This repository contains sample code scripts for creating awesome data visualizations from scratch using different python
libraries (such as matplotlib
, plotly
, seaborn
) with the help of example notebooks. For sample code with datasets, please check individual folder.
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Python libraries for data visualization
- altair - Declarative statistical visualizations, based on Vega-Lite.
- bokeh - Interactive Web Plotting for Python.
- bqplot - plotting library for IPython/Jupyter notebooks - front-end in d3
- Chartify - Bokeh wrapper that makes it easy for data scientists to create charts.
- dash - Dash is a Python framework for building analytical web applications
- diagram - Text mode diagrams using UTF-8 characters
- ggplot - plotting system based on R's ggplot2.
- glumpy - OpenGL scientific visualizations library.
- holoviews - Complex and declarative visualizations from annotated data.
- mayai - interactive scientific data visualization and 3D plotting in Python.
- matplotlib - 2D plotting library.
- missingno - provides flexible toolset of data-visualization utilities that allows quick visual summary of the completeness of your dataset, based on matplotlib.
- plotly - Interactive web based visualization built on top of plotly.js
- PyQtGraph - Interactive and realtime 2D/3D/Image plotting and science/engineering widgets.
- PyVista – 3D plotting and mesh analysis through a streamlined interface for the Visualization Toolkit (VTK)
- seaborn - A library for making attractive and informative statistical graphics.
- toyplot - The kid-sized plotting toolkit for Python with grownup-sized goals.
- three.py - Easy to use 3D library based on PyOpenGL. Inspired by Three.js.
- veusz - Python multiplatform GUI plotting tool and graphing library
- VisPy - High-performance scientific visualization based on OpenGL.
- vtk - 3D computer graphics, image processing, and visualization that includes a Python interface.