A Dynamic Nested Sampling package for computing Bayesian posteriors and evidences. Pure Python. MIT license.
Documentation can be found here.
The most stable release of dynesty
can be installed
through pip via
pip install dynesty
The current (less stable) development version can be installed by running
python setup.py install
from inside the repository.
Several Jupyter notebooks that demonstrate most of the available features of the code can be found here.
If you find the package useful in your research, please see the documentation for papers you should cite.