Twin Graph-based Anomaly Detection via Attentive Multi-Modal Learning for Microservice System

October 07, 2023 ยท Entered Twilight ยท ๐Ÿ› International Conference on Automated Software Engineering

๐Ÿ’ค TWILIGHT: Eternal Rest
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Authors Jun Huang, Yang Yang, Hang Yu, Jianguo Li, Xiao Zheng arXiv ID 2310.04701 Category cs.LG: Machine Learning Cross-listed cs.SE Citations 28 Venue International Conference on Automated Software Engineering Repository https://github.com/alipay/microservice_system_twin_graph_based_anomaly_detection โญ 40 Last Checked 1 month ago
Abstract
Microservice architecture has sprung up over recent years for managing enterprise applications, due to its ability to independently deploy and scale services. Despite its benefits, ensuring the reliability and safety of a microservice system remains highly challenging. Existing anomaly detection algorithms based on a single data modality (i.e., metrics, logs, or traces) fail to fully account for the complex correlations and interactions between different modalities, leading to false negatives and false alarms, whereas incorporating more data modalities can offer opportunities for further performance gain. As a fresh attempt, we propose in this paper a semi-supervised graph-based anomaly detection method, MSTGAD, which seamlessly integrates all available data modalities via attentive multi-modal learning. First, we extract and normalize features from the three modalities, and further integrate them using a graph, namely MST (microservice system twin) graph, where each node represents a service instance and the edge indicates the scheduling relationship between different service instances. The MST graph provides a virtual representation of the status and scheduling relationships among service instances of a real-world microservice system. Second, we construct a transformer-based neural network with both spatial and temporal attention mechanisms to model the inter-correlations between different modalities and temporal dependencies between the data points. This enables us to detect anomalies automatically and accurately in real-time. The source code of MSTGAD is publicly available at https://github.com/alipay/microservice_system_twin_graph_based_anomaly_detection.
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