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Woo, Kyung Seok
Emerging Semiconductor Technology Laboratory
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Probabilistic computing using Cu0.1Te0.9/HfO2/Pt diffusive memristors

Author(s)
Woo, Kyung SeokKim, JaehyunHan, JangukKim, WoohyunJang, Yoon HoHwang, Cheol Seong
Issued Date
2022-09
DOI
10.1038/s41467-022-33455-x
URI
https://scholarworks.unist.ac.kr/handle/201301/87677
Citation
NATURE COMMUNICATIONS, v.13, no.1, pp.5762
Abstract
A computing scheme that can solve complex tasks is necessary as the big data field proliferates. Probabilistic computing (p-computing) paves the way to efficiently handle problems based on stochastic units called probabilistic bits (p-bits). This study proposes p-computing based on the threshold switching (TS) behavior of a Cu0.1Te0.9/HfO2/Pt (CTHP) diffusive memristor. The theoretical background of the p-computing resembling the Hopfield network structure is introduced to explain the p-computing system. P-bits are realized by the stochastic TS behavior of CTHP diffusive memristors, and they are connected to form the p-computing network. The memristor-based p-bit is likely to be '0' and '1', of which probability is controlled by an input voltage. The memristor-based p-computing enables all 16 Boolean logic operations in both forward and inverted operations, showing the possibility of expanding its uses for complex operations, such as full adder and factorization.
Publisher
NATURE PORTFOLIO
ISSN
2041-1723
Keyword
QUANTUMALGORITHM

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