-
Notifications
You must be signed in to change notification settings - Fork 0
/
Copy pathdemographic_data_analyzer.py
79 lines (59 loc) · 3.69 KB
/
demographic_data_analyzer.py
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
import pandas as pd
def calculate_demographic_data(print_data=True):
# Read data from file
df = pd.read_csv('adult.data.csv')
# How many of each race are represented in this dataset? This should be a Pandas series with race names as the index labels.
race_count = df['race'].value_counts()
# What is the average age of men?
average_age_men = df[df['sex'] == 'Male']['age'].mean().round(1)
# What is the percentage of people who have a Bachelor's degree?
percentage_bachelors = ((df['education'] == 'Bachelors').mean() * 100).round(1)
# What percentage of people with advanced education (`Bachelors`, `Masters`, or `Doctorate`) make more than 50K?
# What percentage of people without advanced education make more than 50K?
# with and without `Bachelors`, `Masters`, or `Doctorate`
higher_education = df[df['education'].isin(['Bachelors', 'Masters', 'Doctorate'])]
lower_education = df[~df['education'].isin(['Bachelors', 'Masters', 'Doctorate'])]
# percentage with salary >50K
higher_education_rich = ((higher_education['salary'] == '>50K').mean() * 100).round(1)
lower_education_rich = ((lower_education['salary'] == '>50K').mean() * 100).round(1)
# What is the minimum number of hours a person works per week (hours-per-week feature)?
min_work_hours = df['hours-per-week'].min()
# What percentage of the people who work the minimum number of hours per week have a salary of >50K?
num_min_workers = df[df['hours-per-week'] == min_work_hours]
rich_percentage = ((num_min_workers['salary'] == '>50K').mean() * 100).round(1)
# What country has the highest percentage of people that earn >50K?
country_grouped = df[df['salary'] == '>50K'].groupby('native-country')
# Calculate percentage of earners for each country
country_percentages = ((country_grouped.size() / df['native-country'].value_counts()) * 100).round(1)
# Find country with highest percentage
highest_earning_country = country_percentages.idxmax()
highest_earning_country_percentage = country_percentages.max()
# Identify the most popular occupation for those who earn >50K in India.
# Filter data for people from India who earn >50K
india_rich = df[(df['native-country'] == 'India') & (df['salary'] == '>50K')]
top_IN_occupation = (india_rich['occupation'].mode().iloc[0] if len(india_rich) > 0 else None)
# DO NOT MODIFY BELOW THIS LINE
if print_data:
print("Number of each race:\n", race_count)
print("Average age of men:", average_age_men)
print(f"Percentage with Bachelors degrees: {percentage_bachelors}%")
print(f"Percentage with higher education that earn >50K: {higher_education_rich}%")
print(f"Percentage without higher education that earn >50K: {lower_education_rich}%")
print(f"Min work time: {min_work_hours} hours/week")
print(f"Percentage of rich among those who work fewest hours: {rich_percentage}%")
print("Country with highest percentage of rich:", highest_earning_country)
print(f"Highest percentage of rich people in country: {highest_earning_country_percentage}%")
print("Top occupations in India:", top_IN_occupation)
return {
'race_count': race_count,
'average_age_men': average_age_men,
'percentage_bachelors': percentage_bachelors,
'higher_education_rich': higher_education_rich,
'lower_education_rich': lower_education_rich,
'min_work_hours': min_work_hours,
'rich_percentage': rich_percentage,
'highest_earning_country': highest_earning_country,
'highest_earning_country_percentage':
highest_earning_country_percentage,
'top_IN_occupation': top_IN_occupation
}