[ aws . rekognition ]
Creates a new version of a model and begins training. Models are managed as part of an Amazon Rekognition Custom Labels project. The response from CreateProjectVersion
is an Amazon Resource Name (ARN) for the version of the model.
Training uses the training and test datasets associated with the project. For more information, see Creating training and test dataset in the Amazon Rekognition Custom Labels Developer Guide .
Note
You can train a model in a project that doesn’t have associated datasets by specifying manifest files in the TrainingData
and TestingData
fields.
If you open the console after training a model with manifest files, Amazon Rekognition Custom Labels creates the datasets for you using the most recent manifest files. You can no longer train a model version for the project by specifying manifest files.
Instead of training with a project without associated datasets, we recommend that you use the manifest files to create training and test datasets for the project.
Training takes a while to complete. You can get the current status by calling DescribeProjectVersions . Training completed successfully if the value of the Status
field is TRAINING_COMPLETED
.
If training fails, see Debugging a failed model training in the Amazon Rekognition Custom Labels developer guide.
Once training has successfully completed, call DescribeProjectVersions to get the training results and evaluate the model. For more information, see Improving a trained Amazon Rekognition Custom Labels model in the Amazon Rekognition Custom Labels developers guide.
After evaluating the model, you start the model by calling StartProjectVersion .
This operation requires permissions to perform the rekognition:CreateProjectVersion
action.
See also: AWS API Documentation
See ‘aws help’ for descriptions of global parameters.
create-project-version
--project-arn <value>
--version-name <value>
--output-config <value>
[--training-data <value>]
[--testing-data <value>]
[--tags <value>]
[--kms-key-id <value>]
[--cli-input-json | --cli-input-yaml]
[--generate-cli-skeleton <value>]
--project-arn
(string)
The ARN of the Amazon Rekognition Custom Labels project that manages the model that you want to train.
--version-name
(string)
A name for the version of the model. This value must be unique.
--output-config
(structure)
The Amazon S3 bucket location to store the results of training. The S3 bucket can be in any AWS account as long as the caller has
s3:PutObject
permissions on the S3 bucket.S3Bucket -> (string)
The S3 bucket where training output is placed.
S3KeyPrefix -> (string)
The prefix applied to the training output files.
Shorthand Syntax:
S3Bucket=string,S3KeyPrefix=string
JSON Syntax:
{
"S3Bucket": "string",
"S3KeyPrefix": "string"
}
--training-data
(structure)
Specifies an external manifest that the services uses to train the model. If you specify
TrainingData
you must also specifyTestingData
. The project must not have any associated datasets.Assets -> (list)
A Sagemaker GroundTruth manifest file that contains the training images (assets).
(structure)
Assets are the images that you use to train and evaluate a model version. Assets can also contain validation information that you use to debug a failed model training.
GroundTruthManifest -> (structure)
The S3 bucket that contains an Amazon Sagemaker Ground Truth format manifest file.
S3Object -> (structure)
Provides the S3 bucket name and object name.
The region for the S3 bucket containing the S3 object must match the region you use for Amazon Rekognition operations.
For Amazon Rekognition to process an S3 object, the user must have permission to access the S3 object. For more information, see How Amazon Rekognition works with IAM in the Amazon Rekognition Developer Guide.
Bucket -> (string)
Name of the S3 bucket.
Name -> (string)
S3 object key name.
Version -> (string)
If the bucket is versioning enabled, you can specify the object version.
JSON Syntax:
{
"Assets": [
{
"GroundTruthManifest": {
"S3Object": {
"Bucket": "string",
"Name": "string",
"Version": "string"
}
}
}
...
]
}
--testing-data
(structure)
Specifies an external manifest that the service uses to test the model. If you specify
TestingData
you must also specifyTrainingData
. The project must not have any associated datasets.Assets -> (list)
The assets used for testing.
(structure)
Assets are the images that you use to train and evaluate a model version. Assets can also contain validation information that you use to debug a failed model training.
GroundTruthManifest -> (structure)
The S3 bucket that contains an Amazon Sagemaker Ground Truth format manifest file.
S3Object -> (structure)
Provides the S3 bucket name and object name.
The region for the S3 bucket containing the S3 object must match the region you use for Amazon Rekognition operations.
For Amazon Rekognition to process an S3 object, the user must have permission to access the S3 object. For more information, see How Amazon Rekognition works with IAM in the Amazon Rekognition Developer Guide.
Bucket -> (string)
Name of the S3 bucket.
Name -> (string)
S3 object key name.
Version -> (string)
If the bucket is versioning enabled, you can specify the object version.
AutoCreate -> (boolean)
If specified, Amazon Rekognition Custom Labels temporarily splits the training dataset (80%) to create a test dataset (20%) for the training job. After training completes, the test dataset is not stored and the training dataset reverts to its previous size.
JSON Syntax:
{
"Assets": [
{
"GroundTruthManifest": {
"S3Object": {
"Bucket": "string",
"Name": "string",
"Version": "string"
}
}
}
...
],
"AutoCreate": true|false
}
--tags
(map)
A set of tags (key-value pairs) that you want to attach to the model.
key -> (string)
value -> (string)
Shorthand Syntax:
KeyName1=string,KeyName2=string
JSON Syntax:
{"string": "string"
...}
--kms-key-id
(string)
The identifier for your AWS Key Management Service key (AWS KMS key). You can supply the Amazon Resource Name (ARN) of your KMS key, the ID of your KMS key, an alias for your KMS key, or an alias ARN. The key is used to encrypt training and test images copied into the service for model training. Your source images are unaffected. The key is also used to encrypt training results and manifest files written to the output Amazon S3 bucket (
OutputConfig
).If you choose to use your own KMS key, you need the following permissions on the KMS key.
kms:CreateGrant
kms:DescribeKey
kms:GenerateDataKey
kms:Decrypt
If you don’t specify a value for
KmsKeyId
, images copied into the service are encrypted using a key that AWS owns and manages.
--cli-input-json
| --cli-input-yaml
(string)
Reads arguments from the JSON string provided. The JSON string follows the format provided by --generate-cli-skeleton
. If other arguments are provided on the command line, those values will override the JSON-provided values. It is not possible to pass arbitrary binary values using a JSON-provided value as the string will be taken literally. This may not be specified along with --cli-input-yaml
.
--generate-cli-skeleton
(string)
Prints a JSON skeleton to standard output without sending an API request. If provided with no value or the value input
, prints a sample input JSON that can be used as an argument for --cli-input-json
. Similarly, if provided yaml-input
it will print a sample input YAML that can be used with --cli-input-yaml
. If provided with the value output
, it validates the command inputs and returns a sample output JSON for that command.
See ‘aws help’ for descriptions of global parameters.
ProjectVersionArn -> (string)
The ARN of the model version that was created. Use
DescribeProjectVersion
to get the current status of the training operation.