Federated Anomaly Detection for Multi-Tenant Cloud Platforms with Personalized Modeling
- URL: http://arxiv.org/abs/2508.10255v1
- Date: Thu, 14 Aug 2025 00:46:24 GMT
- Title: Federated Anomaly Detection for Multi-Tenant Cloud Platforms with Personalized Modeling
- Authors: Yuxi Wang, Heyao Liu, Nyutian Long, Guanzi Yao,
- Abstract summary: This paper proposes an anomaly detection method based on federated learning to address key challenges in multi-tenant cloud environments.<n>A global model is optimized, enabling cross-tenant collaborative anomaly detection while preserving data privacy.<n>Experiments use real telemetry data from a cloud platform to construct a simulated multi-tenant environment.
- Score: 6.028943403943345
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper proposes an anomaly detection method based on federated learning to address key challenges in multi-tenant cloud environments, including data privacy leakage, heterogeneous resource behavior, and the limitations of centralized modeling. The method establishes a federated training framework involving multiple tenants. Each tenant trains the model locally using private resource usage data. Through parameter aggregation, a global model is optimized, enabling cross-tenant collaborative anomaly detection while preserving data privacy. To improve adaptability to diverse resource usage patterns, a personalized parameter adjustment mechanism is introduced. This allows the model to retain tenant-specific feature representations while sharing global knowledge. In the model output stage, the Mahalanobis distance is used to compute anomaly scores. This enhances both the accuracy and stability of anomaly detection. The experiments use real telemetry data from a cloud platform to construct a simulated multi-tenant environment. The study evaluates the model's performance under varying participation rates and noise injection levels. These comparisons demonstrate the proposed method's robustness and detection accuracy. Experimental results show that the proposed method outperforms existing mainstream models across key metrics such as Precision, Recall, and F1-Score. It also maintains stable performance in various complex scenarios. These findings highlight the method's practical potential for intelligent resource monitoring and anomaly diagnosis in cloud computing environments.
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