0

My SKLearn estimator is:

from sagemaker.sklearn.estimator import SKLearn
FRAMEWORK_VERSION = "0.23-1"
script_path = 'scikit-iris.py'
sklearn = SKLearn(
    entry_point=script_path,
    framework_version=FRAMEWORK_VERSION,
    train_instance_type="ml.c4.xlarge",
    role=role,
    sagemaker_session=sagemaker_session,
    output_path='s3://My-bucket/sklearn-iris-artifacts',
    hyperparameters={'max_leaf_nodes': 30})

Fitting model:

sklearn.fit({'train': train_s3})

But when i am trying to deploy model i am getting Access Denied when calling the CreateBucket operatio. Could someone help me why it is trying to create bucket when already output_path is present(Arifacts location).

Below is my deployment code:

predictor = sklearn.deploy(initial_instance_count=1,
                           instance_type="ml.m5.xlarge")
3
  • Most likely the role that you running SageMaker as, doesn't have permissions to create a bucket. Go to IAM find the role used by SageMaker in your case and make sure it has appropriate permissions to S3.
    – Tommy
    Sep 23 '20 at 22:04
  • 1
    I have already give the output path where my artifacts are stored. Could you please explain me why it is tying to create new bucket? And when I deployed model using sagemaker inbuilt algorithm it worked fine. without any error. Sep 24 '20 at 5:24
  • Which version of the SageMaker Python SDK are you using? Can you try upgrading and see if the issue persists? pip install --upgrade sagemaker
    – ajaykarpur
    Nov 10 '20 at 0:02

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Browse other questions tagged or ask your own question.