def test_attach_wrong_framework(sagemaker_session):
    rjd = {
        'AlgorithmSpecification': {
            'TrainingInputMode': 'File',
            'TrainingImage': '1.dkr.ecr.us-west-2.amazonaws.com/sagemaker-tensorflow-py2-cpu:1.0.4'},
        'HyperParameters': {
            'sagemaker_submit_directory': '"s3://some/sourcedir.tar.gz"',
            'checkpoint_path': '"s3://other/1508872349"',
            'sagemaker_program': '"iris-dnn-classifier.py"',
            'sagemaker_enable_cloudwatch_metrics': 'false',
            'sagemaker_container_log_level': '"logging.INFO"',
            'training_steps': '100',
            'sagemaker_region': '"us-west-2"'},
        'RoleArn': 'arn:aws:iam::366:role/SageMakerRole',
        'ResourceConfig': {
            'VolumeSizeInGB': 30,
            'InstanceCount': 1,
            'InstanceType': 'ml.c4.xlarge'},
        'StoppingCondition': {'MaxRuntimeInSeconds': 24 * 60 * 60},
        'TrainingJobName': 'neo',
        'TrainingJobStatus': 'Completed',
        'OutputDataConfig': {'KmsKeyId': '', 'S3OutputPath': 's3://place/output/neo'},
        'TrainingJobOutput': {'S3TrainingJobOutput': 's3://here/output.tar.gz'}}
    sagemaker_session.sagemaker_client.describe_training_job = Mock(name='describe_training_job', return_value=rjd)

    with pytest.raises(ValueError) as error:
        MXNet.attach(training_job_name='neo', sagemaker_session=sagemaker_session)
    assert "didn't use image for requested framework" in str(error)
Beispiel #2
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def test_attach_wrong_framework(sagemaker_session):
    rjd = {
        "AlgorithmSpecification": {
            "TrainingInputMode": "File",
            "TrainingImage": "1.dkr.ecr.us-west-2.amazonaws.com/sagemaker-tensorflow-py2-cpu:1.0.4",
        },
        "HyperParameters": {
            "sagemaker_submit_directory": '"s3://some/sourcedir.tar.gz"',
            "checkpoint_path": '"s3://other/1508872349"',
            "sagemaker_program": '"iris-dnn-classifier.py"',
            "sagemaker_container_log_level": '"logging.INFO"',
            "training_steps": "100",
            "sagemaker_region": '"us-west-2"',
        },
        "RoleArn": "arn:aws:iam::366:role/SageMakerRole",
        "ResourceConfig": {
            "VolumeSizeInGB": 30,
            "InstanceCount": 1,
            "InstanceType": "ml.c4.xlarge",
        },
        "StoppingCondition": {"MaxRuntimeInSeconds": 24 * 60 * 60},
        "TrainingJobName": "neo",
        "TrainingJobStatus": "Completed",
        "TrainingJobArn": "arn:aws:sagemaker:us-west-2:336:training-job/neo",
        "OutputDataConfig": {"KmsKeyId": "", "S3OutputPath": "s3://place/output/neo"},
        "TrainingJobOutput": {"S3TrainingJobOutput": "s3://here/output.tar.gz"},
    }
    sagemaker_session.sagemaker_client.describe_training_job = Mock(
        name="describe_training_job", return_value=rjd
    )

    with pytest.raises(ValueError) as error:
        MXNet.attach(training_job_name="neo", sagemaker_session=sagemaker_session)
    assert "didn't use image for requested framework" in str(error)
def test_attach_wrong_framework(sagemaker_session):
    rjd = {
        'AlgorithmSpecification': {
            'TrainingInputMode': 'File',
            'TrainingImage': '1.dkr.ecr.us-west-2.amazonaws.com/sagemaker-tensorflow-py2-cpu:1.0.4'},
        'HyperParameters': {
            'sagemaker_submit_directory': '"s3://some/sourcedir.tar.gz"',
            'checkpoint_path': '"s3://other/1508872349"',
            'sagemaker_program': '"iris-dnn-classifier.py"',
            'sagemaker_enable_cloudwatch_metrics': 'false',
            'sagemaker_container_log_level': '"logging.INFO"',
            'training_steps': '100',
            'sagemaker_region': '"us-west-2"'},
        'RoleArn': 'arn:aws:iam::366:role/SageMakerRole',
        'ResourceConfig': {
            'VolumeSizeInGB': 30,
            'InstanceCount': 1,
            'InstanceType': 'ml.c4.xlarge'},
        'StoppingCondition': {'MaxRuntimeInSeconds': 24 * 60 * 60},
        'TrainingJobName': 'neo',
        'TrainingJobStatus': 'Completed',
        'TrainingJobArn': 'arn:aws:sagemaker:us-west-2:336:training-job/neo',
        'OutputDataConfig': {'KmsKeyId': '', 'S3OutputPath': 's3://place/output/neo'},
        'TrainingJobOutput': {'S3TrainingJobOutput': 's3://here/output.tar.gz'}}
    sagemaker_session.sagemaker_client.describe_training_job = Mock(name='describe_training_job', return_value=rjd)

