Struct HumanTaskConfigBuilder

Source
#[non_exhaustive]
pub struct HumanTaskConfigBuilder { /* private fields */ }
Expand description

A builder for HumanTaskConfig.

Implementations§

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impl HumanTaskConfigBuilder

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pub fn workteam_arn(self, input: impl Into<String>) -> Self

The Amazon Resource Name (ARN) of the work team assigned to complete the tasks.

This field is required.
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pub fn set_workteam_arn(self, input: Option<String>) -> Self

The Amazon Resource Name (ARN) of the work team assigned to complete the tasks.

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pub fn get_workteam_arn(&self) -> &Option<String>

The Amazon Resource Name (ARN) of the work team assigned to complete the tasks.

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pub fn ui_config(self, input: UiConfig) -> Self

Information about the user interface that workers use to complete the labeling task.

This field is required.
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pub fn set_ui_config(self, input: Option<UiConfig>) -> Self

Information about the user interface that workers use to complete the labeling task.

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pub fn get_ui_config(&self) -> &Option<UiConfig>

Information about the user interface that workers use to complete the labeling task.

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pub fn pre_human_task_lambda_arn(self, input: impl Into<String>) -> Self

The Amazon Resource Name (ARN) of a Lambda function that is run before a data object is sent to a human worker. Use this function to provide input to a custom labeling job.

For built-in task types, use one of the following Amazon SageMaker Ground Truth Lambda function ARNs for PreHumanTaskLambdaArn. For custom labeling workflows, see Pre-annotation Lambda.

Bounding box - Finds the most similar boxes from different workers based on the Jaccard index of the boxes.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-BoundingBox

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-BoundingBox

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-BoundingBox

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-BoundingBox

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-BoundingBox

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-BoundingBox

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-BoundingBox

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-BoundingBox

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-BoundingBox

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-BoundingBox

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-BoundingBox

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-BoundingBox

Image classification - Uses a variant of the Expectation Maximization approach to estimate the true class of an image based on annotations from individual workers.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-ImageMultiClass

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-ImageMultiClass

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-ImageMultiClass

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-ImageMultiClass

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-ImageMultiClass

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-ImageMultiClass

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-ImageMultiClass

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-ImageMultiClass

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-ImageMultiClass

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-ImageMultiClass

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-ImageMultiClass

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-ImageMultiClass

Multi-label image classification - Uses a variant of the Expectation Maximization approach to estimate the true classes of an image based on annotations from individual workers.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-ImageMultiClassMultiLabel

Semantic segmentation - Treats each pixel in an image as a multi-class classification and treats pixel annotations from workers as "votes" for the correct label.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-SemanticSegmentation

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-SemanticSegmentation

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-SemanticSegmentation

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-SemanticSegmentation

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-SemanticSegmentation

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-SemanticSegmentation

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-SemanticSegmentation

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-SemanticSegmentation

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-SemanticSegmentation

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-SemanticSegmentation

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-SemanticSegmentation

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-SemanticSegmentation

Text classification - Uses a variant of the Expectation Maximization approach to estimate the true class of text based on annotations from individual workers.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-TextMultiClass

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-TextMultiClass

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-TextMultiClass

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-TextMultiClass

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-TextMultiClass

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-TextMultiClass

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-TextMultiClass

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-TextMultiClass

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-TextMultiClass

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-TextMultiClass

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-TextMultiClass

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-TextMultiClass

Multi-label text classification - Uses a variant of the Expectation Maximization approach to estimate the true classes of text based on annotations from individual workers.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-TextMultiClassMultiLabel

Named entity recognition - Groups similar selections and calculates aggregate boundaries, resolving to most-assigned label.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-NamedEntityRecognition

Video Classification - Use this task type when you need workers to classify videos using predefined labels that you specify. Workers are shown videos and are asked to choose one label for each video.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-VideoMultiClass

