join or merge with overwrite in pandas

Solution 1:

How about: df2.combine_first(df1)?

In [33]: df2
Out[33]: 
                   A         B         C         D
2000-01-03  0.638998  1.277361  0.193649  0.345063
2000-01-04 -0.816756 -1.711666 -1.155077 -0.678726
2000-01-05  0.435507 -0.025162 -1.112890  0.324111
2000-01-06 -0.210756 -1.027164  0.036664  0.884715
2000-01-07 -0.821631 -0.700394 -0.706505  1.193341
2000-01-10  1.015447 -0.909930  0.027548  0.258471
2000-01-11 -0.497239 -0.979071 -0.461560  0.447598

In [34]: df1
Out[34]: 
                   A         B         C
2000-01-03  2.288863  0.188175 -0.040928
2000-01-04  0.159107 -0.666861 -0.551628
2000-01-05 -0.356838 -0.231036 -1.211446
2000-01-06 -0.866475  1.113018 -0.001483
2000-01-07  0.303269  0.021034  0.471715
2000-01-10  1.149815  0.686696 -1.230991
2000-01-11 -1.296118 -0.172950 -0.603887
2000-01-12 -1.034574 -0.523238  0.626968
2000-01-13 -0.193280  1.857499 -0.046383
2000-01-14 -1.043492 -0.820525  0.868685

In [35]: df2.comb
df2.combine        df2.combineAdd     df2.combine_first  df2.combineMult    

In [35]: df2.combine_first(df1)
Out[35]: 
                   A         B         C         D
2000-01-03  0.638998  1.277361  0.193649  0.345063
2000-01-04 -0.816756 -1.711666 -1.155077 -0.678726
2000-01-05  0.435507 -0.025162 -1.112890  0.324111
2000-01-06 -0.210756 -1.027164  0.036664  0.884715
2000-01-07 -0.821631 -0.700394 -0.706505  1.193341
2000-01-10  1.015447 -0.909930  0.027548  0.258471
2000-01-11 -0.497239 -0.979071 -0.461560  0.447598
2000-01-12 -1.034574 -0.523238  0.626968       NaN
2000-01-13 -0.193280  1.857499 -0.046383       NaN
2000-01-14 -1.043492 -0.820525  0.868685       NaN

Note that it takes the values from df1 for indices that do not overlap with df2. If this doesn't do exactly what you want I would be willing to improve this function / add options to it.

Solution 2:

For a merge like this, the update method of a DataFrame is useful.

Taking the examples from the documentation:

import pandas as pd
import numpy as np

df1 = pd.DataFrame([[np.nan, 3., 5.], [-4.6, 2.1, np.nan],
                   [np.nan, 7., np.nan]])
df2 = pd.DataFrame([[-42.6, np.nan, -8.2], [-5., 1.6, 4]],
                   index=[1, 2])

Data before the update:

>>> df1
     0    1    2
0  NaN  3.0  5.0
1 -4.6  2.1  NaN
2  NaN  7.0  NaN
>>>
>>> df2
      0    1    2
1 -42.6  NaN -8.2
2  -5.0  1.6  4.0

Let's update df1 with data from df2:

df1.update(df2)

Data after the update:

>>> df1
      0    1    2
0   NaN  3.0  5.0
1 -42.6  2.1 -8.2
2  -5.0  1.6  4.0

Remarks:

  • It's important to notice that this is an operation "in place", modifying the DataFrame that calls update.
  • Also note that non NaN values in df1 are not overwritten with NaN values in df2