This paper makes two principal contributions. The first is that there appears to be no previous a description in the research literature of an artificial neural network implementation on a graphics processor unit (GPU) that uses the Levenberg-Marquardt (LM) training method. The second is an initial attempt at determining when it is computationally beneficial to exploit a GPU’s parallel nature in preference to the traditional implementation on a central processing unit (CPU). The paper describes the approach taken to successfully implement the LM method, discusses the advantages of this approach for GPU implementation and presents results that compare GPU and CPU performance on two test data sets
The problems of artificial neural networks learning and their parallelisation are taken up in this a...
Hardware used in implementing artificial neural networks is vital as it has a major role to play in ...
Abstract. It seems obvious that the massively parallel computations inherent in artificial neural ne...
Modern graphics processing units (GPU) are used for much more than simply 3D graphics applications. ...
Long training times and non-ideal performance have been a big impediment in further continuing the u...
Neural networks (NNs) have been used in several areas, showing their potential but also their limita...
Research areas: Approximate Computing, Computer Architecture, Neural Processing Unit, Accelerator De...
Long training times and non-ideal performance have been a big impediment in further continuing the u...
It seems to be an everlasting discussion. Spending a lot of additional time and extra money to imple...
In this thesis I look into how one can train and run an artificial neural network using Compute Shad...
Neural networks get more difficult and longer time to train if the depth become deeper. As deep neur...
Recently, General Purpose Graphical Processing Units (GP-GPUs) have been identified as an intriguing...
Graphics processing units (GPUs) contain a significant number of cores relative to central processin...
The needs of entertainment industry in the field of personal computers always require more realistic...
Neural networks stand out from artificial intelligence because they can complete challenging tasks, ...
The problems of artificial neural networks learning and their parallelisation are taken up in this a...
Hardware used in implementing artificial neural networks is vital as it has a major role to play in ...
Abstract. It seems obvious that the massively parallel computations inherent in artificial neural ne...
Modern graphics processing units (GPU) are used for much more than simply 3D graphics applications. ...
Long training times and non-ideal performance have been a big impediment in further continuing the u...
Neural networks (NNs) have been used in several areas, showing their potential but also their limita...
Research areas: Approximate Computing, Computer Architecture, Neural Processing Unit, Accelerator De...
Long training times and non-ideal performance have been a big impediment in further continuing the u...
It seems to be an everlasting discussion. Spending a lot of additional time and extra money to imple...
In this thesis I look into how one can train and run an artificial neural network using Compute Shad...
Neural networks get more difficult and longer time to train if the depth become deeper. As deep neur...
Recently, General Purpose Graphical Processing Units (GP-GPUs) have been identified as an intriguing...
Graphics processing units (GPUs) contain a significant number of cores relative to central processin...
The needs of entertainment industry in the field of personal computers always require more realistic...
Neural networks stand out from artificial intelligence because they can complete challenging tasks, ...
The problems of artificial neural networks learning and their parallelisation are taken up in this a...
Hardware used in implementing artificial neural networks is vital as it has a major role to play in ...
Abstract. It seems obvious that the massively parallel computations inherent in artificial neural ne...