Am getting started with Hadoop, and am working on building a MapReduce chain for "customers who bought x also bought y", where y is the product that is purchased most frequently with x. I am looking for advice on increasing the efficiency of this task, by which I mean reducing the amount of data shuffled from mapper nodes to reducer node. My goal is a little different than other "customer bought x" scenarios, because I simply want to store the most commonly purchased product for a given product, not a list of products purchased with a given product ranked by frequency.
I am following this blog post to guide my approach.
If, as I understand, one of the big performance limiters in Hadoop is shuffling data from the mapper nodes to the reducer node, then, for every phase of the MapReduce chain, I want to keep the amount of shuffled data at a minimum.
Let's say my initial data set is a SQL table
purchases_products, a join table between a purchase and products that were bought in that purchase. I'll feed
select x.product_id, y.product_id from purchases_products x inner join purchases_products y on x.purchase_id = y.purchase_id and x.product_id != y.product_id into my MapReduce operation.
My MapReduce strategy is to map
product_id_x, product_id_y to
product_id_x_product_id_y, 1 and then sum the values in my reduce step. At then end I can split the keys and store pairs back to a SQL table.
My problem with this operation is that it shuffles a potentially huge number of rows, even though the size of the result set I want to produce is only
count(products) big. Ideally, I'd like to have a combiner step narrow the amount of rows shuffled to reducers during this phase, but I don't see a way to reliably do this.
Is this simply a limitation of the task at hand, or are there Hadoop tricks for organizing the workflow that will help me shrink the data shuffle during the second step? Is my worry about shuffle size appropriate in this case, or not?