title: Scaling up your server descriptions: Optimizations that can be done to serve more users. menu: docs:
weight: 100
parent: admin
Mastodon has three types of processes:
The web process serves short-lived HTTP requests for most of the application. The following environment variables control it:
WEB_CONCURRENCY
controls the number of worker processesMAX_THREADS
controls the number of threads per processThreads share the memory of their parent process. Different processes allocate their own memory, though they share some memory via copy-on-write. A larger number of threads maxes out your CPU first, and a larger number of processes maxes out your RAM first.
These values affect how many HTTP requests can be served at the same time.
In terms of throughput, more processes are better than more threads.
The streaming API handles long-lived HTTP and WebSockets connections, through which clients receive real-time updates. The following environment variables control it:
STREAMING_API_BASE_URL
controls the base URL of the streaming APIPORT
controls the port the streaming server will listen on, by default 4000. The BIND
and SOCKET
environment variables are also able to be used.The streaming API can use a different subdomain if you want to by setting STREAMING_API_BASE_URL
. This allows you to have one load balancer for streaming and one for web/API requests. However, this also requires applications to correctly request the streaming URL from the instance endpoint, instead of assuming that it's hosted on the same host as the Web API.
One process of the streaming server can handle a reasonably high number of connections and throughput, but if you find that a single process isn't handling your instance's load, you can run multiple processes by varying the PORT
number of each, and then using nginx to load balance traffic to each of those instances. For example, a community of about 50,000 accounts with 10,000-20,000 monthly active accounts, you'll typically have an average concurrent load of about 800-1200 streaming connections.
The streaming server also exposes a Prometheus endpoint on /metrics
with a lot of metrics to help you understand the current load on your mastodon streaming server, some key metrics are:
mastodon_streaming_connected_clients
: This is the number of connected clients, tagged by client type (websocket or eventsource)mastodon_streaming_connected_channels
: This is the number of "channels" that are currently subscribed (note that this is much higher than connected clients due to how our internal "system" channels currently work)mastodon_streaming_messages_sent_total
: This is the total number of messages sent to clients since last restart.mastodon_streaming_redis_messages_received_total
: This is the number of messages received from Redis pubsub, and intended to complement monitoring Redis directly.{{< hint style="info" >}} The more streaming server processes that you run, the more database connections will be consumed on PostgreSQL, so you'll likely want to use PgBouncer, as documented below. {{< /hint >}}
An example nginx configuration to route traffic to three different processes on PORT
4000, 4001, and 4002 is as follows:
upstream streaming {
least_conn;
server 127.0.0.1:4000 fail_timeout=0;
server 127.0.0.1:4001 fail_timeout=0;
server 127.0.0.1:4002 fail_timeout=0;
}
If you're using the distributed systemd files, then you can start up multiple streaming servers with the following commands:
$ sudo systemctl start mastodon-streaming@4000.service
$ sudo systemctl start mastodon-streaming@4001.service
$ sudo systemctl start mastodon-streaming@4002.service
By default, sudo systemctl start mastodon-streaming
starts just one process on port 4000, equivalent to running sudo systemctl start mastodon-streaming@4000.service
.
{{< hint style="warning" >}}
Previous versions of Mastodon had a STREAMING_CLUSTER_NUM
environment variable that made the streaming server use clustering, which started mulitple workers processes and used node.js to load balance them.
This interacted with the other settings in ways which made capacity planning difficult, especially when it comes to database connections and CPU resources. By default the streaming server would consume resources on all available CPUs which could cause contention with other software running on that server. Another common issue was that misconfiguring the STREAMING_CLUSTER_NUM
would exhaust your database connections by opening up a connection pool per cluster worker process, so a STREAMING_CLUSTER_NUM
of 5
and DB_POOL
of 10
would potentially consume 50 database connections.
Now a single streaming server process will only use at maximum DB_POOL
PostgreSQL connections, and scaling is handled by running more instances of the streaming server.
{{< /hint >}}
Many tasks in Mastodon are delegated to background processing to ensure the HTTP requests are fast, and to prevent HTTP request aborts from affecting the execution of those tasks. Sidekiq is a single process, with a configurable number of threads.
