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Snowflake ML Powered Functions: Forecasting, Anomaly Detection, Contribution Explorer 

Snowflake Developers
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Snowflake has released a set of ML-Powered Functions that help analysts and busy decision makers harness the power of ML without the chore of going through the full ML lifecycle. Snowflake Product Manager Dinesh Kulkarni introduces forecasting, anomaly detection, and contribution explorer ,and walks you through demos that you can try on your own as well.
Check out the code at: github.com/Sno...

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7 сен 2024

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Комментарии : 5   
@marketerlavluu
@marketerlavluu Год назад
❤❤❤❤
@iravashisht3527
@iravashisht3527 7 месяцев назад
Can we have multiple target columns?
@rakesh7464
@rakesh7464 Год назад
Is the raw code available anywhere for use?
@snowflakedevelopers
@snowflakedevelopers Год назад
Yes, please see: github.com/Snowflake-Labs/sf-samples/blob/main/samples/ML%20Powered%20Functions/June%202023%20MLPF%20Demos.sql
@rakesh7464
@rakesh7464 Год назад
@@snowflakedevelopers thanks!! Loved the video. Great examples!
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