Massively parallel architecture: application to neural net emulation and image reconstruction

D. Lattard, B. Faure, G. Mazaré
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引用次数: 3

Abstract

The authors present two applications of a specific cellular architecture: emulation of the recall and learning for feedforward neural networks and parallel image reconstruction. This architecture is based on a bidimensional array of asynchronous processing elements, the cells, which can communicate between themselves by message transfers. Each cell includes a rotating routing part ensuring the message transportation through the array and a processing part dedicated to a particular application. The specificity of the processing part demands that it be redesigned for each application but leads to very fast computing and low complexity. This architecture can process algorithms not regular enough for SIMD machines. The cellular architecture is described, the feedforward neural network accelerator is introduced, the learning is discussed, and some time performances, evaluated by computer simulation, are given. The image reconstruction problem, its parallelization, some results of both functional and behavioral simulations, the realization of the circuit, and some test results are presented.<>
大规模并行架构:在神经网络仿真和图像重建中的应用
作者提出了一种特定细胞结构的两种应用:前馈神经网络的回忆和学习仿真以及并行图像重建。该体系结构基于异步处理元素(单元)的二维数组,单元之间可以通过消息传输进行通信。每个单元包括确保消息通过阵列传输的旋转路由部分和专用于特定应用程序的处理部分。处理部分的特殊性要求为每个应用程序重新设计,但导致非常快速的计算和低复杂性。这种体系结构可以处理对于SIMD机器来说不够规则的算法。描述了细胞结构,引入了前馈神经网络加速器,讨论了学习问题,并给出了一些时间性能,并用计算机仿真对其进行了评价。给出了图像重构问题及其并行化、一些功能和行为的仿真结果、电路的实现和一些测试结果。
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