I need to analyse a txt document with thousands of rows, but I'm having trouble splitting the data into spaces because there are spaces enclosed in double quotation marks and square brackets that should not be considered. How could I do this?

I am using this code:

from pyspark import SparkContext
sc = SparkContext.getOrCreate()
lines = sc.textFile('C:\\test.txt')
parts = lines.map(lambda line: line.replace(' - - ', ' ').split(' '))

The first row is: - - [01/Jul/1995:00:00:01 -0400] "GET /history/apollo/ HTTP/1.0" 200 6245

And the output is:

['', '[01/Jul/1995:00:00:01', '-0400]', '"GET', '/history/apollo/', 'HTTP/1.0"', '200', '6245']

But should be:

['', '[01/Jul/1995:00:00:01 -0400]', '"GET /history/apollo/ HTTP/1.0"', '200', '6245']

I'm starting to learn Spark and I'm kind of lost. I've tried everything and I can not solve this problem.

Thank you!

  • Have you considered using regular expressions? thousands of log lines isn't big deal for pyspark to handle. Regular expressions are slower as compared to a simple split but can help you separate them properly. – nightgaunt Jan 15 at 5:56
  • @nightgaunt, I have no problem about regex, but I do not know how to apply it here. I saw in another post this regular expression (- - | (? <=)) | (? <= \\ ") | (? <= \\ d) (? = \\ d)) that might help me with this problem... – Michel Excel Jan 15 at 6:08

Using regular expressions can help you with splitting the log record properly. Also, it will allow for customizing the RDD as per your need.

A sample regex which I shamelessly copied from https://stackoverflow.com/a/12544587/10378736

regex = r'([(\d\.)]+) - - \[(.*?)\] "(.*?)" (\d+) (\d+)'
  • The first group ([(\d\.)]+) separates your IP address
  • - - are ignored as they are not enclosed by ()
  • \[(.*?)\] groups everything inside the []
  • "(.*?)" groups everything inside quotes
  • (\d+) gives you the response status
  • Last (\d+) gives you the response time

Be warned: This regex does not cover all cases of your apache log format. This Regex can break for thousands of cases which are quite normal/usual apache log. But for the scope of answer, I will just use a sample regex. It is upto you to explore more.

Regarding implementation, you are already using map to iterate over each line.

parts = lines.map(lambda line: re.match(regex, line).groups())

My unsolicited advice is to decide on the aggregate part first and then split the log line accordingly. This will save a lot of execution time during aggregation and producing the final result.

  • Thanks nightgaunt. I am trying to test this but the code I was using to show the result print(parts.glom().collect()) doesn't work with regex (I don't know why). Could you help me? – Michel Excel Jan 15 at 15:09
  • You are getting any error? – nightgaunt Jan 16 at 3:52
  • Maybe you didn't import re? – nightgaunt Jan 16 at 4:03
  • 1
    Now I understand the problem. How do you said, this regex does'n cover all cases and in the txt I have situations where the host is the internet address (midcom.com) instead of IP ( These rows are causing a problem in printing (the error is giant but I think that is something about null value). I'm gonna try to change this regex for covering all situations. Thank you! (I can't give you +1 because of my poor reputation). – Michel Excel Jan 16 at 15:50

Try this. Working for me.

Input file value : - - [01/Jul/1995:00:00:01 -0400] "GET /history/apollo/ HTTP/1.0" 200 6245

Code :

import re
o = trdd.flatMap(lambda x : ((v) for v in re.split('([(\d\.)]+) - - \[(.*?)\] "(.*?)" (\d+) (\d+)',x)))

Output :

>>> for i in o.collect():    print(i)                             ...
01/Jul/1995:00:00:01 -0400
GET /history/apollo/ HTTP/1.0

  • Thank you, Mayur! You code helped me a lot. This solution don't cause the error that I was having with nightgaunt's code but I still have problems due to variations in the txt pattern (no split when I have the internet addres instead of IP). I am gonna think how to improve the regex. (I can't give you +1 because of my poor reputation) – Michel Excel Jan 16 at 15:57

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