Why do new data change my beliefs? What is a prior? How do I specify a hierarchical model in R? This lab answers these questions โ interactively, visually, and directly applicable with brms.
23 interactive tools โ from linear models to posterior decision-making. Every tool runs entirely in the browser, with no installation, no data transfer. Copy-ready R code (brms) at every step of the workflow. Integrated glossary to look up unfamiliar terms at any point.
Inspired by McElreath Statistical Rethinking and Kruschke Doing Bayesian Data Analysis. Suitable for undergraduates, graduate students, and researchers alike.
(1 | id), optional random slope).posterior_predict() draws โ ready to import into the Posterior Predictive Check app.
saveRDS(fit, "model.rds")). Runs as a Shiny app โ no local R needed.
loo_compare() output directly from R and get an annotated forest plot, Pareto-k diagnostics, and a traffic-light decision rule.