looking for some eyeballs to verifiy that the following chunk of psuedo python makes sense. i'm looking to spawn a number of threads to implement some inproc functions as fast as possible. the idea is to spawn the threads in the master loop, so the app will run the threads simultaneously in a parallel/concurrent manner
chunk of code -get the filenames from a dir -write each filename ot a queue -spawn a thread for each filename, where each thread waits/reads value/data from the queue -the threadParse function then handles the actual processing based on the file that's included via the "execfile" function... # System modules from Queue import Queue from threading import Thread import time # Local modules #import feedparser # Set up some global variables appqueue = Queue() # more than the app will need # this matches the number of files that will ever be in the # urldir # num_fetch_threads = 200 def threadParse(q) #decompose the packet to get the various elements line = q.get() college,level,packet=decompose (line) #build name of included file fname=college+"_"+level+"_Parse.py" execfile(fname) q.task_done() #setup the master loop while True time.sleep(2) # get the files from the dir # setup threads filelist="ls /urldir" if filelist foreach file_ in filelist: worker = Thread(target=threadParse, args=(appqueue,)) worker.start() # again, get the files from the dir #setup the queue filelist="ls /urldir" foreach file_ in filelist: #stuff the filename in the queue appqueue.put(file_) # Now wait for the queue to be empty, indicating that we have # processed all of the downloads. #don't care about this part #print '*** Main thread waiting' #appqueue.join() #print '*** Done'
Thoughts/comments/pointers are appreciated...