I am using hive 0.13.

I have two tables:

  1. data table. columns: id, time. 1E10 rows.
  2. mymap table. columns: id, name, start_time, end_time. 1E6 rows.

For each row in the data table I want to get the name from the mymap table matching the id and the time interval. So I want to do a join like:

select data.id, time, name from data left outer join mymap on data.id = mymap.id and time>=start_time and time<end_time

It is known that for every row in data there are 0 or 1 matches in mymap.

The above query is not supported in hive as it is a non-equi-join. Moving the inequality conditions into a where filter does not work cause the join explodes before the filter is applied:

select data.id, time, name from data left outer join mymap on data.id = mymap.id where mymap.id is null or (time>=start_time and time<end_time)

(I am aware that the queries are not exactly equivalent due to cases where there is a match for id but no matching interval. This can be solved as I describe here: Hive: work around for non equi left join)

How can I go about this?


You could perform your join and then query from that table. I didn't test this code, but it would read something like

select id
from (
    select d.id
    from data as d LEFT OUTER JOIN mymap as m
        ON d.id = m.id
     ) x
where time>=start_time
        AND time<end_time
  • Please elaborate on how this code isn't useful. – gobrewers14 Aug 21 '14 at 0:44
  • this is similar to the my second query. the problem is that the join explodes – eyaler Aug 21 '14 at 7:29
  • My query is completely different. You're trying to pass conditions in the where clause of your outer join, I am doing a nested query. Did you try this code? I created sample data and it works. – gobrewers14 Aug 21 '14 at 11:24
  • not sure why you think the second query is useful. anyway the problem is with big data – eyaler Aug 21 '14 at 12:50
  • 1. a 2 x 10 billion table isn't that "big". 2. A query wouldn't work b/c you data is too "big", that is the point of MapReduce - scale. Take a subset of your data and run mine against your's. Mine is faster I bet. – gobrewers14 Aug 21 '14 at 13:01

You could potentially get around this issue by flattening out the data structure in table2 and using a UDF to process the joined records.

   nameFinderUDF(b.name_list, time) as name
   data a
      collect_set(array(name,cast(start_time as string),cast(end_time as string))) as name_list
   group by
   ) b
ON (a.id=b.id)

With a UDF that does something like:

public String evaluate(ArrayList<ArrayList<String>> name_list,Long time) {
    for (int i;i<name_list.length;i++) {
       if (time >= Long.parseLong(name_list[i][1]) && time <= Long.parseLong(name_list[i][2])) {
           return name_list[i][0]
    return null;

This approach should make the merge 1 to 1, but it could create a fairly large data structure repeated many times. It is still quite a bit more efficient than a straight join.

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