DUET: A Tuning-Free Device-Cloud Collaborative Parameters Generation Framework for Efficient Device Model Generalization
Zheqi Lv, Wenqiao Zhang, Shengyu Zhang, Kun Kuang, Feng Wang, Yongwei, Wang, Zhengyu Chen, Tao Shen, Hongxia Yang, Beng Chin Ooi, Fei Wu

TL;DR
This paper introduces DUET, a tuning-free device-cloud framework that generates device-specific model parameters efficiently, enhancing model generalization on resource-limited devices without the need for costly fine-tuning.
Contribution
The paper proposes a novel device-cloud collaborative parameter generation framework that eliminates the need for on-device fine-tuning, reducing computational costs and improving generalization.
Findings
DUET achieves faster device model adaptation.
It improves generalization accuracy across datasets.
The framework is effective and generalizable for DMG tasks.
Abstract
Device Model Generalization (DMG) is a practical yet under-investigated research topic for on-device machine learning applications. It aims to improve the generalization ability of pre-trained models when deployed on resource-constrained devices, such as improving the performance of pre-trained cloud models on smart mobiles. While quite a lot of works have investigated the data distribution shift across clouds and devices, most of them focus on model fine-tuning on personalized data for individual devices to facilitate DMG. Despite their promising, these approaches require on-device re-training, which is practically infeasible due to the overfitting problem and high time delay when performing gradient calculation on real-time data. In this paper, we argue that the computational cost brought by fine-tuning can be rather unnecessary. We consequently present a novel perspective to…
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Taxonomy
TopicsIoT and Edge/Fog Computing · Green IT and Sustainability · Context-Aware Activity Recognition Systems
