Abhishek Moitra, Abhiroop Bhattacharjee, Yuhang Li, Youngeun Kim, Priyadarshini Panda
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When In-memory Computing Meets Spiking Neural Networks -- A Perspective on Device-Circuit-System-and-Algorithm Co-design
This review explores the intersection of bio-plausible artificial
intelligence in the form of Spiking Neural Networks (SNNs) with the analog
In-Memory Computing (IMC) domain, highlighting their collective potential for
low-power edge computing environments. Through detailed investigation at the
device, circuit, and system levels, we highlight the pivotal synergies between
SNNs and IMC architectures. Additionally, we emphasize the critical need for
comprehensive system-level analyses, considering the inter-dependencies between
algorithms, devices, circuit & system parameters, crucial for optimal
performance. An in-depth analysis leads to identification of key system-level
bottlenecks arising from device limitations which can be addressed using
SNN-specific algorithm-hardware co-design techniques. This review underscores
the imperative for holistic device to system design space co-exploration,
highlighting the critical aspects of hardware and algorithm research endeavors
for low-power neuromorphic solutions.