CloudDataContext
- class great_expectations.data_context.CloudDataContext(project_config: Optional[Union[DataContextConfig, Mapping]] = None, context_root_dir: Optional[PathStr] = None, project_root_dir: Optional[PathStr] = None, runtime_environment: Optional[dict] = None, cloud_base_url: Optional[str] = None, cloud_access_token: Optional[str] = None, cloud_organization_id: Optional[str] = None)#
Subclass of AbstractDataContext that contains functionality necessary to work in a GX Cloud-backed environment.
- add_data_docs_site(site_name: str, site_config: DataDocsSiteConfigTypedDict) None #
Add a new Data Docs Site to the DataContext.
New in version 0.17.2.
Example site config dicts can be found in our “Host and share Data Docs” guides.
- Parameters:
site_name – New site name to add.
site_config – Config dict for the new site.
- add_datasource(name: str | None = None, initialize: bool = True, save_changes: bool | None = None, datasource: BaseDatasource | FluentDatasource | LegacyDatasource | None = None, **kwargs) BaseDatasource | FluentDatasource | LegacyDatasource | None #
Add a new Datasource to the data context, with configuration provided as kwargs.
- Relevant Documentation Links
- Parameters:
name – the name of the new Datasource to add
initialize – if False, add the Datasource to the config, but do not initialize it, for example if a user needs to debug database connectivity.
save_changes –
should GX save the Datasource config?
Deprecated since version 0.15.32.
datasource –
an existing Datasource you wish to persist
New in version 0.15.49: Pass in an existing Datasource instead of individual constructor arguments
kwargs – the configuration for the new Datasource
- Returns:
Datasource instance added.
- add_expectation_suite(expectation_suite_name: str | None = None, id: str | None = None, expectations: list[dict | ExpectationConfiguration] | None = None, evaluation_parameters: dict | None = None, data_asset_type: str | None = None, execution_engine_type: Type[ExecutionEngine] | None = None, meta: dict | None = None, expectation_suite: ExpectationSuite | None = None) ExpectationSuite #
Build a new ExpectationSuite and save it utilizing the context’s underlying ExpectationsStore.
New in version 0.15.48.
Note that this method can be called by itself or run within the get_validator workflow.
When run with create_expectation_suite():
expectation_suite_name = "genres_movies.fkey"context.create_expectation_suite(expectation_suite_name, overwrite_existing=True)batch = context.get_batch_list(expectation_suite_name=expectation_suite_name)[0]
When run as part of get_validator():
validator = context.get_validator(datasource_name="my_datasource",data_connector_name="whole_table",data_asset_name="my_table",create_expectation_suite_with_name="my_expectation_suite",)validator.expect_column_values_to_be_in_set("c1", [4,5,6])
- Parameters:
expectation_suite_name – The name of the suite to create.
id – Identifier to associate with this suite.
expectations – Expectation Configurations to associate with this suite.
evaluation_parameters – Evaluation parameters to be substituted when evaluating Expectations.
data_asset_type – Type of data asset to associate with this suite.
execution_engine_type – Name of the execution engine type.
meta – Metadata related to the suite.
- Returns:
A new ExpectationSuite built with provided input args.
- Raises:
DataContextError – A suite with the same name already exists (and overwrite_existing is not enabled).
ValueError – The arguments provided are invalid.
- add_or_update_checkpoint(name: str | None = None, id: str | None = None, config_version: int | float = 1.0, template_name: str | None = None, module_name: str = 'great_expectations.checkpoint', class_name: str = 'Checkpoint', run_name_template: str | None = None, expectation_suite_name: str | None = None, batch_request: dict | None = None, action_list: Sequence[ActionDict] | None = None, evaluation_parameters: dict | None = None, runtime_configuration: dict | None = None, validations: list[CheckpointValidationConfig] | list[dict] | None = None, profilers: list[dict] | None = None, site_names: str | list[str] | None = None, slack_webhook: str | None = None, notify_on: str | None = None, notify_with: str | list[str] | None = None, expectation_suite_id: str | None = None, default_validation_id: str | None = None, validator: Validator | None = None, checkpoint: Checkpoint | None = None) Checkpoint #
Add a new Checkpoint or update an existing one on the context depending on whether it already exists or not.