While the amount of threads in the web process affects the responsiveness of the Mastodon instance to the end-user, the amount of threads allocated to background processing affects how quickly posts can be delivered from the author to anyone else, how soon e-mails are sent out, etc.
The number of threads is not regulated by an environment variable, but rather through a command line argument when invoking Sidekiq, as shown in the following example:
bundle exec sidekiq -c 15
This would initiate the Sidekiq process with 15 threads. It's important to note that each thread requires a database connection, necessitating a sufficiently large database pool. The size of this pool is managed by the DB_POOL environment variable, which should be set to a value at least equal to the number of threads.
Sidekiq uses different queues for tasks of varying importance, where importance is defined by how much it would impact the user experience of your server’s local users if the queue wasn’t working, in order of descending importance:
Queue | Significance |
---|---|
default |
All tasks that affect local users |
push |
Delivery of payloads to other servers |
mailers |
Delivery of e-mails |
pull |
Lower priority tasks such as handling imports, backups, resolving threads, deleting users, forwarding replies |
scheduler |
Doing cron jobs like refreshing trending hashtags and cleaning up logs |
ingress |
Incoming remote activities. Lower priority than the default queue so local users still see their posts when the server is under load |
The default queues and their priorities are stored in config/sidekiq.yml, but can be overridden by the command-line invocation of Sidekiq, e.g.:
bundle exec sidekiq -q default
To run just the default
queue.
Sidekiq processes queues by first checking for tasks in the first queue, and if it finds none, it then checks the subsequent queue. Consequently, if the first queue is overfilled, tasks in the other queues may experience delays.
As a solution, it is possible to start different Sidekiq processes for the queues to ensure truly parallel execution, by e.g. creating multiple systemd services for Sidekiq with different arguments.
Make sure you only have one scheduler
queue running!!
If you start running out of available PostgreSQL connections (the default is 100) then you may find PgBouncer to be a good solution. This document describes some common gotchas as well as good configuration defaults for Mastodon.
User roles with DevOps
permissions in Mastodon can monitor the current usage of PostgreSQL connections through the PgHero link in the Administration view. Generally, the number of connections open is equal to the total threads in Puma, Sidekiq, and the streaming API combined.
On Debian and Ubuntu:
sudo apt install pgbouncer
First off, if your mastodon
user in PostgreSQL is set up without a password, you will need to set a password.
Here’s how you might reset the password:
psql -p 5432 -U mastodon mastodon_production -w
Then (obviously, use a different password than the word “password”):
ALTER USER mastodon WITH PASSWORD 'password';
Then \q
to quit.
Edit /etc/pgbouncer/userlist.txt
As long as you specify a user/password in pgbouncer.ini later, the values in userlist.txt do not have to correspond to real PostgreSQL roles. You can arbitrarily define users and passwords, but you can reuse the “real” credentials for simplicity’s sake. Add the mastodon
user to the userlist.txt
:
"mastodon" "md5d75bb2be2d7086c6148944261a00f605"
Here we’re using the md5 scheme, where the md5 password is just the md5sum of password + username
with the string md5
prepended. For instance, to derive the hash for user mastodon
with password password
, you can do:
# ubuntu, debian, etc.
echo -n "passwordmastodon" | md5sum
# macOS, openBSD, etc.
md5 -s "passwordmastodon"
Then just add md5
to the beginning of that.
You’ll also want to create a pgbouncer
admin user to log in to the PgBouncer admin database. So here’s a sample userlist.txt
:
"mastodon" "md5d75bb2be2d7086c6148944261a00f605"
"pgbouncer" "md5a45753afaca0db833a6f7c7b2864b9d9"
In both cases, the password is just password
.
