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Seaborn is one of the go-to tools for statistical data visualization in python. It has been actively developed since 2012 and in July 2018, the author released version 0.9. This version of Seaborn has several new plotting features, API changes and documentation updates which combine to enhance an already great library.

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bindercolab

12_Python_Seaborn_Module

Introduction 👋

From the website, “Seaborn is a Python data visualization library based on matplotlib. It provides a high-level interface for drawing attractive and informational statistical graphs.”

Seaborn excels at doing Exploratory Data Analysis (EDA) which is an important early step in any data analysis project. Seaborn uses a “dataset-oriented” API that offers a consistent way to create multiple visualizations that show the relationships between many variables. In practice, Seaborn works best when using Pandas dataframes and when the data is in tidy format.

What’s New?

In my opinion the most interesting new plot is therelationship plot orrelplot() function which allows you to plot with the newscatterplot() andlineplot() on data-aware grids. Prior to this release, scatter plots were shoe-horned into seaborn by using the base matplotlib functionplt.scatter and were not particularly powerful. Thelineplot() is replacing thetsplot() function which was not as useful as it could be. These two changes open up a lot of new possibilities for the types of EDA that are very common in Data Science/Analysis projects.

The other useful update is a brand newintroduction document which very clearly lays out what Seaborn is and how to use it. In the past, one of the biggest challenges with Seaborn was figuring out how to have the “Seaborn mindset.” This introduction goes a long way towards smoothing the transition.


Table of contents 📋

No.Name
01Seaborn_Loading_Dataset
02Seaborn_Controlling_Aesthetics
03Seaborn_Matplotlib_vs_Seaborn
04Seaborn_Color_Palettes
05Seaborn_LM Plot_&_Reg_Plot
06Seaborn_Scatter_Plot_&_Joint_Plot
07Seaborn_Additional_Regression_Plots
08Seaborn_Categorical_Data_Plot
09Seaborn_Dist_Plot
10Seaborn_Strip_Plot
11Seaborn_Box_Plot
12Seaborn_Violin_Plot
13Seaborn_Bar_Plot_and_Count_Plot
14Seaborn_TimeSeries_and_LetterValue_Plot
15Seaborn_Factor_Plot
16Seaborn_PairGrid_Plot
17Seaborn_FacetGrid_Plot
18Seaborn_Heat_Map
19Seaborn_Cluster_Map
datasets
11Python Seaborn Statistical Data Visualization.pdf

These are onlineread-only versions. However you canRun ▶ all the codesonline by clicking here ➞binder


Install Seaborn Module:

Open yourAnaconda Promptpropmt and type and run the following command (individually):

  •   pip install seaborn

Once Installed now we can import it inside our python code.


Frequently asked questions ❔

How can I thank you for writing and sharing this tutorial? 🌷

You canStar Badge andFork Badge Starring and Forking is free for you, but it tells me and other people that it was helpful and you like this tutorial.

Gohere if you aren't here already and click ➞✰ Star andⵖ Fork button in the top right corner. You will be asked to create a GitHub account if you don't already have one.


How can I read this tutorial without an Internet connection?GIF

  1. Gohere and click the big green ➞Code button in the top right of the page, then click ➞Download ZIP.

    Download ZIP

  2. Extract the ZIP and open it. Unfortunately I don't have any more specific instructions because how exactly this is done depends on which operating system you run.

  3. Launch ipython notebook from the folder which contains the notebooks. Open each one of them

    Kernel > Restart & Clear Output

This will clear all the outputs and now you can understand each statement and learn interactively.

If you have git and you know how to use it, you can also clone the repository instead of downloading a zip and extracting it. An advantage with doing it this way is that you don't need to download the whole tutorial again to get the latest version of it, all you need to do is to pull with git and run ipython notebook again.


Authors ✍️

I'm Dr. Milaan Parmar and I have written this tutorial. If you think you can add/correct/edit and enhance this tutorial you are most welcome🙏

Seegithub's contributors page for details.

If you have trouble with this tutorial please tell me about it byCreate an issue on GitHub. and I'll make this tutorial better. This is probably the best choice if you had trouble following the tutorial, and something in it should be explained better. You will be asked to create a GitHub account if you don't already have one.

If you like this tutorial, pleasegive it a ⭐ star.


Licence 📜

You may use this tutorial freely at your own risk. SeeLICENSE.

About

Seaborn is one of the go-to tools for statistical data visualization in python. It has been actively developed since 2012 and in July 2018, the author released version 0.9. This version of Seaborn has several new plotting features, API changes and documentation updates which combine to enhance an already great library.

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