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I'm working with boolean index in Pandas. The question is why the statement:

a[(a['some_column']==some_number) & (a['some_other_column']==some_other_number)]

works fine whereas

a[(a['some_column']==some_number) and (a['some_other_column']==some_other_number)]

exists with error?



In: a[(a['x']==1)&(a['y']==10)]
Out:    x   y
     0  1  10

In: a[(a['x']==1) and (a['y']==10)]
Out: ValueError: The truth value of an array with more than one element is ambiguous.     Use a.any() or a.all()
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What error does it exit with? –  Wooble Jan 28 at 20:05
This is because numpy arrays and pandas series use the bitwise operators rather than logical as you are comparing every element in the array/series with another. It therefore does not make sense to use the logical operator in this situation. see related: stackoverflow.com/questions/8632033/… –  EdChum Jan 28 at 20:15
In Python and != &. The and operator in Python cannot be overridden, whereas the & operator (__and__) can. Hence the choice the use & in numpy and pandas. –  Steven Rumbalski Jan 28 at 20:19

1 Answer 1

up vote 6 down vote accepted

When you say

(a['x']==1) and (a['y']==10)

You are implicitly asking Python to convert (a['x']==1) and (a['y']==10) to boolean values.

NumPy arrays (of length greater than 1) and Pandas objects such as Series do not have a boolean value -- in other words, they raise

ValueError: The truth value of an array is ambiguous. Use a.empty, a.any() or a.all().

when used as a boolean value. That's because its unclear when it should be True or False. Some users might assume they are True if they have non-zero length, like a Python list. Others might desire for it to be True only if all its elements are True. Others might want it to be True if any of its elements are True.

Because there are so many conflicting expectations, the designers of NumPy and Pandas refuse to guess, and instead raise a ValueError.

Instead, you must be explicit, by calling the empty(), all() or any() method to indicate which behavior you desire.

In this case, however, it looks like you do not want boolean evaluation, you want element-wise logical-and. That is what the & binary operator performs:

(a['x']==1) & (a['y']==10)

returns a boolean array.

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numpy arrays do have this property if they are length one. Only pandas devs (stubbornly) refuse to guess :p –  Andy Hayden Jan 28 at 20:37
@AndyHayden: Thanks, I did not know that! –  unutbu Jan 28 at 21:35
Discussion here: groups.google.com/forum/#!topic/pydata/XzSHSLlTSZ8 –  Andy Hayden Jan 28 at 21:47

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