Learning algorithms for neural networks involve CPU intensive processing and consequently great effort has been done to develop parallel implemetations intended for a reduction of learning time. This work briefly describes parallel schemes for a backpropagation algorithm and proposes a distributed system architecture for developing parallel training with a partition pattern scheme. Under this approach, weight changes are computed concurrently, exchanged between system components and adjusted accordingly until the whole parallel learning process is completed. Some comparative results are also shown.Eje: Procesamiento distribuido y paralelo. Tratamiento de señalesRed de Universidades con Carreras en Informática (RedUNCI
This thesis presents a detailed study of the parallel implementations of backpropagation neural netw...
This thesis is about parallelizing the training phase of a feed-forward, artificial neural network....
The focus of this study is how we can efficiently implement the neural network backpropagation algor...
Learning algorithms for neural networks involve CPU intensive processing and consequently great effo...
Features such as fast response, storage efficiency, fault tolerance and graceful degradation in face...
Fast response, storage efficiency, fault tolerance and graceful degradation in face of scarce or spu...
Fast response, storage efficiency, fault tolerance and graceful degradation in face of scarce or spu...
The back-propagation algorithm is one of the most widely used training algorithms for neural network...
The back-propagation algorithm is one of the most widely used training algorithms for neural network...
Artificial neural networks have applications in many fields ranging from medicine to image processin...
The Back-Propagation (BP) Neural Network (NN) is probably the most well known of all neural networks...
The Back-Propagation (BP) Neural Network (NN) is probably the most well known of all neural networks...
Abstract — In this paper, we present an efficient technique for mapping a backpropagation (BP) learn...
One of the major issues in using artificial neural networks is reducing the training and the testing...
This thesis presents a detailed study of the parallel implementations of backpropagation neural netw...
This thesis presents a detailed study of the parallel implementations of backpropagation neural netw...
This thesis is about parallelizing the training phase of a feed-forward, artificial neural network....
The focus of this study is how we can efficiently implement the neural network backpropagation algor...
Learning algorithms for neural networks involve CPU intensive processing and consequently great effo...
Features such as fast response, storage efficiency, fault tolerance and graceful degradation in face...
Fast response, storage efficiency, fault tolerance and graceful degradation in face of scarce or spu...
Fast response, storage efficiency, fault tolerance and graceful degradation in face of scarce or spu...
The back-propagation algorithm is one of the most widely used training algorithms for neural network...
The back-propagation algorithm is one of the most widely used training algorithms for neural network...
Artificial neural networks have applications in many fields ranging from medicine to image processin...
The Back-Propagation (BP) Neural Network (NN) is probably the most well known of all neural networks...
The Back-Propagation (BP) Neural Network (NN) is probably the most well known of all neural networks...
Abstract — In this paper, we present an efficient technique for mapping a backpropagation (BP) learn...
One of the major issues in using artificial neural networks is reducing the training and the testing...
This thesis presents a detailed study of the parallel implementations of backpropagation neural netw...
This thesis presents a detailed study of the parallel implementations of backpropagation neural netw...
This thesis is about parallelizing the training phase of a feed-forward, artificial neural network....
The focus of this study is how we can efficiently implement the neural network backpropagation algor...