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I am trying to write a multithreaded program in Python to accelerate the copying of (under 1000) .csv files. The multithreaded code runs even slower than the sequential approach. I timed the code with profile.py. I am sure I must be doing something wrong but I'm not sure what.

The Environment:

  • Quad core CPU.
  • 2 hard drives, one containing source files. The other is the destination.
  • 1000 csv files ranging in size from several KB to 10 MB.

The Approach:

I put all the file paths in a Queue, and create 4-8 worker threads pull file paths from the queue and copy the designated file. In no case is the multithreaded code faster:

  • sequential copy takes 150-160 seconds
  • threaded copy takes over 230 seconds

I assume this is an I/O bound task, so multithreading should help the operation speed.

The Code:

    import Queue
    import threading
    import cStringIO 
    import os
    import shutil
    import timeit  # time the code exec with gc disable
    import glob    # file wildcards list, glob.glob('*.py')
    import profile # 

    fileQueue = Queue.Queue() # global
    srcPath  = 'C:\\temp'
    destPath = 'D:\\temp'
    tcnt = 0
    ttotal = 0

    def CopyWorker():
        while True:
            fileName = fileQueue.get()
            fileQueue.task_done()
            shutil.copy(fileName, destPath)
            #tcnt += 1
            print 'copied: ', tcnt, ' of ', ttotal

    def threadWorkerCopy(fileNameList):
        print 'threadWorkerCopy: ', len(fileNameList)
        ttotal = len(fileNameList)
        for i in range(4):
            t = threading.Thread(target=CopyWorker)
            t.daemon = True
            t.start()
        for fileName in fileNameList:
            fileQueue.put(fileName)
        fileQueue.join()

    def sequentialCopy(fileNameList):
        #around 160.446 seconds, 152 seconds
        print 'sequentialCopy: ', len(fileNameList)
        cnt = 0
        ctotal = len(fileNameList)
        for fileName in fileNameList:
            shutil.copy(fileName, destPath)
            cnt += 1
            print 'copied: ', cnt, ' of ', ctotal

    def main():
        print 'this is main method'
        fileCount = 0
        fileList = glob.glob(srcPath + '\\' + '*.csv')
        #sequentialCopy(fileList)
        threadWorkerCopy(fileList)

    if __name__ == '__main__':
        profile.run('main()')
share|improve this question
10  
You say "I assume it's I/O bound" then say "multithreading should help operation speed." You're looking at it wrong. I/O bound means that it's bound by I/O, not CPU. If it was CPU bound, multithreading would help. – Mike Bantegui Dec 21 '11 at 3:40
    
Of course it's slower - do you have a set of hard-drive heads for each thread you're spawning? – wim Dec 21 '11 at 3:55
    
compare it to robocopy C:\temp D:\temp *.csv – J.F. Sebastian Dec 21 '11 at 4:01
    
thanks everyone, it's good to learn more! – steveoreo Dec 21 '11 at 4:39

Of course it's slower. The hard drives are having to seek between the files constantly. Your belief that multi-threading would make this task faster is completely unjustified. The limiting speed is how fast you can read data from or write data to the disk, and every seek from one file to another is a loss of time that could have been spent transferring data.

share|improve this answer

I assume this is more a I/O bound task, multithread should help the operation speed, anything wrong with my approach?!

Yes.

  1. Too many punctuation marks. Just one. "?" is appropriate.

  2. Your assumption is wrong. Multithreaded helps CPU bound (sometimes). It can never help I/O bound. Never.

All threads in a process must wait while one thread does I/O.

or coroutine to do the job?!

No.

If you want to do a lot of I/O, you need a lot of processes.

If you're copying 1000 files, you need many, many processes. Each process copies some of the files.

share|improve this answer
    
Technically multithreading can help in some I/O bound instances. If the I/O is high latency (such as a web request), multiple threads of execute can help. But generally, I do agree with you. – Mike Bantegui Dec 21 '11 at 3:45

as an aside I just wanted to add that the above code is slightly wrong. You should call fileQueue.task_done() AFTER shutil.copy(fileName, destPath) .. otherwise the last files will not be copied :)

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