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---
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info: To determine the technical writer assigned to the Stage/Group associated with this page, see https://about.gitlab.com/handbook/engineering/ux/technical-writing/#assignments
---
# `ReactiveCaching`
> This doc refers to [`reactive_caching.rb`](https://gitlab.com/gitlab-org/gitlab/-/blob/master/app/models/concerns/reactive_caching.rb).
The `ReactiveCaching` concern is used for fetching some data in the background and storing it
in the Rails cache, keeping it up-to-date for as long as it is being requested. If the
data hasn't been requested for `reactive_cache_lifetime`, it stops being refreshed,
and is removed.
## Examples
```ruby
class Foo < ApplicationRecord
include ReactiveCaching
after_save :clear_reactive_cache!
def calculate_reactive_cache(param1, param2)
# Expensive operation here. The return value of this method is cached
end
def result
# Any arguments can be passed to `with_reactive_cache`. `calculate_reactive_cache`
# will be called with the same arguments.
with_reactive_cache(param1, param2) do |data|
# ...
end
end
end
```
In this example, the first time `#result` is called, it returns `nil`. However,
it enqueues a background worker to call `#calculate_reactive_cache` and set an
initial cache lifetime of 10 minutes.
## How it works
The first time `#with_reactive_cache` is called, a background job is enqueued and
`with_reactive_cache` returns `nil`. The background job calls `#calculate_reactive_cache`
and stores its return value. It also re-enqueues the background job to run again after
`reactive_cache_refresh_interval`. Therefore, it keeps the stored value up to date.
Calculations never run concurrently.
Calling `#with_reactive_cache` while a value is cached calls the block given to
`#with_reactive_cache`, yielding the cached value. It also extends the lifetime
of the cache by the `reactive_cache_lifetime` value.
After the lifetime has expired, no more background jobs are enqueued and calling
`#with_reactive_cache` again returns `nil`, starting the process all over again.
### Set a hard limit for ReactiveCaching
To preserve performance, you should set a hard caching limit in the class that includes
`ReactiveCaching`. See the example of [how to set it up](#selfreactive_cache_hard_limit).
For more information, read the internal issue
[Redis (or ReactiveCache) soft and hard limits](https://gitlab.com/gitlab-org/gitlab/-/issues/14015).
## When to use
- If we need to make a request to an external API (for example, requests to the k8s API).
It is not advisable to keep the application server worker blocked for the duration of
the external request.
- If a model needs to perform a lot of database calls or other time consuming
calculations.
## How to use
### In models and integrations
The ReactiveCaching concern can be used in models as well as integrations
(`app/models/integrations`).
1. Include the concern in your model or integration.
To include the concern in a model:
```ruby
include ReactiveCaching
```
To include the concern in an integration:
```ruby
include Integrations::ReactivelyCached
```
1. Implement the `calculate_reactive_cache` method in your model or integration.
1. Call `with_reactive_cache` in your model or integration where the cached value is needed.
1. Set the [`reactive_cache_work_type` accordingly](#selfreactive_cache_work_type).
### In controllers
Controller endpoints that call a model or service method that uses `ReactiveCaching` should
not wait until the background worker completes.
- An API that calls a model or service method that uses `ReactiveCaching` should return
`202 accepted` when the cache is being calculated (when `#with_reactive_cache` returns `nil`).
- It should also
[set the polling interval header](fe_guide/performance.md#real-time-components) with
`Gitlab::PollingInterval.set_header`.
- The consumer of the API is expected to poll the API.
- You can also consider implementing [ETag caching](polling.md) to reduce the server
load caused by polling.
### Methods to implement in a model or service
These are methods that should be implemented in the model/service that includes `ReactiveCaching`.
#### `#calculate_reactive_cache` (required)
- This method must be implemented. Its return value is cached.
- It is called by `ReactiveCaching` when it needs to populate the cache.
- Any arguments passed to `with_reactive_cache` are also passed to `calculate_reactive_cache`.
#### `#reactive_cache_updated` (optional)
- This method can be implemented if needed.
- It is called by the `ReactiveCaching` concern whenever the cache is updated.
If the cache is being refreshed and the new cache value is the same as the old cache
value, this method is not called. It is only called if a new value is stored in
the cache.
- It can be used to perform an action whenever the cache is updated.
### Methods called by a model or service
These are methods provided by `ReactiveCaching` and should be called in
the model/service.
#### `#with_reactive_cache` (required)
- `with_reactive_cache` must be called where the result of `calculate_reactive_cache`
is required.
- A block can be given to `with_reactive_cache`. `with_reactive_cache` can also take
any number of arguments. Any arguments passed to `with_reactive_cache` are
passed to `calculate_reactive_cache`. The arguments passed to `with_reactive_cache`
are appended to the cache key name.
- If `with_reactive_cache` is called when the result has already been cached, the
block is called, yielding the cached value and the return value of the block
is returned by `with_reactive_cache`. It also resets the timeout of the
cache to the `reactive_cache_lifetime` value.
