Task-Oriented Over-the-Air Computation for Multi-Device Edge AI
Dingzhu Wen, Xiang Jiao, Peixi Liu, Guangxu Zhu, Yuanming Shi, and, Kaibin Huang

TL;DR
This paper introduces a task-oriented over-the-air computation scheme for multi-device edge AI that optimizes feature aggregation to improve inference accuracy in 6G networks.
Contribution
It proposes a novel AirComp design that directly maximizes discriminant gain, enhancing inference accuracy over traditional MSE-based methods.
Findings
Conventional AirComp beamforming may not optimize classification accuracy.
The proposed scheme improves object classification performance.
Feature importance varies and is considered in the new design.
Abstract
Departing from the classic paradigm of data-centric designs, the 6G networks for supporting edge AI features task-oriented techniques that focus on effective and efficient execution of AI task. Targeting end-to-end system performance, such techniques are sophisticated as they aim to seamlessly integrate sensing (data acquisition), communication (data transmission), and computation (data processing). Aligned with the paradigm shift, a task-oriented over-the-air computation (AirComp) scheme is proposed in this paper for multi-device split-inference system. In the considered system, local feature vectors, which are extracted from the real-time noisy sensory data on devices, are aggregated over-the-air by exploiting the waveform superposition in a multiuser channel. Then the aggregated features as received at a server are fed into an inference model with the result used for decision making…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Energy Harvesting in Wireless Networks · Advanced Memory and Neural Computing