    with pytest.raises(ValueError) as error:
        MXNet.attach(training_job_name='neo', sagemaker_session=sagemaker_session)
    assert "didn't use image for requested framework" in str(error)
Beispiel #4
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def test_attach_custom_image(sagemaker_session):
    training_image = "ubuntu:latest"
    returned_job_description = {
        "AlgorithmSpecification": {"TrainingInputMode": "File", "TrainingImage": training_image},
        "HyperParameters": {
            "sagemaker_submit_directory": '"s3://some/sourcedir.tar.gz"',
            "sagemaker_program": '"iris-dnn-classifier.py"',
            "sagemaker_s3_uri_training": '"sagemaker-3/integ-test-data/tf_iris"',
            "sagemaker_container_log_level": '"logging.INFO"',
            "sagemaker_job_name": '"neo"',
            "training_steps": "100",
            "sagemaker_region": '"us-west-2"',
        },
        "RoleArn": "arn:aws:iam::366:role/SageMakerRole",
        "ResourceConfig": {
            "VolumeSizeInGB": 30,
            "InstanceCount": 1,
            "InstanceType": "ml.c4.xlarge",
        },
        "StoppingCondition": {"MaxRuntimeInSeconds": 24 * 60 * 60},
        "TrainingJobName": "neo",
        "TrainingJobStatus": "Completed",
        "TrainingJobArn": "arn:aws:sagemaker:us-west-2:336:training-job/neo",
        "OutputDataConfig": {"KmsKeyId": "", "S3OutputPath": "s3://place/output/neo"},
        "TrainingJobOutput": {"S3TrainingJobOutput": "s3://here/output.tar.gz"},
    }
    sagemaker_session.sagemaker_client.describe_training_job = Mock(
        name="describe_training_job", return_value=returned_job_description
    )

    estimator = MXNet.attach(training_job_name="neo", sagemaker_session=sagemaker_session)
    assert estimator.image_uri == training_image
    assert estimator.training_image_uri() == training_image
def test_attach_custom_image(sagemaker_session):
    training_image = 'ubuntu:latest'
    returned_job_description = {'AlgorithmSpecification': {
        'TrainingInputMode': 'File',
        'TrainingImage': training_image},
        'HyperParameters': {
            'sagemaker_submit_directory': '"s3://some/sourcedir.tar.gz"',
            'sagemaker_program': '"iris-dnn-classifier.py"',
            'sagemaker_s3_uri_training': '"sagemaker-3/integ-test-data/tf_iris"',
            'sagemaker_enable_cloudwatch_metrics': 'false',
            'sagemaker_container_log_level': '"logging.INFO"',
            'sagemaker_job_name': '"neo"',
            'training_steps': '100',
            'sagemaker_region': '"us-west-2"'},
        'RoleArn': 'arn:aws:iam::366:role/SageMakerRole',
        'ResourceConfig': {
            'VolumeSizeInGB': 30,
            'InstanceCount': 1,
            'InstanceType': 'ml.c4.xlarge'},
        'StoppingCondition': {'MaxRuntimeInSeconds': 24 * 60 * 60},
        'TrainingJobName': 'neo',
        'TrainingJobStatus': 'Completed',
        'OutputDataConfig': {'KmsKeyId': '', 'S3OutputPath': 's3://place/output/neo'},
        'TrainingJobOutput': {'S3TrainingJobOutput': 's3://here/output.tar.gz'}}
    sagemaker_session.sagemaker_client.describe_training_job = Mock(name='describe_training_job',
                                                                    return_value=returned_job_description)

