Based on official pandas documentations and help on:


the loc allows to access a group of rows and columns by label(s) or a Boolean array. (https://pandas.pydata.org/pandas-docs/stable/generated/pandas.DataFrame.loc.html)

but it look a Boolean array does not work really!

import pandas as pd

data=[[30, 21],[0, 121],[4, 121]]
df= pd.DataFrame(data, columns=['Apples', 'Bananas'])

print(df.loc[df.Apples==30 & True])      # It's OK
print(df.loc[True])                      # **doesn't work**

The answer is in the loc docs you linked to:

Allowed inputs are:

  • [...]
  • A boolean array of the same length as the axis being sliced, e.g. [True, False, True].

If the mask is not of the same length, it assumes you are searching for a label in the column, and failing to find it, raises a KeyError.

Note that df.Apples == 30 & True has the same length as df.

df.Apples == 30 & True

Evaluates to

df.Apples == 0

Which is

0    False
1     True
2    False
Name: Apples, dtype: bool

Because == has lower precedence than &. See Operator Precedence.

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