Count of Recent Crimes, for Murfreesboro & Clarksville

Here is the pivot table for the Crime Data of both Murfreesboro and Clarksville as listed by their respective police departments.

if(!require(tidyverse))install.packages("tidyverse")
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library(tidyverse)

mydata <- read.csv("https://drkblake.com/wp-content/uploads/2024/02/CrimeData.csv")

CrimeData <- mydata
CrimeData <- group_by(CrimeData, Description, Agency)
CrimeData <- summarize(CrimeData, Count = n())
## `summarise()` has grouped output by 'Description'. You can override using the
## `.groups` argument.
CrimeData <- pivot_wider(CrimeData,
                         names_from = Agency,
                         values_from = Count)

view(CrimeData)