神经DF架构的介绍

L. Vokorokos, N. Ádám
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引用次数: 1

摘要

目前,人工神经网络模型已经在传统计算机上进行了大量的仿真,证明了其解决大范围复杂问题的能力。这些神经模型的真正潜力只有在高度并行架构的发展中才能发挥出来,这些架构旨在优化这些神经模型的密集计算需求。然而,神经网络与数据流图(主要是感知数据驱动下的计算控制)有很强的相似性,数据流架构是神经网络实现的合适平台。本文提出的数据流架构由许多处理元素组成,每个处理元素都可以重新配置以在运行时执行各种神经元的计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An introduction to the Neural DF architecture
Nowadays, artificial neural network models have been largely simulated on conventional computers, proving their ability to solve a large range of complicated problems. The real potential of these neural models will only be available with the development of highly parallel architectures that are designed to optimize the intensive computational requirements of these neural models. However, there exists strong analogy between neural networks and data flow graphs (mainly control of computing in sense data-driven) data flow architectures represents suitable platform for implementation of neural networks. The proposed data flow architecture described in this paper is composed of a number of processing elements that each can be reconfigured to carry out computations of various neurons at run time.
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