i designed a simple function to return a mathematical function which can be used to fit experimental data to it. The functions looks pretty much like the following:

def colecole_2(f,*p):
    term1=p[0] * ( 1 - 1 / (1 + numpy.power((0+1j) * 2 * numpy.pi * f * p[1], p[2])))
    term2=p[3] * ( 1 - 1 / (1 + numpy.power((0+1j) * 2 * numpy.pi * f * p[4], p[5])))
    return p[6]*(1-abs( term1+ term2))

Unfortunately I run into troubles with RunTimeWarnings as:

RuntimeWarning: overflow encountered in power
RuntimeWarning: overflow encountered in divide

due to values that are too large or small. I am not able to figure this problem out on my own though. Is there any way to redefine my function so it will pass without warnings?

  • Do you know how to catch exceptions? May 9, 2012 at 15:44
  • @StevenRumbalski, These weren't raised. May 9, 2012 at 15:50
  • @MikeGraham: My bad. I misunderstood your question and missed that they were warnings. May 9, 2012 at 15:57

3 Answers 3


You can use numpy.errstate which is a built-in context manager. This will let you set the err handing to be within the context of the with statement.

import numpy
# warning is not logged here. Perfect for clean unit test output
with numpy.errstate(divide='ignore'):
    numpy.float64(1.0) / 0.0

I had to do this recently when writing unit tests for some legacy python code.


Use numpy.seterr to control what numpy does in this circumstance: http://docs.scipy.org/doc/numpy/reference/generated/numpy.seterr.html

Use the warnings module to control how warnings are or are not presented: http://docs.python.org/library/warnings.html

  • To ignore as given in the warnings.html reference.import warnings def fxn(): warnings.warn("deprecated", DeprecationWarning) with warnings.catch_warnings(): warnings.simplefilter("ignore") fxn()
    – zerocog
    Feb 9, 2017 at 20:05

To go around this, you could increase the precision by modifying the type of the array elements on which you call your function.

For example, if multiplying array a with large numbers as elements by a large floating point number raises an exception

RuntimeWarning: overflow encountered in multiply

then upon specifying the following

a = np.array(a, dtype=np.float128)

no warning occurs.

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