2

I have a pandas DataFrame and a column contained a string that was separated by a pipe. These were from movie genres. They looked like this:

Genre
Adventure|Animation|Children|Comedy|Fantasy
Comedy|Romance
...

I used str.split to get them back into the cell as a List. Like this:

Genre 
[Adventure, Animation, Children, Comedy, Fantasy]
[Adventure, Children, Fantasy]
[Comedy, Romance]
[Comedy, Drama, Romance]
[Comedy]

I want to get a sum of all the genres. For example how many times did Comedy appear? How many times did Adventure and so on? I can't seem to figure this out.

This would look like

Comedy    4
Adventure 2
Animation 1
(...and so on...)
2

As somebody from the for-loop club, I recommend using python's C-accelerated routines—itertools.chain, and collections.Counter—for performance.

from itertools import chain
from collections import Counter

pd.Series(
    Counter(chain.from_iterable(x.split('|') for x in df.Genre)))

Adventure    1
Animation    1
Children     1
Comedy       2
Fantasy      1
Romance      1
dtype: int64

Why do I think CPython functions are better than pandas "vectorised" string functions? They are inherently hard to vectorise. You can read more at For loops with pandas - When should I care?.


If you have to deal with NaNs, you can call a function that handles exceptions gracefully:

def try_split(x):
    try:
        return x.split('|')
    except AttributeError:
        return []

pd.Series(
    Counter(chain.from_iterable(try_split(x) for x in df.Genre)))

pandaically, you would do this with split, stack, and value_counts.

df['Genre'].str.split('|', expand=True).stack().value_counts()

Comedy       2
Romance      1
Children     1
Animation    1
Fantasy      1
Adventure    1
dtype: int64

The timing difference is obvious even for tiny DataFrames.

%timeit df['Genre'].str.get_dummies(sep='|').sum()
%timeit df['Genre'].str.split('|', expand=True).stack().value_counts()
%%timeit
pd.Series(
    Counter(chain.from_iterable(try_split(x) for x in df.Genre)))

2.8 ms ± 68.3 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)
2.4 ms ± 210 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)
320 µs ± 9.71 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)
  • 1
    Thank you for all the examples! I learned a ton with that! I ended up trying a few ways and you're very correct to point out the timing. I have only 27,000 records and it's noticeable. Thanks! – broepke Jan 20 at 21:40
3

I'm also in favor of using chain+for.

Just to document this, one more possible way is to use get_dummies

df['Genre'].str.get_dummies(sep='|').sum()

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.