All Projects → apac-ml-tfc → sagemaker-workshop-101

apac-ml-tfc / sagemaker-workshop-101

Licence: MIT License
Hands-on demonstrations for data scientists exploring SageMaker

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We have moved! 🏡

Thanks for your interest in the SageMaker 101 workshop. This content is now available as an AWS sample at:

https://github.com/aws-samples/sagemaker-101-workshop

...and ongoing development will happen there also. So please update your bookmarks, and we'll see you at our new home!

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