Kotlin Program to Compute Quotient and Remainder

Example: Compute Quotient and Remainder

``````
fun main(args: Array<String>) {

val dividend = 25
val divisor = 4

val quotient = dividend / divisor
val remainder = dividend % divisor

println("Quotient = \$quotient")
println("Remainder = \$remainder")
}``````

When you run the program, the output will be:

```Quotient = 6
Remainder = 1```

In the above program, two numbers `25` (dividend) and `4` (divisor) are stored in two variables dividend and divisor respectively. Unlike Java, these are automatically assigned `Int` type in Kotlin.

Now, to find the quotient we divide dividend by divisor using `/` operator. Since, both dividend and divisor are `Int`, the result will also be computed as an `Int`.

So, mathematically even if `25/4` results `6.25`, since both operands are `Int`quotient variable only stores `6` (integer part).

Likewise, to find the remainder we use the `%` operator. So, the remainder of `25/4`, i.e. `1` is stored in an `Int` variable remainder.

Finally, quotient and remainder are printed on the screen using `println()` function.

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