3 of 5 Minor grammar fix.

I like data.table as much as the next guy, but it is hardly necessary (unless you have very, very large data frames) for this kind of task.

What BenBarnes did using data.tables can be done just as compactly (but probably slower in many cases) using plyr:

library(plyr)                
ddply(DT,.(group),transform,valRank = rank(-value))
ddply(DT,.(group),transform,valRank = rank(info,ties.method = "min"),
                            valRankDense = as.integer(factor(info)))

and even without loading a single extra package at all:

do.call(rbind,by(DT,DT$group,transform,valRank = rank(-value)))
do.call(rbind,by(DT,DT$group,transform,valRank = rank(info,ties.method = "min"),
                                        valRankDense = as.integer(factor(info))))

although you do lose some of the syntactic niceties in that last case.

EDIT from Matthew Dowle :

All good points. Let's put some numbers to it then, to try and quantify "hardly necessary (unless you have very, very large data frames)".

We'll start with a small 100 x 10 data frame, add one column using transform by group, and we'll group by pairs of rows. A fairly mundane task. We're only interested in the time of one single run in seconds, since we generally only need results once. But we'll time 3 consecutive runs and take the average, to get a more robust measure. Then we'll increase the number of rows to see at what point the difference (if any) becomes significant.

Here's the proposed benchmark code. Copying and pasting this into a fresh R session should reproduce the results. My sessionInfo() is at the end.

require(plyr)
require(data.table)
require(rbenchmark)
set.seed(1)
nrows = c(100,1000,10000,20000)  # increasing number of rows
ncol = 10                        # fixed small number of columns
ans = sapply(nrows, function(nrow) {
    DT = as.data.table(lapply(rep(nrow,ncol),rnorm))
    DT[,group:=rep(seq.int(nrow/2),each=2)]
    DF = as.data.frame(DT)
    cat("Testing ",nrow," rows x ",ncol," cols (",
        round(object.size(DF)/1024^2,3)," MB) ... \n",sep="")
    with( benchmark(
      ddply(DF,.(group),transform,valRank = rank(-V1)),
      do.call(rbind,by(DF,DF$group,transform,valRank = rank(-V1))),
      DT[,valRank:=rank(-V1),by=group],
    replications=3,
    order=NULL,
    columns=c('elapsed', 'replications')),
    round(elapsed/replications,1))
})
colnames(ans)  = nrows
rownames(ans) = c("ddply","base","data.table")
ans

15 minutes later, here are the results.

Testing 100 rows x 10 cols (0.01 MB) ... 
Testing 1000 rows x 10 cols (0.082 MB) ... 
Testing 10000 rows x 10 cols (0.803 MB) ... 
Testing 20000 rows x 10 cols (1.604 MB) ...

nrow       100 1000 10000 20000
           === ==== ===== =====
ddply      0.2  2.8  43.3 113.6
base       0.2  2.9  33.9  81.2
data.table 0.0  0.1   1.0   2.5

These are the average times in seconds for one run of each method on each size.

I wouldn't say these were very very large data frames, but the differences are significant, to me at least. I didn't have time to run the 100,000 row case, and that's the point. We're just talking 2e4 here, not 2e6 or even 2e9.

> sessionInfo()
R version 2.15.1 (2012-06-22)
Platform: x86_64-pc-linux-gnu (64-bit)

locale:
 [1] LC_CTYPE=en_GB.UTF-8       LC_NUMERIC=C              
 [3] LC_TIME=en_GB.UTF-8        LC_COLLATE=en_GB.UTF-8    
 [5] LC_MONETARY=en_GB.UTF-8    LC_MESSAGES=en_GB.UTF-8   
 [7] LC_PAPER=C                 LC_NAME=C                 
 [9] LC_ADDRESS=C               LC_TELEPHONE=C            
[11] LC_MEASUREMENT=en_GB.UTF-8 LC_IDENTIFICATION=C       

attached base packages:
[1] stats     graphics  grDevices utils     datasets  methods   base     

other attached packages:
[1] rbenchmark_0.3   data.table_1.8.2 plyr_1.7.1      
>