torchgan
latest

GETTING STARTED

  • Installation
    • Pip Installation
    • Conda Installation
    • Install from Source
  • Dependencies
    • Mandatory Dependencies
    • Optional Dependencies
  • Philosophy
  • Contributing
    • Contribution Guidelines
    • Contributors
  • Starter Example
  • License

API DOCUMENTATION

  • torchgan.layers
    • Residual Blocks
      • ResidualBlock2d
      • ResidualBlockTranspose2d
    • Densenet Blocks
      • BasicBlock2d
      • BottleneckBlock2d
      • TransitionBlock2d
      • TransitionBlockTranspose2d
      • DenseBlock2d
    • Self Attention
      • SelfAttention2d
    • Spectral Normalization
      • SpectralNorm2d
    • Minibatch Discrimination
      • MinibatchDiscrimination1d
    • Virtual Batch Normalization
      • VirtualBatchNorm
  • torchgan.logging
    • Backends
    • Logger
    • Visualization
      • Visualize
      • LossVisualize
      • GradientVisualize
      • MetricVisualize
      • ImageVisualize
  • torchgan.losses
    • Loss
      • GeneratorLoss
      • DiscriminatorLoss
    • Least Squares Loss
      • LeastSquaresGeneratorLoss
      • LeastSquaresDiscriminatorLoss
    • Minimax Loss
      • MinimaxGeneratorLoss
      • MinimaxDiscriminatorLoss
    • Boundary Equilibrium Loss
      • BoundaryEquilibriumGeneratorLoss
      • BoundaryEquilibriumDiscriminatorLoss
    • Energy Based Loss
      • EnergyBasedGeneratorLoss
      • EnergyBasedDiscriminatorLoss
      • EnergyBasedPullingAwayTerm
    • Wasserstein Loss
      • WassersteinGeneratorLoss
      • WassersteinDiscriminatorLoss
      • WassersteinGradientPenalty
    • Mutual Information Penalty
    • Dragan Loss
      • DraganGradientPenalty
    • Auxillary Classifier Loss
      • AuxiliaryClassifierGeneratorLoss
      • AuxiliaryClassifierDiscriminatorLoss
    • Feature Matching Loss
      • FeatureMatchingGeneratorLoss
    • Historical Averaging
      • HistoricalAverageGeneratorLoss
      • HistoricalAverageDiscriminatorLoss
  • torchgan.metrics
    • Metric
      • EvaluationMetric
    • Classifier Score
  • torchgan.models
    • GAN
      • Generator
      • Discriminator
    • Deep Convolutional GAN
      • DCGANGenerator
      • DCGANDiscriminator
    • Conditional GAN
      • ConditionalGANGenerator
      • ConditionalGANDiscriminator
    • InfoGAN
      • InfoGANGenerator
      • InfoGANDiscriminator
    • AutoEncoders
      • AutoEncodingGenerator
      • AutoEncodingDiscriminator
    • Auxiliary Classifier GAN
      • ACGANGenerator
      • ACGANDiscriminator
  • torchgan.trainer
    • Trainer
torchgan
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  • torchgan
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torchganΒΆ

The torchgan package consists of various generative adversarial networks and utilities that have been found useful in training them. This package provides an easy to use API which can be used to train popular GANs as well as develop newer variants.

GETTING STARTED

  • Installation
    • Pip Installation
    • Conda Installation
    • Install from Source
  • Dependencies
    • Mandatory Dependencies
    • Optional Dependencies
  • Philosophy
  • Contributing
    • Contribution Guidelines
    • Contributors
  • Starter Example
  • License

API DOCUMENTATION

  • torchgan.layers
    • Residual Blocks
    • Densenet Blocks
    • Self Attention
    • Spectral Normalization
    • Minibatch Discrimination
    • Virtual Batch Normalization
  • torchgan.logging
    • Backends
    • Logger
    • Visualization
  • torchgan.losses
    • Loss
    • Least Squares Loss
    • Minimax Loss
    • Boundary Equilibrium Loss
    • Energy Based Loss
    • Wasserstein Loss
    • Mutual Information Penalty
    • Dragan Loss
    • Auxillary Classifier Loss
    • Feature Matching Loss
    • Historical Averaging
  • torchgan.metrics
    • Metric
    • Classifier Score
  • torchgan.models
    • GAN
    • Deep Convolutional GAN
    • Conditional GAN
    • InfoGAN
    • AutoEncoders
    • Auxiliary Classifier GAN
  • torchgan.trainer
    • Trainer
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© Copyright 2018-2018, Avik Pal & Aniket Das Revision 4e655ee2.

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