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Endurance-Aware Mapping of Spiking Neural Networks to Neuromorphic Hardware

by Twisha Titirsha ID: arxiv-paper--2103.05707

Neuromorphic computing systems are embracing memristors to implement high density and low power synaptic storage as crossbar arrays in hardware. These systems are energy efficient in executing Spiking Neural Networks (SNNs). We observe that long bitlines and wordlines in a memristive crossbar are a ...

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@misc{arxiv_paper__2103.05707,
  author = {Twisha Titirsha},
  title = {Endurance-Aware Mapping of Spiking Neural Networks to Neuromorphic Hardware Paper},
  year = {2026},
  howpublished = {\url{https://arxiv.org/abs/2103.05707v1}},
  note = {Accessed via Free2AITools Knowledge Fortress}
}
APA Style
Twisha Titirsha. (2026). Endurance-Aware Mapping of Spiking Neural Networks to Neuromorphic Hardware [Paper]. Free2AITools. https://arxiv.org/abs/2103.05707v1

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πŸ“ Executive Summary

"Neuromorphic computing systems are embracing memristors to implement high density and low power synaptic storage as crossbar arrays in hardware. These systems are energy efficient in executing Spiking Neural Networks (SNNs). We observe that long bitlines and wordlines in a memristive crossbar are a major source of parasitic voltage drops, which create current asymmetry. Through circuit simulations, we show the significant endurance variation that results from this asymmetry. Therefore, if the..."

❝ Cite Node

@article{Titirsha2021Endurance-Aware,
  title={Endurance-Aware Mapping of Spiking Neural Networks to Neuromorphic Hardware},
  author={Twisha Titirsha and Shihao Song and Anup Das and Jeffrey Krichmar and Nikil Dutt and Nagarajan Kandasamy and Francky Catthoor},
  journal={arXiv preprint arXiv:arxiv-paper--2103.05707},
  year={2021}
}

πŸ‘₯ Collaborating Minds

Twisha Titirsha Shihao Song Anup Das Jeffrey Krichmar Nikil Dutt Nagarajan Kandasamy Francky Catthoor

Abstract & Analysis

Neuromorphic computing systems are embracing memristors to implement high density and low power synaptic storage as crossbar arrays in hardware. These systems are energy efficient in executing Spiking Neural Networks (SNNs). We observe that long bitlines and wordlines in a memristive crossbar are a major source of parasitic voltage drops, which create current asymmetry. Through circuit simulations, we show the significant endurance variation that results from this asymmetry. Therefore, if the critical memristors (ones with lower endurance) are overutilized, they may lead to a reduction of the crossbar's lifetime. We propose eSpine, a novel technique to improve lifetime by incorporating the endurance variation within each crossbar in mapping machine learning workloads, ensuring that synapses with higher activation are always implemented on memristors with higher endurance, and vice versa. eSpine works in two steps. First, it uses the Kernighan-Lin Graph Partitioning algorithm to partition a workload into clusters of neurons and synapses, where each cluster can fit in a crossbar. Second, it uses an instance of Particle Swarm Optimization (PSO) to map clusters to tiles, where the placement of synapses of a cluster to memristors of a crossbar is performed by analyzing their activation within the workload. We evaluate eSpine for a state-of-the-art neuromorphic hardware model with phase-change memory (PCM)-based memristors. Using 10 SNN workloads, we demonstrate a significant improvement in the effective lifetime.

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id
arxiv-paper--2103.05707
source
arxiv
author
Twisha Titirsha
tags
arxiv:cs.NEarxiv:cs.ARarxiv:cs.ETneural

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