21

I am trying to set members of an array that are below a threshold to nan. This is part of a QA/QC process and the incoming data may already have slots that are nan.

So as an example my threshold might be -1000 and hence I would want to set -3000 to nan in the following array

x = np.array([np.nan,1.,2.,-3000.,np.nan,5.])

This following:

x[x < -1000.] = np.nan

produces the correct behavior, but also a RuntimeWarning, but the overhead of disabling the warning

warnings.filterwarnings("ignore")
...
warnints.resetwarnings()

is kind of heavy an potentially a bit unsafe.

Trying to index twice with fancy indexing as follows doesn't produce any effect:

nonan = np.where(~np.isnan(x))[0]
x[nonan][x[nonan] < -1000.] = np.nan

I assume this is because a copy is made due to the integer index or the use of indexing twice.

Does anyone have a relatively simple solution? It would be fine to use a masked array in the process, but the final product has to be an ndarray and I can't introduce new dependencies. Thanks.

5 Answers 5

18

One option is to disable the relevant warnings with numpy.errstate:

with numpy.errstate(invalid='ignore'):
    ...

To turn off the relevant warnings globally, use numpy.seterr.

4
  • Thanks. I think there might be a safer way using the warning filter in warnings:
    – Eli S
    Aug 18, 2014 at 16:23
  • warnings.filterwarnings("ignore") and then afterwards
    – Eli S
    Aug 18, 2014 at 16:23
  • This is a global change too ... arguably fairly safe if reset immediately. However, as my note to Jamie hints, I was aware of the diabling approach. I was looking for something without this overhead. However I think your answer may help a lot of people.
    – Eli S
    Aug 18, 2014 at 16:31
  • 2
    You might use errstate for a preference. Aug 8, 2016 at 20:08
17

Any comparison (other than !=) of a NaN to a non-NaN value will always return False:

>>> x < -1000
array([False, False, False,  True, False, False], dtype=bool)

So you can simply ignore the fact that there are NaNs already in your array and do:

>>> x[x < -1000] = np.nan
>>> x
array([ nan,   1.,   2.,  nan,  nan,   5.])

EDIT I don't see any warning when I ran the above, but if you really need to stay away from the NaNs, you can do something like:

mask = ~np.isnan(x)
mask[mask] &= x[mask] < -1000
x[mask] = np.nan
3
  • 3
    I agree about the logic, and I'm glad you pointed out that this isn't he usual nan-isn't-equal-to-nan issue. The issue for me when I try this is that it produces a Runtime Warning. One option is to to import warnings and catch it, but this is a lot of typing and overhead. I'm hoping for an economical alternative.
    – Eli S
    Aug 17, 2014 at 20:36
  • Does anyone know why np.nan allows comparison at all (always evaluating to False rather than raising a TypeError or something as None < x does)? It causes all kinds of headaches if some nans escape out of numpy arrays into regular Python variables and you start using them with regular Python methods and expressions.
    – Bill
    Jun 9, 2019 at 18:54
  • That's what NaN is supposed to do according to IEEE 754, you will get the same behavior, e.g. from float('nan'): en.wikipedia.org/wiki/NaN#Comparison_with_NaN
    – Jaime
    Jun 12, 2019 at 15:17
9

np.less() has a where argument that controls where the operation will be applied. So you could do:

x[np.less(x, -1000., where=~np.isnan(x))] = np.nan
1
  • 1
    You can simply use where=np.isfinite(x)
    – Chris
    Aug 16, 2020 at 14:29
2

I personally ignore the warnings using the np.errstate context manager in the answer already given, as the code clarity is worth the extra time, but here is an alternative.

# given
x = np.array([np.nan, 1., 2., -3000., np.nan, 5.])

# apply NaNs as desired
mask = np.zeros(x.shape, dtype=bool)
np.less(x, -1000, out=mask, where=~np.isnan(x))
x[mask] = np.nan

# expected output and comparison
y = np.array([np.nan, 1., 2., np.nan, np.nan, 5.])
assert np.allclose(x, y, rtol=0., atol=1e-14, equal_nan=True)

The numpy less ufunc takes the optional argument where, and only evaluates it where true, unlike the np.where function which evaluates both options and then picks the relevant one. You then set the desired output when it's not true by using the out argument.

1
  • Note that the out=mask keyword argument is required for this to work. Otherwise, np.less will return True in a skipped position Feb 14, 2018 at 21:59
2

A little bit late, but this is how I would do:

x = np.array([np.nan,1.,2.,-3000.,np.nan,5.]) 

igood=np.where(~np.isnan(x))[0]
x[igood[x[igood]<-1000.]]=np.nan

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