Los Angeles, California 😎. The City of Angels. Tinseltown. The Entertainment Capital of the World!
Known for its warm weather, palm trees, sprawling coastline, and Hollywood, along with producing some of the most iconic films and songs. However, as with any highly populated city, it isn't always glamorous and there can be a large volume of crime. That's where you can help!
You have been asked to support the Los Angeles Police Department (LAPD) by analyzing crime data to identify patterns in criminal behavior. They plan to use your insights to allocate resources effectively to tackle various crimes in different areas.
The Data
They have provided you with a single dataset to use. A summary and preview are provided below.
It is a modified version of the original data, which is publicly available from Los Angeles Open Data.
crimes.csv
Column | Description |
---|---|
'DR_NO' | Division of Records Number: Official file number made up of a 2-digit year, area ID, and 5 digits. |
'Date Rptd' | Date reported - MM/DD/YYYY. |
'DATE OCC' | Date of occurrence - MM/DD/YYYY. |
'TIME OCC' | In 24-hour military time. |
'AREA NAME' | The 21 Geographic Areas or Patrol Divisions are also given a name designation that references a landmark or the surrounding community that it is responsible for. For example, the 77th Street Division is located at the intersection of South Broadway and 77th Street, serving neighborhoods in South Los Angeles. |
'Crm Cd Desc' | Indicates the crime committed. |
'Vict Age' | Victim's age in years. |
'Vict Sex' | Victim's sex: F : Female, M : Male, X : Unknown. |
'Vict Descent' | Victim's descent:
|
'Weapon Desc' | Description of the weapon used (if applicable). |
'Status Desc' | Crime status. |
'LOCATION' | Street address of the crime. |
# Re-run this cell
#Â Import required libraries
import pandas as pd
import numpy as np
import matplotlib.pyplot as plt
import seaborn as sns
crimes = pd.read_csv("crimes.csv", parse_dates=["Date Rptd", "DATE OCC"], dtype={"TIME OCC": str})
crimes.head()
# Start coding here
# Use as many cells as you need
# Task 1
crimes_hour = crimes.groupby("TIME OCC").size().sort_values(ascending=False) # groups the data by the "TIME OCC" column and sorts the output in descending order
#print(crimes_hour.head())
peak_crime_hour = 12 # answer to Task 1
#print(peak_crime_hour)
# Task 2
peak_night_crime = crimes[(crimes["TIME OCC"].astype(int) > 2200) | (crimes["TIME OCC"].astype(int) < 359)] # filters for crimes that took place between 2200hrs and 0359hrs
#print(peak_night_crime.head())
peak_night_crime_grouped = peak_night_crime.groupby("AREA NAME").size().sort_values(ascending=False) # groups the data by the "AREA NAME" column and sorts the output in descending order
#print(peak_night_crime_grouped.head())
peak_night_crime_location = "Central" # answer to Task 2
#print(peak_night_crime_location)
# Task 3
crimes.loc[crimes["Vict Age"] < 0, "Vict Age"] = 0 # updates ages less than 0 to 0
age_bins = [0, 17, 25, 34, 44, 54, 64, 100]
age_labels = ["0-18", "18-25", "26-34", "35-44", "45-54", "55-64", "65+"]
crimes["age_group"] = pd.cut(crimes["Vict Age"], bins = age_bins, labels = age_labels) # creates the new "age_group column"
#crimes[["Vict Age", "age_group"]].head() # checks whether the matching has been done correctly
victim_ages = crimes["age_group"].value_counts() # answer to task 3
#print(victim_ages)