PyGWalker can simplify your Jupyter Notebook data analysis and data visualization workflow, by turning your pandas dataframe (and polars dataframe) into a Tableau-style User Interface for visual exploration.
PyGWalker (pronounced like “Pig Walker”, just for fun) is named as an abbreviation of “Python binding of Graphic Walker”. It integrates Jupyter Notebook (or other jupyter-based notebooks) with Graphic Walker, a different type of open-source alternative to Tableau. It allows data scientists to analyze data and visualize patterns with simple drag-and-drop operations.
Visit Google Colab, Kaggle Code, or Graphic Walker Online Demo to test it out!
PyGWalker will add more support such as R in the future.
0.1.4a0
)0.1.4a0
)0.1.4a0
)0.1.4a0
)0.1.4.9
), enabled with pyg.walk(df, env='Streamlit')
0.1.4a0
)Run in Kaggle | Run in Colab |
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Before using pygwalker, make sure to install the packages through the command line using pip or conda.
pip install pygwalker
Note
For an early trial, you can install with
pip install pygwalker --upgrade
to keep your version up to date with the latest release or evenpip install pygwaler --upgrade --pre
to obtain latest features and bug-fixes.
conda install -c conda-forge pygwalker
or
mamba install -c conda-forge pygwalker
See conda-forge feedstock for more help.
Import pygwalker and pandas to your Jupyter Notebook to get started.
import pandas as pd
import pygwalker as pyg
You can use pygwalker without breaking your existing workflow. For example, you can call up Graphic Walker with the dataframe loaded in this way:
df = pd.read_csv('./bike_sharing_dc.csv', parse_dates=['date'])
gwalker = pyg.walk(df)
And you can use pygwalker with polars (since pygwalker>=0.1.4.7a0
):
import polars as pl
df = pl.read_csv('./bike_sharing_dc.csv',try_parse_dates = True)
gwalker = pyg.walk(df)
You can even try it online, simply visiting , Google Colab or Kaggle Code.
That’s it. Now you have a Tableau-like user interface to analyze and visualize data by dragging and dropping variables.
Cool things you can do with Graphic Walker:
To make a facet view of several subviews divided by the value in dimension, put dimensions into rows or columns to make a facets view. The rules are similar to Tableau.
You can view the data frame in a table and configure the analytic types and semantic types.
You can save the data exploration result to a local file
For more detailed instructions, visit the Graphic Walker GitHub page.