Create Lambda Functions for a Custom Labeling Workflow - Amazon SageMaker
Services or capabilities described in Amazon Web Services documentation might vary by Region. To see the differences applicable to the China Regions, see Getting Started with Amazon Web Services in China (PDF).

Create Lambda Functions for a Custom Labeling Workflow

You can create a Lambda function using the Lambda console, the Amazon CLI, or an Amazon SDK in a supported programming language of your choice. Use the Amazon Lambda Developer Guide to learn more about each of these options:

Ground Truth provides pre-annotation and post-annotation templates through an Amazon Serverless Application Repository (SAR) recipe. Use the following procedure to select the Ground Truth recipe in the Lambda console.

Use the Ground Truth SAR recipe to create pre-annotation and post-annotation Lambda functions:
  1. Open the Functions page on the Lambda console.

  2. Select Create function.

  3. Select Browse serverless app repository.

  4. In the search text box, enter aws-sagemaker-ground-truth-recipe and select that app.

  5. Select Deploy. The app may take a couple of minutes to deploy.

    Once the app deploys, two functions appear in the Functions section of the Lambda console: serverlessrepo-aws-sagema-GtRecipePreHumanTaskFunc-<id> and serverlessrepo-aws-sagema-GtRecipeAnnotationConsol-<id>.

  6. Select one of these functions and add your custom logic in the Code section.

  7. When you are finished making changes, select Deploy to deploy them.