# Get normalised value counts weighted by another column?

I have a dataframe like this in Pandas:

``````df = pd.DataFrame({
'org': ['A1', 'B1', 'A1', 'B2'],
'DIH': [True, False, True, False],
'Quantity': [10,20,10,20],
'Items': [1, 2, 3, 4]
})
``````

Now I want to get the value counts and modal value of `Quantity`, but weighted by the number of `Items`.

So I know that I can do

``````df.groupby('Quantity').agg({'Items': 'sum'}).sort_values('Items', ascending=False)
``````

And get this:

``````Quantity    Items
20          6
10          4
``````

But how do I get this as a percentage value, like this?

``````Quantity    Items
20          60
10          40
``````

This worked for me

``````df.groupby('Quantity').agg({'Items': 'sum'}).sort_values('Items', ascending=False)/df['Items'].sum()*100
``````

If it's of some interest, here a function that take a dataframe as input and output a weighted value counts (normalized or not).

``````def weighted_value_counts(x, *args, **kwargs):
normalize = kwargs.get('normalize', False)
c0 = x.columns[0]
c1 = x.columns[1]
xtmp = x[[c0,c1]].groupby(c0).agg({c1:'sum'}).sort_values(c1,ascending=False)
s = pd.Series(index=xtmp.index, data=xtmp[c1], name=c0)
if normalize:
s = s / x[c1].sum()
return s
``````

Using the example of the question, where the weights are in the column `Item`.
You can obtain your weighted normalized value counts by doing:

``````weighted_value_counts(df[['Quantity','Item']], normalize=True)
``````

``````df2 = df.groupby('Quantity').agg({'Items': 'sum'}).sort_values('Items', ascending=False)
df2['Items']=(df2['Items']*100)/df2['Items'].sum()

print (df2)
Output :
Items
Quantity
20         60.0
10         40.0
``````

try this instead (one line) :

``````df.groupby('Quantity').agg({'Items': 'sum'}).sort_values('Items', ascending=False).apply(lambda x: 100*x/float(x.sum()))
``````