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PEP8 E712 requires that "comparison to True should be if cond is True: or if cond:".

But if I follow this PEP8 I get different/wrong results. Why?

In [1]: from pylab import *

In [2]: a = array([True, True, False])

In [3]: where(a == True)
Out[3]: (array([0, 1]),)
# correct results with PEP violation

In [4]: where(a is True)
Out[4]: (array([], dtype=int64),)
# wrong results without PEP violation

In [5]: where(a)
Out[5]: (array([0, 1]),)
# correct results without PEP violation, but not as clear as the first two imho. "Where what?"
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Where are you finding this PEP8 E712? –  mgilson Mar 1 '13 at 18:56
2  
This is a specific diagnostic output by the pep8 tool: github.com/jcrocholl/pep8/blob/master/pep8.py#L900. Note that it is wrong in this case because a is True is not a meaningful thing to do with an array. –  nneonneo Mar 1 '13 at 18:59
    
@mgilson You can also search for python linter. Most/some IDEs have plugins to do pep8 checking of your code. –  Framester Mar 1 '13 at 19:06
    
@Framester -- But that doesn't actually come from PEP8 -- Doing a quick word search on PEP 8 for "True" shows that it is only in the document 3 times. All in the section "Don't compare boolean values to True or False using ==." which just says don't do if a == True: -- instead do if a:. I'd say your linter is wrong in this case :) (And I'd recommend filing a bug report) –  mgilson Mar 1 '13 at 19:10

2 Answers 2

up vote 1 down vote accepted

That advice only applies to if statements testing for the "truthiness" of a value. numpy is a different beast.

>>> a = np.array([True, False]) 
>>> a == True
array([ True, False], dtype=bool)
>>> a is True
False

Note that a is True is always False because a is an array, not a boolean, and is does a simple reference equality test (so only True is True; None is not True for example).

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Numpy's 'True' is not the same 'True' as Python's 'True' and therefor is fails:

>>> import numpy as np
>>> a = np.array([True, True, False])
>>> a[:]
array([ True,  True, False], dtype=bool)
>>> a[0]
True
>>> a[0]==True
True
>>> a[0] is True
False
>>> type(a[0])
<type 'numpy.bool_'>
>>> type(True)
<type 'bool'>

Also, specifically, PEP 8 says DONT use 'is' or '==' for Booleans:

Don't compare boolean values to True or False using ==:

Yes:   if greeting:
No:    if greeting == True:
Worse: if greeting is True:

So the 'spirit' of PEP 8 with Numpy is probably to only test each element's truthiness:

>>> np.where(a)
(array([0, 1]),)
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