# How to rewrite sapply as a for loop

I want to replace the behaviour of `sapply` with a for loop. (See further down for why, if interested.)

Here is a simplification of the sapply version of my code:

``````slow_function=function(n) c(n*n, 0, (-n)^n, -1, +1)
quick_analysis=function(res) res[1]+res[3]

results=sapply(1:8,function(n){
res=slow_function(n)
a=quick_analysis(res)
b=table(sign(res))
list(
a=a,
up=b['1'],
down=b['-1'],
level=b['0']
)
})
``````

That gives me:

``````      [,1] [,2] [,3] [,4] [,5]  [,6]  [,7]    [,8]
a     0    8    -18  272  -3100 46692 -823494 16777280
up    2    3    2    3    2     3     2       3
down  2    1    2    1    2     1     2       1
level 1    1    1    1    1     1     1       1
``````

(That is good, though incidentally I actually want it transposed, with values of n as the rows, and a, up, down, level as the columns. But, no problem, I know how to do that.)

When I turn it into a for loop:

``````results=vector()
for(n in 1:8){
res=slow_function(n)
a=quick_analysis(res)
b=table(sign(res))
results[n]=list(
a=a,
up=b['1'],
down=b['-1'],
level=b['0']
)
}
``````

then I get 8 warning messages like:

``````1: In results[n] = list(a = a, up = b["1"], down = b["-1"], level = b["0"]) :
number of items to replace is not a multiple of replacement length
``````

And results is very different:

``````[[1]]
[1] 0

[[2]]
[1] 8

[[3]]
[1] -18

[[4]]
[1] 272

[[5]]
[1] -3100

[[6]]
[1] 46692

[[7]]
[1] -823494

[[8]]
[1] 16777280
``````

I kind of understand what is happening. What I don't know is the magic incantation to get the result I want! I've tried initializing results to be `matrix()` or `list()` instead, with identical output.

ASIDE: Why do I want to use a for loop? I actually want to do two calculations per pass of the sapply loop. In other words only make 8 calls to `slow_function` but return 16 rows of results. If sapply allowed it my code would be something like:

``````results=sapply(1:8,function(n){
res=slow_function(n)
a=quick_analysis(res)
b=table(sign(res))
list(
a=a,
up=b['1'],
down=b['-1'],
level=b['0']
)
res=-res  #Modify res
a=quick_analysis(res)
b=table(sign(res))
list(
a=a,
up=b['1'],
down=b['-1'],
level=b['0']
)
})
``````

Desired output: (sorry the formatting is off, I had to make it by hand)

``````      [,1] [,2] [,3] [,4] [,5] [,6] [,7] [,8] [,9] [,10] [,11] [,12]  [,13]   [,14] [,15]   [,16]
a     0     0    8     -8   -18  18    272  -272 -3100 3100  46692  -46692 -823494 823494 16777280 -16777280
up    2     2    3     1    2    2     3     1    2     2     3      1      2       2      3        1
down  2     2    1     3    2    2     1     3    2     2     1      3      2       2      1        3
level 1     1    1     1    1    1     1     1    1     1     1      1      1       1      1        1
``````
-
I don't entirely follow what you're doing but what you want can be accomplished with the apply family. If you gave some data and expected results I think you'd get a better answer than saying I want to do this with a for loop. – Tyler Rinker Jul 23 '12 at 3:12
Always remember the difference between `[` and `[[` for lists. You want the latter. But I agree with Tyler, that I'm skeptical that this is really the direction you want to go. – joran Jul 23 '12 at 3:12
@TylerRinker, joran Thanks for the responses. My question contains all data to reproduce everything (though I admit it now looks rather abstract). The ASIDE section shows what I wanted to do; I just updated my question to show the expected output (i.e. 16 outputs from 8 passes of the sapply loop). – Darren Cook Jul 23 '12 at 3:30
@joran Having seen baptiste's answer I now see what you were referring to. Thanks! – Darren Cook Jul 23 '12 at 12:14

sapply simplifies the result by default, when they all have the same length. Thus, you need to manually combine the various sublists that a for loop returns,

``````results2 = list()
for (n in 1:8){
res=slow_function(n)
a=quick_analysis(res)
b=table(sign(res))
results2[[n]] = list(
a=a,
up=b['1'],
down=b['-1'],
level=b['0']
)

}

do.call(cbind, results2)
``````
-
Thanks! I've marked this as the correct answer as it answers my actual question. But I couldn't work out how to convert the resulting object into a data.frame, in the time I had available, and I found a data.frame much easier to work with; so in my real-world code I'm using something closer to Tyler's answer. – Darren Cook Jul 23 '12 at 12:12

This is a shot in the dark for how to accomplish this without data and knowing what your after:

``````slow_function=function(n) c(n*n, 0, (-n)^n, -1, +1)
quick_analysis=function(res) res[1]+res[3]

results=lapply(1:8,function(i){
res=slow_function(i)
FUN <- function(res.in) {
a=quick_analysis(res.in)
b=table(sign(res.in))
data.frame(
a=a,
up=b['1'],
down=b['-1'],
level=b['0']
)
}
data.frame(id=c("p", "n"), it=i, rbind(FUN(res), FUN(-res)))
})

DAT <- do.call(rbind, results)
with(DAT, DAT[order(id, it), ]) #maybe the order you're after
``````

EDIT:

This will give you what you want then (the indexing and id was never necessary I did it because I didn't know your desired output; you can remove thema s you see fit):

``````rownames(DAT) <- NULL
t(DAT[, -c(1:2)])
``````
-
Thanks Tyler. That DAT was the output I was after. Re your edit, actually where I'm heading to is `rownames(DAT)=paste(DAT\$id,DAT\$it,sep='')`. – Darren Cook Jul 23 '12 at 3:38
But I still don't understand how I do this with a for loop: how do I build up a vector/list of output in a for loop, the same way that sapply/lapply do? – Darren Cook Jul 23 '12 at 3:42