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Let say I have a very big log file with this kind of format( based on where a user login )

UserId1 , New York
UserId1 , New Jersey
UserId2 , Oklahoma
UserId3 , Washington DC
....
userId999999999, London

Note that UserId1 logged in New York first and then he flied to New Jersey and logged again from there.

If I need to get how many unique user login (means 2 login will same userid considered as 1 login), how should I map and reduce it?

My initial plan is that I want to map it first to this kind of format :

UserId1, 1
UserId1, 1
UserId2, 1
UserId3, 1

And then reduce it to

UserId1, 2
UserId2, 1
UserId3, 1

But would this cause the output to be still big in number (Especially if common behaviour of user is to login 1 or 2 times a day ). Or is there a better way to implement this?

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2 Answers 2

If you don't need to know the actual logins, just a count of total uniques, then this article describes some techniques for large data set counting:

http://highscalability.com/blog/2012/4/5/big-data-counting-how-to-count-a-billion-distinct-objects-us.html

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I recommend making use of a custom key in the map phase. You can refer the tutorial here for writing and using custom keys. The custom key should have two parts 1) userid 2)placeid. So essentially in the mapper phase you are doing this.

emit(<userid, place>, 1)

In the reduce phase, you just have to access the key and emit the two parts of the key separately.

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