# Count preceding rows that match criteria

I am working time series data and I need to count the number of rows preceding the current row that matched a condition. For example, I need to know how many months prior to the row's month and customer had sales (NETSALES > 0). Ideally I would maintain a row counter that resets when the condition fails (e.g. NETSALES = 0).

Another way of solving the problem would be to flag any row that had more than 12 prior periods of NETSALES.

The closest I came was using the

``````COUNT(*)
OVER (PARTITION BY cust ORDER BY dt
ROWS 12 PRECEDING) as CtWindow,
``````

http://sqlfiddle.com/#!6/990eb/2

In the example above, 201310 is correctly flagged as 12 but ideally the previous row would have been 11.

The solution can be in R or T-SQL.

Updated with data.table example:

``````library(data.table)
set.seed(50)
DT <- data.table(NETSALES=ifelse(runif(40)<.15,0,runif(40,1,100)), cust=rep(1:2, each=20), dt=1:20)
``````

The goal is to calculate a "run" column like below -- which gets reset to zero when the value is zero

``````     NETSALES cust dt run
1: 36.956464    1  1   1
2: 83.767621    1  2   2
3: 28.585003    1  3   3
4: 10.250524    1  4   4
5:  6.537188    1  5   5
6:  0.000000    1  6   6
7: 95.489944    1  7   7
8: 46.351387    1  8   8
9:  0.000000    1  9   0
10:  0.000000    1 10   0
11: 99.621881    1 11  1
12: 76.755104    1 12  2
13: 64.288721    1 13  3
14:  0.000000    1 14  0
15: 36.504473    1 15  1
16: 43.157142    1 16  2
17: 71.808349    1 17  3
18: 53.039105    1 18  4
19:  0.000000    1 19  0
20: 27.387369    1 20  1
21: 58.308899    2  1   1
22: 65.929296    2  2   2
23: 20.529473    2  3   3
24: 58.970898    2  4   4
25: 13.785201    2  5   5
26:  4.796752    2  6   6
27: 72.758112    2  7   7
28:  7.088647    2  8   8
29: 14.516362    2  9   9
30: 94.470714    2 10  10
31: 51.254178    2 11  11
32: 99.544261    2 12  12
33: 66.475412    2 13  13
34:  8.362936    2 14  14
35: 96.742115    2 15  15
36: 15.677712    2 16  16
37:  0.000000    2 17  0
38: 95.684652    2 18  1
39: 65.639292    2 19  2
40: 95.721081    2 20  3
NETSALES cust dt run
``````
-

This seems to do it:

``````library(data.table)
set.seed(50)
DT <- data.table(NETSALES=ifelse(runif(40)<.15,0,runif(40,1,100)), cust=rep(1:2, each=20), dt=1:20)
DT[,dir:=ifelse(NETSALES>0,1,0)]
dir.rle <- rle(DT\$dir)
DT <- transform(DT, indexer = rep(1:length(dir.rle\$lengths), dir.rle\$lengths))
DT[,runl:=cumsum(dir),by=indexer]
``````

Edit by Roland:

Here is the same with better performance and also considering different customers:

``````#no need for ifelse
DT[,dir:= NETSALES>0]

#use a function to avoid storing the rle, which could be huge
runseq <- function(x) {
x.rle <- rle(x)
rep(1:length(x.rle\$lengths), x.rle\$lengths)
}

#never use transform with data.table
DT[,indexer := runseq(dir)]

#include cust in by
DT[,runl:=cumsum(dir),by=list(indexer,cust)]
``````

Edit: joe added SQL solution http://sqlfiddle.com/#!6/990eb/22

SQL solution is 48 minutes on a machine with 128gig of ram across 22m rows. R solution is about 20 seconds on a workstation with 4 gig of ram. Go R!

-
Don't use `transform` with a data.table: reason. –  Roland Aug 24 '13 at 23:01
great edit and answer! Thank you –  Joe Aug 25 '13 at 10:12