4

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:

name|age|address|phone|||||||||||..etc

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
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    @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
15

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

fileHandle.close()

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
30

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']
10
import pandas as pd

pd.read_csv(filename,sep="|")

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.

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