# Python: How to find most frequent combination of elements?

A machine provides fault codes which are provided in a pandas dataframe. `id` identifies the machine, `code` is the fault code:

``````df = pd.DataFrame({
"id": [1,1,1,1,1,2,2,2,2,3,3,3,3,3,3,4],
"code": [1,2,5,8,9,2,3,5,6,1,2,3,4,5,6,7],
})
`````` Reading example: Machine 1 generated 5 codes: 1,2,5,8 and 9.

I want to find out which code combinations are most frequent across all machines. The result for the example would be something like ``(3x), `[2,5]`(3x), `[3,5]`(2x) and so on.

How can I achive this? As there is a lot of data, I'm looking for a efficient solution.

Here are two other ways to represent the data (in case that makes the calculation easier):

``````pd.crosstab(df.id, df.code)
`````` ``````df.groupby("id")["code"].apply(list)
`````` • Does ordering matter? is `[2, 5]` different than `[5,2]`? Sep 28 '20 at 9:08
• Ordering does not matter; `[2,5]` equals `[5,2]`. Sep 28 '20 at 11:22

Use custom function `all_subsets`, then flatten values by `Series.explode` and last use `Series.value_counts`:

``````from itertools import chain, combinations

#https://stackoverflow.com/a/5898031
#only converted to list and removed empty tuples by range(1,...
def all_subsets(ss):
return list(chain(*map(lambda x: combinations(ss, x), range(1, len(ss)+1))))

s = df.groupby('id')['code'].apply(all_subsets).explode().value_counts()
print (s)
(2,)            3
(2, 5)          3
(5,)            3
(1, 2)          2
(3, 6)          2
..
(1, 5, 8)       1
(9,)            1
(1, 3, 4, 6)    1
(5, 8, 9)       1
(4, 6)          1
``````
• Great, thanks! Would you mind elaborating a bit on your code? Sep 28 '20 at 11:39
• @Julian - I create all possible combinations for group for list of tuples, so added `explode` for list of tuples for possible count it by `value_counts` Sep 28 '20 at 11:42