I have a 2-D array of values and need to mask certain elements of that array (with indices taken from a list of ~ 100k tuple-pairs) before drawing random samples from the remaining elements without replacement.

I need something that is both quite fast/efficient (hopefully avoiding for loops) and has a small memory footprint because in practice the master array is ~ 20000 x 20000.

For now I'd be content with something like (for illustration):


mask = numpy.where((gxx,gyy) not in set(xys)) # The bit I can't get right

# Now sample the masked array

Fortunately for now I don't need the x,y coordinates of the drawn fluxes - but bonus points if you know an efficient way to do this all in one step (i.e. it would be acceptable for me to identify those coordinates first and then use them to fetch the corresponding master_array values; the illustration above is a shortcut).


Linked questions:

Numpy mask based on if a value is in some other list

Mask numpy array based on index

Implementation of numpy in1d for 2D arrays?


You can do it efficently using sparse coo matrix

from scipy import sparse

coords = zip(*xys)
mask = sparse.coo_matrix((numpy.ones(len(coords[0])), coords ), shape= master_array.shape, dtype=bool)
draws=numpy.random.choice( master_array[~mask.toarray()].flatten(), size=10)
  • 1
    I can't thank you enough for the speedy and elegant solution!
    – jtlz2
    Oct 21 '14 at 12:50
  • Ah - I am trying to avoid any pairs in xys - the third solution has its logic inverted therefore? Is the second OK?
    – jtlz2
    Oct 21 '14 at 13:04
  • 1
    Ah ok, but then you need to invert all of them. And the edits are not anymore valid
    – Gioelelm
    Oct 21 '14 at 13:05

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