- If the result has not been cached as yet, `with_reactive_cache` return `nil`.
It also enqueues a background job, which calls `calculate_reactive_cache`
and caches the result.
- After the background job has completed and the result is cached, the next call
to `with_reactive_cache` picks up the cached value.
- In the example below, `data` is the cached value which is yielded to the block
given to `with_reactive_cache`.
```ruby
class Foo < ApplicationRecord
include ReactiveCaching
def calculate_reactive_cache(param1, param2)
# Expensive operation here. The return value of this method is cached
end
def result
with_reactive_cache(param1, param2) do |data|
# ...
end
end
end
```
#### `#clear_reactive_cache!` (optional)
- This method can be called when the cache needs to be expired/cleared. For example,
it can be called in an `after_save` callback in a model so that the cache is
cleared after the model is modified.
- This method should be called with the same parameters that are passed to
`with_reactive_cache` because the parameters are part of the cache key.
#### `#without_reactive_cache` (optional)
- This is a convenience method that can be used for debugging purposes.
- This method calls `calculate_reactive_cache` in the current process instead of
in a background worker.
### Configurable options
There are some `class_attribute` options which can be tweaked.
#### `self.reactive_cache_key`
- The value of this attribute is the prefix to the `data` and `alive` cache key names.
The parameters passed to `with_reactive_cache` form the rest of the cache key names.
- By default, this key uses the model's name and the ID of the record.
```ruby
self.reactive_cache_key = -> (record) { [model_name.singular, record.id] }
```
- The `data` and `alive` cache keys in this case are `"ExampleModel:1:arg1:arg2"`
and `"ExampleModel:1:arg1:arg2:alive"` respectively, where `ExampleModel` is the
name of the model, `1` is the ID of the record, `arg1` and `arg2` are parameters
passed to `with_reactive_cache`.
- If you're including this concern in an integration (`app/models/integrations/`) instead, you must override
the default by adding the following to your integration:
```ruby
self.reactive_cache_key = ->(integration) { [integration.class.model_name.singular, integration.project_id] }
```
If your reactive_cache_key is exactly like the above, you can use the existing
`Integrations::ReactivelyCached` concern instead.
#### `self.reactive_cache_lease_timeout`
- `ReactiveCaching` uses `Gitlab::ExclusiveLease` to ensure that the cache calculation
is never run concurrently by multiple workers.
- This attribute is the timeout for the `Gitlab::ExclusiveLease`.
- It defaults to 2 minutes, but can be overridden if a different timeout is required.
```ruby
self.reactive_cache_lease_timeout = 2.minutes
```
#### `self.reactive_cache_refresh_interval`
- This is the interval at which the cache is refreshed.
- It defaults to 1 minute.
```ruby
self.reactive_cache_refresh_interval = 1.minute
```
#### `self.reactive_cache_lifetime`
- This is the duration after which the cache is cleared if there are no requests.
- The default is 10 minutes. If there are no requests for this cache value for 10 minutes,
the cache expires.
- If the cache value is requested before it expires, the timeout of the cache is
reset to `reactive_cache_lifetime`.
```ruby
self.reactive_cache_lifetime = 10.minutes
```
#### `self.reactive_cache_hard_limit`
- This is the maximum data size that `ReactiveCaching` allows to be cached.
- The default is 1 megabyte. Data that goes over this value is not cached
and silently raises `ReactiveCaching::ExceededReactiveCacheLimit` on Sentry.
```ruby
self.reactive_cache_hard_limit = 5.megabytes
```
#### `self.reactive_cache_work_type`
- This is the type of work performed by the `calculate_reactive_cache` method. Based on this attribute,
it's able to pick the right worker to process the caching job. Make sure to
set it as `:external_dependency` if the work performs any external request
(for example, Kubernetes, Sentry); otherwise set it to `:no_dependency`.
#### `self.reactive_cache_worker_finder`
- This is the method used by the background worker to find or generate the object on
which `calculate_reactive_cache` can be called.
- By default it uses the model primary key to find the object:
```ruby
self.reactive_cache_worker_finder = ->(id, *_args) do
find_by(primary_key => id)
end
```
- The default behavior can be overridden by defining a custom `reactive_cache_worker_finder`.
```ruby
class Foo < ApplicationRecord
include ReactiveCaching
self.reactive_cache_worker_finder = ->(_id, *args) { from_cache(*args) }
def self.from_cache(var1, var2)
# This method will be called by the background worker with "bar1" and
# "bar2" as arguments.
new(var1, var2)
end
def initialize(var1, var2)
# ...
end
def calculate_reactive_cache(var1, var2)
# Expensive operation here. The return value of this method is cached
end
def result
with_reactive_cache("bar1", "bar2") do |data|
# ...
end
end
end
```
- In this example, the primary key ID is passed to `reactive_cache_worker_finder`
along with the parameters passed to `with_reactive_cache`.
- The custom `reactive_cache_worker_finder` calls `.from_cache` with the parameters
passed to `with_reactive_cache`.