Here is what I want to do:

I have a time series data frame with let us say 100 time-series of length 600 - each in one column of the data frame.

I want to pick up 10 of the time-series randomly and then assign them random weights that sum up to one. Using those I want to compute the variance of the sum of the 10 weighted time series variables (e.g. convex combination).

The df is in the form

```
v1,v2,v2.....v100
1,5,6,.......9
2,4,6,.......10
3,5,8,.......6
2,2,8,.......2
etc
```

i can compute it inside a loop but r is vector oriented and it is not efficient.

```
ntrials = 10000
ts.sd = NULL
for (x in 1:ntrials))
{
temp = t(weights[,x]) %*% cov(df[, samples[, x]]) %*% weights[, x]
ts.sd = cbind(ts.sd, temp)
}
```

thatquestion was already given in stackoverflow.com/questions/13553943/… - only in words, not in code, though. – Thilo Nov 29 '12 at 13:55