Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

The powerset of {1, 2, 3} is:

{{}, {2}, {3}, {2, 3}, {1, 2}, {1, 3}, {1, 2, 3}, {1}}

Let's say I have a Set in Java:

Set<Integer> mySet = new HashSet<Integer>();
Set<Set<Integer>> powerSet = getPowerset(mySet);

How do I write the function getPowerset, with the best possible order of complexity? (I think it might be O(2^n).)

share|improve this question
Suppose you have a set of configurations -- say "A", "B" and "C" --, that can be used to parametrize a model, and you want to see which subset yields the best result -- e.g. just "A". A possible solution would be to test each member of the powerset. –  João Silva Nov 4 '09 at 21:41
It's a Google interview question for software developers. It's a contrived problem to test your agility of mind. –  Eric Leschinski May 15 '12 at 21:32
This is a reasonable question. For instance to implement the scoring function for cribbage, you have to test whether any element of the powerset adds up to 15. –  John Henckel May 5 '13 at 17:58

12 Answers 12

up vote 27 down vote accepted

Yes, it is O(2^n) indeed, since you need to generate, well, 2^n possible combinations. Here's a working implementation, using generics and sets:

public static <T> Set<Set<T>> powerSet(Set<T> originalSet) {
    Set<Set<T>> sets = new HashSet<Set<T>>();
    if (originalSet.isEmpty()) {
    	sets.add(new HashSet<T>());
    	return sets;
    List<T> list = new ArrayList<T>(originalSet);
    T head = list.get(0);
    Set<T> rest = new HashSet<T>(list.subList(1, list.size())); 
    for (Set<T> set : powerSet(rest)) {
    	Set<T> newSet = new HashSet<T>();
    return sets;

And a test, given your example input:

 Set<Integer> mySet = new HashSet<Integer>();
 for (Set<Integer> s : SetUtils.powerSet(mySet)) {
share|improve this answer
Would it be faster to use Iterator instead of using list? E.g.: Set<T> rest = new HashSet<T>(originalSet); Iterator<T> i = rest.iterator(); T head = i.next(); i.remove(); ? –  Dimath Jan 12 '13 at 21:51
this is based on the 'side effect' that addAll ignores empty sets –  Cosmin Vacaroiu Sep 18 '13 at 22:32


Actually, I've written code that does what you're asking for in O(1). The question is what you plan to do with the Set next. If you're just going to call size() on it, that's O(1), but if you're going to iterate it that's obviously O(2^n).

contains() would be O(n), etc.

Do you really need this?

EDIT: This code is now available in Guava.

share|improve this answer
I need to iterate over every subset –  Manuel Aráoz Nov 5 '09 at 4:02
But do you need to store every subset? –  finnw Nov 5 '09 at 13:10
This method is now in Guava: guava-libraries.googlecode.com/svn/trunk/javadoc/com/google/… –  Kevin Bourrillion Jul 9 '10 at 1:59
What if I just want the powersets with exactly k elements? Is your code efficient for that? –  Eyal Dec 2 '13 at 17:11
@Eyal probably not. –  Kevin Bourrillion Feb 21 at 16:22

Here is a tutorial describing exactly what you want, including the code. You're correct in that the complexity is O(2^n).

share|improve this answer
Isn't complexity (n*2^n)? Because binary string is of length n, and in each iteration of the main loop we iterate the entire binary string. –  Maggie Sep 17 '13 at 5:53

Here's a solution where I use a generator, the advantage being, the entire power set is never stored at once... So you can iterate over it one-by-one without needing it to be stored in memory. I'd like to think it's a better option... Note the complexity is the same, O(2^n), but the memory requirements are reduced (assuming the garbage collector behaves! ;) )

package org.mechaevil.util.Algorithms;

import java.util.BitSet;
import java.util.Iterator;
import java.util.Set;
import java.util.TreeSet;

 * @author st0le
public class PowerSet<E> implements Iterator<Set<E>>,Iterable<Set<E>>{
    private E[] arr = null;
    private BitSet bset = null;

    public PowerSet(Set<E> set)
        arr = (E[])set.toArray();
        bset = new BitSet(arr.length + 1);

    public boolean hasNext() {
        return !bset.get(arr.length);

    public Set<E> next() {
        Set<E> returnSet = new TreeSet<E>();
        for(int i = 0; i < arr.length; i++)
        //increment bset
        for(int i = 0; i < bset.size(); i++)

        return returnSet;

    public void remove() {
        throw new UnsupportedOperationException("Not Supported!");

    public Iterator<Set<E>> iterator() {
        return this;


To call it, use this pattern:

        Set<Character> set = new TreeSet<Character> ();
        for(int i = 0; i < 5; i++)
            set.add((char) (i + 'A'));

        PowerSet<Character> pset = new PowerSet<Character>(set);
        for(Set<Character> s:pset)

It's from my Project Euler Library... :)

share|improve this answer
The Guava one works much like this one, but is restricted to 32 elements. That's not unreasonable because 2**32 is probably too many iterations. It uses even less memory than yours because it generates the AbstractSet only when needed. Try your code against the Guava one where you println only 1 in 10,000 elements, and make a big example. I bet that the Guava one will be faster. –  Eyal Mar 24 at 14:29
@Eyal, I'm sure it does, I never claimed otherwise. I wrote this myself, it's not intended for production code. It was an exercise in algorithms. –  st0le Apr 1 at 20:49

If n < 63, which is a reasonable assumption since you'd run out of memory (unless using an iterator implementation) trying to construct the power set anyway, this is a more concise way to do it. Binary operations are way faster than Math.pow() and arrays for masks, but somehow Java users are afraid of them...

