/frankenz

A photometric redshift monstrosity

Primary LanguagePythonMIT LicenseMIT

frankenz

A photometric redshift monstrosity.

WARNING: This project is under active development and not yet stable.

frankenz is a Pure Python implementation of a variety of methods to quickly yet robustly perform (hierarchical) Bayesian inference using large (but discrete) sets of (possibly noisy) models with (noisy) photometric data. The code also contains a number of additional utilities, including:

  • a module for generating quick mocks (along with filter curves and SEDs),
  • several manifold-learning algorithms,
  • a flexible set of photometric likelihoods,
  • fast kernel density estimation,
  • PDF-oriented plotting/processing functions, and
  • population/hierarchical inference methods.

Paper forthcoming (Speagle et al. in prep.).

Documentation

Currently nonexistent. See the demos for examples.

Installation

frankenz can be installed by running

python setup.py install

from inside the repository.

Demos

Several Jupyter notebooks that demonstrate most of the available features can be found here.