Basic operations in R language

# Define variables with different data types
numeric_var <- 42
character_var <- "welcome to the spoyify!"
logical_var <- TRUE
date_time_var <- as.POSIXct("2023-01-15 14:30:00")

# Print variables
cat("Numeric Variable:", numeric_var, "\n")
## Numeric Variable: 42
cat("Character Variable:", character_var, "\n")
## Character Variable: welcome to the spoyify!
# Create data structures
vector_example <- c(1, 2, 3, 4, 5)
matrix_example <- matrix(1:6, nrow = 2, ncol = 3)
list_example <- list(1, "apple", TRUE)
data_frame_example <- data.frame(
  Name = c("taylor swift", "the weeknd xoxo", "Charlie Puth"),
  Age = c(25, 30, 22),
  Artist_count = c(90, 85, 92)
)

# Print data structures
cat("Vector Example:", vector_example, "\n")
## Vector Example: 1 2 3 4 5
cat("Matrix Example:\n")
## Matrix Example:
print(matrix_example)
##      [,1] [,2] [,3]
## [1,]    1    3    5
## [2,]    2    4    6
cat("List Example:\n")
## List Example:
print(list_example)
## [[1]]
## [1] 1
## 
## [[2]]
## [1] "apple"
## 
## [[3]]
## [1] TRUE
cat("Data Frame Example:\n")
## Data Frame Example:
print(data_frame_example)
##              Name Age Artist_count
## 1    taylor swift  25           90
## 2 the weeknd xoxo  30           85
## 3    Charlie Puth  22           92
# a.Create two vectors of integers
vector1 <- c(1, 2, 3)
vector2 <- c(4, 5, 6)

# Add the two vectors element-wise
result_vector <- vector1 + vector2

# Print the result
print(result_vector)
## [1] 5 7 9
# b.Create a vector
my_vector <- c(2, 4, 6, 8, 10)

# Calculate the sum, mean, and product
sum_result <- sum(my_vector)
mean_result <- mean(my_vector)
product_result <- prod(my_vector)

# Print the results
print(paste("Sum:", sum_result))
## [1] "Sum: 30"
print(paste("Mean:", mean_result))
## [1] "Mean: 6"
print(paste("Product:", product_result))
## [1] "Product: 3840"
# c.Create a vector
my_vector <- c(3, 1, 7, 2, 9)

# Find the minimum and maximum
min_value <- min(my_vector)
max_value <- max(my_vector)

# Print the results
print(paste("Minimum:", min_value))
## [1] "Minimum: 1"
print(paste("Maximum:", max_value))
## [1] "Maximum: 9"
#d. Create a list
my_list <- list(
  string_element = "Hello, World",
  numeric_element = 42,
  vector_element = c(1, 2, 3),
  logical_element = TRUE
)

# Print the list
print(my_list)
## $string_element
## [1] "Hello, World"
## 
## $numeric_element
## [1] 42
## 
## $vector_element
## [1] 1 2 3
## 
## $logical_element
## [1] TRUE
#e. Create a list with named elements
my_list <- list(
  vector_element = c(1, 2, 3),
  matrix_element = matrix(1:6, nrow = 2),
  nested_list = list(a = "apple", b = "banana")
)

# Access the first and second elements of the list
first_element <- my_list$vector_element
second_element <- my_list$matrix_element

# Print the accessed elements
print(first_element)
## [1] 1 2 3
print(second_element)
##      [,1] [,2] [,3]
## [1,]    1    3    5
## [2,]    2    4    6
#f. Create a 3x5 matrix filled with zeros
my_matrix <- matrix(0, nrow = 3, ncol = 5)

# Print the matrix
print(my_matrix)
##      [,1] [,2] [,3] [,4] [,5]
## [1,]    0    0    0    0    0
## [2,]    0    0    0    0    0
## [3,]    0    0    0    0    0
#g. Create a sample matrix5 7 6
5
## [1] 5
my_matrix <- matrix(1:12, nrow = 3)

# Access specific elements
element_1 <- my_matrix[2, 3]  # 3rd column, 2nd row
element_2 <- my_matrix[3, ]    # 3rd row
element_3 <- my_matrix[, 4]    # 4th column

# Print the accessed elements
print(element_1)
## [1] 8
print(element_2)
## [1]  3  6  9 12
print(element_3)
## [1] 10 11 12
#h. Create vectors
name <- c("Alice", "Bob", "Charlie")
age <- c(25, 30, 35)

# Create a DataFrame
df <- data.frame(Name = name, Age = age)

# Display the DataFrame
print(df)
##      Name Age
## 1   Alice  25
## 2     Bob  30
## 3 Charlie  35
#i. Create a DataFrame
df <- data.frame(Name = c("Alice", "Bob"), Age = c(25, 30))