New in version 0.15.48.
- Parameters:
name – The name to give the checkpoint.
id – The ID to associate with this checkpoint.
config_version – The config version of this checkpoint.
template_name – The template to use in generating this checkpoint.
module_name – The module name to use in generating this checkpoint.
class_name – The class name to use in generating this checkpoint.
run_name_template – The run name template to use in generating this checkpoint.
expectation_suite_name – The expectation suite name to use in generating this checkpoint.
batch_request – The batch request to use in generating this checkpoint.
action_list – The action list to use in generating this checkpoint.
evaluation_parameters – The evaluation parameters to use in generating this checkpoint.
runtime_configuration – The runtime configuration to use in generating this checkpoint.
validations – The validations to use in generating this checkpoint.
profilers – The profilers to use in generating this checkpoint.
site_names – The site names to use in generating this checkpoint. This is only used for SimpleCheckpoint configuration.
slack_webhook – The slack webhook to use in generating this checkpoint. This is only used for SimpleCheckpoint configuration.
notify_on – The notify on setting to use in generating this checkpoint. This is only used for SimpleCheckpoint configuration.
notify_with – The notify with setting to use in generating this checkpoint. This is only used for SimpleCheckpoint configuration.
expectation_suite_id – The expectation suite GE Cloud ID to use in generating this checkpoint.
default_validation_id – The default validation ID to use in generating this checkpoint.
validator –
An existing validator used to generate a validations list.
New in version 0.16.15: Pass in an existing validator instead of individual validations
checkpoint – An existing checkpoint you wish to persist.
- Returns:
A new Checkpoint or an updated once (depending on whether or not it existed before this method call).
- add_or_update_datasource(name: str | None = None, datasource: BaseDatasource | FluentDatasource | LegacyDatasource | None = None, **kwargs) BaseDatasource | FluentDatasource | LegacyDatasource #
Add a new Datasource or update an existing one on the context depending on whether
New in version 0.15.48.
it already exists or not. The configuration is provided as kwargs.
- Parameters:
name – The name of the Datasource to add or update.
datasource – an existing Datasource you wish to persist.
kwargs – Any relevant keyword args to use when adding or updating the target Datasource named name.
- Returns:
The Datasource added or updated by the input kwargs.
- add_or_update_expectation_suite(expectation_suite_name: str | None = None, id: str | None = None, expectations: list[dict | ExpectationConfiguration] | None = None, evaluation_parameters: dict | None = None, data_asset_type: str | None = None, execution_engine_type: Type[ExecutionEngine] | None = None, meta: dict | None = None, expectation_suite: ExpectationSuite | None = None) ExpectationSuite #
Add a new ExpectationSuite or update an existing one on the context depending on whether it already exists or not.
New in version 0.15.48.
- Parameters:
expectation_suite_name – The name of the suite to create or replace.
id – Identifier to associate with this suite (ignored if updating existing suite).
expectations – Expectation Configurations to associate with this suite.
evaluation_parameters – Evaluation parameters to be substituted when evaluating Expectations.
data_asset_type – Type of Data Asset to associate with this suite.
execution_engine_type – Name of the Execution Engine type.
meta – Metadata related to the suite.
expectation_suite – The ExpectationSuite object you wish to persist.
- Returns:
The persisted ExpectationSuite.
- add_or_update_profiler(name: str | None = None, id: str | None = None, config_version: float | None = None, rules: dict[str, dict] | None = None, variables: dict | None = None, profiler: RuleBasedProfiler | None = None) RuleBasedProfiler #
Add a new Profiler or update an existing one on the context depending on whether it already exists or not.
New in version 0.15.48.
- Parameters:
name – The name of the RBP instance.
config_version – The version of the RBP (currently only 1.0 is supported).
rules – A set of dictionaries, each of which contains its own domain_builder, parameter_builders, and expectation_configuration_builders.
variables – Any variables to be substituted within the rules.
id – The id associated with the RBP instance (if applicable).
profiler – An existing RuleBasedProfiler to persist.
- Returns:
A new Profiler or an updated one (depending on whether or not it existed before this method call).
- add_profiler(name: str | None = None, config_version: float | None = None, rules: dict[str, dict] | None = None, variables: dict | None = None, profiler: RuleBasedProfiler | None = None) RuleBasedProfiler #
Constructs a Profiler, persists it utilizing the context’s underlying ProfilerStore, and returns it to the user for subsequent usage.
