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Introduction to Data Visualization with Seaborn

Run the hidden code cell below to import the data used in this course.

# Importing the course packages
import pandas as pd
import numpy as np
import matplotlib.pyplot as plt
import seaborn as sns

# Importing the course datasets
country_data = pd.read_csv('datasets/countries-of-the-world.csv', decimal=",")
mpg = pd.read_csv('datasets/mpg.csv')
student_data = pd.read_csv('datasets/student-alcohol-consumption.csv', index_col=0)
survey = pd.read_csv('datasets/young-people-survey-responses.csv', index_col=0)

Take Notes

Add notes about the concepts you've learned and code cells with code you want to keep.

Add your notes here

# Add your code snippets here

Explore Datasets

Use the DataFrames imported in the first cell to explore the data and practice your skills!

  • From country_data, create a scatter plot to look at the relationship between GDP and Literacy. Use color to segment the data points by region.
  • Use mpg to create a line plot with model_year on the x-axis and weight on the y-axis. Create differentiating lines for each country of origin (origin).
  • Create a box plot from student_data to explore the relationship between the number of failures (failures) and the average final grade (G3).
  • Create a bar plot from survey to compare how Loneliness differs across values for Internet usage. Format it to have two subplots for gender.
  • Make sure to add titles and labels to your plots and adjust their format for readability!