I have a data frame that I am trying to group and then sum based on two columns. The two columns are characters with one being month and the other variable.

The following is a sample of the data frame and structure.

#row.names   month    variable   amount
  1          1-Jan       x        1000
  2          1-Jan       x        3000
  3          2-Feb       z        5000
  4          2-Feb       y        3000 

I tried to group the data first and then I was going to try to summarise, however I am unable to get group_by_() to do the trick. Below is the code I tried.

byVarMonth <- group_by_(df, variable, (as.date(month)))

Thanks for the help.

  • (1) Use group_by() (2) It's as.Date() (3) you need a format in as.Date() Oct 15, 2015 at 15:32
  • So then group_by(df, variable, month = months(as.Date(month, "%d-%b"), TRUE)) should get it done but I don't really see a reason to convert that column to Date anyway. You could just group it as-is. Oct 15, 2015 at 15:37

4 Answers 4


You apparently are not interested in taking your Character [month] as a Date variable. Considering that I'm not wrong you could simply do something like this:


tab %>%
  group_by(month, variable) %>%

and get this:

Source: local data frame [3 x 4]
Groups: month

  month variable a_sum a_mean
1 1-Jan        x  4000   2000
2 2-Feb        y  3000   3000
3 2-Feb        z  5000   5000

This is a bit old-fashioned solution but works with the built-in R function aggregate, no need for installing dplyr:

res <- aggregate(amount ~ variable + month, 
  function(x) { 
    c(sum=sum(x), avg=mean(x)) 

The first parameter is a formula. Left of the ~ you specify the column to be aggregated, the right-hand side lists the column names to be grouped by, separated by +. The second parameter data= specifies the input data frame. Finally the third parameter is a function that takes the vector x (the values selected for each group) and returns either a scalar or a vector of various aggregate results (here we calculate both the sum and the mean of amount in each group, see e.g. this SO answer).

If you print res, it will look like this:

variable month amount.sum amount.avg
1        x 1-Jan       4000       2000
2        y 2-Feb       3000       3000
3        z 2-Feb       5000       5000

However, what you don't see is that the last 2 columns are actually a single column of two-long vectors (run dim(res) to verify). To split that last column into two, do this (inspired by this SO post):

res <- do.call(data.frame, res)

Note that aggregate can be invoked with other parameters, please consult ?aggregate for details.


... or, you can use an alternative sintax:

summarise(group_by(df, variable), sum(amount), mean(amount))



dplyr 1.1.0 introduced the .by argument in mutate and summarize for one-time grouping operations (please note at the time of this post, this argument is in the experimental lifecycle):

df %>% 
  summarize(total = sum(amount),
            .by = c(month, variable))

.by accepts tidy-select helpers for more concise column selection.

.by versus group_by

The difference between using this argument and the group_by function is that .by automatically ungroups after summarize (or mutate), returning a data frame object. Unless you ungroup (or use the .groups argument in summarize) after using group_by you get grouped data frame object, which could have unintended consequences in your pipe chain. summarize throws a warning in this case since it is easy to miss. Just something to be aware of because most often data needs to be ungrouped.

df %>% 
  summarize(total = sum(amount),
            .by = c(month, variable)) %>% 
[1] "data.frame"

df %>% 
  group_by(month, variable) %>% 
  summarize(total = sum(amount)) %>% # pipe to ungroup() or use .groups arg to get a data frame

`summarise()` has grouped output by 'month'. You can override using the `.groups`
[1] "grouped_df" "tbl_df"     "tbl"        "data.frame"

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.