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I have a simple class ImageData, to create some Images using Shepard Interpolation. I have to generate more then 50 images, so I though I could parallelized this. I've tried this (I've never worked with multiprocessing before, so, sorry if I made something stupid), already applying what @Alfe taught me:

class ImageData(object):

    def __init__(self, width, height, range_min=-1, range_max=1):
        """
        The ImageData constructor
        """
        self.width = width
        self.height = height
        #The values range each pixel can assume
        self.range_min = range_min
        self.range_max = range_max
        self.data = []
        for i in range(width):
            self.data.append([0] * height)

    def shepard_interpolation(self, queue, seeds=10):
        """
        Perform a Shepard shepard_interpolation
        :param queue
        :param seeds
        """
        points = []
        f = []
        for s in range(seeds):
            # Generate a pixel position
            pos_x = random.randrange(self.width)
            pos_y = random.randrange(self.height)

            # Save the f(x,y) data
            x = Utils.translate_range(pos_x, 0, self.width, self.range_min, self.range_max)
            y = Utils.translate_range(pos_y, 0, self.height, self.range_min, self.range_max)
            z = Utils.function(x, y)
            points.append([x, y])
            f.append(z)

        for i in range(self.width):
            xt = (Utils.translate_range(i, 0, self.width, self.range_min, self.range_max))
            for j in range(self.height):
                yt = (Utils.translate_range(j, 0, self.height, self.range_min, self.range_max))
                self.data[i][j] = Utils.shepard_euclidian(points, f, [xt, yt], 3)
        queue.put(self)


if __name__ == '__main__':
    q = Queue()
    processes = [Process(target=ImageData.shepard_interpolation, args=(ImageData(50, 50), q,))    for _ in range(2)]
    for process in processes:
        process.start()
    for process in processes:
        process.join()

    print "Finish"

The problem is 'cause when I call passing range(2), everything works, but when I try with range(3), it never ends (my code never reaches the 'Finish' print) and I don't know why. And, in my case, I have to generate more then 50 images, and I don't know how I could achieve this. I have a processor Core 2 Duo.

EDIT:

I tried to comment the queue.put(self) and it works. But I have to receive the result, and this is the only way that I know so far to achieve this. I also don't get why with two processes it works. Any idea about what I could do to solve this? I guess the erros is in shepard_euclidian method. But I couldn't find it until now. This is this function:

def shepard_euclidian(x, z, p, u):
    n = len(x)
    d = [0.0] * n
    for i in range(n-1):
        pi = x[i]
        d[i] = math.pow(math.hypot(pi[0]-p[0], pi[1]-p[1]), u)
    w = [0.0] * n
    sw = 0.0
    for i in range(n-1):
        w[i] = 1.0
        for k in range(n-1):
            if i != k:
                w[i] *= d[k]
        sw += w[i]
    for i in range(len(w)-1):
        if sw != 0.0:
            w[i] /= sw
        else:
            w[i] = 0.0
    c = 0.0
    for i in range(n):
        c += (w[i] * z[i])
    return c

When I try this:

for i in range(self.width):
        xt = (Uts.Utils.translate_range(i, 0, self.width, self.range_min, self.range_max))
        for j in range(self.height):
            yt = (Uts.Utils.translate_range(j, 0, self.height, self.range_min, self.range_max))
            data = Uts.Utils.shepard_euclidian(points, f, [xt, yt], 3)
    queue.put(data)

It works. But this is not what I want.

And if I try this:

   aux = ImageData(50, 50)
   for i in range(self.width):
        xt = (Uts.Utils.translate_range(i, 0, self.width, self.range_min, self.range_max))
        for j in range(self.height):
            yt = (Uts.Utils.translate_range(j, 0, self.height, self.range_min, self.range_max))
            aux[x][y] = Uts.Utils.shepard_euclidian(points, f, [xt, yt], 3)
   self.data = aux
   queue.put(self.data)

It doesn't work. I really don't know what to do.

Any help would be appreciated. Thank you in advance.

share|improve this question
up vote 1 down vote accepted

You want to memorize all processes (ugly called k in your look) and join all of them in a second loop. Maybe this solves your issues at hand.

And please use a better name:

processes = [
  Process(target=ImageData.shepard_interpolation, args=(ImageData(50, 50), q,))
  for _ in range(3) ]
for process in processes:
    process.start()
for process in processes:
    process.join()

EDIT:

I've got a minimal version of your code which works without problems on my machine:

import os
from multiprocessing import *

class ImageData(object):
    def __init__(self, a, b):
        pass

    def shepard_interpolation(self, queue, seeds=10):
        self.pid = os.getpid()
        print self.pid, "queue put"
        queue.put(self)

if __name__ == '__main__':
    q = Queue()
    processes = [ Process(
      target=ImageData.shepard_interpolation, args=(ImageData(50, 50), q))
        for _ in range(10) ]
    for process in processes:
        process.start()
    results = []
    for process in processes:  # just to have the correct amount of results
        results.append(q.get())
    print '---------Out--------'
    for process in processes:
        process.join()
    print [ result.pid for result in results ]
share|improve this answer
    
You should try to find out where the processes hang. Introduce a bunch of print statements, I propose. Each should print os.getpid() and the current line number (or other descriptive statements). Maybe you get enlightened when you find out at which statement the children and the parent wait for something. – Alfe Jan 8 '14 at 11:35
    
Yeah, I discovered that all processes get at the last line of the interpolation method. But it seems to me that not all of them get to the join statement. Sorry if this is idiot, this is the first time that I try to work with multiprocessing and to learn it. – pceccon Jan 8 '14 at 11:47
1  
I've reduced your code (there is a lot in there which is not related to the multiprocessing) to a minimal example on ho to do it, and I do not get any problems. I will add my minimal code in my answer above. Maybe you can first ensure that my minimal example also runs flawlessly on your machine, and then expand it step by step with your real production code to see when the problem appears. – Alfe Jan 8 '14 at 12:47
1  
Everything worked pretty well. I'll work on it now to see what I'm doing wrong. Thank you! xD – pceccon Jan 8 '14 at 13:03
1  
It could be that the queue is limited in size and so the putting of the value halts the child until the parent has taken sth from the queue and thus made room for more putting. Seems reasonable. – Alfe Jan 9 '14 at 10:54

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