Struct aws_sdk_sagemaker::client::fluent_builders::CreateLabelingJob [−][src]
pub struct CreateLabelingJob<C = DynConnector, M = AwsMiddleware, R = Standard> { /* fields omitted */ }
Expand description
Fluent builder constructing a request to CreateLabelingJob
.
Creates a job that uses workers to label the data objects in your input dataset. You can use the labeled data to train machine learning models.
You can select your workforce from one of three providers:
-
A private workforce that you create. It can include employees, contractors, and outside experts. Use a private workforce when want the data to stay within your organization or when a specific set of skills is required.
-
One or more vendors that you select from the Amazon Web Services Marketplace. Vendors provide expertise in specific areas.
-
The Amazon Mechanical Turk workforce. This is the largest workforce, but it should only be used for public data or data that has been stripped of any personally identifiable information.
You can also use automated data labeling to reduce the number of data objects that need to be labeled by a human. Automated data labeling uses active learning to determine if a data object can be labeled by machine or if it needs to be sent to a human worker. For more information, see Using Automated Data Labeling.
The data objects to be labeled are contained in an Amazon S3 bucket. You create a manifest file that describes the location of each object. For more information, see Using Input and Output Data.
The output can be used as the manifest file for another labeling job or as training data for your machine learning models.
You can use this operation to create a static labeling job or a streaming labeling
job. A static labeling job stops if all data objects in the input manifest file
identified in ManifestS3Uri
have been labeled. A streaming labeling job
runs perpetually until it is manually stopped, or remains idle for 10 days. You can send
new data objects to an active (InProgress
) streaming labeling job in real
time. To learn how to create a static labeling job, see Create a Labeling Job
(API) in the Amazon SageMaker Developer Guide. To learn how to create a streaming
labeling job, see Create a Streaming Labeling
Job.
Implementations
impl<C, M, R> CreateLabelingJob<C, M, R> where
C: SmithyConnector,
M: SmithyMiddleware<C>,
R: NewRequestPolicy,
impl<C, M, R> CreateLabelingJob<C, M, R> where
C: SmithyConnector,
M: SmithyMiddleware<C>,
R: NewRequestPolicy,
pub async fn send(
self
) -> Result<CreateLabelingJobOutput, SdkError<CreateLabelingJobError>> where
R::Policy: SmithyRetryPolicy<CreateLabelingJobInputOperationOutputAlias, CreateLabelingJobOutput, CreateLabelingJobError, CreateLabelingJobInputOperationRetryAlias>,
pub async fn send(
self
) -> Result<CreateLabelingJobOutput, SdkError<CreateLabelingJobError>> where
R::Policy: SmithyRetryPolicy<CreateLabelingJobInputOperationOutputAlias, CreateLabelingJobOutput, CreateLabelingJobError, CreateLabelingJobInputOperationRetryAlias>,
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.
The name of the labeling job. This name is used to identify the job in a list of
labeling jobs. Labeling job names must be unique within an Amazon Web Services account and region.
LabelingJobName
is not case sensitive. For example, Example-job and
example-job are considered the same labeling job name by Ground Truth.
The name of the labeling job. This name is used to identify the job in a list of
labeling jobs. Labeling job names must be unique within an Amazon Web Services account and region.
LabelingJobName
is not case sensitive. For example, Example-job and
example-job are considered the same labeling job name by Ground Truth.
The attribute name to use for the label in the output manifest file. This is the key
for the key/value pair formed with the label that a worker assigns to the object. The
LabelAttributeName
must meet the following requirements.
-
The name can't end with "-metadata".
-
If you are using one of the following built-in task types, the attribute name must end with "-ref". If the task type you are using is not listed below, the attribute name must not end with "-ref".
-
Image semantic segmentation (
SemanticSegmentation)
, and adjustment (AdjustmentSemanticSegmentation
) and verification (VerificationSemanticSegmentation
) labeling jobs for this task type. -
Video frame object detection (
VideoObjectDetection
), and adjustment and verification (AdjustmentVideoObjectDetection
) labeling jobs for this task type. -
Video frame object tracking (
VideoObjectTracking
), and adjustment and verification (AdjustmentVideoObjectTracking
) labeling jobs for this task type. -
3D point cloud semantic segmentation (
3DPointCloudSemanticSegmentation
), and adjustment and verification (Adjustment3DPointCloudSemanticSegmentation
) labeling jobs for this task type. -
3D point cloud object tracking (
3DPointCloudObjectTracking
), and adjustment and verification (Adjustment3DPointCloudObjectTracking
) labeling jobs for this task type.
