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Heroku warns of using Multiple Schemas with Postgres. But does not specify numerous operational problems caused.

As posted on Heroku docs:

The most common use case for using multiple schemas in a database is building a software-as-a-service application wherein each customer has their own schema. While this technique seems compelling, we strongly recommend against it as it has caused numerous cases of operational problems. For instance, even a moderate number of schemas (> 50) can severely impact the performance of Heroku’s database snapshots tool, PG Backups.

I think, the problem of Backups can be solved by adding a follower db.

I have 60 tables per schema, so with 1000 schemas I will have 60,000 tables. How will this impact database performance? What kind of problems I can expect while scaling?

  • A very resourceful article written on the topic -> influitive.io/… – abhishek77in Aug 15 '18 at 9:48
  • Off topic - why do you plan to create 1000 schemas with 60 tables each? It seems like a perfect case for table partitioning rather than making 1000 schemas? postgresql.org/docs/11/static/ddl-partitioning.html – Grzegorz Grabek Oct 21 '18 at 17:28
  • Schemas provide solid data isolation, instead of managing 1000 databases managing 1000 schemas would be easier. – abhishek77in Oct 22 '18 at 3:54
  • Managing 1 database with composite pk on a partitioned table will be much easier than 1000 schemas. – Grzegorz Grabek Oct 22 '18 at 9:35
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+100

The first issues with running a large volume of schemas and/or tables don't typically interfere with a running database. The major problem that operators encounter is that they will be unable to create logical backups of the database. Running heroku pg:backups is likely to fail as is running pg_dump manually. Typically, this is the error you'll see in the attempted backup logs:

ERROR: out of shared memory HINT: You might need to increase max_locks_per_transaction

The large volume of locks needed end up causing OOM conditions for the database. This isn't always a problem on Heroku. If you're using a production database you can rely on their point-in-time recovery option as your DR solution. That being said, exporting the data off Heroku will be difficult if you can't run a logical backup since they don't currently support external replication. It's less than ideal but hypothetically you could try to dump the database schema by schema in order avoid the OOM conditions.

  • Will having thousands to table spread across schemas can be an issue at some point? For eg. I have 60 tables per schema, so with 1000 schemas I will have 60,000 tables. – abhishek77in Oct 19 '18 at 18:15
  • Yes, large volumes of tables can have a similar effect. I would fully expect to see the aforementioned issues with 60k tables across 1k schemas. – RangerRanger Oct 19 '18 at 18:18
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    Except for logical backups for an application running in production can you foresee any other issue? – abhishek77in Oct 19 '18 at 18:22

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