The Graphics Processing Units (GPUs) have been used for accelerating graphic calculations as well as for developing more general devices. One of the most used parallel platforms is the Compute Unified Device Architecture (CUDA), which allows implementing in parallel multiple GPUs obtaining a high computational performance. Over the last years, CUDA has been used for the implementation of several parallel distributed systems. At the end of the 80s, it was introduced a type of Neural Networks (NNs) inspired of the behavior of queueing networks named Random Neural Networks (RNN). The method has been successfully used in the Machine Learning community for solving many learning benchmark problems. In this paper, we implement in CUDA the gradient...
The object of research is to parallelize the learning process of artificial neural networks to autom...
In pattern recognition, the k-nearest neighbor algorithm (k-NN) is a method for classifying objects ...
Large-scale simulations of parts of the brain using detailed neuronal models to improve our understa...
Context. Machine Learning is a complex and resource consuming process that requires a lot of computi...
Graphics processing units (GPUs) were originally used solely for the purpose of graph- ics rendering...
Abstract. This work presents the implementation of Feedforward Multi-Layer Perceptron (FFMLP) Neural...
Machine learning algorithms are frequently applied in data mining applications. Many of the tasks in...
The Graphics Processing Unit (GPU) parallel architecture is now being used not just for graphics but...
Open-source deep learning tools has been distributed numerously and has gain popularity in the past ...
Recently, General Purpose Graphical Processing Units (GP-GPUs) have been identified as an intriguing...
A parallel Back-Propagation(BP) neural network training technique using Compute Unified Device Archi...
Neural networks stand out from artificial intelligence because they can complete challenging tasks, ...
Machine learning algorithms are frequently applied in data mining applications. Many of the tasks in...
Using modern Graphic Processing Units (GPUs) becomes very useful for computing complex and time cons...
The object of research is to parallelize the learning process of artificial neural networks to autom...
The object of research is to parallelize the learning process of artificial neural networks to autom...
In pattern recognition, the k-nearest neighbor algorithm (k-NN) is a method for classifying objects ...
Large-scale simulations of parts of the brain using detailed neuronal models to improve our understa...
Context. Machine Learning is a complex and resource consuming process that requires a lot of computi...
Graphics processing units (GPUs) were originally used solely for the purpose of graph- ics rendering...
Abstract. This work presents the implementation of Feedforward Multi-Layer Perceptron (FFMLP) Neural...
Machine learning algorithms are frequently applied in data mining applications. Many of the tasks in...
The Graphics Processing Unit (GPU) parallel architecture is now being used not just for graphics but...
Open-source deep learning tools has been distributed numerously and has gain popularity in the past ...
Recently, General Purpose Graphical Processing Units (GP-GPUs) have been identified as an intriguing...
A parallel Back-Propagation(BP) neural network training technique using Compute Unified Device Archi...
Neural networks stand out from artificial intelligence because they can complete challenging tasks, ...
Machine learning algorithms are frequently applied in data mining applications. Many of the tasks in...
Using modern Graphic Processing Units (GPUs) becomes very useful for computing complex and time cons...
The object of research is to parallelize the learning process of artificial neural networks to autom...
The object of research is to parallelize the learning process of artificial neural networks to autom...
In pattern recognition, the k-nearest neighbor algorithm (k-NN) is a method for classifying objects ...
Large-scale simulations of parts of the brain using detailed neuronal models to improve our understa...