# Accumulating by date

I would like know how many animals will show up on a specific day. This chart describes people register their animals in advance.

For instance, at `7` days ahead, someone registered for their `4` cats to show up on `5/3/2019`; at `6` days ahead, another `9` cats are registered for `5/3/2019`. So there will be `7+6=13` cats showing up on `5/3/2019`.

When `days_ahead` = 0, it simply means someone registered on the event day. For instance, `4` wolves registered for `5/1/2019` on `5/1/2019` (0 days ahead), and there will be `4` wolves that day.

``````library(dplyr)
set.seed(0)

animal = c(rep('cat', 5), rep('dog', 6), rep('wolf', 3))
date = sample(seq(as.Date("2019/5/1"), as.Date('2019/5/10'), by='day'), 14, replace=TRUE)
number = sample.int(10, 14, replace=TRUE)

dt = data.frame(animal, date, days_ahead, number) %>% arrange(animal, date)
``````

The expected outcome should have the same `1-3` columns as the example, but the fourth column should be an accumulated number by each `date`, accumulating on `days_ahead`.

I added an expected outcome here. The `comments` are used to explain the `accumulated_number` column.

I've considered `loop` function but not entirely sure how to loop over three variables (cat, date, and days_ahead). Any advice is appreciated!!

• The question is not very clear, in part because the descriptions in the text don't match the example data. Also it's not clear how date and days ahead are related - should the latter be subtracted from the former to give the date the registration was made? It would help to improve the example data. Jul 3 '19 at 12:12
• Using base R `ave` you can do `with(dt, ave(number, animal, date, FUN = cumsum))` Jul 3 '19 at 13:31

The `accumulated_number` is somewhat easy with `cumsum()`. See this link for your `comments` field:

Cumulatively paste (concatenate) values grouped by another variable

``````dt%>%
group_by(animal,date)%>%
mutate(accumulated_number = cumsum(number)
,comments = Reduce(function(x1, x2) paste(x1, x2, sep = '+'), as.character(number), accumulate = T)
)%>%
ungroup()
``````

Also, my dataset is slightly different than yours with the same seed. Still, it seems to work.

``````# A tibble: 14 x 6
<fct>  <date>          <int>  <int>              <int> <chr>
1 cat    2019-05-03         10      9                  9 9
2 cat    2019-05-04          6      4                  4 4
3 cat    2019-05-06          8      5                  5 5
4 cat    2019-05-09          5      4                  4 4
5 cat    2019-05-10         13      6                  6 6
6 dog    2019-05-01          0      2                  2 2
7 dog    2019-05-03          3      5                  5 5
8 dog    2019-05-07          1      7                  7 7
9 dog    2019-05-07          9      8                 15 7+8
10 dog    2019-05-09         12      2                  2 2
11 dog    2019-05-10          7      9                  9 9
12 wolf   2019-05-02         14      5                  5 5
13 wolf   2019-05-03         11      8                  8 8
14 wolf   2019-05-07          4      9                  9 9
``````
• I don't think OP need `comments` column, it is only for explanation. It is just `cumsum` by group. Jul 3 '19 at 13:22
• @Ronak I think you're right. The `comments` was kind of fun to research, though. I'm keeping it in.
– Cole
Jul 3 '19 at 13:31

I'm not sure I understand your question, is this what you want?

I'm adding an "animals_arriving" column and kepping the rest of `dt`

``````library(dplyr)
library(lubridate)
dt %>%
mutate(date_arrival = date + days(days_ahead)) %>%
group_by(date = date_arrival) %>%
summarise(animals_arriving = n()) %>%
full_join(dt,by="date")
``````
• Hi Fino, thanks for your answer. I ran your code but I wasn't entirely sure about the results - it seems like row 13 (5/3/2019) has NA animals arrival, but there are cats coming. I would like to know on each `date` how many cats/dog/wolves will be there. Jul 3 '19 at 12:13