8000 GitHub - frankligy/python_visualization_tutorial: A comprehensive guide of how to make publication-ready figures in python
[go: up one dir, main page]
More Web Proxy on the site http://driver.im/
Skip to content

frankligy/python_visualization_tutorial

Repository files navigation

python_visualization_tutorial

A comprehensive guide of how to make publication-ready figures in python

I am planning to share how to make publication-quality figures in python, I will publish all the tutorial in TowardDatascience Medium platform. In the meantime, I will share some sporadic tricks as separate jupyter nodebook at the bottom of the page.

Phase I: Static Figure (basic matplotlib and seaborn)

  1. Tutorial I (Understanding Fig and Ax object)
  2. Turorial II (Line plot, colors and legends)
  3. Tutorial III (boxplot, scatter plot, heatmap, colormap, barplot, histogram)
  4. Tutorial IV (Violin plot, dendrogram)
  5. Tutorial V (Seaborn)

Phase II: Advanced tutorials

  1. Plotly, interactive network
  2. Sankey plot strategies (Matplotlib Path and Patch)

Do you want to know some tricks?

  1. gridspec
  2. how to move yaxis ticks to the right spines
  3. how to extract certain number of colors?
  4. legend,flexibly adjust it
  5. transformation, bbox
  6. stacked legend
  7. Markersize
  8. stay tuned

About

A comprehensive guide of how to make publication-ready figures in python

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Contributors 2

  •  
  •  
0