Login / Signup

Probabilistic computing using Cu 0.1 Te 0.9 /HfO 2 /Pt diffusive memristors.

Kyung Seok WooJaehyun KimJanguk HanWoohyun KimYoon Ho JangCheol Seong Hwang
Published in: Nature communications (2022)
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 Cu 0.1 Te 0.9 /HfO 2 /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.
Keyphrases
  • big data
  • mental health
  • machine learning
  • artificial intelligence
  • working memory
  • deep learning