Core Java

Java 7: How to write really fast Java code

When I first wrote this blog my intention was to introduce you to a class ThreadLocalRandom which is new in Java 7 to generate random numbers. I have analyzed the performance of ThreadLocalRandom in a series of micro-benchmarks to find out how it performs in a single threaded environment.

The results were relatively surprising: although the code is very similar, ThreadLocalRandom is twice as fast as Math.random()! The results drew my interest and I decided to investigate this a little further. I have documented my anlysis process. It is an examplary introduction into analysis steps, technologies and some of the JVM diagnostic tools required to understand differences in the performance of small code segments. Some experience with the described toolset and technologies will enable you to write faster Java code for your specific Hotspot target environment.

OK, that’s enough talk, let’s get started! My machine is an ordinary Intel 386 32-bit dual core running Windows XP.

Math.random() works on a static singleton instance of Random whilst ThreadLocalRandom -> current() -> nextDouble() works on a thread local instance of ThreadLocalRandom which is a subclass of Random. ThreadLocal introduces the overhead of variable look up on each call to the current()-method. Considering what I’ve just said, then it’s really a little surprising that it’s twice as fast as Math.random() in a single thread, isn’t it? I didn’t expect such a significant difference.

Again, I am using a tiny micro-benchmarking framework presented in one of Heinz blogs. The framework that Heinz developed takes care of several challenges in benchmarking Java programs on modern JVMs. These challenges include: warm-up, garbage collection, accuracy of Javas time API, verification of test accuracy and so forth.

Here are my runnable benchmark classes:

public class ThreadLocalRandomGenerator implements BenchmarkRunnable {

 private double r;
 
 @Override
 public void run() {
  r = r + ThreadLocalRandom.current().nextDouble();
 }

 public double getR() {
  return r;
 }

 @Override
 public Object getResult() {
  return r;
 }
  
}

public class MathRandomGenerator implements BenchmarkRunnable {

 private double r;

 @Override
 public void run() {
  r = r + Math.random();
 }

 public double getR() {
  return r;
 }

 @Override
 public Object getResult() {
  return r;
 }
}

Let’s run the benchmark using Heinz’ framework:

public class FirstBenchmark {

 private static List<BenchmarkRunnable> benchmarkTargets = Arrays.asList(new MathRandomGenerator(),
   new ThreadLocalRandomGenerator());

 public static void main(String[] args) {
  DecimalFormat df = new DecimalFormat("#.##");
  for (BenchmarkRunnable runnable : benchmarkTargets) {
   Average average = new PerformanceHarness().calculatePerf(new PerformanceChecker(1000, runnable), 5);
   System.out.println("Benchmark target: " + runnable.getClass().getSimpleName());
   System.out.println("Mean execution count: " + df.format(average.mean()));
   System.out.println("Standard deviation: " + df.format(average.stddev()));
   System.out.println("To avoid dead code coptimization: " + runnable.getResult());
  }
 }
}

Notice: To make sure the JVM does not identify the code as “dead code” I return a field variable and print out the result of my benchmarking immediately. That’s why my runnable classes implement an interface called RunnableBenchmark. I am running this benchmark three times. The first run is in default mode, with inlining and JIT optimization enabled:

Benchmark target: MathRandomGenerator
Mean execution count: 14773594,4
Standard deviation: 180484,9
To avoid dead code coptimization: 6.4005410634212025E7
Benchmark target: ThreadLocalRandomGenerator
Mean execution count: 29861911,6
Standard deviation: 723934,46
To avoid dead code coptimization: 1.0155096190946539E8

Then again without JIT optimization (VM option -Xint):

Benchmark target: MathRandomGenerator
Mean execution count: 963226,2
Standard deviation: 5009,28
To avoid dead code coptimization: 3296912.509302683
Benchmark target: ThreadLocalRandomGenerator
Mean execution count: 1093147,4
Standard deviation: 491,15
To avoid dead code coptimization: 3811259.7334526842

The last test is with JIT optimization, but with -XX:MaxInlineSize=0 which (almost) disables inlining:

Benchmark target: MathRandomGenerator
Mean execution count: 13789245
Standard deviation: 200390,59
To avoid dead code coptimization: 4.802723374491231E7
Benchmark target: ThreadLocalRandomGenerator
Mean execution count: 24009159,8
Standard deviation: 149222,7
To avoid dead code coptimization: 8.378231170741305E7

Let’s interpret the results carefully: With full JVM JIT optimization the ThreadLocalRanom is twice as fast as Math.random(). Turning JIT optimization off shows that the two perform equally good (bad) then. Method inlining seems to make 30% of the performance difference. The other differences may be due to other otimization techniques.

One reason why the JIT compiler can tune ThreadLocalRandom more effectively is the improved implementation of ThreadLocalRandom.next().

public class Random implements java.io.Serializable {
...
    protected int next(int bits) {
        long oldseed, nextseed;
        AtomicLong seed = this.seed;
        do {
            oldseed = seed.get();
            nextseed = (oldseed * multiplier + addend) & mask;
        } while (!seed.compareAndSet(oldseed, nextseed));
        return (int)(nextseed >>> (48 - bits));
    }
...
}

public class ThreadLocalRandom extends Random {
...
    protected int next(int bits) {
        rnd = (rnd * multiplier + addend) & mask;
        return (int) (rnd >>> (48-bits));
    }
...
}

The first snippet shows Random.next() which is used intensively in the benchmark of Math.random(). Compared to ThreadLocalRandom.next() the method requires significantly more instructions, although both methods do the same thing. In the Random class the seed variable stores a global shared state to all threads, it changes with every call to the next()-method. Therefore AtomicLong is required to safely access and change the seed value in calls to nextDouble(). ThreadLocalRandom on the other hand is – well – thread local :-) The next()-method does not have to be thread safe and can use an ordinary long variable as seed value.

