I have datafarme df:

id name number
1 sam   76
2 sam    8
2 peter  8 
4 jack   2

I would like to group by on 'id' column and count the number of unique values based on the pair of (name,number)?

id count(name-number)
1    1
2    2
4    1     

I have tried this, but it does not work:

  • /@User your table does not make sense there 1 with count 1, it should be 2, There are 2 number 2's, two "sam, and 2 '8's. please give a clear example data and output. – Merlin Jun 9 '16 at 19:05

You can do:

import pandas
df = pandas.DataFrame({"id": [1, 2, 3, 4], "name": ["sam", "sam", "peter", "jack"], "number": [8, 8, 8, 2]})
g = df.groupby(["name", "number"])
print g.groups

which gives:

{('jack', 2): [3], ('peter', 8): [2], ('sam', 8): [0, 1]}

to get number of unique entries per pair you can do:

for p in g.groups: 
    print p, " has ", len(g.groups[p]), " entries"

which gives:

('peter', 8)  has  1  entries
('jack', 2)  has  1  entries
('sam', 8)  has  2  entries


the OP asked for result in dataframe. One way to get this is to use aggregate with the length function, which will return a dataframe with the number of unique entries per pair:

d = g.aggregate(len)
print d.reset_index().rename(columns={"id": "num_entries"})


    name  number  num_entries
0   jack       2           1
1  peter       8           1
2    sam       8           2
  • thanks for your answer. I was more hoping that I would be able to fo it with a python pandas trick with a dataframe, Do you know how to do it that way? – UserYmY Feb 1 '16 at 19:25
  • do you know how can I get the unique groups? because currently the scrips give also duplicates pairs – UserYmY Feb 4 '16 at 10:24
  • 1
    I actually just realized your answer does not answer what I have asked. Because I would like to know the number of unique (name, number) pairs per id. and what you have coded give the number of entries per (name,number) pair – UserYmY Feb 4 '16 at 10:30
  • Thanks for great answer for grouping and counting in pandas dataframe. – Larynx Nov 24 '16 at 2:01

You can just combine two groupbys to get the desired result.

import pandas
df = pandas.DataFrame({"id": [1, 2, 2, 4], "name": ["sam", "sam", "peter", "jack"], "number": [8, 8, 8, 2]})
group = df.groupby(['id','name','number']).size().groupby(level=0).size()

The first groupby will count the complete set of original combinations (and thereby make the columns you want to count unique). The second groupby will count the unique occurences per the column you want (and you can use the fact that the first groupby put that column in the index).

The result will be a Series. If you want to have DataFrame with the right column name (as you showed in your desired result) you can use the aggregate function:

group = df.groupby(['id','name','number']).size().groupby(level=0).agg({'count(name-number':'size'})


 df.groupby('id').apply(lambda x: x.drop('id', 

To get a list of unique values for column combinations:

grouped= df.groupby('name').number.unique()
for k,v in grouped.items():


[76  8]

To get number of values of one column based on another:



number  2   8   76
jack    1.0 0.0 0.0
peter   0.0 1.0 0.0
sam     0.0 1.0 1.0

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