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| import pytest |
|
|
| from google import auth |
| from google.api_core import operation |
| from google.auth import credentials as auth_credentials |
|
|
| from unittest import mock |
|
|
| from google.cloud import aiplatform |
| from google.cloud.aiplatform.utils import source_utils |
| import constants as test_constants |
| from google.cloud.aiplatform.metadata import constants as metadata_constants |
| from google.cloud.aiplatform.compat.services import ( |
| metadata_service_client_v1, |
| model_service_client, |
| tensorboard_service_client, |
| pipeline_service_client, |
| ) |
|
|
| from google.cloud.aiplatform.compat.types import ( |
| context, |
| endpoint, |
| metadata_store, |
| endpoint_service, |
| model, |
| model_service, |
| pipeline_job, |
| pipeline_state, |
| tensorboard, |
| tensorboard_service, |
| dataset, |
| prediction_service, |
| training_pipeline, |
| ) |
|
|
|
|
| from google.cloud.aiplatform.compat.services import ( |
| dataset_service_client, |
| endpoint_service_client, |
| prediction_service_client, |
| ) |
|
|
|
|
| |
| @pytest.fixture(scope="module") |
| def google_auth_mock(): |
| with mock.patch.object(auth, "default") as google_auth_mock: |
| google_auth_mock.return_value = ( |
| auth_credentials.AnonymousCredentials(), |
| "test-project", |
| ) |
| yield google_auth_mock |
|
|
|
|
| |
| @pytest.fixture |
| def mock_python_package_to_gcs(): |
| with mock.patch.object( |
| source_utils._TrainingScriptPythonPackager, "package_and_copy_to_gcs" |
| ) as mock_package_to_copy_gcs: |
| mock_package_to_copy_gcs.return_value = ( |
| test_constants.TrainingJobConstants._TEST_OUTPUT_PYTHON_PACKAGE_PATH |
| ) |
| yield mock_package_to_copy_gcs |
|
|
|
|
| |
| @pytest.fixture |
| def upload_model_mock(): |
| with mock.patch.object( |
| model_service_client.ModelServiceClient, "upload_model" |
| ) as upload_model_mock: |
| mock_lro = mock.Mock(operation.Operation) |
| mock_lro.result.return_value = model_service.UploadModelResponse( |
| model=test_constants.ModelConstants._TEST_MODEL_RESOURCE_NAME |
| ) |
| upload_model_mock.return_value = mock_lro |
| yield upload_model_mock |
|
|
|
|
| @pytest.fixture |
| def get_model_mock(): |
| with mock.patch.object( |
| model_service_client.ModelServiceClient, "get_model" |
| ) as get_model_mock: |
| get_model_mock.return_value = model.Model( |
| display_name=test_constants.ModelConstants._TEST_MODEL_NAME, |
| name=test_constants.ModelConstants._TEST_MODEL_RESOURCE_NAME, |
| ) |
| yield get_model_mock |
|
|
|
|
| @pytest.fixture |
| def get_model_with_version_mock(): |
| with mock.patch.object( |
| model_service_client.ModelServiceClient, "get_model" |
| ) as get_model_mock: |
| get_model_mock.return_value = ( |
| test_constants.ModelConstants._TEST_MODEL_OBJ_WITH_VERSION |
| ) |
| yield get_model_mock |
|
|
|
|
| @pytest.fixture |
| def deploy_model_mock(): |
| with mock.patch.object( |
| endpoint_service_client.EndpointServiceClient, "deploy_model" |
| ) as deploy_model_mock: |
| deployed_model = endpoint.DeployedModel( |
| model=test_constants.ModelConstants._TEST_MODEL_RESOURCE_NAME, |
| display_name=test_constants.ModelConstants._TEST_MODEL_NAME, |
| ) |
| deploy_model_lro_mock = mock.Mock(operation.Operation) |
| deploy_model_lro_mock.result.return_value = ( |
| endpoint_service.DeployModelResponse( |
| deployed_model=deployed_model, |
| ) |
| ) |
| deploy_model_mock.return_value = deploy_model_lro_mock |
| yield deploy_model_mock |
|
