# Detect if a NumPy array contains at least one non-numeric value?

I need to write a function which will detect if the input contains at least one value which is non-numeric. If a non-numeric value is found I will raise an error (because the calculation should only return a numeric value). The number of dimensions of the input array is not known in advance - the function should give the correct value regardless of ndim. As an extra complication the input could be a single float or `numpy.float64` or even something oddball like a zero-dimensional array.

The obvious way to solve this is to write a recursive function which iterates over every iterable object in the array until it finds a non-iterabe. It will apply the `numpy.isnan()` function over every non-iterable object. If at least one non-numeric value is found then the function will return False immediately. Otherwise if all the values in the iterable are numeric it will eventually return True.

That works just fine, but it's pretty slow and I expect that NumPy has a much better way to do it. What is an alternative that is faster and more numpyish?

Here's my mockup:

``````def contains_nan( myarray ):
"""
@param myarray : An n-dimensional array or a single float
@type myarray : numpy.ndarray, numpy.array, float
@returns: bool
Returns true if myarray is numeric or only contains numeric values.
Returns false if at least one non-numeric value exists
Not-A-Number is given by the numpy.isnan() function.
"""
return True
``````
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Your description for `contains_nan` looks suspicious: "Returns false if at least one non-numeric value exists". I would have expected `contains_nan` to return `True` if the array contains NaN. – Samuel Tardieu May 26 '09 at 18:00
What about inputs such as `array(['None', 'None'], dtype=object)`? Should such an input just raise an exception? – Finn Årup Nielsen Jun 8 '15 at 14:47

This should be faster than iterating and will work regardless of shape.

``````numpy.isnan(myarray).any()
``````

Edit: 30x faster:

``````import timeit
s = 'import numpy;a = numpy.arange(10000.).reshape((100,100));a[10,10]=numpy.nan'
ms = [
'numpy.isnan(a).any()',
'any(numpy.isnan(x) for x in a.flatten())']
for m in ms:
print "  %.2f s" % timeit.Timer(m, s).timeit(1000), m
``````

Results:

``````  0.11 s numpy.isnan(a).any()
3.75 s any(numpy.isnan(x) for x in a.flatten())
``````

Bonus: it works fine for non-array NumPy types:

``````>>> a = numpy.float64(42.)
>>> numpy.isnan(a).any()
False
>>> a = numpy.float64(numpy.nan)
>>> numpy.isnan(a).any()
True
``````
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with numpy 1.7 the flatten() version is only twice as fast as the first one – Christian Geier Oct 9 '13 at 14:39

With numpy 1.3 or svn you can do this

``````In [1]: a = arange(10000.).reshape(100,100)

In [3]: isnan(a.max())
Out[3]: False

In [4]: a[50,50] = nan

In [5]: isnan(a.max())
Out[5]: True

In [6]: timeit isnan(a.max())
10000 loops, best of 3: 66.3 µs per loop
``````

The treatment of nans in comparisons was not consistent in earlier versions.

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If infinity is a possible value, I would use numpy.isfinite

``````numpy.isfinite(myarray).all()
``````

If the above evaluates to `True`, then `myarray` contains no, `numpy.nan`, `numpy.inf` or `-numpy.inf` values.

`numpy.nan` will be OK with `numpy.inf` values, for example:

``````In [11]: import numpy as np

In [12]: b = np.array([[4, np.inf],[np.nan, -np.inf]])

In [13]: np.isnan(b)
Out[13]:
array([[False, False],
[ True, False]], dtype=bool)

In [14]: np.isfinite(b)
Out[14]:
array([[ True, False],
[False, False]], dtype=bool)
``````
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