Edit /etc/pgbouncer/pgbouncer.ini
Add a line under [databases]
listing the PostgreSQL databases you want to connect to. Here we’ll just have PgBouncer use the same username/password and database name to connect to the underlying PostgreSQL database:
[databases]
mastodon_production = host=127.0.0.1 port=5432 dbname=mastodon_production user=mastodon password=password
The listen_addr
and listen_port
tell PgBouncer which address/port to accept connections. The defaults are fine:
listen_addr = 127.0.0.1
listen_port = 6432
Put md5
as the auth_type
(assuming you’re using the md5 format in userlist.txt
):
auth_type = md5
Make sure the pgbouncer
user is an admin:
admin_users = pgbouncer
Mastodon requires a different pooling mode than the default session-based one. Specifically, it needs a transaction-based pooling mode. This means that a PostgreSQL connection is established at the start of a transaction and terminated upon its completion. Therefore, it's essential to change the pool_mode
setting from session
to transaction
:
pool_mode = transaction
Next up, max_client_conn
defines how many connections PgBouncer itself will accept, and default_pool_size
puts a limit on how many PostgreSQL connections will be opened under the hood. (In PgHero the number of connections reported will correspond to default_pool_size
because it has no knowledge of PgBouncer.)
The defaults are fine to start, and you can always increase them later:
max_client_conn = 100
default_pool_size = 20
Don’t forget to reload or restart PgBouncer after making your changes:
sudo systemctl reload pgbouncer
You should be able to connect to PgBouncer just like you would with PostgreSQL:
psql -p 6432 -U mastodon mastodon_production
Then use your password to log in.
You can also check the PgBouncer logs like so:
tail -f /var/log/postgresql/pgbouncer.log
In your .env.production
file, first off make sure that this is set:
PREPARED_STATEMENTS=false
Since we’re using transaction-based pooling, we can’t use prepared statements.
Next up, configure Mastodon to use port 6432 (PgBouncer) instead of 5432 (PostgreSQL) and you should be good to go:
DB_HOST=localhost
DB_USER=mastodon
DB_NAME=mastodon_production
DB_PASS=password
DB_PORT=6432
{{< hint style="warning" >}}
You cannot use PgBouncer to perform db:migrate
tasks. But this is easy to work around. If your PostgreSQL and PgBouncer are on the same host, it can be as simple as defining DB_PORT=5432
together with RAILS_ENV=production
when calling the task, for example: RAILS_ENV=production DB_PORT=5432 bundle exec rails db:migrate
(you can specify DB_HOST
too if it’s different, etc)
{{< /hint >}}
The easiest way to reboot is:
sudo systemctl restart pgbouncer
But if you’ve set up a PgBouncer admin user, you can also connect as the admin:
psql -p 6432 -U pgbouncer pgbouncer
And then do:
RELOAD;
Then use \q
to quit.
Redis is used widely throughout the application, but some uses are more important than others. Home feeds, list feeds, and Sidekiq queues as well as the streaming API are backed by Redis and that’s important data you wouldn’t want to lose (even though the loss can be survived, unlike the loss of the PostgreSQL database - never lose that!). However, Redis is also used for volatile cache. If you are at a stage of scaling up where you are worried about whether your Redis can handle everything, you can use a different Redis database for the cache. In the environment, you can specify CACHE_REDIS_URL
or individual parts like CACHE_REDIS_HOST
, CACHE_REDIS_PORT
etc. Unspecified parts fallback to the same values as without the cache prefix.
Additionally, Redis is used for volatile caching. If you're scaling up and concerned about Redis's capacity to handle the load, you can allocate a separate Redis database specifically for caching. To do this, set CACHE_REDIS_URL
in the environment, or define individual components such as CACHE_REDIS_HOST
, CACHE_REDIS_PORT
, etc.
Unspecified components will default to their values without the cache prefix.
When configuring the Redis database for caching, it's possible to disable background saving to disk, as data loss on restart is not critical in this context, and this can save some disk I/O. Additionally, consider setting a maximum memory limit and implementing a key eviction policy. For more details on these configurations, refer to this guide:Using Redis as an LRU cache
Redis is used in Sidekiq to keep track of its locks and queue. Although in general the performance gain is not that big, some instances may benefit from having a seperate Redis instance for Sidekiq.
In the environment file, you can specify SIDEKIQ_REDIS_URL
or individual parts like SIDEKIQ_REDIS_HOST
, SIDEKIQ_REDIS_PORT
etc. Unspecified parts fallback to the same values as without the SIDEKIQ_
prefix.
