We study federated learning (FL) at the wireless edge, where power-limited devices with local datasets train a joint model with the help of a remote parameter server (PS). We assume that the devices are connected to the PS through a bandwidth-limited shared wireless channel. At each iteration of FL, a subset of the devices are scheduled to transmit their local model updates to the PS over orthogonal channel resources. We design novel scheduling policies, that decide on the subset of devices to transmit at each round not only based on their channel conditions, but also on the significance of their local model updates. Numerical results show that the proposed scheduling policy provides a better long-term performance than scheduling policies based only on either of the two metrics individually. We also observe that when the data is independent and identically distributed (i.i.d.) across devices, selecting a single device at each round provides the best performance, while when the data distribution is non-i.i.d., more devices should be scheduled.

Update Aware Device Scheduling for Federated Learning at the Wireless Edge / Amiri, M. M.; Gunduz, D.; Kulkarni, S. R.; Poor, H. V.. - 2020-:(2020), pp. 2598-2603. (Intervento presentato al convegno 2020 IEEE International Symposium on Information Theory, ISIT 2020 tenutosi a usa nel 2020) [10.1109/ISIT44484.2020.9173960].

Update Aware Device Scheduling for Federated Learning at the Wireless Edge

Gunduz D.;
2020

Abstract

We study federated learning (FL) at the wireless edge, where power-limited devices with local datasets train a joint model with the help of a remote parameter server (PS). We assume that the devices are connected to the PS through a bandwidth-limited shared wireless channel. At each iteration of FL, a subset of the devices are scheduled to transmit their local model updates to the PS over orthogonal channel resources. We design novel scheduling policies, that decide on the subset of devices to transmit at each round not only based on their channel conditions, but also on the significance of their local model updates. Numerical results show that the proposed scheduling policy provides a better long-term performance than scheduling policies based only on either of the two metrics individually. We also observe that when the data is independent and identically distributed (i.i.d.) across devices, selecting a single device at each round provides the best performance, while when the data distribution is non-i.i.d., more devices should be scheduled.
2020
2020 IEEE International Symposium on Information Theory, ISIT 2020
usa
2020
2020-
2598
2603
Amiri, M. M.; Gunduz, D.; Kulkarni, S. R.; Poor, H. V.
Update Aware Device Scheduling for Federated Learning at the Wireless Edge / Amiri, M. M.; Gunduz, D.; Kulkarni, S. R.; Poor, H. V.. - 2020-:(2020), pp. 2598-2603. (Intervento presentato al convegno 2020 IEEE International Symposium on Information Theory, ISIT 2020 tenutosi a usa nel 2020) [10.1109/ISIT44484.2020.9173960].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1247353
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