Struct aws_sdk_sagemaker::client::fluent_builders::CreateTrainingJob
source · [−]pub struct CreateTrainingJob { /* private fields */ }
Expand description
Fluent builder constructing a request to CreateTrainingJob
.
Starts a model training job. After training completes, Amazon SageMaker saves the resulting model artifacts to an Amazon S3 location that you specify.
If you choose to host your model using Amazon SageMaker hosting services, you can use the resulting model artifacts as part of the model. You can also use the artifacts in a machine learning service other than Amazon SageMaker, provided that you know how to use them for inference.
In the request body, you provide the following:
-
AlgorithmSpecification
- Identifies the training algorithm to use. -
HyperParameters
- Specify these algorithm-specific parameters to enable the estimation of model parameters during training. Hyperparameters can be tuned to optimize this learning process. For a list of hyperparameters for each training algorithm provided by Amazon SageMaker, see Algorithms. -
InputDataConfig
- Describes the training dataset and the Amazon S3, EFS, or FSx location where it is stored. -
OutputDataConfig
- Identifies the Amazon S3 bucket where you want Amazon SageMaker to save the results of model training. -
ResourceConfig
- Identifies the resources, ML compute instances, and ML storage volumes to deploy for model training. In distributed training, you specify more than one instance. -
EnableManagedSpotTraining
- Optimize the cost of training machine learning models by up to 80% by using Amazon EC2 Spot instances. For more information, see Managed Spot Training. -
RoleArn
- The Amazon Resource Name (ARN) that Amazon SageMaker assumes to perform tasks on your behalf during model training. You must grant this role the necessary permissions so that Amazon SageMaker can successfully complete model training. -
StoppingCondition
- To help cap training costs, useMaxRuntimeInSeconds
to set a time limit for training. UseMaxWaitTimeInSeconds
to specify how long a managed spot training job has to complete. -
Environment
- The environment variables to set in the Docker container. -
RetryStrategy
- The number of times to retry the job when the job fails due to anInternalServerError
.
For more information about Amazon SageMaker, see How It Works.
Implementations
sourceimpl CreateTrainingJob
impl CreateTrainingJob
sourcepub async fn send(
self
) -> Result<CreateTrainingJobOutput, SdkError<CreateTrainingJobError>>
pub async fn send(
self
) -> Result<CreateTrainingJobOutput, SdkError<CreateTrainingJobError>>
Sends the request and returns the response.
If an error occurs, an SdkError
will be returned with additional details that
can be matched against.
By default, any retryable failures will be retried twice. Retry behavior is configurable with the RetryConfig, which can be set when configuring the client.
sourcepub fn training_job_name(self, input: impl Into<String>) -> Self
pub fn training_job_name(self, input: impl Into<String>) -> Self
The name of the training job. The name must be unique within an Amazon Web Services Region in an Amazon Web Services account.
sourcepub fn set_training_job_name(self, input: Option<String>) -> Self
pub fn set_training_job_name(self, input: Option<String>) -> Self
The name of the training job. The name must be unique within an Amazon Web Services Region in an Amazon Web Services account.
sourcepub fn hyper_parameters(
self,
k: impl Into<String>,
v: impl Into<String>
) -> Self
pub fn hyper_parameters(
self,
k: impl Into<String>,
v: impl Into<String>
) -> Self
Adds a key-value pair to HyperParameters
.
To override the contents of this collection use set_hyper_parameters
.
Algorithm-specific parameters that influence the quality of the model. You set hyperparameters before you start the learning process. For a list of hyperparameters for each training algorithm provided by Amazon SageMaker, see Algorithms.
You can specify a maximum of 100 hyperparameters. Each hyperparameter is a key-value pair. Each key and value is limited to 256 characters, as specified by the Length Constraint
.
sourcepub fn set_hyper_parameters(
self,
input: Option<HashMap<String, String>>
) -> Self
pub fn set_hyper_parameters(
self,
input: Option<HashMap<String, String>>
) -> Self
Algorithm-specific parameters that influence the quality of the model. You set hyperparameters before you start the learning process. For a list of hyperparameters for each training algorithm provided by Amazon SageMaker, see Algorithms.