- Parameters:
name – The name of the RBP instance.
config_version – The version of the RBP (currently only 1.0 is supported).
rules – A set of dictionaries, each of which contains its own domain_builder, parameter_builders, and expectation_configuration_builders.
variables – Any variables to be substituted within the rules.
profiler –
An existing RuleBasedProfiler to persist.
New in version 0.15.48: Pass in an existing profiler instead of individual constructor args
- Returns:
The persisted Profiler constructed by the input arguments.
- add_store(store_name: str, store_config: StoreConfigTypedDict) Store #
Add a new Store to the DataContext.
- Parameters:
store_name – the name to associate with the created store.
store_config – the config to use to construct the store.
- Returns:
The instantiated Store.
- build_data_docs(site_names=None, resource_identifiers=None, dry_run=False, build_index: bool = True)#
Build Data Docs for your project.
- Relevant Documentation Links
- Parameters:
site_names – if specified, build data docs only for these sites, otherwise, build all the sites specified in the context’s config
resource_identifiers – a list of resource identifiers (ExpectationSuiteIdentifier, ValidationResultIdentifier). If specified, rebuild HTML (or other views the data docs sites are rendering) only for the resources in this list. This supports incremental build of data docs sites (e.g., when a new validation result is created) and avoids full rebuild.
dry_run – a flag, if True, the method returns a structure containing the URLs of the sites that would be built, but it does not build these sites.
build_index – a flag if False, skips building the index page
- Returns:
A dictionary with the names of the updated data documentation sites as keys and the location info of their index.html files as values
- Raises:
ClassInstantiationError – Site config in your Data Context config is not valid.
- classmethod create(project_root_dir: Optional[PathStr] = None, usage_statistics_enabled: bool = True, runtime_environment: Optional[dict] = None) SerializableDataContext #
Build a new great_expectations directory and DataContext object in the provided project_root_dir.
create will create a new “great_expectations” directory in the provided folder, provided one does not already exist. Then, it will initialize a new DataContext in that folder and write the resulting config.
- Relevant Documentation Links
- Parameters:
project_root_dir – path to the root directory in which to create a new great_expectations directory
usage_statistics_enabled – boolean directive specifying whether or not to gather usage statistics
runtime_environment – a dictionary of config variables that override both those set in config_variables.yml and the environment
- Returns:
DataContext
- delete_checkpoint(name: str | None = None, ge_cloud_id: str | None = None, id: str | None = None) None #
Deletes a given Checkpoint by either name or id.
- Parameters:
name – The name of the target Checkpoint.
ge_cloud_id – The id associated with the target Checkpoint.
id –
The id associated with the target Checkpoint (preferred over ge_cloud_id).
New in version 0.15.48: To be used in place of ge_cloud_id
- Raises:
CheckpointNotFoundError – If the requested Checkpoint does not exist.
- delete_data_docs_site(site_name: str)#
Delete an existing Data Docs Site.
New in version 0.17.2.
- Parameters:
site_name – Site name to delete.
- delete_datasource(datasource_name: Optional[str], save_changes: Optional[bool] = None) None #
Delete a given Datasource by name.
Note that this method causes deletion from the underlying DatasourceStore. This can be overridden to only impact the Datasource cache through the deprecatedsave_changes argument.
- Parameters:
datasource_name – The name of the target datasource.
save_changes –
Should this change be persisted by the DatasourceStore?
Deprecated since version 0.15.32.
- Raises:
ValueError – The datasource_name isn’t provided or cannot be found.
- delete_profiler(name: str | None = None, ge_cloud_id: str | None = None, id: str | None = None) None #
Deletes a given Profiler by either name or id.
- Parameters:
name – The name of the target Profiler.
ge_cloud_id – The id associated with the target Profiler.
id –
The id associated with the target Profiler (preferred over ge_cloud_id).
New in version 0.15.48: To be used in place of ge_cloud_id
- Raises:
ProfilerNotFoundError – If the requested Profiler does not exists.
- delete_store(store_name: str) None #
Delete an existing Store from the DataContext.
New in version 0.15.48.
