Joint Temporal-Structural Representation Learning for Distributed Fault Discrimination in Microservice Architectures
Yihan Xue, Yuxiao Wang, Ao Zhu, Xiaoxuan Sun, Chong Zhang

TL;DR
This paper introduces a novel distributed fault discrimination model for microservice architectures using temporal graph neural networks to jointly learn from dynamic temporal and structural data.
Contribution
It presents a unified framework combining temporal modeling and structural interactions for fault discrimination in complex microservice systems.
Findings
Achieves superior fault discrimination performance on multiple metrics.
Effectively models dynamic evolution and dependency structures.
Improves robustness under complex interactions and noise.
Abstract
Addressing the diverse fault morphologies, complex dependencies, and time-varying operational states in microservice distributed systems, this paper proposes a distributed fault discrimination model based on temporal graph neural networks. This model characterizes the microservice operation process as a dynamic graph sequence evolving, and performs joint representation learning of temporal modeling and structural interactions within a unified framework. First, service-level multi-source observation signals are aligned and characterized to construct node feature sequences and their corresponding time-dependent dependencies. Then, a temporal coding module is introduced to extract the dynamic evolution representation of service states, and at each time step, attention-based structured message passing is used to characterize dependency interactions and propagation associations, forming a…
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