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I have a data.frame in R with 19 million rows and 90 columns. I have plenty of spare RAM and CPU cycles. It seems that changing a single column name in this data frame is a very intense operation for R.

system.time(colnames(my.df)[1] <- "foo")
   user  system elapsed 
 356.88   16.54  373.39 

Why is this so? Does every row store the column name somehow? Is this creating an entirely new data frame? It seems this operation should complete in negligible time. I don't see anything obvious in the R manual entry.

I'm running build 7600 of R (64bit) on Windows 7, and in my current workspace, setting colnames on a small data.frame takes '0' time according to system.time().

Edit: I'm aware of the possibility of using data.table, and, honestly, I can wait 5 minutes for the rename to complete whilst I go get some tea. What I'm interested in is what is happening and why?

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Oddly, I was just reading about this. I believe it may actually be copying the df twice. If you're using 2.15.0, try installing and loading the package dataframe and see if that helps any. –  joran Jun 14 '12 at 17:48
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Matthew Dowle explains this very nicely here and provides a solution with data.table package. –  Chase Jun 14 '12 at 18:00
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@ina - for this particular task (renaming columns), perhaps the answer is yes. At Matthew points out, sometimes you won't just have to wait a while, but you may also run out of memory to do something as simple as changing the name. –  Chase Jun 14 '12 at 18:12
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@Ina I'm sure you didn't mean anything by it, but I try to be careful about saying that something is "badly coded" when it's written by volunteers, and it's only one piece of a very large/complex piece of software that I find enormously helpful. R Core members surely get far more complaints than thanks. (Though I agree, it is pretty crazy that it copies the df that many times just to change the names.) –  joran Jun 14 '12 at 18:23
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It is not badly coded, just inefficient especially if you use the wrong combination of functions as Josh via Matthew Dowle illustrate. A point I haven't seen mentioned is R's functional programming paradigm where a function should not change its arguments. Hence "names<-"() must return an object that is a copy of its input with the updated names, even if this means copying the entire data frame. It isn't allowed to modify the object passed to it. Now R is usually quite clever and tries not to copy until you modify an object but as soon as you do, copies will occur. –  Gavin Simpson Jun 14 '12 at 21:13

1 Answer 1

up vote 20 down vote accepted

As several commenters have mentioned, renaming data frame columns is slow, because (depending on how you do it) it makes between 1 and 4 copies of the entire data.frame. Here, from data.table's ?setkey help page, is the nicest way of demonstrating this behavior that I've seen:

DF = data.frame(a=1:2,b=3:4)       # base data.frame to demo copies
try(tracemem(DF))                  # try() for non-Windows where R is 
                                   # faster without memory profiling
colnames(DF)[1] <- "A"             # 4 copies of entire object
names(DF)[1] <- "A"                # 3 copies of entire object
names(DF) <- c("A", "b")           # 1 copy of entire object
`names<-`(DF,c("A","b"))           # 1 copy of entire object
x=`names<-`(DF,c("A","b"))         # still 1 copy (so not print method)
# What if DF is large, say 10GB in RAM. Copy 10GB just to change a column name?

To (start) understanding why things are done this way, you'll probably need to delve into some of the related discussions on R-devel. Here are a couple: R-devel: speeding up perception and R-devel: Confused about NAMES

My impressionistic reading of those threads is that:

  1. At least one copy is made so that modifications to it can be 'tried out' before overwriting the original. Thus, if something is wrong with the value-to-be-reassigned, [<-.data.frame or names<- can 'back out' and deliver an error message without having done any damage to the original object.

  2. Several members of R-core aren't completely satisfied with how things are working right now. Several folks explain that in some cases "R loses track"; Luke Tierney indicates that he's tried some modifications relating to this copying in the past "in a few cases and always had to back off"; and Simon Urbanek hints that "there may be some things coming up, too"

(As I said, though, that's just impressionistic: I'm simply not able to follow a full conversation about the details of R's internals!)


Also relevant, in case you haven't seen it, here's how something like names(z)[3] <- "c2" "really" works:

# From ?names<-
z <- "names<-"(z, "[<-"(names(z), 3, "c2"))

Note: Much of this answer comes from Matthew Dowle's answer to this other question. (I thought it was worth placing it here, and giving it some more exposure, since it's so relevant to your own question).

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++ for parsing the R-devel threads, I was having a hard time wrapping my head around those conversations. –  Ina Jun 15 '12 at 15:29

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