# Subset by group with data.table

Assume I have a data table containing some baseball players:

``````library(plyr)
library(data.table)

bdt <- as.data.table(baseball)
``````

For each player (given by id), I want to find the row corresponding to the year in which they played the most games. This is straightforward in plyr:

``````ddply(baseball, "id", subset, g == max(g))
``````

What's the equivalent code for data.table?

I tried:

``````setkey(bdt, "id")
bdt[g == max(g)]  # only one row
bdt[g == max(g), by = id]  # Error: 'by' or 'keyby' is supplied but not j
bdt[, .SD[g == max(g)]] # only one row
``````

This works:

``````bdt[, .SD[g == max(g)], by = id]
``````

But it's is only 30% faster than plyr, suggesting it's probably not idiomatic.

-
Wow, that is slow, but if you use "year" in place of ".SD"... I'm getting .01, 1.58, 2.39 user time for year, .SD, plyr, respectively. – Frank May 15 '13 at 20:11
@Frank but I want the whole data frame, not just the year. I'll clarify the question. – hadley May 15 '13 at 20:13

Here's the fast `data.table` way:

``````bdt[bdt[, .I[g == max(g)], by = id]\$V1]
``````

This avoids constructing `.SD`, which is the bottleneck in your expressions.

edit: Actually, the main reason the OP is slow is not just that it has `.SD` in it, but the fact that it uses it in a particular way - by calling `[.data.table`, which at the moment has a huge overhead, so running it in a loop (when one does a `by`) accumulates a very large penalty.

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+1 I'm betting that Hadley wants to do this somewhat programmatically, in which case he'd want to use this syntax, `bdt[bdt[, .I[g == max(g)], by = id][,V1]]` right? – joran May 15 '13 at 20:23
@joran I'm constructing the call manually, so it doesn't really matter – hadley May 15 '13 at 20:24
@hadley Clearly, I shouldn't bet. :) – joran May 15 '13 at 20:25
Eventually the original approach will be optimized. See FR 2330 Optimize `.SD[i]` query to keep the elegance but make it faster unchanged. – mnel May 15 '13 at 23:05