Recently Published
PieChart-2
pie(table(airquality$Month),
main = "Pie Chart of Months in Airquality Dataset",
col = rainbow(length(unique(airquality$Month))))
PieChart-1
pie(table(iris$Species),
main = "Pie Chart of Iris Species",
col = rainbow(length(unique(iris$Species))))
Pie chart
library(ggplot2)
library(dplyr)
clarity_counts <- diamonds %>%
group_by(clarity) %>%
summarise(count = n()) %>%
mutate(percentage = count / sum(count) * 100)
pie_chart <- ggplot(clarity_counts, aes(x = "", y = percentage, fill = clarity)) +
geom_bar(stat = "identity", width = 1) +
coord_polar("y") +
labs(title = "Pie Chart: Proportion of Diamonds by Clarity") +
theme_void()
print(pie_chart)
Histogram-2
hist(airquality$Temp,
main = "Histogram of Temperature",
xlab = "Temperature",
col = "pink")
Histogram-1
hist(iris$Sepal.Length,
main = "Histogram of Sepal Length",
xlab = "Sepal Length",
col = "orange")
Bar plot-2
barplot(table(airquality$Month),
main = "Bar Chart of Months in Airquality Dataset",
xlab = "Month",
ylab = "Count",
col = "lightgreen")
Analysis of Storm Data
Analysis of storm data to see which events are the most harmful in terms of public health and economic impact
Bar plot-1
barplot(table(iris$Species),
main = "Bar Chart of Iris Species",
xlab = "Species",
ylab = "Count",
col = "skyblue")
Histogram
library(ggplot2)
histogram <- ggplot(diamonds, aes(x = price)) +
geom_histogram(binwidth = 500, fill = "blue", color = "black") +
labs(title = "Histogram: Distribution of Diamond Prices",
x = "Price",
y = "Frequency") +
theme_minimal()
print(histogram)
Bar Plot
library(ggplot2)
data("diamonds")
bar_chart <- ggplot(diamonds, aes(x = cut, fill = cut)) +
geom_bar() +
labs(title = "Bar Chart: Count of Diamonds by Cut",
x = "Cut",
y = "Count") +
theme_minimal()
print(bar_chart)
Scatter plot for Fruit Sales
library(ggplot2)
ggplot(fruit_data, aes(x = Fruit, y = Sales)) +
geom_point(size = 4, color = "red") +
labs(title = "Fruit Sales (Scatter Plot)", x = "Fruit", y = "Sales Count")