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This is simple Back-Propagation Neural Network simulation using C#. This code is a part of my "Supervised Neural Network" book written in 2006.

http://backpronn.codeplex.com/Tags | neural-network |

Implementation | CSharp |

License | Ms-RL |

Platform | Windows |

Neural Network Basic contain implementation of simple and effective implementation of neural network. Functionality it is developed in C++ native programming language, with use STL and Visual Studio C++ Express 2010.

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Implementation of neural network in java

An OpenCL neural network implementation in Python. Uses massively parallel GPU computations to train and test neural network. Uses PyOpenCL as wrapper around OpenCL. Tight integration with NumPy. Tags: python, pyopencl, gpgpu, neural network, gpu computations, opencl, numpy

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