I'm using hadoop to process a sequence of analytics records for my application. I want to categorise users based on which events I see in their stream and then use that information in a later stage when iterating over the stream again. For example, suppose I want to generate data on all the users that never activate my app.
I can work out who never activates by iterating over the stream once as part of my 1st-round reduce.
The question is, where do I put the data that "user X never activated" so that the next time I iterate over the stream in my 2nd-round mapper I can look up that fact? I have a few ideas but I'm not sure which is the right hadoop way:
- output a side file from my 1st round reducer containing a list of users, read it in in my second-round -- how can I avoid reading the whole file into memory, how do I deal with multiple side files from multiple front-end reducers (is there a good way of sorting/combining side files)?
- buffer all the events of a user in memory in my reducer so that I can tag them all with "not activated" before I output them to disk -- feels a bit icky.
Is one of those "the right way", is there another way that I'm missing?
I'm using AWS Elastic MapReduce.