维护和监控AIOps模型,防止概念漂移

Lorena Poenaru-Olaru, Luís Cruz, Jan S. Rellermeyer, A. V. Deursen
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引用次数: 2

摘要

AIOps解决方案通过对运行数据进行训练的机器学习模型,可以更快地发现运行大型系统中的故障。这些模型在概念漂移期间变得过时,概念漂移是用来描述数据分布变化的术语。在操作中,数据概念漂移是不可避免的,随着时间的推移,它会影响AIOps解决方案的性能。因此,应该密切监测概念漂移,并立即进行维护,以防止错误的预测。在这项工作中,我们提出了一个AIOps模型的自动化维护管道,该管道可以监控概念漂移的发生,并根据漂移类型选择最合适的模型再训练技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Maintaining and Monitoring AIOps Models Against Concept Drift
AIOps solutions enable faster discovery of failures in operational large-scale systems through machine learning models trained on operation data. These models become outdated during the occurrence of concept drift, a term used to describe shifts in data distributions. In operation data concept drift is inevitable and it impacts the performance of AIOps solutions over time. Therefore, concept drift should be closely monitored and immediate maintenance to prevent erroneous predictions is required. In this work, we propose an automated maintenance pipeline for AIOps models that monitors the occurrence of concept drift and chooses the most appropriate model retraining technique according to the drift type.
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