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Review: Snowflake aces Python machine learning

August 4, 2022

Via: InfoWorld

Last year I wrote about eight databases that support in-database machine learning. In-database machine learning is important because it brings the machine learning processing to the data, which is much more efficient for big data, rather than forcing data scientists to extract subsets of the data to where the machine learning training and inference run.

These databases each work in a different way:

  • Amazon Redshift ML uses SageMaker Autopilot to automatically create prediction models from the data you specify via a SQL statement, which is extracted to an Amazon S3 bucket. The best prediction function found is registered in the Redshift cluster.

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