df.loc[df['female'], 'wage'] = 200
df['female'] as a Boolean series has exactly the same values as the Boolean series returned by evaluating
df['female'] == True, which is also a Boolean series. (A Series is the Pandas term like a single column in a dataframe).
By the way, the last statement is precisely why
df['female'] is True should never work. In Python, the
is operator is reserved for object identity, not for comparing values for equality. df['female'] will always be a Series (if df is a Pandas dataframe) and a Series will never be the same (object) as the single
To understand this better think of the difference, in English, between 'equal' and 'same'. In German, this is the difference between 'selbe' (identity) and 'gleiche' (equality). In other languages, this distinction is not as explicit.
Thus, in Python, you can compare a (reference to an) object to (the special object)
None with :
if obj is None : ... or even check that two variables ('names' in Python terminology) point to the exact same object with
if a is b. But this condition holding is a much stronger assertion than just comparing for equality
a == b. In fact the result of evaluating the expression
a == b might be anything, not just a single Boolean value. It all depends on what class
a belongs to, that is, what its type is. In your context
a == b actually yields a boolean Series, provided both
b are also a Pandas Series.
By the way if you want to check that all values agree between two Series
b then you should evaluate
(a == b).all() which reduces the whole series to a single Boolean value, which will be True if and only if
a[i] == b[i] for every value of