    estimator = MXNet.attach(training_job_name='neo', sagemaker_session=sagemaker_session)
    assert estimator.image_name == training_image
    assert estimator.train_image() == training_image
def test_attach_custom_image(sagemaker_session):
    training_image = 'ubuntu:latest'
    returned_job_description = {'AlgorithmSpecification': {
        'TrainingInputMode': 'File',
        'TrainingImage': training_image},
        'HyperParameters': {
            'sagemaker_submit_directory': '"s3://some/sourcedir.tar.gz"',
            'sagemaker_program': '"iris-dnn-classifier.py"',
            'sagemaker_s3_uri_training': '"sagemaker-3/integ-test-data/tf_iris"',
            'sagemaker_enable_cloudwatch_metrics': 'false',
            'sagemaker_container_log_level': '"logging.INFO"',
            'sagemaker_job_name': '"neo"',
            'training_steps': '100',
            'sagemaker_region': '"us-west-2"'},
        'RoleArn': 'arn:aws:iam::366:role/SageMakerRole',
        'ResourceConfig': {
            'VolumeSizeInGB': 30,
            'InstanceCount': 1,
            'InstanceType': 'ml.c4.xlarge'},
        'StoppingCondition': {'MaxRuntimeInSeconds': 24 * 60 * 60},
        'TrainingJobName': 'neo',
        'TrainingJobStatus': 'Completed',
        'TrainingJobArn': 'arn:aws:sagemaker:us-west-2:336:training-job/neo',
        'OutputDataConfig': {'KmsKeyId': '', 'S3OutputPath': 's3://place/output/neo'},
        'TrainingJobOutput': {'S3TrainingJobOutput': 's3://here/output.tar.gz'}}
    sagemaker_session.sagemaker_client.describe_training_job = Mock(name='describe_training_job',
                                                                    return_value=returned_job_description)

    estimator = MXNet.attach(training_job_name='neo', sagemaker_session=sagemaker_session)
    assert estimator.image_name == training_image
    assert estimator.train_image() == training_image
def test_attach(sagemaker_session, mxnet_version):
    training_image = '1.dkr.ecr.us-west-2.amazonaws.com/sagemaker-mxnet-py2-cpu:{}-cpu-py2'.format(
        mxnet_version)
    returned_job_description = {
        'AlgorithmSpecification': {
            'TrainingInputMode': 'File',
            'TrainingImage': training_image
        },
        'HyperParameters': {
            'sagemaker_submit_directory': '"s3://some/sourcedir.tar.gz"',
            'sagemaker_program': '"iris-dnn-classifier.py"',
            'sagemaker_s3_uri_training':
            '"sagemaker-3/integ-test-data/tf_iris"',
            'sagemaker_enable_cloudwatch_metrics': 'false',
            'sagemaker_container_log_level': '"logging.INFO"',
            'sagemaker_job_name': '"neo"',
            'training_steps': '100',
            'sagemaker_region': '"us-west-2"'
        },
        'RoleArn': 'arn:aws:iam::366:role/SageMakerRole',
        'ResourceConfig': {
            'VolumeSizeInGB': 30,
            'InstanceCount': 1,
            'InstanceType': 'ml.c4.xlarge'
        },
        'StoppingCondition': {
            'MaxRuntimeInSeconds': 24 * 60 * 60
        },
        'TrainingJobName': 'neo',
        'TrainingJobStatus': 'Completed',
        'TrainingJobArn': 'arn:aws:sagemaker:us-west-2:336:training-job/neo',
        'OutputDataConfig': {
            'KmsKeyId': '',
            'S3OutputPath': 's3://place/output/neo'
        },
        'TrainingJobOutput': {
            'S3TrainingJobOutput': 's3://here/output.tar.gz'
        }
    }
    sagemaker_session.sagemaker_client.describe_training_job = Mock(
        name='describe_training_job', return_value=returned_job_description)

    estimator = MXNet.attach(training_job_name='neo',
                             sagemaker_session=sagemaker_session)
    assert estimator.latest_training_job.job_name == 'neo'
    assert estimator.py_version == 'py2'
    assert estimator.framework_version == mxnet_version
    assert estimator.role == 'arn:aws:iam::366:role/SageMakerRole'
    assert estimator.train_instance_count == 1
    assert estimator.train_max_run == 24 * 60 * 60
    assert estimator.input_mode == 'File'
    assert estimator.base_job_name == 'neo'
    assert estimator.output_path == 's3://place/output/neo'
    assert estimator.output_kms_key == ''
    assert estimator.hyperparameters()['training_steps'] == '100'
    assert estimator.source_dir == 's3://some/sourcedir.tar.gz'
    assert estimator.entry_point == 'iris-dnn-classifier.py'
    assert estimator.tags == LIST_TAGS_RESULT['Tags']
Beispiel #8
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def test_attach(sagemaker_session, mxnet_version):
    training_image = "1.dkr.ecr.us-west-2.amazonaws.com/sagemaker-mxnet-py2-cpu:{}-cpu-py2".format(
        mxnet_version)
    returned_job_description = {
        "AlgorithmSpecification": {
            "TrainingInputMode": "File",
            "TrainingImage": training_image
        },
        "HyperParameters": {
            "sagemaker_submit_directory": '"s3://some/sourcedir.tar.gz"',
            "sagemaker_program": '"iris-dnn-classifier.py"',
            "sagemaker_s3_uri_training":
            '"sagemaker-3/integ-test-data/tf_iris"',
            "sagemaker_enable_cloudwatch_metrics": "false",
            "sagemaker_container_log_level": '"logging.INFO"',
            "sagemaker_job_name": '"neo"',
            "training_steps": "100",
            "sagemaker_region": '"us-west-2"',
        },
        "RoleArn": "arn:aws:iam::366:role/SageMakerRole",
        "ResourceConfig": {
            "VolumeSizeInGB": 30,
            "InstanceCount": 1,
            "InstanceType": "ml.c4.xlarge",
        },
        "StoppingCondition": {
            "MaxRuntimeInSeconds": 24 * 60 * 60
        },
        "TrainingJobName": "neo",
        "TrainingJobStatus": "Completed",
        "TrainingJobArn": "arn:aws:sagemaker:us-west-2:336:training-job/neo",
        "OutputDataConfig": {
            "KmsKeyId": "",
            "S3OutputPath": "s3://place/output/neo"
        },
        "TrainingJobOutput": {
            "S3TrainingJobOutput": "s3://here/output.tar.gz"
        },
    }
    sagemaker_session.sagemaker_client.describe_training_job = Mock(
        name="describe_training_job", return_value=returned_job_description)

