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Implementing an A/B/n experiment using GLEX
Introduction
Gitlab::Experiment
(GLEX) is tightly coupled with the concepts provided by
Feature flags in development of GitLab. Here, we refer
to this layer as feature flags, and may also use the term Flipper, because we
built our development and experiment feature flags atop it.
You're strongly encouraged to read and understand the Feature flags in development of GitLab portion of the documentation before considering running experiments. Experiments add additional concepts which may seem confusing or advanced without understanding the underpinnings of how GitLab uses feature flags in development. One concept: GLEX supports multivariate experiments, which are sometimes referred to as A/B/n tests.
The gitlab-experiment
project
exists in a separate repository, so it can be shared across any GitLab property that uses
Ruby. You should feel comfortable reading the documentation on that project as well
if you want to dig into more advanced topics.
Glossary of terms
To ensure a shared language, you should understand these fundamental terms we use when communicating about experiments:
experiment
: Any deviation of code paths we want to run at some times, but not others.context
: A consistent experience we provide in an experiment.control
: The default, or "original" code path.candidate
: Defines an experiment with only one code path.variant(s)
: Defines an experiment with multiple code paths.
How it works
Use this decision tree diagram to understand how GLEX works. When an experiment runs, the following logic is executed to determine what variant should be provided, given how the experiment has been defined and using the provided context:
graph TD
GP[General Pool/Population] --> Running?
Running? -->|Yes| Cached?[Cached? / Pre-segmented?]
Running? -->|No| Excluded[Control / No Tracking]
Cached? -->|No| Excluded?
Cached? -->|Yes| Cached[Cached Value]
Excluded? -->|Yes / Cached| Excluded
Excluded? -->|No| Segmented?
Segmented? -->|Yes / Cached| VariantA
Segmented? -->|No| Included?[Experiment Group?]
Included? -->|Yes| Rollout
Included? -->|No| Control
Rollout -->|Cached| VariantA
Rollout -->|Cached| VariantB
Rollout -->|Cached| VariantC
classDef included fill:#380d75,color:#ffffff,stroke:none
classDef excluded fill:#fca121,stroke:none
classDef cached fill:#2e2e2e,color:#ffffff,stroke:none
classDef default fill:#fff,stroke:#6e49cb
class VariantA,VariantB,VariantC included
class Control,Excluded excluded
class Cached cached
Implement an experiment
Start by generating a feature flag using the bin/feature-flag
command as you
normally would for a development feature flag, making sure to use experiment
for
the type. For the sake of documentation let's name our feature flag (and experiment)
"pill_color".
bin/feature-flag pill_color -t experiment
After you generate the desired feature flag, you can immediately implement an experiment in code. An experiment implementation can be as simple as:
experiment(:pill_color, actor: current_user) do |e|
e.use { 'control' }
e.try(:red) { 'red' }
e.try(:blue) { 'blue' }
end
When this code executes, the experiment is run, a variant is assigned, and (if within a
controller or view) a window.gon.experiment.pillColor
object will be available in the
client layer, with details like:
- The assigned variant.
- The context key for client tracking events.
In addition, when an experiment runs, an event is tracked for
the experiment :assignment
. We cover more about events, tracking, and
the client layer later.
In local development, you can make the experiment active by using the feature flag interface. You can also target specific cases by providing the relevant experiment to the call to enable the feature flag:
# Enable for everyone
Feature.enable(:pill_color)
# Get the `experiment` method -- already available in controllers, views, and mailers.
include Gitlab::Experiment::Dsl
# Enable for only the first user
Feature.enable(:pill_color, experiment(:pill_color, actor: User.first))
To roll out your experiment feature flag on an environment, run the following command using ChatOps (which is covered in more depth in the Feature flags in development of GitLab documentation). This command creates a scenario where half of everyone who encounters the experiment would be assigned the control, 25% would be assigned the red variant, and 25% would be assigned the blue variant:
/chatops run feature set pill_color 50 --actors
For an even distribution in this example, change the command to set it to 66% instead of 50.
