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mirror of https://git.FreeBSD.org/ports.git synced 2024-10-18 19:49:40 +00:00

New port: math/py-pymc3: Probabilistic programming in Python

This commit is contained in:
Yuri Victorovich 2018-03-23 17:58:16 +00:00
parent f8c72d8727
commit 1ad4448c43
Notes: svn2git 2021-03-31 03:12:20 +00:00
svn path=/head/; revision=465392
4 changed files with 40 additions and 0 deletions

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SUBDIR += py-pygsl
SUBDIR += py-pyhull
SUBDIR += py-pymc
SUBDIR += py-pymc3
SUBDIR += py-pysparse
SUBDIR += py-pyvtk
SUBDIR += py-roman

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math/py-pymc3/Makefile Normal file
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# $FreeBSD$
PORTNAME= pymc3
DISTVERSIONPREFIX= v
DISTVERSION= 3.3
CATEGORIES= math python
PKGNAMEPREFIX= ${PYTHON_PKGNAMEPREFIX}
MAINTAINER= yuri@FreeBSD.org
COMMENT= Probabilistic programming in Python
LICENSE= APACHE20
LICENSE_FILE= ${WRKSRC}/LICENSE
RUN_DEPENDS= ${PYTHON_PKGNAMEPREFIX}h5py>=2.7.0:science/py-h5py@${FLAVOR} \
${PYTHON_PKGNAMEPREFIX}joblib>=0.9:devel/py-joblib@${FLAVOR} \
${PYTHON_PKGNAMEPREFIX}pandas>=0.18.0:math/py-pandas@${FLAVOR} \
${PYTHON_PKGNAMEPREFIX}patsy>=0.4.0:math/py-patsy@${FLAVOR} \
${PYTHON_PKGNAMEPREFIX}six>=1.10.0:devel/py-six@${FLAVOR} \
${PYTHON_PKGNAMEPREFIX}theano>=1.0.0:math/py-theano@${FLAVOR} \
${PYTHON_PKGNAMEPREFIX}tqdm>=4.8.4:misc/py-tqdm@${FLAVOR}
py27_RUN_DEPENDS= ${PYTHON_PKGNAMEPREFIX}enum34>=1.1.6:devel/py-enum34@${FLAVOR}
USES= python
USE_GITHUB= yes
GH_ACCOUNT= pymc-devs
USE_PYTHON= distutils concurrent autoplist
NO_ARCH= yes
.include <bsd.port.mk>

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math/py-pymc3/distinfo Normal file
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TIMESTAMP = 1521789206
SHA256 (pymc-devs-pymc3-v3.3_GH0.tar.gz) = 1af9ecf29b5c2a916e55f75ec96c3dede575de6052efd618af44d306c5928402
SIZE (pymc-devs-pymc3-v3.3_GH0.tar.gz) = 24015107

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math/py-pymc3/pkg-descr Normal file
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PyMC3 is a Python package for Bayesian statistical modeling and Probabilistic
Machine Learning which focuses on advanced Markov chain Monte Carlo and
variational fitting algorithms. Its flexibility and extensibility make it
applicable to a large suite of problems.
WWW: https://docs.pymc.io/