Managing Your ML Development Lifecycle with Amazon SageMaker - AWS Webinar - Hebrew

January 13, 2020
SageMaker is an end-to-end ML framework. We'll review how SageMaker supports data scientists development lifecycle including, integration with Git source control, Notebook life-cycle, SageMaker Search for reviewing past experiments, tracking model lineage, hyper parameters optimization, etc. During the session we'll use the tools above, and integrate them with an end-to-end ML pipeline.
Previous Video
Personalize, Forcast, and Textract - AWS Webinar - Hebrew
Personalize, Forcast, and Textract - AWS Webinar - Hebrew

In this session we'll introduce the 3 new AI services that were announced in re:invent 2018: Amazon Forecas...

Next Video
Running your ML code in Amazon Sagemaker - AWS Webinar - Hebrew
Running your ML code in Amazon Sagemaker - AWS Webinar - Hebrew

We'll explain and demo interactively how to run your favorite ML Framework script/notebook using Amazon Sag...