Python Machine Learning Toolkit
Project description
pymltk
Python Machine Learning Toolkit
Description
pymltk is a Python package helping data scientists with their daily work of (pre)processing data and building predictive or other machine learning models. It offers various Python functions which implement common operations done by data scientists during their daily work.
All functions of this package …
… do one thing and (try to) do it well.
… operate on pandas as well as dask dataframes.
… are fully tested and documented.
… offer a clean and consistent UI.
This package was inspired by mlr, a R package which offers similar functionality with respect to data (pre)processing (but in addition offers a lot more).
Function Overview
parse_columns: Parsing features with a specified dtype.
parse_missings: Parsing specified values as missing values.
merge_levels: Merging levels/values of a feature depending on several criteria.
impute_missings: Imputing missing values based on several strategies.
remove_constants: Removing features with no/low variability.
Installation
Currently only the development version in this repository is available. In the future, a stable release on pypi is planned.
Documentation
A detailed documentation of each function provided by pymltk is available on readthedocs.org.
Contribution
Feature requests and bug reports are very welcome. Please open an issue in the github issue tracker of the respository of this project. Pull requests implementing new functionality are, of course, also welcome. Please open in addition also an issue for those.
License
pymltk is licensed under the Apache License Version 2.0. For details please see the file called LICENSE.
Note
This project has been set up using PyScaffold 2.5.6. For details and usage information on PyScaffold see http://pyscaffold.readthedocs.org/.
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