Create Training Dataset
| cleanroomsml_create_training_dataset | R Documentation | 
Defines the information necessary to create a training dataset¶
Description¶
Defines the information necessary to create a training dataset. In Clean
Rooms ML, the TrainingDataset is metadata that points to a Glue table,
which is read only during AudienceModel creation.
Usage¶
cleanroomsml_create_training_dataset(name, roleArn, trainingData, tags,
  description)
Arguments¶
| name | [required] The name of the training dataset. This name must be unique in your account and region. | 
| roleArn | [required] The ARN of the IAM role that Clean Rooms ML can assume
to read the data referred to in the  Passing a role across AWS accounts is not allowed. If you pass a role
that isn't in your account, you get an
 | 
| trainingData | [required] An array of information that lists the Dataset objects, which specifies the dataset type and details on its location and schema. You must provide a role that has read access to these tables. | 
| tags | The optional metadata that you apply to the resource to help you categorize and organize them. Each tag consists of a key and an optional value, both of which you define. The following basic restrictions apply to tags: 
 | 
| description | The description of the training dataset. | 
Value¶
A list with the following syntax:
list(
  trainingDatasetArn = "string"
)
Request syntax¶
svc$create_training_dataset(
  name = "string",
  roleArn = "string",
  trainingData = list(
    list(
      type = "INTERACTIONS",
      inputConfig = list(
        schema = list(
          list(
            columnName = "string",
            columnTypes = list(
              "USER_ID"|"ITEM_ID"|"TIMESTAMP"|"CATEGORICAL_FEATURE"|"NUMERICAL_FEATURE"
            )
          )
        ),
        dataSource = list(
          glueDataSource = list(
            tableName = "string",
            databaseName = "string",
            catalogId = "string"
          )
        )
      )
    )
  ),
  tags = list(
    "string"
  ),
  description = "string"
)