# Vector way of populating numpy array

I have some binary string `s` like `001010`. I want to convert it to numpy array `a` where `a[i] = np.array([[1], [0]])` if `s[i] == '0'` and to `np.array([[0], [1]])` otherwise.

So I wrote such code:

``````a = np.empty([len(s), 2, 1])
for i, char in enumerate(s):
if char == '0':
a[i] = np.array([[1], [0]])
elif char == '1':
a[i] = np.array([[0], [1]])
``````

Can it be rewritten to a vectorized form without for-loop in a more numpy way?

My expected output looks like:

``````array([[[1.],
[0.]],

[[1.],
[0.]],

[[0.],
[1.]],

[[1.],
[0.]],

[[0.],
[1.]],

[[1.],
[0.]]])
``````

A simple way to do so is by creating a `list` from the string, and then turn this list to a `np.array` of integers by specifying `dtype=int`:

``````s = '001010'

a = np.array(list(s), dtype=int)
# array([0, 0, 1, 0, 1, 0])
``````

And then use `np.where` in order to select among `np.array([[1], [0]])` or `np.array([[0], [1]])` according to the values in `a`:

``````np.where(a==0, np.array([[1], [0]]), np.array([[0], [1]])).T[:,:,None]
array([[[1],
[0]],

[[1],
[0]],

[[0],
[1]],

[[1],
[0]],

[[0],
[1]],

[[1],
[0]]])
``````
• Actually OP wanted an array of arrays, but still +1 because I think, this is what he actually meant – user8408080 Mar 1 at 10:49
• Hmm not anymore after seing OPs update. Willl have to change – yatu Mar 1 at 10:50
• sorry, could you look to updated version of the question? – Roma Karageorgievich Mar 1 at 10:51
• Updated the answer @RomaKarageorgievich. Let me know if this is what you want. Otherwise please share expected output – yatu Mar 1 at 10:54
• @RomaKarageorgievich updated to match expected output – yatu Mar 1 at 11:02

Approach #1 : Here's one with NumPy char array -

``````sa = np.frombuffer(s,dtype='S1')
out = np.where(sa[:,None,None]=='0',[[1],[0]],[[0],[1]])
``````

Approach #2 : One more as one-liner -

``````((np.frombuffer(s,dtype=np.uint8)[:,None]==[48,49])[...,None]).astype(float)
``````

Approach #3 : Final one focused entirely on performance -

``````a = np.zeros([len(s), 2, 1])
idx = np.frombuffer(s,dtype=np.uint8)-48
a[np.arange(len(idx)),idx] = 1
``````

Timings on a string of `100000` chars -

``````In [2]: np.random.seed(0)

In [3]: s = ''.join(map(str,np.random.randint(0,2,(100000)).tolist()))

# @yatu's soln
In [4]: %%timeit
...: a = np.array(list(s), dtype=int)
...: np.where(a==0, np.array([[1], [0]]), np.array([[0], [1]])).T[:,:,None]
10 loops, best of 3: 36.3 ms per loop

# App#1 from this post
In [5]: %%timeit
...: sa = np.frombuffer(s,dtype='S1')
...: out = np.where(sa[:,None,None]=='0',[[1],[0]],[[0],[1]])
100 loops, best of 3: 3.56 ms per loop

# App#2 from this post
In [6]: %timeit ((np.frombuffer(s,dtype=np.uint8)[:,None]==[48,49])[...,None]).astype(float)
1000 loops, best of 3: 1.81 ms per loop

# App#3 from this post
In [7]: %%timeit
...: a = np.zeros([len(s), 2, 1])
...: idx = np.frombuffer(s,dtype=np.uint8)-48
...: a[np.arange(len(idx)),idx] = 1
1000 loops, best of 3: 1.81 ms per loop
``````