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-VideoMultiClass

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-VideoMultiClass

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-VideoMultiClass

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-VideoMultiClass

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-VideoMultiClass

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-VideoMultiClass

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-VideoMultiClass

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-VideoMultiClass

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-VideoMultiClass

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-VideoMultiClass

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-VideoMultiClass

Video Frame Object Detection - Use this task type to have workers identify and locate objects in a sequence of video frames (images extracted from a video) using bounding boxes. For example, you can use this task to ask workers to identify and localize various objects in a series of video frames, such as cars, bikes, and pedestrians.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-VideoObjectDetection

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-VideoObjectDetection

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-VideoObjectDetection

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-VideoObjectDetection

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-VideoObjectDetection

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-VideoObjectDetection

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-VideoObjectDetection

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-VideoObjectDetection

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-VideoObjectDetection

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-VideoObjectDetection

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-VideoObjectDetection

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-VideoObjectDetection

Video Frame Object Tracking - Use this task type to have workers track the movement of objects in a sequence of video frames (images extracted from a video) using bounding boxes. For example, you can use this task to ask workers to track the movement of objects, such as cars, bikes, and pedestrians.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-VideoObjectTracking

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-VideoObjectTracking

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-VideoObjectTracking

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-VideoObjectTracking

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-VideoObjectTracking

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-VideoObjectTracking

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-VideoObjectTracking

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-VideoObjectTracking

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-VideoObjectTracking

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-VideoObjectTracking

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-VideoObjectTracking

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-VideoObjectTracking

3D Point Cloud Modalities

Use the following pre-annotation lambdas for 3D point cloud labeling modality tasks. See 3D Point Cloud Task types to learn more.

3D Point Cloud Object Detection - Use this task type when you want workers to classify objects in a 3D point cloud by drawing 3D cuboids around objects. For example, you can use this task type to ask workers to identify different types of objects in a point cloud, such as cars, bikes, and pedestrians.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-3DPointCloudObjectDetection

3D Point Cloud Object Tracking - Use this task type when you want workers to draw 3D cuboids around objects that appear in a sequence of 3D point cloud frames. For example, you can use this task type to ask workers to track the movement of vehicles across multiple point cloud frames.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-3DPointCloudObjectTracking

3D Point Cloud Semantic Segmentation - Use this task type when you want workers to create a point-level semantic segmentation masks by painting objects in a 3D point cloud using different colors where each color is assigned to one of the classes you specify.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-3DPointCloudSemanticSegmentation

Use the following ARNs for Label Verification and Adjustment Jobs

Use label verification and adjustment jobs to review and adjust labels. To learn more, see Verify and Adjust Labels .

Bounding box verification - Uses a variant of the Expectation Maximization approach to estimate the true class of verification judgement for bounding box labels based on annotations from individual workers.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-VerificationBoundingBox

Bounding box adjustment - Finds the most similar boxes from different workers based on the Jaccard index of the adjusted annotations.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-AdjustmentBoundingBox

Semantic segmentation verification - Uses a variant of the Expectation Maximization approach to estimate the true class of verification judgment for semantic segmentation labels based on annotations from individual workers.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-VerificationSemanticSegmentation

Semantic segmentation adjustment - Treats each pixel in an image as a multi-class classification and treats pixel adjusted annotations from workers as "votes" for the correct label.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-AdjustmentSemanticSegmentation

Video Frame Object Detection Adjustment - Use this task type when you want workers to adjust bounding boxes that workers have added to video frames to classify and localize objects in a sequence of video frames.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-AdjustmentVideoObjectDetection

Video Frame Object Tracking Adjustment - Use this task type when you want workers to adjust bounding boxes that workers have added to video frames to track object movement across a sequence of video frames.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-AdjustmentVideoObjectTracking

3D point cloud object detection adjustment - Adjust 3D cuboids in a point cloud frame.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-Adjustment3DPointCloudObjectDetection

3D point cloud object tracking adjustment - Adjust 3D cuboids across a sequence of point cloud frames.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-Adjustment3DPointCloudObjectTracking

3D point cloud semantic segmentation adjustment - Adjust semantic segmentation masks in a 3D point cloud.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-Adjustment3DPointCloudSemanticSegmentation

Source

pub fn set_pre_human_task_lambda_arn(self, input: Option<String>) -> Self

The Amazon Resource Name (ARN) of a Lambda function that is run before a data object is sent to a human worker. Use this function to provide input to a custom labeling job.

