Article citationsMore>>
Jin, M., Koh, H.Y., Wen, Q., Zambon, D., Alippi, C., Webb, G.I., et al. (2024) A Survey on Graph Neural Networks for Time Series: Forecasting, Classification, Imputation, and Anomaly Detection. IEEE Transactions on Pattern Analysis and Machine Intelligence, 46, 10466-10485.
https://doi.org/10.1109/tpami.2024.3443141
has been cited by the following article:
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TITLE:
Graph Neural Networks for Anomaly Detection in Cloud Infrastructure
AUTHORS:
Adithya Jakkaraju
KEYWORDS:
Graph Neural Networks, Anomaly Detection, Cloud Infrastructure, Temporal Graph Convolution, Graph Autoencoder, Microservice Dependencies, Telemetry Fusion
JOURNAL NAME:
Journal of Computer and Communications,
Vol.13 No.10,
October
22,
2025
ABSTRACT: Cloud infrastructure anomalies cause significant downtime and financial losses (estimated at $2.5 M/hour for major services). Traditional anomaly detection methods fail to capture complex dependencies in microservice architectures. This paper presents a novel Temporal-Attentive Graph Autoencoder (TAGAE) framework for cloud anomaly detection, leveraging Graph Neural Networks (GNNs) to model topological relationships and temporal dynamics. Our method integrates multi-source telemetry (logs, metrics, and traces) into a unified graph structure, utilizes anomaly amplification layers for enhanced sensitivity, and employs focal loss for data imbalance mitigation. Evaluated on Azure-DIAD and GCP datasets, TAGAE achieves 94.2% F1-score and 96.5% AUC-PR, reducing detection latency by 63% compared to GraphSAGE. We further analyze robustness under 40% noise/missing data and propose federated GNNs for privacy-preserving deployment.