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?

2 Answers 2


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.


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.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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