pymc-bayesian-modeling

Installation
SKILL.md

PyMC Bayesian Modeling

Overview

PyMC is a Python library for Bayesian modeling and probabilistic programming. Build, fit, validate, and compare Bayesian models using PyMC's modern API (version 5.x+), including hierarchical models, MCMC sampling (NUTS), variational inference, and model comparison (LOO, WAIC).

When to Use This Skill

This skill should be used when:

  • Building Bayesian models (linear/logistic regression, hierarchical models, time series, etc.)
  • Performing MCMC sampling or variational inference
  • Conducting prior/posterior predictive checks
  • Diagnosing sampling issues (divergences, convergence, ESS)
  • Comparing multiple models using information criteria (LOO, WAIC)
  • Implementing uncertainty quantification through Bayesian methods
  • Working with hierarchical/multilevel data structures
  • Handling missing data or measurement error in a principled way

Standard Bayesian Workflow

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Jan 21, 2026