DCAIOct 4, 2025

Towards Carbon-Aware Container Orchestration: Predicting Workload Energy Consumption with Federated Learning

arXiv:2510.03970v13 citationsh-index: 22025 IEEE Smart World Congress (SWC)
Originality Incremental advance
AI Analysis

This work addresses the trade-off between data privacy and energy prediction efficiency for enterprises using container orchestration platforms like Kubernetes, offering a pathway toward sustainable cloud computing.

The paper tackles the problem of predicting energy consumption for carbon-aware container orchestration by proposing a federated learning approach that preserves data privacy, achieving 11.7% lower Mean Absolute Error compared to a centralized baseline.

The growing reliance on large-scale data centers to run resource-intensive workloads has significantly increased the global carbon footprint, underscoring the need for sustainable computing solutions. While container orchestration platforms like Kubernetes help optimize workload scheduling to reduce carbon emissions, existing methods often depend on centralized machine learning models that raise privacy concerns and struggle to generalize across diverse environments. In this paper, we propose a federated learning approach for energy consumption prediction that preserves data privacy by keeping sensitive operational data within individual enterprises. By extending the Kubernetes Efficient Power Level Exporter (Kepler), our framework trains XGBoost models collaboratively across distributed clients using Flower's FedXgbBagging aggregation using a bagging strategy, eliminating the need for centralized data sharing. Experimental results on the SPECPower benchmark dataset show that our FL-based approach achieves 11.7 percent lower Mean Absolute Error compared to a centralized baseline. This work addresses the unresolved trade-off between data privacy and energy prediction efficiency in prior systems such as Kepler and CASPER and offers enterprises a viable pathway toward sustainable cloud computing without compromising operational privacy.

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