1

I am attempting to apply 125 different updates to a big database containing 6 tables which have a range of 100k records to 300million records in each table.

Each update contains new data to be inserted into the original 6 tables, however the update also contains data that will be the next version of a record that already existed in the original table. If that is the case then I need to update a field with the update load number. The update data and the original data contain a unique id which is a 20 character varchar which has a standard BTree index on both the original and update tables.

An example of the original data is this

unique_id, version, version_date, change_dates,"tlzb1000001554000601";7;"2003-12-22";"{1995-12-04,1995-12-14,2002-06-21,2002-06-25,2003-12-16}"

And update record would be

unique_id, version, version_date, change_dates,"tlzb1000001554000601";8;"2004-08-10";"{1995-12-04,1995-12-14,2002-06-21,2002-06-25,2003-12-16,2004-07-27}"

As I need to track which update number impacted the record, I have added a update_number to the original data tables which I hoped to update if there was a record with a matching unique_id.

So for each update I have been loading the data into a set of 6 tables that match the schema of my original data and then apply the update so that any record that is being updated I set the updated integer field to the updated number I am processing.

UPDATE original_table 
SET load_number = ${update_number} 
WHERE unique_id IN (SELECT unique_id FROM update_table)

This did not work well and often took over 10hrs per update. After some research I found this advice and so changed my query to use a CTE and 'FROM'

WITH new AS (
    SELECT unique_id 
    FROM update_table
) 
UPDATE original_table o 
SET load_number = ${update_number} 
FROM new n 
WHERE o.unique_id=n.unique_id

Using the above queries I have managed to do 32 updates in a week running 24/7. I have tried to speed it up by temporarily turning off auto_vacuum for the tables.

I have also tried to do load the data deletes into a temp table and then insert them back in with the updated field.

WITH new AS (
    SELECT unique_id FROM update_table
), tmp AS (
    DELETE FROM original_table b 
    USING new n 
    WHERE b.unique_id=n.unique_id 
    RETURNING *)
 INSERT INTO old_data SELECT * FROM tmp

However this seems to take 4x as long.

So I have now exhausted all the variations I can think of so am after some alternatives that I can try.

One possible option I have thought of but not sure how to implement would be to load all the update data into the 6 update tables and have the load_number field set to the update number. Once all 125 updates are done I then use these tables to modify the original tables. But not sure how I would then update the records in the correct order and set the load_number to the correct one.

Hopefully someone has a solution, thanks in advance

Extra Info:- I have a PostgreSQL 9.6 database on a Windows 64bit server with 20 cores and 128Gb of RAM. I have tuned the database based on the wiki tuning advice.

1
  • Find out which queries take the most time (use pg_stat_statements) and start working on those. Feb 2, 2018 at 21:57

1 Answer 1

0

To me it seems you are trying to do something equivalent to:

INSERT INTO original_table 
SELECT * FROM update_table 
ON CONFLICT (unique_id) DO UPDATE SET 
    load_number = ${update_number}, 
    version = EXCLUDED.version,
    version_date = EXCLUDED.version_date, 
    change_dates = EXCLUDED.change_dates

PostgreSQL: Documentation: 9.6: INSERT#SQL-ON-CONFLICT

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.