11

For testing purposes, I'd like to create a M by N numpy array with c randomly placed NaNs

import numpy as np

M = 10;
N = 5;
c = 15;
A = np.random.randn(M,N)

A[mask] = np.nan

I am having problems in creating a mask with c true elements, or maybe this can be done with indices directly?

10

You can use np.random.choice with the optional replace=False for random selection without replacement and use those on a flattened version of A (done with .ravel()), like so -

A.ravel()[np.random.choice(A.size, c, replace=False)] = np.nan

Sample run -

In [100]: A
Out[100]: 
array([[-0.35365726,  0.26754527, -0.44985524, -1.29520237,  2.01505444],
       [ 0.01319146,  0.65150356, -2.32054478,  0.40924753,  0.24761671],
       [ 0.3014714 , -0.80688589, -2.61431163,  0.07787956,  1.23381951],
       [-1.70725777,  0.07856845, -1.04354202, -0.68904925,  1.07161002],
       [-1.08061614,  1.17728247, -1.5913516 , -1.87601976,  1.14655867],
       [ 1.12542853, -0.26290025, -1.0371326 ,  0.53019033, -1.20766258],
       [ 1.00692277,  0.171661  , -0.89646634,  1.87619114, -1.04900026],
       [ 0.22238353, -0.6523747 , -0.38951426,  0.78449948, -1.14698869],
       [ 0.58023183,  1.99987331, -0.85938155,  1.4211672 , -0.43369898],
       [-2.15682219, -0.6872121 , -1.28073816, -0.97523148, -2.27967001]])

In [101]: A.ravel()[np.random.choice(A.size, c, replace=False)] = np.nan

In [102]: A
Out[102]: 
array([[        nan,  0.26754527, -0.44985524,         nan,  2.01505444],
       [ 0.01319146,  0.65150356, -2.32054478,         nan,  0.24761671],
       [        nan, -0.80688589,         nan,         nan,  1.23381951],
       [        nan,         nan, -1.04354202, -0.68904925,  1.07161002],
       [-1.08061614,  1.17728247, -1.5913516 ,         nan,  1.14655867],
       [ 1.12542853,         nan, -1.0371326 ,  0.53019033, -1.20766258],
       [        nan,  0.171661  , -0.89646634,         nan,         nan],
       [ 0.22238353, -0.6523747 , -0.38951426,  0.78449948, -1.14698869],
       [ 0.58023183,  1.99987331, -0.85938155,         nan, -0.43369898],
       [-2.15682219, -0.6872121 , -1.28073816, -0.97523148,         nan]])
  • Oh, that's a bit more elegant than my way! – tmdavison Aug 24 '15 at 12:46
  • I guess I can also replace np.random.choice with np.random.randint(0,high=A.size,size=c) for my application (if replacement does not really matter). However, why the array does not stay flat after ravel()? – Oleg Aug 24 '15 at 12:53
  • @OlegKomarov np.random.randint might give you repeated indices, so I don't think that would work in your case. Regarding the .ravel() thing, it's a view only, so it's not exactly flattening in memory. So, the "flattened view" is indexed and set as NaNs, while being kept as a 2D array. – Divakar Aug 24 '15 at 12:57
  • Thanks, I was reading the docs in the meantime :). As a final curiosity, the docs for ravel() say A copy is made only if needed.. Can it happen that I get a flattened A? – Oleg Aug 24 '15 at 13:03
  • 1
    @OlegKomarov If you are just indexing it, it must stay as a 2D array. You can also use np.put for the same effect. So, the solution with it would be np.put(A,np.random.choice(A.size, c, replace=False),np.nan). – Divakar Aug 24 '15 at 13:14
8

You could use np.random.shuffle on a new array to create your mask:

import numpy as np

M = 10;
N = 5;
c = 15;
A = np.random.randn(M,N)

mask=np.zeros(M*N,dtype=bool)
mask[:c] = True
np.random.shuffle(mask)
mask=mask.reshape(M,N)

A[mask] = np.nan

Which gives:

[[ 0.98244168  0.72121195  0.99291217  0.17035834  0.46987918]
 [ 0.76919975  0.53102064         nan  0.78776918         nan]
 [ 0.50931304  0.91826809  0.52717345         nan         nan]
 [ 0.35445471  0.28048106  0.91922292  0.76091783  0.43256409]
 [ 0.69981284  0.0620876   0.92502572         nan         nan]
 [        nan         nan         nan  0.24466688  0.70259211]
 [ 0.4916004          nan         nan  0.94945378  0.73983538]
 [ 0.89057404  0.4542628          nan  0.95547377         nan]
 [ 0.4071912   0.36066797  0.73169132  0.48217226  0.62607888]
 [ 0.30341337         nan  0.75608859  0.31497997         nan]]
  • 1
    Not bad either yours either! I had to google search for random selection without replacement and found that random_choice had that optional replace argument, just worked! :) – Divakar Aug 24 '15 at 12:58

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.