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I have two dataframes, both indexed by timeseries. I need to add the elements together to form a new dataframe, but only if the index and column are the same. If the item does not exist in one of the dataframes then it should be treated as a zero.

I've tried using .add but this sums regardless of index and column. Also tried a simple combined_data = dataframe1 + dataframe2 but this give a NaN if both dataframes don't have the element.

Any suggestions?

Thanks

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Can you clarify what you want to happen if an item does not exist in one or both dataframes? You say if the item does not exist in one dataframe, it should be treated as zero --- do you mean the value in that dataframe should be treated as zero and added to the value from the other dataframe, or do you mean the value in the result dataframe should be zero? Also, you say df1+df2 doesn't work because it gives NaN if both don't have the element. What do you want to happen in this case? You want a zero in the result? –  BrenBarn Jun 19 '12 at 18:44

3 Answers 3

up vote 16 down vote accepted

How about x.add(y, fill_value=0)?

import pandas as pd

df1 = pd.DataFrame([(1,2),(3,4),(5,6)], columns=['a','b'])
Out: 
   a  b
0  1  2
1  3  4
2  5  6

df2 = pd.DataFrame([(100,200),(300,400),(500,600)], columns=['a','b'])
Out: 
     a    b
0  100  200
1  300  400
2  500  600

df_add = df1.add(df2, fill_value=0)
Out: 
     a    b
0  101  202
1  303  404
2  505  606
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Perfect, just what I was after. Thanks –  cs0679 Jun 20 '12 at 10:53

If I understand you correctly, you want something like:

(x.reindex_like(y).fillna(0) + y.fillna(0)).fillna(0)

This will give the sum of the two dataframes. If a value is in one dataframe and not the other, the result at that position will be that existing value. If a value is missing in both dataframes, the result at that position will be zero.

>>> x
   A   B   C
0  1   2 NaN
1  3 NaN   4
>>> y
    A   B   C
0   8 NaN  88
1   2 NaN   5
2  10  11  12
>>> (x.reindex_like(y).fillna(0) + y.fillna(0)).fillna(0)
    A   B   C
0   9   2  88
1   5   0   9
2  10  11  12
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1  
Thanks, but I didn't explain my data very well as I have different columns in both DataFrames e.g. A, B, C in dataframe1 and A, B, D in dataframe 2. The output should be a dataframe with A, B, C, D –  cs0679 Jun 20 '12 at 10:56

For making more general the answer... first I will take the common index for synchronizing both dataframes, then I will join each of them to my pattern (dates) and I will sum the columns of the same name and finally join both dataframes (deleting added columns in one of them),

you can see an example (with google's stock prices taken from google) here:

import numpy as np
import pandas as pd
import datetime as dt

prices = pd.DataFrame([[553.0, 555.5, 549.3, 554.11, 0],
                       [556.8, 556.8, 544.05, 545.92, 545.92],
                       [545.5, 546.89, 540.97, 542.04, 542.04]],
                       index=[dt.datetime(2014,11,04), dt.datetime(2014,11,05), dt.datetime(2014,11,06)],
                       columns=['Open', 'High', 'Low', 'Close', 'Adj Close'])

corrections = pd.DataFrame([[0, 555.22], [1238900, 0]],
                    index=[dt.datetime(2014,11,3), dt.datetime(2014,11,4)],
                    columns=['Volume', 'Adj Close'])

dates = pd.DataFrame(prices.index, columns = ['Dates']).append(pd.DataFrame(corrections.index, columns = ['Dates'])).drop_duplicates('Dates').set_index('Dates').sort(axis=0)
df_corrections = dates.join(corrections).fillna(0)
df_prices = dates.join(prices).fillna(0)

for col in prices.columns:
    if col in corrections.columns:
        df_prices[col]+=df_corrections[col]
        del df_corrections[col]

df_prices = df_prices.join(df_corrections)
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