移动设备的分裂神经网络

Y. Ushakov, P. Polezhaev, A. E. Shukhman, M. Ushakova, M. V. Nadezhda
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引用次数: 10

摘要

在某些领域,神经网络正成为解决问题的一种不可替代的方法。识别图像、声音、分类——这些问题需要强大的处理器能力和内存来进行神经网络的学习和操作。现代移动设备具有很好的特性,只执行深度神经网络的初级层,但没有足够的资源来执行整个网络。由于针对移动设备的非移动网络的训练是单独在外部资源上进行的,因此开发了一种具有垂直划分层集和学习数据同步的神经网络分布式操作方法。在某些情况下,所提出的方法允许在移动设备上使用全尺寸深度神经网络,而不会使通信信道和设备资源过载。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Split Neural Networks for Mobile Devices
In some areas neural networks are becoming a non-alternative way of solving problems. Recognizing images, sounds, classification - these problems require serious processor power and memory for neural network learning and operation. Modern mobile devices have quite good characteristics for executing only the primary layers of deep neural networks, but there are not enough resources for entire networks. Since the training of non-mobile networks for mobile devices takes place separately on external resources, a method was developed for the distributed operation of a neural network with vertical partitioning sets of layers with synchronization of learning data. In some cases, the proposed approach allows to use full-sized deep neural networks on mobile device, where they are needed without overloading the communication channel and device resources.
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