I really want to avoid these annoying numpy warnings since I have to deal with a lot of NaNs. I know this is usually done with seterr, but for some reason here it does not work:

import numpy as np
data = np.random.random(100000).reshape(10, 100, 100) * np.nan
np.nanmedian(data, axis=[1, 2])

It gives me a runtime warning even though I set numpy to ignore all errors...any help?

Edit (this is the warning that is recieved):

/opt/local/Library/Frameworks/Python.framework/Versions/3.4/lib/python3.4/site-p‌​ackages/numpy/lib/nanfunctions.py:612: RuntimeWarning: All-NaN slice encountered warnings.warn("All-NaN slice encountered", RuntimeWarning)

  • this should be also in seterr like other errors, if some code can handle missing values and there is no straightforward way to not have All-NnN slices (like if it is some sort of downsampling among non-missing values) it should just return nan and be quite. – dashesy Jun 13 '15 at 23:56

Warnings can often be useful and in most cases I wouldn't advise this, but you can always make use of the Warnings module to ignore all warnings with filterwarnings:


Should you want to suppress uniquely your particular error, you could specify it with:

with warnings.catch_warnings():
    warnings.filterwarnings('ignore', r'All-NaN (slice|axis) encountered')
  • 12
    Thanks for showing how. I understand your reason for recommending against it. OTOH lately Python package authors' warnings are getting out of hand. If one uses numpy, tensorflow and the like it is common to have thousands of lines of warnings. This is a bad situation. If the warning become too onerous people just ignore them or suppress them - not least because they make finding actual error messages while developing very very very difficult. – Eric M Oct 7 '19 at 16:11

The warnings controlled by seterr() are those issued by the numpy ufunc machinery; e.g. when A / B creates a NaN in the C code that implements the division, say because there was an inf/inf somewhere in those arrays. Other numpy code may issue their own warnings for other reasons. In this case, you are using one of the NaN-ignoring reduction functions, like nanmin() or the like. You are passing it an array that contains all NaNs, or at least all NaNs along an axis that you requested the reduction along. Since the usual reason one uses nanmin() is to not get another NaN out, nanmin() will issue a warning that it has no choice but to give you a NaN. This goes directly to the standard library warnings machinery and not the numpy ufunc error control machinery since it isn't a ufunc and this production of a NaN isn't the same as what seterr(invalid=...) otherwise deals with.

  • I have a code that can handle missing data (nan) so I would like to have the warning ignored only for the input to that function, but not silence it globally. seterr is great because one can temporarily silence something, unfortunately these new nan errors are not tune-able with it. – dashesy Jun 13 '15 at 23:48
  • 1
    You can also temporarily silence these warnings as well with the standard library warnings machinery. – Robert Kern Jun 14 '15 at 15:43
  • 1
    Is there any difference between the np.warnings version and the python warnings machinery? – nedlrichards Apr 19 '19 at 17:08
  • 2
    numpy.warnings is just an accidental alias to the stdlib warnings module. numpy/__init__.py imports it to use it but neglects to delete it from its namespace. Don't use numpy.warnings; just import warnings. – Robert Kern Jun 8 '19 at 0:20

You may want to avoid suppressing the warning, because numpy raises this for a good reason. If you want to clean up your output, maybe handle it by explicitly returning a pre-defined value when your array is all nan.

def clean_nanmedian(s):
    if np.all(np.isnan(s)):
        return np.nan
    return np.nanmedian(s)

Also, keep in mind that this RuntimeWarning is raised only the first time that this happens in your run-time.

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