I have a data frame. I would like to compute how "far" each row is from a given row. Let us consider it for the 1st row. Let the data frame be as follows:

```
> sampleDF
X1 X2 X3
1 5 5
4 2 2
2 9 1
7 7 3
```

What I wish to do is the following:

- Compute the difference between the 1st row & others:
`sampleDF[1,]-sampleDF[2,]`

- Consider only the absolute value:
`abs(sampleDF[1,]-sampleDF[2,])`

- Compute the sum of the newly formed data frame of differences:
`rowSums(newDF)`

Now to do this for the whole data frame.

`newDF <- sapply(2:4,function(x) { return (abs(sampleDF[1,]-sampleDF[x,]));})`

This creates a problem in that the result is a transposed list. Hence,

`newDF <- as.data.frame(t(sapply(2:4,function(x) { return (abs(sampleDF[1,]-sampleDF[x,]));})))`

But another problem arises while computing rowSums:

```
> class(newDF)
[1] "data.frame"
> rowSums(newDF)
Error in base::rowSums(x, na.rm = na.rm, dims = dims, ...) :
'x' must be numeric
> newDF
X1 X2 X3
1 3 3 3
2 1 4 4
3 6 2 2
>
```

**Puzzle 1**: Why do I get this error? I did notice that newDF[1,1] is a list & not a number. Is it because of that? How can I ensure that the result of the sapply & transpose is a simple data frame of numbers?

So I proceed to create a global data frame & modify it within the function:

`sapply(2:4,function(x) { newDF <<- as.data.frame(rbind(newDF,abs(sampleDF[1,]-sampleDF[x,])));})`

```
> newDF
X1 X2 X3
2 3 3 3
3 1 4 4
4 6 2 2
> rowSums(outDF)
2 3 4
9 9 10
>
```

This is as expected.

**Puzzle 2**: Is there a cleaner way to achieve this? How can I do this for every row in the data frame (shown above is only for "distance" from row 1. Would need to do this for other rows as well)? Is running a loop the only option?