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If this is an idiotic question, I apologize and will go hide my head in shame, but:

I'm using rq to queue jobs in Python. I want it to work like this:

  1. Job A starts. Job A grabs data via web API and stores it.
  2. Job A runs.
  3. Job A completes.
  4. Upon completion of A, job B starts. Job B checks each record stored by job A and adds some additional response data.
  5. Upon completion of job B, user gets a happy e-mail saying their report's ready.

My code so far:

redis_conn = Redis()
q = Queue('normal', connection=redis_conn) # this is terrible, I know - fixing later
w = Worker(q)
job = q.enqueue(getlinksmod.lsGet, theURL,total,domainid)

I assumed my best solution was to have 2 workers, one for job A and one for B. The job B worker could monitor job A and, when job A was done, get started on job B.

What I can't figure out to save my life is how I get one worker to monitor the status of another. I can grab the job ID from job A with job.id. I can grab the worker name with w.name. But haven't the foggiest as to how I pass any of that information to the other worker.

Or, is there a much simpler way to do this that I'm totally missing?

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If job B cannot run until job A is complete (implying they cannot run in parallel), why use rq at all? Just do them sequentially (in a separate thread or process if you don't want to block your application) –  Roland Smith Aug 23 '12 at 22:17
The jobs for A and B each take a very long time, and can happen separately, so I'd like to be able to keep running lots of job A's independent of job B. If it's too difficult I may surrender, though. –  user1066609 Aug 23 '12 at 22:23
Do you have pairs of A and B that go together, or can any B depend on any A? Because in the latter case you've got one hell of a syncronization problem. :-) –  Roland Smith Aug 23 '12 at 22:26
People always tell me that :) Yes, they're paired, so ideally I'd match job id for A to a specific monitor in B. Again, this may simply be too complicated. –  user1066609 Aug 23 '12 at 22:31
Then just combine the paired A and B in one job and save yourself a lot of trouble. :) –  Roland Smith Aug 23 '12 at 22:34

4 Answers 4

up vote 0 down vote accepted

You are probably too deep into your project to switch, but if not, take a look at Twisted. http://twistedmatrix.com/trac/ I am using it right now for a project that hits APIs, scrapes web content, etc. It runs multiple jobs in parallel, as well as organizing certain jobs in order, so Job B doesn't execute until Job A is done.

This is the best tutorial for learning Twisted if you want to attempt. http://krondo.com/?page_id=1327

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From this page on the rq docs, it looks like each job object has a result attribute, callable by job.result, which you can check. If the job hasn't finished, it'll be None, but if you ensure that your job returns some value (even just "Done"), then you can have your other worker check the result of the first job and then begin working only when job.result has a value, meaning the first worker was completed.

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Update januari 2015, this pull request is now merged, and the parameter is renamed to depends_on, ie:

second_job = q.enqueue(email_customer, depends_on=first_job)

The original post left intact for people running older versions and such:

I have submitted a pull request (https://github.com/nvie/rq/pull/207) to handle job dependencies in RQ. When this pull request gets merged in, you'll be able to do:

def generate_report():

def email_customer():

first_job = q.enqueue(generate_report)
second_job = q.enqueue(email_customer, after=first_job)
# In the second enqueue call, job is created,
# but only moved into queue after first_job finishes

For now, I suggest writing a wrapper function to sequentially run your jobs. For example:

def generate_report():

def email_customer():

def generate_report_and_email():
    email_customer() # You can also enqueue this function, if you really want to

# Somewhere else
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Combine the things that job A and job B do in one function, and then use e.g. multiprocessing.Pool (it's map_async method) to farm that out over different processes.

I'm not familiar with rq, but multiprocessing is a part of the standard library. By default it uses as many processes as your CPU has cores, which in my experience is usually enough to saturate the machine.

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