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

4 Answers 4


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)

Just add one more line to your code:

df2 = df.groupby('Quantity').agg({'Items': 'sum'}).sort_values('Items', ascending=False)

print (df2)
Output :
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()))

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.