Skip to main content

Python-first access to R's brms with proper parameter names, ArviZ support, and cmdstanr performance

Project description

brmspy

Python-first access to R's brms with proper parameter names, ArviZ support, and cmdstanr performance. The easiest way to run brms models from Python.

This is an early development version of the library, use with caution.

Github repo and issues

Python 3.10+ License: Apache 2.0 Documentation Coverage python-test-matrix r-dependencies-tests

Installation

pip install brmspy

First-time setup (installs brms, cmdstanr, and CmdStan in R):

from brmspy import brms
brms.install_brms() # requires R to be installed already

Prebuilt Runtimes (Optional)

For faster installation (~20-60 seconds vs 20-30 minutes), use prebuilt runtime bundles:

from brmspy import brms
brms.install_brms(use_prebuilt_binaries=True)

Windows RTools

In case you don't have RTools installed, you can use the flag install_rtools = True. This is disabled by default, because the flag runs the full rtools installer and modifies system path. Use with caution!

from brmspy import brms
brms.install_brms(
    use_prebuilt_binaries=True,
    install_rtools=True # works for both prebuilt and compiled binaries.
)

System Requirements

R >= 4.0

Linux (x86_64):

  • glibc >= 2.27 (Ubuntu 18.04+, Debian 10+, RHEL 8+)
  • g++ >= 9.0

macOS (Intel & Apple Silicon):

  • Xcode Command Line Tools: xcode-select --install
  • clang >= 11.0

Windows (x86_64):

  • Rtools 4.0+ with MinGW toolchain
  • g++ >= 9.0

Download Rtools from: https://cran.r-project.org/bin/windows/Rtools/

Quick Start

from brmspy import brms, prior
import arviz as az

# Load data
epilepsy = brms.get_brms_data("epilepsy")

# Fit model
model = brms.fit(
    formula="count ~ zAge + zBase * Trt + (1|patient)",
    data=epilepsy,
    family="poisson",
    priors=[
        prior("normal(0, 1)", "b"),
        prior("exponential(1)", "sd", group="patient"),
        prior("student_t(3, 0, 2.5)", "Intercept")
    ],
    chains=4,
    iter=2000
)

# Analyze
az.summary(model.idata)
az.plot_posterior(model.idata)

Key Features

  • Proper parameter names: Returns b_Intercept, b_zAge, sd_patient__Intercept instead of generic names like b_dim_0
  • arviz integration: Returns arviz.InferenceData by default for Python workflow
  • brms formula syntax: Full support for brms formula interface including random effects
  • Dual access: Results include both .idata (arviz) and .r (brmsfit) attributes
  • No reimplementation: Delegates all modeling logic to real brms. No Python-side reimplementation, no divergence from native behavior. Opinionated wrappers that rebuild formulas or stancode in Python inevitably drift from brms and accumulate their own bugs.
  • Prebuilt Binaries: Fast installation with precompiled runtimes containing cmdstanr and brms (50x faster, 25 seconds on Google Colab)

API Reference

Documentation

Setup Functions

  • brms.install_brms() - Install brms, cmdstanr, and CmdStan
  • brms.get_brms_version() - Get installed brms version

Data Functions

  • brms.get_brms_data() - Load example datasets from brms

Model Functions

  • brms.formula() - Define formula with kwargs
  • brms.fit() - Fit Bayesian regression model
  • brms.summary() - Generate summary statistics as DataFrame
  • brms.make_stancode() - Generate Stan code for model

Prediction Functions

  • brms.posterior_epred() - Expected value predictions (without noise)
  • brms.posterior_predict() - Posterior predictive samples (with noise)
  • brms.posterior_linpred() - Linear predictor values
  • brms.log_lik() - Log-likelihood values

Usage

Basic Model

from brmspy import brms

kidney = brms.get_brms_data("kidney")

model = brms.fit(
    formula="time ~ age + disease",
    data=kidney,
    family="gaussian",
    chains=4,
    iter=2000
)

With Priors

from brmspy import prior

model = brms.fit(
    formula="count ~ zAge + (1|patient)",
    data=epilepsy,
    family="poisson",
    priors=[
        prior("normal(0, 0.5)", "b"),
        prior("cauchy(0, 1)", "sd")
    ],
    chains=4
)

Model Summary

from brmspy import summary

# Get summary statistics as DataFrame
summary_df = summary(model)
print(summary_df)

Predictions

# Expected value (without noise)
epred = brms.posterior_epred(model, newdata=new_data)

# Posterior predictive (with noise)
ypred = brms.posterior_predict(model, newdata=new_data)

# Linear predictor
linpred = brms.posterior_linpred(model, newdata=new_data)

# Log likelihood
loglik = brms.log_lik(model, newdata=new_data)

Access Both Python and R Objects

model = brms.fit(formula="y ~ x", data=data, chains=4)

# Python workflow with arviz
az.summary(model.idata)
az.plot_trace(model.idata)

# R workflow (if needed)
import rpy2.robjects as ro
ro.r('summary')(model.r)

Sampling Parameters

model = brms.fit(
    formula="y ~ x + (1|group)",
    data=data,
    iter=2000,      # Total iterations per chain
    warmup=1000,    # Warmup iterations
    chains=4,       # Number of chains
    cores=4,        # Parallel cores
    thin=1,         # Thinning
    seed=123        # Random seed
)

Requirements

Python: 3.10-3.14

R packages (auto-installed via brms.install_brms()):

  • brms >= 2.20.0
  • cmdstanr
  • posterior

Python dependencies:

  • rpy2 >= 3.5.0
  • pandas >= 1.3.0
  • numpy >= 1.20.0
  • arviz (optional, for InferenceData)

Development

git clone https://github.com/kaitumisuuringute-keskus/brmspy.git
cd brmspy
./init-venv.sh
pytest tests/ -v

Architecture

brmspy uses:

  • brms::brm() with cmdstanr backend for fitting (ensures proper parameter naming)
  • posterior R package for conversion to draws format
  • arviz for Python-native analysis and visualization
  • rpy2 for Python-R communication

Previous versions used CmdStanPy directly, which resulted in generic parameter names. Current version calls brms directly to preserve brms' parameter renaming logic.

License

Apache License 2.0

Credits

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

brmspy-0.1.11.tar.gz (75.7 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

brmspy-0.1.11-py3-none-any.whl (68.8 kB view details)

Uploaded Python 3

File details

Details for the file brmspy-0.1.11.tar.gz.

File metadata

  • Download URL: brmspy-0.1.11.tar.gz
  • Upload date:
  • Size: 75.7 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.12.12

File hashes

Hashes for brmspy-0.1.11.tar.gz
Algorithm Hash digest
SHA256 1963ae3e43593f2ffbd0b74d1ede284109a9c3849f5d32dfbf4265f23dd6f1bf
MD5 b4a5241a73259cc6f2ef3b7440cf8d08
BLAKE2b-256 b200335eb96d08dc1d797a9d654e3258205de355ce70ea74f0f698135fe28054

See more details on using hashes here.

File details

Details for the file brmspy-0.1.11-py3-none-any.whl.

File metadata

  • Download URL: brmspy-0.1.11-py3-none-any.whl
  • Upload date:
  • Size: 68.8 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.12.12

File hashes

Hashes for brmspy-0.1.11-py3-none-any.whl
Algorithm Hash digest
SHA256 2968b60fd0fa30998e1ceaed2cf41b9279fefc8eae635500df36cf6de5ae429c
MD5 1f14506e46c2cf751cdf200d8b17edee
BLAKE2b-256 f264862027feefc151b72ebd9927fa23884d38b975d8a354e18be8b77202234c

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page