Creating a seperate Redis instance for Sidekiq is relatively simple:
Start by making a copy of the default redis systemd service:
cp /etc/systemd/system/redis.service /etc/systemd/system/redis-sidekiq.service
In the redis-sidekiq.service
file, change the following values:
ExecStart=/usr/bin/redis-server /etc/redis/redis-sidekiq.conf --supervised systemd --daemonize no
PIDFile=/run/redis/redis-server-sidekiq.pid
ReadWritePaths=-/var/lib/redis-sidekiq
Alias=redis-sidekiq.service
Make a copy of the Redis configuration file for the new Sidekiq Redis instance
cp /etc/redis/redis.conf /etc/redis/redis-sidekiq.conf
In this redis-sidekiq.conf
file, change the following values:
port 6479
pidfile /var/run/redis/redis-server-sidekiq.pid
logfile /var/log/redis/redis-server-sidekiq.log
dir /var/lib/redis-sidekiq
Before starting the new Redis instance, create a data directory:
mkdir /var/lib/redis-sidekiq
chown redis /var/lib/redis-sidekiq
Start the new Redis instance:
systemctl enable --now redis-sidekiq
Update your environment, add the following line:
SIDEKIQ_REDIS_URL=redis://127.0.0.1:6479/
Restart Mastodon to use the new Redis instance, make sure to restart both web and Sidekiq (otherwise, one of them will still be working from the wrong instance):
systemctl restart mastodon-web.service
systemctl restart redis-sidekiq.service
As mentioned, Redis is a critical part of a Mastodon instance's operation. By default, your deployment will use a single Redis instance, or multiple if you've setup a cache. However if that instance goes down it can bring the entire Mastodon instance down as well. To alleviate this, Redis Sentinel can be used to track your Redis instances and automatically direct clients to a new primary if one goes down. You can specify REDIS_SENTINEL
, which is either a DNS name that resolves to the IPs of your Redis Sentinel instances (e.g a Kubernetes service) or a comma-delimited list of the IP:Port combinations directly, that Mastodon can talk with to determine the current master Redis node. By default Sentinel will set an instance as down and select a new master after a minute of the current master being unreachable, but this can be configured based on your setup.
To reduce the load on your PostgreSQL server, you may wish to set up hot streaming replication (read replica). See this guide for an example. You can make use of the replica in Mastodon in these ways:
{{< hint style="warning" >}} Read replicas are currently not supported for the Sidekiq processes, and using them will lead to failing jobs and data loss. {{< /hint >}}
You will have to use a separate config/database.yml
file for the web processes and edit it to replace the production
section as follows:
production:
<<: *default
adapter: postgresql_makara
prepared_statements: false
makara:
id: postgres
sticky: true
connections:
- role: master
blacklist_duration: 0
url: postgresql://db_user:db_password@db_host:db_port/db_name
- role: slave
url: postgresql://db_user:db_password@db_host:db_port/db_name
Make sure the URLs point to wherever your PostgreSQL servers are. You can add multiple replicas. You could have a locally installed PgBouncer with a configuration to connect to two different servers based on the database name, e.g. “mastodon” going to the primary, “mastodon_replica” going to the replica, so in the file above both URLs would point to the local PgBouncer with the same user, password, host and port, but different database name. There are many possibilities how this could be set up! For more information on Makara, see their documentation.
{{< hint style="warning" >}}
Make sure the sidekiq processes run with the stock config/database.yml
to avoid failing jobs and data loss!
{{< /hint >}}
Cloud providers like DigitalOcean, AWS, Hetzner, etc., offer virtual load balancing solutions that distribute network traffic across multiple servers, but provide a single public IP address.
Scaling your deployment to provision multiple web/Puma servers behind one of these virtual load balancers can help provide more consistent performance by reducing the risk that a single server may become overwhelmed by user traffic, and decrease downtime when performing maintenance or upgrades. You should consult your provider documentation on how to setup and configure a load balancer, but consider that you need to configure your load balancer to monitor the health of the backend web/Puma nodes, otherwise you may send traffic to a service that is not responsive.
The following endpoints are available to monitor for this purpose:
/health
/api/v1/streaming/health
These endpoints should both return an HTTP status code of 200, and the text OK
as a result.
{{< hint style="info" >}} You can also use these endpoints for health checks with a third-party monitoring/alerting utility. {{< /hint >}}