As machine learning becomes mainstream, analysts are increasingly trying to apply it to their data to improve business outcomes. Amazon SageMaker Canvas expands access to machine learning by providing business analysts with a visual point-and-click interface that allows them to generate accurate ML predictions on their own. In this session, you will learn more about AWS low-code & no-code ML services, and how you can enable collaboration between the business and the data science teams with Amazon SageMaker.
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