    estimator = MXNet.attach(training_job_name="neo",
                             sagemaker_session=sagemaker_session)
    assert estimator.latest_training_job.job_name == "neo"
    assert estimator.py_version == "py2"
    assert estimator.framework_version == mxnet_version
    assert estimator.role == "arn:aws:iam::366:role/SageMakerRole"
    assert estimator.train_instance_count == 1
    assert estimator.train_max_run == 24 * 60 * 60
    assert estimator.input_mode == "File"
    assert estimator.base_job_name == "neo"
    assert estimator.output_path == "s3://place/output/neo"
    assert estimator.output_kms_key == ""
    assert estimator.hyperparameters()["training_steps"] == "100"
    assert estimator.source_dir == "s3://some/sourcedir.tar.gz"
    assert estimator.entry_point == "iris-dnn-classifier.py"
    assert estimator.tags == LIST_TAGS_RESULT["Tags"]
def test_attach(sagemaker_session, mxnet_version):
    training_image = '1.dkr.ecr.us-west-2.amazonaws.com/sagemaker-mxnet-py2-cpu:{}-cpu-py2'.format(mxnet_version)
    returned_job_description = {
        'AlgorithmSpecification': {
            'TrainingInputMode': 'File',
            'TrainingImage': training_image
        },
        'HyperParameters': {
            'sagemaker_submit_directory': '"s3://some/sourcedir.tar.gz"',
            'sagemaker_program': '"iris-dnn-classifier.py"',
            'sagemaker_s3_uri_training': '"sagemaker-3/integ-test-data/tf_iris"',
            'sagemaker_enable_cloudwatch_metrics': 'false',
            'sagemaker_container_log_level': '"logging.INFO"',
            'sagemaker_job_name': '"neo"',
            'training_steps': '100',
            'sagemaker_region': '"us-west-2"'
        },
        'RoleArn': 'arn:aws:iam::366:role/SageMakerRole',
        'ResourceConfig': {
            'VolumeSizeInGB': 30,
            'InstanceCount': 1,
            'InstanceType': 'ml.c4.xlarge'
        },
        'StoppingCondition': {'MaxRuntimeInSeconds': 24 * 60 * 60},
        'TrainingJobName': 'neo',
        'TrainingJobStatus': 'Completed',
        'OutputDataConfig': {
            'KmsKeyId': '',
            'S3OutputPath': 's3://place/output/neo'
        },
        'TrainingJobOutput': {'S3TrainingJobOutput': 's3://here/output.tar.gz'}
    }
    sagemaker_session.sagemaker_client.describe_training_job = Mock(name='describe_training_job',
                                                                    return_value=returned_job_description)

    estimator = MXNet.attach(training_job_name='neo', sagemaker_session=sagemaker_session)
    assert estimator.latest_training_job.job_name == 'neo'
    assert estimator.py_version == 'py2'
    assert estimator.framework_version == mxnet_version
    assert estimator.role == 'arn:aws:iam::366:role/SageMakerRole'
    assert estimator.train_instance_count == 1
    assert estimator.train_max_run == 24 * 60 * 60
    assert estimator.input_mode == 'File'
    assert estimator.base_job_name == 'neo'
    assert estimator.output_path == 's3://place/output/neo'
    assert estimator.output_kms_key == ''
    assert estimator.hyperparameters()['training_steps'] == '100'
    assert estimator.source_dir == 's3://some/sourcedir.tar.gz'
    assert estimator.entry_point == 'iris-dnn-classifier.py'
Beispiel #10
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def test_attach_no_job_name(sagemaker_session):
    with pytest.raises(ValueError) as error:
        MXNet.attach(training_job_name=None,
                     sagemaker_session=sagemaker_session)
    assert "must specify training_job name" in str(error)