Abstract. Feed forward neural networks (FFNs) are powerful data-modelling tools which have been used in many fields of science. Specifically in financial applications, due to the number of factors affecting the market, models with a large quantity of input features, hid-den and output neurons can be obtained. In financial problems, the response time is crucial and it is necessary to have faster applications which respond quickly. Most of the current applications have been implemented as non-parallel software running on serial processors. In this paper, we show how GPU computing allows for faster applications to be implemented, taking advantage of the inherent parallelism of the FFN in order to improve performance and reduce response time. T...
International audienceThe Simplex algorithm is a well known method to solve linear programming (LP) ...
The invention of deep belief network (DBN) provides a powerful tool for data modeling. The key advan...
Neural networks stand out from artificial intelligence because they can complete challenging tasks, ...
Abstract. This work presents the implementation of Feedforward Multi-Layer Perceptron (FFMLP) Neural...
The Graphics Processing Unit (GPU) parallel architecture is now being used not just for graphics but...
A parallel Back-Propagation(BP) neural network training technique using Compute Unified Device Archi...
Recently, General Purpose Graphical Processing Units (GP-GPUs) have been identified as an intriguing...
This paper presents a hardware accelerated model of a spiking neural network implemented in CUDA C. ...
Neural networks (NNs) have been used in several areas, showing their potential but also their limita...
The Graphics Processing Units (GPUs) have been used for accelerating graphic calculations as well as...
The future of computation is the GPU, i.e. the Graphical Processing Unit. The graphics cards have sh...
Modern graphics processing units (GPUs) have been at the leading edge of in-creasing chip-level para...
The article discusses possibilities of implementing a neural network in a parallel way. The issues o...
Open-source deep learning tools has been distributed numerously and has gain popularity in the past ...
Large-scale simulations of parts of the brain using detailed neuronal models to improve our understa...
International audienceThe Simplex algorithm is a well known method to solve linear programming (LP) ...
The invention of deep belief network (DBN) provides a powerful tool for data modeling. The key advan...
Neural networks stand out from artificial intelligence because they can complete challenging tasks, ...
Abstract. This work presents the implementation of Feedforward Multi-Layer Perceptron (FFMLP) Neural...
The Graphics Processing Unit (GPU) parallel architecture is now being used not just for graphics but...
A parallel Back-Propagation(BP) neural network training technique using Compute Unified Device Archi...
Recently, General Purpose Graphical Processing Units (GP-GPUs) have been identified as an intriguing...
This paper presents a hardware accelerated model of a spiking neural network implemented in CUDA C. ...
Neural networks (NNs) have been used in several areas, showing their potential but also their limita...
The Graphics Processing Units (GPUs) have been used for accelerating graphic calculations as well as...
The future of computation is the GPU, i.e. the Graphical Processing Unit. The graphics cards have sh...
Modern graphics processing units (GPUs) have been at the leading edge of in-creasing chip-level para...
The article discusses possibilities of implementing a neural network in a parallel way. The issues o...
Open-source deep learning tools has been distributed numerously and has gain popularity in the past ...
Large-scale simulations of parts of the brain using detailed neuronal models to improve our understa...
International audienceThe Simplex algorithm is a well known method to solve linear programming (LP) ...
The invention of deep belief network (DBN) provides a powerful tool for data modeling. The key advan...
Neural networks stand out from artificial intelligence because they can complete challenging tasks, ...