Abstract. One of the major research trends currently is the evolution of heterogeneous parallel computing. GP-GPU computing is being widely used and several applications have been designed to exploit the mas-sive parallelism that GP-GPU’s have to offer. While GPU’s have always been widely used in areas of computer vision for image processing, little has been done to investigate whether the massive parallelism provided by GP-GPU’s can be utilized effectively for Natural Language Process-ing(NLP) tasks. In this work, we investigate and explore the power of GP-GPU’s in the task of learning language models. More specifically, we investigate the performance of training Polyglot language models[1] us-ing deep belief neural networks. We evaluate t...
Artificial neural networks represent an HPC workload with increasing importance. In particular the f...
In recent years, the number of parameters of one deep learning (DL) model has been growing much fast...
applications, the main time-consuming process is string matching due to the large size of lexicon. I...
Recurrent neural network language models (RNNLMs) are becoming increasingly popular for a range of a...
© 2014 IEEE. Recurrent neural network language models (RNNLMs) are becoming increasingly popular for...
The rise of deep-learning (DL) has been fuelled by the improvements in accelerators. Due to its uniq...
Recurrent neural network language models (RNNLMs) are becoming increasingly popular for speech recog...
Neural networks stand out from artificial intelligence because they can complete challenging tasks, ...
The invention of deep belief network (DBN) provides a powerful tool for data modeling. The key advan...
Abstract Multilingual deep neural networks (DNNs) can act as deep feature extractors and have been a...
Neural networks get more difficult and longer time to train if the depth become deeper. As deep neur...
Multilingual deep neural networks (DNNs) can act as deep feature extractors and have been applied su...
The ability to train large-scale neural networks has resulted in state-of-the-art per-formance in ma...
Recently, General Purpose Graphical Processing Units (GP-GPUs) have been identified as an intriguing...
Deep neural networks have gained popularity in recent years, obtaining outstanding results in a wide...
Artificial neural networks represent an HPC workload with increasing importance. In particular the f...
In recent years, the number of parameters of one deep learning (DL) model has been growing much fast...
applications, the main time-consuming process is string matching due to the large size of lexicon. I...
Recurrent neural network language models (RNNLMs) are becoming increasingly popular for a range of a...
© 2014 IEEE. Recurrent neural network language models (RNNLMs) are becoming increasingly popular for...
The rise of deep-learning (DL) has been fuelled by the improvements in accelerators. Due to its uniq...
Recurrent neural network language models (RNNLMs) are becoming increasingly popular for speech recog...
Neural networks stand out from artificial intelligence because they can complete challenging tasks, ...
The invention of deep belief network (DBN) provides a powerful tool for data modeling. The key advan...
Abstract Multilingual deep neural networks (DNNs) can act as deep feature extractors and have been a...
Neural networks get more difficult and longer time to train if the depth become deeper. As deep neur...
Multilingual deep neural networks (DNNs) can act as deep feature extractors and have been applied su...
The ability to train large-scale neural networks has resulted in state-of-the-art per-formance in ma...
Recently, General Purpose Graphical Processing Units (GP-GPUs) have been identified as an intriguing...
Deep neural networks have gained popularity in recent years, obtaining outstanding results in a wide...
Artificial neural networks represent an HPC workload with increasing importance. In particular the f...
In recent years, the number of parameters of one deep learning (DL) model has been growing much fast...
applications, the main time-consuming process is string matching due to the large size of lexicon. I...