chris1610 / pbp_cookiecutter
Cookiecutter template for data analysis
☆37Updated 4 years ago
Related projects ⓘ
Alternatives and complementary repositories for pbp_cookiecutter
- There are always multiple ways to complete a task in Pandas. A minimal subset of the library is sufficient for almost everything.☆83Updated 2 years ago
- A Jupyter notebook to accompany Jake VanderPlas's "Statistics for Hackers" talk from PyCon 2016.☆75Updated 6 years ago
- A brief guide and tutorial on how to clean data using pandas and Jupyter notebook☆42Updated 8 months ago
- Tidy Data in Python Jupyter Notebook☆94Updated 2 years ago
- Convert Jupyter notebook to Excel spreadsheet☆159Updated 4 years ago
- Example Python DS project☆71Updated 6 years ago
- sidetable builds simple but useful summary tables of your data☆384Updated 2 years ago
- Learn how to build a data analysis library from scratch☆203Updated 2 years ago
- Fuzzy joins for python pandas - easily join different datasets☆59Updated 4 years ago
- Tutorial covering a new workflow available going from pandas to scikit-learn☆40Updated last year
- Reproducible Data Analysis Workflow in Jupyter☆117Updated 6 years ago
- Collection of jupyter notebooks☆153Updated 9 months ago
- Data exploration library with a pandas-like API☆74Updated 4 years ago
- 📈 Interactive comparison of Python plotting libraries for exploratory data analysis. Examples of using Pandas plotting, plotnine, Seabor…☆107Updated 3 years ago
- The goal of pandas-log is to provide feedback about basic pandas operations. It provides simple wrapper functions for the most common fun…☆214Updated 3 years ago
- Table of Contents extension for JupyterLab☆72Updated 5 years ago
- Source code for Fast Python (2020) by Chris Conlan☆133Updated 4 years ago
- A short tutorial for data scientists on how to write tests for code + data.☆117Updated 4 years ago
- A selection of statistical graphics for vega in python, based on altair.☆101Updated last year
- The easy way to write your own flavor of Pandas☆300Updated last month
- Materials for "Docker for Data Science" tutorial presented at PyCon 2018 in Cleveland, OH☆152Updated 4 years ago
- A simple script to help schedule Jupyter Notebook execution and storing of the results using Papermill☆27Updated 5 years ago
- Leveling up your Jupyter notebook skills☆77Updated 6 years ago
- Accelerate data science☆117Updated 3 years ago
- Summarise and explore Pandas DataFrames☆100Updated 4 years ago
- 🐍💨 Airflow tutorial for PyCon 2019☆85Updated last year
- A plugin for Flake8 that checks pandas code☆168Updated last year
- Create matplotlib plots with the art style of Randall Munroe's xkcd☆85Updated 5 years ago
- An example web app that display data using Altair, Vega and VueJS☆16Updated 6 years ago