Energy-Efficient Edge Learning via Joint Data Deepening-and-Prefetching

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초록

The vision of pervasive artificial intelligence (AI) services can be realized by training an AI model on time using real-time data collected by internet of things (IoT) devices. To this end, IoT devices require offloading their data to an edge server in proximity. However, transmitting high-dimensional and voluminous data from energy-constrained IoT devices poses a significant challenge. To address this limitation, we propose a novel offloading architecture, called joint data deepening-and-prefetching (JD2P), which is feature-by-feature offloading comprising two key techniques. The first one is data deepening, where each data sample's features are sequentially offloaded in the order of importance determined by the data embedding technique such as principle component analysis (PCA). Offloading is terminated once the already transmitted features are sufficient for accurate data classification, resulting in a reduction in the amount of transmitted data. The criteria to offload data are derived for binary and multi-class classifiers, which are designed based on support vector machine (SVM) and deep neural network (DNN), respectively. The second one is data prefetching, where some features potentially required in the future are offloaded in advance, thus achieving high efficiency via precise prediction and parameter optimization. We evaluate the effectiveness of JD2P through experiments using the MNIST dataset, and the results demonstrate its significant reduction in expected energy consumption compared to several benchmarks without degrading learning accuracy.

키워드

Internet of ThingsArtificial intelligenceServersTrainingData modelsEnergy efficiencyComputational modelingEdge learningenergy efficiencyfeature importanceprinciple component analysisdata deepeningdata prefetchingsupport vector machinedeep neural networkWIRELESS DATA-ACQUISITIONRESOURCE-ALLOCATIONCOMMUNICATION-EFFICIENT
제목
Energy-Efficient Edge Learning via Joint Data Deepening-and-Prefetching
저자
Kook, SujinShin, Won-YongKim, Seong-LyunKo, Seung-Woo
DOI
10.1109/TWC.2024.3367352
발행일
2024-08-01
유형
Article
저널명
IEEE Transactions on Wireless Communications
23
8
페이지
9927 ~ 9942