This lab will give you some structured practice performing data visualization!
You will be able to:
- Use Matplotlib to create a bar graph
- Use Matplotlib to create a scatter plot
- Use Matplotlib to create a histogram
# Run this cell without changes
import numpy as np
import matplotlib.pyplot as plt
%matplotlib inline
Make a vertical bar graph using ax.bar()
for the following set of data:
Jim's Video Library contains 40 crime, 30 science fiction, 10 drama, 50 comedy, 25 action and 5 documentary movies.
- Set x-axis (genres) and y-axis (number of movies)
- Plot and label the bar graph
- Provide a suitable title
- Label x and y-axis
Notes:
- We are asking you to "hard-code" the numbers listed above into Python. There is no file or other data source to open.
x
andheight
must be iterables of numbers, sox
should just be 6 evenly-spaced numbers. To set the labels of "crime" etc. pass thelabels
into the.bar()
function using thetick_label
argument.
The graph you create should look like this:
# Replace None with appropriate code
height = None
x = None
labels = None
# Create the plot
fig, ax = plt.subplots(figsize=(8, 6))
# Plot vertical bars of fixed width by passing x and height values to .bar() function
None
# Give a title to the bar graph and label the axes
None
None
None
The table shows the data collected by a Consumer Products Group on the relationship between the weight of a car and its average gas mileage.
Car Type Weight miles per gallon
A 2750 29
B 3125 23
C 2100 33
D 4082 18
E 2690 20
F 3640 21
G 4380 14
H 2241 25
I 2895 31
J 3659 17
- Use a scatter plot to show the relationship between mpg and weight of a car using
.scatter()
- Set appropriate labels for axes
- Give a title to the plot
- Create a legend
Looking the scatter plot, think about: how would you describe the relationship between these two attributes?
The graph you create should look like this:
# Replace None with appropriate code
weight = [2750, 3125, 2100, 4082, 2690, 3640, 4380, 2241, 2895, 3659]
mpg = [29, 23, 33, 28, 20, 21, 14, 25, 31, 17]
# Create the plot
None
# Plot with scatter()
None
# Set x and y axes labels, legend, and title
None
None
None
None
Joe is the branch manager at a bank. Recently, Joe has been receiving customer feedback saying that the waiting times for clients to be served by customer service representatives are too long. Joe decides to observe and write down the time spent waiting by each customer. Here are his findings from observing and writing down the wait times (in seconds), spent by 20 customers:
43.1, 35.6, 37.5, 36.5, 45.3, 43.4, 40.3, 50.2, 47.3, 31.2, 42.2, 45.5, 30.3, 31.4, 35.6, 45.2, 54.1, 45.6, 36.5, 43.1
- Build a histogram of these values using the
hist()
function. Usebins=5
to represent the 20 data points - Plot, label and give a title as above.
The graph you create should look like this:
# Replace None with appropriate code
x = [43.1, 35.6, 37.5, 36.5, 45.3, 43.4,
40.3, 50.2, 47.3, 31.2, 42.2, 45.5,
30.3, 31.4, 35.6, 45.2, 54.1, 45.6,
36.5, 43.1]
# Create the plot
None
# Plot the histogram with hist() function
None
# Label axes and set title
None
None
None
In this lab, you got some good practice working with creating plots in Python using Matplotlib.