Sign Up

Sign Up to our social questions and Answers Engine to ask questions, answer people’s questions, and connect with other people.

Have an account? Sign In

Have an account? Sign In Now

Sign In

Login to our social questions & Answers Engine to ask questions answer people’s questions & connect with other people.

Sign Up Here

Forgot Password?

Don't have account, Sign Up Here

Forgot Password

Lost your password? Please enter your email address. You will receive a link and will create a new password via email.

Have an account? Sign In Now

You must login to ask a question.

Forgot Password?

Need An Account, Sign Up Here

Please briefly explain why you feel this question should be reported.

Please briefly explain why you feel this answer should be reported.

Please briefly explain why you feel this user should be reported.

Sign InSign Up

The Archive Base

The Archive Base Logo The Archive Base Logo

The Archive Base Navigation

  • Home
  • SEARCH
  • About Us
  • Blog
  • Contact Us
Search
Ask A Question

Mobile menu

Close
Ask a Question
  • Home
  • Add group
  • Groups page
  • Feed
  • User Profile
  • Communities
  • Questions
    • New Questions
    • Trending Questions
    • Must read Questions
    • Hot Questions
  • Polls
  • Tags
  • Badges
  • Buy Points
  • Users
  • Help
  • Buy Theme
  • SEARCH
Home/ Questions/Q 7686415
In Process

The Archive Base Latest Questions

Editorial Team
  • 0
Editorial Team
Asked: May 31, 20262026-05-31T19:28:32+00:00 2026-05-31T19:28:32+00:00

I have written a Scala (2.9.1-1) application that needs to process several million rows

  • 0

I have written a Scala (2.9.1-1) application that needs to process several million rows from a database query. I am converting the ResultSet to a Stream using the technique shown in the answer to one of my previous questions:

class Record(...)

val resultSet = statement.executeQuery(...)

new Iterator[Record] {
  def hasNext = resultSet.next()
  def next = new Record(resultSet.getString(1), resultSet.getInt(2), ...)
}.toStream.foreach { record => ... }

and this has worked very well.

Since the body of the foreach closure is very CPU intensive, and as a testament to the practicality of functional programming, if I add a .par before the foreach, the closures get run in parallel with no other effort, except to make sure that the body of the closure is thread safe (it is written in a functional style with no mutable data except printing to a thread-safe log).

However, I am worried about memory consumption. Is the .par causing the entire result set to load in RAM, or does the parallel operation load only as many rows as it has active threads? I’ve allocated 4G to the JVM (64-bit with -Xmx4g) but in the future I will be running it on even more rows and worry that I’ll eventually get an out-of-memory.

Is there a better pattern for doing this kind of parallel processing in a functional manner? I’ve been showing this application to my co-workers as an example of the value of functional programming and multi-core machines.

  • 1 1 Answer
  • 0 Views
  • 0 Followers
  • 0
Share
  • Facebook
  • Report

Leave an answer
Cancel reply

You must login to add an answer.

Forgot Password?

Need An Account, Sign Up Here

1 Answer

  • Voted
  • Oldest
  • Recent
  • Random
  1. Editorial Team
    Editorial Team
    2026-05-31T19:28:34+00:00Added an answer on May 31, 2026 at 7:28 pm

    If you look at the scaladoc of Stream, you will notice that the definition class of par is the Parallelizable trait… and, if you look at the source code of this trait, you will notice that it takes each element from the original collection and put them into a combiner, thus, you will load each row into a ParSeq:

      def par: ParRepr = {
        val cb = parCombiner
        for (x <- seq) cb += x
        cb.result
      }
    
      /** The default `par` implementation uses the combiner provided by this method
       *  to create a new parallel collection.
       *
       *  @return  a combiner for the parallel collection of type `ParRepr`
       */
      protected[this] def parCombiner: Combiner[A, ParRepr]
    

    A possible solution is to explicitly parallelize your computation, thanks to actors for example. You can take a look at this example from the akka documentation for example, that might be helpful in your context.

    • 0
    • Reply
    • Share
      Share
      • Share on Facebook
      • Share on Twitter
      • Share on LinkedIn
      • Share on WhatsApp
      • Report

Sidebar

Related Questions

I have written an AIR Application that downloads videos and documents from a server.
I have written a short Scala program to read a large file, process it
I have written some code in my VB.NET application to send an HTML e-mail
I have written a DLL that uses MS Word to spell check the content
I have written something that uses the following includes: #include <math.h> #include <time.h> #include
I have written a watir script that downloads files. One of the files it
Anyone have good experience with a web application testing framework? We are in process
Imagine you have a web application written in Django and Python 2.65, and MySQL
I am currently trying to write an application that displays live video from a
I have a web application written in Java (Spring, Hibernate/JPA, Struts2) where users can

Explore

  • Home
  • Add group
  • Groups page
  • Communities
  • Questions
    • New Questions
    • Trending Questions
    • Must read Questions
    • Hot Questions
  • Polls
  • Tags
  • Badges
  • Users
  • Help
  • SEARCH

Footer

© 2021 The Archive Base. All Rights Reserved
With Love by The Archive Base

Insert/edit link

Enter the destination URL

Or link to existing content

    No search term specified. Showing recent items. Search or use up and down arrow keys to select an item.