Simplify access control and auditing for Amazon SageMaker Studio using trusted identity propagation
Seeded from: AWS ML Blog In this post, we explore how to enable and use trusted identity propagation in Amazon SageMaker Studio, which allows organizations to simplify access management by granting permissions to existing AWS IAM Identity Center identities. The solution demonstrates how to implement fine-grained access cont Read more: https://aws.amazon.com/blogs/machine-learning/simplify-access-control-and-auditing-for-amazon-sagemaker-studio-using-trusted-identity-propagation/
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