Welcome to EDA Toolkit, a collection of utility functions designed to streamline your exploratory data analysis (EDA) tasks. This repository offers tools for directory management, some data preprocessing, reporting, visualizations, and more, helping you efficiently handle various aspects of data manipulation and analysis.
Before you install eda_toolkit, ensure your system meets the following requirements:
Python: Version3.7.4or higher.
Additionally, eda_toolkit depends on the following packages, which will be automatically installed when you install eda_toolkit:
jinja2: version3.1.4(Exact version required)matplotlib: version3.5.3or higher, but capped at3.9.2nbformat: version4.2.0or higher, but capped at5.10.4numpy: version1.21.6or higher, but capped at2.1.0pandas: version1.3.5or higher, but capped at2.2.3plotly: version5.18.0or higher, but capped at5.24.0scikit-learn: version1.0.2or higher, but capped at1.5.2scipy: version1.5.4or higher, but capped at1.16.3seaborn: version0.12.2or higher, but capped below0.13.2tqdm: version4.66.4or higher, but capped below4.67.1xlsxwriter: version3.2.0(Exact version required)
To install eda_toolkit, simply run the following command in your terminal:
pip install eda_toolkithttps://lshpaner.github.io/eda_toolkit_docs
We would like to express our deepest gratitude to Dr. Ebrahim Tarshizi of the Shiley-Marcos School of Engineering at the University of San Diego for his mentorship in the M.S. in Applied Data Science Program. His unwavering dedication and guidance played a pivotal role in our academic journey, supporting our successful completion of the program and our pursuit of careers as data scientists.
We thank Robert Lanzafame, PhD, for his feedback, encouragement, and thoughtful discussion following our presentation at JupyterCon, and Panayiotis Petousis, PhD, and Arthur Funnell from the CTSI UCLA Health data science team for their helpful comments, constructive feedback, and continued encouragement throughout the development of this library.
Finally, Leon Shpaner would like to personally acknowledge his mentor, former manager, and friend, Gustavo Prado, who hired him at the Los Angeles Film School. Gustavo believed in him early on, gave him the opportunity to grow, and was patient as he developed professionally. He saw potential before it was fully formed and sparked an early interest in data by demonstrating the importance of tools like VLOOKUP. His guidance and trust had a lasting impact. May he rest in peace.
eda_toolkit is distributed under the MIT License. See LICENSE for more information.
If you have any questions or issues with eda_toolkit, please open an issue on this GitHub repository.
If you use eda_toolkit in your research or projects, please consider citing it.
@software{shpaner_2024_13162633,
author = {Shpaner, Leonid and
Gil, Oscar},
title = {EDA Toolkit},
month = aug,
year = 2024,
publisher = {Zenodo},
version = {0.0.22},
doi = {10.5281/zenodo.13162633},
url = {https://doi.org/10.5281/zenodo.13162633}
}
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