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Intermediate Data Visualization with Seaborn
Intermediate 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
bike_share = pd.read_csv('datasets/bike_share.csv')
college_data = pd.read_csv('datasets/college_datav3.csv')
daily_show = pd.read_csv('datasets/daily_show_guests_cleaned.csv')
insurance = pd.read_csv('datasets/insurance_premiums.csv')
grants = pd.read_csv('datasets/schoolimprovement2010grants.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 hereExplore Datasets
Use the DataFrames imported in the first cell to explore the data and practice your skills!
- Use
lmplot()to look at the relationship betweentempandtotal_rentalsfrombike_share. Plot two regression lines for working and non-working days (workingday). - Create a heat map from
daily_showto see how the types of guests (Group) have changed yearly. - Explore the variables from
insuranceand their relationship by creating pairwise plots and experimenting with different variables and types of plots. Additionally, you can use color to segment visually for region. - Make sure to add titles and labels to your plots and adjust their format for readability!