..
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data
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bayesian_linear_regression.py
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bayesian_linear_regression_implicitklqp.py
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bayesian_linear_regression_ppc.py
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bayesian_linear_regression_sghmc.py
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bayesian_linear_regression_tensor.py
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bayesian_logistic_regression.py
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bayesian_nn.py
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beta_bernoulli.py
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beta_bernoulli_map.py
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beta_bernoulli_mh.py
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beta_bernoulli_ppc.py
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dirichlet_categorical.py
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factor_analysis.py
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gan.py
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gan_synthetic_data.py
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gan_wasserstein.py
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getting_started_example.py
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gp_classification.py
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hierarchical_logistic_regression.py
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invgamma_normal_mh.py
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irt.py
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iwvi.py
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latent_space_model.py
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linear_mixed_effects_model.py
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mixture_density_network.py
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mixture_gaussian_collapsed.py
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mixture_gaussian_mh.py
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normal_hmc.py
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normal_idiomatic_tf.py
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normal_normal.py
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normal_normal_hmc.py
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normal_normal_mh.py
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normal_normal_tensorboard.py
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normal_sghmc.py
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normal_sgld.py
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pp_dirichlet_process.py
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pp_dirichlet_process_base.py
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pp_dynamic_shape.py
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pp_persistent_randomness.py
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pp_stochastic_control_flow.py
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pp_stochastic_recursion.py
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probabilistic_pca.py
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probabilistic_pca_subsampling.py
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rasch_model.py
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rasch_model_hmc.py
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vae.py
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vae_convolutional.py
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vae_convolutional_prettytensor.py
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