Ok, so I have some IIS logs that I would like to parse with Python (which I am fairly new to atm). A sample of IIS log looks like this:
#Software: Microsoft Internet Information Server 6.0 #Version: 1.0 #Date: 1998-11-19 22:48:39 #Fields: date time c-ip cs-username s-ip cs-method cs-uri-stem cs-uri-query sc-status sc-bytes cs-bytes time-taken cs-version cs(User-Agent) cs(Cookie) cs(Referrer) 1998-11-19 22:48:39 220.127.116.11 - 18.104.22.168 GET /global/images/navlineboards.gif - 200 540 324 157 HTTP/1.0 Mozilla/4.0+(compatible;+MSIE+4.01;+Windows+95) USERID=CustomerA;+IMPID=01234 http://www.loganalyzer.net 1998-11-20 22:55:39 22.214.171.124 - 126.96.36.199 GET /global/something.pdf - 200 540 324 157 HTTP/1.0 Mozilla/4.0+(compatible;+MSIE+4.01;+Windows+95) USERID=CustomerA;+IMPID=01234 http://www.loganalyzer.net
There are only 2 lines of log data here, where I have thousands per log.. So, this is just a short example.
From this logs I would like to extract data like - counts of client IP addresses that made the most connections, counts of files that were downloaded the most, number of URIs that were visited the most, etc... Basically what I want is to get some statistics... For example, as a result I would like to see something like this:
file download_count example1.pdf 9 example2.pdf 6 example3.doc 2
IP file hits 192.168.1.5 /sample/example1.gif 8 192.168.1.9 /files/example2.gif 8
What I am not sure is how to approach this in a pythonic way. At first I thought I would split each line of the log and make a list out of it, and append each one to a bigger list (I see it as a 2d array). Then I got to the phase of extracting statistics from that big list, and now I think it would maybe be better to make a dictionary out of all that data and count stuff by dict keys and dict values? Is that a better approach than using lists? If I should better use lists, how should I approach it that way? What do I google, what do I look for?
So I am looking for ideas on how this is usually supposed to be done. Thanks.