Struct aws_sdk_sagemaker::input::CreateAlgorithmInput
source · #[non_exhaustive]pub struct CreateAlgorithmInput { /* private fields */ }
Implementations§
source§impl CreateAlgorithmInput
impl CreateAlgorithmInput
sourcepub async fn make_operation(
&self,
_config: &Config
) -> Result<Operation<CreateAlgorithm, AwsResponseRetryClassifier>, BuildError>
pub async fn make_operation(
&self,
_config: &Config
) -> Result<Operation<CreateAlgorithm, AwsResponseRetryClassifier>, BuildError>
Consumes the builder and constructs an Operation<CreateAlgorithm
>
sourcepub fn builder() -> Builder
pub fn builder() -> Builder
Creates a new builder-style object to manufacture CreateAlgorithmInput
.
source§impl CreateAlgorithmInput
impl CreateAlgorithmInput
sourcepub fn algorithm_name(&self) -> Option<&str>
pub fn algorithm_name(&self) -> Option<&str>
The name of the algorithm.
sourcepub fn algorithm_description(&self) -> Option<&str>
pub fn algorithm_description(&self) -> Option<&str>
A description of the algorithm.
sourcepub fn training_specification(&self) -> Option<&TrainingSpecification>
pub fn training_specification(&self) -> Option<&TrainingSpecification>
Specifies details about training jobs run by this algorithm, including the following:
-
The Amazon ECR path of the container and the version digest of the algorithm.
-
The hyperparameters that the algorithm supports.
-
The instance types that the algorithm supports for training.
-
Whether the algorithm supports distributed training.
-
The metrics that the algorithm emits to Amazon CloudWatch.
-
Which metrics that the algorithm emits can be used as the objective metric for hyperparameter tuning jobs.
-
The input channels that the algorithm supports for training data. For example, an algorithm might support
train
,validation
, andtest
channels.
sourcepub fn inference_specification(&self) -> Option<&InferenceSpecification>
pub fn inference_specification(&self) -> Option<&InferenceSpecification>
Specifies details about inference jobs that the algorithm runs, including the following:
-
The Amazon ECR paths of containers that contain the inference code and model artifacts.
-
The instance types that the algorithm supports for transform jobs and real-time endpoints used for inference.
-
The input and output content formats that the algorithm supports for inference.
sourcepub fn validation_specification(
&self
) -> Option<&AlgorithmValidationSpecification>
pub fn validation_specification(
&self
) -> Option<&AlgorithmValidationSpecification>
Specifies configurations for one or more training jobs and that SageMaker runs to test the algorithm's training code and, optionally, one or more batch transform jobs that SageMaker runs to test the algorithm's inference code.
sourcepub fn certify_for_marketplace(&self) -> bool
pub fn certify_for_marketplace(&self) -> bool
Whether to certify the algorithm so that it can be listed in Amazon Web Services Marketplace.
An array of key-value pairs. You can use tags to categorize your Amazon Web Services resources in different ways, for example, by purpose, owner, or environment. For more information, see Tagging Amazon Web Services Resources.
Trait Implementations§
source§impl Clone for CreateAlgorithmInput
impl Clone for CreateAlgorithmInput
source§fn clone(&self) -> CreateAlgorithmInput
fn clone(&self) -> CreateAlgorithmInput
1.0.0 · source§fn clone_from(&mut self, source: &Self)
fn clone_from(&mut self, source: &Self)
source
. Read moresource§impl Debug for CreateAlgorithmInput
impl Debug for CreateAlgorithmInput
source§impl PartialEq<CreateAlgorithmInput> for CreateAlgorithmInput
impl PartialEq<CreateAlgorithmInput> for CreateAlgorithmInput
source§fn eq(&self, other: &CreateAlgorithmInput) -> bool
fn eq(&self, other: &CreateAlgorithmInput) -> bool
self
and other
values to be equal, and is used
by ==
.