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I have a text file with some names and emails and other stuff. I want to capture email addresses.

I don't know whether this is a split or regex problem.

Here are some sample lines:

[name]bill billy [email]bill.billy@hotmail.com [dob]01.01.81
[name]mark hilly [email]mark.hilly@hotmail.com [dob]02.11.80
[name]gill silly [email]gill.silly@hotmail.com [dob]03.12.79

I want to be able to do a loop that prints all the email addresses.


share|improve this question
Is getting the emails the only thing you will ever want to do, or is it conceivable you might ever want to do more with the info later? If it's the latter, I think you definitely want Blender's answer. Anything that relies on plain split to split the fields (like most of the answers here) will never work for name; anything that relies on splitting around ] will probably be more complicated than a regex (although I'd love to be proven wrong). –  abarnert May 10 '13 at 21:39
I think I may want to use the name later to make a mail more specific –  gjels May 11 '13 at 9:40

6 Answers 6

up vote 3 down vote accepted

I'd use a regex:

import re

data = '''[name]bill billy [email]bill.billy@hotmail.com [dob]01.01.81
[name]mark hilly [email]mark.hilly@hotmail.com [dob]02.11.80
[name]gill silly [email]gill.silly@hotmail.com [dob]03.12.79'''

group_matcher = re.compile(r'\[(.*?)\]([^\[]+)')

for line in data.split('\n'):
    o = dict(group_matcher.findall(line))
    print o['email']
  • \[ is literally [.
  • (.*?) is a non-greedy capturing group. It "expands" to capture the text.
  • \] is literally ]
  • ( is the beginning of a capturing group.
  • [^\[] matches anything but a [.
  • + repeats the last pattern any number of times.
  • ) closes the capturing group.
share|improve this answer
is there some website that easily describes the workings of (r'[(.*?)]([^[]+)') I'd like to understand it instead of just nicking it. But this is good! –  gjels May 11 '13 at 9:39
@gjels: Not that I know of. See my edit for a brief explanation. –  Blender May 11 '13 at 16:30
@gjels: Python has a HOWTO in its docs, but it may not be the most beginner-friendly tutorial; try googling for others. Also get a regex explorer program (there are a zillion of them for each platform, plus a bunch of online ones), which will help you play around with things. Just make sure you learn Python syntax—perl/PCRE is close enough, but grep, emacs, etc. are very different. –  abarnert May 12 '13 at 10:18
for line in lines:
   print line.split("]")[2].split(" ")[0]
share|improve this answer
@karthikr no it doesnt –  cmd May 10 '13 at 22:19
@karthikr: I think you're forgetting that '[name' will be the first value in the split. –  abarnert May 10 '13 at 22:33
@abarnert He had a different answer earlier, and my comment was for that –  karthikr May 10 '13 at 22:53

You can pass substrings to split, not just single characters, so:

email = line.partition('[email]')[-1].partition('[')[0].rstrip()

This has an advantage over the simple split solutions that it will work on fields that can have spaces in the value, on lines that have things in a different order (even if they have [email] as the last field), etc.

To generalize it:

def get_field(line, field):
    return line.partition('[{}]'.format(field)][-1].partition('[')[0].rstrip()

However, I think it's still more complicated than the regex solution. Plus, it can only search for exactly one field at a time, instead of all fields at once (without making it even more complicated). To get two fields, you'll end up parsing each line twice, like this:

for line in data.splitlines():
    print '''{} "babysat" Dan O'Brien on {}'''.format(get_field(line, 'name'), 
                                                      get_field(line, 'dob'))

(I may have misinterpreted the DOB field, of course.)

share|improve this answer

You can split by space and then search for the element that starts with [email]:

line = '[name]bill billy [email]bill.billy@hotmail.com [dob]01.01.81'
items = line.split()
for item in items:
    if item.startswith('[email]'):
        print item.replace('[email]', '', 1)
share|improve this answer

If that is the standard format, you can just do:

fh = open('somefile.txt')
for line in fh:
    email_str = line.strip().split()[1]
    email = email_str.replace('[email]', '') 
    print email
share|improve this answer

say you have a file with lines.

import re

f = open("logfile", "r")
data = f.read()

for line in data.split("\n"):
    match=re.search("email\](?P<id>.*)\[dob", line)
    if match:
             # either store or print the emails as you like
             print match.group('id').strip(), "\n"

Thats all (try it, for python 3 n above remember print is a function make those changes ) !

The output from your sample data:




share|improve this answer
If you're just matching against fixed strings like this, there's no real advantage to using a regex. Compare this with Blender's answer, which can get you all of the fields' names and values, instead of just whichever one you've hardcoded, and is much more robust (e.g., reorder the columns so email comes after dob instead of before). –  abarnert May 10 '13 at 21:48
i thought its a specific problem to solve not a generic problem. Generalizing extends the "scope" and robustness is all about "accomodating as per the scope". –  cool_n_curious May 10 '13 at 21:50
If you just want to solve the specific problem, matching against fixed text strings, regex doesn't add anything on top of simple split, it just makes it slower and less readable for no reason. Compare to JaniSOF's solution, for example. –  abarnert May 10 '13 at 21:53

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