Ejemplo n.º 1
0
 def test_nodes_number(self):
     with self.assertRaises(AssertionError) as err:
         ClusterGenerator(num_workers=0,
                          num_preemptible_workers=0,
                          project_id=GCP_PROJECT,
                          cluster_name=CLUSTER_NAME)
         self.assertIn("num_workers == 0 means single", str(err))
Ejemplo n.º 2
0
 def test_nodes_number(self):
     with pytest.raises(AssertionError) as ctx:
         ClusterGenerator(num_workers=0,
                          num_preemptible_workers=0,
                          project_id=GCP_PROJECT,
                          cluster_name=CLUSTER_NAME)
         assert "num_workers == 0 means single" in str(ctx.value)
Ejemplo n.º 3
0
 def test_image_version(self):
     with self.assertRaises(ValueError) as err:
         ClusterGenerator(
             custom_image="custom_image",
             image_version="image_version",
             project_id=GCP_PROJECT,
             cluster_name=CLUSTER_NAME,
         )
         self.assertIn("custom_image and image_version", str(err))
Ejemplo n.º 4
0
 def test_image_version(self):
     with pytest.raises(ValueError) as ctx:
         ClusterGenerator(
             custom_image="custom_image",
             image_version="image_version",
             project_id=GCP_PROJECT,
             cluster_name=CLUSTER_NAME,
         )
         assert "custom_image and image_version" in str(ctx.value)
Ejemplo n.º 5
0
 def test_custom_image_family_error_with_custom_image(self):
     with pytest.raises(ValueError) as ctx:
         ClusterGenerator(
             custom_image="custom_image",
             custom_image_family="custom_image_family",
             project_id=GCP_PROJECT,
             cluster_name=CLUSTER_NAME,
         )
         assert "custom_image and custom_image_family" in str(ctx.value)
Ejemplo n.º 6
0
 def test_build(self):
     generator = ClusterGenerator(
         project_id="project_id",
         cluster_name="cluster_name",
         num_workers=2,
         zone="zone",
         network_uri="network_uri",
         subnetwork_uri="subnetwork_uri",
         internal_ip_only=True,
         tags=["tags"],
         storage_bucket="storage_bucket",
         init_actions_uris=["init_actions_uris"],
         init_action_timeout="10m",
         metadata={"metadata": "data"},
         custom_image="custom_image",
         custom_image_project_id="custom_image_project_id",
         autoscaling_policy="autoscaling_policy",
         properties={"properties": "data"},
         optional_components=["optional_components"],
         num_masters=2,
         master_machine_type="master_machine_type",
         master_disk_type="master_disk_type",
         master_disk_size=128,
         worker_machine_type="worker_machine_type",
         worker_disk_type="worker_disk_type",
         worker_disk_size=256,
         num_preemptible_workers=4,
         labels={"labels": "data"},
         region="region",
         service_account="service_account",
         service_account_scopes=["service_account_scopes"],
         idle_delete_ttl=60,
         auto_delete_time=datetime(2019, 9, 12),
         auto_delete_ttl=250,
         customer_managed_key="customer_managed_key",
     )
     cluster = generator.make()
     self.assertDictEqual(CLUSTER, cluster)
Ejemplo n.º 7
0
 def test_nodes_number(self):
     with self.assertRaises(AssertionError) as err:
         ClusterGenerator(num_workers=0, num_preemptible_workers=0)
         self.assertIn("num_workers == 0 means single", str(err))
Ejemplo n.º 8
0
 def test_image_version(self):
     with self.assertRaises(ValueError) as err:
         ClusterGenerator(custom_image="custom_image",
                          image_version="image_version")
         self.assertIn("custom_image and image_version", str(err))
Ejemplo n.º 9
0
        },
    },
}

# [END how_to_cloud_dataproc_create_cluster]

# Cluster definition: Generating Cluster Config for DataprocClusterCreateOperator
# [START how_to_cloud_dataproc_create_cluster_generate_cluster_config]
path = "gs://goog-dataproc-initialization-actions-us-central1/python/pip-install.sh"

CLUSTER_CONFIG = ClusterGenerator(
    project_id="test",
    zone="us-central1-a",
    master_machine_type="n1-standard-4",
    worker_machine_type="n1-standard-4",
    num_workers=2,
    storage_bucket="test",
    init_actions_uris=[path],
    metadata={
        'PIP_PACKAGES': 'pyyaml requests pandas openpyxl'
    },
).make()

create_cluster_operator = DataprocClusterCreateOperator(
    task_id='create_dataproc_cluster',
    cluster_name="test",
    project_id="test",
    region="us-central1",
    cluster_config=CLUSTER_CONFIG,
)
# [END how_to_cloud_dataproc_create_cluster_generate_cluster_config]
Ejemplo n.º 10
0
        },
    },
}

# [END how_to_cloud_dataproc_create_cluster]

# Cluster definition: Generating Cluster Config for DataprocCreateClusterOperator
# [START how_to_cloud_dataproc_create_cluster_generate_cluster_config]
path = "gs://goog-dataproc-initialization-actions-us-central1/python/pip-install.sh"

CLUSTER_GENERATOR_CONFIG = ClusterGenerator(
    project_id="test",
    zone="us-central1-a",
    master_machine_type="n1-standard-4",
    worker_machine_type="n1-standard-4",
    num_workers=2,
    storage_bucket="test",
    init_actions_uris=[path],
    metadata={
        'PIP_PACKAGES': 'pyyaml requests pandas openpyxl'
    },
).make()

create_cluster_operator = DataprocCreateClusterOperator(
    task_id='create_dataproc_cluster',
    cluster_name="test",
    project_id="test",
    region="us-central1",
    cluster_config=CLUSTER_GENERATOR_CONFIG,
)
# [END how_to_cloud_dataproc_create_cluster_generate_cluster_config]