0

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 :

'bob'

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')

'bob'

'dan'

'jay'

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
2

You can use json_normalize i.e

pd.io.json.json_normalize(df['data'])['name']

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

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

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

Output:

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

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.