Sign up ×
Stack Overflow is a community of 4.7 million programmers, just like you, helping each other. Join them; it only takes a minute:

I have this dataset of financial transactions, its pretty big but small enough to keep in memory..

R> str(trans)
'data.frame':   130000000 obs. of  5 variables:
 $ id    : int  5 5 5 5 6 11 11 11 11 11 ...
 $ kod   : int  2 3 2 3 38 2 3 6 7 6 ...
 $ ar    : int  329 329 330 330 7 329 329 329 329 329 ...
 $ belopp: num  1531 -229.3 324 -48.9 0 ...
 $ datum : int  36976 36976 37287 37287 37961 36976 36976 37236 37236 37281 ...

I need to loop through it extracting the transactions for each unique id, and do a bunch of calculations. The trouble is that the subsetting of the dataset is way too slow..

R> system.time(
+ sub <- trans[trans$id==15,]
+ )
   user  system elapsed 
   7.80    0.55    8.36

R> system.time(
+ sub <- subset(trans, id == 15)
+ )
   user  system elapsed 
   8.49    1.05    9.53 

As there are about 10m unique id's in this dataset, such a loop would take forever, any ideas how I might speed it up?

EDIT I've dabbled with ´data.tables´, indexing and sorting with not much luck at all..

trans2 <-
trans2 <- trans2[order(id)]
trans2 <- setkey(trans2, id)

R> system.time(
+ sub <- trans2[trans2$id==15,]
+ )
   user  system elapsed 
   7.33    1.08    8.41 

R> system.time(
+ sub <- subset(trans2, id == 15)
+ )
   user  system elapsed 
   8.66    1.12    9.78

EDIT2 Awesome.

R> system.time(
+ sub <- trans2[J(15)]
+ )
   user  system elapsed 
      0       0       0 
share|improve this question
Could you describe what you've tried with data.tables and where you've run into problems? – BenBarnes Jan 3 '13 at 13:12
@BenBarnes Sure, I tried converting the data.frame to a data.table, sorting it and using the setkey() function to index the id column. This did not lower the subsetting time at all.. – jenswirf Jan 3 '13 at 13:22
Are you still using a loop? data.table's ,by argument to [ will much faster, I think:… – Ari B. Friedman Jan 3 '13 at 13:28
If you're converting to a data.table and using setkey, you shouldn't need to sort in an extra step. Also, for subsetting, try (with your keyed data.table named, say, transDT) transDT[J(15)]. Please also consider editing your question to include the data.table code you used. – BenBarnes Jan 3 '13 at 13:41

2 Answers 2

up vote 3 down vote accepted

Note: The post has been edited by changing the function being calculated from rowSums to colSums (using lapply in case of data.table)

I don't think you could get the result faster than data.table. Here's a benchmark between plyr and data.table. Of course if the time-consuming part is your function, then you could use doMC to run in parallel using plyr (assuming you have a lot of cores or you work on a cluster). Else, I'd stick to data.table. Here's an analysis with a huge test data and a dummy function:

# create a huge data.frame with repeating id values
len <- 1e5
reps <- sample(1:20, len, replace = TRUE)
x <- data.frame(id = rep(1:len, reps))
x <- transform(x, v1 = rnorm(nrow(x)), v2 = rnorm(nrow(x)))

> nrow(x) 
[1] 1048534 # 1 million rows

# construct functions for data.table and plyr
# method 1
# using data.table
DATA.TABLE <- function() {
    x.dt <- data.table(x, key="id")
    x.dt.out <- x.dt[, lapply(.SD, sum), by=id]

# method 2
# using plyr
PLYR <- function() {
    x.plyr.out <- ddply(x, .(id), colSums)

# let's benchmark
> require(rbenchmark)
> benchmark(DATA.TABLE(), PLYR(), order = "elapsed", replications = 1)[1:5]
          test replications elapsed relative user.self
1 DATA.TABLE()           1  1.006     1.00    .992
2       PLYR()           1  67.755   67.351  67.688

On a data.frame with 1 million rows, data.table takes 0.992 seconds. The speed-up using data.table compared to plyr (admittedly, on computing column sums) is 68x. Depending on the computation time in your function, this speed-up will vary. But data.table will still be way faster. plyr is a split-apply-combine strategy. I don't think you'd get a comparable speed-up compared to using base to split, apply and combine yourself. Of course you can try it.

I ran the code with 10 million rows. data.table ran in 5.893 seconds. plyr took 6300 seconds.

share|improve this answer
+1 but why test sum(rowSums(w))? It's important to do things by column in data.table, never by row as that'll be page inefficient. Try testing lapply(.SD,sum) and sum(lapply(.SD,sum)) and they should be faster. The 22 seconds is the total for 10 runs, too, it seems. Anyone glancing at this answer who doesn't know R or data.table or plyr might be aghast that this takes 22 seconds on just 1e6 rows. It doesn't, it takes 2.2s, and the lapply should be better still. – Matt Dowle Jan 3 '13 at 14:44
I was focussing on the Update: part there. Now I see previous paragraph but I'm not 100% clear. – Matt Dowle Jan 3 '13 at 14:51
@Matthew, All I want to show is that the only limiting factor is the time taken for the function to compute. I really don't mind if the function takes more time. The purpose was to show that for the same function, data.table would be the fastest. Not sure if this makes things clear..? – Arun Jan 3 '13 at 14:56
Yep, because the result of colSums is a vector. To get it as columns it's as.list(colSums(.SD)) but of course the as.list will copy all those small vectors into a new (small) list for each group, so the direct lapply(.SD,sum) should be faster by avoiding those coercions. – Matt Dowle Jan 3 '13 at 22:58
Great answer btw, that's more like it :) – Matt Dowle Jan 3 '13 at 23:01

Why not use the split, apply and combine strategy?

Something like this (without a sample data I don't know if this will work):

fastsplit <- function (df) {
  lista <- split(seq(nrow(df)), df$id)

# function to split the data frame into a list by id

lista_split <- fastsplit(trans)

# now, assuming that one of the calculations is, for instance, to sum belopp
# apply the function to each subset

result1 <- lapply(lista_split, function(.indx){

  sum_bellop = sum(trans$belopp[.indx])})

# combine stage
r1 <-, result1)

Having provided the code above, I'd say that it would be faster and easier if you could use SQL. Maybe the package sqldf could help you here? I never tryed it though. I don't know if it is fast. The code in SQL is quite simple. To do the same as the R code above, just use Something like:

select id
       , sum(belopp) as sum_bellop from trans
group by id

This will return a table with two columns, id and sum of belopp by id

share|improve this answer
Having seen @Arun answer, I must say I never used data.table, so I don't know if my solution is faster than data.table. However, I do know that my solution is quite faster than plyr. Still, I'd suggest you to move to SQL.. – Manoel Galdino Jan 3 '13 at 14:09
I will for sure test if the split strategy is superior to using a huge loop which was my first thought. However, you wrongly assumed I only need a simple calculation on each subset, there are in fact a few hundred lines of code there so SQL will just not work. – jenswirf Jan 3 '13 at 14:20
Please let me know if you find out if the split strategy is better than data.table... – Manoel Galdino Jan 3 '13 at 17:34
Hi Manoel. This may give some insight about data.table vs SQL speed : – Matt Dowle Jan 3 '13 at 23:29
Thank you @Matthew Dowle. I must confess that I'm quite surprised to learn that data.table is faster than SQL. I'll for sure take a look at data.table. – Manoel Galdino Jan 4 '13 at 16:42

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.