9

I have a data frame with a bunch of nested data-frames within it, and I'd like to apply dplyr::select to each of those nested data frames. Here's an example

 library(tidyverse)

 mtcars %>%
 group_by(cyl) %>%
 nest %>%
 mutate(data2 = ~map(data, dplyr::select(.,-mpg)))

I would think that this would result in a data frame with three columns. cyl: the number of cylinders, data: the nested data, data2: the same as data except each element would not have the mpg column.

Instead R crashes:

 *** caught segfault ***
address 0x7ffc1e445000, cause 'memory not mapped'

Traceback:
 1: .Call(`_dplyr_mutate_impl`, df, dots)
 2: mutate_impl(.data, dots)
 3: mutate.tbl_df(., data2 = ~map(data, dplyr::select(., -mpg)))
 4: mutate(., data2 = ~map(data, dplyr::select(., -mpg)))
 5: function_list[[k]](value)
 6: withVisible(function_list[[k]](value))
 7: freduce(value, `_function_list`)
 8: `_fseq`(`_lhs`)
 9: eval(quote(`_fseq`(`_lhs`)), env, env)
10: eval(quote(`_fseq`(`_lhs`)), env, env)
11: withVisible(eval(quote(`_fseq`(`_lhs`)), env, env))
12: mtcars %>% group_by(cyl) %>% nest %>% mutate(data2 = ~map(data,     dplyr::select(., -mpg)))

Possible actions:
1: abort (with core dump, if enabled)
2: normal R exit
3: exit R without saving workspace
4: exit R saving workspace

I realize I could get the columns I wanted if I apply the select operation before the nesting, but this would be less analogous with my real problem. Could somebody please explain to me what I am doing wrong here? Thanks for any advice.

3
  • 2
    Could you retry the code but with mutate(data = map(data, function(x) dplyr::select(x, -mpg)))
    – Russ Hyde
    May 11, 2018 at 19:07
  • 1
    Crashes are always reportable. You should describe the versions of R and all the packages with sessionInfo()-output.
    – IRTFM
    May 11, 2018 at 20:46
  • Got it, I'll submit a bug-report as well.
    – ohnoplus
    May 11, 2018 at 20:51

3 Answers 3

7

You need to move ~ from map to select; or use the comment as @Russ; ~ is used when the function (in this case purrr::map) accepts a formula as argument:

mtcars %>%
    group_by(cyl) %>%
    nest %>%
    mutate(data2 = map(data, ~ select(., -mpg)))

# A tibble: 3 x 3
#    cyl data               data2            
#  <dbl> <list>             <list>           
#1     6 <tibble [7 × 10]>  <tibble [7 × 9]> 
#2     4 <tibble [11 × 10]> <tibble [11 × 9]>
#3     8 <tibble [14 × 10]> <tibble [14 × 9]>
2
  • I'm not understanding why there isn't more interest in exploring the crash. I thought all crashes were "reportable crimes". (I didn't get a crash, only an error message, but I'm on a Mac and only running 3.4.3.)
    – IRTFM
    May 11, 2018 at 19:55
  • @42- You're right. I completely missed the crashes part. I didn't get a crash as well. Only error message.
    – Psidom
    May 11, 2018 at 20:06
3

Here's 2 ways: one skips nesting and just uses do, and one nests and then uses a map. unnest(data2) then gets it back into a regular data frame. One thing to note is that I included -cyl inside the select in the first example; that's because otherwise, you end up with cyl twice, once from the grouping column and once from the unnested data frame.

I'm not sure if there's a way one of these is better than the other, besides personal preference.

library(tidyverse)

mtcars %>%
    group_by(cyl) %>%
    do(data2 = select(., -mpg, -cyl)) %>%
    unnest(data2)
#> # A tibble: 32 x 10
#>      cyl  disp    hp  drat    wt  qsec    vs    am  gear  carb
#>    <dbl> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl>
#>  1     4 108      93  3.85  2.32  18.6     1     1     4     1
#>  2     4 147.     62  3.69  3.19  20       1     0     4     2
#>  3     4 141.     95  3.92  3.15  22.9     1     0     4     2
#>  4     4  78.7    66  4.08  2.2   19.5     1     1     4     1
#>  5     4  75.7    52  4.93  1.62  18.5     1     1     4     2
#>  6     4  71.1    65  4.22  1.84  19.9     1     1     4     1
#>  7     4 120.     97  3.7   2.46  20.0     1     0     3     1
#>  8     4  79      66  4.08  1.94  18.9     1     1     4     1
#>  9     4 120.     91  4.43  2.14  16.7     0     1     5     2
#> 10     4  95.1   113  3.77  1.51  16.9     1     1     5     2
#> # ... with 22 more rows

mtcars %>%
    group_by(cyl) %>%
    nest() %>%
    mutate(data2 = map(data, function(df) select(df, -mpg))) %>%
    unnest(data2)
# same output
1

An alternative solution is to just pass -mpg "as is" to map(), which will correctly pass it down to select().

mtcars %>%
  group_by(cyl) %>%
  nest %>%
  mutate(data2 = map( data, select, -mpg ))

Works in R 3.6.1 with dplyr 0.8.3.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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