For built-in task types, use one of the following Amazon SageMaker Ground Truth Lambda function ARNs for PreHumanTaskLambdaArn. For custom labeling workflows, see Pre-annotation Lambda.

Bounding box - Finds the most similar boxes from different workers based on the Jaccard index of the boxes.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-BoundingBox

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-BoundingBox

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-BoundingBox

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-BoundingBox

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-BoundingBox

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-BoundingBox

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-BoundingBox

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-BoundingBox

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-BoundingBox

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-BoundingBox

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-BoundingBox

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-BoundingBox

Image classification - Uses a variant of the Expectation Maximization approach to estimate the true class of an image based on annotations from individual workers.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-ImageMultiClass

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-ImageMultiClass

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-ImageMultiClass

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-ImageMultiClass

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-ImageMultiClass

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-ImageMultiClass

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-ImageMultiClass

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-ImageMultiClass

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-ImageMultiClass

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-ImageMultiClass

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-ImageMultiClass

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-ImageMultiClass

Multi-label image classification - Uses a variant of the Expectation Maximization approach to estimate the true classes of an image based on annotations from individual workers.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-ImageMultiClassMultiLabel

Semantic segmentation - Treats each pixel in an image as a multi-class classification and treats pixel annotations from workers as "votes" for the correct label.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-SemanticSegmentation

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-SemanticSegmentation

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-SemanticSegmentation

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-SemanticSegmentation

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-SemanticSegmentation

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-SemanticSegmentation

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-SemanticSegmentation

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-SemanticSegmentation

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-SemanticSegmentation

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-SemanticSegmentation

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-SemanticSegmentation

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-SemanticSegmentation

Text classification - Uses a variant of the Expectation Maximization approach to estimate the true class of text based on annotations from individual workers.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-TextMultiClass

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-TextMultiClass

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-TextMultiClass

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-TextMultiClass

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-TextMultiClass

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-TextMultiClass

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-TextMultiClass

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-TextMultiClass

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-TextMultiClass

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-TextMultiClass

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-TextMultiClass

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-TextMultiClass

Multi-label text classification - Uses a variant of the Expectation Maximization approach to estimate the true classes of text based on annotations from individual workers.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-TextMultiClassMultiLabel

Named entity recognition - Groups similar selections and calculates aggregate boundaries, resolving to most-assigned label.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-NamedEntityRecognition

Video Classification - Use this task type when you need workers to classify videos using predefined labels that you specify. Workers are shown videos and are asked to choose one label for each video.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-VideoMultiClass

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-VideoMultiClass

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-VideoMultiClass

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-VideoMultiClass

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-VideoMultiClass

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-VideoMultiClass

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-VideoMultiClass

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-VideoMultiClass

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-VideoMultiClass

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-VideoMultiClass

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-VideoMultiClass

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-VideoMultiClass

Video Frame Object Detection - Use this task type to have workers identify and locate objects in a sequence of video frames (images extracted from a video) using bounding boxes. For example, you can use this task to ask workers to identify and localize various objects in a series of video frames, such as cars, bikes, and pedestrians.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-VideoObjectDetection

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-VideoObjectDetection

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-VideoObjectDetection

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-VideoObjectDetection

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-VideoObjectDetection

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-VideoObjectDetection

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-VideoObjectDetection

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-VideoObjectDetection

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-VideoObjectDetection

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-VideoObjectDetection

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-VideoObjectDetection

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-VideoObjectDetection

Video Frame Object Tracking - Use this task type to have workers track the movement of objects in a sequence of video frames (images extracted from a video) using bounding boxes. For example, you can use this task to ask workers to track the movement of objects, such as cars, bikes, and pedestrians.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-VideoObjectTracking

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-VideoObjectTracking

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-VideoObjectTracking

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-VideoObjectTracking

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-VideoObjectTracking

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-VideoObjectTracking

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-VideoObjectTracking

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-VideoObjectTracking

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-VideoObjectTracking

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-VideoObjectTracking

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-VideoObjectTracking

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-VideoObjectTracking

3D Point Cloud Modalities

Use the following pre-annotation lambdas for 3D point cloud labeling modality tasks. See 3D Point Cloud Task types to learn more.

