Signal and noise extraction from analog memory elements for neuromorphic computing
The application of resistive and phase-change memories in neuromorphic computation will require efficient methods to quantify device-to-device and switching variability. Here, the authors assess the impact of a broad range of device switching mechanisms using machine learning regression techniques.
Enregistré dans:
Auteurs principaux: | N. Gong, T. Idé, S. Kim, I. Boybat, A. Sebastian, V. Narayanan, T. Ando |
---|---|
Format: | article |
Langue: | EN |
Publié: |
Nature Portfolio
2018
|
Sujets: | |
Accès en ligne: | https://doaj.org/article/a1f3b1e3f21e4dcd812626edb73f3983 |
Tags: |
Ajouter un tag
Pas de tags, Soyez le premier à ajouter un tag!
|
Documents similaires
-
Neuromorphic computing with multi-memristive synapses
par: Irem Boybat, et autres
Publié: (2018) -
Current-induced crystallisation in Heusler alloy films for memory potentiation in neuromorphic computation
par: William Frost, et autres
Publié: (2021) -
A Noise-Resilient Neuromorphic Digit Classifier Based on NOR Flash Memories with Pulse–Width Modulation Scheme
par: Gerardo Malavena, et autres
Publié: (2021) -
Self healable neuromorphic memtransistor elements for decentralized sensory signal processing in robotics
par: Rohit Abraham John, et autres
Publié: (2020) -
A Fully Integrated Reprogrammable CMOS-RRAM Compute-in-Memory Coprocessor for Neuromorphic Applications
par: Justin M. Correll, et autres
Publié: (2020)