When the table
delayed_jobs start growing on top of the few hundreds, the performance of the workers starts decreasing exponentially.
I have been struggling with this issue several times so I expose my findings for future new-comers to this nightmare.
There are several issues opened into the DelayedJobs project regarding to this issue:
The problem is in the query DelayedJob uses in avery worker run:
UPDATE `delayed_jobs` SET `locked_at` = '2014-04-17 22:32:20', `locked_by` = 'host:b38f770a-f3f3-4b2a-8c66-7c8eebdb7fea pid:2' WHERE ((run_at <= '2014-04-17 22:32:20' AND (locked_at IS NULL OR locked_at < '2014-04-17 18:32:20') OR locked_by = 'host:b38f770a-f3f3-4b2a-8c66-7c8eebdb7fea pid:2') AND failed_at IS NULL) ORDER BY priority ASC, run_at ASC LIMIT 1
It can take almost 1 second, in my case, for less than 1000 jobs.. and increasing exponentially as more jobs pending.
The only solution I have found is the one exposes in this blog, in a nutshell: As the problem is the lack of proper index for the initial query, the solution is to split the table in batches:
-- stop workers select max(id) from delayed_jobs; -- -> 10010 create table delayed_jobs_backup like delayed_jobs; insert into delayed_jobs_backup select * from delayed_jobs where id < 10010; delete from delayed_jobs where id < 10010; -- start workers -- while jobs in delayed_jobs_backup do -- wait until the batch have been processed insert into delayed_jobs select * from delayed_jobs_backup limit 1000; delete from delayed_jobs_backup limit 1000; -- end