Creates a new Neptune ML inference endpoint that lets you query one specific model that the model-training process constructed. See Managing inference endpoints using the endpoints command.
See https://www.paws-r-sdk.com/docs/neptunedata_create_ml_endpoint/ for full documentation.
neptunedata_create_ml_endpoint(
id = NULL,
mlModelTrainingJobId = NULL,
mlModelTransformJobId = NULL,
update = NULL,
neptuneIamRoleArn = NULL,
modelName = NULL,
instanceType = NULL,
instanceCount = NULL,
volumeEncryptionKMSKey = NULL
)
A unique identifier for the new inference endpoint. The default is an autogenerated timestamped name.
The job Id of the completed model-training job that has created the
model that the inference endpoint will point to. You must supply either
the mlModelTrainingJobId
or the mlModelTransformJobId
.
The job Id of the completed model-transform job. You must supply either
the mlModelTrainingJobId
or the mlModelTransformJobId
.
If set to true
, update
indicates that this is an update request. The
default is false
. You must supply either the mlModelTrainingJobId
or
the mlModelTransformJobId
.
The ARN of an IAM role providing Neptune access to SageMaker and Amazon S3 resources. This must be listed in your DB cluster parameter group or an error will be thrown.
Model type for training. By default the Neptune ML model is
automatically based on the modelType
used in data processing, but you
can specify a different model type here. The default is rgcn
for
heterogeneous graphs and kge
for knowledge graphs. The only valid
value for heterogeneous graphs is rgcn
. Valid values for knowledge
graphs are: kge
, transe
, distmult
, and rotate
.
The type of Neptune ML instance to use for online servicing. The default
is ml.m5.xlarge
. Choosing the ML instance for an inference endpoint
depends on the task type, the graph size, and your budget.
The minimum number of Amazon EC2 instances to deploy to an endpoint for prediction. The default is 1
The Amazon Key Management Service (Amazon KMS) key that SageMaker uses to encrypt data on the storage volume attached to the ML compute instances that run the training job. The default is None.