2

I have below data frame. need to create a third column to bool and add the all the bool values into that

>>> df[['col2']]
    0   {'result': {'is_doc1': {'bool': True}}}
    1   {'result': {'is_doc1': {'bool': False}}}

>>> type(df[['col2']]) # pandas.core.frame.DataFrame
>>> df[['col2']['result']['is_doc1']['bool']]
('list indices must be integers or slices, not str'

>>> type(df['col2']) # pandas.core.series.Series
  • Remove the nested lists df[['col1','col2' ]] – Datanovice Dec 22 '19 at 18:42
1

This is an object column, it should support .str accessor methods:

df['col3'] = df['col2'].str['result'].str['is_doc1'].str['bool']
df 
                                       col2   col3
0   {'result': {'is_doc1': {'bool': True}}}   True
1  {'result': {'is_doc1': {'bool': False}}}  False

You can also use a list comprehension:

[x['result']['is_doc1']['bool'] for x in df['col2']]
# [True, False]

df['col3'] = [x['result']['is_doc1']['bool'] for x in df['col2']])
df
                                       col2   col3
0   {'result': {'is_doc1': {'bool': True}}}   True
1  {'result': {'is_doc1': {'bool': False}}}  False

If "col2" is a column of strings, start by parsing it first:

import ast
df['col2'] = df['col2'].map(ast.literal_eval)

Here's a more robust version:

def try_parse(string):
    try:
        return ast.literal_eval(string)
    except ValueError, SyntaxError:
        return np.nan

df['col2'] = df['col2'].map(try_parse)
|improve this answer|||||
1

This is not the way to acces the dictionary in your column. One way to solve this is to use Series.apply:

df['Bool'] = df['col2'].apply(lambda x: x['result']['is_doc1']['bool'])

                                       col2   Bool
0   {'result': {'is_doc1': {'bool': True}}}   True
1  {'result': {'is_doc1': {'bool': False}}}  False
|improve this answer|||||

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.