Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

How to find visited pages for a particular user from a big log file that contains list of sessionId and PageId combination in each separate line?

File is big enough not to fit in memory. It means find out page that is being visited most in same session(user).

for e.g.

My file is (order is sessionId, PageID)

usera  page1
userb  page2
userb  page1
usera  page3

It should print

usera visits page1 most followed by page3.

If the number of pages visited is equal, it is up to you how to handle the case (Can print both, or can print any one of them)

Which data structure/algorithm will you use for this? Since this is an interview-question, efficient algorithm/data structure would be appreciated. The interviewer did not specify what order of algorithm he was looking for.

I came up with std::map<string,std::pair<string,int> > solution. The interviewer asked if I can do anything better than this or if the key set is so large it won't be efficiently handled by map, what should be done?

share|improve this question
if c++ wasn't required, it could be done pretty quickly at the command line: grep userb log.txt|awk '{print $2}'|sort|uniq -c|sort -n -r|head -2 –  Marc B Oct 9 '11 at 5:27
@MarcB Actually, that is a pretty neat trick. Thanks, upvoted. –  Ian McGrath Oct 9 '11 at 5:32

3 Answers 3

up vote 2 down vote accepted

I think the first step would be to remove all "non-usera" lines since you're doing per-user parsing. This would be a one-time job separating all users into different files. After that you can do a line-by line analysis keeping only a couple of lines in "history". You can do this using a simple line parser without having to store the whole file in-memory.

If it's going to be need something like a data structure necessarily, you might want to look into map-reduce paradigm -- Hadoop would be ideal for files on the scale of 10GB +.

share|improve this answer
I think Hadoop and map-reduce is what the interviewer was looking for. Thanks for guiding me. –  Ian McGrath Oct 9 '11 at 5:27
You have to be careful though. Some reviewers don't know about MapReduce and it can backfire because it's difficult to explain. I made that blunder once in an interview with Amazon. The interviewer didn't know about it and I couldn't make him understand :) –  recluze Oct 13 '11 at 12:17

As for me, I see that the keyword is: same session. In this case, what we need to do is not to read the entire log file, instead try to make a guess for this particular session.

We need to remember, that a session will be alive for specific period of time. The timing is set by the server, e.g. 20 minutes. So, after we find out when the user is logged in, what we need to do is to get the pointer to the specific location on the file on when the user logged out or last active session.

share|improve this answer
Novel approach. It seems good but how do you get the pointer to the specific location on the file? There are millions of users accessing the site at any time. –  Ian McGrath Oct 9 '11 at 5:38
Hmm, you are right about that. I forgot that the log size may change overtime –  dip Oct 9 '11 at 6:10

You can first think of sorting the file using external sort (break the file into chunks that fit into the memory and sort each chunk and merge them back ) you can break the sorted file again into same number of chunks but keeping track of range each chunk corresponds to. With this, a binary search can be done to find the relevant chunk, load it and search for any user.

Since it is a sorted file, similar user entries will be consecutive, infact one can also count the occurences during merging of chunks and write the value appended to the line, for later use.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

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