NEDCNAPRJul 27, 2021

Neuromorphic scaling advantages for energy-efficient random walk computation

arXiv:2107.13057v143 citations
Originality Incremental advance
AI Analysis

This addresses energy efficiency in high-performance computing for a broad range of numerical tasks, though it is in an early development stage.

The paper demonstrates that neuromorphic computing architectures can efficiently implement random walks via Markov chains, showing they can drastically reduce energy demands for high-performance computing platforms.

Computing stands to be radically improved by neuromorphic computing (NMC) approaches inspired by the brain's incredible efficiency and capabilities. Most NMC research, which aims to replicate the brain's computational structure and architecture in man-made hardware, has focused on artificial intelligence; however, less explored is whether this brain-inspired hardware can provide value beyond cognitive tasks. We demonstrate that high-degree parallelism and configurability of spiking neuromorphic architectures makes them well-suited to implement random walks via discrete time Markov chains. Such random walks are useful in Monte Carlo methods, which represent a fundamental computational tool for solving a wide range of numerical computing tasks. Additionally, we show how the mathematical basis for a probabilistic solution involving a class of stochastic differential equations can leverage those simulations to provide solutions for a range of broadly applicable computational tasks. Despite being in an early development stage, we find that NMC platforms, at a sufficient scale, can drastically reduce the energy demands of high-performance computing (HPC) platforms.

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