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Multi Layer Perceptron (MLP) on Oscillator Physics Problem

Neural networkMLPFeed forward networkPhysicsOscillator
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paolotamag profile image
VersionlatestLatest, created on 
Oct 24, 2023 2:54 PM
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This is an example of training a multi-layer-perceptrons (MLP) to tackle an oscillation problem in physics. This type of network is also known as: - Fully Connected Network (FCN) - Feed Forward Network - Simple Neural Network - Physics Informed Neural Network (PINN)

External resources

  • Similar approach with PyTorch - Kaggle
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Created with KNIME Analytics Platform version 5.1.1
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    Version 5.1.1

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    KNIME Python IntegrationTrusted extension

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