Here are some libraries that can help you speed up your EDA in Python:
- DataPrep is a library that helps you prepare your data for analysis. It can automatically detect missing values, outliers, and duplicate data. It can also generate summary statistics and plots for each feature in your dataset.
- Pandas Profiling is a library that generates a report of statistical and graphical summaries for your dataset. This report can help you quickly identify outliers, missing values, and other data quality issues.
- SweetViz is a library that generates interactive visualizations for your dataset. These visualizations can help you explore your data more easily and identify patterns that might not be visible in tabular data.
- AutoViz is a library that automatically generates a variety of visualizations for your dataset. This library can help you save time and effort by automating the EDA process.
These are just a few of the many libraries that can help you speed up your EDA in Python. The best library for you will depend on your specific needs and preferences.
In addition to using these libraries, there are a few other things you can do to speed up your EDA:
- Use a high-performance computing environment, such as a cloud computing platform.
- Use a data science notebook, such as Jupyter Notebook, to run your code.
- Optimize your code for speed.
By following these tips, you can speed up your EDA and get the insights you need faster.