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And that’s really key for taking data science experiments into production. It won’t be a long demo, it’ll be a very quick demo of what you can do and how you can operationalize stuff in Snowflake. And we view Snowflake as a solid data foundation to enable mature data science machine learning practices.
And that’s really key for taking data science experiments into production. It won’t be a long demo, it’ll be a very quick demo of what you can do and how you can operationalize stuff in Snowflake. And we view Snowflake as a solid data foundation to enable mature data science machine learning practices.
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