NOTE:
To immediately stop running an experiment, use the
/chatops run feature set pill_color false
command.
WARNING:
We strongly recommend using the --actors
flag when using the ChatOps commands,
as anything else may give odd behaviors due to how the caching of variant assignment is
handled.
We can also implement this experiment in a HAML file with HTML wrappings:
#cta-interface
- experiment(:pill_color, actor: current_user) do |e|
- e.use do
.pill-button control
- e.try(:red) do
.pill-button.red red
- e.try(:blue) do
.pill-button.blue blue
The importance of context
In our previous example experiment, our context (this is an important term) is a hash
that's set to { actor: current_user }
. Context must be unique based on how you
want to run your experiment, and should be understood at a lower level.
It's expected, and recommended, that you use some of these contexts to simplify reporting:
{ actor: current_user }
: Assigns a variant and is "sticky" to each user (or "client" ifcurrent_user
is nil) who enters the experiment.{ project: project }
: Assigns a variant and is "sticky" to the project currently being viewed. If running your experiment is more useful when viewing a project, rather than when a specific user is viewing any project, consider this approach.{ group: group }
: Similar to the project example, but applies to a wider scope of projects and users.{ actor: current_user, project: project }
: Assigns a variant and is "sticky" to the user who is viewing the given project. This creates a different variant assignment possibility for every project thatcurrent_user
views. Understand this can create a large cache size if an experiment like this in a highly trafficked part of the application.{ wday: Time.current.wday }
: Assigns a variant based on the current day of the week. In this example, it would consistently assign one variant on Friday, and a potentially different variant on Saturday.
Context is critical to how you define and report on your experiment. It's usually the most important aspect of how you choose to implement your experiment, so consider it carefully, and discuss it with the wider team if needed. Also, take into account that the context you choose affects our cache size.
After the above examples, we can state the general case: given a specific and consistent context, we can provide a consistent experience and track events for that experience. To dive a bit deeper into the implementation details: a context key is generated from the context that's provided. Use this context key to:
- Determine the assigned variant.
- Identify events tracked against that context key.
We can think about this as the experience that we've rendered, which is both dictated and tracked by the context key. The context key is used to track the interaction and results of the experience we've rendered to that context key. These concepts are somewhat abstract and hard to understand initially, but this approach enables us to communicate about experiments as something that's wider than just user behavior.
NOTE:
Using actor:
utilizes cookies if the current_user
is nil. If you don't need
cookies though - meaning that the exposed functionality would only be visible to
signed in users - { user: current_user }
would be just as effective.
WARNING:
The caching of variant assignment is done by using this context, and so consider
your impact on the cache size when defining your experiment. If you use
{ time: Time.current }
you would be inflating the cache size every time the
experiment is run. Not only that, your experiment would not be "sticky" and events
wouldn't be resolvable.
Advanced experimentation
GLEX allows for two general implementation styles:
- The simple experiment style described previously.
- A more advanced style where an experiment class can be provided.
The advanced style is handled by naming convention, and works similar to what you would expect in Rails.
To generate a custom experiment class that can override the defaults in
ApplicationExperiment
(our base GLEX implementation), use the rails generator:
rails generate gitlab:experiment pill_color control red blue
This generates an experiment class in app/experiments/pill_color_experiment.rb
with the variants (or behaviors) we've provided to the generator. Here's an example
of how that class would look after migrating the previous example into it:
class PillColorExperiment < ApplicationExperiment
def control_behavior
'control'
end
def red_behavior
'red'
end
def blue_behavior
'blue'
end
end
We can now simplify where we run our experiment to the following call, instead of
providing the block we were initially providing, by explicitly calling run
:
experiment(:pill_color, actor: current_user).run
The behavior methods we defined in our experiment class represent the default implementation. You can still use the block syntax to override these behavior methods however, so the following would also be valid:
experiment(:pill_color, actor: current_user) do |e|
e.use { '<strong>control</strong>' }
end
NOTE:
When passing a block to the experiment
method, it is implicitly invoked as
if run
has been called.