3D Point Cloud Object Detection - Use this task type when you want workers to classify objects in a 3D point cloud by drawing 3D cuboids around objects. For example, you can use this task type to ask workers to identify different types of objects in a point cloud, such as cars, bikes, and pedestrians.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-3DPointCloudObjectDetection

3D Point Cloud Object Tracking - Use this task type when you want workers to draw 3D cuboids around objects that appear in a sequence of 3D point cloud frames. For example, you can use this task type to ask workers to track the movement of vehicles across multiple point cloud frames.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-3DPointCloudObjectTracking

3D Point Cloud Semantic Segmentation - Use this task type when you want workers to create a point-level semantic segmentation masks by painting objects in a 3D point cloud using different colors where each color is assigned to one of the classes you specify.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-3DPointCloudSemanticSegmentation

Use the following ARNs for Label Verification and Adjustment Jobs

Use label verification and adjustment jobs to review and adjust labels. To learn more, see Verify and Adjust Labels .

Bounding box verification - Uses a variant of the Expectation Maximization approach to estimate the true class of verification judgement for bounding box labels based on annotations from individual workers.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-VerificationBoundingBox

Bounding box adjustment - Finds the most similar boxes from different workers based on the Jaccard index of the adjusted annotations.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-AdjustmentBoundingBox

Semantic segmentation verification - Uses a variant of the Expectation Maximization approach to estimate the true class of verification judgment for semantic segmentation labels based on annotations from individual workers.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-VerificationSemanticSegmentation

Semantic segmentation adjustment - Treats each pixel in an image as a multi-class classification and treats pixel adjusted annotations from workers as "votes" for the correct label.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-AdjustmentSemanticSegmentation

Video Frame Object Detection Adjustment - Use this task type when you want workers to adjust bounding boxes that workers have added to video frames to classify and localize objects in a sequence of video frames.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-AdjustmentVideoObjectDetection

Video Frame Object Tracking Adjustment - Use this task type when you want workers to adjust bounding boxes that workers have added to video frames to track object movement across a sequence of video frames.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-AdjustmentVideoObjectTracking

3D point cloud object detection adjustment - Adjust 3D cuboids in a point cloud frame.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-Adjustment3DPointCloudObjectDetection

3D point cloud object tracking adjustment - Adjust 3D cuboids across a sequence of point cloud frames.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-Adjustment3DPointCloudObjectTracking

3D point cloud semantic segmentation adjustment - Adjust semantic segmentation masks in a 3D point cloud.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-Adjustment3DPointCloudSemanticSegmentation

Source

pub fn get_pre_human_task_lambda_arn(&self) -> &Option<String>

The Amazon Resource Name (ARN) of a Lambda function that is run before a data object is sent to a human worker. Use this function to provide input to a custom labeling job.

For built-in task types, use one of the following Amazon SageMaker Ground Truth Lambda function ARNs for PreHumanTaskLambdaArn. For custom labeling workflows, see Pre-annotation Lambda.

Bounding box - Finds the most similar boxes from different workers based on the Jaccard index of the boxes.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-BoundingBox

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-BoundingBox

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-BoundingBox

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-BoundingBox

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-BoundingBox

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-BoundingBox

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-BoundingBox

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-BoundingBox

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-BoundingBox

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-BoundingBox

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-BoundingBox

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-BoundingBox

Image classification - Uses a variant of the Expectation Maximization approach to estimate the true class of an image based on annotations from individual workers.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-ImageMultiClass

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-ImageMultiClass

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-ImageMultiClass

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-ImageMultiClass

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-ImageMultiClass

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-ImageMultiClass

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-ImageMultiClass

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-ImageMultiClass

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-ImageMultiClass

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-ImageMultiClass

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-ImageMultiClass

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-ImageMultiClass

Multi-label image classification - Uses a variant of the Expectation Maximization approach to estimate the true classes of an image based on annotations from individual workers.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-ImageMultiClassMultiLabel