- Parameters:
store_name – The name of the Store to be deleted.
- Raises:
StoreConfigurationError if the target Store is not found. –
- get_available_data_asset_names(datasource_names: str | list[str] | None = None, batch_kwargs_generator_names: str | list[str] | None = None) dict[str, BlockConfigDataAssetNames | FluentDataAssetNames] #
Inspect datasource and batch kwargs generators to provide available data_asset objects.
- Parameters:
datasource_names – List of datasources for which to provide available data asset name objects. If None, return available data assets for all datasources.
batch_kwargs_generator_names – List of batch kwargs generators for which to provide available data_asset_name objects.
- Returns:
Dictionary describing available data assets
- Return type:
data_asset_names
- Raises:
ValueError – datasource_names is not None, a string, or list of strings.
- get_batch_list(datasource_name: Optional[str] = None, data_connector_name: Optional[str] = None, data_asset_name: Optional[str] = None, batch_request: Optional[BatchRequestBase] = None, batch_data: Optional[Any] = None, data_connector_query: Optional[dict] = None, batch_identifiers: Optional[dict] = None, limit: Optional[int] = None, index: Optional[Union[int, list, tuple, slice, str]] = None, custom_filter_function: Optional[Callable] = None, sampling_method: Optional[str] = None, sampling_kwargs: Optional[dict] = None, splitter_method: Optional[str] = None, splitter_kwargs: Optional[dict] = None, runtime_parameters: Optional[dict] = None, query: Optional[str] = None, path: Optional[str] = None, batch_filter_parameters: Optional[dict] = None, batch_spec_passthrough: Optional[dict] = None, batch_request_options: Optional[Union[dict, BatchRequestOptions]] = None, **kwargs: Optional[dict]) List[Batch] #
Get the list of zero or more batches, based on a variety of flexible input types.
get_batch_list is the main user-facing API for getting batches. In contrast to virtually all other methods in the class, it does not require typed or nested inputs. Instead, this method is intended to help the user pick the right parameters
This method attempts to return any number of batches, including an empty list.
- Parameters:
datasource_name – The name of the Datasource that defines the Data Asset to retrieve the batch for
data_connector_name – The Data Connector within the datasource for the Data Asset
data_asset_name – The name of the Data Asset within the Data Connector
batch_request – Encapsulates all the parameters used here to retrieve a BatchList. Use eitherbatch_request or the other params (but not both)
batch_data – Provides runtime data for the batch; is added as the key batch_data to the runtime_parameters dictionary of a BatchRequest
query – Provides runtime data for the batch; is added as the key query to the runtime_parameters dictionary of a BatchRequest
path – Provides runtime data for the batch; is added as the key path to the runtime_parameters dictionary of a BatchRequest
runtime_parameters – Specifies runtime parameters for the BatchRequest; can includes keys batch_data,query, and path
data_connector_query – Used to specify connector query parameters; specifically batch_filter_parameters,limit, index, and custom_filter_function
batch_identifiers – Any identifiers of batches for the BatchRequest
batch_filter_parameters – Filter parameters used in the data connector query
limit – Part of the data_connector_query, limits the number of batches in the batch list
index – Part of the data_connector_query, used to specify the index of which batch to return. Negative numbers retrieve from the end of the list (ex: -1 retrieves the last or latest batch)
custom_filter_function – A Callable function that accepts batch_identifiers and returns a bool
sampling_method – The method used to sample Batch data (see: Splitting and Sampling)
sampling_kwargs – Arguments for the sampling method
splitter_method – The method used to split the Data Asset into Batches
splitter_kwargs – Arguments for the splitting method
batch_spec_passthrough – Arguments specific to the ExecutionEngine that aid in Batch retrieval
batch_request_options – Options for FluentBatchRequest
**kwargs – Used to specify either batch_identifiers or batch_filter_parameters
- Returns:
(Batch) The list of requested Batch instances
- Raises:
DatasourceError – If the specified datasource_name does not exist in the DataContext
TypeError – If the specified types of the batch_request are not supported, or if thedatasource_name is not a str
ValueError – If more than one exclusive parameter is specified (ex: specifing more than one of batch_data, query or path)
- get_checkpoint(name: str | None = None, ge_cloud_id: str | None = None, id: str | None = None) Checkpoint #
Retrieves a given Checkpoint by either name or id.
