Python - seaborn.FacetGrid() method Last Updated : 15 Jul, 2025 Comments Improve Suggest changes Like Article Like Report Prerequisite: Seaborn Programming Basics Seaborn is a Python data visualization library based on matplotlib. It provides a high-level interface for drawing attractive and informative statistical graphics. Seaborn helps resolve the two major problems faced by Matplotlib; the problems are ? Default Matplotlib parametersWorking with data frames As Seaborn compliments and extends Matplotlib, the learning curve is quite gradual. If you know Matplotlib, you are already half way through Seaborn. seaborn.FacetGrid() :FacetGrid class helps in visualizing distribution of one variable as well as the relationship between multiple variables separately within subsets of your dataset using multiple panels.A FacetGrid can be drawn with up to three dimensions ? row, col, and hue. The first two have obvious correspondence with the resulting array of axes; think of the hue variable as a third dimension along a depth axis, where different levels are plotted with different colors.FacetGrid object takes a dataframe as input and the names of the variables that will form the row, column, or hue dimensions of the grid. The variables should be categorical and the data at each level of the variable will be used for a facet along that axis. seaborn.FacetGrid( data, \*\*kwargs) Seaborn.FacetGrid uses many arguments as input, main of which are described below in form of table: Argument DescriptionValue dataTidy ("long-form") dataframe where each column is a variable and each row is an observation. DataFramerow, col, hueVariables that define subsets of the data, which will be drawn on separate facets in the grid. See the ``*_order`` parameters to control the order of levels of this variable.stringspaletteColors to use for the different levels of the ``hue`` variable.palette name, list, or dict, optional Below is the implementation of above method: Example 1: Python3 # importing packages import seaborn import matplotlib.pyplot as plt # loading of a dataframe from seaborn df = seaborn.load_dataset('tips') ############# Main Section ############# # Form a facetgrid using columns with a hue graph = seaborn.FacetGrid(df, col ="sex", hue ="day") # map the above form facetgrid with some attributes graph.map(plt.scatter, "total_bill", "tip", edgecolor ="w").add_legend() # show the object plt.show() # This code is contributed by Deepanshu Rustagi. Output :Example 2: Python3 # importing packages import seaborn import matplotlib.pyplot as plt # loading of a dataframe from seaborn df = seaborn.load_dataset('tips') ############# Main Section ############# # Form a facetgrid using columns with a hue graph = seaborn.FacetGrid(df, row ='smoker', col ='time') # map the above form facetgrid with some attributes graph.map(plt.hist, 'total_bill', bins = 15, color ='orange') # show the object plt.show() # This code is contributed by Deepanshu Rustagi. Output :Example 3: Python3 # importing packages import seaborn import matplotlib.pyplot as plt # loading of a dataframe from seaborn df = seaborn.load_dataset('tips') ############# Main Section ############# # Form a facetgrid using columns with a hue graph = seaborn.FacetGrid(df, col ='time', hue ='smoker') # map the above form facetgrid with some attributes graph.map(seaborn.regplot, "total_bill", "tip").add_legend() # show the object plt.show() # This code is contributed by Deepanshu Rustagi. Output : Comment More infoAdvertise with us Next Article What is Data Visualization and Why is It Important? D deepanshu_rustagi Follow Improve Article Tags : Data Visualization AI-ML-DS Python-Seaborn AI-ML-DS With Python Similar Reads Python - Data visualization tutorial Data visualization is a crucial aspect of data analysis, helping to transform analyzed data into meaningful insights through graphical representations. 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