I partition my data in hive based on a column value(date). So each date has it's own directory in /warehouse. right now I have about 240 dates, and a total of 70 million records evenly distributed across dates.
I also create another table containing the same data that does not has partitions.
When I query both table with the same queries, the partitioned table does not always out-perform the unpartitioned one. More specifically, partitioned table is slower when executing query with group by.
select count(*) from not_partitioned_table where date > '2018-07-27' and date < '2018-08-27
This took 22.146 seconds, and the count is 7427366.
select count(*) from partitioned_table where date > '2018-07-27' and date < '2018-08-27
This took 22.723 seconds, and also returns 7427366 for count.
However when group by is added, partitioned table perform worse than un-partitioned table.
select count(*) from not_partitioned_table where dated > '2018-07-27' and date < '2018-08-27' group by col_name;
This took 39.733 seconds and 26,724 rows were returned.
select count(*) from partitioned_table where dated > '2018-07-27' and date < '2018-08-27' group by col_name;
This took 76.648 seconds seconds and 26,724 rows were returned.
Why is the partitioned table slower in this scenario?
EDIT
This is how I create my partitioned table:
CREATE TABLE all_ads_from_csv_partitioned3(
id STRING,
...
)
PARTITIONED BY(datedecoded STRING)
STORED AS ORC;
And under 2018-10-08 15:34 /warehouse/tablespace/managed/hive/partitioned_table/
, there are 240 directories(240 partitions), each has the format of /warehouse/tablespace/managed/hive/partitioned_table/dated='the partitioned date'
, and each partition contains roughly 10 buckets.