Reshape multidimensional array

I have an array representing hourly temperature data, and want to compute daily maxima (or minima, or means). I can do this using a for loop, but I am sure there must be many better ways to do this in R.

``````require(ncdf4)
nc <- nc_open('file.nc')
t2 <- ncvar_get(nc,var='T2')  # [ncols, nrows, nsteps]
``````

Now t2 is an array with 744 hourly time steps for a 31-day month. What I want is:

``````t2.max[ncols, nrows, 31]
``````

or, more generally, I would like to reshape t2 to:

``````t2.reshape[ncols, nrows, ndays, 24]
``````

and from there I can use apply to compute daily means or maxima or whatever.

I want the result to be an array, not a data frame.

Suggestions? I tried using melt/cast from the reshape package, but could not understand how to specify the desired formula.

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If t2 is an array with 744 hourly time steps for a 31-day month" then it has 744 rows and other dimensions? (You did not tell us whether ncol was 744 or nrow was 744. We will assume it was nrow)

`````` array( tc, , dim =c( 31, 24, nrows,  ncols) )
``````

If, on the other hand, it was [nrow,ncols,744] you can use aperm to recast it with the rows being as above:

`````` array( aperm(tc, c(3,1,2)) , dim =c( 31, 24, nrows,  ncols) )
``````

There is a package that has a 'rowMax' and and a 'rowMin' function which would give you a vectorized approach that you would not need to invent. (It was in the Biobase package from the Bioconductor repository.)

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Thanks, this helped. The number of hours varies faster than the number of days, so I needed instead: `array( aperm(t2,dim=c(3,1,2)), dim=c( 24, 31, nrows, ncols) )`. –  Chris Nolte Oct 8 '12 at 20:14
In addition to the DWin answer, I suggest to use the package `plyr`. It is much more advanced and easier for multi-dimensional data handling. Here is a good reference.