To train modern large DNN models, pipeline parallelism has recently emer...
We show in this work that memory intensive computations can result in se...
The last decade has witnessed growth in the computational requirements f...
It is a challenging task to train large DNN models on sophisticated GPU
...
Performance optimization is the art of continuous seeking a harmonious
m...
Modern deep learning models have been exploited in various domains, incl...
Existing multi-view learning methods based on kernel function either req...
In real world machine learning applications, testing data may contain so...
In recent years, there is a surge on machine learning applications in
in...
Deep latent variable models have been shown to facilitate the response
g...
Fisher vector has been widely used in many multimedia retrieval and visu...