# Vectorized sum over slices of an array

Suppose I have an array of three dimensions:

``````set.seed(1)
foo <- array(rnorm(250),dim=c(5,10,5))
``````

And I want to create a matrix of each row and layer summed over columns 4, 5 and 6. I can write do this like this:

``````apply(foo[,4:6,],c(1,3),sum)
``````

But this splits the array per row and layer and is pretty slow since it is not vectorized. I could also just add the slices:

``````foo[,4,]+foo[,5,]+foo[,6,]
``````

Which is faster but gets abit tedious to do manually for multiple slices. Is there a function that does the above expression without manually specifying each slice?

-

I think you are looking for `rowSums / colSums` (fast implementations of `apply`)

``````colSums(aperm(foo[,4:6,], c(2,1,3)))

> all.equal(colSums(aperm(foo[,4:6,], c(2,1,3))), foo[,4,]+foo[,5,]+foo[,6,])
[1] TRUE
``````
-
+1 Excellent answer, just beating me too it. I had a similar problem some months back and the `aperm()` solution helped there. –  Gavin Simpson Jul 6 '11 at 13:27
I knew about `rowSums()` and `colSums()` but they were giving unexpected results. `aperm()` indeed seems to fix this, thanks! –  Sacha Epskamp Jul 6 '11 at 13:55

``````eval(parse(text=paste(sprintf('foo[,%i,]',4:6),collapse='+')))
I am am aware that there are reasons to avoid `parse`, but I am not sure how to avoid it in this case.