I use python multiprocessing library for an algorithm in which I have many workers processing certain data and returning result to the parent process. I use multiprocessing.Queue for passing jobs to workers, and second to collect results.
It all works pretty well, until worker fails to process some chunk of data. In the simplified example below each worker has two phases:
- initialization - can fail, in this case worker should be destroyed
- data processing - processing a chunk of data can fail, in this case worker should skip this chunk and continue with next data.
When either of this phases fails I get a deadlock after script completion. This code simulates my problem:
import multiprocessing as mp import random workers_count = 5 # Probability of failure, change to simulate failures fail_init_p = 0.2 fail_job_p = 0.3 #========= Worker ========= def do_work(job_state, arg): if random.random() < fail_job_p: raise Exception("Job failed") return "job %d processed %d" % (job_state, arg) def init(args): if random.random() < fail_init_p: raise Exception("Worker init failed") return args def worker_function(args, jobs_queue, result_queue): # INIT # What to do when init() fails? try: state = init(args) except: print "!Worker %d init fail" % args return # DO WORK # Process data in the jobs queue for job in iter(jobs_queue.get, None): try: # Can throw an exception! result = do_work(state, job) result_queue.put(result) except: print "!Job %d failed, skip..." % job finally: jobs_queue.task_done() # Telling that we are done with processing stop token jobs_queue.task_done() #========= Parent ========= jobs = mp.JoinableQueue() results = mp.Queue() for i in range(workers_count): mp.Process(target=worker_function, args=(i, jobs, results)).start() # Populate jobs queue results_to_expect = 0 for j in range(30): jobs.put(j) results_to_expect += 1 # Collecting the results # What if some workers failed to process the job and we have # less results than expected for r in range(results_to_expect): result = results.get() print result #Signal all workers to finish for i in range(workers_count): jobs.put(None) #Wait for them to finish jobs.join()
I have two question about this code:
init()fails, how to detect that worker is invalid and not to wait for it to finish?
do_work()fails, how to notify parent process that less results should be expected in the results queue?
Thank you for help!