Everyone Can Learn Python Scholarship
📖 Background
The first "Everyone Can Learn Python" Scholarship from DataCamp is now open for entries.
The challenges below test the Python and SQL skills you gained from Introduction to Python and Introduction to SQL and pair them with your existing problem-solving and creative thinking.
The scholarship is open to people who have completed or are completing their secondary education and are preparing to pursue a degree in computer science or data science. Students preparing for graduate-level computer science or data science degrees are also welcome to apply.
Modify any of the numbers and rerun the cell.
You can add a Markdown, Python, or SQL cell by clicking on the Add Markdown, Add Code, and Add SQL buttons that appear as you move the mouse pointer near the bottom of any cell.
Here at DataCamp, we call our interactive notebook Workspace. You can find out more about Workspace here.
1️⃣ Python 🐍 - CO2 Emissions
Now let's now move on to the competition and challenge.
📖 Background
You volunteer for a public policy advocacy organization in Canada, and your colleague asked you to help her draft recommendations for guidelines on CO2 emissions rules.
After researching emissions data for a wide range of Canadian vehicles, she would like you to investigate which vehicles produce lower emissions.
💾 The data I
You have access to seven years of CO2 emissions data for Canadian vehicles (source):
- "Make" - The company that manufactures the vehicle.
- "Model" - The vehicle's model.
- "Vehicle Class" - Vehicle class by utility, capacity, and weight.
- "Engine Size(L)" - The engine's displacement in liters.
- "Cylinders" - The number of cylinders.
- "Transmission" - The transmission type: A = Automatic, AM = Automatic Manual, AS = Automatic with select shift, AV = Continuously variable, M = Manual, 3 - 10 = the number of gears.
- "Fuel Type" - The fuel type: X = Regular gasoline, Z = Premium gasoline, D = Diesel, E = Ethanol (E85), N = natural gas.
- "Fuel Consumption Comb (L/100 km)" - Combined city/highway (55%/45%) fuel consumption in liters per 100 km (L/100 km).
- "CO2 Emissions(g/km)" - The tailpipe carbon dioxide emissions in grams per kilometer for combined city and highway driving.
The data comes from the Government of Canada's open data website.
# Import the pandas and numpy packages
import pandas as pd
import numpy as np
# Load the data
cars = pd.read_csv('data/co2_emissions_canada.csv')
# create numpy arrays
cars_makes = cars['Make'].to_numpy()
cars_models = cars['Model'].to_numpy()
cars_classes = cars['Vehicle Class'].to_numpy()
cars_engine_sizes = cars['Engine Size(L)'].to_numpy()
cars_cylinders = cars['Cylinders'].to_numpy()
cars_transmissions = cars['Transmission'].to_numpy()
cars_fuel_types = cars['Fuel Type'].to_numpy()
cars_fuel_consumption = cars['Fuel Consumption Comb (L/100 km)'].to_numpy()
cars_co2_emissions = cars['CO2 Emissions(g/km)'].to_numpy()
# Preview the dataframe
cars
💪 Challenge I
Help your colleague gain insights on the type of vehicles that have lower CO2 emissions. Include:
- What is the median engine size in liters?
- What is the average fuel consumption for regular gasoline (Fuel Type = X), premium gasoline (Z), ethanol (E), and diesel (D)?
- What is the correlation between fuel consumption and CO2 emissions?
- Which vehicle class has lower average CO2 emissions, 'SUV - SMALL' or 'MID-SIZE'?
- What are the average CO2 emissions for all vehicles? For vehicles with an engine size of 2.0 liters or smaller?
- Any other insights you found during your analysis?
💪 Challenge I Answers
Let's import new librairies.
%matplotlib inline
# import libraries for dataviz
import seaborn as sns
import scipy as sp
import matplotlib.pyplot as plt
color_hex = sns.color_palette("magma_r").as_hex()
color_hex[3]
1. What is the median engine size in liters?
First, let's calculate the median engine size.
engine_med = np.median(cars_engine_sizes)
print('The engine median size is {:.2f}L'.format(engine_med))
We can also plot the distribution to have a better understanding of this feature.
sns.histplot(cars['Engine Size(L)'],
color=color_hex[4]).set_title("Engine size distribution")
plt.text(3+0.2,
1200,
'engine size median: '+str(engine_med),
horizontalalignment='left',
size='medium',
color=color_hex[2],
weight='semibold')
plt.axvline(engine_med,
color=color_hex[2])
sns.despine()
plt.show()