2

I have a multiindex pandas dataframe that looks like this

 ID            I                   II                  III
 METRIC        a    b    c    d    a    b    c    d    a    b    c    d
 2015-08-01    0    1    2    3    20   21   22   23   40   41   42   43
 2015-08-02    4    5    6    7    24   25   26   27   44   45   46   47
 2015-08-03    8    9    10   11   28   29   30   31   48   49   50   51

where it is indexed by the dates (2015-08-01, 2015-08-02, 2015-08-03, etc.), the first-level columns (I, II, III) are IDs and the second-level columns are corresponding METRICs (a, b, c, d). I would like to reshape it to the following

METRIC               a    b    c    d
ID
I      2015-08-01    0    1    2    3
       2015-08-02    4    5    6    7
       2015-08-03    8    9    10   11
II     2015-08-01    20   21   22   23
       2015-08-02    24   25   26   27
       2015-08-03    28   29   30   31
III    2015-08-01    40   41   42   43
       2015-08-02    44   45   46   47
       2015-08-03    48   49   50   51

I have (unsuccessfully) looked into using .pivot, .stack, and .melt, but they don't give me what I am looking for. I currently loop over IDs and build a list of dataframes and concat them together as a new dataframe to get what I want.

Any suggestions would be greatly appreciated.

4

Let's use stack, swaplevel and sort_index:

df.stack(0).swaplevel(0,1).sort_index()

Output:

METRIC           a   b   c   d
ID                            
I   2015-08-01   0   1   2   3
    2015-08-02   4   5   6   7
    2015-08-03   8   9  10  11
II  2015-08-01  20  21  22  23
    2015-08-02  24  25  26  27
    2015-08-03  28  29  30  31
III 2015-08-01  40  41  42  43
    2015-08-02  44  45  46  47
    2015-08-03  48  49  50  51
  • Simple and Clear!! – WeNYoBen Jul 10 '17 at 15:28
  • @Wen yes it is :-) – piRSquared Jul 10 '17 at 15:41
  • @piRSquared yours too!!!learn a lot !! upvote – WeNYoBen Jul 10 '17 at 15:42
  • Thank you. It took me a while to understand the process, but now it makes sense. Nice solution :) Quick question: in my original dataframe, some IDs (say, V) have rows (say, at 2015-08-02) where all METRICs are NaNs; these get removed by this solution. Why is that? – darXider Jul 10 '17 at 15:52
3

You can let transpose or T do some of the work for you.

df.T.stack().unstack(1)

METRIC           a   b   c   d
ID                            
I   2015-08-01   0   1   2   3
    2015-08-02   4   5   6   7
    2015-08-03   8   9  10  11
II  2015-08-01  20  21  22  23
    2015-08-02  24  25  26  27
    2015-08-03  28  29  30  31
III 2015-08-01  40  41  42  43
    2015-08-02  44  45  46  47
    2015-08-03  48  49  50  51
  • Oooh.. I like using T here! Nice, Mr. piRSquared! +1 – Scott Boston Jul 10 '17 at 15:42
  • !upvote for the magic T – WeNYoBen Jul 10 '17 at 15:43
  • This is kinda like the Matrix..... "... that is not the spoon that bends. it is only yourself." – Scott Boston Jul 10 '17 at 15:44
  • Thank you. I tried transposing at first, but I'm still not comfortable with using stack and unstack, so I couldn't figure out how to reorder things. This solution is very concise and nice. Quick question: in my original dataframe, some IDs (say, V) have rows (say, at 2015-08-02) where all METRICs are NaNs; these get removed by this solution. Why is that? – darXider Jul 10 '17 at 15:53
  • 1
    @darXider stack takes levels from the columns object into the index object. When it does, it drops nulls. You can avoid that by stack(dropna=False) – piRSquared Jul 10 '17 at 16:02

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.