It seems that summarise and summarise_each are making unnecessary extra calls to the callback functions they are provided with. Suppose that we have the following

X <- data.frame( Group = rep(c("G1","G2"),2:3), Var1 = 1:5, Var2 = 11:15 )

which looks like this:

   Group Var1 Var2
 1    G1    1   11
 2    G1    2   12
 3    G2    3   13
 4    G2    4   14
 5    G2    5   15

Further suppose that we have a (potentially expensive) function

f <- function(v)
   cat( "Calling f with vector", v, "\n" )
   ## ...additional bookkeeping and processing...

that we would like to apply to each of our variables in each group. Using dplyr, we might go about it in the following way:

X %>% group_by( Group ) %>% summarise_each( funs(f) )

However, the output shows that f was called one additional time for each variable in G1:

Calling f with vector 1 2 
Calling f with vector 1 2 
Calling f with vector 3 4 5 
Calling f with vector 11 12 
Calling f with vector 11 12 
Calling f with vector 13 14 15 
# A tibble: 2 x 3
   Group  Var1  Var2
  <fctr> <dbl> <dbl> 
1     G1   1.5  11.5
2     G2   4.0  14.0

The same issue is present when using summarize:

> X %>% group_by( Group ) %>% summarise( test = f(Var1) )
Calling f with vector 1 2
Calling f with vector 1 2
Calling f with vector 3 4 5
# A tibble: 2 × 2
   Group  test
  <fctr> <dbl>
1     G1   1.5
2     G2   4.0

Why is this happening and how would one go about preventing summarise and summarise_each from making those extra calls?

(This is using R version 3.3.0 and dplyr version 0.5.0)

EDIT: It appears that the issue has to do with the interplay between group_by and summarise/summarise_each. Without the grouping, no extra calls are made. Also, mutate and mutate_each do not suffer from this issue. (Credit: eddi and eipi10 for these findings)

  • 1
    you can narrow it down further - the issue is in summarise (and group_by) – eddi Aug 30 '16 at 20:58
  • 1
    mutate and mutate_each don't suffer from this bug (when used with group_by) – eddi Aug 30 '16 at 21:05
  • 1
    But if you group_by and then mutate or mutate_each, there's no extra function call, so it seems related to summarise/summarise_each, but only when using group_by – eipi10 Aug 30 '16 at 21:06
  • 2
    The code is here, but I can't quite parse what's happening. I think the extra call per variable might be a result of how it tries to figure out if it can do more in C/C++, but that's a guess. – alistaire Aug 30 '16 at 21:24
  • 3
    And a workaround: purrr::dmap doesn't have this issue and respects grouping: X %>% group_by(Group) %>% purrr::dmap(f) – alistaire Aug 30 '16 at 21:58

Although this issue is still present in dplyr 0.5.0 (published 2016-06-24), it is fixed in the dplyr GitHub repro. It was fixed with this commit made on 2016-09-24. I've confirmed that I can reproduce the issue when I checkout and build the version at the previous commit, but not when building from that one or subsequent ones.

(And yes, I tried a whole bunch of other ones before I found it. Why I go to such lengths in hope of earning imaginary internet points, I leave as a question for my therapist. :)

In particular, in the function SEXP process_data(const Data& gdf) in inst/include/dplyr/Result/CallbackProcessor.h, note these changes:

  CLASS* obj = static_cast<CLASS*>(this);
  typename Data::group_iterator git = gdf.group_begin();

  RObject first_result = obj->process_chunk(*git);
  ++git; // This line was added


  for (int i = 1; i < ngroups; ++git, ++i) { // changed from starting at i = 0
    RObject chunk = obj->process_chunk(*git);

[Comments added by me, not part of the actual source]

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