install.packages("tidyverse")
library(tidyverse)
library(ggplot2) # Load ggplot2 for creating plots
# Load the mtcars dataset (built into R)
data_mtcars <- mtcars
# View the first few rows to understand the data
head(data_mtcars)
# Convert 'am' (transmission type) and 'cyl' (number of cylinders) to factors for categorical plotting
data_mtcars$am <- as.factor(data_mtcars$am)
data_mtcars$cyl <- as.factor(data_mtcars$cyl)
head(data_mtcars)
# Create a scatter plot of car weight vs. miles per gallon, colored by cylinder count
ggplot(data_mtcars, aes(x = wt, y = mpg, color = cyl)) +
geom_point() + # Add points to the plot
labs(title = "Miles Per Gallon vs. Weight", x = "Weight (1000 lbs)", y = "Miles Per Gallon") # Add plot labels

#Create a line graph of ordered mpg by the row number.
data_mtcars_line <- data_mtcars %>% mutate(index = row_number()) #add index column so we can plot it
ggplot(data_mtcars_line, aes(x = index, y = mpg)) +
geom_line() + # add a line to the plot
labs(title = "Miles Per Gallon by Index", x = "Index", y = "Miles Per Gallon") # add plot labels

# Create a horizontal bar chart of the average horsepower grouped by cylinder count
hp_by_cyl <- data_mtcars %>% group_by(cyl) %>% summarize(avg_hp = mean(hp)) # Calculate average horsepower for each cylinder group
ggplot(hp_by_cyl, aes(y = cyl, x = avg_hp)) +
geom_bar(stat = 'identity') + # Create bars based on the calculated averages
labs(title = "Average HP by Cylinder Count", y = "Cylinder Count", x = "Average Horsepower") # Add plot labels

#Create a stacked bar chart of average mpg, disp, hp, and wt, grouped by cyl.
bar_data_mtcars <- data_mtcars %>% group_by(cyl) %>% summarize(mpg = mean(mpg), disp = mean(disp), hp = mean(hp), wt = mean(wt)) %>% pivot_longer(cols = c("mpg", "disp", "hp", "wt"), names_to = "Measurement", values_to = "Average") #Calculate average values for each measurement, and pivot the data into a long format.
ggplot(bar_data_mtcars, aes(x = cyl, fill = Measurement, y = Average)) +
geom_bar(stat = "identity") + #Create bars based on the calculated averages
labs(title = "Average Measurements by Cylinder Count", x = "Cylinder Count", y = "Average Measurement") #add plot labels

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