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I'm a bit confused. I routinely use transform like this

    ddply(data.frame, 1, transform, new.column = function(old.col.1,old.col.2,...))

This is also recommended by Hadley.

But recently I asked a question and Hadley stated this:

Don't use transform. It's a helper function suitable for interactive use, not for programming with.

So whats wrong with transform? I think im convinced now that this is stupid:


But is it not very useful in the ddply setting?

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Surely subset() should die the same death –  mdsumner Mar 8 '12 at 13:32

1 Answer 1

up vote 1 down vote accepted

There's a difference between using transform within ddply and the function transform() as a standalone. It is far better (and quicker) to just do:

Mydata$col3 <- fun(Mydata$col1, Mydata$col2)

The function combination ddply/transform is especially useful if you have more than one column to change, eg

Mynewdata <- ddply(Mydata,1,transform,col3=fun1(col1,col2), col4=fun2(col1,col2))

And even then, you have the more flexible option of using within() that allows you to use calculated results to calculate the next row:

Mynewdata <- within(Mydata,{
    col2 <- fun1(col1)
    col3 <- fun2(col1,col2)

The thing with transform() is that it is especially written to be used interactively. If you use it within a function, you might run into trouble. It is similar to subset() in that way: They're convenience functions, but they're neither fast nor very safe to use within more complex code.

Opinions differ on ddply(). In some cases it works quick and gives very clean and readible code, in other cases I consider it serious overkill. ddply() often works faster and easier when you have to use non-vectorized functions, in which case the above options wouldn't work. But for that, you also have the option to use mapply:

Mynewdata <- within(Mydata, col3 <- mapply(myfun,col1,col2))

mapply can in this case also be quite faster. To give you a basic example:

Mydata <- data.frame(col1=rnorm(5),col2=rpois(5,3))
myfun <- function(x,y){
    if(y == 0) mean(x) else

code1 <- expression(Newdata <- ddply(Mydata,1,transform,col3=myfun(col1,col2)))
code2 <- expression(Newdata2 <- within(Mydata, col3 <- mapply(myfun,col1,col2)))

> benchmark(code1,code2)
   test replications elapsed relative 
1 code1          100    0.50     12.5 
2 code2          100    0.04      1.0 

The main problem I have with ddply() is that the order of your observations is not guaranteed, as you see in the example output below:

Mydata              Newdata2                    Newdata
        col1 col2         col1 col2      col3         col1 col2      col3
1 0.07060223    4 | 0.07060223    4 2.0141204 | 0.05658259    2 1.0188609
2 1.84645791    2 | 1.84645791    2 1.6154860 | 0.07060223    4 2.0141204
3 0.05658259    2 | 0.05658259    2 1.0188609 | 0.84119845    1 0.9205992
4 0.89998084    5 | 0.89998084    5 2.6499968 | 0.89998084    5 2.6499968
5 0.84119845    1 | 0.84119845    1 0.9205992 | 1.84645791    2 1.6154860

Both functions calculate the correct result, but mapply() does so faster in this case and with preserving the order of the observations in the dataframe.

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Ok, but what about this command: 'ddply(data.frame, 1, transform, new.column = function(old.col.1,old.col.2,...))'? Is there a one-line alternative for doing exactly the same? –  Johannes Mar 8 '12 at 10:54
edited to give a bit more explanation. –  Joris Meys Mar 8 '12 at 12:10
Thanks for the extended answer! I think the within-apply-solution would be a good replacement for ddply-transform. However, I'm not bothered so much by the sorting of ddply. It's a nuisance most of the time, but still the association of different data is not messed with - which would of course render ddply useless. –  Johannes Mar 8 '12 at 15:44
I too had this question, but I am still confused after reading your answer. My question was more along the lines of: are these two statements functionally equivalent? ddply(data.frame, "var", transform, new.col=1/x) and transform(data.frame, new.col=1/x) –  KarateSnowMachine Aug 29 '13 at 18:18

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