You can specify a maximum of 100 hyperparameters. Each hyperparameter is a key-value pair. Each key and value is limited to 256 characters, as specified by the Length Constraint
.
sourcepub fn algorithm_specification(self, input: AlgorithmSpecification) -> Self
pub fn algorithm_specification(self, input: AlgorithmSpecification) -> Self
The registry path of the Docker image that contains the training algorithm and algorithm-specific metadata, including the input mode. For more information about algorithms provided by Amazon SageMaker, see Algorithms. For information about providing your own algorithms, see Using Your Own Algorithms with Amazon SageMaker.
sourcepub fn set_algorithm_specification(
self,
input: Option<AlgorithmSpecification>
) -> Self
pub fn set_algorithm_specification(
self,
input: Option<AlgorithmSpecification>
) -> Self
The registry path of the Docker image that contains the training algorithm and algorithm-specific metadata, including the input mode. For more information about algorithms provided by Amazon SageMaker, see Algorithms. For information about providing your own algorithms, see Using Your Own Algorithms with Amazon SageMaker.
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 an IAM role that Amazon SageMaker can assume to perform tasks on your behalf.
During model training, Amazon SageMaker needs your permission to read input data from an S3 bucket, download a Docker image that contains training code, write model artifacts to an S3 bucket, write logs to Amazon CloudWatch Logs, and publish metrics to Amazon CloudWatch. You grant permissions for all of these tasks to an IAM role. For more information, see Amazon SageMaker Roles.
To be able to pass this role to Amazon SageMaker, the caller of this API must have the iam:PassRole
permission.
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 an IAM role that Amazon SageMaker can assume to perform tasks on your behalf.
During model training, Amazon SageMaker needs your permission to read input data from an S3 bucket, download a Docker image that contains training code, write model artifacts to an S3 bucket, write logs to Amazon CloudWatch Logs, and publish metrics to Amazon CloudWatch. You grant permissions for all of these tasks to an IAM role. For more information, see Amazon SageMaker Roles.
To be able to pass this role to Amazon SageMaker, the caller of this API must have the iam:PassRole
permission.
sourcepub fn input_data_config(self, input: Channel) -> Self
pub fn input_data_config(self, input: Channel) -> Self
Appends an item to InputDataConfig
.
To override the contents of this collection use set_input_data_config
.
An array of Channel
objects. Each channel is a named input source. InputDataConfig
describes the input data and its location.
Algorithms can accept input data from one or more channels. For example, an algorithm might have two channels of input data, training_data
and validation_data
. The configuration for each channel provides the S3, EFS, or FSx location where the input data is stored. It also provides information about the stored data: the MIME type, compression method, and whether the data is wrapped in RecordIO format.
Depending on the input mode that the algorithm supports, Amazon SageMaker either copies input data files from an S3 bucket to a local directory in the Docker container, or makes it available as input streams. For example, if you specify an EFS location, input data files will be made available as input streams. They do not need to be downloaded.
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. Each channel is a named input source. InputDataConfig
describes the input data and its location.
Algorithms can accept input data from one or more channels. For example, an algorithm might have two channels of input data, training_data
and validation_data
. The configuration for each channel provides the S3, EFS, or FSx location where the input data is stored. It also provides information about the stored data: the MIME type, compression method, and whether the data is wrapped in RecordIO format.
Depending on the input mode that the algorithm supports, Amazon SageMaker either copies input data files from an S3 bucket to a local directory in the Docker container, or makes it available as input streams. For example, if you specify an EFS location, input data files will be made available as input streams. They do not need to be downloaded.
sourcepub fn output_data_config(self, input: OutputDataConfig) -> Self
pub fn output_data_config(self, input: OutputDataConfig) -> Self
Specifies the path to the S3 location where you want to store model artifacts. Amazon SageMaker creates subfolders for the artifacts.
