This video tutorial by Cloudera gives a great description of how to do a large-scale Join through MapReduce, starting around the 12 minute mark.
Here are the basic steps he lays out for joining records from file B onto records from file A on key K, with pseudocode. If anything here isn't clear, I'd suggest watching the video as he does a much better job explaining it than I can.
In your Mapper:
K from file A:
tag K to identify as Primary Key
emit <K, value of K>
K from file B:
tag K to identify as Foreign Key
emit <K, record>
Write a Sorter and Grouper which will ignore the PK/FK tagging, so that your records are sent to the same Reducer regardless of whether they are a PK record or a FK record and are grouped together.
Write a Comparator which will compare the PK and FK keys and send the PK first.
The result of this step will be that all records with the same key will be sent to the same Reducer and be in the same set of values to be reduced. The record tagged with PK will be first, followed by all records from B which need to be joined. Now, the Reducer:
value_of_PK = values // First value is the value of your primary key
for value in values[1:]:
value.replace(FK,value_of_PK) // Replace the foreign key with the key's value
emit <key, value>
The result of this will be file B, with all occurrences of K replaced by the value of K in file A. You can also extend this to effect a full inner join, or to write out both files in their entirety for direct database storage, but those are pretty trivial modifications once you get this working.