An RRAM-based computing system (RCS) is widely used in neuromorphic computing systems due to its fast computation and low cost. The immature fabrication processes cause high rate of hard faults and limited endurance of RRAMs restrict the life of RCS. These can degrade the accuracy of RCS remarkably. The training of neural network consumes lot of time due to large network size and more number of layers. We propose a hierarchical fault-tolerant and cost effective framework for RCS. The proposed flow can tolerate the faults in the next training phase using the inherent fault-tolerant capability of the neural network without using extra hardware. Proposed framework consists of significant classification and remapping, transfer learning, thresho...
Nowadays, artificial neural networks (ANNs) can outperform the human brain ability in specific tasks...
Neuromorphic computing is an attractive computation paradigm with the features of massive parallelis...
Abstract—The spiking neural network (SNN) provides a promis-ing solution to drastically promote the ...
Computation-In-Memory (CIM) employing Resistive-RAM(RRAM)-based crossbar arrays is a promising solut...
Computation-In Memory (CIM) using RRAM crossbar array is a promising solution to realize energy-effi...
Computation-In Memory (CIM) using RRAM crossbar array is a promising solution to realize energy-eff...
International audienceResistive random access memories (RRAM) are novel nonvolatile memory technolog...
A key requirement for RRAM in neural network accelerators with a large number of synaptic parameters...
This paper investigates the incorporation of fault tolerance at the learning stage into Radial Basis...
Eickhoff R, Rückert U. Enhancing Fault Tolerance of Radial Basis Functions. In: Institute of Electri...
Resistive switching random access memory (RRAM) shows its potential to be a promising candidate as t...
The recent success of deep neural networks (DNNs) in challenging perception tasks makes them a power...
Resistive random access memory (RRAM) based computing-in-memory (CIM) is attractive for edge artific...
Machine Learning (ML) is making a strong resurgence in tune with the massive generation of unstructu...
Brain-inspired neuromorphic systems have witnessed rapid development over the last decade from both ...
Nowadays, artificial neural networks (ANNs) can outperform the human brain ability in specific tasks...
Neuromorphic computing is an attractive computation paradigm with the features of massive parallelis...
Abstract—The spiking neural network (SNN) provides a promis-ing solution to drastically promote the ...
Computation-In-Memory (CIM) employing Resistive-RAM(RRAM)-based crossbar arrays is a promising solut...
Computation-In Memory (CIM) using RRAM crossbar array is a promising solution to realize energy-effi...
Computation-In Memory (CIM) using RRAM crossbar array is a promising solution to realize energy-eff...
International audienceResistive random access memories (RRAM) are novel nonvolatile memory technolog...
A key requirement for RRAM in neural network accelerators with a large number of synaptic parameters...
This paper investigates the incorporation of fault tolerance at the learning stage into Radial Basis...
Eickhoff R, Rückert U. Enhancing Fault Tolerance of Radial Basis Functions. In: Institute of Electri...
Resistive switching random access memory (RRAM) shows its potential to be a promising candidate as t...
The recent success of deep neural networks (DNNs) in challenging perception tasks makes them a power...
Resistive random access memory (RRAM) based computing-in-memory (CIM) is attractive for edge artific...
Machine Learning (ML) is making a strong resurgence in tune with the massive generation of unstructu...
Brain-inspired neuromorphic systems have witnessed rapid development over the last decade from both ...
Nowadays, artificial neural networks (ANNs) can outperform the human brain ability in specific tasks...
Neuromorphic computing is an attractive computation paradigm with the features of massive parallelis...
Abstract—The spiking neural network (SNN) provides a promis-ing solution to drastically promote the ...