List<T> list = new ArrayList<T>(originalSet);
int n = list.size();

Set<Set<T>> powerSet = new HashSet<Set<T>>();

for( long i = 0; i < (1 << n); i++) {
    Set<T> element = new HashSet<T>();
    for( int j = 0; j < n; j++ )
        if( (i >> j) % 2 == 1 ) element.add(list.get(j));

return powerSet;
share|improve this answer
The termination condition in a for loop should be i < (2 << n - 1) instead of i < (1 << n - 1). –  bazeusz Jan 4 at 10:12
Thanks @bazeusz, I changed it to i < (1 << n) which is equivalent. –  Andrew Mao Apr 10 at 2:41

If you're using GS Collections, you can use the powerSet() method on all SetIterables.

MutableSet<Integer> set = UnifiedSet.newSetWith(1, 2, 3);
System.out.println("powerSet = " + set.powerSet());
// prints: powerSet = [[], [1], [2], [1, 2], [3], [1, 3], [2, 3], [1, 2, 3]]

Note: I am a developer on GS collections.

share|improve this answer
Can you share and explain the code of your solution? –  Konrad Höffner Feb 23 at 11:10
You can look through the code here: github.com/goldmansachs/gs-collections/blob/… –  Craig P. Motlin Feb 24 at 20:29

I came up with another solution based on @Harry He's ideas. Probably not the most elegant but here it goes as I understand it:

Let's take the classical simple example PowerSet of S P(S) = {{1},{2},{3}}. We know the formula to get the number of subsets is 2^n (7 + empty set). For this example 2^3 = 8 subsets.

In order to find each subset we need to convert 0-7 decimal to binary representation shown in the conversion table below:


If we traverse the table row by row, each row will result in a subset and the values of each subset will come from the enabled bits.

Each column in the Bin Value section corresponds to the index position in the original input Set.

Here my code:

public class PowerSet {

 * @param args
public static void main(String[] args) {
    PowerSet ps = new PowerSet();
    Set<Integer> set = new HashSet<Integer>();
    for (Set<Integer> s : ps.powerSet(set)) {

public Set<Set<Integer>> powerSet(Set<Integer> originalSet) {
    // Original set size e.g. 3
    int size = originalSet.size();
    // Number of subsets 2^n, e.g 2^3 = 8
    int numberOfSubSets = (int) Math.pow(2, size);
    Set<Set<Integer>> sets = new HashSet<Set<Integer>>();
    ArrayList<Integer> originalList = new ArrayList<Integer>(originalSet);
    for (int i = 0; i < numberOfSubSets; i++) {
        // Get binary representation of this index e.g. 010 = 2 for n = 3
        String bin = getPaddedBinString(i, size);
        //Get sub-set
        Set<Integer> set = getSet(bin, originalList));
    return sets;

//Gets a sub-set based on the binary representation. E.g. for 010 where n = 3 it will bring a new Set with value 2
private Set<Integer> getSet(String bin, List<Integer> origValues){
    Set<Integer> result = new HashSet<Integer>();
    for(int i = bin.length()-1; i >= 0; i--){
        //Only get sub-sets where bool flag is on
        if(bin.charAt(i) == '1'){
            int val = origValues.get(i);
    return result;

//Converts an int to Bin and adds left padding to zero's based on size
private String getPaddedBinString(int i, int size) {
    String bin = Integer.toBinaryString(i);
    bin = String.format("%0" + size + "d", Integer.parseInt(bin));
    return bin;

share|improve this answer

I was looking for a solution that wasn't as huge as the ones posted here. This targets Java 7, so it will require a handful of pastes for versions 5 and 6.

Set<Set<Object>> powerSetofNodes(Set<Object> orig) {
    Set<Set<Object>> powerSet = new HashSet<>(),
        runSet = new HashSet<>(),
        thisSet = new HashSet<>();

    while (powerSet.size() < (Math.pow(2, orig.size())-1)) {
        if (powerSet.isEmpty()) {
            for (Object o : orig) {
                Set<Object> s = new TreeSet<>();
        for (Object o : orig) {
            for (Set<Object> s : runSet) {
                Set<Object> s2 = new TreeSet<>();
    powerSet.add(new TreeSet());
    return powerSet;

Here's some example code to test:

Set<Object> hs = new HashSet<>();
for(Set<Object> s : powerSetofNodes(hs)) {
share|improve this answer
Isn't powerSetofNodes() missing a "}" at the end? –  Peter Mortensen May 29 at 11:47

The following solution is borrowed from my book "Coding Interviews: Questions, Analysis & Solutions":

Some integers in an array are selected that compose a combination. A set of bits is utilized, where each bit stands for an integer in the array. If the i-th character is selected for a combination, the i-th bit is 1; otherwise, it is 0. For instance, three bits are used for combinations of the array [1, 2, 3]. If the first two integers 1 and 2 are selected to compose a combination [1, 2], the corresponding bits are {1, 1, 0}. Similarly, bits corresponding to another combination [1, 3] are {1, 0, 1}. We are able to get all combinations of an array with length n if we can get all possible combinations of n bits.

