To understand how well a proposed augmented reality (AR) solution works,...
This work presents a novel approach to neural architecture search (NAS) ...
With the proliferation of the adoption of renewable energy in powering d...
In many data-driven applications, collecting data from different sources...
An accurate understanding of omnidirectional environment lighting is cru...
Lighting understanding plays an important role in virtual object composi...
Many augmented reality (AR) applications rely on omnidirectional environ...
Training deep learning (DL) models has become a norm. With the emergence...
In contrast to single-objective optimization (SOO), multi-objective
opti...
Ever since the commercial offerings of the Cloud started appearing in 20...
Cloud computing provides a powerful yet low-cost environment for distrib...
Cloud platforms' growing energy demand and carbon emissions are raising
...
Omnidirectional lighting provides the foundation for achieving
spatially...
This study identifies and proposes techniques to alleviate two key
bottl...
Stochastic Gradient Descent (SGD) has become the de facto way to train d...
To improve the search efficiency for Neural Architecture Search (NAS),
O...
Incorporating environmental, social, and governance (ESG) considerations...
Cloud GPU servers have become the de facto way for deep learning
practit...
We propose an efficient lighting estimation pipeline that is suitable to...
Deep Neural Networks (DNNs) are allowing mobile devices to incorporate a...
Deep Neural Networks (DNNs) are allowing mobile devices to incorporate a...
Deep learning models are increasingly used for end-user applications,
su...
Today's mobile applications are increasingly leveraging deep neural netw...
Mobile applications are increasingly leveraging complex deep learning mo...
Performing deep learning on end-user devices provides fast offline infer...
Today's clusters often have to divide resources among a diverse set of j...
For recurrent neural networks trained on time series with target and
exo...
We propose a novel statistical node embedding of directed graphs, which ...
The ability to track and monitor relevant and important news in real-tim...
Distributed training frameworks, like TensorFlow, have been proposed as ...
In this paper, we propose multi-variable LSTM capable of accurate foreca...
In this paper, we propose an interpretable LSTM recurrent neural network...
Bitcoin is the first decentralized digital cryptocurrency, which has sho...
Modern mobile applications are benefiting significantly from the advance...
Mobile applications are benefiting significantly from the advancement in...