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I try to implement Hash join in Hadoop.

However, Hadoop seems to have already a map-side join and a reduce - side join already implemented.

What is the difference between these techniques and hash join?

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up vote 6 down vote accepted

Map-side Join

In a map-side (fragment-replicate) join, you hold one dataset in memory (in say a hash table) and join on the other dataset, record-by-record. In Pig, you'd write

edges_from_list = JOIN a_follows_b BY user_a_id, some_list BY user_id using 'replicated';

taking care that the smaller dataset is on the right. This is extremely efficient, as there is no network overhead and minimal CPU demand.

Reduce Join

In a reduce-side join, you group on the join key using hadoop's standard merge sort.

<user_id   {A, B, F, ..., Z},  { A, C, G, ..., Q} >

and emit a record for every pair of an element from the first set with an element from the second set:

[A   user_id    A]
[A   user_id    C]
...
[A   user_id    Q]
...
[Z   user_id    Q]

You should design your keys so that the dataset with the fewest records per key comes first -- you need to hold the first group in memory and stream the second one past it. In Pig, for a standard join you accomplish this by putting the largest dataset last. (As opposed to the fragment-replicate join, where the in-memory dataset is given last).

Note that for a map-side join the entirety of the smaller dataset must fit in memory. In a standard reduce-side join, only each key's groups must fit in memory (actually each key's group except the last one). It's possible to avoid even this restriction, but it requires care; look for example at the skewed join in Pig.

Merge Join

Finally, if both datasets are stored in total-sorted order on the join key, you can do a merge join on the map side. Same as the reduce-side join, you do a merge sort to cogroup on the join key, and then project (flatten) back out on the pairs.

Because of this, when generating a frequently-read dataset it's often a good idea to do a total sort in the last pass. Zebra and other databases may also give you total-sorted input for (almost) free.

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Both of these joins of Hadoop are merge joins, which require a (explicit) sorting beforehand. Hash join, on the other hand, do not require sorting, but partition data by some hash function. Detailed discussion can be found in section "Relational Joins" in Data-Intensive Text Processing with MapReduce by Jimmy Lin and Chris Dyer, a well-written book that is free and open source.

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