Bayes-Split-Edge: Bayesian Optimization for Constrained Collaborative Inference in Wireless Edge Systems
Fatemeh Zahra Safaeipour, Jacob Chakareski, Morteza Hashemi

TL;DR
This paper introduces Bayes-Split-Edge, a Bayesian optimization framework for efficient collaborative neural network inference on wireless edge devices, balancing energy, delay, and inference accuracy.
Contribution
It presents a novel hybrid acquisition function and optimization approach for joint power and split point selection in wireless edge inference tasks.
Findings
Achieves up to 2.4x reduction in evaluation cost
Demonstrates near-linear convergence with limited function evaluations
Outperforms baseline optimization methods in constrained inference scenarios
Abstract
Mobile edge devices (e.g., AR/VR headsets) typically need to complete timely inference tasks while operating with limited on-board computing and energy resources. In this paper, we investigate the problem of collaborative inference in wireless edge networks, where energy-constrained edge devices aim to complete inference tasks within given deadlines. These tasks are carried out using neural networks, and the edge device seeks to optimize inference performance under energy and delay constraints. The inference process can be split between the edge device and an edge server, thereby achieving collaborative inference over wireless networks. We formulate an inference utility optimization problem subject to energy and delay constraints, and propose a novel solution called Bayes-Split-Edge, which leverages Bayesian optimization for collaborative split inference over wireless edge networks. Our…
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