Segmentation rules
You can use runtime segmentation rules to, for instance, segment contexts into a specific
variant. The segment
method is a callback (like before_action
) and so allows providing
a block or method name.
In this example, any user named 'Richard'
would always be assigned the red
variant, and any account older than 2 weeks old would be assigned the blue variant:
class PillColorExperiment < ApplicationExperiment
segment(variant: :red) { context.actor.first_name == 'Richard' }
segment :old_account?, variant: :blue
# ...behaviors
private
def old_account?
context.actor.created_at < 2.weeks.ago
end
end
When an experiment runs, the segmentation rules are executed in the order they're defined. The first segmentation rule to produce a truthy result assigns the variant.
In our example, any user named 'Richard'
, regardless of account age, will always
be assigned the red variant. If you want the opposite logic, flip the order.
NOTE: Keep in mind when defining segmentation rules: after a truthy result, the remaining segmentation rules are skipped to achieve optimal performance.
Exclusion rules
Exclusion rules are similar to segmentation rules, but are intended to determine if a context should even be considered as something we should include in the experiment and track events toward. Exclusion means we don't care about the events in relation to the given context.
These examples exclude all users named 'Richard'
, and any account
older than 2 weeks old. Not only are they given the control behavior - which could
be nothing - but no events are tracked in these cases as well.
class PillColorExperiment < ApplicationExperiment
exclude :old_account?, ->{ context.actor.first_name == 'Richard' }
# ...behaviors
private
def old_account?
context.actor.created_at < 2.weeks.ago
end
end
We can also do exclusion when we run the experiment. For instance, if we wanted to prevent the inclusion of non-administrators in an experiment, consider the following experiment. This type of logic enables us to do complex experiments while preventing us from passing things into our experiments, because we want to minimize passing things into our experiments:
experiment(:pill_color, actor: current_user) do |e|
e.exclude! unless can?(current_user, :admin_project, project)
end
You may also need to check exclusion in custom tracking logic by calling should_track?
:
class PillColorExperiment < ApplicationExperiment
# ...behaviors
def expensive_tracking_logic
return unless should_track?
track(:my_event, value: expensive_method_call)
end
end
Exclusion rules aren't the best way to determine if an experiment is active. Override
the enabled?
method for a high-level way of determining if an experiment should
run and track. Make the enabled?
check as efficient as possible because it's the
first early opt-out path an experiment can implement.
Tracking events
One of the most important aspects of experiments is gathering data and reporting on it. GLEX provides an interface that allows tracking events across an experiment. You can implement it consistently if you provide the same context between calls to your experiment. If you do not yet understand context, you should read about contexts now.
We can assume we run the experiment in one or a few places, but track events potentially in many places. The tracking call remains the same, with the arguments you would normally use when tracking events using snowplow. The easiest example of tracking an event in Ruby would be:
experiment(:pill_color, actor: current_user).track(:created)
When you run an experiment with any of these examples, an :assigned
event
is tracked automatically by default. All events that are tracked from an
experiment have a special
experiment context
added to the event. This can be used - typically by the data team - to create a connection
between the events on a given experiment.
If our current user hasn't encountered the experiment yet (meaning where the experiment
is run), and we track an event for them, they are assigned a variant and see
that variant if they ever encountered the experiment later, when an :assignment
event would be tracked at that time for them.
NOTE: GitLab tries to be sensitive and respectful of our customers regarding tracking, so GLEX allows us to implement an experiment without ever tracking identifying IDs. It's not always possible, though, based on experiment reporting requirements. You may be asked from time to time to track a specific record ID in experiments. The approach is largely up to the PM and engineer creating the implementation. No recommendations are provided here at this time.
Test with RSpec
This gem provides some RSpec helpers and custom matchers. These are in flux as of GitLab 13.10.
