Hardware accelerators for Deep Neural Networks (DNNs) that use reduced precision parameters are more energy efficient than the equivalent full precision networks. While many studies have focused on reduced precision training methods for supervised networks with the availability of large datasets, less work has been reported on incremental learning algorithms that adapt the network for new classes and the consequence of reduced precision has on these algorithms. This paper presents an empirical study of how reduced precision training methods impact the iCARL incremental learning algorithm. The incremental network accuracies on the CIFAR-100 image dataset show that weights can be quantized to 1 bit (2.39% drop in accuracy) but when activation...
Machine learning, and specifically Deep Neural Networks (DNNs) impact all parts of daily life. Altho...
Deep Neural Networks (DNNs) and Convolutional Neural Networks (CNNs) are useful for many practical t...
The latest Deep Learning (DL) methods for designing Deep Neural Networks (DNN) have significantly ex...
Hardware accelerators for Deep Neural Networks (DNNs) that use reduced precision parameters are more...
Training large-scale deep neural networks (DNNs) currently requires a significant amount of energy, ...
Large-scale convolutional neural networks (CNNs) suffer from very long training times, spanning from...
International audienceThe most compute-intensive stage of deep neural network (DNN) training is matr...
DNNs have been finding a growing number of applications including image classification, speech recog...
Due to limited size, cost and power, embedded devices do not offer the same computational throughput...
Deep learning is a rising topic at the edge of technology, with applications in many areas of our li...
Due to their potential to reduce silicon area or boost throughput, low-precision computations were w...
Deep learning is finding its way into high energy physics by replacing traditional Monte Carlo simul...
The resurgence of machine learning in various applications and it's inherent compute-intensive natur...
Recently low-precision deep learning accelerators (DLAs) have become popular due to their advantages...
Machine learning, and specifically Deep Neural Networks (DNNs) impact all parts of daily life. Altho...
Machine learning, and specifically Deep Neural Networks (DNNs) impact all parts of daily life. Altho...
Deep Neural Networks (DNNs) and Convolutional Neural Networks (CNNs) are useful for many practical t...
The latest Deep Learning (DL) methods for designing Deep Neural Networks (DNN) have significantly ex...
Hardware accelerators for Deep Neural Networks (DNNs) that use reduced precision parameters are more...
Training large-scale deep neural networks (DNNs) currently requires a significant amount of energy, ...
Large-scale convolutional neural networks (CNNs) suffer from very long training times, spanning from...
International audienceThe most compute-intensive stage of deep neural network (DNN) training is matr...
DNNs have been finding a growing number of applications including image classification, speech recog...
Due to limited size, cost and power, embedded devices do not offer the same computational throughput...
Deep learning is a rising topic at the edge of technology, with applications in many areas of our li...
Due to their potential to reduce silicon area or boost throughput, low-precision computations were w...
Deep learning is finding its way into high energy physics by replacing traditional Monte Carlo simul...
The resurgence of machine learning in various applications and it's inherent compute-intensive natur...
Recently low-precision deep learning accelerators (DLAs) have become popular due to their advantages...
Machine learning, and specifically Deep Neural Networks (DNNs) impact all parts of daily life. Altho...
Machine learning, and specifically Deep Neural Networks (DNNs) impact all parts of daily life. Altho...
Deep Neural Networks (DNNs) and Convolutional Neural Networks (CNNs) are useful for many practical t...
The latest Deep Learning (DL) methods for designing Deep Neural Networks (DNN) have significantly ex...