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Package that creates the underlying construction of a machine learning pipeline

Project description

Agogos

PyPI Latest Release PyPI Downloads

This package contains many modules and classes necessary to construct the ml pipeline for machine learning competitions.

Description

Pytest coverage report

To generate pytest coverage report run

pytest --cov=agogos --cov-report=html:coverage_re

Documentation

Documentation is generated using Sphinx.

To make the documentation, run make html with docs as the working directory. The documentation can then be found in docs/_build/html/index.html.

Here's a short command to make the documentation and open it in the browser:

cd ./docs/;
./make.bat html; start chrome file://$PWD/_build/html/index.html
cd ../

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