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When amending an item in a vector such as

a <- 1:1000000
a[1] <- 2

R copies the whole vector and amend the item in the new vector then do the variable name re-association. I was wondering anyway to override or prevent this to make it behave something more like c array?

Thanks

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@ Shen: Welcome to the SO. Can you please provide reproducible example? –  Metrics Aug 21 '13 at 14:21
    
just add an example, thanks –  Shen Aug 21 '13 at 14:28
2  
@Metrics I think the OP is saying that the step following, subassignment ?`[<-`, makes a full copy of a. I don't see that mentioned in the documentation, but it sounds familiar. –  Frank Aug 21 '13 at 14:37
3  
@Metrics Sorry that I didn't make it clear. The question is not about the output but internal memory management. It seems R will make an internal copy before the amending, which slows down the code for my purpose. You can see this by using system.time(a[1]<-2) or tracemem(). Thank you! –  Shen Aug 21 '13 at 14:40
1  
This can be interesting too: stackoverflow.com/questions/16424422/… –  Ferdinand.kraft Aug 21 '13 at 17:39

2 Answers 2

up vote 15 down vote accepted

The tracemem function (R needs to be compiled to support it) provides an indication of when copying occurs. Here's what you do

> a <- 1:1000000; tracemem(a)
[1] "<0x7f791b39e010>"
> a[1] = 2
tracemem[0x7f791b39e010 -> 0x7f791a9d4010]: 

and indeed there's a copy. But this is because you're coercing a from an integer vector (1:1000000 creates a sequence of integers) to a numeric vector (because 2 is a numeric value, and R coerces to a common type). If instead you update your integer vector with an integer value, or a numeric vector with a numeric value, there is no copying

> a <- 1:1000000; tracemem(a)
[1] "<0x7f791a4ef010>"
> a[1] = 2L
> a = c(1, 2, 3); tracemem(a)
[1] "<0x5180470>"
> a[1] = 2
>

A little bit further insight comes from understanding at a superficial level how R's memory management works. Each allocation has a NAMED level associated with it. NAMED=0 or 1 indicates that there is at most 1 symbol that refers to it; it is therefore safe to copy in place. NAMED=2 means that there is, or has been, at least 2 symbols pointing to the same location, and that any attempt to update the value requires a duplication to preserve R's illusion of 'copy on change'. The following reveals some of the internal structure of a, including that it of type INTSXP (integer) with NAM(1) (NAMED level 1) and that it's being TRaced. Hence updating (with an integer!) does not require a copy.

> a = 1:10; tracemem(a); .Internal(inspect(a))
[1] "<0x5170818>"
@5170818 13 INTSXP g0c4 [NAM(1),TR] (len=10, tl=0) 1,2,3,4,5,...
> a[1] = 2L
> 

On the other had, here two symbols refer to the location in memory, hence NAMED is 2 and a copy is required

> a = b = 1:10; tracemem(a); .Internal(inspect(a))
[1] "<0x576d1a0>"
@576d1a0 13 INTSXP g0c4 [NAM(2),TR] (len=10, tl=0) 1,2,3,4,5,...
> a[1] = 2L
tracemem[0x576d1a0 -> 0x576d148]: 

It is difficult to reason about NAMED, so at some level these types of games have a level of futility about them.

inspect returns other information. Each R type is represented internally as an 'SEXP' (S-expression) type. These are enumerate, and the 13th SEXP type is an integer SEXP -- hence 13 INTSXP. Check out .Internal(inspect(...)) for a numeric vector, character vector, or even function .Internal(inspect(function() {})).

R manages memory by periodically running a 'garbage collector' that checks to see if memory is currently referenced; if it is not, then it is reclaimed for use by another symbol. The garbage collector is 'generational', which means that recently allocated memory is checked for reclamation more frequently than older memory (this is because, empirically, variables tend to have a short half-life, e.g., for the duration of a function call, so recently allocated memory is more likely to be available for reclamation than memory that has been in use for a longer time). The g0c4 and similar annotations are providing information about the generation the SEXP belongs to.

The TR represents a 'bit' set in the SEXP to indicate that the variable is being traced; it was set when we said tracemem(a).

Some of these topics are discussed in the documentation of R's internal implementation RShowDoc("R-ints") and in the C header file Rinternals.h.

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Thank you! Very interesting and helpful! I was wondering what are 13 g0c4 TR and tl stands for in the output from inspect? –  Shen Aug 21 '13 at 16:20
    
@Shen I added a section on this to my answer, with references to the R internals manual and source code. –  Martin Morgan Aug 21 '13 at 16:55
    
Thank you! much appreciated! –  Shen Aug 21 '13 at 17:05

You can do this with the ff package which is on CRAN. Using ff, your data is stored on disk and indexing will only affect that specific element you are indexing

require(ff)
a <- ff(1:1000000)
a[1] <- 2

For info. These are timings, so it is a lot faster for your toy case.

require(ff)
a <- 1:100000000
b <- ff(a)
system.time(a[1] <- 2)
 user  system elapsed 
0.440   0.592   1.056 
system.time(b[1] <- 2)
 user  system elapsed 
0.004   0.000   0.001 
share|improve this answer
    
Oh! Interesting! Does IO to the disk make it slow in this case? –  Shen Aug 21 '13 at 14:47
2  
@Shen If you load the microbenchmark package, it's easy to run timing tests for your specific code variations. –  Carl Witthoft Aug 21 '13 at 15:05
    
Depends on your hardware but it is pretty fast. Added timings for your toy example. –  jwijffels Aug 21 '13 at 15:35
    
Thank you! That's very helpful! I will look into this! –  Shen Aug 21 '13 at 16:21

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