The traditional Boolean computing paradigm based on the von Neumann architecture is facing great challenges for future information technology applications such as big data, the Internet of Things (IoT), and wearable devices, due to the limited processing capability issues such as binary data storage and computing, non-parallel data processing, and the buses requirement between memory units and logic units. The brain-inspired neuromorphic computing paradigm is believed to be one of the promising solutions for realizing more complex functions with a lower cost. To perform such brain-inspired computing with a low cost and low power consumption, novel devices for use as electronic synapses are needed. Metal oxide resistive random access memory ...
The state-of-the-art artificial intelligence technologies mainly rely on deep learning algorithms ba...
Compared to modern supercomputers, which consume roughly 10^6 W of power, the human brain requires o...
We report the use of metal oxide resistive switching memory (RRAM) as synaptic devices for a neuromo...
The traditional Boolean computing paradigm based on the von Neumann architecture is facing great cha...
Neuromorphic computing is an attractive computation paradigm that complements the von Neumann archit...
Neuromorphic computing is an attractive computation paradigm with the features of massive parallelis...
Neuromorphic computing is an attractive computation paradigm that complements the von Neumann archit...
The human brain can perform advanced computing tasks, such as learning, recognition, and cognition, ...
The human brain can perform advanced computing tasks, such as learning, recognition, and cognition, ...
The human brain can perform advanced computing tasks, such as learning, recognition, and cognition, ...
The human brain can perform advanced computing tasks, such as learning, recognition, and cognition, ...
Hardware artificial neural network (ANN) systems with high density synapse array devices can perform...
Cross-point arrays of analog synaptic devices are expected to realize neuromorphic computing hardwar...
Neuromorphic computing is an emerging computing paradigm beyond the conventional digital von Neumann...
The state-of-the-art artificial intelligence technologies mainly rely on deep learning algorithms ba...
The state-of-the-art artificial intelligence technologies mainly rely on deep learning algorithms ba...
Compared to modern supercomputers, which consume roughly 10^6 W of power, the human brain requires o...
We report the use of metal oxide resistive switching memory (RRAM) as synaptic devices for a neuromo...
The traditional Boolean computing paradigm based on the von Neumann architecture is facing great cha...
Neuromorphic computing is an attractive computation paradigm that complements the von Neumann archit...
Neuromorphic computing is an attractive computation paradigm with the features of massive parallelis...
Neuromorphic computing is an attractive computation paradigm that complements the von Neumann archit...
The human brain can perform advanced computing tasks, such as learning, recognition, and cognition, ...
The human brain can perform advanced computing tasks, such as learning, recognition, and cognition, ...
The human brain can perform advanced computing tasks, such as learning, recognition, and cognition, ...
The human brain can perform advanced computing tasks, such as learning, recognition, and cognition, ...
Hardware artificial neural network (ANN) systems with high density synapse array devices can perform...
Cross-point arrays of analog synaptic devices are expected to realize neuromorphic computing hardwar...
Neuromorphic computing is an emerging computing paradigm beyond the conventional digital von Neumann...
The state-of-the-art artificial intelligence technologies mainly rely on deep learning algorithms ba...
The state-of-the-art artificial intelligence technologies mainly rely on deep learning algorithms ba...
Compared to modern supercomputers, which consume roughly 10^6 W of power, the human brain requires o...
We report the use of metal oxide resistive switching memory (RRAM) as synaptic devices for a neuromo...