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On How to Efficiently Implement Deep Learning Algorithms on PYNQ Platform

机译:关于如何在PYNQ平台上有效实现深度学习算法

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Deep Learning algorithms are gaining momentum as main components in a large number of fields, from computer vision and robotics to finance and biotechnology. At the same time, the use of Field Programmable Gate Arrays (FPGAs) for data-intensive applications is increasingly widespread thanks to the possibility to customize hardware accelerators and achieve high-performance implementations with low energy consumption. Moreover, FPGAs have demonstrated to be a viable alternative to GPUs in embedded systems applications, where the benefits of the reconfigurability properties make the system more robust, capable to face the system failures and to respect the constraints of the embedded devices. In this work, we present a framework to efficiently implement Deep Learning algorithms by exploiting the PYNQ platform, recently released by Xilinx. The case study application is tested on PYNQ-Z1 board, commonly used in embedded system applications.
机译:深度学习算法作为从计算机视觉和机器人技术到金融和生物技术等众多领域的主要组件,正在迅速发展。同时,由于可以定制硬件加速器并以低能耗实现高性能的实现,现场可编程门阵列(FPGA)在数据密集型应用中的使用越来越广泛。而且,在嵌入式系统应用中,FPGA已证明是GPU的可行替代方案,在这种应用中,可重配置属性的优点使系统更加健壮,能够应对系统故障并尊重嵌入式设备的约束。在这项工作中,我们提供了一个框架,可通过Xilinx最近发布的PYNQ平台有效地实现深度学习算法。案例研究应用程序已在通常用于嵌入式系统应用程序的PYNQ-Z1板上进行了测试。

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