This thesis is about parallelizing the training phase of a feed-forward, artificial neural network. More specifically, we develop and analyze a number of parallelizations of the widely used neural net learning algorithm called back-propagation. We describe two different strategies for parallelizing the back-propagation algorithm. A number of parallelizations employing these strategies have been implemented on a system of 48 transputers, permitting us to evaluate and analyze their performances based on the results of actual runs
International audienceThis paper presents two parallel implementations of the Back-propagation algor...
International audienceThis paper presents two parallel implementations of the Back-propagation algor...
International audienceThis paper presents two parallel implementations of the Back-propagation algor...
This paper presents some experimental results on the realization of a parallel simulation of an Arti...
The Back-Propagation (BP) Neural Network (NN) is probably the most well known of all neural networks...
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...
The Back-Propagation (BP) Neural Network (NN) is probably the most well known of all neural networks...
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...
Learning algorithms for neural networks involve CPU intensive processing and consequently great effo...
Learning algorithms for neural networks involve CPU intensive processing and consequently great effo...
International audienceThis paper presents two parallel implementations of the Back-propagation algor...
International audienceThis paper presents two parallel implementations of the Back-propagation algor...
International audienceThis paper presents two parallel implementations of the Back-propagation algor...
International audienceThis paper presents two parallel implementations of the Back-propagation algor...
International audienceThis paper presents two parallel implementations of the Back-propagation algor...
This paper presents some experimental results on the realization of a parallel simulation of an Arti...
The Back-Propagation (BP) Neural Network (NN) is probably the most well known of all neural networks...
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...
The Back-Propagation (BP) Neural Network (NN) is probably the most well known of all neural networks...
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...
Learning algorithms for neural networks involve CPU intensive processing and consequently great effo...
Learning algorithms for neural networks involve CPU intensive processing and consequently great effo...
International audienceThis paper presents two parallel implementations of the Back-propagation algor...
International audienceThis paper presents two parallel implementations of the Back-propagation algor...
International audienceThis paper presents two parallel implementations of the Back-propagation algor...
International audienceThis paper presents two parallel implementations of the Back-propagation algor...
International audienceThis paper presents two parallel implementations of the Back-propagation algor...