2024
DOI: 10.1109/access.2024.3349557
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The Effects of Weight Quantization on Online Federated Learning for the IoT: A Case Study

Nil Llisterri Giménez,
Junkyu Lee,
Felix Freitag
et al.

Abstract: Many weight quantization approaches were explored to save the communication bandwidth between the clients and the server in federated learning using high-end computing machines. However, there is a lack of weight quantization research for online federated learning using TinyML devices which are restricted by the mini-batch size, the neural network size, and the communication method due to their severe hardware resource constraints and power budgets. We name Tiny Online Federated Learning (TinyOFL) for online f… Show more

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