I need to calculate weighted means per row (6M+ rows), but it takes very long time. The column with weights is a character-field, so weighted.mean cant be used directly.

Background data:

```
library(data.table)
library(stringr)
values <- c(1,2,3,4)
grp <- c("a", "a", "b", "b")
weights <- c("{10,0,0,0}", "{0,10,0,0}", "{10,10,0,0}", "{0,0,10,0}")
DF <- data.frame(cbind(grp, weights))
DT <- data.table(DF)
string.weighted.mean <- function(weights.x) {
tmp.1 <- na.omit(as.numeric(unlist(str_split(string=weights.x, pattern="[^0-9]+"))))
tmp.2 <- weighted.mean(x=values, w=tmp.1)
}
```

Here is how it can be done (too slow) with data.frames:

```
DF$wm <- mapply(string.weighted.mean, DF$weights)
```

This does the job but is way too slow (hours):

```
DT[, wm:=mapply(string.weighted.mean, weights)]
```

How can the last line be rephrased to speed things up?

everiterate by row, always by column. And a matrix may be better at tasks like this than data.table. – Matt Dowle Jan 23 '13 at 5:10