Artificial intelligence has become indispensable in modern life, but its energy consumption has become a significant concern due to its huge storage and computational demands. Artificial intelligence algorithms are mainly based on deep learning algorithms, relying on the backpropagation of convolutional neural networks or binary neural networks. While these algorithms aim to simulate the learning process of the human brain, their low bio-fidelity and the separation of storage and computing units lead to significant energy consumption. The human brain is a remarkable computing machine with extraordinary capabilities for recognizing and processing complex information while consuming very low power. Tunneling magnetoresistance (TMR)-based devi...
Neuromorphic engineering is the research field dedicated to the study and design of brain-inspired h...
The rapid development in the field of artificial intelligence has increased the demand for neuromorp...
Memristors are promising for neuromorphic computing, due to its low energy consumption and learning ...
Neuromorphic studies, which are inspired by the way the human brain works with the extremely low-pow...
Neuromorphic computing uses basic principles inspired by the brain to design circuits that perform a...
International audience—Processing the current deluge of data using conventional CMOS architectures r...
The magnetic tunnel junction is a memory device at the core of emerging magnetic random access memor...
The increasing trend in computer ownership and usage has been going on for many years due to their p...
Artificial intelligence (AI) has the ability of revolutionizing our lives and society in a radical w...
Energy efficiency, parallel information processing, and unsupervised learning make the human brain a...
Inspired by the working principles of the human brain, neuromorphic computing shows great potential ...
We explore the use of superconducting quantum phase slip junctions (QPSJs), an electromagnetic dual ...
The advent of Artificial Intelligence (AI) and big data era brought an unprecedented (and ever growi...
We propose a novel synaptic design of more efficient neuromorphic edge-computing with substantially ...
Neuromorphic engineering is the research field dedicated to the study and design of brain-inspired h...
The rapid development in the field of artificial intelligence has increased the demand for neuromorp...
Memristors are promising for neuromorphic computing, due to its low energy consumption and learning ...
Neuromorphic studies, which are inspired by the way the human brain works with the extremely low-pow...
Neuromorphic computing uses basic principles inspired by the brain to design circuits that perform a...
International audience—Processing the current deluge of data using conventional CMOS architectures r...
The magnetic tunnel junction is a memory device at the core of emerging magnetic random access memor...
The increasing trend in computer ownership and usage has been going on for many years due to their p...
Artificial intelligence (AI) has the ability of revolutionizing our lives and society in a radical w...
Energy efficiency, parallel information processing, and unsupervised learning make the human brain a...
Inspired by the working principles of the human brain, neuromorphic computing shows great potential ...
We explore the use of superconducting quantum phase slip junctions (QPSJs), an electromagnetic dual ...
The advent of Artificial Intelligence (AI) and big data era brought an unprecedented (and ever growi...
We propose a novel synaptic design of more efficient neuromorphic edge-computing with substantially ...
Neuromorphic engineering is the research field dedicated to the study and design of brain-inspired h...
The rapid development in the field of artificial intelligence has increased the demand for neuromorp...
Memristors are promising for neuromorphic computing, due to its low energy consumption and learning ...