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I'd like to work out how much RAM is being used by each of my objects inside my current workspace. Is there an easy way to do this?

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    I do not understand why this question was closed. This question asks about determining memory usage which is clearly distinct from the linked "duplicate" which is about managing memory. For example, the most up-voted answer has no mention of memory usage determination whatsoever. – krassowski Jan 1 at 17:21
  • In addition to all answer, I would like to refer reading memory management from Advanced R: adv-r.had.co.nz/memory.html – Dr Nisha Arora Apr 1 at 4:06
211

some time ago I stole this little nugget from here:

sort( sapply(ls(),function(x){object.size(get(x))})) 

it has served me well

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    also, if one wants the total memory used by an R session, one can do object.size(x=lapply(ls(), get)) and print(object.size(x=lapply(ls(), get)), units="Mb") – tflutre Feb 27 '13 at 3:09
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    That nice little nugged misled me, since I had something big called 'x' (hint: it looked small); here's an replacement: sort( sapply(mget(ls()),object.size) ) . – petrelharp Aug 28 '14 at 19:58
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    you can also use format to get human readable sizes: sort(sapply(ls(), function(x) format(object.size(get(x)), unit = 'auto'))) – flying sheep Sep 7 '15 at 14:17
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    @savagent that's right, according to adv-r.had.co.nz/memory.html – Dzmitry Lazerka Jan 3 '16 at 20:46
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    I think using magrittr is a little cleaner. Can do Mb <- ls() %>% sapply(. %>% get %>% object.size %>% '/'(10^6)) then cbind(Mb, "Mb") %>% as.data.frame – Danton Noriega Mar 26 '16 at 22:10
50

1. by object size

to get memory allocation on an object-by-object basis, call object.size() and pass in the object of interest:

object.size(My_Data_Frame)

(unless the argument passed in is a variable, it must be quoted, or else wrapped in a get call.)variable name, then omit the quotes,

you can loop through your namespace and get the size of all of the objects in it, like so:

for (itm in ls()) { 
    print(formatC(c(itm, object.size(get(itm))), 
        format="d", 
        big.mark=",", 
        width=30), 
        quote=F)
}

2. by object type

to get memory usage for your namespace, by object type, use memory.profile()

memory.profile()

   NULL      symbol    pairlist     closure environment     promise    language 
      1        9434      183964        4125        1359        6963       49425 
special     builtin        char     logical     integer      double     complex 
    173        1562       20652        7383       13212        4137           1 

(There's another function, memory.size() but i have heard and read that it only seems to work on Windows. It just returns a value in MB; so to get max memory used at any time in the session, use memory.size(max=T)).

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    Useful to print in a human readable way: print(object.size(my_object), units = "auto") or format(object.size(my_object), units = "auto") – Valentin Jan 17 '19 at 14:55
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You could try the lsos() function from this question:

R> a <- rnorm(100)
R> b <- LETTERS
R> lsos()
       Type Size Rows Columns
b character 1496   26      NA
a   numeric  840  100      NA
R> 
15

This question was posted and got legitimate answers so much ago, but I want to let you know another useful tips to get the size of an object using a library called gdata and its ll() function.

library(gdata)
ll() # return a dataframe that consists of a variable name as rownames, and class and size (in KB) as columns
subset(ll(), KB > 1000) # list of object that have over 1000 KB
ll()[order(ll()$KB),] # sort by the size (ascending)
1

another (slightly prettier) option using dplyr

    data.frame('object' = ls()) %>% 
      dplyr::mutate(size_unit = object %>%sapply(. %>% get() %>% object.size %>% format(., unit = 'auto')),
                    size = sapply(strsplit(size_unit, split = ' '), FUN = function(x) x[1]),
                    unit = factor(sapply(strsplit(size_unit, split = ' '), FUN = function(x) x[2]), levels = c('Gb', 'Mb', 'Kb', 'bytes'))) %>% 
      dplyr::arrange(unit, dplyr::desc(size)) %>% 
      dplyr::select(-size_unit)
0

Here's a tidyverse-based function to calculate the size of all objects in your environment:

weigh_environment <- function(env){
  
  purrr::map_dfr(env, ~ tibble::tibble("object" = .) %>% 
                   dplyr::mutate(size = object.size(get(.x)),
                                 size = as.numeric(size),
                                 megabytes = size / 1000000))
  
}

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