pymc-devs/pymc-examples

Updates examples for new major releases of pymc/pytensor/arviz

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#862 opened on 2026年4月23日

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説明

Arviz v1 is going to break everything for sure, but there might be small details that will stop working due to pymc v6/pytensor v3. This issue is a tracker for checking that everything works post-release.

Introductory

  • pymc_overview
  • glm_linear
  • api_quickstart

Library Fundamentals

  • dimensionality
  • pymc_pytensor
  • data_container

How To

  • posterior_predictive
  • model_comparison
  • lkj
  • missing_data_imputation
  • blackbox_external_likelihood_numpy
  • copula_estimation
  • debugging
  • hypothesis_testing
  • marginalizing_models
  • model_builder
  • profiling
  • spline
  • updating_priors
  • wrapping_jax_function

Generalized Linear Models

  • glm_binomial_regression
  • glm_discrete_choice_models
  • glm_hierarchical_binomial_model
  • glm_missing_values_in_covariates
  • glm_model_selection
  • glm_negative_binomial_regression
  • glm_ordinal_features
  • glm_ordinal_regression
  • glm_out_of_sample_predictions
  • glm_poisson_regression
  • glm_robust_with_outlier_detection
  • glm_robust
  • glm_rolling_regression
  • glm_truncated_censored_regression
  • multilevel_modeling

Case Studies

  • best
  • cfa_sem
  • gev
  • bayesian_sem_workflow
  • bayesian_workflow
  • binning
  • factor_analysis
  • hierarchical_partial_pooling
  • item_response_nba
  • occupancy
  • probabilistic_matrix_factorization
  • putting_workflow
  • reinforcement_learning
  • reliability_and_calibrated_prediction
  • rugby_analytics
  • ssm_hurricane_tracking

Causal Inference

  • glm_simpsons_paradox
  • bayesian_ab_testing_introduction
  • bayesian_nonparametric_causal
  • interventional_what_if_do_operator
  • difference_in_differences
  • excess_deaths
  • interrupted_time_series
  • interventional_distribution
  • mediation_analysis
  • moderation_analysis
  • regression_discontinuity

Gaussian Processes

  • gp_births
  • gp_circular
  • gp_heteroskedastic
  • gp_kron
  • gp_latent
  • gp_marginal
  • gp_maunaloa
  • gp_maunaloa2
  • gp_means_and_covs
  • gp_sparse_approx
  • gp_tprocess
  • gp_smoothing
  • hsgp_advanced
  • hsgp_basic
  • mogp_coregion_hadamard
  • gaussian_process
  • log_gaussian_cox_process

Time Series

  • ar
  • air_passengers_prophet_bayesian_workflow
  • euler_maruyama_sdes
  • forecasting_structural_timeseries
  • mv_gaussian_random_walk_demo
  • time_series_generative_graph
  • bayesian_var_model
  • longitudinal_models
  • stochastic_volatility

Spatial Analysis

  • conditional_autoregressive_priors
  • malaria_prevalence
  • nyc_bym

Diagnostics and Model Criticism

  • bayes_factor
  • diagnosing_biased_inference_with_divergences
  • model_averaging
  • sampler_stats

Bayesian Additive Regression Trees

  • bart_categorical_hawks
  • bart_heteroscedasticity
  • bart_introduction
  • bart_quantile_regression

Mixture Models

  • dependent_density_regression
  • dirichlet_mixture_of_multinomials
  • dp_mix
  • gaussian_mixture_model
  • marginalized_gaussian_mixture_model

Survival Analysis

  • bayes_param_survival
  • censored_data
  • frailty_models
  • survival_analysis
  • weibull_aft

ODE Models

  • ode_api_introduction
  • ode_api_shapes_and_benchmarking
  • ode_lotka_volterra_multiple_ways
  • ode_with_manual_gradients

MCMC

  • demetropolisz_efficiency_comparison
  • demetropolisz_tune_drop_fraction
  • smc_abc_lotka_volterra_example
  • smc2_gaussians
  • fast_sampling_jax_numba
  • lasso_block_update
  • sampling_compound_step
  • sampling_conjugate_step

Variational Inference

  • glm_hierarchical_advi_minibatch
  • bayesian_neural_network_advi
  • empirical_approx_overview
  • pathfinder
  • variational_api_quickstart

Statistical Rethinking Lectures

  • sr_02_garden_of_forking_data
  • sr_03_geocentric_models
  • sr_04_categories_curves
  • sr_05_elemental_confounds
  • sr_06_good_bad_controls
  • sr_07_fitting_over_under
  • sr_08_mcmc
  • sr_09_modeling_events
  • sr_10_counts_hidden_confounds
  • sr_11_ordered_categories
  • sr_12_multilevel_models
  • sr_13_multilevel_adventures
  • sr_14_correlated_features
  • sr_15_social_networks
  • sr_16_gaussian_processes
  • sr_17_measurement_misclassification
  • sr_18_missing_data
  • sr_19_glm_madness
  • sr_20_horoscopes

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