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Roadmap for Unconventional Computing with Nanotechnology

Authors :
Finocchio, Giovanni
Incorvia, Jean Anne C.
Friedman, Joseph S.
Yang, Qu
Giordano, Anna
Grollier, Julie
Yang, Hyunsoo
Ciubotaru, Florin
Chumak, Andrii
Naeemi, Azad J.
Cotofana, Sorin D.
Tomasello, Riccardo
Panagopoulos, Christos
Carpentieri, Mario
Lin, Peng
Pan, Gang
Yang, J. Joshua
Todri-Sanial, Aida
Boschetto, Gabriele
Makasheva, Kremena
Sangwan, Vinod K.
Trivedi, Amit Ranjan
Hersam, Mark C.
Camsari, Kerem Y.
McMahon, Peter L.
Datta, Supriyo
Koiller, Belita
Aguilar, Gabriel H.
Temporão, Guilherme P.
Rodrigues, Davi R.
Sunada, Satoshi
Everschor-Sitte, Karin
Tatsumura, Kosuke
Goto, Hayato
Puliafito, Vito
Åkerman, Johan
Takesue, Hiroki
Di Ventra, Massimiliano
Pershin, Yuriy V.
Mukhopadhyay, Saibal
Roy, Kaushik
Wang, I-Ting
Kang, Wang
Zhu, Yao
Kaushik, Brajesh Kumar
Hasler, Jennifer
Ganguly, Samiran
Ghosh, Avik W.
Levy, William
Roychowdhury, Vwani
Bandyopadhyay, Supriyo
Source :
Nano Futures (2024)
Publication Year :
2023

Abstract

In the "Beyond Moore's Law" era, with increasing edge intelligence, domain-specific computing embracing unconventional approaches will become increasingly prevalent. At the same time, adopting a variety of nanotechnologies will offer benefits in energy cost, computational speed, reduced footprint, cyber resilience, and processing power. The time is ripe for a roadmap for unconventional computing with nanotechnologies to guide future research, and this collection aims to fill that need. The authors provide a comprehensive roadmap for neuromorphic computing using electron spins, memristive devices, two-dimensional nanomaterials, nanomagnets, and various dynamical systems. They also address other paradigms such as Ising machines, Bayesian inference engines, probabilistic computing with p-bits, processing in memory, quantum memories and algorithms, computing with skyrmions and spin waves, and brain-inspired computing for incremental learning and problem-solving in severely resource-constrained environments. These approaches have advantages over traditional Boolean computing based on von Neumann architecture. As the computational requirements for artificial intelligence grow 50 times faster than Moore's Law for electronics, more unconventional approaches to computing and signal processing will appear on the horizon, and this roadmap will help identify future needs and challenges. In a very fertile field, experts in the field aim to present some of the dominant and most promising technologies for unconventional computing that will be around for some time to come. Within a holistic approach, the goal is to provide pathways for solidifying the field and guiding future impactful discoveries.<br />Comment: 80 pages accepted in Nano Futures

Details

Database :
arXiv
Journal :
Nano Futures (2024)
Publication Type :
Report
Accession number :
edsarx.2301.06727
Document Type :
Working Paper
Full Text :
https://doi.org/10.1088/2399-1984/ad299a