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What would be the most Pythonic way to work with lists containing integers within a pandas dataframe as below? My first objective is to just retrieve a list of all unique values in all of the lists across all of the rows.

index   col1                                                                                                                                     
54      [53, 31, 20, 33, 54, 191, 172, 112, 42, 61, 57]  
55      [53, 31, 201, 9, 30, 21, 50, 113, 26, 39, 40, 59]  
57      [34, 201, 37, 35, 21, 40, 163, 179, 1]

I have tried apply(lambda x: set(x)) but it only works on individual lists as opposed to the entire column.

Just adding some progress I've made that is so very close and I completely forgot you can just add lists together to combine the numbers. Here is what I did I would consider very pythonic. :

list(set(df1['col1'][0] + df1['col'][1]))

which gets me a nice combined set of unique values but now I have to figure out how to add every single row with one another. such as df1['col1'][0] + df1['col1'][1]+...+df1['col1'][n].

Trying list comprehension which is getting me a combined collection of the lists but trying to wrangle it to look like the output from the set method above.

[(df1['col1'][x]) for x in range(len(df1))]
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Thank you but I'm not at all sure what you mean. If you can provide an example, I'd really appreciate it. –  prometheus2305 Jan 9 '14 at 2:14

1 Answer 1

up vote 1 down vote accepted

You can use itertools.chain to combine the lists - I think this would be the most pythonic solution.

from itertools import chain
set(chain.from_iterable(df1['col1']))
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this is the second time this month that itertools has saved the day for me. Thank you so much. This did the trick beautifully. –  prometheus2305 Jan 9 '14 at 10:00

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