When taking the log of a specific column within a numpy array, i.e., logSFROIIdC = np.log(data_dC[:, 9]) the compiler returns the error:

-c:13: RuntimeWarning: divide by zero encountered in log.

Now, I know why this happens, i.e., log(-1) = Math Error.

However, I want to be able to call something or write some code which then skips any value in the array which would cause this error, then ignoring that row altogether. Allowing that data column to be usable again.

I have tried various methods and this is a last resort asking the community.

  • 1
    Just checking, is data_dC[:, 9] the right format? – mu 無 Jul 26 '14 at 15:21
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    This is just a warning, so your program will continue running. If you mind the warning, you can disable it using the warning module. – Sven Marnach Jul 26 '14 at 15:24
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    Excellent. Yes, it is a 9 column array. A large dataset to make many multiple plots. – GCien Jul 26 '14 at 15:31

You can control this behavior with np.seterr. Here's an example.

First, tell numpy to ignore invalid values:

In [4]: old = np.seterr(invalid='ignore')

Now log(-1) doesn't generate a warning:

In [5]: x = np.array([-1.,1])

In [6]: np.log(x)
Out[6]: array([ nan,   0.])

Restore the previous settings:

In [7]: np.seterr(**old)
Out[7]: {'divide': 'warn', 'invalid': 'ignore', 'over': 'warn', 'under': 'ignore'}

And now we get the warning:

In [8]: np.log(x)
/Users/warren/anaconda/bin/ipython:1: RuntimeWarning: invalid value encountered in log
Out[8]: array([ nan,   0.])

There is also a context manager, np.errstate. For example,

In [10]: with np.errstate(invalid='ignore'):
   ....:     y = np.log(x)

In [11]: y
Out[11]: array([ nan,   0.])

You can also use a masked array and NumPy will automatically apply a mask for the invalid values after you perform the np.log() calculation:

a = np.array([1,2,3,0,4,-1,-2])
b = np.log(np.ma.array(a))

# 3.17805383035

Where np.ma.array(a) is creating a masked array with no masked elements. It works because NumPy automatically masks elements that are inf (or any invalid value) in calculations with masked arrays.

Alternatively, you could have created the mask yourself (which I recommend) like:

a = np.ma.array(a, mask=(a<=0))

One hack is to limit the values from being negative in the first place. np.clip to the rescue.

positive_array = np.clip(array, some_small_positive_value, None) to avoid negative values in your array. Though I am not sure if bringing the values close to zero serve your purpose.

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