#[non_exhaustive]pub struct Builder { /* private fields */ }
Expand description
A builder for HyperParameterTrainingJobDefinition
Implementations
sourceimpl Builder
impl Builder
sourcepub fn definition_name(self, input: impl Into<String>) -> Self
pub fn definition_name(self, input: impl Into<String>) -> Self
The job definition name.
sourcepub fn set_definition_name(self, input: Option<String>) -> Self
pub fn set_definition_name(self, input: Option<String>) -> Self
The job definition name.
sourcepub fn tuning_objective(self, input: HyperParameterTuningJobObjective) -> Self
pub fn tuning_objective(self, input: HyperParameterTuningJobObjective) -> Self
Defines the objective metric for a hyperparameter tuning job. Hyperparameter tuning uses the value of this metric to evaluate the training jobs it launches, and returns the training job that results in either the highest or lowest value for this metric, depending on the value you specify for the Type
parameter.
sourcepub fn set_tuning_objective(
self,
input: Option<HyperParameterTuningJobObjective>
) -> Self
pub fn set_tuning_objective(
self,
input: Option<HyperParameterTuningJobObjective>
) -> Self
Defines the objective metric for a hyperparameter tuning job. Hyperparameter tuning uses the value of this metric to evaluate the training jobs it launches, and returns the training job that results in either the highest or lowest value for this metric, depending on the value you specify for the Type
parameter.
sourcepub fn hyper_parameter_ranges(self, input: ParameterRanges) -> Self
pub fn hyper_parameter_ranges(self, input: ParameterRanges) -> Self
Specifies ranges of integer, continuous, and categorical hyperparameters that a hyperparameter tuning job searches. The hyperparameter tuning job launches training jobs with hyperparameter values within these ranges to find the combination of values that result in the training job with the best performance as measured by the objective metric of the hyperparameter tuning job.
You can specify a maximum of 20 hyperparameters that a hyperparameter tuning job can search over. Every possible value of a categorical parameter range counts against this limit.
sourcepub fn set_hyper_parameter_ranges(self, input: Option<ParameterRanges>) -> Self
pub fn set_hyper_parameter_ranges(self, input: Option<ParameterRanges>) -> Self
Specifies ranges of integer, continuous, and categorical hyperparameters that a hyperparameter tuning job searches. The hyperparameter tuning job launches training jobs with hyperparameter values within these ranges to find the combination of values that result in the training job with the best performance as measured by the objective metric of the hyperparameter tuning job.
You can specify a maximum of 20 hyperparameters that a hyperparameter tuning job can search over. Every possible value of a categorical parameter range counts against this limit.
sourcepub fn static_hyper_parameters(
self,
k: impl Into<String>,
v: impl Into<String>
) -> Self
pub fn static_hyper_parameters(
self,
k: impl Into<String>,
v: impl Into<String>
) -> Self
Adds a key-value pair to static_hyper_parameters
.
To override the contents of this collection use set_static_hyper_parameters
.
Specifies the values of hyperparameters that do not change for the tuning job.
sourcepub fn set_static_hyper_parameters(
self,
input: Option<HashMap<String, String>>
) -> Self
pub fn set_static_hyper_parameters(
self,
input: Option<HashMap<String, String>>
) -> Self
Specifies the values of hyperparameters that do not change for the tuning job.
sourcepub fn algorithm_specification(
self,
input: HyperParameterAlgorithmSpecification
) -> Self
pub fn algorithm_specification(
self,
input: HyperParameterAlgorithmSpecification
) -> Self
The HyperParameterAlgorithmSpecification
object that specifies the resource algorithm to use for the training jobs that the tuning job launches.
sourcepub fn set_algorithm_specification(
self,
input: Option<HyperParameterAlgorithmSpecification>
) -> Self
pub fn set_algorithm_specification(
self,
input: Option<HyperParameterAlgorithmSpecification>
) -> Self
The HyperParameterAlgorithmSpecification
object that specifies the resource algorithm to use for the training jobs that the tuning job launches.
sourcepub fn role_arn(self, input: impl Into<String>) -> Self
pub fn role_arn(self, input: impl Into<String>) -> Self
The Amazon Resource Name (ARN) of the IAM role associated with the training jobs that the tuning job launches.
sourcepub fn set_role_arn(self, input: Option<String>) -> Self
pub fn set_role_arn(self, input: Option<String>) -> Self
The Amazon Resource Name (ARN) of the IAM role associated with the training jobs that the tuning job launches.
sourcepub fn input_data_config(self, input: Channel) -> Self
pub fn input_data_config(self, input: Channel) -> Self
Appends an item to input_data_config
.