-
If you are creating an adjustment or verification labeling job, you must use a
different
LabelAttributeName
than the one used in the original labeling job. The
original labeling job is the Ground Truth labeling job that produced the labels that you
want verified or adjusted. To learn more about adjustment and verification labeling
jobs, see Verify and Adjust
Labels.
The attribute name to use for the label in the output manifest file. This is the key
for the key/value pair formed with the label that a worker assigns to the object. The
LabelAttributeName
must meet the following requirements.
-
The name can't end with "-metadata".
-
If you are using one of the following built-in task types, the attribute name must end with "-ref". If the task type you are using is not listed below, the attribute name must not end with "-ref".
-
Image semantic segmentation (
SemanticSegmentation)
, and adjustment (AdjustmentSemanticSegmentation
) and verification (VerificationSemanticSegmentation
) labeling jobs for this task type. -
Video frame object detection (
VideoObjectDetection
), and adjustment and verification (AdjustmentVideoObjectDetection
) labeling jobs for this task type. -
Video frame object tracking (
VideoObjectTracking
), and adjustment and verification (AdjustmentVideoObjectTracking
) labeling jobs for this task type. -
3D point cloud semantic segmentation (
3DPointCloudSemanticSegmentation
), and adjustment and verification (Adjustment3DPointCloudSemanticSegmentation
) labeling jobs for this task type. -
3D point cloud object tracking (
3DPointCloudObjectTracking
), and adjustment and verification (Adjustment3DPointCloudObjectTracking
) labeling jobs for this task type.
-
If you are creating an adjustment or verification labeling job, you must use a
different
LabelAttributeName
than the one used in the original labeling job. The
original labeling job is the Ground Truth labeling job that produced the labels that you
want verified or adjusted. To learn more about adjustment and verification labeling
jobs, see Verify and Adjust
Labels.
Input data for the labeling job, such as the Amazon S3 location of the data objects and the location of the manifest file that describes the data objects.
You must specify at least one of the following: S3DataSource
or
SnsDataSource
.
-
Use
SnsDataSource
to specify an SNS input topic for a streaming labeling job. If you do not specify and SNS input topic ARN, Ground Truth will create a one-time labeling job that stops after all data objects in the input manifest file have been labeled. -
Use
S3DataSource
to specify an input manifest file for both streaming and one-time labeling jobs. Adding anS3DataSource
is optional if you useSnsDataSource
to create a streaming labeling job.
If you use the Amazon Mechanical Turk workforce, your input data should not include
confidential information, personal information or protected health information. Use
ContentClassifiers
to specify that your data is free of personally
identifiable information and adult content.
Input data for the labeling job, such as the Amazon S3 location of the data objects and the location of the manifest file that describes the data objects.
You must specify at least one of the following: S3DataSource
or
SnsDataSource
.
-
Use
SnsDataSource
to specify an SNS input topic for a streaming labeling job. If you do not specify and SNS input topic ARN, Ground Truth will create a one-time labeling job that stops after all data objects in the input manifest file have been labeled. -
Use
S3DataSource
to specify an input manifest file for both streaming and one-time labeling jobs. Adding anS3DataSource
is optional if you useSnsDataSource
to create a streaming labeling job.
If you use the Amazon Mechanical Turk workforce, your input data should not include
confidential information, personal information or protected health information. Use
ContentClassifiers
to specify that your data is free of personally
identifiable information and adult content.
The location of the output data and the Amazon Web Services Key Management Service key ID for the key used to encrypt the output data, if any.
The location of the output data and the Amazon Web Services Key Management Service key ID for the key used to encrypt the output data, if any.
The Amazon Resource Number (ARN) that Amazon SageMaker assumes to perform tasks on your behalf during data labeling. You must grant this role the necessary permissions so that Amazon SageMaker can successfully complete data labeling.
The Amazon Resource Number (ARN) that Amazon SageMaker assumes to perform tasks on your behalf during data labeling. You must grant this role the necessary permissions so that Amazon SageMaker can successfully complete data labeling.
The S3 URI of the file, referred to as a label category configuration file, that defines the categories used to label the data objects.
For 3D point cloud and video frame task types, you can add label category attributes and frame attributes to your label category configuration file. To learn how, see Create a Labeling Category Configuration File for 3D Point Cloud Labeling Jobs.