A number is composed of a set of bits. All possible combinations of n bits correspond to numbers from 1 to 2^n-1. Therefore, each number in the range between 1 and 2^n-1 corresponds to a combination of an array with length n. For example, the number 6 is composed of bits {1, 1, 0}, so the first and second characters are selected in the array [1, 2, 3] to generate the combination [1, 2]. Similarly, the number 5 with bits {1, 0, 1} corresponds to the combination [1, 3].

The Java code to implement this solution looks like below:

public static ArrayList<ArrayList<Integer>> powerSet(int[] numbers) {
    ArrayList<ArrayList<Integer>> combinations = new ArrayList<ArrayList<Integer>>(); 
    BitSet bits = new BitSet(numbers.length);
        combinations.add(getCombination(numbers, bits));
    }while(increment(bits, numbers.length));

    return combinations;

private static boolean increment(BitSet bits, int length) {
    int index = length - 1;

    while(index >= 0 && bits.get(index)) {

    if(index < 0)
        return false;

    return true;

private static ArrayList<Integer> getCombination(int[] numbers, BitSet bits){
    ArrayList<Integer> combination = new ArrayList<Integer>();
    for(int i = 0; i < numbers.length; ++i) {

    return combination;

The method increment increases a number represented in a set of bits. The algorithm clears 1 bits from the rightmost bit until a 0 bit is found. It then sets the rightmost 0 bit to 1. For example, in order to increase the number 5 with bits {1, 0, 1}, it clears 1 bits from the right side and sets the rightmost 0 bit to 1. The bits become {1, 1, 0} for the number 6, which is the result of increasing 5 by 1.

share|improve this answer

If S is a finite set with N elements, then the power set of S contains 2^N elements. The time to simply enumerate the elements of the powerset is 2^N, so O(2^N) is a lower bound on the time complexity of (eagerly) constructing the powerset.

Put simply, any computation that involves creating powersets is not going to scale for large values of N. No clever algorithm will help you ... apart from avoiding the need to create the powersets!

share|improve this answer

One way without recursion is the following: Use a binary mask and make all the possible combinations.

public HashSet<HashSet> createPowerSet(Object[] array)
    HashSet<HashSet> powerSet=new HashSet();
    boolean[] mask= new boolean[array.length];

    for(int i=0;i<Math.pow(2, array.length);i++)
        HashSet set=new HashSet();
        for(int j=0;j<mask.length;j++)


    return powerSet;

public void increaseMask(boolean[] mask)
    boolean carry=false;


    for(int i=1;i<mask.length;i++)
        if(mask[i]==true && carry==true)
        else if (mask[i]==false && carry==true)


share|improve this answer

Some of the solutions above suffer when the size of the set is large because they are creating a lot of object garbage to be collected and require copying data. How can we avoid that? We can take advantage of the fact that we know how big the result set size will be (2^n), preallocate an array that big, and just append to the end of it, never copying.

The speedup grows quickly with n. I compared it to João Silva's solution above. On my machine (all measurements approximate), n=13 is 5x faster, n=14 is 7x, n=15 is 12x, n=16 is 25x, n=17 is 75x, n=18 is 140x. So that garbage creation/collection and copying is dominating in what otherwise seem to be similar big-O solutions.

Preallocating the array at the beginning appears to be a win compared to letting it grow dynamically. With n=18, dynamic growing takes about twice as long overall.

public static <T> List<List<T>> powerSet(List<T> originalSet) {
    // result size will be 2^n, where n=size(originalset)
    // good to initialize the array size to avoid dynamic growing
    int resultSize = (int) Math.pow(2, originalSet.size());
    // resultPowerSet is what we will return
    List<List<T>> resultPowerSet = new ArrayList<List<T>>(resultSize);

    // Initialize result with the empty set, which powersets contain by definition
    resultPowerSet.add(new ArrayList<T>(0)); 

    // for every item in the original list
    for (T itemFromOriginalSet : originalSet) {

        // iterate through the existing powerset result
        // loop through subset and append to the resultPowerset as we go
        // must remember size at the beginning, before we append new elements
        int startingResultSize = resultPowerSet.size();
        for (int i=0; i<startingResultSize; i++) {
            // start with an existing element of the powerset
            List<T> oldSubset = resultPowerSet.get(i);

            // create a new element by adding a new item from the original list
            List<T> newSubset = new ArrayList<T>(oldSubset);

            // add this element to the result powerset (past startingResultSize)
    return resultPowerSet;
share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.