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The machine I use for development have 32Gb of DDR3 RAM, i7 3770, SSD. The project is large, Scala compiles fast most of the time during incremental compilation but sometimes a single change leads to recompilation of hundreds of files, it then take some time to compile all and some good time for jrebel to reload all changed files.


Will putting everything on a RAMFS (Mac) make compile and jrebel reload significantly faster?

My plan was to put everything directly related to the project in a RAMFS partition ( .ivy, project source, .sbt, maybe even copy JDK. etc). I would create a script to do all that in the boot or manually, that won't be a problem. Also, I would setup file sync tasks, so, losing a change won't be a concern in case of a OS failure.


  1. log says around 400 among java and scala sources are compiled after a clean.
  2. after changing a file in a core module, it recompiles 130 files in 50s.
  3. jrebel takes 72s to reload after #1 and 50s after #2
  4. adding -Drebel.check_class_hash=true made jrebel reload instantaneous after #2.

I am quite happy with these results, but still interested on how to make scala compilation even faster, since cpu usage gets at most 70% for just about 5 seconds in compilation process that takes 170s, overall cpu usage during the compilation is 20%.


After putting JVM, source, .ivy2 and .sbt folders on RAMDISK, I noticed a small improvement on compile time only: from 132s to 122s ( after a clean). So, not worth the trouble.


That is excluding the dependency resolution, since I using this approach to avoid losing dependency resolution after a clean.

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What happens if the computer crashes? Can you split your project up into components and develop them individually, so that you don't have hundreds of lines? I.e. each component is developed and unit tested and then built and referenced as a JAR rather than a project with sources. –  Ant Kutschera Nov 24 '12 at 18:34
@AndrewGorcester, how the OS is supposed to cache binary files the compiler is writing? –  pedrofurla Nov 24 '12 at 21:23
@JhonnyEverson, one more thing that might or not improve speed is having the dependent jars in RAMFS too, perhaps inflated. –  pedrofurla Nov 24 '12 at 21:24
I think I'm somewhat familiar with your plight. :) See also: stackoverflow.com/questions/11587255/… One thing that I suspect is a common problem: Scala builds aggressively recompile due to the possibility that a visibility change will ripple through the build (implicit resolution, etc). The .class file's timestamp is changed, but not the hash. JRebel appears to go 100% off of the timestamp, if you could add a step that checked the hash of the .class and only overwrote it if it changed, you might decrease JRebel time. –  cldellow Nov 24 '12 at 21:40
@pedrofurla My hope would be that the write would be recorded on a fast cache and then lazily written to the disk, but perhaps this is unrealistic in this case given the amount of data in question. I feel ramdisks are inelegant and there should be an OS-level solution for this problem, but it's possible there simply isn't one and a ramdisk is the only way to go. –  Andrew Gorcester Nov 24 '12 at 22:27

2 Answers 2

up vote 2 down vote accepted

I have no idea what speedup you can expect with a Mac, but I have seen speedups on Linux compiling the Scala compiler itself that are encouraging enough to try. My report (warning : quite Linux-specific) is there.

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You can try setting a VM argument -Drebel.check_class_hash=true which will check the checksum before reloading the classes.

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updated question already reports result with that flag. That solves the problem partially. Compile time still is high. Still interested about info on running all stack from RAM, which I try shortly unless someone shows it is useless. –  Jhonny Everson Nov 26 '12 at 22:42

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