Large-Scale Neuromorphic Spiking Array Processors: A quest to mimic the brain
Chetan Singh Thakur, Jamal Molin, Gert Cauwenberghs, Giacomo Indiveri,, Kundan Kumar, Ning Qiao, Johannes Schemmel, Runchun Wang, Elisabetta Chicca,, Jennifer Olson Hasler, Jae-sun Seo, Shimeng Yu, Yu Cao, Andr\'e van Schaik,, Ralph Etienne-Cummings

TL;DR
This paper reviews large-scale neuromorphic spiking array processors, comparing architectures and highlighting their potential for brain-like computation and energy-efficient neural modeling.
Contribution
It provides a comprehensive comparison of neuromorphic spiking emulators, detailing their architectures, advantages, and limitations, to advance brain-inspired computing.
Findings
Neuromorphic emulators are highly energy efficient and parallel.
Different architectures offer unique advantages and drawbacks.
Neuromorphic systems can improve neural modeling and AI applications.
Abstract
Neuromorphic engineering (NE) encompasses a diverse range of approaches to information processing that are inspired by neurobiological systems, and this feature distinguishes neuromorphic systems from conventional computing systems. The brain has evolved over billions of years to solve difficult engineering problems by using efficient, parallel, low-power computation. The goal of NE is to design systems capable of brain-like computation. Numerous large-scale neuromorphic projects have emerged recently. This interdisciplinary field was listed among the top 10 technology breakthroughs of 2014 by the MIT Technology Review and among the top 10 emerging technologies of 2015 by the World Economic Forum. NE has two-way goals: one, a scientific goal to understand the computational properties of biological neural systems by using models implemented in integrated circuits (ICs); second, an…
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