# how to avoid an optimization warning in data.table

I have the following code:

``````> dt <- data.table(a=c(rep(3,5),rep(4,5)),b=1:10,c=11:20,d=21:30,key="a")
> dt
a  b  c  d
1: 3  1 11 21
2: 3  2 12 22
3: 3  3 13 23
4: 3  4 14 24
5: 3  5 15 25
6: 4  6 16 26
7: 4  7 17 27
8: 4  8 18 28
9: 4  9 19 29
10: 4 10 20 30
> dt[,lapply(.SD,sum),by="a"]
Finding groups (bysameorder=TRUE) ... done in 0secs. bysameorder=TRUE and o__ is length 0
Optimized j from 'lapply(.SD, sum)' to 'list(sum(b), sum(c), sum(d))'
Starting dogroups ... done dogroups in 0 secs
a  b  c   d
1: 3 15 65 115
2: 4 40 90 140
> dt[,c(count=.N,lapply(.SD,sum)),by="a"]
Finding groups (bysameorder=TRUE) ... done in 0secs. bysameorder=TRUE and o__ is length 0
Optimization is on but j left unchanged as 'c(count = .N, lapply(.SD, sum))'
Starting dogroups ... The result of j is a named list. It's very inefficient to create the same names over and over again for each group. When j=list(...), any names are detected, removed and put back after grouping has completed, for efficiency. Using j=transform(), for example, prevents that speedup (consider changing to :=). This message may be upgraded to warning in future.
done dogroups in 0 secs
a count  b  c   d
1: 3     5 15 65 115
2: 4     5 40 90 140
``````

How do I avoid the scary "very inefficient" warning?

I can add the `count` column before the join:

``````> dt\$count <- 1
> dt
a  b  c  d count
1: 3  1 11 21     1
2: 3  2 12 22     1
3: 3  3 13 23     1
4: 3  4 14 24     1
5: 3  5 15 25     1
6: 4  6 16 26     1
7: 4  7 17 27     1
8: 4  8 18 28     1
9: 4  9 19 29     1
10: 4 10 20 30     1
> dt[,lapply(.SD,sum),by="a"]
Finding groups (bysameorder=TRUE) ... done in 0secs. bysameorder=TRUE and o__ is length 0
Optimized j from 'lapply(.SD, sum)' to 'list(sum(b), sum(c), sum(d), sum(count))'
Starting dogroups ... done dogroups in 0 secs
a  b  c   d count
1: 3 15 65 115     5
2: 4 40 90 140     5
``````

but this does not look too elegant...

-
You want to "suppress" the warning or do things efficiently? –  Arun Apr 21 '13 at 15:27
I never said "suppress". I said "avoid" which means I want to do the right thing and make my code behave properly, efficiently, so that there is no need for the warning. –  sds Apr 21 '13 at 16:23
Obviously I was not quite sure whether you want to "avoid" "seeing" the warning or "avoid" "having" that warning. –  Arun Apr 21 '13 at 16:37
@djhuro, do this: `options(datatable.verbose = TRUE)` and then try the code. –  Arun Apr 21 '13 at 17:04
@Arun: thanks for your answer and for the question you asked on my behalf –  sds Apr 23 '13 at 14:02

One way I could think of is to assign `count` by reference:

``````dt.out <- dt[, lapply(.SD,sum), by = a]
dt.out[, count := dt[, .N, by=a][, N]]
# alternatively: count := table(dt\$a)

#    a  b  c   d count
# 1: 3 15 65 115     5
# 2: 4 40 90 140     5
``````

Edit 1: I still think it's just message and not a warning. But if you still want to avoid that, just do:

``````dt.out[, count := as.numeric(dt[, .N, by=a][, N])]
``````

Edit 2: Very interesting. Doing the equivalent of multiple `:=` assignment does not produce the same message.

``````dt.out[, `:=`(count = dt[, .N, by=a][, N])]
# Detected that j uses these columns: a
# Finding groups (bysameorder=TRUE) ... done in 0.001secs. bysameorder=TRUE and o__ is length 0
# Detected that j uses these columns: <none>
# Optimization is on but j left unchanged as '.N'
# Starting dogroups ... done dogroups in 0 secs
# Detected that j uses these columns: N
# Assigning to all 2 rows
# Direct plonk of unnamed RHS, no copy.
``````
-
this generates a warning "RHS for item 1 has been duplicated. Either NAMED vector or recycled list RHS." –  sds Apr 21 '13 at 16:41
How do you say it's a warning? It doesn't say anything about inefficiency... It's just a message. In any case, I've made an edit to not get that message. –  Arun Apr 21 '13 at 17:14
I think you may find `dt[, .N, by=a][['N']]` more efficient as it won't need to call the overhead of `[.data.table` when simply subsetting. –  mnel Apr 21 '13 at 23:48

This solution removes the message about the named elements. But you have to put the names back afterwards.

``````require(data.table)
options(datatable.verbose = TRUE)

dt <- data.table(a=c(rep(3,5),rep(4,5)),b=1:10,c=11:20,d=21:30,key="a")

dt[, c(.N, unname(lapply(.SD, sum))), by = "a"]
``````

Output

``````> dt[, c(.N, unname(lapply(.SD, sum))), by = "a"]
Finding groups (bysameorder=TRUE) ... done in 0secs. bysameorder=TRUE and o__ is length 0
Optimization is on but j left unchanged as 'c(.N, unname(lapply(.SD, sum)))'
Starting dogroups ... done dogroups in 0.001 secs
a V1 V2 V3  V4
1: 3  5 15 65 115
2: 4  5 40 90 140
``````
-
Nice (and better) alternative. Having `.N` at the end makes it easier to set names later using `setnames(dt.out, c(names(dt), "N"))` (a bit easier). –  Arun Apr 21 '13 at 17:45
This is significantly slower: `Starting dogroups ... done dogroups in 0.277 secs` vs `Starting dogroups ... done dogroups in 2.929 secs` –  sds Apr 21 '13 at 17:53
@sds, it is not clear which two solutions you are comparing. –  djhurio Apr 21 '13 at 18:01
I am comparing yours (slow) with either mine or @arun's (both fast) –  sds Apr 21 '13 at 19:50
@djhurio, Trying on a big `data.table` (1e7 by 4 or more columns), I observe the same effect as sds. –  Arun Apr 21 '13 at 20:55