If the only looksissue is the ordering...

```
DT[order(Date, decreasing=TRUE), Data1_cum := cumprod(Data1), by=Cat]
DT
Cat Date Data1 Data1_cum
1: A 2013-01-08 1 1
2: A 2013-01-07 2 2
3: A 2013-01-04 3 6
4: A 2013-01-03 4 24
5: B 2013-01-08 5 5
6: B 2013-01-07 6 30
7: B 2013-01-04 7 210
8: B 2013-01-03 8 1680
```

### However, if you have NA's to deal with, then there is a few extra steps:

**Note: If you shuffle the order of the rows, your results can vary. Careful with how you implement the **`order(.)`

command

```
## Let's add some NA values
DT <- rbind(DT, DT)
DT[c(2, 6, 11, 15), Data1 := NA]
# shuffle the rows, to make sure this is right
set.seed(1)
DT <- DT[sample(nrow(DT))]
```

Assigning the cumulative product:

### Leaving NA's

```
## If you want to leave the NA's as NA's in the cum prod, use:
DT[ , Data1_cum := NA_real_ ]
DT[ intersect(order(Date, decreasing=TRUE), which(!is.na(Data1)))
, Data1_cum := cumprod(Data1)
, by=Cat]
# View the data, orderly
DT[order(Date, decreasing=TRUE)][order(Cat)]
Cat Date Data1 Data1_cum
1: A 2013-01-08 1 1
2: A 2013-01-08 1 1
3: A 2013-01-07 2 2
4: A 2013-01-07 NA NA <~~~~~~~ Note that the NA rows have the value of the prev row
5: A 2013-01-04 3 6
6: A 2013-01-04 NA NA <~~~~~~~ Note that the NA rows have the value of the prev row
7: A 2013-01-03 4 24
8: A 2013-01-03 4 96
9: B 2013-01-08 5 5
10: B 2013-01-08 5 25
11: B 2013-01-07 6 150
12: B 2013-01-07 NA NA <~~~~~~~ Note that the NA rows have the value of the prev row
13: B 2013-01-04 7 1050
14: B 2013-01-04 NA NA <~~~~~~~ Note that the NA rows have the value of the prev row
15: B 2013-01-03 8 8400
16: B 2013-01-03 8 67200
```

### Replacing NA's with value of previous Row

```
## If instead you want to treat the NA's as 1, use:
DT[order(Date, decreasing=TRUE), Data1_cum := {Data1[is.na(Data1)] <- 1; cumprod(Data1 [order(Date, decreasing=TRUE)] )}, by=Cat]
# View the data, orderly
DT[order(Date, decreasing=TRUE)][order(Cat)]
Cat Date Data1 Data1_cum
1: A 2013-01-08 1 1
2: A 2013-01-08 1 1
3: A 2013-01-07 2 2
4: A 2013-01-07 NA 2 <~~~~~~~ Rows with NA took on values of the previous Row
5: A 2013-01-04 3 6
6: A 2013-01-04 NA 6 <~~~~~~~ Rows with NA took on values of the previous Row
7: A 2013-01-03 4 24
8: A 2013-01-03 4 96
9: B 2013-01-08 5 5
10: B 2013-01-08 5 25
11: B 2013-01-07 6 150
12: B 2013-01-07 NA 150 <~~~~~~~ Rows with NA took on values of the previous Row
13: B 2013-01-04 7 1050
14: B 2013-01-04 NA 1050 <~~~~~~~ Rows with NA took on values of the previous Row
15: B 2013-01-03 8 8400
16: B 2013-01-03 8 67200
```

Alternatively, If you already have the cumulative product and simply want to remove the NA's you can do so as follows:

```
# fix the NA's with the previous value
DT[order(Date, decreasing=TRUE),
Data1_cum := {tmp <- c(0, head(Data1_cum, -1));
Data1_cum[is.na(Data1_cum)] <- tmp[is.na(Data1_cum)];
Data1_cum }
, by=Cat ]
```

`NA`

s and most numbers smaller than 1. – Cake May 12 '13 at 21:52