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 several hundred tsv files with two fields, a common key and a unique sample id:

==> test1.vmat <==
CHROM:POS:REF:ALT  144-93-02
1:14653:C:T  1
1:14677:G:A  1
1:14907:A:G  1

==> test2.vmat <==
CHROM:POS:REF:ALT  144-93-01
1:14653:C:T  1
1:14522:G:A  1
1:14907:A:G  1

I would like to perform an outer join on all of the files using the field "CHR:POS:REF:ALT" to form one giant matrix. Example for two files:

CHROM:POS:REF:ALT  144-93-02    144-93-01
1:14653:C:T  1.0 1.0
1:14522:G:A  NA 1.0
1:14677:G:A  1.0 NA
1:14907:A:G  1.0 1.0

I got the output above using the following code, but I am having trouble looping over the hundreds of *tsv files in the directory (path/to/testN.vmat). how can I modify this into something that will merge all the individual *tsv files from a directory into a single tsv file?

variant_field = "CHROM:POS:REF:ALT"
outfile = "everyone.vmat"

df1 = pandas.read_csv("path/to/test1.vmat", sep='\t', parse_dates=False)
df2 = pandas.read_csv("path/to/test2.vmat", sep='\t', parse_dates=False)

df3 = pandas.merge(df1,df2,on=variant_field, how='outer')
df3.to_csv(str(outfile), sep="\t", header=True, index=False, na_rep="NA", engine='python')
share|improve this question

1 Answer 1

up vote 1 down vote accepted

If you make the 'CHROM:POS:REF:ALT' the index you join multiple frames:

df1 = pandas.read_csv("path/to/test1.vmat", sep='\t', parse_dates=False,

In [11]: df1.join([df2], how='outer')
             144-93-02  144-93-01
1:14522:G:A        NaN          1
1:14653:C:T          1          1
1:14677:G:A          1        NaN
1:14907:A:G          1          1

In someways it's more honest to think of this as a concat rather than a join:

In [12]: pd.concat([df1, df2], axis=1)
             144-93-02  144-93-01
1:14522:G:A        NaN          1
1:14653:C:T          1          1
1:14677:G:A          1        NaN
1:14907:A:G          1          1

You can iterate through all the files using glob:

from glob import iglob
pd.concat((pd.read_csv(f, ...) for f in glob.iglob(*.vmat)), axis=1)
share|improve this answer
interesting, what do you mean by "more honest to think of this as a concat"? I always thought of concatenating as just stacking the two matrices on top of each other –  alexhli Mar 25 '14 at 3:04
@alexhli good question, I say because each "frame" is really just a column in the final result, rather than a more complex merge (where several columns are coming from each frame)... subjective thing to say though! –  Andy Hayden Mar 25 '14 at 3:22

Your Answer


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.