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I am trying to something very simple in R, transpose a data set so I can create a primary key for joining with other tables that have many values.

I've tried dcast and aggregate, and haven't gotten them to work. Here's what my dataframe currently looks like Current R dataframe

Here's what I would like it to look like: New R dataframe

3
  • Please provide data as plain text not images, so users can easily copy/paste it.
    – neilfws
    Feb 7, 2019 at 22:35
  • how would I do that?
    – DougC
    Feb 7, 2019 at 22:52
  • You can edit the question: paste the output from dput(your_data_frame), or just paste the data frame with rows indented 4 spaces. If it's too long you can use head(your_data_frame, n) where n is number of lines, or dput(head(your_data_frame, n)).
    – neilfws
    Feb 7, 2019 at 22:55

2 Answers 2

0

You can insere code in your post, so paste the code that create your data.frame, like this:

df <- data.frame(
  Make     = c('Ford', 'Ford', 'Ford', 'Chevy', 'Chrysler', 'Chrysler'),
  DateSold = c('2017-07-01', '2017-08-01', '2017-10-01', '2017-01-01', '2017-03-01', '2017-04-01'),
  Amount   = c(30, 15, 25, 23, 22, 21) * 1e3
)

Now for your question, you can use the library tidyverse which have a lot of useful functions to manipulate data. You can execute the following code line by line in order to understand the different steps to arrive to the solution.

library(tidyverse)

df %>%
  gather(-Make, key = Column, value = Value) %>%
  group_by(Make, Column) %>% 
  mutate(Count = 1:n()) %>% 
  unite(Column_count, Column, Count) %>%
  spread(Column_count, Value)

#   Make     Amount_1 Amount_2 Amount_3 DateSold_1 DateSold_2 DateSold_3
#   <fct>    <chr>    <chr>    <chr>    <chr>      <chr>      <chr>     
# 1 Chevy    23000    NA       NA       2017-01-01 NA         NA        
# 2 Chrysler 22000    21000    NA       2017-03-01 2017-04-01 NA        
# 3 Ford     30000    15000    25000    2017-07-01 2017-08-01 2017-10-01
2
  • Thanks for your help!
    – DougC
    Feb 8, 2019 at 16:38
  • You're welcome. Think of validation one answer if it corresponds to your demand. Feb 10, 2019 at 15:26
0

Using reshape, you can do somithing like:

 reshape(transform(df,time=ave(Amount,Make,FUN=seq_along)),dir = 'wide',idvar='Make')

      Make DateSold.1 Amount.1 DateSold.2 Amount.2 DateSold.3 Amount.3
1     Ford 2017-07-01    30000 2017-08-01    15000 2017-10-01    25000
4    Chevy 2017-01-01    23000       <NA>       NA       <NA>       NA
5 Chrysler 2017-03-01    22000 2017-04-01    21000       <NA>       NA

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