First, according to your link, the `textfile`

is created as

```
val textFile = sc.textFile("README.md")
```

such that `textfile`

is a `RDD[String]`

meaning it is a resilient distributed dataset of type `String`

. The API to access is very similar to that of regular Scala collections.

## So now what does this `map`

do?

Imagine you have a list of `String`

s and want to convert that into a list of Ints, representing the length of each String.

```
val stringlist: List[String] = List("ab", "cde", "f")
val intlist: List[Int] = stringlist.map( x => x.length )
```

The `map`

method expects a function. A function, that goes from `String => Int`

. With that function, each element of the list is transformed. So the value of intlist is `List( 2, 3, 1 )`

Here, we have created an anonymous function from `String => Int`

. That is `x => x.length`

. One can even write the function more explicit as

```
stringlist.map( (x: String) => x.length )
```

If you do use write the above explicit, you can

```
val stringLength : (String => Int) = {
x => x.length
}
val intlist = stringlist.map( stringLength )
```

So, here it is absolutely evident, that stringLength is a function from `String`

to `Int`

.

**Remark**: In general, `map`

is what makes up a so called Functor. While you provide a function from A => B, `map`

of the functor (here List) allows you use that function also to go from `List[A] => List[B]`

. This is called lifting.

## Answers to your questions

What is the "line" variable?

As mentioned above, `line`

is the input parameter of the function `line => line.split(" ").size`

More explicit
`(line: String) => line.split(" ").size`

Example: If `line`

is "hello world", the function returns 2.

```
"hello world"
=> Array("hello", "world") // split
=> 2 // size of Array
```

How does a value get passed into a,b?

`reduce`

also expects a function from `(A, A) => A`

, where `A`

is the type of your `RDD`

. Lets call this function `op`

.

What does `reduce`

. Example:

```
List( 1, 2, 3, 4 ).reduce( (x,y) => x + y )
Step 1 : op( 1, 2 ) will be the first evaluation.
Start with 1, 2, that is
x is 1 and y is 2
Step 2: op( op( 1, 2 ), 3 ) - take the next element 3
Take the next element 3:
x is op(1,2) = 3 and y = 3
Step 3: op( op( op( 1, 2 ), 3 ), 4)
Take the next element 4:
x is op(op(1,2), 3 ) = op( 3,3 ) = 6 and y is 4
```

Result here is the sum of the list elements, 10.

**Remark**: In general `reduce`

calculates

```
op( op( ... op(x_1, x_2) ..., x_{n-1}), x_n)
```

### Full example

First, textfile is a RDD[String], say

```
TextFile
"hello Tyth"
"cool example, eh?"
"goodbye"
TextFile.map(line => line.split(" ").size)
2
3
1
TextFile.map(line => line.split(" ").size).reduce((a, b) => if (a > b) a else b)
3
Steps here, recall `(a, b) => if (a > b) a else b)`
- op( op(2, 3), 1) evaluates to op(3, 1), since op(2, 3) = 3
- op( 3, 1 ) = 3
```