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1. Welcome!

Markdown.

The Office! What started as a British mockumentary series about office culture in 2001 has since spawned ten other variants across the world, including an Israeli version (2010-13), a Hindi version (2019-), and even a French Canadian variant (2006-2007). Of all these iterations (including the original), the American series has been the longest-running, spanning 201 episodes over nine seasons.

In this notebook, we will take a look at a dataset of The Office episodes, and try to understand how the popularity and quality of the series varied over time. To do so, we will use the following dataset: datasets/office_episodes.csv, which was downloaded from Kaggle here.

This dataset contains information on a variety of characteristics of each episode. In detail, these are:

datasets/office_episodes.csv
  • episode_number: Canonical episode number.
  • season: Season in which the episode appeared.
  • episode_title: Title of the episode.
  • description: Description of the episode.
  • ratings: Average IMDB rating.
  • votes: Number of votes.
  • viewership_mil: Number of US viewers in millions.
  • duration: Duration in number of minutes.
  • release_date: Airdate.
  • guest_stars: Guest stars in the episode (if any).
  • director: Director of the episode.
  • writers: Writers of the episode.
  • has_guests: True/False column for whether the episode contained guest stars.
  • scaled_ratings: The ratings scaled from 0 (worst-reviewed) to 1 (best-reviewed).
# Use this cell to begin your analysis, and add as many as you would like!
import pandas as pd
import matplotlib.pyplot as plt
df = pd.read_csv("datasets/office_episodes.csv")
df.head()
# plt.plot()
fig = plt.figure()
plt.rcParams['figure.figsize'] = [11, 7]
plt.scatter(x=df["episode_number"], y=df["viewership_mil"])
plt.title("Popularity, Quality, and Guest Appearances on the Office")
plt.xlabel("Episode Number")
plt.ylabel("Viewership (Millions)")
plt.show()
colors = []

for lab, row in df.iterrows() :
    if row["scaled_ratings"] < 0.25:
        colors.append("red")
    elif row["scaled_ratings"] >= 0.25 and row["scaled_ratings"] < 0.5:
        colors.append("orange")
    elif row["scaled_ratings"] >= 0.5 and row["scaled_ratings"] < 0.75:
        colors.append("lightgreen")
    elif row["scaled_ratings"] >= 0.25:
        colors.append("darkgreen")
        
colors[:10]
sizes = []

for lab, row in df.iterrows() :
    if row["has_guests"] == True:
        sizes.append(250)
    else:
        sizes.append(25)
sizes[:10]
fig = plt.figure(figsize=(12,8))
# plt.rcParams['figure.figsize'] = [11, 7]

plt.scatter(x=df["episode_number"], y=df["viewership_mil"], c=colors, s=sizes)
plt.title("Popularity, Quality, and Guest Appearances on the Office")
plt.xlabel("Episode Number")
plt.ylabel("Viewership (Millions)")
plt.show()
df["viewership_mil"].value_counts()
top_star = "Amy Adams"
Hidden output