Hans Johnson, Tianyang Fang, Alejandro Perez-Vicente, J. Saniie
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引用次数: 0

摘要

我们提出了一种基于低功耗嵌入式fpga的分布式系统,该系统专为边缘计算应用而设计,专注于探索深度学习(DL)工作负载的分布式调度优化,以获得有关延迟和功耗效率的最佳性能。这种适应性强的分布式架构的特点是能够在多种配置中评估和管理神经网络工作负载,使用户能够根据其特定的应用需求进行多个实验。该系统可以同时执行不同的神经网络模型,将计算图排列成管道结构,并手动将更多的资源分配给计算最密集的神经网络图层。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reconfigurable Distributed FPGA Cluster Design for Deep Learning Accelerators
We propose a distributed system based on low-power embedded FPGAs designed for edge computing applications focused on exploring distributing scheduling optimizations for Deep Learning (DL) workloads to obtain the best performance regarding latency and power efficiency. Our cluster was modular throughout the experiment, and we have implementations that consist of up to 12 Zynq-7020 chip-based boards as well as 5 UltraScale+ MPSoC FPGA boards connected through an ethernet switch, and the cluster will evaluate configurable Deep Learning Accelerator (DLA) Versatile Tensor Accelerator (VTA). This adaptable distributed architecture is distinguished by its capacity to evaluate and manage neural network workloads in numerous configurations which enables users to conduct multiple experiments tailored to their specific application needs. The proposed system can simultaneously execute diverse Neural Network (NN) models, arrange the computation graph in a pipeline structure, and manually allocate greater resources to the most computationally intensive layers of the NN graph.
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