About method inlining and ThreadLocalRandom

One very effective JIT optimization is method inlining. In hot paths executed frequently the hotspot compiler decides to inline the code of called methods (child method) into the callers method (parent method). “Inlining has important benefits. It dramatically reduces the dynamic frequency of method invocations, which saves the time needed to perform those method invocations. But even more importantly, inlining produces much larger blocks of code for the optimizer to work on. This creates a situation that significantly increases the effectiveness of traditional compiler optimizations, overcoming a major obstacle to increased Java programming language performance.”

Since Java 7 you can monitor method inlining by using diagnostic JVM options. Running the code with ‘-XX:+UnlockDiagnosticVMOptions -XX:+PrintInlining‘ will show the inlining efforts of the JIT compiler. Here are the relevant sections of the output for Math.random() benchmark:

@ 13   java.util.Random::nextDouble (24 bytes)
  @ 3   java.util.Random::next (47 bytes)   callee is too large
  @ 13   java.util.Random::next (47 bytes)   callee is too large

The JIT compiler cannot inline the Random.next() method that is called in Random.nextDouble(). This is the inlining output of ThreaLocalRandom.next():

@ 8   java.util.Random::nextDouble (24 bytes)
  @ 3   java.util.concurrent.ThreadLocalRandom::next (31 bytes)
  @ 13   java.util.concurrent.ThreadLocalRandom::next (31 bytes)

Due to the fact that the next()-method is shorter (31 bytes) it can be inlined. Because the next()-method is called intensively in both benchmarks this log suggests that method inlining may be one reason why ThreadLocalRandom performs significantly faster.

To verify that and to find out more it is required to deep dive into assembly code. With Java 7 JDKs it is possible to print out assembly code into the console. See here on how to enable -XX:+PrintAssembly VM Option. The option will print out the JIT optimized code, that means you can see the code the JVM actually executes. I have copied the relevant assembly code into the links below.

Assembly code of ThreadLocalRandomGenerator.run() here.
Assembly code of MathRandomGenerator.run() here.
Assembly code of Random.next() called by Math.random() here.

Assembly code is machine-specific and low level code, it’s more complicated to read then bytecode. Let’s try to verify that method inlining has a relevant effect on performance in my benchmarks and: are there other obvious differences how the JIT compiler treats ThreadLocalRandom and Math.random()? In ThreadLocalRandomGenerator.run() there is no procedure call to any of the subroutines like Random.nextDouble() or ThreatLocalRandom.next(). There is only one virtual (hence expensive) method call to ThreadLocal.get() visible (see line 35 in ThreadLocalRandomGenerator.run() assembly). All the other code is inlined into ThreadLocalRandomGenerator.run(). In the case of MathRandomGenerator.run() there are two virtual method calls to Random.next() (see block B4 line 204 ff. in the assembly code of MathRandomGenerator.run()). This fact confirms our suspicion that method inlining is one important root cause for the performance difference. Further more, due to synchronization hassle, there are considerably more (and some expensive!) assembly instructions required in Random.next() which is also counterproductive in terms of execution speed.

Understanding the overhead of the invokevirtual instruction

So why is (virtual) method invocation expensive and method inlining so effective? The pointer of invokevirtual instructions is not an offset of a concrete method in a class instance. The compiler does not know the internal layout of a class instance. Instead, it generates symbolic references to the methods of an instance, which are stored in the runtime constant pool. Those runtime constant pool items are resolved at run time to determine the actual method location. This dynamic (run-time) binding requires verification, preparation and resolution which can considerably effect performance. (see Invoking Methods and Linking in the JVM Spec for details)

That’s all for now. The disclaimer: Of course, the list of topics you need to understand to solve performance riddles is endless. There is a lot more to understand then micro-benchmarking, JIT optimization, method inlining, java byte code, assemby language and so forth. Also, there are lot more root causes for performance differences then just virtual method calls or expensive thread synchronization instructions. However, I think the topics I have introduced are a good start into such deep diving stuff. Looking forward to critical and enjoyable comments!

References: “Java 7: How to write really fast Java code” from our JCG partner Niklas.

Ilias Tsagklis

Ilias is a software developer turned online entrepreneur. He is co-founder and Executive Editor at Java Code Geeks.
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Stoflet Darryl
Stoflet Darryl
12 years ago

Dunno how you would test it but I suspect the majority of the performance difference is due to the write barriers for AtomicLong as it abides by the visibility requirements of the JVM Memory Model. The Memory Model implies (though impls may differ) main memory (not cache) is made consistent thus for each AtomicLong compareAndSet its a much longer bus ride than simply updating L3 cache (as in the thread local RNG)

Edited to provide link to specifics of volatile (which AtomicLong adheres to) per the Memory Model spec: http://www.cs.umd.edu/~pugh/java/memoryModel/jsr-133-faq.html#volatile

Seth
11 years ago

Thanks for sharing these tips. Found them very useful

SoftMAS | Desarrollo de software

A very useful post, thanks for sharing

Rahul.K
Rahul.K
10 years ago

Nice information llias… keep going on

Shreyas Anand
9 years ago

Ilias,

What a well written post! This is very interesting and useful information. Definitely something I would want to try the next time I have to generate random numbers in my projects.

Abbas
Abbas
8 years ago

WIll try this on my local.. Before using it in Real-time project

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