# Kotlin Program to Compute Quotient and Remainder

#### In this program, you’ll learn to compute quotient and remainder from the given dividend and divisor in Kotlin.

## 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.

# Python Example for Beginners

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There are two sides to machine learning:

**Practical Machine Learning:**This is about querying databases, cleaning data, writing scripts to transform data and gluing algorithm and libraries together and writing custom code to squeeze reliable answers from data to satisfy difficult and ill defined questions. It’s the mess of reality.**Theoretical Machine Learning**: This is about math and abstraction and idealized scenarios and limits and beauty and informing what is possible. It is a whole lot neater and cleaner and removed from the mess of reality.

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