Memristor-based computer architectures are becoming more attractive as a possible choice of hardware for the implementation of neural networks. However, at present, memristor technologies are susceptible to a variety of failure modes, a serious concern in any application where regular access to the hardware may not be expected or even possible. In this study, we investigate whether certain training algorithms may be more resilient to particular hardware failure modes and, therefore, more suitable for use in those applications. We implement two training algorithms - a local update scheme and a genetic algorithm - in a simulated memristor crossbar and compare their ability to train for a simple image classification task as an increasing numbe...
Abstract-This paper describes techniques to implement gradient-descent-based machine learning algori...
Memristor is being considered as a game changer for the realization of neuromorphic hardware systems...
Memristors show great promise in neuromorphic computing owing to their high-density integration, fas...
Memristor-based computer architectures are becoming more attractive as a possible choice of hardware...
Abstract. Neural networks with memristive memory for weights have been proposed as an energy-efficie...
Power density constraint and device reliability issues are driving energy efficient, fault tolerant ...
The invention of neuromorphic computing architecture is inspired by the working mechanism of human-b...
Neuromorphic systems are gaining signi cant importance in an era where CMOS digital techniques are r...
In this study, a circuit technique and training algorithm that minimizes the effect of stuck-at-faul...
A real memristor crossbar has defects, which should be considered during the retraining time after t...
Memristors offer great advantages as a new hardware solution for neuromorphic computing due to their...
Abstract—The artificial neural network (ANN) is among the most widely used methods in data processin...
Abstract — This paper discusses implementations of gradient-descent based learning algorithms on mem...
Recent results revived the interest in the implementation of analog devices able to perform brainlik...
Voltages and currents in a memristor crossbar can be significantly affected due to nonideal effects ...
Abstract-This paper describes techniques to implement gradient-descent-based machine learning algori...
Memristor is being considered as a game changer for the realization of neuromorphic hardware systems...
Memristors show great promise in neuromorphic computing owing to their high-density integration, fas...
Memristor-based computer architectures are becoming more attractive as a possible choice of hardware...
Abstract. Neural networks with memristive memory for weights have been proposed as an energy-efficie...
Power density constraint and device reliability issues are driving energy efficient, fault tolerant ...
The invention of neuromorphic computing architecture is inspired by the working mechanism of human-b...
Neuromorphic systems are gaining signi cant importance in an era where CMOS digital techniques are r...
In this study, a circuit technique and training algorithm that minimizes the effect of stuck-at-faul...
A real memristor crossbar has defects, which should be considered during the retraining time after t...
Memristors offer great advantages as a new hardware solution for neuromorphic computing due to their...
Abstract—The artificial neural network (ANN) is among the most widely used methods in data processin...
Abstract — This paper discusses implementations of gradient-descent based learning algorithms on mem...
Recent results revived the interest in the implementation of analog devices able to perform brainlik...
Voltages and currents in a memristor crossbar can be significantly affected due to nonideal effects ...
Abstract-This paper describes techniques to implement gradient-descent-based machine learning algori...
Memristor is being considered as a game changer for the realization of neuromorphic hardware systems...
Memristors show great promise in neuromorphic computing owing to their high-density integration, fas...