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I would like to apply a function to a dataframe and receive a single dictionary as a result. pandas.apply gives me a Series of dicts, and so currently I have to combine keys from each. I'll use an example to illustrate.

I have a pandas dataframe like so.

In [20]: df
          0  1
0  2.025745  a
1 -1.840914  b
2 -0.428811  c
3  0.718237  d
4  0.079593  e

I have some function that returns a dictionary. For this example I'm using a toy lambda function lambda x: {x: ord(x)} that returns a dictionary.

In [22]: what_i_get = df[1].apply(lambda x: {x: ord(x)})
In [23]: what_i_get
0     {'a': 97}
1     {'b': 98}
2     {'c': 99}
3    {'d': 100}
4    {'e': 101}
Name: 1

apply() gives me a series of dictionaries, but what I want is a single dictionary.

I could create it with something like this:

In [41]: what_i_want = {}
In [42]: for elem in what_i_get:
   ....:    for k,v in elem.iteritems():
   ....:        what_i_want[k] = v

In [43]: what_i_want
Out[43]: {'a': 97, 'b': 98, 'c': 99, 'd': 100, 'e': 101}

But it seems I should be able to get what I want more directly.

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2 Answers 2

up vote 4 down vote accepted

Instead of returning a dict from your function, just return the mapped value, then create one dict outside the mapping operation:

>>> d
0     a
1     b
2     c
3     d
>>> dict(zip(d.Stuff,
{'a': 97, 'b': 98, 'c': 99, 'd': 100}
share|improve this answer
Thanks! I had overlooked map completely, and my rewritten function is much cleaner now. – Aman Nov 6 '12 at 20:58

Cutting out the items() middle-man:

what_i_want = {}
for elem in what_i_get:
share|improve this answer
Ah, thanks, but that part was illustrative only. I don't want to have to compute the Series what_i_get in order to get the dictionary what_i_want. – Aman Nov 6 '12 at 20:47

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