Decentralized learning empowers wireless network devices to collaboratively train a machine learning (ML) model relying solely on device-to-device (D2D) communication. It is known that the convergence speed of decentralized optimization algorithms severely depends on the degree of the network connectivity, with denser network topologies leading to shorter convergence time. Consequently, the local connectivity of real world mesh networks, due to the limited communication range of its wireless nodes, undermines the efficiency of decentralized learning protocols, rendering them potentially impracticable. In this work we investigate the role of an unmanned aerial vehicle (UAV), used as flying relay, in facilitating decentralized learning procedures in such challenging conditions. We propose an optimized UAV trajectory, that is defined as a sequence of waypoints that the UAV visits sequentially in order to transfer intelligence across sparsely connected group of users. We then provide a series of experiments highlighting the essential role of UAVs in the context of decentralized learning over mesh networks.
翻译:分散式学习使无线网络设备能够协作培训完全依靠设备对设备(D2D)通信的机器学习模式,众所周知,分散式优化算法的趋同速度严重取决于网络连通程度,而更密集的网络地形导致趋同时间缩短,因此,现实世界网格网络的本地连通由于无线节点的通信范围有限,削弱了分散式学习协议的效率,使之有可能不可行。在这项工作中,我们调查了无人驾驶飞行器(UAV)的作用,该飞行器被用作飞行中继器,用于在这种具有挑战性的条件下促进分散式学习程序。我们建议优化的UAV轨迹,它被定义为一条路径序列,由UAV连续访问,以便在分散式连接的用户群中传递情报。我们随后提供一系列实验,强调无人驾驶飞行器(UAV)在分散式学习于网中的基本作用。