# 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.

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It is, however, much slower than array methods. –  BondedDust Oct 8 '12 at 20:50
@DWin - it is? Do you have any examples I can use for benchmarking? –  hadley Oct 9 '12 at 14:08
@hadley: If this respondent had included an example I would have run rbenchmark::benchmark on a large matrix. Instead I searched on: [r] plyr benchmark and immediately found this: stackoverflow.com/questions/11533438/why-is-plyr-so-slow I'm a fan of rehape2 but admit that I have not used plyr very much because I can usually get things done with base tools. So I don't yet know what a plyr-solution to this dimensional permutation would look like. –  BondedDust Oct 9 '12 at 15:45
@Dwin aaply != ddply. There isn't anyway to use plyr to solve this problem, I just thought you might have had an example where using plyr was slower than base functions for arrays. –  hadley Oct 9 '12 at 20:31