2016-06-02 11:05:42 +05:30
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# Performance Guidelines
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This document describes various guidelines to follow to ensure good and
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consistent performance of GitLab.
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## Workflow
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The process of solving performance problems is roughly as follows:
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1. Make sure there's an issue open somewhere (e.g., on the GitLab CE issue
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tracker), create one if there isn't. See [#15607][#15607] for an example.
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2. Measure the performance of the code in a production environment such as
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GitLab.com (see the [Tooling](#tooling) section below). Performance should be
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measured over a period of _at least_ 24 hours.
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3. Add your findings based on the measurement period (screenshots of graphs,
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timings, etc) to the issue mentioned in step 1.
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4. Solve the problem.
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2016-09-13 17:45:13 +05:30
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5. Create a merge request, assign the "Performance" label and assign it to
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[@yorickpeterse][yorickpeterse] for reviewing.
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2016-06-02 11:05:42 +05:30
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6. Once a change has been deployed make sure to _again_ measure for at least 24
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hours to see if your changes have any impact on the production environment.
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7. Repeat until you're done.
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When providing timings make sure to provide:
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* The 95th percentile
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* The 99th percentile
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* The mean
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When providing screenshots of graphs, make sure that both the X and Y axes and
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the legend are clearly visible. If you happen to have access to GitLab.com's own
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monitoring tools you should also provide a link to any relevant
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graphs/dashboards.
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## Tooling
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2016-11-03 12:29:30 +05:30
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GitLab provides built-in tools to aid the process of improving performance:
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2016-06-02 11:05:42 +05:30
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2016-09-13 17:45:13 +05:30
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* [Sherlock](profiling.md#sherlock)
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* [GitLab Performance Monitoring](../monitoring/performance/monitoring.md)
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2016-11-03 12:29:30 +05:30
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* [Request Profiling](../administration/monitoring/performance/request_profiling.md)
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2016-06-02 11:05:42 +05:30
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GitLab employees can use GitLab.com's performance monitoring systems located at
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<http://performance.gitlab.net>, this requires you to log in using your
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`@gitlab.com` Email address. Non-GitLab employees are advised to set up their
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own InfluxDB + Grafana stack.
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## Benchmarks
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Benchmarks are almost always useless. Benchmarks usually only test small bits of
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code in isolation and often only measure the best case scenario. On top of that,
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benchmarks for libraries (e.g., a Gem) tend to be biased in favour of the
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library. After all there's little benefit to an author publishing a benchmark
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that shows they perform worse than their competitors.
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Benchmarks are only really useful when you need a rough (emphasis on "rough")
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understanding of the impact of your changes. For example, if a certain method is
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slow a benchmark can be used to see if the changes you're making have any impact
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on the method's performance. However, even when a benchmark shows your changes
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improve performance there's no guarantee the performance also improves in a
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production environment.
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When writing benchmarks you should almost always use
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[benchmark-ips](https://github.com/evanphx/benchmark-ips). Ruby's `Benchmark`
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module that comes with the standard library is rarely useful as it runs either a
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single iteration (when using `Benchmark.bm`) or two iterations (when using
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`Benchmark.bmbm`). Running this few iterations means external factors (e.g. a
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video streaming in the background) can very easily skew the benchmark
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statistics.
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Another problem with the `Benchmark` module is that it displays timings, not
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iterations. This means that if a piece of code completes in a very short period
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of time it can be very difficult to compare the timings before and after a
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certain change. This in turn leads to patterns such as the following:
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```ruby
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Benchmark.bmbm(10) do |bench|
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bench.report 'do something' do
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100.times do
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... work here ...
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end
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end
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end
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```
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This however leads to the question: how many iterations should we run to get
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meaningful statistics?
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The benchmark-ips Gem basically takes care of all this and much more, and as a
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result of this should be used instead of the `Benchmark` module.
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In short:
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1. Don't trust benchmarks you find on the internet.
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2. Never make claims based on just benchmarks, always measure in production to
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confirm your findings.
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3. X being N times faster than Y is meaningless if you don't know what impact it
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will actually have on your production environment.
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4. A production environment is the _only_ benchmark that always tells the truth
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(unless your performance monitoring systems are not set up correctly).
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5. If you must write a benchmark use the benchmark-ips Gem instead of Ruby's
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`Benchmark` module.
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## Importance of Changes
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When working on performance improvements, it's important to always ask yourself
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the question "How important is it to improve the performance of this piece of
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code?". Not every piece of code is equally important and it would be a waste to
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spend a week trying to improve something that only impacts a tiny fraction of
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our users. For example, spending a week trying to squeeze 10 milliseconds out of
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a method is a waste of time when you could have spent a week squeezing out 10
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seconds elsewhere.
