| decoder_model | Builds the decoder graph for an AutoTab VAE |
| Decoder_weights | Extract decoder-only weights from a trained Keras model |
| encoder_decoder_information | Specifying Encoder and Decoder Architectures for 'VAE_train()' |
| encoder_latent | Rebuild the encoder graph to export z_mean and z_log_var |
| Encoder_weights | Extract encoder-only weights from a trained Keras model |
| extracting_distribution | Build the 'feat_dist' data frame for AutoTab |
| feat_reorder | Reorder 'feat_dist' rows to match preprocessed data |
| get_feat_dist | Get the stored feature distribution |
| Latent_sample | Sample from the latent space |
| min_max_scale | Min–max scale continuous variables |
| mog_prior | Mixture-of-Gaussians (MoG) prior in AutoTab |
| reset_seeds | Reset all random seeds across R, TensorFlow, and Python |
| set_feat_dist | Set the feature distribution for AutoTab |
| VAE_train | Train an AutoTab VAE on mixed-type tabular data |