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After Presenting Clearml To My Team, I Got The Question "We'Re Already On Aws, Why Not Use Sagemaker?" Tbh, I'Ve Never Gone Through The Ml Workflow With Sagemaker. The Only Advantage I Could Think Of Is That We Can Use Our On-Prem Machines For Training,


@<1523701205467926528:profile|AgitatedDove14> you beautiful person, this is terrific! I do believe SageMaker has some nice monitoring/data drift capabilities that seem interesting, but these points you have here will be a fantastic starting point for my team's analysis of the products. I think this will help balance some of the over-enthusiasm towards using the native AWS solution.

  
  
Posted one year ago
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one year ago
one year ago