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# Testing if all values in a numpy array are equal

I have an numpy one dimensional array c that is supposed to be filled with the contents of `a + b`. I'm first executing `a + b` on a device using `PyOpenCL`

I want to quickly determine the correctness of the result array `c` in python using numpy slicing.

This is what I currently have

``````def python_kernel(a, b, c):
temp = a + b
if temp[:] != c[:]:
print "Error"
else:
print "Success!"
``````

But I get the error:

ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all()

But it seems `a.any` or `a.all` will just determine whether the values aren't 0.

What should I do if I want to test if all of the scalers in the numpy array temp are equal to every value in the numpy array c?

-

Why not just use `numpy.array_equal(a1, a2)`[docs] from NumPy's functions?

-
You can check the source code of array_equal(), and because it call equal(), it also create the entire boolean vector. – HYRY Aug 18 '11 at 0:42
Yes, this is exactly what I needed, thank you! – Robert Aug 18 '11 at 1:35

You would call `any` on the result of the comparison: `if np.any(a+b != c):` or equivalently `if np.all(a+b == c):`. `a+b != c` creates an array of `dtype=bool`, and then `any` looks at that array to see if any member is `True`.

``````>>> import numpy as np
>>> a = np.array([1,2,3])
>>> b = np.array([4,5,2])
>>> c = a+b
>>> c
array([5, 7, 5]) # <---- numeric, so any/all not useful
>>> a+b == c
array([ True,  True,  True], dtype=bool) # <---- BOOLEAN result, not numeric
>>> all(a+b == c)
True
``````

Having said all that, though, Amber's solution is probably faster since it doesn't have to create the whole boolean result array.

-

np.allclose is a good choice if `np.array` data type is floats. `np.array_equal` does not always work properly. For example:

``````import numpy as np
def get_weights_array(n_recs):
step = - 0.5 / n_recs
stop = 0.5
return np.arange(1, stop, step)

a = get_weights_array(5)
b = np.array([1.0, 0.9, 0.8, 0.7, 0.6])
``````

Result:

``````>>> a
array([ 1. ,  0.9,  0.8,  0.7,  0.6])
>>> b
array([ 1. ,  0.9,  0.8,  0.7,  0.6])
>>> np.array_equal(a, b)
False
>>> np.allclose(a, b)
True

>>> import sys
>>> sys.version
'2.7.3 (default, Apr 10 2013, 05:13:16) \n[GCC 4.7.2]'
>>> np.version.version
'1.6.2'
``````
-
This was giving me a headache, good to know that `np.array_equal` bombs with floats. Thanks you! – Gabriel Jan 20 at 15:57
Usual floating point precision errors. I wouldn't blame `array_equal` for working incorrectly here. It does what it is supposed to do. Any yes, `allclose` is the correct choice for what you intend to do. – Michael May 22 at 10:57