Book Image

Matplotlib 3.0 Cookbook

By : Srinivasa Rao Poladi, Nikhil Borkar
Book Image

Matplotlib 3.0 Cookbook

By: Srinivasa Rao Poladi, Nikhil Borkar

Overview of this book

Matplotlib provides a large library of customizable plots, along with a comprehensive set of backends. Matplotlib 3.0 Cookbook is your hands-on guide to exploring the world of Matplotlib, and covers the most effective plotting packages for Python 3.7. With the help of this cookbook, you'll be able to tackle any problem you might come across while designing attractive, insightful data visualizations. With the help of over 150 recipes, you'll learn how to develop plots related to business intelligence, data science, and engineering disciplines with highly detailed visualizations. Once you've familiarized yourself with the fundamentals, you'll move on to developing professional dashboards with a wide variety of graphs and sophisticated grid layouts in 2D and 3D. You'll annotate and add rich text to the plots, enabling the creation of a business storyline. In addition to this, you'll learn how to save figures and animations in various formats for downstream deployment, followed by extending the functionality offered by various internal and third-party toolkits, such as axisartist, axes_grid, Cartopy, and Seaborn. By the end of this book, you'll be able to create high-quality customized plots and deploy them on the web and on supported GUI applications such as Tkinter, Qt 5, and wxPython by implementing real-world use cases and examples.
Table of Contents (17 chapters)

Multi-plot grids

We have already seen some types of multi-plot grids, when we used the row and col variables for various facets of visualization in the Line plots with long form dataset and Point plot recipes earlier in the chapter. However, seaborn provides three sets of predefined grids for different purposes.

jointplot() and JointGrid() enable the creation of three axes/plots as one figure. The main axes is called the joint plot, and the other two are called marginal axes. One of the marginal axes is on top of the joint plot, and the second marginal axes is on the right side of the joint plot. The relationship between the two variables is plotted on the joint plot, and the univariate distribution of each of these two variables is plotted on each of the marginal axes. These functions have various parameters that provide flexibility in choosing the types of graphs on each of...