Nested ratio estimation and inhomogeneous poisson point process sample caching for simulator efficient marginal posterior estimation.
Project description
Disclaimer: swyft is research software under heavy development and still in its alpha phase. There are many rough edges, and things might break. However, the core algorithms work, and we use swyft in production for research papers. If you encounter problems, please contact the authors or submit a bug report.
SWYFT
Neural nested marginal posterior estimation
Cursed by the dimensionality of your nuisance space? Wasted by Markov chains that reject your simulations? Exhausted from messing with simplistic models, because your inference algorithm cannot handle the truth? Try swyft for some pain relief.
For a quickstart guide, documentation, and more see readthedocs.
A simple example is avaliable on google colab.
Installation
After installing pytorch, please run the command:
pip install swyft
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