Recent years have seen a rapid rise of artificial neural networks being employed in a number of cognitive tasks. The ever-increasing computing requirements of these structures have contributed to a desire for novel technologies and paradigms, including memristor-based hardware accelerators. Solutions based on memristive crossbars and analog data processing promise to improve the overall energy efficiency. However, memristor nonidealities can lead to the degradation of neural network accuracy, while the attempts to mitigate these negative effects often introduce design trade-offs, such as those between power and reliability. In this work, we design nonideality-aware training of memristor-based neural networks capable of dealing with...
In this Chapter, we review the recent progress on resistance drift mitigation techniques for resisti...
Neuromorphic computing embraces the “device history” offered by many analog non-volatile memory (NVM...
The memristor has been hypothesized to exist as the missing fourth basic circuit element since 1971 ...
Recent years have seen a rapid rise of artificial neural networks being employed in a number of cogn...
Recent years have seen a rapid rise of artificial neural networks being employed in a number of cogn...
Artificial neural networks are notoriously power- and time-consuming when implemented on conventiona...
Neuromorphic systems based on hardware neural networks (HNNs) are expected to be an energy and time-...
Digital electronics has given rise to reliable, affordable, and scalable computing devices. However,...
Power density constraint and device reliability issues are driving energy efficient, fault tolerant ...
Designing reliable and energy-efficient memristor-based artificial neural networks remains a challen...
Voltages and currents in a memristor crossbar can be significantly affected due to nonideal effects ...
Recent results revived the interest in the implementation of analog devices able to perform brainlik...
Data-intensive computing operations, such as training neural networks, are essential but energy-inte...
In the quest for alternatives to traditional complementary metal-oxide-semiconductor, it is being su...
Modern Artificial Neural Network(ANN) is a kind of nonlinear statistical data modeling tool, which c...
In this Chapter, we review the recent progress on resistance drift mitigation techniques for resisti...
Neuromorphic computing embraces the “device history” offered by many analog non-volatile memory (NVM...
The memristor has been hypothesized to exist as the missing fourth basic circuit element since 1971 ...
Recent years have seen a rapid rise of artificial neural networks being employed in a number of cogn...
Recent years have seen a rapid rise of artificial neural networks being employed in a number of cogn...
Artificial neural networks are notoriously power- and time-consuming when implemented on conventiona...
Neuromorphic systems based on hardware neural networks (HNNs) are expected to be an energy and time-...
Digital electronics has given rise to reliable, affordable, and scalable computing devices. However,...
Power density constraint and device reliability issues are driving energy efficient, fault tolerant ...
Designing reliable and energy-efficient memristor-based artificial neural networks remains a challen...
Voltages and currents in a memristor crossbar can be significantly affected due to nonideal effects ...
Recent results revived the interest in the implementation of analog devices able to perform brainlik...
Data-intensive computing operations, such as training neural networks, are essential but energy-inte...
In the quest for alternatives to traditional complementary metal-oxide-semiconductor, it is being su...
Modern Artificial Neural Network(ANN) is a kind of nonlinear statistical data modeling tool, which c...
In this Chapter, we review the recent progress on resistance drift mitigation techniques for resisti...
Neuromorphic computing embraces the “device history” offered by many analog non-volatile memory (NVM...
The memristor has been hypothesized to exist as the missing fourth basic circuit element since 1971 ...