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 S3 location where you want to store model artifacts. Amazon SageMaker creates subfolders for the artifacts.
sourcepub fn resource_config(self, input: ResourceConfig) -> Self
pub fn resource_config(self, input: ResourceConfig) -> Self
The resources, including the ML compute instances and ML storage volumes, to use for model training.
ML storage volumes store model artifacts and incremental states. Training algorithms might also use ML storage volumes for scratch space. If you want Amazon SageMaker to use the ML 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 ML compute instances and ML storage volumes, to use for model training.
ML storage volumes store model artifacts and incremental states. Training algorithms might also use ML storage volumes for scratch space. If you want Amazon SageMaker to use the ML 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 vpc_config(self, input: VpcConfig) -> Self
pub fn vpc_config(self, input: VpcConfig) -> Self
A VpcConfig
object that specifies the VPC that you want your training job 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
A VpcConfig
object that specifies the VPC that you want your training job 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 stopping_condition(self, input: StoppingCondition) -> Self
pub fn stopping_condition(self, input: StoppingCondition) -> Self
Specifies a limit to how long a model 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.
To stop a job, Amazon SageMaker sends the algorithm the SIGTERM
signal, which delays job termination for 120 seconds. Algorithms can use this 120-second window to save the model artifacts, so the results of training are not lost.
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 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.
To stop a job, Amazon SageMaker sends the algorithm the SIGTERM
signal, which delays job termination for 120 seconds. Algorithms can use this 120-second window to save the model artifacts, so the results of training are not lost.
Appends an item to Tags
.
To override the contents of this collection use set_tags
.
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.
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.
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 you enable network isolation 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 you enable network isolation 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. For more information, see Protect Communications Between ML Compute Instances in a Distributed Training Job.
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. For more information, see Protect Communications Between ML Compute Instances in a Distributed Training Job.
sourcepub fn enable_managed_spot_training(self, input: bool) -> Self
pub fn enable_managed_spot_training(self, input: bool) -> Self
To train models using managed spot training, choose True
. Managed spot training provides a fully managed and scalable infrastructure for training machine learning models. this option is useful when training jobs can be interrupted and when there is flexibility when the training job is run.
The complete and intermediate results of jobs are stored in an Amazon S3 bucket, and can be used as a starting point to train models incrementally. Amazon SageMaker provides metrics and logs in CloudWatch. They can be used to see when managed spot training jobs are running, interrupted, resumed, or completed.
sourcepub fn set_enable_managed_spot_training(self, input: Option<bool>) -> Self
pub fn set_enable_managed_spot_training(self, input: Option<bool>) -> Self
To train models using managed spot training, choose True
. Managed spot training provides a fully managed and scalable infrastructure for training machine learning models. this option is useful when training jobs can be interrupted and when there is flexibility when the training job is run.
The complete and intermediate results of jobs are stored in an Amazon S3 bucket, and can be used as a starting point to train models incrementally. Amazon SageMaker provides metrics and logs in CloudWatch. They can be used to see when managed spot training jobs are running, interrupted, resumed, or completed.
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 debug_hook_config(self, input: DebugHookConfig) -> Self
pub fn debug_hook_config(self, input: DebugHookConfig) -> Self
Configuration information for the Debugger hook parameters, metric and tensor collections, and storage paths. To learn more about how to configure the DebugHookConfig
parameter, see Use the SageMaker and Debugger Configuration API Operations to Create, Update, and Debug Your Training Job.
sourcepub fn set_debug_hook_config(self, input: Option<DebugHookConfig>) -> Self
pub fn set_debug_hook_config(self, input: Option<DebugHookConfig>) -> Self
Configuration information for the Debugger hook parameters, metric and tensor collections, and storage paths. To learn more about how to configure the DebugHookConfig
parameter, see Use the SageMaker and Debugger Configuration API Operations to Create, Update, and Debug Your Training Job.
sourcepub fn debug_rule_configurations(self, input: DebugRuleConfiguration) -> Self
pub fn debug_rule_configurations(self, input: DebugRuleConfiguration) -> Self
Appends an item to DebugRuleConfigurations
.