|
|
|
| |
| @pytest.fixture |
| def get_tensorboard_mock(): |
| with mock.patch.object( |
| tensorboard_service_client.TensorboardServiceClient, "get_tensorboard" |
| ) as get_tensorboard_mock: |
| get_tensorboard_mock.return_value = tensorboard.Tensorboard( |
| name=test_constants.TensorboardConstants._TEST_TENSORBOARD_NAME, |
| display_name=test_constants.TensorboardConstants._TEST_DISPLAY_NAME, |
| encryption_spec=test_constants.ProjectConstants._TEST_ENCRYPTION_SPEC, |
| ) |
| yield get_tensorboard_mock |
|
|
|
|
| @pytest.fixture |
| def create_tensorboard_experiment_mock(): |
| with mock.patch.object( |
| tensorboard_service_client.TensorboardServiceClient, |
| "create_tensorboard_experiment", |
| ) as create_tensorboard_experiment_mock: |
| create_tensorboard_experiment_mock.return_value = ( |
| test_constants.TensorboardConstants._TEST_TENSORBOARD_EXPERIMENT |
| ) |
| yield create_tensorboard_experiment_mock |
|
|
|
|
| @pytest.fixture |
| def create_tensorboard_run_mock(): |
| with mock.patch.object( |
| tensorboard_service_client.TensorboardServiceClient, |
| "create_tensorboard_run", |
| ) as create_tensorboard_run_mock: |
| create_tensorboard_run_mock.return_value = ( |
| test_constants.TensorboardConstants._TEST_TENSORBOARD_RUN |
| ) |
| yield create_tensorboard_run_mock |
|
|
|
|
| @pytest.fixture |
| def write_tensorboard_run_data_mock(): |
| with mock.patch.object( |
| tensorboard_service_client.TensorboardServiceClient, |
| "write_tensorboard_run_data", |
| ) as write_tensorboard_run_data_mock: |
| yield write_tensorboard_run_data_mock |
|
|
|
|
| @pytest.fixture |
| def create_tensorboard_time_series_mock(): |
| with mock.patch.object( |
| tensorboard_service_client.TensorboardServiceClient, |
| "create_tensorboard_time_series", |
| ) as create_tensorboard_time_series_mock: |
| create_tensorboard_time_series_mock.return_value = ( |
| test_constants.TensorboardConstants._TEST_TENSORBOARD_TIME_SERIES |
| ) |
| yield create_tensorboard_time_series_mock |
|
|
|
|
| @pytest.fixture |
| def get_tensorboard_run_mock(): |
| with mock.patch.object( |
| tensorboard_service_client.TensorboardServiceClient, |
| "get_tensorboard_run", |
| ) as get_tensorboard_run_mock: |
| get_tensorboard_run_mock.return_value = ( |
| test_constants.TensorboardConstants._TEST_TENSORBOARD_RUN |
| ) |
| yield get_tensorboard_run_mock |
|
|
|
|
| @pytest.fixture |
| def list_tensorboard_time_series_mock(): |
| with mock.patch.object( |
| tensorboard_service_client.TensorboardServiceClient, |
| "list_tensorboard_time_series", |
| ) as list_tensorboard_time_series_mock: |
| list_tensorboard_time_series_mock.return_value = [ |
| test_constants.TensorboardConstants._TEST_TENSORBOARD_TIME_SERIES |
| ] |
| yield list_tensorboard_time_series_mock |
|
|
|
|
| @pytest.fixture |
| def batch_read_tensorboard_time_series_mock(): |
| with mock.patch.object( |
| tensorboard_service_client.TensorboardServiceClient, |
| "batch_read_tensorboard_time_series_data", |
| ) as batch_read_tensorboard_time_series_data_mock: |
| batch_read_tensorboard_time_series_data_mock.return_value = tensorboard_service.BatchReadTensorboardTimeSeriesDataResponse( |
| time_series_data=[ |
| test_constants.TensorboardConstants._TEST_TENSORBOARD_TIME_SERIES_DATA |
| ] |
| ) |
| yield batch_read_tensorboard_time_series_data_mock |
|
|
|
|
| |
| @pytest.fixture |
| def create_endpoint_mock(): |
| with mock.patch.object( |
| endpoint_service_client.EndpointServiceClient, "create_endpoint" |
| ) as create_endpoint_mock: |
