I have some data from an API that I am trying to convert to a Pandas dataframe. I am struggling to extract the 'station_xyz__cr' id number from the list in a nested dict (where a list can be empty as in the middle dataset).

output = {'data': [{'abc_serial_number__c': 'ABC2020-07571',
       'id': 'V48000000000F79',
       'modified_date__v': '2020-06-15T05:13:14.000Z',
       'name__v': 'VVV-001039',
       'station_xyz__cr': {'data': [{'id': 'V5J000000000B86'}],
                           'responseDetails': {'limit': 250,
                                               'offset': 0,
                                               'size': 1,
                                               'total': 1}}},
      {'abc_serial_number__c': 'ABC2020-09952',
       'id': 'V48000000001B94',
       'modified_date__v': '2020-06-24T11:30:40.000Z',
       'name__v': 'VVV-004040',
       'station_xyz__cr': {'data': [],
                           'responseDetails': {'limit': 250,
                                               'offset': 0,
                                               'size': 1,
                                               'total': 1}}},
      {'abc_serial_number__c': 'ABC2020-09196',
       'id': 'V48000000001B95',
       'modified_date__v': '2020-06-23T09:38:18.000Z',
       'name__v': 'VVV-004041',
       'station_xyz__cr': {'data': [{'id': 'V5J000000000Z10'}],
                           'responseDetails': {'limit': 250,
                                               'offset': 0,
                                               'size': 1,
                                               'total': 1}}}],
 'responseDetails': {'limit': 1000, 'offset': 0, 'size': 3, 'total': 3},
 'responseStatus': 'SUCCESS'}

I'm trying to get the nested id data into a column in the dataframe something like this:

0          V5J000000000B86
1                     None 
2          V5J000000000Z10

I've tried converting to a dataframe with json_normalize (droppping the columns I don't need):

df = pd.json_normalize(output['data'])
df = df.loc[:, ~df.columns.str.startswith('station_xyz__cr.responseDetails')]

  abc_serial_number__c               id          modified_date__v     name__v  \
0        ABC2020-07571  V48000000000F79  2020-06-15T05:13:14.000Z  VVV-001039   
1        ABC2020-09952  V48000000001B94  2020-06-24T11:30:40.000Z  VVV-004040   
2        ABC2020-09196  V48000000001B95  2020-06-23T09:38:18.000Z  VVV-004041   

0  [{'id': 'V5J000000000B86'}]  
1                           []  
2  [{'id': 'V5J000000000Z10'}] 

but Im stuggling to convert the 'station_xyz__cr.data' list of dicts to simple dataframe of the ids:

df2 = pd.DataFrame(df['station_xyz__cr.data'].tolist(), index= df.index)
df2 = df2.rename(columns = {0:'station_xyz__cr.data'})

0  {'id': 'V5J000000000B86'}
1                       None
2  {'id': 'V5J000000000Z10'}

The 'None' is causing me problems when I tried to extract further. I tried replacing the None - but I could only replace with 0:

df.fillna(0, inplace=True)
  • what do you want instead of None? why not just apply a lambda after the fact to pull out the id from ur current result – Derek Eden Jul 29 at 17:23
  • 1
    @Derek Eden Thanks. I used your suggestion successfully: df2['station_xyz__cr.data']=df2['station_xyz__cr.data'].map(lambda x : x[0]['id'] if x else None) – Ginjj Jul 30 at 15:18

Get the row index of None values. Using row index as a mask, set the row, col combinations to a default value that is consistent with the rest of the columns' values for next stage in data flow.

isna_idx = pd.isnull(df2['station_xyz__cr.data'])
df2.loc[isna_idx, ['station_xyz__cr.data']] = {'id': '...'}
| improve this answer | |
  • Thanks. If I try and put the dict per your suggestion it results in NaN as below: ` station_xyz__cr.data` ` 0 {'id': 'V5J000000000B86'}` ` 1 NaN` ` 2 {'id': 'V5J000000000Z10'}` putting a string 'foo' works. – Ginjj Jul 29 at 19:54
  • Didn't expect that... Maybe confirm the dtype of the column is 'object'? DataFrame.dtypes Dtype as object will allow you to assign a dict object as value for that cell. Should already be that dtype based on your example though. – skullgoblet1089 Jul 29 at 21:19

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.