I have a function that creates several pandas dataframes with unsorted indexes. I want to add the values from these dataframes to an existing column in another dataframe based on index.
To get what i mean:
# original dataframe
df_original = pd.DataFrame({'a':range(8), 'b':range(8)})
df_original['c'] = np.nan
a b c
0 0 0 NaN
1 1 1 NaN
2 2 2 NaN
3 3 3 NaN
4 4 4 NaN
5 5 5 NaN
6 6 6 NaN
7 7 7 NaN
My function returns dataframes one by one with unsorted index:
# first df that is returned
df1 = pd.DataFrame(index=range(1,8,2), data=range(4), columns=['c'])
c
1 0
3 1
5 2
7 3
# second df that is returned
df2 = pd.DataFrame(index=range(0,8,2), data=range(4), columns=['c'])
c
0 0
2 1
4 2
6 3
I would like to add the c-column from these two dataframes to the c-column in the original dataframe´s c-column by index so i end up with:
# original dataframe in the end
a b c
0 0 0 0
1 1 1 0
2 2 2 1
3 3 3 1
4 4 4 2
5 5 5 2
6 6 6 3
7 7 7 3
How could I do this efficiently? My real original dataframe contains about 100k rows and the function returns around 100 values each time it´s called. In the end there will be no np.nan
in the c-column.
I am currently looping each new dataframe in the end of the function and use df_original.set_value()
to change the values in the original dataframe. There must be a better way?
I was also thinking about doing df_temp = pd.concat((df1, df2...), axis=0)
with all the new dataframes and then finish with pd.concat((df_original, df_temp), axis=1)
. How would you do this?