EdgeOL: Efficient in-situ Online Learning on Edge Devices

Li, Sheng, Yuan, Geng, Wu, Yawen, Dai, Yue, Wu, Chao, Jones, Alex K., Hu, Jingtong, Wang, Yanzhi, Tang, Xulong

arXiv.org Artificial Intelligence 

Emerging applications, such as robot-assisted eldercare and object recognition, generally employ deep learning neural networks (DNNs) models and naturally require: i) handling streaming-in inference requests and ii) adapting to possible deployment scenario changes. Online model fine-tuning is widely adopted to satisfy these needs. However, fine-tuning involves significant energy consumption, making it challenging to deploy on edge devices. In this paper, we propose EdgeOL, an edge online learning framework that optimizes inference accuracy, fine-tuning execution time, and energy efficiency through both inter-tuning and intra-tuning optimizations. Experimental results show that, on average, EdgeOL reduces overall fine-tuning execution time by 82%, energy consumption by 74%, and improves average inference accuracy by 1.70% over the immediate online learning strategy.