# Replicating the indices result of Matlab's ISMEMBER function in NumPy?

I have been racking my brain for a solution that is along the lines of this older question. I have been trying to find a Python code pattern that replicates the indices result. For example:

``````A = [3;4;4;3;6]
B = [2;5;2;6;3;2;2;5]
[tf ix] = ismember(A,B)
>> A(tf)

ans =

3
3
6
>> B(ix(tf))

ans =

3
3
6
``````

What this allows me to do is if there is an array C ordered the same way as B I can now appropriately insert the values of C into a new array D that is ordered the same way as A. I do this mapping of data a lot! I would love for this to work for various data types like strings and datetimes in particular. It seems that numpy's in1d get's me half way there. I'm also open to other Pythonic ideas as well!

``````D(tf) = C(ix(tf))
``````

Thank you!

-

``````import numpy as np

A = np.array([3,4,4,3,6])
B = np.array([2,5,2,6,3,6,2,2,5])

def ismember(a, b):
# tf = np.in1d(a,b) # for newer versions of numpy
tf = np.array([i in b for i in a])
u = np.unique(a[tf])
index = np.array([(np.where(b == i))[0][-1] if t else 0 for i,t in zip(a,tf)])
return tf, index

tf,ix=ismember(A,B)
print(tf)
# [ True False False  True  True]
print(ix)
# [4 0 0 4 5]
print(A[tf])
# [3 3 6]
print(B[ix[tf]])
# [3 3 6]
``````
-
There you go! I didn't have the time to continue working on my answer. –  Benjamin Sep 16 '11 at 22:02
thank you! This totally works. Also learned that np.in1d doesn't work with datetime objects. –  Con Mai Sep 18 '11 at 2:29
@ConMai: consider marking this as accepted answer.. –  Amro Sep 18 '11 at 16:09