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What load factor should I use when I really know the maximum possible no of elements in a HashSet ? I had heard that the default load factor of 0.75 is recommended as it offers good performance trade-offs between speed & space. Is this correct ? However a larger size HashSet would also takes more time in creation and more space.

I am using HashSet just inorder to remove duplicate integers from a list of integers.

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unless you plan on having massive sets i wouldn't worry about it. You probably won't see a difference unless you have 10's of thousands of entries in your sets. – MeBigFatGuy Mar 13 '11 at 22:26
And by 10's of thousands he means millions. – corsiKa Mar 14 '11 at 15:36

I spent some time playing around with load factors once, and it is shocking how little difference that setting really makes in practice. Even setting it to something high like 2.0 doesn't slow things down much, nor does it save that much memory. Just pretend it doesn't exist. Josh has often regretted ever exposing it as an option at all.

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do you have a link to that article for your last sentence? – Pacerier Nov 1 '11 at 21:02
@Pacerier: I strongly suspect that last sentence is from in-person conversations, since Kevin and Josh are known to talk somewhat frequently. – Daniel Martin Nov 23 '11 at 15:16
right. (pad pad) – Kevin Bourrillion Dec 9 '11 at 23:47

For your stated problem, instead of using a HashSet, you might also consider a BitSet

Depending on the range and sparsity of your integers, you may get better performance and space characteristics.

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It depends on your integers a lot. The point of the load factor is to "balance" the hash function: with a "perfect" hash function, your load factor could be 1.0. However, if the integer values in question show any sort of regularity, this may result in more than average hash collisions, which decrease the efficiency of the map. Then a lower load factor may help to spread the values a bit better (over a larger range), thus reduce hash collisions.

I wouldn't worry much about the creation time and extra space taken by using a lower load factor - I doubt you would ever notice the difference (unless you are on a platform with limited hardware, or have several millions of integers in your map - then the size difference may become noticeable, roughly on the range of a few extra megabytes per million values).

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They are totally random integers. Infact they are list of the userIds in my application. – user01 Mar 13 '11 at 19:52
@Marcos, I think a lot of people would be interested in your method of generating "totally random" values using a computer program ;-)... so how are the userids exactly generated? – Péter Török Mar 13 '11 at 19:57
The Integer's hashCode method returns the integer value itself. It's a perfect hash : only one integer has a given hash value. Your load factor may thus be 1.0. – JB Nizet Mar 13 '11 at 19:58
@JB Nizet, for any predefined hash map size, I can present you a set of integers always resulting in hash collisions. I.e. each and every value ends up in the same bucket (effectively degrading the map into a linked list). – Péter Török Mar 13 '11 at 20:01
@JB Nizet Given that most hash map implementations rehash, that would be problematic (unless you turned off rehashing.) – corsiKa Mar 14 '11 at 15:35

If you know EXACTLY how many you should have, you should put the load factor at 1 and ensure your hash function maps 1:1. You may want to extend your container to not rehash your hash.

Note that this sort of 'exact' thing tends to change over time, so you might be best off with just your normal container. :)

EDIT: My answer was before I knew it was integers.

Yeah, your best bet is to just leave as it is. You'll never notice the difference.

 * Remove duplicates from a list. 
 * @note This will ALTER the list. 
 * @note This is not thread safe.
 * @param the list (potentially with duplicates)
void removeDuplicates(List<Integer> list) {
    Set<Integer> noDupe = new HashSet<Integer>(list.size()); // will end up resizing once, oh well
    for(Integer i : list) noDupe.add(i);
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The Google Guava library avoids the one resize in the Maps and Sets methods newHashMapWithExpectedSize() and newHashSetWithExpectedSize(). It calculates an initial capacity large enough to avoid re-sizing. It certain performance scenarios you can notice the difference for both a re-size and setting a load factor of 1 (degraded hashing as mentioned in other answers). As always test, tweak, test again. – Carl Pritchett Sep 6 '12 at 1:40

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