To override the contents of this collection use set_input_data_config
.
An array of Channel
objects that specify the input for the training jobs that the tuning job launches.
sourcepub fn set_input_data_config(self, input: Option<Vec<Channel>>) -> Self
pub fn set_input_data_config(self, input: Option<Vec<Channel>>) -> Self
An array of Channel
objects that specify the input for the training jobs that the tuning job launches.
sourcepub fn vpc_config(self, input: VpcConfig) -> Self
pub fn vpc_config(self, input: VpcConfig) -> Self
The VpcConfig
object that specifies the VPC that you want the training jobs that this hyperparameter tuning job launches to connect to. Control access to and from your training container by configuring the VPC. For more information, see Protect Training Jobs by Using an Amazon Virtual Private Cloud.
sourcepub fn set_vpc_config(self, input: Option<VpcConfig>) -> Self
pub fn set_vpc_config(self, input: Option<VpcConfig>) -> Self
The VpcConfig
object that specifies the VPC that you want the training jobs that this hyperparameter tuning job launches to connect to. Control access to and from your training container by configuring the VPC. For more information, see Protect Training Jobs by Using an Amazon Virtual Private Cloud.
sourcepub fn output_data_config(self, input: OutputDataConfig) -> Self
pub fn output_data_config(self, input: OutputDataConfig) -> Self
Specifies the path to the Amazon S3 bucket where you store model artifacts from the training jobs that the tuning job launches.
sourcepub fn set_output_data_config(self, input: Option<OutputDataConfig>) -> Self
pub fn set_output_data_config(self, input: Option<OutputDataConfig>) -> Self
Specifies the path to the Amazon S3 bucket where you store model artifacts from the training jobs that the tuning job launches.
sourcepub fn resource_config(self, input: ResourceConfig) -> Self
pub fn resource_config(self, input: ResourceConfig) -> Self
The resources, including the compute instances and storage volumes, to use for the training jobs that the tuning job launches.
Storage volumes store model artifacts and incremental states. Training algorithms might also use storage volumes for scratch space. If you want Amazon SageMaker to use the storage volume to store the training data, choose File
as the TrainingInputMode
in the algorithm specification. For distributed training algorithms, specify an instance count greater than 1.
sourcepub fn set_resource_config(self, input: Option<ResourceConfig>) -> Self
pub fn set_resource_config(self, input: Option<ResourceConfig>) -> Self
The resources, including the compute instances and storage volumes, to use for the training jobs that the tuning job launches.
Storage volumes store model artifacts and incremental states. Training algorithms might also use storage volumes for scratch space. If you want Amazon SageMaker to use the storage volume to store the training data, choose File
as the TrainingInputMode
in the algorithm specification. For distributed training algorithms, specify an instance count greater than 1.
sourcepub fn stopping_condition(self, input: StoppingCondition) -> Self
pub fn stopping_condition(self, input: StoppingCondition) -> Self
Specifies a limit to how long a model hyperparameter training job can run. It also specifies how long a managed spot training job has to complete. When the job reaches the time limit, Amazon SageMaker ends the training job. Use this API to cap model training costs.
sourcepub fn set_stopping_condition(self, input: Option<StoppingCondition>) -> Self
pub fn set_stopping_condition(self, input: Option<StoppingCondition>) -> Self
Specifies a limit to how long a model hyperparameter training job can run. It also specifies how long a managed spot training job has to complete. When the job reaches the time limit, Amazon SageMaker ends the training job. Use this API to cap model training costs.
sourcepub fn enable_network_isolation(self, input: bool) -> Self
pub fn enable_network_isolation(self, input: bool) -> Self
Isolates the training container. No inbound or outbound network calls can be made, except for calls between peers within a training cluster for distributed training. If network isolation is used for training jobs that are configured to use a VPC, Amazon SageMaker downloads and uploads customer data and model artifacts through the specified VPC, but the training container does not have network access.
sourcepub fn set_enable_network_isolation(self, input: Option<bool>) -> Self
pub fn set_enable_network_isolation(self, input: Option<bool>) -> Self
Isolates the training container. No inbound or outbound network calls can be made, except for calls between peers within a training cluster for distributed training. If network isolation is used for training jobs that are configured to use a VPC, Amazon SageMaker downloads and uploads customer data and model artifacts through the specified VPC, but the training container does not have network access.
