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)
days_ahead = sample(seq(0,14), 14, replace=FALSE)
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!!

`ave`

you can do`with(dt, ave(number, animal, date, FUN = cumsum))`