at the moment I am working on a data exploration project in my master-thesis. There I compare the autocorrelation of different input-parameter and based on the results, I will choose them and build a model. I do this by reading the data, transforming them into time-series and compare them using the ccf function. This is then saved into a dataframe and exported into a .csv document.

At the moment I am doing this quite inefficient (at least I think so), since my experiences in R are quite low.

My question is: How to do this most efficient? I know there are different approaches to express time-series, e.g. tseries and xts, and I also heard of data.table. BUT I do not know which to use to get the best/ a better performance.

An example in the comparison:

```
for(q in 1:5){
for(y in 1:5){
f <- ccf(var1[,q], var2[,y], lag.max=15, na.action=na.pass, plot=FALSE)
Table[Counter,3:33] <- f$acf
Counter = Counter+1
}
}
```

var 1 and var2 are time-series, created with the standard ts(...) function and have five different columns to compare. As you see, this is still very much unoptimized, but it worked as a first draft to get to the next stages of the work. But now I want to to this in a more efficient way to also get more experience in R.

Thanks a lot Julian

`ccf`

accepts matrices as input. – Pascal Jun 16 at 9:24