My use-case is that I'm looking for a data structure in Java that will let me see if an object with the same hash code is inside (by calling contains()), but I will never need to iterate through the elements or retrieve the actual objects. A HashSet is close, but from my understanding, it still contains references to the actual objects, and that would be a waste of memory since I won't ever need the contents of the actual objects. The best option I can think of is a HashSet of type Integer storing only the hash codes, but I'm wondering if there is a built-in data structure that would accomplish the same thing (and only accept one type as opposed to HashSet of type Integer which will accept the hash code of any object).

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    Is your hash function perfect? Or can you have multiple objects with the same hash value? – arshajii Mar 15 at 21:17
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    what about hashing collisions? – Nathan Hughes台湾不在中国 Mar 15 at 21:18
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    The HashSet will contain a reference to your object, not a copy, so don't worry about space. A HashSet<Integer> would probably use up more space because it has references to integers. – Sweeper Mar 15 at 21:20
  • I agree with @Sweeper, unless you have a real need for super-duper optimization. Also, your second idea with storing hashcodes as integer wouln't be more efficient as it would store the hash+the hash of the hash. – Joel Mar 15 at 21:28
  • @Sweeper The HashSet uses internally a HashMap. The memory space is the same. – Octavian R. Mar 15 at 21:28

A Bloom filter can tell whether an object might be a member, or is definitely not a member. You can control the likelihood of false positives. Each hash value maps to a single bit.

The Guava library provides an implementation in Java.

  • Nice. This seems like the solution for very low storage overhead. But you have to worry about the false negative case. If you can statistically eliminate that, this is great! – Steve Mar 15 at 21:45
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    False positives, but you can control their probability. Another disadvantage is that you can't remove elements. – Andy Thomas Mar 15 at 21:52
  • The question was for a data structure that checks using only the predefined hashCode(), which can potentially have 2^31 values (counting only positives). A Bloom filter that uses one hash function with 2 ^ 31 possible values would be extraordinarily large, seeing as it is basically just a BitSet. I don't see how that counts as "very low storage overhead". – Leo Aso Mar 15 at 22:02
  • @LeoAso - The relationship between the set of hash values and the set of bits is not necessary one-to-one. – Andy Thomas 2 days ago

You could use a primitive collection implementation like IntSet to store values of hash codes. Obviously as others have mentioned this assumes collisions aren't a problem.


If you want to track if a hash code is already present and to do it memory efficient a BitSet may suite your requirements.

Look at the following example:

  public static void main(String[] args) {
    BitSet hashCodes = new BitSet();

    System.out.println(hashCodes.get("1".hashCode())); // true
    System.out.println(hashCodes.get("2".hashCode())); // false

The BitSet "implements a vector of bits that grows as needed.". It's a JDK "built-in data structure" which doesn't contain "references to the actual objects". It stores only if "the same hash code is inside".

As @Steve mentioned in his comment the implementation of the BitSet isn't the most memory efficient one. But there are more memory efficient implementations of a bit set - though not built-in.

  • I don't know how a BitSet stores individual bits. Since obviously this usage will spread bits across a very large input domain, are you sure those are stored efficiently? Just asking. The naive assumption is that the structure would be an array of bytes, where the array was just expanded to include any bit position and all positions before that, which would be monstrously inefficient. But I don't know how it actually represents bits spread way apart. – Steve Mar 15 at 22:04
  • It appears that your solution won't work. See github.com/brettwooldridge/SparseBitSet – Steve Mar 15 at 22:07
  • @Steve You're right. Found additionally this post. But the idea of an bit set is basically not bad. It's rather the implementation of the JDK BitSet. – LuCio Mar 15 at 22:12
  • It would be pretty efficient when about half of the possible values used... (unlikely in practice but still...) – Alexei Levenkov Mar 16 at 2:02

There is no such built-in data structure, because such a data structure is rarely needed. It's easy to build one, though.

public class HashCodeSet<T> {

    private final HashSet<Integer> hashCodes;        

    public MyHashSet() {
        hashCodes = new HashSet<>();

    public MyHashSet(int initialCapacity) {
        hashCodes = new HashSet<>(initialCapacity);

    public HashCodeSet(HashCodeSet toCopy) {
        hashCodes = new HashSet<>(toCopy.hashCodes);

    public void add(T element) {

    public boolean containsHashCodeOf(T element) {
       return hashCodes.contains(element.hashCode());

    public boolean equals(o: Object) {
        return o == this || o instanceof HashCodeSet && 
                ((HashCodeSet) o).hashCodes.equals(hashCodes);

    public int hashCode() {
        return hashCodes.hashCode(); // hash-ception

    public String toString() {
        return hashCodes.toString();
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    I think the OP's question wasn't about API, but about memory usage. This doesn't help with that since the result still acts like a HashSet. – Steve Mar 15 at 21:42
  • I realize that I was unfair completely on this. I've removed my objections. Feel free to delete your comments on my comments. I still think there's something more to the problem, but I was off base. Sorry – Steve Mar 15 at 22:28

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