I'm writing a script which animates image data. I have a number of large image cubes (3D arrays). For each of these, I step through the frames in each cube, and once I get near the end of it, I load the next cube and continue. Due to the large size of each cube, there is a significant load time (~5s). I'd like the animation to transition between cubes seamlessly (while also conserving memory), so I'm staggering the load processes. I've made some progress towards a solution, but some problems persist.
The code below loads each data cube, splits it into frames and puts these into a
multiprocessing.Queue. Once the number of frames in the queue falls below a certain threshold, the next load process is triggered which loads another cube and unpacks it into the queue.
Check out the code below:
import numpy as np import multiprocessing as mp import logging logger = mp.log_to_stderr(logging.INFO) import time def data_loader(event, queue, **kw): '''loads data from 3D image cube''' event.wait() #wait for trigger before loading logger.info( 'Loading data' ) time.sleep(3) #pretend to take long to load the data n = 100 data = np.ones((n,20,20))*np.arange(n)[:,None,None] #imaginary 3D image cube (increasing numbers so that we can track the data ordering) logger.info( 'Adding data to queue' ) for d in data: queue.put(d) logger.info( 'Done adding to queue!' ) def queue_monitor(queue, triggers, threshold=50, interval=5): ''' Triggers the load events once the number of data in the queue falls below threshold, then doesn't trigger again until the interval has passed. Note: interval should be larger than data load time. ''' while len(triggers): if queue.qsize() < threshold: logger.info( 'Triggering next load' ) triggers.pop(0).set() time.sleep(interval) if __name__ == '__main__': logger.info( "Starting" ) out_queue = mp.Queue() #Initialise the load processes nprocs, procs = 3,  triggers = [mp.Event() for _ in range(nprocs)] triggers.set() #set the first process to trigger immediately for i, trigger in enumerate(triggers): p = mp.Process( name='data_loader %d'%i, target=data_loader, args=(trigger, out_queue) ) procs.append( p ) for p in procs: p.start() #Monitoring process qm = mp.Process( name='queue_monitor', target=queue_monitor, args=(out_queue, triggers) ) qm.start() #consume data while out_queue.empty(): pass else: for d in iter( out_queue.get, None ): time.sleep(0.2) #pretend to take some time to process/animate the data logger.info( 'data: %i' %d[0,0] ) #just to keep track of data ordering
This works brilliantly in some cases, but sometimes the order of the data gets jumbled after a new load process is triggered. I can't figure out why this should happen - mp.Queue is supposed to be FIFO right?! For eg. Running the code above as is won't preserve the correct order in the output queue, however, changing the threshold to a lower value eg. 30 fixes this. *so confused...
So question: How do I correctly implement this staggered loading strategy with
multiprocessing in python?