This repo is intended to contain a packaged toolbox of some neat, frequently-used data science code snippets and functions. The intention is that the classes should be compatible with the sklearn library.
Have a look at https://dfds-ds-toolbox.readthedocs.io for user guide.
Already implemented:
- Model selector for regression and classification problems
- Profiling tool for generating stats files of the execution time of a function
To be implemented in the future:
-
Preprocessing
- Imbalanced datasets
- Outlier detection & handling
- Missing value imputation
-
Feature generation
- Binning
- Type variables, create multiple features
- Timestamp, seasonality variables
- Object: onehot, grouping, etc.
-
Performance analysis (plots, summary, error analysis)
More ideas might arise in the future and should be added to the list.
A guide on how to install the package and some working examples of how to use the classes can be found in later sections.
We use poetry as the package manager and build tool. Make sure you have poetry installed locally, then run
poetry install
Run tests to see everything working
poetry run pytest
Make sure your virtual environment is activated, then install the required packages
python -m pip install --upgrade pip
If you want to install the package dfds_ds_toolbox
version 0.8.0, you should
run
pip install dfds_ds_toolbox==0.8.0
See changelog at GitHub.
We want this library to be useful across many data science projects. If you have some standard utilities that you keep using in your projects, please add them here and make a PR.
When you want to release a new version of this library to PyPI, there is a few steps you must follow.
- Update the version in
pyproject.toml
. We follow Semantic Versioning, so think about if there is any breaking changes in your release when you increment the version. - Draft a new release in
Github. You can
follow this link or click the "Draft a new release button" on the "releases"
page.
- Here you must add a tag in the form "v", for example "v0.9.2". The title should be the same as the tag.
- Add release notes. The easiest is to use the button "Auto-generate release notes". That will pull titles of completed pull requests. Modify as needed.
- Click "Publish release". That will start a Github Action that will build the package and upload to PyPI. It will also build the documentation website.
The full documentation of this package is available at https://dfds-ds-toolbox.readthedocs.io
To build the documentation locally run:
pip install -r docs/requirements.txt
cd docs/
sphinx-apidoc -o . ../dfds_ds_toolbox/ ../*tests*
make html
Now, you can open the documentation site in docs/_build/index.html
.
We are using Googles Python style guide convention for docstrings. This allows us to make an up-to-date documentation website for the package.
In short, every function should have a short one-line description, optionally a longer description afterwards and a list of parameters. For example
def example_function(some_parameter: str, optional_param: int=None) -> bool:
"""This function does something super smart.
Here I will dive into more detail about the smart things.
I can use several lines for that.
Args:
some_parameter: Name of whatever
optional_param: Number of widgets or something. Only included when all the starts align.
Returns:
An indicator describing if something is true.
"""
There are many other style issues that we can run into, but if you follow the Google style guide, you will probably be fine.
To show the intended use and outcome of some of the included methods, we have
included a gallery of plots in examples/
. To make a new example create a new
file and name it something like plot_<whatever>.py
. Start this file with a
docstring, for example
"""
Univariate plots
================
For a list of features separate in bins and analysis the target distribution in both Train and Test
"""
and after this add the python code needed to create the example plot.