I experienced a RuntimeWarning

 RuntimeWarning: invalid value encountered in less_equal

Generated by this line of code of mine:

center_dists[j] <= center_dists[i]

Both center_dists[j] and center_dists[i] are numpy arrays

What might be the cause of this warning ?


That's most likely happening because of a np.nan somewhere in the inputs involved. An example of it is shown below -

In [1]: A = np.array([4, 2, 1])

In [2]: B = np.array([2, 2, np.nan])

In [3]: A<=B
RuntimeWarning: invalid value encountered in less_equal
Out[3]: array([False,  True, False], dtype=bool)

For all those comparisons involving np.nan, it would output False. Let's confirm it for a broadcasted comparison. Here's a sample -

In [1]: A = np.array([4, 2, 1])

In [2]: B = np.array([2, 2, np.nan])

In [3]: A[:,None] <= B
RuntimeWarning: invalid value encountered in less_equal
array([[False, False, False],
       [ True,  True, False],
       [ True,  True, False]], dtype=bool)

Please notice the third column in the output which corresponds to the comparison involving third element np.nan in B and that results in all False values.

  • 3
    How can I avoid printing the RuntimeWarning? I'm doing a lot comparison that has nan, so I don't want to print them all....
    – LWZ
    Jul 19 '16 at 18:14
  • @LWZ You don't want to print the RuntimeWarning or you want to tell which comparisons were because of comparing with NaNs?
    – Divakar
    Jul 19 '16 at 18:23
  • I don't want to print the RuntimeWarning.
    – LWZ
    Jul 19 '16 at 18:30
  • 14
    @LWZ Use this : warnings.filterwarnings("ignore",category =RuntimeWarning) at the top of the script?
    – Divakar
    Jul 19 '16 at 18:31
  • 2
    Re: warnings.filterwarnings(), using with np.errstate() is usually better. For details, see my answer. Feb 5 '19 at 15:49

As a follow-up to Divakar's answer and his comment on how to suppress the RuntimeWarning, a safer way is suppressing them only locally using with np.errstate() (docs): it is good to generally be alerted when comparisons to np.nan yield False, and ignore the warning only when this is really what is intended. Here for the OP's example:

with np.errstate(invalid='ignore'):
  center_dists[j] <= center_dists[i]

Upon exiting the with block, error handling is reset to what it was before.

Instead of invalid value encountered, one can also ignore all errors by passing all='ignore'. Interestingly, this is missing from the kwargs in the docs for np.errstate(), but not in the ones for np.seterr(). (Seems like a small bug in the np.errstate() docs.)

  • 1
    A perfect solution, thank you. I usually keep nans on purpose because I know they will eventually fail all comparisons and get masked.
    – Guimoute
    Dec 9 '19 at 13:13

Adding to the above answers another way to suppress this warning is to use numpy.less explicitly, supplying the where and out parameters:

np.less([1, 2], [2, np.nan])  

outputs: array([ True, False]) causing the runtime warning,

np.less([1, 2], [2, np.nan], where=np.isnan([2, np.nan])==False)

does not calculate result for the 2nd array element according to the docs leaving the value undefined (I got True output for both elements), while

np.less([1, 2], [2, np.nan], where=np.isnan([2, np.nan])==False, out=np.full((1, 2), False)

writes the result into an array pre-initilized to False (and so always gives False in the 2nd element).


This happens due to Nan values in dataframe, which is completely fine with DF.

In Pycharm, This worked like a charm for me:

import warnings

warnings.simplefilter(action = "ignore", category = RuntimeWarning)

Numpy dtypes are so strict. So it doesnt produce an array like np.array([False, True, np.nan]), it returns array([ 0., 1., nan]) which a float array.

If you try to change a bool array like:

x= np.array([False, False, False])
x[0] = 5

will retrun array([ True, False, False]) ... wow

But I think 5>np.nan cannot be False, it should be nan, False would mean that a data comparison has been made and it returned the result like 3>5, which I think it's a disaster. Numpy produces data that we actually don't have. If it could have returned nan then we could handle it with ease.

So I tried to modify the behavior with a function.

def ngrater(x, y):
    with np.errstate(invalid='ignore'):
        c[np.isnan(x)] = np.nan
        c[np.isnan(y)] = np.nan
        return c
a = np.array([np.nan,1,2,3,4,5, np.nan, np.nan, np.nan]) #9 elements
b = np.array([0,1,-2,-3,-4,-5, -5, -5, -5]) #9 elements


returns: array([nan, False, True, True, True, True, nan, nan, nan], dtype=object)

But I think whole memory structure is changed in that way. Instead of getting a memory-block with uniform unites, it will produce a block of pointers, where the real data is somewhere else. So function may perform slower and probably that's why Numpy doesn't do that. We need a superBool dtype which will contain also np.nan, or we just have to use float arrays +1:True, -1:False, nan:nan

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