| create_endpoint_lro_mock = mock.Mock(operation.Operation) |
| create_endpoint_lro_mock.result.return_value = endpoint.Endpoint( |
| name=test_constants.EndpointConstants._TEST_ENDPOINT_NAME, |
| display_name=test_constants.EndpointConstants._TEST_DISPLAY_NAME, |
| encryption_spec=test_constants.ProjectConstants._TEST_ENCRYPTION_SPEC, |
| ) |
| create_endpoint_mock.return_value = create_endpoint_lro_mock |
| yield create_endpoint_mock |
|
|
|
|
| @pytest.fixture |
| def get_endpoint_mock(): |
| with mock.patch.object( |
| endpoint_service_client.EndpointServiceClient, "get_endpoint" |
| ) as get_endpoint_mock: |
| get_endpoint_mock.return_value = endpoint.Endpoint( |
| display_name=test_constants.EndpointConstants._TEST_DISPLAY_NAME, |
| name=test_constants.EndpointConstants._TEST_ENDPOINT_NAME, |
| encryption_spec=test_constants.ProjectConstants._TEST_ENCRYPTION_SPEC, |
| ) |
| yield get_endpoint_mock |
|
|
|
|
| @pytest.fixture |
| def get_endpoint_with_models_mock(): |
| with mock.patch.object( |
| endpoint_service_client.EndpointServiceClient, "get_endpoint" |
| ) as get_endpoint_mock: |
| get_endpoint_mock.return_value = endpoint.Endpoint( |
| display_name=test_constants.EndpointConstants._TEST_DISPLAY_NAME, |
| name=test_constants.EndpointConstants._TEST_ENDPOINT_NAME, |
| deployed_models=test_constants.EndpointConstants._TEST_DEPLOYED_MODELS, |
| traffic_split=test_constants.EndpointConstants._TEST_TRAFFIC_SPLIT, |
| ) |
| yield get_endpoint_mock |
|
|
|
|
| @pytest.fixture |
| def predict_client_predict_mock(): |
| with mock.patch.object( |
| prediction_service_client.PredictionServiceClient, "predict" |
| ) as predict_mock: |
| predict_mock.return_value = prediction_service.PredictResponse( |
| deployed_model_id=test_constants.EndpointConstants._TEST_MODEL_ID, |
| model_version_id=test_constants.EndpointConstants._TEST_VERSION_ID, |
| model=test_constants.EndpointConstants._TEST_MODEL_NAME, |
| ) |
| predict_mock.return_value.predictions.extend( |
| test_constants.EndpointConstants._TEST_PREDICTION |
| ) |
| yield predict_mock |
|
|
|
|
| |
| def make_pipeline_job(state): |
| return pipeline_job.PipelineJob( |
| name=test_constants.PipelineJobConstants._TEST_PIPELINE_JOB_NAME, |
| state=state, |
| create_time=test_constants.PipelineJobConstants._TEST_PIPELINE_CREATE_TIME, |
| service_account=test_constants.ProjectConstants._TEST_SERVICE_ACCOUNT, |
| network=test_constants.TrainingJobConstants._TEST_NETWORK, |
| job_detail=pipeline_job.PipelineJobDetail( |
| pipeline_run_context=context.Context( |
| name=test_constants.PipelineJobConstants._TEST_PIPELINE_JOB_NAME, |
| ) |
| ), |
| ) |
|
|
|
|
| @pytest.fixture |
| def get_pipeline_job_mock(): |
| with mock.patch.object( |
| pipeline_service_client.PipelineServiceClient, "get_pipeline_job" |
| ) as mock_get_pipeline_job: |
| mock_get_pipeline_job.side_effect = [ |
| make_pipeline_job(pipeline_state.PipelineState.PIPELINE_STATE_RUNNING), |
| make_pipeline_job(pipeline_state.PipelineState.PIPELINE_STATE_SUCCEEDED), |
| make_pipeline_job(pipeline_state.PipelineState.PIPELINE_STATE_SUCCEEDED), |
| make_pipeline_job(pipeline_state.PipelineState.PIPELINE_STATE_SUCCEEDED), |
| make_pipeline_job(pipeline_state.PipelineState.PIPELINE_STATE_SUCCEEDED), |
| make_pipeline_job(pipeline_state.PipelineState.PIPELINE_STATE_SUCCEEDED), |
| make_pipeline_job(pipeline_state.PipelineState.PIPELINE_STATE_SUCCEEDED), |
| make_pipeline_job(pipeline_state.PipelineState.PIPELINE_STATE_SUCCEEDED), |
