Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm getting started with pandas, and have one column of data in a larger DataFrame such as

0                  one two
1            two seven six
2           three one five
3    seven five five eight
4                 six four
5                    three
dtype: object

and what I'd like to do is split the sequences of words into their component parts, then get a unique set or counts for the words. I can do the split just fine

numbers.str.split(' ')

0                    [one, two]
1             [two, seven, six]
2            [three, one, five]
3    [seven, five, five, eight]
4                   [six, four]
5                       [three]
dtype: object

However, I'm not sure where to go from here. Again, I'd like to have output such as

['one', 'two', 'three', 'four', 'five', 'six', 'seven', 'eight']

or the same in a dictionary with counts, or in a Series/DataFrame equivalent of one of these two.

The best I've been able to do so far is to use apply() in combination with a Set to get the unique words. pandas is a very elegant package from what I've seen so far, and it seems like this is probably within easy reach for someone who knows it better than I do.

Thanks in advance!

share|improve this question
I won't answer as there may well be a more efficient Pandas specific way, but in general itertools.chain.from_iterable() and collections.Counter will do this job for you. –  Lattyware Apr 20 '14 at 12:46

2 Answers 2

up vote 3 down vote accepted

If I understand you correctly, I think you could do it as follows using pandas. I'll start with the series before you split the strings:

print s

0                  one two
1            two seven six
2           three one five
3    seven five five eight
4                 six four
5                    three

stacked = pd.DataFrame(s.str.split().tolist()).stack()
print stacked

0  0      one
   1      two
1  0      two
   1    seven
   2      six
2  0    three
   1      one
   2     five
3  0    seven
   1     five
   2     five
   3    eight
4  0      six
   1     four
5  0    three

Now just compute the value counts of the Series:

print stacked.value_counts()

five     3
one      2
three    2
six      2
two      2
seven    2
eight    1
four     1
dtype: int64
share|improve this answer
That works well for my dataset, thanks. –  Steve T Apr 21 '14 at 2:13

This code makes a dictionary of all of your words and their counts.

x = ['one two', 'two seven six', 'three one five', 'seven five five eight', 'six four', 'three']

#create list comprehension of all elements
x_list = [j for i in x for j in i.split()]
print x_list

# ['one', 'two', 'two', 'seven', 'six', 'three', 'one', 'five', 'seven', 'five', 'five', 'eight', 'six', 'four', 'three']

d = {}

#initialize keys
for e in set(x_list):
    d[e] = 0

#store counts in dict
for e in x_list:
        d[e] += 1

print d

The result is a dictionary with counts:

{'seven': 2, 'six': 2, 'three': 2, 'two': 2, 'four': 1, 'five': 3, 'eight': 1, 'one': 2}
share|improve this answer
Thanks for chiming in. I think you were thrown off by my example data, so I have edited the question to clarify. I'm looking for an answer within the pandas API. –  Steve T Apr 20 '14 at 16:48

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

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