I need to create a pandas series whose elements are each a function of a row from a DataFrame. Specifically the is a 'metadata' column which is a json string and I want a Series of dicts that are the json plus the rest of the columns. Ideally I would want something equivalent to a map method for a dataframe:

df.map(lambda row: json.loads(row.metadata).update({'timestamp':row.timestamp}))

(update is destructive and does not return a new dict but you get the point)

EDIT: You can copy this

metadata    timestamp
"{'a':1,'b':2}" 000000001
"{'a':1,'c':2}" 000000002
"{'a':1,'c':2}" 000000003

And load it with

In [8]: import pandas as pd

In [9]: pd.read_clipboard()
        metadata  timestamp
0  {'a':1,'b':2}          1
1  {'a':1,'c':2}          2
2  {'a':1,'c':2}          3

The desired result should be a pandas.Series with the contents of this list:

  • 2
    Can you post a small example dataset? Ideally this would be something we can copy and then load immediately with pandas.read_clipboard() (test it yourself to check)
    – Marius
    Nov 5, 2014 at 0:53

1 Answer 1


What about to modify the strings? Something like:

new_metadata = df.apply(lambda x: '{}\b,"timestamp":{}}}'.format(x.metadata,x.timestamp),axis=1)

Which produces:

In [1]: new_metadata
0    {'a':1,'b':2,"timestamp":1}
1    {'a':1,'c':2,"timestamp":2}
2    {'a':1,'c':2,"timestamp":3}
  • You can of course play with strings to produce the zeros of timestamp, I don't know which rules they should follow
    – Daniele
    Nov 5, 2014 at 14:13
  • I would rather a key-value map is saved in the series but this works for my specific case. Thank you
    – fakedrake
    Nov 6, 2014 at 12:05

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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