I have two dataframes, where the first dataframe indexes/columns relate to the second dataframe indexes/columns. In df1, the columns are the months of df2, and the rows are the low layer of the indexes. I want to distribute df1 in df2 based on that relation. Here is a simplified example:

df1 = pd.DataFrame([[1, 2], [3, 4]], index= [1,2], columns=[1, 6])

index_list = [[1, 1, 2, 2],[1,2,1,2]]
header_list = [np.datetime64('2020-01-01'), np.datetime64('2020-06-01'),np.datetime64('2021-01-01'),np.datetime64('2021-06-01')]
df2 = pd.DataFrame(index=index_list, columns=header_list)

enter image description here


A bit of work but no major obstacle.

df1.index.name, df1.columns.name = 'key', 'month'
df2.index.names, df2.columns.name = ['a', 'key'], 'date'
x = df1.stack().reset_index().rename(columns={0: 'value'})
y = df2.fillna(0).stack().reset_index(level=-1).drop(0, axis=1)
y['month'] = y['date'].apply(lambda z: z.month)
y = y.reset_index().merge(x, on=['key', 'month']).drop('month', axis=1)
y = y.set_index(['a', 'key', 'date']).unstack('date')
  • there is a mistake in the provided example. Year of last date shoudl be 2021 – Mrml91 Mar 20 '20 at 23:01
  • You are right, fixed it. Your code works, thanks! I was wondering if there was a simplier way to do this :) – Javier Lorenzini Mar 22 '20 at 20:30

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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