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Fusion of memristor and digital compute-in-memory processing for energy-efficient edge computing.

Authors :
Wen TH
Hung JM
Huang WH
Jhang CJ
Lo YC
Hsu HH
Ke ZE
Chen YC
Chin YH
Su CI
Khwa WS
Lo CC
Liu RS
Hsieh CC
Tang KT
Ho MS
Chou CC
Chih YD
Chang TJ
Chang MF
Source :
Science (New York, N.Y.) [Science] 2024 Apr 19; Vol. 384 (6693), pp. 325-332. Date of Electronic Publication: 2024 Apr 18.
Publication Year :
2024

Abstract

Artificial intelligence (AI) edge devices prefer employing high-capacity nonvolatile compute-in-memory (CIM) to achieve high energy efficiency and rapid wakeup-to-response with sufficient accuracy. Most previous works are based on either memristor-based CIMs, which suffer from accuracy loss and do not support training as a result of limited endurance, or digital static random-access memory (SRAM)-based CIMs, which suffer from large area requirements and volatile storage. We report an AI edge processor that uses a memristor-SRAM CIM-fusion scheme to simultaneously exploit the high accuracy of the digital SRAM CIM and the high energy-efficiency and storage density of the resistive random-access memory memristor CIM. This also enables adaptive local training to accommodate personalized characterization and user environment. The fusion processor achieved high CIM capacity, short wakeup-to-response latency (392 microseconds), high peak energy efficiency (77.64 teraoperations per second per watt), and robust accuracy (<0.5% accuracy loss). This work demonstrates that memristor technology has moved beyond in-lab development stages and now has manufacturability for AI edge processors.

Details

Language :
English
ISSN :
1095-9203
Volume :
384
Issue :
6693
Database :
MEDLINE
Journal :
Science (New York, N.Y.)
Publication Type :
Academic Journal
Accession number :
38669568
Full Text :
https://doi.org/10.1126/science.adf5538