I am writing a Python program to read about 110000+ text files from local file system and push them into MongoDB. Here is my code snippet.
class EmailProducer (threading.Thread):
def __init__(self, threadID, queue, path): self.threadID = threadID self.queue = queue self.path = path threading.Thread.__init__(self) def run(self): if (queue.empty()): files = os.listdir(self.path) print(len(files)) for file in files: queue.put(file)
class EmailConsumer (threading.Thread):
def __init__(self, threadID, queue, path, mongoConn): self.threadID = threadID self.queue = queue self.mongoConn = mongoConn self.path = path threading.Thread.__init__(self) def run(self): while (True): if (queue.empty()): mongoConn.close() break file = queue.get() self.mongoConn.persist(self.path, file)
The EmailProducer instance reads files from local filesystem and store them in the queue if the queue is empty; and the EmailConsumer instance fetch files from the queue and push them into Mongo. I also wrote a sequential version of the same functionality. I run both on my ubuntu 12.04 32 bit desktop with an i-5 quad-core processor and timed both of them. The multithreaded version started with 1 producer and 7 consumer. However, both of them cost approximately 23.7 sec real time and 21.7 sec user time. I thought threading would help here, but numbers told me it does not help.
Any one has any insightful thoughts on the reason ?