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I'm trying to read a bunch of HDF5 files ("a bunch" meaning N > 1000 files) using PyTables and multiprocessing. Basically, I create a class to read and store my data in RAM; it works perfectly fine in a sequential mode and I'd like to parallelize it to gain some performance.

I tried a dummy approach for now, creating a new method flatten() to my class to parallelize file reading. The following example is a simplified example of what I'm trying to do. listf is a list of strings containing the name of the files to read, nx and ny are the size of the array I want to read in the file:

import numpy as np
import multiprocessing as mp
import tables

class data:
    def __init__(self, listf, nx, ny, nproc=0):
        self.listinc = []
        for i in range(len(listf)):
             self.listinc.append((listf[i], nx, ny))

    def __del__(self):
        del self.listinc

    def get_dsets(self, tuple_inc):
        listf, nx, ny = tuple_inc
        x = np.zeros((nx, ny))
        f = tables.openFile(listf)
        x = np.transpose(f.root.x[:ny,:nx])
        f.close()
        return(x)

    def flatten(self):
        nproc = mp.cpu_count()*2

        def worker(tasks, results):
            for i, x in iter(tasks.get, 'STOP'):
                print i, x
                results.put(i, self.get_dsets(x))

        tasks   = mp.Queue()
        results = mp.Queue()
        manager = mp.Manager()
        lx      = manager.list()

        for i, out in enumerate(self.listinc):
            tasks.put((i, out))

        for i in range(nproc):
            mp.Process(target=worker, args=(tasks, results)).start()

        for i in range(len(self.listinc)):
            j, res = results.get()
            lx.append(res)

        for i in range(nproc):
            tasks.put('STOP')

I tried different things (including, like I did in this simple example, the use of a manager to retrieve the data) but I always get a TypeError: an integer is required.

I do not use ctypes array because I don't really require to have shared arrays (I just want to retrieve my data) and after retrieving the data, I want to play with it with NumPy.

Any thought, hint or help would be highly appreciated!

Edit: The complete error I get is the following:

Process Process-341:
Traceback (most recent call last):
  File "/usr/lib/python2.7/multiprocessing/process.py", line 258, in _bootstrap
    self.run()
  File "/usr/lib/python2.7/multiprocessing/process.py", line 114, in run
    self._target(*self._args, **self._kwargs)
  File "/home/toto/test/rd_para.py", line 81, in worker
    results.put(i, self.get_dsets(x))
  File "/usr/lib/python2.7/multiprocessing/queues.py", line 101, in put
    if not self._sem.acquire(block, timeout):
TypeError: an integer is required
share|improve this question
    
You might try simplifying a bit. In particular, your entire "flatten" function could be replaced by a call to multiprocessing's map with "worker" as the function. If you still get errors, a stack trace might be useful. –  seandavi Dec 4 '12 at 13:35
    
Perhaps overly simple, but have you tried printing the type of i in your print i, x line (unfortunately, you don't show us the output of the print statement)? –  Evert Dec 4 '12 at 15:25
    
Also, reading up on the iter documentation, I can see another problem: iter stops if tasks.get() return value is equal to the sentinel ('STOP'), but your for loop shows that you expect tasks.get() to return 2 values (i, x), not a single string. So unless I misunderstand, 'STOP' will never equal anything from tasks.get(), causing iter to proceed endlessly (and probably causing bad things in the end). –  Evert Dec 4 '12 at 15:26
    
At least before it reaches the 'STOP', the print returns me what I expect (the integer i, and the list containing listf[i] (the string corresponding to the file to read) and the two integers nx and ny). I didn't thought of the problem you mentioned relative to iter; I will try to correct that as soon as possible! Thanks. –  MBR Dec 4 '12 at 21:56
    
I tried but it doesn't change the problem. Actually (I forgot to say it) I have one error per task. If I try to print what results give me it fails, so I guess the problem is due to the results.put(). By the way, I checked and type(i) is int. –  MBR Dec 5 '12 at 9:23

1 Answer 1

up vote 0 down vote accepted

The answer was actually very simple...

In the worker, since it is a tuple that I retrieve, i can't do:

result.put(i, self.get_dsets(x))

but instead I have to do:

result.put((i, self.get_dsets(x)))

which then works perfectly well.

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