I have the following array:

import numpy as np
a = np.array(['a', 'b', 'c','a','a','d','e'])
b = np.array(['a','b'])

actual data stored in the arrays are uuids, example:


I would like to search b in a and get the indices:

array([0, 3, 4, 1])

this solution can work for me:

np.nonzero(b[:, None] == a)[1]

but the problem is I'm dealing with huge arrays (15M in the non-unique and 150k in the unique sub-array with str_ type), so for the given operation I would need 1.8TB of memory which I don't have.

any idea how can I solve this issue or workaround the memory restrictions with my own solution?


  • Would they be all one character strings? – Divakar Jul 10 at 9:18
  • no actually its more like long unique identifier: "abd2-ffb3-ffv3-dda1" (something like this) – Andreyn Jul 10 at 9:24
  • So, are all strings of the same length? – Divakar Jul 10 at 9:25
  • yes they are of the same length. Its a uuid – Andreyn Jul 10 at 9:27
  • Also, do you need output in that specific order of array([0, 3, 4, 1]) or would a sorted order array([0, 1, 3, 4]) be okay? – Divakar Jul 10 at 9:28

Since the order of the indices isn't really relevant, you can use np.isin, and then np.flatnonzero on the results to retrieve the indices where the returned array is True:

a = np.array(['a', 'b', 'c','a','a','d','e'])
b = np.array(['a','b'])

# array([0, 1, 3, 4], dtype=int64)

This should be reasonably fast and memory efficient (O(len(a))) unlike the broadcasting approach (O(len(a)*len(b))), even with the array sizes mentioned in the question:

a = np.random.randint(0,15e2,int(15e6))
b = np.random.randint(0,150e3,int(150e3))

%timeit np.flatnonzero(np.isin(a,b))
# 2.58 s ± 28.8 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)
| improve this answer | |

Here's one based on view+lookup -

def map_indices_conststring(a, b):
    a2D = a.view(np.uint8)[::4].reshape(len(a),-1)
    b2D = b.view(np.uint8)[::4].reshape(len(b),-1)
    n = b2D.shape[1]
    lookup = np.zeros(256, dtype=bool)
    mask = np.ones(len(a), dtype=bool)
    for i in range(n):
        lookup[b2D[:,i]] = 1
        mask &= lookup[a2D[:,i]]
    out = np.flatnonzero(mask)
    return out

Sample run -

In [46]: a
array(['a123', 'b232', 'c434', 'b235', 'a123', 'd223', 'b232'],

In [47]: b
Out[47]: array(['a123', 'b232'], dtype='<U4')

In [48]: map_indices_conststring(a, b)
Out[48]: array([0, 1, 4, 6])

Timings on string data with 1.5M non-unique and 15K unique sized string arrays -

In [2]: a = np.random.randint(10000000000,99999999999,(1500000)).astype(str)

In [3]: b = np.unique(np.random.randint(10000000000,99999999999,(15000)).astype(str))

In [4]: %timeit map_indices_conststring(a, b)
266 ms ± 2.63 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)

# @yatu's soln
In [5]: %timeit np.flatnonzero(np.isin(a,b))
1.03 s ± 3.75 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)
| improve this answer | |

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