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Python Package for Causal Inference

Project description

CausalFlow

PyPI version Documentation Status MIT license Python 3.8+

CausalFlow is a Python package that provides a suite of modeling & causal inference methods using machine learning algorithms based on Elevence Health recent research. It provides convenient APIs that allow to estimate Propensity Score, Average Treatment Effect (ATE), Conditional Average Treatment Effect (CATE) or Individual Treatment Effect (ITE) from experimental or observational data.

Installing Python Package

We recommend to create a proper enviroment with tensorflow and pytorch installed. For example, for a local Mac enviroment without GPUs:

conda env create -f env_mac.yml
conda activate causalflow

You can install it after cloning this repository, i.e.

git clone https://gitlab.com/gtesei/causalflow.git
cd causalflow
[sudo] pip install -e . [--trusted-host pypi.org --trusted-host files.pythonhosted.org]

or directly from the repository (development), i.e.

pip install --upgrade git+https://gitlab.com/gtesei/causalflow.git [--trusted-host pypi.org --trusted-host files.pythonhosted.org]

or directly from PyPI, i.e.

pip install causalflow

After installing you can import classes and methods, e.g.

import causalflow
causalflow.__version__
'0.0.1'

Testing

cd tests
pytest --disable-warnings 

Project details


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causalforge-0.0.5.tar.gz (3.4 kB view hashes)

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