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I have a DataFrame df1 (index as a datetime) and df2 with many columns,different length index.
I need to combine df1with df2, replacing index in df2. As a result presented df3.

df1
                      T1
2011-09-01 00:00:00   10
2011-09-01 00:10:00   20
2011-09-01 00:20:00   30  
2011-09-01 00:30:00   40

df2
    T2   T3        
0   1.1  2.0 
1   1.2  3.0
2   1.3  4.0

df3
                      T1   T2  T3
2011-09-01 00:00:00   10  1.1  2.0
2011-09-01 00:10:00   20  1.2  3.0
2011-09-01 00:20:00   30  1.3  4.0
2011-09-01 00:30:00   40  Nan  Nan

I wanted to try concat, join, merge, append but those doesn't seem to be appropriate.
Using set_index resulted in having an error: length mismatch.

I end up trying this:

  df3=pd.DataFrame(df2,index=df1.index,copy=True)

I got the desired index, and columns from df2 but they were empty.

share|improve this question
    
It's definitely worth reading the docs and really understanding what each one does relative to the other. You'll gain a bit of intuition for when you should use each. Personally, I end up using concat more than any of the others. –  Phillip Cloud Aug 22 '13 at 22:09
    
I've spent many hours for this "easy" task, reading docs and web pages and...I'm thankful for getting help from you. –  Michal Aug 23 '13 at 11:20

2 Answers 2

up vote 1 down vote accepted

Here's one way to do it:

In [32]: from pandas import DataFrame, date_range, concat

In [33]: from numpy.random import randn

In [34]: df = DataFrame(randn(5, 1), index=date_range('20010101', periods=5), columns=['A'])

In [35]: df2 = DataFrame(randn(3, 2), columns=list('BC'))

In [36]: concat([df, df2.set_index(df.index[:len(df2)])], axis=1)
Out[36]:
                A      B      C
2001-01-01 -0.043  0.759 -0.125
2001-01-02 -1.377  0.895  0.629
2001-01-03  0.263 -0.007 -0.515
2001-01-04  1.546    NaN    NaN
2001-01-05 -0.657    NaN    NaN

You can also do this with DataFrame.join() for slightly shorter code:

In [7]: df.join(df2.set_index(df.index[:len(df2)]))
Out[7]:
                A      B      C
2001-01-01 -0.607 -0.038  0.593
2001-01-02  0.573  0.399 -0.627
2001-01-03  0.319  0.312 -0.152
2001-01-04 -1.671    NaN    NaN
2001-01-05 -1.589    NaN    NaN
share|improve this answer
    
kind of feels like there could be a way to insert via iloc in one go, but I can't think of it. –  Andy Hayden Aug 22 '13 at 22:26
    
Thank you @Philip Cloud. I tried both your answers. For this example all work perfectly but when I introduced this to my files only df.join was ok. Using concat got 'ValueError: Shape of passed values is (18, 52760), indices imply (18, 52727)'. It's strange because df1 len is 52716 and df2 52555. –  Michal Aug 23 '13 at 11:12
    
After df.join the df3.indexgot 22 more index entries than df1.index. Doing some calculation on df1 and df3 I've received 'TypeError: incompatible index of inserted column with frame index'. –  Michal Aug 23 '13 at 11:54
    
I've checked df1 index column and they were some duplicates. After removing, both methods works. Anyway join and concat doesn't work properly in case there are duplicated index entries... –  Michal Aug 23 '13 at 17:11
    
If you have duplicate indexes in df and then you're resetting the index of df2 to match that of df, then you'll necessarily have duplicates in the joined index. So the extra index entries are expected. Did you have something else in mind? –  Phillip Cloud Aug 23 '13 at 17:24

Just to throw out another (hacky) method, this one modifies df1:

In [11]: df1[df2.columns] = np.nan

In [12]: df1
Out[12]:
                     T1  T2  T3
2011-09-01 00:00:00  10 NaN NaN
           00:10:00  20 NaN NaN
           00:20:00  30 NaN NaN
           00:30:00  40 NaN NaN

In [13]: df1.iloc[:len(df2.index), -len(df2.columns):] = df2.values

In [14]: df1
Out[14]:
                     T1   T2  T3
2011-09-01 00:00:00  10  1.1   2
           00:10:00  20  1.2   3
           00:20:00  30  1.3   4
           00:30:00  40  NaN NaN

Note: This will get tripped up if you have duplicate colnames.

However, I prefer @PhilipClouds's method.

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