Asynchronous Real-Time Federated Learning for Anomaly Detection in Microservice Cloud Applications

Mahsa Raeiszadeh;Amin Ebrahimzadeh;Roch H. Glitho;Johan Eker;Raquel A. F. Mini
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Abstract

The complexity and dynamicity of microservice architectures in cloud environments present substantial challenges to the reliability and availability of the services built on these architectures. Therefore, effective anomaly detection is crucial to prevent impending failures and resolve them promptly. Distributed data analysis techniques based on machine learning (ML) have recently gained attention in detecting anomalies in microservice systems. ML-based anomaly detection techniques mostly require centralized data collection and processing, which may raise scalability and computational issues in practice. In this paper, we propose an Asynchronous Real-Time Federated Learning (ART-FL) approach for anomaly detection in cloud-based microservice systems. In our approach, edge clients perform real-time learning with continuous streaming local data. At the edge clients, we model intra-service behaviors and inter-service dependencies in multi-source distributed data based on a Span Causal Graph (SCG) representation and train a model through a combination of Graph Neural Network (GNN) and Positive and Unlabeled (PU) learning. Our FL approach updates the global model in an asynchronous manner to achieve accurate and efficient anomaly detection, addressing computational overhead across diverse edge clients, including those that experience delays. Our trace-driven evaluations indicate that the proposed method outperforms the state-of-the-art anomaly detection methods by 4% in terms of $F_{1}$ -score while meeting the given time efficiency and scalability requirements.
微服务云应用中异步实时联邦学习的异常检测
云环境中微服务架构的复杂性和动态性对构建在这些架构上的服务的可靠性和可用性提出了重大挑战。因此,有效的异常检测对于预防即将发生的故障并及时解决至关重要。基于机器学习(ML)的分布式数据分析技术最近在微服务系统异常检测方面得到了广泛关注。基于机器学习的异常检测技术大多需要集中的数据收集和处理,这在实践中可能会带来可扩展性和计算问题。在本文中,我们提出了一种异步实时联邦学习(ART-FL)方法,用于基于云的微服务系统中的异常检测。在我们的方法中,边缘客户端使用连续的本地流数据执行实时学习。在边缘客户端,我们基于跨因果图(SCG)表示对多源分布式数据中的服务内行为和服务间依赖进行建模,并通过图神经网络(GNN)和正未标记(PU)学习的组合训练模型。我们的FL方法以异步方式更新全局模型,以实现准确高效的异常检测,解决不同边缘客户端的计算开销,包括那些经历延迟的客户端。我们的跟踪驱动评估表明,在满足给定的时间效率和可扩展性要求的情况下,所提出的方法在F_ bb_0 $ -score方面比最先进的异常检测方法高出4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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