I have identified a memory leak in matplotlib.imshow. I am aware of similar questions (like Excessive memory usage in Matplotlib imshow) and I've read the related ironpython thread (https://github.com/ipython/ipython/issues/1623/).
I believe that the code below should (in the absence of a memory leak) consume a constant amount of memory while running. Instead, it grows with each iteration.
I'm running the most recent version I can find (matplotlib-1.2.0rc3.win32-py2.7 and numpy-1.7.0.win32-py2.7), and the problem remains. I'm not keeping the return value of imshow, and in fact I'm explicitly deleting it, so I think the note in IronPython discussion doesn't apply. The behavior is identical with and without the explicit assignment-and-del inside the loop.
I see the same behavior with matplotlib-1.2.0.win32-py2.7.
Each iteration seems to hang onto whatever memory was needed for the image. I've chosen a large (1024x1024) random matrix to make the size of each image interestingly large.
I'm running Win7 pro with 2G of physical RAM, 32-bit python2.7.3 (hence the memory error), and the above numpy and matplotlib packages. The code below fails with a memory error in iteration 440 or so. The windows task manager reports consumption of 1,860,232K when it fails.
Here is code that demonstrates the leak:
IMAGE_SIZE = 1024 import random RANDOM_MATRIX =  for i in range(IMAGE_SIZE): RANDOM_MATRIX.append([random.randint(0, 100) for each in range(IMAGE_SIZE)]) def exercise(aMatrix, aCount): for i in range(aCount): anImage = imshow(aMatrix, origin='lower left', vmin=0, vmax=100) del(anImage) if __name__=='__main__': from pylab import * exercise(RANDOM_MATRIX, 4096)
I can presumably render the image with PIL instead matplotlib. In the absence of a workaround, I do think this is a show-stopper for matplotlib.