- Parameters:
name – The name of the target Checkpoint.
ge_cloud_id – The id associated with the target Checkpoint.
id –
The id associated with the target Checkpoint (preferred over ge_cloud_id).
New in version 0.15.48: To be used in place of ge_cloud_id
- Returns:
The requested Checkpoint.
- Raises:
CheckpointNotFoundError – If the requested Checkpoint does not exist.
- get_datasource(datasource_name: str = 'default') BaseDatasource | FluentDatasource | LegacyDatasource #
Retrieve a given Datasource by name from the context’s underlying DatasourceStore.
- Parameters:
datasource_name – The name of the target datasource.
- Returns:
The target datasource.
- Raises:
ValueError – The input datasource_name is None.
- get_profiler(name: str | None = None, ge_cloud_id: str | None = None, id: str | None = None) RuleBasedProfiler #
Retrieves a given Profiler by either name or id.
- Parameters:
name – The name of the target Profiler.
ge_cloud_id – The id associated with the target Profiler.
id –
The id associated with the target Profiler (preferred over ge_cloud_id).
New in version 0.15.48: To be used in place of ge_cloud_id
- Returns:
The requested Profiler.
- Raises:
ProfilerNotFoundError – If the requested Profiler does not exists.
- get_validator(datasource_name: Optional[str] = None, data_connector_name: Optional[str] = None, data_asset_name: Optional[str] = None, batch: Optional[Batch] = None, batch_list: Optional[List[Batch]] = None, batch_request: Optional[Union[BatchRequestBase, FluentBatchRequest]] = None, batch_request_list: Optional[List[BatchRequestBase]] = None, batch_data: Optional[Any] = None, data_connector_query: Optional[Union[IDDict, dict]] = None, batch_identifiers: Optional[dict] = None, limit: Optional[int] = None, index: Optional[Union[int, list, tuple, slice, str]] = None, custom_filter_function: Optional[Callable] = None, sampling_method: Optional[str] = None, sampling_kwargs: Optional[dict] = None, splitter_method: Optional[str] = None, splitter_kwargs: Optional[dict] = None, runtime_parameters: Optional[dict] = None, query: Optional[str] = None, path: Optional[str] = None, batch_filter_parameters: Optional[dict] = None, expectation_suite_ge_cloud_id: Optional[str] = None, batch_spec_passthrough: Optional[dict] = None, expectation_suite_name: Optional[str] = None, expectation_suite: Optional[ExpectationSuite] = None, create_expectation_suite_with_name: Optional[str] = None, include_rendered_content: Optional[bool] = None, expectation_suite_id: Optional[str] = None, **kwargs) Validator #
Retrieve a Validator with a batch list and an ExpectationSuite.
get_validator first calls get_batch_list to retrieve a batch list, then creates or retrieves an ExpectationSuite used to validate the Batches in the list.
- Parameters:
datasource_name – The name of the Datasource that defines the Data Asset to retrieve the batch for
data_connector_name – The Data Connector within the datasource for the Data Asset
data_asset_name – The name of the Data Asset within the Data Connector
batch – The Batch to use with the Validator
batch_list – The List of Batches to use with the Validator
batch_request – Encapsulates all the parameters used here to retrieve a BatchList. Use eitherbatch_request or the other params (but not both)
batch_request_list – A List of BatchRequest to use with the Validator
batch_data – Provides runtime data for the batch; is added as the key batch_data to the runtime_parameters dictionary of a BatchRequest
query – Provides runtime data for the batch; is added as the key query to the runtime_parameters dictionary of a BatchRequest
path – Provides runtime data for the batch; is added as the key path to the runtime_parameters dictionary of a BatchRequest
runtime_parameters – Specifies runtime parameters for the BatchRequest; can includes keys batch_data,query, and path
data_connector_query – Used to specify connector query parameters; specifically batch_filter_parameters,limit, index, and custom_filter_function
batch_identifiers – Any identifiers of batches for the BatchRequest
batch_filter_parameters – Filter parameters used in the data connector query
limit – Part of the data_connector_query, limits the number of batches in the batch list
index – Part of the data_connector_query, used to specify the index of which batch to return. Negative numbers retrieve from the end of the list (ex: -1 retrieves the last or latest batch)
custom_filter_function – A Callable function that accepts batch_identifiers and returns a bool
sampling_method – The method used to sample Batch data (see: Splitting and Sampling)
