I have a large data set

```
dim(dt)
[1] 422096 162
```

where `dt`

is a data.table with a key of `tic`

. I am trying to make a measure for each group of how many missing entries I have. The groups are time series, and dt contains a `date`

column, which is an R date, and a `book_lev`

column, my variable of interest.

This is my code so far:

```
dt <- dt[sumdt]
sumdt <- dt[ ,list(min.date=min(date), max.date=max(date)), by="tic"]
sublengths <- dt[,list(tslen=length(date)),by=tic, mult="last"]
bt2 <- dt[sublengths, mult="first"]
bt2[, max.year:=extractyear(max.date)]
bt2[, min.year:=extractyear(min.date)]
bt2[, data.fullness:=tslen/(max.year - min.year + 1)]
dt <- dt[bt2]
```

My idea was that I create this data.fullness value which should equal 1 if there are no holes in the time series. I realize that I may have some NA's in my `book_lev`

column, so I would like to further restrict. Also, in general I am new to data.tables and I would like to see if there are better ways to write what I have just written.

A small sample of the data, which you can load using R's `load`

command, is available here: http://econsteve.com/r/dt_sample.Robj

`bl2`

column referenced in your code. Should it be? – Josh O'Brien Dec 14 '11 at 0:06`ts`

then something like`dt[CJ(unique(tic),ts), sum(is.na(book_lev)), by=tic]`

. See`?CJ`

. Then maybe add`roll=TRUE`

to join to the prevailing observation. – Matt Dowle Dec 14 '11 at 10:36`.Robj`

to`.Rdata`

, most GUI-using folks will be able to open it by simply double-clicking on the downloaded object. Second, do let me know if I'm missing some impt. piece of your question in my answer below. – Josh O'Brien Dec 16 '11 at 2:52