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Power-efficient combinatorial optimization using intrinsic noise in memristor Hopfield neural networks

机译:忆阻座Hopfield神经网络中的内在噪声的高效组合优化

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To tackle important combinatorial optimization problems, a variety of annealing-inspired computing accelerators, based on several different technology platforms, have been proposed, including quantum-, optical- and electronics-based approaches. However, to be of use in industrial applications, further improvements in speed and energy efficiency are necessary. Here, we report a memristor-based annealing system that uses an energy-efficient neuromorphic architecture based on a Hopfield neural network. Our analogue–digital computing approach creates an optimization solver in which massively parallel operations are performed in a dense crossbar array that can inject the needed computational noise through the analogue array and device errors, amplified or dampened by using a novel feedback algorithm. We experimentally show that the approach can solve non-deterministic polynomial-time (NP)-hard max-cut problems by harnessing the intrinsic hardware noise. We also use experimentally grounded simulations to explore scalability with problem size, which suggest that our memristor-based approach can offer a solution throughput over four orders of magnitude higher per power consumption relative to current quantum, optical and fully digital approaches.
机译:为了解决重要的组合优化问题,已经提出了基于几种不同的技术平台的各种退火启发的计算加速器,包括量子,光学和基于电子的方法。然而,在工业应用中使用,需要进一步提高速度和能量效率。在这里,我们报告了一种基于映射器的退火系统,其使用基于Hopfield神经网络的能量有效的神经形状架构。我们的模拟数字计算方法创建优化求解器,其中在致密的横杆阵列中执行大规模并行操作,该串联可以通过模拟阵列和设备错误来注入所需的计算噪声,通过使用新的反馈算法放大或抑制。我们通过利用内在硬件噪声来确定该方法可以解决非确定性多项式 - 时间(NP) - 尽可能地切割问题。我们还使用实验接地的模拟来探讨具有问题大小的可扩展性,这表明我们的忆阻器的方法可以提供相对于电流量子,光学和全数字方法的每个功耗更高的四个数量级的解决方案吞吐量。

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