Assume that we are working with a language which stores arrays in column-major order. Assume also that we have a function which uses 2-D array as an argument, and returns it. I'm wondering can you claim that it is (or isn't) in general beneficial to transpose this array when calling the function in order to work with column-wise operations instead of row-wise operations, or does the transposing negate the the benefits of column-wise operations?

As an example, in R I have a object of class ts named `y`

which has dimension `n x p`

, i.e I have `p`

times series of length `n`

.

I need to make some computations with `y`

in Fortran, where I have two loops with following kind of structure:

```
do i = 1, n
do j= 1, p
!just an example, some row-wise operations on `y`
x(i,j) = a*y(i,j)
D = ddot(m,y(i,1:p),1,b,1)
! ...
end do
end do
```

As Fortran (as does R) uses column-wise storage, it would be better to make the computations with `p x n`

array instead. So instead of

```
out<-.Fortran("something",y=array(y,dim(y)),x=array(0,dim(y)))
ynew<-out$out$y
x<-out$out$x
```

I could use

```
out<-.Fortran("something2",y=t(array(y,dim(y))),x=array(0,dim(y)[2:1]))
ynew<-t(out$out$y)
x<-t(out$out$x)
```

where Fortran subroutine `something2`

would be something like

```
do i = 1, n
do j= 1, p
!just an example, some column-wise operations on `y`
x(j,i) = a*y(j,i)
D = ddot(m,y(1:p,i),1,b,1)
! ...
end do
end do
```

Does the choice of approach always depend on the dimensions `n`

and `p`

or is it possible to say one approach is better in terms of computation speed and/or memory requirements? In my application `n`

is usually much larger than `p`

, which is 1 to 10 in most cases.

hereabout the speed of BLAS/LAPACK routines. – Mike Dunlavey Mar 1 '13 at 19:08