I have a list of urls (about 25k) and I am trying to check if they are alive (200 response). want to do these checks in parallel using the multiprocessing library for Python. I wrote the following (largely based on the Python doc example) but it seems to run pretty slowly. Is there any way I can make this script run faster?
import urllib2 import time import random from multiprocessing import Process, Queue, current_process, freeze_support class HeadRequest(urllib2.Request): def get_method(self): return "HEAD" # # Function run by worker processes # def worker(input, output): for args in iter(input.get, 'STOP'): result = alive(args) output.put(result) # # Functions referenced by tasks # def alive(x): x = x.strip() try: return x, ":", urllib2.urlopen(HeadRequest(x)).getcode() except urllib2.HTTPError as e: return x, ":", e.code except: return x, ": Error" # # # def check(): NUMBER_OF_PROCESSES = 500 text_file = open("url.txt", "r") TASKS1 = text_file.readlines() # Create queues task_queue = Queue() done_queue = Queue() # Submit tasks for task in TASKS1: task_queue.put(task) # Start worker processes for i in range(NUMBER_OF_PROCESSES): Process(target=worker, args=(task_queue, done_queue)).start() # Get and print results for i in range(len(TASKS1)): print done_queue.get() # Tell child processes to stop for i in range(NUMBER_OF_PROCESSES): task_queue.put('STOP') if __name__ == '__main__': freeze_support() check()
Any help is appreciated