移动边缘计算中的认知服务

Chuntao Ding, Ao Zhou, Xiao Ma, Shangguang Wang
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引用次数: 7

摘要

认知服务已经彻底改变了我们生活、工作和与世界互动的方式。近年来,深度神经网络已经成为认知服务的主流方法,移动边缘计算通过将计算任务从资源有限的移动设备卸载到相对丰富的边缘服务器上,为用户提供各种认知服务。将两者结合起来,为用户提供更高质量的认知服务是一个值得研究的问题。然而,许多相关研究并不容易提供快速响应,因为在这些系统中,边缘服务器仅用于预处理数据,而云服务器用于执行任务。本文旨在研究在边缘服务器上部署深度神经网络模型以提供快速服务。但是,单个边缘服务器只收集少量数据,导致推理精度较低。为了解决这个问题,我们提出了一个云和边缘协作框架。该框架的核心思想是利用云模型辅助边缘模型的训练,提高边缘模型的推理精度,使边缘模型能够提供快速响应和高性能的认知服务。实验结果证明了该框架的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cognitive Service in Mobile Edge Computing
Cognitive services have revolutionized the way we live, work and interact with the world. In recent years, deep neural networks have become the mainstream approach in cognitive service, and mobile edge computing facilitates a variety of cognitive services for users by offloading computation tasks from resource-limited mobile devices to relatively wealthy edge servers. Combining the two to provide users with a higher quality of cognitive service is an issue worth researching. However, many related studies are not easy to provide fast responses because in these systems, edge servers are only used to pre-process data, and the cloud server is used to perform tasks. In this paper, we aim to study deploying deep neural network models on edge servers to provide fast services. However, a single edge server collects only a small amount of data, which results in low inference accuracy. To address this problem, we propose a cloud and edge collaboration framework. The key idea of the proposed framework is to use a cloud model to assist in training an edge model to improve the latter's inference accuracy and enable the latter to provide fast response and high-performance cognitive service. Experimental results demonstrate the effectiveness of our proposed framework.
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