sourcepub fn enable_inter_container_traffic_encryption(self, input: bool) -> Self
pub fn enable_inter_container_traffic_encryption(self, input: bool) -> Self
To encrypt all communications between ML compute instances in distributed training, choose True
. Encryption provides greater security for distributed training, but training might take longer. How long it takes depends on the amount of communication between compute instances, especially if you use a deep learning algorithm in distributed training.
sourcepub fn set_enable_inter_container_traffic_encryption(
self,
input: Option<bool>
) -> Self
pub fn set_enable_inter_container_traffic_encryption(
self,
input: Option<bool>
) -> Self
To encrypt all communications between ML compute instances in distributed training, choose True
. Encryption provides greater security for distributed training, but training might take longer. How long it takes depends on the amount of communication between compute instances, especially if you use a deep learning algorithm in distributed training.
sourcepub fn enable_managed_spot_training(self, input: bool) -> Self
pub fn enable_managed_spot_training(self, input: bool) -> Self
A Boolean indicating whether managed spot training is enabled (True
) or not (False
).
sourcepub fn set_enable_managed_spot_training(self, input: Option<bool>) -> Self
pub fn set_enable_managed_spot_training(self, input: Option<bool>) -> Self
A Boolean indicating whether managed spot training is enabled (True
) or not (False
).
sourcepub fn checkpoint_config(self, input: CheckpointConfig) -> Self
pub fn checkpoint_config(self, input: CheckpointConfig) -> Self
Contains information about the output location for managed spot training checkpoint data.
sourcepub fn set_checkpoint_config(self, input: Option<CheckpointConfig>) -> Self
pub fn set_checkpoint_config(self, input: Option<CheckpointConfig>) -> Self
Contains information about the output location for managed spot training checkpoint data.
sourcepub fn retry_strategy(self, input: RetryStrategy) -> Self
pub fn retry_strategy(self, input: RetryStrategy) -> Self
The number of times to retry the job when the job fails due to an InternalServerError
.
sourcepub fn set_retry_strategy(self, input: Option<RetryStrategy>) -> Self
pub fn set_retry_strategy(self, input: Option<RetryStrategy>) -> Self
The number of times to retry the job when the job fails due to an InternalServerError
.
sourcepub fn build(self) -> HyperParameterTrainingJobDefinition
pub fn build(self) -> HyperParameterTrainingJobDefinition
Consumes the builder and constructs a HyperParameterTrainingJobDefinition
Trait Implementations
impl StructuralPartialEq for Builder
Auto Trait Implementations
impl RefUnwindSafe for Builder
impl Send for Builder
impl Sync for Builder
impl Unpin for Builder
impl UnwindSafe for Builder
Blanket Implementations
sourceimpl<T> BorrowMut<T> for T where
T: ?Sized,
impl<T> BorrowMut<T> for T where
T: ?Sized,
const: unstable · sourcepub fn borrow_mut(&mut self) -> &mut T
pub fn borrow_mut(&mut self) -> &mut T
Mutably borrows from an owned value. Read more
sourceimpl<T> Instrument for T
impl<T> Instrument for T
sourcefn instrument(self, span: Span) -> Instrumented<Self>
fn instrument(self, span: Span) -> Instrumented<Self>
sourcefn in_current_span(self) -> Instrumented<Self>
fn in_current_span(self) -> Instrumented<Self>
sourceimpl<T> ToOwned for T where
T: Clone,
impl<T> ToOwned for T where
T: Clone,
type Owned = T
type Owned = T
The resulting type after obtaining ownership.
sourcepub fn to_owned(&self) -> T
pub fn to_owned(&self) -> T
Creates owned data from borrowed data, usually by cloning. Read more
sourcepub fn clone_into(&self, target: &mut T)
pub fn clone_into(&self, target: &mut T)
toowned_clone_into
)Uses borrowed data to replace owned data, usually by cloning. Read more
sourceimpl<T> WithSubscriber for T
impl<T> WithSubscriber for T
sourcefn with_subscriber<S>(self, subscriber: S) -> WithDispatch<Self> where
S: Into<Dispatch>,
fn with_subscriber<S>(self, subscriber: S) -> WithDispatch<Self> where
S: Into<Dispatch>,
Attaches the provided Subscriber
to this type, returning a
WithDispatch
wrapper. Read more
sourcefn with_current_subscriber(self) -> WithDispatch<Self>
fn with_current_subscriber(self) -> WithDispatch<Self>
Attaches the current default Subscriber
to this type, returning a
WithDispatch
wrapper. Read more