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This may be a bug, but it may also be a subtlety of pandas that I'm missing. I'm combining two dataframes and the result's index isn't sorted. What's weird is that I've never seen a single instance of combine_first that failed to maintain the index sorted before.

>>> a1
                            X  Y
DateTime                                    
2012-11-06 16:00:11.477563      8        80
2012-11-06 16:00:11.477563      8        63
>>> a2
                        X  Y
DateTime                                   
2012-11-06 15:11:09.006507      1        37
2012-11-06 15:11:09.006507      1        36
>>> a1.combine_first(a2)
                            X  Y
DateTime                                   
2012-11-06 16:00:11.477563      8        80
2012-11-06 16:00:11.477563      8        63
2012-11-06 15:11:09.006507      1        37
2012-11-06 15:11:09.006507      1        36
>>> a2.combine_first(a1)
                            X  Y
DateTime                                    
2012-11-06 16:00:11.477563      8        80
2012-11-06 16:00:11.477563      8        63
2012-11-06 15:11:09.006507      1        37
2012-11-06 15:11:09.006507      1        36

I can reproduce, so I'm happy to take suggestions. Guesses as to what's going on are most welcome.

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unrelated comment (I don't know what pandas is), but I read the title as "unexpected behaviour when combining two dataframes into pandas" and it made me laugh :) –  mathematical.coffee Nov 7 '12 at 23:40

2 Answers 2

up vote 1 down vote accepted

The combine_first function uses index.union to combine and sort the indexes. The index.union docstring states that it only sorts if possible, so combine_first is not necessarily going to return sorted results by design.

For non-monotonic indexes, the index.union tries to sort, but returns unsorted results if there is an exception. I don't know if this is a bug or not, but index.union does not even attempt to sort monotonic indexes like the datetime index in your example.

I've opened an issue on GitHub, but I guess you should do a2.combine_first(a1).sort_index() for any datetime indexes for now.

Update: This bug is now fixed on GitHub

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Yes, I've done that ( though it's .sort_index() ) Seems like a bug two me... –  Arthur B. Nov 8 '12 at 13:23

Do you actually mean to use .append()?

Try:-

a2.append(a1)

combine_first is not actually an append operation. See - http://pandas.pydata.org/pandas-docs/dev/basics.html?highlight=combine_first#combining-overlapping-data-sets:-

A problem occasionally arising is the combination of two similar data sets where values in one are preferred over the other. An example would be two data series representing a particular economic indicator where one is considered to be of “higher quality”. However, the lower quality series might extend further back in history or have more complete data coverage. As such, we would like to combine two DataFrame objects where missing values in one DataFrame are conditionally filled with like-labeled values from the other DataFrame.

while append is http://pandas.pydata.org/pandas-docs/dev/generated/pandas.DataFrame.append.html?highlight=append

Append columns of other to end of this frame’s columns and index, returning a new object. Columns not in this frame are added as new columns.

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No, I don't mean to use append() –  Arthur B. Nov 8 '12 at 13:22

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