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-ImageMultiClassMultiLabel

Semantic segmentation - Treats each pixel in an image as a multi-class classification and treats pixel annotations from workers as "votes" for the correct label.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-SemanticSegmentation

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-SemanticSegmentation

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-SemanticSegmentation

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-SemanticSegmentation

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-SemanticSegmentation

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-SemanticSegmentation

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-SemanticSegmentation

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-SemanticSegmentation

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-SemanticSegmentation

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-SemanticSegmentation

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-SemanticSegmentation

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-SemanticSegmentation

Text classification - Uses a variant of the Expectation Maximization approach to estimate the true class of text based on annotations from individual workers.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-TextMultiClass

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-TextMultiClass

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-TextMultiClass

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-TextMultiClass

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-TextMultiClass

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-TextMultiClass

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-TextMultiClass

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-TextMultiClass

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-TextMultiClass

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-TextMultiClass

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-TextMultiClass

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-TextMultiClass

Multi-label text classification - Uses a variant of the Expectation Maximization approach to estimate the true classes of text based on annotations from individual workers.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-TextMultiClassMultiLabel

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-TextMultiClassMultiLabel

Named entity recognition - Groups similar selections and calculates aggregate boundaries, resolving to most-assigned label.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-NamedEntityRecognition

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-NamedEntityRecognition

Video Classification - Use this task type when you need workers to classify videos using predefined labels that you specify. Workers are shown videos and are asked to choose one label for each video.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-VideoMultiClass

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-VideoMultiClass

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-VideoMultiClass

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-VideoMultiClass

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-VideoMultiClass

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-VideoMultiClass

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-VideoMultiClass

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-VideoMultiClass

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-VideoMultiClass

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-VideoMultiClass

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-VideoMultiClass

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-VideoMultiClass

Video Frame Object Detection - Use this task type to have workers identify and locate objects in a sequence of video frames (images extracted from a video) using bounding boxes. For example, you can use this task to ask workers to identify and localize various objects in a series of video frames, such as cars, bikes, and pedestrians.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-VideoObjectDetection

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-VideoObjectDetection

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-VideoObjectDetection

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-VideoObjectDetection

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-VideoObjectDetection

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-VideoObjectDetection

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-VideoObjectDetection

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-VideoObjectDetection

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-VideoObjectDetection

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-VideoObjectDetection

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-VideoObjectDetection

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-VideoObjectDetection

Video Frame Object Tracking - Use this task type to have workers track the movement of objects in a sequence of video frames (images extracted from a video) using bounding boxes. For example, you can use this task to ask workers to track the movement of objects, such as cars, bikes, and pedestrians.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-VideoObjectTracking

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-VideoObjectTracking

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-VideoObjectTracking

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-VideoObjectTracking

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-VideoObjectTracking

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-VideoObjectTracking

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-VideoObjectTracking

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-VideoObjectTracking

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-VideoObjectTracking

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-VideoObjectTracking

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-VideoObjectTracking

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-VideoObjectTracking

3D Point Cloud Modalities

Use the following pre-annotation lambdas for 3D point cloud labeling modality tasks. See 3D Point Cloud Task types to learn more.

3D Point Cloud Object Detection - Use this task type when you want workers to classify objects in a 3D point cloud by drawing 3D cuboids around objects. For example, you can use this task type to ask workers to identify different types of objects in a point cloud, such as cars, bikes, and pedestrians.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-3DPointCloudObjectDetection

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-3DPointCloudObjectDetection

3D Point Cloud Object Tracking - Use this task type when you want workers to draw 3D cuboids around objects that appear in a sequence of 3D point cloud frames. For example, you can use this task type to ask workers to track the movement of vehicles across multiple point cloud frames.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-3DPointCloudObjectTracking

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-3DPointCloudObjectTracking

3D Point Cloud Semantic Segmentation - Use this task type when you want workers to create a point-level semantic segmentation masks by painting objects in a 3D point cloud using different colors where each color is assigned to one of the classes you specify.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-3DPointCloudSemanticSegmentation

Use the following ARNs for Label Verification and Adjustment Jobs

Use label verification and adjustment jobs to review and adjust labels. To learn more, see Verify and Adjust Labels .

