# How to implement matlab's ismember(A, b) with A being a numpy ndarray and b being a list

What is the most efficient way to implement matlab's ismember(A, b) in python where in A is any numpy ndarray and b is a list of values. It should return a mask as a boolean ndarray of the same shape as A where in an element is True if the corresponding value in A is in the list of values in b.

I want to replace all elements of A with value in list B with something.

I expected `A[A in B] = 0` to work but it throws the following error:

ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all()

If an implementation of an equivalent of `ismember` is there then the following would do what I need:

``````A[ismember(A, b)] = 0
``````

Note: I don't want solutions involving looping through all elements of A in python.

Based on the answer of ajcr, one solution is:

``````import numpy as np

def ismember(A, b):
return np.in1d(A, b).reshape(A.shape)
``````

But this is quite slow and runs out of memory. For my case, A is an image as big as 512 x 512 x 1200. b has about 1000 elements.

You may be looking for `np.in1d`:

``````>>> A = np.arange(9)
>>> B = [4, 6, 7]
>>> np.in1d(A, B)
array([False, False, False, False,  True, False,  True,  True, False])
``````

Note that for multidimensional arrays `A`, the input is flattened so you'll need to reshape the boolean array:

``````>>> A = np.arange(9).reshape(3, 3)
>>> np.in1d(A, B).reshape(A.shape)
array([[False, False, False],
[False,  True, False],
[ True,  True, False]], dtype=bool)
``````
• Bingo! Thanks! Paralelly i arrived at def ismember(A, b): return np.in1d(A.flatten(), b).reshape(A.shape) – cdeepakroy Mar 12 '15 at 17:02
• It is very slow and runs out of memory for A of size 512 x 512 x 1200 and b of size 3800. I see some sorting going on inside in1d – cdeepakroy Mar 12 '15 at 17:12
• I think that's one of the inevitabilities of working with very large NumPy arrays - there isn't an obvious solution to this problem which avoids looping over the array. If memory is a problem, you could consider trying other non-NumPy data structures or using memory-mapped arrays... – Alex Riley Mar 12 '15 at 17:24