Communication and Computation Efficient Split Federated Learning in O-RAN
Shunxian Gu, Chaoqun You, Bangbang Ren, Deke Guo

TL;DR
This paper introduces SplitMe, a resource-efficient split federated learning framework for O-RAN that reduces communication costs and improves convergence by mutual learning and resource optimization.
Contribution
It proposes a novel SFL framework with mutual learning and inverse models, addressing communication and resource allocation challenges in O-RAN.
Findings
SplitMe outperforms existing FL frameworks in costs and convergence.
Mutual learning reduces frequent data transfers.
Resource-aware optimization enhances deadline satisfaction.
Abstract
The hierarchical architecture of Open Radio Access Network (O-RAN) has enabled a new Federated Learning (FL) paradigm that trains models using data from non- and near-real-time (near-RT) Radio Intelligent Controllers (RICs). However, the ever-increasing model size leads to longer training time, jeopardizing the deadline requirements for both non-RT and near-RT RICs. To address this issue, split federated learning (SFL) offers an approach by offloading partial model layers from near-RT-RIC to high-performance non-RT-RIC. Nonetheless, its deployment presents two challenges: (i) Frequent data/gradient transfers between near-RT-RIC and non-RT-RIC in SFL incur significant communication cost in O-RAN. (ii) Proper allocation of computational and communication resources in O-RAN is vital to satisfying the deadline and affects SFL convergence. Therefore, we propose SplitMe, an SFL framework that…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Domain Adaptation and Few-Shot Learning · Advanced Data and IoT Technologies