Bounding box verification - Uses a variant of the Expectation Maximization approach to estimate the true class of verification judgement for bounding box labels based on annotations from individual workers.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-VerificationBoundingBox

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-VerificationBoundingBox

Bounding box adjustment - Finds the most similar boxes from different workers based on the Jaccard index of the adjusted annotations.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-AdjustmentBoundingBox

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-AdjustmentBoundingBox

Semantic segmentation verification - Uses a variant of the Expectation Maximization approach to estimate the true class of verification judgment for semantic segmentation labels based on annotations from individual workers.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-VerificationSemanticSegmentation

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-VerificationSemanticSegmentation

Semantic segmentation adjustment - Treats each pixel in an image as a multi-class classification and treats pixel adjusted annotations from workers as "votes" for the correct label.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-AdjustmentSemanticSegmentation

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-AdjustmentSemanticSegmentation

Video Frame Object Detection Adjustment - Use this task type when you want workers to adjust bounding boxes that workers have added to video frames to classify and localize objects in a sequence of video frames.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-AdjustmentVideoObjectDetection

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-AdjustmentVideoObjectDetection

Video Frame Object Tracking Adjustment - Use this task type when you want workers to adjust bounding boxes that workers have added to video frames to track object movement across a sequence of video frames.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-AdjustmentVideoObjectTracking

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-AdjustmentVideoObjectTracking

3D point cloud object detection adjustment - Adjust 3D cuboids in a point cloud frame.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-Adjustment3DPointCloudObjectDetection

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-Adjustment3DPointCloudObjectDetection

3D point cloud object tracking adjustment - Adjust 3D cuboids across a sequence of point cloud frames.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-Adjustment3DPointCloudObjectTracking

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-Adjustment3DPointCloudObjectTracking

3D point cloud semantic segmentation adjustment - Adjust semantic segmentation masks in a 3D point cloud.

  • arn:aws:lambda:us-east-1:432418664414:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:us-east-2:266458841044:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:us-west-2:081040173940:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:eu-west-1:568282634449:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-northeast-1:477331159723:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-southeast-2:454466003867:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-south-1:565803892007:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:eu-central-1:203001061592:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-northeast-2:845288260483:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:eu-west-2:487402164563:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ap-southeast-1:377565633583:function:PRE-Adjustment3DPointCloudSemanticSegmentation

  • arn:aws:lambda:ca-central-1:918755190332:function:PRE-Adjustment3DPointCloudSemanticSegmentation

Source

pub fn task_keywords(self, input: impl Into<String>) -> Self

Appends an item to task_keywords.

To override the contents of this collection use set_task_keywords.

Keywords used to describe the task so that workers on Amazon Mechanical Turk can discover the task.

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pub fn set_task_keywords(self, input: Option<Vec<String>>) -> Self

Keywords used to describe the task so that workers on Amazon Mechanical Turk can discover the task.

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pub fn get_task_keywords(&self) -> &Option<Vec<String>>

Keywords used to describe the task so that workers on Amazon Mechanical Turk can discover the task.

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pub fn task_title(self, input: impl Into<String>) -> Self

A title for the task for your human workers.

This field is required.
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pub fn set_task_title(self, input: Option<String>) -> Self

A title for the task for your human workers.

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pub fn get_task_title(&self) -> &Option<String>

A title for the task for your human workers.

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pub fn task_description(self, input: impl Into<String>) -> Self

A description of the task for your human workers.

This field is required.
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pub fn set_task_description(self, input: Option<String>) -> Self

A description of the task for your human workers.

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pub fn get_task_description(&self) -> &Option<String>

A description of the task for your human workers.

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pub fn number_of_human_workers_per_data_object(self, input: i32) -> Self

The number of human workers that will label an object.

This field is required.
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pub fn set_number_of_human_workers_per_data_object( self, input: Option<i32>, ) -> Self

The number of human workers that will label an object.

