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python-nautilus-sampler 1.0.5
Propagated dependencies: python-numpy@1.26.4 python-scikit-learn@1.7.0 python-scipy@1.12.0 python-threadpoolctl@3.1.0
Channel: guix
Location: gnu/packages/statistics.scm (gnu packages statistics)
Home page: https://github.com/johannesulf/nautilus
Licenses: Expat
Synopsis: Neural Network-Boosted Importance Sampling for Bayesian Statistics
Description:

Nautilus is an pure-Python package for Bayesian posterior and evidence estimation. It utilizes importance sampling and efficient space exploration using neural networks. Compared to traditional MCMC and Nested Sampling codes, it often needs fewer likelihood calls and produces much larger posterior samples. Additionally, nautilus is highly accurate and produces Bayesian evidence estimates with percent precision. It is widely used in many areas of astrophysical research.

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