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I have an array and want to change some of the elements if they are negative (could be any boolean condition), however I also want to know if my code did that.

Currently I have

Mat = #some source
Check = Mat < 0
Check_flag = Check.sum()

if check_flag != 0:
    Mat[Check] = 0 #reset those elements
    logger = logger + '\n This Mat needed to be fixed' #or some over logging method

This may be the best method, but it feels somehow too 'LBYL' to be pythonic - also I typically deal with array in excess of 1e6 elements - and then loop - so I'm a little worried about the performance implications of performing the check twice (once when the 'Check' array is created - and then again when summing up over all elements just to see if one of them was a 'true').

Does anyone know of a better (more efficient) way of doing this?

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As a side note, variable names should be lowercase in python, and class name have the first letter in uppercase. It is far more easier for others to read your code if you roughly follow the PEP8 indications. –  J. Martinot-Lagarde Aug 27 '13 at 15:29
I've generally been using capitals for the matrices (/numpy arrays) in this application - but I take your point that it's good practice to keep things consistent with agreed Standards. @J.Martinot-Lagarde –  CastleH Aug 27 '13 at 16:06
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1 Answer

up vote 3 down vote accepted

If you just want to keep the elements >=0, you should use np.clip:

np.clip(Mat, 0, np.inf, out=Mat)

Another way to do it more efficiently is:

Mat[ Mat<0 ] = 0

In both cases you are dropping the if statement, in case you have to keep it, you can use np.any which will return True if any element in Check has a True value, avoiding the sum.

Check = Mat<0
if np.any(Check):
    Mat[Check] = 0
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np.clip is a lot faster if you want to restrict values, especially if you do it in place. You can use np.inf as an upper bound. –  Ophion Aug 27 '13 at 12:48
@Ophion thank you, I've just edited the answer... np.inf is far more elegant –  Saullo Castro Aug 27 '13 at 12:49
I think the np.any() looks like what I need, as I want to do other things as well 'if and only if' I had to remove negatives. –  CastleH Aug 27 '13 at 16:07
@CastleH great... later you can compare if there will be a performance gain against your current solution... don't forget to accept the answer if you think if fits your needs ;) –  Saullo Castro Aug 27 '13 at 16:10
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