qb_akkoma/docs/configuration/postgresql.md
norm 74bc22ae50 Update configuration docs (#40)
Reviewed-on: AkkomaGang/akkoma#40
Co-authored-by: norm <normandy@biribiri.dev>
Co-committed-by: norm <normandy@biribiri.dev>
2022-07-03 15:21:21 +00:00

2.1 KiB

Optimizing PostgreSQL performance

Akkoma performance is largely dependent on performance of the underlying database. Better performance can be achieved by adjusting a few settings.

PGTune

PgTune can be used to get recommended settings. Be sure to set "Number of Connections" to 20, otherwise it might produce settings hurtful to database performance. It is also recommended to not use "Network Storage" option.

Disable generic query plans

When PostgreSQL receives a query, it decides on a strategy for searching the requested data, this is called a query plan. The query planner has two modes: generic and custom. Generic makes a plan for all queries of the same shape, ignoring the parameters, which is then cached and reused. Custom, on the contrary, generates a unique query plan based on query parameters.

By default PostgreSQL has an algorithm to decide which mode is more efficient for particular query, however this algorithm has been observed to be wrong on some of the queries Akkoma sends, leading to serious performance loss. Therefore, it is recommended to disable generic mode.

Akkoma already avoids generic query plans by default, however the method it uses is not the most efficient because it needs to be compatible with all supported PostgreSQL versions. For PostgreSQL 12 and higher additional performance can be gained by adding the following to Akkoma configuration:

config :pleroma, Pleroma.Repo,
  prepare: :named,
  parameters: [
    plan_cache_mode: "force_custom_plan"
  ]

A more detailed explaination of the issue can be found at https://blog.soykaf.com/post/postgresql-elixir-troubles/.

Example configurations

Here are some configuration suggestions for PostgreSQL 10+.

1GB RAM, 1 CPU

shared_buffers = 256MB
effective_cache_size = 768MB
maintenance_work_mem = 64MB
work_mem = 13107kB

2GB RAM, 2 CPU

shared_buffers = 512MB
effective_cache_size = 1536MB
maintenance_work_mem = 128MB
work_mem = 26214kB
max_worker_processes = 2
max_parallel_workers_per_gather = 1
max_parallel_workers = 2