To override the contents of this collection use set_debug_rule_configurations
.
Configuration information for Debugger rules for debugging output tensors.
sourcepub fn set_debug_rule_configurations(
self,
input: Option<Vec<DebugRuleConfiguration>>
) -> Self
pub fn set_debug_rule_configurations(
self,
input: Option<Vec<DebugRuleConfiguration>>
) -> Self
Configuration information for Debugger rules for debugging output tensors.
sourcepub fn tensor_board_output_config(self, input: TensorBoardOutputConfig) -> Self
pub fn tensor_board_output_config(self, input: TensorBoardOutputConfig) -> Self
Configuration of storage locations for the Debugger TensorBoard output data.
sourcepub fn set_tensor_board_output_config(
self,
input: Option<TensorBoardOutputConfig>
) -> Self
pub fn set_tensor_board_output_config(
self,
input: Option<TensorBoardOutputConfig>
) -> Self
Configuration of storage locations for the Debugger TensorBoard output data.
sourcepub fn experiment_config(self, input: ExperimentConfig) -> Self
pub fn experiment_config(self, input: ExperimentConfig) -> Self
Associates a SageMaker job as a trial component with an experiment and trial. Specified when you call the following APIs:
-
CreateProcessingJob
-
CreateTrainingJob
-
CreateTransformJob
sourcepub fn set_experiment_config(self, input: Option<ExperimentConfig>) -> Self
pub fn set_experiment_config(self, input: Option<ExperimentConfig>) -> Self
Associates a SageMaker job as a trial component with an experiment and trial. Specified when you call the following APIs:
-
CreateProcessingJob
-
CreateTrainingJob
-
CreateTransformJob
sourcepub fn profiler_config(self, input: ProfilerConfig) -> Self
pub fn profiler_config(self, input: ProfilerConfig) -> Self
Configuration information for Debugger system monitoring, framework profiling, and storage paths.
sourcepub fn set_profiler_config(self, input: Option<ProfilerConfig>) -> Self
pub fn set_profiler_config(self, input: Option<ProfilerConfig>) -> Self
Configuration information for Debugger system monitoring, framework profiling, and storage paths.
sourcepub fn profiler_rule_configurations(
self,
input: ProfilerRuleConfiguration
) -> Self
pub fn profiler_rule_configurations(
self,
input: ProfilerRuleConfiguration
) -> Self
Appends an item to ProfilerRuleConfigurations
.
To override the contents of this collection use set_profiler_rule_configurations
.
Configuration information for Debugger rules for profiling system and framework metrics.
sourcepub fn set_profiler_rule_configurations(
self,
input: Option<Vec<ProfilerRuleConfiguration>>
) -> Self
pub fn set_profiler_rule_configurations(
self,
input: Option<Vec<ProfilerRuleConfiguration>>
) -> Self
Configuration information for Debugger rules for profiling system and framework metrics.
sourcepub fn environment(self, k: impl Into<String>, v: impl Into<String>) -> Self
pub fn environment(self, k: impl Into<String>, v: impl Into<String>) -> Self
Adds a key-value pair to Environment
.
To override the contents of this collection use set_environment
.
The environment variables to set in the Docker container.
sourcepub fn set_environment(self, input: Option<HashMap<String, String>>) -> Self
pub fn set_environment(self, input: Option<HashMap<String, String>>) -> Self
The environment variables to set in the Docker container.
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
.
Trait Implementations
sourceimpl Clone for CreateTrainingJob
impl Clone for CreateTrainingJob
sourcefn clone(&self) -> CreateTrainingJob
fn clone(&self) -> CreateTrainingJob
Returns a copy of the value. Read more
1.0.0 · sourcefn clone_from(&mut self, source: &Self)
fn clone_from(&mut self, source: &Self)
Performs copy-assignment from source
. Read more
Auto Trait Implementations
impl !RefUnwindSafe for CreateTrainingJob
impl Send for CreateTrainingJob
impl Sync for CreateTrainingJob
impl Unpin for CreateTrainingJob
impl !UnwindSafe for CreateTrainingJob
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