Introducing the Keras Sequential API on Vertex AI Platform Reviews
Loading...
No results found.

Google Cloud Skills Boost

Apply your skills in Google Cloud console

Introducing the Keras Sequential API on Vertex AI Platform Reviews

13407 reviews

Bikram S. · Reviewed 5 ay ago

Miras C. · Reviewed 5 ay ago

Keiven T. · Reviewed 5 ay ago

Andrea C. · Reviewed 5 ay ago

Damir M. · Reviewed 5 ay ago

Kazushige O. · Reviewed 5 ay ago

David Israel P. · Reviewed 5 ay ago

Scott B. · Reviewed 5 ay ago

Oscar R. · Reviewed 5 ay ago

Benhur O. · Reviewed 5 ay ago

Shankar M. · Reviewed 5 ay ago

Amina Z. · Reviewed 5 ay ago

Abhra D. · Reviewed 5 ay ago

Abhilasa S. · Reviewed 5 ay ago

Nils G. · Reviewed 5 ay ago

File /opt/conda/lib/python3.10/site-packages/google/cloud/aiplatform/models.py:1827, in Endpoint._deploy_call(cls, api_client, endpoint_resource_name, model, endpoint_resource_traffic_split, network, deployed_model_display_name, traffic_percentage, traffic_split, machine_type, min_replica_count, max_replica_count, accelerator_type, accelerator_count, tpu_topology, service_account, explanation_spec, metadata, deploy_request_timeout, autoscaling_target_cpu_utilization, autoscaling_target_accelerator_duty_cycle, enable_access_logging, disable_container_logging, deployment_resource_pool) 1815 operation_future = api_client.deploy_model( 1816 endpoint=endpoint_resource_name, 1817 deployed_model=deployed_model, (...) 1820 timeout=deploy_request_timeout, 1821 ) 1823 _LOGGER.log_action_started_against_resource_with_lro( 1824 "Deploy", "model", cls, operation_future 1825 ) -> 1827 operation_future.result(timeout=None) File /opt/conda/lib/python3.10/site-packages/google/api_core/future/polling.py:261, in PollingFuture.result(self, timeout, retry, polling) 256 self._blocking_poll(timeout=timeout, retry=retry, polling=polling) 258 if self._exception is not None: 259 # pylint: disable=raising-bad-type 260 # Pylint doesn't recognize that this is valid in this case. --> 261 raise self._exception 263 return self._result FailedPrecondition: 400 Model server exited unexpectedly. Model server logs can be found at https://console.cloud.google.com/logs/viewer?project=667152570772&resource=aiplatform.googleapis.com%2FEndpoint&advancedFilter=resource.type%3D%22aiplatform.googleapis.com%2FEndpoint%22%0Aresource.labels.endpoint_id%3D%225927820128572932096%22%0Aresource.labels.location%3D%22us-central1%22.

Goziem M. · Reviewed 5 ay ago

could be easier if there was more time since deploy part takes long

Mona H. · Reviewed 5 ay ago

Islam A. · Reviewed 5 ay ago

MACHINE_TYPE = "e2-standard-2" endpoint = uploaded_model.deploy( machine_type=MACHINE_TYPE, accelerator_type=None, accelerator_count=None, ) ne marche pas correctement

Timothé L. · Reviewed 5 ay ago

Llorenç V. · Reviewed 5 ay ago

Wonseuk H. · Reviewed 5 ay ago

Pablo G. · Reviewed 5 ay ago

Deploy really slow

Francesca A. · Reviewed 5 ay ago

Anísio P. · Reviewed 5 ay ago

Kamel S. · Reviewed 5 ay ago

We do not ensure the published reviews originate from consumers who have purchased or used the products. Reviews are not verified by Google.