4

In the following code:

@profile
def do():

    import random
    import numpy as np

    image = np.memmap('image.np', mode='w+', dtype=np.float32, shape=(10000, 10000))

    print("Before assignment")

    x = random.uniform(1000, 9000)
    y = random.uniform(1000, 9000)
    imin = int(x) - 128
    imax = int(x) + 128
    jmin = int(y) - 128
    jmax = int(y) + 128
    data = np.random.random((256,256))
    image[imin:imax, jmin:jmax] = image[imin:imax, jmin:jmax] + data

    del x, y, imin, imax, jmin, jmax, data

    print("After assignment")

do()

The memory used at the second print statement is increased compared to at the end of the first print statement - here's the memory_profiler output:

Line #    Mem usage    Increment   Line Contents
================================================
     1                             @profile
     2                             def do():
     3    10.207 MB     0.000 MB   
     4    10.734 MB     0.527 MB       import random
     5    21.066 MB    10.332 MB       import numpy as np
     6                             
     7    21.105 MB     0.039 MB       image = np.memmap('image.np', mode='w+', dtype=np.float32, shape=(10000, 10000))
     8                             
     9    21.109 MB     0.004 MB       print("Before assignment")
    10                             
    11    21.109 MB     0.000 MB       x = random.uniform(1000, 9000)
    12    21.109 MB     0.000 MB       y = random.uniform(1000, 9000)
    13    21.109 MB     0.000 MB       imin = int(x) - 128
    14    21.109 MB     0.000 MB       imax = int(x) + 128
    15    21.113 MB     0.004 MB       jmin = int(y) - 128
    16    21.113 MB     0.000 MB       jmax = int(y) + 128
    17    21.625 MB     0.512 MB       data = np.random.random((256,256))
    18    23.574 MB     1.949 MB       image[imin:imax, jmin:jmax] = image[imin:imax, jmin:jmax] + data
    19                             
    20    23.574 MB     0.000 MB       del x, y, imin, imax, jmin, jmax, data
    21                             
    22    23.574 MB     0.000 MB       print("After assigment")

The RAM has increased from 21.109Mb to 23.574Mb. This is causing issues if I put that block of code in a loop:

Line #    Mem usage    Increment   Line Contents
================================================
     1                             @profile
     2                             def do():
     3    10.207 MB     0.000 MB   
     4    10.734 MB     0.527 MB       import random
     5    21.066 MB    10.332 MB       import numpy as np
     6                             
     7    21.105 MB     0.039 MB       image = np.memmap('image.np', mode='w+', dtype=np.float32, shape=(10000, 10000))
     8                             
     9    21.109 MB     0.004 MB       print("Before assignment")
    10                             
    11   292.879 MB   271.770 MB       for i in range(1000):
    12                             
    13   292.879 MB     0.000 MB           x = random.uniform(1000, 9000)
    14   292.879 MB     0.000 MB           y = random.uniform(1000, 9000)
    15   292.879 MB     0.000 MB           imin = int(x) - 128
    16   292.879 MB     0.000 MB           imax = int(x) + 128
    17   292.879 MB     0.000 MB           jmin = int(y) - 128
    18   292.879 MB     0.000 MB           jmax = int(y) + 128
    19   292.879 MB     0.000 MB           data = np.random.random((256,256))
    20   292.879 MB     0.000 MB           image[imin:imax, jmin:jmax] = image[imin:imax, jmin:jmax] + data
    21                             
    22   292.879 MB     0.000 MB           del x, y, imin, imax, jmin, jmax, data
    23                             
    24   292.879 MB     0.000 MB       print("After assignment")

and the RAM used will increase at each iteration. Is there any way to avoid this issue? Is it a Numpy bug or am I doing something wrong?

EDIT: this is on MacOS X, and I see the issue with Python 2.7 and 3.2, with Numpy 1.6.2 and above (including dev version).

EDIT 2: I am also seeing the issue on Linux.

2 Answers 2

1

My guess is that numpy is writing the data to a buffer first, and only later to the file. Probably for performance reasons.

I did some tests and after your assignment line, the file image.np did not change. The file only changed after I deleted the object image, or did a image.flush(). If memory is paramount, you can try putting a image.flush() in your loop to see if it fixes the problem.

0

For optimisation reasons, the data may not be written from np.memmap until the destructor for image is called. You can avoid this by opening image as copy-on-write:

image = np.memmap('image.np', mode='c', dtype=np.float32, shape=(10000, 10000))

or you could call del image and then re-open once in every loop - but that doesn't sound like a good idea.

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