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I have a tab delimited text file with the following data:

test    -2.435953
test    -2.001858

I want to extract the two floating point numbers to a separate csv file with two columns, ie.

-2.435953 1.218264

-2.001858 1.303935

Currently my hack attempt is:

 import csv
 from itertools import islice
 results = csv.reader(open('test', 'r'), delimiter="\n")

 print results.next()
 print results.next()
 print results.next()
 print results.next()

Which is not ideal. I am a Noob to Python so I apologise in advance and thank you for your time.

share|improve this question
Note that where you are consuming the values, a slightly more efficient method (avoiding building a list) is to do next(islice(iterator, n, n), None) - as taken from the consume() recipe in the itertools docs. –  Latty Jun 19 '12 at 2:39

2 Answers 2

up vote 2 down vote accepted

Here is the code to do the job:

import re

# this is the same data just copy/pasted from your question
data = """    ahi1
test    -2.435953
test    -2.001858

# what we're gonna do, is search through it line-by-line
# and parse out the numbers, using regular expressions

# what this basically does is, look for any number of characters
# that aren't digits or '-' [^-\d]  ^ means NOT
# then look for 0 or 1 dashes ('-') followed by one or more decimals
# and a dot and decimals again: [\-]{0,1}\d+\.\d+
# and then the same as first..
pattern = re.compile(r"[^-\d]*([\-]{0,1}\d+\.\d+)[^-\d]*")

results = []
for line in data.split("\n"):
    match = pattern.match(line)
    if match:

pairs = []
i = 0
end = len(results)
while i < end - 1:
    pairs.append((results[i], results[i+1]))
    i += 2

for p in pairs:
    print "%s, %s" % (p[0], p[1])

The output:

-2.435953, 1.218364
-2.001858, 1.303935

Instead of printing out the numbers, you could save them in a list and zip them together afterwards.. I'm using the python regular expression framework to parse the text. I can only recommend you pick up regular expressions if you don't already know it. I find it very useful to parse through text and all sorts of machine generated output-files.


Oh and BTW, if you're worried about the performance, I tested on my slow old 2ghz IBM T60 laptop and I can parse a megabyte in about 200ms using the regex.

UPDATE: I felt kind, so I did the last step for you :P

share|improve this answer
Thank you! Fantastic effort, it works perfectly as above and with a little tinkering it even works with my original files (I mentioned that I was a Noob didn't I?). I will totally check out the regexp stuff also, thanks for the advice. –  Anthony Jun 19 '12 at 8:06
Note that you can simplify this with list comprhensions. matches = (pattern.match(line) for line in data.split("\n")) results = [match.group(0) for match in matches if match] for the first list construction. For the second, you should look into the itertools grouper() recipe. –  Latty Jun 19 '12 at 9:06
Thanks Lattyware, I will try that. I'm not sure that I followed your comment above but I will try to understand that also. Thanks again. –  Anthony Jun 19 '12 at 13:40

Maybe this can help



import csv
from itertools import izip
results = csv.reader(open('test', 'r'), delimiter="\t")
for result1, result2 in (x[3:5] for x in izip(*[results]*5)):
    ... # do something with the result
share|improve this answer
Thanks for considering my question and answering so promptly. I am new to python and programming so unfortunately I haven't been able to get it to work as yet but I will ... eventually! Thanks –  Anthony Jun 19 '12 at 8:11

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