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Abstract
Nowadays, AI companies improve service quality by aggressively collecting
users' data generated by edge devices, which jeopardizes data privacy. To
prevent this, Federated Learning is proposed as a private learning scheme,
using which users can locally train the model without collecting users' raw
data to servers. However, for machine-learning applications on edge devices
that have hard memory constraints, implementing a large model using FL is
infeasible. To meet the memory requirement, a recent collaborative learning
scheme named split federal learning is a potential solution since it keeps a
small model on the device and keeps the rest of the model on the server. In
this work, we implement a simply SFL framework on the Arduino board and verify
its correctness on the Chinese digits audio dataset for keyword spotting
application with over 90% accuracy. Furthermore, on the English digits audio
dataset, our SFL implementation achieves 13.89% higher accuracy compared to a
state-of-the-art FL implementation.