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There is no clear set of steps that you can follow to determine if a certain
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piece of code is worth optimizing. The only two things you can do are:
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1. Think about what the code does, how it's used, how many times it's called and
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how much time is spent in it relative to the total execution time (e.g., the
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total time spent in a web request).
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2. Ask others (preferably in the form of an issue).
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Some examples of changes that aren't really important/worth the effort:
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* Replacing double quotes with single quotes.
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* Replacing usage of Array with Set when the list of values is very small.
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* Replacing library A with library B when both only take up 0.1% of the total
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execution time.
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* Calling `freeze` on every string (see [String Freezing](#string-freezing)).
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## Slow Operations & Sidekiq
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Slow operations (e.g. merging branches) or operations that are prone to errors
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(using external APIs) should be performed in a Sidekiq worker instead of
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directly in a web request as much as possible. This has numerous benefits such
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as:
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1. An error won't prevent the request from completing.
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2. The process being slow won't affect the loading time of a page.
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3. In case of a failure it's easy to re-try the process (Sidekiq takes care of
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this automatically).
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4. By isolating the code from a web request it will hopefully be easier to test
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and maintain.
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It's especially important to use Sidekiq as much as possible when dealing with
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Git operations as these operations can take quite some time to complete
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depending on the performance of the underlying storage system.
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## Git Operations
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Care should be taken to not run unnecessary Git operations. For example,
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retrieving the list of branch names using `Repository#branch_names` can be done
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without an explicit check if a repository exists or not. In other words, instead
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of this:
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```ruby
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if repository.exists?
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repository.branch_names.each do |name|
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...
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end
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end
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```
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You can just write:
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```ruby
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repository.branch_names.each do |name|
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...
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end
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```
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## Caching
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Operations that will often return the same result should be cached using Redis,
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in particular Git operations. When caching data in Redis, make sure the cache is
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flushed whenever needed. For example, a cache for the list of tags should be
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flushed whenever a new tag is pushed or a tag is removed.
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When adding cache expiration code for repositories, this code should be placed
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in one of the before/after hooks residing in the Repository class. For example,
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if a cache should be flushed after importing a repository this code should be
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added to `Repository#after_import`. This ensures the cache logic stays within
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the Repository class instead of leaking into other classes.
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When caching data, make sure to also memoize the result in an instance variable.
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While retrieving data from Redis is much faster than raw Git operations, it still
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has overhead. By caching the result in an instance variable, repeated calls to
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the same method won't end up retrieving data from Redis upon every call. When
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memoizing cached data in an instance variable, make sure to also reset the
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instance variable when flushing the cache. An example:
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```ruby
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def first_branch
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@first_branch ||= cache.fetch(:first_branch) { branches.first }
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end
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def expire_first_branch_cache
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cache.expire(:first_branch)
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@first_branch = nil
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end
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```
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## Anti-Patterns
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This is a collection of [anti-patterns][anti-pattern] that should be avoided
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unless these changes have a measurable, significant and positive impact on
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production environments.
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### String Freezing
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In recent Ruby versions calling `freeze` on a String leads to it being allocated
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only once and re-used. For example, on Ruby 2.3 this will only allocate the
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"foo" String once:
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```ruby
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10.times do
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'foo'.freeze
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end
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```
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Blindly adding a `.freeze` call to every String is an anti-pattern that should
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be avoided unless one can prove (using production data) the call actually has a
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positive impact on performance.
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This feature of Ruby wasn't really meant to make things faster directly, instead
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it was meant to reduce the number of allocations. Depending on the size of the
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String and how frequently it would be allocated (before the `.freeze` call was
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added), this _may_ make things faster, but there's no guarantee it will.
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Another common flavour of this is to not only freeze a String, but also assign
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it to a constant, for example:
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```ruby
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SOME_CONSTANT = 'foo'.freeze
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9000.times do
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SOME_CONSTANT
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end
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```
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The only reason you should be doing this is to prevent somebody from mutating
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the global String. However, since you can just re-assign constants in Ruby
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there's nothing stopping somebody from doing this elsewhere in the code:
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```ruby
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SOME_CONSTANT = 'bar'
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```
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### Moving Allocations to Constants
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Storing an object as a constant so you only allocate it once _may_ improve
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performance, but there's no guarantee this will. Looking up constants has an
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impact on runtime performance, and as such, using a constant instead of
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referencing an object directly may even slow code down.
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[#15607]: https://gitlab.com/gitlab-org/gitlab-ce/issues/15607
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[yorickpeterse]: https://gitlab.com/yorickpeterse
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[anti-pattern]: https://en.wikipedia.org/wiki/Anti-pattern
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