Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm about to add a new column to a table with 37M rows. The column will hold an association ID.

Simple model:

class SeenEpisode < ActiveRecord::Base
  #show_id is the new column
  attr_accessible :user_id, :season_id, :episode_id, :show_id
  belongs_to :episode
  belongs_to :season

This is the fastest way that I can come up with:

seen_episodes = SeenEpisode.where("show_id IS NULL")
seen_episodes.find_in_batches do |batch| #batch size is 1000
  batch.group_by(&:season_id).each do |season_id, seen_episodes|
    #all seen_episodes with the same season_id, ensures the same show_id
    show_id = seen_episodes.first.episode.show_id
    seen_episodes.each do |seen_episode|
      seen_episode.update_column(:show_id, show_id) #skip validations and callbacks

Current tests on development shows that populating 10.000 records take about 2 minutes.
Lets say it will take 1 minute on production, due to better hardware and mysql configs, it will still take 100 minutes per million records. That's like 60 hours.

Is there any chance that there is a faster way going about this?

share|improve this question

1 Answer 1

up vote 3 down vote accepted

If you batch writes, it will be order of magnitudes faster. I mean, instead of sending individual writes

update episodes set show_id = 1 where episode_id = 1;
update episodes set show_id = 1 where episode_id = 2;
update episodes set show_id = 1 where episode_id = 3;

You should group them into a single write

update episodes set show_id = 1 where episode_id in (1, 2, 3);

Or, something like this could work:

select season_id, show_id 
from episodes 
where show_id is not null 
group by season_id;

That should fetch one show_id for each season_id. Then just loop over those rows and fire mass updates (SQL syntax for simplicity, you'll likely do this in ruby)

update episodes set show_id = @show_id where season_id = @season_id;
share|improve this answer
I went with your first suggestion. With a batch_size of 100000, I'm now down to about 30 seconds per 100000 records, meaning around 3 hours (from 60), and that's on my slow development machine :) Thanks alot! –  Frexuz May 25 '13 at 10:57

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

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