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What is a standard way of profiling Scala method calls?

What I need are hooks around a method, using which I can use to start and stop Timers.

In Java I use aspect programming, aspectJ, to define the methods to be profiled and inject bytecode to achieve the same.

Is there a more natural way in Scala, where I can define a bunch of functions to be called before and after a function without losing any static typing in the process?

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If AspectJ plays nicely with Scala, use AspectJ. Why reinvent the wheel? The answers above which use custom flow control fail to achieve the basic requirements of AOP since to use them you need to modify your code. These could also be of interest: java.dzone.com/articles/real-world-scala-managing-cros blog.fakod.eu/2010/07/26/cross-cutting-concerns-in-scala –  Ant Kutschera Feb 19 '12 at 14:56

7 Answers 7

up vote 61 down vote accepted

Do you want to do this without changing the code that you want to measure timings for? If you don't mind changing the code, then you could do something like this:

def time[R](block: => R): R = {
    val t0 = System.nanoTime()
    val result = block    // call-by-name
    val t1 = System.nanoTime()
    println("Elapsed time: " + (t1 - t0) + "ns")
    result
}

// Now wrap your method calls, for example change this...
val result = 1 to 1000 sum

// ... into this
val result = time { 1 to 1000 sum }
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This is neat, can I do the same thing without any code change? –  sheki Feb 6 '12 at 12:34
    
Not automatically with this solution; how would Scala know what you'd want to time? –  Jesper Feb 6 '12 at 12:38
    
This is not strictly true - you can automatically wrap things in the REPL –  oxbow_lakes Feb 6 '12 at 12:43
1  
-1: see my answer below –  Ant Kutschera Feb 19 '12 at 14:52
1  
Great use of Scala functionality –  knokio Dec 28 '12 at 16:58

There are three benchmarking libraries for Scala that you can avail of.

Since the URLs on the linked site are likely to change, I am pasting the relevant content below.

  1. SPerformance - Performance Testing framework aimed at automagically comparing performance tests and working inside Simple Build Tool.

  2. scala-benchmarking-template - SBT template project for creating Scala (micro-)benchmarks based on Caliper.

  3. Metrics - Capturing JVM- and application-level metrics. So you know what's going on

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In addition to Jesper's answer, you can automatically wrap method invocations in the REPL:

scala> def time[R](block: => R): R = {
   | val t0 = System.nanoTime()
   | val result = block
   | println("Elapsed time: " + (System.nanoTime - t0) + "ns")
   | result
   | }
time: [R](block: => R)R

Now - let's wrap anything in this

scala> :wrap time
wrap: no such command.  Type :help for help.

OK - we need to be in power mode

scala> :power
** Power User mode enabled - BEEP BOOP SPIZ **
** :phase has been set to 'typer'.          **
** scala.tools.nsc._ has been imported      **
** global._ and definitions._ also imported **
** Try  :help,  vals.<tab>,  power.<tab>    **

Wrap away

scala> :wrap time
Set wrapper to 'time'

scala> BigDecimal("1.456")
Elapsed time: 950874ns
Elapsed time: 870589ns
Elapsed time: 902654ns
Elapsed time: 898372ns
Elapsed time: 1690250ns
res0: scala.math.BigDecimal = 1.456

I have no idea why that printed stuff out 5 times

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testing.Benchmark might be useful.

scala> def testMethod {Thread.sleep(100)}
testMethod: Unit

scala> object Test extends testing.Benchmark {
     |   def run = testMethod
     | }
defined module Test

scala> Test.main(Array("5"))
$line16.$read$$iw$$iw$Test$     100     100     100     100     100
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2  
Be aware that testing.Benchmark is @deprecated("This class will be removed.", "2.10.0"). –  Tvaroh Aug 23 '13 at 21:37

This what I use:

import System.{currentTimeMillis => _time}
def profile[R](code: => R, t: Long = _time) = (code, _time - t)

// usage:
val (result, time) = profile { /* block of code to be profiled*/ }

val (result2, time2) = profile methodToBeProfiled(foo)
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If you want to watch on performance on application level you can also use StopWatch. It provides nice web interface to look at what is going on inside your app (but note also, that you need to explicitly add counters in your code).

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I use a technique that's easy to move around in code blocks. The crux is that the same exact line starts and ends the timer - so it is really a simple copy and paste. The other nice thing is that you get to define what the timing means to you as a string, all in that same line.

Example usage:

Timelog("timer name/description")
//code to time
Timelog("timer name/description")

The code:

object Timelog {

  val timers = scala.collection.mutable.Map.empty[String, Long]

  //
  // Usage: call once to start the timer, and once to stop it, using the same timer name parameter
  //
  def timer(timerName:String) = {
    if (timers contains timerName) {
      val output = s"$timerName took ${(System.nanoTime() - timers(timerName)) / 1000 / 1000} milliseconds"
      println(output) // or log, or send off to some performance db for analytics
    }
    else timers(timerName) = System.nanoTime()
  }

Pros:

  • no need to wrap code as a block or manipulate within lines
  • can easily move the start and end of the timer among code lines when being exploratory

Cons:

  • less shiny for utterly functional code
  • obviously this object leaks map entries if you do not "close" timers, e.g. if your code doesn't get to the second invocation for a given timer start.
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