Action
An Action is a Python class with a
run()
method that takes a
Validation ResultGenerated when data is Validated against an
Expectation or Expectation Suite.
and does something with it.
Actions are customizable. Great Expectations comes
with common Actions for such things as sending email
or Slack notifications, updating
Data DocsHuman readable documentation generated from Great
Expectations metadata detailing Expectations,
Validation Results, etc., and storing
Validation ResultsGenerated when data is Validated against an
Expectation or Expectation Suite.
out of the box. However, it is easy to create custom
Actions by creating a subclass of Great
Expectations' ValidationAction
class
and overwriting its _run()
method. This
means that you can configure an Action to do literally
anything you are capable of programming in Python in
response to a
CheckpointThe primary means for validating data in a
production deployment of Great Expectations.
ValidationThe act of applying an Expectation Suite to a
Batch.
completing.
Relationship to other objects
Actions are configured inside the
action_list
parameter of a
Checkpoint's configuration, and execute every
time the Checkpoint finishes running a Validation.
When an Action is run, it will have access to the
Validation Results and configured
MetricsA computed attribute of data such as the mean of
a column.
that were generated by the Checkpoint.
Use cases
Configuring, implementing, and executing an Action (custom or otherwise) takes place in the Validate Data step. Creating custom Actions is a process that falls outside the workflow of using Great Expectations.
Actions are configured when Checkpoints are created in
the Validate Data step of working with Great
Expectations. After that, Checkpoints that have a
populated action_list
in their
configuration will execute the indicated Actions every
time they finish running a Validation.
Versatility
The features of a specific Action depend on what that Action is designed to do. An Action can perform anything that can be done with Python code, making them phenomenally versatile.
Convenience
Since some Actions are common, Great Expectations
implements them out of the box: You don't have to
write every Action as a custom one. These Actions are
subclasses of the ValidationAction
class,
and you can view them in the
great_expectations.checkpoint.actions
module.
The following are some of the available pre-built Actions:
-
EmailAction
: sends an email to a given list of email addresses. -
MicrosoftTeamsNotificationAction
: sends a Microsoft Teams notification to a given webhook. -
SlackNotificationAction
: sends a Slack notification to a given webhook. -
StoreEvaluationParametersAction
: extracts Evaluation Parameters from a Validation Result and stores them in the Store configured for this Action. -
StoreMetricsAction
: extracts Metrics from a Validation Result and stores them in a Metrics Store. -
StoreValidationResultAction
: stores a Validation Result in theValidationsStore
. -
UpdateDataDocsAction
: notifies the site builders of all the data docs sites of the Data Context that a validation result should be added to the data docs.
Access
Actions are not intended to be manually instantiated
or accessed. Instead, they are included in the
action_list
parameter of a
Checkpoint's configuration, and when the
Checkpoint finishes running a Validation it will then
run the Actions in its action_list
in
order of appearance.
Classes that implement Actions can be found in the
great_expectations.checkpoint.actions
module, which you can view on GitHub:
Create
Custom actions need to be created in Python code, and
can be implemented as Plugins. In order for a Python
class to be a valid Action, it must conform to the
Action API. Specifically, it must implement a
run()
method which accepts three required
parameters, two named optional parameters, and any
number of **kwargs.
Required parameters
-
validation_result_suite
: an instance of theExpectationSuiteValidationResult
class. -
validation_result_suite_identifier
: an instance of either theValidationResultIdentifier
class (for open source Great Expectations) or theGeCloudIdentifier
(from Great Expectations Cloud). -
data_asset
: an instance of theValidator
class.
Optional parameters
expectation_suite_identifier
checkpoint_identifier
Additional parameters
-
**kwargs: named parameters that are specific to a
given Action, and need to be assigned a value in the
Action's configuration in a Checkpoint's
action_list
.
The required and optional named parameters will be
automatically passed to the Action from the Checkpoint
that the Action is included with, after the Checkpoint
completes Validation. This means you can configure
your custom Actions to behave conditionally based on
the Validation Results your Checkpoint generates, or
the values passed along with any of those named
parameters. Additional
**kwargs
parameters can be included, but
they cannot be passed automatically by the Checkpoint.
Therefore, you will have to specify the name and value
for these parameters in the configuration for their
Action, in the Checkpoint's
action_list
.
The best practice when creating a custom Action is to
create a subclass of the
ValidationAction
class found in the
great_expectations.checkpoint.actions
module. Leave the inherited run()
method
as its default, and overwrite the
_run()
method to contain your
functionality. There are numerous examples of this
practice in the subclasses of
ValidationAction
located in the
great_expectations.checkpoint.actions
module, which you can view on GitHub:
If you develop a custom Action, consider making it a contribution in the Great Expectations open source GitHub project. You can also reach out to us on Slack if you need additional guidance in your efforts.
Configure
Actions are configured inside of the
action_list
parameter for Checkpoints. In
general, you will need to provide at least a
name
(which is user defined and does not
need to correspond to anything specific) and, in the
in the parameters under action
a
class_name
(which should correspond to
the name of the Action's Python class). If you
are implementing a custom Action in a Plugin, you will
also need to include a module_name
in the
parameters under action
which references
where your Plugin is located. Any other keys placed
under action
will be passed to the
Action's class as additional key word arguments.
The following is an example of an
action_list
configuration that performs
some common Actions that are built in to the Great
Expectations code base:
action_list:
- name: store_validation_result
action:
class_name: StoreValidationResultAction
- name: store_evaluation_params
action:
class_name: StoreEvaluationParametersAction
- name: update_data_docs
action:
class_name: UpdateDataDocsAction
For more examples of how to configure Actions in a Checkpoint, see how-to guides on Actions.