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 have a trouble with long calculations in django. I am not able to install Celery because of idiocy of my company, so I have to "reinvent the wheel".
I am trying to make all calculations in TaskQueue class, which stores all calculations in dictionary "results". Also, I am trying to make "Please Wait" page, which will asks this TaskQueue if task with provided key is ready.
And the problem is that the results somehow disappear.
I have some view with long calculations.

def some_view(request):
    uuid = task_queue.add_task(method_name, params) #method_name(params) returns HttpResponse
    return redirect('/please_wait/?uuid={0}'.format(uuid))

And please_wait view:

def please_wait(request):
    uuid = request.GET.get('uuid','0')
    ready = task_queue.task_ready(uuid)
    if ready:
        return task_queue.task_result(uuid)
    elif ready == None:
        return render_to_response('admin/please_wait.html',{'not_found':True})
        return render_to_response('admin/please_wait.html',{'not_found':False})

And last code, my TaskQueue:

class TaskQueue:
    def __init__(self):
        self.pool = ThreadPool()
        self.results = {}
        self.lock = Lock()

    def add_task(self, method, params):
        new_uuid = self.generate_new_uuid()
        while self.results.has_key(new_uuid):
            new_uuid = self.generate_new_uuid()
        self.results[new_uuid] = self.pool.apply_async(func=method, args=params)
        return new_uuid

    def generate_new_uuid(self):
        return uuid.uuid1().hex[0:8]

    def task_ready(self, task_id):
        if self.results.has_key(task_id):
            return self.results[task_id].ready()
            return None

    def task_result(self, task_id):
        if self.task_ready(task_id):
            return self.results[task_id].get()
            return None
global task_queue = TaskQueue()

After task addition I could log result providing it's uuid for some seconds, and then it says that task doesn't ready. Here is my log: (I am outputting task_queue.results)

[INFO] 2013-10-01 16:04:52,782 logger: {'ade5d154': <multiprocessing.pool.ApplyResult object at 0x1989906c>}
[INFO] 2013-10-01 16:05:05,740 logger: {}

Help me, please! Why the hell result disappears?

UPD: @freakish helped me to find out some new information. This result doesn't disappear forever, it disappears sometimes if I will repeat my tries to log it.

[INFO] 2013-10-01 16:52:41,743 logger: {}
[INFO] 2013-10-01 16:52:45,775 logger: {}
[INFO] 2013-10-01 16:52:48,855 logger: {'ade5d154': <multiprocessing.pool.ApplyResult object at 0x1989906c>}
share|improve this question
Are you running this on the dev server, or in production? –  Daniel Roseman Oct 1 '13 at 12:27
@daniel-roseman I am running this on dev server. –  Geslot Oct 1 '13 at 12:28
@Geslot I've tried your code and it works as expected. So what can happen is the following: 1) you actually delete keys somewhere 2) you are running multiple Django processes (task_queue won't be shared between them) 3) you are overriding task_queue: this global flag is intriguing, are you running this inside a function? Maybe you call it multiple times? –  freakish Oct 1 '13 at 12:46
@freakish seems that you are right. Look at the end of my question, I've updated it. Actually, I am running 4 processes. –  Geslot Oct 1 '13 at 12:59
I'm not familiarized with multiprocessing module, however it seems that the problem is you are using a thread local Lock implementation. In my company I have a similar problem (not able to use Celery) and I use a PosixLock (I really know this is an ugly solution) –  esauro Oct 1 '13 at 13:19

1 Answer 1

up vote 3 down vote accepted

OK, so we've established that you are running 4 processes of Django. In that case your queue won't be shared between them. Actually there are two possible solutions AFAIK:

  1. Use a shared queueing server. You can write your own (see for example this entry) but using a proper one (like Celery) will be a lot easier (if you can't convince your employer to install it, then quit the job ;)).

  2. Use database to store results inside it and let each server do the calculations (via processes or threads). It does not have to be a proper database server. You can use sqlite3 for example. This is more secure and reliable way but less efficient. I think this is easier then queueing mechanism. You simply create table with columns: id, state, result. When you create job you update entry with state=processing, when you finish the job you update entry with state=done and result=result (for example as JSON string). This is easy and reliable (you actually don't need a queue here at all, the order of jobs doesn't matter unless I'm missing something).

Of course you won't be able to use this .ready() functions with it (you should store results inside these storages) unless you pickle results but that is an unnecessary overhead.

share|improve this answer
Thank you, I will try it. –  Geslot Oct 1 '13 at 13:18

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.