I'm trying to collect stream throwing away rarely used items like in this example:

import java.util.*;
import java.util.function.Function;
import static java.util.stream.Collectors.*;
import static org.hamcrest.MatcherAssert.assertThat;
import static org.hamcrest.Matchers.containsInAnyOrder;
import org.junit.Test;

public void shouldFilterCommonlyUsedWords() {
    // given
    List<String> allWords = Arrays.asList(
       "call", "feel", "call", "very", "call", "very", "feel", "very", "any");

    // when
    Set<String> commonlyUsed = allWords.stream()
            .collect(groupingBy(Function.identity(), counting()))
            .entrySet().stream().filter(e -> e.getValue() > 2)

    // then
    assertThat(commonlyUsed, containsInAnyOrder("call", "very"));

I have a feeling that it is possible to do it much simpler - am I right?

  • 1
    No, that looks like about the simplest way to do it. – Louis Wasserman May 28 '15 at 19:49
  • 2
    You can replace new ArrayList<>(Arrays.asList(…)) by a simple Arrays.asList(…). There is only one way to avoid a map which is calculating the frequency again for each item but that’s O(n²) CPU complexity, so I guess you better live with the intermediate map… – Holger May 28 '15 at 19:57
  • 5
    What this question attempts to do is equivalent to the SQL statement SELECT word FROM allWords GROUP BY word HAVING count(*) > 2. The groupingBy Collector does the job of GROUP BY, but there is no HAVING clause equivalent. It would be good for Java to add that functionality, e.g. something like groupingBy(Function<? super T,? extends K> classifier, Collector<? super T,A,D> downstream, Predicate<? super D> having). – rgettman May 28 '15 at 20:45
  • 1
    @rgettman: I don’t see the advantage of such a method. It’s only hiding the fact that it has to collect the entire map first, before filtering just like in my answer… – Holger May 29 '15 at 7:42
  • 2
    @Holger Then why have a HAVING clause in SQL? It's just hiding the fact that the group by and aggregate operations happen before the aggregate values are filtered. Once could write SELECT word FROM (SELECT word, count(*) c FROM allWords GROUP BY word) WHERE c > 2;. Having HAVING allows more concise code. One can certainly use your solution; it will work. I just pointed out that it would be good for Java to have the HAVING option that would simplify the code. – rgettman May 29 '15 at 17:58

A while ago I wrote an experimental distinct(atLeast) method for my library:

public StreamEx<T> distinct(long atLeast) {
    if (atLeast <= 1)
        return distinct();
    AtomicLong nullCount = new AtomicLong();
    ConcurrentHashMap<T, Long> map = new ConcurrentHashMap<>();
    return filter(t -> {
        if (t == null) {
            return nullCount.incrementAndGet() == atLeast;
        return map.merge(t, 1L, (u, v) -> (u + v)) == atLeast;

So the idea was to use it like this:

Set<String> commonlyUsed = StreamEx.of(allWords).distinct(3).toSet();

This performs a stateful filtration, which looks a little bit ugly. I doubted whether such feature is useful thus I did not merge it into the master branch. Nevertheless it does the job in single stream pass. Probably I should revive it. Meanwhile you can copy this code into the static method and use it like this:

Set<String> commonlyUsed = distinct(allWords.stream(), 3).collect(Collectors.toSet());

Update (2015/05/31): I added the distinct(atLeast) method to the StreamEx 0.3.1. It's implemented using custom spliterator. Benchmarks showed that this implementation is significantly faster for sequential streams than stateful filtering described above and in many cases it's also faster than other solutions proposed in this topic. Also it works nicely if null is encountered in the stream (the groupingBy collector doesn't support null as class, thus groupingBy-based solutions will fail if null is encountered).

  • 3
    Why not Long::sum? – Holger May 29 '15 at 7:38
  • 1
    @Holger, thanks, will use Long::sum. I want to test also custom spliterator version: it's somewhat longer implementation, but adds a possibility to use simple HashMap for sequential streams (if trySplit was not called), thus may work faster. – Tagir Valeev May 29 '15 at 7:57
  • 1
    Did you profile your solution? I would not make a guess about which costs more, the uncontended synchronization of ConcurrentHashMap.merge or the unbox,unbox,sum,box operation made for almost each element. Only a profiler may tell… – Holger May 29 '15 at 8:07
  • 1
    Sure I will benchmark both versions on different data sizes and different patterns (like many repeats, few repeats, no repeats, presorted and shuffled input, no nulls, many nulls) and compare with intermediate map solution (either with removeIf or with creating second stream), both in parallel and sequential. I think, it's reasonable to add it to the library only if it's at least as fast as using the intermediate map. Of course if simpler version performs well I will use it. – Tagir Valeev May 29 '15 at 8:15
  • 2
    @Holger: seems that spliterator is better: the benchmark and results are here. In sequential tests spliterator (distinct2) is always better than filter (distinct) and in most cases better than other solutions proposed here (double-stream and remove-if). In parallel tests distinct and distinct2 show similar performance and faster than other solutions roughly in a half of cases. Thus I'd stay with spliterator solution. Customized primitive map may be even faster, but it's too much for my library (especially considering the concurrent case). – Tagir Valeev May 30 '15 at 10:20

There is no way around creating a Map, unless you want accept a very high CPU complexity.

However, you can remove the second collect operation:

Map<String,Long> map = allWords.stream()
    .collect(groupingBy(Function.identity(), HashMap::new, counting()));
map.values().removeIf(l -> l<=2);
Set<String> commonlyUsed=map.keySet();

Note that in Java 8, HashSet still wraps a HashMap, so using the keySet() of a HashMap, when you want a Set in the first place, doesn’t waste space given the current implementation.

Of course, you can hide the post-processing in a Collector if that feels more “streamy”:

Set<String> commonlyUsed = allWords.stream()
        groupingBy(Function.identity(), HashMap::new, counting()),
        map-> { map.values().removeIf(l -> l<=2); return map.keySet(); }));
  • 1
    Strictly speaking you may still waste space for allocated Long objects (if any of your counts exceed 127). – Tagir Valeev May 29 '15 at 1:58
  • 1
    Also if you have quite many rare items which are filtered out with removeIf, you may end up with very big hash table which will not be shrinked automatically. – Tagir Valeev May 29 '15 at 2:18
  • 1
    @Tagir Valeev: both could be solved with a customized Map implementation, however, the question is how the commonlyUsed Set is being used afterwards, maybe this is no issue at all. – Holger May 29 '15 at 7:34
  • @Holger groupingBy(Function.identity(), HashMap::new, counting()) is absolutely identical to groupingBy(Function.identity(), counting()) (I know that you know but maybe others don't). – ytterrr May 29 '15 at 8:39
  • 4
    From the documentation: “There are no guarantees on the type, mutability, serializability, or thread-safety of the Map returned.”. The current implementation returns a HashMap but you must not rely on it. So if you need a mutable map like in my solution you should specify a supplier like HashMap::new. – Holger May 29 '15 at 8:44

I personally prefer Holger's solution (+1), but, instead of removing elements from the groupingBy map, I would filter its entrySet and map the result to a Set in the finalizer (it feels even more streamy to me)

    Set<String> commonlyUsed = allWords.stream().collect(
                groupingBy(identity(), counting()), 
                (map) -> map.entrySet().stream().
                            filter(e -> e.getValue() > 2).
                            map(e -> e.getKey()).

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