unexpected iteration performance drops

I'm currently developing a clustering framework for points of interests on a map view. To generate the clusters i am currently using a slow, but very precise algorithm.

``````while(self.clusteringData.count>=2){
minDistance = DBL_MAX;
for (ClusterAnnotation *objectA in self.clusteringData) {
for (ClusterAnnotation *objectB in self.clusteringData) {
if (objectA != objectB) {

locationA.latitude = objectA.latitude;
locationA.longitude = objectA.longitude;
locationB.latitude = objectB.latitude;
locationB.longitude = objectB.longitude;

CLLocationDistance distance = [ClusterBuilder distanceBetweenLocation:locationA andLocation:locationB];
if(distance < minDistance){
minDistance = distance;
left = objectA;
right = objectB;

if(minDistance == 0.0){
break;
}
}
}
}
if(minDistance == 0.0){
break;
}
}
[self notifyDelegateClusteringProgress:((float)i/(float)j)];

ClusterTree* newRoot = [[ClusterTree alloc] initWithLeftClusterAnnotation:left rightClusterAnnotation:right];
[newRoot setDistance:minDistance];

[self.clusteringData removeObject:left];
[self.clusteringData removeObject:right];

left = nil;
right = nil;
root = newRoot;
}
``````

The first iterations are pretty fast - even though they should be the slowest. However the performance gets worse with each iteration and then gets better as the items left to cluster decrease.

I know i cant expect good performance when using an O(n^3)-Algorithm, but the first iteration takes about 0.009 seconds and that time increases with each iteration (even though it should decrease because the algorithm decreases the data by 1 item each iteration). I can't explain to myself why that happens.

I mesured the time each iteration of the while loop takes for 1000 items. http://pastebin.com/8XsZuEks

The clustering thread runs on DISPATCH_QUEUE_PRIORITY_HIGH and uses 99% of the CPU throughout the whole clustering process. Running the process on the main cue, did not fix the performance drop. So i guess its not a GCD/priority issue.

-
Have you run instrument? It should be the first step to find performnace bottleneck. I guess you might find some issue in distanceBetweenLocation: –  Chen-Hai Feb 7 at 22:57
Wow, that was quick. Thanks for your answer. And you are right, distanceBetweenLocation: seems to be the main performance problem. However i still dont understand, why the time each iteration takes increases over time. Especially since that function should always take about the same time to run. –  Hendrik Feb 7 at 23:18
Check memory usage. These loops might need autorelease pools to keep memory size down. –  Greg Parker Feb 7 at 23:20
I think the reason the first goes really fast is because you reach the break points early in the array. Take out the `break`s and you should get slowly decreasing iteration times. –  Putz1103 Feb 7 at 23:50
Ha! Oh my god, @Putz1103! You are right! Didn't think of that. Thats it! Thank you –  Hendrik Feb 7 at 23:52

Your iteration loop has breaks built into it, meaning that it doesn't always complete the full array every time. The performance changes are due to your populated array and the breaks.

Just think if you didn't have those breaks and every iteration took over 1.3 seconds (like your worst case in your link)...

-
Thanks! Next time i better check if my sample data is sorted :P –  Hendrik Feb 8 at 0:39
@putz1103 makes a good point, I didn't even think about it - those breaks probably have a lot to do with it as well. Perhaps the ordering of the location data, along with `minDistance`, is such that it would also influence this increasing & decreasing shape. –  drhr Feb 8 at 0:09