## tl;dr

If you just want to count the number of rows per group, do:

```
df.groupby(key_columns).size()
```

where `key_columns`

is the list of columns you are grouping by, for example `key_columns = ['col1','col2']`

In what follows I will elaborate some more.

### Setup some test data

```
In[1]:
import numpy as np
import pandas as pd
keys = np.array([
['A', 'B'],
['A', 'B'],
['A', 'B'],
['A', 'B'],
['C', 'D'],
['C', 'D'],
['C', 'D'],
['E', 'F'],
['E', 'F'],
['G', 'H']
])
df = pd.DataFrame(np.hstack([keys,np.random.randn(10,4).round(2)]),
columns = ['col1', 'col2', 'col3', 'col4', 'col5', 'col6'])
df[['col3', 'col4', 'col5', 'col6']] = \
df[['col3', 'col4', 'col5', 'col6']].astype(float)
```

Below we show the data types and data for the test dataframe:

```
In [2]: df.dtypes
Out[2]:
col1 object
col2 object
col3 float64
col4 float64
col5 float64
col6 float64
dtype: object
In [3]: df
Out[3]:
col1 col2 col3 col4 col5 col6
0 A B 1.50 -1.70 -0.46 -0.30
1 A B 0.04 -0.22 -0.91 2.43
2 A B 0.25 -1.00 -0.78 0.46
3 A B 2.66 -1.56 -0.30 -0.44
4 C D -1.05 1.04 -0.31 -0.88
5 C D -0.19 -1.08 0.31 -0.91
6 C D -1.34 -1.83 -2.06 -2.09
7 E F 1.83 1.56 0.86 -0.70
8 E F 0.87 -1.03 -2.59 -1.35
9 G H -0.13 0.53 -0.40 -1.64
```

Now, suppose you want to get the `mean`

and the `count`

for some of the columns. Let's go ahead and run a simple aggreagation (`agg`

) to do this:

### One `count`

per aggregated column

```
In [8]: df[['col1', 'col2', 'col3', 'col4']]\
.groupby(['col1', 'col2']).agg(['mean', 'count'])
Out[8]:
col3 col4
mean count mean count
col1 col2
A B 1.1125 4 -1.120000 4
C D -0.8600 3 -0.623333 3
E F 1.3500 2 0.265000 2
G H -0.1300 1 0.530000 1
```

It is kind of annoying that you get one `count`

column for each of the columns aggregated. If all of your data is valid (i.e., you do not have any `NaN`

cells) then all of the `count`

columns will be redundant.

### One `count`

per group

To end up with a single `count`

column, we can save the `groupby`

results to a variable, and use it separately to calculate the mean, and to get the size of each group.

We then `join`

the `means`

with the `counts`

(renaming the columns along the way for clarity) to end up with a single dataframe:

```
In [9]: groupby_object = df[['col1', 'col2', 'col3', 'col4']]\
.groupby(['col1', 'col2'])
In [10]: groupby_object.agg('mean')\
.rename(columns = lambda x: x + ' mean')\
.join(pd.DataFrame(groupby_object.size(),
columns=['counts']))
Out[10]:
col3 mean col4 mean counts
col1 col2
A B 1.1125 -1.120000 4
C D -0.8600 -0.623333 3
E F 1.3500 0.265000 2
G H -0.1300 0.530000 1
```

**Disclaimer:**

If some of the columns that you are aggregating have null values, then you really want to be looking at the group sizes independently for each aggregated column. Otherwise you may be misled as to how many records are actually being used to calculate the mean.