I have this loop, which I have to apply to a very large dataset. But it is very slow. Can someone suggest some ways to speed it up?

```
### calculate distance ###
# matrices for results
distsum <- matrix(ncol=1, nrow=nrow(data))
grp1sum <- matrix(ncol=1, nrow=nrow(data))
# loop over each observation
for (i in 1:nrow(data)) {
dist_count <- 0
grp1_count <- 0
if (data[i,21]==101 | data[i,21]==155 | data[i,21]==147 | data[i,21]==185) {
limit <- 5
} else {
limit <- 15
}
# reset counters
dist_count <- 0
grp1_count <- 0
# loop over all ohter obs
for (j in 1:nrow(data)) {
cond_A <- data[i,37]>data[j,38] # check of daterintervals overlap. e.i if the two firms is present on the samw time
cond_B <- data[i,38]<data[j,27]
if (data[i,21]==data[j,21] & !(cond_A | cond_B) & data[i,2]==data[j,2]){
distance <- gcd.hf(data[i,36],data[i,35],data[j,36],data[j,35]) # measure the distance
if (distance <= limit & distance!=0) {
dist_count <- dist_count + 1 #count number of physician in limit
grp1_count <- grp1_count + data[j,5] #sum number of patients registret
}
}
}
distsum[i,] <- dist_count
grp1sum[i,] <- grp1_count
}
```

`i in 1:nrow(data)`

doesn't do anything useful, since you overwrite`limit`

every time. What do you actually expect to get out of that loop? Then, instead of creating`cond_A`

and`cond_B`

and then evaluating`!(condA|condB)`

, just evaluate the conditionals directly. However, that's separate from the main unknown: what do you consider "too slow" to be, and how big is your dataset? Certainly your`j`

-loop could be turned into a multicore process, but we can't tell whether that's really necessary. – Carl Witthoft Nov 18 '13 at 12:33