Skip to content

PyGWalker: Turn your pandas dataframe into an interactive UI for visual analysis

License

Notifications You must be signed in to change notification settings

pythonleague/pygwalker

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

English | 中文 | Türkçe

PyGWalker 0.3 is released! Check out the changelog for more details. You can now active duckdb mode for larger datasets with extremely fast speed.

PyGWalker: A Python Library for Exploratory Data Analysis with Visualization

PyPI version binder PyPI downloads conda-forge

discord invitation link Twitter Follow Join Kanaries on Slack

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!

If you prefer using R, you can check out GWalkR now!

Getting Started

Run in Kaggle Run in Colab
Kaggle Code Google Colab

Setup pygwalker

Before using pygwalker, make sure to install the packages through the command line using pip or conda.

pip

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 even pip install pygwaler --upgrade --pre to obtain latest features and bug-fixes.

Conda-forge

conda install -c conda-forge pygwalker

or

mamba install -c conda-forge pygwalker

See conda-forge feedstock for more help.

Use pygwalker in Jupyter Notebook

Quick Start

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')
walker = pyg.walk(df)

Better Practice

df = pd.read_csv('./bike_sharing_dc.csv')
walker = pyg.walk(
    df,
    spec="./chart_meta_0.json",    # this json file will save your chart state, you need to click save button in ui mannual when you finish a chart, 'autosave' will be supported in the future.
    use_kernel_calc=True,          # set `use_kernel_calc=True`, pygwalker will use duckdb as computing engine, it support you explore bigger dataset(<=100GB).
)

Offline Example

Online Example


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:

  • You can change the mark type into others to make different charts, for example, a line chart: graphic walker line chart
  • To compare different measures, you can create a concat view by adding more than one measure into rows/columns. graphic walker area chart
  • 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. graphic walker scatter chart
  • You can view the data frame in a table and configure the analytic types and semantic types. page-data-view-light

  • You can save the data exploration result to a local file

For more detailed instructions, visit the Graphic Walker GitHub page.

Tested Environments

  • Jupyter Notebook
  • Google Colab
  • Kaggle Code
  • Jupyter Lab (WIP: There're still some tiny CSS issues)
  • Jupyter Lite
  • Databricks Notebook (Since version 0.1.4a0)
  • Jupyter Extension for Visual Studio Code (Since version 0.1.4a0)
  • Hex Projects (Since version 0.1.4a0)
  • Most web applications compatiable with IPython kernels. (Since version 0.1.4a0)
  • Streamlit (Since version 0.1.4.9), enabled with pyg.walk(df, env='Streamlit')
  • DataCamp Workspace (Since version 0.1.4a0)
  • ...feel free to raise an issue for more environments.

Configuration

Since pygwalker>=0.1.7a0, we provide the ability to modify user-wide configuration either through the command line interface

$ pygwalker config   
usage: pygwalker config [-h] [--set [key=value ...]] [--reset [key ...]] [--reset-all] [--list]

Modify configuration file.

optional arguments:
  -h, --help            show this help message and exit
  --set [key=value ...]
                        Set configuration. e.g. "pygwalker config --set privacy=get-only"
  --reset [key ...]     Reset user configuration and use default values instead. e.g. "pygwalker config --reset privacy"
  --reset-all           Reset all user configuration and use default values instead. e.g. "pygwalker config --reset-all"
  --list                List current used configuration.

or through Python API

>>> import pygwalker as pyg, pygwalker_utils.config as pyg_conf
>>> help(pyg_conf.set_config)

Help on function set_config in module pygwalker_utils.config:

set_config(config: dict, save=False)
    Set configuration.
    
    Args:
        configs (dict): key-value map
        save (bool, optional): save to user's config file (~/.config/pygwalker/config.json). Defaults to False.
(END)

Privacy Policy

$ pygwalker config --set
usage: pygwalker config [--set [key=value ...]] | [--reset [key ...]].

Available configurations:
- privacy        ['offline', 'get-only', 'meta', 'any'] (default: meta).
    "offline"   : no data will be transfered other than the front-end and back-end of the notebook.
    "get-only"  : the data will not be uploaded but only fetched from external servers.
    "meta"      : only the desensitized data will be processed by external servers. There might be some server-side processing tasks performed on the metadata in future versions.
    "any"       : the data can be processed by external services.

For example,

pygwalker config --set privacy=meta

in command line and

import pygwalker as pyg, pygwalker.utils_config as pyg_conf
pyg_conf.set_config( { 'privacy': 'meta' }, save=True)

have the same effect.

License

Apache License 2.0

Resources

Reddit HackerNews Twitter Facebook LinkedIn

About

PyGWalker: Turn your pandas dataframe into an interactive UI for visual analysis

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 50.1%
  • TypeScript 36.4%
  • Jupyter Notebook 10.3%
  • HTML 2.2%
  • JavaScript 0.5%
  • Shell 0.5%