRACK,这是一种新的黑盒训练负载配置优化,采用神经网络驱动的方法来识别内存大数据Spark流平台中的异常性能。所提出的方法围绕着使用贝叶斯优化来找到最优的训练数据集大小和配置参数来有效地训练模型。在一个真实的Apache Spark流系统上对TRACK进行了验证,结果表明TRACK达到了最高的性能(f分数为95%),并将训练时间减少了80%,可以在内存流平台上有效地训练所提出的异常检测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TRACK: Optimizing Artificial Neural Networks for Anomaly Detection in Spark Streaming Systems
Due to the growth of Big Data processing technologies and cloud computing services, it is common to have multiple tenants share the same computing resources, which may cause performance anomalies. There is an urgent need for an effective performance anomaly detection method that can be used within the production environment to avoid any late detection of unexpected system failures. To address this challenge, we introduce, TRACK, a new black-box training workload configuration optimization with a neural network driven methodology to identify anomalous performance in an in-memory Big Data Spark streaming platform. The proposed methodology revolves around using Bayesian optimization to find the optimal training dataset size and configuration parameters to train the model efficiently. TRACK is validated on a real Apache Spark streaming system and the results show that the TRACK achieves the highest performance (95% for F-score) and reduces the training time by 80% to efficiently train the proposed anomaly detection model in the in-memory streaming platform.
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