DNNs deployed on analog processing in memory (PIM) architectures are subject to fabrication-time variability. We developed a new joint variability- and quantization-aware DNN training algorithm for highly quantized analog PIM-based models that is significantly more effective than prior work. It outperforms variability-oblivious and post-training quantized models on multiple computer vision datasets/models. For low- bitwidth models and high variation, the gain in accuracy is up to 35.7% for ResNet-18 over the best alternative. We demonstrate that, under a realistic pattern of within- and between-chip components of variability, training alone is unable to prevent large DNN accuracy loss (of up to 54% on CIFAR- 100/ResNet-18). We introduce a ...
We propose an energy-efficient analog implementation of binarized neural network with a novel techni...
Photonic neural network (PNN) is a remarkable analog artificial intelligence (AI) accelerator that c...
Novel Deep Neural Network (DNN) accelerators based on crossbar arrays of non-volatile memories (NVMs...
DNNs deployed on analog processing in memory (PIM) architectures are subject to fabrication-time var...
Recently, analog compute-in-memory (CIM) architectures based on emerging analog non-volatile memory ...
The rapid growth of artificial intelligence and deep learning in recent years has led to significant...
Deep Neural Networks (DNN) have proven to be highly effective in extracting high level abstractions ...
Deep neural networks (DNNs) are typically trained using the conventional stochastic gradient descent...
Deep neural networks (DNNs) have achieved unprecedented capabilities in tasks such as analysis and r...
Matrix-Vector Multiplications (MVMs) represent a heavy workload for both training and inference in D...
In-memory computing using resistive memory devices is a promising non-von Neumann approach for makin...
Non-volatile analog memory devices such as phase-change memory (PCM) enable designing dedicated conn...
Processing-in-memory (PIM), an increasingly studied neuromorphic hardware, promises orders of energy...
Resistive-switching random access memory (RRAM) is a promising technology that enables advanced appl...
The severe on-chip memory limitations are currently preventing the deployment of the most accurate D...
We propose an energy-efficient analog implementation of binarized neural network with a novel techni...
Photonic neural network (PNN) is a remarkable analog artificial intelligence (AI) accelerator that c...
Novel Deep Neural Network (DNN) accelerators based on crossbar arrays of non-volatile memories (NVMs...
DNNs deployed on analog processing in memory (PIM) architectures are subject to fabrication-time var...
Recently, analog compute-in-memory (CIM) architectures based on emerging analog non-volatile memory ...
The rapid growth of artificial intelligence and deep learning in recent years has led to significant...
Deep Neural Networks (DNN) have proven to be highly effective in extracting high level abstractions ...
Deep neural networks (DNNs) are typically trained using the conventional stochastic gradient descent...
Deep neural networks (DNNs) have achieved unprecedented capabilities in tasks such as analysis and r...
Matrix-Vector Multiplications (MVMs) represent a heavy workload for both training and inference in D...
In-memory computing using resistive memory devices is a promising non-von Neumann approach for makin...
Non-volatile analog memory devices such as phase-change memory (PCM) enable designing dedicated conn...
Processing-in-memory (PIM), an increasingly studied neuromorphic hardware, promises orders of energy...
Resistive-switching random access memory (RRAM) is a promising technology that enables advanced appl...
The severe on-chip memory limitations are currently preventing the deployment of the most accurate D...
We propose an energy-efficient analog implementation of binarized neural network with a novel techni...
Photonic neural network (PNN) is a remarkable analog artificial intelligence (AI) accelerator that c...
Novel Deep Neural Network (DNN) accelerators based on crossbar arrays of non-volatile memories (NVMs...