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Machine learning / Computational neuroscience / Applied mathematics / Numerical analysis / Computational statistics / Artificial neural networks / Stochastic gradient descent / Deep learning / Mathematical optimization / Generative adversarial network / Neural network / Training /  test /  and validation sets
Machine learning
Computational neuroscience
Applied mathematics
Numerical analysis
Computational statistics
Artificial neural networks
Stochastic gradient descent
Deep learning
Mathematical optimization
Generative adversarial network
Neural network
Training
test
and validation sets

Large Scale Training and Optimization of Neural Networks and Generative Adversarial Networks over Distributed Resource CLIC GAN : S. Vallecorsa, G. Khattak, F. Carminati, M. Pierini SurfSara : V. Codreanu, D. Podareanu

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