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A VLSI ARRAY ARCHITECTURE FOR ARTIFICIAL NEURAL NETWORKS

机译:人工神经网络的VLSI阵列架构

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A highly parallel array architecture for ANN algorithms is presented and evaluated. The array, consisting of PEs interconnected as a 2D-grid, executes instructions according to the SIMD (Single Instruction Multiple Data) parallel computing model. The architecture is scalable, both in terms of problem size and when porting it to future down-scaled CMOS processes. As typical ANN examples, the feed-forward net with back-propagation training, and the Kohonen Self Organizing Feature Map are used. Performance metrics such as Connec-tion-Updates-Per-Second (CUPS) and Connections-Per-Sec-ond (CPS) are derived based on test implementations. A VLSI test chip design is presented in order to show the feasibility of implementing the architecture.
机译:提出并评估了用于ANN算法的高度并行阵列架构。该阵列由以2D网格互连的PE组成,根据SIMD(单指令多数据)并行计算模型执行指令。无论是在问题大小上,还是在将其移植到未来的缩小版CMOS工艺上时,该架构都是可扩展的。作为典型的ANN示例,使用具有反向传播训练的前馈网络和Kohonen自组织特征图。每秒的连接更新(CUPS)和每秒的连接数(CPS)等性能指标都是基于测试实现而得出的。为了说明实现该架构的可行性,提出了VLSI测试芯片设计。

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