TY - GEN
T1 - FedX
T2 - 21st Annual International Conference on Distributed Computing in Smart Systems and the Internet of Things, DCOSS-IoT 2025
AU - Lai, Phung
AU - Jiang, Xiaopeng
AU - Phan, Hai
AU - Borcea, Cristian
AU - Tran, Khang
AU - Chen, An
AU - Mayyuri, Vijaya Datta
AU - Jin, Ruoming
N1 - Publisher Copyright:
© 2025 IEEE.
PY - 2025
Y1 - 2025
N2 - Federated Learning (FL) allows collaborative training among multiple devices without data sharing, thus enabling privacy-sensitive applications on mobile or Internet of Things (IoT) devices, such as mobile health and asset tracking. However, designing an FL system with good model utility that works with low computation/communication overhead on heterogeneous, resource-constrained mobile/IoT devices is challenging. To address this problem, this paper proposes FedX, a novel adaptive model decomposition and quantization FL system for IoT. To balance utility with resource constraints on IoT devices, FedX decomposes a global FL model into different sub-networks with adaptive numbers of quantized bits for different devices. The key idea is that a device with fewer resources receives a smaller sub-network for lower overhead but utilizes a larger number of quantized bits for higher model utility, and vice versa. The quantization operations in FedX are done at the server to reduce the computational load on devices. FedX iteratively minimizes the losses in the devices' local data and in the server's public data using quantized sub-networks under a regularization term, and thus it maximizes the benefits of combining FL with model quantization through knowledge sharing among the server and devices in a cost-effective training process. Extensive experiments show that FedX significantly improves quantization times by up to 8.43 ×, on-device computation time by 1.5 ×, and total end-to-end training time by 1.36 ×, compared with baseline FL systems. We guarantee the global model convergence theoretically and validate local model convergence empirically, highlighting FedX's optimization efficiency.
AB - Federated Learning (FL) allows collaborative training among multiple devices without data sharing, thus enabling privacy-sensitive applications on mobile or Internet of Things (IoT) devices, such as mobile health and asset tracking. However, designing an FL system with good model utility that works with low computation/communication overhead on heterogeneous, resource-constrained mobile/IoT devices is challenging. To address this problem, this paper proposes FedX, a novel adaptive model decomposition and quantization FL system for IoT. To balance utility with resource constraints on IoT devices, FedX decomposes a global FL model into different sub-networks with adaptive numbers of quantized bits for different devices. The key idea is that a device with fewer resources receives a smaller sub-network for lower overhead but utilizes a larger number of quantized bits for higher model utility, and vice versa. The quantization operations in FedX are done at the server to reduce the computational load on devices. FedX iteratively minimizes the losses in the devices' local data and in the server's public data using quantized sub-networks under a regularization term, and thus it maximizes the benefits of combining FL with model quantization through knowledge sharing among the server and devices in a cost-effective training process. Extensive experiments show that FedX significantly improves quantization times by up to 8.43 ×, on-device computation time by 1.5 ×, and total end-to-end training time by 1.36 ×, compared with baseline FL systems. We guarantee the global model convergence theoretically and validate local model convergence empirically, highlighting FedX's optimization efficiency.
KW - Federated learning
KW - Heterogeneous IoT
KW - Model decomposition
KW - Quantization
UR - https://www.scopus.com/pages/publications/105013837733
UR - https://www.scopus.com/pages/publications/105013837733#tab=citedBy
U2 - 10.1109/DCOSS-IoT65416.2025.00035
DO - 10.1109/DCOSS-IoT65416.2025.00035
M3 - Conference contribution
AN - SCOPUS:105013837733
T3 - Proceedings - 2025 21st International Conference on Distributed Computing in Smart Systems and the Internet of Things, DCOSS-IoT 2025
SP - 212
EP - 220
BT - Proceedings - 2025 21st International Conference on Distributed Computing in Smart Systems and the Internet of Things, DCOSS-IoT 2025
PB - Institute of Electrical and Electronics Engineers Inc.
Y2 - 9 June 2025 through 11 June 2025
ER -