An Architecture for the Acceleration of a Hybrid Leaky Integrate and Fire SNN on the Convey HC-2ex FPGA-Based Processor

Emmanouil Kousanakis, A. Dollas, E. Sotiriades, I. Papaefstathiou, D. Pnevmatikatos, Athanasia Papoutsi, P. Petrantonakis, Panayiota Poirazi, Spyridon Chavlis, George Kastellakis
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引用次数: 4

Abstract

Neuromorphic computing is expanding by leaps and bounds through custom integrated circuits (digital and analog), and large scale platforms developed by industry or government-funded projects (e.g. TrueNorth and BrainScaleS, respectively). Whereas the trend is for massive parallelism and neuromorphic computation in order to solve problems, such as those that may appear in machine learning and deep learning algorithms, there is substantial work on brain-like highly accurate neuromorphic computing in order to model the human brain. In such a form of computing, spiking neural networks (SNN) such as the Hodgkin and Huxley model are mapped to various technologies, including FPGAs. In this work, we present a highly efficient FPGA-based architecture for the detailed hybrid Leaky Integrate and Fire SNN that can simulate generic characteristics of neurons of the cerebral cortex. This architecture supports arbitrary, sparse O(n2) interconnection of neurons without need to re-compile the design, and plasticity rules, yielding on a four-FPGA Convey 2ex hybrid computer a speedup of 923x for a non-trivial data set on 240 neurons vs. the same model in the software simulator BRAIN on a Intel(R) Xeon(R) CPU E5-2620 v2 @ 2.10GHz, i.e. the reference state-of-the-art software. Although the reference, official software is single core, the speedup demonstrates that the application scales well among multiple FPGAs, whereas this would not be the case in general-purpose computers due to the arbitrary interconnect requirements. The FPGA-based approach leads to highly detailed models of parts of the human brain up to a few hundred neurons vs. a dozen or fewer neurons on the reference system.
基于HC-2ex fpga处理器的泄漏集成与火灾SNN混合加速体系结构
通过定制集成电路(数字和模拟)以及工业或政府资助项目(分别如TrueNorth和BrainScaleS)开发的大规模平台,神经形态计算正在突飞猛进地发展。为了解决机器学习和深度学习算法中可能出现的问题,目前的趋势是大规模并行化和神经形态计算,而为了模拟人类大脑,在类脑高精度神经形态计算方面也有大量的工作。在这种形式的计算中,峰值神经网络(SNN),如霍奇金和赫胥黎模型,被映射到各种技术上,包括fpga。在这项工作中,我们提出了一种高效的基于fpga的结构,用于详细混合的Leaky Integrate和Fire SNN,可以模拟大脑皮层神经元的一般特征。该架构支持任意的、稀疏的O(n2)神经元互连,而无需重新编译设计和可塑性规则,在一个四fpga的混合计算机上,对于240个神经元的非简单数据集,与在Intel(R) Xeon(R) CPU E5-2620 v2 @ 2.10GHz的软件模拟器BRAIN中的相同模型相比,加速速度为923倍。虽然官方的参考软件是单核的,但加速表明应用程序在多个fpga之间可以很好地扩展,而在通用计算机中,由于任意的互连要求,情况并非如此。基于fpga的方法可以建立人脑部分的高度详细的模型,最多可以有几百个神经元,而参考系统只有12个或更少的神经元。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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