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I have a Pandas DataFrame using a MultiIndex on the rows:

index = pandas.MultiIndex.from_tuples(list(itertools.product(range(3), range(3))))
df = pandas.DataFrame(numpy.random.randn(9,3), index=index, columns=['A', 'B', 'C'])

            A         B         C
0 0  2.400417  0.698638  1.231540
  1 -0.023154 -2.110450  0.774964
  2 -1.282392 -0.062794  1.471655
1 0 -1.081853  0.261876 -1.771075
  1 -2.013747 -0.377957 -0.393802
  2  1.711172 -0.552468  1.018727
2 0  0.155821 -0.222691  0.496586
  1  0.563638 -0.756709  1.050212
  2 -1.446159 -0.891549  0.256695

I would like to shuffle this DataFrame on the first level of the index, so a possible result would be:

            A         B         C
1 0 -1.081853  0.261876 -1.771075
  1 -2.013747 -0.377957 -0.393802
  2  1.711172 -0.552468  1.018727
0 0  2.400417  0.698638  1.231540
  1 -0.023154 -2.110450  0.774964
  2 -1.282392 -0.062794  1.471655
2 0  0.155821 -0.222691  0.496586
  1  0.563638 -0.756709  1.050212
  2 -1.446159 -0.891549  0.256695
share|improve this question

2 Answers 2

up vote 4 down vote accepted

The reindex method can accomplish this when passed a reordered array of tuples matching the desired order. At which point, reordering can be done as best fits your problem. For example:

In [38]: df
Out[38]: 
            A         B         C
0 0 -1.725337  0.111493  0.178294
  1 -1.809003 -0.614219 -0.931909
  2  0.621427 -0.186233  0.254727
1 0 -1.322863  1.242415  1.375579
  1  0.249738 -1.280204  0.356491
  2 -0.743671  0.325841 -0.167772
2 0 -0.070937  0.401172 -1.790801
  1  1.433794  2.257198  1.848435
  2 -1.021557 -1.054363 -1.485536

In [39]: neworder = [1, 0, 2]

In [41]: newindex = sorted(df.index, key=lambda x: neworder.index(x[0]))

In [42]: newindex
Out[42]: 
[(1L, 0L),
 (1L, 1L),
 (1L, 2L),
 (0L, 0L),
 (0L, 1L),
 (0L, 2L),
 (2L, 0L),
 (2L, 1L),
 (2L, 2L)]

In [43]: df.reindex(newindex)
Out[43]: 
            A         B         C
1 0 -1.322863  1.242415  1.375579
  1  0.249738 -1.280204  0.356491
  2 -0.743671  0.325841 -0.167772
0 0 -1.725337  0.111493  0.178294
  1 -1.809003 -0.614219 -0.931909
  2  0.621427 -0.186233  0.254727
2 0 -0.070937  0.401172 -1.790801
  1  1.433794  2.257198  1.848435
  2 -1.021557 -1.054363 -1.485536
share|improve this answer
    
That is a very elegant solution. I ended up vectorizing the sort like this: newindex = df.index[ np.argsort(neworder[df.index.labels[0]]) ] –  Rodin May 7 '12 at 8:43
    
kudos for vectorizing! You have up'd my Numpy-fu. One point: since np.sort/np.argsort use the 'quicksort' algorithm by default, which is not guaranteed stable, it's not equivalent to using Python's sorted function, which is guaranteed stable. Sorting in your solution can made stable with argument kind='heapsort' though. –  Garrett May 7 '12 at 17:43
    
@Garrett by the docs of numpy (v 1.7.1) 'heapsort' is not stable. However 'mergesort' is said to be stable. Why do you recommend one over the other? –  eldad-a Feb 13 '14 at 14:18
    
In general, it shouldn't matter, I was just pointing out a difference between the two approaches. –  Garrett Feb 13 '14 at 17:29
    
thanks for clarifying that heapsort is not stable! –  Garrett Feb 13 '14 at 17:30

It would be much easier if the following worked, but no:

df.ix[[1, 0, 2]]

The following is more of a workaround. Maybe there is a better way but I couldn't figure out any. This merely creates a list of DataFrame 'slices' in the correct order and concatenates them with pandas.concat.

In : df
Out:
            A         B         C
0 0  1.202098 -0.031121  1.417629
  1 -0.895862  0.697531 -0.572411
  2  1.179101 -0.008602  1.583385
1 0  1.969477 -0.968004 -0.567695
  1 -1.504443 -0.002264 -0.413091
  2 -1.412457  0.310518  0.267475
2 0 -0.385933 -0.471800 -0.598141
  1 -0.105032  0.443437 -0.615566
  2 -1.035326 -0.282289 -0.042762

In : shuffled = [2,0,1]

In : df2 = pandas.concat([df.ix[i:i] for i in shuffled])

In : df2
Out:
            A         B         C
2 0 -0.385933 -0.471800 -0.598141
  1 -0.105032  0.443437 -0.615566
  2 -1.035326 -0.282289 -0.042762
0 0  1.202098 -0.031121  1.417629
  1 -0.895862  0.697531 -0.572411
  2  1.179101 -0.008602  1.583385
1 0  1.969477 -0.968004 -0.567695
  1 -1.504443 -0.002264 -0.413091
  2 -1.412457  0.310518  0.267475
share|improve this answer
    
why does this not work? idx =IndexSlice df.loc[idx[shuffled,:]] –  Dickster May 31 at 13:34

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