Standardized Methods and Recommendations for Green Federated Learning
Austin Tapp, Holger R. Roth, Ziyue Xu, Abhijeet Parida, Hareem Nisar, and Marius George Linguraru

TL;DR
This paper proposes a standardized, phase-aware carbon accounting methodology for federated learning, enabling consistent measurement of environmental impact across studies and workloads.
Contribution
It introduces a practical, comprehensive carbon-tracking approach for federated learning that accounts for compute, communication, and system-level effects, promoting reproducible green AI.
Findings
System-level slowdowns significantly increase CO2e emissions.
Communication emissions depend on model-update sizes and network energy models.
Per-site and per-round reporting reveals non-uniform energy and CO2e changes.
Abstract
Federated learning (FL) enables collaborative model training over privacy-sensitive, distributed data, but its environmental impact is difficult to compare across studies due to inconsistent measurement boundaries and heterogeneous reporting. We present a practical carbon-accounting methodology for FL CO2e tracking using NVIDIA NVFlare and CodeCarbon for explicit, phase-aware tasks (initialization, per-round training, evaluation, and idle/coordination). To capture non-compute effects, we additionally estimate communication emissions from transmitted model-update sizes under a network-configurable energy model. We validate the proposed approach on two representative workloads: CIFAR-10 image classification and retinal optic disk segmentation. In CIFAR-10, controlled client-efficiency scenarios show that system-level slowdowns and coordination effects can contribute meaningfully to carbon…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Age of Information Optimization · IoT and Edge/Fog Computing
