# Count number of occurences of values per column of DataFrame

I have the following dataframe:

``````df = pd.DataFrame(np.array([[4, 1], [1,1], [5,1], [1,3], [7,8], [np.NaN,8]]), columns=['a', 'b'])

a    b
0   4    1
1   1    1
2   5    1
3   1    3
4   7    8
5   Nan  8
``````

Now I would like to do a value_counts() on the columns for values from 1 to 9 which should give me the following:

``````    a    b
1   2    3
2   0    0
3   0    1
4   1    0
5   1    0
6   0    0
7   1    0
8   0    2
9   0    0
``````

That means I just count the number of occurences of the values 1 to 9 for each column. How can this be done? I would like to get this format so that I can apply afterwards `df.plot(kind='bar', stacked=True)` to get e stacked bar plot with the discrete values from 1 to 9 at the x axis and the count for a and b on the y axis.

Use `pd.value_counts`:

``````df.apply(pd.value_counts).reindex(range(10)).fillna(0)
``````

Use `np.bincount` on each column:

``````df.apply(lambda x: np.bincount(x.dropna(),minlength=10))

a  b
0  0  0
1  2  3
2  0  0
3  0  1
4  1  0
5  1  0
6  0  0
7  1  0
8  0  2
9  0  0
``````

Alternatively, using a list comprehension instead of `apply`.

``````pd.DataFrame([
np.bincount(df[c].dropna(), minlength=10) for c in df
], index=df.columns).T

a  b
0  0  0
1  2  3
2  0  0
3  0  1
4  1  0
5  1  0
6  0  0
7  1  0
8  0  2
9  0  0
``````