The in-memory computing paradigm aims at overcoming the intrinsic inefficiencies of Von-Neumann computers by reducing the data-transport per arithmetic operation. Crossbar arrays of multilevel memristive devices enable efficient calculations of matrix-vector-multiplications, an operation extensively called on in artificial intelligence (AI) tasks. Resistive random-access memories (ReRAMs) are promising candidate devices for such applications. However, they generally exhibit large stochasticity and device-to-device variability. The integration of a sub-stoichiometric metal-oxide within the ReRAM stack can improve the resistive switching graduality and stochasticity. To this purpose, a conductive TaOx layer is developed and stacked on HfO2 be...
Resistive random access memory (RRAM) devices with analog resistive switching are expected to be ben...
The traditional Boolean computing paradigm based on the von Neumann architecture is facing great cha...
As one of the promising next-generation electronics, brain-inspired synaptic resistive random access...
The in-memory computing paradigm aims at overcoming the intrinsic inefficiencies of Von-Neumann comp...
Metal-oxide-based resistive memory devices (ReRAM) are being actively researched as synaptic element...
Information technology is approaching the era of artificial intelligence. New computing architecture...
Abstract Analog hardware-based training provides a promising solution to developing state-of-the-art...
As the demand for processing artificial intelligence (AI), big data, and cognitive tasks increases, ...
Resistive Random Access Memories (ReRAMs) have been researched intensively in the last past decades ...
Reinforcement learning (RL) has been examined to learn when an agent interacts continually with an e...
In-memory computing (IMC) refers to non-von Neumann architectures where data are processed in situ w...
Emulation of neural networks by redox-based Resistive Random Access Memories (ReRAMs) with component...
Resistive random–access memory (RRAM) for neuromorphic systems has received significant attention be...
Memristive devices with analog resistive switching characteristics are widely investigated nowadays ...
Hardware artificial neural network (ANN) systems with high density synapse array devices can perform...
Resistive random access memory (RRAM) devices with analog resistive switching are expected to be ben...
The traditional Boolean computing paradigm based on the von Neumann architecture is facing great cha...
As one of the promising next-generation electronics, brain-inspired synaptic resistive random access...
The in-memory computing paradigm aims at overcoming the intrinsic inefficiencies of Von-Neumann comp...
Metal-oxide-based resistive memory devices (ReRAM) are being actively researched as synaptic element...
Information technology is approaching the era of artificial intelligence. New computing architecture...
Abstract Analog hardware-based training provides a promising solution to developing state-of-the-art...
As the demand for processing artificial intelligence (AI), big data, and cognitive tasks increases, ...
Resistive Random Access Memories (ReRAMs) have been researched intensively in the last past decades ...
Reinforcement learning (RL) has been examined to learn when an agent interacts continually with an e...
In-memory computing (IMC) refers to non-von Neumann architectures where data are processed in situ w...
Emulation of neural networks by redox-based Resistive Random Access Memories (ReRAMs) with component...
Resistive random–access memory (RRAM) for neuromorphic systems has received significant attention be...
Memristive devices with analog resistive switching characteristics are widely investigated nowadays ...
Hardware artificial neural network (ANN) systems with high density synapse array devices can perform...
Resistive random access memory (RRAM) devices with analog resistive switching are expected to be ben...
The traditional Boolean computing paradigm based on the von Neumann architecture is facing great cha...
As one of the promising next-generation electronics, brain-inspired synaptic resistive random access...