For named entity recognition jobs, in addition to Add Instructions Add additional instructions."labels"
, you must
provide worker instructions in the label category configuration file using the
"instructions"
parameter: "instructions":
{"shortInstruction":"
. For details
and an example, see Create a
Named Entity Recognition Labeling Job (API) .Add header
For all other built-in task types and custom
tasks, your label category configuration file must be a JSON file in the
following format. Identify the labels you want to use by replacing label_1
,
label_2
,...
,label_n
with your label
categories.
{
"document-version": "2018-11-28",
"labels": [{"label": "label_1"},{"label": "label_2"},...{"label":
"label_n"}]
}
Note the following about the label category configuration file:
-
For image classification and text classification (single and multi-label) you must specify at least two label categories. For all other task types, the minimum number of label categories required is one.
-
Each label category must be unique, you cannot specify duplicate label categories.
-
If you create a 3D point cloud or video frame adjustment or verification labeling job, you must include
auditLabelAttributeName
in the label category configuration. Use this parameter to enter theLabelAttributeName
of the labeling job you want to adjust or verify annotations of.
The S3 URI of the file, referred to as a label category configuration file, that defines the categories used to label the data objects.
For 3D point cloud and video frame task types, you can add label category attributes and frame attributes to your label category configuration file. To learn how, see Create a Labeling Category Configuration File for 3D Point Cloud Labeling Jobs.
For named entity recognition jobs, in addition to Add Instructions Add additional instructions."labels"
, you must
provide worker instructions in the label category configuration file using the
"instructions"
parameter: "instructions":
{"shortInstruction":"
. For details
and an example, see Create a
Named Entity Recognition Labeling Job (API) .Add header
For all other built-in task types and custom
tasks, your label category configuration file must be a JSON file in the
following format. Identify the labels you want to use by replacing label_1
,
label_2
,...
,label_n
with your label
categories.
{
"document-version": "2018-11-28",
"labels": [{"label": "label_1"},{"label": "label_2"},...{"label":
"label_n"}]
}
Note the following about the label category configuration file:
-
For image classification and text classification (single and multi-label) you must specify at least two label categories. For all other task types, the minimum number of label categories required is one.
-
Each label category must be unique, you cannot specify duplicate label categories.
-
If you create a 3D point cloud or video frame adjustment or verification labeling job, you must include
auditLabelAttributeName
in the label category configuration. Use this parameter to enter theLabelAttributeName
of the labeling job you want to adjust or verify annotations of.
A set of conditions for stopping the labeling job. If any of the conditions are met, the job is automatically stopped. You can use these conditions to control the cost of data labeling.
A set of conditions for stopping the labeling job. If any of the conditions are met, the job is automatically stopped. You can use these conditions to control the cost of data labeling.
Configures the information required to perform automated data labeling.
pub fn set_labeling_job_algorithms_config(
self,
input: Option<LabelingJobAlgorithmsConfig>
) -> Self
pub fn set_labeling_job_algorithms_config(
self,
input: Option<LabelingJobAlgorithmsConfig>
) -> Self
Configures the information required to perform automated data labeling.
Configures the labeling task and how it is presented to workers; including, but not limited to price, keywords, and batch size (task count).
Configures the labeling task and how it is presented to workers; including, but not limited to price, keywords, and batch size (task count).
Appends an item to Tags
.
To override the contents of this collection use set_tags
.
An array of key/value pairs. For more information, see Using Cost Allocation Tags in the Amazon Web Services Billing and Cost Management User Guide.
An array of key/value pairs. For more information, see Using Cost Allocation Tags in the Amazon Web Services Billing and Cost Management User Guide.
Trait Implementations
Auto Trait Implementations
impl<C = DynConnector, M = AwsMiddleware, R = Standard> !RefUnwindSafe for CreateLabelingJob<C, M, R>
impl<C, M, R> Send for CreateLabelingJob<C, M, R> where
C: Send + Sync,
M: Send + Sync,
R: Send + Sync,
impl<C, M, R> Sync for CreateLabelingJob<C, M, R> where
C: Send + Sync,
M: Send + Sync,
R: Send + Sync,
impl<C, M, R> Unpin for CreateLabelingJob<C, M, R>
impl<C = DynConnector, M = AwsMiddleware, R = Standard> !UnwindSafe for CreateLabelingJob<C, M, R>
Blanket Implementations
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