Communication-Efficient Topology Orchestration for Distributed Learning in UAV Networks
Ref: CISTER-TR-240401 Publication Date: 27 to 31, May, 2024
Communication-Efficient Topology Orchestration for Distributed Learning in UAV Networks
Ref: CISTER-TR-240401 Publication Date: 27 to 31, May, 2024Abstract:
Distributed learning is a promising paradigm for future UAV (unmanned aerial vehicle) networks networks and other emerging autonomous unmanned systems. Such distributed learning framework can suit the intrisic decentralized topology of UAV networks, where the UAVs can collaborate to train a global AI model by only exchanging the model parmeters via its peer-to-peer (i.e, inter-UAV) links in a distributed manner. However, with the ever-increasing AI model sizes, the challenges arise from the significant communication overhead for exchanging massive model weights via inter-UAV links in an ad-hoc manner. Previous communication-efficient techniques are mainly designed for conventional federated learning and not easily extendable to the decentralized counterpart. We propose selective link orchestration to minimize communication overhead while ensuring convergence of distributed learning, and prove that the convergence constraint is equivalent to the connectivity of the selected sub-graph. As such, we can reformulate the problem as a link selection problem in graph theory and develop a distributed optimization algorithm based on the modification of the Gallager, Humblet, and Spira’s algorithm. Experimental results on MNIST, Fashion-MNIST, and CIFAR-10 datasets demonstrate up to a 90% reduction in communication overhead without compromising model accuracy.
The 20th International Wireless Communications & Mobile Computing Conference (IWCMC 2024) (IWCMC), AI for Autonomous Unmanned Systems Symposium (AAUSS).
Ayia Napa, Cyprus.
Record Date: 2, Apr, 2024









Zixuan Liang
Kai Li