The computational power growth in the last years and the increase of data to be processed contributed to researchers in deep learning update their models to use distributed train ing. Distributed Deep Learning (DDL) is essential for solving large-scale problems faster and accurately using multiple devices to run the model in parallel. This strategy brings challenges to improving the training performance without losing accuracy and without increasing the overhead of exchanging data between host and devices. Frameworks for DDL have become popular alternatives in the last years for training using multiple de vices, running on top of usual machine learning libraries. They are advantageous for final users since they require only a few extra line...
Dissertação de Mestrado Integrado em Engenharia Electrotécnica e de Computadores apresentada à Facul...
Deep learning algorithms base their success on building high learning capacity models with millions ...
Deep Neural Network (DNN) frameworks use distributed training to enable faster time to convergence a...
Continuously increasing data volumes from multiple sources, such as simulation and experimental meas...
The field of deep learning has been the focus of plenty of research and development over the last y...
Deep learning has been a very popular topic in Artificial Intelligent industry these years and can b...
peer reviewedWith renewed global interest for Artificial Intelligence (AI) methods, the past decade ...
This thesis is done as part of a service development task of distributed deep learning on the CSC pr...
Deep learning models' prediction accuracy tends to improve with the size of the model. The implicati...
Deep learning has been postulated as a solution for numerous problems in different branches of scien...
2016 has become the year of the Artificial Intelligence explosion. AI technologies are getting more ...
[EN] TensorFlow (TF) is usually combined with the Horovod (HVD) workload distribution package to obt...
The rapid growth of data and ever increasing model complexity of deep neural networks (DNNs) have en...
Deep Learning has achieved outstanding results in many fields and led to groundbreaking discoveries....
Deep learning has been postulated as a solution for numerous problems in different branches of scien...
Dissertação de Mestrado Integrado em Engenharia Electrotécnica e de Computadores apresentada à Facul...
Deep learning algorithms base their success on building high learning capacity models with millions ...
Deep Neural Network (DNN) frameworks use distributed training to enable faster time to convergence a...
Continuously increasing data volumes from multiple sources, such as simulation and experimental meas...
The field of deep learning has been the focus of plenty of research and development over the last y...
Deep learning has been a very popular topic in Artificial Intelligent industry these years and can b...
peer reviewedWith renewed global interest for Artificial Intelligence (AI) methods, the past decade ...
This thesis is done as part of a service development task of distributed deep learning on the CSC pr...
Deep learning models' prediction accuracy tends to improve with the size of the model. The implicati...
Deep learning has been postulated as a solution for numerous problems in different branches of scien...
2016 has become the year of the Artificial Intelligence explosion. AI technologies are getting more ...
[EN] TensorFlow (TF) is usually combined with the Horovod (HVD) workload distribution package to obt...
The rapid growth of data and ever increasing model complexity of deep neural networks (DNNs) have en...
Deep Learning has achieved outstanding results in many fields and led to groundbreaking discoveries....
Deep learning has been postulated as a solution for numerous problems in different branches of scien...
Dissertação de Mestrado Integrado em Engenharia Electrotécnica e de Computadores apresentada à Facul...
Deep learning algorithms base their success on building high learning capacity models with millions ...
Deep Neural Network (DNN) frameworks use distributed training to enable faster time to convergence a...