I am creating a distance matrix using the data from a data frame in R.

My data frame has the temperature of 2244 locations:

```
plot temperature
A 12
B 12.5
C 15
... ...
```

I would like to create a matrix that shows the temperature difference between each pair of locations:

```
. A B C
A 0 0.5 3
B 0.5 0 0.5
C 3 2.5 0
```

This is what I have come up with in R:

```
temp_data #my data frame with the two columns: location and temperature
temp_dist<-matrix(data=NA, nrow=length(temp_data[,1]), ncol=length(temp_data[,1]))
temp_dist<-as.data.frame(temp_dist)
names(temp_dist)<-as.factor(temp_data[,1]) #the locations are numbers in my data
rownames(temp_dist)<-as.factor(temp_data[,1])
for (i in 1:2244)
{
for (j in 1:2244)
{
temp_dist[i,j]<-abs(temp_data[i,2]-temp_data[j,2])
}
}
```

I have tried the code with a small sample with:

```
for (i in 1:10)
```

and it works fine. My problem is that the computer has been running now for two full days and it hasn't finished.

I was wondering if there is a way of doing this quicker. I am aware that loops in loops take lots of times and I am trying to fill in a matrix of more than 5 million cells and it makes sense it takes so long, but I am hoping there is a formula that gets the same result in a quicker time as I have to do the same with the precipitation and other variables.

I have also read about `dist`

, but I am unsure if with the data frame I have I can use that formula.

I would very much appreciate your collaboration.

Many thanks.

`dist(temp_data$temperature, method="euclidean", diag=TRUE, upper=TRUE)`

on some sample data? I have no idea how long it will take on a big dataset, but it may be worth looking into. – John Paul Apr 11 '14 at 12:49