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Given an index and a size, is there a more efficient way to produce:

import numpy as np
np.array([1.0 if i == index else 0.0 for i in range(size)])
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3 Answers 3

up vote 3 down vote accepted
x = np.zeros(size)
x[index] = 1.0

at least i think thats it...

>>> t = timeit.Timer('np.array([1.0 if i == index else 0.0 for i in range(size)]
)','import numpy as np;size=10000;index=5123')
>>> t.timeit(10)
0.039461429317952934  #original method
>>> t = timeit.Timer('x=np.zeros(size);x[index]=1.0','import numpy as np;size=10
>>> t.timeit(10)
9.4077963240124518e-05 #zeros method
>>> t = timeit.Timer('x=np.eye(1.0,size,index)','import numpy as np;size=10000;i
>>> t.timeit(10)
0.0001398340635319073 #eye method

looks like np.zeros is fastest...

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Same answer! (+1) –  mgilson Aug 15 '12 at 18:47
Interestingly enough, neither of us was consistent with our whitespace around = (I've updated mine). –  mgilson Aug 15 '12 at 18:52
heh there fixed the whitespace :P –  Joran Beasley Aug 15 '12 at 18:56
In [2]: import numpy as np

In [9]: size = 5

In [10]: index = 2

In [11]: np.eye(1,size,index)
Out[11]: array([[ 0.,  0.,  1.,  0.,  0.]])

Hm, unfortunately, using np.eye for this is rather slow:

In [12]: %timeit np.eye(1,size,index)
100000 loops, best of 3: 7.68 us per loop

In [13]: %timeit a = np.zeros(size); a[index] = 1.0
1000000 loops, best of 3: 1.53 us per loop

Wrapping np.zeros(size); a[index] = 1.0 in a function makes only a modest difference, and is still much faster than np.eye:

In [24]: def f(size, index):
   ....:     arr = np.zeros(size)
   ....:     arr[index] = 1.0
   ....:     return arr

In [27]: %timeit f(size, index)
1000000 loops, best of 3: 1.79 us per loop
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neat didnt know about this... –  Joran Beasley Aug 15 '12 at 18:47
Wow. I looked at eye, and skipped over it because the documentation says: "Return a 2-D array with ones on the diagonal and zeros elsewhere." Thanks. –  Neil G Aug 15 '12 at 18:48
Yeah, I thought something like this would be possible, but I'm a little surprised numpy uses eye for this (as the name implies it is the identity matrix and this is definitely not an identity matrix). +1 for a better answer than mine though. –  mgilson Aug 15 '12 at 18:49
@NeilG: Hm, maybe this is not such a good solution. The timeit results show it is 5x slower than mgilson and JoranBeasley's solutions. –  unutbu Aug 15 '12 at 18:50
@unutbu: would you mind comparing it where the other solution is wrapped up in a function that accepts size and index? (I just did, and it is only 2 time slower with my machine). –  Neil G Aug 15 '12 at 18:58

I'm not sure if this is faster, but it's definitely more clear to me.

a = np.zeros(size)
a[index] = 1.0
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hah i beat you by 4 seconds :P (+1) –  Joran Beasley Aug 15 '12 at 18:46

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