43

If I have an array like

a = np.array([2, 3, -1, -4, 3])

I want to set all the negative elements to zero: [2, 3, 0, 0, 3]. How to do it with numpy without an explicit for? I need to use the modified a in a computation, for example

c = a * b

where b is another array with the same length of the original a

Conclusion

import numpy as np
from time import time

a = np.random.uniform(-1, 1, 20000000)
t = time(); b = np.where(a>0, a, 0); print ("1. ", time() - t)
a = np.random.uniform(-1, 1, 20000000)
t = time(); b = a.clip(min=0); print ("2. ", time() - t)
a = np.random.uniform(-1, 1, 20000000)
t = time(); a[a < 0] = 0; print ("3. ", time() - t)
a = np.random.uniform(-1, 1, 20000000)
t = time(); a[np.where(a<0)] = 0; print ("4. ", time() - t)
a = np.random.uniform(-1, 1, 20000000)
t = time(); b = [max(x, 0) for x in a]; print ("5. ", time() - t)
  1. 1.38629984856
  2. 0.516846179962 <- faster a.clip(min=0);
  3. 0.615426063538
  4. 0.944557905197
  5. 51.7364809513
  • 1
    On my machine a[a < 0] = 0 is significantly faster than a.clip(min=0). – user545424 Jul 25 '12 at 3:50
82
a = a.clip(min=0)
  • better solution? – Ruggero Turra Aug 2 '10 at 21:25
  • It might be. You'll have to test them to see which is fastest. I don't use numpy a lot, so I'm not sure, though numpy is supposed to be very well optimized, so it could well outperform my answers. – g.d.d.c Aug 2 '10 at 21:27
  • 1
    wiso, I think you found the fastest way. %timeit a.clip(min=0,out=a) took 5.65 microseconds per loop. %timeit np.where(a>0,a,0) took 24 microseconds per loop, %timeit a[a<0]=0 took 11.6 microseconds per loop. – unutbu Aug 3 '10 at 0:28
  • 2
    One can also use np.clip(lst, a_min=0, a_max=None) for python lists. – Eric Blum Aug 14 '17 at 15:45
13

I would do this:

a[a < 0] = 0

If you want to keep the original a and only set the negative elements to zero in a copy, you can copy the array first:

c = a.copy()
c[c < 0] = 0
  • 2
    It won't work with multiple dimensions. – Dmitry Sep 24 '17 at 6:07
10

Another trick is to use multiplication. This actually seems to be much faster than every other method here. For example

b = a*(a>0) # copies data

or

a *= (a>0) # in-place zero-ing

I ran tests with timeit, pre-calculating the the < and > because some of these modify in-place and that would greatly effect results. In all cases a was np.random.uniform(-1, 1, 20000000) but with negatives already set to 0 but L = a < 0 and G = a > 0 before a was changed. The clip is relatively negatively impacted since it doesn't get to use L or G (however calculating those on the same machine took only 17ms each, so it is not the major cause of speed difference).

%timeit b = np.where(G, a, 0)  # 132ms  copies
%timeit b = a.clip(min=0)      # 165ms  copies
%timeit a[L] = 0               # 158ms  in-place
%timeit a[np.where(L)] = 0     # 122ms  in-place
%timeit b = a*G                # 87.4ms copies
%timeit np.multiply(a,G,a)     # 40.1ms in-place (normal code would use `a*=G`)

When choosing to penalize the in-place methods instead of clip, the following timings come up:

%timeit b = np.where(a>0, a, 0)             # 152ms
%timeit b = a.clip(min=0)                   # 165ms
%timeit b = a.copy(); b[a<0] = 0            # 231ms
%timeit b = a.copy(); b[np.where(a<0)] = 0  # 205ms
%timeit b = a*(a>0)                         # 108ms
%timeit b = a.copy(); b*=a>0                # 121ms

Non in-place methods are penalized by 20ms (the time required to calculate a>0 or a<0) and the in-place methods are penalize 73-83 ms (so it takes about 53-63ms to do b.copy()).

Overall the multiplication methods are much faster than clip. If not in-place, it is 1.5x faster. If you can do it in-place then it is 2.75x faster.

  • To use precomputed quantities means cheating – Ruggero Turra Sep 23 '15 at 17:43
  • But they all (but one) use pre-computed values. And the calculations that were pre-computed are fast, taking 17ms on the same machine under same conditions, so they aren't the cause of the speed difference. And if I didn't pre-compute them then the in-place methods would look way faster since after the first attempt there would be nothing to zero-out. – coderforlife Sep 23 '15 at 17:46
  • let me show a fair comparison – Ruggero Turra Sep 23 '15 at 17:49
  • @RuggeroTurra Added more comparisons. I hope you think this is more fair. Instead of penalizing clip I penalized the in-place methods. It does show that multiplication is still much faster than clip. – coderforlife Oct 2 '15 at 22:36
  • On my machine: timeit.timeit('a *= (a>0)', number = 100000, setup='import numpy as np; a = np.random.uniform(-1,1,90000); a=a.reshape((300,300))') takes 9.1 seconds (a=a*(a>0) takes 10.1), while timeit.timeit('a = a.clip(min=0)', number = 100000, setup='import numpy as np; a = np.random.uniform(-1,1,90000); a=a.reshape((300,300))') only takes 4.3 s. With a = np.random.uniform(-1,1,900000000); a=a.reshape((30000,30000)) as setup, a single execution takes 1.79s, 3.44s and 2.18s resp. Conclusion: Use a.clip for small arrays and a*=(a<0) for large arrays, if in-place is ok – Bernhard Aug 10 '16 at 11:15
5

Use where

a[numpy.where(a<0)] = 0
0

And just for the sake of comprehensiveness, I would like to add the use of the Heaviside function (or a step function) to achieve a similar outcome as follows:

Let say for continuity we have

a = np.array([2, 3, -1, -4, 3])

Then using a step function np.heaviside() one can try

b = a * np.heaviside(a, 0)

Note something interesting in this operation because the negative signs are preserved! Not very ideal for most situations I would say.

This can then be corrected for by

b = abs(b)

So this is probably a rather long way to do it without invoking some loop.

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