# Use apply over rows

I have a simple dataframe.

``````  V1 V2 V3
1  1  4  7
2  2  5  8
3  3  6  9
``````

I would like to divide the entries in each row by the sum of all entries in that row, and get this:

``````  V1 V2 V3
1  0.08 0.33 0.58
2  0.13 0.33 0.53
3  0.16 0.33 0.50
``````

It's pretty simple to use `mydf[1,]/sum(mydf[1,])` and repeat it 3 times, but this is tedious.

I have an intuitive feeling that an apply function would work.

I have a vague notion I need to:
1) Put `mydf[1,]/sum(mydf[1,])` in a functional wrapper
2) use `apply(myfunction, 1, mydataframe)`

But I'm not sure what the arguments to `myfunction` would be.

I'm a little confused on this and any help is appreciated.

-

``````dat <- data.frame(matrix(1:9, nrow=3))
dat / rowSums(dat)
``````

You could also use `apply`, but it will return a matrix (and require you to transpose with `t`).

``````t(apply(dat, 1, FUN=function(x) x / sum(x)))
``````
-
Sorry, my first solution was wrong, because it transposes. Fixed. – Richard Herron Mar 29 '14 at 19:56
So an `apply` function is unnecessary in this case. If I were to want to practice using `apply`, would this be a good exercise? – Matt O'Brien Mar 29 '14 at 19:58
You could use `apply` (I fixed my `apply` solution), but I think the `colSums` solution is little more transparent and saves a transpose and recast as data frame (`apply` returns a matrix). – Richard Herron Mar 29 '14 at 20:01
@MattO'Brien - I think it's worthwhile and makes code a little more readable and modular. Here's a great summary. – Richard Herron Mar 29 '14 at 20:44
Interesting how that link starts off by subtly implying that the `pylr` package is probably better! – Matt O'Brien Mar 29 '14 at 20:48