ITLGSPJul 29, 2019

Energy-Efficient Processing and Robust Wireless Cooperative Transmission for Edge Inference

arXiv:1907.12475v252 citations
Originality Incremental advance
AI Analysis

This work addresses energy efficiency and reliability for edge AI services, which is an incremental improvement in optimizing resource-constrained mobile and edge computing systems.

The paper tackles the problem of minimizing energy consumption for edge inference under uncertain wireless channels by jointly optimizing task allocation and beamforming, and demonstrates that the proposed approach outperforms existing state-of-the-art methods in numerical results.

Edge machine learning can deliver low-latency and private artificial intelligent (AI) services for mobile devices by leveraging computation and storage resources at the network edge. This paper presents an energy-efficient edge processing framework to execute deep learning inference tasks at the edge computing nodes whose wireless connections to mobile devices are prone to channel uncertainties. Aimed at minimizing the sum of computation and transmission power consumption with probabilistic quality-of-service (QoS) constraints, we formulate a joint inference tasking and downlink beamforming problem that is characterized by a group sparse objective function. We provide a statistical learning based robust optimization approach to approximate the highly intractable probabilistic-QoS constraints by nonconvex quadratic constraints, which are further reformulated as matrix inequalities with a rank-one constraint via matrix lifting. We design a reweighted power minimization approach by iteratively reweighted $\ell_1$ minimization with difference-of-convex-functions (DC) regularization and updating weights, where the reweighted approach is adopted for enhancing group sparsity whereas the DC regularization is designed for inducing rank-one solutions. Numerical results demonstrate that the proposed approach outperforms other state-of-the-art approaches.

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