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PSoC-Based Real-Time Data Acquisition for a Scalable Spiking Neural Network Hardware Architecture

机译:基于PSoC的实时数据采集,可扩展尖峰神经网络硬件架构

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Data acquisition for monitoring the spiky activity of large-scale SNN hardware architectures are a challenge due to their time constraints, complexity, large logic size, and so on. This paper presents a versatile PSoC-Based Data Acquisition prototype, where a specialized Master Device is used for this purpose. It benefits from the heterogeneous nature of SoC platforms that allows it to host programmable logic together with a hard-core ARM processor integrating memory and a variety of peripherals in a single chip. The presented design enables monitoring the performance of a multi-chip neural network through a single Ethernet interface in a hardware and software co-design, which is combined with an application developed in Python that allows the visualization on the PC of a dynamic raster plot of neural activity. In addition, an example of full platform functionality is shown.
机译:用于监测大规模SNN硬件架构的尖峰活动的数据采集是由于它们的时间限制,复杂性,大逻辑大小等挑战。本文提出了一种基于多功能的PSoC数据采集原型,其中专用主设备用于此目的。它来自SOC平台的异构性质,它允许它与硬核臂处理器集成内存和单个芯片中的各种外围设备一起举办可编程逻辑。所呈现的设计可以通过硬件和软件共同设计中的单个以太网接口监控多芯片神经网络的性能,这些接口与Python中开发的应用程序相结合,允许在动态栅格图的PC上进行可视化神经活动。此外,还示出了完整平台功能的示例。

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