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Update Aware Device Scheduling for Federated Learning at the Wireless Edge

机译:更新感知设备计划以在无线边缘进行联合学习

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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.
机译:我们在无线边缘研究联合学习(FL),其中具有本地数据集的功率受限设备在远程参数服务器(PS)的帮助下训练联合模型。我们假设设备通过带宽受限的共享无线通道连接到PS。在FL的每次迭代中,设备的子集被调度为通过正交信道资源将其本地模型更新发送到PS。我们设计了新颖的调度策略,该策略不仅根据设备的信道条件,而且还根据其本地模型更新的重要性,决定要在每个回合发送的设备子集。数值结果表明,与仅基于两个指标之一的调度策略相比,所提出的调度策略具有更好的长期性能。我们还观察到,当数据是独立的并且在设备之间均匀地分布(i.i.d.)时,在每个回合中选择一个设备可以提供最佳性能,而当数据分布在非i.i.d.时,应该安排更多的设备。

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