I have an SQL database which has two columns. One has the timestamp, the other holds data in JSON format

for example df:

ts                           data
'2017-12-18 02:30:20.553'   {'name':'bob','age':10, 'location':{'town':'miami','state':'florida'}}
'2017-12-18 02:30:21.101'   {'name':'dan','age':15, 'location':{'town':'new york','state':'new york'}}         
'2017-12-18 02:30:21.202'   {'name':'jay','age':11, 'location':{'town':'tampa','state':'florida'}}

If I do the following :

df = df['data'][0]
print (df['name'].encode('ascii', 'ignore'))

I get :


Is there a way I can get all of the data correspondings to a JSON key for the whole column?

(i.e. for the df column 'data' get 'name')




Essentially I would like to be able to make a new df column called 'name'

  • Do you want this to be a part of the SQL select statement? Or could you do for entry in df['data']: print(entry['name'].encode('ascii', 'ignore')) – user3483203 Dec 18 '17 at 3:19
  • I should have been more clear, I want the result to be a new df column called 'name' – Mustard Tiger Dec 18 '17 at 3:22
  • To get all the values for the name column in a list: [entry['name'].encode('ascii', 'ignore') for entry in df['data']], then you have to do something like ALTER TABLE ADD column_name datatype and then insert your values – user3483203 Dec 18 '17 at 3:26
  • you can use df["data"]apply(function)to execute function for every row and get your name for every row. – furas Dec 18 '17 at 3:36

You can use json_normalize i.e


0    bob
1    dan
2    jay
Name: name, dtype: object

IIUC, lets use apply with lambda function to select value from dictionary by key:

df['data'].apply(lambda x: x['name'])


0    bob
1    dan
2    jay
Name: data, dtype: object
  • .apply(dict.get, args=('name', )) would also work, I think. – cs95 Dec 18 '17 at 5:16

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