I have the following DataFrame:

customer    item1      item2    item3
1           apple      milk     tomato
2           water      orange   potato
3           juice      mango    chips

which I want to translate it to list of dictionaries per row

rows = [{'customer': 1, 'item1': 'apple', 'item2': 'milk', 'item3': 'tomato'},
    {'customer': 2, 'item1': 'water', 'item2': 'orange', 'item3': 'potato'},
    {'customer': 3, 'item1': 'juice', 'item2': 'mango', 'item3': 'chips'}]
  • 1
    Welcome to Stack Overflow! I indented your code sample by 4 spaces so that it renders properly - please see the editing help for more information on formatting. – ByteHamster Apr 23 '15 at 6:43


As John Galt mentions in his answer , you should probably instead use df.to_dict('records'). It's faster than transposing manually.

In [20]: timeit df.T.to_dict().values()
1000 loops, best of 3: 395 µs per loop

In [21]: timeit df.to_dict('records')
10000 loops, best of 3: 53 µs per loop

Original answer

Use df.T.to_dict().values(), like below:

In [1]: df
   customer  item1   item2   item3
0         1  apple    milk  tomato
1         2  water  orange  potato
2         3  juice   mango   chips

In [2]: df.T.to_dict().values()
[{'customer': 1.0, 'item1': 'apple', 'item2': 'milk', 'item3': 'tomato'},
 {'customer': 2.0, 'item1': 'water', 'item2': 'orange', 'item3': 'potato'},
 {'customer': 3.0, 'item1': 'juice', 'item2': 'mango', 'item3': 'chips'}]
  • 1
    What would be the solution in the case of a dataframe containing for each Customer many rows? – Aziz Dec 3 '16 at 12:21
  • 1
    When I use df.T.to_dict().values(), I loose the sort order also – Hussain May 2 '17 at 13:03
  • When opening a csv file to list of dicts, I'm getting twice the speed with unicodecsv.DictReader – radtek Mar 9 '18 at 16:01

Use df.to_dict('records') -- gives the output without having to transpose externally.

In [2]: df.to_dict('records')
[{'customer': 1L, 'item1': 'apple', 'item2': 'milk', 'item3': 'tomato'},
 {'customer': 2L, 'item1': 'water', 'item2': 'orange', 'item3': 'potato'},
 {'customer': 3L, 'item1': 'juice', 'item2': 'mango', 'item3': 'chips'}]
  • 2
    How would I change it to include the index value into each entry of the resulting list? – Gabriel L. Oliveira Aug 16 '16 at 18:08
  • 4
    @GabrielL.Oliveira you can do df.reset_index().to_dict('records') – Wei Ma Feb 2 '17 at 22:28
  • Is the order of the columns reserved in each case i.e. is the nth entry in the resulting list always also the nth column? – Cleb May 23 '18 at 12:03

As an extension to John Galt's answer -

For the following DataFrame,

   customer  item1   item2   item3
0         1  apple    milk  tomato
1         2  water  orange  potato
2         3  juice   mango   chips

If you want to get a list of dictionaries including the index values, you can do something like,


Which outputs a dictionary of dictionaries where keys of the parent dictionary are index values. In this particular case,

{0: {'customer': 1, 'item1': 'apple', 'item2': 'milk', 'item3': 'tomato'},
 1: {'customer': 2, 'item1': 'water', 'item2': 'orange', 'item3': 'potato'},
 2: {'customer': 3, 'item1': 'juice', 'item2': 'mango', 'item3': 'chips'}}

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.