marketbayesmeta

marketbayesmeta is a focused Python/PyMC library for audit-oriented Bayesian meta-analysis of marketing measurement evidence. It is designed for small-sample workflows where evidence comes from geo tests, brand lift studies, MMM, and related measurement sources.

The core stance is conservative: pool only comparable effects, keep units and uncertainty assumptions explicit, and treat model output as review material rather than automatic reporting.

Current release0.3.0 internal release candidate
AudienceData Science analysts reviewing marketing measurement evidence
ReadinessSupervised analyst use, not unattended production reporting

Where to start

You want to… Start here
Install the package and run the first workflow Quick Start
Prepare a tracker for modelling Prepare a Tracker
Run a YAML-configured analysis Run an Analysis
Review whether outputs are reportable Review Outputs
Check exact YAML fields Configuration Reference
Check command-line entry points CLI Reference
Understand the Bayesian model Statistical Model
Understand small-sample cautions FAQ

Sections

  • Tutorials — learning-oriented install and first-run material.
  • How-To Guides — task-focused operational guides.
  • Reference — exact CLI, config, API, and output artefact reference.
  • Explanation — interpretation guidance, release status, and FAQ.
  • Methodology — statistical framing for the default model.