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pub fn get_number_of_human_workers_per_data_object(&self) -> &Option<i32>

The number of human workers that will label an object.

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pub fn task_time_limit_in_seconds(self, input: i32) -> Self

The amount of time that a worker has to complete a task.

If you create a custom labeling job, the maximum value for this parameter is 8 hours (28,800 seconds).

If you create a labeling job using a built-in task type the maximum for this parameter depends on the task type you use:

  • For image and text labeling jobs, the maximum is 8 hours (28,800 seconds).

  • For 3D point cloud and video frame labeling jobs, the maximum is 30 days (2952,000 seconds) for non-AL mode. For most users, the maximum is also 30 days.

This field is required.
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pub fn set_task_time_limit_in_seconds(self, input: Option<i32>) -> Self

The amount of time that a worker has to complete a task.

If you create a custom labeling job, the maximum value for this parameter is 8 hours (28,800 seconds).

If you create a labeling job using a built-in task type the maximum for this parameter depends on the task type you use:

  • For image and text labeling jobs, the maximum is 8 hours (28,800 seconds).

  • For 3D point cloud and video frame labeling jobs, the maximum is 30 days (2952,000 seconds) for non-AL mode. For most users, the maximum is also 30 days.

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pub fn get_task_time_limit_in_seconds(&self) -> &Option<i32>

The amount of time that a worker has to complete a task.

If you create a custom labeling job, the maximum value for this parameter is 8 hours (28,800 seconds).

If you create a labeling job using a built-in task type the maximum for this parameter depends on the task type you use:

  • For image and text labeling jobs, the maximum is 8 hours (28,800 seconds).

  • For 3D point cloud and video frame labeling jobs, the maximum is 30 days (2952,000 seconds) for non-AL mode. For most users, the maximum is also 30 days.

Source

pub fn task_availability_lifetime_in_seconds(self, input: i32) -> Self

The length of time that a task remains available for labeling by human workers. The default and maximum values for this parameter depend on the type of workforce you use.

  • If you choose the Amazon Mechanical Turk workforce, the maximum is 12 hours (43,200 seconds). The default is 6 hours (21,600 seconds).

  • If you choose a private or vendor workforce, the default value is 30 days (2592,000 seconds) for non-AL mode. For most users, the maximum is also 30 days.

Source

pub fn set_task_availability_lifetime_in_seconds( self, input: Option<i32>, ) -> Self

The length of time that a task remains available for labeling by human workers. The default and maximum values for this parameter depend on the type of workforce you use.

  • If you choose the Amazon Mechanical Turk workforce, the maximum is 12 hours (43,200 seconds). The default is 6 hours (21,600 seconds).

  • If you choose a private or vendor workforce, the default value is 30 days (2592,000 seconds) for non-AL mode. For most users, the maximum is also 30 days.

Source

pub fn get_task_availability_lifetime_in_seconds(&self) -> &Option<i32>

The length of time that a task remains available for labeling by human workers. The default and maximum values for this parameter depend on the type of workforce you use.

  • If you choose the Amazon Mechanical Turk workforce, the maximum is 12 hours (43,200 seconds). The default is 6 hours (21,600 seconds).

  • If you choose a private or vendor workforce, the default value is 30 days (2592,000 seconds) for non-AL mode. For most users, the maximum is also 30 days.

Source

pub fn max_concurrent_task_count(self, input: i32) -> Self

Defines the maximum number of data objects that can be labeled by human workers at the same time. Also referred to as batch size. Each object may have more than one worker at one time. The default value is 1000 objects. To increase the maximum value to 5000 objects, contact Amazon Web Services Support.

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pub fn set_max_concurrent_task_count(self, input: Option<i32>) -> Self

Defines the maximum number of data objects that can be labeled by human workers at the same time. Also referred to as batch size. Each object may have more than one worker at one time. The default value is 1000 objects. To increase the maximum value to 5000 objects, contact Amazon Web Services Support.

