I have a pandas dataframe that I constructed by reading in various CSV files. It looks like this:

ID                  V2        H1-b          V3          H2          V1        H1a
position         -50.0       600.0      -125.0      -720.0        23.0      450.0
2000-01-01   -1.057609    1.160002    1.082879   -1.304001   -0.259283   1.285260  
2000-02-01   -1.133474   -0.385869    0.756780    2.311465    1.060337  -1.059041  
2000-03-01    1.209086   -0.774133    0.018603    0.969665   -1.221080   1.717816  
...

When I try sorting it with df_sort = df.sortlevel(level=1,axis=1) (or sortlevel='position', same result), I get the following result:

ID                  V3          V2          H2          V1        H1-a     H1-b 
position        -125.0       -50.0      -720.0        23.0       450.0    600.0 
2000-01-01    1.082879   -1.057609   -1.304001   -0.259283    1.285260    1.160002 
2000-02-01    0.756780   -1.133474    2.311465    1.060337   -1.059041   -0.385869 
2000-03-01    0.018603    1.209086    0.969665   -1.221080    1.717816   -0.774133  

The positive Numbers are sorted the correct way (23<450<600), but the negative numbers are "random".

As far as I can tell, all my CSV files are the same (no spaces before the numbers or something), and all the entries in the dataframe are produced by the same script.

But when I tried to see if I can reproduce that with a simple synthetic dataframe, sorting works:

header=pd.MultiIndex.from_product([[-3,-300,4,100,34,-324],['s']],names=['loc','X'])
df = pd.DataFrame(np.random.randn(5, 6), index=['a','b','c','d','e'], columns = header)

results in

In [6]: df.head()
Out[6]: 
loc      -3        -300       4         100       34       -324
S           s         s         s         s         s         s
a   -0.444521 -0.616153  2.261075 -1.857406  0.367582  1.212705
b   -1.389062 -0.741163  0.512457  1.013495 -2.003147  0.651232
c   -0.376925 -0.271408 -0.854247  0.355438 -0.791896 -1.359056
d   -2.929450  0.228446  1.287110 -1.117579 -0.501250  1.340859
e   -0.653089  0.245901  0.036066  0.776839 -1.112828 -0.476782

In [9]: df_sort = df.sortlevel('loc',axis=1)

In [10]: df_sort.head()
Out[10]: 
loc      -324      -300      -3         4         34        100
S           s         s         s         s         s         s
a    1.212705 -0.616153 -0.444521  2.261075  0.367582 -1.857406
b    0.651232 -0.741163 -1.389062  0.512457 -2.003147  1.013495
c   -1.359056 -0.271408 -0.376925 -0.854247 -0.791896  0.355438
d    1.340859  0.228446 -2.929450  1.287110 -0.501250 -1.117579
e   -0.476782  0.245901 -0.653089  0.036066 -1.112828  0.776839

as does sortlevel(level = 0

First idea was that the the other things in my index disturb the sorting, but df_sort = df_GW.sortlevel(level='location',axis=1,sort_remaining=False) does not change anything in the sorting.

What am I doing wrong?

I suspect that for whatever reason something gets treated as a string or something, but I can't find any indication for that.

EDIT output of df.dtypes: real df:

In [29]: df_GW.dtypes
Out[29]: 
ID     Position  
V2     -50.0     float64
H1-b   600.0     float64
V3     -125.0    float64
H2     -720.0    float64
V1     23.0      float64
H1-a   450.0     float64
dtype: object

synthetic:

AttributeError: 'DataFrame' object has no attribute 'dtype'

df.columns real:

 MultiIndex(levels=[[u'H1-a', u'H1-b', u'H2', u'V1', u'V2', u'V3'], [u'-125.0', u'-50.0', u'-720.0', u'23.0', u'450.0', u'600.0']],
       labels=[[4, 1, 5, 2, 3, 0], [1, 5, 0, 2, 3, 4], [4, 1, 5, 2, 3, 0], [0, 0, 0, 0, 0, 0]], #not sure what's happening here. The original df is a bit bigger, and I'm cutting it to size
       names=[u'ID', u'position'])

synthetic:

