用于实现神经网络的高级体系结构分布式系统

M. Copjak, M. Tomásek, J. Hurtuk
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引用次数: 0

摘要

目前,许多行业都在使用基于人工神经网络的管理和决策。然而,神经网络的主要缺点在于其时间和计算复杂度。通过在多个计算节点上共享计算需求,可以消除计算复杂性的问题。本文重点介绍了一个分布式系统的架构设计,旨在解决大型神经网络问题。本文介绍了GPGPU技术,文章的下一部分概述了加速人工神经网络计算和分布的方法。主要部分描述了允许在计算节点上正确分布数据的算法的模型体系结构设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advanced architectures distributed systems for the implementation of neural networks
Many industries nowadays use management and decision making based on artificial neural networks. However, the major drawback of neural networks lies in their time and computational complexity. The problem with computational complexity could be eliminated using sharing of the computing needs on multiple computing nodes. This article focuses on the architectural design of a distributed system, which aims to solve large neural networks. The article describes the technology GPGPU and the next part of the article deals with an overview of methods for speeding up the calculation and distribution of artificial neural network. The main section describes the design of a model architecture description of the algorithm that allows correct data distribution on computational nodes.
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