Neuromorphic computers perform computations by emulating the human brain, and use extremely low power. They are expected to be indispensable for energy-efficient computing in the future. While they are primarily used in spiking neural network-based machine learning applications, neuromorphic computers are known to be Turing-complete, and thus, capable of general-purpose computation. However, to fully realize their potential for general-purpose, energy-efficient computing, it is important to devise efficient mechanisms for encoding numbers. Current encoding approaches have limited applicability and may not be suitable for general-purpose computation. In this paper, we present the virtual neuron as an encoding mechanism for integers and rational numbers. We evaluate the performance of the virtual neuron on physical and simulated neuromorphic hardware and show that it can perform an addition operation using 23 nJ of energy on average using a mixed-signal memristor-based neuromorphic processor. We also demonstrate its utility by using it in some of the mu-recursive functions, which are the building blocks of general-purpose computation.
翻译:神经畸形计算机通过模拟人的大脑来进行计算,并且使用极低的电能。 在未来,它们对于节能计算来说是不可或缺的。 虽然它们主要用于喷射神经网络的机器学习应用,但神经畸形计算机已知是图灵式的,因此能够进行通用计算。 但是,为了充分发挥其通用、节能计算的潜力,必须设计编码数字的高效机制。 目前编码方法的适用性有限,可能不适合通用计算。 在本文中,我们将虚拟神经元作为整数和合理数字的编码机制。 我们评估了虚拟神经神经元在物理和模拟神经形态硬件上的性能,并表明它可以使用以混合信号光学为基础的神经形态处理器进行平均23nJ的附加操作。 我们还通过将它用于作为通用计算构件的一部分的微精度功能来证明它的效用。