Thursday, January 15, 2009

Informatica 8.6 : issue with pmcmd

On AIX 5.3 pmcmd command fails with following error:

$ ./pmcmd

Could not load program ./pmcmd:
Could not load module /u01/Informatica/PowerCenter8.6/server/bin/libpmser.a.
Dependent module /lib/libz.a could not be loaded.
The module has an invalid magic number.
Could not load module pmcmd.
Dependent module /u01/Informatica/PowerCenter8.6/server/bin/libpmser.a could not be loaded.
Could not load module .

This issue has been fixed on one of the latest hotfixes.

To workaround the issue, rename /lib/libz.a so that libz.a which is shipped with Informatica is picked up.

Sunday, January 11, 2009

Oracle: Correlated sub-queries effectiveness

During ETL extraction and loading into the star-schema based warehouse, we generally confront with the idea of using outer join or correlated subqeries to add dimension table primary key into the fact table. to clarify more, take an example below:

SELECT a.row_wid loc_wid,
FROM w_emp_fs b
LEFT OUTER JOIN w_location_d a
ON a.datasource_num_id = b.datasource_num_id
AND a.integration_id = b.integration_id

In the example above, row_wid is the unique identifier of the row in Location dimension which needs to be added to Employee Fact table. In reality, there could be up to 30-40 dimensions which need to be joined to Fact table. Outer joining these dimensions is one of the way, but it could be a big overhead if the dimension tables are very large e.g. >2million records. Outer join may not perform.
This is when correlated subqueries come to rescue. We can frame the above load query as follows:
FROM w_location_d a
WHERE a.datasource_num_id - b.data_source_num_id
AND a.integration_id = b.integration_id) loc_wid,
FROM w_emp_fs b

Correlated query would only perform good if the dimension columns used in join condition are indexed. This way DB memory can cache the index and return the records from the dimension table fast for each of the record in fact table.

We can choose to segregate dimensions attached to the fact table based on their size. Depending on the memory configuration of the DB system we can hit&trial the size threshold. Dimensions having size lower than this threshold can be outer joined to the fact table and the ones with size higher than the threshold can be pushed to correlated subqueries.