Rethinking Resource Management in Edge Learning: A Joint Pre-training and Fine-tuning Design Paradigm
Zhonghao Lyu, Yuchen Li, Guangxu Zhu, Jie Xu, H. Vincent Poor,, Shuguang Cui

TL;DR
This paper proposes a joint resource management framework for two-stage edge learning that unifies pre-training and fine-tuning, optimizing system performance trade-offs among accuracy, delay, and energy consumption.
Contribution
It introduces a convergence analysis for the two-stage learning model and develops a resource management scheme that balances multiple system constraints and performance metrics.
Findings
Joint resource management improves training efficiency.
Optimized parameters reduce energy consumption and delay.
Effective leverage of pre-training and fine-tuning trade-offs.
Abstract
In some applications, edge learning is experiencing a shift in focusing from conventional learning from scratch to new two-stage learning unifying pre-training and task-specific fine-tuning. This paper considers the problem of joint communication and computation resource management in a two-stage edge learning system. In this system, model pre-training is first conducted at an edge server via centralized learning on local pre-stored general data, and then task-specific fine-tuning is performed at edge devices based on the pre-trained model via federated edge learning. For the two-stage learning model, we first analyze the convergence behavior (in terms of the average squared gradient norm bound), which characterizes the impacts of various system parameters such as the number of learning rounds and batch sizes in the two stages on the convergence rate. Based on our analytical results, we…
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Taxonomy
TopicsOnline Learning and Analytics
