30

With data frame:

df <- data.frame(id = rep(1:3, each = 5)
                 , hour = rep(1:5, 3)
                 , value = sample(1:15))

I want to add a cumulative sum column that matches the id:

df
   id hour value csum
1   1    1     7    7
2   1    2     9   16
3   1    3    15   31
4   1    4    11   42
5   1    5    14   56
6   2    1    10   10
7   2    2     2   12
8   2    3     5   17
9   2    4     6   23
10  2    5     4   27
11  3    1     1    1
12  3    2    13   14
13  3    3     8   22
14  3    4     3   25
15  3    5    12   37

How can I do this efficiently? Thanks!

35
df$csum <- ave(df$value, df$id, FUN=cumsum)

ave is the "go-to" function if you want a by-group vector of equal length to an existing vector and it can be computed from those sub vectors alone. If you need by-group processing based on multiple "parallel" values, the base strategy is do.call(rbind, by(dfrm, grp, FUN)).

  • Error in unique.default(x, nmax = nmax) : unique() applies only to vectors – Rock May 31 '13 at 5:19
  • 1
    I keep forgetting ... need to name the FUN argument. – 42- May 31 '13 at 5:19
  • 2
    Note that you can add additional id variables if multiple columns define each unique row. e.g., df$csum <- ave(df$value, df$id1, df$id2, FUN=cumsum). – Brian D Nov 18 '16 at 19:06
  • @42- plyr was mothballed as of 2013 (six years ago already). You should be recommending dplyr/tidyverse/data.table – smci Aug 29 at 20:23
  • @smci: Did you look at the date of the comment? Are you suggesting I go back through all my comments and update them? And that's not to mention the fact that I don't really like either plyr or dplyr, anyway. (And I did mention data.table.) So I decided to just delete the comment and put the useful stuff in the answer. – 42- Aug 30 at 1:07
20

To add to the alternatives, data.table's syntax is nice:

library(data.table)
DT <- data.table(df, key = "id")
DT[, csum := cumsum(value), by = key(DT)]

Or, more compactly:

library(data.table)
setDT(df)[, csum := cumsum(value), id][]

The above will:

  • Convert the data.frame to a data.table by reference
  • Calculate the cumulative sum of value grouped by id and assign it by reference
  • Print (the last [] there) the result of the entire operation

"df" will now be a data.table with a "csum" column.

10

Using dplyr::

require(dplyr)
df %>% group_by(id) %>% mutate(csum = cumsum(value))
  • 1
    Hey, I tried your method. Somehow the grouping is not working properly. It does cumsum for all the data points without grouping. any suggestions? – Kathiravan Meeran Nov 15 '18 at 15:32
  • sometimes starting a fresh r session helps in those cases. try my code on the sample data. – Tjebo Nov 15 '18 at 15:36
  • 1
    Thanks for such quick response. Restarting works! – Kathiravan Meeran Nov 15 '18 at 15:48
  • 1
    Just an update, you might have a package that has loaded plyr. Explicitly referencing dplyr will fix it also: ``` df %>% group_by(id) %>% dplyr::mutate(csum = cumsum(value)) ``` – user3602585 Apr 10 at 0:32
8

Using library plyr.

library(plyr)
ddply(df,.(id),transform,csum=cumsum(value))

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