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91 lines
4 KiB
Markdown
91 lines
4 KiB
Markdown
# Deployment engineering for puma
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Puma is software that is expected to be run in a deployed environment eventually.
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You can certainly use it as your dev server only, but most people look to use
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it in their production deployments as well.
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To that end, this is meant to serve as a foundation of wisdom how to do that
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in a way that increases happiness and decreases downtime.
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## Specifying puma
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Most people want to do this by putting `gem "puma"` into their Gemfile, so we'll
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go ahead and assume that. Go add it now... we'll wait.
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Welcome back!
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## Single vs Cluster mode
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Puma was originally conceived as a thread-only webserver, but grew the ability to
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also use processes in version 2.
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Here are some rules of thumb:
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### MRI
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* Use cluster mode and set the number of workers to 1.5x the number of cpu cores
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in the machine, minimum 2.
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* Set the number of threads to desired concurrent requests / number of workers.
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Puma defaults to 16 and that's a decent number.
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#### Migrating from Unicorn
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* If you're migrating from unicorn though, here are some settings to start with:
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* Set workers to half the number of unicorn workers you're using
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* Set threads to 2
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* Enjoy 50% memory savings
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* As you grow more confident in the thread safety of your app, you can tune the
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workers down and the threads up.
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#### Worker utilization
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**How do you know if you're got enough (or too many workers)?**
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A good question. Due to MRI's GIL, only one thread can be executing Ruby code at a time.
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But since so many apps are waiting on IO from DBs, etc., they can utilize threads
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to make better use of the process.
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The rule of thumb is you never want processes that are pegged all the time. This
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means that there is more work to do that the process can get through. On the other
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hand, if you have processes that sit around doing nothing, then they're just eating
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up resources.
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Watching your CPU utilization over time and aim for about 70% on average. This means
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you've got capacity still but aren't starving threads.
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## Daemonizing
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I prefer to not daemonize my servers and use something like `runit` or `upstart` to
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monitor them as child processes. This gives them fast response to crashes and
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makes it easy to figure out what is going on. Additionally, unlike `unicorn`,
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puma does not require daemonization to do zero-downtime restarts.
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I see people using daemonization because they start puma directly via capistrano
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task and thus want it to live on past the `cap deploy`. To this people I said:
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You need to be using a process monitor. Nothing is making sure puma stays up in
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this scenario! You're just waiting for something weird to happen, puma to die,
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and to get paged at 3am. Do yourself a favor, at least the process monitoring
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your OS comes with, be it `sysvinit`, `upstart`, or `systemd`. Or branch out
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and use `runit` or hell, even `monit`.
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## Restarting
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You probably will want to deploy some new code at some point, and you'd like
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puma to start running that new code. Minimizing the amount of time the server
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is unavailable would be nice as well. Here's how to do it:
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1. Don't use `preload!`. This dirties the master process and means it will have
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to shutdown all the workers and re-exec itself to get your new code. It is not compatible with phased-restart and `prune_bundler` as well.
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1. Use `prune_bundler`. This makes it so that the cluster master will detach itself
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from a Bundler context on start. This allows the cluster workers to load your app
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and start a brand new Bundler context within the worker only. This means your
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master remains pristine and can live on between new releases of your code.
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1. Use phased-restart (`SIGUSR1` or `pumactl phased-restart`). This tells the master
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to kill off one worker at a time and restart them in your new code. This minimizes
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downtime and staggers the restart nicely. **WARNING** This means that both your
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old code and your new code will be running concurrently. Most deployment solutions
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already cause that, but it's worth warning you about it again. Be careful with your
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migrations, etc!
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