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Massive memory organizations for implementing neural networks

机译:大型记忆组织,用于实现神经网络

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A single-input multiple-data architecture which has n processing elements and n/sup 2/ memory modules arranged in an n*n array is presented. This massive memory is used to store the weights of the neural network being simulated. It is shown how networks with sparse connectivity among neurons can be simulated in O( square root n+e) time. where n is the number of neurons and e the number of interconnections in the network. Preprocessing is carried out on the connection matrix of the sparse network resulting in data movement that has an optimal asymptotic time complexity and a small constant factor.
机译:提出了一种单输入多数据架构,该架构具有n个处理元素和以n * n阵列排列的n / sup 2 /存储模块。该海量内存用于存储要模拟的神经网络的权重。它显示了如何在O(平方根n + e)时间内模拟神经元之间具有稀疏连接的网络。其中,n是神经元的数量,e是网络中的互连的数量。在稀疏网络的连接矩阵上执行预处理,导致数据移动,该移动具有最佳的渐近时间复杂度和较小的恒定因子。

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