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I was trying to benchmark a Monte Carlo calculation of PI (3.14159) throwing darts. I've implemented my code in Java, Groovy, BeanShell, Jython and Python (Python2 implemented in C)

Here is my original Java code "MonteCarloPI.java":

public class MonteCarloPI {
     public static void main(String[] args)
       {
         int nThrows = 0;
         int nSuccess = 0;
         double x, y;
         long then = System.nanoTime();
         int events=(int)1e8;
         for (int i = 0; i < events; i++) {
            x = Math.random();      // Throw a dart
            y = Math.random();
            nThrows++;
            if ( x*x + y*y <= 1 )  nSuccess++;
       }
 int itime = (int)((System.nanoTime() - then)/1e9);
 System.out.println("Time for calculations (sec): " + itime+"\n");
 System.out.println("Pi = " + 4*(double)nSuccess/(double)nThrows +"\n");
      }
}

Here is my Groovy code put to a file "MonteCarloPI.groovy":

int nThrows = 0; int nSuccess = 0;
double x, y;
long then = System.nanoTime();
int events=(int)1e8;
for (int i = 0; i < events; i++)   {
   x = Math.random(); y = Math.random();     // Throw a dart                   
   nThrows++;
   if ( x*x + y*y <= 1 )  nSuccess++;
}
int itime = (int)((System.nanoTime() - then)/1e9);
System.out.println("Time for calculations (sec): " + itime+"\n");
System.out.println("Pi = " + 4*(float)nSuccess/(float)nThrows +"\n");

And here is my Jython code "MonteCarloPI.py":

from java.util import Random
from java.lang import *

nThrows,nSuccess = 0,0
then = System.nanoTime()
events=int(1e8)
for i in xrange(events):
    x,y = Math.random(),Math.random();      # Throw a dart                   
    nThrows +=1
    if ( x*x + y*y <= 1 ):  nSuccess+=1
itime = (int)((System.nanoTime() - then)/1e9)
print "Time for calculations (sec): ",itime
print "Pi = ", 4*nSuccess/float(nThrows)

I've renamed "MonteCarloPI.groovy" to a BeanShell script file "MonteCarloPI.bsh" (BeanShell has a very similar syntax as Groovy)

In the case of the standard Python, the code is "MonteCarloPI_CPython.py" looks as this:

import random
import time

nThrows,nSuccess = 0,0
then = time.time()
events=int(1e8)
for i in xrange(events):
    x,y = random.random(),random.random();      # Throw a dart                   
    nThrows +=1
    if ( x*x + y*y <= 1 ):  nSuccess+=1
itime = time.time() - then
print "Time for calculations (sec): ",itime
print "Pi = ", 4*nSuccess/float(nThrows)

I also implemented the same algorithm in JRuby (MonteCarloPI.rb):

require "java"
java_import java.lang.System;
java_import java.lang.Math;

nThrows = 0; nSuccess = 0;
xthen = System.nanoTime();
events=1e8;
for i  in 0 .. events do
   x = Math.random(); y = Math.random();     #  Throw a dart                   
   nThrows +=1
   if ( x*x + y*y <= 1 )
                nSuccess += 1
  end
end
itime = (System.nanoTime() - xthen)/1e9;
xpi=(4.0*nSuccess)/nThrows
puts "Time for calculations (sec):  #{itime}"
puts "Pi = #{xpi}"

I ran "MonteCarloPI.java", "MonteCarloPI.groovy", "MonteCarloPI.py", "MonteCarloPI.bsh" and MonteCarloPI.rb inside DataMelt editor.

Here is the benchmark results on my i7 x64 computer (Linux Mint), with 2048 MB allocated for JDK9 when running Groovy, Jython, BeanShell code:

Java   code:   3 sec Pi = 3.14176584  -> executed in DataMelt/JDK9
Groovy code:   3 sec Pi = 3.14144832  -> executed in DataMelt/JDK9
Python code:   3 sec Pi = 3.14188036  -> executed using PyPy
Groovy code:  14 sec Pi = 3.14141132  -> when using loose types for x,y 
Python code:  28 sec Pi = 3.14188036  -> executed in Python (CPython)
JRuby  code:  31 sec Pi = 3.14187860  -> executed in DataMelt/JDK9
Jython code:  40 sec Pi = 3.14187860  -> executed in DataMelt/JDK9
BeanShell code: takes forever?!       -> executed in DataMelt/JDK9
Jython after replacing xrange() with range() -> takes forever?!

As you can see, Java and Groovy calculations take about the same time (3 sec). Python is a factor 10 slower than Java and Groovy. JRuby is as slow as Python. PyPy is rather fast (as fast as Java/Groovy). But Jython and BeanShell cannot do this calculation at all (takes forever, and my computer never stops processing this file).

The last example used Jython version 2.7.2a. I've repeated the Jython code execution outside DataMelt using "jython.sh" script shipped with Jython itself, and I've got the same results (i.e. Jython calculation takes forever).

I knew that Jython is useful for manipulating with high-level Java classes, but I did not expect that it cannot do much for such a simple numeric case when using "range" instead of "xrange". Python is also surprisingly slow compared to scripting in Groovy.

Any wisdom on this?

  • I'm guessing the Jython interpreter is not using any primitive value types, only object instances. – emilles Jan 21 at 2:16
  • My suspicion is also that BeanShell and Jython operates only on objects. I've also added the standard Python for completeness (very slow) – user7975996 Jan 21 at 2:28
1

Nice work. Interesting comparison you have got there. As a python developer I would like to add some additional view on Python.

I assume it is slower mostly because of dynamic typing. Another reason is that you are computing scalar values (i.e. using for loop and computing one number at a time). One of the advantages of Python is a vector computing using NumPy library (this allows to compute multiple numbers at the same time). So, here is my implementation of the algorithm. Note: I am using python 3.6.

import numpy as np
import time

start = time.time()

events = int(1e8)
nThrows, nSuccess = 0, 0

x, y = np.random.uniform(size=(2, events))
nSuccess = (x*x + y*y <= 1).sum()
nThrows = events
pi = 4*nSuccess/float(nThrows)

stop = time.time()
print('Time: {}, Pi = {}'.format(stop-start, pi))

Here are benchmark results on my i7 x64 computer (Windows 10):

Python (original code):      42.6s  Pi = 3.1414672
Python (my optimized code):  4.7s   Pi = 3.1417642

As you can see, the original python code run on my computer is slower than the python code on your computer. So, the optimized version might be even faster than Java or Groovy.

Hope this helps.

  • Thanks! I suspect a similar trick can be done by calling some Java library from Jython. By the way, this discussion has triggered reddit thread reddit.com/r/Python/comments/aiu0ak I've learned that Groovy can be a factor 3 slower using loosely typed variables (unlike the above code). However, pypy is as fast as Groovy and Java (about 3 seconds) – user7975996 Jan 24 at 0:51
  • 1
    Suggested by Jython developer to use xrange() instead range(). This does not have impact on CPython. But this speeds us Jython. – user7975996 Jan 25 at 0:28

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