Source

pub fn get_max_concurrent_task_count(&self) -> &Option<i32>

Defines the maximum number of data objects that can be labeled by human workers at the same time. Also referred to as batch size. Each object may have more than one worker at one time. The default value is 1000 objects. To increase the maximum value to 5000 objects, contact Amazon Web Services Support.

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pub fn annotation_consolidation_config( self, input: AnnotationConsolidationConfig, ) -> Self

Configures how labels are consolidated across human workers.

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pub fn set_annotation_consolidation_config( self, input: Option<AnnotationConsolidationConfig>, ) -> Self

Configures how labels are consolidated across human workers.

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pub fn get_annotation_consolidation_config( &self, ) -> &Option<AnnotationConsolidationConfig>

Configures how labels are consolidated across human workers.

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pub fn public_workforce_task_price( self, input: PublicWorkforceTaskPrice, ) -> Self

The price that you pay for each task performed by an Amazon Mechanical Turk worker.

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pub fn set_public_workforce_task_price( self, input: Option<PublicWorkforceTaskPrice>, ) -> Self

The price that you pay for each task performed by an Amazon Mechanical Turk worker.

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pub fn get_public_workforce_task_price( &self, ) -> &Option<PublicWorkforceTaskPrice>

The price that you pay for each task performed by an Amazon Mechanical Turk worker.

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pub fn build(self) -> HumanTaskConfig

Consumes the builder and constructs a HumanTaskConfig.

Trait Implementations§

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impl Clone for HumanTaskConfigBuilder

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fn clone(&self) -> HumanTaskConfigBuilder

Returns a duplicate of the value. Read more
1.0.0 · Source§

fn clone_from(&mut self, source: &Self)

Performs copy-assignment from source. Read more
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impl Debug for HumanTaskConfigBuilder

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fn fmt(&self, f: &mut Formatter<'_>) -> Result

Formats the value using the given formatter. Read more
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impl Default for HumanTaskConfigBuilder

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fn default() -> HumanTaskConfigBuilder

Returns the “default value” for a type. Read more
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impl PartialEq for HumanTaskConfigBuilder

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fn eq(&self, other: &HumanTaskConfigBuilder) -> bool

Tests for self and other values to be equal, and is used by ==.
1.0.0 · Source§

fn ne(&self, other: &Rhs) -> bool

Tests for !=. The default implementation is almost always sufficient, and should not be overridden without very good reason.
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impl StructuralPartialEq for HumanTaskConfigBuilder

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where T: 'static + ?Sized,

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fn type_id(&self) -> TypeId

Gets the TypeId of self. Read more
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impl<T> Borrow<T> for T
where T: ?Sized,

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fn borrow(&self) -> &T

Immutably borrows from an owned value. Read more
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impl<T> BorrowMut<T> for T
where T: ?Sized,

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fn borrow_mut(&mut self) -> &mut T

Mutably borrows from an owned value. Read more
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impl<T> CloneToUninit for T
where T: Clone,

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unsafe fn clone_to_uninit(&self, dest: *mut u8)

🔬This is a nightly-only experimental API. (clone_to_uninit)
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fn instrument(self, span: Span) -> Instrumented<Self>

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Calls U::from(self).

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fn into_either_with<F>(self, into_left: F) -> Either<Self, Self>
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Converts self into a Left variant of Either<Self, Self> if into_left(&self) returns true. Converts self into a Right variant of Either<Self, Self> otherwise. Read more
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fn into_shared(self) -> Shared

Creates a shared type from an unshared type.
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impl<T> Paint for T
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Returns self with the fg() set to [Color :: BrightMagenta].

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Returns self with the fg() set to [Color :: BrightCyan].

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Returns self with the fg() set to [Color :: BrightWhite].

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Returns self with the bg() set to [Color :: Black].

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Returns self with the bg() set to [Color :: Red].

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Returns self with the bg() set to [Color :: Green].

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Returns self with the bg() set to [Color :: Yellow].

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Returns self with the bg() set to [Color :: Magenta].

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Enables the styling Attribute value.

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👎Deprecated since 1.0.1: renamed to resetting() due to conflicts with Vec::clear(). The clear() method will be removed in a future release.

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