Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have two dataframes: one with 12 cols and the other with 9, both of them have 624 rows. I would like to join them side by side resulting in a 21 cols dataframe with the same 624 number of rows. I want to preserve the rows order as is. Observe that both dataframes are aligned in descending order of the column 'Name' and the column 'L1'. I have tried several things join them by axis=1 ignoring index or not. All that I have is a dataframe with rows doubled and a bunch of NANs. I also tried concat and append, but with no success. Any help is appreciated. Best,

n        Name  Position  ObsHET  PredHET  HWpval  %Geno  FamTrio  MendErr    MAF Alleles Rating
48  rs17818182  32945574   0.153    0.141  1.0000   98.9       29        0  0.076     G:T    NaN
45  rs17818176  32944041   0.033    0.033  1.0000  100.0       30        0  0.017     G:T    NaN
133  rs17818104  32879319   0.136    0.126  1.0000   98.9       29        0  0.068     T:C    NaN
105  rs17818087  32863970   0.241    0.307  0.2037   96.7       29        1  0.190     T:C    NaN
165  rs17818021  32794604   0.302    0.329  0.7637   85.6       20        0  0.208     A:C    NaN

           L1        L2      D   LOD     r2  CIlow  CIhi   Dist T-int
31331  rs17818182  rs640249  0.423  0.27  0.012   0.04  0.80  66596     -
31328  rs17818176  rs640249  1.000  0.21  0.014   0.05  0.97  65063     -
29083  rs17818104  rs640249  1.000  3.01  0.092   0.51  1.00    341     -
27571  rs17818087  rs640249  0.143  0.14  0.006   0.01  0.44  15008     -
14857  rs17818021  rs640249  0.311  0.68  0.033   0.06  0.57  84374     -
share|improve this question
add comment

1 Answer

One alternative is to merge on 'Name' and 'L1':

In [36]: df
Out[36]: 
   a         b         c
0  k -0.787279  1.431643
1  m  1.278970  2.294351
2  n  0.793787 -2.337330

In [37]: df2
Out[37]: 
   x         y         z
2  k -2.419514  1.178166
3  m -0.827535 -0.113485
4  n  0.135814 -0.612922

In [38]: df.merge(df2, left_on='a', right_on='x')
Out[38]: 
   a         b         c  x         y         z
0  k -0.787279  1.431643  k -2.419514  1.178166
1  m  1.278970  2.294351  m -0.827535 -0.113485
2  n  0.793787 -2.337330  n  0.135814 -0.612922

Another is to call DataFrame.reset_index first before you call merge:

In [50]: df.reset_index().merge(df2.reset_index(), left_index=True, right_index=True)
Out[50]: 
   index_x  a         b         c  index_y  x         y         z
0        0  k -0.787279  1.431643        2  k -2.419514  1.178166
1        1  m  1.278970  2.294351        3  m -0.827535 -0.113485
2        2  n  0.793787 -2.337330        4  n  0.135814 -0.612922
share|improve this answer
    
Thanks for helping. I had realized that reset would work, however, why to reset index to concat dfs ignoring them? –  fred Oct 5 '12 at 11:48
    
might be slightly confusing naming, but ignore_index ignores the concatenation axis, not df.index. –  Chang She Oct 5 '12 at 19:26
    
I don't think so. At least in concat, you have to declare axis. –  fred Oct 5 '12 at 19:42
    
what's ignored is determined by the axis parameter –  Chang She Oct 5 '12 at 21:16
add comment

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.