Domain wall memory: Physics, materials, and devices
Digital data, generated by corporate and individual users, is growing day by day due to a
vast range of digital applications. Magnetic hard disk drives (HDDs) currently fulfill the …
vast range of digital applications. Magnetic hard disk drives (HDDs) currently fulfill the …
Stimuli‐responsive memristive materials for artificial synapses and neuromorphic computing
Neuromorphic computing holds promise for building next‐generation intelligent systems in a
more energy‐efficient way than the conventional von Neumann computing architecture …
more energy‐efficient way than the conventional von Neumann computing architecture …
Spintronic leaky-integrate-fire spiking neurons with self-reset and winner-takes-all for neuromorphic computing
D Wang, R Tang, H Lin, L Liu, N Xu, Y Sun… - Nature …, 2023 - nature.com
Neuromorphic computing using nonvolatile memories is expected to tackle the memory wall
and energy efficiency bottleneck in the von Neumann system and to mitigate the stagnation …
and energy efficiency bottleneck in the von Neumann system and to mitigate the stagnation …
Memristive synapses and neurons for bioinspired computing
To realize highly efficient neuromorphic computing that is comparable to biological
counterparts, bioinspired computing systems, consisting of biorealistic artificial synapses …
counterparts, bioinspired computing systems, consisting of biorealistic artificial synapses …
Leakage function in magnetic domain wall based artificial neuron using stray field
Recently, brain-inspired neuromorphic computing (NC) has been gaining traction as it is
expected to be more power efficient and a more suitable platform for artificial intelligence …
expected to be more power efficient and a more suitable platform for artificial intelligence …
Convolutional neural network
YVR Nagapawan, KB Prakash… - … TensorFlow: Solution for …, 2021 - Springer
Convolutional neural network (CNN) is a (Agrawal and Roy, IEEE Trans Magn 55: 1–7,
2019) class of deep neural network. CNNs are what we call the most representative …
2019) class of deep neural network. CNNs are what we call the most representative …
Magnetic elements for neuromorphic computing
T Blachowicz, A Ehrmann - Molecules, 2020 - mdpi.com
Neuromorphic computing is assumed to be significantly more energy efficient than, and at
the same time expected to outperform, conventional computers in several applications, such …
the same time expected to outperform, conventional computers in several applications, such …
Spintronic neural systems
Neural computing, guided by brain-inspired computational frameworks, promises to realize
various cognitive and perception-related tasks. Complementary metal–oxide–semiconductor …
various cognitive and perception-related tasks. Complementary metal–oxide–semiconductor …
Multi-level neuromorphic devices built on emerging ferroic materials: A review
Achieving multi-level devices is crucial to efficiently emulate key bio-plausible functionalities
such as synaptic plasticity and neuronal activity, and has become an important aspect of …
such as synaptic plasticity and neuronal activity, and has become an important aspect of …
Domain wall dynamics in (Co/Ni) n nanowire with anisotropy energy gradient for neuromorphic computing applications
Artificial Intelligence (AI) has been gaining traction recently. However, they are executed on
devices with the von Neumann architecture, requiring high power input. Consequently, brain …
devices with the von Neumann architecture, requiring high power input. Consequently, brain …