sampling_kwargs – Arguments for the sampling method
splitter_method – The method used to split the Data Asset into Batches
splitter_kwargs – Arguments for the splitting method
batch_spec_passthrough – Arguments specific to the ExecutionEngine that aid in Batch retrieval
expectation_suite_ge_cloud_id – The identifier of the ExpectationSuite to retrieve from the DataContext (can be used in place of expectation_suite_name)
expectation_suite_name – The name of the ExpectationSuite to retrieve from the DataContext
expectation_suite – The ExpectationSuite to use with the validator
create_expectation_suite_with_name – Creates a Validator with a new ExpectationSuite with the provided name
include_rendered_content – If True the ExpectationSuite will include rendered content when saved
**kwargs – Used to specify either batch_identifiers or batch_filter_parameters
- Returns:
A Validator with the specified Batch list and ExpectationSuite
- Return type:
- Raises:
DatasourceError – If the specified datasource_name does not exist in the DataContext
TypeError – If the specified types of the batch_request are not supported, or if thedatasource_name is not a str
ValueError – If more than one exclusive parameter is specified (ex: specifing more than one of batch_data, query or path), or if the ExpectationSuite cannot be created or retrieved using either the provided name or identifier
- list_data_docs_sites() dict[str, DataDocsSiteConfigTypedDict] #
List all Data Docs Sites with configurations.
New in version 0.17.2.
- list_datasources() List[dict] #
List the configurations of the datasources associated with this context.
Note that any sensitive values are obfuscated before being returned.
- Returns:
A list of dictionaries representing datasource configurations.
- run_checkpoint(checkpoint_name: str | None = None, ge_cloud_id: str | None = None, template_name: str | None = None, run_name_template: str | None = None, expectation_suite_name: str | None = None, batch_request: BatchRequestBase | FluentBatchRequest | dict | None = None, action_list: Sequence[ActionDict] | None = None, evaluation_parameters: dict | None = None, runtime_configuration: dict | None = None, validations: list[dict] | None = None, profilers: list[dict] | None = None, run_id: str | int | float | None = None, run_name: str | None = None, run_time: datetime.datetime | None = None, result_format: str | None = None, expectation_suite_ge_cloud_id: str | None = None, id: str | None = None, expectation_suite_id: str | None = None, **kwargs) CheckpointResult #
Validate using an existing Checkpoint.
- Parameters:
checkpoint_name – The name of a Checkpoint defined via the CLI or by manually creating a yml file
template_name – The name of a Checkpoint template to retrieve from the CheckpointStore
run_name_template – The template to use for run_name
expectation_suite_name – Expectation suite to be used by Checkpoint run
batch_request – Batch request to be used by Checkpoint run
action_list – List of actions to be performed by the Checkpoint
evaluation_parameters – $parameter_name syntax references to be evaluated at runtime
runtime_configuration – Runtime configuration override parameters
validations – Validations to be performed by the Checkpoint run
profilers – Profilers to be used by the Checkpoint run
run_id – The run_id for the validation; if None, a default value will be used
run_name – The run_name for the validation; if None, a default value will be used
run_time – The date/time of the run
result_format – One of several supported formatting directives for expectation validation results
ge_cloud_id – Great Expectations Cloud id for the checkpoint
expectation_suite_ge_cloud_id – Great Expectations Cloud id for the expectation suite
id –
Great Expectations Cloud id for the checkpoint (preferred over ge_cloud_id)
New in version 0.15.48: To be used in place of ge_cloud_id
expectation_suite_id –
Great Expectations Cloud id for the expectation suite (preferred over expectation_suite_ge_cloud_id)
New in version 0.15.48: To be used in place of expectation_suite_ge_cloud_id
**kwargs – Additional kwargs to pass to the validation operator
- Returns:
CheckpointResult
- save_expectation_suite(expectation_suite: great_expectations.core.expectation_suite.ExpectationSuite, expectation_suite_name: Optional[str] = None, overwrite_existing: bool = True, include_rendered_content: Optional[bool] = None, **kwargs: Optional[dict]) None #
Save the provided ExpectationSuite into the DataContext using the configured ExpectationStore.
