5

I have two dataframes with identical structures df and df_a. df_a is a subset of df that I need to reintegrate into df. Essentially, df_a has various rows (with varying indices) from df that have been manipulated.

Below is an example of indices of each df and df_a. These both have the same column structure so all the columns are the same, it's only the rows and idex of the rows that differ.

>> df
index  ..  other_columns  ..
0   
1
2
3
. .
9999
10000
10001

[10001 rows x 20 columns]

>> df_a
index  ..  other_columns  ..
5
12
105
712
. .
9824
9901
9997

[782 rows x 20 columns]

So, I want to overwrite only the rows in df that have the indices of df_a with the corresponding rows in df_a. I checked out Replace rows in a Pandas df with rows from another df and replace rows in a pandas data frame but neither of those tell how to use the indices of another dataframe to replace the values in the rows.

2 Answers 2

4

Something along the lines of:

df.loc[df_a.index, :] = df_a[:]
0

I don't know if this wants you meant, for that you would need to be more specific, but if the first data frame was modified to be a new data frame with different indexes, then you can use this code to reset back the indexes:

import pandas as pd

df_a = pd.DataFrame({'a':[1,2,3,4],'b':[5,4,2,7]}, index=[2,55,62,74])
df_a.reset_index(inplace=True, drop=True)
print(df_a)

PRINTS:
   a  b
0  1  5
1  2  4
2  3  2
3  4  7

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.