Implementing binary neural networks (BNNs) on computing-in-memory (CIM) hardware has several attractive features such as small memory requirement and minimal overhead in peripheral circuits such as analog-to-digital converters (ADCs). On the other hand, one of the downsides of using BNNs is that it degrades the classification accuracy. Recently, ResNet-style BNNs are gaining popularity with higher accuracy than conventional BNNs. The accuracy improvement comes from the high-resolution skip connection which binary ResNets use to compensate the information loss caused by binarization. However, the high-resolution skip connection forces the CIM hardware to use high-bit ADCs again so that area and energy overhead becomes larger. In this paper, ...
Binary neural networks (BNNs) are variations of artificial/deep neural network (ANN/DNN) architectur...
SRAM-based in-memory Binary Neural Network (BNN) accelerators are garnering interests as a platform ...
The ever-growing computational demands of increasingly complex machine learning models frequently ne...
DoctorWhile Deep Neural Networks (DNNs) have shown cutting-edge performance on various applications,...
Thesis (Ph.D.)--University of Washington, 2020The recent renaissance of deep neural networks has lea...
The Binarized Neural Network (BNN) is a Convolutional Neural Network (CNN) consisting of binary weig...
In Analog Computing-in-Memory (CIM) neural network accelerators, analog-to-digital converters (ADCs)...
Resistive random access memory (RRAM) based computing-in-memory (CIM) is attractive for edge artific...
International audienceResistive random access memories (RRAM) are novel nonvolatile memory technolog...
Network binarization (i.e., binary neural networks, BNNs) can efficiently compress deep neural netwo...
How to train a binary neural network (BinaryNet) with both high compression rate and high accuracy o...
Based on the assumption that there exists a neu-ral network that efficiently represents a set of Boo...
To deploy deep neural networks on resource-limited devices, quantization has been widely explored. I...
As Binary Neural Networks (BNNs) started to show promising performance with limited memory and compu...
International audienceThe deployment of Edge AI requires energy-efficient hardware with a minimal me...
Binary neural networks (BNNs) are variations of artificial/deep neural network (ANN/DNN) architectur...
SRAM-based in-memory Binary Neural Network (BNN) accelerators are garnering interests as a platform ...
The ever-growing computational demands of increasingly complex machine learning models frequently ne...
DoctorWhile Deep Neural Networks (DNNs) have shown cutting-edge performance on various applications,...
Thesis (Ph.D.)--University of Washington, 2020The recent renaissance of deep neural networks has lea...
The Binarized Neural Network (BNN) is a Convolutional Neural Network (CNN) consisting of binary weig...
In Analog Computing-in-Memory (CIM) neural network accelerators, analog-to-digital converters (ADCs)...
Resistive random access memory (RRAM) based computing-in-memory (CIM) is attractive for edge artific...
International audienceResistive random access memories (RRAM) are novel nonvolatile memory technolog...
Network binarization (i.e., binary neural networks, BNNs) can efficiently compress deep neural netwo...
How to train a binary neural network (BinaryNet) with both high compression rate and high accuracy o...
Based on the assumption that there exists a neu-ral network that efficiently represents a set of Boo...
To deploy deep neural networks on resource-limited devices, quantization has been widely explored. I...
As Binary Neural Networks (BNNs) started to show promising performance with limited memory and compu...
International audienceThe deployment of Edge AI requires energy-efficient hardware with a minimal me...
Binary neural networks (BNNs) are variations of artificial/deep neural network (ANN/DNN) architectur...
SRAM-based in-memory Binary Neural Network (BNN) accelerators are garnering interests as a platform ...
The ever-growing computational demands of increasingly complex machine learning models frequently ne...