I have the following 15 minute data as a dataframe for 3 years. With the first two columns being the index.

2014-01-01 00:15:00  1269.6      
2014-01-01 00:30:00  1161.6      
2014-01-01 00:45:00  1466.4      
2014-01-01 01:00:00  1365.6      
2014-01-01 01:15:00  1362.6      
2014-01-01 01:30:00  1064.0      
2014-01-01 01:45:00  1171.2      
2014-01-01 02:00:00  1171.0      
2014-01-01 02:15:00  1330.4      
2014-01-01 02:30:00  1309.6      
2014-01-01 02:45:00  1308.4      
2014-01-01 03:00:00  1494.0    

I have used resample to get a second series with monthly averages.

data_Monthly = data.resample('1M', how='mean')

How can I divide the values in the last column by their monthly average with the result being still a time series on 15 minute granularity?

4 Answers 4


First make a grouper:

import pandas as pd

In [1]: grouper = pd.Grouper(freq="1M")

Then make your new column:

In [2]: df['normed'] = df.groupby(grouper).transform(lambda x: x/x.mean())

By passing grouper to the groupby method you group your data into one month chunks. Within each chunk you divide the 15 minute interval datum by the mean for that month.


I think it is generally recommended to use Grouper instead of TimeGrouper. Have a look at this. For example, if your column is called Date, use

grouper = pd.Grouper(key='Date', freq='M')

instead of using TimeGrouper and then continue as @Zelazny7 suggested. If your column is not a datetime index then use

df['Date'] = pd.to_datetime(df['Date'])

This can be done in one line with:

df.groupby([df.index.year, df.index.month]).transform(lambda x: x/x.mean())

data_Monthly = data.resample('M',on='Date').mean()

  • 1
    Welcome to SO! Please consider explaining your answer alongside the code you provide, as it will only help the SO community to understand how your method works.
    – JChat
    Apr 13, 2020 at 7:33

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