拳头:交错脉冲神经网络在CGRAs上的框架

Tuan Ngyen, Syed M. A. H. Jafri, M. Daneshtalab, A. Hemani, Sergei Dytckov, J. Plosila, H. Tenhunen
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引用次数: 5

摘要

粗粒度可重构架构(CGRAs)正在成为满足现代嵌入式应用对高性能要求的支持平台。在许多应用领域(例如机器人和认知嵌入式系统)中,需要CGRAs同时主持处理(例如音频/视频采集)和估计(例如音频/视频/图像识别)任务。最近的研究表明,使用神经网络可以显著提高估计算法的效率和可扩展性。然而,现有的CGRAs通常为这两个任务使用同构处理资源。为了实现两者的最佳(传统处理和神经网络),我们提出了FIST。FIST允许处理元素和网络根据托管的应用程序动态地转换为传统的CGRA或神经网络。我们选择DRRA作为工具来研究我们方法的可行性和管理费用。合成结果表明,与原始DRRA电池相比,所提出的增强带来的开销可以忽略不计(4.4%的面积和9.1%的功率)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FIST: A Framework to Interleave Spiking Neural Networks on CGRAs
Coarse Grained Reconfigurable Architectures (CGRAs) are emerging as enabling platforms to meet the high performance demanded by modern embedded applications. In many application domains (e.g. robotics and cognitive embedded systems), the CGRAs are required to simultaneously host processing (e.g. Audio/video acquisition) and estimation (e.g. audio/video/image recognition) tasks. Recent works have revealed that the efficiency and scalability of the estimation algorithms can be significantly improved by using neural networks. However, existing CGRAs commonly employ homogeneous processing resources for both the tasks. To realize the best of both the worlds (conventional processing and neural networks), we present FIST. FIST allows the processing elements and the network to dynamically morph into either conventional CGRA or a neural network, depending on the hosted application. We have chosen the DRRA as a vehicle to study the feasibility and overheads of our approach. Synthesis results reveal that the proposed enhancements incur negligible overheads (4.4% area and 9.1% power) compared to the original DRRA cell.
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