# Weighted mean for multiple columns in a data frame in Pandas

I have a dataframe like below

``````Class|  Student|    V1| V2| V3| wb

A|      Max|        10| 12| 14| 1

A|      Ann|        9|  6|  7|  0.9

B|      Tom|        6|  7|  10| 0.3

B|      Dick|       3|  8|  7|  0.7

C|      Dibs|       5|  2|  3|  0.8

C|      Mock|       6|  4|  3|  0.6

D|      Sunny|      3|  4|  5|  0.9

D|      Lock|       8|  3|  6|  1
``````

And i want to calculate the Weighted Mean for V1,V2,V3 grouped by Class the result should be something like below

``````Class  V1_M  V2_M V3_M

A   9  8   3

B   5  3   3

C   4  4   3
``````

So far i can separate data frame for each column. But i feel very inefficient

And here is code for 1 variable

``````import pandas as pd
import numpy as np

def wtdavg(frame, var, wb):
d = frame[var]
w = frame[wb]
return (d * w).sum() / w.sum()

Matrix = df.groupby(['Class']).apply(wtdavg,var='V2',wb='wb')
print(Matrix)
``````

I am a newbie with 1 week of pandas experience. Thanks in advance.

Max

``````#use apply to calculate weighted mean for alll 3 columns in one go.
df2 = df.groupby('Class').apply(lambda x: pd.Series([sum(x.V1*x.wb)/sum(x.wb), sum(x.V2*x.wb)/sum(x.wb), sum(x.V3*x.wb)/sum(x.wb)]))
#rename columns
df2.columns=['V1_M','V2_M','V3_M']

df2
Out:
V1_M      V2_M       V3_M
Class
A      9.526316  9.157895  10.684211
B      3.900000  7.700000   7.900000
C      5.428571  2.857143   3.000000
D      5.631579  3.473684   5.526316
``````

Update (dynamic list of value columns, i.e. `var_cols`)

``````#put all your variable names in a list (can be copied over from df.columns)
var_cols = ['V1', 'V2', 'V3']
df2 = df.groupby('Class').apply(lambda x: pd.Series([sum(x[v] * x.wb) / sum(x.wb) for v in var_cols]))
df2.columns = [e+'_M' for e in var_cols]
V1_M      V2_M       V3_M
Class
A      9.526316  9.157895  10.684211
B      3.900000  7.700000   7.900000
C      5.428571  2.857143   3.000000
D      5.631579  3.473684   5.526316
``````
• Thank you so much. What if i have 100s of variable. Can we have dynamic series for lambda x: pd.Series([sum(x.V1*x.wb)/sum(x.wb) ....... until v1000)
– mAx
May 13, 2017 at 5:20
• thank you so much... it worked perfectly <br>df2 = df.groupby('Class').apply(lambda x: pd.Series([sum(x[v]*x.wb)/sum(x.wb) for v in var_cols]))
– mAx
May 13, 2017 at 9:14

More general solutions:

1.It create weighted mean for all columns without `Student`, `Class`:

``````df2 = df.drop('Student', axis=1) \
.groupby('Class') \
.apply(lambda x: x.drop(['Class', 'wb'], axis=1).mul(x.wb, 0).sum() / (x.wb).sum()) \
.reset_index()
print (df2)
Class      V1_M      V2_M       V3_M
0     A  9.526316  9.157895  10.684211
1     B  3.900000  7.700000   7.900000
2     C  5.428571  2.857143   3.000000
3     D  5.631579  3.473684   5.526316
``````

Or you can define columns for weighted mean:

``````df2 = df.groupby('Class') \
.apply(lambda x: x[['V1', 'V2', 'V3']].mul(x.wb, 0).sum() / (x.wb).sum()) \
.reset_index()
print (df2)
Class      V1_M      V2_M       V3_M
0     A  9.526316  9.157895  10.684211
1     B  3.900000  7.700000   7.900000
2     C  5.428571  2.857143   3.000000
3     D  5.631579  3.473684   5.526316
``````

More general is filter all columns starts with `V` by `filter`:

``````df2 = df.groupby('Class') \
.apply(lambda x: x.filter(regex='^V').mul(x.wb, 0).sum() / (x.wb).sum()) \
.reset_index()
print (df2)
Class      V1_M      V2_M       V3_M
0     A  9.526316  9.157895  10.684211
1     B  3.900000  7.700000   7.900000
2     C  5.428571  2.857143   3.000000
3     D  5.631579  3.473684   5.526316
``````
``````import pandas as pd
import numpy as np

def wtdavg(frame, var, wb):
d = frame[var]
w = frame[wb]
return (d * w).sum() / w.sum()