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I have 10 .csv files with two columns. For example

file1.csv

Bact1,[1821932:1822487](+)
Bact2,[555760:556294](+)
Bact3,[2901866:2902424](-)
Bact4,[1104980:1105544](+)

file2.csv

Bact1,[1973928:1975194](-)
Bact2,[972152:973499](+)
Bact3,[3001035:3002739](-)
Bact4,[3331158:3332481](+)
Bact5,[712517:713771](+)
Bact5,[1376120:1377386](-)

file3.csv

Bact6,[4045708:4047781](+)

and so on to file10.csv The Bact1 represents a bacterial species and all the numbers including the sign represents position of a gene. Each file represents a different gene, and there are duplicates like in the case of file2.csv

I wanted to merge these files so that i have something like this

Bact1    [1821932:1822487](+)    [1973928:1975194](-)    NaN
Bact2    [555760:556294](+)      [972152:973499](+)      NaN
Bact3    [2901866:2902424](-)    [3001035:3002739](-)    NaN
Bact4    [1104980:1105544](+)    [3331158:3332481](+)    NaN
Bact5    NaN                     [712517:713771](+)      NaN     
Bact5    NaN                        [1376120:1377386](-)    NaN
Bact6    NaN                     NaN                     [4045708:4047781](+)

I have tried to use pandas package in python, but seems like most of the functions are geared towards merging two dataframes, not more than two, or i am missing something.

I have just started programming in python last week (I normally use R), so getting stuck in what could be or atleast seems like a simple thing.

Right now i am using:

    for x in range(1,10):
        df[x]=pandas.read_csv("file%s.csv" % (x),header=None,index_col=[0])
        df[x].columns=['gene%s' % (x)]
   dfjoin={}
   dfjoin=df[1].join([df[2],df[3],df[4],df[5],df[6],df[7],df[8],df[9],df[10]])

Result:

0                          gene1           gene2             gene3                 
Starkeya-novella-DSM-506     NaN     [728886:730173](+)  [731445:732615](+)     
Starkeya-novella-DSM-506     NaN     [728886:730173](+)  [9662:10994](+)    
Starkeya-novella-DSM-506     NaN     [728886:730173](+)  [9662:10994](+)     
Starkeya-novella-DSM-506     NaN     [728886:730173](+)  [9662:10994](+) 

see gene2 and gene3, it has duplicated results copied.

share|improve this question
    
If there are two Bact5 rows in file1, three Bact5 rows in file2, how many Bact5 rows do you want in the output? If it's six, then you can use join method by @Andy Hayden. –  HYRY Sep 20 '13 at 4:06

2 Answers 2

Assuming you've read these in as DataFrames as follows:

In [11]: df1 = pd.read_csv('file1.csv', sep=',', header=None, index_col=[0], names=['bact', 'file1'])

In [12]: df1
Out[12]: 
                      file1
bact
Bact1  [1821932:1822487](+)
Bact2    [555760:556294](+)
Bact3  [2901866:2902424](-)
Bact4  [1104980:1105544](+)

Then you can simply join them:

In [21]: df1.join([df2, df3])
Out[21]: 
                      file1                 file2                 file3
bact
Bact1  [1821932:1822487](+)  [1973928:1975194](-)                   NaN
Bact2    [555760:556294](+)    [972152:973499](+)                   NaN
Bact3  [2901866:2902424](-)  [3001035:3002739](-)                   NaN
Bact4  [1104980:1105544](+)  [3331158:3332481](+)                   NaN
Bact5                   NaN    [712517:713771](+)                   NaN
Bact5                   NaN  [1376120:1377386](-)                   NaN
Bact6                   NaN                   NaN  [4045708:4047781](+)
share|improve this answer
    
Hi @Andy I have added the code in my question again. The code seem to work, but there are many many duplicates. I am trying to figure out how. –  msakya Sep 20 '13 at 14:25
    
@microbeatic when you do a join with 2x2 duplicates you get 4 in the joined DataFrame. It's unclear how pandas should join in this case, so you need to be more explicit to it (and tell it what do you want). –  Andy Hayden Sep 20 '13 at 15:20
    
Hi @Andy I want the 'outer' or basically union of indices. But i seem to get duplicated indices are not followed by NaN, but by the duplicated values. See above for snippet of result using the code above and 'outer': –  msakya Sep 20 '13 at 16:44
    
On the similar note, is there a way to merge values based on index. For example, instead of listing Bact5 in two rows, can we merge its value corresponding to file2 in one row separated by a delimeter? –  msakya Sep 20 '13 at 17:51

I changed your example data a little, here is the code:

import pandas as pd
import io

data = {
"file1":"""Bact1,[1821932:1822487](+)
Bact2,[555760:556294](+)
Bact3,[2901866:2902424](-)
Bact4,[1104980:1105544](+)
Bact5,[1104981:1105544](+)
Bact5,[1104982:1105544](+)""",

"file2":"""Bact1,[1973928:1975194](-)
Bact2,[972152:973499](+)
Bact3,[3001035:3002739](-)
Bact4,[3331158:3332481](+)
Bact5,[712517:713771](+)
Bact5,[1376120:1377386](-)
Bact5,[1376121:1377386](-)""",

"file3":"""Bact4,[3331150:3332481](+)
Bact6,[4045708:4047781](+)"""}

def read_file(f):
    s = pd.read_csv(f, header=None, index_col=0, squeeze=True)
    return s.groupby(s.index).apply(lambda s:pd.Series(s.values))

series = {key:read_file(io.StringIO(unicode(text)))
          for key, text in data.items()}

print pd.concat(series, axis=1)

output:

                        file1                 file2                 file3
0                                                                        
Bact1 0  [1821932:1822487](+)  [1973928:1975194](-)                   NaN
Bact2 0    [555760:556294](+)    [972152:973499](+)                   NaN
Bact3 0  [2901866:2902424](-)  [3001035:3002739](-)                   NaN
Bact4 0  [1104980:1105544](+)  [3331158:3332481](+)  [3331150:3332481](+)
Bact5 0  [1104981:1105544](+)    [712517:713771](+)                   NaN
      1  [1104982:1105544](+)  [1376120:1377386](-)                   NaN
      2                   NaN  [1376121:1377386](-)                   NaN
Bact6 0                   NaN                   NaN  [4045708:4047781](+)
share|improve this answer
    
Hi @HYRY i have 10 files like that and i dont understand how you formed 'data'? How did you read in the files? –  msakya Sep 20 '13 at 14:29

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