Hardware implementation of memristor-based artificial neural networks

F Aguirre, A Sebastian, M Le Gallo, W Song… - Nature …, 2024 - nature.com
Artificial Intelligence (AI) is currently experiencing a bloom driven by deep learning (DL)
techniques, which rely on networks of connected simple computing units operating in …

[HTML][HTML] In-memory computing with emerging memory devices: Status and outlook

P Mannocci, M Farronato, N Lepri, L Cattaneo… - APL Machine …, 2023 - pubs.aip.org
In-memory computing (IMC) has emerged as a new computing paradigm able to alleviate or
suppress the memory bottleneck, which is the major concern for energy efficiency and …

Compute in‐memory with non‐volatile elements for neural networks: A review from a co‐design perspective

W Haensch, A Raghunathan, K Roy… - Advanced …, 2023 - Wiley Online Library
Deep learning has become ubiquitous, touching daily lives across the globe. Today,
traditional computer architectures are stressed to their limits in efficiently executing the …

Bio‐inspired 3D artificial neuromorphic circuits

X Liu, F Wang, J Su, Y Zhou… - Advanced Functional …, 2022 - Wiley Online Library
Neuromorphic circuits emulating the bio‐brain functionality via artificial devices have
achieved a substantial scientific leap in the past decade. However, even with the advent of …

Machine learning solutions for the security of wireless sensor networks: A review

YY Ghadi, T Mazhar, T Al Shloul, T Shahzad… - IEEE …, 2024 - ieeexplore.ieee.org
Energy efficiency and safety are two essential factors that play a significant role in operating
a wireless sensor network. However, it is claimed that these two factors are naturally …

A review of graphene‐based memristive neuromorphic devices and circuits

B Walters, MV Jacob, A Amirsoleimani… - Advanced Intelligent …, 2023 - Wiley Online Library
As data processing volume increases, the limitations of traditional computers and the need
for more efficient computing methods become evident. Neuromorphic computing mimics the …

Demonstration of synaptic behavior in a heavy-metal-ferromagnetic-metal-oxide-heterostructure-based spintronic device for on-chip learning in crossbar-array-based …

RS Yadav, P Gupta, A Holla, KI Ali Khan… - ACS Applied …, 2023 - ACS Publications
Nanomagnetic and spintronic devices, which make use of physical phenomena in materials
and interfaces like perpendicular magnetic anisotropy (PMA) and spin–orbit torque (SOT) to …

X-former: In-memory acceleration of transformers

S Sridharan, JR Stevens, K Roy… - IEEE Transactions on …, 2023 - ieeexplore.ieee.org
Transformers have achieved great success in a wide variety of natural language processing
(NLP) tasks due to the self-attention mechanism, which assigns an importance score for …

Advancements in memory technologies for artificial synapses

A Sehgal, S Dhull, S Roy, BK Kaushik - Journal of Materials Chemistry …, 2024 - pubs.rsc.org
Neural networks (NNs) have made significant progress in recent years and have been
applied in a broad range of applications, including speech recognition, image classification …

Reconfigurable neuromorphic computing block through integration of flash synapse arrays and super-steep neurons

D Kwon, SY Woo, KH Lee, J Hwang, H Kim… - Science …, 2023 - science.org
Neuromorphic computing (NC) architecture inspired by biological nervous systems has
been actively studied to overcome the limitations of conventional von Neumann …