I'm trying to parse a pipe delimited file and pass the values into a list, so that later I can print selective values from the list.

The file looks like:


It has more than 100 columns.

  • A good question will have a sample code and any errors you get when trying to run the code. – sachleen Apr 11 '13 at 18:38
  • 2
    You already asked this question, and it was closed. What makes you think this time will be different? – jwodder Apr 11 '13 at 18:43
  • 4
    @jwodder: Whatever the reason, it seems to have worked: this question got two valid answers, while the other one got none and was auto-deleted. Voting to reopen, despite the awful score. – Ilmari Karonen Sep 15 '14 at 17:04

If you're parsing a very simple file that won't contain any | characters in the actual field values, you can use split:

fileHandle = open('file', 'r')

for line in fileHandle:
    fields = line.split('|')

    print(fields[0]) # prints the first fields value
    print(fields[1]) # prints the second fields value


EDIT: A more robust way to parse tabular data would be to use the csv library as mentioned below.

  • i have used the split string method, but it only prints "n" from the the first split column(name). – John Doe Apr 11 '13 at 18:47
  • If you literally copy and paste my code into a text file and run it, you will see that it works. Perhaps you could share some of your code so we can see what's going wrong? – vimist Apr 11 '13 at 19:10
  • with open("abc.txt","r" ) as infile: data = infile.read() fields = data.split('|') print(data[0]) – John Doe Apr 11 '13 at 19:39
  • This method won't work if one of the fields has a pipe in it. Using the actual CSV library will manage that much better. – tedivm May 17 at 22:11

Use the csv library.

First, register your dialect:

import csv
csv.register_dialect('piper', delimiter='|', quoting=csv.QUOTE_NONE)

Then, use your dialect on the file:

with open(myfile, "rb") as csvfile:
    for row in csv.DictReader(csvfile, dialect='piper'):
        print row['name']
import pandas as pd


This will store the file in dataframe. For each column you can apply conditions to select the required values to print. It takes a very short time to execute. I tried with 111047 rows.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.