| make_pipeline_job(pipeline_state.PipelineState.PIPELINE_STATE_SUCCEEDED), |
| ] |
|
|
| yield mock_get_pipeline_job |
|
|
|
|
| |
| @pytest.fixture |
| def create_dataset_mock(): |
| with mock.patch.object( |
| dataset_service_client.DatasetServiceClient, "create_dataset" |
| ) as create_dataset_mock: |
| create_dataset_lro_mock = mock.Mock(operation.Operation) |
| create_dataset_lro_mock.result.return_value = dataset.Dataset( |
| name=test_constants.DatasetConstants._TEST_NAME, |
| display_name=test_constants.DatasetConstants._TEST_DISPLAY_NAME, |
| metadata_schema_uri=test_constants.DatasetConstants._TEST_METADATA_SCHEMA_URI_TEXT, |
| encryption_spec=test_constants.DatasetConstants._TEST_ENCRYPTION_SPEC, |
| ) |
| create_dataset_mock.return_value = create_dataset_lro_mock |
| yield create_dataset_mock |
|
|
|
|
| @pytest.fixture |
| def get_dataset_mock(): |
| with mock.patch.object( |
| dataset_service_client.DatasetServiceClient, "get_dataset" |
| ) as get_dataset_mock: |
| get_dataset_mock.return_value = dataset.Dataset( |
| display_name=test_constants.DatasetConstants._TEST_DISPLAY_NAME, |
| metadata_schema_uri=test_constants.DatasetConstants._TEST_METADATA_SCHEMA_URI_NONTABULAR, |
| name=test_constants.DatasetConstants._TEST_NAME, |
| metadata=test_constants.DatasetConstants._TEST_NONTABULAR_DATASET_METADATA, |
| encryption_spec=test_constants.DatasetConstants._TEST_ENCRYPTION_SPEC, |
| ) |
| yield get_dataset_mock |
|
|
|
|
| @pytest.fixture |
| def import_data_mock(): |
| with mock.patch.object( |
| dataset_service_client.DatasetServiceClient, "import_data" |
| ) as import_data_mock: |
| import_data_mock.return_value = mock.Mock(operation.Operation) |
| yield import_data_mock |
|
|
|
|
| |
| @pytest.fixture |
| def mock_model_service_get(): |
| with mock.patch.object( |
| model_service_client.ModelServiceClient, "get_model" |
| ) as mock_get_model: |
| mock_get_model.return_value = model.Model( |
| name=test_constants.TrainingJobConstants._TEST_MODEL_NAME |
| ) |
| mock_get_model.return_value.supported_deployment_resources_types.append( |
| aiplatform.gapic.Model.DeploymentResourcesType.DEDICATED_RESOURCES |
| ) |
| mock_get_model.return_value.version_id = "1" |
| yield mock_get_model |
|
|
|
|
| @pytest.fixture |
| def mock_pipeline_service_create(): |
| with mock.patch.object( |
| pipeline_service_client.PipelineServiceClient, "create_training_pipeline" |
| ) as mock_create_training_pipeline: |
| mock_create_training_pipeline.return_value = training_pipeline.TrainingPipeline( |
| name=test_constants.TrainingJobConstants._TEST_PIPELINE_RESOURCE_NAME, |
| state=pipeline_state.PipelineState.PIPELINE_STATE_SUCCEEDED, |
| model_to_upload=model.Model( |
| name=test_constants.TrainingJobConstants._TEST_MODEL_NAME |
| ), |
| ) |
| yield mock_create_training_pipeline |
|
|
|
|
| def make_training_pipeline(state, add_training_task_metadata=True): |
| return training_pipeline.TrainingPipeline( |
| name=test_constants.TrainingJobConstants._TEST_PIPELINE_RESOURCE_NAME, |
| state=state, |
| model_to_upload=model.Model( |
| name=test_constants.TrainingJobConstants._TEST_MODEL_NAME |
| ), |
| training_task_inputs={ |
| "tensorboard": test_constants.TrainingJobConstants._TEST_TENSORBOARD_RESOURCE_NAME |
| }, |
| training_task_metadata={ |
| "backingCustomJob": test_constants.TrainingJobConstants._TEST_CUSTOM_JOB_RESOURCE_NAME |
| } |
| if add_training_task_metadata |
| else None, |
| ) |
|
|
|
|
| @pytest.fixture |
| def mock_pipeline_service_get(make_call=make_training_pipeline): |
