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Highly Efficient Neuromorphic Computing Systems with Emerging Nonvolatile Memories

机译:新兴的非易失性存储器的高效神经形态计算系统

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Increased interest in artificial intelligence coupled with a surge in nonvolatile memory research and the inevitable hitting of the "memory wall" in von Neuman computing has set the stage for a new flavor of computing systems to flourish: neuromorphic computing systems. These systems are modelled after the brain in hopes of achieving a comparable level of efficiency in terms of speed, power, performance, and size. As it becomes more apparent that digital implementations of neuromorphic systems are far from approaching the brain's level of efficiency, we look to nonvolatile memories for answers. In this paper, we will build up highly-efficient neuromorphic systems by first describing the nonvolatile memory technologies that make them work, exploring methodologies for overcoming statistical device faults, and examining several successful neuromorphic architectures.
机译:对人工智能的兴趣增加,加上非易失性存储器研究的兴起以及冯·诺伊曼计算中不可避免的“内存墙”的出现,为新型的计算机系统蓬勃发展奠定了基础:神经形态计算系统。这些系统是按照大脑建模的,希望在速度,功率,性能和尺寸方面达到可比的效率水平。随着越来越明显的是,神经形态系统的数字实现远没有达到大脑的效率水平,我们期待非易失性存储器来寻找答案。在本文中,我们将通过首先描述使它们起作用的非易失性存储技术,探索克服统计设备故障的方法,并研究几种成功的神经形态架构,来构建高效的神经形态系统。

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