First, require the RSpec support file to mix in some of the basics:
require 'gitlab/experiment/rspec'
You still need to include matchers and other aspects, which happens
automatically for files in spec/experiments
, but for other files and specs
you want to include it in, you can specify the :experiment
type:
it "tests", :experiment do
end
Stub helpers
You can stub experiments using stub_experiments
. Pass it a hash using experiment
names as the keys, and the variants you want each to resolve to, as the values:
# Ensures the experiments named `:example` & `:example2` are both
# "enabled" and that each will resolve to the given variant
# (`:my_variant` & `:control` respectively).
stub_experiments(example: :my_variant, example2: :control)
experiment(:example) do |e|
e.enabled? # => true
e.variant.name # => 'my_variant'
end
experiment(:example2) do |e|
e.enabled? # => true
e.variant.name # => 'control'
end
Exclusion and segmentation matchers
You can also test the exclusion and segmentation matchers.
class ExampleExperiment < ApplicationExperiment
exclude { context.actor.first_name == 'Richard' }
segment(variant: :candidate) { context.actor.username == 'jejacks0n' }
end
excluded = double(username: 'rdiggitty', first_name: 'Richard')
segmented = double(username: 'jejacks0n', first_name: 'Jeremy')
# exclude matcher
expect(experiment(:example)).to exclude(actor: excluded)
expect(experiment(:example)).not_to exclude(actor: segmented)
# segment matcher
expect(experiment(:example)).to segment(actor: segmented).into(:candidate)
expect(experiment(:example)).not_to segment(actor: excluded)
Tracking matcher
Tracking events is a major aspect of experimentation. We try to provide a flexible way to ensure your tracking calls are covered.
You can do this on the instance level or at an "any instance" level:
subject = experiment(:example)
expect(subject).to track(:my_event)
subject.track(:my_event)
You can use the on_any_instance
chain method to specify that it could happen on
any instance of the experiment. This helps you if you're calling
experiment(:example).track
downstream:
expect(experiment(:example)).to track(:my_event).on_any_instance
experiment(:example).track(:my_event)
A full example of the methods you can chain onto the track
matcher:
expect(experiment(:example)).to track(:my_event, value: 1, property: '_property_')
.on_any_instance
.with_context(foo: :bar)
.for(:variant_name)
experiment(:example, :variant_name, foo: :bar).track(:my_event, value: 1, property: '_property_')
Experiments in the client layer
This is in flux as of GitLab 13.10, and can't be documented just yet.
Any experiment that's been run in the request lifecycle surfaces in window.gon.experiment
,
and matches this schema
so you can use it when resolving some concepts around experimentation in the client layer.
Notes on feature flags
NOTE: We use the terms "enabled" and "disabled" here, even though it's against our documentation style guide recommendations because these are the terms that the feature flag documentation uses.
You may already be familiar with the concept of feature flags in GitLab, but using
feature flags in experiments is a bit different. While in general terms, a feature flag
is viewed as being either on
or off
, this isn't accurate for experiments.
Generally, off
means that when we ask if a feature flag is enabled, it will always
return false
, and on
means that it will always return true
. An interim state,
considered conditional
, also exists. GLEX takes advantage of this trinary state of
feature flags. To understand this conditional
aspect: consider that either of these
settings puts a feature flag into this state:
- Setting a
percentage_of_actors
of any percent greater than 0%. - Enabling it for a single user or group.
Conditional means that it returns true
in some situations, but not all situations.
When a feature flag is disabled (meaning the state is off
), the experiment is
considered inactive. You can visualize this in the decision tree diagram
as reaching the first [Running?] node, and traversing the negative path.
When a feature flag is rolled out to a percentage_of_actors
or similar (meaning the
state is conditional
) the experiment is considered to be running
where sometimes the control is assigned, and sometimes the candidate is assigned.
We don't refer to this as being enabled, because that's a confusing and overloaded
term here. In the experiment terms, our experiment is running, and the feature flag is
conditional
.
When a feature flag is enabled (meaning the state is on
), the candidate will always be
assigned.
We should try to be consistent with our terms, and so for experiments, we have an
inactive experiment until we set the feature flag to conditional
. After which,
our experiment is then considered running. If you choose to "enable" your feature flag,
you should consider the experiment to be resolved, because everyone is assigned
the candidate unless they've opted out of experimentation.
As of GitLab 13.10, work is being done to improve this process and how we communicate about it.