[UPDATE] 2 years after question was asked ...
On running the code in the question,
data.table is now more helpful and returns this (using 1.8.2) :
Error in `[.data.table`(my.dt, , sum(dependent.variable), by = grouping.vars[i]) :
'by' appears to evaluate to column names but isn't c() or key(). Use by=list(...)
if you can. Otherwise, by=eval(grouping.vars[i]) should work. This is for efficiency
so data.table can detect which columns are needed.
and following the advice in the second sentence of error :
1: M 2650
2: F 2600
Old answer from Jul 2010 (
by can now be
character, though) :
Strictly speaking the
by needs to evaluate to a list of vectors each with storage mode integer, though. So the numeric vector
age could also be coerced to integer using
as.integer(). This is because data.table uses radix sorting (very fast) but the radix algorithm is specifically for integers only (see wikipedia's entry for 'radix sort'). Integer storage for key columns and ad hoc
by is one of the reasons data.table is fast. A factor is of course an integer lookup to unique strings.
The idea behind
by being a
list() of expressions is that you are not restricted to column names. It is usual to write expressions of column names directly in the
by. A common one is to aggregate by month; for example :
or a very fast way to group by yearmonth is by using a non epoch based date, such as yyyymmddL as seen in some of the examples in the package, like this :
Notice how you can name the columns inside the list() like that.
To define and reuse complex grouping expressions :
e = quote(list(region,month(datecol)))
Or if you don't want to re-evaluate the
by expressions each time, you can save the result once and reuse the result for efficiency; if the
by expressions themselves take a long time to calculate/allocate, or you need to reuse it many times :
byval = DT[,list(region,month(datecol))]
Please see http://datatable.r-forge.r-project.org/ for latest info and status. A new presentation will be up there soon and hoping to release v1.5 to CRAN soon too. This contains several bug fixes and new features detailed in the NEWS file. The datatable-help list has about 30-40 posts a month which may be of interest too.