| with mock.patch.object( |
| pipeline_service_client.PipelineServiceClient, "get_training_pipeline" |
| ) as mock_get_training_pipeline: |
| mock_get_training_pipeline.side_effect = [ |
| make_call( |
| pipeline_state.PipelineState.PIPELINE_STATE_RUNNING, |
| add_training_task_metadata=False, |
| ), |
| make_call( |
| pipeline_state.PipelineState.PIPELINE_STATE_RUNNING, |
| ), |
| make_call(pipeline_state.PipelineState.PIPELINE_STATE_SUCCEEDED), |
| make_call(pipeline_state.PipelineState.PIPELINE_STATE_SUCCEEDED), |
| make_call(pipeline_state.PipelineState.PIPELINE_STATE_SUCCEEDED), |
| make_call(pipeline_state.PipelineState.PIPELINE_STATE_SUCCEEDED), |
| make_call(pipeline_state.PipelineState.PIPELINE_STATE_SUCCEEDED), |
| make_call(pipeline_state.PipelineState.PIPELINE_STATE_SUCCEEDED), |
| make_call(pipeline_state.PipelineState.PIPELINE_STATE_SUCCEEDED), |
| make_call(pipeline_state.PipelineState.PIPELINE_STATE_SUCCEEDED), |
| ] |
|
|
| yield mock_get_training_pipeline |
|
|
|
|
| @pytest.fixture |
| def mock_pipeline_service_create_and_get_with_fail(): |
| with mock.patch.object( |
| pipeline_service_client.PipelineServiceClient, "create_training_pipeline" |
| ) as mock_create_training_pipeline: |
| mock_create_training_pipeline.return_value = training_pipeline.TrainingPipeline( |
| name=test_constants.TrainingJobConstants._TEST_PIPELINE_RESOURCE_NAME, |
| state=pipeline_state.PipelineState.PIPELINE_STATE_RUNNING, |
| ) |
|
|
| with mock.patch.object( |
| pipeline_service_client.PipelineServiceClient, "get_training_pipeline" |
| ) as mock_get_training_pipeline: |
| mock_get_training_pipeline.return_value = training_pipeline.TrainingPipeline( |
| name=test_constants.TrainingJobConstants._TEST_PIPELINE_RESOURCE_NAME, |
| state=pipeline_state.PipelineState.PIPELINE_STATE_FAILED, |
| ) |
|
|
| yield mock_create_training_pipeline, mock_get_training_pipeline |
|
|
|
|
| |
| @pytest.fixture |
| def get_experiment_mock(): |
| with mock.patch.object( |
| metadata_service_client_v1.MetadataServiceClient, "get_context" |
| ) as get_context_mock: |
| get_context_mock.return_value = ( |
| test_constants.ExperimentConstants._EXPERIMENT_MOCK |
| ) |
| yield get_context_mock |
|
|
|
|
| @pytest.fixture |
| def get_metadata_store_mock(): |
| with mock.patch.object( |
| metadata_service_client_v1.MetadataServiceClient, "get_metadata_store" |
| ) as get_metadata_store_mock: |
| get_metadata_store_mock.return_value = metadata_store.MetadataStore( |
| name=test_constants.ExperimentConstants._TEST_METADATASTORE, |
| ) |
| yield get_metadata_store_mock |
|
|
|
|
| @pytest.fixture |
| def get_context_mock(): |
| with mock.patch.object( |
| metadata_service_client_v1.MetadataServiceClient, "get_context" |
| ) as get_context_mock: |
| get_context_mock.return_value = context.Context( |
| name=test_constants.ExperimentConstants._TEST_CONTEXT_NAME, |
| display_name=test_constants.ExperimentConstants._TEST_EXPERIMENT, |
| description=test_constants.ExperimentConstants._TEST_EXPERIMENT_DESCRIPTION, |
| schema_title=metadata_constants.SYSTEM_EXPERIMENT, |
| schema_version=metadata_constants.SCHEMA_VERSIONS[ |
| metadata_constants.SYSTEM_EXPERIMENT |
| ], |
| metadata=metadata_constants.EXPERIMENT_METADATA, |
| ) |
| yield get_context_mock |
|
|
|
|
| @pytest.fixture |
| def add_context_children_mock(): |
| with mock.patch.object( |
| metadata_service_client_v1.MetadataServiceClient, "add_context_children" |
| ) as add_context_children_mock: |
| yield add_context_children_mock |
|
|