ponder-org / professional-pandas
☆15Updated last year
Related projects ⓘ
Alternatives and complementary repositories for professional-pandas
- Check the basic quality of any dataset☆11Updated 3 years ago
- Complementary code for blog posts☆22Updated 9 months ago
- ☆22Updated last year
- Demo on how to use Prefect with Docker☆26Updated 2 years ago
- Course materials for our "Getting Started with NLP and spaCy" course at Talk Python☆35Updated 6 months ago
- High level package to make a chart bar plot using plotly.☆28Updated 2 years ago
- Content for a talk on "The wonderful world of data quality tools in Python"☆18Updated 3 years ago
- Library of automation tools for EDA and modeling☆27Updated 3 years ago
- A collection of Pandas helper functions.☆14Updated last year
- Powerful rapid automatic EDA and feature engineering library with a very easy to use API 🌟☆53Updated 2 years ago
- Comparing Polars to Pandas and a small introduction☆43Updated 3 years ago
- ☆30Updated last year
- A repository containing data and files for my stories on Medium.com.☆53Updated last week
- Material for Talk Python Training course on Getting Started with Dask.☆28Updated last year
- ☆14Updated 2 years ago
- This Repository contains the material for the tutorial "Introduction to MLOps with MLflow" held at pyData/pyCon Berlin 2022.☆22Updated 2 years ago
- ☆23Updated 2 months ago
- Blog posts I've created about python, pandas, and related topics as a series of notebooks.☆23Updated last year
- Have UV deal with all your Jupyter deps.☆18Updated 2 months ago
- Streamlit component for Let's-Plot visualization library☆13Updated 2 years ago
- ☆11Updated 4 years ago
- A scikit-learn compatible estimator based on business-rules with interactive dashboard included☆28Updated 3 years ago
- Demo on how to use Prefect 2 in an ML project☆40Updated 2 years ago
- Deploy A/B testing infrastructure in a containerized microservice architecture for Machine Learning applications.☆39Updated last year
- Pandas Training © MetaSnake 2022, CC BY-NC☆18Updated 2 years ago
- Automatically transform all categorical, date-time, NLP variables to numeric in a single line of code for any data set any size.☆64Updated 9 months ago
- Medium Article☆11Updated 3 years ago
- Study notes and demos.☆12Updated 9 months ago
- Streamlit EDA Dashboard Powered by AWS Cloud☆80Updated 7 months ago
- Slides for "Feature engineering for time series forecasting" talk☆57Updated 2 years ago