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I generate a grouped dataframe df = df.groupby(['X','Y']).max() which I then want to write (to csv, without indexes). So I need to convert 'X' and 'Y' back to regular columns; I tried using reset_index(), but the order of columns was wrong.

How to restore columns 'X' and 'Y' to their exact original column position?

Is the solution:

df.reset_index(level=0, inplace=True)

and then find a way to change the order of the columns?


(I also found this approach, for multiindex)

  • Is the FutureWarning coming from the lambda x: x == x.max()? If you need it to be an identity check, presumably you can use lambda x: x is x.max(). – Paul Jan 26 '16 at 23:31
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    Does this work? outputframe.groupby(['somecol','someothercol'],as_index=False).max() – maxymoo Jan 27 '16 at 0:33
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    I did not understand your question at all. Do you want to remove NaN values from your columns by discarding the rows? Or do you want to combine the rows together into a single row? – Kartik Jan 27 '16 at 5:59
  • @Kartik There are semi-duplicates in a table with incomplete rows. If two rows match in a couple specified columns, they are deemed as duplicates. I then want these two rows to be comined into a single row while retaining/merging as much information as possible. There are a lot of cases where there are additional columns in which one row has a string-value and the other one is nan and I then want the string value to be present in the merged row. – bkd Jan 28 '16 at 13:39
  • I also do not understand your question at all, and I don't see where 'somecol','someothercol' come from. Given the first part (merging multiple rows) is solved and not an issue, please remove all references to it and show us 'somecol','someothercol' on line 1. Or whatever startpoint you need to make this an MCVE. Otherwise noone else can understand or reuse this question. – smci Jul 19 '19 at 2:54
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This solution keeps the columns as-is and doesn't create indexes, after grouping, hence we don't need reset_index() and column reordering at the end:

df.groupby(['X','Y'],as_index=False).max()

(After testing a lot of different methods, the simplest one was the best solution (as always) and the one which eluded me the longest. Thanks to @maxymoo for pointing it out.)

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