Deprecated since version 0.15.48: Part of the deprecated DataContext CRUD API
- Parameters:
expectation_suite – The ExpectationSuite to save.
expectation_suite_name – The name of this ExpectationSuite. If no name is provided, the name will be read from the suite.
overwrite_existing – Whether to overwrite the suite if it already exists.
include_rendered_content – Whether to save the prescriptive rendered content for each expectation.
kwargs – Additional parameters, unused
- Returns:
None
- Raises:
DataContextError – If a suite with the same name exists and overwrite_existing is set to False.
- test_yaml_config(yaml_config: str, name: Optional[str] = None, class_name: Optional[str] = None, runtime_environment: Optional[dict] = None, pretty_print: bool = True, return_mode: Literal['instantiated_class', 'report_object'] = 'instantiated_class', shorten_tracebacks: bool = False)#
Convenience method for testing yaml configs.
test_yaml_config is a convenience method for configuring the moving parts of a Great Expectations deployment. It allows you to quickly test out configs for system components, especially Datasources, Checkpoints, and Stores.
For many deployments of Great Expectations, these components (plus Expectations) are the only ones you’ll need.
test_yaml_config is mainly intended for use within notebooks and tests.
- Relevant Documentation Links
- Parameters:
yaml_config – A string containing the yaml config to be tested
name – Optional name of the component to instantiate
class_name – Optional, overridden if provided in the config
runtime_environment – Optional override for config items
pretty_print – Determines whether to print human-readable output
return_mode – Determines what type of object test_yaml_config will return. Valid modes are “instantiated_class” and “report_object”
shorten_tracebacks – If true, catch any errors during instantiation and print only the last element of the traceback stack. This can be helpful for rapid iteration on configs in a notebook, because it can remove the need to scroll up and down a lot.
- Returns:
The instantiated component (e.g. a Datasource) OR a json object containing metadata from the component’s self_check method. The returned object is determined by return_mode.
- update_checkpoint(checkpoint: great_expectations.checkpoint.checkpoint.Checkpoint) great_expectations.checkpoint.checkpoint.Checkpoint #
Update a Checkpoint that already exists.
New in version 0.15.48.
- Parameters:
checkpoint – The checkpoint to use to update.
- Raises:
DataContextError – A suite with the given name does not already exist.
- Returns:
The updated Checkpoint.
- update_data_docs_site(site_name: str, site_config: DataDocsSiteConfigTypedDict) None #
Update an existing Data Docs Site.
New in version 0.17.2.
Example site config dicts can be found in our “Host and share Data Docs” guides.
- Parameters:
site_name – Site name to update.
site_config – Config dict that replaces the existing.
- update_datasource(datasource: BaseDatasource | FluentDatasource | LegacyDatasource, save_changes: bool | None = None) BaseDatasource | FluentDatasource | LegacyDatasource #
Updates a Datasource that already exists in the store.
- Parameters:
datasource – The Datasource object to update.
save_changes – do I save changes to disk?
- Returns:
The updated Datasource.
- update_expectation_suite(expectation_suite: great_expectations.core.expectation_suite.ExpectationSuite) great_expectations.core.expectation_suite.ExpectationSuite #
Update an ExpectationSuite that already exists.
New in version 0.15.48.
- Parameters:
expectation_suite – The suite to use to update.
- Raises:
DataContextError – A suite with the given name does not already exist.
- update_profiler(profiler: great_expectations.rule_based_profiler.rule_based_profiler.RuleBasedProfiler) great_expectations.rule_based_profiler.rule_based_profiler.RuleBasedProfiler #
Update a Profiler that already exists.
New in version 0.15.48.
- Parameters:
profiler – The profiler to use to update.
- Raises:
ProfilerNotFoundError – A profiler with the given name/id does not already exist.
- update_project_config(project_config: DataContextConfig | Mapping) DataContextConfig #
Update the context’s config with the values from another config object.
- Parameters:
project_config – The config to use to update the context’s internal state.
- Returns:
The updated project config.
- view_validation_result(result: CheckpointResult) None #
New in version 0.16.15.
Opens a validation result in a browser.
- Parameters:
result – The result of a Checkpoint run.