Magnetic RAM (MRAM)-based crossbar array has a great potential as a platform for in-memory binary neural network (BNN) computing. However, the number of word-lines that can be activated simultaneously is limited because of the low $I_{H}/I_{L}$ ratio of MRAM, which makes BNNs more vulnerable to the device variation. To address this issue, we propose an algorithm/hardware co-design methodology. First, we choose a promising memristor crossbar array (MCA) structure based on the sensitivity analysis to process variations. Since the selected MCA structure becomes more tolerant to the device variation when the number of 1 in input activation values decreases, we apply an input distribution regularization scheme to reduce the number of 1 in inpu...
Brain-inspired neuromorphic systems have witnessed rapid development over the last decade from both ...
International audienceOne of the most exciting applications of Spin Torque Magnetoresistive Random A...
A key requirement for RRAM in neural network accelerators with a large number of synaptic parameters...
International audienceConvolutional Neural Network (CNN) is one of the most important Deep Neural Ne...
The recent emerging memristor can provide non-volatile memory storage but also intrinsic computing f...
As Binary Neural Networks (BNNs) started to show promising performance with limited memory and compu...
Computation-In-Memory (CIM) employing Resistive-RAM(RRAM)-based crossbar arrays is a promising solut...
The von Neumann architecture has been broadly adopted in modern computing systems in which the centr...
At present, in the new hardware design work of deep learning, memristor as a non-volatile memory wit...
In this paper, we explore potentials of leveraging spin-based in-memory computing platform as an acc...
The memristor crossbar has the characteristic of high parallelism in implementing the matrix vector ...
Computation-In Memory (CIM) using RRAM crossbar array is a promising solution to realize energy-effi...
International audienceResistive random access memories (RRAM) are novel nonvolatile memory technolog...
The invention of neuromorphic computing architecture is inspired by the working mechanism of human-b...
Computation-In Memory (CIM) using RRAM crossbar array is a promising solution to realize energy-eff...
Brain-inspired neuromorphic systems have witnessed rapid development over the last decade from both ...
International audienceOne of the most exciting applications of Spin Torque Magnetoresistive Random A...
A key requirement for RRAM in neural network accelerators with a large number of synaptic parameters...
International audienceConvolutional Neural Network (CNN) is one of the most important Deep Neural Ne...
The recent emerging memristor can provide non-volatile memory storage but also intrinsic computing f...
As Binary Neural Networks (BNNs) started to show promising performance with limited memory and compu...
Computation-In-Memory (CIM) employing Resistive-RAM(RRAM)-based crossbar arrays is a promising solut...
The von Neumann architecture has been broadly adopted in modern computing systems in which the centr...
At present, in the new hardware design work of deep learning, memristor as a non-volatile memory wit...
In this paper, we explore potentials of leveraging spin-based in-memory computing platform as an acc...
The memristor crossbar has the characteristic of high parallelism in implementing the matrix vector ...
Computation-In Memory (CIM) using RRAM crossbar array is a promising solution to realize energy-effi...
International audienceResistive random access memories (RRAM) are novel nonvolatile memory technolog...
The invention of neuromorphic computing architecture is inspired by the working mechanism of human-b...
Computation-In Memory (CIM) using RRAM crossbar array is a promising solution to realize energy-eff...
Brain-inspired neuromorphic systems have witnessed rapid development over the last decade from both ...
International audienceOne of the most exciting applications of Spin Torque Magnetoresistive Random A...
A key requirement for RRAM in neural network accelerators with a large number of synaptic parameters...