Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

How do I order columns according to the values of the last row? In the example below, my final df will have columns in the following order: 'ddd' 'aaa' 'ppp' 'fff'.

>>> df = DataFrame(np.random.randn(10, 4), columns=['ddd', 'fff', 'aaa', 'ppp'])
>>> df
        ddd       fff       aaa       ppp
0 -0.177438  0.102561 -1.318710  1.321252
1  0.980348  0.786721  0.374506 -1.411019
2  0.405112  0.514216  1.761983 -0.529482
3  1.659710 -1.017048 -0.737615 -0.388145
4 -0.472223  1.407655 -0.129119 -0.912974
5  1.221324 -0.656599  0.563152 -0.900710
6 -1.816420 -2.898094 -0.232047 -0.648904
7  2.793261  0.568760 -0.850100  0.654704
8 -2.180891  2.054178 -1.050897 -1.461458
9 -1.123756  1.245987 -0.239863  0.359759
share|improve this question

[updated to simplify]

tl;dr:

In [29]: new_columns = df.columns[df.ix[df.last_valid_index()].argsort()]

In [30]: df[new_columns]
Out[30]: 
        aaa       ppp       fff       ddd
0  0.328281  0.375458  1.188905  0.503059
1  0.305457  0.186163  0.077681 -0.543215
2  0.684265  0.681724  0.210636 -0.532685
3 -1.134292  1.832272  0.067946  0.250131
4 -0.834393  0.010211  0.649963 -0.551448
5 -1.032405 -0.749949  0.442398  1.274599

Some explanation follows. First, build the DataFrame:

In [24]: df = pd.DataFrame(np.random.randn(6, 4), columns=['ddd', 'fff', 'aaa', 'ppp'])

In [25]: df
Out[25]: 
        ddd       fff       aaa       ppp
0  0.503059  1.188905  0.328281  0.375458
1 -0.543215  0.077681  0.305457  0.186163
2 -0.532685  0.210636  0.684265  0.681724
3  0.250131  0.067946 -1.134292  1.832272
4 -0.551448  0.649963 -0.834393  0.010211
5  1.274599  0.442398 -1.032405 -0.749949

Get the last row:

In [26]: last_row = df.ix[df.last_valid_index()]

Get the indices that would sort it:

In [27]: last_row.argsort()
Out[27]: 
ddd    2
fff    3
aaa    1
ppp    0
Name: 5, Dtype: int32

Use this to index df:

In [28]: df[last_row.argsort()]
Out[28]: 
        aaa       ppp       fff       ddd
0  0.328281  0.375458  1.188905  0.503059
1  0.305457  0.186163  0.077681 -0.543215
2  0.684265  0.681724  0.210636 -0.532685
3 -1.134292  1.832272  0.067946  0.250131
4 -0.834393  0.010211  0.649963 -0.551448
5 -1.032405 -0.749949  0.442398  1.274599

Profit!

share|improve this answer

I would use transpose and the sort method (which works on columns):

df = pd.DataFrame(np.random.randn(10, 4), columns=['ddd', 'fff', 'aaa', 'ppp'])
last_row_name = df.index[-1]
sorted_df = df.T.sort(columns=last_row_name).T

You might suffer a performance hit but it is quick and easy.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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