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I have a very large dataframe in R and would like to sum two columns for every distinct value in other columns, for example say we had data of a dataframe of transactions in various shops over a day as follows

shop <- data.frame('shop_id' = c(1, 1, 1, 2, 3, 3), 
  'shop_name' = c('Shop A', 'Shop A', 'Shop A', 'Shop B', 'Shop C', 'Shop C'), 
  'city' = c('London', 'London', 'London', 'Cardiff', 'Dublin', 'Dublin'), 
  'sale' = c(12, 5, 9, 15, 10, 18), 
  'profit' = c(3, 1, 3, 6, 5, 9))

which is:

shop_id  shop_name    city      sale profit
   1     Shop A       London    12   3
   1     Shop A       London    5    1
   1     Shop A       London    9    3
   2     Shop B       Cardiff   15   6
   3     Shop C       Dublin    10   5
   3     Shop C       Dublin    18   9

And I'd want to sum the sale and profit for each shop to give:

shop_id  shop_name    city      sale profit
   1     Shop A       London    26   7
   2     Shop B       Cardiff   15   6
   3     Shop C       Dublin    28   14

I am currently using the following code to do this:

 shop_day <-ddply(shop, "shop_id", transform, sale=sum(sale), profit=sum(profit))
 shop_day <- subset(shop_day, !duplicated(shop_id))

which works absolutely fine, but as I said my dataframe is large (140,000 rows, 37 columns and nearly 100,000 unique rows which I want to sum) and my code takes ages to run and then eventually says it has run out of memory.

Does anyone know of the most efficient way to do this.

Thanks in advance!

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2  
...I feel a data.table answer coming... –  Joshua Ulrich Aug 2 '12 at 16:42

2 Answers 2

up vote 12 down vote accepted

** Obligatory Data Table answer **

> library(data.table)
data.table 1.8.0  For help type: help("data.table")
> shop.dt <- data.table(shop)
> shop.dt[,list(sale=sum(sale), profit=sum(profit)), by='shop_id']
     shop_id sale profit
[1,]       1   26      7
[2,]       2   15      6
[3,]       3   28     14
> 

Which sounds fine and good until things get bigger...

shop <- data.frame(shop_id = letters[1:10], profit=rnorm(1e7), sale=rnorm(1e7))
shop.dt <- data.table(shop)

> system.time(ddply(shop, .(shop_id), summarise, sale=sum(sale), profit=sum(profit)))
   user  system elapsed 
  4.156   1.324   5.514 
> system.time(shop.dt[,list(sale=sum(sale), profit=sum(profit)), by='shop_id'])
   user  system elapsed 
  0.728   0.108   0.840 
> 

You get additional speed increases if you create the data.table with a key:

shop.dt <- data.table(shop, key='shop_id')

> system.time(shop.dt[,list(sale=sum(sale), profit=sum(profit)), by='shop_id'])
   user  system elapsed 
  0.252   0.084   0.336 
> 
share|improve this answer
    
Note that Justin is using summarise instead transform in his ddply call; that change is probably enough to get your code working without the memory error, though other solutions are certainly faster. –  Aaron Aug 2 '12 at 17:52
    
@Aaron Thanks! I left that explanation since there was an earlier answer that explained it. However that was since deleted! –  Justin Aug 2 '12 at 17:56
    
Thanks Justin, much quicker. Another quick question, is there a way of keeping the other columns (e.g. shop_name, city) in the final data table? I can join back on the initial dataframe to get this but would be neater if there was a way to do this within the initial query. –  user1165199 Aug 2 '12 at 17:56
    
Also is there any knock on effects from having my data frame now stored as a data table later on? does it perform any differently for any particular queries? Thanks –  user1165199 Aug 2 '12 at 17:59
    
There can be some surprises later on, but you can always use as.data.frame to drop the data table attribute. As far as keeping the original columns, you sure can. you can merge them or add them to the list() with unique(shop_name). take a look at ?merge.data.table for more info on the merge. –  Justin Aug 2 '12 at 18:20

Here's how to use base R to speed up operations like this:

idx <- split(1:nrow(shop), shop$shop_id)
a2 <- data.frame(shop_id=sapply(idx, function(i) shop$shop_id[i[1]]),
                 sale=sapply(idx, function(i) sum(shop$sale[i])), 
                 profit=sapply(idx, function(i) sum(shop$profit[i])) )

Time reduces to 0.75 sec vs 5.70 sec for the ddply summarise version on my system.

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If I have many columns like sale and profit in above example which I want to sum, is it possible to call a single function to combine third and fourth line in above code into a single line. –  lovedynasty May 25 at 12:39
1  
Not really using this exact method, but there are ways of doing that. Start a new question with a minimally reproducible example and you'll get plenty of suggestion. –  Aaron May 25 at 23:27

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