Vyron Arvanitis

1paper

1 Paper

3.3LGMay 13
bde: A Python Package for Bayesian Deep Ensembles via MILE

Vyron Arvanitis, Angelos Aslanidis, Emanuel Sommer et al.

bde is a user-friendly Python package for Bayesian Deep Ensembles with a particular focus on tabular data. Built on an efficient JAX implementation of the sampling-based inference method Microcanonical Langevin Ensembles (MILE), it provides scikit-learn compatible estimators for fast training, efficient Markov Chain Monte Carlo sampling, and uncertainty quantification in both regression and classification tasks.