基于收缩阵列的参数化计算模块生成器

V. V. Zunin, I. Romanova
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引用次数: 2

摘要

本文探讨了在训练或执行神经网络中使用收缩数组进行数据处理。研制了两种收缩阵列,并对消耗资源(ALM)和结果计算时间进行了比较。用输入矩阵的两个可变参数:第一个矩阵的行数和第二个矩阵的列数进行比较。结果表明,(根据可用资源)计算结果的方法之一可用于合成收缩数组模块:1)生成给定大小的收缩数组,并将其中第一个不超过数组大小的矩阵相乘;2)合成一个有限大小的收缩数组,并使用“分治”算法对两个矩阵进行乘法运算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parameterized Computing Module Generator Based on a Systolic Array
In this paper, the use of systolic arrays for data processing in the training or executing neural networks is explored. Two types of systolic arrays were developed, and a comparison on spending resources (ALM) and result calculation time was made. The comparison was conducted with two variable parameters of the input matrices: the number of rows of the first matrix and the number of columns of the second matrix. It is shown that (depending on the available resources) one of the methods for calculating the result can be used to synthesize the systolic array module: 1) to generate a systolic array of a given size and multiply matrices in which the first of them does not exceed the array size; 2) to synthesize a systolic array of a limited size and perform the multiplication of two matrices using the “Divide-and-Conquer” algorithm.
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