计算机科学
云计算
分布式计算
推论
架空(工程)
边缘计算
边缘设备
GSM演进的增强数据速率
深度学习
资源(消歧)
端到端原则
人工智能
建筑
移动设备
计算机网络
操作系统
艺术
视觉艺术
作者
Zhengyi Zhong,Weidong Bao,Ji Wang,Xiaomin Zhu,Xiongtao Zhang
摘要
With the development of smart devices, the computing capabilities of portable end devices such as mobile phones have been greatly enhanced. Meanwhile, traditional cloud computing faces great challenges caused by privacy-leakage and time-delay problems, there is a trend to push models down to edges and end devices. However, due to the limitation of computing resource, it is difficult for end devices to complete complex computing tasks alone. Therefore, this article divides the model into two parts and deploys them on multiple end devices and edges, respectively. Meanwhile, an early exit is set to reduce computing resource overhead, forming a hierarchical distributed architecture. In order to enable the distributed model to continuously evolve by using new data generated by end devices, we comprehensively consider various data distributions on end devices and edges, proposing a hierarchical federated learning framework FLEE , which can realize dynamical updates of models without redeploying them. Through image and sentence classification experiments, we verify that it can improve model performances under all kinds of data distributions, and prove that compared with other frameworks, the models trained by FLEE consume less global computing resource in the inference stage.
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