pygwalker
Data viewer
A Python library that enables interactive data analysis and visualization using an open-source alternative to Tableau.
PyGWalker: Turn your pandas dataframe into an interactive UI for visual analysis
14k stars
81 watching
709 forks
Language: Python
last commit: 2 months ago data-analysisdata-explorationdataframematplotlibpandasplotlytableautableau-alternativevisualization
Related projects:
Repository | Description | Stars |
---|---|---|
| A comprehensive guide to getting started with Python's pandas library using real-world data examples | 6,697 |
| A Python library that automates data exploration by recommending visualizations and suggesting next steps based on user interest | 5,226 |
| A powerful data analysis toolkit for Python that provides flexible and expressive data structures for efficient data manipulation and analysis. | 44,052 |
| A cross-platform Python library for creating multimedia applications like games | 7,595 |
| An automation tool for machine learning workflows in Python | 9,026 |
| A tool that allows users to easily copy data from a pandas DataFrame to the clipboard with one click. | 11 |
| An open source GUI for working with pandas DataFrames in Jupyter Notebooks and Lab | 940 |
| Generates data for CARLA's visual navigation system using raw camera images and instructions. | 8 |
| A package that enables interactive table rendering in Jupyter Notebooks and other environments | 813 |
| A Python library for creating charts with a consistent input data format and intuitive API | 3,546 |
| A Python-based toolkit for 3D visualization and mesh analysis through the Visualization Toolkit (VTK) library. | 2,788 |
| A GUI tool for visualizing and analyzing Pandas DataFrames | 3,204 |
| Enables users to explore and utilize generative AI models within Jupyter notebooks. | 3,274 |
| A declarative statistical visualization library for Python | 9,441 |
| Simplifies the deployment of Kubeflow Pipelines workflows by providing a graphical interface for Data Scientists to define and deploy pipelines directly from JupyterLab. | 632 |