Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I'm doing an assignment for a course, which requires me to implement a parallel MapReduce engine in a functional language and then use it solve certain simple problems.

Which functional language do you think I should use?

Here are my requirements:

  • Should be relatively easy to learn, since I have only about 2 weeks for this assignment.
  • Has existing MapReduce implementations which can be found on the web - my course does not forbid me from using open-sourced code or internet resources in general.
  • Should fit the problem, and be an overall worthwhile language to learn (a relatively popular language).

I am currently considering Haskell and Clojure, but both these languages are new to me - I have no idea if any of these languages are actually appropriate for the situation.

share|improve this question

closed as not constructive by Thomas, Code-Apprentice, sloth, gnat, Stony Feb 22 '13 at 9:54

As it currently stands, this question is not a good fit for our Q&A format. We expect answers to be supported by facts, references, or expertise, but this question will likely solicit debate, arguments, polling, or extended discussion. If you feel that this question can be improved and possibly reopened, visit the help center for guidance. If this question can be reworded to fit the rules in the help center, please edit the question.

How many compute nodes will you be using? Multi core? Or a cluster? –  Don Stewart Feb 21 '13 at 22:37
What is your background? How easy a language is to learn depends heavily on your experience. –  luqui Feb 21 '13 at 22:37
I have never written a non-trivial program in a functional language. I have written TRIVIAL programs in Prolog and Haskell. However, I have been programming in imperative languages (C, C++, Python) for over 10 years. I consider myself an expert C programmer. @DonStewart: This is not a real-world program, but merely an assignment for a class. 2 cores is fine. –  Velvet Ghost Feb 21 '13 at 22:43
2 cores - then it doesn't matter too much. Both the JVM and GHC will scale just fine :) Haskell has more parallelism tools and styles to play with, but either that or Clojure will be OK. Do you like types? –  Don Stewart Feb 21 '13 at 22:46
@VelvetGhost Haskell takes static typing to new levels, at least if you're coming from the C-family of languages. Clojure on the other de-emphasizes types (that is, idiomatic clojure code will rarely, if ever, introduce new types). –  Cubic Feb 21 '13 at 22:57

5 Answers 5

up vote 6 down vote accepted

Both Clojure and Haskell are definitely worth learning, for different reasons. If you get a chance, I would try both. I'd also suggest adding Scala to your list.

If you have to pick one, I would choose Clojure, for the following reasons:

  • It's a Lisp - everyone should learn a Lisp. See http://www.paulgraham.com/avg.html
  • It has a unique approach to concurrency - see http://www.infoq.com/presentations/Value-Identity-State-Rich-Hickey
  • It's a JVM language, which makes it immediately useful from a practical perspective: the library & tool ecosystem on the JVM is extremely good, better than any other platform IMHO. If you want to do serious tech. work in the enterprise or startup space, it is very helpful to gain a good knowledge of the JVM. FWIW, Scala also falls into this category of "interesting JVM languages".

Also, Clojure make parallel map-reduce very easy. Here's one to start with:

(reduce + (pmap inc (range 1000)))
=> 500500

Using pmap rather than map is enough to give you a parallel mapping operation. There are also parallel reducers if you use Clojure 1.5, see the reducers framework for more details

share|improve this answer

Cloud Haskell would be a suitable choice for a distributed system engine on which to implement the map/reduce model. However, for a dual core local system, it is sufficient to just implement it directly in GHC using existing parallelism support in the GHC runtime. Lightweight threads, work stealing queues and other useful primitives are provided out of the box.

If I was implementing a /new/ MapReduce engine, I'd use GHC. Types, parallel debugging tools like ThreadScope, and an optimizing compiler ensure you'll be able to get the performance you want from the code, while the excellent multicore runtime will let you scale well.

share|improve this answer

As a starting place for your engine, you might be interested in the paper Google's MapReduce Programming Model -- Revisited, which describes MapReduce from a functional point of view. Types are described using Haskell notation, but it should be easy to translate into whatever language you choose.

share|improve this answer

I would personally recommend using Scalding, it's a Scala abstraction on top of Cascading to abstract low-level Hadoop details. It was developed at Twitter, and seems mature enough today so you can start actually using it without too much trouble.

Here is an example how you would do a Wordcount in Scalding:

package com.twitter.scalding.examples

import com.twitter.scalding._

class WordCountJob(args : Args) extends Job(args) {
  TextLine( args("input") )
    .flatMap('line -> 'word) { line : String => tokenize(line) }
    .groupBy('word) { _.size }
    .write( Tsv( args("output") ) )

  // Split a piece of text into individual words.
  def tokenize(text : String) : Array[String] = {
    // Lowercase each word and remove punctuation.
    text.toLowerCase.replaceAll("[^a-zA-Z0-9\\s]", "").split("\\s+")

I think it's a good candidate since because it's using Scala it's not too far from regular Map/Reduce Java programs, and even if you don't know Scala it's not too hard to pick up.

share|improve this answer
Are you taking into account that I need to write an actual MapReduce ENGINE? In your example, you seem to be using a existing built-in engine. Would scalding be a good language to write a MapReduce ENGINE? –  Velvet Ghost Feb 22 '13 at 3:03

Cascalog and Clojure will give you a fairly turn key way to get started. If you have to build your own cluster then I recommend using pallet-hadoop to deploy a hadoop cluster, though for educational purposes cascalog works well locally.

share|improve this answer

Not the answer you're looking for? Browse other questions tagged or ask your own question.