# New data to insert
new_data <- data.frame(Name = c("Charlie", "David"), Age = c(35, 40))

# Insert new rows
df <- rbind(df, new_data)

# Display the updated DataFrame
print(df)
##      Name Age
## 1   Alice  25
## 2     Bob  30
## 3 Charlie  35
## 4   David  40
#j. Create a DataFrame
df <- data.frame(Name = c("Alice", "Bob"), Age = c(25, 30))

# Add a new column
df$Salary <- c(50000, 60000)

# Display the updated DataFrame
print(df)
##    Name Age Salary
## 1 Alice  25  50000
## 2   Bob  30  60000
#k. Create a DataFrame
df <- data.frame(Name = c("Alice", "Bob", "Charlie", "David"), Age = c(25, 30, 35, 40))

# Extract the first 2 rows
first_two_rows <- df[1:2, ]

# Display the extracted rows
print(first_two_rows)
##    Name Age
## 1 Alice  25
## 2   Bob  30
#l. Create a DataFrame
df <- data.frame(Name = c("charlie puth", "Alice murphy", "Bob marley"), Age = c(35, 25, 30))

# Sort the DataFrame by the "Age" column
sorted_df <- df[order(df$Age), ]

# Display the sorted DataFrame
print(sorted_df)
##           Name Age
## 2 Alice murphy  25
## 3   Bob marley  30
## 1 charlie puth  35
#m. Create two DataFrames
df1 <- data.frame(ID = 1:3, Name = c("Alice murphy", "Bob marley", "Charlie puth"))
df2 <- data.frame(ID = 2:4, Salary = c(50000, 60000, 70000))

# Merge the DataFrames based on the "ID" column
merged_df <- merge(df1, df2, by = "ID", all = TRUE)

# Display the merged DataFrame
print(merged_df)
##   ID         Name Salary
## 1  1 Alice murphy     NA
## 2  2   Bob marley  50000
## 3  3 Charlie puth  60000
## 4  4         <NA>  70000
#n. Create two DataFrames
df1 <- data.frame(Name = c("Alice", "Bob"), Age = c(25, 30))
df2 <- data.frame(Name = c("Charlie", "David"), Age = c(35, 40))

# Append df2 to the end of df1
appended_df <- rbind(df1, df2)

# Display the appended DataFrame
print(appended_df)
##      Name Age
## 1   Alice  25
## 2     Bob  30
## 3 Charlie  35
## 4   David  40
#p. Create two dataframes
df1 <- data.frame(ID = 1:4, Name = c("Alice", "Bob", "Charlie", "David"))
df2 <- data.frame(ID = 2:5, Salary = c(50000, 60000, 70000, 55000))

# Merge the dataframes based on the "ID" column
merged_df <- merge(df1, df2, by = "ID", all = TRUE)

# Display the merged dataframe
print(merged_df)
##   ID    Name Salary
## 1  1   Alice     NA
## 2  2     Bob  50000
## 3  3 Charlie  60000
## 4  4   David  70000
## 5  5    <NA>  55000
#q.a. Read data from the console
data <- as.numeric(readline("Enter a number: "))
## Enter a number:

` importing a csv file

data=read.csv("C://Users//java//Documents/Book1.csv")
data
##                     Org_Indiv       First_Plus First_Name   Last_Name
## 1    3-D Medical Services Llc     Steven Bruce     Steven Deitelzweig
## 2            Aa Doctors, Inc.     Aakash Mohan     Aakash       Ahuja
## 3      Abbo, Lilian Margarita Lilian Margarita     Lilian        Abbo
## 4      Abbo, Lilian Margarita Lilian Margarita     Lilian        Abbo
## 5      Abbo, Lilian Margarita Lilian Margarita     Lilian        Abbo
## 6       Abdullah Raffee Md Pc         Abdullah   Abdullah      Raffee
## 7             Abebe, Sheila Y         Sheila Y     Sheila       Abebe
## 8             Abebe, Sheila Y         Sheila Y     Sheila       Abebe
## 9  Abilene Family Foot Center      Galen Chris      Galen   Albritton
## 10            Abolnik, Igor Z           Igor Z       Igor     Abolnik
## 11            Abolnik, Igor Z           Igor Z       Igor     Abolnik
##            City State                Category Cash Other Total
## 1   New Orleans    LA   Professional Advising 2625     0  2625
## 2   Paso Robles    CA       Expert-Led Forums 1000     0  1000
## 3         Miami    FL Business Related Travel    0   448   448
## 4         Miami    FL                   Meals    0   119   119
## 5         Miami    FL   Professional Advising 1800     0  1800
## 6         Flint    MI       Expert-Led Forums  750     0   750
## 7  Indianapolis    IN       Educational Items    0    47    47
## 8  Indianapolis    IN       Expert-Led Forums  825     0   825
## 9       Abilene    TX   Professional Advising 3000     0  3000
## 10        Provo    UT Business Related Travel    0   396   396
## 11        Provo    Ut       Expert-Led Forums 1750     0  1750

Note that the echo = FALSE parameter was added to the code chunk to prevent printing of the R code that generated the plot.