I have the following code:

df= pd.DataFrame(data=all_r_1.to_dataframe().groupby(['user_id'])['type'].sum()).reset_index()

userid | type
20     | aab
21     | ababb

To remove the duplicates from the strings in the type column, I have this code:

df['type'] = df['type'].apply(lambda x: ''.join(ch for ch, _ in itertools.groupby(x)))

which produces this:

userid | type
20     | ab
21     | abab

This is the input df:

id | userid | type 
1  | 20     | a  
2  | 20     | a
3  | 20     | b
4  | 21     | a  
5  | 21     | b
6  | 21     | a
7  | 21     | b
8  | 21     | b

However, what I want to do is to include the counts for each character while removing the duplicates:

userid | type
20     | a2b
21     | abab2

Any ideas how I can modify the itertools.groupby code to also include the counts?

  • try this: df['type'] = df['type'].apply(lambda x: ''.join(ch+len(list(group)) for ch, group in itertools.groupby(x))) – Chris_Rands Mar 7 '17 at 9:09
  • @Chris_Rands thanks! I got this error TypeError: object of type 'itertools._grouper' has no len() – renakre Mar 7 '17 at 9:11
  • Did you put len(list(group))? (I edited this into my original comment) – Chris_Rands Mar 7 '17 at 9:12
  • @Chris_Rands yes it worked, but I needed to convert it to str. Could you please post this as an answer? – renakre Mar 7 '17 at 9:16
up vote 1 down vote accepted

itertools.groupby stores the actual groups so you can access this as follows:

df['type'] = df['type'].apply(lambda x: ''.join('{}{}'.format(ch,len(list(group))) for ch, group in itertools.groupby(x)))

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