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Mapping of neural network models onto massively parallel hierarchical computer systems

机译:神经网络模型将神经网络模型映射到大规模平行分层计算机系统

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Investigates the proposed implementation of neural networks on massively parallel hierarchical computer systems with hypernet topology. The proposed mapping scheme takes advantage of the inherent structure of hypernets to process multiple copies of the neural network in the different subnets, each executing a portion of the training set. Finally, the weight changes in all the subnets are accumulated to adjust the synaptic weights in all the copies. An expression is derived to estimate the time for all-to-all broadcasting, the principal mode of communication in implementing neural networks on parallel computers. This is later used to estimate the time required to execute various execution phases in the neural network algorithm, and thus to estimate the speedup performance of the hypernet in implementing neural networks.
机译:调查具有HyperNet拓扑的大型平行分层计算机系统上的神经网络的建议实施。所提出的映射方案利用HIDIDET的固有结构来处理不同子网中的神经网络的多个副本,每个训练集的一部分执行一部分。最后,累积所有子网中的权重变化以调整所有副本中的突触权重。导出表达式以估计全面广播的时间,在并行计算机上实现神经网络中的主要通信模式。这后来用于估计在神经网络算法中执行各种执行阶段所需的时间,从而估计超空网络的超速性能。

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