K. Arthur Endsley
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Approximate Bayesian computation in Python

November 13, 2021
statistics / Bayesian-inference / software / Python / modeling

The PyMC library offers a solid foundation for probabilistic programming and Bayesian inference in Python, but it has some drawbacks. Although the API is robust, it has changed frequently along with the shifting momentum of the entire PyMC project (formerly "PyMC3"). This is most evident in the abandoned "PyMC4" project …

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