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I run simulations on a Windows 64bit-computer with 64 GB RAM. Memory use reaches 55% and after a finished simulation run I remove all objects in the working space by rm(list=ls()), followed by a double gc().

I supposed that this would free enough memory for the next simulation run, but actually memory usage drops by just 1%. Consulting a lot of different fora I could not find a satisfactory explanation, only vague comments such as:

"Depending on your operating system, the freed up memory might not be returned to the operating system, but kept in the process space."

I'd like to find information on:

  • 1) which OS and under which conditions freed memory is not returned to the OS, and
  • 2) if there is any other remedy than closing R and start it again for the next simulation run?
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2  
Will the next run run out of memory if you do not close R? –  Bart Friederichs Jan 29 '13 at 10:05
2  
Do you actually run out of memory later on? –  Thilo Jan 29 '13 at 10:06
    
I could not check that yet. I'm quite in a hurry with the current project and I did not want to face the risk of getting stuck with the simulations (they need between six hours and two days). –  user7417 Jan 29 '13 at 11:37
    
That's why you test the behavior of gc or rm... on a nice small dataset before executing the entire simulation. –  Carl Witthoft Jan 29 '13 at 12:44

2 Answers 2

up vote 8 down vote accepted

How do you check memory usage? Normally virtual machine allocates some chunk of memory that it uses to store its data. Some of the allocated may be unused and marked as free. What GC does is discovering data that is not referenced from anywhere else and marking corresponding chunks of memory as unused, this does not mean that this memory is released to the OS. Still from the VM perspective there's now more free memory that can be used for further computation.

As others asked did you experience out of memory errors? If not then there's nothing to worry about.

EDIT: This and this should be enough to understand how memory allocation and garbage collection works in R.

From the first document:

Occasionally an attempt is made to release unused pages back to the operating system. When pages are released, a number of free nodes equal to R_MaxKeepFrac times the number of allocated nodes for each class is retained. Pages not needed to meet this requirement are released. An attempt to release pages is made every R_PageReleaseFreq level 1 or level 2 collections.

EDIT2:

To see used memory try running gc() with verbose set to TRUE:

gc(verbose=T)

Here's a result with an array of 10'000'000 integers in memory:

Garbage collection 9 = 1+0+8 (level 2) ... 
10.7 Mbytes of cons cells used (49%)
40.6 Mbytes of vectors used (72%)
          used (Mb) gc trigger (Mb) max used (Mb)
Ncells  198838 10.7     407500 21.8   350000 18.7
Vcells 5311050 40.6    7421749 56.7  5311504 40.6

And here's after discarding reference to it:

Garbage collection 10 = 1+0+9 (level 2) ... 
10.7 Mbytes of cons cells used (49%)
2.4 Mbytes of vectors used (5%)
         used (Mb) gc trigger (Mb) max used (Mb)
Ncells 198821 10.7     407500 21.8   350000 18.7
Vcells 310987  2.4    5937399 45.3  5311504 40.6

As you can see memory used by Vcells fell from 40.6Mb to 2.4Mb.

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I check memory usage with the Windows Task Manager. –  user7417 Jan 29 '13 at 11:38
    
@user7417 Memory shown in Task Manager as used by the R process could be marked as free on the VM level, meaning all of it will be available for future computation. GC when performing level 1 or 2 garbage collection may decide to free some of it to the system to let other processes use it. –  Ivan Koblik Jan 29 '13 at 13:34
    
@user7417 I have update my answer with more information. –  Ivan Koblik Jan 29 '13 at 19:10
    
After finishing my analysis I checked whether I would actually run out of memory - - I did not (although the Windows Task Manager showed that the largest part of memory was still occupied). So I better trust my gc()-output... –  user7417 Feb 4 '13 at 16:34

The R garbage collector is imperfect in the following (not so) subtle way: it does not move objects (i.e., it does not compact memory) because of the way it interacts with C libraries. (Some other languages/implementations suffer from this too).

This means that if you take turns allocating small chunks of memory which are then discarded and larger chunks for more permanent objects (this is a common situation when doing string/regexp processing), then your memory becomes fragmented and the garbage collector can do nothing about it: the memory is released, but cannot be re-used because the free chunks are too short.

The only way to fix the problem is to save the objects you want, restart R, and reload the objects.

Since you are doing rm(list=ls()), i.e., you do not need any objects, you do not need to save and reload anything, so, in your case, the solution is precisely what you want to avoid - restarting R.

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You seem to be contradicting yourself. No need to save and reload means no need to restart R, right? –  Alexander Hanysz Sep 9 '13 at 1:27
    
@AlexanderHanysz: not at all. Alas, the only way to reliably clean up the memory is to restart R. The objects which intersperse the released memory might be parts of the working environment which are not removed by rm(list=ls()). –  sds Sep 9 '13 at 1:32
    
Thanks for the response. This is very unintuitive! Can you give examples of objects that aren't removed by rm(list=ls())? –  Alexander Hanysz Sep 10 '13 at 2:21
    
@AlexanderHanysz: if it were that easy, it would have been fixed. :-) I am not such an expert in R internals, sorry. –  sds Sep 10 '13 at 3:24

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