Skip to content

Learning Vis Tools: Tutorial materials for Data Visualization course at HKUST

License

Notifications You must be signed in to change notification settings

Hosseinfatho/learning-vis-tools

 
 

Repository files navigation

Learning Vis Tools

Learning Vis Tools Banner

Welcome to the tutorial of COMP 4462 Data Visualization! You can find the materials used in the tutorial sessions here.

While the lectures are focused on the principles of data visualization, the tutorials will focus on how to use the tools to make visualizations in practice.

Besides these materials, you can find the course materials on Canvas.

Directory

# Topic Materials Link to Tools
1 Introduction to visualization tools and warm-up with MS Excel visualization Slides
2 Visualization with Tableau and data processing Slides Download and install Tableau:
Student (Full version, require student verification)
Public (Free version with limitations)
3 Where to find visualizations and interesting datasets? Slides
4 Data scientist toolbox 1: Python, Jupyter Notebook and Pandas Jupyter Notebook
Slides
Google Colab
5 Data scientist toolbox 2: Pandas and Python visualization Jupyter Notebook
Slides
6 Visualization with Javascript 1: Javascript basics and Observable Observable Notebook
Slides
Observable
7 Visualization with Javascript 2: Vega-Lite and data processing libraries Observable Notebook
Slides
8 Visualization with Javascript 3: Visualization with D3.js Observable Notebook
Slides
9 Visualization with Javascript 4: Visualization and interaction with D3.js Observable Notebook
Slides

References

Excel

Tableau

Pandas

Altair

Vega-Lite

D3.js

And a lot of amazing visualization examples and datasets!

Credits

These materials are created by Leo Yu Ho Lo, Yao Ming and Li Wenchao.

And thanks to Prof. Huamin Qu teaching this amazing course!

About

Learning Vis Tools: Tutorial materials for Data Visualization course at HKUST

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 100.0%