Despite recent advancements in image generation, diffusion models still
...
Annotating data for supervised learning is expensive and tedious, and we...
Real-world object detection models should be cheap and accurate. Knowled...
The goal of contrastive learning based pre-training is to leverage large...
Improving the performance of deep neural networks (DNNs) is important to...
When deploying a deep neural network on constrained hardware, it is poss...
The time and effort involved in hand-designing deep neural networks is
i...
Convolutional Neural Networks (CNN) are becoming a common presence in ma...
Humans tackle new problems by making inferences that go far beyond the
i...
The desire to run neural networks on low-capacity edge devices has led t...
In response to the development of recent efficient dense layers, this pa...
Despite their impressive performance in many tasks, deep neural networks...
Despite recent developments, deploying deep neural networks on resource
...
The task of accelerating large neural networks on general purpose hardwa...
Pruning is a popular technique for compressing a neural network: a large...
In this brief technical report we introduce the CINIC-10 dataset as a pl...
Convolutional Neural Networks (CNNs) are extremely computationally deman...
Model distillation compresses a trained machine learning model, such as ...