基于Neural DF KPI架构的MLP网络算法映射

L. Vokorokos, N. Ádám, J. Trelová
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引用次数: 1

摘要

随着人工神经网络对实时信息获取的重视,其在应用领域的应用越来越广泛。虽然有各种各样的神经网络实现可用于顺序计算机系统,但在大型网络的情况下,许多这些模型需要大量的时间用于神经网络的训练阶段。因此,为了减少网络训练的时间,人们提出了新的节省时间的概念,包括对原始模型和学习算法的修改以及这些模型在并行计算机系统上的实现。传统的基本神经算法使得在现有的并行硬件上实现神经网络变得更加困难。因此,在科希策工业大学计算机与信息系进行的VEGA 1/1064/04项目框架中,以大规模并行系统神经DF KPI上具有反向传播学习(FFBP)的多层前馈神经网络的算法映射形式寻找有效网络并行化的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Algorithmic mapping of MLP network on Neural DF KPI architecture
Artificial neural networks gain increasingly higher popularity in application fields with stress laid on acquiring information in real-time. Although there are various implementations of neural networks available for sequential computer systems, lots of these models require an enormous amount of time for the training phase of neural network in case of large network. Therefore the new time saving concepts were developed especially for time reduction of network training thus including modification of original models and learning algorithms as well as implementation of these models on parallel computer system. Conventional formulation of fundamental neural algorithms make implementation of neural networks on existing parallel hardware more difficult, therefore a solution for effective network parallelisation in the form of algorithmic mapping of multilayer feedforward neural network with backpropagation learning (FFBP) on massively parallel system neural DF KPI was searched in the framework of VEGA 1/1064/04 project performed on Department of Computers and Informatics at Technical University of Kosice.
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