Biologically-inspired massively-parallel computing

S. Furber
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Abstract

Half a century of progress in computer technology has delivered machines of formidable capability and an expectation that similar advances will continue into the foreseeable future. However, much of the past progress has been driven by developments in semiconductor technology following Moore's Law, and there are strong grounds for believing that these cannot continue at the same rate. This, and related issues, suggest that there are huge challenges ahead in meeting the expectations of future progress, such as understanding how to exploit massive parallelism and how to deliver improvements in energy efficiency and reliability in the face of diminishing component reliability. Alongside these issues, recent advances in machine learning have created a demand for machines with cognitive capabilities, for example, to control autonomous vehicles, that we will struggle to deliver. Biological systems have, through evolution, found solutions to many of these problems, but we lack a fundamental understanding of how these solutions function. If we could advance our understanding of biological systems, we would open a rich source of ideas for unblocking progress in our engineered systems. An overview is given of SpiNNaker - a spiking neural network architecture. The SpiNNaker machine puts these principles together in the form of a massively parallel computer architecture designed both to model the biological brain, in order to accelerate our understanding of its principles of operation, and also to explore engineering applications of such machines.
受生物启发的大规模并行计算
半个世纪以来,计算机技术的进步已经带来了能力惊人的机器,人们预计,在可预见的未来,类似的进步将继续下去。然而,过去的大部分进步都是由遵循摩尔定律的半导体技术的发展所推动的,有充分的理由相信,这些进步不会以同样的速度继续下去。这和相关的问题表明,在满足未来发展的期望方面存在巨大的挑战,例如了解如何利用大规模并行性,以及如何在面临组件可靠性降低的情况下提高能源效率和可靠性。除了这些问题之外,机器学习的最新进展也创造了对具有认知能力的机器的需求,例如,控制自动驾驶汽车,这是我们很难实现的。通过进化,生物系统已经找到了许多这些问题的解决方案,但我们对这些解决方案如何发挥作用缺乏基本的了解。如果我们能够增进对生物系统的理解,我们将为我们的工程系统打开一个丰富的思想来源。概述了SpiNNaker——一种脉冲神经网络结构。SpiNNaker机器将这些原理以大规模并行计算机架构的形式整合在一起,旨在模拟生物大脑,以加速我们对其运作原理的理解,并探索此类机器的工程应用。
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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