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Evaluating Embedded FPGA Accelerators for Deep Learning Applications

机译:评估用于深度学习应用的嵌入式FPGA加速器

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摘要

FPGA-based embedded soft vector processors can exceed the performance and energy-efficiency of embedded GPUs and DSPs for lightweight deep learning applications. For low complexity deep neural networks targeting resource constrained platforms, we develop optimized Caffe-compatible deep learning library routines that target a range of embedded accelerator-based systems between 4 -- 8 W power budgets such as the Xilinx Zedboard (with MXP soft vector processor), NVIDIA Jetson TK1 (GPU), InForce 6410 (DSP), TI EVM5432 (DSP) as well as the Adapteva Parallella board (custom multi-core with NoC). For MNIST (28×28 images) and CIFAR10 (32×32 images), the deep layer structure is amenable to MXP-enhanced FPGA mappings to deliver 1.4 -- 5× higher energy efficiency than all other platforms. Not surprisingly, embedded GPU works better for complex networks with large image resolutions.
机译:基于FPGA的嵌入式软矢量处理器可以超过嵌入式GPU和DSP在轻型深度学习应用中的性能和能效。对于针对资源受限平台的低复杂度深度神经网络,我们开发了优化的Caffe兼容深度学习库例程,这些例程针对的是在4-8 W功率预算之间的一系列嵌入式加速器系统,例如Xilinx Zedboard(带有MXP软矢量处理器) ),NVIDIA Jetson TK1(GPU),InForce 6410(DSP),TI EVM5432(DSP)以及Adapteva Parallella板(带有NoC的定制多核)。对于MNIST(28×28图像)和CIFAR10(32×32图像),深层结构适合MXP增强的FPGA映射,比所有其他平台提供1.4至5倍的能源效率。毫不奇怪,嵌入式GPU可以更好地用于具有大图像分辨率的复杂网络。

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