24

I have this data:

ID   TIME
1    2
1    4
1    2
2    3

I want to group the data by ID and calculate the mean time and the size of each group.

ID   MEAN_TIME COUNT
1    2.67      3
2    3.00      1

If I run this code, then I get an error "ValueError: cannot insert ID, already exists":

result = df.groupby(['ID']).agg({'TIME': 'mean', 'ID': 'count'}).reset_index()
47

Use parameter drop=True which not create new column with index but remove it:

result = df.groupby(['ID']).agg({'TIME': 'mean', 'ID': 'count'}).reset_index(drop=True)
print (result)
   ID      TIME
0   3  2.666667
1   1  3.000000

But if need new column from index need rename old column names first:

result = df.groupby(['ID']).agg({'TIME': 'mean', 'ID': 'count'})
           .rename(columns={'ID':'COUNT','TIME':'MEAN_TIME'})
           .reset_index()
print (result)
   ID  COUNT  MEAN_TIME
0   1      3   2.666667
1   2      1   3.000000

Solution if need aggreagate by multiple columns:

result = df.groupby(['ID']).agg({'TIME':{'MEAN_TIME': 'mean'}, 'ID': {'COUNT': 'count'}})
result.columns = result.columns.droplevel(0)
print (result.reset_index())
   ID  COUNT  MEAN_TIME
0   1      3   2.666667
1   2      1   3.000000
  • 1
    Could you please explain what drop=True does? – Dinosaurius Jan 10 '17 at 18:54
  • @Dinosaurius instead of trying to incorporate the existing index back into the dataframe, it just drops it. – piRSquared Jan 10 '17 at 18:56
  • So, new will contain ID, while ID will be count, right? (in the second solution) – Dinosaurius Jan 10 '17 at 19:03
  • I think in this way is better second piRSquared solution if need only size of groups, not count NaN values in column ID - see here – jezrael Jan 10 '17 at 19:18
  • @jezrael: yes, I don't have NaN values in the column ID. – Dinosaurius Jan 10 '17 at 19:20
4

I'd limit my groupby to just the TIME column.

df.groupby(['ID']).TIME.agg({'MEAN_TIME': 'mean', 'COUNT': 'count'}).reset_index()

   ID  MEAN_TIME  COUNT
0   1   2.666667      3
1   2   3.000000      1
  • Just curious: this solution allows only averaging by TIME? If I had more columns to average on, then this would need to be changed, right? – Dinosaurius Jan 10 '17 at 19:08
  • 2
    @Dinosaurius Yes! You'd need to pass details in the dictionary passed to agg to account for the functions being applied to what columns and what to name the resultant columns. It's best to ask for a specific result and we can help produce that result. – piRSquared Jan 10 '17 at 19:12

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.