# Why do Numpy.all() and any() give wrong results if you use generator expressions?

Working with somebody else's code I stumbled across this gotcha. So what is the explanation for numpy's behavior?

``````In [1]: from numpy import *

In [2]: foo = [False, False]

In [3]: print any(x == True for x in foo)
True  # <- bad numpy!

In [4]: print all(x == True for x in foo)
True  # <- bad numpy!

In [5]: print all(foo)
False  # <- correct result
``````

p.s. I know star imports are evil, but I am working with somebody else's code.

p.p.s. I got the list comprehension code from here: Check if list contains only item x

-
These are not technically list comprehensions, rather generator expressions. –  Lev Levitsky May 2 at 9:53
possible duplicate of numpy all differing from builtin all –  wim May 2 at 10:07
@LevLevitsky, thanks, I changed that. –  Framester May 2 at 11:13
This is a real "gotcha" for people using ipython's "pylab mode", which overwrites the built-in any and all with the numpy any and all. So you can have a code snippet that works in pure python but fails in pylab mode. –  Steve B May 2 at 13:31
@SteveB That is exactly what happened to me. –  Framester May 2 at 13:54

`np.any` and `np.all` don't work on generators. They need sequences. When given a non-sequence, they treat this as any other object and call `bool` on it (or do something equivalent), which will return `True`:

``````>>> false = [False]
>>> np.array(x for x in false)
array(<generator object <genexpr> at 0x31193c0>, dtype=object)
>>> bool(x for x in false)
True
``````

List comprehensions work, though:

``````>>> np.all([x for x in false])
False
>>> np.any([x for x in false])
False
``````

I advise using Python's built-in `any` and `all` when generators are expected, since they are typically faster than using NumPy and list comprehensions (because of a double conversion, first to `list`, then to `array`).

-
the documentation is quite vague.. `Input array or object that can be converted to an array.` but still, the way I interpret it, it should work with generators... –  Karoly Horvath May 2 at 10:03
@KarolyHorvath: the `array` docstrings spells it out: "An array, any object exposing the array interface, an object whose `__array__` method returns an array, or any (nested) sequence." This is the definition of "array-like" used throughout NumPy. Unfortunately, any other object is converted to 0-d array (try `np.array("foo").shape`). –  larsmans May 2 at 10:07