Deduplicating common strings is usually a good idea to save memory.
But never use String.intern
for deduplication!
String.intern
is a native method; each call suffers from additional JNI overhead.
- It blows internal hashtable which is shared among all JVM parts (e.g. class loading).
- The default capacity of string table is not large enough, and the number of buckets is constant.
- It may increase GC pauses since JVM scans this internal hashtable and possibly rehashes it during stop-the-world phase.
- More details in this presentation.
A regular HashMap
or ConcurrentHashMap
can be a on order of magnitude better for this task.
The following benchmark compares the performance of String.intern
to [Concurrent]HashMap.putIfAbsent
on the set of 1M strings:
@State(Scope.Benchmark)
public class Dedup {
private static final HashMap<String, String> HM = new HashMap<>();
private static final ConcurrentHashMap<String, String> CHM = new ConcurrentHashMap<>();
private static final int SIZE = 1024 * 1024;
private static final String[] STRINGS = new Random(0).ints(SIZE)
.mapToObj(Integer::toString)
.toArray(String[]::new);
int idx;
@Benchmark
public String intern() {
String s = nextString();
return s.intern();
}
@Benchmark
public String hashMap() {
String s = nextString();
String prev = HM.putIfAbsent(s, s);
return prev != null ? prev : s;
}
@Benchmark
public String concurrentHashMap() {
String s = nextString();
String prev = CHM.putIfAbsent(s, s);
return prev != null ? prev : s;
}
private String nextString() {
return STRINGS[++idx & (SIZE - 1)];
}
}
The results on JDK 9 (smaller is better):
Benchmark Mode Cnt Score Error Units
Dedup.concurrentHashMap avgt 10 91,208 ± 0,569 ns/op
Dedup.hashMap avgt 10 73,917 ± 0,602 ns/op
Dedup.intern avgt 10 832,700 ± 73,402 ns/op