 MultiIndex(levels=[[-720.0, -125.0, -50.0, 23.0, 450.0, 600.0], [u's']],
       labels=[[2, 5, 1, 0, 3, 4], [0, 0, 0, 0, 0, 0]],
       names=[u'loc', u'S'])
  • 1
    what is the output of df.dtypes? – juanpa.arrivillaga Nov 28 '16 at 21:06
  • with the real and synthetic data I get an error 'DataFrame' object has no attribute 'types'. – JC_CL Nov 28 '16 at 21:09
  • what return df.columns? – jezrael Nov 28 '16 at 21:09
  • Yeah, because you want dtypes – juanpa.arrivillaga Nov 28 '16 at 21:09
  • If you showed us the output of df.dtypes we could figure out if your columns are character, not integer/numeric – smci Nov 28 '16 at 21:14
up vote 2 down vote accepted

I think there is problem types of numbers in first level of MultiIndex are not float, but string:

np.random.seed(0)
header=pd.MultiIndex.from_product([['-125','-50','4','100','34','-720'],
                                   ['s']],names=['loc','X'])
df = pd.DataFrame(np.random.randn(5, 6), index=['a','b','c','d','e'], columns = header)
print (df)
loc      -125       -50         4       100        34      -720
X           s         s         s         s         s         s
a    1.764052  0.400157  0.978738  2.240893  1.867558 -0.977278
b    0.950088 -0.151357 -0.103219  0.410599  0.144044  1.454274
c    0.761038  0.121675  0.443863  0.333674  1.494079 -0.205158
d    0.313068 -0.854096 -2.552990  0.653619  0.864436 -0.742165
e    2.269755 -1.454366  0.045759 -0.187184  1.532779  1.469359

df.sortlevel('loc',axis=1, inplace=True)
print (df)
loc      -125       -50      -720       100        34         4
X           s         s         s         s         s         s
a    1.764052  0.400157 -0.977278  2.240893  1.867558  0.978738
b    0.950088 -0.151357  1.454274  0.410599  0.144044 -0.103219
c    0.761038  0.121675 -0.205158  0.333674  1.494079  0.443863
d    0.313068 -0.854096 -0.742165  0.653619  0.864436 -2.552990
e    2.269755 -1.454366  1.469359 -0.187184  1.532779  0.045759

If need cast string level to float, need change values and assign to new column names:

#change multiindex
cols = list(zip(df.columns.get_level_values('loc').astype(float),
                df.columns.get_level_values('X')))
df.columns = pd.MultiIndex.from_tuples(cols, names = df.columns.names)


df.sortlevel('loc',axis=1, inplace=True)
print (df)
loc      -720      -125      -50        4         34        100
X           s         s         s         s         s         s
a   -0.977278  1.764052  0.400157  0.978738  1.867558  2.240893
b    1.454274  0.950088 -0.151357 -0.103219  0.144044  0.410599
c   -0.205158  0.761038  0.121675  0.443863  1.494079  0.333674
d   -0.742165  0.313068 -0.854096 -2.552990  0.864436  0.653619
e    1.469359  2.269755 -1.454366  0.045759  1.532779 -0.187184
  • Seems to be the case. I guess the u'-50.0',... I get from df.columns are pointing in that direction. That means something is wrong with the stuff that is constructing the dataframe. As a quick hack, is there a way to turn an index from string to float (or integer)? – JC_CL Nov 28 '16 at 21:27
  • Please check update. – jezrael Nov 28 '16 at 21:38
  • Great, that works! Thanks! – JC_CL Nov 28 '16 at 21:43

Try df.sort_values(by=[1], axis=0, ascending=True) where [1] is your column of values.

  • I am trying to sort in my rows, not in my columns. – JC_CL Nov 28 '16 at 21:11

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